CISA Flags Critical ASUS Live Update Flaw After Evidence of Active Exploitation



The post Googleβs Gemini 3 Flash: A New Standard for Efficient AI Performance appeared first on StartupHub.ai.
The recent unveiling of Googleβs Gemini 3 Flash by Matthew Berman marks a pivotal moment in the generative AI landscape, signaling a clear shift towards models that prioritize not just raw intelligence but also unparalleled efficiency and cost-effectiveness. Berman, a prominent AI commentator from Forward Future AI, meticulously detailed how this new iteration of Gemini [β¦]
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The post Claude and Anthropic Emerge as New AI Champion, Consumer Trends Shift Rapidly appeared first on StartupHub.ai.
The landscape of consumer preference in generative AI, video streaming, and wireless carriers is undergoing a seismic shift, with established leaders facing unexpected challengers. This dynamic was vividly illustrated in a recent interview on Mad Money, where HundredX Founder and CEO Rob Pace joined host Jim Cramer to dissect critical consumer trends. HundredX, a privately [β¦]
The post Claude and Anthropic Emerge as New AI Champion, Consumer Trends Shift Rapidly appeared first on StartupHub.ai.
Google Search ConsoleΒ appears to have fixed the month-long delay with the page indexing report just about an hour ago. The report is now showing data as early as a few days ago, which is the normal timeframe for when this report is updated.
Plus, emails about indexing issues have started going out from Search Console to site owners again.
Page indexing report.Β It shows which pages Google can find and index on your site, along with any problems. You can also submit fixes there and see whether Google confirms they worked. Site owners and SEOs were stuck, they were unable to verify their βfixesβ and unable to see if new pages were being indexed and if old pages were having issues being indexed.
Fixed. Here is a screenshot of the report showing December 14th, a much more recent date than the November 21st date that many were stuck on:

Google also fixed the performance reports delay just yesterday. So all the major reports should now be running normally, that is until they break again β which is not that uncommon.
Why we care. Many of you were unable to do full reporting for your SEO clients and stakeholders over the past month. Now you can get recent data both for page indexing and performance reports.
So you should be able to catch up on your reporting before you go into the holiday season.
BeatSync PRO is a Windows desktop app that turns your music into beat-synced videos in minutes. It detects every hit with Β±5 ms precision, analyzes clip content with AI, and auto-matches visuals to your track. Render locally on your NVIDIA GPU and export standard MP4s for social, shows, or VJ sets. Plans include curated AI clip libraries, royalty-free audio, and a full commercial license. Import your own footage, reuse analyzed clips without extra credits, and keep quality intact with non-destructive exports.
The post Teaching Sand to Think: The AI Infrastructure Moonshot appeared first on StartupHub.ai.
βTeaching sand to thinkβ serves as the profound metaphor for the ambition underpinning the current era of artificial intelligence. It encapsulates the monumental task of transforming inert matter into conscious, capable systems, an endeavor that the a16z Original video, βTwo Futures | Runtime 2025,β posits as the biggest infrastructure supercycle in history. This visionary production, [β¦]
The post Teaching Sand to Think: The AI Infrastructure Moonshot appeared first on StartupHub.ai.
Google SVP Nick Fox says AI Modeβs personal context features, including opt-in Gmail connections teased at I/O, are still in internal testing.
The post Googleβs AI Mode Personal Context Features βStill To Comeβ appeared first on Search Engine Journal.
The post The Future of AI: Armβs Vision for Distributed Intelligence appeared first on StartupHub.ai.
Arm's 2026 predictions highlight a future of AI characterized by distributed intelligence, modular silicon, and pervasive on-device capabilities.
The post The Future of AI: Armβs Vision for Distributed Intelligence appeared first on StartupHub.ai.
The post Silverβs Ascent: AI and Data Centers Drive Critical Metal to Record Highs appeared first on StartupHub.ai.
As artificial intelligence and data centers rapidly expand, their insatiable demand for critical materials is creating unexpected market dynamics. Michael Steinmann, CEO of Pan American Silver, illuminated this burgeoning trend in a recent CNBC βClosing Bell Overtimeβ interview with Sara Eisen and Jon Fortt, discussing the forces propelling silver to record highs and the structural [β¦]
The post Silverβs Ascent: AI and Data Centers Drive Critical Metal to Record Highs appeared first on StartupHub.ai.
The post Agentic AI Design: Beyond Screens, Into Systems appeared first on StartupHub.ai.
Agentic AI design fundamentally redefines the role of designers, moving them from interface creators to architects of AI's understanding and behavior.
The post Agentic AI Design: Beyond Screens, Into Systems appeared first on StartupHub.ai.
The post AI Sector Faces Reality Check: Arrogance, Debt, and Discerning Capital appeared first on StartupHub.ai.
The era of broad-brush enthusiasm for artificial intelligence in the tech sector appears to be waning, giving way to a more discerning market where fundamental strength, rather than sheer hype, is becoming the ultimate arbiter of value. This was the overarching sentiment during a recent discussion on CNBCβs βClosing Bell,β where Adam Parker of Trivariate [β¦]
The post AI Sector Faces Reality Check: Arrogance, Debt, and Discerning Capital appeared first on StartupHub.ai.
Chinese scientists build a working EUV prototype, striking a major blow against Americaβs semiconductor leadership The US has placed heavy restrictions on tech exports to China, hoping to slow down the nationβs progress and limit the growth of its tech sector. Specifically, the US wants to prevent China from making cutting-edge semiconductors, keeping its chips [β¦]
The post China sidesteps US ban with EUV chipmaking breakthrough appeared first on OC3D.
IdeaLift turns everyday team conversations into shipped product work. With a simple emoji reaction in Slack or Discord, IdeaLift captures the idea, uses AI to clean it up, categorize it, check for duplicates, and create a structured issue in GitHub or Linearβno copy-pasting, no context switching, and no lost ideas buried in chat threads.
IdeaLift works wherever ideas happen: Slack, Discord, Microsoft Teams, meetings, the web, and across 5,000+ apps via Zapier. Teams use it to capture feature requests, bugs, and decisions in real time, then move seamlessly from raw conversation to clear, actionable workβfaster, cleaner, and with full context intact.
The post AI-Driven Kernels: Accelerating PyTorch with Agentic Optimization appeared first on StartupHub.ai.
In the relentless pursuit of computational efficiency, the fine art of low-level kernel optimization has long remained the exclusive domain of a select few, a bottleneck in the age of rapidly evolving AI models. Natalie Serrino, Co-founder of Gimlet Labs, recently illuminated this critical challenge and her companyβs novel approach at the AIE Code Summit. [β¦]
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The post UCSD Lab Advances Low-Latency LLM Serving with DGX B200 appeared first on StartupHub.ai.
UC San Diego's Hao AI Lab is pushing the frontier of low-latency LLM serving by leveraging NVIDIA's DGX B200 system and pioneering disaggregated inference.
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The post Hut 8βs Strategic Pivot: Fueling AI with Financial Fortitude appeared first on StartupHub.ai.
βCredit counterparty was extremely important,β stated Asher Genoot, CEO of Hut 8, on CNBCβs βPower Lunch,β underscoring a pivotal shift in the digital infrastructure landscape. Genoot, speaking with the CNBC team, provided commentary on Hut 8βs recent deal with Fluidstack, backed by Google, and its implications for data center demand and energy infrastructure. His insights [β¦]
The post Hut 8βs Strategic Pivot: Fueling AI with Financial Fortitude appeared first on StartupHub.ai.
The post Amazon in talks to invest $10 billion or more in OpenAI appeared first on StartupHub.ai.
The escalating arms race in artificial intelligence demands not just groundbreaking algorithms but the foundational infrastructure to train and deploy them. In a recent CNBC segment, reporter MacKenzie Sigalos, in conversation with anchor Kelly Evans, unpacked the strategic implications of Amazonβs potential $10 billion-plus investment in OpenAI, a deal poised to reshape the competitive landscape [β¦]
The post Amazon in talks to invest $10 billion or more in OpenAI appeared first on StartupHub.ai.
The post NVIDIAβs OpenUSD Boosts Robotaxi AI Safety appeared first on StartupHub.ai.
NVIDIA's integrated approach with OpenUSD, Omniverse, and Halos is setting new standards for robotaxi AI safety through advanced simulation and certification.
The post NVIDIAβs OpenUSD Boosts Robotaxi AI Safety appeared first on StartupHub.ai.
The post Code World Model: Metaβs Leap Beyond Code Syntax to Computational Reasoning appeared first on StartupHub.ai.
The future of AI-driven software engineering hinges not merely on generating code, but on truly understanding its computational dynamics. This profound shift was at the heart of Jacob Kahnβs presentation on the Code World Model (CWM) at the AI Engineer Code Summit. Kahn, a Research Scientist at FAIR Meta, introduced CWM as a novel world-model [β¦]
The post Code World Model: Metaβs Leap Beyond Code Syntax to Computational Reasoning appeared first on StartupHub.ai.
Another step toward Elon's 'everything app' vision?
As debate rages over teen social media access, Apple may hold the key to more effective regulation.
The process will make it easier to create better Snaps quickly.
Some pointers for your Meta ads in the upcoming Q5 push.Β
Googlebot once again generated more traffic than any other crawler in 2025, according to a new Cloudflare report. It outpaced every search and AI bot as Google continued crawling the web for search indexing and AI training.
By the numbers. Googlebot accounted for more than 25% of all Verified Bot traffic observed by Cloudflare.
AI crawling surges. AI crawlers were the most frequently fully disallowed user agents in robots.txt files.
Search platforms looked very different:
Google still monopolizes search. Traditional search dominance barely changed.
The report. The 2025 Cloudflare Radar Year in Review: The rise of AI, post-quantum, and record-breaking DDoS attacks


The post Chandlerβs AI Data Center Rejection Signals Shifting Local Tech Landscape appeared first on StartupHub.ai.
The unanimous decision by the Chandler City Council to reject a proposed AI data center, a move openly endorsed by Mayor Kevin Hartke, underscores a growing friction between the rapid expansion of artificial intelligence infrastructure and the specific economic and environmental priorities of local communities. This wasnβt merely a political skirmish; it was a calculated [β¦]
The post Chandlerβs AI Data Center Rejection Signals Shifting Local Tech Landscape appeared first on StartupHub.ai.
The post Anthropic Wins TTFT, But OpenAI Dominates LLM Benchmarks appeared first on StartupHub.ai.
New LLM benchmarks reveal a critical trade-off: Anthropic models deliver instant responsiveness, while OpenAI maintains a commanding lead in raw generation throughput.
The post Anthropic Wins TTFT, But OpenAI Dominates LLM Benchmarks appeared first on StartupHub.ai.
The post Binti and Claude: Accelerating Foster Care Licensing Through Applied AI appeared first on StartupHub.ai.
Artificial intelligence is not merely a tool for efficiency; it is a catalyst for re-humanizing critical public services, freeing professionals from administrative burdens to focus on their profound impact. This principle stands at the core of Bintiβs mission, as illuminated by a recent video showcasing their integration of Anthropicβs Claude AI to revolutionize foster family [β¦]
The post Binti and Claude: Accelerating Foster Care Licensing Through Applied AI appeared first on StartupHub.ai.
The post Amazonβs OpenAI Bet Signals Intensifying AI Chip Wars appeared first on StartupHub.ai.
The proposed multi-billion dollar investment from Amazon into OpenAI, coupled with OpenAIβs increased utilization of Amazonβs proprietary Trainium chips, marks a pivotal moment in the escalating battle for AI infrastructure dominance. This isnβt merely a financial transaction; it represents a strategic realignment that underscores the critical importance of specialized silicon and diversified compute resources in [β¦]
The post Amazonβs OpenAI Bet Signals Intensifying AI Chip Wars appeared first on StartupHub.ai.
Elon Musk's X has moved to end an effort to revive the Twitter branding.Β
New effects to help you ring in 2026.

In its final feature update of the year, Edits gets advanced AI segmentation tools.
In this new era of generative AI technology, searchers have begun to swap keywords with prompts. Shorter and long-tail queries are being replaced by more conversational prompts, which tend to be longer and more in-depth. These days, searchers are expecting more complete answers than a paginated list of results.
Until we get an AI-specific equivalent of Google Search Console or Bing Webmaster Tools, we canβt really see for certain what or how our audience is behaving on AI search platforms as they look for our content, brands or products.
However, we can still look for proxies to emulate how this journey works. Here are multiple ways to use other data points as proxies to find prompts used by your audience. You can then use your AI Tracking Tool of choice to track how these prompts are performing.
Hidden in plain sight, you can use a very popular SERP feature to move from keywords to prompts/questions. People Also Ask (PAA) was introduced in 2014 and suggests multiple related questions to your query. You can easily go from a keyword to a list of questions. When clicking on any PAA result, the list expands and gives you more terms.

Go query by query to find relevant PAAs, or you can use AlsoAsked to extract the exact questions at scale. PAAs are long questions that attempt to answer the next questions asked in the search journey, so theyβre a step closer to prompts written in AI Search platforms.
Userbots like ChatGPT-User and PerplexityβUser are powerful ways to see how your pages are being used in AI Search. It doesnβt give you the prompts they use, but itβll help you assess which pages are being cited without trying to guess by tracking prompts that may or may not be relevant at all.
These bots ping the URLs on your website when theyβre used to formulate an answer to a user. The process is called RAG (Retrieval-Augmented Generation).
The SEO toolkit you know, plus the AI visibility data you need.
To paraphrase Mike King, one of the most trusted sources in SEO & AI, RAG is a mechanism by which a language model can be βgroundedβ in facts or learn from existing content to produce a more relevant output with a lower likelihood of hallucination.
Translation: Your page was used as an answer and, in some shape or form, your content helped a user. This may give you clues about what type of content is most used by your audience on these platforms, even if the answer hasnβt turned into a click.
Historically, log files have been difficult for SEOs to get, despite every website having them in its servers (yet another reason why SEOs should have access to them!).
You could use a combination of pages with userbot visits, search for their main keywords (as seen on Semrush or GSC), and then see which PAAs Google displayed.Β
Despite not giving a breakdown of AI Mode or AI Overview queries on GSC, smart SEOs are finding proxies that can be used to find queries that resemble the behavior we expect in these platforms. One of them is Ziggy Shtrosberg, who came up with a huge regex you can copy and paste to your GSC.
His guidelines are to:
^(generate|create|write|make|build|design|develop|use|produce|help|assist|guide|show|teach|explain|tell|list|summarize|analyze|compare|give me|you have|you can|where|review|research|find|draft|compose|extract|process|convert|transform|plan|strategy|approach|method|framework|structure|overview|summary|breakdown|rundown|digest|perspectives|viewpoints|opinions|approaches|angles|pros and cons|advantages and disadvantages|benefits and drawbacks|assuming|suppose|imagine|consider|step by step|procedure|workflow|act as|adapt|prepare|advise|appraise|instruct|prompt|amend|change|advocate|aid|assess|criticise|modify|examine|your|assign|appoint|delegate|nominate|improve|expand|calculate|classify|rank|challenge|check|categorize|order|tag|scan|study|conduct|contradict|update|copy|paste|please|can you|could you|would you|help me|i need|i want|i'm looking for|im looking for|how do i|how can i|what's the|whats the|walk me through|break down|pretend you're|pretend youre|you are a|as a|from the perspective of|in the style of|format this as|write this in|make it|rewrite|i'm trying to|im trying to|i'm struggling with|im struggling with|i have a problem|i'm working on|im working on|what's better|whats better|which|pros and cons of|recommend|suggest|show me how|guide me through|what are the steps|how do i start|whats the process|take me through|outline the procedure|brainstorm|come up with|think of|invent|what if|lets explore|let's explore|help me think|i'm a beginner|im a beginner|as someone who|given that i|in my situation|for my project|i'm currently|im currently|my goal is|depending on|based on|taking into account|considering|given the constraints|with the limitation|improve this|make this better|optimize|refine|polish|enhance|revise|teach me|i want to learn|i don't understand|i dont understand|can you clarify|what does this mean|eli5|i'm confused about|im confused about|also|additionally|furthermore|by the way|who's|whos|find|more|next|also|another|thanks|thank you|please)( [^" "]*){9,}$
Take this strategy with a pinch of salt, as some of these queries might be generated by LLM trackers.Β
For instance, I found a pattern of prompts starting with βevaluate,β which have a high number of impressions by zero clicks (not a small number of clicks, exactly zero clicks). If longer prompts have a high number of impressions and no clicks, beware that it might not be humans using these prompts.

One of the main AI Search platforms, Perplexity has a feature called βRelatedβ where it displays up to five follow-up prompts. While the initial prompt is still yours and may not be how others are prompting, the related follow-ups are still a good indicator of how humans promptβor at least how the platform expects humans would.

These answers are country-specific, so run your research locally.
Considering we donβt have the search volume metric per single keyword and that prompts are a lot more unique than keywords, itβs not realistic to track every single prompt relevant to our companies. A way to mitigate this is to combine these prompts into topics and use AI to summarize what they mean.
The new Semrush AI Visibility Tool has a feature called βPrompt Researchβ that matches your keyword to a topic and gives you a list of prompts alongside brands mentioned, intent, and sources.
Currently, the tool allows you to filter results between the US and the UK, including the full AI Response and a list of brands and URLs.Β

Even though I typed a single keyword (βused carsβ), it picked the closest available topic (βUsed Car Sales and Dealershipsβ) and returned me all prompts, brand mentions, and source domains.
You might decide not to track single prompts, which can grow fast and become overwhelming to measure. Rather, use the Semrush prompt database for optimization and measure the results by looking at the whole topic performance.
Keep in mind that not every prompt requires RAG, meaning that if the answer is already on the AI Search platform training data, no pages will appear as sources. For some brands, just getting a mention is fine. If, say, someone is looking for a museum or restaurant to visit, the mention might be enough to convince them to reach the destination and convert offline (e.g., buy a ticket or a meal).
In most cases, however, SEOs are still looking for traffic, so the prompt must list pages in their answers to give you a chance to be visible. Ironically, while the results you get from ChatGPT are one answer instead of a SERP, the LLM is actually doing searches for you in the background.Β
Luckily, you can find:
You can find these by looking for βqueries,β βsearch_queries,β and βsearch_probβ inside Chrome Dev Tools (Inspect > Network > Conversation > Response).

Or, to simplify, you can add this script as a bookmark on Chrome and click on it after prompting a question on ChatGPT. This is an improved version of Ziggy Shtrosbergβs script.
While these searches look more like traditional searchers as opposed to prompts, your strategy may be to optimize for them and win on AI search as a secondary benefit.

When it comes to search_prob (also on the script above), itβs the probability that an answer requires grounding (RAG). This answer ranges between 0 (low) and 1 (high). Every answer is unique (even if you and I search for the same prompt, weβll have different answers), so this can act as a proxy for the opportunity of pages being listed as a source.
As with every new technology, things change fast. How people use AI tools and which tools are being used are constantly changing. New models (like ChatGPT5) change how RAG is used, and the increase in adoption across different industries also affects what prompts you should track, so you must also evolve and reevaluate what and how to track AI searches.
Track, optimize, and win in Google and AI search from one platform.

LinkedIn is making Reserved Ads generally available to all managed accounts, giving marketers the ability to lock in the first ad slot in the feed for premium visibility.
Whatβs new. Reserved Ads let advertisers secure top-of-feed placement at a fixed rate, providing predictable delivery, consistent reach, and greater share of voice. Early results show the format drives up to 75% higher dwell time, 88% higher view-through rates, and delivers 99% of forecasted impressions, according to LinkedIn.

How it works. Reserved Ads appear in the most visible ad slot on LinkedInβs feed and support most Sponsored Content formats, including Video, Single Image, Carousel, Document, Thought Leader, and Event Ads. Advertisers work with their LinkedIn account representative to reserve inventory and pricing.
Why we care. LinkedIn Reserved Ads give you guaranteed top-of-feed placement, increasing visibility, attention, and engagement for campaigns. This premium positioning helps cut through the typical noise in B2B feeds, improving recall and early-funnel impact.
Additionally, the predictable delivery and fixed pricing allow marketers to plan campaigns with more certainty while building higher-quality retargeting audiences for future conversions.
The big picture. LinkedIn is positioning Reserved Ads as a bridge between brand and demand. By anchoring awareness campaigns at the top of the feed, marketers can build higher-quality retargeting pools β with LinkedIn reporting up to a 101% lift in mid-funnel engagement when audiences are warmed with Reserved Ads ahead of time.
The bottom line. By turning premium feed placement into a reservable product, LinkedIn is giving B2B marketers a more predictable way to buy attention β and convert it into downstream demand.
Google has removed its long-standing unified pricing rules in Google Ad Manager, once again allowing publishers to set different price floors for Google demand versus other programmatic buyers.
What changed. Publishers can now set bidder-specific floor prices in Ad Manager. For example, one buyer can be required to bid at least $5 while others compete at a lower $2 floor. Google has also rebranded βunified pricing rulesβ as simply βpricing rules.β
The backstory. Before 2019, publishers often set higher floors for Google to counterbalance its data advantage. That flexibility disappeared when Google mandated uniform pricing across exchanges β a move later scrutinized by regulators in both the U.S. and Europe.
Why we care. Bidder-specific pricing rules change how auctions clear and how competitive different demand sources are inside Google Ad Manager. As publishers regain the ability to set higher floors for certain buyers, advertisers may see shifts in win rates, CPMs, and available inventory depending on their buying setup. Over time, this could reshape pricing dynamics and push advertisers to reassess bidding strategies and diversification across exchanges.
Regulatory pressure: The rollback follows major antitrust actions against Googleβs ad tech business. In the U.S., Google was found guilty of anti-competitive behavior, prompting proposed remedies that included ending unified pricing. In Europe, the European Commission fined Google β¬2.95 billionΒ ($3.45 billion)Β and ordered the company to end self-preferencing practices across the ad tech supply chain.
What Google says: Google said the change will make it easier for publishers and advertisers to use competing ad tech providers while minimizing disruption. The company framed the update as part of broader near-term product changes across display, video, and app ads.
Industry reaction. Jason Kint, CEO of Digital Content Next, called the move a meaningful β if limited β win for publishers, noting that unified pricing often lowered yield and that this change offers immediate, tangible relief. He also suggested the update may be designed to show regulatory compliance and head off stronger remedies, including potential divestitures.
The bottom line. After more than six years, publishers are regaining pricing control inside Google Ad Manager β a shift driven less by product strategy and more by mounting antitrust pressure on Googleβs ad tech empire.
Google recently rolled out βread moreβ links in Google search results, which appear at the end of the snippetβs description. When you click on the read more link, you are anchored down to a specific portion of the web page that you clicked on.
Not all search result snippets include these read more links, but many do.
What it looks like. Here is a screenshot of this in action, but you can probably replicate it for most of your queries now:

Google was testing this, or variations of this, Β back in JulyΒ and now it seems to have been rolled out.
Why we care. These read more links do add an additional eye-catching link to the search result snippets. Hopefully, this leads to encouraging more clicks to websites and no less.
More clicks to websites is a good thing, so hopefully this feature will last.
Google has expanded Product Studio inside Merchant Center, rolling out three new creative features that go beyond its original image generation tool.
Whatβs new. In addition to image generation, Product Studio now lets merchants animate static product images into short videos using suggested text prompts, a move aimed squarely at short-form ads and social-style creative.
Google has also added one-click background removal to help isolate products and create cleaner, more consistent Shopping visuals.
The third update increases image resolution, allowing advertisers to upscale older or lower-quality assets to meet modern visual standards.

Why we care. Product imagery plays a major role in Shopping performance, but creating and refreshing assets is often slow and resource-heavy. These updates give merchants more ways to produce high-quality visuals quickly β without leaving Merchant Center or relying on design teams.
The big picture. Google continues to embed AI-powered creative tools directly into commerce workflows. By housing animation, editing, and enhancement inside Merchant Center, Google is lowering the barrier to frequent creative testing β a key lever for Shopping and Performance Max campaigns.
What to watch. These tools could significantly speed up asset iteration for advertisers with limited creative resources, especially as Google pushes more video-forward and visually rich ad formats across Search, Shopping, and YouTube.
First seen. This update was spotted by Senior PPC Specialist β VojtΔch Audy
Google launches Gemini 3 Flash and makes it the default in the Gemini app. Itβs rolling out as AI Modeβs default model.
The post Google Gemini 3 Flash Becomes Default In Gemini App & AI Mode appeared first on Search Engine Journal.
Microsoft ushers in a new era of Windows Server storage performance with Native NVMe support Microsoft has officially added Native NVMe support to Windows Server 2025, an opt-in feature that can deliver boosted storage performance when using modern NVMe SSD storage solutions. Until now, Microsoftβs storage stack considered all storage devices as SCSI (Small Computer [β¦]
The post When Windows 11? Microsoft boosts Windows Server with Native NVMe support appeared first on OC3D.
The OnePlus 15R lands in an awkward middle ground, pairing strong hardware with notable compromises. It's powered by a Snapdragon 8 Gen 5 and features a massive 7,400 mAh battery, but carries a $699 price tag. Reviewers praise its performance, but criticize the mediocre camera system.
The post Google unveils βGemini 3 Flashβ AI model focused on speed and cost appeared first on StartupHub.ai.
Google has recently announced Gemini 3 Flash, a new AI model designed for speed and cost-effectiveness. Deirdre Bosa reported on this development for CNBC, highlighting its strategic importance in the rapidly advancing AI landscape. The Gemini 3 Flash model aims to provide a more accessible and efficient AI solution, distinguishing itself from more resource-intensive models. [β¦]
The post Google unveils βGemini 3 Flashβ AI model focused on speed and cost appeared first on StartupHub.ai.
The post Blue Owl Rejects Oracleβs Michigan Data Center Deal Over Unfavorable Economics appeared first on StartupHub.ai.
βThe FT story is incorrect. Our development partner, Related Digital, selected the best equity partner from a competitive group of options, which in this instance was not Blue Owl. Final negotiations for their equity deal are moving forward.β This statement from Oracle, provided to CNBC, directly refutes earlier reports that Blue Owl had decided against [β¦]
The post Blue Owl Rejects Oracleβs Michigan Data Center Deal Over Unfavorable Economics appeared first on StartupHub.ai.
The post Reimagining Public Safety: Technology, Culture, and the Fight Against Crime appeared first on StartupHub.ai.
America faces a startling reality: the chance of a murder being solved is barely a coin flip, with national clearance rates hovering around 47%. This chilling statistic, highlighted by Ben Horowitz, cofounder of a16z, underscores a profound societal failure in crime enforcement, leading to what he terms βlost generations.β Itβs a crisis demanding more than [β¦]
The post Reimagining Public Safety: Technology, Culture, and the Fight Against Crime appeared first on StartupHub.ai.
Google today began rolling out Gemini 3 Flash as the default model powering AI Mode in Search worldwide. The upgrade brings faster performance and stronger reasoning to AI-generated search responses, Google said.
Why we care. With AI Mode, Google continues to transition toward an AI-first search approach. More queries could be answered directly in AI Mode, reducing reliance on traditional organic listings. Improved reasoning allows AI Mode to handle comparison and planning tasks, multi-intent searches, and research-style queries.
Whatβs changing. Gemini 3 Flash now powers AI Mode in Search globally.
Google is also expanding access to Gemini 3 Pro in Search in the U.S.
What AI Mode does. According to Google, AI Mode:
What Google is saying. In a blog post, Tulsee Doshi, senior director, product management, wrote:
Building on the reasoning capabilities of Gemini 3 Pro, AI Mode with Gemini 3 Flash is more powerful at parsing the nuances of your question. It considers each aspect of your query to serve thoughtful, comprehensive responses that are visually digestible β pulling real-time local information and helpful links from across the web. The result effectively combines research with immediate action: you get an intelligently organized breakdown alongside specific recommendations β at the speed of Search.
This shines when tackling complex goals with multiple considerations like trying to plan a last-minute trip or learning complex educational concepts quickly.
Image generation expands in AI Mode. Google also announced expanded access to Nano Banana Pro, its Gemini 3 Proβpowered image generation and editing model, in Search.
Google Searchβs Danny Sullivan and John Mueller pushed back again on the idea that brands need a separate AI SEO strategy during the latest Search Off the Record episode.
Sullivanβs point is simple: the acronyms keep changing (GEO, AEO, etc.), but the advice doesnβt: Write for humans, not for ranking systems, whether those systems are traditional search or LLM-powered experiences.
Why we care. As AI search grows, a lot of publishers and SEOs are feeling pressured to try something new. Googleβs take: chasing AI tricks can actually backfire and distract you from making content people actually like.
Google says the north star hasnβt moved. Sullivan said Google aims to reward content made for people, not for search algorithms or for LLMs. If youβre already doing that, he said, youβre βaheadβ as formats continue to shift.
Original, authentic, multimodal. Sullivan argued that AI features speed up a reality publishers have faced for years: commodity content is easy to replace. His examples:
What Google wants creators to do:
Structured data still matters. They also said structured data helps, but it isnβt decisive. Sullivan said itβs not βstructured data and you win AI.β It simply supports how systems understand and present content, just as it already does across Search features.
Focus on quality clicks. Google is seeing that traffic from AI formats can arrive more engaged, such as spending more time on-site. His hypothesis is that AI results create better contextual awareness. Users click when they are more confident that the result matches their intent.
About query fan-out. They explained why βI rank in blue links but not in AI Overviewsβ is a flawed comparison:
Clients still want βthe new thing.β Sullivan acknowledged the real-world challenge: Clients still demand βAI optimizationβ as a separate service.
What to do now, according to Google. Based on the conversation, Googleβs βSEO checklistβ looks something like this:
The podcast. Thoughts on SEO & SEO for AI, part 1
Dig deeper:



Google updated its JavaScript SEO docs with new guidance on canonical URLs for JavaScript-rendered pages. Keep canonicals consistent before and after rendering.
The post Google Updates JavaScript SEO Docs With Canonical Advice appeared first on Search Engine Journal.
Sapphireβs Radeon RX 9070 XT Phantom Link has been unboxed in China Sapphire has created a new RDNA 4 flagship, the Radeon RX 9070 XT Nitro+ Phantom Link, which has now been unboxed in China. This GPU is an enhanced version of Sapphireβs existing Nitro+ model, offering users both 12V-2Γ6 and GC-HPWR power inputs. This [β¦]
The post Cable-free gaming power! Sapphire RX 9070 XT Phantom Link GPU unveiled appeared first on OC3D.
AI Engage introduces a new way to win in AI Search. Instead of optimizing for keywords, it systematically educates AI search engines about your brand by prompting models to fetch and analyze your real content. Automated campaigns engage Google AI Search, ChatGPT Search, Perplexity, and Microsoft Copilot using realistic user queries.
Campaigns run in six languages across 150 million geo targeted IPs, with analytics to track visibility and performance by market.
Privately see any day of your photos across all your years
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βIntelligence is measured by the efficiency of skill acquisition on unknown tasks.β This foundational insight, articulated by FranΓ§ois Chollet, creator of Keras and the Abstract and Reasoning Corpus for Artificial General Intelligence (ARC-AGI), underpins a critical shift in how the AI community evaluates progress. In a recent interview at NeurIPS 2025, Y Combinator General Partner [β¦]
The post ARC-AGI: The True Measure of Machine Intelligence Beyond Brute Force appeared first on StartupHub.ai.
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The next wave in finance is foundation models that can actually invest, not just talk about markets. As of today, agentic finance is about foundation models quietly becoming the core infrastructure for how capital decisions are researched, prepared, and executed. These systems are shifting the paradigm from who can hire the most analysts to who [β¦]
The post Wall Streetβs New Hires are Grok, Claude, and GPT appeared first on StartupHub.ai.
Google updated its JavaScript SEO best practices document, for the second time this week, this time to clarify canonicalization best practices for JavaScript. In short, Google said βsetting the canonical URL to the same URL as in the original HTML or if that isnβt possible, to leave the canonical URL out of the original HTML.β
What Google added. Google added a new section over here and it reads:
βThe rel=βcanonicalβ link tag helps Google find the canonical version of a page. You can use JavaScript to set the canonical URL, but keep in mind that you shouldnβt use JavaScript to change the canonical URL to something else than the URL you specified as the canonical URL in the original HTML. The best way to set the canonical URL is to use HTML, but if you have to use JavaScript, make sure that you always set the canonical URL to the same value as the original HTML. If you canβt set the canonical URL in the HTML, then you can use JavaScript to set the canonical URL and leave it out of the original HTML.β
Google on noindex. Google also warned about using JavaScript for noindex tags earlier this week. Google said βyou do want the page indexed, donβt use a noindex tag in the original page code.β
Why we care. So if you use JavaScript for setting a canonical link, make sure to also check in Google Search Consoleβs URL Inspection tool if it is being picked up.
Review these updated best practices if you use JavaScript on your site, especially for canonical links.
For years, PPC advertisers have considered Performance Max (and Smart Shopping before it) to be a black box, even a black hole.
While its powerful automation drives convincing results, the lack of transparency into channel performance has been a persistent frustration.Β
Now, Google is beginning to provide some answers.Β
The rollout of the new Channel Performance report marks a significant step toward the transparency advertisers have been demanding.Β
This guide explains what the report is, highlights its strengths and weaknesses, and shows you how to use it.
The Channel Performance report is essentially a pre-built network report (we can discuss the semantics of channel versus network another day), which can be found under Campaigns > Insights and Reports > Channel Performance (beta).
It offers tabular network data and an interactive flow diagram from impressions down through conversions.Β
The Channel Performance report only works for Performance Max campaigns. However, credible clues suggest that this report may support additional campaign types in the future.
This is important because, while Performance Max is (in)famously a βchannel soup,β all campaign types are capable of serving across different ad networks within Googleβs grasp, and many of them do so by default.
Previously, untangling this mix to see which channels were actually performing was a task left to manual reports or, in the case of PMax, third-party scripts based on guesswork.
The Channel Performance report is Googleβs native solution.Β
The report is composed of two main elements:Β
Furthermore, there are various customization options, which can be saved as preferred views, and multiple export options.
The account view is a newer addition to the Channel Performance report, and in some ways my favorite view.Β
Previously, when you accessed this report, youβd land on a blank page prompting you to select an individual Performance Max campaign.Β
Now, this handy table is the first thing youβll see.

It has a series of rows for each campaign, nested rows for each channel, and columns for the performance metrics.Β
One thing I love is that each nested row has the channel icon next to it.Β
Tabular data can sometimes make my eyes cross, but this simple visual aid makes the data much easier to skim.
By default, the campaign rows are sorted alphabetically, and youβll likely want to sort by something more practical, like impressions, costs, revenue, etc.
After that, you can really leap down the page easily, comparing the distribution of your key campaigns.
But thatβs the obvious part.
My top tip for this view is that you can change your segment, and among the options, two really stand out for me:Β

The first allows you to see the volume and performance of βads using product dataβ (feed-based ads) versus βads not using product dataβ (asset-based ads).
Yes, thatβs right, finally a simple comparison of feed ads and asset ads. Besides network performance, this has been one of the most contentious and least transparent areas in PMax, prompting numerous advertisers to run so-called βfeed-onlyβ PMax campaigns.
Now you can easily see whatβs going on with this performance facet across all your PMax campaigns, plus an account-level summary row at the bottom.Β
Whether you like or dislike what youβre seeing, you can head over to your asset-group-level and asset-level reporting to dig deeper.Β
Be cautious when judging the performance of asset-based ads. They should not be held to the same efficiency standards.
The second segment, ad event type, might sound non-descript, but itβs really important.
It lets you easily understand the volume and performance of your click-through versus view-through conversions.Β
This has been (yet another) divisive topic in PMax:Β
Now you can answer these questions per campaign and also at the account view in the summary row.
But what if you want even more detail?Β
What if, for example, you want to learn your feed versus asset share in, say, YouTube specifically?Β
Thatβs not possible at the account level, but it certainly is at the campaign level.
Just click on any campaign and it will load a new page drilling down to the next reporting level.Β
The first thing youβll notice on this page is the large Sankey diagram.Β
Itβs visually striking and has become a signature of the Channel Performance report.
That said, we need to set it aside for now. Scroll down to the data table below, which is similar to the one you just saw.
The campaign data table: A deeper dive
While the Sankey diagram gives a high-level view, the table below is where real analysis happens.Β
Itβs more reliable for decision-making because it shows the raw numbers without visual distortion.
The table breaks performance down by channel and ad type β the feed-based versus asset-based split we discussed earlier.Β
For each segment, you can review multiple metrics by default, but my top tip is to go to Columns > Conversions.
There, you can select Conv. value / Cost (a.k.a. ROAS) and Cost / Conv. (a.k.a. CPA).Β
These are hidden by default, but you can indeed see them, and I donβt think I have to tell you why they are interesting to know.

Crucially, the table also includes an export function, plus scheduling options, allowing you to pull the raw data for deeper analysis in a spreadsheet.
The Sankey diagram: Visualizing the flow
As noted earlier, this visualization β officially called the Channels-to-Goals chart β is visually striking, but it has limitations.Β
Before addressing those issues, letβs clarify its purpose and what it can tell us.
The Sankey diagram presents a visual breakdown of performance across the channels within your PMax campaign.Β

It maps the customer journey within your campaign βΒ how users move from seeing an ad (impressions) to clicking or engaging with it (interactions), and, ultimately, to converting (results or conversions).
This is great. For the first time, advertisers can see the flow of core funnel metrics right in Google Ads, all segmented by the specific channel driving the traffic.Β
This allows you to understand how PMax allocates your budget and which parts of its vast inventory are actually working for you.
Decoding the channels
People often look at the Sankey and get stuck. βWhereβs my Shopping data?β is probably the single biggest example of this.Β
As weβve discussed, a key feature of the report is how it segments ads into feed-based and asset-based ads.
When we combine that dimension with the network or βchannelβ dimension, we can translate the labels into more familiar terms:

These are my interpretations of the data, which might not be perfect.Β
It would be extremely helpful if Google offered more detailed documentation on whatβs included.
For example, feed-based YouTube ads can comprise a variety of formats and placements, some of which, such as βGMC Image Shorts,β are not documented anywhere.
Googleβs guidance is quite vague.
While a welcome addition, the report has some shortcomings.
The visual proportions of the diagram are not based on volume, which makes it extremely misleading at a glance.Β
A channel that appears to drive significant traffic may actually account for only a tiny share of your impressions.
In the example below, the asset-based Search ads segment appears to have a couple hundred thousand impressions, but in reality only has 4,500 impressions.Β
This makes the chart almost useless for quick, accurate analysis, which is the entire point of data visualization.

The data table provides useful raw data, but it lacks key calculated metrics needed for analysis, such as conversion rate and cost per click.
To see the full picture, you must export the data and do your own calculations.
This feels, to be honest, a bit petty of Google.Β
They could easily add these columns, but it seems they would prefer not to. Grab your calculator.
Despite its limitations, you can still extract valuable insights into which channels deliver what.
The key is to focus on asset quality and traffic quality, because direct channel control is limited.
While the report doesnβt let you directly control channel mix, it helps you monitor traffic quality.Β
Use the placement reports to see exactly where your Display and YouTube ads are showing.
=GOOGLETRANSLATE() to understand foreign-language placements and the integrated =AI() function to help categorize domains and videos for brand safety.Google has confirmed that API access and MCC-level reporting are coming to the Channel Performance report.Β I also expect this data to be supported in the Report Editor.Β
In the meantime, you can export the report as a .csv or send it directly to Google Sheets.
With a smart setup, these exports enable you to calculate custom metrics, build charts, apply heatmaps, and reshape the data as needed.
To help the community, I helped build a script that enhances Googleβs report in several practical ways:
The script works for individual PMax campaigns, not the account-level view. Iβm waiting for Googleβs feature set and scripting options to stabilize before expanding the script.
We know Search Partner data is coming, along with API access, MCC-level reporting, and likely support for additional campaign types such as Demand Gen.
Itβs encouraging to see Google share this level of detail, and thereβs reason to believe this momentum will continue.Β
The Channel Performance report already addresses one of the most persistent criticisms of Performance Max β that it operates as a black box.Β
Three years ago, it would have been hard to imagine Google responding to advertiser feedback at this scale, particularly on transparency.
Still, better visibility doesnβt automatically translate into better decisions.Β
Interpreting this data correctly takes time, context, and careful analysis β and that work remains firmly in the hands of advertisers.

Don't build links without first understanding these facts about trust and authority.
The post The Facts About Trust Change Everything About Link Building appeared first on Search Engine Journal.
Monster Hunter Wilds newest PC update is a godsend to 8GB GPU users Monster Hunter Wilds has just received βTitle Update 4β, the first of a trio of planned PC optimisation updates for the game. Following the release of this update, PC gamers have reported significant improvements to the game. This includes lowered VRAM usage [β¦]
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Microsoft Copilot is transforming search advertising by turning everyday conversations into intent-rich signals advertisers can act on.Β
ROAS increases 13-fold when users engage with Copilot before performing a search, according to Microsoft.
Drawing from billions of first-party audience insights across Microsoftβs consumer ecosystem β including Bing, Edge, Xbox, LinkedIn, and Activision β Copilot identifies high-value audiences using deterministic data built from search intent, web activity, and profile information.Β
This allows advertisers to reduce wasted impressions and stretch budgets further.
The core proposition of conversational search is that users provide significantly more context to a chatbot than to a traditional search bar.Β
Instead of a fragmented keyword, users are increasingly asking detailed questions.
When a user submits a complex query β such as asking for specific product comparisons or local recommendations β the AI triggers multiple backend searches across reviews, specifications, and availability to construct an answer.Β
For the advertising industry, this behavior change offers a potential goldmine of data.Β
By interpreting these longer queries, platforms can identify βhigh-intentβ buyers more accurately, turning a single conversation into multiple, precise ad opportunities.
To understand how these metrics translate into strategy, consider a recent test I conducted for a well-known California-based university tasked with recruiting high school seniors for their hands-on engineering and architecture STEM programs.
The university historically relied on broad keywords like βbest engineering schools.β
This resulted in high competition and wasted spend on students looking for art programs or out-of-state options they couldnβt afford.
Using Copilotβs intent signals, the campaign shifts.
A prospective student might ask Copilot:
Applying Microsoftβs reported benchmarks to this scenario reveals significant efficiency gains:
For advertisers seeking to replicate these results, the shift necessitates more than simply enabling a new setting.Β
It requires a strategic overhaul of how campaigns are structured to capture βconversationalβ demand.
Audit service offerings and solution data
Ensure your siteβs structured data is rich with details on specific methodologies and industry specializations.Β
AI assistants rely on this semantic depth to answer prospective queries about βcompetency, case studies, and communication options.β
Prioritize first-party data
Integrate customer data to train the model.Β
Microsoftβs ecosystem leverages data points from LinkedIn to Xbox to refine targeting.
Advertisers must supply their own truth data to match this precision.
Embrace long-tail queries
Move away from strict exact-match keywords.
The UI overhaul of Copilot encourages users to ask βlonger, more detailed questions,β meaning broad match modifiers are necessary to capture these natural language phrases.
Optimize for answers, not just clicks
Structure landing page content to answer specific questions.Β
Since Copilot acts as a βcompanionβ guiding users through tasks, your ad content must align with helping them make a decision, not just selling a product.
Implement cross-device strategy
With 90% of Gen Z adults in the U.S. using the web while watching TV, campaigns must run across multiple platforms, including mobile, PC, and console, to capture their split focus.
Bridge the authenticity gap
For younger demographics, leverage integrations like Snapchatβs My AI.Β
This places ads within βconversational flowsβ rather than interrupting them, a key factor in engaging Gen Z.
Bridging the gap with Gen Z remains a hurdle for most ad platforms, which often struggle with perceptions of inauthenticity.Β
To address this, the industry is seeing a trend toward utilizing behavioral data from unlikely sources.Β
By layering in data from gaming ecosystems like Activision, advertisers can target based on real behaviors β from play styles to in-game purchases β ensuring campaigns feel relevant rather than generic.
To legitimize whether Copilot is effectively targeting Gen Z β or just efficiently automating ad delivery β we must look beyond corporate claims.Β
Microsoftβs strategy relies on a βclosed loopβ of gaming data, social integration, and conversational signals.
Does this actually work for a generation that is famously resistant to traditional advertising?Β
The answer lies in the tension between utility and authenticity.
Microsoftβs claim that Copilot βcracks the codeβ is mechanically sound because it aligns with how Gen Z actually searches.
The shift from keywords to conversation
Data shows that Gen Z users write the longest search queries (avg. 5.83 words) and are the most likely to use complete sentences.
They treat search engines like companions, asking βWhat is the bestβ¦β rather than typing βbest shoes NYC.β
Legitimacy verdict: High. Copilot isnβt trying to force a behavior change. It is capitalizing on one that already exists.
By decoding these long, conversational queries, Microsoft captures intent often missed by a keyword approach alone.
Using Activision data to target users based on βplay stylesβ is a strong differentiator for Microsoft.
The reality: 90% of Gen Z second-screens (uses a phone while watching/playing on another screen). Traditional demographics (e.g., βMale, 18-24β) are failing because they are too broad.
The legitimacy test: Targeting a user because they play Overwatch (identifying them as team-oriented and strategic) vs. Call of Duty (identifying them as reactive and fast-paced) allows for psychographic targeting that feels βrelevantβ rather than βintrusive.β
The risk is that there is a fine line between βrelevantβ and βstalker-ish.βΒ
While Microsoftβs targeting is effective, 76% of Gen Z actively avoid ads, and privacy concerns are their top barrier to trusting AI platforms.Β
That said, the success of this strategy hinges on the ads feeling native to the experience, not like data extraction.
This is the weak point in the strategy. Microsoft claims Copilot helps bridge the βauthenticity gap,β but Gen Z is inherently skeptical of AI-generated content.
The conflict: Studies show that Gen Z can easily identify AI-generated ads and often labels them as βannoyingβ or βboringβ compared to human-created content.
The Snap integration: Embedding Copilot ads into Snapchatβs βMy AIβ is a double-edged sword. While it places ads in a trusted social space, it risks polluting a private sanctuary.Β
If βMy AIβ starts feeling like a corporate shill, users may abandon the feature entirely.
Legitimacy is mixed. The placement is correct (Snapchat, Games), but the content is at risk.Β
If advertisers use Copilot to auto-generate generic ad copy, it will fail. Success requires using the AI for targeting but keeping the creative 100% human.
The verdict: Is Microsoft effectively targeting Gen Z?
Dig deeper: How Gen Z is redefining discovery on TikTok, Pinterest, and beyond
The narrative from platforms like Microsoft Copilot is that AI-driven targeting creates a βclosed loopβ where better engagement drives cost savings.Β
As conversational AI reshapes how consumers interact with the web, advertising platforms are racing to translate natural language questions into actionable intent.Β
Microsoftβs Copilot serves as a prime case study of this shift, demonstrating how emerging assistants generate richer, multi-step queries that potentially reshape search economics from a volume game to one of precision.
For advertisers, this signals a fundamental transition: moving away from the broad βspray and prayβ tactics of keyword volume toward a model where conversational signals drive ROAS.
Dig deeper: The future of remarketing? Microsoft bets on impressions, not clicks

Marketing budgets in 2025 have stayed the same, yet expectations keep rising. CMOs report budgets stuck at roughly 7.7% of company revenue, which means teams are expected to do more with the same dollars. In that context, the most practical use of AI is not a moonshot, but a set of clear fixes to everyday bottlenecks that slow teams down and drive costs up.
This article breaks down four problems that marketers face right now and how AI is already solving them. The difference today is that Artlist AI, including image, video and voice generators, turns AI from a novelty into a reliable production system. When you use AI to streamline your workflow instead of chasing hype, you ship more creative, stay on brand and make decisions based on real performance data.Β
The problem: Video is still one of the most effective formats in a marketerβs toolkit, but teams feel the squeeze. Shorter formats dominate social feeds, content calendars never stopΒ and production bottlenecks turn into budget overruns. Teams need more output in less time.Β
Whatβs working: Marketers still see strong returns from video. Wyzowlβs 2024 study reports 90% of marketers say video delivers a good ROI, with 30β60 seconds rated the most effective length, perfect for social placements and paid tests. That supports a strategy shift that marketers need to ship more short pieces, produced in cycles measured in days instead of weeks.
This is exactly where Artlist AI leads. It helps teams to finish videos in hours not weeks, giving you more room to test, refine, and scale video output without sacrificing quality
Klarna recently publicly quantified its savings: about $10 million annually tied to AI in marketing, including a $6 million reduction in image production costs and much faster iteration cycles. While every teamβs baseline differs, the directional takeaway is strong and indicates that small time wins across dozens of workstreams add up to real money.Β

The problem: Global campaigns require many voices, languages and platform variations. Human recording sessions can create drift in tone and pacing, and late edits become expensive.
Whatβs working: Studio-grade text to speech models and voice cloning technology now produce narration that is indistinguishable from a human voice, even when using headphones. This makes versioning practical at scale while keeping quality consistent across dozens of outputs.
How AI helps:
Artlistβs AI voiceover gives you one brand voice you can trust, every time, across every market.Β
airBaltic, the national airline of Latvia, uses Artlistβs AI voiceover to speed production and experiment with tone and pacing, reporting that work that used to take many hours now moves much faster, with tighter control over fit and finish before publication. For a team managing constant route and fare updates, shaving hours off every revision adds meaningful capacity.
The problem: Marketers know more than most how feeds change daily. What worked last quarter may stall today. Marketers need more creative swings, which means more thumbnails, cuts, and captions, all without blowing the budget.
Whatβs working: Recent data points to one clear advantage: brands that test creative variations more frequently outperform those that donβt. A 2024 Nielsen study found that campaigns using three or more creative versions improved ad recall by up to 32%, while those refreshing assets monthly saw 17% higher click-through rates than static campaigns.Β
AI tools now make A/B testing much easier. Whether the changes are big or small, they are much less taxing, and keeping up with the increased cadence is possible by producing and refining short-form assets in hours instead of days. AI tools like video generators allow marketers to generate alternate visuals, swap voiceovers or localize content without requiring new studio sessions.
In 2023, Coca-Cola invited consumers to produce artwork and short videos using AI trained on its licensed brand assets. Within the first week, participants generated over 100,000 original pieces, driving more than 30% higher digital engagement that quarter. Internally, the companyβs marketing team analyzed those submissions to understand which visuals and tones drew the strongest responses. That feedback reshaped future campaign planning, trimming production time and improving message precision.
How AI helps:
Artlist AI lets you scale creative volume without scaling your budget, so you can test and learn faster.Β
Creative volume matters less than creative velocity. When teams can produce, test, and iterate at social speed, they turn marketing from a guessing game into a measured system of learning.

The problem: Marketers still rely heavily on vanity metrics, for example, views, likes and impressions, but they say little about actual persuasion. Traditional testing cycles are slow, and connecting creative choices to downstream results is often guesswork.
Whatβs working: AI analytics tools can now correlate creative elements like color palettes, pacing, tone or voice style, with engagement and conversion metrics. Instead of waiting for a quarterly attribution report, teams can see which versions perform best in near real time.
In 2024, Mondelez used AI-based video analysis to study over 12,000 ad variants across brands like Oreo and Cadbury. The company found that ads with warmer narration tones and moderate pacing drove 19% higher recall and 11% stronger purchase intent. Those insights were rolled back into production templates, improving both speed and consistency across markets. Mondelez also recently disclosed plans to reduce production costs by 30β50% using its generative-AI tool, with an investment of over U.S. $40 million and target rollout of AI-generated TV ads by the 2026 holiday season.
How AI helps:
For the first time, creative decisions such as voice choice, image framing and script tempo can be validated by behavioral data, not just opinion. That feedback loop helps marketers spend smarter and produce more resonant campaigns.
Marketers donβt need a grand reset to benefit from AI. The immediate wins are practical: faster video, full production cycles, steady brand voice across regions, more creative tests per month, tighter compliance and a relieved creative team. In a year when budgets are steady rather than expanding, those gains matter. The smartest teams ship smaller, learn quicker and document everything, turning AI from a headline into a dependable part of how they make and run campaigns.Β
If youβre ready to modernize your workflow and unlock real creative speed, talk to Artlistβs experts. Join 33 million creators using Artlist to produce high-volume, studio-level content without the studio cost, and see how Artlist AI can transform the way you work.Β


How you answer skeptical questions matters more than the questions themselves when links are at stake.
The post Improve Any Link Building Strategy With One Small Change appeared first on Search Engine Journal.
Five expert strategies for increasing visitors to informational sites and outperforming competitors.
The post Five Ways To Boost Traffic To Informational Sites appeared first on Search Engine Journal.
AMD unveils new low-power RX 9060 XT GPU model with 16GB of memory AMD has officially unveiled a new RDNA 4 GPU model: a low-power variant of the companyβs Radeon RX 9060 XT. This new RX 9060 XT LP GPU was first spotted by ITHOME, though it has also been listed on AMDβs website. This [β¦]
The post AMD unveils new Radeon RX 9060 XT LP GPU appeared first on OC3D.
Nvidia reportedly plans 30-40% cut in GeForce GPU production in early 2026 Recent reports have claimed that Nvidia intends to reduce its production capacity for GeForce RTX 50 series GPUs in the first half of 2026. These cuts are reportedly due to shortages of memory, not just GDDR7, but all memory types. 30-40% of Nvidiaβs [β¦]
The post Nvidia plans heavy cuts to GPU supply in early 2026 appeared first on OC3D.
Tired of fighting firewalls, port forwarding, and VPN servers just to access your own devices? Netrinos creates a private mesh network that connects all your devices as if they were in the same room. Install, log in, connected. WireGuard encryption, zero configuration. New in Pro: invite team members, control who can access what, and set up gateways to reach your NAS, printers, or home network from anywhere. 60-day free trial, no credit card required.
The post The Unseen Threat in Your Browser: Why AI Demands a Security Reckoning appeared first on StartupHub.ai.
Gartnerβs recent advisory, urging organizations to ban AI browsers from the workplace, has ignited a critical conversation within the cybersecurity community. This provocative stance, explored in a recent episode of IBMβs Security Intelligence podcast by host Matt Kosinski and panelists Austin Zeizel, Evelyn Anderson, and Ryan Anschutz, underscores a fundamental tension: the rapid innovation of [β¦]
The post The Unseen Threat in Your Browser: Why AI Demands a Security Reckoning appeared first on StartupHub.ai.
Meta could be set to make a big push to increase Verified uptake.

Draw, compose, and generate AI art on an infinite canvas
Powered by GPT Image 1.5: Faster, smarter, precise
The next era of multimodal AI for creators is here
The writing app for everything
Native macOS image viewer with tags & slideshow
Chat-powered polls, word clouds, quizzes for your PPT slides
Shared and synchronized AI memory + reasoning across teams
Turn every click, engagement, and conversion into growth.
The post AI Presentation Maker Transforms Research Workflow appeared first on StartupHub.ai.
Google's NotebookLM integrates an AI presentation maker, powered by Nano Banana Pro, to transform raw research into polished, visually engaging slide decks.
The post AI Presentation Maker Transforms Research Workflow appeared first on StartupHub.ai.
The post From Models to Agents The Next AI Frontier appeared first on StartupHub.ai.
The true inflection point in artificial intelligence is not merely the advent of large language models, but their rapid evolution into autonomous agents, capable of understanding context, intent, and orchestrating complex tasks. This profound shift, from static models to dynamic, decision-making entities, heralds a new era of enterprise AI, moving beyond mere chatbots to intelligent [β¦]
The post From Models to Agents The Next AI Frontier appeared first on StartupHub.ai.

BitterBot is a free AI agent that actually does the work for you. Instead of getting instructions on how to code something, BitterBot just builds it. It can create websites, analyze data, automate tasks, and manage files - all on its own. Just tell it what you want done and it figures out how to do it, no technical skills needed. Try it free at https://bitterbot.ai/
The post Google Cloudβs Agent Development Kit: Orchestrating Autonomous AI appeared first on StartupHub.ai.
The promise of artificial intelligence has long extended beyond simple query-response systems to truly autonomous entities capable of complex reasoning and action. Annie Wang, an AI expert, articulated this vision succinctly when she stated, βAn agent is essentially an LLM that can reason, act, and observe.β This fundamental shift, from a static language model to [β¦]
The post Google Cloudβs Agent Development Kit: Orchestrating Autonomous AI appeared first on StartupHub.ai.
Outlex is an AI-first legal operating system built for European startups navigating 27 jurisdictions. Our hybrid platform combines intelligent automation for routine legal work with seamless handoffs to vetted specialist lawyers when the stakes are high. Replace fragmented tools and β¬50K+ annual legal spend with a unified infrastructure that delivers 70% savings, 10x faster turnarounds, and complete transparencyβgiving founders peace of mind to focus on building
The post Wall Streetβs Data Center Dilemma: A Capital Expenditure Reckoning for AI appeared first on StartupHub.ai.
Wall Street has reached a stark conclusion regarding the massive buildout of AI data centers: companies are βpaying too much money to build out the data centers.β This pronouncement, delivered with characteristic fervor by Jim Cramer on CNBCβs Mad Money, signals a critical shift in investor sentiment, moving away from the unbridled enthusiasm that has [β¦]
The post Wall Streetβs Data Center Dilemma: A Capital Expenditure Reckoning for AI appeared first on StartupHub.ai.
Image carousels come to YouTube, just like every other app.
But can AI bots simulate, or even replicate, real life interaction?
Some new options for users with variable viewing needs.
Now you can watch Reels on your home TV set.Β
The post Educationβs AI Reckoning: Anthropic Navigates Light and Shade appeared first on StartupHub.ai.
Artificial intelligence is not merely changing education; it is acting as a βforcing function that makes everyone deal with it now,β as Maggie Vo, Head of Anthropicβs Ministry of Education, succinctly put it. This sentiment encapsulates the urgent yet nuanced conversation unfolding among the Anthropic team about AIβs profound impact on learning. In a recent [β¦]
The post Educationβs AI Reckoning: Anthropic Navigates Light and Shade appeared first on StartupHub.ai.
The post AI Funding Fears Overstated, Says Goldman Sachsβ Sung Cho appeared first on StartupHub.ai.
The prevailing market anxiety surrounding artificial intelligence funding, often fueled by dramatic shifts in corporate valuations and perceived vulnerabilities, is largely overstated. This was the central, reassuring message from Sung Cho, Co-head of Public Tech Investing and U.S. Fundamental Equity at Goldman Sachs Asset Management, during a recent discussion on CNBCβs βClosing Bellβ with Scott [β¦]
The post AI Funding Fears Overstated, Says Goldman Sachsβ Sung Cho appeared first on StartupHub.ai.
Apple's updated Safari browser enables site owners to more accurately track critical Core Web Vitals metrics.
The post Apple Safari Update Enables Tracking Two Core Web Vitals Metrics appeared first on Search Engine Journal.
Macs Fan Control puts you in charge of your Mac's cooling. It shows real-time temperature readings and lets you fine-tune fan speeds to balance performance, heat, and noise. Windows users looking for similar fan control may want to check out SpeedFan.
Mutually isnβt just another swipe app. Itβs a smarter way to meet people who match your mindset, taste, and energy. Mutually connects you with others based on your digital footprint. Whether youβre looking for new friends or something more, youβll discover people who share your passions, playlists, and personality.
Why Mutually stands out β’ Find people who actually share your interests β’ Authentic profiles powered by your favorite platforms β’ Quick matches through QR codes β’ Separate modes for friends and dating β’ Built-in chat for real conversations, not small talk Discover your crowd. Deepen your connections. Find your Mutualize.
The post AI Data Centers Face Rising Political Heat Over Energy Costs appeared first on StartupHub.ai.
The burgeoning demand for artificial intelligence infrastructure is colliding with a formidable, rapidly evolving political headwind: the escalating energy consumption of data centers and its direct impact on household utility costs. This friction, highlighted in a recent CNBC discussion between TechCheck Anchor Deirdre Bosa and anchor Kelly Evans, underscores a critical shift in how the [β¦]
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The post Salesforce Agentic AI Redefines Sales Productivity appeared first on StartupHub.ai.
Salesforce Agentic AI is poised to redefine sales productivity by empowering teams with intelligent automation and data-driven insights, especially for SMBs.
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The post ContextForge MCP Gateway: the MCP router for AI agents appeared first on StartupHub.ai.
IBMβs open-source ContextForge MCP Gateway positions itself as an enterprise-ready MCP router for AI agents, sitting between LLM-driven applications and the tools and data they need. Framed as a secure Model Context Protocol gateway, it turns a sprawl of MCP servers and REST endpoints into a single, governed interface that AI agents can call without [β¦]
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The post AIβs Concentrated Talent War and a Precarious Labor Market appeared first on StartupHub.ai.
The ongoing βAI talent war continues in tech without generating many jobs,β according to Diane Swonk, Chief Economist at KPMG, highlighting a significant paradox at the heart of the current economic landscape. This keen observation from Swonk, made during a recent appearance on CNBCβs βThe Exchangeβ alongside Kelly Evans and Scott Wapner, cuts through the [β¦]
The post AIβs Concentrated Talent War and a Precarious Labor Market appeared first on StartupHub.ai.
Ginny Marvin, Googleβs Ads Liaison, is clarifying how keyword match types interact with AI Overviews (AIO) and AI Mode ad placements β addressing ongoing confusion among advertisers testing AI Max and mixed match-type setups.
Why we care. As ads expand into AI-powered placements, advertisers need to understand which keywords are eligible to serve β and when β to avoid unintentionally blocking reach or misreading performance.
Back in May. Responding to questions from Marketing Director Yoav Eitani, Marvin confirmed that an ad can serve either above or below an AI Overview or within the AI Overview β but not both in the same auction:

While both exact and broad match keywords can be eligible to trigger ads above or below AIO, only broad match keywords (or keywordless targeting) are eligible to trigger ads within AI Overviews.
Whatβs changed. In a follow-up exchange with Paid Search specialist Toan Tran, Marvin clarified that Google has updated how eligibility works. Previously, the presence of an exact match keyword could prevent a broad match keyword from serving in AI Overviews. That is no longer the case.
Since exact and phrase match keywords are not eligible for AI Overview placements, they do not compete with broad match keywords in that auction β meaning broad match can still trigger ads within AIO even when the same keyword exists as exact match.
The big picture. Google is reinforcing a clear separation between traditional keyword matching and AI-powered intent matching. Ads in AI Overviews rely on a deeper understanding of both the user query and the AI-generated content, which is why eligibility is limited to broader targeting signals.
The bottom line. Exact and phrase match keywords wonβt show ads in AI Overviews β but they also wonβt block broad match from doing so. For advertisers leaning into AI Max and AIO placements, broad match and keywordless strategies are now essential to unlocking reach in Googleβs AI-driven surfaces.
The post ChatGPT Images Unleashes Unprecedented Visual Agility appeared first on StartupHub.ai.
The latest iteration of ChatGPT Images, powered by OpenAIβs new flagship image generation model, GPT Image 1.5, signals a profound shift in the accessibility and flexibility of visual content creation. This release, demonstrated through a dynamic visual showcase, moves beyond simple image generation to offer sophisticated editing and stylistic transformations that were once the exclusive [β¦]
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The post The 2026 AI predictions: Why infrastructure will fail, but apps will fly. appeared first on StartupHub.ai.
While Big Tech faces supply chain bottlenecks and AGI timelines push into the 2030s, AI application startups are set to achieve unprecedented scale in 2026.
The post The 2026 AI predictions: Why infrastructure will fail, but apps will fly. appeared first on StartupHub.ai.
The post OpenAIβs new ChatGPT Images is 4x faster and more precise: Everything you need to know appeared first on StartupHub.ai.
The new ChatGPT Images, powered by GPT Image 1.5, delivers 4x faster generation speeds and crucial improvements in editing consistency and text rendering.
The post OpenAIβs new ChatGPT Images is 4x faster and more precise: Everything you need to know appeared first on StartupHub.ai.
The post AIβs Unseen Cost: Political Pressure Mounts on Data Center Energy Demands appeared first on StartupHub.ai.
The burgeoning computational demands of artificial intelligence are rapidly colliding with public policy and local politics, as highlighted in a recent CNBC βMoney Moversβ segment. CNBC Business News TechCheck Anchor Deirdre Bosa reported on growing political pressure stemming from the massive energy consumption of AI data centers, revealing a new front of risk for the [β¦]
The post AIβs Unseen Cost: Political Pressure Mounts on Data Center Energy Demands appeared first on StartupHub.ai.
The post Your Support Team Should Ship Code β Lisa Orr, Zapier appeared first on StartupHub.ai.
Lisa Orr, Product Leader at Zapier, shared a compelling narrative about how her company is leveraging artificial intelligence to transform its support operations, enabling the support team to actively ship code. The core problem was the sheer volume of support tickets generated by API changes, overwhelming traditional support workflows. Zapierβs journey began with a clear [β¦]
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Google rapidly expanded AI Overviews in search during 2025, then pulled back as they moved into commercial and navigational queries. These findings are based on a new Semrush analysis of more than 10 million keywords from January to November.
AI Overviews surged, then retreated. Google didnβt roll out AI Overviews in a straight line in 2025. A mid-year spike gave way to a pullback, suggesting Google moved fast to test the feature, then eased off based on user data:
Zero-click behavior defied expectations. Surprisingly, click-through rates for keywords with AI Overviews have steadily risen since January. AI Overviews donβt automatically reduce clicks and may even encourage them.
Informational queries no longer dominate. Early 2025 AI Overviews were almost entirely informational:
Now, AI Overviews are appearing for commercial and transactional queries:
Navigational queries are rising fast. In an unexpected shift, AI summaries are increasingly intercepting brand and destination searches:
Google Ads + AI Overviews. Earlier this year, ads rarely appeared next to AI Overviews. Now theyβre common:
Science is the most impacted industry. By keyword saturation, Science leads all verticals for AI Overviews at 25.96%. Computers & Electronics follows at 17.92%, with People & Society close behind at 17.29%.
Why we care. AI Overviews are unevenly and persistently reshaping click behavior, commercial visibility, and ad placement. Volatility is likely to continue, so closely monitor performance shifts tied to AI Overviews.
The report. Semrush AI Overviews Study: What 2025 SEO Data Tells Us About Googleβs Search Shift
Dig deeper. In May, I reported on the original version of Semrushβs study in Google AI Overviews now show on 13% of searches: Study.

Hotfix 8 for Ghost of Tsushima adds FSR ML Frame Generation to the game Nixxes Software has released its βPatch 8 Hotfixβ for Ghost of Tsushimaβs PC version, adding support for AMD FSR ML Frame Generation. This new Frame Generation technique is part of AMDβs FSR βRedstoneβ update. With this update, users of AMDβs Radeon [β¦]
The post Nixxes updates Ghost of Tsushima to enable FSR ML Frame Generation appeared first on OC3D.
Rec'd is a social discovery platform, turning trusted social signals into personalised recommendations. Right now people use multiple apps to discover places, save them, verify them and book. Rec'd integrates this process into one, powerful, AI based app that lets people discover the way they want, saving into one clean and intelligent platform.
The post AI Liberation: Unlocking Potential Beyond βSecurity Theaterβ appeared first on StartupHub.ai.
The prevailing narrative around artificial intelligence often centers on the race for capability, but a recent discussion on the Latent Space podcast unveiled a contrasting, equally vital perspective: the imperative of liberation and radical transparency in AI development. Pliny the Liberator, renowned for his βuniversal jailbreaksβ that dismantle the guardrails of frontier models, and John [β¦]
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The post Greylockβs Enduring Legacy: People, Principles, and the AI Frontier appeared first on StartupHub.ai.
Greylock Partners, a venture capital firm celebrating its 60th anniversary this year, offers a compelling study in enduring success through relentless adaptation and an unwavering commitment to core principles. In a recent episode of Uncapped with Jack Altman, General Partner Saam Motamedi, one of Greylockβs youngest partners, delved into the foundational elements that have allowed [β¦]
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The post What We Learned Deploying AI within Bloombergβs Engineering Organization β Lei Zhang, Bloomberg appeared first on StartupHub.ai.
βThe reality of applying AI at scale inside a mature engineering organization is far more complex and nuanced,β stated Lei Zhang, Head of Technology Infrastructure Engineering at Bloomberg, during a recent discussion. Zhang, speaking about Bloombergβs extensive experience integrating AI into the workflows of over 9,000 software engineers, offered a candid look at the practical [β¦]
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The post The AI Memory Wars Heat Up Around Video appeared first on StartupHub.ai.
Video has become a dominant signal on the internet. It powers everything from Netflixβs $82 billion Warner Bros Discovery acquisition to the sensor streams feeding warehouse robots and city surveillance grids. Yet beneath this sprawl, AI systems are hitting a wall in that they can tag clips and rank highlights, but they struggle to remember [β¦]
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The post New EWA study results suggest on-demand pay boosts income appeared first on StartupHub.ai.
Independent EWA study results analyzing over one million EarnIn users suggest that flexible access to earned wages increases monthly income by 11.5 percent.
The post New EWA study results suggest on-demand pay boosts income appeared first on StartupHub.ai.
We are navigating the βsearch everywhereβ revolution β a disruptive shift driven by generative AI and large language models (LLMs) that is reshaping the relationship between brands, consumers, and search engines.
For the last two decades, the digital economy ran on a simple exchange: content for clicks.Β
With the rise of zero-click experiences, AI Overviews, and assistant-led research, that exchange is breaking down.
AI now synthesizes answers directly on the SERP, often satisfying intent without a visit to a website.Β
Platforms such as Gemini and ChatGPT are fundamentally changing how information is discovered.Β
For enterprises, visibility increasingly depends on whether content is recognized as authoritative by both search engines and AI systems.
That shift introduces a new goal β to become the source that AI cites.
A content knowledge graph is essential to achieving that goal.Β
By leveraging structured data and entity SEO, brands can build a semantic data layer that enables AI to accurately interpret their entities and relationships, ensuring continued discoverability in this evolving economy.
This article explores:
To become a source that AI cites, itβs essential to understand how traditional search differs from AI-driven search.
Traditional search functioned much like software as a service.Β
It was deterministic, following fixed, rule-based logic and producing the same output for the same input every time.
AI search is probabilistic.Β
It generates responses based on patterns and likelihoods, which means results can vary from one query to the next.Β
Even with multimodal content, AI converts text, images, and audio into numerical representations that capture meaning and relationships rather than exact matches.
For AI to cite your content, you need a strong data layer combined with context engineering β structuring and optimizing information so AI can interpret it as reliable and trustworthy for a given query.
As AI systems rely increasingly on large-scale inference rather than keyword-driven indexing, a new reality has emerged: the cost of comprehension.Β
Each time an AI model interprets text, resolves ambiguity, or infers relationships between entities, it consumes GPU cycles, increasing already significant computing costs.
A comprehension budget is the finite allocation of compute that determines whether content is worth the effort for an AI system to understand.
For content to be cited by AI, it must first be discovered and understood.Β
While many discovery requirements overlap with traditional search, key differences emerge in how AI systems process and evaluate content.

Your siteβs infrastructure must allow AI engines to crawl and access content efficiently.Β
With limited compute and a finite comprehension budget, platform architecture matters.Β
Enterprises should support progressive crawling of fresh content through IndexNow integration to optimize that budget.
Ideally, this capability is native to the platform and CMS.
Before creating content, you need an entity strategy that accurately and comprehensively represents your brand.Β
Content should meet audience needs and answer their questions.Β
Structuring content around customer intent, presenting it in clear βchunks,β and keeping it fresh are all important considerations.
Dig deeper: Chunk, cite, clarify, build: A content framework for AI search
Schema markup, clean information architecture, consistent headings, and clear entity relationships help AI engines understand both individual pages and how multiple pieces of content relate to one another.Β
Rather than forcing models to infer what a page is about, who it applies to, or how information connects, businesses make those relationships explicit.
AI engines, like traditional search engines, prioritize authoritative content from trusted sources.Β
Establishing topical authority is essential. For location-based businesses, local relevance and authority are also critical to becoming a trusted source.
Many enterprises claim to use schema but see no measurable lift, leading to the belief that schema doesnβt work.Β
The reality is that most failures stem from basic implementations or schema deployed with errors.
Tags such as Organization or Breadcrumb are foundational, but they provide limited insight into a business.Β
Used in isolation, they create disconnected data points rather than a cohesive story AI can interpret.
The more AI knows about your business, the better it can cite it.Β
A content knowledge graph is a structured map of entities and their relationships, providing reliable information about your business to AI systems.
Deep nested schema plays a central role in building this graph.

A deep nested schema architecture expresses the full entity lineage of a business in a machine-readable form.
In resource description framework (RDF) terms, AI systems need to understand that:
By fully nesting entities β Organization β Brand β Product β Offer β PriceSpecification β Review β Person β you publish a closed-loop content knowledge graph that models your business with precision.
Dig deeper: 8 steps to a successful entity-first strategy for SEO and content

In βHow to deploy advanced schema at scale,β I outlined the full process for effective schema deployment β from developing an entity strategy through deployment, maintenance, and measurement.
At the enterprise level, facts change constantly, including product specifications, availability, categories, reviews, offers, and prices.Β
If structured data, entity lineage, and topic clusters do not update dynamically to reflect these changes, AI systems begin to detect inconsistencies.
In an AI-driven ecosystem where accuracy, coherence, and consistency determine inclusion, even small discrepancies can erode trust.
Manual schema management is not sustainable.
The only scalable approach is automation β using a schema management solution aligned with your entity strategy and integrated into your discovery and marketing flywheel.
As keyword rankings lose relevance and traffic declines, you need new KPIs to evaluate performance in AI search.
Dig deeper: 7 focus areas as AI transforms search and the customer journey in 2026
The web is shifting from a βreadβ model to an βactβ model.
AI agents will increasingly execute tasks on behalf of users, such as booking appointments, reserving tables, or comparing specifications.
To be discovered by these agents, brands must make their capabilities machine-callable. Key steps to prepare include:
Brands that are callable are the ones that will be found. Acting early provides a compounding advantage by shaping the standards agents learn first.
Use this checklist to evaluate whether your entity strategy is operational, scalable, and aligned with AI discovery requirements.

Your martech stack must align with the evolving customer discovery journey.Β
This requires a shift from treating schema as a point solution for visibility to managing a holistic presence with total cost of ownership in mind.
Data is the foundation of any composable architecture.Β
A centralized data repository connects technologies, enables seamless flow, breaks down departmental silos, and optimizes cost of ownership.
This reduces redundancy and improves the consistency and accuracy AI systems expect.
When schema is treated as a point solution, content changes can break not only schema deployment but the entire entity lineage.Β
Fixing individual tags does not restore performance. Instead, multiple teams β SEO, content, IT, and analytics β are pulled into investigations, increasing cost and inefficiency.
The solution is to integrate schema markup directly into brand and entity strategy.
When structured content changes, it should be:
This enables faster recovery and lower compute overhead.
Integrating schema into your entity lineage and discovery flywheel helps optimize total cost of ownership while maximizing efficiency.
Several core requirements define AI readiness.

Together, these efforts make your omnichannel strategy more durable while reducing total cost of ownership across the technology stack.
Thanks to Bill Hunt and Tushar Prabhu for their contributions to this article.
Googleβs pitch for AI-powered bidding is seductive.
Feed the algorithm your conversion data, set a target, and let it optimize your campaigns while you focus on strategy.Β
Machine learning will handle the rest.
What Google doesnβt emphasize is that its algorithms optimize for Googleβs goals, not necessarily yours.Β
In 2026, as Smart Bidding becomes more opaque and Performance Max absorbs more campaign types, knowing when to guide the algorithm β and when to override it β has become a defining skill that separates average PPC managers from exceptional ones.
AI bidding can deliver spectacular results, but it can also quietly destroy profitable campaigns by chasing volume at the expense of efficiency.Β
The difference is not the technology. It is knowing when the algorithm needs direction, tighter constraints, or a full override.
This article explains:
Smart Bidding comes in several strategies, including:
Each uses machine learning to predict the likelihood of a conversion and adjust bids in real time based on contextual signals.
The algorithm analyzes hundreds of signals at auction time, such as:
It compares these signals with historical conversion data to calculate an optimal bid for each auction.
During the βlearning period,β typically seven to 14 days, the algorithm explores the bid landscape, testing bid levels to understand the conversion probability curve.Β
Google recommends patience during this phase, and in general, that advice holds. The algorithm needs data.
The first problem is that learning periods are not always temporary.Β
Some campaigns get stuck in perpetual learning and never achieve stable performance.
Dig deeper: When to trust Google Ads AI and when you shouldnβt
The algorithm optimizes for metrics that drive Googleβs revenue, not necessarily your profitability.
When a Target ROAS of 400% is set, the algorithm interprets that as βmaximize total conversion value while maintaining a 400% average ROAS.βΒ
Notice the word βmaximize.β
The system is designed to spend the full budget and, ideally, encourage increases over time.Β
More spend means more revenue for Google.
Business goals are often different.Β
You may want a 400% ROAS with a specific volume threshold.Β
You may need to maintain margin requirements that vary by product line.Β
Or you may prefer a 500% ROAS at lower volume because fulfillment capacity is constrained.
The algorithm does not understand this context.Β
It sees a ROAS target and optimizes accordingly, often pushing volume at the expense of efficiency once the target is reached.
This pattern is common. An algorithm increases spend by 40% to deliver 15% more conversions at the target ROAS. Technically, it succeeds.Β
In practice, cash flow cannot support the higher ad spend, even at the same efficiency.Β
The algorithm does not account for working capital constraints.
AI bidding works well, but it has limits.Β
Without intervention, several factors canβt be fully accounted for.
Seasonal patterns not yet reflected in historical data
Launch a campaign in October, and the algorithm has no visibility into a December peak season.
It optimizes based on October performance until December data proves otherwise, often missing early seasonal demand.
Product margin differences
A $100 sale of Product A with a 60% margin and a $100 sale of Product B with a 15% margin look identical to the algorithm.Β
Both register as $100 conversions. The business impact, however, is very different.Β
This is where profit tracking, profit bidding, and margin-based segmentation matter.
Customer lifetime value variations
Unless lifetime value modeling is explicitly built into conversion values, the algorithm treats a first-time customer the same as a repeat buyer.Β
In most accounts, that modeling does not exist.
Market and competitive changes
When a competitor launches an aggressive promotion or a new entrant appears, the algorithm continues bidding based on historical conditions until performance degrades enough to force adjustment.Β
Market share is often lost during that lag.
Inventory and supply chain constraints
If a best-selling product is out of stock for two weeks, the algorithm may continue bidding aggressively on related searches because of past performance.Β
The result is paid traffic that cannot convert.
This is not a criticism of the technology. Itβs a reminder that the algorithm optimizes only within the data and parameters provided.Β
When those inputs fail to reflect business reality, optimization may be mathematically correct but strategically wrong.
Learning periods are normal. Extended learning periods are red flags.
If your campaign shows a βLearningβ status for more than two weeks, something is broken.Β
Common causes include:
When to intervene
If learning extends beyond three weeks, either:
Sometimes the algorithm is simply telling you it does not have enough data to succeed.
Healthy AI bidding campaigns show relatively smooth budget pacing.Β
Daily spend fluctuates, but it stays within reasonable bounds.Β
Problematic patterns include:
Budget pacing is a proxy for algorithm confidence.Β
Smooth pacing suggests the system understands your conversion landscape.Β
Erratic pacing usually means it is guessing.
This is the most dangerous pattern. Performance starts strong, then gradually or suddenly deteriorates.
This shows up often in Target ROAS campaigns.Β
What happened?Β
The algorithm exhausted the most efficient audience segments and search terms.Β
To keep growing volume β because it is designed to maximize β it expanded into less qualified traffic.Β
Broad match reached further. Audiences widened. Bid efficiency declined.
Sometimes the numbers look fine, but qualitative signals tell a different story.Β
These quality signals do not directly influence optimization because they are not part of the conversion data.Β
To address them, the algorithm needs constraints: bid adjustments, audience exclusions, or ad scheduling.
The search terms report is the truth serum for AI bidding performance.Β
Export it regularly and look for:
A high-end furniture retailer should not spend $8 per click on βfree furniture donation pickup.βΒ
A B2B software company targeting βproject management softwareβ should not appear for βproject manager jobs.βΒ
These situations occur when the algorithm operates without constraints.Β
Keyword matching is also looser than it was in the past, which means even small gaps can allow the system to bid on queries you never intended to target.
Dig deeper: How to tell if Google Ads automation helps or hurts your campaigns
One-size-fits-all AI bidding breaks down when a business has diverse economics.Β
The solution is segmentation, so each algorithm optimizes toward a clear, coherent goal.
Separate high-margin products β 40%+ margin β into one campaign with more aggressive ROAS targets, and low-margin products β 10% to 15% margin β into another with more conservative targets.Β
If the Northeast region delivers 450% ROAS while the Southeast delivers 250%, separate them.Β
Brand campaigns operate under fundamentally different economics than nonbrand campaigns, so optimizing both with the same algorithm and target rarely makes sense.
Segmentation gives each algorithm a clear mission. Better focus leads to better results.
Pure automation is not always the answer.Β
In many cases, hybrid approaches deliver better results.
The most effective setups combine AI bidding with manual control campaigns.
Allocate 70% of the budget to AI bidding campaigns, such as Target ROAS or Maximize Conversion Value, and 30% to Enhanced CPC or manual CPC campaigns.Β
Manual campaigns act as a baseline. If AI underperforms manual by more than 20% after 90 days, the algorithm is not working for the business.
Use tightly controlled manual campaigns to capture the most valuable traffic β brand terms and high-intent keywords β while AI campaigns handle broader prospecting and discovery.Β
This approach protects the core business while still exploring growth opportunities.
Google now allows advertisers to report cost of goods sold, or COGS, and detailed cart data alongside conversions.Β
This is not about bidding yet, but seeing true profitability inside Google Ads reporting.
Most accounts optimize for revenue, or ROAS, not profit.Β
A $100 sale with $80 in COGS is very different from a $100 sale with $20 in COGS, but standard reporting treats them the same.Β
With COGS reporting in place, actual profit becomes visible, dramatically improving the quality of performance analysis.
To set it up, conversions must include cart-level parameters added to existing tracking.Β
These typically include item ID, item name, quantity, price, and, critically, the cost_of_goods_sold parameter for each product.
Google is testing a bid strategy that optimizes for profit instead of revenue.Β
Access is limited, but advertisers with clean COGS data flowing into Google Ads can request entry.Β
In this model, bids are optimized around actual profit margins rather than raw conversion value.Β
This is especially powerful for retailers with wide margin variation across products.
For advertisers without access to the beta, a custom margin-tracking pixel can be implemented manually. It is more technical to set up, but it achieves the same outcome.
Dig deeper: Margin-based tracking: 3 advanced strategies for Google Shopping profitability
AI bidding works best when the fundamentals are in place:Β
In these conditions, AI bidding often outperforms manual management by processing more signals and making more granular optimizations than humans can execute at scale.
This tends to be true in:
When those conditions hold, the role shifts.
Bid management gives way to strategic oversight β monitoring trends, identifying expansion opportunities, and testing new structures.
The algorithm then handles tactical optimization.
Google is steadily reducing advertiser control under the banner of automation.Β
For advertisers with complex business models or specific strategic goals, this loss of granularity creates tension.Β
You are often asked to trust the algorithm even when business context suggests a different decision.
That shift changes the role. You are no longer a bid manager.Β
You are an AI strategy director who:
No matter how advanced AI bidding becomes, certain decisions still require human judgment.Β
Strategic positioning β which markets to enter and which product lines to emphasize β cannot be automated.Β
Neither can creative testing, competitive intelligence, or operational realities like inventory constraints, margin requirements, and broader business priorities.
This is not a story of humans versus AI. It is humans directing AI.
Dig deeper: 4 times PPC automation still needs a human touch
AI-powered bidding is the most powerful optimization tool paid media has ever had.Β
When conditions are right β sufficient data, a stable business model, and clean tracking β it delivers results manual management cannot match.
But it is not magic.
The algorithm optimizes for mathematical targets within the data you provide.Β
If business context is missing from that data, optimization can be technically correct and strategically wrong.Β
If markets change faster than the system adapts, performance erodes.Β
If your goals diverge from Googleβs revenue incentives, the algorithm will pull in directions that do not serve the business.
The job in 2026 is not to blindly trust automation or stubbornly resist it.Β
It is to master the algorithm β knowing when to let it run, when to guide it with constraints, and when to override it entirely.
The strongest PPC leaders are AI directors. They do not manage bids. They manage the system that manages bids.

The post Billionaire CRE Developer Warns of Data Center Finance Risks appeared first on StartupHub.ai.
The burgeoning demand for artificial intelligence has ignited a gold rush in data center development, but for seasoned commercial real estate (CRE) billionaire Fernando De Leon, this frenetic activity bears unsettling resemblances to past market excesses. De Leon, CEO of Leon Capital Group, recently spoke with CNBC Senior Real Estate Correspondent Diana Olick on the [β¦]
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The post Lazard CEO: U.S. economy increasingly a levered bet on AI appeared first on StartupHub.ai.
Lazard CEO Peter Orszag joined CNBCβs βSquawk Boxβ to discuss the current state of the economy, the impact of the AI boom, and the broader implications for businesses and employment. He articulated a bifurcated economic landscape where AI-driven sectors are experiencing significant growth, contrasted with other areas that are not seeing the same level of [β¦]
The post Lazard CEO: U.S. economy increasingly a levered bet on AI appeared first on StartupHub.ai.
The post Data 360 Powers Trusted AI: A New Foundation for ISVs appeared first on StartupHub.ai.
Salesforce's Data 360, now generally available, provides ISVs with a critical unified data foundation essential for developing and deploying trusted AI solutions.
The post Data 360 Powers Trusted AI: A New Foundation for ISVs appeared first on StartupHub.ai.
Shopify powers more than 6 million live ecommerce websites, supported by a robust app ecosystem that can extend nearly every part of the customer journey.Β
Anyone can develop an app to perform virtually any function.Β
But with so many integrations to choose from, ecommerce teams often waste time testing add-ons that promise revenue gains but fail to deliver.
Having worked across a wide range of Shopify implementations, Iβve seen which tools consistently improve checkout completion, recover abandoned carts, and increase revenue.Β
Based on that experience, Iβve organized the most effective integrations into three tiers by priority β so you can implement the essentials first, then move on to more advanced optimization.
With 54.5% of holiday purchases happening on mobile, the ecommerce experience must be seamless and flexible.Β
As a result, every Shopify site should have two components integrated into its storefront:Β
Without these in place, Shopify users introduce unnecessary friction into the purchase journey and risk sending customers to competitors.Β
The good news is that both components integrate natively with Shopify, requiring no custom development.
Digital wallets, such as Apple Pay, Google Pay, and PayPal, autofill delivery and payment information with a single click, eliminating the friction of typing on a small screen.Β
This ease of use can shorten the purchase journey to just a few clicks between a social ad and checkout.
Adoption is accelerating. Up to 64% of Americans use digital wallets at least as often as traditional payment methods, and 54% use them more often.
Beyond payment convenience, customers also expect flexibility.Β
BNPL providers, including Klarna and Afterpay, allow buyers to spread payments over time, reducing price objections at checkout.Β
These options contributed $18.2 billion to online spending during last yearβs holiday season β an all-time high, according to Adobe.
Together, digital wallets and BNPL form the foundation of a modern, mobile-first checkout experience.Β
With these essentials in place, Shopify users can focus on tools that re-engage customers and bring them back to complete their purchases.
Dig deeper: The ultimate Shopify SEO and AI readiness playbook
The second tier focuses on re-engagement β tools designed to bring back customers who have already shown intent.Β
These integrations improve abandoned-cart recovery, increase repeat purchases, and build trust through social proof.
Email remains one of the most effective channels for re-engaging customers at every stage of the journey.Β
Klaviyo and Attentive are strong options for Shopify users because both offer deep platform integration with minimal setup.
Both platforms also support SMS, allowing Shopify sellers to send automated text messages directly to customersβ mobile devices.Β
SMS consistently delivers higher open, click-through, and conversion rates than email, making it especially effective for re-engagement use cases such as abandoned-cart recovery.
Together, these tools enable targeted campaigns and sophisticated automated flows that drive incremental revenue.Β
However, CAN-SPAM and TCPA regulations require explicit opt-in for email and SMS marketing, respectively.Β
As a result, sellers can only use these channels to contact customers who have agreed to receive marketing messages.
While Attentive and Klaviyo effectively reach customers who have opted in to marketing, CartConvert helps sellers engage the 50% to 60% of shoppers who have not.Β
The platform uses real people to contact cart abandoners via SMS. Because the outreach is not automated, TCPA restrictions do not apply.
CartConvert agents have live conversations with potential customers about their shopping experience.Β
They are familiar with the products and can guide buyers back toward a purchase by suggesting alternatives or offering discounts.Β
Running CartConvert alongside Klaviyo or Attentive ensures both subscribers and non-subscribers are included in re-engagement efforts.
Human-centered marketing also plays a role in building buyer confidence.Β
Todayβs online shoppers rely heavily on reviews when making purchasing decisions.Β
When reviews are integrated directly into the shopping experience, they help establish trust and legitimacy, which in turn drive higher conversion rates.Β
A product with five reviews is 270% more likely to be purchased than one with no reviews, research from the Spiegel Research Center at Northwestern University found.
Shopify users can choose from several review aggregators that pull Google reviews into product pages.Β
Sellers should prioritize aggregators that also sync with Google Merchant Center, which powers Google Ads.Β
Tools such as Okendo, Yotpo, and Shopper Approved integrate smoothly with both Shopify and Googleβs ecosystem.
When reviews sync with Merchant Center, they can appear in Google Shopping ads, improving ad performance.Β
While these tools add cost, they are also proven to generate incremental revenue that offsets the investment.
Dig deeper: How to make ecommerce product pages work in an AI-first world
The final tier includes more advanced integrations designed to help sellers optimize their sales funnel and performance at scale.
GA4βs changes to reporting, session logic, and interface have made attribution more difficult for many ecommerce teams.Β
As a result, sellers are increasingly seeking clearer, independent performance insights.
Since 2023, Triple Whale has emerged as a leading alternative to Google Analytics, offering third-party attribution tools that integrate seamlessly with Shopify.Β
The platform supports multiple attribution models β including first-click, last-click, and linear β along with cross-platform cost integration.
It also provides real-time data, which Google Analytics does not.Β
This capability becomes especially valuable during high-pressure sales periods, such as Black Friday, when delayed reporting can lead to missed opportunities.
Although Triple Whale can cost up to $10,000 annually for mid-size brands, the improved data quality often justifies the investment for teams scaling paid acquisition.
For sellers focused on improving conversion rates, landing page testing is essential.Β
While Shopify is relatively easy to use, making changes to a live storefront for A/B testing carries the risk of breaking the site.
Replo allows Shopify users to build custom landing pages that can be tested at scale without coding.Β
These pages typically provide a better user experience than default Shopify themes.Β
It can also use site data to personalize landing pages based on a shopperβs browsing history.Β
As a result, Replo-built pages often convert at higher rates than static site pages.
TikTok continues to grow as a paid media channel, but it has traditionally presented a higher barrier to entry for advertisers.Β
Previously, sellers needed an active TikTok account and could only purchase ads within the app, adding complexity and cost.
TikTokβs Shopify integration allows sellers to create ads that link directly to their websites, rather than keeping users inside the app.Β
This change has lowered the barrier to entry and expanded access to the platform.Β
Early testing shows promise for use cases such as cart abandonment, making the integration worth exploring despite its relative immaturity.
Dig deeper: Ecommerce SEO: Start where shoppers search
Shopify is a powerful platform for ecommerce, but maximizing results requires going beyond its default features.Β
Sellers do not need to implement every solution at once.Β
Instead, conduct a quick audit of the existing stack against this framework, identify gaps, and prioritize the tools that improve conversion and re-engagement.Β
Shopifyβs flexibility is its greatest strength, and its app ecosystem enables sellers to turn more visitors into buyers.
Optimizing for AI search is βthe sameβ as optimizing for traditional search, Google SVP of Knowledge and Information Nick Fox said in a recent podcast. His advice was simple: build great sites with great content for your users.
More details. Fox made the point on the AI Inside podcast, during an interview with Jason Howell and Jeff Jarvis. Here is the transcript from the 22 minute mark:
Jarvis: βIs there guidance for enlightened publishers who want to be part of AI about how they should view, should they view their content in any way differently now?β
Fox: βThe short answer is no. The short answer is what you would have built and the way to optimize to do well in Googleβs AI experiences is very similar, I would say the same, as how to perform well in traditional search. And it really does come down to build a great site, build great content. The way we put it is: build for users. Build what you would want to read, what you would want to access.β
Why we care. Many of you have been practicing SEO for many years, and now with this AI revolution in Search, you should know you are very well equipped to perform well in AI Search with many, if not all, of the skills you learned doing SEO. So have at it.
The video. Is AI Search Hurting The Open Web? With Googleβs Nick Fox // AI InsideΒ #104

We celebrated a major milestone in June: the return of SMX Advanced as an in-person event. It was our first since 2019.
More than a conference, SMX Advanced 2025 was a reunion. Search marketers from around the world came together to connect, exchange ideas, and learn the most current and advanced insights in search.
But search never stands still. With rapid shifts in AI SEO, constant algorithm changes, and the challenge of balancing generative AI with a human touch, the need for truly advanced, actionable education has never been greater.
Weβre committed to making the SMX Advanced 2026 program our most relevant, advanced, and exciting deep-dive experience yet. And we canβt do it without you β the expert community that makes this event legendary.
Weβre inviting you to directly shape the curriculum for 2026.
Help us build a program that tackles the biggest challenges and opportunities on your radar by completing our short survey. Tell us:
Fill out the survey here.
To thank you for your time and insights, everyone who completes the survey will have the opportunity to enter an exclusive drawing.
One lucky participant will win a coveted All Access pass to SMX Advanced 2026, taking place June 3-5 at the Westin Boston Seaport.
Beyond shaping the agenda, we also invite you to submit a session pitch. If you have a breakthrough strategy, an innovative case study, or next-level insights, this is your chance to help lead the industry conversation.
Read our guide to speaking at SMX for more details on how to submit a session idea. When youβre ready, create your profile and send us your session pitch.
We look forward to your submissions and insights! If you have any questions, feel free to reach out to me at kathy.bushman@semrush.com.

High DDR5 pricing is causing AMD/AM4 CPU price rises Consumer-grade DDR5 memory modules have seen priceΒ increases ofΒ 178-258%, forcing PC builders to consider alternative upgrade paths. Instead of moving to newer DDR5 platforms, some PC builders are upgrading to AMDβs DDR4-based AM4 platform. Why? The answer is simple: they can keep using the DDR4 memory they [β¦]
The post AMD AM4 CPU pricing spike as PC market forces alternative upgrades appeared first on OC3D.
The post Progress Stalls: Sheryl Sandberg Warns AI Could Exacerbate Gender Inequality appeared first on StartupHub.ai.
The latest Lean In-McKinsey study reveals a stark truth: progress for women in the workplace is not just slowing, itβs stalling. Sheryl Sandberg, a pivotal figure in advocating for womenβs leadership, returned to the public spotlight to deliver this sobering message, underscoring how emerging technologies like artificial intelligence threaten to further widen the gender gap. [β¦]
The post Progress Stalls: Sheryl Sandberg Warns AI Could Exacerbate Gender Inequality appeared first on StartupHub.ai.
The post AI Fuels Megadeal Surge, Redefining M&A Landscape appeared first on StartupHub.ai.
Nearly a quarter of megadeals this year were AI-driven, a stark indicator of artificial intelligenceβs transformative power in the M&A landscape. This trend, highlighted by Paul Griggs, U.S. Senior Partner at PwC, during his recent interview with Frank Holland on CNBCβs Worldwide Exchange, underscores a pivotal shift where strategic positioning and technological advancement are paramount. [β¦]
The post AI Fuels Megadeal Surge, Redefining M&A Landscape appeared first on StartupHub.ai.
The post Unifying AI Operations: Flexible Orchestration Beyond Kubernetes appeared first on StartupHub.ai.
The sheer velocity of AI innovation demands an infrastructure that can adapt, not just scale. At IBMβs TechXchange in Orlando, Solution Architect David Levy and Integration Engineer Raafat βRayβ Abaid illuminated the critical need for a paradigm shift in how AI and machine learning workloads are managed, moving beyond the traditional automation paradigms. Their discussion [β¦]
The post Unifying AI Operations: Flexible Orchestration Beyond Kubernetes appeared first on StartupHub.ai.
The post House proposes bill to advance data center buildout speed appeared first on StartupHub.ai.
The proposed legislation, dubbed βThe SPEED Act,β seeks to significantly reduce the time required for permitting and construction of data centers and associated power infrastructure. This is a crucial development, as the voracious appetite of AI for computational power necessitates a corresponding acceleration in the physical infrastructure that supports it. The bill proposes to limit [β¦]
The post House proposes bill to advance data center buildout speed appeared first on StartupHub.ai.
Google Search Console appears to have fixed the weeks-long delay in Performance reports. After several weeks of 50+ hour lag times, the reports now seem up to date as of the past few hours.
Now up-to-date. If you check the Search Performance report now, you should see a normal delay of about two to six hours. Over the past few weeks, that delay had stretched to more than 70 hours.
This is what I see:

The delays began a few weeks ago and took roughly three weeks to fully clear, including the backlog of data.
Page indexing report. Meanwhile, the Page Indexing report delay we reported weeks ago is still unresolved. The report is now almost a month behind, and Google has not fixed it yet. Google posted a notice at the top of the report that says:
Why we care. If you rely on Search Console data for analytics and stakeholder or client reporting, this has been extremely frustrating. The Performance reports now appear to be updating normally, but the Page Indexing report remains heavily delayed and will continue to create reporting headaches.
Meanwhile, Google released a number of new features in the past few weeks, including:

Managing large catalogs in Google Performance Max can feel like handing the algorithm your wallet and hoping for the best.Β
La Maison Simons faced that exact challenge: too many products and not enough control. Then they rebuilt their segmentation with Channable Insights and turned a βblack boxβ campaign into a revenue-generating machine.
Simons originally split campaigns by product category. It sounded logical β until their best-selling sweater ate the budget and newer or overlooked products never had a chance to surface.
Static segmentation meant limited visibility and slow decisions.
Marketers stayed stuck making manual tweaks while Google kept auto-prioritizing only what was already working.
Enter Channable Insights. Product-level performance data (ROAS, clicks, visibility) now powers dynamic grouping:

Products automatically move between these segments as performance shifts β no manual work needed. As Etienne Jacques, Digital Campaign Manager, Simons, put it:
βOne super popular item no longer takes all the money.β
Instead of waiting 30 days for signals, Simons switched to a rolling 14-day window.
The result: faster reactions, sharper accuracy, and less wasted spend in a fast-moving catalog.
Why stop at Google? The same segmentation logic was automatically applied on:
Cross-channel consistency creates compounding optimization.
Without raising ad spend, Simons unlocked:
Even the βinvisiblesβ turned into surprise profit drivers once they finally got the spotlight.
Automation restored marketing controlΒ βΒ it didnβt remove it.
Teams can finally learn from the data and influence which products grow, instead of letting PMax run everything on autopilot.

Want Simons-style ROAS gains without extra ad spend? Start by testing the quality of your product data with a free feed and segmentation audit.


How much have DDR5 memory prices increased? We all know that DDR5 memory pricing has shot up, but how bad is the situation? Has AI-driven datacenter demand ruined the DRAM market? Yes, but how much is it hitting our wallets? Today we have looked at todayβs DRAM pricing and have compared it to 30 days [β¦]
The post Itβs bad β Hereβs how much DDR5 pricing has increased appeared first on OC3D.
The post Physical AIβs Off-Screen Revolution: Sanjit Biswas on Scaling Real-World Impact appeared first on StartupHub.ai.
The next transformative wave of artificial intelligence is unfolding not in the digital ether, but in the tangible, messy reality of the physical world. This was the central thesis articulated by Sanjit Biswas, CEO of Samsara, in a recent discussion with Sequoia Capitalβs Sonya Huang and Pat Grady. Biswas, a serial founder known for scaling [β¦]
The post Physical AIβs Off-Screen Revolution: Sanjit Biswas on Scaling Real-World Impact appeared first on StartupHub.ai.
Google's core updates can trigger issues that standard SEO audits fail to catch. Here are eight factors to check.
The post Eight Overlooked Reasons Why Sites Lose Rankings In Core Updates appeared first on Search Engine Journal.
Samsung denies SATA SSD phase-out rumours, calling them false Samsung has officially denied reports that it plans to phase out its SATA SSDs and other consumer products. This follows recent rumours that Samsung planned to wind down its SATA SSD production to free up manufacturing capacity for data centre and AI customers. With Micron killing [β¦]
The post Samsung refutes consumer SSD phase-out rumours appeared first on OC3D.
Introducing VT Chat, a privacy-first AI chat application that keeps all your conversations local while providing advanced research capabilities and access to 15+ AI models including Claude 4 Sonnet and Claude 4 Opus, O3, Gemini 2.5 Pro and DeepSeek R1.
Research features: Deep Research does multi-step research with source verification, Pro Search integrates real-time web search with grounding web search powered by Google Gemini.
There's also document processing for PDFs, a "thinking mode" to see complete AI reasoning, and structured extraction to turn documents into JSON. AI-powered semantic routing automatically activates tools based on your queries.
Live website previews in your Mac menu bar
Autonomous AI for smarter e-signatures
Detect hidden apps on MacOS
The post Salesforce AI Careers: A New Talent Pipeline Emerges appeared first on StartupHub.ai.
Salesforce's global Workforce Development programs are actively shaping the landscape of AI careers, equipping over 120,000 learners with critical skills and certifications.
The post Salesforce AI Careers: A New Talent Pipeline Emerges appeared first on StartupHub.ai.
The post Amazon Upskills Workforce for Agentforce AI Era appeared first on StartupHub.ai.
Amazon is strategically investing in employee 'Agentforce AI' skills through Salesforce Trailhead, preparing its workforce for the agentic AI era.
The post Amazon Upskills Workforce for Agentforce AI Era appeared first on StartupHub.ai.

Open Source, Free Anonymous AI Chat - Ready to Run Locally
Read books with Elon Musk, Steve Jobs, or anyone you choose
Test apps in a click with AI QA agents that scale like infra
One dashboard to run and organize multiple AI CLI agents
Dial in espresso & pourover
A showcase for AI-assisted builds, inspiration, and how-tos
Test data as code: YAML rules, Git versioned, & CI/CD ready
A browser-first marketplace for PC games
Private ai chat with 30+ open source models
Open source DevOps agent for devs who just want to ship
Easiest solution to deploy multimodal AI to mobile
The post NVIDIA Acquires SchedMD, Bolstering AI Infrastructure appeared first on StartupHub.ai.
NVIDIA's acquisition of SchedMD, the creator of Slurm, strategically enhances its control over critical open-source workload management for HPC and AI.
The post NVIDIA Acquires SchedMD, Bolstering AI Infrastructure appeared first on StartupHub.ai.

Outage Owl monitors 20+ vendor status pages in real time and alerts your team and customers when issues arise. Add a single script to show a website banner during outages and connect Slack to notify your team before tickets pile up. Create custom incidents and messages, tune alert rules, delays, and quiet hours, and keep everyone informed within seconds. Set up in under five minutes, and start free with one alert rule.
Apparently, no oneΒ knows if TikTok will be allowed to remain in the U.S.

A look at some of the major trends among Snapchat users in 2025.