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Moscow warned last week that it intended to launch "systematic strikes" on targets in Kyiv and urged foreign nationals to leave.



ASUS today announced its latest AI infrastructure solutions showcase at Computex 2026, delivering end-to-end AI factory capabilities in collaboration with ecosystem leaders including NVIDIA, Intel® and AMD. Spanning rack-scale AI factories and POD architectures to ultrafast content memory storage solutions and enterprise-ready agentic AI applications, ASUS provides enterprise with a complete foundation for the entire AI lifecycle — from infrastructure design and deployment to large-scale token g

Life science research is entering an AI era, but most discovery teams still cannot use frontier models at scale. Advanced AI models, molecular simulation tools, scientific databases, inference optimization and GPU infrastructure remain fragmented across separate systems. For many pharmaceutical companies, ingredient innovators, biotech teams, and research groups, this makes AI adoption slow, costly, and technically demanding.

NVIDIA has released open-source physical AI agent skills and tools, as well as an Isaac GR00T humanoid reference robot. The post NVIDIA releases new and updated tools for physical AI developers appeared first on The Robot Report.

Google's new "24/7" AI agent, Gemini Spark, can be shockingly good at doing things on your behalf. But I'm not sure it's worth the financial cost and potential privacy tradeoffs. The company gave me access to Spark last week. Google advertises Spark as an AI agent that can take on tasks and work on them in the background - even tasks that have multiple steps - allowing you to put your phone down or walk away from your computer. It also advertises at the very top of the Spark website that it's "always under your direction," that "you choose to turn it on," and that "it's designed to check with you before taking major actions." Given the moun … Read the full story at The Verge.

If Nvidia has cracked a way to bring AI agents easily, safely and usefully to the masses, it could — and should — be big.

The chips are designed to allow AI agents to become the primary way users interact with their computers, rather than a mouse and keyboard.
One thing I find interesting about reasoning models is that the hard question is often budget placement, not headline capability. Ring-2.6-1T is a trillion-parameter reasoning model for agent workflows with high and xhigh reasoning-effort modes. If an AI agent only gets a heavier reasoning pass in one place, I would put it before it takes an external action, after it updates state, or before it gives the final explanation to a user. Where would you spend that budget first? submitted by /u/babyb01 [link] [comments]
The first question I have about Ling-2.6-1T is not “is the model card impressive?” It is whether the boring trade-off makes sense. It is an open-sourced Ant/InclusionAI flagship with about 1T total params / 63B activated params, up to 1M native context, and 256K currently exposed through the official API. For a local-LLM crowd, I’d want one answer first: does the quality justify the active size, can the serving setup make sense, or does the long window stay stable enough deep into context? Which one would you need answered before caring about it? submitted by /u/Top_Training5738 [link] [comments]
Hey everyone, I’m looking for recommendations for a good AI Newsletter that covers practical developments in AI agents, generative AI, automation workflows, and emerging AI tools. I’m especially interested in newsletters that go beyond hype and focus on useful insights, real-world experiments, workflow examples, tool breakdowns, and thoughtful analysis of where AI agents are heading. If you personally read and enjoy an AI agent newsletter or any newsletter focused on generative AI, agentic workflows, or AI automation, I’d really appreciate your recommendations. Thanks! submitted by /u/lIlIlIKXKXlIlIl [link] [comments]
I've seen a lot of AI agent demos, but I'm more interested in real-world experiences. Was there a moment when an AI agent completed a task that genuinely impressed you—something that would have taken hours or even days to do manually? What was the task, what tools were involved, and how much time did it save? Looking for actual use cases rather than demos. Curious to hear the moments that made you think, "This changes everything." submitted by /u/Humble_Sentence_3758 [link] [comments]
ok this is gonna sound dumb but bear with me I write a lot for work, marketing/copy stuff mostly, and over the last ~14 months ive slid from "use AI to clean up my draft" to "use AI to make the draft" to honestly not really writing anything on my own anymore. like i hadnt put a complete thought on paper without a model in the loop for months. didnt even notice it happening tbh. last weekend i tried to write a journal entry. just for me, no audience. nothing fancy. sat there for like 20 minutes trying to remember how to start a sentence that didnt have a thesis at the front of it. i kept wanting to write "Today I noticed three things about my mood." and then realising — wait, no, thats a chatgpt sentence. nobody writes that. but i couldnt remember the person-version. eventually wrote some half-garbage about being tired and what i ate and a weird thing my sister said about her landlord. it read like a 12 year olds diary which, fine, i guess thats what a journal is supposed to be but

Big news in enterprise AI broke over the weekend as Chinese AI startup MiniMax released its highly anticipated M3 large language model on Sunday evening Eastern time, pairing frontier-tier coding and agentic performance with a 1-million-token context window and native multimodality for a fraction of the cost of leading proprietary models, with pricing starting at just $20 per month under its new subscription token plans. The company's leadership also announced plans to deliver the model under an open source license including "open weights," allowing for full enterprise downloading and customizability free-of-charge, coming sometime in the next 10 days. For now, it is available via the MiniMax API at a special discounted price of $0.3 per 1 million input tokens and $1.20 per million output tokens (on fresh cache) for the next week — beating proprietary U.S. giants like Google, OpenAI and Anthropic handily on cost, while also eclipsing the performance of the latest models from the forme

The AI giant behind Claude submitted paperwork on Monday that would take it public, just a couple of weeks after SpaceX’s splashy IPO announcement.
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Google stock fell after Alphabet announced equity offerings totaling $80 billion in a capital rise amid higher spending on AI data centers.

The first to tap the U.S. market's unparalleled depth and liquidity will likely gain an immediate advantage regarding chips, data centers and talent.

The race to make the smartest possible AI that can do the most things will "lead to things that aren't nice beings towards us," Geofrey Hinton said.

Some report burning through their whole monthly "AI credit" allotment in a single day.

In this post, we walk through how to use Amazon Quick Research to integrate biomedical data sources for rare cancer research. The walkthrough uses pediatric sarcoma as the research domain and draws on publicly available datasets from PubMed and other open biomedical repositories. It covers the end-to-end workflow: defining a research objective, configuring data sources, reviewing the AI-generated research plan, running the investigation, and iterating on results using the revision and versioning system.

Microsoft is heading to San Francisco this week in a bid to win back developers at its Build conference. I've been attending Build since the days when Microsoft called it the Professional Developers Conference, and I can't remember a more pivotal moment. As Microsoft continues to reshuffle its entire business around AI, it's moving Build into a smaller, more intimate venue. Trust in Windows and GitHub is at an all-time low, and this is Microsoft's chance to reconnect with developers and outline the future. Sources tell me that we'll hear about new AI models in Windows, a new reasoning model from Microsoft AI, and a Copilot "super app." But … Read the full story at The Verge.

"The company is experiencing strong demand for its AI solutions and services from enterprises and consumers, at levels that are exceeding the company’s available supply," Alphabet said in its statement.

As two AI giants hurtle towards IPOs, Anthropic is showing early momentum.
I keep thinking Ring-2.6-1T makes more sense as a containment layer than as a default model for every step. It is a trillion-parameter reasoning model for agent workflows with high and xhigh reasoning-effort modes. If I only added it to one failure-prone point first, I would choose state corruption, a tool-contract mismatch, or the final external action before the agent changes something outside the sandbox. Which failure point would you guard first? submitted by /u/Spirited_Friend_8428 [link] [comments]
The Federal Reserve Bank of New York found companies preferred to hire more experienced workers for jobs that can be done remotely as opposed to non-remote jobs.
submitted by /u/vox [link] [comments]

Some of Trump's most fervent supporters are skeptical of the new technology threatening to replace humans and upend society.

The crypto VC Framework Ventures led two fundraises for the robotics startup, which projects $100 million in annual run rate.

Nvidia used GTC Taipei to launch a series of models for robots, autonomous vehicles, and video systems. The centerpieces are the new world model Cosmos 3, a significantly scaled-up driving model called Alpamayo 2 Super, and an open reference platform for humanoid robots. The article Nvidia bets big on physical AI at GTC Taipei with a new world model, driving brain, and open humanoid robot appeared first on The Decoder.