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Microsoft Corporation (NASDAQ:MSFT) is one of the best NASDAQ stocks with the highest upside potential. On April 23, Microsoft Chairman and CEO Satya Nadella, alongside Prime Minister Anthony Albanese, announced an A$25 billion investment to expand Australia’s digital infrastructure, cybersecurity, and AI skills by the end of 2029. This represents the company’s largest-ever investment in […]

In mid-April 2026, Reynolds Consumer Products expanded its portfolio with the launch of Reynolds Wrap Hearts Fun Foil and new Hefty Ultra Strong Fabuloso Peach trash bags, both now available nationwide through major retailers including Walmart, Target, Amazon, Dollar General, and select grocery chains. By pairing decorative foil with color- and scent-focused trash bags, Reynolds is pushing further into emotionally resonant, design-led household products that aim to differentiate its brands...

The chipmaker is combining artificial intelligence (AI) with quantum computing.

Article URL: https://github.com/kidshadow79/Ogma Comments URL: https://news.ycombinator.com/item?id=47916377 Points: 1 # Comments: 0

Article URL: https://pair.withgoogle.com/guidebook/ Comments URL: https://news.ycombinator.com/item?id=47918166 Points: 1 # Comments: 0

Beijing is punishing those who shift supply chains from China, tightening rare earth licensing, banning foreign AI and cybersecurity tech and weighing curbs on its solar gear.

Someone’s offering an unusual deal for a 13-acre property in Mill Valley, just north of South Francisco.
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Canadian AI startup Cohere is taking over Germany-based Aleph Alpha with support from Lidl’s owner, Schwarz Group. With the blessing of their governments, the companies intend to offer a sovereign alternative to enterprises in an AI landscape dominated by American players.
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NVIDIA Corporation (NASDAQ:NVDA) is one of the best technology stocks to buy for the next decade. On April 20, Adobe (NASDAQ:ADBE), NVIDIA, and WPP expanded their collaboration to integrate agentic AI into enterprise marketing, focusing on the continuous planning, creation, and activation of personalized content. This partnership combines Adobe’s creative and customer experience platforms with […]
arXiv:2604.22273v1 Announce Type: new Abstract: Iterative self-correction is widely used in agentic LLM systems, but when repeated refinement helps versus hurts remains unclear. We frame self-correction as a cybernetic feedback loop in which the same language model serves as both controller and plant, and use a two-state Markov model over {Correct, Incorrect} to operationalize a simple deployment diagnostic: iterate only when ECR/EIR > Acc/(1 - Acc). In this view, EIR functions as a stability margin and prompting functions as lightweight controller design. Across 7 models and 3 datasets (GSM8K, MATH, StrategyQA), we find a sharp near-zero EIR threshold (<= 0.5%) separating beneficial from harmful self-correction. Only o3-mini (+3.4 pp, EIR = 0%), Claude Opus 4.6 (+0.6 pp, EIR ~ 0.2%), and o4-mini (+/-0 pp) remain non-degrading; GPT-5 degrades by -1.8 pp. A verify-first prompt ablation provides causal evidence that this threshold is actionable through prompting alone: on GPT-4o-mini it

Article URL: https://www.deployinfra.ai/ Comments URL: https://news.ycombinator.com/item?id=47919039 Points: 1 # Comments: 0

In a recent experiment, Anthropic created a classified marketplace where AI agents represented both buyers and sellers, striking real deals for real goods and real money.
been getting DMs asking about tools that don't fit the usual "AI coding assistant" box. so i finally did something about it. tolop.space (yes, new domain — more on that below) what's new: added Atoms :- multi-agent app builder where 7 AI roles (PM, engineer, architect, SEO specialist, data analyst, researcher, team lead) collaborate to build your product. has a genuine forever-free plan with 15 credits/day, not a time-limited trial. added Leadline :- finds Reddit posts where people are actively looking to switch tools or asking for recommendations, with AI-drafted replies included. starts at $9/month which is the cheapest Reddit lead tool i've found. but the one i'm most excited about is Transcrisper :- and it's the reason i added a whole new category. niche tools :- for single-purpose utilities that are completely free, do one thing well, and don't fit anywhere else. Transcrisper is a good example of what belongs there. free, unlimited audio/video transcription that runs entire
https://reddit.com/link/1svixo0/video/hgwrueuekdxg1/player No tricks, no copy-paste. Two completely different AI models, separate conversations - one remembers what the other was told. The way it works: every message gets embedded and stored. When you open a new chat with any model, your memory is injected into context automatically. GPT, Claude, Gemini, Grok and DeepSeek - they all share the same memory layer. So when I told GPT-5 Nano "I live in Bahrain" and then opened a fresh Claude Sonnet 4.6 conversation and asked "where do I live?" - it said "Based on your memory, you live in Bahrain 🇧🇭" Live on asksary.com now submitted by /u/Beneficial-Cow-7408 [link] [comments]

A new benchmark puts top models like GPT-5.4 and Claude Opus 4.6 to work on the kinds of tasks junior investment bankers handle every day. Not a single AI output was rated ready to send to a client; the results are too imprecise or flat-out wrong. Still, more than half of the bankers said they'd use the output as a starting point. The article 500 investment bankers review AI outputs and find none ready for client delivery appeared first on The Decoder.
Hello everyone, Working on a project where I rely on LLMs to handle certain tasks, I've implemented a basic HITL (Human in the Loop) pipeline where a human reviewer can approve or reject LLM-generated content based on a confidence percentage. When I started looking for existing tooling for this, I couldn't find anything that really fits. most of what comes up is data labeling software, which isn't quite what I need. What I'm looking for is something that: recieve json data renders some input fields for review, based on the data structure shows the source of truth side by side with the generated output, so the reviewer can edit stuff, correct them, and approve I've already built a basic version of this, but before going further I wanted to check, does anything like this exist off the shelf? this would save me some time. Thanks. submitted by /u/Several-Art-7186 [link] [comments]
arXiv:2604.21938v1 Announce Type: cross Abstract: Embodied AI is widely discussed as a job-displacement problem. The deeper risk, however, is governance lag: the inability of public institutions to keep pace with how fast the technology spreads through the physical economy. As reusable robotic platforms are combined with increasingly general AI models, embodied AI may scale across manufacturing, logistics, care, and infrastructure faster than governance systems can observe, interpret, and respond. We argue that this lag appears in three connected forms: observational, institutional, and distributive. The central policy challenge, therefore, is not automation alone, but whether governance and compliance systems can adapt before disruption becomes entrenched.
arXiv:2604.22196v1 Announce Type: cross Abstract: Coordinating the motions of multiple autonomous vehicles (AVs) requires planning frameworks that ensure safety while making efficient use of space and time. This paper presents a new approach, termed variable-time-step spatio-temporal corridor (V-STC), that enhances the temporal efficiency of multi-vehicle coordination. An optimization model is formulated to construct a V-STC for each AV, in which both the spatial configuration of the corridor cubes and their time durations are treated as decision variables. By allowing the corridor's spatial position and time step to vary, the constructed V-STC reduces the overall temporal occupancy of each AV while maintaining collision-free separation in the spatio-temporal domain. Based on the generated V-STC, a dynamically feasible trajectory is then planned independently for each AV. Simulation studies demonstrate that the proposed method achieves safe multi-vehicle coordination and yields more t