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ACTi Law Pro Webinar question submitted by law intern answered by GOOG quantum AI wizard’s predicts Revolutionary Path to combined AI Law tools from AI-119 QAIA & Athena AI platforms, to offer a solution for over 440,000 CLJA Veteran claimants caught up in courts RALIEGH, N.C., May 31, 2026 (GLOBE NEWSWIRE) -- A groundbreaking architectural design, modeled super AI Law notion using Google AI, revealed after a law intern begged the question as to how compounding the state-of-the-art data infrastr



The crypto weed vape found me on 4/20, the high holiday of cannabis enthusiasts everywhere. It arrived over Slack with the thumbnail of a man exhaling a plume of vapor, the words "every hit delivers Bitcoin" emblazoned across it. It claimed to be advertising a device called Gudtrip, and I thought everything about it sounded fake. So I went looking for it. What I eventually found, after weeks of searching, dozens of emails, and a reporting effort that spanned continents, was somehow even dumber than I'd imagined. My first port of call was Gudtrip's website, which only made the vape seem more like a prank. The company's description of the pr … Read the full story at The Verge.

Alphabet is ramping up efforts to compete with Nvidia in the market for AI accelerators.

From specialized motors to the use of machine learning algorithms, Turkey’s billion-dollar hair-transplant industry is the result of a constant process of innovation.

EQT has struck a deal with Alphabet Inc.‘s Google Cloud aimed at speeding up artificial intelligence projects across more than 300 companies held in the buyout firm's portfolio. The arrangement gives these businesses access to Google Cloud's AI and security...

Meta is rolling out subscription tiers to its AI chatbot.

Sridhar Ramaswamy predicts that companies reliant on seat-based income will scramble to justify their premiums as employees use AI to accomplish an immense amount of work.
Breakfast cereal bowls, deli sandwiches, pizza dinners, soups, yogurt plates. Most people do not eat from a blank slate, they eat from habit. That is part of what makes nutrition advice so hard to follow. It is also part of what a new artificial intelligence system tried to solve. submitted by /u/Brighter-Side-News [link] [comments]
Article URL: https://www.ft.com/content/1022f9bd-5b6d-44a5-9303-c8b05b8c6463 Comments URL: https://news.ycombinator.com/item?id=48339542 Points: 1 # Comments: 1

The golden age of Microsoft's Github Copilot appears to be at an end.

SoftBank plans to build AI data centers with up to 5 gigawatts of capacity in France, the company's largest AI infrastructure investment in Europe, at up to 75 billion euros. By 2031, facilities worth 45 billion euros are set to go up at three sites in northern France. SoftBank's mega announcements keep stacking up worldwide, but many projects have yet to materialize. The article SoftBank plans 75 billion euro AI data center buildout in France appeared first on The Decoder.
After understanding how much I don't know and how much I have to learn I am going to place my first bet on the AI casino table , and for now it's Hermes. I have also decided to go the locally hosted route and would be very grateful if successful user of Hermes share with me there physical stack (p. S I ha never touched i. Os) and any additional setup do's and dont's specifically surrounding using Hermes! TIA! submitted by /u/TasteCertain4323 [link] [comments]
I built BrainAIstorm basically stops you from making dumb decisions (or at least makes you think twice). You describe what you're stuck on, AI asks critical questions first, then gives you structured analysis: options, biases you might have, what could flip the decision. The cool part is it tracks your patterns over time, so you learn if you're always rushing decisions or overthinking everything. Still pretty rough around the edges but free to try if you've got a decision you're stuck on. Would love to know if it's actually useful or just solving my own weird problems Link in the comments submitted by /u/Direct_Tension_9516 [link] [comments]
submitted by /u/Early_Mail9268 [link] [comments]

Mathematician Terence Tao describes how AI could reshape math research by enabling division of labor for the first time. Until now, researchers had to master every step themselves, from framing problems to verifying results. Tao sees "industrial mathematics" emerging: large AI-supported teams instead of lone geniuses, with humans staying indispensable for "inspired guesses." The article Terence Tao argues AI could bring division of labor to math for the first time in history appeared first on The Decoder.
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Article URL: https://www.theatlantic.com/technology/2026/05/how-to-tell-ai-writing/687345/ Comments URL: https://news.ycombinator.com/item?id=48338514 Points: 3 # Comments: 1

Article URL: https://docs.github.com/en/copilot/reference/copilot-billing/request-based-billing-legacy/model-multipliers-for-annual-plans Comments URL: https://news.ycombinator.com/item?id=48339069 Points: 3 # Comments: 0
Just a fun question. If you suddenly couldn't use ChatGPT anymore, which AI tool would become your daily driver and why? Interested to see what people here are actually using besides the obvious options. submitted by /u/ritik_bhai [link] [comments]
Amazon isn’t just building AI—it’s building AI that moves furniture, delivers groceries, and negotiates with suppliers. And Visa believes this will dominate global commerce. Here’s why. The Deep-Dive: Amazon’s new Prime skunkworks division is deploying “physical-world agents” (yes, real robots with intent). These aren’t drones; they’re AI systems integrated with IoT devices, logistics networks, and even brick-and-mortar stores. Visa’s $1B investment in Replit (via their acquisition) isn’t just about code—it’s about enabling seamless payment integration with these agents. •What’s happening: Agents can now autonomously manage supply chains. Imagine an AI warehouse manager that reroutes shipments in real-time based on demand spikes. •Visa’s angle: They see agentic commerce as the next wave. Agents will handle end-to-end transactions, from a smart kitchen ordering out-of-stock items to a hotel concierge book your entire trip. •Reddit trend tie-in: A r/Artificial post this week showed
A Cursor agent deleted PocketOS entire production database in 9 seconds. Backups too. Most of the debates pretty much blame the dev who approved without reviewing the changes. There is no record of what that agent had done in prior sessions, what workflows it had been trusted to run, or whether its behavior on this task differed from the last time it touched that codebase. So, while we blame the dev, what could he/she have done when the record to be reviewed never existed to begin with? Food for agentic thoughts. submitted by /u/Worldline_AI [link] [comments]
Description of the module: I host 30+ free APEX MoE quantizations as independent research. My only local hardware is an NVIDIA DGX Spark (122 GB unified memory) — enough for ~30-50B-class MoEs, but bigger ones (200B+) require rented compute on H100/H200/Blackwell, typically $20-100 per quant. If APEX quants are useful to you, your support directly funds those bigger runs. Qwen3.6-35B-A3B-Claude-4.7-Opus-Reasoning-Distilled — APEX-MTP GGUF APEX (Adaptive Precision for EXpert Models) quantizations of lordx64/Qwen3.6-35B-A3B-Claude-4.7-Opus-Reasoning-Distilled, with the MTP (multi-token prediction) head bundled for in-the-box self-speculative decoding. What's different from the plain APEX repo? These GGUFs bundle the model's MTP (multi-token prediction) head alongside the trunk in a single file, courtesy of llama.cpp PR #22673. With a recent llama.cpp (>= commit 255582687) you can enable self-speculative decoding using just this one file — no separate draft model needed: llama-ser
All in the title. The official OpenAI Codex Desktop App only accepts models that are from OpenAI and from a curated list. But there is a trick, you can make it think you are using the official OpenAI servers and models by just impersonating the model name and using another one. There is three things you need to do 1) The first one is to modify the officiel config of the codex desktop app. This is none intrusive and doesn’t break the app in anyways, and can also be reverted. You can do that by going in the settings and clicking the « open config.toml » link. Then you need to modify the official config by pointing it to your own server where your models are living. model = "gpt-5.3-codex" model_provider = "multivibe" model_reasoning_effort = "xhigh" personality = "pragmatic" sandbox_mode = "danger-full-access" approval_policy = "never" [model_providers.multivibe] name = "Multivibe" base_url = "http://127.0.0.1:1455" wire_api = "responses" env_key = "MULTIVIBE_API_KEY" 2)
As the title says, there is no speed difference between Linux and Windows when using llama.cpp. I myself kept two operating systems on my computer for a long time because of this misconception. But when I got tired of constantly switching, I decided to check how much performance I’d lose if I moved to Windows. First, a brief overview of the PC used in these tests: - CPU: Core Ultra 7 265KF under water cooling, with a slight overclock to 5.6/4.7 GHz core frequencies - Motherboard: Asus Z890 with three PCIe slots, two of them PCIe 4.0 x4 - RAM: Kingston Beast DDR5 192 GB (4×48 GB) at 6400 MHz, with slightly reduced voltage and relaxed timings to keep temperatures down - GPUs: Nvidia GeForce RTX 5080 16 GB + RTX 5060 Ti 16 GB + RTX 5060 Ti 16 GB, all undervolted with a slight memory overclock - PSU: 1200 W 80 Plus Gold — 1000 W would have been enough, but I went with headroom from the start Operating systems used: Ubuntu 26.04 with KDE and GNOME — I also ran one test with Xfce — an
TL;DR: I built an Ebook reader embedded with a compact translation model. Hi! I know this post has a promotional nature, but it contains a concept that I believe readers who love books will appreciate, so please take a look. While talking to an AI developer from an English-speaking country living in the Middle East, I complained that the books I wanted to read weren't translated into Korean. When I suggested that we no longer need to carry English-Korean dictionaries like in the past and that AI could handle the translation, he agreed it was a great idea. That’s when I started development. He also strongly recommended that I promote this on the r/LocalLLaMA subreddit, saying that the community is tech-savvy and would have a lot of insights to offer. (Yes, I actually visit r/LocalLLaMA often myself. Using an LLM without security concerns is everyone's dream. I haven't achieved it yet due to financial constraints, but based on my experience renting GPUs, I believe a 70B model would sat
Author here. The short version of why I built this: Cyber-AI evaluation is converging on the same diagnosis from multiple labs. Anthropic's Claude Mythos system card this year: their cyber ranges "lack many features often present in real-world environments such as defensive tooling," and CTF-style benchmarks are saturated to the point Anthropic is questioning whether to continue reporting them. UK AISI's most recent multi-step cyber paper (Folkerts et al.): "No active defenders. Our ranges are static." OpenAI's Trustworthy Third-Party Evaluations playbook: "Evaluators should prefer private or newly constructed tasks where possible." Carlini at DeepMind, last year on Latent Space: stop relying on standardised public benchmarks; construct private custom ones. The diagnosis is converging. The methodology piece is what was missing. PolyRange operationalises the diagnosis. Every deploy is freshly LLM-generated by the researcher's choice of generator model — so OpenAI's "newly constructed
Hey! I'm a CS student and I got tired of not being able to compare MLX inference engines properly — every benchmark out there is either made by the engine's own developers, runs on an M3 Ultra nobody has, or just shows tok/s with zero context. So I built mlx-Chronos — a small open source CLI tool that runs a standardized benchmark protocol on your Mac and lets you submit your results to a shared community leaderboard. What it measures: Cold and cached TTFT (Time to First Token), with a proper methodology — unique prompts per trial, cache priming, no interleaved phases Throughput (tok/s), with mean/stddev/min/max across repeated trials Engine process RSS and system RAM peak, sampled continuously during inference Thermal state and hardware info Supported engines: oMLX, Rapid-MLX, mlx-lm, Ollama (MLX backend) The leaderboard is basically empty right now since I only have an M2 8GB. Would love results from M3 Max, M4, M4 Ultra, or anything with more RAM — that's where things ge
Most robot foundation model demos are hard to interpret because the impressive number usually comes after task-specific fine tuning. Wall-OSS-0.5, a new open-source VLA release from X Square Robot, is interesting because the report tries to measure what the pretrained checkpoint can do before that extra adaptation step. The setup is a 4B vision-language-action model built around a 3B VLM backbone plus action-generation components. According to the report, the pretrained checkpoint was evaluated on a 17-task real-robot suite without task-specific fine tuning. Four tasks crossed 80 task progress: block sorting, fruit sorting, ring stacking, and a held-out deformable task, rope tightening. The part that seems more important than the raw score is the framing. In language models, nobody would accept only a fine-tuned downstream score as evidence that pretraining worked. With robots, that has been much harder because the evaluation is physical, slow, embodiment-dependent, and expensive. A
For those who cant afford claude models and wanna use claude code, deepseek v4 pro is closest best and cheapest option. How to use deepseek API inside claude code (easist way ever): We will use AI to replace AI. Just feed your existing claude code this prompt "Yo Claude, you’re expensive af 💀 Do everything needed to fully switch Claude Code to DeepSeek API automatically. Set up the complete settings.json config, API integration, model selection, base URL, env variables, testing, debugging, and optimization for low cost + strong coding performance. Use this DeepSeek API key: "sh......................" Make it fully working, minimal, and production ready." Thats it! Thank me later! submitted by /u/Agreeable-Pen-9763 [link] [comments]