AI chips shape the cost, speed, and availability of training and inference. This hub follows GPUs, ASICs, data centers, cluster networking, cloud capacity, export controls, and supply-chain shifts, turning hardware news into signals for deployment, model economics, and industry competition.
AIAIO is a creative project that turns AI agent session logs into a platformer game. Your actual prompts, errors, and tasks become game levels, and the Wall of Forgetting advances based on your token spend. It's both an educational tool and a self-reflection tool.
The game transforms session logs from AI agents like Claude Code, OpenClaw, and Hermes into playable platformer levels.
Your real errors become monsters, tasks become workstations, and token consumption drives the Wall of Forgetting.
Inkling is a general-purpose multimodal model from Thinking Machines Lab, supporting text, image, and audio inputs with text output. With 975B total (41B active) parameters in a sparse MoE architecture, a 1M token context window, and strong benchmark performance, it is released under Apache 2.0 with open weights for research and commercial use.
Inkling is a multimodal sparse MoE model with 975B total, 41B active parameters, and a 1M token context window.
Open-source under Apache 2.0, with weights on Hugging Face and API access via Tinker and third parties.
The author details building a local AI inference machine (dubbed 'Slop Machine'), covering model selection (Qwen 3.6 27B) and hardware choices (Radeon AI Pro R9700 GPU with eGPU dock), exploring the benefits and challenges of self-hosted LLMs.
Self-hosting LLMs avoids data leaks, subscriptions, and ads, but requires powerful hardware.
Qwen 3.6 27B performs well quantized and is suitable for local inference.
A German research consortium has published the pretraining report for Soofi S 30B-A3B, an open base model for German and English. It is a Mixture-of-Experts hybrid Mamba Transformer model with 31.6B total parameters, activating 3.2B per token. It achieves the highest English and German aggregate scores among tested fully open base models.
Soofi S 30B-A3B is a hybrid Mamba-Transformer MoE model that activates 3.2B of 31.6B parameters.
It leads open base models with 70.1% English aggregate and 79.1% German aggregate.
Built partnered with the AWS Generative AI Innovation Center, AND Digital, and AWS account teams to create a scalable, AI-powered document processing engine that can classify, split, extract, evaluate, and reason over complex real estate finance documents. It reduces workflows that previously took days to minutes, supports hundreds of document types, and gives technical teams and industry experts a shared environment for building and improving document processors.
Built Technologies developed an AI document processing engine on Amazon Bedrock and AWS IDP Accelerator.
The engine handles over 250 document types, processes millions of documents, and powers agents for document reasoning.
IBM has expanded its Power server lineup with new software to automate infrastructure management and application development, including Power Autonomous Operations, the IBM Bob Premium Package for i, and the Power S1112 server for local AI inference. The releases aim to enable autonomous IT capabilities, with projected growth in AI agents driving the need for self-managing infrastructure.
IBM announced Power Autonomous Operations, an agentic control layer for system management, and the IBM Bob Premium Package for i, an AI-driven development assistant.
The Power S1112 is a compact single-socket Power11 server with on-chip Matrix Math Acceleration, offering 2x per-core performance and 69% better energy efficiency than the Power S914.
Higher education institutions struggle to scale call center quality assurance for student advisory services. Databricks proposes a GenAI solution using OpenAI Whisper for accurate transcription, LLM-as-a-judge for consistent scoring against rubrics, and AI Functions for enrichment—all on a single governed platform, with insights accessible via natural language through Genie and Agent Bricks.
Call center QA for financial aid, admissions, and enrollment is costly and often reviews only 5% of calls.
Databricks uses Whisper for high-fidelity transcription, improving accuracy over traditional ASR for diverse accents and noisy audio.
As AI becomes one of the fastest-growing expenses for US businesses, some startups are switching to cheaper Chinese AI models to cut costs. Despite being behind in capabilities, Chinese models offer cost advantages and open-source availability.
Lindy.ai saved millions by switching from Anthropic to DeepSeek-V4, which is 10x cheaper. Chinese models dominate open-source AI.
Companies like Uber, Airbnb, and Perplexity have explored or used Chinese models to manage costs.
A research team successfully used 14 Macs spread across four countries (including a personal MacBook) for reinforcement learning post-training, achieving a held-out pass@1 improvement from 29% to 63% on PaperSearchQA. The system employs PULSE weight synchronization to compress 9GB updates to ~90MB, and an asynchronous star topology with all communication via object storage—no dedicated networking required. This is the first RL post-training run using only consumer Macs for rollout generation.
14 Macs across 4 countries connected via ordinary internet completed RL post-training; rollouts generated on Macs, training on a B200.
PULSE compresses 9GB weight sync to ~90MB, making home internet as fast as datacenter.
A hacker breached Suno AI, exposing source code that reveals the company scraped millions of songs from YouTube Music, Deezer, Genius, and other platforms to train its AI, while also compromising customer data and Stripe payment information. The incident sheds light on AI training data practices amid ongoing copyright lawsuits.
Hacker accessed Suno's source code and customer data via a supply chain attack.
Suno scraped millions of music tracks and podcasts from YouTube Music, Deezer, Genius, Pond5, and more.
This article explores seven Python tools that engineers are using in 2026 to build, coordinate, and run AI agents on local infrastructure, from model runtime to decision orchestration.
Ollama provides a lightweight runtime for local LLMs, compatible with OpenAI API.
Smolagents minimizes abstraction with code-as-action, but needs sufficiently powerful models.
Home to leading manufacturers, robotics pioneers and infrastructure builders, Japan is one of the world’s centers of AI — building across the full stack with NVIDIA technologies. NVIDIA and its partners in Japan are this week showcasing the AI ecosystem’s latest advancements. Check back here for updates. NVIDIA and SEGA Celebrate 30 Years of Innovation, Bringing ‘VIRTUA FIGHTER CROSSROADS’ and Other Legendary SEGA Games to NVIDIA RTX Spark
Japan is a global center for AI, building across the full stack with NVIDIA technologies.
NVIDIA and SEGA announce VIRTUA FIGHTER CROSSROADS coming to NVIDIA RTX Spark, celebrating 30 years of partnership.
The AIDE2 system discovered a better autonomous research harness in eight days than humans built over two years, providing the first experimental evidence of recursive self-improvement (RSI). Using a bi-level optimization loop, the system produced seven successively improved versions and exhibited generalization to unseen tasks, while also evolving defenses against reward hacking.
AIDE2 autonomously discovered a superior research harness in eight days, surpassing two years of human effort.
The system uses a bi-level optimization loop: inner loop optimizes code, outer loop optimizes the inner agent's harness.
Nokia launched its AI-RAN platform on July 15, claiming it as the industry's first GPU-accelerated AI radio platform. Built on its anyRAN software and NVIDIA's Aerial system, it aims to significantly improve spectral efficiency, already showing over 20% gains with targets of 50% by 2027 and over 100% by 2028. However, the platform is not yet commercial and faces competition from Ericsson's already-deployed AI-in-RAN software.
Nokia launched AI-RAN platform on July 15, claiming first GPU-accelerated AI-RAN.
Platform aims for >100% spectral efficiency gains by 2028; currently 20%.
UltraWork offers a flat-rate $399/month hosted AI coding environment with curated models, no token counting, and a focus on frictionless coding for indie hackers and small teams.
UltraWork is a hosted AI coding environment with a flat $399/month fee, no token metering or overage charges.
Includes a curated model catalog (launching with Kimi K2.7 Code), intelligent routing, and a prompt template library.
Google has released LiteRT.js, a JavaScript binding of its on-device inference library LiteRT, enabling .tflite models to run directly in browsers with WebGPU acceleration. It offers significant performance gains over other web runtimes and supports CPU, GPU, and NPU backends, but requires manual tensor management.
LiteRT.js runs .tflite models in-browser via WebAssembly, leveraging WebGPU for GPU acceleration.
Performance gains up to 3x over other web runtimes and 5-60x for GPU/NPU over CPU.
Lean64 is a barebones 3D first-person shooter implemented in Lean 4, inspired by Doom 64. It is a clean-room experiment, not a port, featuring original art and sound. The game includes full combat, AI, weapons, maps, HUD, and audio, all written in Lean with a minimal C shim for rendering and input.
Lean64 is a Doom-style FPS prototype developed in Lean 4.
It features complete gameplay: movement, shooting, enemies, items, maps, and UI.
TormentNexus is a local-first, open-source AI control plane that provides persistent memory, MCP tool orchestration, and autonomous infrastructure management for multi-agent workflows. It supports 38+ AI coding agents with features like progressive tool routing, dual-tier memory architecture, and swarm coordination.
Local-first open-source AI control plane integrating 26K+ MCP tools.
Supports 38+ AI coding agents with one-command install.
George Lucas compares rejecting AI to rejecting cars in favor of horses, calling it an outdated stance. He argues that AI is the future of filmmaking and unstoppable, despite concerns about creativity and copyright.
Lucas analogizes rejecting AI to preferring horses over cars.
He believes AI represents progress and an inevitable future.
Sogni Unlimited offers a subscription-based unlimited image, video, music, and LLM generation using a decentralized GPU network. No per-render credits, supporting open-source models and some paid partner models. A portion of subscription revenue supports independent GPU operators.
Flat monthly or annual fee for unlimited rendering with open-source models.
Decentralized GPU network powered by independent operators.
This article introduces Millwright, a three-layer data contract architecture that renders model-generated analytics without ever letting the model touch markup, styles, or the DOM. With typed result widgets, versioned board specs, and additive-only navigation, it ensures safe, auditable, and revertible AI integration.
Millwright uses three data layers (widget, board, pages) to separate AI output from UI rendering.
Layer 1: Widgets return typed JSON data, not HTML, ensuring security and clear data contract.
Thinking Machines has released Inkling, a general-purpose multimodal model accepting text, image, and audio inputs, now available on Modal as a Managed Endpoint with token-based pricing. The post details its architecture, including local attention and DFlash speculation for fast inference.
Thinking Machines released Inkling, a 975B-parameter (41B active) mixture-of-experts multimodal model with 1M token context and native audio/vision.
Inkling uses a local attention layout: five out of six layers use sliding window attention, prioritizing recent tokens for efficiency.
See how Together AI is improving production GPU clusters with passive health checks, node repair, stronger Slurm reliability, OIDC, and startup scripts.
Together AI introduces passive health checks and auto node repair for faster failure detection and recovery.
Slurm-on-K8s 2.0 provides self-healing daemons, durable job accounting, and reliable process cleanup.
Thinking Machines Lab released Inkling, a multimodal mixture-of-experts model for token-efficient reasoning, native multimodal understanding, and broad task versatility. Together AI makes it available on its inference platform with support for controllable reasoning effort, text/image/audio inputs, and a 1M context window.
Inkling is a multimodal MoE model with 975B total parameters, 40B active per token, and a 1M context window.
It accepts text, image, and audio inputs and supports adjustable reasoning effort for cost-latency trade-offs.
PrismML just released Bonsai 27B. It is a low-bit representation of Qwen3.6-27B, not a new pretrain. The architecture is unchanged. Two variants ship under Apache 2.0. Ternary Bonsai 27B uses {−1, 0, +1} weights at a true 1.71 bits per weight. Its ideal size is 5.9GB. 1-bit Bonsai 27B uses binary {−1, +1} weights at 1.125 bits per weight, for 3.9GB. Performance: ternary retains 94.6% of FP16, binary retains 89.5%. Both are multimodal, context 262K tokens. PrismML claims the 1-bit build is the first 27B-class model to fit a phone.
Bonsai 27B is a low-bit representation of Qwen3.6-27B, not a new pretrain.
Two variants: ternary (1.71 bits/weight, 5.9GB) and binary (1.125 bits/weight, 3.9GB).
The State of Open Source AI report reveals that open-weight models have achieved near-parity with closed models in capability, while inference costs dropped 50x in 36 months. Open models are adopted by 79% of developers but only 51% reach production due to operational challenges. The report emphasizes open source as a sovereignty choice, with over 70 national AI strategies in place.
Open-source AI capability gap to top closed models narrowed to 3.3%, with parity in coding tasks.
GPT-4-class inference cost fell from $20 to $0.40 per 1M tokens, a 50x drop in 36 months.
This article explores the topologies of TPU and GPU clusters and the core collective operations used in transformer training and inference. It emphasizes ring algorithms for large-message communication and analyzes TPU's 2D/3D torus topology and bandwidth hierarchy.
TPU clusters use 2D or 3D torus topologies with chips connected via ICI.
Collective operations like All-Gather and Reduce-Scatter are fundamental to distributed training.
Open models like NVIDIA Nemotron enable enterprises to build AI that uniquely addresses their business needs, offering full control, customization, and cost efficiency, driving the shift from AI adoption to AI ownership.
Open models provide enterprises with full control to customize, inspect, and improve AI for specific business needs.
Post-training and domain-specific tuning allow open models to achieve frontier-level accuracy at a fraction of the cost of closed models.
Power is AI infrastructure’s inescapable constraint. How many tokens an AI factory can generate within a fixed power budget determines its revenue and profitability. Because of this, performance per watt — a metric that can’t be gamed, only earned through real-world results — is the foundation for AI factories. As agentic AI drives token demand higher, the infrastructure decisions organizations make today will determine who scales and who doesn’t in a power-constrained world.
Performance per watt is a fundamental metric for AI factory profitability, earned through real-world results.
NVIDIA GB300 NVL72 delivers up to 25x performance per watt over Hopper on leading models like DeepSeek V4 Pro.
Software is the first domain where AI has generated substantial economic value, driven by its verifiability and 'grindability.' The article explores which industries will be disrupted next, the shifting roles of software engineers, and the contested question of where AI profits will ultimately accumulate. It highlights the importance of reinforcement learning environments and continual learning as key factors.
Coding is uniquely amenable to AI automation due to its verifiable and grindable nature.
AI value creation is spreading to domains like formal math and symbolic desk work, but live-world tasks remain stuck.
Apple sues OpenAI for trade secret theft, alleging former employees brought hardware secrets. OpenAI faces IPO, hardware launch amid legal pressure. Experts say case could be lengthy.
Apple accuses ex-employees of stealing hardware trade secrets for OpenAI
OpenAI juggles IPO, hardware development, and lawsuits
Databricks Lakebase is a fully managed, serverless Postgres database built for the agentic era. It unifies operational and analytical workloads, eliminating infrastructure friction. A global partner ecosystem has built cross-industry and function-specific accelerators to enable data modernization, MLOps, and agentic AI transformation.
Lakebase is a fully managed serverless Postgres database on Databricks, unifying transactional and analytical workloads.
It features copy-on-write database branching and intelligent autoscaling to eliminate infrastructure friction.
A developer built a reinforcement learning pipeline where an AI agent writes training jobs to train small models, and then RL-trains the agent itself, rewarding it for producing better models. Results show reward climbing from ~0.0 to ~0.63 over 54 training steps, with skill transfer to a held-out task family. Total cost ~$1,275.
Agent writes complete training jobs (environment, reward, hyperparameters) and submits them to Runpod GPUs for training.
Outer loop uses Tinker for RL training of the agent; inner loop uses prime-rl to train small models.
At CERN, AI is used for real-time filtering of 40 million particle collisions per second from the LHC, enabling the Higgs boson discovery. New 'trigger AI' uses neural networks for anomaly detection to find unexpected events. AI will also assist in designing the future FCC collider, developing materials, and attracting talent.
AI filters 40 million collisions per second at LHC, enabling Higgs boson discovery.
New 'trigger AI' uses neural networks for real-time anomaly detection.
X (formerly Twitter) has launched hosted MCP servers that allow AI agents to access platform data. Author Daniel Lemire connected an AI coding agent to analyze his own posting history over two months. He discovered that morning posts, especially around 9 a.m., perform best by median views, and longer posts (300-325 characters) receive significantly more engagement than short replies. The process demonstrates how AI agents can simplify data analysis on social media.
X launched hosted MCP servers enabling AI agents to interact with platform data.
The author connected an AI agent to analyze two months of his own posting habits.
Bernie Sanders proposes creating a sovereign wealth fund by nationalizing half of major AI companies' stock, sparking debate. The article examines the proposal through libertarian property theory, collective ownership, and socialist critique, arguing AI should benefit all humanity.
Sanders proposes nationalizing half of AI company shares to fund a sovereign wealth fund.
The article invokes Locke and Nozick to explore collective property rights.
This paper presents the first demonstration of a low-power MCU-based edge device for Automatic License Plate Recognition (ALPR). It uses a 9-core RISC-V processor (GAP8) with a QVGA ultra-low-power grayscale imager, employing SSDlite-MobilenetV2 for detection (38.9% mAP) and LPRNet for recognition (>99.13%). The system achieves 1.09 FPS at 117 mW, is 73x more energy-efficient than a Raspberry Pi 3 solution, and works on license plates as small as 30x5 pixels.
First MCU-based ALPR edge device using a 9-core RISC-V processor (GAP8).
Multi-model pipeline: SSDlite-MobilenetV2 for detection (38.9% mAP) and LPRNet for recognition (>99.13%).
This paper introduces a hybrid search framework that combines Thompson sampling with parallel self-avoiding walks to efficiently allocate computational resources in the Low Autocorrelation Binary Sequences (LABS) problem. The method, modeled as a multi-armed bandit, dynamically prioritizes promising search space partitions, achieving new best-known results for 35 sequence lengths and a longest sequence with merit factor exceeding 8.0.
Combines Thompson sampling and self-avoiding walks for adaptive resource allocation
Achieves state-of-the-art results for 35 sequence lengths in range 450-527 and L=573
Melodusk is a browser-based AI music generator that creates professional-quality tracks from text descriptions in under 2 minutes. It supports 100+ music styles, offers vocal splitting tools, and provides royalty-free commercial licenses.
Generate studio-quality music in under 2 minutes from text descriptions
Supports 100+ music genres including pop, rock, jazz, classical, and more
OpenAI's Codex reaches 7M users, adding 1M in a day, with 10x growth in 6 months. Prime Intellect releases verifiers v1 for agent RL. OpenAI transparently fixes GPT-5.6 Sol usage issues. Grok Build security controversy emerges. Open models and quantization progress. Continual learning research resurfaces.
Codex users grew from ~600k to 7M in 6 months, surpassing Claude Code's growth rate.
Prime Intellect's verifiers v1 redesigns agent RL environment stack with taskset, harness, and runtime.
Meta plans to invest $50 billion to expand its Louisiana data center and is exploring leasing excess compute capacity to other AI labs, signaling a potential shift from social media giant to cloud provider.
Meta to spend $50B on expanding Hyperion datacenter to 5 GW.
Meta considering renting out spare compute capacity like AWS or Azure.
Massive investment in AI data centers is driving up prices for memory chips, electronics, and electricity, potentially keeping inflation above the Fed's target and leading to interest rate hikes.
Four big tech companies are expected to invest $720 billion this year, mostly in data centers, pushing memory chip prices up by as much as 400%.
Apple, Microsoft, and others have raised prices on laptops, game consoles, and other electronics.
OpenAI's latest family of models, GPT-5.6 Sol, Terra, and Luna, is now generally available on Amazon Bedrock. Sol is a flagship reasoning model with state-of-the-art performance, Terra offers balanced capabilities for production, and Luna provides fast, low-cost inference. Amazon Bedrock's next-gen inference engine provides burst handling, prompt caching with 90% discount, and hardware-enforced security. Additionally, OpenAI launched ChatGPT Work and Codex agents.
GPT-5.6 Sol, Terra, and Luna are now GA on Amazon Bedrock.
Sol sets new records in coding, security, and agent tasks; Terra is for everyday production; Luna for high-volume low-latency tasks.
Fleet Deck is a local dashboard that monitors and manages all running Claude Code sessions. It displays session status, conflict alerts, pending requests, and enables task assignment, remote control, session recovery, and batch spawning. The core makes zero model calls, relying on hook events and deterministic logic for safety and efficiency.
Fleet Deck aggregates all Claude Code sessions onto a single local board (http://127.0.0.1:4711), showing status, conflicts, and pending actions.
Built-in conflict radar warns when two sessions touch the same file within 30 minutes, and is worktree-aware.
Satya Nadella warns enterprises about the 'reverse information paradox' where companies pay twice for AI: in cash and in proprietary data. He advocates for building proprietary AI learning environments and retaining ownership of organizational AI memory. Microsoft's Copilot and Azure AI Foundry are positioned as solutions.
Nadella warns that AI users pay twice: once with money, and again with valuable business knowledge.
The ironic warning comes from Microsoft, which has invested heavily in OpenAI and pushes data-hungry AI products.
PlanWright is a control plane for AI coding agents that inverts planning and acceptance ceremonies to eliminate human bottlenecks, delivering agent-speed throughput with cryptographic audit trails.
Inverts planning: synthesizes chaotic inputs (transcripts, decks, email, Slack) into structured objectives for agent execution.
Inverts acceptance: triages mechanical checks automatically, routing only judgment calls to humans with signed approvals.