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Person: "kentonvarda"
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dflash nemo-automodel claude openai broadcom qualcomm modular nvidia skypilot modal anthropic hugging-face hardware inference performance-optimization model-training agent-ux security capability-based-security open-source fine-tuning infrastructure model-optimization gdb kimmonismus scaling01 clattner_llvm karpathy gallabytes dabit3 kentonvarda random_walker jubbaonjeans victormustar
OpenAI announced Jalapeño, its first custom AI chip for LLM inference, built with Broadcom, aiming to control more of the AI stack and improve compute economics with a fast 9-month design cycle. Community analysis suggests Jalapeño features 216GB HBM3E, ~7.1–7.4 TB/s bandwidth, and ~10 PFLOPS FP4 performance, signaling hyperscaler-style inference silicon as a new standard. Meanwhile, Qualcomm is acquiring Modular, with Mojo open-sourcing on track, indicating rising competition in vertically integrated inference stacks beyond NVIDIA/CUDA. On infrastructure, NVIDIA's NeMo AutoModel boosts training throughput for MoE models by 3.4–3.7x, and startups like SkyPilot and Modal advance unified and open-source inference solutions. Custom training of DFLASH models yields 30–50% decode gains. In UX, Anthropic's Slack-native Claude agent shifts agent interaction from tools to coworkers, raising new security and cost concerns around identity, permissions, and lock-in, with debates on capability-based security and attribution. Hugging Face responded with its self-hosted Slack coding agent Moon Bot.
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mythos anthropic openai langchain nous-research cybersecurity sandboxing reinforcement-learning agent-architecture memory-management model-deployment software-security evaluation-methods kimmonismus paul_cal gneubig kentonvarda boazbaraktcs ylecun deanwball hwchase17 vtrivedy10 sarahcat21 aijoey
Anthropic's Mythos and OpenAI's upcoming restricted cyber-capable models are central to recent discussions, with debates on their security realism and evaluation methods. LangChain's Deep Agents deploy introduces an open memory, model-agnostic agent harness architecture emphasizing open protocols and memory ownership. Sandboxes are gaining prominence as a core infrastructure for reinforcement learning, with labs running up to 100K concurrent sandboxes aiming for 1M. The Hermes Agent by Nous continues to gain traction with new integrations and features like a web-based HUD and token cost tracking.