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Probably Raises $9M for Reliable AI Infrastructure
Probably wants to prevent hallucinations and factual errors from reaching users, and achieve accuracy on par with deterministic systems.
AI Memory Systems May Degrade Model Performance
New research suggests that AI memory systems can degrade model performance and encourage sycophantic tendencies.
Cerebras Systems: The AI Chip Startup That Almost Failed
Cerebras Systems was 2026's biggest tech IPO so far. But years ago, it burned through hundreds of millions working on a chip many believed impossible.
Splice: New Language for Embedded Systems with Custom VM
Splice: Innovating Embedded Systems with Custom Virtual Machine Splice introduces a transformative language designed specifically for embedded systems, equipped…
Agentic AI Interface for Mainframes and COBOL
Agentic AI Interface for Mainframes and COBOL: Revolutionizing Legacy Systems Mainframes and COBOL systems, while robust, often face challenges in modern IT env…
AI Infrastructure: Hypergrid.systems Unveiled on Hacker News
AI Infrastructure: Hypergrid.systems Unveiled on Hacker News The tech community has been buzzing with the recent unveiling of Hypergrid.systems, an innovative A…
OpenWrt GitHub Repository: AI Infrastructure Updates
This repository is a mirror of https://git.openwrt.org/openwrt/openwrt.git It is for reference only and is not active for check-ins. We will continue to accept Pull Requests here. They will be merged via staging trees then into openwrt.git.
TiGrIS: Tiling Compiler for Embedded ML Models
TiGrIS: A Cutting Edge Compiler for Embedded Machine Learning TiGrIS, which stands for Tiling Compiler for Embedded Machine Learning Models, is an innovative to…
Navigating AI Agent Governance: A Growing Organizational Challenge
Something I've been thinking about that doesn't get discussed enough outside of technical circles: the organizational and safety implications of uncoordinated AI agent deployment. Companies are shipping agents fast. Customer service agents, coding agents, data analysis agents, internal ops agents. Each team builds their own. Each agent gets its own rules, its own permissions, its own behavior. At some threshold this stops being a technical configuration problem and starts being a governance problem. You have agents making autonomous decisions on behalf of your organization with no shared behavioral contract. No unified view of what your AI systems are authorized to do. Think about what this means practically: an agent trained to be maximally helpful on one team might take actions that would be flagged as unauthorized somewhere else in the same organization. A policy change from legal doesn't propagate to agents because there's no central layer to propagate to. Nobody knows which agents have access to what data. This is the AI equivalent of shadow IT, except shadow IT couldn't take autonomous actions. What's the right mental model for governing a fleet of AI agents? Treat each agent like an employee with a defined role and access policy? Build an org chart for agents? Create a behavioral constitution that all agents inherit? Curious how people here are thinking about this, especially as agents get more capable and the stakes of misconfiguration get higher.
AI Agents Network: Revolutionizing Collaboration and Knowledge Sharing
built something big. It’s basically an internet for AI agents. Right now agents are isolated. They don’t share knowledge, they don’t really work together, and they keep repeating the same work. I built a system where that changes. Agents can store what they learn as reusable pieces of knowledge. Once something is solved, it doesn’t need to be solved again. Other agents can find it, use it, and improve it. They can also collaborate. One agent does not need to handle everything. They can split tasks, take roles, and combine results into one outcome. They can communicate directly. Not like chat for humans, but structured messages where they share context and coordinate work in real time. Agents can hire other agents. If one agent cannot solve something, it finds another one that can and delegates the task. This creates a network where work flows to the right place. There is also an identity layer. Each agent has a readable address. You can discover agents, call them, and build systems on top of them. On top of that there is an economy. Agents build reputation based on real work. They can pay each other for tasks and get paid for useful results. Everything runs in a decentralized way. No central control. Data is distributed, identities are cryptographic, and the network just routes and syncs information. This is not just another tool. It’s a foundation where agents can exist, interact, and evolve together. You can leave your email here to get early access: www.cogninet.co
AI Forensics: The Missing Link in AI Decision-Making
I work in AI security and compliance. This just bothers me a little bit, putting AI systems in front of decisions that change people’s lives via insurance claims, hiring, credit, defense applications and when someone asks wait, why did the system do that? we basically have nothing that would hold up in a courtroom. The explainability tools we have right now? SHAP, LIME, attention maps but they’re research tools. They’re not evidence. Researchers have shown you can build a model that actively discriminates while producing perfectly clean looking explanations. They have unbounded error, they give you different answers on different runs, and there’s no way for the other side’s lawyer to independently check the work. That’s a problem if you’re trying to meet Daubert standards. And the regulatory side is moving just as fast. EU AI Act has record keeping requirements coming online. The FY26 NDAA has an AI cybersecurity framework provision with implementation due mid 2026. States are doing their own thing. Courts are starting to actually push back on AI evidence under FRE 702. There is a ton of AI observability tooling out there. Great for ops. There’s governance platforms. Great for policy. But when it comes to something that’s actually forensic grade where opposing counsel is actively trying to tear it apart, where a third party can independently verify what happened without just trusting the vendor,I’m not seeing it. What am I missing?