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Ruben Hassid This 7-day checklist shifts from passive learning to active integration. Day 3 is key: creating .md files with voice samples and banned words externalizes negative constraints, an advanced pruning technique. Without it, the model can't distinguish noise from signal. Connectors and scheduled tasks transform Claude from chatbot to executor. Week one builds it, week two maintains it. Ac…
AI Products & Tools value: beneficence for: individual_users optimistic approval → raw LLM
Nice anatomy. But bodies have one thing this model skips: an immune system. Who decides what the agent is NOT allowed to do? Who stops RAG from surfacing the confidential board deck to the intern's chatbot? The four layers are the easy part. Layer five — governance — is where most implementations quietly die.
Workplace & Jobs value: accountability + privacy for: organisations critical fear → raw LLM
Good breakdown. One pushback on layer 1: calling the LLM a “brain”makes it sound like it reasons. It predicts tokens. That distinction isn’t pedantic. It changes how you design the other three layers. If the first layer thinks, you trust its output and bolt tools onto it. If the first layer only pattern-matches, you build guardrails around it: grounding, verification, business-logic checkpoints. …
Workplace & Jobs value: safety for: organisations critical mixed → raw LLM
What makes this historically important is not simply the scale of AI adoption. It is that governance itself is starting to become executable infrastructure. Once ministries shift from direct operators to supervisors of autonomous systems, the state begins transforming from a bureaucratic institution into a runtime coordination architecture. That changes the meaning of: authority, accountability, …
AI Policy & Regulation value: accountability for: society critical mixed → raw LLM
Excellent post pro From a security perspective: LLM: Protect against prompt injection, jailbreaks & unsafe outputs RAG: Enforce data access control, sanitize retrieved content Agent: Apply least privilege + human-in-the-loop for sensitive/irreversible actions MCP: Zero-trust between services, strong authentication & encrypted communication
Workplace & Jobs value: safety + accountability for: organisations demanding approval → raw LLM
I would not be surprised that there is Strong oversight on the process that AI agents implement. While AI agents can handle data, humans are needed to handle situations. Leaving everything to AI agents decisions isn't wise.
AI Policy & Regulation value: accountability + human_autonomy for: society critical indifference → raw LLM
Honest take: most AI video tools generate decent first drafts, but they fall apart when you need to iterate on a specific hook or scene. That's actually why I built GridVid — you can swap individual nodes without redoing the whole video. Curious what tools you've tested so far and what specifically isn't working for you.
AI Products & Tools value: honesty for: individual_users demanding indifference → raw LLM
Biggest mistake I see people make... they test Claude with fake work. Use it on real work from D1 or you'll never trust it enough to actually build something worth it
AI Products & Tools value: beneficence for: individual_users demanding approval → raw LLM
Luís Rodrigues Great breakdown. One thing I would add: in enterprise AI, the weakest layer is often not the model. It is the system around it. LLMs, RAG, Agents, and MCP only create value when data quality, permissions, governance, ownership, and decision flows are designed intentionally. Agentic AI is powerful, but without the right operating model, it can simply automate confusion faster. The r…
Workplace & Jobs value: accountability for: organisations demanding approval → raw LLM
This is the responsible thing to do, and other frontier labs and politicians should be lining up behind them. The climate change parallel is sobering. In both cases, the people closest to the science sounded the alarm while political and economic systems moved far too slowly. The difference with AI is the timescale. Climate change unfolded over decades, and AI disruption could compress that into …
AI Safety & Risk value: accountability + transparency for: society demanding approval → raw LLM
Ruben Hassid Artificial intelligence becomes substantially more impactful when it is connected to contextual information, persistent memory, and live business processes. In that environment, it no longer resembles just a chat interface—it operates more like essential infrastructure.
AI Products & Tools value: beneficence for: organisations optimistic approval → raw LLM
From my understanding, AI should not replace people, rather it should free up people to do what they do best: solving the world's unique problems and exercising the freedom to innovate. I appreciate Olah's honesty. However, in my opinion, handing over AI governance to governments have the potential to do more harm than good. If any government turns against its own people, this technology can dest…
AI Safety & Risk value: human_autonomy for: humanity skeptical fear → raw LLM
Great to see Anthropic taking a lead here and consulting sources of wisdom to guide AI adoption across a broad ideological spectrum. The real question is, is it all fluff or are they going to back it up with serious business strategy and values?
AI Safety & Risk value: accountability for: organisations skeptical mixed → raw LLM
The scary part about AI isn’t just job replacement. It’s that humans get meaning, identity, routine, and social connection from work too. Society is not psychologically prepared for that conversation yet.
AI Safety & Risk value: dignity for: society critical fear → raw LLM
Luís Rodrigues This is a useful way to frame the AI stack. LLMs, RAG, agents, and MCP - each solve a different problem, but enterprise value only appears when they are designed together around workflows, controls, and business outcomes. Deepesh Khandelwal, MBA, PMP, SA
Workplace & Jobs value: beneficence for: organisations optimistic approval → raw LLM
The real question is not what humans will do when AI does the work. It is what humans will do when the work they currently do loses its social meaning. Work provides structure, status, and community. If we automate the output without replacing those three things, we get efficiency without dignity. Pascal naming redesign of participation as the unresolved problem is the hardest truth in the entire…
AI Safety & Risk value: dignity for: individual_users critical resignation → raw LLM
This is the part that matters most for enterprise governance. The issue is not whether a particular lab is well-intentioned. Some clearly are. The issue is that good intentions do not neutralize the incentive structure. If frontier AI labs operate under commercial pressure, capital pressure, geopolitical pressure, and speed-to-market pressure, then enterprise buyers should not treat vendor assura…
AI Safety & Risk value: accountability + transparency for: organisations demanding approval → raw LLM
this is where the AI debate becomes larger than technology policy. Human dignity is not protected only by asking whether an AI system performs well after deployment. It is also protected by asking what roles AI is being sold into before adoption occurs. If AI is marketed as labour replacement, decision support, emotional support, professional assistance, or autonomous execution, then organization…
AI Policy & Regulation value: dignity + accountability for: humanity critical mixed → raw LLM
The real work task on day one is the instruction that separates this from every other AI tutorial. Most people start with experiments and toy prompts and wonder why AI never feels useful enough to stick with. Doing something that actually matters on the first day changes the relationship immediately because the value is real rather than theoretical. The voice file on day three is the other one wo…
AI Products & Tools value: beneficence for: individual_users optimistic approval → raw LLM
Ramon Portillo, Ph.D. Maybe in some places, but I happen to be sitting in front of over 120 papers and have read them and graded them myself. There was no AI used to evaluate the papers. There wasn't even a TA. You might want to think about who you are throwing under the bus here with this assumptive statement about "academia". While different schools have different climates towards research vs. …
General AI Discourse value: dignity for: individual_users critical outrage → raw LLM
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