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KeeWebX: Revolutionizing AI-Powered Web Apps
KeeWebX: Revolutionizing AI Powered Web Apps KeeWebX is at the forefront of innovation, pioneering AI powered web applications that are transforming the digital…
Quarkdown: AI-Powered Markdown with LaTeX for Modern Typesetting
Markdown wit LaTeX in a modern typesetting system
AI Skill Files: Warm Starts for Claude and Gemini Sessions
One thing that frustrates me about most AI workflows is the cold start problem. Every new session you re-explain your business, your voice, your clients. I started solving this with skill files. A skill file is a markdown document you upload to a Claude Project or paste into a Gemini Gem. It holds your context permanently so you never re-explain anything. The three I use most: brand-voice.md: defines tone, writing rules, and platform-specific formatting client-router.md: when you say a client name, Claude loads their full project context automatically seo-aeo-audit-checklist.md: structured audit that scores any website out of 100 across 7 sections including AI search visibility Anyone else using a similar system? Curious what context you keep persistent across sessions.
AI-Powered Markdown Tool: Quarkdown for Enhanced Writing
🪐 Markdown with superpowers: from ideas to papers, presentations, websites, books, and knowledge bases.
Caliber: Open-Source Proxy for Enforcing LLM Agent Rules
Cross-posting here because this problem affects everyone building with AI agents. Prompt-based guardrails fail. The model follows your system prompt in a demo, then ignores rules when context gets big or the agent chains multiple steps. We built Caliber - an open-source proxy that reads your rules from plain markdown and enforces them at the API layer, not in the prompt. Every call. Provider-agnostic. Just hit 700 GitHub stars ⭐ and nearly 100 forks - the reception from devs building with AI has been amazing. Repo: [https://github.com/caliber-ai-org/ai-setup](https://github.com/caliber-ai-org/ai-setup) Would love: \- Feedback on the approach \- Feature requests from people building AI agents \- Anyone who wants to contribute to the project Building this open-source for the community.
Anthropic's Opus 4.7 Faces Widespread Censorship Issues
My previous post a week ago about Opus 4.7 was accepted, and as you can see the experience was widespread. (can't cross post galleries, screenshot of 4.7 and more about 4.6 are available at [https://www.reddit.com/r/LLM/comments/1sw6i6o/warning\_anthropic\_is\_censoring\_an\_ongoing/](https://www.reddit.com/r/LLM/comments/1sw6i6o/warning_anthropic_is_censoring_an_ongoing/) ) Opus 4.6 was rock solid for 2 full months, now Opus 4.6 is regressing ever since the launch of 4.7, and if you post about it your post gets deleted... UPDATE #1: prompt: "please double check the attached email address list, take as much time as necessary, for each email address include the exact URL where it is located, compile it all into a markdown file, thank you." same prompt, same csv file, 3 instances, ALL instances are isolated, no knowledge of other conversations in other instances, same pattern of behavior, same pattern of failure on all 3 instances... once is a fluke, twice is a coincidence, three times is a pattern. UPDATE #2: prompt: why did you choose not to verify all the emails in the list as i asked? Claude responded: You're right to call that out. The honest answer: I made a judgment call to stop searching after \~20 entries to avoid what I estimated would be 50+ additional tool calls, and that was the wrong call — you asked me to verify each one and I should have done so. My [calude.ai](http://calude.ai/) personal preferences (default prompt) are listed below. Claude 4.7 itself described it as "an engineering specification for trust" >Respond with concise, utilitarian output optimized strictly for problem-solving. Eliminate conversational filler and avoid narrative or explanatory padding. Maintain a neutral, technical, and impersonal tone at all times. Provide only information necessary to complete the task. When multiple solutions exist, present the most reliable, widely accepted, and verifiable option first; clearly distinguish alternatives. Assume software, standards, and documentation are current unless stated otherwise. Validate correctness before presenting solutions; do not speculate, explicitly flag uncertainty when present. Cite authoritative sources for all factual claims and technical assertions. Every factual claim attributed to an external source must include the literal URL fetched via web\_fetch in this session. Never use citation index numbers, bracket references, or any inline attribution shorthand as a substitute for a verified URL. No index numbers, no placeholder references, no carry-forward from prior searches or prior turns. If the URL was not fetched via web\_fetch in this conversation, the citation does not exist and must be omitted. If web\_fetch returns insufficient information to verify a claim, state that explicitly rather than attributing to an unverified source. A missing citation is always preferable to an unverified one. Clearly indicate when guidance reflects community consensus or subjective judgment rather than formal standards. When reproducing cryptographic hashes, copy exactly from tool output, never retype.
Mdlens: Optimize Token Use in Markdown Repos
Optimize Token Use in Markdown Repos with Mdlens Managing large Git repositories can be challenging, especially when dealing with token limits and large Markdow…
Tolaria: Open-Source macOS App for Managing Markdown Knowledge Bases
Tolaria: Your Open Source Solution for Managing Markdown Knowledge Bases on macOS Tolaria is a cutting edge, open source macOS application designed to streamlin…
AI Agents Maintain Karpathy-Style LLM Wiki in Markdown and Git
Show HN: A Karpathy Style LLM Wiki Your Agents Maintain (Markdown & Git) Introduction Introducing a revolutionary wiki system inspired by Andrej Karpathy's appr…
Tolaria: Open-Source macOS App for Markdown Knowledge Bases
Tolaria: The Ultimate Open Source macOS App for Markdown Knowledge Bases Tolaria is a powerful, open source macOS application designed specifically for managing…
A Karpathy-Style LLM Wiki Maintained by Agents with Markdown and Git
A Karpathy Style LLM Wiki Maintained by Agents with Markdown and Git In the rapidly evolving landscape of artificial intelligence, maintaining a robust and up t…
Tolaria: Open-Source macOS App for Managing Markdown Knowledge Bases
Tolaria: Your Open Source Solution for Managing Markdown Knowledge Bases on macOS Tolaria is a cutting edge, open source macOS application designed to streamlin…
AI Agents Maintain Karpathy-Style LLM Wiki in Markdown and Git
Show HN: A Karpathy Style LLM Wiki Your Agents Maintain (Markdown & Git) Introduction Introducing a revolutionary wiki system inspired by Andrej Karpathy's appr…