Lee Powell · Architect of Scrivener and Scapple · Lumen & Lever Most AI document pipelines fail before the model is ever called. Tables become paragraphs. Lists collapse into prose. Annotations are detached from context. Page references disappear. Source traceability is replaced by a confidence score. The structure that gave the document its meaning is gone before retrieval runs, and no retrieval
AutoGPT is the vision of accessible AI for everyone, to use and to build on. Our mission is to provide the tools, so that you can focus on what matters.
I used to think AI coding assistants were autocomplete on steroids. Fancy IntelliSense. Then I tried using one as an actual junior developer — someone who writes the first draft while I review and refine. Two months later, my workflow is unrecognizable. I just shipped a complete B2B configuration tool — interactive maps, zone polygons, dynamic forms, the works — in under three hours. Here's what c
Building a Translation Pipeline for International Contract Bidding If your company bids on international contracts, you've probably dealt with the translation bottleneck. Technical proposals need precise translation, certified documents have strict formatting requirements, and procurement deadlines don't wait for anyone. After seeing how UK public procurement translation requirements can make or
Nexus-Open-CLI Nexus-Open-CLI is an App Store-style extensible CLI ecosystem infrastructure. In the process of daily development and using productivity tools, I have identified a long-standing issue: There are many CLI tools, but they are fragmented and difficult to manage in a unified way. For example: Different tools need to be installed separately, and their commands must be memorized indivi
An opinionated list of Python frameworks, libraries, tools, and resources
Go is a compiled language — the code is converted into machine‑readable form before execution. From a beginner’s perspective, this means Go catches many errors during compilation, giving you cleaner, faster, and more predictable performance at runtime. Go is widely used for: API development CLI tools Microservices architecture Backend server. DEVOPS activity So it fits perfectly with the kind of
If you've tried building an AI agent in the last six months, you've hit the same wall: there are half a dozen frameworks, each with a different philosophy, a different API surface, and a different definition of what an "agent" even is. I spent a weekend writing the same simple agent — "read a GitHub issue, classify it as bug/feature/question, and post a comment" — in six different frameworks. This