By zaynram
Literature review workspace. Multi-corpus reading, annotation, semantic search, Ollama-powered syntheses, and a vendored pdf MCP. Inspired by but independent of the Daisy Lit Review artifact.
Generate a synthesis digest for the active corpus scope (Ollama default; --claude opt-in).
Ingest a paper into the active scholar corpus from a DOI, arXiv ID, BibTeX file, or RIS file.
Show paper counts by status, stale papers, and last-opened timestamp for a corpus.
Guides usage of scholar plugin surfaces for literature review sessions — UI views, CLI subcommands, and slash commands.
To install dependencies:
bun install
To run:
bun run index.ts
This project was created using bun init in bun v1.3.11. Bun is a fast all-in-one JavaScript runtime.
Admin access level
Server config contains admin-level keywords
Based on adoption, maintenance, documentation, and repository signals. Not a security audit or endorsement.
Own this plugin?
Verify ownership to unlock analytics, metadata editing, and a verified badge. GitHub access is read-only (username + org membership).
Sign in to claimOwn this plugin?
Verify ownership to unlock analytics, metadata editing, and a verified badge. GitHub access is read-only (username + org membership).
Sign in to claimFive structured reasoning protocols: adversarial stress-testing, impact forecasting, tradeoff analysis, assumption surfacing, and plan review.
Recalibrates the model toward idiomatic Nushell skills, slash commands, and a soft post-tool-use hook that nudges away from common bash-translation patterns.
npx claudepluginhub zaynram/cowork-marketplace --plugin scholarMCP server that saves 98% of your context window with session continuity. Sandboxed code execution in 11 languages, FTS5 knowledge base with BM25 ranking, and automatic state restore across compactions.
Open-source, local-first Claude Code plugin for token reduction, context compression, and cost optimization using hybrid RAG retrieval (BM25 + vector search), reranking, AST-aware chunking, and compact context packets.
Write SQL, explore datasets, and generate insights faster. Build visualizations and dashboards, and turn raw data into clear stories for stakeholders.
Give your AI a memory — mine projects and conversations into a searchable palace. 33 MCP tools, auto-save hooks, and guided setup.
Complete AI coding workflow system. Self-correcting memory + persistent FTS5-indexed research wikis + auto-research loop + multi-LLM council on a single SQLite store. 33 skills, 8 agents, 22 commands, 37 hook scripts across 24 events. Cross-agent via SkillKit.
Agent Skills for AI/ML tasks including dataset creation, model training, evaluation, and research paper publishing on Hugging Face Hub