By axect
Orchestrate full multi-model AI research pipelines for physics, AI/ML, statistics, math: search 240M+ academic papers, brainstorm/plan/implement/test/visualize code in detected languages, explain concepts, generate validated reports or papers.
npx claudepluginhub axect/magi-researchers --plugin magi-researchersExecutes the research code in `src/` to generate result artifacts in `results/`. This is Phase 3.5
Generates high-quality explanations of concepts using Gemini and Codex in parallel (Phase 1: MAGI strategy exploration), then synthesizes a single-voice explanation with Claude (Phase 2: convergent generation).
Implements research code based on an existing research plan. Requires a `research_plan.md` to be present in the active research output directory.
Generates a structured markdown research report from all previous phase outputs. Actively integrates existing plots, generates missing visualizations, and cross-verifies claim-evidence integrity. Requires at least some prior phase results to exist.
Searches academic literature via OpenAlex (240M+ works) and optionally web sources. Standalone skill for quick literature discovery without the full brainstorm pipeline.
Creates tests for research code and generates publication-quality visualizations. Requires
Orchestrates multi-agent collaborative writing from upstream research artifacts. Produces structured documents (papers, proposals) with evidence-grounded prose, MAGI cross-review, and automated quality validation.
Runs the complete research pipeline: Brainstorming → Planning → Implementation → Testing & Visualization → Reporting. Orchestrates all phases with user checkpoints between each.
Oh My Paper research harness: memory system, Codex delegation, and pipeline commands for academic research projects.
Share bugs, ideas, or general feedback.
Scientific research agent extension - turns research goals into reproducible Jupyter notebooks with Python REPL, data analysis, and ML workflows
Semi-automated research assistant for academic research and software development, with skills for literature review, experiments, analysis, writing, and project knowledge management
Synapse research orchestration plugin for Claude Code. Connects AI agents to Synapse for experiment execution, literature search, progress reporting, and autonomous research loops.
PhD-level research capabilities: literature review, multi-source investigation, critical analysis, hypothesis-driven exploration, quantitative/qualitative methods, and lateral thinking
Production-grade academic research pipeline for Claude Code: research → write → review → revise → finalize. Ships 4 skills (deep-research, academic-paper, academic-paper-reviewer, academic-pipeline) covering 35+ modes, 32-agent ensemble, Material Passport handoff schema, v3.6.7 cross-model audit gate (synthesis + research-architect + report-compiler pattern protection layer), and v3.6.8 generator-evaluator contract for paper drafting.