By youyinnn
Skills for deep learning, graph neural networks, explainability, time series, and dimensionality reduction
This skill should be used for time series machine learning tasks including classification, regression, clustering, forecasting, anomaly detection, segmentation, and similarity search. Use when working with temporal data, sequential patterns, or time-indexed observations requiring specialized algorithms beyond standard ML approaches. Particularly suited for univariate and multivariate time series analysis with scikit-learn compatible APIs.
Comprehensive toolkit for creating, analyzing, and visualizing complex networks and graphs in Python. Use when working with network/graph data structures, analyzing relationships between entities, computing graph algorithms (shortest paths, centrality, clustering), detecting communities, generating synthetic networks, or visualizing network topologies. Applicable to social networks, biological networks, transportation systems, citation networks, and any domain involving pairwise relationships.
Query the Precision Medicine Knowledge Graph (PrimeKG) for multiscale biological data including genes, drugs, diseases, phenotypes, and more.
Bayesian modeling with PyMC. Build hierarchical models, MCMC (NUTS), variational inference, LOO/WAIC comparison, posterior checks, for probabilistic programming and inference.
Deep learning framework (PyTorch Lightning). Organize PyTorch code into LightningModules, configure Trainers for multi-GPU/TPU, implement data pipelines, callbacks, logging (W&B, TensorBoard), distributed training (DDP, FSDP, DeepSpeed), for scalable neural network training.
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 claimBased on adoption, maintenance, documentation, and repository signals. Not a security audit or endorsement.
A curated collection of 50 Claude Code skills organized by research workflow stage, tailored for AI and Medical AI PhD researchers.
| File | Description |
|---|---|
| PLATFORM_GUIDE.en.md | Which skills work in Claude Code vs Claude.ai |
| PLATFORM_GUIDE.zh.md | 平台兼容性指南(中文) |
| recommended_skills_for_medical_ai_phd.en.md | Recommended skills by research stage (English) |
| recommended_skills_for_medical_ai_phd.zh.md | 按研究阶段推荐的 skills(中文) |
| Plugin | Skills | Description |
|---|---|---|
literature-and-topic-selection | 12 | Topic ideation, literature review, academic databases |
data-preparation-and-processing | 12 | Medical imaging, EHR, physiological signals, data processing |
model-development-and-experiments | 11 | Deep learning, GNNs, explainability, time series |
results-analysis-and-visualization | 6 | Plotting, statistical analysis, interactive visualization |
paper-writing-and-submission | 10 | Academic writing, slides, posters, peer review |
/plugin marketplace add youyinnn/skills-collection
/plugin install literature-and-topic-selection@skills-collection
/plugin install data-preparation-and-processing@skills-collection
/plugin install model-development-and-experiments@skills-collection
/plugin install results-analysis-and-visualization@skills-collection
/plugin install paper-writing-and-submission@skills-collection
You can install only the plugins relevant to your current work.
/plugin install literature-and-topic-selection@skills-collection
/plugin install data-preparation-and-processing@skills-collection
/plugin install model-development-and-experiments@skills-collection
/plugin install results-analysis-and-visualization@skills-collection
/plugin install paper-writing-and-submission@skills-collection
| Skill | Purpose |
|---|---|
scientific-brainstorming | Research ideation, finding gaps, cross-disciplinary exploration |
hypothesis-generation | Derive testable hypotheses from data or literature |
literature-review | Systematic review across PubMed / arXiv / bioRxiv |
scientific-critical-thinking | Evaluate study design, identify bias, evidence grading (GRADE) |
citation-management | Reference management workflows |
pyzotero | Programmatic Zotero library management |
arxiv-database | Search arXiv preprints (CS / AI / Statistics) |
pubmed-database | PubMed REST API with Boolean / MeSH queries |
biorxiv-database | Search bioRxiv life science preprints |
openalex-database | Query 240M+ scholarly works, citation analysis |
bgpt-paper-search | Extract structured experiment data from full-text papers |
research-grants | NSF / NIH / DARPA grant writing |
| Skill | Purpose |
|---|---|
pydicom | Read/write DICOM files (CT / MRI / X-Ray / Ultrasound) |
pathml | Computational pathology WSI analysis, 160+ formats |
histolab | Lightweight H&E tile extraction |
imaging-data-commons | Access NIH public medical imaging datasets |
pyhealth | Medical AI toolkit: MIMIC-III/IV, eICU, OMOP |
clinicaltrials-database | Query ClinicalTrials.gov |
clinvar-database | Query ClinVar genetic variants database |
neurokit2 | Physiological signal processing: ECG / EEG / EDA / PPG |
polars | Fast in-memory dataframe processing |
dask | Distributed computing for larger-than-RAM workflows |
exploratory-data-analysis | EDA reports for scientific data formats |
statistical-analysis | Statistical testing and modeling |
| Skill | Purpose |
|---|---|
pytorch-lightning | Structured PyTorch training with logging and checkpointing |
transformers | HuggingFace transformers for NLP and vision tasks |
torch-geometric | Graph neural networks for molecular / biomedical data |
scikit-learn | Classical ML: classification, regression, clustering |
pymc | Bayesian statistical modeling |
shap | Model explainability via Shapley values |
umap-learn | Dimensionality reduction and embedding visualization |
aeon | Time series classification and regression |
networkx | Graph analysis and network science |
primekg | Biomedical knowledge graph for drug discovery |
stable-baselines3 | Reinforcement learning algorithms |
npx claudepluginhub youyinnn/skills-collection --plugin model-development-and-experimentsSkills for research topic selection, literature review, and academic database search
Skills for scientific visualization, statistical analysis, and interactive plotting
Skills for medical imaging, EHR data, physiological signals, and general data processing
Skills for academic writing, venue templates, peer review, and presentation materials
Research orchestration, project intake and management, research-gap and meta-analysis topic discovery, and author-strategy analysis.
Specialized research analysis agents for critical thinking, evidence verification, synthesis, and parallel paper analysis
Scientific writing, citations, grants, posters, and academic career (13 skills)
Oh My Paper research harness: memory system, Codex delegation, and pipeline commands for academic research projects.
A growing collection of Claude-compatible academic workflow bundles. Covers scientific figures, manuscript writing and polishing, reviewer assessment, citation retrieval, data availability, paper reading, literature search, response letters, paper-to-PPTX conversion, and evidence-grounded Chinese invention patent drafting. Rules are organized as reusable skill folders with explicit workflows and quality checks.
TypeDB-powered scientific knowledge notebook — store, recall, and analyze scientific literature in a knowledge graph