Scientific Agent Skills: 135 AI-Powered Research Skills for Claude Code, Cursor & Codex
A project that recently hit GitHub Trending is turning heads in the research community — Scientific Agent Skills, developed by K-Dense (k-dense.ai). This open-source repository bundles 135 ready-to-use AI research skills spanning bioinformatics, drug discovery, clinical research, materials science, and 17+ other disciplines. Whether you use Claude Code, Cursor, Codex, or any other AI agent that supports the Agent Skills standard (agentskills.io), you can install these skills and start doing real science right away.
If you've been looking for a way to bridge scientific AI tools with your everyday coding environment — without juggling standalone scripts and Jupyter notebooks — this project deserves a close look.
Table of Contents
What Is Scientific Agent Skills
Scientific Agent Skills is a GitHub repository containing 135 pre-built Agent Skill files. Each skill is a standardized instruction set that tells an AI agent how to carry out a specific research task. These skills follow the open standard defined by agentskills.io, so any compatible AI agent can use them out of the box.
No need to write prompts from scratch, tweak parameters, or build your own workflows. A single skill file is a complete research task template — the AI agent reads it and executes the steps as defined.
This project is currently ranking high on GitHub Trending with steadily growing stars. Community feedback has been overwhelmingly positive — especially from researchers who already work in command-line and coding environments and have been waiting for a way to seamlessly embed AI capabilities into their workflows.
How It Works & the Agent Skills Standard
Agent Skills is an open standard defined by agentskills.io, designed to make AI agent capabilities shareable and reusable like plugins. A skill is essentially a Markdown or JSON file that describes:
- Task objective: What this skill is meant to do
- Execution steps: The sequence of operations the AI agent should follow
- Required tools: Which external APIs, databases, or CLI tools are needed
- Output format: How the results should be presented
The 135 skills in Scientific Agent Skills are all written to this standard. Drop the skill files into your project's .agents/skills/ directory, and the AI agent will automatically discover and use them.
Currently supported AI agents include:
- Claude Code — Anthropic's terminal-based coding assistant
- Cursor — The AI-powered code editor
- Codex — OpenAI's code generation tool
- Any other tool compatible with the Agent Skills standard
For researchers, this means you can invoke professional-grade scientific capabilities directly from your familiar coding environment — no platform-switching required.
17+ Discipline Categories at a Glance
The most impressive aspect of Scientific Agent Skills is its disciplinary breadth. The 135 skills are distributed across 17+ major categories, covering virtually every major field of modern scientific research:
| Category | What It Covers | Example Skills |
|---|---|---|
| Bioinformatics & Genomics | Sequence analysis, single-cell RNA-seq, gene networks | FASTA sequence alignment, differential gene expression analysis |
| Cheminformatics & Drug Discovery | Molecular prediction, virtual screening, ADMET property prediction | Molecular docking, drug-target interaction prediction |
| Proteomics & Mass Spectrometry | Protein identification, quantitative analysis | Mass spectrometry data parsing, proteome differential analysis |
| Clinical Research & Precision Medicine | Clinical trial design, patient stratification | Clinical trial data queries, biomarker analysis |
| Medical AI & Clinical ML | Disease prediction, clinical decision support | Electronic health record analysis, prognostic model building |
| Medical Imaging & Digital Pathology | Image segmentation, pathology slide analysis | CT/MRI image analysis, cell classification |
| Machine Learning & AI | Model training, hyperparameter optimization, feature engineering | Auto-modeling, cross-validation, model interpretability |
| Materials Science & Chemistry | Material property prediction, crystal structure analysis | Materials database queries, phase diagram computation |
| Physics & Astronomy | Numerical simulation, astronomical data analysis | Spectral analysis, celestial object classification |
| Engineering & Simulation | Finite element analysis, CFD simulation | Structural mechanics calculations, fluid dynamics simulation |
| Data Analysis & Visualization | Statistical analysis, chart generation | Exploratory data analysis, statistical testing |
| Geospatial Science & Remote Sensing | GIS analysis, satellite image processing | Land cover classification, change detection |
| Laboratory Automation | Experiment workflow orchestration, data acquisition | Experiment protocol generation, instrument data parsing |
| Scientific Communication | Literature review, scientific writing | Systematic literature search, paper structure generation |
| Multi-Omics & Systems Biology | Genome-proteome integrated analysis | Pathway enrichment analysis, network pharmacology |
| Protein Engineering & Design | Protein structure prediction, mutation design | AlphaFold result analysis, mutation stability prediction |
| Research Methodology | Experimental design, statistical method selection | Power analysis, sample size calculation |
Each category contains multiple specific skills, totaling 135. You can install them selectively based on your research area, or deploy everything at once.
100+ Scientific Database Integrations
Analytical skills alone aren't enough — scientific research depends on data. Scientific Agent Skills comes with built-in access to 100+ scientific and financial databases, including:
- PubChem — Compound structures and bioactivity data
- ChEMBL — Bioactivity database for drug-like molecules
- UniProt — Protein sequences and functional annotations
- COSMIC — Cancer somatic mutation database
- ClinicalTrials.gov — Global clinical trial registry
- FRED — Federal Reserve Economic Data
- USPTO — U.S. Patent database
- PDB (Protein Data Bank) — 3D protein structures
- NCBI Gene / GEO — Gene information and expression data
- KEGG / Reactome — Biological pathways and metabolic networks
This means the AI agent doesn't just "write code for you" — it can directly query these databases, pull data, and complete the analysis locally. The entire pipeline from data retrieval to results runs seamlessly within your coding environment.
Real-World Usage Scenarios
Scenario 1: Virtual Screening in Drug Discovery
You're a computational chemist who needs to screen compounds from PubChem for potential binding to a target protein. The traditional workflow requires manually downloading compound libraries, preparing ligand files, running docking simulations, and analyzing results — easily half a day's work.
With Scientific Agent Skills, you can simply tell Claude Code:
Use the virtual-screening skill to screen candidate compounds from PubChem against the EGFR target, rank by docking score, and output the top 20 results
The AI agent automatically queries the PubChem API for compounds, prepares molecular files, runs docking calculations, and organizes the results. All you need to do is review the final output.
Scenario 2: Single-Cell RNA-seq Data Analysis
You have a 10x Genomics single-cell sequencing dataset and need to run clustering, differential gene analysis, and cell type annotation. Previously this meant writing stacks of R/Python scripts and tuning numerous parameters.
Use the single-cell-rnaseq skill to analyze the 10x data in the data/ directory — run QC, clustering, UMAP visualization, and differential gene expression analysis
The skill comes with a pre-configured standard analysis pipeline (Seurat/Scanpy), including QC thresholds, dimensionality reduction parameters, and clustering resolutions. The AI agent follows the pipeline and outputs charts and result tables.
Scenario 3: Systematic Literature Review
You're writing a review on "AI in Precision Medicine" and need to systematically search the literature, extract key information, and organize it into a structured table.
Use the systematic-literature-review skill to search for literature on AI in precision medicine from 2023–2026, extract study type, sample size, model performance, and output a PRISMA flow diagram and data extraction table
The AI agent searches PubMed, screens papers, extracts data, and even generates a PRISMA-compliant flow diagram.
Scenario 4: Clinical Trial Data Query
Use the clinical-trials-query skill to search ClinicalTrials.gov for all Phase III immunotherapy trials in non-small cell lung cancer, extracting eligibility criteria, primary endpoints, and trial status
This kind of query used to require manual searching on the website and copying results one by one. Now the AI agent calls the ClinicalTrials.gov API directly and outputs structured results.
K-Dense: The Free, Open-Source AI Scientist
Behind Scientific Agent Skills is K-Dense (k-dense.ai), a free and open-source AI co-scientist desktop application. Its core design philosophy is BYOK (Bring Your Own Key) — bring your own API key and use 40+ AI models for scientific research.
Key features of K-Dense:
- Fully local execution: Your data stays on your machine at all times — nothing is uploaded to third-party servers
- 40+ model support: Including GPT-4o, Claude, Gemini, Llama, Mistral, and more
- Built-in web search: Search literature and databases without leaving the app
- File handling: Directly reads CSV, Excel, FASTA, PDB, and other scientific file formats
- Optional cloud compute: Through Modal integration, elastically scale to cloud GPUs when you need heavy computation
That said, you don't need K-Dense to use these skills. As long as your AI agent supports the Agent Skills standard, just drop the skill files in and you're good to go. K-Dense simply provides a ready-to-use desktop option.
Getting Started
Getting started with Scientific Agent Skills is straightforward:
Step 1: Clone the Repository
git clone https://github.com/K-Dense-AI/scientific-agent-skills.git
cd scientific-agent-skills
Step 2: Browse Skills
All skill files are organized by discipline within the repository. Browse the directory structure to find the skills you need.
Step 3: Deploy to Your AI Agent
Copy the selected skill files into your project's .agents/skills/ directory:
# Example: Using skills in a Claude Code project
mkdir -p .agents/skills
cp -r scientific-agent-skills/bioinformatics/* .agents/skills/
Step 4: Start Using
In Claude Code, Cursor, or Codex, simply reference the skill by name, and the AI agent will follow the pre-defined workflow.
# In Claude Code
> Use the sequence-analysis skill to analyze the sequence composition in this FASTA file
How It Compares to Other AI Research Tools
There are already plenty of AI research tools out there. What sets Scientific Agent Skills apart?
| Tool | What It Does | How Scientific Agent Skills Differs |
|---|---|---|
| ChatGPT / Claude Web | General-purpose conversational AI | Requires manual prompting, no standardized research workflows, cannot directly query databases |
| Jupyter Notebook + AI Plugins | Interactive computing environment | You still write all the code yourself; AI only assists with autocomplete, no complete task pipelines |
| Benchling / Dotmatics | Laboratory information management systems | Commercial software, expensive, limited customization, no direct AI agent integration |
| Elicit / Consensus | AI-powered literature search | Only covers the literature search step, doesn't extend to data analysis, experiment design, etc. |
| Scientific Agent Skills | Research skill library for AI agents | 135 standardized skills across 17+ disciplines, 100+ database integrations, embedded in coding environments, open source and free |
The core advantage of Scientific Agent Skills is standardization + integration. It's not a standalone app — it's a skill library that embeds into your existing workflow. You don't need to learn a new tool; just install a few extra skills in Claude Code or Cursor.
Conclusion
Scientific Agent Skills represents an important milestone in AI research tooling. It proves a key point: AI agent research capabilities can be standardized, modularized, and made reusable.
Three core values of this project:
- Out of the box: 135 skills covering 17+ disciplines — no need to write your own prompts or build workflows from scratch
- Deep integration: Plugs directly into Claude Code, Cursor, Codex, and other coding environments, with seamless access to 100+ databases
- Open source & free: Built on the open Agent Skills standard, community-driven, with data security by design
If you're a researcher, computational biologist, drug discovery scientist, or anyone who does scientific work in a coding environment, this project is worth trying. Its GitHub Trending status also reflects the strong community demand for tools like this.
Repository: github.com/K-Dense-AI/scientific-agent-skills
K-Dense Website: k-dense.ai
Agent Skills Standard: agentskills.io
Related reading: Agent Skills: Making AI Coding Assistants Truly Useful | Best AI Coding Assistents of 2026 Compared