sciagentkit
https://bio.tools/sciagentkitSciAgentKit is an MCP-native toolkit that connects AI agents to reproducible computational drug-discovery workflows. It integrates established tools for molecular analysis, protein-structure assessment, binding-site detection, molecular docking, molecular dynamics, trajectory analysis and scientific reporting.
Sourced from
- bio.tools — sciagentkit
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