mims-harvard/TDC
Therapeutics Commons (TDC): Multimodal Foundation for Therapeutic Science
This project helps therapeutic scientists accelerate drug discovery and development by providing a centralized resource for AI-ready datasets and standardized benchmarks. It takes raw biochemical data and therapeutic targets as input, then outputs insights into which AI methods are most suitable for various drug discovery applications. This is designed for biochemical researchers, AI scientists, and drug developers.
1,215 stars. No commits in the last 6 months.
Use this if you are a researcher or developer working in therapeutic science and need reliable, pre-processed datasets and benchmarks to evaluate AI models for tasks like target discovery, activity screening, or predicting drug efficacy and safety.
Not ideal if you are looking for a ready-to-use, off-the-shelf drug discovery application rather than a foundational resource for AI method development and evaluation.
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Last pushed
Jul 13, 2025
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