A Systematic Survey and Benchmark of Deep Learning for Molecular Property Prediction in the Foundation Model Era
arXiv cs.LG / 4/21/2026
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Key Points
- The paper presents a systematic survey of deep learning approaches for molecular property prediction, covering four paradigms: Quantum, Descriptor Machine Learning, Geometric Deep Learning, and Foundation Models.
- It provides a unified taxonomy that connects molecular representations, model architectures, and downstream interdisciplinary application needs.
- Benchmarking is analyzed across both commonly used datasets and industry-perspective datasets spanning quantum, physicochemical, physiological, and biophysical targets.
- The authors identify major benchmarking challenges such as inconsistent stereochemistry, heterogeneous assay sources, and limited reproducibility when using random or poorly defined data splits.
- They propose modern benchmark design principles (time- and scaffold-aware splitting) and three future directions: physics-aware learning, uncertainty-calibrated foundation models, and realistic multimodal benchmark ecosystems using both computational and experimental data.
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