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zbchern / awesome-machine-learning-reliability

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A curated list of awesome resources regarding machine learning reliability.

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Awesome Machine Learning Reliability Awesome

Awesome Machine Learning On Source Code

Figure from "Explaining and Harnessing Adversarial Examples" by Goodfellow et al. ICLR15

A curated list of awesome papers regarding machine learning reliability, inspired by Awesome Machine Learning On Source Code and Awesome Adversarial Machine Learning.

Contents

Conferences

Security

Machine Learning

Natural Language Processing

Conference Deadlines

Blogs

Competitions

Papers

Adversarial Computer Vision

Attack

White-box Attack

Black-box Attack

Real-world Attack

Benchmarking

Defense

Adversarial Training

Adversarial Detection

Model Compression

Manifold Projections

Adversarial NLP and Speech

Provable and Verifiable AI Robustness

Machine Learning Testing

Survey

Empirical Study

Other Applications

Other Resources

License

CC0
To the extent possible under law, Zhuangbin Chen has waived all copyright and related or neighboring rights to Awesome Machine Learning Reliability. This work is published from: China.

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