Top AI Research Advances For Machine Learning Infrastructure

#artificialintelligence 

As deep learning models become more and more popular in real-world business applications and training datasets grow very large, machine learning (ML) infrastructure is becoming a critical issue in many companies. To help you stay aware of the latest research advances in ML infrastructure, we've summarized some of the most important research papers recently introduced in this area. As you read these summaries, you will be able to learn from the experience of the leading tech companies, including Google, Microsoft, and LinkedIn. The papers we've selected cover data labeling and data validation frameworks, different approaches to distributed training of ML models, a novel approach to tracking ML model performance in production, and more. If you'd like to skip around, here are the papers we've summarized: If these accessible AI research analyses & summaries are useful for you, you can subscribe to receive our regular industry updates below.