AI-powered
podcast player
Listen to all your favourite podcasts with AI-powered features
Challenges of Multimodal Feature Stores in AI Training
Creating feature stores for multimodal AI involves the complexity of managing various data types such as videos alongside structured data, which need to be efficiently stored, queried, and used during large-scale training. Unlike traditional feature stores focused on fast inference for tabular data, multimodal feature stores are primarily for training to handle the diverse and high-dimensional nature of data sets. Ensuring parity between training and inference features is essential to maintain model accuracy and effectiveness, involving challenges like data backfilling and managing large datasets.