Image Similarity Computation
MemSQL enhances image recognition by implementing fundamental building blocks like dot product and Euclidean distance for feature vector computation. By applying deep learning model layers directly within the database, it enables real-time processing of incoming images, achieving low latency for operationalizing models. This approach allows for efficient data transfer and computation, streamlining the integration of AI into applications.In this clip
From this podcast

The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)
Real-Time Machine Learning in the Database with Nikita Shamgunov - #84
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