Get the app
Tijmen Blankevoort
Staff engineer at Qualcomm, leading their compression and quantization research teams. Focuses on making neural networks more efficient.
Best podcasts with Tijmen Blankevoort
Ranked by the Snipd community
Aug 19, 2019
• 50min
Neural Network Quantization and Compression with Tijmen Blankevoort - TWIML Talk #292
chevron_right
In this discussion, Tijmen Blankevoort, a staff engineer at Qualcomm, delves into the fascinating world of neural network compression and quantization. He explains how much ML models can be compressed without losing efficiency and outlines the best strategies for achieving this. The conversation also touches on the lottery ticket hypothesis, exploring how feature selection can optimize neural networks. Tijmen reveals challenges in automating compression, like error propagation, and introduces innovative data-free quantization techniques that enhance performance across various models.
The AI-powered Podcast Player
Save insights by tapping your headphones, chat with episodes, discover the best highlights - and more!
Get the app