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Efficient training of Neural Networks

Reference number
Coordinator Bitynamics AB
Funding from Vinnova SEK 220 000
Project duration July 2024 - September 2024
Status Completed
Venture International individual mobility within cutting-edge technology
Call Closed offer - International individual mobility for cutting-edge technology 2024

Important results from the project

This project aimed to develop computationally and energy efficient algorithms for training AI models in PyTorch. The architecture we worked with can be parallelized, which makes the inference even more efficient. An important results is that we now have a demo of efficient algorithms that demonstrate how much better they are than today´s technology. It will be easier to sell in to other actors.

Expected long term effects

An important results is that we now have a demo of efficient algorithms that demonstrate how much better they are than today´s technology. It will be easier to sell in to other actors.

Approach and implementation

The project was carried out at Stanford in collaboration with Prof. Mert Pilanci and his group. The goal was to develop our patented efficient AI training algorithms in PyTorch, which we managed to achieve. The performance of the algorithms was verified on open source data.

The project description has been provided by the project members themselves and the text has not been looked at by our editors.

Last updated 8 November 2024

Reference number 2024-01778