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pruning
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The idea is to have a more advanced Filter Pruning method to be able to show SOTA results in model compression/optimization.
I suggest reimplementing the method from here: https://github.com/cmu-enyac/LeGR and reproduce baseline results for MobileNet v2 on CIFAR100 as the first step.
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We also need to benchmark the Lottery-tickets Pruning algorithm and the Quantization algorithms. The models used for this would be the student networks discussed in #105 (ResNet18, MobileNet v2, Quantization v2).
Pruning (benchmark upto 40, 50 and 60 % pruned weights)
- Lottery Tickets
Quantization
- Static
- QAT
Benchmarking KD
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From a complexity perspective, this ticket is at an ea