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Mohammed Hamdy
mmhamdy
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https://surfingmanifolds.substack.com/
mhamdy_res
mmhamdy
mmhamdy
mmhamdy.bsky.social
AI & ML interests
AI4Sci | NLP | Reinforcement Learning
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Profiling in PyTorch (Part 1): A Beginner's Guide to torch.profiler
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What if you could train a model on just 10 images instead of 60,000 and still get close to the same performance? Traditional machine learning requires thousands, even millions, of data points to achieve high accuracy. But what if we could "distill" the entire dataset into just a few synthetic samples? This is what Dataset Distillation offers. Unlike traditional knowledge distillation, we keep the model fixed and distill the knowledge contained in a massive training set into a tiny set of synthetic distilled images. The goal is to train a model on this ultra-small set and achieve performance that almost matches what the same model would get when trained on the massive original dataset. For example, training on only 10 distilled MNIST images (this is equivalent to a single image per class) yields 94% accuracy, compared to 99% when training on the full 60,000 images. Interestingly, these distilled images look significantly different (as you can see in the image below) from natural images because they are optimized for model training rather than for matching the correct data distribution. But that's not all. Most importantly, this same method opens the door to a potent form of data poisoning. Because distilled images are specifically optimized for rapid learning, an attacker can create a tiny set of adversarial distilled images to cause a well-trained model to forget or misclassify a specific category. What I find fascinating about dataset distillation is this: it mimics human-like learning by letting a model grasp a concept from a single example, but it does so using alien synthetic images that mean absolutely nothing to a human eye! What about you? What are your thoughts on it?
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mmhamdy
's models
17
Sort: Recently updated
mmhamdy/speecht5-finetuned-fleurs-it-it
Text-to-Speech
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Updated
Aug 28, 2023
mmhamdy/whisper-tiny-finetuned-minds14-en-us
Automatic Speech Recognition
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Updated
Aug 26, 2023
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1
mmhamdy/whisper-tiny-finetuned-gtzan
Audio Classification
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Updated
Aug 25, 2023
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1
mmhamdy/poca-SoccerTwos
Reinforcement Learning
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Updated
May 26, 2023
mmhamdy/vizdoom_health_gathering_supreme
Reinforcement Learning
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Updated
May 22, 2023
mmhamdy/ppo-LunarLander-v2-2
Reinforcement Learning
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Updated
May 19, 2023
mmhamdy/a2c-PandaReachDense-v2
Reinforcement Learning
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Updated
May 18, 2023
mmhamdy/a2c-AntBulletEnv-v0
Reinforcement Learning
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Updated
May 17, 2023
mmhamdy/Reinforce-Pixelcopter-PLE-v0
Reinforcement Learning
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Updated
Mar 16, 2023
mmhamdy/ppo-Pyramids
Reinforcement Learning
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Updated
Mar 8, 2023
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21
mmhamdy/ppo-SnowballTarget
Reinforcement Learning
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Updated
Mar 8, 2023
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2
mmhamdy/Reinforce-CartPole-v1
Reinforcement Learning
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Updated
Mar 7, 2023
mmhamdy/dqn-SpaceInvadersNoFrameskip-v4
Reinforcement Learning
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Updated
Mar 3, 2023
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4
mmhamdy/q-Taxi-v3
Reinforcement Learning
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Updated
Mar 2, 2023
mmhamdy/q-FrozenLake-v1-4x4-noSlippery
Reinforcement Learning
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Updated
Mar 2, 2023
mmhamdy/ppo-Huggy
Reinforcement Learning
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Updated
Feb 26, 2023
mmhamdy/ppo-LunarLander-v2
Reinforcement Learning
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Updated
Feb 26, 2023