Training agent in reinforcement learning: reproducibility of the code
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I get two different results from running this water-tank system example for reinforcement learning made by Mathworks:
This example has fixed the random number generator seed rng(0), so I expected the result to be the same on all computer. However, I ended up with two different agents on two computers:
- Computer A finished training the agent after 86 episodes (just like the published example) and gave me an identical agent to the example.
- Computer B needed 182 episodes to train the agent and gave me a different agent.
Both computers run MATLAB R2023b 64-bit on MS Windows 10. The code is unchanged from the example (except for changing doTraining = false to doTraining = true).
Computer A has an 8-core i7 processor. Computer B has a 6-core i7 processor.
I'm writing a tutorial for a univeristy-level course, so reproducibility is necessary so that students can follow the example. Any tip on how to facilitate this is also much appreciated.
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Ari Biswas
2024 年 2 月 20 日
This could also be as a result of slight variations in floating point numbers across the different computer architectures. These variations can add up to produce significant differences. That is why we cannot always guarantee reproducibility of results in our examples. It is ideal to have the same environment when trying to reproduce the training. If you cannot ensure everyone has the same system configuration, then it would be good to vary the random seed or the agent hyperparameters a little bit to get better training performance.
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轩
2024 年 6 月 16 日
Does this phenomenon occur in other frame like pytorch ?
And in some MathWorks rl example, the reproducibility is perfect between two different computers, which confuses me. When should I conside the the factor of computer hardware ?!
Please help and thank you in advance !
Ari Biswas
2024 年 6 月 17 日
I would believe it would be difficult to guarantee reproducibility across platforms or hardware, irrespective of the framework (MATLAB or PyTorch). Please check information on PyTorch documentation.
Difference in hardware COULD affect reproducibility, it all comes down to how floating point numbers are computed by the architectures. If your example results are reproducible you dont need to worry too much. If they are not, one of the contributing factors could be difference in hardware.
When you are sharing your work with others it can be good practice to cite the hardware configuration. That way they would know the system the work was originally performed on.
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