Collaboration and Competition
Training Code
| Criteria | Meet Specification |
|---|---|
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Training code |
The repository includes functional, well-documented, and organized code for training the agent. |
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Framework |
The code is written in PyTorch and Python 3. |
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Saved Model Weights |
The submission includes the saved model weights of the successful agent. |
README
| Criteria | Meet Specification |
|---|---|
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The GitHub submission includes a
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Project Details |
The README describes the the project environment details (i.e., the state and action spaces, and when the environment is considered solved). |
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Getting Started |
The README has instructions for installing dependencies or downloading needed files. |
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Instructions |
The README describes how to run the code in the repository, to train the agent. For additional resources on creating READMEs or using Markdown, see here and here . |
Report
| Criteria | Meet Specification |
|---|---|
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Report |
The submission includes a file in the root of the GitHub repository (one of
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Learning Algorithm |
The report clearly describes the learning algorithm, along with the chosen hyperparameters. It also describes the model architectures for any neural networks. |
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Plot of Rewards |
A plot of rewards per episode is included to illustrate that the agents get an average score of +0.5 (over 100 consecutive episodes, after taking the maximum over both agents). The submission reports the number of episodes needed to solve the environment. |
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Ideas for Future Work |
The submission has concrete future ideas for improving the agent's performance. |