Datasets:
ArXiv:
License:
{ | |
"name": "27_Image_Generation_DCGAN_MNIST_DL", | |
"query": "I need to create a system for image generation using a DCGAN model with the MNIST`dataset. Load the MNIST dataset in `src/data_loader.py` and implement the DCGAN model in `src/model.py`. The system should ensure the use of the correct DCGAN architecture, save the generated images to `results/figures/`, monitor the model training by recording training loss under `results/metrics/` and generated images under `results/figures/`, and perform a hyperparameter search on the generation parameters such as noise vector dimensions and learning rate in `src/train.py` to improve performance. Additionally, create and save a GIF animation of the generated images to `results/figures/generated_images.gif`, present the training process and results in a well-structured Jupyter Notebook, and convert the Notebook into a polished PDF report saved as `results/training_report.pdf`. The DCGAN model architecture should be clearly documented in the Notebook to avoid confusion with other GAN variants.", | |
"tags": [ | |
"Computer Vision", | |
"Generative Models" | |
], | |
"requirements": [ | |
{ | |
"requirement_id": 0, | |
"prerequisites": [], | |
"criteria": "The \"MNIST\" dataset is loaded in `src/data_loader.py`.", | |
"category": "Dataset or Environment", | |
"satisfied": null | |
}, | |
{ | |
"requirement_id": 1, | |
"prerequisites": [], | |
"criteria": "The \"DCGAN\" model, not a standard GAN, is implemented in `src/model.py`.", | |
"category": "Machine Learning Method", | |
"satisfied": null | |
}, | |
{ | |
"requirement_id": 2, | |
"prerequisites": [ | |
0, | |
1 | |
], | |
"criteria": "Generated images are saved to the specified folder `results/figures/`.", | |
"category": "Save Trained Model", | |
"satisfied": null | |
}, | |
{ | |
"requirement_id": 3, | |
"prerequisites": [ | |
0, | |
1 | |
], | |
"criteria": "The model training is monitored by recording training loss saved under `results/metrics/`", | |
"category": "Performance Metrics", | |
"satisfied": null | |
}, | |
{ | |
"requirement_id": 4, | |
"prerequisites": [ | |
0, | |
1 | |
], | |
"criteria": "A hyperparemeter search method to search parameters such as noise vector dimensions and learning rate is implemented in `src/train.py` to improve model performance.", | |
"category": "Machine Learning Method", | |
"satisfied": null | |
}, | |
{ | |
"requirement_id": 5, | |
"prerequisites": [ | |
1, | |
2, | |
3, | |
4 | |
], | |
"criteria": "A GIF animation of generated images is created and saved as `results/figures/generated_images.gif`.", | |
"category": "Visualization", | |
"satisfied": null | |
}, | |
{ | |
"requirement_id": 6, | |
"prerequisites": [ | |
1, | |
2, | |
3, | |
4 | |
], | |
"criteria": "The training process and results are presented in a Jupyter Notebook, and converted to a PDF report, and saved as `results/training_report.pdf`.", | |
"category": "Visualization", | |
"satisfied": null | |
} | |
], | |
"preferences": [ | |
{ | |
"preference_id": 0, | |
"criteria": "The DCGAN model architecture should be clearly documented in the Notebook to avoid confusion with other GAN variants.", | |
"satisfied": null | |
}, | |
{ | |
"preference_id": 1, | |
"criteria": "The PDF report should be well-structured, with clear sections for model architecture, training process, results, and future improvements.", | |
"satisfied": null | |
} | |
], | |
"is_kaggle_api_needed": false, | |
"is_training_needed": true, | |
"is_web_navigation_needed": false, | |
"hint": "Saving figures is mentioned twice, i.e., once in requirement 2 and once in requirement 3." | |
} |