- Deep-Learning-Experiments VS conformal_classification
- Deep-Learning-Experiments VS adaptnlp
- Deep-Learning-Experiments VS DeepLearning
- Deep-Learning-Experiments VS python_autocomplete
- Deep-Learning-Experiments VS nn
- Deep-Learning-Experiments VS pytorch-deepdream
- Deep-Learning-Experiments VS TTS
- Deep-Learning-Experiments VS sudo_rm_rf
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Deep-Learning-Experiments reviews and mentions
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EEE 197 - Deep Learning
Hello, took the course last sem. Maraming napa-drop sa amin dahil sa difficulty nung assignments pero doable naman. Open-source mismo yung course, available sya sa GitHub: https://github.com/roatienza/Deep-Learning-Experiments
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roatienza/Deep-Learning-Experiments is an open source project licensed under MIT License which is an OSI approved license.
The primary programming language of Deep-Learning-Experiments is Jupyter Notebook.
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