spotty-cloud/spotty
Training deep learning models on AWS and GCP instances
This tool simplifies the process of training deep learning models using powerful, cost-effective GPU instances on cloud platforms like AWS and GCP. You provide your deep learning project code, and it handles setting up the cloud infrastructure, launching instances, and synchronizing your project. The output is your trained model, without the hassle of manual cloud resource management. This is ideal for machine learning engineers, researchers, and data scientists working with deep learning.
493 stars. No commits in the last 6 months. Available on PyPI.
Use this if you need to train deep learning models on GPU-accelerated cloud instances without dealing with complex cloud infrastructure setup and want to reduce costs.
Not ideal if you prefer manual control over every aspect of your cloud computing environment or are not working with deep learning models requiring GPU acceleration.
Stars
493
Forks
43
Language
Python
License
MIT
Category
Last pushed
Oct 18, 2023
Commits (30d)
0
Dependencies
6
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