Modal
A cloud platform for running AI workloads with serverless GPU access and simple Python decorators. Makes deploying ML models, running batch jobs, and building data pipelines effortless.
Key Features
- Serverless GPU compute
- Python-native deployment
- Auto-scaling to zero
- Container and dependency management
- Scheduled and triggered functions
Pros
- + Incredible developer experience
- + No infrastructure management
- + Pay only for what you use
Cons
- − Vendor lock-in risk
- − Limited to Python workloads
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