modal
Modal
Cloud computing platform for running Python on GPUs and serverless infrastructure. Use when deploying AI/ML models, running GPU-accelerated workloads, serving web endpoints, scheduling batch jobs, or scaling Python code to the cloud. Use this skill whenever the user mentions Modal, serverless GPU compute, deploying ML models to the cloud, serving inference endpoints, running batch processing in the cloud, or needs to scale Python workloads beyond their local machine. Also use when the user wants to run code on H100s, A100s, or other cloud GPUs, or needs to create a web API for a model.
这页展示的是上游仓库条目,不代表已进入 SCI Skills 精选目录。
- 原始路径
- scientific-skills/modal
- 允许工具
- -
- 仓库版本
- 2.31.0
- 同步时间
- 2026年3月27日
条目说明
条目说明
Modal is a cloud platform for running Python code serverlessly, with a focus on AI/ML workloads. Key capabilities: - **GPU compute** on demand (T4, L4, A10, L40S, A100, H100, H200, B200) - **Serverless functions** with autoscaling from zero to thousands of containers - **Custom container images** built entirely in Python code - **Persistent storage** via Volumes for model weights and datasets - **Web endpoints** for
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