Armada is a multi-Kubernetes cluster batch job scheduler.
Armada is designed to address the following issues:
- A single Kubernetes cluster can not be scaled indefinitely, and managing very large Kubernetes clusters is challenging. Hence, Armada is a multi-cluster scheduler built on top of several Kubernetes clusters.
- Acheiving very high throughput using the in-cluster storage backend, etcd, is challenging. Hence, queueing and scheduling is performed partly out-of-cluster using a specialized storage layer.
Armada is designed primarily for machine learning, AI, and data analytics workloads, and to:
- Manage compute clusters composed of tens of thousands of nodes in total.
- Schedule a thousand or more pods per second, on average.
- Enqueue tens of thousands of jobs over a few seconds.
- Divide resources fairly between users.
- Provide visibility for users and admins.
- Ensure near-constant uptime.
Armada is a CNCF Sandbox project used in production at G-Research.
For an overview of Armada, see this video.
For an overview of the architecture and design of Armada, and instructions for submitting jobs, see:
For instructions of how to setup and develop Armada, see:
For API reference, see:
We expect readers of the documentation to have a basic understanding of Docker and Kubernetes; see, e.g., the following links:
Armada follows the CNCF Code of Conduct