Skip to main content

SkyPilot: Run AI on Any Infra — Unified, Faster, Cheaper.

Project description

SkyPilot

Documentation GitHub Release Join Slack Downloads

Run AI on Any Infrastructure

SkyPilot is a system to run, manage, and scale AI workloads on any AI infrastructure.

SkyPilot gives AI teams a simple interface to run jobs on any infra. Infra teams get a unified control plane to manage any AI compute — with advanced scheduling, scaling, and orchestration.

SkyPilot Abstractions

:fire: News :fire:

  • [Mar 2026] Scaling Karpathy's Autoresearch: Autoresearch runs 1 experiment at a time. We gave it 16 GPUs and let it run in parallel: blog, HackerNews
  • [Mar 2026] SkyPilot Agent Skills: GPU access and job management for AI agents: docs
  • [Jan 2026] Shopify case study: Shopify runs all AI training workloads on SkyPilot: case study
  • [Dec 2025] SkyPilot v0.11 released: Multi-Cloud Pools, Fast Managed Jobs, Enterprise-Readiness at Large Scale, Programmability. Release notes
  • [Dec 2025] Train an agent to use Google Search as a tool with RL on your Kubernetes or clouds: blog, example
  • [Oct 2025] Run RL training for LLMs with SkyRL on your Kubernetes or clouds: example

Overview

SkyPilot is easy to use for AI teams:

  • Quickly spin up compute on your own infra
  • Environment and job as code — simple and portable
  • Easy job management: queue, run, and auto-recover many jobs

SkyPilot makes Kubernetes easy for AI & Infra teams:

  • Slurm-like ease of use, cloud-native robustness
  • Local dev experience on K8s: SSH into pods, sync code, or connect IDE
  • Turbocharge your clusters: gang scheduling, multi-cluster, and scaling

SkyPilot unifies multiple clusters, clouds, and hardware:

  • One interface to use reserved GPUs, Kubernetes clusters, Slurm clusters, or 20+ clouds
  • Flexible provisioning of GPUs, TPUs, CPUs, with auto-retry
  • Team deployment and resource sharing

SkyPilot cuts your cloud costs & maximizes GPU availability:

  • Autostop: automatic cleanup of idle resources
  • Spot instance support: 3-6x cost savings, with preemption auto-recovery
  • Intelligent scheduling: automatically run on the cheapest & most available infra

SkyPilot supports your existing GPU, TPU, and CPU workloads, with no code changes.

Install with pip:

# Choose your clouds:
pip install -U "skypilot[kubernetes,aws,gcp,azure,oci,nebius,lambda,runpod,fluidstack,paperspace,cudo,ibm,scp,seeweb,shadeform,verda]"

To get the latest features and fixes, use the nightly build or install from source:

# Choose your clouds:
pip install "skypilot-nightly[kubernetes,aws,gcp,azure,oci,nebius,lambda,runpod,fluidstack,paperspace,cudo,ibm,scp,seeweb,shadeform,verda]"

To use SkyPilot directly with your agent (Claude Code, Codex, etc.), install the SkyPilot Skill. Tell your agent:

Fetch and follow https://github.com/skypilot-org/skypilot/blob/HEAD/agent/INSTALL.md to install the skypilot skill

SkyPilot

Current supported infra: Kubernetes, Slurm, AWS, GCP, Azure, OCI, CoreWeave, Nebius, Lambda Cloud, RunPod, Fluidstack, Cudo, Digital Ocean, Paperspace, Cloudflare, Samsung, IBM, Vast.ai, VMware vSphere, Seeweb, Prime Intellect, Shadeform, Verda Cloud, VastData, Crusoe.

SkyPilot

Getting started

You can find our documentation here.

SkyPilot in 1 minute

A SkyPilot task specifies: resource requirements, data to be synced, setup commands, and the task commands.

Once written in this unified interface (YAML or Python API), the task can be launched on any available infra (Kubernetes, Slurm, cloud, etc.). This avoids vendor lock-in, and allows easily moving jobs to a different provider.

Paste the following into a file my_task.yaml:

resources:
  accelerators: A100:8  # 8x NVIDIA A100 GPU

num_nodes: 1  # Number of VMs to launch

# Working directory (optional) containing the project codebase.
# Its contents are synced to ~/sky_workdir/ on the cluster.
workdir: ~/torch_examples

# Commands to be run before executing the job.
# Typical use: pip install -r requirements.txt, git clone, etc.
setup: |
  cd mnist
  pip install -r requirements.txt

# Commands to run as a job.
# Typical use: launch the main program.
run: |
  cd mnist
  python main.py --epochs 1

Prepare the workdir by cloning:

git clone https://github.com/pytorch/examples.git ~/torch_examples

Launch with sky launch (note: access to GPU instances is needed for this example):

sky launch my_task.yaml

SkyPilot then performs the heavy-lifting for you, including:

  1. Find the cheapest & available infra across your clusters or clouds
  2. Provision the GPUs (pods or VMs), with auto-failover if the infra returned capacity errors
  3. Sync your local workdir to the provisioned cluster
  4. Auto-install dependencies by running the task's setup commands
  5. Run the task's run commands, and stream logs

See Quickstart to get started with SkyPilot.

Runnable examples

See SkyPilot examples that cover: development, training, serving, LLM models, AI apps, and common frameworks.

Latest featured examples:

Task Examples
Training Verl, Finetune Llama 4, TorchTitan, PyTorch, DeepSpeed, NeMo, Ray, Unsloth, Jax/TPU, OpenRLHF
Serving vLLM, SGLang, Ollama
Models DeepSeek-R1, Llama 4, Llama 3, CodeLlama, Qwen, Kimi-K2, Kimi-K2-Thinking, Mixtral
AI apps RAG, vector databases (ChromaDB, CLIP)
Common frameworks Airflow, Jupyter, marimo

Source files can be found in llm/ and examples/.

More information

To learn more, see SkyPilot Overview, SkyPilot docs, and SkyPilot blog.

SkyPilot adopters: Testimonials and Case Studies

Partners and integrations: Community Spotlights

Follow updates:

Read the research:

SkyPilot was initially started at the Sky Computing Lab at UC Berkeley and has since gained many industry contributors. To read about the project's origin and vision, see Concept: Sky Computing.

Questions and feedback

We are excited to hear your feedback:

For general discussions, join us on the SkyPilot Slack.

Contributing

We welcome all contributions to the project! See CONTRIBUTING for how to get involved.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

skypilot-0.12.1rc1.tar.gz (3.2 MB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

skypilot-0.12.1rc1-py3-none-any.whl (3.5 MB view details)

Uploaded Python 3

File details

Details for the file skypilot-0.12.1rc1.tar.gz.

File metadata

  • Download URL: skypilot-0.12.1rc1.tar.gz
  • Upload date:
  • Size: 3.2 MB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.13.7

File hashes

Hashes for skypilot-0.12.1rc1.tar.gz
Algorithm Hash digest
SHA256 94b6338e44879c2ae45024965e87d95d948200ae84cfcdc2092f2001c81250f6
MD5 963cde4a65ef455f84e1c91ef60f527a
BLAKE2b-256 5361e0d07b3958759db3eac00ad382446cbab20609866d68ec9242e26b176de4

See more details on using hashes here.

File details

Details for the file skypilot-0.12.1rc1-py3-none-any.whl.

File metadata

  • Download URL: skypilot-0.12.1rc1-py3-none-any.whl
  • Upload date:
  • Size: 3.5 MB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.13.7

File hashes

Hashes for skypilot-0.12.1rc1-py3-none-any.whl
Algorithm Hash digest
SHA256 725385dbe58885d03b6875719711e03b46120f9081c2cb557c3099ad8bf2a705
MD5 66f50c01321d487deda4a2a91a1218cf
BLAKE2b-256 9d96957745b660d454671abfe622835d6150345620ee57598eb4e935ff008106

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page