Skip to main content

Skyplane efficiently transports data between cloud regions and providers.

Project description

Join Slack integration-test docker docs

🔥 Blazing fast bulk data transfers between any cloud 🔥

Skyplane is a tool for blazingly fast bulk data transfers between object stores in the cloud. It provisions a fleet of VMs in the cloud to transfer data in parallel while using compression and bandwidth tiering to reduce cost.

Skyplane is:

  1. 🔥 Blazing fast (110x faster than AWS DataSync)
  2. 🤑 Cheap (4x cheaper than rsync)
  3. 🌐 Universal (AWS, Azure and GCP)

You can use Skyplane to transfer data:

  • between object stores within a cloud provider (e.g. AWS us-east-1 to AWS us-west-2)
  • between object stores across multiple cloud providers (e.g. AWS us-east-1 to GCP us-central1)
  • between local storage and cloud object stores (experimental)

Skyplane currently supports the following source and destination endpoints (any source and destination can be combined):

Endpoint Source Destination
AWS S3 :white_check_mark: :white_check_mark:
Google Storage :white_check_mark: :white_check_mark:
Azure Blob Storage :white_check_mark: :white_check_mark:
Local Disk :white_check_mark: (in progress)

Skyplane is an actively developed project. It will have 🔪 SHARP EDGES 🔪. Please file an issue or ask the contributors via the #help channel on our Slack if you encounter bugs.

Resources

Quickstart

1. Installation

We recommend installation from PyPi:

$ pip install skyplane[aws]

# install support for other clouds as needed:
#   $ pip install skyplane[azure]
#   $ pip install skyplane[gcp]
#   $ pip install skyplane[all]

Skyplane supports AWS, Azure, and GCP. You can install Skyplane with support for one or more of these clouds by specifying the corresponding extras. To install two out of three clouds, you can run pip install skyplane[aws,azure].

GCP support on the M1 Mac: If you are using an M1 Mac with the arm64 architecture and want to install GCP support for Skyplane, you will need to install as follows GRPC_PYTHON_BUILD_SYSTEM_OPENSSL=1 GRPC_PYTHON_BUILD_SYSTEM_ZLIB=1 pip install skyplane[aws,gcp]

2. Setup Cloud Credentials

Skyplane needs access to cloud credentials to perform transfers. To get started with setting up credentials, make sure you have cloud provider CLI tools installed:

---> For AWS:
$ pip install awscli

---> For Google Cloud:
$ pip install gcloud

---> For Azure:
$ pip install azure

Once you have the CLI tools setup, log into each cloud provider's CLI:

---> For AWS:
$ aws configure

---> For Google Cloud:
$ gcloud auth application-default login

---> For Azure:
$ az login

After authenticating with each cloud provider, you can run skyplane init to create a configuration file for Skyplane.

$ skyplane init
skyplane init output
$ skyplane init

====================================================
 _____ _   ____   _______ _       ___   _   _  _____
/  ___| | / /\ \ / / ___ \ |     / _ \ | \ | ||  ___|
\ `--.| |/ /  \ V /| |_/ / |    / /_\ \|  \| || |__
 `--. \    \   \ / |  __/| |    |  _  || . ` ||  __|
/\__/ / |\  \  | | | |   | |____| | | || |\  || |___
\____/\_| \_/  \_/ \_|   \_____/\_| |_/\_| \_/\____/
====================================================


(1) Configuring AWS:
    Loaded AWS credentials from the AWS CLI [IAM access key ID: ...XXXXXX]
    AWS region config file saved to /home/ubuntu/.skyplane/aws_config

(2) Configuring Azure:
    Azure credentials found in Azure CLI
    Azure credentials found, do you want to enable Azure support in Skyplane? [Y/n]: Y
    Enter the Azure subscription ID: [XXXXXXXX-XXXX-XXXX-XXXX-XXXXXXXXXXXX]:
    Azure region config file saved to /home/ubuntu/.skyplane/azure_config
    Querying for SKU availbility in regions
    Azure SKU availability cached in /home/ubuntu/.skyplane/azure_sku_mapping

(3) Configuring GCP:
    GCP credentials found in GCP CLI
    GCP credentials found, do you want to enable GCP support in Skyplane? [Y/n]: Y
    Enter the GCP project ID [XXXXXXX]:
    GCP region config file saved to /home/ubuntu/.skyplane/gcp_config

Config file saved to /home/ubuntu/.skyplane/config

3. Run Transfers

We’re ready to use Skyplane! Let’s use skyplane cp to copy files from AWS to GCP:

skyplane cp s3://... gs://...

To transfer only new objects, you can instead use skyplane sync:

$ skyplane sync s3://... gs://...

You can configure Skyplane to use more VMs per region with the -n flag. For example, to double the transfer speed with two VMs, run:

$ skyplane cp -r s3://... s3://... -n 2

4. Clean Up

Skyplane will automatically attempt to terminate VMs that it starts, but to double check and forcefuly terminate all VMs, run skyplane deprovision.

Technical Details

Skyplane is based on research at UC Berkeley into accelerated networks between cloud providers. Under the hood, Skyplane starts a fleet of VMs in the source and destination regions. It then uses a custom TCP protocol to accelerate the transfer between the VMs. Skyplane may use a L7 overlay network to route traffic around congested network hot spots.

For more details on Skyplane, see:

Project details


Release history Release notifications | RSS feed

Download files

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

Source Distribution

skyplane-nightly-0.2.1.dev20230101.tar.gz (471.1 kB view details)

Uploaded Source

Built Distribution

File details

Details for the file skyplane-nightly-0.2.1.dev20230101.tar.gz.

File metadata

File hashes

Hashes for skyplane-nightly-0.2.1.dev20230101.tar.gz
Algorithm Hash digest
SHA256 97c5cb595fc9c3b655349eba41a190526338aa5f314c9aaa083827b12f0844c8
MD5 2574829157819a7f554fb3b0433f5a0c
BLAKE2b-256 8d1d3436185b188024699588200289a4a61a63627ed7715081c02b19d30d13d3

See more details on using hashes here.

File details

Details for the file skyplane_nightly-0.2.1.dev20230101-py3-none-any.whl.

File metadata

File hashes

Hashes for skyplane_nightly-0.2.1.dev20230101-py3-none-any.whl
Algorithm Hash digest
SHA256 b8da762144259a4e6d6dbe4680eb7d1c43753f429149f4fd542b17fd5be898bd
MD5 8e0fbacf1d1148711def32f2fe443553
BLAKE2b-256 4b6c1a734761217078f89d3f7dbd92450cbeeff876e684cb2bb9733c4df3d033

See more details on using hashes here.

Supported by

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