%global _empty_manifest_terminate_build 0 Name: python-dask-saturn Version: 0.4.3 Release: 1 Summary: Dask Cluster objects in Saturn Cloud License: BSD-3-Clause URL: https://saturncloud.io/ Source0: https://mirrors.aliyun.com/pypi/web/packages/cd/5a/c92de73b69107428700fbd793cc0e7f5a66fe19e7515236819ee5d9a44eb/dask-saturn-0.4.3.tar.gz BuildArch: noarch Requires: python3-distributed Requires: python3-packaging Requires: python3-requests Requires: python3-cryptography %description # dask-saturn Python library for interacting with [Dask](https://dask.org/) clusters in [Saturn Cloud](https://www.saturncloud.io/). Dask-Saturn mimics the API of [Dask-Kubernetes](https://github.com/dask/dask-kubernetes), but allows the user to interact with clusters created within [Saturn Cloud](https://www.saturncloud.io/). ## Start cluster From within a Jupyter notebook, you can start a cluster: ```python from dask_saturn import SaturnCluster cluster = SaturnCluster() cluster ``` By default this will start a dask cluster with the same settings that you have already set in the Saturn UI or in a prior notebook. To start the cluster with a certain number of workers using the `n_workers` option. Similarly, you can set the `scheduler_size`, `worker_size`, and `worker_is_spot`. > Note: If the cluster is already running then you can't change the settings. > Attempting to do so will raise a warning. Use the `shudown_on_close` option to set up a cluster that is tied to the client kernel. This functions like a regular dask `LocalCluster`, when your jupyter kernel dies or is restarted, the dask cluster will close. ## Adjust number of workers Once you have a cluster you can interact with it via the jupyter widget, or using the `scale` and `adapt` methods. For example, to manually scale up to 20 workers: ```python cluster.scale(20) ``` To create an adaptive cluster that controls its own scaling: ```python cluster.adapt(minimum=1, maximum=20) ``` ## Interact with client To submit tasks to the cluster, you sometimes need access to the `Client` object. Instantiate this with the cluster as the only argument: ```python from distributed import Client client = Client(cluster) client ``` ## Close cluster To terminate all resources associated with a cluster, use the `close` method: ```python cluster.close() ``` ## Change settings To update the settings (such as `n_workers`, `worker_size`, `worker_is_spot`, `nthreads`) on an existing cluster, use the `reset` method: ```python cluster.reset(n_workers=3) ``` You can also call this without instantiating the cluster first: ```python cluster = SaturnCluster.reset(n_workers=3) ``` By default, you'll get one worker, but you can change that using the `n_workers` option. Similarly you can override the scheduler and worker hardware settings with `scheduler_size`, `worker_size`. You can display the available size options using `describe_sizes()`: ```python >>> describe_sizes() {'medium': 'Medium - 2 cores - 4 GB RAM', 'large': 'Large - 2 cores - 16 GB RAM', 'xlarge': 'XLarge - 4 cores - 32 GB RAM', '2xlarge': '2XLarge - 8 cores - 64 GB RAM', '4xlarge': '4XLarge - 16 cores - 128 GB RAM', '8xlarge': '8XLarge - 32 cores - 256 GB RAM', '12xlarge': '12XLarge - 48 cores - 384 GB RAM', '16xlarge': '16XLarge - 64 cores - 512 GB RAM', 'g4dnxlarge': 'T4-XLarge - 4 cores - 16 GB RAM - 1 GPU', 'g4dn4xlarge': 'T4-4XLarge - 16 cores - 64 GB RAM - 1 GPU', 'g4dn8xlarge': 'T4-8XLarge - 32 cores - 128 GB RAM - 1 GPU', 'p32xlarge': 'V100-2XLarge - 8 cores - 61 GB RAM - 1 GPU', 'p38xlarge': 'V100-8XLarge - 32 cores - 244 GB RAM - 4 GPU', 'p316xlarge': 'V100-16XLarge - 64 cores - 488 GB RAM - 8 GPU'} ``` Here's an example: ```python cluster = SaturnCluster( scheduler_size="large", worker_size="2xlarge", n_workers=3, ) client = Client(cluster) client ``` ## Connect from outside of Saturn To connect to your Dask cluster from outside of Saturn, you need to set two environment variables: ``SATURN_TOKEN`` and ``SATURN_BASE_URL``. To get the values for these you'll need to go Saturn in your browser. Go to where you want to connect a Dask cluster. There will be a button that says: "Connect Externally". Clicking that will open a modal with the values for ``SATURN_TOKEN`` and ``SATURN_BASE_URL`` Remember - that token is private so don't share it with anyone! It'll be a something like `351e6f2d40bf4d15a0009fc086c602df` ```sh export SATURN_BASE_URL="https://app.demo.saturnenterprise.io" export SATURN_TOKEN="351e6f2d40bf4d15a0009fc086c602df" ``` After you have set the environment variables, you can open a Python session and connect to your Dask cluster just as you would inside of Saturn: ```python from dask_saturn import SaturnCluster from distributed import Client cluster = SaturnCluster() client = Client(cluster) client ``` When you are done working with the dask cluster make sure to shut it down: ```python cluster.close() ``` ## Sync files to workers When working with distributed dask clusters, the workers don't have access to the same file system as your client does. So you will see files in your jupyter server that aren't available on the workers. To move files to the workers you can use the `RegisterFiles` plugin and call `sync_files` on any path that you want to update on the workers. For instance if you have a file structure like: ``` /home/jovyan/project/ |---- utils/ | |---- __init__.py | |---- hello.py | |---- Untitled.ipynb ``` where hello.py contains: ```python # utils/hello.py def greet(): return "Hello" ``` If the code in hello.py changes or you add new files to utils, you'll want to push those changes to the workers. After setting up the `SaturnCluster` and the `Client`, register the `RegisterFiles` plugin with the workers. Then every time you make changes to the files in utils, run `sync_files`. The worker plugin makes sure that any new worker that comes up will have any files that you have synced. ```python from dask_saturn import RegisterFiles, sync_files client.register_worker_plugin(RegisterFiles()) sync_files(client, "utils") # If a python script has changed, restart the workers so they will see the changes client.restart() # import the function and tell the workers to run it from util.hello import greet client.run(greet) ``` > TIP: You can always check the state of the filesystem on your workers by running `client.run(os.listdir)` ## Development Create/update a dask-saturn conda environment: ```sh make conda-update ``` Set environment variables to run dask-saturn with a local atlas server: ```sh export SATURN_BASE_URL=http://dev.localtest.me:8888/ export SATURN_TOKEN= ``` %package -n python3-dask-saturn Summary: Dask Cluster objects in Saturn Cloud Provides: python-dask-saturn BuildRequires: python3-devel BuildRequires: python3-setuptools BuildRequires: python3-pip %description -n python3-dask-saturn # dask-saturn Python library for interacting with [Dask](https://dask.org/) clusters in [Saturn Cloud](https://www.saturncloud.io/). Dask-Saturn mimics the API of [Dask-Kubernetes](https://github.com/dask/dask-kubernetes), but allows the user to interact with clusters created within [Saturn Cloud](https://www.saturncloud.io/). ## Start cluster From within a Jupyter notebook, you can start a cluster: ```python from dask_saturn import SaturnCluster cluster = SaturnCluster() cluster ``` By default this will start a dask cluster with the same settings that you have already set in the Saturn UI or in a prior notebook. To start the cluster with a certain number of workers using the `n_workers` option. Similarly, you can set the `scheduler_size`, `worker_size`, and `worker_is_spot`. > Note: If the cluster is already running then you can't change the settings. > Attempting to do so will raise a warning. Use the `shudown_on_close` option to set up a cluster that is tied to the client kernel. This functions like a regular dask `LocalCluster`, when your jupyter kernel dies or is restarted, the dask cluster will close. ## Adjust number of workers Once you have a cluster you can interact with it via the jupyter widget, or using the `scale` and `adapt` methods. For example, to manually scale up to 20 workers: ```python cluster.scale(20) ``` To create an adaptive cluster that controls its own scaling: ```python cluster.adapt(minimum=1, maximum=20) ``` ## Interact with client To submit tasks to the cluster, you sometimes need access to the `Client` object. Instantiate this with the cluster as the only argument: ```python from distributed import Client client = Client(cluster) client ``` ## Close cluster To terminate all resources associated with a cluster, use the `close` method: ```python cluster.close() ``` ## Change settings To update the settings (such as `n_workers`, `worker_size`, `worker_is_spot`, `nthreads`) on an existing cluster, use the `reset` method: ```python cluster.reset(n_workers=3) ``` You can also call this without instantiating the cluster first: ```python cluster = SaturnCluster.reset(n_workers=3) ``` By default, you'll get one worker, but you can change that using the `n_workers` option. Similarly you can override the scheduler and worker hardware settings with `scheduler_size`, `worker_size`. You can display the available size options using `describe_sizes()`: ```python >>> describe_sizes() {'medium': 'Medium - 2 cores - 4 GB RAM', 'large': 'Large - 2 cores - 16 GB RAM', 'xlarge': 'XLarge - 4 cores - 32 GB RAM', '2xlarge': '2XLarge - 8 cores - 64 GB RAM', '4xlarge': '4XLarge - 16 cores - 128 GB RAM', '8xlarge': '8XLarge - 32 cores - 256 GB RAM', '12xlarge': '12XLarge - 48 cores - 384 GB RAM', '16xlarge': '16XLarge - 64 cores - 512 GB RAM', 'g4dnxlarge': 'T4-XLarge - 4 cores - 16 GB RAM - 1 GPU', 'g4dn4xlarge': 'T4-4XLarge - 16 cores - 64 GB RAM - 1 GPU', 'g4dn8xlarge': 'T4-8XLarge - 32 cores - 128 GB RAM - 1 GPU', 'p32xlarge': 'V100-2XLarge - 8 cores - 61 GB RAM - 1 GPU', 'p38xlarge': 'V100-8XLarge - 32 cores - 244 GB RAM - 4 GPU', 'p316xlarge': 'V100-16XLarge - 64 cores - 488 GB RAM - 8 GPU'} ``` Here's an example: ```python cluster = SaturnCluster( scheduler_size="large", worker_size="2xlarge", n_workers=3, ) client = Client(cluster) client ``` ## Connect from outside of Saturn To connect to your Dask cluster from outside of Saturn, you need to set two environment variables: ``SATURN_TOKEN`` and ``SATURN_BASE_URL``. To get the values for these you'll need to go Saturn in your browser. Go to where you want to connect a Dask cluster. There will be a button that says: "Connect Externally". Clicking that will open a modal with the values for ``SATURN_TOKEN`` and ``SATURN_BASE_URL`` Remember - that token is private so don't share it with anyone! It'll be a something like `351e6f2d40bf4d15a0009fc086c602df` ```sh export SATURN_BASE_URL="https://app.demo.saturnenterprise.io" export SATURN_TOKEN="351e6f2d40bf4d15a0009fc086c602df" ``` After you have set the environment variables, you can open a Python session and connect to your Dask cluster just as you would inside of Saturn: ```python from dask_saturn import SaturnCluster from distributed import Client cluster = SaturnCluster() client = Client(cluster) client ``` When you are done working with the dask cluster make sure to shut it down: ```python cluster.close() ``` ## Sync files to workers When working with distributed dask clusters, the workers don't have access to the same file system as your client does. So you will see files in your jupyter server that aren't available on the workers. To move files to the workers you can use the `RegisterFiles` plugin and call `sync_files` on any path that you want to update on the workers. For instance if you have a file structure like: ``` /home/jovyan/project/ |---- utils/ | |---- __init__.py | |---- hello.py | |---- Untitled.ipynb ``` where hello.py contains: ```python # utils/hello.py def greet(): return "Hello" ``` If the code in hello.py changes or you add new files to utils, you'll want to push those changes to the workers. After setting up the `SaturnCluster` and the `Client`, register the `RegisterFiles` plugin with the workers. Then every time you make changes to the files in utils, run `sync_files`. The worker plugin makes sure that any new worker that comes up will have any files that you have synced. ```python from dask_saturn import RegisterFiles, sync_files client.register_worker_plugin(RegisterFiles()) sync_files(client, "utils") # If a python script has changed, restart the workers so they will see the changes client.restart() # import the function and tell the workers to run it from util.hello import greet client.run(greet) ``` > TIP: You can always check the state of the filesystem on your workers by running `client.run(os.listdir)` ## Development Create/update a dask-saturn conda environment: ```sh make conda-update ``` Set environment variables to run dask-saturn with a local atlas server: ```sh export SATURN_BASE_URL=http://dev.localtest.me:8888/ export SATURN_TOKEN= ``` %package help Summary: Development documents and examples for dask-saturn Provides: python3-dask-saturn-doc %description help # dask-saturn Python library for interacting with [Dask](https://dask.org/) clusters in [Saturn Cloud](https://www.saturncloud.io/). Dask-Saturn mimics the API of [Dask-Kubernetes](https://github.com/dask/dask-kubernetes), but allows the user to interact with clusters created within [Saturn Cloud](https://www.saturncloud.io/). ## Start cluster From within a Jupyter notebook, you can start a cluster: ```python from dask_saturn import SaturnCluster cluster = SaturnCluster() cluster ``` By default this will start a dask cluster with the same settings that you have already set in the Saturn UI or in a prior notebook. To start the cluster with a certain number of workers using the `n_workers` option. Similarly, you can set the `scheduler_size`, `worker_size`, and `worker_is_spot`. > Note: If the cluster is already running then you can't change the settings. > Attempting to do so will raise a warning. Use the `shudown_on_close` option to set up a cluster that is tied to the client kernel. This functions like a regular dask `LocalCluster`, when your jupyter kernel dies or is restarted, the dask cluster will close. ## Adjust number of workers Once you have a cluster you can interact with it via the jupyter widget, or using the `scale` and `adapt` methods. For example, to manually scale up to 20 workers: ```python cluster.scale(20) ``` To create an adaptive cluster that controls its own scaling: ```python cluster.adapt(minimum=1, maximum=20) ``` ## Interact with client To submit tasks to the cluster, you sometimes need access to the `Client` object. Instantiate this with the cluster as the only argument: ```python from distributed import Client client = Client(cluster) client ``` ## Close cluster To terminate all resources associated with a cluster, use the `close` method: ```python cluster.close() ``` ## Change settings To update the settings (such as `n_workers`, `worker_size`, `worker_is_spot`, `nthreads`) on an existing cluster, use the `reset` method: ```python cluster.reset(n_workers=3) ``` You can also call this without instantiating the cluster first: ```python cluster = SaturnCluster.reset(n_workers=3) ``` By default, you'll get one worker, but you can change that using the `n_workers` option. Similarly you can override the scheduler and worker hardware settings with `scheduler_size`, `worker_size`. You can display the available size options using `describe_sizes()`: ```python >>> describe_sizes() {'medium': 'Medium - 2 cores - 4 GB RAM', 'large': 'Large - 2 cores - 16 GB RAM', 'xlarge': 'XLarge - 4 cores - 32 GB RAM', '2xlarge': '2XLarge - 8 cores - 64 GB RAM', '4xlarge': '4XLarge - 16 cores - 128 GB RAM', '8xlarge': '8XLarge - 32 cores - 256 GB RAM', '12xlarge': '12XLarge - 48 cores - 384 GB RAM', '16xlarge': '16XLarge - 64 cores - 512 GB RAM', 'g4dnxlarge': 'T4-XLarge - 4 cores - 16 GB RAM - 1 GPU', 'g4dn4xlarge': 'T4-4XLarge - 16 cores - 64 GB RAM - 1 GPU', 'g4dn8xlarge': 'T4-8XLarge - 32 cores - 128 GB RAM - 1 GPU', 'p32xlarge': 'V100-2XLarge - 8 cores - 61 GB RAM - 1 GPU', 'p38xlarge': 'V100-8XLarge - 32 cores - 244 GB RAM - 4 GPU', 'p316xlarge': 'V100-16XLarge - 64 cores - 488 GB RAM - 8 GPU'} ``` Here's an example: ```python cluster = SaturnCluster( scheduler_size="large", worker_size="2xlarge", n_workers=3, ) client = Client(cluster) client ``` ## Connect from outside of Saturn To connect to your Dask cluster from outside of Saturn, you need to set two environment variables: ``SATURN_TOKEN`` and ``SATURN_BASE_URL``. To get the values for these you'll need to go Saturn in your browser. Go to where you want to connect a Dask cluster. There will be a button that says: "Connect Externally". Clicking that will open a modal with the values for ``SATURN_TOKEN`` and ``SATURN_BASE_URL`` Remember - that token is private so don't share it with anyone! It'll be a something like `351e6f2d40bf4d15a0009fc086c602df` ```sh export SATURN_BASE_URL="https://app.demo.saturnenterprise.io" export SATURN_TOKEN="351e6f2d40bf4d15a0009fc086c602df" ``` After you have set the environment variables, you can open a Python session and connect to your Dask cluster just as you would inside of Saturn: ```python from dask_saturn import SaturnCluster from distributed import Client cluster = SaturnCluster() client = Client(cluster) client ``` When you are done working with the dask cluster make sure to shut it down: ```python cluster.close() ``` ## Sync files to workers When working with distributed dask clusters, the workers don't have access to the same file system as your client does. So you will see files in your jupyter server that aren't available on the workers. To move files to the workers you can use the `RegisterFiles` plugin and call `sync_files` on any path that you want to update on the workers. For instance if you have a file structure like: ``` /home/jovyan/project/ |---- utils/ | |---- __init__.py | |---- hello.py | |---- Untitled.ipynb ``` where hello.py contains: ```python # utils/hello.py def greet(): return "Hello" ``` If the code in hello.py changes or you add new files to utils, you'll want to push those changes to the workers. After setting up the `SaturnCluster` and the `Client`, register the `RegisterFiles` plugin with the workers. Then every time you make changes to the files in utils, run `sync_files`. The worker plugin makes sure that any new worker that comes up will have any files that you have synced. ```python from dask_saturn import RegisterFiles, sync_files client.register_worker_plugin(RegisterFiles()) sync_files(client, "utils") # If a python script has changed, restart the workers so they will see the changes client.restart() # import the function and tell the workers to run it from util.hello import greet client.run(greet) ``` > TIP: You can always check the state of the filesystem on your workers by running `client.run(os.listdir)` ## Development Create/update a dask-saturn conda environment: ```sh make conda-update ``` Set environment variables to run dask-saturn with a local atlas server: ```sh export SATURN_BASE_URL=http://dev.localtest.me:8888/ export SATURN_TOKEN= ``` %prep %autosetup -n dask-saturn-0.4.3 %build %py3_build %install %py3_install install -d -m755 %{buildroot}/%{_pkgdocdir} if [ -d doc ]; then cp -arf doc %{buildroot}/%{_pkgdocdir}; fi if [ -d docs ]; then cp -arf docs %{buildroot}/%{_pkgdocdir}; fi if [ -d example ]; then cp -arf example %{buildroot}/%{_pkgdocdir}; fi if [ -d examples ]; then cp -arf examples %{buildroot}/%{_pkgdocdir}; fi pushd %{buildroot} if [ -d usr/lib ]; then find usr/lib -type f -printf "\"/%h/%f\"\n" >> filelist.lst fi if [ -d usr/lib64 ]; then find usr/lib64 -type f -printf "\"/%h/%f\"\n" >> filelist.lst fi if [ -d usr/bin ]; then find usr/bin -type f -printf "\"/%h/%f\"\n" >> filelist.lst fi if [ -d usr/sbin ]; then find usr/sbin -type f -printf "\"/%h/%f\"\n" >> filelist.lst fi touch doclist.lst if [ -d usr/share/man ]; then find usr/share/man -type f -printf "\"/%h/%f.gz\"\n" >> doclist.lst fi popd mv %{buildroot}/filelist.lst . mv %{buildroot}/doclist.lst . %files -n python3-dask-saturn -f filelist.lst %dir %{python3_sitelib}/* %files help -f doclist.lst %{_docdir}/* %changelog * Thu Jun 08 2023 Python_Bot - 0.4.3-1 - Package Spec generated