%global _empty_manifest_terminate_build 0 Name: python-jobflow Version: 0.1.11 Release: 1 Summary: jobflow is a library for writing computational workflows License: modified BSD URL: https://pypi.org/project/jobflow/ Source0: https://mirrors.aliyun.com/pypi/web/packages/62/79/d4bba63e7d66112b91b1b49f427a77e17969464826633c4725c2c5dfe426/jobflow-0.1.11.tar.gz BuildArch: noarch Requires: python3-monty Requires: python3-pydash Requires: python3-networkx Requires: python3-maggma Requires: python3-pydantic Requires: python3-PyYAML Requires: python3-pre-commit Requires: python3-sphinx Requires: python3-furo Requires: python3-myst-parser Requires: python3-ipython Requires: python3-nbsphinx Requires: python3-autodoc-pydantic Requires: python3-FireWorks Requires: python3-monty Requires: python3-networkx Requires: python3-pydash Requires: python3-maggma Requires: python3-pydantic Requires: python3-PyYAML Requires: python3-FireWorks Requires: python3-matplotlib Requires: python3-pydot Requires: python3-moto Requires: python3-pytest Requires: python3-pytest-cov Requires: python3-matplotlib Requires: python3-pydot %description # jobflow code coverage code coverage pypi version supported python versions [Documentation](https://materialsproject.github.io/jobflow/) | [PyPI](https://pypi.org/project/jobflow/) | [GitHub](https://github.com/materialsproject/jobflow) Jobflow is a free, open-source library for writing and executing workflows. Complex workflows can be defined using simple python functions and executed locally or on arbitrary computing resources using the [FireWorks][fireworks] workflow manager. Some features that distinguish jobflow are dynamic workflows, easy compositing and connecting of workflows, and the ability to store workflow outputs across multiple databases. ## Is jobflow for me jobflow is intended to be a friendly workflow software that is easy to get started with, but flexible enough to handle complicated use cases. Some of its features include: - A clean and flexible Python API. - A powerful approach to compositing and connecting workflows — information passing between jobs is a key goal of jobflow. Workflows can be nested allowing for a natural way to build complex workflows. - Integration with multiple databases (MongoDB, S3, GridFS, and more) through the [Maggma][maggma] package. - Support for the [FireWorks][fireworks] workflow management system, allowing workflow execution on multicore machines or through a queue, on a single machine or multiple machines. - Support for dynamic workflows — workflows that modify themselves or create new ones based on what happens during execution. ## Workflow model Workflows in jobflows are made up of two main components: - A `Job` is an atomic computing job. Essentially any python function can be `Job`, provided its input and return values can be serialized to json. Anything returned by the job is considered an "output" and is stored in the jobflow database. - A `Flow` is a collection of `Job` objects or other `Flow` objects. The connectivity between jobs is determined automatically from the job inputs. The execution order of jobs is automatically determined based on their connectivity. Python functions can be easily converted in to `Job` objects using the `@job` decorator. In the example below, we define a job to add two numbers. ```python from jobflow import job, Flow @job def add(a, b): return a + b add_first = add(1, 5) add_second = add(add_first.output, 5) flow = Flow([add_first, add_second]) flow.draw_graph().show() ``` The output of the job is accessed using the `output` attribute. As the job has not yet been run, `output` contains be a reference to a future output. Outputs can be used as inputs to other jobs and will be automatically "resolved" before the job is executed. Finally, we created a flow using the two `Job` objects. The connectivity between the jobs is determined automatically and can be visualised using the flow graph.

simple flow graph

## Installation The jobflow is a Python 3.8+ library and can be installed using pip. ```bash pip install jobflow ``` ## Quickstart and tutorials To get a first glimpse of jobflow, we suggest that you follow our quickstart tutorial. Later tutorials delve into the advanced features of jobflow. - [Five-minute quickstart tutorial][quickstart] - [Introduction to jobflow][introduction] - [Defining Jobs using jobflow][defining-jobs] ## Need help? Ask questions about jobflow on the [jobflow support forum][help-forum]. If you've found an issue with jobflow, please submit a bug report on [GitHub Issues][issues]. ## What’s new? Track changes to jobflow through the [changelog][changelog]. ## Contributing We greatly appreciate any contributions in the form of a pull request. Additional information on contributing to jobflow can be found [here][contributing]. We maintain a list of all contributors [here][contributors]. ## License jobflow is released under a modified BSD license; the full text can be found [here][license]. ## Acknowledgements Jobflow was designed by Alex Ganose, Anubhav Jain, Gian-Marco Rignanese, David Waroquiers, and Guido Petretto. Alex Ganose implemented the first version of the package. Later versions have benefited from the contributions of several research groups. A full list of contributors is available [here](https://materialsproject.github.io/jobflow/contributors.html). [maggma]: https://materialsproject.github.io/maggma/ [fireworks]: https://materialsproject.github.io/fireworks/ [help-forum]: https://matsci.org/c/fireworks [issues]: https://github.com/materialsproject/jobflow/issues [changelog]: https://materialsproject.github.io/jobflow/changelog.html [contributing]: https://materialsproject.github.io/jobflow/contributing.html [contributors]: https://materialsproject.github.io/jobflow/contributors.html [license]: https://raw.githubusercontent.com/materialsproject/jobflow/main/LICENSE [quickstart]: https://materialsproject.github.io/jobflow/tutorials/1-quickstart.html [introduction]: https://materialsproject.github.io/jobflow/tutorials/2-introduction.html [defining-jobs]: https://materialsproject.github.io/jobflow/tutorials/3-defining-jobs.html [creating-flows]: https://materialsproject.github.io/jobflow/tutorials/4-creating-flows.html [dynamic-flows]: https://materialsproject.github.io/jobflow/tutorials/5-dynamic-flows.html [jobflow-database]: https://materialsproject.github.io/jobflow/tutorials/6-jobflow-database.html [jobflow-fireworks]: https://materialsproject.github.io/jobflow/tutorials/7-fireworks.html %package -n python3-jobflow Summary: jobflow is a library for writing computational workflows Provides: python-jobflow BuildRequires: python3-devel BuildRequires: python3-setuptools BuildRequires: python3-pip %description -n python3-jobflow # jobflow code coverage code coverage pypi version supported python versions [Documentation](https://materialsproject.github.io/jobflow/) | [PyPI](https://pypi.org/project/jobflow/) | [GitHub](https://github.com/materialsproject/jobflow) Jobflow is a free, open-source library for writing and executing workflows. Complex workflows can be defined using simple python functions and executed locally or on arbitrary computing resources using the [FireWorks][fireworks] workflow manager. Some features that distinguish jobflow are dynamic workflows, easy compositing and connecting of workflows, and the ability to store workflow outputs across multiple databases. ## Is jobflow for me jobflow is intended to be a friendly workflow software that is easy to get started with, but flexible enough to handle complicated use cases. Some of its features include: - A clean and flexible Python API. - A powerful approach to compositing and connecting workflows — information passing between jobs is a key goal of jobflow. Workflows can be nested allowing for a natural way to build complex workflows. - Integration with multiple databases (MongoDB, S3, GridFS, and more) through the [Maggma][maggma] package. - Support for the [FireWorks][fireworks] workflow management system, allowing workflow execution on multicore machines or through a queue, on a single machine or multiple machines. - Support for dynamic workflows — workflows that modify themselves or create new ones based on what happens during execution. ## Workflow model Workflows in jobflows are made up of two main components: - A `Job` is an atomic computing job. Essentially any python function can be `Job`, provided its input and return values can be serialized to json. Anything returned by the job is considered an "output" and is stored in the jobflow database. - A `Flow` is a collection of `Job` objects or other `Flow` objects. The connectivity between jobs is determined automatically from the job inputs. The execution order of jobs is automatically determined based on their connectivity. Python functions can be easily converted in to `Job` objects using the `@job` decorator. In the example below, we define a job to add two numbers. ```python from jobflow import job, Flow @job def add(a, b): return a + b add_first = add(1, 5) add_second = add(add_first.output, 5) flow = Flow([add_first, add_second]) flow.draw_graph().show() ``` The output of the job is accessed using the `output` attribute. As the job has not yet been run, `output` contains be a reference to a future output. Outputs can be used as inputs to other jobs and will be automatically "resolved" before the job is executed. Finally, we created a flow using the two `Job` objects. The connectivity between the jobs is determined automatically and can be visualised using the flow graph.

simple flow graph

## Installation The jobflow is a Python 3.8+ library and can be installed using pip. ```bash pip install jobflow ``` ## Quickstart and tutorials To get a first glimpse of jobflow, we suggest that you follow our quickstart tutorial. Later tutorials delve into the advanced features of jobflow. - [Five-minute quickstart tutorial][quickstart] - [Introduction to jobflow][introduction] - [Defining Jobs using jobflow][defining-jobs] ## Need help? Ask questions about jobflow on the [jobflow support forum][help-forum]. If you've found an issue with jobflow, please submit a bug report on [GitHub Issues][issues]. ## What’s new? Track changes to jobflow through the [changelog][changelog]. ## Contributing We greatly appreciate any contributions in the form of a pull request. Additional information on contributing to jobflow can be found [here][contributing]. We maintain a list of all contributors [here][contributors]. ## License jobflow is released under a modified BSD license; the full text can be found [here][license]. ## Acknowledgements Jobflow was designed by Alex Ganose, Anubhav Jain, Gian-Marco Rignanese, David Waroquiers, and Guido Petretto. Alex Ganose implemented the first version of the package. Later versions have benefited from the contributions of several research groups. A full list of contributors is available [here](https://materialsproject.github.io/jobflow/contributors.html). [maggma]: https://materialsproject.github.io/maggma/ [fireworks]: https://materialsproject.github.io/fireworks/ [help-forum]: https://matsci.org/c/fireworks [issues]: https://github.com/materialsproject/jobflow/issues [changelog]: https://materialsproject.github.io/jobflow/changelog.html [contributing]: https://materialsproject.github.io/jobflow/contributing.html [contributors]: https://materialsproject.github.io/jobflow/contributors.html [license]: https://raw.githubusercontent.com/materialsproject/jobflow/main/LICENSE [quickstart]: https://materialsproject.github.io/jobflow/tutorials/1-quickstart.html [introduction]: https://materialsproject.github.io/jobflow/tutorials/2-introduction.html [defining-jobs]: https://materialsproject.github.io/jobflow/tutorials/3-defining-jobs.html [creating-flows]: https://materialsproject.github.io/jobflow/tutorials/4-creating-flows.html [dynamic-flows]: https://materialsproject.github.io/jobflow/tutorials/5-dynamic-flows.html [jobflow-database]: https://materialsproject.github.io/jobflow/tutorials/6-jobflow-database.html [jobflow-fireworks]: https://materialsproject.github.io/jobflow/tutorials/7-fireworks.html %package help Summary: Development documents and examples for jobflow Provides: python3-jobflow-doc %description help # jobflow code coverage code coverage pypi version supported python versions [Documentation](https://materialsproject.github.io/jobflow/) | [PyPI](https://pypi.org/project/jobflow/) | [GitHub](https://github.com/materialsproject/jobflow) Jobflow is a free, open-source library for writing and executing workflows. Complex workflows can be defined using simple python functions and executed locally or on arbitrary computing resources using the [FireWorks][fireworks] workflow manager. Some features that distinguish jobflow are dynamic workflows, easy compositing and connecting of workflows, and the ability to store workflow outputs across multiple databases. ## Is jobflow for me jobflow is intended to be a friendly workflow software that is easy to get started with, but flexible enough to handle complicated use cases. Some of its features include: - A clean and flexible Python API. - A powerful approach to compositing and connecting workflows — information passing between jobs is a key goal of jobflow. Workflows can be nested allowing for a natural way to build complex workflows. - Integration with multiple databases (MongoDB, S3, GridFS, and more) through the [Maggma][maggma] package. - Support for the [FireWorks][fireworks] workflow management system, allowing workflow execution on multicore machines or through a queue, on a single machine or multiple machines. - Support for dynamic workflows — workflows that modify themselves or create new ones based on what happens during execution. ## Workflow model Workflows in jobflows are made up of two main components: - A `Job` is an atomic computing job. Essentially any python function can be `Job`, provided its input and return values can be serialized to json. Anything returned by the job is considered an "output" and is stored in the jobflow database. - A `Flow` is a collection of `Job` objects or other `Flow` objects. The connectivity between jobs is determined automatically from the job inputs. The execution order of jobs is automatically determined based on their connectivity. Python functions can be easily converted in to `Job` objects using the `@job` decorator. In the example below, we define a job to add two numbers. ```python from jobflow import job, Flow @job def add(a, b): return a + b add_first = add(1, 5) add_second = add(add_first.output, 5) flow = Flow([add_first, add_second]) flow.draw_graph().show() ``` The output of the job is accessed using the `output` attribute. As the job has not yet been run, `output` contains be a reference to a future output. Outputs can be used as inputs to other jobs and will be automatically "resolved" before the job is executed. Finally, we created a flow using the two `Job` objects. The connectivity between the jobs is determined automatically and can be visualised using the flow graph.

simple flow graph

## Installation The jobflow is a Python 3.8+ library and can be installed using pip. ```bash pip install jobflow ``` ## Quickstart and tutorials To get a first glimpse of jobflow, we suggest that you follow our quickstart tutorial. Later tutorials delve into the advanced features of jobflow. - [Five-minute quickstart tutorial][quickstart] - [Introduction to jobflow][introduction] - [Defining Jobs using jobflow][defining-jobs] ## Need help? Ask questions about jobflow on the [jobflow support forum][help-forum]. If you've found an issue with jobflow, please submit a bug report on [GitHub Issues][issues]. ## What’s new? Track changes to jobflow through the [changelog][changelog]. ## Contributing We greatly appreciate any contributions in the form of a pull request. Additional information on contributing to jobflow can be found [here][contributing]. We maintain a list of all contributors [here][contributors]. ## License jobflow is released under a modified BSD license; the full text can be found [here][license]. ## Acknowledgements Jobflow was designed by Alex Ganose, Anubhav Jain, Gian-Marco Rignanese, David Waroquiers, and Guido Petretto. Alex Ganose implemented the first version of the package. Later versions have benefited from the contributions of several research groups. A full list of contributors is available [here](https://materialsproject.github.io/jobflow/contributors.html). [maggma]: https://materialsproject.github.io/maggma/ [fireworks]: https://materialsproject.github.io/fireworks/ [help-forum]: https://matsci.org/c/fireworks [issues]: https://github.com/materialsproject/jobflow/issues [changelog]: https://materialsproject.github.io/jobflow/changelog.html [contributing]: https://materialsproject.github.io/jobflow/contributing.html [contributors]: https://materialsproject.github.io/jobflow/contributors.html [license]: https://raw.githubusercontent.com/materialsproject/jobflow/main/LICENSE [quickstart]: https://materialsproject.github.io/jobflow/tutorials/1-quickstart.html [introduction]: https://materialsproject.github.io/jobflow/tutorials/2-introduction.html [defining-jobs]: https://materialsproject.github.io/jobflow/tutorials/3-defining-jobs.html [creating-flows]: https://materialsproject.github.io/jobflow/tutorials/4-creating-flows.html [dynamic-flows]: https://materialsproject.github.io/jobflow/tutorials/5-dynamic-flows.html [jobflow-database]: https://materialsproject.github.io/jobflow/tutorials/6-jobflow-database.html [jobflow-fireworks]: https://materialsproject.github.io/jobflow/tutorials/7-fireworks.html %prep %autosetup -n jobflow-0.1.11 %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-jobflow -f filelist.lst %dir %{python3_sitelib}/* %files help -f doclist.lst %{_docdir}/* %changelog * Tue Jun 20 2023 Python_Bot - 0.1.11-1 - Package Spec generated