Hera is a Python framework for constructing and submitting Argo Workflows.

Overview

Hera (hera-workflows)

The Argo was constructed by the shipwright Argus, and its crew were specially protected by the goddess Hera.

(https://en.wikipedia.org/wiki/Argo)

License: MIT

Hera is a Python framework for constructing and submitting Argo Workflows. The main goal of Hera is to make Argo Workflows more accessible by abstracting away some setup that is typically necessary for constructing Argo workflows.

Python functions are first class citizens in Hera - they are the atomic units (execution payload) that are submitted for remote execution. The framework makes it easy to wrap execution payloads into Argo Workflow tasks, set dependencies, resources, etc.

You can watch the introductory Hera presentation at the "Argo Workflows and Events Community Meeting 20 Oct 2021" here!

Table of content

Assumptions

Hera is exclusively dedicated to remote workflow submission and execution. Therefore, it requires an Argo server to be deployed to a Kubernetes cluster. Currently, Hera assumes that the Argo server sits behind an authentication layer that can authenticate workflow submission requests by using the Bearer token on the request. To learn how to deploy Argo to your own Kubernetes cluster you can follow the Argo Workflows guide!

Another option for workflow submission without the authentication layer is using port forwarding to your Argo server deployment and submitting workflows to localhost:2746 (2746 is the default, but you are free to use yours). Please refer to the documentation of Argo Workflows to see the command for port forward!

In the future some of these assumptions may either increase or decrease depending on the direction of the project. Hera is mostly designed for practical data science purposes, which assumes the presence of a DevOps team to set up an Argo server for workflow submission.

Installation

There are multiple ways to install Hera:

  1. You can install from PyPi:
pip install hera-workflows
  1. Install it directly from this repository using:
python -m pip install git+https://github.com/argoproj-labs/hera-workflows --ignore-installed
  1. Alternatively, you can clone this repository and then run the following to install:
python setup.py install

Contributing

If you plan to submit contributions to Hera you can install Hera in a virtual environment managed by pipenv:

pipenv shell
pipenv sync --dev --pre

Also, see the contributing guide!

Concepts

Currently, Hera is centered around two core concepts. These concepts are also used by Argo, which Hera aims to stay consistent with:

  • Task - the object that holds the Python function for remote execution/the atomic unit of execution;
  • Workflow - the higher level representation of a collection of tasks.

Examples

A very primitive example of submitting a task within a workflow through Hera is:

from hera.v1.task import Task
from hera.v1.workflow import Workflow
from hera.v1.workflow_service import WorkflowService


def say(message: str):
    """
    This can be anything as long as the Docker image satisfies the dependencies. You can import anything Python 
    that is in your container e.g torch, tensorflow, scipy, biopython, etc - just provide an image to the task!
    """
    print(message)


ws = WorkflowService('my-argo-domain.com', 'my-argo-server-token')
w = Workflow('my-workflow', ws)
t = Task('say', say, [{'message': 'Hello, world!'}])
w.add_task(t)
w.submit()

Examples

See the examples directory for a collection of Argo workflow construction and submission via Hera!

Comparison

There are other libraries currently available for structuring and submitting Argo Workflows:

  • Couler, which aims to provide a unified interface for constructing and managing workflows on different workflow engines;
  • Argo Python DSL, which allows you to programmaticaly define Argo worfklows using Python.

While the aforementioned libraries provide amazing functionality for Argo workflow construction and submission, they require an advanced understanding of Argo concepts. When Dyno Therapeutics started using Argo Workflows, it was challenging to construct and submit experimental machine learning workflows. Scientists and engineers at Dyno Therapeutics used a lot of time for workflow definition rather than the implementation of the atomic unit of execution - the Python function - that performed, for instance, model training.

Hera presents a much simpler interface for task and workflow construction, empowering users to focus on their own executable payloads rather than workflow setup. Here's a side by side comparison of Hera, Argo Python DSL, and Couler:

Hera Couler Argo Python DSL

from hera.v1.task import Task
from hera.v1.workflow import Workflow
from hera.v1.workflow_service import WorkflowService


def say(message: str):
    print(message)


ws = WorkflowService('my-argo-server.com', 'my-auth-token')
w = Workflow('diamond', ws)
a = Task('A', say, [{'message': 'This is task A!'}])
b = Task('B', say, [{'message': 'This is task B!'}])
c = Task('C', say, [{'message': 'This is task C!'}])
d = Task('D', say, [{'message': 'This is task D!'}])

a.next(b).next(d)  # a >> b >> d
a.next(c).next(d)  # a >> c >> d

w.add_tasks(a, b, c, d)
w.submit()

B [lambda: job(name="A"), lambda: job(name="C")], # A -> C [lambda: job(name="B"), lambda: job(name="D")], # B -> D [lambda: job(name="C"), lambda: job(name="D")], # C -> D ] ) diamond() submitter = ArgoSubmitter() couler.run(submitter=submitter) ">
import couler.argo as couler
from couler.argo_submitter import ArgoSubmitter


def job(name):
    couler.run_container(
        image="docker/whalesay:latest",
        command=["cowsay"],
        args=[name],
        step_name=name,
    )


def diamond():
    couler.dag(
        [
            [lambda: job(name="A")],
            [lambda: job(name="A"), lambda: job(name="B")],  # A -> B
            [lambda: job(name="A"), lambda: job(name="C")],  # A -> C
            [lambda: job(name="B"), lambda: job(name="D")],  # B -> D
            [lambda: job(name="C"), lambda: job(name="D")],  # C -> D
        ]
    )


diamond()
submitter = ArgoSubmitter()
couler.run(submitter=submitter)

V1alpha1Template: return self.echo(message=message) @task @parameter(name="message", value="B") @dependencies(["A"]) def B(self, message: V1alpha1Parameter) -> V1alpha1Template: return self.echo(message=message) @task @parameter(name="message", value="C") @dependencies(["A"]) def C(self, message: V1alpha1Parameter) -> V1alpha1Template: return self.echo(message=message) @task @parameter(name="message", value="D") @dependencies(["B", "C"]) def D(self, message: V1alpha1Parameter) -> V1alpha1Template: return self.echo(message=message) @template @inputs.parameter(name="message") def echo(self, message: V1alpha1Parameter) -> V1Container: container = V1Container( image="alpine:3.7", name="echo", command=["echo", "{{inputs.parameters.message}}"], ) return container ">
from argo.workflows.dsl import Workflow

from argo.workflows.dsl.tasks import *
from argo.workflows.dsl.templates import *


class DagDiamond(Workflow):

    @task
    @parameter(name="message", value="A")
    def A(self, message: V1alpha1Parameter) -> V1alpha1Template:
        return self.echo(message=message)

    @task
    @parameter(name="message", value="B")
    @dependencies(["A"])
    def B(self, message: V1alpha1Parameter) -> V1alpha1Template:
        return self.echo(message=message)

    @task
    @parameter(name="message", value="C")
    @dependencies(["A"])
    def C(self, message: V1alpha1Parameter) -> V1alpha1Template:
        return self.echo(message=message)

    @task
    @parameter(name="message", value="D")
    @dependencies(["B", "C"])
    def D(self, message: V1alpha1Parameter) -> V1alpha1Template:
        return self.echo(message=message)

    @template
    @inputs.parameter(name="message")
    def echo(self, message: V1alpha1Parameter) -> V1Container:
        container = V1Container(
            image="alpine:3.7",
            name="echo",
            command=["echo", "{{inputs.parameters.message}}"],
        )

        return container

Owner
argoproj-labs
argoproj-labs
A simple way to read and write LAPS passwords from linux.

A simple way to read and write LAPS passwords from linux. This script is a python setter/getter for property ms-Mcs-AdmPwd used by LAPS inspired by @s

Podalirius 36 Dec 09, 2022
A sandpit for textual related things

A sandpit repo for testing textual related things.

Craig Gumbley 1 Nov 08, 2021
Gunakan Dengan Bijak!!

YMBF Made with ❤️ by ikiwzXD_ menu Results notice me: if you get cp results, save 3/7 days then log in. Install script on Termux $ pkg update && pkg u

Ikiwz 0 Jul 11, 2022
a simple functional programming language compiler written in python

Functional Programming Language A compiler for my small functional language. Written in python with SLY lexer/parser generator library. Requirements p

Ashkan Laei 3 Nov 05, 2021
Developing and Comparing Vision-based Algorithms for Vision-based Agile Flight

DodgeDrone: Vision-based Agile Drone Flight (ICRA 2022 Competition) Would you like to push the boundaries of drone navigation? Then participate in the

Robotics and Perception Group 115 Dec 10, 2022
The blancmange curve can be visually built up out of triangle wave functions if the infinite sum is approximated by finite sums of the first few terms.

Blancmange-curve The blancmange curve can be visually built up out of triangle wave functions if the infinite sum is approximated by finite sums of th

Shankar Mahadevan L 1 Nov 30, 2021
Simple application that does transformation with HPF and LPFs.

Simple application that applies Butterworth, Gaussian & Ideal kernels on HPF and LPFs -aka Frequency Domain Filtering- Upload image from sidebar, set

Merve Noyan 3 Jul 06, 2022
Think DSP: Digital Signal Processing in Python, by Allen B. Downey.

ThinkDSP LaTeX source and Python code for Think DSP: Digital Signal Processing in Python, by Allen B. Downey. The premise of this book (and the other

Allen Downey 3.2k Jan 08, 2023
A Python Based Utility for Processing GST-Return JSON Files to Multiple Formats

GSTR 1/2A Utility by Shan.tk Open Source GSTR 1/GSTR 2A JSON to Excel utility based on Python. Useful for Auditors in Verifying GSTR 1 Return Invoices

Sudharshan TK 1 Oct 08, 2022
Telegram bot to remove the forwarded tag from messages.

Anonymous Sender Bot @AnonySendBot Telegram bot to remove the forwarded tag from messages. Table of Contents Usage Deploy To Heroku Local Deploying En

Stark Bots 26 Nov 24, 2022
Displays Christmas-themed ASCII art

Christmas Color Scripts Displays Christmas-themed ASCII art. This was mainly inspired by DistroTube's Shell Color Scripts Screenshots ASCII Shadow Tex

1 Aug 09, 2022
Huggingface package for the discrete VAE used for DALL-E.

DALL-E-Tokenizer Huggingface package for the discrete VAE used for DALL-E.

MyungHoon Jin 5 Sep 01, 2021
SECRET SANTA / KRIS KINGLE

SECRET SANTA / KRIS KINGLE Note: Before executing the script, make sure to turn

DEV_FINWIZ 10 Dec 06, 2022
GA SEI Unit 4 project backend for Bloom.

Grow Your OpportunitiesTM Background Watch the Bloom Intro Video At Bloom, we believe every job seeker deserves an opportunity to find meaningful work

Jonathan Herman 3 Sep 20, 2021
A multi purpose password managing and generating tool called Kyper.

Kyper A multi purpose password managing and generating tool called Kyper. Setup The setup for Kyper is fairly simple only involving the command python

Jan Dorian Poczekaj 1 Feb 05, 2022
Minimalist BERT implementation assignment for CS11-747

minbert Assignment by Zhengbao Jiang, Shuyan Zhou, and Ritam Dutt This is an exercise in developing a minimalist version of BERT, part of Carnegie Mel

Graham Neubig 51 Jan 03, 2023
Tools for teachers and students using nng (Natural Number Game)

nngtools Usage Place your nngsave.json to the directory in which you want to extract the level files. Place nngmap.json on the same directory. Run nng

Thanos Tsouanas 1 Dec 12, 2021
A python implementation of differentiable quality diversity.

Differentiable Quality Diversity This repository is the official implementation of Differentiable Quality Diversity.

ICAROS 41 Nov 30, 2022
Pengenalan para anggota KOMPETEGRAM

Pengenalan Anggota KOMPETEGRAM Apa isi repositori ini ? 💬 Repositori ini berisi pengenalan nama anggota KOMPETEGRAM dari seluruh angkatan atau Batch.

Repositori KOMPETEGRAM 7 Sep 17, 2022
Life Dynamics for python

Daphny_counter run command must be like this: /usr/bin/python3 /home/nmakagonov/Daphny/daphny_counter/Daphny_counter.py -o /home/nmakagonov/Daphny/out

12 Sep 05, 2022