Skip to main content

A Compute agnostic pipelining software

Project description

Hello from magnus

logo

Magnus is a thin layer of abstraction over the underlying infrastructure to enable data scientist and machine learning engineers. It provides:

  • A way to execute Jupyter notebooks/python functions in local or remote platforms.
  • A framework to define complex pipelines via YAML or Python SDK.
  • Robust and automatic logging to ensure maximum reproducibility of experiments.
  • A framework to interact with secret managers ranging from environment variables to other vendors.
  • Interactions with various experiment tracking tools.

What does thin mean?

  • We really have no say in what happens within your notebooks or python functions.
  • We do not dictate how the infrastructure should be configured as long as it satisfies some basic criteria.
    • The underlying infrastructure should support container execution and an orchestration framework.
    • Some way to handle secrets either via environment variables or secrets manager.
    • A blob storage or some way to store your intermediate artifacts.
    • A database or blob storage to store logs.
  • We have no opinion of how your structure your project.
  • We do not creep into your CI/CD practices but it is your responsibility to provide the same environment where ever the execution happens. This is usually via git, virtual environment manager and docker.
  • We transpile to the orchestration framework that is used by your teams to do the heavy lifting.

What does it do?

works

Shift Left

Magnus provides patterns typically used in production environments even in the development phase.

  • Reduces the need for code refactoring during production phase of the project.
  • Enables best practices and understanding of infrastructure patterns.
  • Run the same code on your local machines or in production environments.

:sparkles::sparkles:Happy Experimenting!!:sparkles::sparkles:

Documentation

More details about the project and how to use it available here.

Extensions

All the services of magnus are extendable by design, please refer to magnus extensions

Installation

The minimum python version that magnus supports is 3.8

pip

magnus is a python package and should be installed as any other.

pip install magnus

We recommend that you install magnus in a virtual environment specific to the project and also poetry for your application development.

The command to install in a poetry managed virtual environment

poetry add magnus

Example Run

To give you a flavour of how magnus works, lets create a simple pipeline.

Copy the contents of this yaml into getting-started.yaml or alternatively in a python file if you are using the SDK.


!!! Note

The below execution would create a folder called 'data' in the current working directory. The command as given should work in linux/macOS but for windows, please change accordingly.


dag:
  description: Getting started
  start_at: step parameters
  steps:
    step parameters:
      type: task
      command_type: python-lambda
      command: "lambda x: {'x': int(x) + 1}"
      next: step shell
    step shell:
      type: task
      command_type: shell
      command: mkdir data ; env >> data/data.txt # For Linux/macOS
      next: success
      catalog:
        put:
          - "*"
    success:
      type: success
    fail:
      type: fail

The same could also be defined via a Python SDK.

#in pipeline.py
from magnus import Pipeline, Task

def pipeline():
    first = Task(name='step parameters', command="lambda x: {'x': int(x) + 1}", command_type='python-lambda',
                next_node='step shell')
    second = Task(name='step shell', command='mkdir data ; env >> data/data.txt',
                  command_type='shell', catalog={'put': '*'})

    pipeline = Pipeline(name='getting_started')
    pipeline.construct([first, second])
    pipeline.execute(parameters_file='parameters.yaml')

if __name__ == '__main__':
    pipeline()

Since the pipeline expects a parameter x, lets provide that using parameters.yaml

x: 3

And let's run the pipeline using:

 magnus execute --file getting-started.yaml --parameters-file parameters.yaml

If you are using the python SDK:

poetry run python pipeline.py

You should see a list of warnings but your terminal output should look something similar to this:

{
    "run_id": "20230131195647",
    "dag_hash": "",
    "use_cached": false,
    "tag": "",
    "original_run_id": "",
    "status": "SUCCESS",
    "steps": {
        "step parameters": {
            "name": "step parameters",
            "internal_name": "step parameters",
            "status": "SUCCESS",
            "step_type": "task",
            "message": "",
            "mock": false,
            "code_identities": [
                {
                    "code_identifier": "e15d1374aac217f649972d11fe772e61b5a2478d",
                    "code_identifier_type": "git",
                    "code_identifier_dependable": true,
                    "code_identifier_url": "INTENTIONALLY REMOVED",
                    "code_identifier_message": ""
                }
            ],
            "attempts": [
                {
                    "attempt_number": 0,
                    "start_time": "2023-01-31 19:56:55.007931",
                    "end_time": "2023-01-31 19:56:55.009273",
                    "duration": "0:00:00.001342",
                    "status": "SUCCESS",
                    "message": ""
                }
            ],
            "user_defined_metrics": {},
            "branches": {},
            "data_catalog": []
        },
        "step shell": {
            "name": "step shell",
            "internal_name": "step shell",
            "status": "SUCCESS",
            "step_type": "task",
            "message": "",
            "mock": false,
            "code_identities": [
                {
                    "code_identifier": "e15d1374aac217f649972d11fe772e61b5a2478d",
                    "code_identifier_type": "git",
                    "code_identifier_dependable": true,
                    "code_identifier_url": "INTENTIONALLY REMOVED",
                    "code_identifier_message": ""
                }
            ],
            "attempts": [
                {
                    "attempt_number": 0,
                    "start_time": "2023-01-31 19:56:55.128697",
                    "end_time": "2023-01-31 19:56:55.150878",
                    "duration": "0:00:00.022181",
                    "status": "SUCCESS",
                    "message": ""
                }
            ],
            "user_defined_metrics": {},
            "branches": {},
            "data_catalog": [
                {
                    "name": "data/data.txt",
                    "data_hash": "7e91b0a9ff8841a3b5bf2c711f58bcc0cbb6a7f85b9bc92aa65e78cdda59a96e",
                    "catalog_relative_path": "20230131195647/data/data.txt",
                    "catalog_handler_location": ".catalog",
                    "stage": "put"
                }
            ]
        },
        "success": {
            "name": "success",
            "internal_name": "success",
            "status": "SUCCESS",
            "step_type": "success",
            "message": "",
            "mock": false,
            "code_identities": [
                {
                    "code_identifier": "e15d1374aac217f649972d11fe772e61b5a2478d",
                    "code_identifier_type": "git",
                    "code_identifier_dependable": true,
                    "code_identifier_url": "INTENTIONALLY REMOVED",
                    "code_identifier_message": ""
                }
            ],
            "attempts": [
                {
                    "attempt_number": 0,
                    "start_time": "2023-01-31 19:56:55.239877",
                    "end_time": "2023-01-31 19:56:55.240116",
                    "duration": "0:00:00.000239",
                    "status": "SUCCESS",
                    "message": ""
                }
            ],
            "user_defined_metrics": {},
            "branches": {},
            "data_catalog": []
        }
    },
    "parameters": {
        "x": 4
    },
    "run_config": {
        "executor": {
            "type": "local",
            "config": {
                "enable_parallel": false,
                "placeholders": {}
            }
        },
        "run_log_store": {
            "type": "buffered",
            "config": {}
        },
        "catalog": {
            "type": "file-system",
            "config": {
                "compute_data_folder": "data",
                "catalog_location": ".catalog"
            }
        },
        "secrets": {
            "type": "do-nothing",
            "config": {}
        },
        "experiment_tracker": {
            "type": "do-nothing",
            "config": {}
        },
        "variables": {},
        "pipeline": {
            "start_at": "step parameters",
            "name": "getting_started",
            "description": "",
            "max_time": 86400,
            "steps": {
                "step parameters": {
                    "mode_config": {},
                    "next_node": "step shell",
                    "command": "lambda x: {'x': int(x) + 1}",
                    "command_type": "python-lambda",
                    "command_config": {},
                    "catalog": {},
                    "retry": 1,
                    "on_failure": "",
                    "type": "task"
                },
                "step shell": {
                    "mode_config": {},
                    "next_node": "success",
                    "command": "mkdir data ; env >> data/data.txt",
                    "command_type": "shell",
                    "command_config": {},
                    "catalog": {
                        "put": "*"
                    },
                    "retry": 1,
                    "on_failure": "",
                    "type": "task"
                },
                "success": {
                    "mode_config": {},
                    "type": "success"
                },
                "fail": {
                    "mode_config": {},
                    "type": "fail"
                }
            }
        }
    }
}

You should see that data folder being created with a file called data.txt in it. This is according to the command in step shell.

You should also see a folder .catalog being created with a single folder corresponding to the run_id of this run.

To understand more about the input and output, please head over to the documentation.

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

magnus-0.4.6.tar.gz (76.3 kB view details)

Uploaded Source

Built Distribution

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

magnus-0.4.6-py3-none-any.whl (81.5 kB view details)

Uploaded Python 3

File details

Details for the file magnus-0.4.6.tar.gz.

File metadata

  • Download URL: magnus-0.4.6.tar.gz
  • Upload date:
  • Size: 76.3 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.4.0 CPython/3.8.16 Linux/5.15.0-1033-azure

File hashes

Hashes for magnus-0.4.6.tar.gz
Algorithm Hash digest
SHA256 67d99588e5ccc2d28254ab211a0824c07a17a256cc2cef1da206fc97e8c18ac8
MD5 ddd6e9e162fb1dd26cc391ff98f3284c
BLAKE2b-256 8c0bea7aa23be952fb183e79386c648b5d21a0431305e95d7f3893a075ab643e

See more details on using hashes here.

File details

Details for the file magnus-0.4.6-py3-none-any.whl.

File metadata

  • Download URL: magnus-0.4.6-py3-none-any.whl
  • Upload date:
  • Size: 81.5 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.4.0 CPython/3.8.16 Linux/5.15.0-1033-azure

File hashes

Hashes for magnus-0.4.6-py3-none-any.whl
Algorithm Hash digest
SHA256 637b97ee5eaf98ac86a7a15d1130918627640c95d1a0ec77965dfeb9aed0fc4e
MD5 0a7932f79b95ef3a1b467fe1df4c03fe
BLAKE2b-256 38de25a14be77cb137ad4181906f3e8b69f63b997b78b6db049096f708afda0a

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