Python analytics made easy - an open source DataOps, MLOps platform for humans

omegaml omegaml Last update: May 02, 2023

omega|ml - MLOps for humans

with just a single line of code you can

  • deploy machine learning models straight from Jupyter Notebook (or any other code)
  • implement data pipelines quickly, without memory limitation, all from a Pandas-like API
  • serve models and data from an easy to use REST API

Further, omega|ml is the fastest way to

  • scale model training on the included scalable pure-Python compute cluster, on Spark or any other cloud
  • collaborate on data science projects easily, sharing Jupyter Notebooks
  • deploy beautiful dashboards right from your Jupyter Notebook, using dashserve

Quick start

Start the omega|ml server right from your laptop or virtual machine

$ wget https://raw.githubusercontent.com/omegaml/omegaml/master/docker-compose.yml
$ docker-compose up -d

Jupyter Notebook is immediately available at http://localhost:8899 (omegamlisfun to login). Any notebook you create will automatically be stored in the integrated omega|ml database, making collaboration a breeze. The REST API is available at http://localhost:5000.

Already have a Python environment (e.g. Jupyter Notebook)? Leverage the power of omega|ml by installing as follows:

# assuming you have started the server as per above
$ pip install omegaml

Further information

Examples

# transparently store Pandas Series and DataFrames or any Python object
om.datasets.put(df, 'stats')
om.datasets.get('stats', sales__gte=100)

# transparently store and get models
clf = LogisticRegression()
om.models.put(clf, 'forecast')
clf = om.models.get('forecast')

# run and scale models directly on the integrated Python or Spark compute cluster
om.runtime.model('forecast').fit('stats[^sales]', 'stats[sales]')
om.runtime.model('forecast').predict('stats')
om.runtime.model('forecast').gridsearch(X, Y)

# use the REST API to store and retrieve data, run predictions
requests.put('/v1/dataset/stats', json={...})
requests.get('/v1/dataset/stats?sales__gte=100')
requests.put('/v1/model/forecast', json={...})

Use Cases

omega|ml currently supports scikit-learn, Keras and Tensorflow out of the box. Need to deploy a model from another framework? Open an issue at https://github.com/omegaml/omegaml/issues or drop us a line at [email protected]

Machine Learning Deployment

  • deploy models to production with a single line of code
  • serve and use models or datasets from a REST API

Data Science Collaboration

  • get a fully integrated data science workplace within minutes
  • easily share models, data, jupyter notebooks and reports with your collaborators

Centralized Data & Compute cluster

  • perform out-of-core computations on a pure-python or Apache Spark compute cluster
  • have a shared NoSQL database (MongoDB), out of the box, working like a Pandas dataframe
  • use a compute cluster to train your models with no additional setup

Scalability and Extensibility

  • scale your data science work from your laptop to team to production with no code changes
  • integrate any machine learning framework or third party data science platform with a common API

Towards Data Science recently published an article on omega|ml: https://towardsdatascience.com/omega-ml-deploying-data-machine-learning-pipelines-the-easy-way-a3d281569666

In addition omega|ml provides an easy-to-use extensions API to support any kind of models, compute cluster, database and data source.

Commercial Edition & Support

https://omegaml.io

omega|ml Commercial Edition provides security on every level and is ready made for Kubernetes deployment. It is licensed separately for on-premise, private or hybrid cloud. Sign up at https://omegaml.io

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