pipelinex
ML pipeline builder
A Python package to build and experiment with machine learning pipelines using Kedro, MLflow, and other tools
PipelineX: Python package to build ML pipelines for experimentation with Kedro, MLflow, and more
226 stars
7 watching
11 forks
Language: Python
last commit: about 1 year ago
Linked from 1 awesome list
data-engineeringdata-sciencedeep-learningexperimentationmachine-learningpipeline
Related projects:
Repository | Description | Stars |
---|---|---|
| An end-to-end platform for deploying production machine learning pipelines | 2,121 |
| A tool for creating flexible and self-documenting data science pipelines | 56 |
| Provides utility functions and abstractions for building machine learning models using TensorFlow | 4 |
| An MLOps Python library that enables data scientists to deploy and orchestrate machine learning pipelines for production-ready inference. | 117 |
| Automates the end-to-end machine learning workflow from code commit to model deployment | 18 |
| Library to build customizable pipeline structures using Elixir | 18 |
| A lightweight MLOps library for small teams and individuals to manage machine learning model development lifecycle | 22 |
| An open-source platform for building and managing machine learning pipelines with Python | 976 |
| Enables deployment of machine learning pipelines from Spark and Scikit-Learn to production | 1,506 |
| A machine learning pipeline library that enables the creation of modular and reusable data processing workflows | 610 |
| A tool to help analyze and debug machine learning pipelines by tracking the flow of data and components through the pipeline. | 468 |
| A platform for managing and deploying machine learning workflows across the application lifecycle | 1,458 |
| Simplifies the deployment of Kubeflow Pipelines workflows by providing a graphical interface for Data Scientists to define and deploy pipelines directly from JupyterLab. | 632 |
| A tool for constructing simple pipelines in R with minimal overheads. | 31 |
| Tools for executing Python code and building data pipelines in a Unix shell | 507 |