StackShareStackShare
Follow on
StackShare

Discover and share technology stacks from companies around the world.

Follow on

© 2025 StackShare. All rights reserved.

Product

  • Stacks
  • Tools
  • Feed

Company

  • About
  • Contact

Legal

  • Privacy Policy
  • Terms of Service
  1. Stackups
  2. AI
  3. Development & Training Tools
  4. Machine Learning Tools
  5. PyBrain vs scikit-learn

PyBrain vs scikit-learn

OverviewComparisonAlternatives

Overview

scikit-learn
scikit-learn
Stacks1.3K
Followers1.1K
Votes45
GitHub Stars63.9K
Forks26.4K
PyBrain
PyBrain
Stacks0
Followers6
Votes0

PyBrain vs scikit-learn: What are the differences?

# Introduction

## 1. Difference in Focus: 
PyBrain is primarily focused on neural networks and reinforcement learning while scikit-learn offers a wide range of machine learning algorithms including regression, classification, clustering, and dimensionality reduction.

## 2. Learning Curve:
Scikit-learn is more user-friendly and easier for beginners to grasp compared to PyBrain, which has a steeper learning curve due to its focus on neural networks and advanced reinforcement learning techniques.

## 3. Flexibility:
PyBrain allows for more flexibility in customizing neural network architecture and algorithms, while scikit-learn offers more predefined templates and models for faster implementation without much customization required.

## 4. Documentation and Community Support:
Scikit-learn has a more extensive documentation and active community support compared to PyBrain, making it easier for users to troubleshoot issues and find resources for learning and development.

## 5. Performance and Efficiency:
Scikit-learn is generally faster and more efficient in terms of computation and memory usage for standard machine learning tasks compared to PyBrain, which may require more computational resources for complex neural network designs.

## 6. Integration with Other Libraries:
Scikit-learn is more compatible and integrates well with other popular Python libraries such as NumPy, SciPy, and Pandas, providing a seamless workflow for data preprocessing and analysis compared to PyBrain.

In Summary, scikit-learn is more beginner-friendly and versatile in terms of machine learning algorithms, while PyBrain offers advanced capabilities with a focus on neural networks and reinforcement learning.

Share your Stack

Help developers discover the tools you use. Get visibility for your team's tech choices and contribute to the community's knowledge.

View Docs
CLI (Node.js)
or
Manual

Detailed Comparison

scikit-learn
scikit-learn
PyBrain
PyBrain

scikit-learn is a Python module for machine learning built on top of SciPy and distributed under the 3-Clause BSD license.

It's goal is to offer flexible, easy-to-use yet still powerful algorithms for Machine Learning Tasks and a variety of predefined environments to test and compare your algorithms.

-
Supervised Learning; Unsupervised Learning; Reinforcement Learning; Black-box Optimization; Network Architectures; Toy Environments; 3D Environments; Function Environments; Pole-Balancing
Statistics
GitHub Stars
63.9K
GitHub Stars
-
GitHub Forks
26.4K
GitHub Forks
-
Stacks
1.3K
Stacks
0
Followers
1.1K
Followers
6
Votes
45
Votes
0
Pros & Cons
Pros
  • 26
    Scientific computing
  • 19
    Easy
Cons
  • 2
    Limited
No community feedback yet
Integrations
No integrations available
Python
Python

What are some alternatives to scikit-learn, PyBrain?

TensorFlow

TensorFlow

TensorFlow is an open source software library for numerical computation using data flow graphs. Nodes in the graph represent mathematical operations, while the graph edges represent the multidimensional data arrays (tensors) communicated between them. The flexible architecture allows you to deploy computation to one or more CPUs or GPUs in a desktop, server, or mobile device with a single API.

PyTorch

PyTorch

PyTorch is not a Python binding into a monolothic C++ framework. It is built to be deeply integrated into Python. You can use it naturally like you would use numpy / scipy / scikit-learn etc.

Keras

Keras

Deep Learning library for Python. Convnets, recurrent neural networks, and more. Runs on TensorFlow or Theano. https://keras.io/

Kubeflow

Kubeflow

The Kubeflow project is dedicated to making Machine Learning on Kubernetes easy, portable and scalable by providing a straightforward way for spinning up best of breed OSS solutions.

TensorFlow.js

TensorFlow.js

Use flexible and intuitive APIs to build and train models from scratch using the low-level JavaScript linear algebra library or the high-level layers API

Polyaxon

Polyaxon

An enterprise-grade open source platform for building, training, and monitoring large scale deep learning applications.

Streamlit

Streamlit

It is the app framework specifically for Machine Learning and Data Science teams. You can rapidly build the tools you need. Build apps in a dozen lines of Python with a simple API.

MLflow

MLflow

MLflow is an open source platform for managing the end-to-end machine learning lifecycle.

H2O

H2O

H2O.ai is the maker behind H2O, the leading open source machine learning platform for smarter applications and data products. H2O operationalizes data science by developing and deploying algorithms and models for R, Python and the Sparkling Water API for Spark.

PredictionIO

PredictionIO

PredictionIO is an open source machine learning server for software developers to create predictive features, such as personalization, recommendation and content discovery.

Related Comparisons

Postman
Swagger UI

Postman vs Swagger UI

Mapbox
Google Maps

Google Maps vs Mapbox

Mapbox
Leaflet

Leaflet vs Mapbox vs OpenLayers

Twilio SendGrid
Mailgun

Mailgun vs Mandrill vs SendGrid

Runscope
Postman

Paw vs Postman vs Runscope