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  1. Stackups
  2. AI
  3. Development & Training Tools
  4. Machine Learning Tools
  5. Continuous Machine Learning vs Streamlit

Continuous Machine Learning vs Streamlit

OverviewComparisonAlternatives

Overview

Streamlit
Streamlit
Stacks403
Followers407
Votes12
GitHub Stars42.1K
Forks3.9K
Continuous Machine Learning
Continuous Machine Learning
Stacks21
Followers37
Votes0
GitHub Stars4.1K
Forks346

Continuous Machine Learning vs Streamlit: What are the differences?

  1. Scalability and Real-time Processing: Continuous Machine Learning focuses on the real-time processing of streaming data for model updates, making it suitable for applications that require instant adjustments to changing data patterns. In contrast, Streamlit is a web application framework that focuses on creating interactive and visually appealing dashboards for machine learning models, with less emphasis on real-time updates.

  2. Deployment and User Interaction: Continuous Machine Learning is typically employed in production environments where models need to be continuously updated, while Streamlit is commonly used for building user-friendly interfaces for machine learning projects with minimal deployment requirements, making it more suitable for rapid prototyping and testing.

  3. Model Updating and Algorithm Flexibility: Continuous Machine Learning allows for the automatic updating of models with incoming data streams and supports a wide range of machine learning algorithms for adaptation. On the other hand, Streamlit primarily focuses on visualizing pre-trained models and does not emphasize on automated model updates or algorithm flexibility.

  4. Data Processing and Feature Engineering: Continuous Machine Learning platforms often integrate with data processing tools for feature engineering and data manipulation to support real-time model updates, whereas Streamlit prioritizes the visualization and interpretation of pre-processed data without extensive built-in data manipulation capabilities.

  5. Automation and Monitoring: Continuous Machine Learning systems are designed for automated model training, evaluation, and monitoring of performance metrics, providing insights on model behavior over time. Streamlit, however, relies on manual user interactions for model adjustments and lacks built-in monitoring features for tracking model performance dynamically.

  6. Complexity and Integration: Continuous Machine Learning setups tend to be more complex due to the real-time processing and model updating requirements, often requiring specialized infrastructure and expertise. In contrast, Streamlit offers simpler integration with existing machine learning models and libraries, making it easier to create interactive demos and applications without extensive technical knowledge.

In Summary, Continuous Machine Learning prioritizes real-time model updates and scalability for production environments, whereas Streamlit focuses on creating interactive dashboards and user-friendly interfaces for machine learning projects with less emphasis on real-time processing.

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Detailed Comparison

Streamlit
Streamlit
Continuous Machine Learning
Continuous Machine Learning

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.

Continuous Machine Learning (CML) is an open-source library for implementing continuous integration & delivery (CI/CD) in machine learning projects. Use it to automate parts of your development workflow, including model training and evaluation, comparing ML experiments across your project history, and monitoring changing datasets.

Free and open source; Build apps in a dozen lines of Python with a simple API; No callbacks; No hidden state; Works with TensorFlow, Keras, PyTorch, Pandas, Numpy, Matplotlib, Seaborn, Altair, Plotly, Bokeh, Vega-Lite, and more
GitFlow for data science; Auto reports for ML experiments; No additional services
Statistics
GitHub Stars
42.1K
GitHub Stars
4.1K
GitHub Forks
3.9K
GitHub Forks
346
Stacks
403
Stacks
21
Followers
407
Followers
37
Votes
12
Votes
0
Pros & Cons
Pros
  • 11
    Fast development
  • 1
    Fast development and apprenticeship
No community feedback yet
Integrations
Python
Python
Plotly.js
Plotly.js
PyTorch
PyTorch
Pandas
Pandas
Bokeh
Bokeh
Keras
Keras
NumPy
NumPy
Matplotlib
Matplotlib
TensorFlow
TensorFlow
Altair GraphQL
Altair GraphQL
GitHub
GitHub
Git
Git
GitLab
GitLab
Google Cloud Platform
Google Cloud Platform
DVC
DVC

What are some alternatives to Streamlit, Continuous Machine Learning?

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.

scikit-learn

scikit-learn

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

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.

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.

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