docker-alpine-python-machinelearning - Small Docker image with Python Machine Learning tools (~180MB) https://hub

  •        400

Small Docker image with Python Machine Learning tools (~180MB) https://hub.docker.com/r/frolvlad/alpine-python-machinelearning/

https://github.com/frol/docker-alpine-python-machinelearning

Tags
Implementation
License
Platform

   




Related Projects

mlcourse_open - OpenDataScience Machine Learning course. Both in English and Russian

  •    Python

This is the list of published articles on medium.com πŸ‡¬πŸ‡§, habr.com πŸ‡·πŸ‡Ί, and jqr.com πŸ‡¨πŸ‡³. Icons are clickable. Also, links to Kaggle Kernels (in English) are given. This way one can reproduce everything without installing a single package. Assignments will be announced each week. Meanwhile, you can pratice with demo versions. Solutions will be discussed in the upcoming run of the course.

Python-Machine-Learning-Cookbook - Code files for Python-Machine-Learning-Cookbook

  •    Python

##Instructions and Navigation This is the code repository for Python Machine Learning Cookbook, published by Packt. It contains all the supporting project files necessary to work through the book from start to finish. The code files are organized according to the chapters in the book. These code samples will work on any machine running Linux, Mac OS X, or Windows. Even though they are written and tested on Python 2.7, you can easily run them on Python 3.x with minimal changes. To run the code samples, you need to install scikit-learn, NumPy, SciPy, and matplotlib. For Chapter 6, you will need to install NLTK and gensim. To run the code in chapter 7, you need to install hmmlearn and python_speech_features. For chapter 8, you need to install Pandas and PyStruct. Chapter 8 also makes use of hmmlearn. For chapters 9 and 10, you need to install OpenCV. For chapter 11, you need to install NeuroLab.

docker-alpine-glibc - Carefully crafted Alpine Docker image with glibc (~12MB)

  •    

This image is based on Alpine Linux image, which is only a 5MB image, and contains glibc to enable proprietary projects compiled against glibc (e.g. OracleJDK, Anaconda) work on Alpine. This image includes some quirks to make glibc work side by side with musl libc (default in Alpine Linux). glibc packages for Alpine Linux are prepared by Sasha Gerrand and the releases are published in sgerrand/alpine-pkg-glibc github repo.

docker-alpine - Alpine Linux Docker image. Win at minimalism!

  •    Shell

A super small Docker image based on Alpine Linux. The image is only 5 MB and has access to a package repository that is much more complete than other BusyBox based images.This makes Alpine Linux a great image base for utilities and even production applications. Read more about Alpine Linux here and you can see how their mantra fits in right at home with Docker images.


uwsgi-nginx-flask-docker - Docker image with uWSGI and Nginx for Flask applications in Python running in a single container

  •    Shell

Docker image with uWSGI and Nginx for Flask web applications in Python 3.6, Python 3.5 and Python 2.7 running in a single container. Optionally using Alpine Linux. This Docker image allows you to create Flask web applications in Python that run with uWSGI and Nginx in a single container.

docker-alpine - Docker containers running Alpine Linux and s6 for process management

  •    Shell

Highly configurable Docker images running Alpine linux and s6 process management. Using Docker makes your infrastructure and environment consistent, testable, scalable and repeatable.

docker-alpine-java - Oracle Java8 over AlpineLinux with glibc 2.27

  •    Smarty

Basic Docker image to run Java applications. This image is based on AlpineLinux to keep the size down, yet smaller images do exist. Includes BASH, since many Java applications like to have convoluted BASH start-up scripts. All tags upgraded to alpine:3.4 Latest tags are based on alpine:3.7.

ffmpeg - Docker build for FFmpeg on Ubuntu / Alpine / Centos 7 / Scratch

  •    Python

This project prepares a minimalist Docker image with FFmpeg. It compiles FFmpeg from sources following instructions from the Compilation Guide. You can install the latest build of this image by running docker pull jrottenberg/ffmpeg.

python-machine-learning-book - The "Python Machine Learning (1st edition)" book code repository and info resource

  •    Jupyter

This GitHub repository contains the code examples of the 1st Edition of Python Machine Learning book. If you are looking for the code examples of the 2nd Edition, please refer to this repository instead. What you can expect are 400 pages rich in useful material just about everything you need to know to get started with machine learning ... from theory to the actual code that you can directly put into action! This is not yet just another "this is how scikit-learn works" book. I aim to explain all the underlying concepts, tell you everything you need to know in terms of best practices and caveats, and we will put those concepts into action mainly using NumPy, scikit-learn, and Theano.

astroML - Machine learning, statistics, and data mining for astronomy and astrophysics

  •    Python

AstroML is a Python module for machine learning and data mining built on numpy, scipy, scikit-learn, and matplotlib, and distributed under the BSD license. It contains a growing library of statistical and machine learning routines for analyzing astronomical data in python, loaders for several open astronomical datasets, and a large suite of examples of analyzing and visualizing astronomical datasets. This project was started in 2012 by Jake VanderPlas to accompany the book Statistics, Data Mining, and Machine Learning in Astronomy by Zeljko Ivezic, Andrew Connolly, Jacob VanderPlas, and Alex Gray.

docker-alpine-oraclejdk8 - Small Docker image with OracleJDK 8 (167MB)

  •    

This image is based on Alpine Linux image, which is only a 5MB image, and contains OracleJDK 8. You must accept the Oracle Binary Code License Agreement for Java SE to use this image (see #6 for details).

ScipySuperpack - Recent builds of Numpy, Scipy, Matplotlib, iPython and PyMC for OSX

  •    Shell

This shell script will build and install the Python scientific stack, including Numpy, Scipy, Matplotlib, Jupyter, Pandas, Statsmodels, Scikit-Learn, and PyMC for OS X 10.10 (Yosemite) using the Homebrew package manager. The script will use recent development code from each package, which means that though some bugs may be fixed and features added, they also may be more unstable than the official releases. The SuperPack will install Python 2.7 or 3.2 from Homebrew and build all packages against it.

Scikit Learn - Machine Learning in Python

  •    Python

scikit-learn is a Python module for machine learning built on top of SciPy. It is simple and efficient tools for data mining and data analysis. It supports automatic classification, clustering, model selection, pre processing and lot more.

practical-machine-learning-with-python - Master the essential skills needed to recognize and solve complex real-world problems with Machine Learning and Deep Learning by leveraging the highly popular Python Machine Learning Eco-system

  •    Jupyter

"Data is the new oil" is a saying which you must have heard by now along with the huge interest building up around Big Data and Machine Learning in the recent past along with Artificial Intelligence and Deep Learning. Besides this, data scientists have been termed as having "The sexiest job in the 21st Century" which makes it all the more worthwhile to build up some valuable expertise in these areas. Getting started with machine learning in the real world can be overwhelming with the vast amount of resources out there on the web. "Practical Machine Learning with Python" follows a structured and comprehensive three-tiered approach packed with concepts, methodologies, hands-on examples, and code. This book is packed with over 500 pages of useful information which helps its readers master the essential skills needed to recognize and solve complex problems with Machine Learning and Deep Learning by following a data-driven mindset. By using real-world case studies that leverage the popular Python Machine Learning ecosystem, this book is your perfect companion for learning the art and science of Machine Learning to become a successful practitioner. The concepts, techniques, tools, frameworks, and methodologies used in this book will teach you how to think, design, build, and execute Machine Learning systems and projects successfully.

sklearn_scipy2013 - Scikit-learn tutorials for the Scipy 2013 conference

  •    Python

This repository will contain files and other info associated with our Scipy 2013 scikit-learn tutorial. This tutorial will require recent installations of numpy, scipy, matplotlib, scikit-learn, psutil, pyrallel and ipython with ipython notebook.

alpine-node - Minimal Node.js Docker Images built on Alpine Linux

  •    

Versions v9.4.0, v8.9.4, v6.12.3, v4.8.7, v0.12.18 and v0.10.48 – built on Alpine Linux.Major io.js versions are tagged too.

jekyll-docker - :ship: Docker images and builders for Jekyll.

  •    Shell

The standard images (jekyll/jekyll) include a default set of "dev" packages, along with Node.js, and other stuff that makes Jekyll easy. It also includes a bunch of default gems that the community wishes us to maintain on the image. The builder image comes with extra stuff that is not included in the standard image, like lftp, openssh and other extra packages meant to be used by people who are deploying their Jekyll builds to another server with a CI.

pydruid - A Python connector for Druid

  •    Python

pydruid exposes a simple API to create, execute, and analyze Druid queries. pydruid can parse query results into Pandas DataFrame objects for subsequent data analysis -- this offers a tight integration between Druid, the SciPy stack (for scientific computing) and scikit-learn (for machine learning). pydruid can export query results into TSV or JSON for further processing with your favorite tool, e.g., R, Julia, Matlab, Excel. It provides both synchronous and asynchronous clients. Additionally, pydruid implements the Python DB API 2.0, a SQLAlchemy dialect, and a provides a command line interface to interact with Druid.