BigDataAnalytics_INFOH515
Analytics tutorial
A collection of Jupyter notebooks teaching Big Data Analytics with Spark and machine learning concepts
Material for the Big Data Analytics exercise classes - INFOH515 - Big Data : Distributed Data Management and Scalable Analytics - Université Libre de Bruxelles
59 stars
5 watching
26 forks
Language: Jupyter Notebook
last commit: almost 3 years ago
Linked from 1 awesome list
Related projects:
Repository | Description | Stars |
---|---|---|
| A collection of data science learning materials in the form of IPython Notebooks covering various techniques such as regression, classification, and clustering. | 2,964 |
| A collection of interactive tutorials and demonstrations on Big Data technologies such as Hadoop, Spark, and MapReduce. | 68 |
| Repository containing lecture and seminar materials for a deep learning course taught in 2017 | 116 |
| Creating tutorials to teach data science skills through Jupyter Notebook | 7,011 |
| A collection of machine learning techniques taught through interactive Jupyter Notebooks | 29 |
| Provides a platform for data visualization using Jupyter Notebook | 41 |
| Provides interactive tutorials and code resources for accessing and working with NSIDC DAAC data | 82 |
| This repository provides tutorials and demo code for accelerated deep learning with PyTorch using Jupyter Notebook. | 127 |
| Guiding principles and techniques for transitioning Jupyter Notebook code to a more organized software architecture. | 526 |
| A tutorial project providing guidance on building and training deep learning models using PyData | 85 |
| Analyzes convergence of sequential federated learning on heterogeneous data using Jupyter Notebook | 4 |
| An open-source tutorial project providing materials and datasets for teaching machine learning with R | 8 |
| An educational resource providing an introduction to Jupyter Notebook, including its use and applications. | 23 |
| A curated list of tutorials and resources for learning Python for data science, machine learning, and other related topics. | 5,301 |
| Materials and code for a PyCon 2015 tutorial on machine learning with scikit-learn | 896 |