paulovn / ml-vm-notebook
Machine Learning Virtual Machine (provisioned with Vagrant) for building Spark Notebook applications
☆54Updated this week
Alternatives and similar repositories for ml-vm-notebook:
Users that are interested in ml-vm-notebook are comparing it to the libraries listed below
- Source material for Data Science for Telecom Tutorial at Strata Singapore 2015☆102Updated 8 years ago
- Supporting content (slides and exercises) for the Addison-Wesley (Pearson) video series covering best practices for developing scalable S…☆66Updated 9 years ago
- Learn the pyspark API through pictures and simple examples☆170Updated 4 years ago
- ☆77Updated 8 years ago
- Some notebook examples related to Apache Spark, IPython / Jupyter, Zeppelin☆52Updated 8 years ago
- Repository used for Spark Trainings☆53Updated last year
- All materials for workshops - HackOn(Data) - Toronto☆33Updated 7 years ago
- AWS Big Data Certification☆25Updated last month
- Updated repository☆157Updated 3 years ago
- Frank Kane's Taming Big Data with Apache Spark and Python, published by Packt☆119Updated 2 years ago
- ☆58Updated 7 years ago
- Real-world Spark pipelines examples☆83Updated 6 years ago
- Installation guide for Apache Spark + Hadoop on Mac/Linux☆59Updated 7 years ago
- Repository of sample Databricks notebooks☆254Updated 10 months ago
- Gallery of Apache Zeppelin notebooks☆215Updated 5 years ago
- Business Data Analysis by HiPIC of CalStateLA☆20Updated 6 years ago
- Mastering Spark for Data Science, published by Packt☆47Updated 2 years ago
- Data Science box: Spark, Jupyter, R+RStudio, Zeppelin, Python 2 & 3, Java, Scala.☆39Updated 6 years ago
- ☆154Updated 4 years ago
- PySpark Notebook and Shiny App for Demo☆35Updated 7 years ago
- helpful resources for (big) data science☆33Updated 3 years ago
- Course materials for my data pipeline video course with O'Reilly☆195Updated 7 years ago
- Quickstart PySpark with Anaconda on AWS/EMR☆53Updated 8 years ago
- LearningApacheSpark☆246Updated last year
- This service is meant to simplify running Google Cloud operations, especially BigQuery tasks. This means you do not have to worry about …☆45Updated 5 years ago
- Code snippets and tutorials for working with social science data in PySpark☆419Updated 7 years ago
- KDD conf☆23Updated 5 years ago
- Sharing interesting and noteworthy Data Engineering content☆66Updated 8 years ago
- Analyzing NBA data using Spark 2.1☆46Updated 8 years ago
- An example PySpark project with pytest☆17Updated 7 years ago