Spark Java_Examples for all modules including GraphX
-
Updated
Dec 8, 2017 - Java
Spark Java_Examples for all modules including GraphX
Distributed Search and Recommendation with SpringBoot/ElasticSearch/Spark
Recommendation engine in Java. Based on an ALS algorithm (Apache Spark). Train a new model after N seconds.
A collection of “cookbook-style” scripts for simplifying data engineering and machine learning in Apache Spark.
Data Driven Sentiment Insight into Twitter(X) Trends | Kafka | Spark | Spark MLlib | Docker
EverAnalyzer is my thesis in the Department of Digital Systems of the University of Piraeus. EverAnalyzer is a platform for collecting, preprocessing, processing and analyzing Big Data from the Twitter platform.
Big Data Project - SSML - Spark Streaming for Machine Learning
Big Data Analytics Project using Apache Spark for Predicting Severity of Car Accidents in the USA
• Developed a Recommender System for restaurants by performing analysis on data preprocessed from Yelp Dataset. • Used Altering Least Squares method with Matrix Factorization and Neighborhood Model to train and build the Recommender System. • Tested the Recommender System with multiple rounds of Cross Validation technique and 16% prediction erro…
Introduction to Apache Spark.
We generate potential customer leads for businesses on yelp using big data and machine learning
This is a repository i have created to put up some of the knowledge i have gained around Big Data Technologies especially Spark, GraphX etc.
Work in-progress NBA Game Predictor using Spark
使用SpringBoot & ElasticSearch 及ELK组件 & Spark ML Lib构建一个仿大众点评的千人千面推荐系统(不是
Spark Machine Learning Library - learning and developing Machine Learning algorithms
Utilized SparkML and Scikit-Learn train several machine learning models for distinguishing fraudulent and legitimate transactions. The machine learning models are then utilized to make predictions on Kafka-generated real-time data streams. Built an interface for displaying these predictions in real-time using the Streamlit framework.
Add a description, image, and links to the sparkmllib topic page so that developers can more easily learn about it.
To associate your repository with the sparkmllib topic, visit your repo's landing page and select "manage topics."