A curated list of awesome big data frameworks, ressources and other awesomeness.
-
Updated
Oct 5, 2020
{{ message }}
A curated list of awesome big data frameworks, ressources and other awesomeness.
Apache Kafka running on Kubernetes
Probabilistic data structures for processing continuous, unbounded streams.
An open-source framework for real-time anomaly detection using Python, ElasticSearch and Kibana
NIST Certified SCAP 1.2 toolkit
A stream processing API for Go (alpha)
Go stream processing library
Series and Panels for Real-time and Exploratory Analysis of Data Streams
Simple yet powerful live data computation framework
The Open Source Time-Series Data Historian
Tideland GoCells (Event Based Applications)
The Tornado
Appbase.io streaming client lib for Javascript
A framework for data stream modeling and associated data mining tasks such as clustering and classification. - R Package
Learn how to use Kinesis Firehose, AWS Glue, S3, and Amazon Athena by streaming and analyzing reddit comments in realtime. 100-200 level tutorial.
MIST: High-performance IoT Stream Processing
HyperLogLog and other probabilistic data structures for mining in data streams
A Node.js and JavaScript synchronous data pipeline processing, data sharing and stream processing library. Actionable & Transformable Pipeline data processing.
unsupervised concept drift detection
A library for performing Content-Defined Chunking (CDC) on data streams.
Simple cloud based logger for microcontrollers.
RPJiOS: RPJ's RPi OS, a sensor data platform for the Raspberry Pi built with python2.7 and redis.
A simple C# network library.
Verifies data streams from synchrophasor measurement devices
Kafka-ML: connecting the data stream with ML/AI frameworks (now TensorFlow)
非结构化课程作业,包括社交网络、链路预测、数据流、文本分析
Real-time data stream classification and knowledge generation engine with no dependencies
Library to connect to the Azure Event Hub via AMQP 1.0 for the Go programming language (Golang) based on Apache Qpid Proton (an AMQP 1.0 C library)
Offline and online (i.e., real-time) annotated clustering methods for text data.
Add a description, image, and links to the data-stream topic page so that developers can more easily learn about it.
To associate your repository with the data-stream topic, visit your repo's landing page and select "manage topics."
sbt
experimentcommand in root should execute all experiments (c.f.flex.experimentpackage). However, for now, only one experiment is executed (witharg0). Therefore, theexperimentcommand that does not have an argument must perform all the experiment codes. SeeTasks.