Python stream processing for Kafka
-
Updated
Dec 13, 2024 - Python
Python stream processing for Kafka
Streaming IoT data into Confluent/Kafka using MQTT and EMQX | MQTT Kafka Integration
StreamGuard is a high-performance data management script using Kafka and MongoDB to efficiently handle and process real-time data streams. Ideal for scenarios like live GPS tracking, it features real-time data processing, reduced database load, and bulk data insertion.
A Python-based graphical user interface (GUI) application for managing and visualizing cryptocurrency portfolios. This user-friendly application fetches real-time data from the CoinMarket API and provides an intuitive interface to track and analyze the value of your cryptocurrency assets.
Collecting highlights from the Quix community and social media in the form of interesting questions, comments, challenges, solutions and insights
Real-time financial data processing using Apache Kafka, Spark, MySQL, and Grafana, orchestrated with Docker. This pipeline fetches, processes, stores, and visualises stock data.
This project offers a dual approach to understanding e-commerce customer behavior through: Batch data analysis and Real-time data processing.
A repository that contains implementation of a Real-Time Vehicle Data Processing Pipeline that efficiently manages and analyzes vehicle data through a cohesive system.
Bachelor thesis project of Michal Bureš made at BUT FIT.
Collecting highlights from the Quix community and social media in the form of interesting questions, comments, challenges, solutions and insights
A Python-based academic performance management app with a dynamic UI using Tkinter and ttkbootstrap. Features include secure SQLite storage, user authentication, real-time course info via SFU API, and Docker deployment for cross-platform compatibility.
Add a description, image, and links to the real-time-data-processing topic page so that developers can more easily learn about it.
To associate your repository with the real-time-data-processing topic, visit your repo's landing page and select "manage topics."