influxdb-client-python - InfluxDB 2.0 python client

  •        383

Note: Use this client library with InfluxDB 2.x and InfluxDB 1.8+. For connecting to InfluxDB 1.7 or earlier instances, use the influxdb-python client library. The API of the influxdb-client-python is not the backwards-compatible with the old one - influxdb-python.

https://influxdb-client.readthedocs.io/en/stable/
https://github.com/influxdata/influxdb-client-python

Tags
Implementation
License
Platform

   




Related Projects

node-influx - 📈 The InfluxDB Client for Node.js and Browsers

  •    TypeScript

For browsers, see the browser setup instructions. Version 3.x.x is compatible with InfluxDB 0.8.x - 3.x will no longer have updates by core contributers, please consider upgrading.

Marketstore - DataFrame Server for Financial Timeseries Data

  •    Go

MarketStore is a database server optimized for financial timeseries data. You can think of it as an extensible DataFrame service that is accessible from anywhere in your system, at higher scalability. It is designed from the ground up to address scalability issues around handling large amounts of financial market data used in algorithmic trading backtesting, charting, and analyzing price history with data spanning many years, including tick-level for the all US equities or the exploding crypto currencies space. If you are struggling with managing lots of HDF5 files, this is perfect solution to your problem.

influxdb-python - Python client for InfluxDB

  •    Python

InfluxDB-Python is a client for interacting with InfluxDB. This module is tested with InfluxDB versions: v1.2.4, v1.3.9, v1.4.2, and v1.5.4.

influxdb-php - influxdb-php: A PHP Client for InfluxDB, a time series database

  •    PHP

A easy to use library for using InfluxDB with PHP. Maintained by @thecodeassassin, @gianarb. The influxdb-php library was created to have php port of the python influxdb client. This way there will be a common abstraction library between different programming languages.


docs.influxdata.com-ARCHIVE - ARCHIVE - 1.x docs for InfluxData

  •    Less

Note: This repository is for the InfluxData documentation archive and is not actively maintained. For the most recent InfluxData documentation repository, visit github.com/influxdata/docs-v2/.

influxdb-ruby - Ruby client for InfluxDB

  •    Ruby

The official Ruby client library for InfluxDB. Maintained by @toddboom and @dmke. Support for InfluxDB v0.8.x is now deprecated. The final version of this library that will support the older InfluxDB interface is v0.1.9, which is available as a gem and tagged on this repository.

influxdb-relay - Service to replicate InfluxDB data for high availability

  •    Python

This project adds a basic high availability layer to InfluxDB. With the right architecture and disaster recovery processes, this achieves a highly available setup. The architecture is fairly simple and consists of a load balancer, two or more InfluxDB Relay processes and two or more InfluxDB processes. The load balancer should point UDP traffic and HTTP POST requests with the path /write to the two relays while pointing GET requests with the path /query to the two InfluxDB servers.

100-pandas-puzzles - 100 data puzzles for pandas, ranging from short and simple to super tricky (60% complete)

  •    Jupyter

Inspired by 100 Numpy exerises, here are 100* short puzzles for testing your knowledge of pandas' power. Since pandas is a large library with many different specialist features and functions, these excercises focus mainly on the fundamentals of manipulating data (indexing, grouping, aggregating, cleaning), making use of the core DataFrame and Series objects. Many of the excerises here are straightforward in that the solutions require no more than a few lines of code (in pandas or NumPy - don't go using pure Python!). Choosing the right methods and following best practices is the underlying goal.

modin - Modin: Speed up your Pandas workflows by changing a single line of code

  •    Python

Modin uses Ray to provide an effortless way to speed up your pandas notebooks, scripts, and libraries. Unlike other distributed DataFrame libraries, Modin provides seamless integration and compatibility with existing pandas code. Even using the DataFrame constructor is identical. To use Modin, you do not need to know how many cores your system has and you do not need to specify how to distribute the data. In fact, you can continue using your previous pandas notebooks while experiencing a considerable speedup from Modin, even on a single machine. Once you’ve changed your import statement, you’re ready to use Modin just like you would pandas.

evidently - Interactive reports to analyze machine learning models during validation or production monitoring

  •    Jupyter

Interactive reports and JSON profiles to analyze, monitor and debug machine learning models. Evidently helps evaluate machine learning models during validation and monitor them in production. The tool generates interactive visual reports and JSON profiles from pandas DataFrame or csv files. You can use visual reports for ad hoc analysis, debugging and team sharing, and JSON profiles to integrate Evidently in prediction pipelines or with other visualization tools.

facette - Time series data visualization software

  •    Go

Facette is a open source web application to display time series data from various sources — such as collectd, Graphite, InfluxDB or KairosDB — on graphs. To learn more on its architecture, read this page. The source code is available at Github and is licensed under the terms of the BSD license.

eland - Python Client and Toolkit for DataFrames, Big Data, Machine Learning and ETL in Elasticsearch

  •    Python

Eland is a Python Elasticsearch client for exploring and analyzing data in Elasticsearch with a familiar Pandas-compatible API. Where possible the package uses existing Python APIs and data structures to make it easy to switch between numpy, pandas, scikit-learn to their Elasticsearch powered equivalents. In general, the data resides in Elasticsearch and not in memory, which allows Eland to access large datasets stored in Elasticsearch.

awesome-influxdb - A curated list of awesome projects, libraries, tools, etc. related to InfluxDB

  •    

A curated list of awesome projects, libraries, tools, etc. related to InfluxDB. This list focuses on libraries, tools, etc. supporting InfluxDB version 1.0 and up. Tools whose primary or sole purpose is to feed data into InfluxDB.

sparkmagic - Jupyter magics and kernels for working with remote Spark clusters

  •    Python

Sparkmagic is a set of tools for interactively working with remote Spark clusters through Livy, a Spark REST server, in Jupyter notebooks. The Sparkmagic project includes a set of magics for interactively running Spark code in multiple languages, as well as some kernels that you can use to turn Jupyter into an integrated Spark environment. There are two ways to use sparkmagic. Head over to the examples section for a demonstration on how to use both models of execution.

metrics-influxdb - A reporter for metrics which announces measurements to an InfluxDB server.

  •    Java

To the extent possible under law, Novaquark has waived all copyright and related or neighboring rights to this work. The library provide a lighter client than influxdb-java to push only metrics.

influxdb-java - Java client for InfluxDB

  •    Java

Java API to access the InfluxDB REST API

pygdf - GPU Data Frame

  •    Jupyter

PyGDF implements the Python interface to access and manipulate the GPU Dataframe of GPU Open Analytics Initialive (GOAI). We aim to provide a simple interface that similar to the Pandas dataframe and hide the details of GPU programming.

windrose - A Python Matplotlib, Numpy library to manage wind data, draw windrose (also known as a polar rose plot), draw probability density function and fit Weibull distribution

  •    Jupyter

A wind rose is a graphic tool used by meteorologists to give a succinct view of how wind speed and direction are typically distributed at a particular location. It can also be used to describe air quality pollution sources. The wind rose tool uses Matplotlib as a backend. Data can be passed to the package using Numpy arrays or a Pandas DataFrame. Windrose is a Python library to manage wind data, draw windroses (also known as polar rose plots), and fit Weibull probability density functions.

lux - Python API for Intelligent Visual Data Discovery

  •    Python

Lux is a Python library that facilitate fast and easy data exploration by automating the visualization and data analysis process. By simply printing out a dataframe in a Jupyter notebook, Lux recommends a set of visualizations highlighting interesting trends and patterns in the dataset. Visualizations are displayed via an interactive widget that enables users to quickly browse through large collections of visualizations and make sense of their data. Here is a 1-min video introducing Lux, and slides from a more extended talk.






We have large collection of open source products. Follow the tags from Tag Cloud >>


Open source products are scattered around the web. Please provide information about the open source projects you own / you use. Add Projects.