ArcticDB
DataFrame database
A high-performance, serverless DataFrame database built for Python Data Science applications
ArcticDB is a high performance, serverless DataFrame database built for the Python Data Science ecosystem.
2k stars
27 watching
98 forks
Language: C++
last commit: 2 months ago
Linked from 1 awesome list
big-datadatadata-analysisdata-sciencedatabasedataframepandasquantitative-analysisquantitative-financequantitative-trading
Related projects:
Repository | Description | Stars |
---|---|---|
| An in-memory NoSQL database system designed for fast and efficient storage of time-series data from IoT devices | 2,387 |
| A GraphQL system designed to work out of the box with full support for subscriptions and authentication | 39 |
| A Python-based platform for integrated gridded data analysis from decades of Earth observation satellite data | 518 |
| A library providing an API similar to Python's Pandas or R's data.frame(), for working with tabular data in Elixir | 62 |
| A Clojure-based library for working with dataframes and numerical computations using Python libraries. | 189 |
| An API that serves pandas DataFrames via Django REST Framework for data visualization and offline analysis. | 1,255 |
| Software for creating collaborative databases of language data | 1 |
| A database system for processing and storing climate station data in real-time | 9 |
| An agile pipeline framework for data engineering teams to track and orchestrate their data processes. | 260 |
| A high-performance database designed to efficiently store and manage large financial time-series data | 1,890 |
| A platform for collaborative open data management and analysis | 264 |
| A Python library providing a wrapper around pandas.DataFrame with support for stock market statistics and indicators calculation | 1,312 |
| A Python library that allows users to query pandas DataFrames using SQL syntax. | 1,345 |
| A decentralized database with MongoDB-like features and a TypeScript interface | 432 |
| A codebase to reproduce and extend the results of a Nature Communications paper on seasonal Arctic sea ice forecasting using deep learning. | 92 |