DataSist: A Python-based library for easy data analysis, visualization and modeling
Rising Odegua, Festus Ikpotokin

TL;DR
DataSist is a user-friendly Python library designed to simplify and accelerate data analysis, visualization, and modeling, enabling data scientists to work more efficiently with large datasets.
Contribution
The paper introduces DataSist, a new Python library that abstracts complex syntax to enhance productivity in data analysis and visualization tasks.
Findings
DataSist simplifies data analysis workflows.
It improves efficiency for data scientists.
The library is easy to use and integrates well with existing tools.
Abstract
A large amount of data is produced every second from modern information systems such as mobile devices, the world wide web, Internet of Things, social media, etc. Analysis and mining of this massive data requires a lot of advanced tools and techniques. Therefore, big data analytics and mining is currently an active and trending area of research because of the enormous benefits businesses and organizations derive from it. Numerous tools like Pandas, Numpy, STATA, SPSS, have been created to help analyze and mine these huge outburst of data and some have become so popular and widely used in the field. This paper presents a new python-based library, DataSist, which offers high level, intuitive and easy to use functions, and methods that helps data scientists/analyst to quickly analyze, mine and visualize big data sets. The objectives of this project were to (i) design a python library to…
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Taxonomy
TopicsBig Data Technologies and Applications · Big Data and Business Intelligence · Data Analysis with R
