Book Image

Data Processing with Optimus

By : Dr. Argenis Leon, Luis Aguirre
Book Image

Data Processing with Optimus

By: Dr. Argenis Leon, Luis Aguirre

Overview of this book

Optimus is a Python library that works as a unified API for data cleaning, processing, and merging data. It can be used for handling small and big data on your local laptop or on remote clusters using CPUs or GPUs. The book begins by covering the internals of Optimus and how it works in tandem with the existing technologies to serve your data processing needs. You'll then learn how to use Optimus for loading and saving data from text data formats such as CSV and JSON files, exploring binary files such as Excel, and for columnar data processing with Parquet, Avro, and OCR. Next, you'll get to grips with the profiler and its data types - a unique feature of Optimus Dataframe that assists with data quality. You'll see how to use the plots available in Optimus such as histogram, frequency charts, and scatter and box plots, and understand how Optimus lets you connect to libraries such as Plotly and Altair. You'll also delve into advanced applications such as feature engineering, machine learning, cross-validation, and natural language processing functions and explore the advancements in Optimus. Finally, you'll learn how to create data cleaning and transformation functions and add a hypothetical new data processing engine with Optimus. By the end of this book, you'll be able to improve your data science workflow with Optimus easily.
Table of Contents (16 chapters)
1
Section 1: Getting Started with Optimus
4
Section 2: Optimus – Transform and Rollout
10
Section 3: Advanced Features of Optimus

Exploratory data analysis

Exploratory Data Analysis (EDA) is a crucial step when you start exploring your data. It can give you an overall overview of its main characteristics, such as minimum and maximum values, as well as mean and median values. Also, it can help you to detect patterns, data inconsistencies, and outliers.

One of the first steps when exploring your data is to apply EDA techniques so you can get a better understanding of the data you want to process. The main goals of applying this technique are as follows:

  • To maximize insight into a dataset
  • To uncover the underlying structure
  • To extract important variables
  • To detect outliers and anomalies

There are four ways in which we can categorize EDA:

  • Single variable, non-graphical: Here, the data analysis is applied to just one variable. The main purpose of univariate analysis is to describe the data and find patterns that exist within it.
  • Single variable, graphical: Graphical methods...