Learn Data Analytics Complete Bootcamp By Takenmind

Financial Data Analysis and Visualization with Python: The HighQuality Study kit

Last updated 2022-01-10 | 4.3

- Perform Data Analytics seamlessly and smartly

What you'll learn

Perform Data Analytics seamlessly and smartly

* Requirements

* Experience in using a Computer - Windows/Linux/Mac
* Basic Mathematical Knowledge

Description

Welcome to Data Analysis Analytics Bootcamp content powered by TakenMind.


Are you interested to learn how zetabytes of data are processed by top tech companies to analyse data inorder to boost their business growth? Well, for a beginner you are at the right place and this is the most probably the right time for you to learn this. 

The average data scientist today earns $123,000 a year, according to Indeed research. But the operating term here is “today,” since data science has paid increasing dividends since it really burst into business consciousness in recent years.

This course has its base on financial Analysis and the following concepts are covered:

  • Python Fundamentals

  • Pandas for Efficient Data Analysis

  • NumPy for High Speed Numerical Processing

  • Matplotlib for Data Visualization

  • Pandas for Data Manipulation and Analysis

  • Seaborn Data Visualization

  • Worked-up examples.


Learn how to analyze data using Python. This course will take you from the basics of Python to exploring many different types of data. You will learn how to prepare data for analysis, perform simple statistical analyses, create meaningful data visualizations, predict future trends from data, and more!

You will learn how to:

  • Import data sets

  • Clean and prepare data for analysis

  • Manipulate pandas DataFrame

  • Summarize data

  • Build machine learning models using scikit-learn

  • Build data pipelines

Data Analysis with Python is delivered through lecture, hands-on labs, and assignments. It includes following parts:

  • Data Analysis libraries: will learn to use Pandas DataFrames, Numpy multi-dimentional arrays, and SciPy libraries to work with a various datasets. We will introduce you to pandas, an open-source library, and we will use it to load, manipulate, analyze, and visualize cool datasets. Then we will introduce you to another open-source library, scikit-learn, and we will use some of its machine learning algorithms to build smart models and make cool predictions.



Who this course is for:

  • Beginner Python Data Analyst should take up this course.
  • Intermediate Python Data Analyst should take up this course.

Course content

6 sections • 45 lectures

Introduction to the Study Kit Preview 01:49

#1 Downloading Setup and Installation Preview 03:15

#2 Installing Work Environment - Jupyter Notebook Preview 03:46

#3 Exploring Jupyter Notebook functionalities Preview 10:21

#4 Python Package Index - Using Command line interface and Jupyter Notebook Preview 15:33

#1 Getting Started - Numpy Arrays (Numerical Python) Preview 16:47

#2 Scalar Operations on Numpy Arrays Preview 07:02

#3 Array Indexes - Part 1 Preview 13:09

#4 Array Indexes in Multi-Dimensional Numpy Arrays Preview 11:49

#5 - Premium Array Operations Preview 10:29

#6 Saving And Loading Arrays To External Memory Preview 14:48

#7 Statistical Processing And Sketching Graphs Preview 11:14

#8 Conditional Clauses And Boolean Operation Preview 17:52

#1 Getting Started with Series Preview 18:47

#2 Introduction to DataFrames in Pandas Preview 16:25

#3 Learning to access elements with indexes Preview 07:17

#4 - Re-indexing in pandas Series and Dataframes Preview 10:29

#5 - Dropping values from Series and DataFrames Preview 07:11

#6 - Handling Null or NAN values in pandas Preview 16:12

#7 Selecting and Modifying entries in Pandas Preview 11:42

#8 Coordinate and Regulate data in Series and Dataframes Preview 08:59

#9 - Ranking and Sorting in Series Preview 06:16

#10 Statistical Data Analysis and Graphs in Pandas Preview 14:29

#1 File Operations - Dataframes And Csv Preview 16:26

#2 Import Data From Excel File Preview 05:03

#1 Pandas - Merging along columns in DataFrames Preview 13:52

#2 Concatenation of Arrays, Series and Dataframes Preview 11:43

#3 Combining values of a DataFrame or Series Preview 08:11

#4 Reshaping Datasets - Series and Dataframe Preview 11:22

#5 Pivot Tables Preview 09:37

#6 Duplicates Analysis in dataset Preview 05:57

#7 Mapping in DataFrame Preview 05:41

#8 Replace values in Series Preview 03:45

#9 Renaming Indexes in DataFrame Preview 07:23

#10 Observation, Filtering and Basic Analysis Preview 08:39

Data Visualization and Introduction to Seaborn Visualization Library Preview 06:22

Histogram Visualization in seaborn Preview 12:51

Seaborn Kernel Density Estimation (KDE) Plot on Univariates Preview 27:27

Seaborn KDE Plot for multivariates Preview 10:17

Plotting multiple charts with seaborn Preview 11:54

Box Plot Visualization Preview 05:27

Regression Plots with seaborn Preview 26:18

Violin plot Visualization Preview 05:04

Heat Maps Visualization Preview 11:37

Cluster Map Visualization Preview 05:36