• Post category:StudyBullet-7
  • Reading time:4 mins read

Data Analyst Beginner Project: Hands-on Data Exploration , Data Analysis , Data Visualization

What you will learn

Connect to data source

Explore Tabular Data

Explore Pandas Data Frame

Manipulate Pandas Data Frame

Perform data cleaning

Create visualization


Data exploration is the initial step in data analysis, where users explore a large data set in an unstructured way to uncover initial patterns, characteristics, and points of interest. This process isn’t meant to reveal every bit of information a dataset holds, but rather to help create a broad picture of important trends and major points to study in greater detail. Data exploration can use a combination of manual methods and automated tools such as data visualizations, charts, and initial reports.

Exploratory Data Analysis (EDA) is the first step in your data analysis process. Here, you make sense of the data you have and then figure out what questions you want to ask and how to frame them, as well as how best to manipulate your available data sources to get the answers you need.Β  You do this by taking a broad look at patterns, trends, outliers, unexpected results and so on in your existing data, using visual and quantitative methods to get a sense of the story this tells. You’re looking for clues that suggest your logical next steps, questions or areas of research.

Get Instant Notification of New Courses on our Telegram channel.

Data analysis is a process of inspecting, cleansing, transforming, and modelling data with the goal of discovering useful information, informing conclusions, and supporting decision-making.

Data visualization is the presentation of data in a pictorial or graphical format. It enables decision makers to see analytics presented visually, so they can grasp difficult concepts or identify new patterns.



Environment Setup

Install Python on Windows
Install Python on Macs
Install Anaconda and Jupyter Notebook
What is Jupyter Notebook
Running Jupyter Notebook Server
Jupyter Notebook User Interface
Creating a new Notebook

Data Exploration

Data source
Exploring Tabular Data
Exploring Pandas DataFrame
Manipulating Pandas DataFrame

Data Cleaning

Download Data Source
What is Data Cleaning
Performing Data Cleaning

Data Visualization

Download Data Source
What is data Visualization
Qualitative Visualization
Quantitative Visualization