Open In App

100 Days of Data Analytics: A Complete Guide For Beginners

Improve
Improve
Like Article
Like
Save
Share
Report

How to become Data Analyst?

What is the salary of a Data Anlayst?

What are the skills required to become Data Analyst?

How many days will it take to become a Data Analyst?

In order to answer all the above questions and give you a correct pathway, we are here with 100 Days of Data Analytics that will guide you day-by-day on how to become a Data Analyst in 100 days.

Today, almost all companies need people who can understand the data and its flow and work with it. That’s where data analysts come in. Since they can interpret the vast amount of data that companies collect, they are in great demand. If you’re a beginner and thinking about a career in the field of data analysis, you are at the right place as our 100-day data analytics guide would be very beneficial for you. Throughout the following 100 days, we’ll guide you through every step of the necessary knowledge.

100-Days-of-Data-Science-copy

In this guide we have first explained the basics of data analytics then eventually we have moved forward in learning various topics that are necessary. You will have a detailed understanding of data analytics by the end and be prepared to begin working in this fascinating sector. Come along with us as we will go further into the topic of data analytics!

What is Data Analytics?

Data Analytics is the process of examining and interpreting data sets to derive meaningful insights, draw conclusions, and support decision-making. In today’s data-driven world, it plays a pivotal role in shaping strategies, optimizing operations, and gaining a competitive edge. The increasing volume of data generated daily necessitates advanced analytical techniques. Data Analytics empowers organizations to make informed decisions, identify patterns, and adapt to changing market dynamics.

Why Data Analytics?

Let’s talk about the importance of data analytics before we go into our 100 Days of Data Analytics Guide. ​Data analytics generally means to obtain or gain information from unprocessed information or data by deep analysis using various tools and technologies and using that information for future aspects. This process basically helps different organizations to gain a competitive edge as the process of data analytics enhances the overall decision-making. 

Our 100-day plan is designed to provide you with a structured learning path covering essential data analytics topics. Each day is dedicated to a specific topic or skill set, gradually building your expertise throughout the program. Here’s a breakdown of what you can expect:

Getting Started with Data Analytics (Days 1-20)

(Day 1-2): Introduction to Data Analytics

  • Start by learning the fundamentals of data analytics. Learn about its significance and uses also. Research the trends which are unnoticed, their correlations, and other perspectives that can help in overall decision-making.
  • Learn how data analytics can be used in various different fields or domains such as healthcare systems, finance or e-commerce organizations, marketing, and many more. If we take an example learn about how finance organizations use data analytics methods in order to detect fraudulent transactions.
  • Take your time to analyze and think about why you need to learn data analytics, whether your interest lies in this field or not, and why you wish to pursue a career in the field of data analytics.

(Day 3-6) : Basics of Statistics

(Day 7-15) : Introduction To Python Programming with Data Wrangling

Learn core Python:

Data Wrangling

Data wrangling basically means cleaning, transforming, and preparing raw data for analysis.

  • Learn Pandas, which is one of the libraries of Python that basically provides data analytics tools.
  • Study how to read data from multiple different sources like CSV files, Excel spreadsheets, and databases into the Pandas DataFrames.
  • Explore various different techniques for cleaning data, including handling missing values, removing duplicates, etc.
  • Understand how to manipulate DataFrames using functions in Pandas for filtering, sorting, and aggregating data.

(Day 16-20) : Data Visualization

  • Study about different Data Visualization libraries:
  • Understand how to create different types of plots like scatter plots, bar plots, and histograms in order to visualize data distributions.
  • Understand the type of plots and when to use them.

Data Analytics Intermediate : (Day 21-40)

 (Day 21-27) : Introduction to Excel for Data Analysis

  • Overview of Excel interface
  • Basics of navigating and working with sheets
  • Introduction to cells, rows, columns, and ranges
  • Understanding basic functions (SUM, AVERAGE, COUNT)
  • Working with mathematical and statistical functions
  • Introduction to text functions for data manipulation

Advanced Formulas and Functions

  • Working with logical functions (IF, AND, OR)
  • Exploring lookup functions (VLOOKUP, HLOOKUP, INDEX, MATCH)
  • Introduction to array formulas
  • Identifying and handling missing data
  • Removing duplicates and dealing with errors
  • Text-to-columns and data-splitting techniques
  • Formatting data for analysis
  • Creating basic charts and graphs
  • Tips for effective data presentation
  • Introduction to PivotTables for dynamic data analysis
  • Creating PivotCharts for visual insights
  • Customizing and formatting PivotTables and PivotCharts
  • Time-saving shortcuts and productivity hacks
  • Excel with AI

(Day 28-31) : Exploratory Data Analysis (EDA)

  • What is EDA?
  • Techniques of EDA
    • Data Visualization
    • Data Summarization
    • Hypothesis Testing
  • Brief types of analysis
    • Univariate Analysis
    • Bivariate Analysis
    • Correlation Analysis
    • Outlier Detection
    • Missing Value Imputation
  • Learn how to identify patterns, trends, and outlines in the data using EDA.

(Day 32-35) : Statistical Analysis With Python

(Day 36-40) : Fundamentals of Machine Learning

Also, Learn about the process of training machine learning models using labeled data.

Understand the concepts like:

Learn Importance of model evaluation using metrics like:

  • Classification
    • Accuracy
    • Precision
    • Recall
    • F1-score
    • Confusion Matrix
    • Auc-roc curve
  • Regression
    • Mean Absolute Error (MAE)
    • Mean Squared Error (MSE)
    • R-squared
    • Adjusted R-squared

Data Analytics Advanced : (Day 41-70)

(Day 41-45) : Time Series Analysis

(Day 46-50) : Big Data Analytics

What is Big Data?

Big data is defined as a large and complex collection of data that is very difficult to handle with traditional techniques of data processing. It basically consists of structured, unstructured, and semi-structured datasets. To control, evaluate, and transform it into insights usually more infrastructure is needed.

(Day 51-60) : SQL For Data Analytics

(Day 61-65) : Data Analytics Tools and Platform

  • Explore the various kinds of Tools and Platform that are used in Data Analytics:
  • Learn how to examine and choose the best and most suitable tool or platform based on the specific requirements of a data analytics project.
  • Understand the importance of integrating data analytics tools into existing workflows and how to ensure seamless collaboration and data sharing within the team.

(Day 66-70) : Data Mining and Text Analytics

Text analytics involves analyzing unstructured textual data and trends to derive insights.

Days 71-100: Real-World Applications with Projects

(Day 71-75) : Case Studies

  • Analyze the real-world case studies in various different domains such as finance, healthcare, e-commerce, marketing, ed-tech, etc. in order to understand how data analytics is generally applied in real-world scenarios.
  • Learn from successful analytics projects and best practices.

(Day 76-90) : Milestone Project

  • Work on a data analytics project that integrates your learning from the past days.
  • Choose a dataset of interest and apply various analytics techniques that you have learned in order to derive meaningful insights and results.

Check out “Best Data Analytics Projects with Source Codes [2024]” to discover inspiration for your milestone project.

Day (91-95): Specialization

  • Choose a specific area of data analytics such as healthcare analytics, or financial analytics to specialize in.
  • Study different advanced topics and tools relevant to your chosen specialization.

Day (96-100): Portfolio Building

  • Create a portfolio that basically showcases, your skills, your proficiency your expertise, and your projects created in the field of data analytics.
  • Share your portfolio on different platforms which include GitHub and LinkedIn in order to demonstrate your proficiency to potential employers or clients.

Conclusion

In this journey, we have successfully covered a 100-day plan for learning data analytics. We started with the basics of topics like statistics and programming languages like Python then slowly we moved to various different advanced topics like machine learning and big data analytics and covered every aspect in detail. By following this plan, you’ll gain the skills that are basically needed to analyze the data, make informed decisions on it, and finally work on real-world projects. Remember that, learning data analytics is generally a continuous journey that requires continuous practice in a disciplined manner, and staying updated with the latest trends and technologies around is also very crucial.



Similar Reads

100 Days of GATE Data Science & AI – A Complete Guide For Beginners
This article is an ultimate guide, crafted by the GATE experts at GFG, to help you start your journey of learning for GATE (Graduate Aptitude Test in Engineering) Data Science and AI in 100 Days in a systematic manner. There are many overlaps when it comes to data science and artificial intelligence (AI). AI has many smaller subsets, like machine l
6 min read
100 Days of Machine Learning - A Complete Guide For Beginners
Machine learning is a rapidly growing field within the broader domain of Artificial Intelligence. It involves developing algorithms that can automatically learn patterns and insights from data without being explicitly programmed. Machine learning has become increasingly popular in recent years as businesses have discovered its potential to drive in
11 min read
100 Days of Android Development: A Complete Guide For Beginners
In the dynamic world of Mobile application development mastering in developing applications is not just a skill but rather a journey. Welcome to the 100 days of Android Development journey where we will dive into different Android development important components day by day. The definition of Android Development of Android to the advanced Android c
7 min read
100 Days of Web Development - A Complete Guide For Beginners
How to become Web Developer? What is the salary of a Web Developer? What are the skills required to become a web developer? How many days will it take to become a web developer? To answer all these questions and give you a correct pathway, we have come up with 100 Days of Web Development that will guide you day-by-day on how to become a full-stack
8 min read
100 Days Of DevOps – A Complete Guide For Beginners
In the fast-paced digital world, enterprises survive on agility and innovation. Here is where DevOps comes in; it is a new approach that bridges development and operations. It makes software delivery seamless and enables rapid application deployment. Nevertheless, how do you navigate as an aspiring DevOps practitioner through this exciting, yet int
9 min read
100 Days of Code - A Complete Guide For Beginners and Experienced
Do you want to become a successful software developer and dreaming about getting into the big tech companies? Are you someone who is already working as a developer but looking for a big move in your career? Well, if you're one of them then surely you might have tried to do some preparation and you might have tried to cover various topics. You make
15+ min read
100 Days of UI/UX: A Complete Guide For Beginners
We set out on an adventure through the fascinating worlds of UI/UX design in this post, dissecting a full 100-day roadmap to help both novice and seasoned designers alike. This roadmap promises to be your dependable guide whether you're a beginner eager to learn the basics or an experienced expert seeking to master advanced techniques. The idea of
9 min read
5 Best UI Designer Jobs: A Complete Guide For Beginners
UI Design is indeed one of the most trending job careers in 2023. Taking up any service or product-based companies falling under any domain whether BFSI, E-commerce, Gaming, etc. are demanding good and skilled UI designers. As a User interface designer, the prime focus of a role and individual should be on interface design, animation, prototyping,
10 min read
What is Agile UX - A Complete Guide For Beginners
There has been a lot of buzz about Agile and Lean UX. Knowing about each one is equally important as starting with either one of these approaches. Both the terms “Lean” and “Agile” are described to show the approach a company follows toward solving a problem. Depending upon individual, team, or organization level preference both of these approaches
11 min read
Python For DevOps:  A Complete Guide For Beginners
Today, Python is one of the fastest-growing programming language and Python justify this as well with its wide use in all aspect of the programming domain whether it is software development, data handling, data analysis, or AI. Python is also used by all kinds of departments whether it is operations or IT. This advantage of Python is also helpful i
10 min read
Article Tags :