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.

100 Days of Data Analytics: A Complete Guide For Beginners

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.

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!

Similar Reads

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....

Getting Started with Data Analytics (Days 1-20)

(Day 1-2): Introduction to Data Analytics...

Data Analytics Intermediate : (Day 21-40)

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

Data Analytics Advanced : (Day 41-70)

(Day 41-45) : Time Series Analysis...

Days 71-100: Real-World Applications with Projects

(Day 71-75) : Case Studies...

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....