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Muhammad abdulhhadi kehinde
Muhammad abdulhhadi kehinde

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Becoming a Data Analyst: Unveiling the Path to Success

INTRODUCTION:

Embarking on a journey to become a data analyst can be an exciting and rewarding endeavor. In this article, we'll guide beginners through essential steps, from understanding the data ecosystem to honing programming skills. Whether you're tech-savvy or new to the world of data, this guide will equip you with the knowledge and tools needed to start your data analyst journey.

Course/Step 1: Understanding the Data Ecosystem

Before diving into the world of data analysis, it's crucial to comprehend the role and responsibilities of a data analyst. Data analysts are professionals who gather, process, and analyze data to discover patterns, trends, and insights that can aid in making informed business decisions. They work with various tools and technologies to transform raw data into actionable information, which empowers organizations to optimize processes, identify market opportunities, and address challenges effectively.
By the end of this course, you should have gained an understanding of:

  • Definition of data related terms
  • Data sources and data format
  • Tools used in data ecosystem
  • The most important skillset to have
  • Various domains and how they used data
  • Differentiating between structured and unstructured data
  • Grasping the concept of databases and data storage
  • Understanding data collection methods and techniques
  • Recognizing the importance of data quality and cleaning

Recommended Study Materials:

  1. What is data analytics?
  2. Coursera - Introduction to data analytics
  3. Khan Academy - Intro to SQL
  4. Coursera - Data Science and Machine Learning Bootcamp with R
  5. edX - Introduction to Data Science

Key Takeaways:
By the end of this course, you will have a Broad understanding of where you are going to and a solid foundation in data concepts, enabling you to navigate the data landscape with confidence.

Course/Step 2: Spreadsheet Mastery

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Spreadsheet skills are a cornerstone of data analysis. Examples of commonly used spreadsheets include Microsoft Excel, Google Sheets, and LibreOffice Calc. Spreadsheets allow data analysts to organize, manipulate, and visualize data efficiently.

Throughout this course, you will learn to:

  • Utilize functions and formulas for data manipulation
  • Create charts and graphs for data visualization
  • Perform basic data analysis tasks using sorting, filtering, and pivot tables

Recommended Materials for Learning Spreadsheets:

  1. Microsoft Excel Training
  2. Google Sheets Help Center
  3. LibreOffice Calc Documentation
  4. ExcelVbaIsFun
  5. ExcelIsFun
  6. MyExcelOnline
  7. ExcelVbaIsFun

Can I Get a Job with Only Excel?
While Excel proficiency is valuable, it's recommended to diversify your skill set to increase job prospects. Excel is a powerful tool but is often used in conjunction with other technologies.

Key Takeaways:
Upon completing this course, you'll have a strong command of spreadsheet tools, empowering you to efficiently manage and analyze data.

Course/Step 3: SQL and Databases

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SQL (Structured Query Language) is a vital skill for data analysts. It allows you to retrieve, manipulate, and analyze data stored in databases.

What to Learn:

  1. Basics: Understand SQL syntax, SELECT statements, and data filtering.
  2. Intermediate: Grasp JOIN operations, subqueries, and database normalization.
  3. Advanced: Learn about window functions, stored procedures, and performance optimization.

How to Progress:
Once you have mastered the basics, you can join online forums or registered on database q & a site where you can begin attempt real business question and see different business scenarios and also engage in real-world projects to apply your SQL skills.

Recommended Materials:

  1. Codecademy - Learn SQL
  2. SQLZoo
  3. Mode Analytics SQL Tutorial
  4. W3Schools SQL Tutorial
  5. Academind
  6. TutorialsPoint SQL Tutorial

Key Takeaways:
Mastering SQL equips you with the ability to extract valuable insights from databases and play a critical role in data-driven decision-making.

Course/Step 4: Statistics

Statistics underpin data analysis, helping you draw meaningful conclusions from data. While deep statistical expertise is beneficial, beginners should focus on foundational concepts such as probability, distributions, and hypothesis testing.

Recommended Materials:

  1. Khan Academy - Probability and Statistics
  2. Coursera - Statistics with R
  3. edX - Introduction to Probability and Statistics

Course/Step 5: Business Intelligence and Visualizations

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Business intelligence involves converting raw data into actionable insights. Tools like Power BI enable you to create interactive visualizations and dashboards that communicate findings effectively.

What to Learn:

  • Understand data visualization principles i.e. data cleaning, measures and calculated column, data preparation merging data set and building models.
  • Learn Power BI functionalities, M language, and DAX formulas
  • Develop skills to design compelling dashboards and reports

Recommended Materials:

  1. Microsoft Power BI Guided Learning
  2. Tableau Public Tutorial
  3. Google Data Studio Help Center
  4. Guy in a Cube
  5. Curbal
  6. Avi Singh - PowerBIPro
  7. The Data Visualization Society

Key Takeaways:
By mastering business intelligence tools, you'll enhance your ability to present data-driven insights in a visually engaging manner.

Course/Step 6: Computational Thinking and Programming

Computational thinking involves problem-solving and logical reasoning. Programming languages like Python and R are invaluable tools for data analysts.

Note: This course will bridge the gap between non-technical data analyst, and others who want to go into programming. it will lay a solid foundation for you and open you to begin to think problem solving computationally.

Main Courses:

  1. Python: General-purpose language with extensive data analysis libraries (NumPy, pandas).
  2. R: Designed for statistical analysis and data visualization.

What to Learn:

  • Basics of programming, including variables, loops, and functions
  • Data manipulation using libraries like pandas (Python) or dplyr (R)

Recommended Materials:

  1. CS50 - Introduction to Computer Science
  2. Codecademy - Learn Python
  3. R for Data Science
  4. DataCamp
  5. Real Python
  6. Data School
  7. StatQuest with Josh Starmer

Personal Portfolio Projects:

Practical experience is invaluable for a data analyst. As you learn, work on personal projects or contribute to open-source initiatives. This will not only help you apply your skills but also create a portfolio that showcases your capabilities to potential employers.

Recommendation:

  • 2 Project on Excel/SpreadSheet.
  • 2 Project on SQL.
  • 2 Project on Power-BI/Tableau.
  • 2 Project on python.

Course/Step 7: Applying Data Analysis Skills

Imagine a superstore owner seeking insights. A data analyst would utilize Excel for basic analysis, SQL to extract data from the store's database, and Power BI to create interactive visualizations, ultimately providing a comprehensive analysis and actionable recommendations.

Major Job Titles:

  1. Data Analyst
  2. Business Analyst
  3. Data Scientist
  4. Market Research Analyst
  5. Financial Analyst
  6. Healthcare Analyst
  7. Operations Analyst
  8. Marketing Analyst

Major Certifications:

  1. Microsoft Certified: Data Analyst Associate
  2. Google Data Analytics Professional Certificate
  3. IBM Data Analyst Professional Certificate

Non-Technical Skills to Have:

  1. Critical thinking
  2. Communication
  3. Problem-solving
  4. Attention to detail
  5. Domain knowledge
  6. Collaboration
  7. Time management
  8. Business acumen

Course/Step 8: The Final Part of Your Data Analyst Journey

Summary:
Your journey to becoming a data analyst involves mastering data concepts, spreadsheet tools, SQL, statistics, visualization, and programming. With these skills, you can tackle real-world scenarios and contribute meaningfully to data-driven decision-making.

What You Should Be Able to Do:

  1. The ability to solve data related problem.
  2. Extract, transform and load data.
  3. Clean and preprocess data
  4. Analyze data trends and patterns

Note:

  • When to seek for help:

When given a work or data set to work and you are stuck between the line or you don't know what to do/ how to start? it's always great to seek for help and ask questions.

Apart from building portfolio projects, you start building your career as a data analyst by connecting or networking with other like-minded online(forums or social media).

The journey to becoming a Data analyst is an interesting career path with plenty of rewards but there are challenges along the way. You must become a friend to constant study!

END!

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