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Data Analytics Full Roadmap 2025 | The Skill Manthan |


🌐 What is Data Analytics?

Data Analytics is the process of collecting, cleaning, transforming, and analyzing raw data to discover useful insights, trends, and patterns that help in decision-making.

It is used across industries like marketing, finance, healthcare, e-commerce, sports, and technology to make data-driven decisions.


🎯 Main Goal of Data Analytics

  • To turn raw data into actionable insights
  • To help businesses make strategic decisions
  • To predict future trends using historical data
  • To optimize processes and increase efficiency

🔍 Types of Data Analytics

TypeDescriptionExample
1. Descriptive AnalyticsSummarizes what happenedMonthly sales report
2. Diagnostic AnalyticsExplains why it happenedWhy sales dropped in June
3. Predictive AnalyticsPredicts what might happenForecasting future sales
4. Prescriptive AnalyticsSuggests what should be doneBest marketing strategy for next quarter

⚙️ Data Analytics Process (Step-by-Step)

  1. Data Collection → Gather raw data from databases, APIs, surveys, sensors, etc.
  2. Data Cleaning → Remove duplicates, fix missing or incorrect data.
  3. Data Transformation → Convert data into usable formats (e.g., Excel → SQL → Power BI).
  4. Data Analysis → Apply statistical and analytical techniques to find patterns.
  5. Data Visualization → Create charts, dashboards, and reports.
  6. Interpretation & Decision-Making → Use insights to take business actions.
  7. https://theskillmanthan.com/

🧠 Data Analytics vs Data Science

FeatureData AnalyticsData Science
FocusUnderstanding past dataBuilding models to predict the future
ToolsExcel, SQL, Power BI, TableauPython, R, TensorFlow, Machine Learning
Skill LevelBeginner to IntermediateIntermediate to Advanced
OutputInsights, dashboards, reportsAI models, predictive systems

🧩 Essential Skills for Data Analysts

1. Technical Skills

  • Excel – Data organization, formulas, pivot tables
  • SQL – Data querying and manipulation
  • Statistics & Probability – Mean, median, correlation, regression
  • Data Visualization – Power BI, Tableau, Matplotlib, Seaborn
  • Programming – Python or R (for automation and analytics)
  • Data Cleaning – Handling missing or inconsistent data

2. Soft Skills

  • Problem-solving
  • Critical thinking
  • Business understanding
  • Communication (explaining data insights clearly)

🧭 Data Analytics Roadmap (Step-by-Step Guide)

🔹 Step 1: Learn the Basics of Data & Statistics

  • What is data (structured vs unstructured)
  • Mean, median, mode, standard deviation
  • Correlation, regression, and probability
  • Data sampling and hypothesis testing

🧰 Tools: Excel, Google Sheets


🔹 Step 2: Learn SQL (Structured Query Language)

  • Create, Read, Update, Delete (CRUD)
  • Joins, subqueries, group by, having
  • Aggregate functions and window functions

🧰 Tools: MySQL, PostgreSQL, SQLite


🔹 Step 3: Learn a Programming Language (Python or R)

  • Data types, loops, functions
  • Data manipulation (Pandas, NumPy)
  • Data visualization (Matplotlib, Seaborn)
  • Basic statistics in Python

🧰 Tools: Jupyter Notebook, VS Code, Google Colab


🔹 Step 4: Learn Data Visualization Tools

  • Build interactive dashboards
  • Visualize KPIs and trends
  • Connect data sources and create reports

🧰 Tools: Power BI, Tableau, Google Data Studio


🔹 Step 5: Learn Data Cleaning and Preparation

  • Handle missing values
  • Fix inconsistent formats
  • Remove duplicates and outliers

🧰 Tools: Excel, Python (Pandas), Power Query


🔹 Step 6: Learn Business Intelligence (BI) Concepts

  • Data warehousing basics
  • ETL process (Extract, Transform, Load)
  • Reporting and decision support

🧰 Tools: Power BI, Tableau, Looker


🔹 Step 7: Learn Advanced Topics (Optional but Valuable)

  • Predictive analytics with machine learning
  • Data storytelling and presentation
  • Big data basics (Hadoop, Spark)
  • Cloud data tools (AWS, Google Cloud, Azure)

🔹 Step 8: Build Real Projects & Portfolio

Example Projects:

  1. Sales dashboard in Power BI
  2. Customer segmentation using Python
  3. Web scraping & analysis (Python + BeautifulSoup)
  4. SQL data insights for an e-commerce dataset

Publish your projects on GitHub or Kaggle.


🔹 Step 9: Prepare for Job Interviews

  • Learn common data analytics interview questions
  • Practice SQL queries and data cleaning tasks
  • Build a strong LinkedIn profile
  • Get certifications:
    • Google Data Analytics Professional Certificate
    • Microsoft Power BI Data Analyst
    • Tableau Desktop Specialist

🧰 Popular Tools in Data Analytics

CategoryTools
Data StorageMySQL, PostgreSQL, MongoDB
Data CleaningExcel, Python (Pandas), R
Data VisualizationPower BI, Tableau, Google Data Studio
ProgrammingPython, R
Big Data (Advanced)Apache Spark, Hadoop
Cloud PlatformsAWS, Azure, GCP

💼 Career Paths After Data Analytics

RoleDescription
Data AnalystAnalyze datasets and create reports
Business AnalystUse data to support business decisions
Data EngineerBuild data pipelines and manage databases
Data ScientistCreate predictive models using machine learning
BI AnalystDesign dashboards and visual reports

💰 Average Salary (India, 2025)

  • Entry Level (0–1 yr): ₹4 LPA – ₹6 LPA
  • Mid Level (2–5 yrs): ₹7 LPA – ₹12 LPA
  • Senior Level (5+ yrs): ₹13 LPA – ₹20 LPA+

📚 Best Learning Resources

  • Courses:
    • Google Data Analytics Certificate (Coursera)
    • Microsoft Power BI Course (Udemy)
    • Python for Data Analysis (freeCodeCamp / YouTube)
  • Books:
    • Python for Data Analysis by Wes McKinney
    • Storytelling with Data by Cole Nussbaumer Knaflic

🧩 Sample Learning Timeline (6 Months Roadmap)

https://theskillmanthan.com
MonthLearning Focus
1Basics of data & Excel
2SQL fundamentals
3Python for data analysis
4Data visualization (Power BI / Tableau)
5Statistics + case studies
6Portfolio projects + interview prep


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