🔹 Data Analytics Advanced: Course Overview
1. Objective
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Equip learners with advanced tools to analyze large, messy datasets.
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Enable predictive analytics, automation, and interactive visualization.
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Prepare learners for real-world data projects in business, finance, and economics.
2. Key Modules & Topics
Module 1: Advanced Excel Analytics
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Advanced formulas:
INDEX-MATCH,ARRAY formulas,IFERROR,TEXT. -
Advanced PivotTables & PivotCharts: calculated fields, slicers, timelines.
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Building dynamic dashboards for interactive reporting.
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Handling large messy datasets efficiently.
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Power Query basics: merge, append, reshape datasets.
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Best practices for data storytelling.
Module 2: Advanced SQL Analytics
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Subqueries and correlated subqueries for deeper insights.
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JOINs: INNER, LEFT, RIGHT, FULL OUTER, and CROSS JOIN.
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Aggregations with
GROUP BY,HAVING, and advanced window functions (ROW_NUMBER(),RANK(),LEAD(),LAG()). -
Creating views and temporary tables for complex analysis.
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Optimizing queries for large datasets.
Module 3: Python for Advanced Analytics
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Working with large datasets using Pandas and NumPy.
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Data cleaning at scale: missing values, duplicates, type conversion, outlier handling.
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Feature engineering: creating new variables for analysis or modeling.
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Advanced visualization: Matplotlib + Seaborn + Plotly for interactive dashboards.
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Introduction to time series analysis (trend, seasonality, rolling averages).
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Basics of predictive modeling using
scikit-learn(linear regression, classification).
Module 4: Business, Economics & Finance Applications
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Business: sales forecasting, customer segmentation, churn analysis.
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Economics: inflation trends, unemployment trends, macroeconomic indicators analysis.
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Finance: portfolio performance, risk assessment, correlation, Sharpe ratios, risk-return analysis.
Module 5: Data Storytelling & Dashboards
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Principles of effective visualization: clarity, simplicity, accuracy.
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Choosing the right chart for the question: bar, line, scatter, pie, histogram.
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Combining Excel, Python, and Power BI/Google Data Studio for interactive dashboards.
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Best practices for communicating insights to decision-makers.
3. Hands-On Projects
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Real datasets from business, economics, and finance.
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Step-by-step guided exercises:
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Clean, transform, and summarize datasets.
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Create interactive dashboards.
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Perform predictive analytics on time series or portfolio data.
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Capstone project: an end-to-end analysis, integrating all tools and techniques.
4. Learning Outcomes
By the end of this module, learners will be able to:
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Handle large and messy datasets efficiently.
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Perform complex queries and aggregations using SQL.
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Clean, transform, and analyze data with Python at scale.
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Build interactive dashboards and visualizations for business insights.
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Apply predictive analytics techniques to forecast trends.
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Communicate insights effectively to support decision-making.
