Data Analytics with Excel, Python, and Power BI is a comprehensive 4-month course designed to equip students with the essential skills for data analysis and visualization. The course covers:
- Excel Proficiency: Mastering data cleaning, advanced formulas, pivot tables, and macros.
- Python Expertise: Learning data manipulation with Pandas, visualizations using Matplotlib and Seaborn, and automating workflows.
- Power BI Skills: Building interactive dashboards, creating advanced visualizations, and leveraging DAX for analytics.
Career readiness is integrated with regular CV workshops to help students effectively showcase their skills. The program concludes with a hands-on project and guidance for industry preparation, ensuring students are job-ready.
Who Should Attend?
- Senior students preparing for a Data Analyst career.
- Graduates seeking to enter the field of Data Analytics and Data Visualization.
- Working professionals looking to enhance their analytical skills and advance their careers.
- Entrepreneurs interested in leveraging data analytics to make informed business decisions.
Why CDIP?
- Trainer: Experienced and Expert Industry Professionals.
- Hands-on Training: Hands-on training with Industry-Oriented projects.
- Certification: Certification from UIU upon completion.
- Grooming: CV Development & Interview Simulation.
- Career Support: Career counseling and job placement assistance.
- Flexible Schedule: Weekly one class (Friday).

Farahnaz Reza
Senior Contextual Interaction Developer, Grameenphone Ltd
Experience: 5+ years
Linkedin: https://www.linkedin.com/in/farahnaz-reza/
5+ years of expertise in the fields of Customer Lifecycle management, Contextual AI, Data Analytics, Digital Analytics.
Tentative Course Outline
Week 1: Analytics Mindset & Job-Role Orientation
Goal: Help students understand why analytics exists and how it is used in jobs.
Class 1: Skills & Concepts
- What data analytics means in real business
- Types of decisions data supports (growth, engagement, pricing)
- Understanding context vs raw numbers
- Overview of job roles:
- Campaign Manager
- Digital Analyst
- App Engagement Analyst
- Retail Analyst
- Pricing Analyst
Business Case Discussion
- Data usage drops during Ramadan
→ Why immediate aggressive offers may be the wrong decision
Tools
- No tools yet (thinking before tools)
Week 2: Excel Basics for Campaign & Digital Analysis
Goal: Learn Excel fundamentals through real campaign use cases.
Excel Skills Taught
- SUM, AVERAGE, COUNT
- Cell referencing (absolute vs relative – basic)
- Sorting & filtering data
- Simple column & bar charts
Use Case
- Campaign performance summary
- Channel penetration comparison (App vs USSD vs Digital)
Decision Logic
- One-month drop vs six-month trend
- When data should not trigger action
Week 3: Excel for Customer Behavior & Engagement
Goal: Understand user behavior using Excel logic.
Excel Skills Taught
- IF function
- COUNTIF, SUMIF
- Text functions: LEFT, RIGHT, LEN
- Removing duplicates
- Handling missing values
Use Case
- Identifying active vs inactive users
- Engagement drop vs seasonal behavior
Decision Logic
- Engagement decline ≠ churn
- Behavior needs trend analysis
Week 4: Excel for Retail & Pricing Decisions
Goal: Use Excel to simulate real retail and pricing logic.
Excel Skills Taught
- VLOOKUP / INDEX-MATCH (basic)
- IF with nested conditions
- Percentage change calculation
- Simple scenario tables
Use Case
- Retail commission calculation
- Product price comparison
- Revenue impact estimation
Decision Logic
- Higher commission ≠ higher sales
- Price increase vs volume trade-off
Week 5: SQL Basics – Asking Questions from Data
Goal: Teach SQL as a structured way to ask questions.
SQL Skills Taught
- SELECT
- WHERE
- ORDER BY
- Basic filtering (AND, OR)
Use Case
- Product performance comparison
- Channel-wise usage analysis
Interview Skill
- Translating business questions into queries
Week 6: SQL for Comparison & Strategy
Goal: Compare groups and identify patterns.
SQL Skills Taught
- GROUP BY
- COUNT, SUM, AVG
- Basic JOIN (visual explanation)
- HAVING (simple logic)
Use Case
- Regional performance
- Retailer comparison
- Pricing impact analysis
Decision Logic
- Best-performing segment ≠ most profitable
Week 7: Python Basics for Analytical Thinking
Goal: Introduce Python gently as an automation helper.
Python Skills Taught
- Variables
- Lists & dictionaries
- If-else conditions
- For loops (basic)
- Simple calculations
Use Case
- Automating repetitive Excel-style logic
- Data validation checks
Decision Logic
- When automation helps vs manual analysis
Week 8: Pandas for Working with Real Data
Goal: Work confidently with real datasets.
Python / Pandas Skills
- Reading CSV & Excel files
- Filtering rows
- Selecting columns
- Handling missing values
- Basic aggregation
Use Case
- App engagement analysis
- Customer usage patterns
Decision Logic
- Why averages can hide real problems
Week 9: Data Visualization for Business Communication
Goal: Learn how visuals support decisions.
Skills Taught
- Bar charts
- Line charts
- Histograms
- Choosing the right chart for the question
Use Case
- Engagement trend visualization
- Campaign performance comparison
Interview Skill
- Explaining insights to non-technical managers
Week 10: Power BI Fundamentals
Goal: Build reporting mindset.
Power BI Skills
- Importing Excel & SQL data
- Data cleaning using Power Query
- Understanding fields & measures
- Basic visuals
Use Case
- Campaign dashboard
- Digital penetration dashboard
Decision Logic
- What managers actually care about in reports
Week 11: Role-Based Dashboards in Power BI
Goal: Align dashboards with job roles.
Skills Taught
- Filters & slicers
- KPI cards
- Cross-filtering visuals
Role-Based Dashboards
- Campaign Manager dashboard
- App Engagement dashboard
- Retail & Pricing overview
Decision Logic
- When dashboards say “wait”, not “act”
Week 12: Project Kickoff – Choose Your Role
Goal: Apply skills to real problems.
Skills Taught
- Problem framing
- Defining KPIs
- Dataset understanding
- Analysis planning
Output
- Role-specific project selection
- Clear problem statement
Week 13: Statistics for Decision Confidence
Goal: Teach only what analysts actually use.
Statistics Skills
- Mean, median, mode
- Variance & distribution
- Trend vs anomaly
- Confidence in insights
Use Case
- Why one-month data is misleading
- Supporting decisions with evidence
Week 14: Business Case Framing, Storytelling & LinkedIn Optimization
Goal: Make students interview-ready.
Skills Taught
- Structuring business cases
- Explaining:
- Problem → Analysis → Decision → Impact
- Role-based interview answers
- LinkedIn headline & project framing
- Avoiding buzzwords
Practice
- Mock interview explanations
- Peer feedback
Week 15: Final Project Presentations
Goal: Simulate real industry scenarios.
Skills Demonstrated
- Analytical thinking
- Decision justification
- Dashboard storytelling
- Business communication
Week 16: Career Strategy & Wrap-Up
Goal: Prepare students for the job market.
Skills Covered
- Role-based CV writing
- Interview Q&A (Excel, SQL, Python, Power BI)
- Career roadmap discussion
- Next learning steps
Key Takeaways for Students:
- Practical Excel, SQL, Python, Power BI skills
- Role-based analytical thinking
- Strong decision-making ability
- Interview & LinkedIn readiness
- Confidence to explain why, not just how
Note: The course outline is subject to modification based on students’ comprehension levels and industry needs to ensure relevance and effectiveness.
Blogs
November 2019
Why Learn Python- Top Reasons 2020
Python is everywhere. If you haven’t been living under a rock for the past 5-7 years you must have heard of python in one way or another. It is the largest growing high-level and interpreted programming language to-date. Learning Python makes you eligible for even more jobs in the market compared to C++ or Java. The average Python developer in the US (2019) earns an average yearly salary of slightly more than $120k. In addition to the lucrative job [...]










