Foundational Analytics

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Duration 3 days – 21 hrs

 

Overview

 

A practical, business-focused introduction to data analytics. Participants learn the full analytics lifecycle from framing questions and preparing data to analyzing, visualizing, and communicating insights using familiar tools (Excel/Google Sheets) plus beginner-friendly SQL. 

 

Objectives

  • Explain the analytics lifecycle and the roles of descriptive, diagnostic, and prescriptive analytics.
  • Evaluate data quality (completeness, accuracy, consistency, timeliness) and document data with simple dictionaries/metadata.
  • Clean and reshape datasets (filter, sort, deduplicate, join/merge) in Excel/Sheets and via basic SQL (SELECT, WHERE, GROUP BY, JOIN).
  • Compute and interpret core descriptive statistics and explore distributions/outliers.
  • Run exploratory analysis (segments, cohorts, correlations, Pareto/80-20) and avoid common causation pitfalls.
  • Apply fundamentals of inference: sampling concepts, confidence intervals, and simple hypothesis tests (t-test, proportion test, chi-square) to business questions.
  • Build clear, audience-appropriate dashboards and tell a concise data story (SCQA, Before/After, “So what?”).
  • Translate analysis into decisions with recommendations, assumptions, risks, and next-step plans.

 

Audience

  • New or aspiring data analysts, BI/reporting specialists, and business users (marketing, operations, HR, finance, product) who work with data and dashboards.
  • Team leads/managers who need to interpret analyses and make data-driven decisions.

 

Pre- requisites 

  • Comfortable with spreadsheets (basic formulas, sorting/filtering).
  • Basic numeracy; no prior statistics or coding required.
  • Laptop with Excel (or Google Sheets) installed; course datasets provided. Optional: DB Browser for SQLite (or equivalent) for SQL labs.

 

Course Content

 

Day 1 Data Literacy, Wrangling & Descriptive Analytics

 

Analytics Foundations

 

  • Analytics lifecycle: business question → data → analysis → insight → action
  • Types of analytics: descriptive, diagnostic, prescriptive
  • Data ethics, privacy, and governance (essentials)

 

Working with Data

 

  • Concepts: data types, structure, granularity, primary/foreign keys
  • Data quality dimensions: completeness, accuracy, consistency, timeliness
  • Documentation: data dictionaries & lightweight metadata

 

Wrangling Essentials (Hands-on)

 

  • Techniques: reshaping, filtering, sorting, deduplication
  • Joins/merges: inner, left, right—when/why to use each
  • Calculated fields & date operations
  • Tools: Excel/Sheets; Intro to SQL — SELECT, WHERE, GROUP BY, JOIN

 

Descriptive Analytics & Visualization

 

  • Central tendency & variability: mean, median, mode, stdev, percentiles
  • Exploring distributions & spotting outliers
  • Visualization principles: chart choice, readability, avoiding clutter

Lab: Build a profile dashboard (sales/ops) with tables & charts

 

Day 2 Exploratory Analysis & Inferential Statistics

 

Exploratory Data Analysis (EDA)

 

  • Relationships: scatterplots, correlation; pitfalls of causation
  • Segmenting & slicing: cohorts, funnels, Pareto (80/20)
  • Lab: Explore a real-world dataset; derive 2–3 actionable insights

 

From Questions to Tests

 

  • Sampling: populations vs samples, bias, sampling error
  • Confidence intervals: intuition & managerial interpretation
  • Hypothesis testing basics: t-test, proportion test, chi-square—business use cases
  • Lab: Run and interpret a simplified A/B test (e.g., Campaign A vs B)

 

BI Dashboards & Data Storytelling

 

  • Dimensions vs measures, KPIs, lagging/leading indicators
  • Filters, drilldowns, and layouts for execs vs analysts
  • Communicating findings: SCQA, “Before/After,” and the “So what?”
  • Lab: Build a simple KPI dashboard with a short narrative & call-to-action

 

Day 3 Decision Analytics & Capstone Project

 

Business-Focused Analysis & Interpretation

 

  • From insight to decision: recommendations, assumptions, risks
  • Analysis planning: experiments, follow-ups, deeper dives
  • Packaging insights: exec summaries, charts, reproducible workflows

 

Practical Tools & Templates

 

  • Structured analysis templates in Excel/Sheets
  • SQL snippets & pivot tables for repeatable queries
  • Checklist for data-driven presentations

 

Capstone (Team or Individual)
Choose a business scenario (marketing, operations, HR, etc.) and perform an end-to-end analysis:

  • Data cleaning & wrangling
  • Descriptive/EDA techniques
  • Visual reporting & KPIs
  • Framing and presenting insights

 

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