Product Analytics: Data-Driven Growth and Retention
20 hours ago
Marketing
[100% OFF] Product Analytics: Data-Driven Growth and Retention

Learn from real examples, Workbook and free Ebook on Product Data Analysis included

0
14 students
6.5h total length
English
$0$22.99
100% OFF

Course Description

Are you a product manager, growth lead, marketing manager, or founder looking to make smarter product decisions using data without relying on a data science team?

In this hands-on course, you’ll learn how to track, interpret, and act on product analytics to improve user experience, retention, and revenue. Whether you're launching a new product or optimizing an existing one, this course gives you the frameworks, metrics, and thinking tools you need to turn user behavior into actionable insights.

We’ll cover essential concepts like funnels, retention, churn, LTV, and segmentation, and guide you through practical exercises using real-world data patterns. You’ll learn how to define what to track, make sense of messy spreadsheets, and prioritize decisions that move your product forward.

No coding or advanced math required, just a curiosity for product data and a desire to build better experiences.

By the end of this course, you’ll be able to:

  • Understand and apply core product analytics concepts

  • Set up event-based tracking and meaningful metrics

  • Identify growth opportunities through retention and funnel analysis

  • Segment users and translate data into product strategy

Understand and apply core product analytics concepts

Set up event-based tracking and meaningful metrics

Identify growth opportunities through retention and funnel analysis

Segment users and translate data into product strategy

The course includes:


Part 1: Product Analytics Foundations


Unit 1: What is Product Analytics?

  • Why do Product Analytics Matter?

  • Clarity and purpose

  • Uncovers new insights

  • Helps you figure out how to not let your product sink

  • What are the “right” data points to measure?

  • The “low” performing game

  • How can metric results influence the product strategy?

  • Bias in interpretation of data

Why do Product Analytics Matter?

Clarity and purpose

Uncovers new insights

Helps you figure out how to not let your product sink

What are the “right” data points to measure?

The “low” performing game

How can metric results influence the product strategy?

Bias in interpretation of data


Unit 2:

  • Metrics vs Mission, Why they matter and North Star Thinking

Metrics vs Mission, Why they matter and North Star Thinking


Unit 3: Measuring the Entire Journey

    • Going through the Funnel

    • Measuring the journey

    • Getting to the juice

  • Going through the Funnel

  • Measuring the journey

  • Getting to the juice

Going through the Funnel

Measuring the journey

Getting to the juice

Part 2: Product Metrics (Acquisition, Usage, Retention, Cost & Monetization)

Unit 4: User Data

    • Installs, First Launches, Sign-ups

    • Conversion Rate

  • Installs, First Launches, Sign-ups

  • Conversion Rate

Installs, First Launches, Sign-ups

Conversion Rate

Unit 5: Revenue Metrics

    • DAU/MAU Ratio

    • ARPU

    • LTV

    • CAC

  • DAU/MAU Ratio

  • ARPU

  • LTV

  • CAC

DAU/MAU Ratio

ARPU

LTV

CAC


Unit 6: User Retention and Stickiness

    • Retention curves

    • Revenue retention

    • Event-based retention

    • Churn analysis

    • Reactivation strategies

    • The cost of poor retention

    • UX and value examples

  • Retention curves

  • Revenue retention

  • Event-based retention

  • Churn analysis

  • Reactivation strategies

  • The cost of poor retention

  • UX and value examples

Retention curves

Revenue retention

Event-based retention

Churn analysis

Reactivation strategies

The cost of poor retention

UX and value examples


Unit 7: Monetization and Metrics

    • Pricing models and revenue streams

    • IAPs, Ads, Paywalls, Subscriptions

    • Monetization and UX tradeoffs

    • Experimentation and A/B testing

    • Monetization examples

  • Pricing models and revenue streams

  • IAPs, Ads, Paywalls, Subscriptions

  • Monetization and UX tradeoffs

  • Experimentation and A/B testing

  • Monetization examples

Pricing models and revenue streams

IAPs, Ads, Paywalls, Subscriptions

Monetization and UX tradeoffs

Experimentation and A/B testing

Monetization examples


Unit 8: Distribution and Channels

    • CAC across channels

    • Channel competition

    • Measuring product-channel fit

    • Key metrics per channel

  • CAC across channels

  • Channel competition

  • Measuring product-channel fit

  • Key metrics per channel

CAC across channels

Channel competition

Measuring product-channel fit

Key metrics per channel


Part 3: Behavioral and Experience Metrics

Unit 9: Behavioral Metrics

    • Feature usage

    • Product and feature pairing

    • Sentiment analysis

    • Emotion detection (experimental)

    • Location analysis (experimental)

    • User interviews and surveys

    • Segmentation

    • Device specs and UI/UX analysis

  • Feature usage

  • Product and feature pairing

  • Sentiment analysis

  • Emotion detection (experimental)

  • Location analysis (experimental)

  • User interviews and surveys

  • Segmentation

  • Device specs and UI/UX analysis

Feature usage

Product and feature pairing

Sentiment analysis

Emotion detection (experimental)

Location analysis (experimental)

User interviews and surveys

Segmentation

Device specs and UI/UX analysis



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