Course Includes:
- Price: FREE
- Enrolled: 11 students
- Language: English
- Certificate: Yes
- Difficulty: Beginner
This course contains the use of artificial intelligence.
Every product team has shipped something that looked brilliant on the whiteboard and quietly died in the market. The cost was never the code — it was the months of conviction poured into an idea that nobody had ever properly tested. In modern product development, the teams that win are not the ones with the boldest opinions but the ones with the fastest, cheapest, sharpest ways of finding out whether their ideas actually work before they bet a quarter of engineering capacity on them. Prototyping and experimentation are how that learning happens, and this course teaches you the strategic thinking behind both.
Inside, you will learn the full prototyping fidelity spectrum, from paper sketches and clickable mockups to Wizard of Oz prototypes, concierge MVPs, and functional betas, and exactly which questions each method is built to answer. You will master the design of valid product experiments, including how to surface the assumptions worth testing, write precise hypotheses, define success criteria up front, size samples correctly, and pre-register your plan. You will get statistical foundations explained conceptually, covering significance, power, effect size, and the everyday traps of peeking, p-hacking, novelty effects, and post-hoc segment slicing. You will also explore qualitative methods such as usability testing, concept testing, fake-door tests, and landing page experiments, and learn how to synthesize qualitative signals into real product decisions you can defend.
This course is designed for product managers, designers, UX researchers, growth leads, and innovation teams who need to make better product bets with less waste. No statistics background is required — every concept is explained in plain language with vivid examples and real-world scenarios. By the end you will know how to choose the right method for the question, how to run experiments that survive scrutiny, how to interpret null results without flinching, and how to drive a build-measure-learn rhythm that actually compounds learning over time. You will also be ready to manage stakeholders who demand certainty, document learnings as institutional knowledge, and run experiments with ethical care for the users on the other side.
What makes this course different is its focus on the strategic thinking behind prototyping and experimentation, not the buttons of any particular tool. You will leave with a portable mental model you can apply on any team, in any tool, on any product. If you are ready to stop relying on the loudest opinion in the room and start letting evidence drive your decisions, enroll today and start building a product practice you can actually trust.