I broadly divide experiments into two categories:
Learning experiments and throughput experiments.
The difference between these experiment types is the goal.
Even though the build-measure-learn loop ends with learning,
The goal of a lean startup isn’t just learning,
But turning learning into measurable business results – aka traction.
The goal of every experiment should be testing
a bigger strategy for increasing traction
by running throughput experiments
unless we run out of potentially good strategies to test.
Then we fallback to running learning experiments
as a way to generate new strategies
which we then test with throughput experiments.
Examples of throughput experiments:
• Solution interviews
• Teaser pages
• A new feature launch
Examples of learning experiments:
• Problem interviews
• Usability tests
• Surveys
Learning experiments are for hypotheses generation while
throughput experiments are for hypotheses validation.
Published on September 02, 2015 07:10