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Ash Maurya, USERcycle
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Sheila Goodman
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Presentation during The Lean Startup SXSW by Ash Maurya, USERcycle.
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Ash Maurya, USERcycle
1.
How We Build
Features USERcycle Case Study ASH MAURYA @ashmaurya http://www.ashmaurya.com
2.
Some learning
Most learning happens here Requirements Development QA Release Very little learning
3.
Some learning
Most learning happens here Continuous Requirements Release Deployment Shorten cycle time
4.
Continuous
Requirements Release Deployment Build a continuous feedback loop with customers
5.
BACKLOG
IN-PROGRESS (3) DONE
6.
VALIDATED BACKLOG
IN-PROGRESS (3) DONE LEARNING
7.
VALIDATED BACKLOG
IN-PROGRESS (3) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
8.
VALIDATED BACKLOG
IN-PROGRESS (3) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY BEING WORKED
9.
VALIDATED BACKLOG
IN-PROGRESS (3) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY READY
10.
VALIDATED BACKLOG
IN-PROGRESS (3) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY CUSTOMER VALIDATION
11.
Goal: Achieve 60%
Activation rate STATE VALIDATED BACKLOG IN-PROGRESS (3) DONE LEARNING PARTIAL VALIDATE FULL VERIFY KEY METRIC BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
12.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
13.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY UNDERSTAND PROBLEM
14.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
15.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
16.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
17.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY DEFINE SOLUTION
18.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
19.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
20.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
21.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
22.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
23.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
24.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY VALIDATE QUALITATIVELY
25.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
26.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
27.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
28.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
29.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY VERIFY QUANTITATIVELY
30.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
31.
Goal: Achieve 60%
Activation rate VALIDATED BACKLOG IN-PROGRESS (1) DONE LEARNING PARTIAL VALIDATE FULL VERIFY BACKLOG MOCKUP DEMO CODE ROLLOUT QUALITATIVELY ROLLOUT QUANTITATIVELY
32.
Go Only As
Fast As You Can Learn
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