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Published byAmos Norris Modified over 9 years ago
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Data @ the core of Enterprise Agile Mathew Aniyan Program Manager, Microsoft
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Abstract Agile adopts an empirical approach to software development. One of the key aspects of a successful Agile Implementation is how quickly we can react to change. For this, we need to ensure that data flows seamlessly from customer to the Agile team. This data should form a critical part of our decision making. Is the customer successful in using our product or service? Which features are customer most interested in? Where are the friction points in usage? Where are the failures happening in our product? How is the customer engaging with our product over time? and many more similar questions. In this talk, I discuss best practices in data collection, analysis and visualization and how data can make your Agile process and thereby your business more effective.
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Agile Manifesto - http://www.agilemanifesto.org/
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Principles behind the Agile Manifesto Welcome changing requirements, even late in development. Agile processes harness change for the customer's competitive advantage. At regular intervals, the team reflects on how to become more effective, then tunes and adjusts its behavior accordingly.
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Data as the lifeblood of Agile Helps understand changing requirements Measures progress against goals
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Before we start: Privacy Classify your data Seek customer permission Security Who can access? How to secure? Err on the side of caution
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Design your data
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Start with the Business Questions
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How will you visualize the data?
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What decision will you make?
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A Sample Business Question Demo
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Data Collection Infrastructure
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Hot Path Demo
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Warm Path Demo
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Cold Path Demo
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Surveys A sample questionnaire
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Analysis – Per Incident Root Cause Analysis 5 Whys
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Analysis – Per Day Daily trends Operational
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Analysis – Per Week Operational Learning focused
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Mean Time To Detect To Fix Between Failures
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Analysis – Per Month Business focused Experiments
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Machine Learning K-Means clustering
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Visualization Samples
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Availability
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Usage Funnels
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Map Visualizations
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Cohorts
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Flow Diagrams
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TreeMap
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Animated Bubble Charts Demo
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Tables with Sparklines
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Summary Use data to drive your decisions Plan your data Develop the right data collection infrastructure Analyze at needed Use visualizations to communicate with data effectively
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