Delivery AI Enablement & Productivity

Capability Template Details

Delivery AI Enablement & Productivity

Enables teams to assess, improve, and measure the foundational capabilities, structures, and conditions required to effectively adopt and scale AI. In partnership with Accelerated Innovation.

Ideal For

Software delivery organizations, groups, or teams, aiming to accelerate and scale AI adoption, use it more effectively, and boost productivity.

Capabilities by Dimension

21 total capabilities

AI Technology & Data

AI Tools & Platforms

AI Data Access

AI Infrastructure

Responsible AI

AI Ethics

AI Governance

AI Security

AI Fluency

AI Understanding

AI Prompting

AI Output Evaluation

AI Value Management

AI Use Case Discovery

AI Use Case Prioritization

AI Impact Measurement

AI-Assisted Engineering

AI-Assisted Coding

AI-Assisted Debugging

AI-Assisted Unit Test Creation

AI-Assisted Testing

AI-Assisted Test Case Creation

AI-Assisted Test Data Creation

AI-Assisted Test Execution

AI Product Management

AI-Assisted Product Discovery

AI-Assisted Story Writing

AI-Assisted Documentation

Capability Growth Criteria Example

AI-Assisted Coding

Select the option that best describes the extent to which AI is used to better enable the creation and modification of source code today.

Starting (0)

AI-Assisted Coding is not used or is rarely utilized; code is primarily written and modified without AI support
Examples:
1. No AI coding tools installed
2. PRs contain no AI-generated code
3. Boilerplate code recreated repeatedly
4. No discussion of AI usage in code reviews

Developing (1)

Multiple contributors independently use AI at their own discretion to assist with coding, with its use visible in work artifacts
Examples:
1. AI references in PRs
2. AI-generated code snippets in codebase
3. Code comments referencing AI
4. Personal coding prompts

Emerging (2)

Shared practices are defined for when and how AI is applied to coding tasks, producing visible, repeatable, and reliable coding patterns
Examples:
1. Published AI coding guidelines
2. Shared IDE AI tooling
3. Centralized coding prompt templates
4. Consistent AI patterns in code reviews

Adapting (3)

AI-Assisted Coding practices are consistently applied as part of standard development workflows and reliably produce desired outcomes reflected in performance metrics
Examples:
1. PR templates include required AI fields
2. Definition of Done includes AI code review
3. Estimation considers AI coding
4. Improved rework metrics for AI code

Optimizing (4)

AI-Assisted Coding practices within standard development workflows are intentionally and continuously improved, resulting in consistent gains in performance metrics over time
Examples:
1. AI impact on coding workflow reviews
2. AI coding handles larger units of work
3. Context enrichment prompt updates
4. Improved cycle time trends

Accelerate The Impact of Your Transformation