Measured
Typical outcome: measurable productivity improvement
We help technology leaders introduce AI coding tools with clear operating models, measurable productivity gains, and governance standards that satisfy risk, security, and compliance expectations.
Measured
Typical outcome: measurable productivity improvement
Faster
Typical outcome: faster delivery of production-ready code
Confident
Typical outcome: stronger governance and leadership confidence
Assess engineering workflows, AI maturity, capability gaps, and policy risk to define a practical adoption strategy.
Define standardized AI usage patterns for implementation, debugging, refactoring, documentation, and review across teams.
Establish governance models, leadership enablement, and usage controls so AI scales without avoidable risk.
Map coding practices, team capabilities, tool usage, and governance requirements.
Run hands-on AI enablement with selected teams and measure productivity and quality outcomes.
Standardize playbooks, governance controls, and manager reporting across the organization.
Use AI to turn product requirements into clear technical tasks developers can execute faster.
Use AI during development to generate code, explain unfamiliar areas, and accelerate refactoring without losing standards.
Use AI to support code review by identifying risks, suggesting improvements, and enforcing coding standards.
Generate and maintain tests with AI to improve confidence while reducing repetitive test authoring work.
Give managers and leadership clear governance models so AI usage scales safely across development teams.
Co-Founder and AI Engineering Consultant
Simon has over 30 years in software engineering and holds an MSc in Artificial Intelligence at the University of Bath.
He has spent 20 years leading private businesses and delivering high-reliability software solutions, including mission-critical systems for emergency services, while guiding agile transformation across teams.
Co-Founder and Solutions Architecture Lead
Israel has over 20 years leading engineering teams and designing high-performance software architectures across multiple sectors.
He focuses on aligning business outcomes with the right technology choices, helping teams improve programming quality, product development, cloud practices, and data architecture with measurable impact.
We connect adoption to measurable productivity, software quality, and governance maturity so leadership can scale with control.
Developers deliver more useful code by reducing drafting, debugging, and rework time.
AI-assisted review and testing patterns improve consistency and reduce defects.
Management gains clear policy guardrails and visibility as AI usage expands.
Tell us about your goals and we will shape a practical AI adoption plan together.