What do we mean by Agentic AI Development?

It is an approach where AI agents operate as active participants in the engineering process, not just a prompt-driven assistant.

At JFDI, this means those agents are given:

  • Direct awareness of platform APIs and schemas
  • Defined responsibilities within delivery workflows
  • Automated validation and quality gates
  • Persistent knowledge that compounds over time

The result is production-ready outputs, not plausible guesses that require extensive rework.

Why generic AI-assisted development falls short

Most AI-assisted development today relies on:

  • Surface-level prompting
  • Assumed platform behaviour
  • Manual verification after the fact
  • Disposable results that don’t learn from past work

In enterprise environments, this leads to:

  • Hallucinated ouput and incorrect patterns
  • Increased rework and technical debt
  • Reduced confidence in AI-generated code
  • Governance and audit concerns

Agentic AI exists to solve these problems, not introduce new ones.

At JFDI, Agentic AI Development is not a standalone service

It is an enabling capability that strengthens how we deliver across our core pillars:

What makes JFDI’s approach different

This is an engineering discipline applied to AI-assisted delivery

Platform-native by design

Our agentic systems interact directly with the platforms we work on, such as Microsoft 365, Power Platform, Appian, and bespoke enterprise environments. They don’t guess how platforms behave; they operate with real context.

Persistent knowledge

Patterns, fixes, and lessons learned are captured and reused. Knowledge compounds across projects instead of being lost between sessions.

Validation before delivery

Outputs pass through automated checks, tests, and platform-specific validation before being reviewed by humans. Quality is designed in, not inspected afterwards.

Human-led

Supporting our engineers, not replacing them. Architectural decisions, business logic, and accountability remain human-owned.

Why this matters to organisations

For organisations, this approach delivers:

  • Faster development without lower standards
  • Reduced technical debt from AI-generated code
  • Improved governance and auditability
  • Greater confidence in AI-assisted outcomes
  • Knowledge that strengthens delivery over time

Allowing organisations to benefit without sacrificing control.

Where you’ll see this in practice

We apply these techniques when we:

  • Build new applications and platforms
  • Modernise legacy solutions
  • Develop products such as Locodium, PETM, and our SharePoint web parts
  • Automate governance, metadata, and compliance at scale

This is not theoretical. It is already embedded in how we deliver.

The Impact

Indicative outcomes based on client delivery experience. Actual results vary by organisation and context.

Faster Delivery Cycles

Typical reduction in time from concept to first usable release using agentic delivery patterns compared to traditional project models.

Reduced Rework & Waste

Fewer late-stage changes and rework cycles due to continuous agent-driven feedback, validation, and adjustment.

Faster Adaptation to Change

Time to adapt requirements, logic, or workflows is dramatically reduced as agents continuously monitor and propose changes.

Adoption & Usability

End users engage sooner thanks to earlier feedback loops and iterative refinement.

Our Agentic Development Manifesto

Defines the principles that guide how we use AI in engineering: prioritising correctness, accountability, and sustainability over speed alone. It is how those principles are applied in real delivery terms.

Start a conversation

If you’re exploring how AI fits into your development or modernisation strategy, we’re happy to talk.