AI CAPABILITY • IMPLEMENTATION

Agents & Orchestration

One agent, infinite expertise

In 30 Seconds

The paradigm has shifted. We no longer build separate agents for each domain. We build skills – packaged expertise that one general-purpose agent can load on demand.

Skills are simple: organised folders containing instructions, scripts, and reference materials. Version them in Git. Share them across teams. Anyone – human or AI – can create them.

Why it matters: Every skill you build compounds. Enterprise knowledge becomes reusable capability – extending AI effectiveness across your organisation without rebuilding from scratch.

The Paradigm Shift

Old thinking: Build a separate agent for each domain. A finance agent, a legal agent, a research agent – each with its own scaffolding.

New thinking: One general-purpose agent runtime + a library of skills. The agent loads relevant skills on demand, gaining domain expertise instantly.

As Anthropic put it: “After we built Claude Code, we realized that Claude Code is actually a general purpose agent.”

Multi-Agent Approach

Separate agent per domain

Each needs its own tools and scaffolding

Coordination complexity grows exponentially

Hard to share learnings across agents

Skills-Based Approach

One agent + library of skills

Skills loaded at runtime when needed

Expertise compounds across the organisation

Anyone (human or AI) can create new skills

What Are Skills?

Packaged procedural knowledge that agents can load on demand.

Skills are deliberately simple: organised folders containing instructions, scripts, and reference materials. Version them in Git. Share them across teams. Anyone – human or AI – can create them.

Foundational Skills

New capabilities the agent didn't have before. Document creation, data analysis, scientific research – domain expertise packaged for reuse.

Platform Skills

Help agents work better with specific tools. Browser automation, workspace integration, API orchestration – built by platform providers.

Enterprise Skills

Organisation-specific knowledge. Internal processes, coding standards, compliance requirements – institutional knowledge made actionable.

Skills + MCP: The Complete Picture

Skills provide expertise. MCP (Model Context Protocol) provides connectivity. Together, they make agents genuinely capable.

Skills = Expertise

What: Procedural knowledge, best practices, domain expertise

How: Loaded into context when the agent decides to use them

Example: Financial reporting skill, compliance checking skill

MCP = Connectivity

What: Tools and data from external systems

How: Standardised protocol for connecting to outside world

Example: Database queries, API calls, file system access

Skills often orchestrate multiple MCP tools – they provide the “how” while MCP provides the “with what.”

The Computing Analogy

Skills are to AI what applications are to computers

Applications = Skills

Domain expertise, unique capabilities

Operating System = Agent Runtime

Context management, tool execution

Processor = Model

Intelligence, reasoning capability

A few companies build processors and operating systems. Millions build applications. Skills open this layer to everyone.

Orchestration Patterns

How skills and subagents coordinate to get work done

Chaining

Sequential handoffs

Task flows through skills in sequence. Research skill feeds analysis skill feeds reporting skill. Best for linear workflows with clear stages.

Routing

Smart direction

Classify requests and load the right skill. Customer support, technical queries, sales questions – each triggers the relevant expertise.

Parallelisation

Simultaneous work

Spawn subagents to tackle different aspects at once. Research, analysis, and drafting happen simultaneously, then results are synthesised.

Orchestrator-Workers

Dynamic delegation

The main agent breaks down tasks and spawns workers with relevant skills. Flexible – subtasks aren't predetermined, but discovered.

Evaluator-Optimizer

Iterative refinement

Generate with one skill, evaluate with another. Loop until quality threshold is met. Like a writer and editor working together.

Human + Agent Collaboration

Agents don't replace humans. They extend human capability. The question is: how much autonomy, and where does human judgment stay essential?

The Autonomy Spectrum

Human in the Loop

Human approves each step. Maximum oversight. Best for high-stakes decisions.

Human on the Loop

Agents work, human monitors. Intervention when needed. Best for routine work with exceptions.

Human out of the Loop

Full automation with guardrails. Human review of outcomes. Best for well-defined, low-risk processes.

Most organisations in 2025-26 will operate “in the loop” or “on the loop”

Success depends on knowing where on this spectrum each task belongs.

Three Principles We Follow

From Anthropic's guidance on building effective agents

1

Simplicity

Start with the simplest solution that works. Add complexity only when it demonstrably improves outcomes.

2

Transparency

Show the agent's planning and reasoning. Humans should understand what's happening and why.

3

Tool Design

Agent-Computer Interfaces need as much care as Human-Computer Interfaces. Well-designed tools make agents reliable.

Expertise That Compounds

Whether you're exploring how skills could extend your AI capability, designing your organisation's knowledge architecture, or need hands-on implementation – we can help build expertise that compounds.