Practice 01

Operations & Data Intelligence

Most organisations are sitting on operational data they are not reading. The tools that generate it — core systems, email platforms, collaboration software, case management tools — contain a detailed picture of where time goes, where cost accumulates, and where work breaks down. We read that picture and act on it.

Engagement entry point
Fixed-fee diagnostic, 2–3 weeks
Typical clients
Operations functions at 50–500 person organisations; heads of transformation; COOs dealing with cost pressure and limited visibility
Tooling
Microsoft 365 Copilot, Google Workspace AI, Alteryx, Celonis, Dataiku, Tableau, Power BI

You know something is wrong. You cannot prove where.

Headcount is flat or growing. Output is not keeping pace. Individual teams report being busy. No one can produce a coherent picture of what the organisation is actually spending its time on, or what it costs to serve a customer from onboarding through to steady state.

This is not a people problem. It is a visibility problem — and it is almost always solvable without new tooling, because the data already exists in systems the organisation already owns and pays for.

No cost-to-serve model

Finance can report headcount cost. Nobody can report what it actually costs to process a transaction, onboard a client, or resolve an exception.

Untapped AI tooling

Microsoft 365 Copilot or Google Workspace AI is licensed and largely unused. The investment is being paid for without a use case anchored to operational outcomes.

Exception handling opacity

A significant proportion of operational time is spent on exceptions, queries, and rework. The volume is known. The root cause is not systematically tracked.

New client onboarding drag

Onboarding takes longer than it should. The bottlenecks are felt but not mapped. Improvement attempts address symptoms rather than the flow.

Reporting that arrives too late

Management information is retrospective and manually assembled. By the time cost or capacity pressure is visible in a report, the decision window has passed.

Workforce planning in the dark

Staffing decisions are based on headcount ratios and gut feel rather than observed workload patterns and capacity data.

Phase 1 — Observability diagnostic (weeks 1–3)

We map the data that already exists in your operational environment: ticketing and case systems, communication platforms, calendar and collaboration tools, core processing systems. We identify what is measurable without new tooling — which in most environments is the majority of what you need to know.

We pay particular attention to what your existing AI tooling (Copilot, Workspace) is generating and not being read. These environments accumulate operational signal that most organisations are not extracting.

Output: a written findings document covering where operational cost concentrates, where the AI tooling you already own can be instrumented to generate insight, and a prioritised recommendation for what to address first.

Phase 2 — Instrumentation and analytics build

Based on diagnostic findings, we build the observability layer: cost-to-serve models, workflow analytics dashboards, exception tracking, and onboarding funnel visibility. We use tools your team already has access to where possible. We do not introduce new platforms unless the diagnostic has established a clear case for them.

Phase 3 — Operational handover

Dashboards and models your team can own and maintain. Training for the people who will use them. Documentation for the people who will need to explain them to a board or a regulator.

  • No vendor partnerships — tooling recommendations are based on fit, not relationship
  • Particular focus on extracting value from Microsoft 365 and Google Workspace investments already made
  • Diagnostic output is yours regardless of whether further phases proceed

Cost-to-serve modelling

Granular, defensible models of what it actually costs to deliver each service line — by customer segment, product type, and process stage. Built from observed time-and-motion data rather than allocated headcount costs.

Workflow observability

Real-time and near-real-time visibility into where work is, how long it has been there, and what the bottlenecks are. For operations leaders who are currently managing by exception reports that arrive 24 hours after the exception has become a problem.

New client onboarding analytics

End-to-end mapping of the onboarding journey: time per stage, drop-off points, volume patterns, and the specific steps where manual intervention is consuming the most resource. For organisations where onboarding is a growth constraint.

Support call and case intelligence

Pattern analysis across support interactions to identify repeating issue categories, resolution time by type, and the upstream process failures that are generating call volume. Reduces cost while improving customer experience — because most support volume is preventable.

AI tooling ROI realisation

For organisations that have licensed Copilot or Workspace AI and are not extracting value from it. We identify specific operational use cases — exception summarisation, onboarding workflow assistance, reporting generation — and instrument the tooling to deliver measurable outcomes against them.

50%+

Future labour efficiency identifiable through real-time time-and-motion analytics and workflow observability in comparable environments

~30%

Reduction in change delivery cost achievable through delivery workflow standardisation and governance controls built on existing tooling

Day 1

Management information that does not require manual assembly — built from the data your systems are already generating

The honest framing

Operational intelligence does not fix broken processes — it makes them visible. The value is in knowing precisely where to fix them, and in having the data to justify the investment to the people who control the budget.

In our experience, most operational intelligence engagements surface two or three high-confidence interventions that pay for the diagnostic many times over. The diagnostic exists to find those interventions — not to generate a report that sits in a shared drive.

Start with a conversation

Describe what you can see and what you cannot. We will respond within one business day.

Direct contact