Chief Data & AI Officer

Company: The Consultancy Group (London)

Location: London

Posted: May 7th, 2026

A large-cap Private Equity sponsor is appointing a Chief Data & AI Officer (CDAO) into a scaled Agri-Food portfolio company to build enterprise-wide data foundations and industrialise AI as a core value-creation lever. The role will own the data strategy, AI roadmap, governance, and delivery of high-impact use cases across the end-to-end value chain—farm/inputs → production → quality → supply chain → commercial → finance—with clear linkage to EBITDA uplift, working-capital improvement, resilience, and improved decision-making cadence.


The CDAO will operate as a hands-on executive leader: shaping strategy, building capability, and delivering measurable outcomes at pace, consistent with PE timeframes and board-level expectations.


Key Objectives (First 3-6 Months)


1) Establish the Data & AI operating model

Create a clear enterprise data vision and operating model (central vs federated), including ownership, stewardship, governance forums, and delivery cadence.

Define the “single source of truth” for critical domains (e.g., product, customer, supplier, inventory, yield, quality, cost).


2) Build the data foundations to scale AI


Stabilise and modernise the data platform (cloud, lakehouse/warehouse, integration, master data, lineage, observability).

Improve data quality, timeliness, and accessibility across core operational and commercial systems (ERP/MES/WMS/TMS/CRM, manufacturing/quality systems, IoT/plant systems where relevant).


3) Deliver a prioritised AI value roadmap


Identify and deliver a pipeline of AI/advanced analytics use cases tied to value creation, for example:

Demand forecasting & S&OP optimisation (service levels, inventory reduction, waste reduction)

Yield / throughput optimisation (process parameters, bottleneck management)

Predictive maintenance (downtime reduction, asset reliability)

Quality & food safety analytics / computer vision (defect detection, compliance)

Procurement & commodity insights (pricing, hedging signals, supplier risk)

Commercial analytics (pricing, promo, mix optimisation, trade spend)

Traceability & compliance enablement (farm-to-fork visibility, audit readiness)


4) Embed responsible AI and risk management


Implement pragmatic, PE-friendly AI governance: model risk, bias testing, explainability, security, vendor risk, and regulatory compliance.


Role & Responsibilities


Strategy & Value Creation



AI Delivery & MLOps



Leadership & Culture



Candidate Profile (Must-Haves)


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