SUMMARY:
Purpose of Engagement:
This Statement of Work defines the responsibilities of the Data Products Engineering and Delivery Team. The team will design, build, deploy, and operate enterprise-scale data products including customer audiences, behavioral segments, analytical datasets, ADRs, machine learning models, APIs and secure customer-facing portals.
The goal is to accelerate DataCo’s ability to monetise data assets and deliver high-value, privacy-preserving insights to internal and external customers.
Scope of services:
The engagement covers the end-to-end development of data products, including:
Data Ingestion and Integration:
- Integration with downstream systems such as CRM, billing, app usage, network data, DPI, mobile financial services, and digital platforms.
Data modelling and feature engineering:- Development of segmentation, audience building, feature stores, and analytical models used across DataCo products.
Machine learning products:- End-to-end development of ML pipelines including training, validation, deployment, monitoring and retraining.
Customer and internal insight delivery:- Development of secure portals used by enterprise client’s business units to access audiences, insights and ML outputs.
API services and automation:- APIs that expose insights, predictions, scores and ADRs for consumption by enterprise systems and partner integrations.
Cloud enablement, devOps and platform engineering:- Cloud infrastructure deployment, CI/CD automation and MLOps support for continuous delivery.
Operations and support:- Ongoing platform stability, monitoring, incident management and L2/L3 support.
Workstreams and responsibilities:Delivery and product lifecycle management:- Oversee the complete lifecycle of data products and ML models from design to production support.
- Lead agile rituals and coordinate with DataCo, IT, OpCos and third parties.
- Prioritise product backlog items based on commercial value and customer need.
- Ensure all releases align with DataCo’s monetisation strategy.
Enterprise data architecture:- Design ingestion architecture for complex data sources including telco events, CRM and digital platforms.
- Define data models, analytical layers, feature stores and integration patterns.
- Ensure designs comply with privacy and data protection regulations.
Data engineering and data ingestion:- Build high-volume pipelines for data ingestion, transformation and processing.
- Develop audience builder pipelines, segmentation layers and ADR-ready datasets.
- Apply quality checks, enrichment logic and performance optimisation.
Machine learning engineering and modelling:- Build and deploy ML models for churn, propensity, credit scoring, fraud detection, clustering and behavioral analytics.
- Implement pipelines for feature extraction, training, evaluation and model serving.
- Ensure model governance, fairness, explainability and lifecycle management.
Application engineering and customer portal development:- Develop secure internal and external portals for insight browsing audience management and score retrieval.
- Implement authentication, authorisation, audit logging and encryption.
- Build front-end and back-end components for user-friendly data product access.
API and integration engineering:
- Build secure APIs for insights, scores, ADRs and ML outputs.
- Enable integration with banks, insurers, retailers, FinTech’s and internal client systems.
- Implement monitoring, rate limiting and usage analytics.
Cloud Engineering, DevOps and MLOps:- Deploy cloud infrastructure including compute, storage and container platforms using infrastructure-as-code.
- Implement CI/CD pipelines for data jobs, APIs and ML models.
- Manage observability, performance and cost optimisation.
Data governance, privacy and compliance:- Apply privacy methods such as k-anonymity, l-diversity, t-closeness and differential privacy.
- Manage PII minimisation, access controls, data lineage and audit readiness.
- Support approvals required under the client’s Data Sharing and Monetisation Policy.
Platform operations and support:- Maintain platform stability and handle incidents, root-cause analysis and resolution.
- Monitor SLAs across pipeline freshness, model performance, API uptime and portal availability.
- Ensure business continuity and disaster recovery readiness.
Deliverables:- Fully integrated data ingestion pipelines connecting downstream systems.
- Feature store and audience-builder pipelines with validated segmentation outputs.
- Machine learning models deployed to production with monitoring dashboards.
- Secure client-facing and internal insight portals.
- APIs for insight, scoring and ADR delivery.
- Cloud infrastructure deployed using best practices and IaC automation. Operational runbooks, documentation and handover materials.
Roles required update and optimized: Leadership and delivery:
Role Level Responsibility and BoundaryIT Delivery Manager Senior Owns end-to-end delivery and agile facilitation for the squad.
Programme-level coordination remains with the FTE Project Manager.
Product Owner Provided by the FTE SM: Product Owner; no separate contractor Product Owner. Backlog and prioritisation owned there.
Architecture:Role Level Responsibility and BoundarySolution Senior Implements solution architecture under enterprise standards set
Implementation by the FTE Data Architect / Solution Architect. No separate
Architect enterprise-architecture role in the squad.
Data and AI Engineering:Role: Responsibility and boundary Big Data Engineer High-volume ingestion, transformation and feature pipelines (e.g. Spark/Hadoop).
Cloud Engineer Azure landing-zone, networking and core infrastructure. CI/CD and IaC now
(Azure/Databricks) owned by the Platform Engineer.
Platform Engineer Self-service golden paths, CI/CD and infrastructure-as-code across the Data Lake, GIS platform and Monetisation Portal.
GenAI / LLM Generative-AI / retrieval over data products; makes catalogue products
Engineer conversational and agent callable.
AI Agent / Agentic Builds agents that accelerate the delivery squad and become productised
Engineer features (e.g. analyst-agents over footfall and competitor data).
MLOps Engineer Operationalises models — serve, monitor, retrain. Model build sites with the FTE ML Engineer
Application and experience:Role Level Responsibility and boundaryFull-Stack Developer Senior Front-end and back-end for portals, audience management and
score retrieval.
API Developer Senior Secure APIs exposing insights, scores, ADRs and ML outputs.
UX / Product Senior Designs the external client portal and insight-consumption
Designer experience — currently unowned across the organisation.
Security, Privacy and Governance: Role Level Responsibility and boundaryCybersecurity Senior Secures platforms and pipelines handling subscriber and
Specialist geospatial data
Privacy Senior Implements privacy-enhancing techniques (k-anonymity, l-
Engineer diversity, t-closeness, differential privacy) in the pipelines
.(PETs) Compliance Senior Operational compliance evidence and audit readiness. Data
Analyst policy owned by FTE Data Privacy / Data Governance; model
risk owned by Responsible AI.
Quality, reliability and support: Role Level Responsibility and boundaryQA Engineer Senior Functional, data-accuracy and performance/load testing of data
(Data Products) products and visualisations
Infrastructure Senior Reliability engineering, observability and disaster-recovery
Engineer (SRE) readiness.
POSITION INFO:
Purpose of Engagement:
This Statement of Work defines the responsibilities of the Data Products Engineering and Delivery Team. The team will design, build, deploy, and operate enterprise-scale data products including customer audiences, behavioral segments, analytical datasets, ADRs, machine learning models, APIs and secure customer-facing portals.
The goal is to accelerate DataCo’s ability to monetise data assets and deliver high-value, privacy-preserving insights to internal and external customers.
Scope of services:
The engagement covers the end-to-end development of data products, including:
Data Ingestion and Integration:
- Integration with downstream systems such as CRM, billing, app usage, network data, DPI, mobile financial services, and digital platforms.
Data modelling and feature engineering:- Development of segmentation, audience building, feature stores, and analytical models used across DataCo products.
Machine learning products:- End-to-end development of ML pipelines including training, validation, deployment, monitoring and retraining.
Customer and internal insight delivery:- Development of secure portals used by enterprise client’s business units to access audiences, insights and ML outputs.
API services and automation:- APIs that expose insights, predictions, scores and ADRs for consumption by enterprise systems and partner integrations.
Cloud enablement, devOps and platform engineering:- Cloud infrastructure deployment, CI/CD automation and MLOps support for continuous delivery.
Operations and support:- Ongoing platform stability, monitoring, incident management and L2/L3 support.
Workstreams and responsibilities:Delivery and product lifecycle management:- Oversee the complete lifecycle of data products and ML models from design to production support.
- Lead agile rituals and coordinate with DataCo, IT, OpCos and third parties.
- Prioritise product backlog items based on commercial value and customer need.
- Ensure all releases align with DataCo’s monetisation strategy.
Enterprise data architecture:- Design ingestion architecture for complex data sources including telco events, CRM and digital platforms.
- Define data models, analytical layers, feature stores and integration patterns.
- Ensure designs comply with privacy and data protection regulations.
Data engineering and data ingestion:- Build high-volume pipelines for data ingestion, transformation and processing.
- Develop audience builder pipelines, segmentation layers and ADR-ready datasets.
- Apply quality checks, enrichment logic and performance optimisation.
Machine learning engineering and modelling:- Build and deploy ML models for churn, propensity, credit scoring, fraud detection, clustering and behavioral analytics.
- Implement pipelines for feature extraction, training, evaluation and model serving.
- Ensure model governance, fairness, explainability and lifecycle management.
Application engineering and customer portal development:- Develop secure internal and external portals for insight browsing audience management and score retrieval.
- Implement authentication, authorisation, audit logging and encryption.
- Build front-end and back-end components for user-friendly data product access.
API and integration engineering:
- Build secure APIs for insights, scores, ADRs and ML outputs.
- Enable integration with banks, insurers, retailers, FinTech’s and internal client systems.
- Implement monitoring, rate limiting and usage analytics.
Cloud Engineering, DevOps and MLOps:- Deploy cloud infrastructure including compute, storage and container platforms using infrastructure-as-code.
- Implement CI/CD pipelines for data jobs, APIs and ML models.
- Manage observability, performance and cost optimisation.
Data governance, privacy and compliance:- Apply privacy methods such as k-anonymity, l-diversity, t-closeness and differential privacy.
- Manage PII minimisation, access controls, data lineage and audit readiness.
- Support approvals required under the client’s Data Sharing and Monetisation Policy.
Platform operations and support:- Maintain platform stability and handle incidents, root-cause analysis and resolution.
- Monitor SLAs across pipeline freshness, model performance, API uptime and portal availability.
- Ensure business continuity and disaster recovery readiness.
Deliverables:- Fully integrated data ingestion pipelines connecting downstream systems.
- Feature store and audience-builder pipelines with validated segmentation outputs.
- Machine learning models deployed to production with monitoring dashboards.
- Secure client-facing and internal insight portals.
- APIs for insight, scoring and ADR delivery.
- Cloud infrastructure deployed using best practices and IaC automation. Operational runbooks, documentation and handover materials.
Roles required update and optimized: Leadership and delivery:
Role Level Responsibility and BoundaryIT Delivery Manager Senior Owns end-to-end delivery and agile facilitation for the squad.
Programme-level coordination remains with the FTE Project Manager.
Product Owner Provided by the FTE SM: Product Owner; no separate contractor Product Owner. Backlog and prioritisation owned there.
Architecture:Role Level Responsibility and BoundarySolution Senior Implements solution architecture under enterprise standards set
Implementation by the FTE Data Architect / Solution Architect. No separate
Architect enterprise-architecture role in the squad.
Data and AI Engineering:Role: Responsibility and boundary Big Data Engineer High-volume ingestion, transformation and feature pipelines (e.g. Spark/Hadoop).
Cloud Engineer Azure landing-zone, networking and core infrastructure. CI/CD and IaC now
(Azure/Databricks) owned by the Platform Engineer.
Platform Engineer Self-service golden paths, CI/CD and infrastructure-as-code across the Data Lake, GIS platform and Monetisation Portal.
GenAI / LLM Generative-AI / retrieval over data products; makes catalogue products
Engineer conversational and agent callable.
AI Agent / Agentic Builds agents that accelerate the delivery squad and become productised
Engineer features (e.g. analyst-agents over footfall and competitor data).
MLOps Engineer Operationalises models — serve, monitor, retrain. Model build sites with the FTE ML Engineer
Application and experience:Role Level Responsibility and boundaryFull-Stack Developer Senior Front-end and back-end for portals, audience management and
score retrieval.
API Developer Senior Secure APIs exposing insights, scores, ADRs and ML outputs.
UX / Product Senior Designs the external client portal and insight-consumption
Designer experience — currently unowned across the organisation.
Security, Privacy and Governance: