Founded in 1871, Weir is a world leading engineering business with a purpose to make mining operations smarter, more efficient and sustainable. Thanks to Weir’s technology, our customers can produce essential metals and minerals using less energy, water and waste at lower cost. With the increasing need for metals and minerals for climate change solutions, Weir colleagues are playing their part in powering a low carbon future. We are a global family of 11,000 uniquely talented people in over 60 counties, inspiring each other to do the best work of our lives. Weir is committed to an inclusive and diverse workplace. We are an equal opportunity employer and do not discriminate on the basis of race, national origin, gender, gender identity, sexual orientation, veteran status, disability, age, or any other legally protected status.
S4+ Data & Analytics Lead
Location
United States + 2 moreAll locations: United States | United Kingdom | India
Posted
9 days ago
Salary
0
Seniority
Lead
Job Description
S4+ Data & Analytics Lead
Weir
Role Description The S4+ Data & Analytics Lead is the single-thread accountable leader for the end-to-end data and analytics agenda across the S4+ programme, owning all programme data outcomes across design, build, test, migration, cutover, and post go-live stabilisation. - Ensures the programme delivers clean, reconciled data, trusted analytics, and AI ready foundations. - Protects operational and financial integrity through cutover. - Defines standards and chairs programme data governance. - Stops or escalates delivery where data readiness or risk would compromise go-live integrity or future value realisation. - Ensures programme artefacts, controls, and ways-of-working become BAU-ready and are transitioned into business-as-usual operating rhythms post go-live. Key Responsibilities - Programme Data Leadership & Governance: - Single accountable owner for S4+ data outcomes; owns integrated data roadmap and governance. - Measures / Indicators: - Integrated data roadmap published, maintained, and used in programme governance. - Cross-domain dependencies and data risks tracked early and resolved through governance. - Information Modelling & Design Authority: - Own programme information modelling outputs and chair data-related design authority decisions. - Measures / Indicators: - Source-of-record (SoR) and information model artefacts approved and adopted. - Design authority decisions are evidence-based and minimise semantic divergence. - Migration, Readiness & Cutover Integrity: - Own end-to-end data migration and go live readiness; stop/escalate where data risk exists. - Measures / Indicators: - Evidence-based data gates achieved for readiness-to-test, readiness-to-cutover, and go-live. - Go-live recommendations supported by auditable evidence packs (reconciliation, defect position, residual risk). - Analytics & AI Enablement: - Deliver trusted analytics and AI ready foundations aligned to enterprise controls. - Measures / Indicators: - Trusted analytics maintained through cutover (one version of truth, agreed KPIs, lineage). - AI enablement criteria embedded into data gates and BAU-ready monitoring. - Decision Rights & Escalation: - S4+ Data & Analytics Lead — Decides: - Programme data standards and evidence requirements for data gates (within enterprise guardrails). - Data readiness go/no-go recommendations for each major gate, based on auditable evidence and residual risk. - S4+ Data & Analytics Lead — Stops / Escalates: - Stops or escalates delivery where data readiness threatens operational/financial integrity through cutover. - S4+ Data & Analytics Lead — Recommends: - Material risk recommendations to Exec/Board governance via the Data & AI Transformation Director, supported by evidence packs and mitigations. Key Outputs & Deliverables - Integrated S4+ Data Roadmap (including data gates, dependency map, and readiness milestones). - Programme Information Model Pack (SoR decisions, object catalogue, data quality rules, KPI definitions and lineage). - Migration & Cutover Evidence Packs (auditable reconciliation results, defect logs, residual risk dossier, go/no-go recommendations). - Trusted Analytics Pack (one version of truth KPI catalogue, lineage, reporting transition plan). - BAU Transition Pack (governance cadence, monitoring dashboards, ownership/stewardship model, early-life support routines). Job Knowledge/Education and Qualifications - Knowledge: - Data governance, migration, analytics and AI enablement in SAP S/4HANA programmes. - Information modelling artefacts (SoR, object catalogue, DQ rules, KPI lineage). - Data readiness and cutover integrity in ERP transformations. - Skills: - Programme leadership and delivery management. - Standard setting and enforcement across partners and domains. - Confident escalation where data risk threatens go live. - Capability: - Single thread accountability for S4+ data outcomes. - Establish and run programme data governance and design authority. - Protect operational and financial integrity through cutover. - Experience: - Leading data and analytics on SAP S/4HANA or ERP scale transformations. - Hands-on data migration, reconciliation and go live readiness. - Delivering trusted analytics and eliminating fragmented reporting. Benefits - Be part of a global organization dedicated to building a better future. - An opportunity to grow your own way with support and freedom to tailor-make your career. - Feel empowered to be yourself and belong in a welcoming, inclusive workplace.
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