A. Corporate Digital Transformation
Lead and execute digital transformation strategies in alignment with corporate objectives and value drivers.
Digitize and automate end-to-end business workflows using process mining, RPA / low-code platforms, and integration services.
Embed change management, agile delivery, design thinking, and experimentation to build a digital-first culture.
Establish governance for digital initiatives with clear success metrics (OKRs / KPIs), benefits realization, and portfolio prioritization.
Track and report on transformation KPIs and business impacts to senior leadership.
B. Business Intelligence Strategy & Delivery
Develop and implement a comprehensive BI strategy aligned with the enterprise data strategy.
Define and maintain data visualization and dashboard standards; build a cross-domain enterprise BI dashboard library.
Deliver self-service analytics capabilities, semantic models, and governed datasets for business stakeholders.
Enable data literacy through training, communities of practice, and usage / adoption programs.
Manage BI platform architecture, release lifecycle, and service management (SLAs, support, continuous improvement).
C. Advanced Analytics & AI
Define and execute the AI & advanced analytics roadmap (predictive, prescriptive, forecasting, optimization).
Establish MLOps practices for model lifecycle : data preparation, feature engineering, training, deployment, monitoring, and governance.
Integrate AI-driven insights into BI products; deploy GenAI-powered BI assistants and natural-language analytics.
Champion responsible AI principles (fairness, transparency, privacy, security) and model risk management.
Support data governance framework including ownership, quality standards, cataloging, lineage, and access controls.
Partner with Data Architecture to deliver an enterprise data portal for governed self-service access (APIs, data marketplace).
Maintain a unified semantic layer and metadata standards to ensure consistency across domains.
Ensure compliance with data privacy, security, and regulatory requirements across jurisdictions.
D. Digital & BI Center of Excellence (CoE) & Change Management
Launch and lead the Digital & BI CoE, defining operating model, roles, processes, and funding.
Provide coaching and enablement to business units; establish guilds / chapters for analytics and automation.
Embed adoption within business processes through champions, governance forums, and incentives.
E. ESG & Sustainability
Integrate ESG data and metrics into BI and reporting; support frameworks (e.g., GRI, SASB) and assurance needs.
F. Commercialization & Monetization of Analytics
Develop and manage internal / external analytics products and services; define value propositions and pricing.
Establish commercialization KPIs (usage, revenue, margin) and manage SLAs with business stakeholders and partners.
G. Digital Experience & Adoption
Enhance customer and employee digital experiences via journey mapping, personalization, and AI-enabled assistance.
Measure and improve satisfaction (CSAT / NPS), task completion, and time-to-decision through digital channels.
H. Risk, Compliance & Ethics
Ensure compliance with relevant regulations and internal policies for data, AI, and digital platforms.
Lead risk assessments for digital solutions; implement controls for model, data, and operational risks.
I. Performance & Reporting
Define measurement framework and dashboards to track digital transformation, BI adoption, automation gains, and business impact.
Report progress to senior leadership and continuously refine the roadmap based on outcomes.
Requirements
Bachelor’s or Master’s degree in Business, Information Systems, Computer Science, Data Science, or related field.
Minimum 10 years of experience leading digital transformation and BI programs; experience in regulated industries is an advantage.
Deep knowledge of digital technologies, cloud computing, agile delivery, process automation (RPA / low-code), and customer-centric design.
Hands-on experience with enterprise BI platforms (e.g., Microsoft Power BI or equivalent) and data visualization best practices.
Proven track record delivering AI / ML and predictive analytics solutions; familiarity with MLOps and GenAI applications.
Experience establishing data governance frameworks, semantic models, and enterprise data portals / self-service architectures.
Demonstrated ability to commercialize analytics services / products; financial acumen (business cases, pricing, ROI).
Strong stakeholder engagement, communication, and change leadership skills; ability to balance strategic vision with hands-on execution.
Commitment to responsible AI, data ethics, sustainability, and ESG reporting practices.
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Manager Manager • Kuala Lumpur, Kuala Lumpur, Malaysia