- Singapore
Working Location
Job Description
Responsibilities
SCOPE OF THE ROLE
You will be responsible for end-to-end delivery of enterprise data and analytics solutions leveraging traditional and modern Data architecture. Experience with Financial Crime Analytics, Finance & Credit Risk Analytics, Credit Scoring & Decision systems, Retail & Wholesale Datamarts will of advantage
The role spans requirements analysis, solution design, testing, implementation, and production support ensuring high-quality, scalable, and compliant data platforms that support advanced analytics and AI initiatives.
TECHNICAL SKILLSETS
Certifications
At least two relevant technical certifications across data platforms, cloud, or analytics technologies.
Data Platforms & Architecture
• Open table formats: Apache Iceberg, Delta Lake, Apache Hudi
• Distributed processing & query engines: Spark, Trino/Presto, Hive
• Cost optimization strategies: tiered storage, lifecycle management, workload governance
Programming & Analytics
• SQL, BTEQ, GCFR
• Python (Pandas, NumPy)
• BI & visualization tools: Power BI, QlikSense
Data Integration & Quality (Optional)
• Informatica suite: PowerCenter, BDM, IDQ, Enterprise Data Catalogue
• Data ingestion patterns: batch, CDC, streaming
• Data validation, quality controls, and reconciliation frameworks within environments
Governance, Risk & Compliance
• Data modelling, critical data elements, regulatory reporting
• Fine-grained data access controls (row-level, column-level, masking)
• Metadata management, lineage, and impact analysis
• Compliance with BCBS 239, MAS, AML/CFT, and internal data standards
Big Data Platforms
• Cloudera Hadoop distribution: Hive, Impala, Spark, Iceberg, Trino
Key Responsibilities
• Lead end-to-end solution delivery for data and analytics across the full SDLC.
• Analyze business and regulatory requirements, translate them into scalable solution designs & provide estimations.
• Communicate complex technical and architectural concepts to business and senior stakeholders in a clear, simplified manner.
• Review and approve test strategies, functional test cases, and data validation approaches.
• Manage risks and issues related to scope, data quality, regulatory commitments, and delivery timelines.
• Participate in product and platform evaluations (RFPs, PoCs) for data, analytics, and AI tooling.
• Partner with production support team to conduct root cause analysis, resolution, and preventive controls.
• Lead innovation and modernization initiatives, including data discovery, cataloguing, governance, and AI enablement.
• Drive productivity, efficiency & quality improvements across delivery and operational processes.
• Ability to design data architectures supporting NLP and AI-driven analytics.
Important Information
Never provide your bank or credit card details when applying for jobs. Do not transfer any money or complete unrelated online surveys. If you see something suspicious, Report this Job ad.