- Singapore, Singapore Singapore
工作地点
职位描述
岗位职责
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.
重要安全守则
申请工作时,切勿提供您的银行或信用卡详细资料。不要转账或完成无关的在线调查问卷。如果您发现可疑内容,请举报此招聘广告。