Mô tả công việc
Job Purpose
- The job holder is responsible for designing and developing programs, algorithms and automated processes to cleanse, integrate and evaluate large datasets from disparate sources and implement complex business logic as needed with the available data processing tools.
- The job holder will be responsible for integrating new data sources to increase throughput of existing systems, managing data pipelines that facilitate robust analysis, and sourcing và preparing data to ensure data completeness on metadata platforms.
Key Accountabilities (1)Data Architecture
- Build the best practices and strategies for data infrastructure to fulfill data analytic and utilization needs of the business with emerging latest technologies and capabilities.
- Oversee the review of internal and external business and product requirements for data operations and activity and suggests changes and upgrades to systems and storage to accommodate ongoing needs.
- Evaluate various data architectures in the bank and utilize them to develop data solutions to meet business requirements.
- Deliver functionality required for business and data analysts, data scientists and other business roles to advance the overall analytic performance and strategy of the bank
- Proactively drive the effort of identifying opportunities to manage data and provide solutions for complex data feeds within the bank.
- Drive the delivery of data products and services into systems and business processes in compliance with internal regulatory requirements.
Key Accountabilities (2)Data Integration
- Strategically obtain and integrate data and information from various sources into the firm’s platforms, solutions and statistical models.
- Design, build, and maintain optimized data pipelines and ETL solutions as business support tools in providing analysis and real time analytics platform for critical decision making.
- Lead discussion with Data Scientists to understand the data requirements and create re- usable data assets to enable data scientists to build and deploy machine learning models faster.
- Ensure data assets are organized and stored in an efficient way so that information is high quality, reliable, flexible, and efficient.
Key Accountabilities (3)Project Management
- Work with team leads to resolve people problems and project roadblocks, conduct post mortem and root cause analysis to help squads continuously improve their practices to ensure maximum productivity.
- Manage project conflicts, challenges and dynamic business requirements to keep operations running at high performance.
Talent Development
- Mentor and coach junior fellows into fully competent Data Engineers.
- Identify and encourage areas for growth and improvement within the team.