Data Governance Analyst

ABOUT CLIENT

Our client is a reputable company in the investment field

JOB DESCRIPTION

The Data Governance Analyst position entails primarily managing data governance functions, as well as providing support for other data management duties. This role involves overseeing data stewardship activities, including the establishment of data policies and the management of data quality. The main focus will be on ensuring the integrity, security, quality, and performance of data assets within the investment services environment.
 
Key responsibilities of the role include:
Establishing and enforcing data management policies and standards specifically tailored to investment datasets and enterprise data assets overall.
Collaborating with various stakeholders to establish and enforce internal data governance processes and controls, including data lifecycle, ownership, and usage policies.
Working with IT security and application security teams to evaluate and address data security risks, while ensuring data privacy and security controls across datasets.
Defining and managing metadata and lineage tracking policies for investment service applications and platforms.
Ensuring the maintenance of master data, reference data, and data quality in daily operations.
Keeping the data glossary current, alongside use-case development and changes.
Developing and maintaining data pipelines for operational and analytical requirements.
Monitoring data quality, reliability, and performance across data pipelines.
Collaborating with the data engineering team to report and resolve data quality issues.

JOB REQUIREMENT

Qualifications and skills needed:
A bachelor's degree in finance, data management or related fields.
3+ years of experience in data governance or data engineering/analysis.
Knowledge of data governance frameworks, data modeling, data architecture, data quality tools, and metadata management.
Advanced SQL knowledge and relational databases.
Familiarity with Azure DevOps in project management, version control, CICD, etc.
Strong analytical, problem-solving, and communication skills.
Proven ability to handle multiple tasks and work at a fast pace.
 
Experience required:
3+ years in data governance and/or data-related roles.
Proven track record in implementing data governance policies and managing data assets.
Experience in performing root cause analysis on internal and external data processes.
Experience supporting and working with cross-functional teams in a dynamic environment.
Knowledge of at least one reporting tool such as Power BI is a plus.
Familiarity with at least one programming language such as Python.
 
Advantages (but not mandatory):
Certification/qualification in data governance or data engineering in Azure cloud services.
Experience with NoSQL databases and streaming data processing.
Exposure to data management platforms in the investment service sector.

WHAT'S ON OFFER

Attractive salary package
Additional bonus and yearly performance-based incentives
Generous annual and sick leave entitlement
Comprehensive healthcare coverage
Provision of a laptop
Opportunities for career advancement and access to training programs
Additional benefits will be disclosed during the offer phase

CONTACT

PEGASI – IT Recruitment Consultancy | Email: recruit@pegasi.com.vn | Tel: +84 28 3622 8666
We are PEGASI – IT Recruitment Consultancy in Vietnam. If you are looking for new opportunity for your career path, kindly visit our website www.pegasi.com.vn for your reference. Thank you!

Job Summary

Company Type:

Product

Technical Skills:

Data Analyst

Location:

Ho Chi Minh - Viet Nam

Working Policy:

Onsite

Salary:

Negotiation

Job ID:

J01304

Status:

Close

Related Job:

Data Analyst

Ho Chi Minh - Viet Nam


Offshore

  • Data Analyst

Gather, sanitize, and evaluate data from diverse origins to meet business requirements. Construct and maintain fundamental analytical datasets and reports for different teams. Validate and verify data to uphold accuracy, consistency, and dependability. Apply statistical and analytical methods to identify patterns and potential opportunities. Work closely with business stakeholders to grasp needs and provide actionable insights. Carry out thorough analyses of customer behavior, product usage, and market trends. Translate intricate data findings into clear, influential recommendations for business strategies. Support data-informed decision-making across various teams including marketing, operations, finance, and product teams. Create dashboards and Key Performance Indicator (KPI) tracking tools for monitoring business performance. Devise and conduct experiments (e.g., A/B tests) to evaluate initiatives. Deliver insights in a clear and convincing manner to both technical and non-technical audiences. Encourage data literacy by aiding colleagues in understanding and utilizing analytical tools. Share best practices in data analysis, visualization, and reporting. Contribute to documentation and training to elevate organizational analytics proficiency. Allocate time to cross-team projects aimed at enhancing company-wide data capabilities.

Negotiation

View details

Engineering Manager (Data Platform)

Ho Chi Minh - Viet Nam


Offshore

  • Data Engineering
  • Management

Agile Team Leadership: Guide and coach Agile teams to uphold engineering standards, manage sprint backlogs, clarify responsibilities, ensure code quality, enforce development guardrails, and drive rigorous testing practices. Agile Data Delivery: Oversee Agile execution across data platforms, maintaining excellence in data quality, testing, code review practices, CI/CD pipelines, documentation, and operational readiness. Cross-Functional Collaboration: Partner with data architects, product managers, analytics teams, platform engineers, and governance stakeholders to deliver data capabilities aligned with business priorities. Roadmap Ownership: Lead the execution of the data engineering roadmap, balancing immediate delivery needs with long-term platform sustainability. Architecture & Design: Contribute to the design of data platform architecture across ingestion, transformation, storage, and consumption layers. Engineer Development: Coach engineers to become T-shaped professionals, capable of working across batch processing, streaming, analytics engineering, and platform operations. Technical Debt Remediation: Own and prioritize the resolution of technical and data debt, including legacy pipelines, performance bottlenecks, and data quality issues. Modern Practices: Stay current with evolving data engineering tools, methodologies, and patterns-particularly within the Databricks ecosystem. Lifecycle Accountability: Ensure end-to-end ownership of data solutions, from design and build through deployment, monitoring, and ongoing support. Team Empowerment: Foster self-sufficient, disciplined teams accountable for the reliability and resilience of data products. Process Excellence: Lead initiatives to enhance data delivery through automation, observability, and operational best practices. Continuous Improvement: Inspire teams to innovate, experiment, and embrace continuous delivery as part of their culture. Career Growth: Drive career development for data engineers, partnering with HR to manage performance and define growth pathways.

Negotiation

View details

Product Manager (Data & Models)

Ho Chi Minh - Viet Nam


Product

  • Product Management
  • AI

Designing data strategy and model integration for creating efficient data pipelines, evaluation frameworks, and annotation systems to maintain high-performance LLMs. Responsible for ensuring data quality standards and implementing bias mitigation and privacy-preserving techniques. Defining the product's core model roadmaps, taking into account technical feasibility, user needs, and ethical considerations. Collaboration with researchers to incorporate experimental breakthroughs into deployable features. Partnering with Engineering and Research teams to ensure model development aligns with product goals and advocating for transparency in model decision-making to build user trust. Analyzing usage patterns from open-source communities (Discord, Reddit, GitHub) to refine model behavior and address real-world edge cases, contributing to community-driven model evolution. Setting performance benchmarks, cost efficiency, and resource utilization standards for model scalability and reliability.

Negotiation

View details