Hiển thị 1 kết quả
Hiển thị 1 kết quả
trong
Data Engineer
Hạn ứng tuyển:
31/08/2026
Tổng quan công việc
-
Ngày đăng26/06/2026
-
Ngày hết hạn31/08/2026
-
Kinh nghiệm8+ năm
-
Bằng cấpCử nhân
-
Loại công tyOutsourcing
-
Quy mô200+
-
Hình thức làm việcHybrid
-
Quốc giaGermany
-
DomainKhác
-
Làm thêm giờKhông
-
Thời gian làm việcThứ 2 - Thứ 6 (Giờ VN)
-
Địa điểm làm việcDong Da Dist., Ha Noi / Sai Gon Ward, HCM
Mô tả công việc
Job overview and responsibility
As a Data Engineer, you will be responsible for managing, designing, and enhancing data systems and workflows that drive key business decisions. The role is focused 75% on data engineering, involving the construction and optimization of data pipelines and architectures, and 25% on supporting data science initiatives through collaboration with data science teams for machine learning workflows and advanced analytics. You will leverage technologies like Python, Airflow, Kubernetes, and AWS to deliver high-quality data solutions.
Key Activities
- Architect, develop, and maintain scalable data infrastructure, including data lakes, pipelines, and metadata repositories, ensuring the timely and accurate delivery of data to stakeholders.
- Work closely with data scientists to build and support data models, integrate data sources, and support machine learning workflows and experimentation environments.
- Develop and optimize large-scale, batch, and real-time data processing systems to enhance operational efficiency and meet business objectives.
- Leverage Python, Apache Airflow, and AWS services to automate data workflows and processes, ensuring efficient scheduling and monitoring.
- Utilize AWS services such as S3, Glue, EC2, and Lambda to manage data storage and compute resources, ensuring high performance, scalability, and cost-efficiency.
- Implement robust testing and validation procedures to ensure the reliability, accuracy, and security of data processing workflows.
- Stay informed of industry best practices and emerging technologies in both data engineering and data science to propose optimizations and innovative solutions.
Required skills and experiences
- Bachelor’s in Software Engineering or related fields
- 12+ years of experience in total
- 5+ years as a Data Engineer, hands on Python programming
]- Core Expertise: Proficiency in Python for data processing and scripting (pandas, pyspark), workflow automation (Apache Airflow), and experience with AWS services (Glue, S3, EC2, Lambda). - Containerization & Orchestration: Experience working with Kubernetes and Docker for managing containerized environments in the cloud.
- Data Engineering Tools: Hands-on experience with columnar and big data databases (Athena, Redshift, Vertica, Hive/Hadoop), along with version control systems like Git.
- Cloud Services: Strong familiarity with AWS services for cloud-based data processing and management.
- CI/CD Pipeline: Experience with CI/CD tools such as Jenkins, CircleCI, or AWS CodePipeline for continuous integration and deployment.
- Data Engineering Focus (75%): Expertise in building and managing robust data architectures and pipelines for large-scale data operations.
- Data Science Support (25%): Ability to support data science workflows, including collaboration on data preparation, feature engineering, and enabling experimentation environments.
Preferred skills and experiences
- Langchain Experience: Familiarity with Langchain for building data applications involving natural language processing or conversational AI frameworks.
- Advanced Data Science Tools: Experience with AWS Sagemaker or Databricks for enabling machine learning environments.
- Big Data & Analytics: Familiarity with both RDBMS (MySQL, PostgreSQL) and NoSQL (DynamoDB, Redis) databases.
- BI Tools: Experience with enterprise BI tools like Tableau, Looker, or PowerBI.
- Messaging & Event Streaming: Familiarity with distributed messaging systems like Kafka or RabbitMQ for event streaming.
- Monitoring & Logging: Experience with monitoring and log management tools such as the ELK stack or Datadog.
- Data Privacy and Security: Knowledge of best practices for ensuring data privacy and security, particularly in large data infrastructures.
Why Candidate should apply this position
- Competitive Compensation
- Benefits package including comprehensive medical, dental, vision and others
- Company Culture based on our Core Values
- Professional Development Training with Individual Development Plans to map out your career growth
- Opportunity to work in a global environment with diverse teams built with colleagues from around the world
- Opportunity to work with technology industry leaders in the financial services industry
- Opportunity to work for big name clients in capital markets, banking and other industries
Report to
Supervisor
Interview process
Technical interview with VN team (live coding included) -> 2 interview with clients (technical)