Manus AI Logo

Manus AI

Data Engineer

Reposted 22 Days Ago
Be an Early Applicant
In-Office
Singapore, SGP
Mid level
In-Office
Singapore, SGP
Mid level
The Data Engineer will optimize data infrastructure, develop scalable ETL processes, establish data governance, and collaborate with data teams to ensure data accuracy and performance.
The summary above was generated by AI
Job Summary

We are looking for an experienced Data Engineer to take ownership of our data infrastructure's efficiency, performance, and reliability. The ideal candidate will be responsible for auditing our current systems, identifying areas for improvement, and implementing robust solutions to ensure our data is both performant and trustworthy. This role is critical in establishing a "ground truth" data source that will empower our data analytics and data science teams to derive actionable insights with confidence. You will be instrumental in building and maintaining a scalable and resilient data ecosystem that supports the company's strategic objectives.

Key Responsibilities

Infrastructure Auditing & Optimization

- Conduct comprehensive audits of the existing data infrastructure to assess its efficiency, scalability, and performance.

- Identify and analyze performance bottlenecks, and propose and implement optimization strategies.

- Re-design and modernize data pipelines for greater scalability and reduced latency.

- Implement monitoring and alerting systems to proactively identify and address infrastructure issues.

Data Pipeline & ETL Development

- Design, build, and maintain robust and scalable ETL/ELT processes to ingest data from a wide variety of sources.

- Assemble large, complex datasets that meet both functional and non-functional business requirements.

- Automate manual data processes to improve efficiency and reduce the potential for human error.

Ground Truth Data Source Management

- Establish and maintain a centralized, reliable source of truth for all key business data.

- Implement rigorous data quality checks and validation processes to ensure data accuracy and consistency.

- Develop and enforce data governance best practices, including data lineage and metadata management.

Collaboration & Support

- Work closely with data scientists, data analysts, and other stakeholders to understand their data requirements and provide them with the data they need.

- Build analytical tools and provide technical support to assist teams in leveraging the data infrastructure effectively.

- Act as a subject matter expert on data engineering best practices and advocate for their adoption across the organization.

Skills and Qualifications

The following skills and qualifications are required for this role:

Educational Background: A Bachelor's degree in Computer Science, Engineering, or a related technical field.

Professional Experience: A minimum of 3-5 years of hands-on experience in a data engineering role.

Technical Proficiencies:

•Programming: Advanced proficiency in Python, with experience in either Java or Scala being a plus.

•SQL: Expertise in writing complex, highly-optimized SQL queries across large datasets.

•Cloud Platforms: Demonstrable experience with at least one major cloud platform, such as AWS (Redshift, S3, EC2), Google Cloud Platform (BigQuery, Dataproc), or Azure.

•Big Data Technologies: Hands-on experience with big data tools like Apache Spark, Hadoop, and Kafka.

•Data Warehousing: Experience with modern data warehousing solutions such as Snowflake, Redshift, or BigQuery.

Soft Skills:

•Excellent problem-solving and analytical skills.

•Strong communication and collaboration abilities, with a knack for explaining complex technical concepts to non-technical audiences.

•A proactive and self-motivated work ethic, with a strong sense of ownership and a commitment to delivering high-quality results.

Preferred Qualifications

While not mandatory, the following qualifications will be highly regarded:

•A Master's degree in a relevant technical field.

•Professional certifications in cloud technologies (e.g., AWS Certified Data Analytics, Google Professional Data Engineer).

•Experience with data orchestration tools such as Airflow or Prefect.

•Familiarity with containerization technologies like Docker and Kubernetes.

•A solid understanding of data modeling principles and best practices.

What We Offer

provides a competitive salary and benefits package, a flexible work environment, and a culture that fosters innovation and professional growth. We are an equal opportunity employer and value diversity at our company.

Manus AI Singapore Office

Similar Jobs

2 Days Ago
In-Office
Singapore, SGP
Junior
Junior
Artificial Intelligence • Hardware • Information Technology • Machine Learning
Responsible for building and maintaining data pipelines, optimizing data structures, and developing ETL processes with AI support for data analytics applications.
Top Skills: Apache Ni-FiC#C++Ci/CdData EngineeringDockerETLGitGoogle Cloud PlatformHadoopJavaJenkinsKubernetesNoSQLPythonSnowflakeSQL
2 Days Ago
In-Office
Singapore, SGP
Junior
Junior
Artificial Intelligence • Hardware • Information Technology • Machine Learning
This role involves building and maintaining data pipelines, developing ETL processes, optimizing data structures, and utilizing AI for enhanced data analytics.
Top Skills: Apache Ni-FiAspC#C++Ci/Cd ToolsDockerFlumeGitGoogle Cloud PlatformHadoopHbaseHiveJavaJavaScriptJenkinsKubernetesMapreduceMssqlMySQLOraclePerlPHPPigPythonSnowflakeSqoopYarn
Yesterday
In-Office
Singapore, SGP
Senior level
Senior level
Information Technology
The Data Engineer will optimize data architecture, improve data flow for teams, and support analytics initiatives with large data sets.
Top Skills: ETLHadoopHiveJavaJavaScriptLinuxMapreduceMatlabNoSQLPrestoPythonRSASSQLUnix

What you need to know about the Singapore Tech Scene

The digital revolution has driven a constant demand for tech professionals across industries like software development, data analytics and cybersecurity. In Singapore, one of the largest cities in Southeast Asia, the demand for tech talent is so high that the government continues to invest millions into programs designed to develop a talent pipeline directly from universities while also scaling efforts in pre-employment training and mid-career upskilling to expand and elevate its workforce.

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account