Job Title:Quantexa Lead Data Engineer (MAX 4066)
Work location: Central
Duration: 12 months contractNo.ofRole: 1
Monthly Basic Salary: $7000 - $8000
Role: Quantexa Lead Data Engineer
Job Level: More than 6 years of relevant experience (L3/L4)
Job description
Job Title: | Location: |
Quantexa Lead Data Engineer | Singapore |
Project: | Key Skills: |
Network Link Analysis (NLA) | Quantexa certification mandatory |
Job Objectives |
We seek individuals with highly developed conceptual, strategic, and analytical skills, capable of striking a balance between visionary thinking and practical solutions. The ability to comprehend, inspire, and mobilize others is crucial.
A business-oriented mindset coupled with effective storytelling will drive your success. We are looking for self-starters ready to take on responsibilities with enthusiasm. |
Key Responsibilities |
As a Lead Data Engineer, you will play a leading role in designing, building, and optimizing our data infrastructure, ensuring that it supports the advanced analytics need of the bank.
You will oversee a team of data engineers, working closely with data analysts, DevOps team, infrastructure engineers, and other stakeholders to deliver high-quality data solution.
You will be working with Quantexa platform.
Your main responsibilities will include:
•Design, develop, and implement Spark Scala applications and data processing pipelines to process large volumes of structured and unstructured data.
• Integrate Elasticsearch with Spark to enable efficient indexing, querying, and retrieval of data.
• Optimize and tune Spark jobs for performance and scalability, ensuring efficient data processing and indexing in Elasticsearch.
• Collaborate with data engineers, data scientists, and other stakeholders to understand requirements and translate them into technical specifications and solutions.
• Design and deploy data engineering solutions on OpenShift Container Platform (OCP) using containerization and orchestration techniques.
• Optimize data engineering workflows for containerized deployment and efficient resource utilization.
• Collaborate with DevOps teams to streamline deployment processes, implement CI/CD pipelines, and ensure platform stability.
• Monitor and optimize data pipeline performance, troubleshoot issues, and implement necessary enhancements.
• Implement monitoring and logging mechanisms to ensure the health, availability, and performance of the data infrastructure.
• Document data engineering processes, workflows, and infrastructure configurations for knowledge sharing and reference.
• Stay updated with emerging technologies, industry trends, and best practices in data engineering and DevOps.
• Provide technical leadership, mentorship, and guidance to junior team members to foster a culture of continuous learning and innovation to the continuous improvement of the analytics capabilities within the bank.
|
Key Requirements •Bachelor's degree in Computer Science, Data Engineering, Information Technology, or a related field. •At least 10 years of experience as a Data Engineer, working with Hadoop, Spark, and data processing technologies in large-scale environments. •Must be Quantexa certified data engineer / data architect and proficient with the tool. •Strong expertise in designing and developing data infrastructure using Hadoop, Spark, and related tools (HDFS, Hive, Ranger, etc) •Experience with containerization platforms such as OpenShift Container Platform (OCP) and container orchestration using Kubernetes. •Proficiency in programming languages commonly used in data engineering, such as Spark, Python, Scala, or Java. •Knowledge of DevOps practices, CI/CD pipelines, and infrastructure automation tools(e.g., Docker, Jenkins, Ansible, BitBucket) •Experience with Grafana, Prometheus, Splunk will be an added benefit •Strong problem-solving and troubleshooting skills with a proactive approach to resolving technical challenges. •Excellent collaboration and communication skills to work effectively with cross-functional teams. •Ability to manage multiple priorities, meet deadlines, and deliver high-quality results in a fast-paced environment. •Experience with cloud platforms (e.g., AWS, Azure, GCP) and their data services is a plus. |