Lead Data Engineer - Singapore - GXS Bank

GXS Bank
GXS Bank
Verified Company
Singapore

2 weeks ago

Wei Jie

Posted by:

Wei Jie

beBee Recruiter


Description

  • GXS Bank
Singapore

Posted 1 day ago Flexible Permanent Competitive Package

  • POSTED BY
  • Jing Heng Sim
  • Talent Acquisition Business PartnerFollow

Get to know our Team:

We are living in dynamic times. Technology is reshaping how we live, and we want to use it to redefine how financial services are offered. Grab is the leading technology company in Southeast Asia offering everyday services to the masses. Singtel is Asia's leading communications group connecting millions of consumers and enterprises to essential digital services.

This is why we are coming together to unlock big dreams, and financial inclusion for people in our region is just one of them.

We want to build a digital bank with the right foundation - using data, technology and trust to solve problems and serve customers.

If you have what it takes to help build this new Digibank with us.


Get to know the Role:


As the Lead Data Engineer in the Data Technology team, you will be working on all aspects of Data, from Platform and Infra build out to pipeline engineering and writing tooling/services for augmenting and fronting the core platform.

You will be responsible for building and maintaining the state-of-the-art data Life Cycle management platform, including acquisition, storage, processing and consumption channels.

The team works closely with Data scientists, Product Managers, Finance, Legal, Compliance and business stakeholders across the SEA in understanding and tailoring the offerings to their needs.

As a member of the Data Tech team, you will be an early adopter and contributor to various open source big data technologies and you are encouraged to think out of the box and have fun exploring the latest patterns and designs in the fields of Software and Data Engineering.


The day-to-day activities:


  • Build and manage the data asset using some of the most scalable and resilient open source big data technologies like Airflow, Spark, Snowflake, Kafka, Kubernetes, ElasticSearch, Superset and more on cloud infrastructure.
  • Design and deliver the nextgen data lifecycle management suite of tools/frameworks, including ingestion and consumption on the top of the data lake to support realtime, APIbased and serverless usecases, along with batch (mini/micro) as relevant
  • Build and expose metadata catalog for the Data Lake for easy exploration, profiling as well as lineage requirements
  • Enable Data Science teams to test and productionize various ML models, including propensity, risk and fraud models to better understand, serve and protect our customers. Lead technical discussions across the organization through collaboration, including running RFC and architecture review sessions, tech talks on new technologies as well as retrospectives

The must haves:


  • At least 4+ years of relevant experience in developing scalable, secured, distributed, fault tolerant, resilient & missioncritical Big Data platforms.
  • Able to maintain and monitor the ecosystem with 99.99% availability
  • Must have good fundamental handson knowledge of Linux and building a big data stack on top of AWS using Kubernetes.
  • Proficiency in at least one of the programming languages Python, Scala or Java.
  • Strong understanding of big data and related technologies like Spark, Airflow, Kafka etc.
  • Experience with NoSQL databases
  • KV, Document and Graph
  • Able to drive devops best practices like CI/CD, containerization, bluegreen deployments, 12factor apps, secrets management etc in the Data ecosystem.
  • Good understanding of Machine Learning models and efficiently supporting them is a plus.

More jobs from GXS Bank