Big Data Administrator

ADECCO PERSONNEL PTE LTD

Summary of Position

He/She will be a technical L2 resource for all Big Data services and will provide support for all production support activities within the Big Data team in Singapore.

Will work with L3/Service Manager to gain control over the scope of technical activities, develop best practices and gain knowledge over all aspects of support.

As a L2 resource of his /her team, he /she:

  • Takes up technical tasks and also manages delegation for technical issues within the team,
  • animates the team to encourage collaboration and sharing of best practices,
  • supports new technologies and leverages them to provide consistency of service across streams,
  • proposes service improvements for all Big Data services supported throughout the organization,
  • documents, reviews, maintains and shares relevant technical information within the team
  • provides technical knowledge, supports services both proactively and reactively to maintain the availability and reliability of system infrastructure in accordance to the SLA,
  • Actively engages during any high severity issue and drives for issue resolution.
  • reviews technology changes to identify potential risks,

As an experienced professional in Big Data Services, he/she:

  • supports his/her team during diagnosis when technical issues rise in his/her scope of expertise,
  • is aware of the global IT structure so that he/she anticipates interrelationships within the organization,
  • engages with technical peer, Development team, Service managers, Architect and project teams on technology roadmap and projects,
  • facilitates transformation projects and suggest future directions for new areas of improvement and change,
  • guarantees the production readiness and license to operate of new projects and solutions
  • is available and able to drive technically, any complex or high severity incidents that occur within the scope of their role
  • technically coach and develop partner resources to improve quality and productivity,

Candidate profile

Mandatory track record

  • Administer and manage Redis clusters for low-latency caching and real-time transaction processing.
  • Manage MongoDB clusters (replication, sharding) for scalable transaction and semi-structured data storage.
  • Working knowledge of Hadoop ecosystem (Hadoop, Hive, Pig, Oozie, Hbase, Flume, sqoop) using both automated tool sets as well as manual processes.
  • Support and maintain Hadoop (HDP) clusters for batch processing, analytics, and regulatory reporting.
  • Perform cluster lifecycle management: provisioning, scaling, patching, and decommissioning nodes.
  • Ensure 24x7 availability and resilience of production systems supporting payment flows.
  • Manage and optimize Apache Kafka for high-throughput, real-time payment event streaming.
  • Ensure data consistency and fault tolerance across streaming pipelines.
  • Support Apache NiFi for ingestion pipelines from upstream payment systems and external partners.
  • Work with AWS EMR for scalable processing of transaction data and reconciliation workloads.
  • Administer HDFS, ensuring optimal replication, storage utilization, and fault tolerance.
  • Monitor and tune MapReduce and YARN workloads to handle large-scale transaction data efficiently.
  • Ensure proper configuration and validation of jobs handling payment clearing, settlement, and reporting.
  • Manage OpenSearch / Elasticsearch clusters for transaction search, audit trails, and operational dashboards.
  • Optimize indexing and query performance for near real-time analytics and monitoring.
  • Implement Kerberos-based authentication and secure access controls across the Hadoop ecosystem.
  • Manage user provisioning (Linux + Hadoop stack) ensuring least-privilege access.
  • Ensure compliance with banking regulations, audit requirements, and data governance policies.
  • Monitor cluster security, encryption, and network connectivity.
  • Conduct capacity planning aligned with transaction growth and peak payment volumes.
  • Optimize systems for low latency and high throughput, critical for digital payments.
  • Identify bottlenecks and implement performance tuning strategies across platforms.
  • Ensure high availability through failover mechanisms, DR strategies, and proactive monitoring.
  • Develop and maintain runbooks, SOPs, and architecture documentation.
  • Define and enforce best practices for cluster operations, deployments, and data pipelines.
  • Contribute to continuous improvement initiatives and knowledge sharing.
  • Excellent communication, interpersonal and logical skills
  • Customer service oriented and a strong team player
  • Ability to work under pressure and a commitment to solving issues

Required Skills & Experience

•6+ years of experience in Big Data / Data Platform Engineering in enterprise environments.

•Strong hands-on experience with:

•Hadoop ecosystem (HDFS, YARN, MapReduce, HDP)

•Apache Kafka (high-throughput environments)

•Redis and MongoDB clusters

•OpenSearch / Elasticsearch

•Apache NiFi

•AWS EMR + good knowledge of AWS Cloud.

•Strong expertise in Linux system administration and scripting (Shell/Python)

•Experience with Kerberos, data security, and access governance

•Proven experience in handling high-volume, low-latency systems (preferably payments/trading)

Work Schedule

Work schedule is mainly focused to support Asia and EMEA (Paris) time zone; however, may have to support during non-office hours/ weekends/ public holidays for critical incidents or escalation as per the assigned on-call support requirements;

Shift schedule is followed;

7am to 4pm or 2 PM – 11 PM or 4pm to 1am.

If interested, you can click on “Apply here” or write an e-mail to ***email_hidden*** with your updated resume.

NOTE: - Only shortlisted candidates will be contacted back.

Thanks & Regards

Deeksha Agarwal

EA Licence No.91C2918

Personnel Registration No. R26161520