Job Openings S4 - Data BAU Lead

About the job S4 - Data BAU Lead

Responsibilities

We are looking for a seasoned BAU Lead - Data Engineering to lead our data operations and support function in a cloud-first environment. The ideal candidate will bring strong technical leadership, hands-on expertise in AWS and Snowflake, and proven experience in managing Business-As-Usual (BAU) data platforms, production support, and continuous improvement initiatives.

  • Develop tools to improve data flows between internal/external systems and the data lake/warehouse.
  • Work with stakeholders to understand needs for data structure, availability, scalability, and accessibility.
  • Build robust and reproducible data ingest pipelines to collect, clean, harmonize, merge, and consolidate data sources.
  • Understanding existing data applications and infrastructure architecture.
  • Build and support new data feeds for various Data Management layers and Data Lakes.
  • Evaluate business needs and requirements.
  • Support migration of existing data transformation jobs in Oracle, and MS-SQL to Snowflake.
  • Lead the migration of the existing data transformation jobs in Oracle, Hive, Impala etc. into Spark, Python on Glue etc.
  • Able to document the processes and steps.
  • Develop and maintain datasets.
  • Improve data quality and efficiency.
  • Lead Business requirements and deliver accordingly.
  • Collaborate with Data Scientists, Architect and Team on several Data Analytics projects.
  • Collaborate with DevOps Engineer to improve system deployment and monitoring process.
  • Experience in critical production support and how the BAU functions is preferred.

Requirements

Key Skills

  • Lead a team of data engineers in managing day-to-day BAU operations, production support, incident management, and platform stability.
  • Strong AWS knowledge in terms of designing new architecture and providing optimized solutions for existing ones. (S3, Glue, DMS, MWAA, AMS, IAM).
  • In-depth knowledge with respect to Snowflake and its architecture.
  • Prefer prior Experience in BAU environment.
  • Good knowledge on Airflow and MWAA.
  • Hands-on experience in SQL/Python/Pyspark.
  • Expertise in optimizing techniques in cloud environments.
  • Should have the vision on data strategy and able to deliver the same.
  • Should be able to lead the design and implementation of data management processes, including data sourcing, integration, and transformation.
  • Able to manage and lead a team of data professionals, providing guidance, mentoring and foster a collaborative and innovative team culture focused on continuous improvement.
  • To evaluate and recommend data-related technologies, tools, and platforms.
  • Collaborate with IT teams to ensure seamless integration of data solutions.
  • Should have experience in Implementing and enforcing data security protocols and ensure compliance with relevant regulations.

Required Qualifications

  • At least 8+ years of Data Engineer Experience.
  • Bachelor qualification in a computer science or STEM (science, technology, engineering, or mathematics) related field.
  • At least 5+ years of recent hands-on professional experience (actively coding) working as a Lead handling support & production issue.
  • 2+ experience with large scale datasets, data lake and data warehouse technologies such as AWS Redshift, Google BigQuery, Snowflake. Snowflake is highly preferred.
  • At least 3+ years of experience in ETL (AWS Glue), Amazon S3, Amazon RDS, Amazon Kinesis, Amazon Lambda, Apache Airflows, Amazon Step Functions.
  • Professional experience working in an agile, dynamic and customer-facing environment is required.
  • Understanding of distributed systems and cloud technologies (AWS) is highly preferred.
  • Understanding of data streaming and scalable data processing is preferred to have.
  • Strong knowledge in scripting languages like SQL, Python, UNIX shell and Spark is required.
  • Understanding of RDBMS, Data ingestions, Data flows, Data Integrations etc.
  • Technical expertise with data models, data mining and segmentation techniques.
  • Experience with full SDLC lifecycle and Lean or Agile development methodologies.
  • Knowledge of CI/CD and GIT Deployments.
  • Ability to work in team in diverse/multiple stakeholder environment.
  • Ability to communicate complex technology solutions to diverse teams namely, technical, business and management teams.

Soft Skills

  • Ability to work in a collaborative environment and coach other team members on coding practices, design principles, and implementation patterns that lead to high quality maintainable solutions.
  • Excellent communications and stake-holder management are required.
  • Ability to handle senior leadership and report to them if required.
  • Ability to work in a dynamic, agile environment within a geographically distributed team.
  • Ability to focus on promptly addressing customer needs.
  • Ability to work within a diverse and inclusive team.
  • Technically curious, self-motivated, versatile and solution-oriented.