Job Role Responsibilities:
Integral team member of our Data Engineering team responsible for design and development of Big data solutions Partner with domain experts, product managers, analyst, and data scientists to develop Big Data pipelines in Hadoop or Snowflake Responsible for delivering data as a service framework
Responsible for moving all legacy workloads to cloud platform
Work with data scientist to build Client pipelines using heterogeneous sources and provide engineering services for data science applications
Ensure automation through CI/CD across platforms both in cloud and on-premises
Ability to research and assess open source technologies and components to recommend and integrate into the design and implementation
Be the technical expert and mentor other team members on Big Data and Cloud Tech stacks
Define needs around maintainability, testability, performance, security, quality and usability for data platform
Drive implementation, consistent patterns, reusable components, and coding standards for data engineering processes
Worked on languages like Python, PySpark, Scala to execute on Hadoop and non-Hadoop ecosystems
Tune Big data applications on Hadoop and non-Hadoop platforms for optimal performance
Evaluate new IT developments and evolving business requirements and recommend appropriate systems alternatives and/or enhancements to current systems by analyzing business processes, systems and industry standards.
Supervise day-to-day staff management issues, including resource management, work allocation, mentoring/coaching and other duties and functions as assigned
Appropriately assess risk when business decisions are made, demonstrating particular consideration for the firm's reputation and safeguarding Citigroup, its clients and assets, by driving compliance with applicable laws, rules and regulations, adhering to Policy, applying sound ethical judgment regarding personal behavior, conduct and business practices, and escalating, managing and reporting control issues with transparency
Skills:
5-7 years of experience:
5+ years of experience in hadoop/big data technologies.
4+ years of experience in spark.
2+ years’ experience in Snowflake
2+ year of experience working on Google or AWS cloud developing data solutions. Certifications preferred.
Hands-on experience with Python/Pyspark/Scala and basic libraries for machine learning is required;
Experience with containerization and related technologies (e.g. Docker, Kubernetes)
Experience with all aspects of DevOps (source control, continuous integration, deployments, etc.)
1 year Hadoop administration experience preferred
Comprehensive knowledge of the principles of software engineering and data analytics
Advanced knowledge of the Hadoop ecosystem and Big Data technologies Hands-on experience with the Hadoop eco-system (HDFS, MapReduce, Hive, Pig, Impala, Spark, Kafka, Kudu, Solr)
Knowledge of agile (scrum) development methodology is a plus
Strong development/automation skills
Proficient in programming in Java or Python with prior Apache Beam/Spark experience a plus.
System level understanding - Data structures, algorithms, distributed storage & compute
Can-do attitude on solving complex business problems, good interpersonal and teamwork skills
Good to have knowledge on LLM's, GEN-AI