The Lead Data Engineer will report to the Marketing Technology (MarTech) team and will support
the development of the customer centric strategy to increase automation and the use of data and
analytics throughout the customer journeys. The candidate will be responsible for identifying
relevant data and utilizing data tools, technologies and processes to develop continuous, data driven
and automated customer communications across marketing and servicing towards omni channel
personalized customer experience vision and outcomes
Core Responsibilities
Create and manage cloud resources in AWS
Data ingestion from different data sources which exposes data using different
technologies, such as: RDBMS, REST HTTP API, flat files, Streams, and Time series
data based on various proprietary systems. Implement data ingestion and processing
with the help of Big Data technologies
Data processing/transformation using various technologies such as Spark and Cloud
Services. You will need to understand your part of business logic and implement it
using the language supported by the base data platform
Develop automated data quality check to make sure right data enters the platform and
verifying the results of the calculations
Develop an infrastructure to collect, transform, combine and publish/distribute customer
data.
Define process improvement opportunities to optimize data collection, insights and
displays.
Ensure data and results are accessible, scalable, efficient, accurate, complete and
flexible
Identify and interpret trends and patterns from complex data sets
Construct a framework utilizing data visualization tools and techniques to present
consolidated analytical and actionable results to relevant stakeholders.
Key participant in regular Scrum ceremonies with the agile teams
Proficient at developing queries, writing reports and presenting findings
Mentor junior members and bring best industry practices
Qualifications
5-7+ years’ experience as data engineer in consumer finance or equivalent industry
(consumer loans, collections, servicing, optional product, and insurance sales)
Strong background in math, statistics, computer science, data science or related
discipline
Advanced knowledge one of language: Snowflake,Java, Scala, Python, C#
Production experience with: HDFS, YARN, Hive, Spark, Kafka, Oozie / Airflow, Amazon
Web Services (AWS), Docker / Kubernetes, Snowflake
Proficient with
Data mining/programming tools (e.g. SAS, SQL, R, Python)
Database technologies (e.g. PostgreSQL, Redshift, Snowflake. and
Greenplum)
Data visualization (e.g. Tableau, Looker, MicroStrategy)
Comfortable learning about and deploying new technologies and tools.
Organizational skills and the ability to handle multiple projects and priorities
simultaneously and meet established deadlines.
Good written and oral communication skills and ability to present results to non-
technical audiences
Knowledge of business intelligence and analytical tools, technologies and techniques.
Familiarity and experience in the following is a plus:
AWS certification
Spark Streaming
Kafka Streaming / Kafka Connect
ELK Stack
Cassandra / MongoDB
CI/CD: Jenkins, GitLab, Jira, Confluence other related tools