Lead Data Engineer at Capital One solving complex business problems with data and emerging technologies. Collaborating across Agile teams to deliver cloud-based technical solutions.
Responsibilities
Collaborate with and across Agile teams to design, develop, test, implement, and support technical solutions in full-stack development tools and technologies
Work with a team of developers with deep experience in machine learning, distributed microservices, and full stack systems
Utilize programming languages like Java, Scala, Python and Open Source RDBMS and NoSQL databases and Cloud based data warehousing services such as Redshift and Snowflake
Share your passion for staying on top of tech trends, experimenting with and learning new technologies, participating in internal & external technology communities, and mentoring other members of the engineering community
Collaborate with digital product managers, and deliver robust cloud-based solutions that drive powerful experiences to help millions of Americans achieve financial empowerment
Perform unit tests and conduct reviews with other team members to make sure your code is rigorously designed, elegantly coded, and effectively tuned for performance
Requirements
Bachelor’s Degree
At least 4 years of experience in application development (Internship experience does not apply)
At least 2 years of experience in big data technologies
At least 1 year experience with cloud computing (AWS, Microsoft Azure, Google Cloud)
7+ years of experience in application development including Python, SQL, Scala, or Java (Preferred)
4+ years of experience with a public cloud (AWS, Microsoft Azure, Google Cloud) (Preferred)
4+ years experience with Distributed data/computing tools (MapReduce, Hadoop, Hive, EMR, Kafka, Spark, Gurobi, or MySQL) (Preferred)
4+ year experience working on real-time data and streaming applications (Preferred)
4+ years of experience with NoSQL implementation (Mongo, Cassandra) (Preferred)
4+ years of data warehousing experience (Redshift or Snowflake) (Preferred)
4+ years of experience with UNIX/Linux including basic commands and shell scripting (Preferred)
2+ years of experience with Agile engineering practices (Preferred)
Benefits
Performance based incentive compensation
Comprehensive, competitive, and inclusive set of health, financial and other benefits that support your total well-being
Senior Data Engineer (AWS) with expertise in Python and data services. Working on enterprise - scale data processing and analytics initiatives in a hybrid model.
Senior Data Engineer overseeing Data Warehouse and Data Architecture at a leading fintech client. Driving scalability and supporting data needs across multiple markets.
Principal Engineer providing leadership and clean solutions based on Big Data applications at Syneos Health. Engaging with clients and ensuring adherence to best practices in cloud solutions.
Senior Data Engineer / Data Architect at Node.Digital focusing on designing data architectures and managing pipelines. Collaborating across teams to support enterprise application delivery.
Data Engineering Lead responsible for data pipeline design and optimization at Mars. Leading a talented team to drive impactful data solutions across North America.
Data Engineering Developer intern participating in secure data flow creation at Intact. Collaborating on data engineering using Python and cloud technologies for an enterprise data platform.
Data Engineer responsible for building and maintaining data transformation pipelines at OnePay. Collaborating across teams in a mission - driven fintech environment.
Senior Developer within Enterprise Data Management at LPL Financial. Responsible for supporting data management projects and collaborating with business partners and developers.
Join Luminor as a Mid/Senior Data Engineer focusing on data engineering within risk and finance reporting. Design and optimize data systems supporting evolving regulatory requirements in a dynamic banking environment.
Join Luminor as a Mid/Senior Data Engineer focusing on data engineering within risk and finance reporting. Collaborate to design scalable data architectures and support regulatory requirements while enhancing data integration processes.