We are looking for a Data Engineer to design and build a robust set of tools and pipelines to support data analytics efforts. You'll manage and optimize our core infrastructure by creating and maintaining data pipelines. You will work with other engineers and analysts from to design, implement, and maintain a data ecosystem that delivers actionable insights to make key business decisions. You have technical chops but can also work independently to prioritize issues, work within ambiguity, and manage conflicting deadlines. You are creative, data-driven, results-oriented, and eager to help us solve data problems of varying complexities. We are open to a Senior or Principal title as well, based on experience level.
Develop technical solutions using proven techniques in data and analytics processes
Develop, prototype, and build frameworks based on open source and commercially available tools
Orchestrate and maintain data pipelines that meet security standards and ensure the integrity and quality of data
Demonstrate a passion for serving the needs of internal and external customers by enabling them with self-service reporting tools and analytics capabilities
Drive the execution of data initiatives that provide key performance metrics
Understand the data related challenges, nuances, and requirements to identify and recommend the optimal technical approach
Train and educate team members as well as stakeholders about best practices in data engineering and governance
Collaborate closely with the engineering and devops team to implement DataOps, thus reducing our analytics development cycle
Research and improve our data platform to ingest, process, transform, and distribute insightful data to our audience ranging from executives, analysts, and engineers to customers, vendors, and partners
Evangelize data driven culture by breaking down silos and encouraging data sharing
The qualifications below are ideal, but not all are required. We encourage candidates to apply if they satisfy some, but not all of the qualifications.
3+ years of hands-on experience in data engineering for a SaaS company or a mature startup
Proven experience working with various tools but more importantly, familiarity with how to best assemble and deploy production ready data stack to any cloud environment
BS in a quantitative or scientific field such as computer science, computer engineering or equivalent experience
Experience in applying agile software development approach - Git, CI/CD, Jira, etc - to data engineering
Expertise with the Python library
Exceptional fluency with SQL; you conquered the join venn diagram long ago and have moved on to explaining cost based optimization to your peers on the engineering team
Some level of experience working in the cloud - AWS, Azure, or GCP
Experience with ingesting, processing, and visualizing data sources of varying types - structured/relational and unstructured
Experience in developing, managing, and manipulating large, complex datasets
Data-driven, detail-oriented individual with excellent storytelling and problem-solving abilities
Ability to work independently and autonomously, as well as part of a team
Superb time management, prioritization of tasks and ability to meet deadlines with little supervision
Ideal candidate will thrive in the following culture:
Must have an obsession for building quality products
Ability to thrive when there are changing priorities and shifting of gears
Strong oral and written communication skills
Must be a team player with a strong, self-managing work ethic
Must be a self-starter with a passion for data, learning and continuous improvement
Note that candidates must be located in the continental U.S.
Devoteam
Dataroid
Carglass® Germany
fabric
Floy