OverviewThe Data Engineerย on the Nebula teamย plays a critical role in building and evolving the data foundation that powers analytics, reporting, AI development, and operational decision-making across the organization. This roleย is responsible forย designing, building, andย maintainingย reliable, scalable, and flexible data systems that support a wide range of internal and external use cases.ย
Working across data ingestion, transformation, storage, modeling, and delivery, this individual partners closely with Product, Engineering, AI, Analytics, and domain Subject Matter Experts (SMEs) to translate complex business processes and data needs into production-ready data pipelines and platforms.ย
This role contributes to the development and evolution of core data capabilities, including batch and real-time pipelines, operational and analytical data stores, semantic models, and BI-ready datasets. Successย requiresย strong technical depth across modern data tooling, sound systems thinking, and the ability to build reliable solutions in a cloud-based, regulated, high-stakes environment.ย
The Data Engineer is expected toย operateย effectively in a modern engineering environment, using automation, observability, and infrastructure-as-code practices to deploy, manage, and improve data pipelines and data platforms. In parallel, this individual will help enable downstream analytics, reporting, product capabilities, and AI systems by ensuring that data is trustworthy, accessible, and fit for purpose.
This is a fully remote position that offers a competitive salary range of $140,000 to $240,000 USD, plus an annual bonus. You'll also receive our excellent benefits package, which includes medical coverage starting on day one and a company-matched 401(k). Compensation may vary based on experience, location, and other job-related factors.
ResponsibilitiesData Pipeline Developmentย
- Design, build, andย maintainย robust data pipelines for a wide variety of input and output sources, including internal systems, third-party platforms, files, APIs, event streams, and databasesย
- Develop scalable ETL and ELT workflows for both batch and real-time processingย
- Ensure pipelines are reliable, testable, observable, and easy to extend as business needs evolveย
- Build reusable data integration patterns that support growing volumes, new source systems, and downstream consumers across analytics, applications, and AI initiativesย
Data Platform & Storageย
- Design and manage data architectures that support OLTP, OLAP, and reporting workloads across operational and analytical environmentsย
- Build andย optimizeย data models, warehouse schemas, and curated datasets for analytics and BI use casesย
- Contribute to the design and operation of modern data platforms, including warehouses,ย lakehouses, streaming systems, and supporting orchestration frameworksย
- Help define patterns for data storage, partitioning, performance optimization, retention, and lifecycle managementย
Cloud Deployment & Operationsย
- Deploy,ย operate, and improve data pipelines and data stores on major cloud platforms such as AWS, GCP, or Azureย
- Use infrastructure-as-code, CI/CD, and automation practices to improve deployment speed, consistency, and reliabilityย
- Monitor production data systems using logging, alerting, and observability tooling to proactivelyย identifyย and resolve issuesย
- Support secure, resilient, and cost-conscious operation of cloud-based data infrastructureย
Data Quality, Reliability & Governanceย
- Implement data quality checks, validation rules, reconciliation processes, andย monitoringย to ensure trustworthy data across systemsย
- Establish andย maintainย standards for lineage, documentation, metadata, schema evolution, and operational runbooksย
- Partner with stakeholders to improve data accessibility, consistency, and usability whileย maintainingย appropriate controlsย and governanceย
- Contribute to practices that support security, privacy, auditability, and compliance in a regulated environmentย
Cross-Functional Collaborationย
- Partner closely with Product, Engineering, and business stakeholders to understand data needs, workflows, and constraintsย
- Translate business and operational requirements into clean, scalable, and maintainable data solutionsย
- Support downstream consumers of data, including analysts,ย researchers,ย product teams, and operational usersย
- Communicate clearly with both technical and non-technical stakeholders about data availability, quality, tradeoffs, and delivery timelinesย
Iteration & Continuous Improvementย
- Continuously improve pipeline performance, reliability, scalability, and developer productivityย
- Identifyย opportunities to simplify architecture, reduce operational toil, and improve data platform leverage across teamsย
- Operate with a strong bias toward action and iterative delivery, moving quickly from problem definition to implementation and improvementย
- Help raise the bar on engineering quality through thoughtful design, testing, documentation, and operational disciplineย
Qualifications- 2-4+ย years of experience building and operating production-grade data pipelines and data systemsย
- Strong experience with industry-standard tools and platforms for ETL/ELT, orchestration, data warehousing, streaming, and BIย
- Experience working with both OLTP and OLAP systems, with a strong understanding of the tradeoffs between transactional and analytical workloadsย
- Experience building flexible data pipelines that integrate with many different source and destination types, including databases, APIs, files, message queues, SaaS platforms, and event streamsย
- Experience supporting both batch and real-time data processing patternsย
- Experience deploying and operating data infrastructure on major cloud platforms such as AWS, GCP, or Azureย
- Strong SQL skills and experience with data modeling, transformation frameworks, and performance optimizationย
- Experience building AI-powered capabilities on top of LLMs, including orchestration, evaluation, andย dataย integration patternsย
- Experience with modern programming languages commonly used in data engineering, such as Python, Java, Scala, or Goย
- Comfort working with CI/CD, infrastructure-as-code, observability, and production operations for data systemsย
- Strong judgment in ambiguous environments where requirements evolve and systems must balance speed, reliability, and flexibilityย
- Clear communication skills with both technical and non-technical teammatesย
Preferred Experienceย
- Experience with modern orchestration and transformation tools such as Airflow,ย Dagster,ย dbt, or similar platformsย
- Experience with cloud-native data warehouses orย lakehouseย platforms such as Snowflake,ย BigQuery, Redshift, Databricks, or equivalent technologiesย
- Experience with streaming and real-time data platforms such as Kafka, Kinesis,ย SQS, or similar systemsย
- Experience enabling BI and self-service analytics through curated datasets, semantic layers, and reporting platforms such as Looker, Power BI, Tableau, or similar toolsย
- Experience in fintech, mortgage, lending, payments, insurance, or other regulated domainsย
- Experience building data platforms that support AI, machine learning, or decisioning workflowsย
- Experience improving data quality, reliability, cost efficiency, and platform scalability as a system growsย
A note to candidatesย
You do not need prior fintech or finance experience to succeed in this role. If you are a strong data engineer with solid technical judgment, a systems mindset, and excitement for solving complex data problems, we would love to hear from you.ย
If your background does not line up perfectly with every bullet, but this role feels like the kind of work you want to do, please apply.
Bayview is an Equal Employment Opportunity employer.ย ย All aspects of consideration for employment and employment with the Company are governedย on the basis ofย merit, competence and qualifications without regard to race, color, religion, sex, national origin, age, disability, veteran status, sexual orientation, or any other category protected by federal, state, or local law.ย
#LI-Remote
Qualifications:
- 2-4+ย years of experience building and operating production-grade data pipelines and data systemsย
- Strong experience with industry-standard tools and platforms for ETL/ELT, orchestration, data warehousing, streaming, and BIย
- Experience working with both OLTP and OLAP systems, with a strong understanding of the tradeoffs between transactional and analytical workloadsย
- Experience building flexible data pipelines that integrate with many different source and destination types, including databases, APIs, files, message queues, SaaS platforms, and event streamsย
- Experience supporting both batch and real-time data processing patternsย
- Experience deploying and operating data infrastructure on major cloud platforms such as AWS, GCP, or Azureย
- Strong SQL skills and experience with data modeling, transformation frameworks, and performance optimizationย
- Experience building AI-powered capabilities on top of LLMs, including orchestration, evaluation, andย dataย integration patternsย
- Experience with modern programming languages commonly used in data engineering, such as Python, Java, Scala, or Goย
- Comfort working with CI/CD, infrastructure-as-code, observability, and production operations for data systemsย
- Strong judgment in ambiguous environments where requirements evolve and systems must balance speed, reliability, and flexibilityย
- Clear communication skills with both technical and non-technical teammatesย
Preferred Experienceย
- Experience with modern orchestration and transformation tools such as Airflow,ย Dagster,ย dbt, or similar platformsย
- Experience with cloud-native data warehouses orย lakehouseย platforms such as Snowflake,ย BigQuery, Redshift, Databricks, or equivalent technologiesย
- Experience with streaming and real-time data platforms such as Kafka, Kinesis,ย SQS, or similar systemsย
- Experience enabling BI and self-service analytics through curated datasets, semantic layers, and reporting platforms such as Looker, Power BI, Tableau, or similar toolsย
- Experience in fintech, mortgage, lending, payments, insurance, or other regulated domainsย
- Experience building data platforms that support AI, machine learning, or decisioning workflowsย
- Experience improving data quality, reliability, cost efficiency, and platform scalability as a system growsย
A note to candidatesย
You do not need prior fintech or finance experience to succeed in this role. If you are a strong data engineer with solid technical judgment, a systems mindset, and excitement for solving complex data problems, we would love to hear from you.ย
If your background does not line up perfectly with every bullet, but this role feels like the kind of work you want to do, please apply.
Bayview is an Equal Employment Opportunity employer.ย ย All aspects of consideration for employment and employment with the Company are governedย on the basis ofย merit, competence and qualifications without regard to race, color, religion, sex, national origin, age, disability, veteran status, sexual orientation, or any other category protected by federal, state, or local law.ย
#LI-Remote
Education:UNAVAILABLEEmployment Type: FULL_TIME