DraftKings Inc. logo
DraftKings Inc.

We’re a publicly traded (NASDAQ: DKNG) technology company headquartered in Boston. As a regulated gaming company, you may be required to obtain a gaming license issued by the appropriate state agency as a condition of employment. Don’t worry, we’ll guide you through the process if this is relevant to your role.

Senior Data Engineer, Platform

Data EngineerData EngineerFull TimeRemoteSeniorTeam 1,001-5,000

Location

United States

Posted

2 days ago

Salary

0

Seniority

Senior

Job Description

Senior Data Engineer, Platform

DraftKings Inc.

Role Description As a Senior Data Engineer, Platform you will be a key contributor to a data team centered around the mission of providing a best-in-class experience for our products and customers. In this role, you’ll be leveraging your technical expertise in all aspects of “Infrastructure as Code” (IaC) to enhance and build out our data platform. You will be working across teams, informing business decisions, helping to expand our platform, and define standards and best practices for platform use. What you’ll do as a Senior Data Engineer, Platform: - Demonstrate leadership and ownership of the platform to deliver services for projects and users. - Provide infrastructure guidance of data platform capabilities to accommodate business/technical use cases. - Leverage your strong communication skills to keep users informed and provide excellent quality of service. - Automate and manage provisioning needs, such as Snowflake storage and compute, Role Based Access Control model, and permissions. - Configure and manage monitoring/alerting around replication latency, performance (cluster & query), and Airflow. - Coordinate and collaborate with dependent infrastructure and AWS services to implement Snowflake integration with services, such as S3, IAM, SSO, etc. - Provide technical expertise, troubleshooting, and support for change management, governance compliance, internal audits, and remediations. Qualifications - A proven track record of administration, engineering, and operationalizing the Snowflake, Databricks or similar Cloud Data Platform. - Experience working in AWS, Terraform, CloudFormation, Python, and database replication tools/services (e.g., AWS DMS). - Experience working with CI/CD pipelines and deployment automation. - Experience with a variety of data logging/monitoring tools, such as DataDog. - Strong experience with SQL and knowledge in a variety of data engines (for example, SQL Server, MySQL, Amazon Aurora, Redshift) is a big plus. - Experience writing software (preferably with Python). Company Description We’re a publicly traded (NASDAQ: DKNG) technology company headquartered in Boston. As a regulated gaming company, you may be required to obtain a gaming license issued by the appropriate state agency as a condition of employment. Don’t worry, we’ll guide you through the process if this is relevant to your role. If this job posting does not include compensation information, this is due to a technical error that our team is working to resolve! We will repost this position with compensation information as soon as it is resolved. It is unlawful in Massachusetts to require or administer a lie detector test as a condition of employment or continued employment. An employer who violates this law shall be subject to criminal penalties and civil liability.

Related Categories

Related Job Pages

More Data Engineer Jobs

DriveTime logo

Senior Data Engineer, DBT

DriveTime

DriveTime is a used car dealership and automotive financial network company founded in 2002. The company specializes in helping all individuals finance a reliab

Data Engineer2 days ago

• Owning the design and development of robust dbt Core models that transform raw data into trusted, analytics‑ready datasets in Snowflake • Architecting scalable, high‑performance data models that support enterprise reporting, analytics, and AI use cases • Translating complex business and analytical requirements into efficient, well‑structured ELT solutions through close collaboration with BI, analytics, and business stakeholders • Embedding best practices in data quality, testing, documentation, and lineage to ensure transparency, reliability, and trust in our data ecosystem • Leveraging Python to support automation, data validation, orchestration, and performance monitoring across ELT pipelines • Monitoring, tuning, and optimizing Snowflake query performance and cost efficiency • Leading technical design discussions and contributing hands‑on to critical data initiatives • Serving as a technical lead and mentor, guiding other engineers and elevating standards across the full data transformation lifecycle • Providing thought leadership on modern data transformation patterns, tooling, and architecture to help shape enterprise data strategy • Supporting data governance and metadata enrichment initiatives in alignment with broader enterprise data goals

Arizona
Full TimeRemoteTeam 51-200Since 2013H1B Sponsor

• You'll be the first person at LawnStarter dedicated to data governance - the owner of whether our data can be trusted. • That means the quality and freshness of our source data, pipelines, and reports; the definitions behind our metrics; the standards behind our Segment event tracking; the health of our Lightdash workspace; the data feeding our machine learning models; and the security of the data itself. • This is a hands-on role. You'll work solo at first, with the Analytics team around you but nobody under you - building automation, writing checks, fixing what's broken, and putting processes in place that scale past you. If the scope grows the way we expect, this becomes the foundation of a team you'd build. • Data quality and freshness - automated monitoring across source data, pipelines, and reports; catching upstream schema and source changes before they break anything downstream; running incidents to resolution when they happen. • Data lineage and impact analysis - a living map from production source to warehouse model to dashboard, and the process that uses it: when a production change is proposed, its downstream impact on pipelines, metrics, and reports gets assessed before it ships, not discovered after. The end-state is data contracts with engineering, so breaking changes get caught in their workflow, not ours. • Lightdash - administration, workspace structure, permissions, and the rollout itself. Your job is to give the company self-serve autonomy while keeping the workspace tidy enough that people can find and trust what's there. Enablement is part of the deal - people follow standards they've been taught - and so is keeping queries fast and warehouse costs sane. • The semantic layer - we just shipped it for our most critical metrics: one governed definition per metric, in code. You'll extend definition and mapping to the rest and guard the layer against uncontrolled growth as it scales. • Event tracking governance - our governed Segment event catalog: reviewing new events against its standards, keeping it matched to what production actually sends, and evolving the guardrails (naming, property dictionary, drift detection) as tracking grows. • AI data readiness - AI agents query our warehouse every day through Brain, our internal AI toolkit. You'll govern what data AI tools can access and keep the warehouse AI-legible: documented, consistent, and safe for an agent to query and get the right answer. • Data security and privacy - access controls, PII handling and retention under US state privacy laws, and periodic reviews of who - and which AI tools - can see what. • The governance system itself - the documentation, ownership models, and review loops that keep all of the above running without heroics.

Brazil
$75K - $100K / year
Full TimeRemoteTeam 1,001-5,000H1B Sponsor

• Design and implement scalable data platforms using Snowflake, Databricks, Delta Lake, and cloud technologies. • Build batch and real-time data pipelines using PySpark, Kafka, and Spark Structured Streaming. • Develop AI-ready data architectures supporting analytics, ML, LLMs, and RAG applications. • Design semantic models, data governance, metadata, and data lineage solutions. • Implement vector databases, embedding pipelines, and retrieval solutions for AI applications. • Build and manage ML/LLMOps pipelines, model deployment, monitoring, and CI/CD. • Ensure data security, RBAC, compliance, and governance across the platform. • Mentor engineering teams and define architecture best practices.

India
Hand Talk logo

Data Engineer Intern

Hand Talk

Inteligência Artificial para Acessibilidade Digital

Data Engineer2 days ago
InternshipRemoteTeam 51-200Since 2012H1B No Sponsor

• Assist in developing and maintaining basic data ingestion and transformation pipelines (ETL/ELT) using PySpark and SQL. • Help monitor data pipelines and implement basic checks to ensure data reliability for internal consumers (such as Data Scientists). • Learn and assist in automating pipeline testing and deployment processes. • Work alongside data scientists and software engineers to understand and support integrated data flows. • Assist in documenting data schemas, pipeline architectures, and metadata cataloging.

Brazil