Scientific Games Logo

Scientific Games

Senior Data Engineer

Posted 7 Hours Ago
In-Office or Remote
Hiring Remotely in United States
Senior level
In-Office or Remote
Hiring Remotely in United States
Senior level
Build, operate, and modernize scalable data pipelines and warehouse environments for lottery reporting, analytics, and AI readiness. Improve ingestion, transformations, data models, contracts, observability, lineage, and onboarding patterns. Automate operations, troubleshoot production issues, mentor engineers, and support migration from legacy to cloud architectures while ensuring data quality, reliability, and regulatory continuity.
The summary above was generated by AI
Scientific Games:

Scientific Games is the global leader in lottery games, sports betting and technology, and the partner of choice for government lotteries. From cutting-edge backend systems to exciting entertainment experiences and trailblazing retail and digital solutions, we elevate play every day. We push game designs to the next level and are pioneers in data analytics and iLottery. Built on a foundation of trusted partnerships, Scientific Games combines relentless innovation, legendary performance, and unwavering security to responsibly propel the global lottery industry ever forward.

Position Summary

Scientific Games is hiring a Senior Data Engineer to help build and modernize the lottery data platform supporting reporting, analytics, data science, and future AI capabilities.

You’ll build and operate reliable data pipelines, improve data models, and ensure high-quality, scalable warehouse environments across legacy and cloud systems.

The ideal candidate is an experienced builder who improves data models, defines data contracts, and automates processes to reduce operational overhead. They prioritize data quality, reliability, and cost efficiency while developing a strong understanding of the lottery domain and its impact.

What This Person Will Do

  • Design, build, and operate reliable data pipelines that move lottery data from operational systems into warehouse and analytics environments.

  • Improve ingestion, transformation, modeling, orchestration, observability, data quality, lineage, and access patterns.

  • Help define and implement data contracts covering schema, quality, timeliness, lineage, storage, access, and customer or jurisdiction constraints.

  • Build repeatable onboarding patterns for new jurisdictions, games, data sources, and reporting needs.

  • Partner with DBA, IT, product, application engineering, analytics, BI, and data science teams so source data is usable, trusted, and well-understood.

  • Reduce KTLO work through automation, better monitoring, resilient pipeline design, infrastructure as code, and platform simplification.

  • Troubleshoot production data issues and help create durable fixes rather than recurring manual workarounds.

  • Support the transition from legacy approaches to a more scalable cloud- and AI-ready data architecture while protecting business continuity.

  • Mentor other engineers through design reviews, code reviews, documentation, pairing, and clear technical standards.

Qualifications

What Success Looks Like

  • Make pipelines more observable, with earlier failure detection and clearer data quality standards

  • Establish repeatable patterns for onboarding new data sources

  • Increase confidence in data accuracy, lineage, timeliness, and usability

  • Apply strong business context to technical decisions across reporting, analytics, and AI use cases

  • Continuously improve systems by enhancing tests, monitoring, lineage, documentation, and reducing manual effort

Experience That Fits

  • 5-7+ years of Data Engineering, Data Platform, or Data Warehousing experience

  • Extensive SQL and data modeling skills, including experience with analytical, reporting, and operational data use cases.

  • Strong background working in AWS or similar cloud environments

  • Experience with batch and streaming ingestion, ETL / ELT, orchestration, transformation frameworks, and data quality controls.

  • Experience working with data contracts, schema evolution, lineage, observability, access controls, and service-level expectations.

  • Experience improving legacy data platforms while maintaining production continuity.

  • Experience troubleshooting complex production data issues and turning recurring problems into durable fixes.

  • Experience with cloud data platforms, distributed processing, infrastructure as code, and modern data engineering practices.

  • Ability to work with cross-functional teams

  • Clear written and verbal communication; able to explain data behavior, tradeoffs, and risks to technical and non-technical partners.

Especially Useful Backgrounds

  • Lottery, Gaming, Payments, Financial Systems, Regulated Transactional Systems, or other high-reliability data environments.

  • Multi-tenant, jurisdiction-specific, customer-specific, or contractually segmented data environments.

  • Databricks, Snowflake, Python, Redshift, Glue, Spark, Airflow, dbt, Kafka, or similar data platform technologies.

  • Metadata-driven or configuration-driven onboarding for new sources, jurisdictions, products, or customers.

Physical Requirements

The physical demands described here are representative of those that must be met by an employee to successfully perform the essential functions of this job. Reasonable accommodations may be made to enable individuals with disabilities to perform the essential functions. While performing the duties of this job, the employee is regularly required to sit, stand, walk, bend, use hands, operate a computer, and have specific vision abilities to include close and distance vision, and ability to adjust focus working with computer and business equipment.

Work Conditions

Scientific Games, LLC and its affiliates (collectively, “SG”) are engaged in highly regulated gaming and lottery businesses.   As a result, certain SG employees may, among other things, be required to obtain a gaming or other license(s), undergo background investigations or security checks, or meet certain standards dictated by law, regulation or contracts.   In order to ensure SG complies with its regulatory and contractual commitments, as a condition to hiring and continuing to employ its employees, SG requires all of its employees to meet those requirements that are necessary to fulfill their individual roles.  As a prerequisite to employment with SG (to the extent permitted by law), you shall be asked to consent to SG conducting a due diligence/background investigation on you.
This job description should not be interpreted as all-inclusive; it is intended to identify major responsibilities and requirements of the job. The employee in this position may be requested to perform other job-related tasks and responsibilities than those stated above. 

SG is an Equal Opportunity Employer and does not discriminate against applicants due to race, color, sex, age, national origin, religion, sexual orientation, gender identity, status as a veteran, and basis of disability or any other federal, state or local protected class. If you’d like more information about your equal employment opportunity rights as an applicant under the law, please click here for EEOC Poster.

Scientific Games Chicago, Illinois, USA Office

2718 W Roscoe St, Chicago, IL, United States, 60618

Scientific Games Chicago, Illinois, USA Office

350 N Orleans St, Chicago, IL, United States, 60654

Similar Jobs

2 Days Ago
Easy Apply
Remote or Hybrid
United States
Easy Apply
120K-201K Annually
Senior level
120K-201K Annually
Senior level
Artificial Intelligence • Cloud • Computer Vision • Hardware • Internet of Things • Software
Design, build, and maintain scalable Spark-based ETL pipelines and computed tables in a central data lake. Integrate structured and unstructured IoT, sensor, and external data for analytics, model training, and dashboards. Collaborate with Data Science, Analytics, and ML teams to ensure reliable, high-quality customer-facing datasets.
Top Skills: AirflowAWSAzureDagsterData LakeDatabricksDelta LakeETLGCPGitGitPrefectPysparkPythonRest ApisSparksqlSQL
3 Days Ago
Remote or Hybrid
115K-145K Annually
Senior level
115K-145K Annually
Senior level
AdTech • Cloud • Digital Media • Information Technology • News + Entertainment • App development
Design, build, and scale cloud-native data platforms and pipelines. Translate business requirements into production-ready data solutions, owning modeling, performance, reliability, cost optimization, CI/CD, testing, monitoring, and data quality. Mentor junior engineers and collaborate with cross-functional teams in an Agile environment.
Top Skills: AirflowAws S3Azure Blob StorageBigQueryCi/CdGcp Cloud StorageIcebergPythonSnowflakeSQL
4 Days Ago
Easy Apply
Remote or Hybrid
Easy Apply
155K-220K Annually
Senior level
155K-220K Annually
Senior level
Fintech • HR Tech
Build and deliver end-to-end, production-grade data solutions: design and maintain scalable ETL pipelines, ingest from diverse sources, implement dbt transformations, ensure data quality and observability, optimize performance and cost, and partner with analytics, product, and engineering teams to drive business impact.
Top Skills: AIAlertingAPIsAutomated TestingAutomationBigQueryCi/CdData ObservabilityDatabricksDbtETLEvent StreamsJavaMonitoringPythonRedshiftScalaSnowflakeSQL

What you need to know about the Chicago Tech Scene

With vibrant neighborhoods, great food and more affordable housing than either coast, Chicago might be the most liveable major tech hub. It is the birthplace of modern commodities and futures trading, a national hub for logistics and commerce, and home to the American Medical Association and the American Bar Association. This diverse blend of industry influences has helped Chicago emerge as a major player in verticals like fintech, biotechnology, legal tech, e-commerce and logistics technology. It’s also a major hiring center for tech companies on both coasts.

Key Facts About Chicago Tech

  • Number of Tech Workers: 245,800; 5.2% of overall workforce (2024 CompTIA survey)
  • Major Tech Employers: McDonald’s, John Deere, Boeing, Morningstar
  • Key Industries: Artificial intelligence, biotechnology, fintech, software, logistics technology
  • Funding Landscape: $2.5 billion in venture capital funding in 2024 (Pitchbook)
  • Notable Investors: Pritzker Group Venture Capital, Arch Venture Partners, MATH Venture Partners, Jump Capital, Hyde Park Venture Partners
  • Research Centers and Universities: Northwestern University, University of Chicago, University of Illinois Urbana-Champaign, Illinois Institute of Technology, Argonne National Laboratory, Fermi National Accelerator Laboratory

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account