Scientific Games Corporation

Staff Machine Learning Engineer

Scientific Games Corporation$100K — $130K *
Enterprise Technology
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • Master's degree in Computer Science, Engineering, Distributed Systems, Machine Learning, or a related STEM field
  • Bachelor's degree with significant platform engineering experience accepted
  • 5+ years of hands-on experience in ML engineering or platform engineering
  • Proven experience in designing platform architecture and reusable ML tooling
  • Experience with self-service internal platforms and developer tooling
  • Strong expertise in Docker, Kubernetes, and cloud-native ML workloads
  • Demonstrated ability to mentor engineers and influence technical direction

Responsibilities

  • Define the overall architecture and phased roadmap for the ML platform
  • Build frameworks enabling Data Scientists to independently deploy models
  • Architect reusable capabilities for model management and observability
  • Establish best practices for batch inference and production release strategies
  • Design engineering standards across CI/CD and development workflows
  • Mentor and elevate the software engineering quality within the team
  • Collaborate with Data Science leadership to enhance data science implementation speed

Benefits

  • Mentorship opportunities to develop leadership skills
  • Work in a pioneering role driving innovation in ML platform design
  • Collaborative culture with cross-functional teams
  • Focus on self-service systems that enhance organizational efficiency
  • Opportunity to influence the engineering standards of the future
Full Job Description
Position Summary

About the Role

We are looking for a Staff Machine Learning Engineer to define and build the machine learning platform architecture for the organization. This team will create the enabling layer that allows Data Scientists to self-serve deployment, experimentation, batch scoring, online inference, monitoring, and safe rollout workflows.

This is a platform creation role, not a platform operations gatekeeper role. The success metric is not how many deployments the team executes directly, but how effectively the platform allows domain Data Scientists to deploy independently through highly reliable self-service workflows. The initial Staff MLE hires will establish the architectural foundations, engineering standards, reusable tooling strategy, and platform roadmap that the Senior MLE team will scale.

This role is based out of Toronto.

Qualifications

Key Responsibilities
  • Define the target architecture and phased roadmap for the organization's first ML platform
  • Build self-service deployment frameworks enabling Data Scientists to productionize models independently
  • Architect reusable capabilities for model registry, deployment orchestration, feature retrieval, inference routing, observability, and rollback
  • Define golden paths for batch inference, real-time serving, shadow deployment, canary rollout, A/B testing, and full production release
  • Establish platform engineering standards across SDKs, templates, CI/CD, testing, infrastructure-as-code, and developer workflows
  • Design platform primitives that support recommendation systems, forecasting, optimization, and experimentation use cases
  • Mentor Senior MLEs and raise software engineering quality, architecture rigor, and platform thinking across the team
  • Partner with Data Science leadership to ensure the platform accelerates DS velocity rather than introducing process friction

Required Qualifications

Education
  • Master's degree in Computer Science, Engineering, Distributed Systems, Machine Learning, or another related STEM field
  • Bachelor's degree with exceptional relevant platform engineering depth is acceptable

Experience
  • 5+ years of hands-on experience in ML engineering, platform engineering, or large-scale production ML systems
  • Proven experience designing platform architecture and reusable ML tooling standards
  • Experience building self-service internal platforms, developer tooling, or ML deployment frameworks
  • Strong experience enabling applied Data Science teams through reusable infrastructure rather than centralized service models
  • Experience leading architecture decisions and mentoring engineers

Technical Skills
  • Deep expertise in ML systems architecture across batch and low-latency real-time serving
  • Strong hands-on experience with Docker, Kubernetes, infrastructure automation, and cloud-native ML workloads
  • Strong expertise in model lifecycle tooling including MLFlow, registries, validation gates, and promotion workflows
  • Advanced experience designing CI/CD, canary, rollback, and deployment safety systems for ML
  • Experience with feature stores, online/offline feature parity, and low-latency feature retrieval
  • Strong Python engineering standards and ability to write production-grade frameworks and SDKs

Leadership
  • Demonstrated ability to define technical direction for platform teams
  • Strong mentorship track record for Senior and mid-level MLEs
  • Strong cross-functional influence with DS, data platform, and product engineering teams
  • Bias toward building self-service systems that maximize organizational leverage

Preferred Qualifications
  • Experience building greenfield ML platforms from zero to scaled enterprise adoption
  • Experience supporting self-service recommendation, ranking, forecasting, and optimization systems
  • Familiarity with Databricks, Azure ML, SageMaker, Vertex AI, or equivalent ML platforms
  • Experience building internal developer portals, CLIs, or workflow SDKs
  • Strong platform product thinking focused on usability, adoption, and DS productivit

About Scientific Games Corporation

Light & Wonder, Inc., formerly Scientific Games Corporation, is an American corporation that provides gambling products and services. The company is headquartered in Las Vegas, Nevada, with lottery headquarters and production plant in Alpharetta, Georgia. Light & Wonder's gaming division provides products such as slot machines, table games, shuffling machines, and casino management systems. Its brands include Bally, WMS, and Shuffle Master.
Learn more about Scientific Games Corporation
Size
9,500 employees
Market Cap
$5.6 billion
Industry
Net Income
-$569 million
Founded
1973
5 Year Trend
-5.7%
Revenue
$2.7 billion
NASDAQ

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