The Role
The Machine Learning Engineer will design, deploy, and operate ML systems on AWS while ensuring reliability, cost-effectiveness, and compliance for the gaming industry.
Summary Generated by Built In
We’re looking for a Machine Learning Engineer to design, deploy, and operate production ML systems on Amazon Web Services. You’ll own the full lifecycle in a real-world, high-stakes environment — from training and packaging through deployment, monitoring, retraining, security, and cost control.
This role sits at the intersection of ML engineering and MLOps and is core to CCT’s analytics strategy. You’ll partner closely with data scientists, engineers, and product stakeholders to turn complex time-series and transactional data into reliable, observable, and cost-effective ML services that our customers can trust.
You’ll thrive here if you naturally dig into why models behave the way they do, enjoy tracing issues to their root cause, and like collaborating across disciplines to ship robust systems that are built to last.
What You'll Do
- Build and maintain reproducible model training workflows on AWS (SageMaker, S3, Glue, etc.), making retraining, rollback, and experimentation routine rather than heroic.
- Deploy and operate real-time and batch inference services with full CI/CD pipelines, versioning, and safe rollout strategies (canary, shadow, A/B) so changes are deliberate and observable.
- Instrument production models for performance, data drift, latency, and errors — and automate retraining triggers when models drift out of tolerance.
- Maintain model lineage, auditability, and traceability to meet the compliance, governance, and reporting needs of the regulated gaming industry.
- Enforce least-privilege IAM, encryption, and secure data access patterns across the entire ML platform.
- Treat cost as a first-class engineering metric — right-size infrastructure, balance batch vs. real-time workloads, and continually reduce platform spend without sacrificing reliability.
- Collaborate with engineers, data scientists, and product teams to translate business problems into ML solutions, communicate tradeoffs clearly, and iterate based on feedback.
- Continuously explore new AWS services, ML frameworks, and deployment patterns to improve reliability, observability, and developer velocity on the ML platform.
Requirements
- 3+ years of experience in machine learning engineering, MLOps, or a closely related discipline.
- Hands-on experience with AWS ML and data services — SageMaker (training, endpoints, pipelines), S3, Lambda, Step Functions, CloudWatch, MWAA (Apache Airflow).
- Experience working with time series data, including feature engineering, seasonality handling, and temporal train/test splits.
- Strong Python skills and familiarity with common ML frameworks (scikit-learn, PyTorch, XGBoost, or equivalent).
- Experience building and maintaining CI/CD pipelines for ML systems.
- Demonstrated ability to monitor and debug production ML systems — latency, drift, errors, and data quality — and drive issues to root cause.
- Comfort with SQL and working with structured data at scale.
- Able to work collaboratively across teams, assume positive intent, and communicate clearly with both technical and non-technical stakeholders.
- Track record of self-directed learning and technical growth in areas like AWS, ML frameworks, or deployment patterns.
Nice to Have
- Experience in a regulated industry (gaming, finance, healthcare) where auditability, explainability, and compliance are first-class concerns.
- Familiarity with feature stores, model registries, or ML metadata tools (e.g., MLflow, SageMaker Model Registry).
- Experience with infrastructure-as-code (Terraform, CDK, or CloudFormation).
- Exposure to data drift detection libraries or custom drift monitoring implementations.
Success Looks Like
- Production models run reliably with clear, measurable business impact for casino operators.
- Failures are observable, recoverable, and explainable — with logs, metrics, and traces that tell the full story.
- ML systems scale predictably with usage and data volume, without runaway cost.
- The ML platform becomes a trusted, well-understood part of CCT’s product ecosystem — for both internal teams and external customers.
Since 2012, CCT (cct.io) has helped more than 350 casinos worldwide streamline workflows, simplify compliance, and improve profitability. With an award-winning suite of software and services, we provide scalable solutions that integrate with more than 100 casino management, hospitality, and financial systems. We are a team of 120 (and growing!) headquartered in Tulsa, OK, with remote and WFH locations across North America. Our core values represent who we are and how we work — Customer Oriented, Problem Solving, Driven, Adaptability, and Teamwork.
Top Skills
AWS
Cloudwatch
Glue
Lambda
Python
PyTorch
S3
Sagemaker
Scikit-Learn
SQL
Step Functions
Xgboost
Am I A Good Fit?
Get Personalized Job Insights.
Our AI-powered fit analysis compares your resume with a job listing so you know if your skills & experience align.
Success! Refresh the page to see how your skills align with this role.
The Company
What We Do
CCT is the creator of Casino Insight™, the award-winning platform trusted by more than 350 casinos worldwide to automate cage operations, revenue audits, and operational analysis. Since 2012, Casino Insight has helped casinos replace manual work with streamlined workflows, improving accuracy, compliance, and profitability. Headquartered in Tulsa, Oklahoma, CCT integrates seamlessly with leading casino management, hospitality, and financial systems—delivering measurable ROI and empowering teams to work smarter at every level.

.jpg)






