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As part of our continued investment in data-driven innovation, we are looking for a
Senior Machine Learning Engineer
to join our growing team. This is a hands-on role focused on delivering innovative predictive solutions for the healthcare enterprise. The ideal candidate will bridge the gap between theoretical data science and production-grade software engineering, utilizing Google Cloud Platform (GCP) and Vertex AI to solve complex business challenges.
Key Responsibilities
Machine Learning Development & Modeling
Design, develop, and implement predictive models, machine learning algorithms, and decision engines to address complex business challenges (e.g., scheduling optimization, clinical decision support). Conduct experiments, tune hyperparameters, and apply advanced modeling techniques to improve the accuracy, scalability, and efficiency of new and existing models. Partner with cross-functional stakeholders to translate business requirements into technical specifications for ML solutions. MLOps & Production Engineering
Execute full-stack engineering tasks including data preprocessing, feature engineering, model deployment, API development, and integration with enterprise systems. Engineer scalable, secure, compliant, and production-grade ML pipelines with modern cloud-native technologies. Design and implement distributed training workflows, online inference systems, and low-latency serving architectures. Propose new platform solutions and enhancements that improve capabilities and performance of existing scheduling systems and decision engines. System Architecture & Observability
Partner with system architects to ensure adequate hardware, compute resources, and platform configurations (Kubernetes, Cloud Run) to support machine learning applications. Define key metrics, monitoring frameworks, and automated alerts to continuously evaluate the performance and drift of deployed models. Analyze system behaviors to identify improvement opportunities and proactively recommend enhancements to the decision engines. Collaboration & Mentorship
Create clear, comprehensive documentation and support guides for newly implemented tools. Provide technical guidance and mentorship to junior engineers and data scientists. Stay current with advances in machine learning, data engineering, and software development, implementing industry best practices for reliability and maintainability. Qualifications
Required
Experience:
5+ years of experience in machine learning engineering, data science, or related technical role. Technical Proficiency:
Strong proficiency with Python and AI/ML frameworks (LLMs, TensorFlow, PyTorch, Scikit-learn, etc.). Engineering Skills:
Strong hands-on expertise with
Google Cloud Platform (GCP) , training, pipelines, deployment, BigQuery, and Airflow. Solid understanding of software engineering principles, and API development. Deployment:
Proven track record of building and deploying ML models into production systems at scale. Preferred
Education:
Bachelor's degree in Computer Science, Data Science, Engineering, or related technical field. Experience with scheduling, optimization algorithms, or decision-support systems. Familiarity with MLOps tooling (e.g., MLflow, Airflow, Kubeflow). Experience with SQL and data warehousing for feature extraction. Familiarity with responsible AI practices and governance. *This role is onsite 4 days/week in our Chicago office (Fulton Market District)
A generous benefits package that includes paid time off, health, dental, vision, and 401(k) savings plan with match Salary: $154,000-181,000/year
Sprachkenntnisse
- English
Hinweis für Nutzer
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