About Comprehensive Rehab Consultants (CRC)
Comprehensive Rehab Consultants partners with skilled nursing facilities to improve clinical quality, efficiency, and financial performance. CRC is recognized as an innovator in the post-acute care space, developing new AI-driven care and revenue models that decrease hospitalizations and improve outcomes.
We are seeking a Machine Learning Engineer to drive the next generation of CRC’s AI platform. This role is engineering-heavy, focused on building, tuning, and deploying scalable ML/NLP/LLM systems that power our clinician tools, financial analytics, contract modeling, DFS/PDPM engines, readmission risk scores, and enterprise analytics chatbot.
Role Summary
You will design, optimize, and productionize machine learning systems using CRC’s full internal data environment. This includes tuning an existing NLP engine, developing statistical/ML models (including ordered probit and regression-based DFS calculator), building internal LLMs trained on CRC documents, and developing the AI analytics chatbot used by all business units.
This role requires someone who ships ML systems—not someone who just builds notebooks.
Key Responsibilities
Machine Learning & Statistical Modeling- Build, tune, and validate statistical models including multi-stage regression, ordered probit, and generalized linear models, audit automation, acuity scoring, and financial forecasting
- Engineer features from structured and unstructured healthcare data (EMR, claims, revenue cycle, clinician notes)
- Tune the existing CRC NLP engine for clinical note understanding, keyword extraction, concept expansion, negation detection, and sentiment scoring
- Build custom clinical embeddings using HuggingFace Transformers, spaCy, and domain-tuned vector models
- Develop and maintain a CRC private LLM, trained on internal knowledge bases, documentation, analytics logic, and care guidelines
- Build automated pipelines for LLM evaluation, retraining, retrieval-augmented generation (RAG), and grounded QA
- Architect, build, and deploy the AI Analytics Chatbot, integrating model logic, business rules, and Fabric/Databricks data sources
- Integrate ML models into production services using notebooks, APIs, or batch inference jobs
- Support creation of AI-generated reporting, insights summaries, and automated clinical/financial narratives
- Build maintainable ML pipelines (training, validation, deployment) using Databricks, Fabric, MLflow, GitHub, and CI/CD
- Implement model monitoring, drift detection, and automated retraining
- Package and deploy reproducible models via APIs or scheduled Fabric/Databricks workflows
- Work with data engineering to embed models into CRC applications
- Partner with BI analysts to transform model outputs into dashboards
- Document methodologies, assumptions, architecture, and validation processes clearly
Required Skills & Experience
- 3–6 years of hands-on machine learning engineering experience (not just DS notebooks)
- Strong Python engineering background:
pandas, scikit-learn, statsmodels, PyTorch or TensorFlow, transformers, spaCy - Experience building and tuning LLM and NLP pipelines end-to-end
- Experience with regression, ordered probit/logit, hierarchical models, and general statistical modeling
- Experience deploying ML workloads in Databricks, Azure ML, and Fabric
- Strong SQL for feature engineering and model validation
- Prior experience working with healthcare data (EMR, claims, RCM, CMS) preferred
- Strong communication and the ability to explain complex ML systems to non-technical stakeholders.
- Proactive, self-managing engineer who can independently own ML systems end-to-end.
- Fluent English required
Preferred Qualifications
- Experience with:
- Retrieval-Augmented Generation (RAG) pipelines
- Vector databases (FAISS, Chroma, Pinecone, Qdrant)
- Enterprise chatbot frameworks
- MLflow, CI/CD, GitHub Actions, and model versioning
- Power BI integration for ML outputs
- FHIR/SMART on FHIR
Certifications considered:
- Databricks ML Associate/Professional
- Azure AI Engineer Associate
- DeepLearning.AI NLP/LLM specializations
Skills Required
- 3-6 years of hands-on machine learning engineering experience
- Strong Python engineering (pandas, scikit-learn, statsmodels, PyTorch or TensorFlow, transformers, spaCy)
- Experience building and tuning LLM and NLP pipelines end-to-end
- Experience with regression, ordered probit/logit, hierarchical models, and general statistical modeling
- Experience deploying ML workloads in Databricks, Azure ML, and Fabric
- Strong SQL for feature engineering and model validation
- Prior experience working with healthcare data (EMR, claims, RCM, CMS)
- Strong communication; ability to explain complex ML systems to non-technical stakeholders
- Proactive, self-managing engineer who can independently own ML systems end-to-end
- Fluent English
- Experience with Retrieval-Augmented Generation (RAG) pipelines
- Experience with vector databases (FAISS, Chroma, Pinecone, Qdrant)
- Experience with enterprise chatbot frameworks
- Experience with MLflow, CI/CD, GitHub Actions, and model versioning
- Power BI integration for ML outputs
- FHIR/SMART on FHIR experience
- Certifications (Databricks ML Associate/Professional, Azure AI Engineer Associate, DeepLearning.AI NLP/LLM)
What We Do
Medina Health is is building the future of nursing homes. We empower nursing home teams to uplevel the clinical care they offer to their elderly patients using our clinicians and technology.
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