Über
Data Scientist
with experience building ML-based predictive products and advanced analytics (including LLM based) in real-world environments. In this role, you will work with diverse and complex healthcare datasets-EHR, scheduling, billing, claims, structured & unstructured clinical data-to design, train, and deploy machine learning models that directly influence patient care, operational performance, and clinical efficiency.
This is a high-ownership, hands-on role where you'll help shape our intelligent data platform, build production-ready features, experiment with models, and collaborate with engineering teams to deploy AI products. If you enjoy solving messy, high-impact healthcare problems using AI, this role is for you.
This is not a remote position. You must live in the Scottsdale, AZ area and work in our office 3 days per week. Relocation assistance is not available. Visa sponsorship is not available.
Our mission is to bring care that's whole, human, and healing. Blending medical, behavioral, and lifestyle support into a single plan because restoring life takes more than a prescription.
Savas Software is a pioneering healthcare technology company dedicated to transforming clinical operations through innovative, integrated software solutions. Our mission is to empower healthcare organizations with tools that streamline workflows, enhance patient care, and ensure operational continuity. Through a unified approach to development, support, architecture, and enablement, we help clinics focus on what matters most-patient outcomes.
Machine Learning & Predictive Analytics:
Develop and deploy AI/ML models that power key products such as: Procedure Appropriateness Patient no-show prediction Appointment optimization Clinical risk stratification Patient adherence forecasting Providerutilizationand throughput prediction Perform feature engineering using clinical, operational, and financial data Experiment with algorithms (tree-based models, GLMs, ensemble methods, NLP, deep learning whereappropriate) Evaluate models using rigorous statistical and ML performance metrics Collaborate with ML Engineering to productionize models on Azure Technical Environment (Azure AI/ML & Analytics):
You'll work within a modern AI/ML and analytics stack, including:
LLMs:Open AI, Anthropic Claude Core Languages:Python, SQL Libraries & Frameworks:Scikit-learn,XGBoost,LightGBM, Pandas, NumPy, NLP libraries Visualization:Power BI, Plotly, Matplotlib, Seaborn Data Analysis & Insights:
Conduct exploratory data analysis (EDA) on EHR, scheduling, billing, and procedural data to uncover trends, biases, and quality issues Translate clinical guidelines and workflows into computable, data-driven logic Generate actionable insights that drive clinical and operational decision-making Data & Feature Pipelines:
Transform raw healthcare data into modeling-ready datasets (structured + unstructured) Implement data validation, quality checks, and scalable transformation logic Collaborate with Data Engineering to ensure high-quality, well-governed data pipelines LLMs, NLP & Unstructured Data (Nice-to-Have but Valuable):
Work with LLMs (Open AI, Anthropic Claude) to research and conceptualize recommendations Apply basic NLP techniques to extractsignalfrom clinical notes and operational text Explore entity extraction, rule-based labeling, embedding-based features, etc. Visualizations & Storytelling:
Create dashboards and data visualizations using Power BI or Python to communicate insights Present findings and recommendations to clinicians, operations leaders, and executives What Success Looks Like:
Production-ready ML models that drive measurable improvements in clinical operations High-quality datasets, features, and reproducible pipelinespoweringour AI platform Actionable insights that influence patient outcomes and reduce operational friction Ability to independently drive complex data projects end-to-end with minimal supervision Our Ideal Candidate will have the following qualifications:
2 or more years of experience in data science, machine learning, or applied analytics Strong Python + advanced SQL skills for data manipulation, modeling, and EDA Experience developing and evaluating ML models in real-world environments Experience with healthcare datasets (EHR, claims, clinical notes, billing, scheduling) is a strong advantage Familiarity with HIPAA, PHI handling, and healthcare data governance Strong understanding of feature engineering, statistical methods, and model validation Ability to clearly communicate technical concepts to non-technical stakeholders Exposure to Prompt Engineering and working with LLMs (Open AI, Anthropic Claude) preferred Experience with Azure Data Factory, Azure Functions, Azure Open AI preferred Master's degree in Data Science, CS, Statistics, Biomedical Informatics, or related field preferred Generous salary and benefits package includes:
Medical, dental, and vision coverage options for you and eligible dependents Free basic Life/AD&D, Short-Term, and Long-Term Disability policies for those enrolled in medical, plusadditionalvoluntary coverage options 401(k) Retirement plan Medical and Dependent Care Flexible Spending Accounts Generous vacation, sick, and holiday benefits
Lifekind Health and Savas Software are an Equal Opportunity Employer. We value a diverse workforce and inclusive workplace. People of color, people with disabilities, and lesbian, gay, bisexual, and transgender people are encouraged to apply. We consider all applicants without regard to race, color, ancestry, religion, gender, gender identity, gender expression, national origin, age, disability, socio-economic status, marital or veteran status, pregnancy status or sexual orientation.
Sprachkenntnisse
- English
Hinweis für Nutzer
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