Resumen del rol

Data Scientist / ML Platform Engineer

Requisitos y responsabilidades

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What you'll do:

  • Develop, train, and evaluate ML models (classification, regression, clustering, anomaly detection) and contribute to LLM-based capabilities such as RAG pipelines and prompt evaluation.
  • Support model governance and deployment practices using MLFlow, including experiment tracking, model versioning, registry promotion workflows, and automated testing across the ML lifecycle.
  • Contribute to production ML operations: model performance monitoring, drift detection, automated alerting, and incident escalation to maintain reliability and SLA compliance.
  • Build and improve model serving infrastructure, feature pipelines, and lifecycle automation to support reproducible, scalable model development and inference.
  • Apply explainability techniques (e.g., SHAP, LIME) and produce technical documentation to support stakeholder transparency and compliance requirements.
  • Contribute to data ingestion, ELT/ETL transformation, and pipeline reliability using Spark and SQL-based frameworks within Snowflake and Databricks environments.
  • Support pipeline orchestration, medallion architecture conventions, and data stewardship practices (metadata management, PII handling, lineage tracking in Unity Catalog).
  • Perform occasional system administration tasks in collaboration with platform teams, including environment configuration, access management, compute troubleshooting, and secrets handling using platform-native tools.

Basic Qualifications:

  • Associate's with 6 years, or Bachelor's degree with 4+ years of relevant experience, or Master's degree with 2+ years of relevant experience or High School diploma with 8 years of experience in lieu of a degree.
  • Demonstrated experience with SQL and Python, including Python-based ML frameworks (e.g., scikit-learn, XGBoost, PyTorch, or TensorFlow).
  • Hands-on experience with MLFlow or equivalent tools for experiment tracking, model governance, and lifecycle management.
  • Strong understanding of SDLC fundamentals and experience with GitHub or equivalent version control.
  • Experience with distributed compute environments (e.g., Spark, Databricks) and cloud-native services.
  • Basic proficiency with Bash or shell scripting for automation and environment setup.
  • Ability to collaborate across multidisciplinary teams and communicate technical concepts to varied audiences.
  • Ability to obtain and maintain a Public Trust clearance
  • US citizenship required or Green Card holder and must have been in the USA for 3 of the last 5 years.

Preferred Qualifications:

  • Experience with MLOps practices including CI/CD for ML, containerization, feature pipeline automation, and model deployment frameworks.
  • Experience with Databricks E2 components (Unity Catalog, Feature Store, Delta Live Tables) and/or model serving and drift monitoring tools (e.g., Databricks Model Serving, Evidenly, etc.).
  • Experience with LLM frameworks (e.g., LangChain, LlamaIndex, Hugging Face Transformers) and familiarity with model explainability libraries (e.g., SHAP, LIME).
  • Advanced Spark performance optimization experience and/or API development using Databricks REST APIs.
  • Experience with healthcare analytics data (preferably Medicare or Medicaid) and familiarity with HIPAA or FedRAMP compliance constraints.
  • Experience building data pipelines in a Snowflake or Databricks environment.
  • Familiarity with orchestration tools (Airflow, Databricks Workflows).
  • Exposure to streaming data patterns using Spark Structured Streaming, Delta Live Tables, or Kafka.
  • Familiarity with environment reproducibility tooling (Docker, conda) and scripting (Python, Bash) to support automation and CI/CD tasks
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FocoData ScienceÁrea del rol
Señal de seniorityMiddleNivel del candidato
StackCI/CD, Docker, LLMSkills principales
Ubicación1 país aceptadoElegibilidad

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