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Machine Learning Engineer

Chubb

San Pedro Garza García

Presencial

USD 40,000 - 70,000

Jornada completa

Hace 13 días

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Descripción de la vacante

A leading company in the insurance sector is seeking an MLOps Engineer to design and implement automated machine learning pipelines for various applications such as claims prediction and fraud detection. The ideal candidate will collaborate with data scientists and actuarial teams, ensuring ML models are production-ready, scalable, and compliant with industry standards. Candidates should have strong Python and PySpark skills and experience in operationalizing ML solutions in cloud environments.

Formación

  • 3+ years of experience in MLOps, Data Science Engineering, or ML platform roles.
  • Deep knowledge of Spark and Databricks.
  • Experience operationalizing ML models in production.

Responsabilidades

  • Design and implement automated ML pipelines for insurance applications.
  • Build scalable data workflows using PySpark and Apache Spark.
  • Set up monitoring, logging, and alerting frameworks for ML models.

Conocimientos

Python
PySpark
SQL
Machine Learning
Data Governance

Herramientas

Databricks
MLflow
Docker
Kubernetes
Azure

Descripción del empleo

About the Role

As an MLOps Engineer, you’ll play a key role in operationalizing machine learning solutions that improve underwriting, claims, risk modeling, and customer experience. You will work closely with data scientists, data engineers, and actuarial teams to ensure ML models are production-ready, scalable, and resilient.

You’ll be responsible for building and maintaining ML pipelines using Databricks, PySpark, and Spark, and automating the model lifecycle—from training to monitoring—on top of a robust cloud infrastructure.

Key Responsibilities

Design and implement automated ML pipelines for training, testing, deployment, and monitoring of models used in insurance applications such as claims prediction, fraud detection, and policy pricing.

Build scalable data workflows using PySpark and Apache Spark within Databricks.

Collaborate with data scientists and actuaries to package models and deliver reproducible, governed solutions.

Implement CI/CD pipelines for ML using tools such as MLflow, Azure DevOps, or GitHub Actions.

Develop and apply techniques for data drift and model drift detection, including statistical monitoring, performance baselines, and alerts.

Set up monitoring, logging, and alerting frameworks to maintain ML model reliability in production.

Ensure compliance with data privacy, regulatory standards, and model governance practices required in the insurance sector.

Qualifications

Desired Qualifications

3+ years of experience in MLOps, Data Science Engineering, or ML platform roles.

Strong programming in Python, with solid expertise in PySpark.

Deep knowledge of Spark and Databricks for big data processing and scalable ML.

Proficient in SQL with the ability to work on complex joins and performance tuning.

Experience operationalizing ML models in production (batch and real-time).

Working knowledge of MLflow, Docker, Kubernetes, and cloud-native services (preferably Azure).

Proven experience in implementing and managing data drift and model drift detection using statistical and ML-based methods.

Familiar with insurance data domains (e.g., claims, underwriting, loss ratio, customer churn).

Understanding of data governance, model risk management, and compliance in regulated industries.

Nice to Have

Experience with Delta Lake, Unity Catalog, or Feature Stores.

Knowledge of data mesh, event-driven architectures, or real-time streaming.

Familiarity with actuarial modeling, telematics, or fraud analytics.

Certifications in Azure, Databricks, or MLOps tools.

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