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MLOps Engineer

On-site
FractalMumbai, IN19 hours agoWebsite
Fresh
Full-time

Compensation

Salary undisclosed
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Description

It's fun to work in a company where people truly BELIEVE in what they are doing!

We're committed to bringing passion and customer focus to the business.

Job Description

EL3 – Databricks MLOps Engineer (Contract)

Domain: Claims Payment Integrity | M&R, C&S, E&I Claims (preferred)
Actuarial & Forecasting Analytics Exposure is an Added Advantage
Tech Stack: Databricks, Spark, Python, Scala, Azure, GitHub Actions, Terraform
AI/LLM Capabilities: Embedding Models, LLM Integration, LangChain Agentic Frameworks

Role Summary

The EL3 Databricks MLOps Engineer is a senior hands-on role responsible for enabling end-to-end machine learning lifecycle automation on Databricks. This includes building and maintaining the CI/CD infrastructure, environment configuration, packaging and deploying ML models, supporting reproducible experiments, and ensuring scalable job orchestration for AI/ML workloads, including LLM-based applications.

The role partners closely with Data Scientists, AI/ML Engineers, platform teams, and business stakeholders within Claims Payment Integrity to ensure robust, reliable, and automated ML delivery.

Key Responsibilities

  • Enable and automate the end-to-end ML lifecycle on Databricks (environment setup, model workflow automation, job scheduling, monitoring hooks).

  • Build frameworks, templates, and utilities that make ML development and experimentation reproducible and scalable.

  • Implement CI/CD pipelines using Git, GitHub Actions, Jenkins, Azure DevOps, or similar tools.

  • Package, version, and deploy ML models into Databricks-managed execution environments.

  • Set up automated workflows for training, retraining, evaluation, and scheduled job execution.

  • Support creation and integration of machine learning models including classification, forecasting, anomaly detection, NLP, and PI models.

  • Enable LLM/GenAI-driven solutions by integrating: 

    • Embedding model generation

    • RAG architectures

    • Vector databases

    • LangChain agentic workflows

  • Optimize resource usage, runtime configurations, and code execution patterns for ML workloads.

  • Collaborate with Data Scientists to translate experimental notebooks into production-ready pipelines.

  • Implement platform-level controls for environment consistency, dependency management, access control, and model versioning.

  • Support troubleshooting, debugging, and performance improvements for ML workloads.

  • Document standards, templates, guidelines, and best practices for MLOps teams.

  • Work cross-functionally with product, engineering, and analytics teams across PI.

Required Qualifications

  • Bachelor’s/Master’s degree in Computer Science, Engineering, or related field

  • 6–9 years of relevant experience in ML Engineering, MLOps, or platform engineering

  • Strong hands-on experience with Databricks, Spark (batch/streaming), Python, Scala

  • Experience enabling ML lifecycle tools such as MLflow (tracking, packaging, model registration)

  • Strong CI/CD experience using Git, GitHub Actions, Jenkins, or Azure DevOps

  • Experience deploying AI/ML models into cloud environments (Azure preferred)

  • Ability to create and integrate embedding models, semantic vectors, and LLM-driven components

  • Experience with LangChain for agentic workflows and integration of tools/functions

  • Strong problem-solving, debugging, and collaboration skills

Preferred Qualifications

  • Experience with Azure OpenAI or OpenAI-compatible LLM APIs

  • Familiarity with healthcare claims workflows, PI, FWA, provider billing, or pricing

  • Experience in Agile/Scrum environments

  • Strong understanding of software engineering best practices, packaging, dependency management

Good-to-Have Data Knowledge

  • Call Center datasets (member & provider interactions)

  • Provider RCM datasets (billing, coding, authorizations)

  • EHR/clinical datasets for cross-domain validation

If you like wild growth and working with happy, enthusiastic over-achievers, you'll enjoy your career with us!

Hiring Related Queries

India: HiringsupportIndia@fractal.ai

Outside India: HiringsupportROW@fractal.ai

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Stack

PythonScalaLLMsGenerative AIEmbeddingsDatabricksLangChainAgentic AIMLOpsVector DatabasesAzureTerraformCI/CDSparkMachine LearningRAGNLP
Posted
Jun 30, 2026
Last seen
Jun 30, 2026
First seen
Jun 30, 2026

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