Job Description
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  • Job Title: SR. DEVOPS ENGINEER and MLOps Engineer Posting Start Date: 4/17/26


    At TE, you will unleash your potential working with people from diverse backgrounds and industries to create a safer, sustainable and more connected world. 

    Job Description:

    Job Overview

    TE Connectivity is seeking a hands-on Machine Learning Engineer with 3–5 years of experience to help design, productionalize, scale, and optimize AI/ML solutions across the enterprise. This role will sit at the intersection of data engineering, data science, and ML engineering , and will focus on taking models from experimentation to reliable business use in production.

    The ideal candidate has strong experience with Databricks, AWS, MLflow, Python, PySpark, SQL , and modern MLOps practices. This person should be comfortable refactoring machine learning code and models , building robust production pipelines , setting up monitoring and alerts , improving model efficiency and reliability , and supporting both traditional ML models and Generative AI applications such as chatbots and agents .

    Responsibilities:

  • Design, build, and maintain end-to-end machine learning pipelines for training, validation, deployment, monitoring, and retraining.
  • Productionalize AI/ML models and ensure they are scalable, reliable, secure, and supportable in enterprise environments.
  • Refactor existing machine learning models and codebases to improve performance, maintainability, reusability, and deployment readiness.
  • Develop and manage model orchestration workflows across experimentation, batch scoring, real-time inference, and retraining cycles.
  • Implement MLflow-based experiment tracking, model versioning, model registry, and lifecycle management.
  • Build and optimize data pipelines using PySpark, SQL, and Databricks to support feature engineering, training, and inference workloads.
  • Create monitoring frameworks for model health, drift, accuracy, latency, failures, and cost , and configure automated alerts for anomalies and performance degradation.
  • Improve model efficiency through better feature pipelines, compute optimization, inference tuning, and workflow redesign.
  • Deploy and support Generative AI solutions , including chatbots, assistants, and agent-based workflows.
  • Collaborate with data scientists, data engineers, application developers, and business stakeholders to move AI solutions from prototype to production.
  • Contribute to MLOps and engineering best practices including observability, CI/CD, governance, testing, and documentation.
  • Support cloud-native AI/ML solutions in AWS and help ensure alignment with security, compliance, and enterprise architecture standards.
  • Resposibilities:

  • Bachelor’s degree in Computer Science, Data Science, Engineering, Mathematics, or related field.
  • 7–10 years of hands-on experience in machine learning engineering, MLOps, data engineering, or a closely related role.
  • Strong programming skills in Python .
  • Strong experience with PySpark and SQL for large-scale data processing and transformation.
  • Experience with Databricks for ML and data engineering workflows.
  • Experience with AWS services supporting ML, data, and deployment workflows.
  • Experience with MLflow for experiment tracking, model management, and lifecycle governance.
  • Experience deploying machine learning models into production environments.
  • Experience building monitoring, alerting, and observability processes for production models and pipelines.
  • Understanding of model orchestration, model retraining workflows, and ML lifecycle management.
  • Experience working across both data engineering and data science use cases.
  • Strong understanding of software engineering fundamentals, including testing, version control, modular design, and code refactoring.
  • Preferred Qualifications

  • Experience with Generative AI , LLM-based applications, chatbots, RAG, or agentic workflows.
  • Experience with real-time or near-real-time inference pipelines.
  • Experience with CI/CD, DevOps, or Infrastructure-as-Code in support of ML platforms.
  • Experience with feature stores, model governance, and ML observability tooling.
  • Experience in manufacturing, industrial, supply chain, or enterprise business environments.
  • Familiarity with security, auditability, and governance requirements for enterprise AI solutions.
  • Key Skills

  • Databricks
  • AWS
  • MLflow
  • Python
  • PySpark
  • SQL
  • Data Engineering
  • Data Science
  • Machine Learning Engineering
  • MLOps
  • Model Deployment
  • Model Monitoring
  • Alerting / Observability
  • Model Refactoring
  • Model Orchestration
  • Generative AI
  • Chatbots
  • AI Agents
  • Performance Optimization
  • What Success Looks Like

  • Existing ML models are refactored into cleaner, more scalable production solutions.
  • AI/ML pipelines are automated, monitored, and resilient.
  • Model alerts proactively identify drift, cost anomalies, and performance degradation.
  • Generative AI use cases such as chatbots and agents are deployed with strong engineering discipline.
  • Model efficiency, maintainability, and time-to-production improve across TE’s AI/ML portfolio.
  • Competencies


    Values: Integrity, Accountability, Inclusion, Innovation, Teamwork

    Job Locations:

    Doraisanipalya, J.P Nagar, 4th Phase, Bannerghatta Road
    Bangalore, Karnātaka
    India

    Posting City: Bangalore Job Country: India Travel Required: None Requisition ID: Workplace Type: Hybrid External Careers Page: Information Technology
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  • SR. DEVOPS ENGINEER and MLOps Engineer

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