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Overview
Mid-Level

AI/ML Engineer- MLOps - UPS Digital MARTEC

Confirmed live in the last 24 hours

UPS

UPS

IN - TDC 1 (IN110)
On-site
Posted March 30, 2026

Job Description

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Explore your next opportunity at a Fortune Global 500 organization. Envision innovative possibilities, experience our rewarding culture, and work with talented teams that help you become better every day. We know what it takes to lead UPS into tomorrow—people with a unique combination of skill + passion. If you have the qualities and drive to lead yourself or teams, there are roles ready to cultivate your skills and take you to the next level.

Job Description:

About Machine Learning Engineering at UPS Technology: 

We’re the obstacle overcomers, the problem get-arounders. From figuring it out to getting it done… our innovative culture demands “yes and how!” We are UPS. We are the United Problem Solvers. 

Our Machine Learning Engineering teams use their expertise in data science, software engineering, and AI to build next-generation intelligent systems. These systems power our Smart Logistics Network, optimize UPS Airlines, and enhance Global Transportation Operations. We build scalable, production-grade ML solutions that move up to 38 million packages a day (4.7 billion annually), delivering measurable impact across the enterprise. 

About this Role:       

We are seeking passionate Senior Machine Learning Engineers to design, develop, and deploy ML models and pipelines that drive business outcomes. You’ll work closely with data scientists, software engineers, and product teams to build intelligent systems that are robust, scalable, and aligned with UPS’s strategic goals. 

You will contribute across the full ML lifecycle—from data exploration and feature engineering to model training, evaluation, deployment, and monitoring. You’ll also help shape our MLOps practices and mentor junior engineers. 

Job Summary

The Marketing ML Engineer / ML Ops Engineer is responsible for operationalizing machine learning models within the marketing technology ecosystem. This role ensures production-grade deployment, low-latency inference, reliable data refresh cycles, and fully automated model pipelines.

The position bridges Data Science and Engineering by transforming experimental models into scalable, monitored, and business-ready solutions within the Global Customer Platform.

What They Will Build & Operationalize

The ML Engineer will deploy and manage:

  • Production-ready marketing ML models including:

    • Propensity to Buy (PTB)

    • Churn Prediction

    • Customer Lifetime Value (CLV)

  • Automated training and inference pipelines

  • Real-time or batch scoring workflows

  • Feature store infrastructure for reusable, governed features

  • Model monitoring and drift detection systems

  • CI/CD-enabled ML deployment pipelines

Their work directly supports personalization, targeting, retention strategies, and revenue optimization initiatives.

Key Responsibilities

1. Model Deployment & Productionization

  • Deploy ML models into the Global Customer Platform.

  • Ensure low-latency inference for real-time decisioning where required.

  • Enable scalable batch scoring pipelines.

  • Eliminate manual scoring processes through automation.

2. Pipeline Automation

  • Build automated training and retraining workflows.

  • Develop CI/CD pipelines for ML lifecycle management.

  • Ensure consistent data refresh cycles aligned with SLA requirements.

  • Reduce operational handoffs between Data Science and Engineering teams.

3. Model Monitoring & Governance

  • Monitor model performance in production environments.

  • Detect and mitigate model drift (data drift & concept drift).

  • Track prediction accuracy, stability, and bias metrics.

  • Maintain versioning and reproducibility standards.

4. Feature Engineering & Data Infrastructure

  • Design and maintain feature stores.

  • Ensure feature consistency between training and inference environments.

  • Optimize data pipelines for reliability and scalability.

  • Collaborate with data engineering teams on data schema and quality controls.

Required Skills & Experience

  • 5–10+ years in data engineering, ML engineering, or MLOps roles

  • Strong experience deploying ML models into production environments

  • Proficiency in Python and ML frameworks (e.g., Scikit-learn, XGBoost, TensorFlow, PyTorch)

  • Experience with orchestration tools (Airflow, Kubeflow, or similar)

  • Familiarity with containerization and deployment (Docker, Kubernetes)

  • Experience with cloud platforms (Azure, AWS, or GCP)

  • Strong understanding of feature stores and model lifecycle management

  • Knowledge of monitoring tools for drift detection and model performance

Preferred Qualifications

  • Experience working in marketing analytics or customer data platforms

  • Familiarity with CDP integrations and real-time personalization systems

  • Understanding of customer segmentation and campaign activation workflows

  • Experience implementing ML governance and compliance standards


Employee Type:
 

Permanent


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