UPS is the world’s premier package delivery company and a leading provider of global supply chain management solutions. We operate one of the largest airlines and one of the largest fleets of alternative fuel vehicles under a global UPS brand.

UPS looking for fresher graduates with expertise in developing and optimizing ML pipelines, having proficiency in Python, SQL, and cloud platforms such as GCP, AWS, or Azure for the role of  Machine Learning Engineer.

Job Designation : Machine Learning Engineer

Qualification : Bachelor’s Degree

Experience : Freshers

Skill Set :

  1. Proficiency in Python, SQL, and cloud platforms such as GCP, AWS, or Azure.
  2. Proficiency in deploying and managing models using Kubernetes.
  3. Expertise in developing and optimizing ML pipelines.
  4. Understanding and experience in scaling solutions for ML and AI applications.
  5. Experience in DevOps practices for supporting and maintaining applications and products driven by Machine Learning (ML) and Artificial Intelligence (AI).
  6. Familiarity with implementing solutions using Python, Scala, or Java.
  7. Demonstrate experience in various ML frameworks such as Python, Scala or Java for debugging and developing minor enhancements to models.
  8. Experience in supporting products with capabilities including Deep Learning, Supervised, and Unsupervised techniques.
  9. Ability to utilize visualization tools for model monitoring and management in production.
  10. Experience in deploying and managing machine learning models using containerization tools such as Kubernetes, Docker, Fargate, etc.
  11. Documentation and communication skills for technical and non-technical stakeholders.
  12. Strong investigative and troubleshooting skills with regards to ML Pipelines
  13. Comfortable working with data scientists, data engineers, product owners and architects
  14. Background in Agile/Kanban development methodologies.
  15. Experience working within Agile Frameworks for ML and AI projects.
  16. Excellent written and verbal communication skills

Job Description:

The Machine Learning Engineer position participates in the support, maintenance, and monitoring of Machine Learning (ML) models and software components that solve challenging business problems for the organization, working in collaboration with the Business, Product, Architecture, Engineering, and Data Science teams.This position participates in assessment and analysis of large-scale data sources of structured and unstructured data (internal and external) to uncover opportunities for ML and Artificial Intelligence (AI) automation. This position works with teams, or individually, to debug, develop minor enhancements, and complete other tasks related to ML/AI environments.

  1. Manage machine learning models in production environments, ensuring smooth integration with existing systems
  2. Monitor model performance using established metrics (accuracy, precision, recall, F1 score, etc.) and identify potential issues like performance degradation, drift, or bias
  3. Participate in the response and resolution of production incidents promptly, minimizing downtime and impact on business operations
  4. Collaborate with stakeholders (data scientists, software engineers, operations) to diagnose and fix problems
  5. Maintain documentation for deployed models, including deployment logs, monitoring dashboards, and troubleshooting procedures
  6. Ensure model compatibility with new software versions and infrastructure changes.
  7. Archive and manage different model versions for auditability and rollback capabilities.
  8. Analyze logs, error messages, and other data to diagnose model issues.
  9. Utilize debugging tools and techniques specific to machine learning (profiling, feature importance analysis, anomaly detection).
  10. Reproduce and isolate issues in test environments before fixing them in production.
  11. Document bug fixes and lessons learned to improve future model development and maintenance.
  12. Analyze monitoring data proactively to identify trends and potential issues before they impact production.
  13. Stay up-to-date on new monitoring tools and techniques for machine learning systems.
  14. Report on model performance and health to stakeholders regularly.
  15. Stay up-to-date on advances in machine learning and best practices for production usage.
  16. Contribute to documentation and knowledge sharing within the team.

Location : Chennai, India