Job
Description
Before you apply to a job, select your language preference from the options available at the top right of this page.
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 tomorrowpeople 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.About The Role :
Job Summary
We are seeking a highly skilled AI Engineer experience in Software Development, Data Science, or Machine Learning to design, develop, and deploy cutting-edge AI systems leveraging Large Language Models (LLMs), Chatbots, Retrieval-Augmented Generation (RAG), and agentic AI architectures.This role involves hands-on development with LLMs, embeddings, RAG pipelines, and multi-agent systems using modern frameworks like LangChain, LangGraph, and LlamaIndex. The ideal candidate has experience with Vertex AI on GCP and IBM WatsonX, fine-tuning, and Agent Development Kits (ADKs), and is excited about building scalable, production-grade AI platforms.Responsibilities
Agentic AI Development
Design, build, and deploy agentic AI systems using frameworks such as LangChain, LangGraph, and related libraries.
Develop and deploy multi-agent systems capable of autonomous decision-making, reasoning, planning, and collaboration.
RAG Pipelines:
Implement and optimize retrieval-augmented generation (RAG) systems, ensuring agents can access and incorporate external knowledge sources for
grounded, accurate responses.
LLM Engineering:
Fine-tune and prompt-engineer LLMs for task-specific reasoning, planning, and dynamic adaptation.
Work with LLM/SLM APIs, embeddings, and advanced generative AI techniques.
Enterprise AI Platform:
Lead the development of enterprise-grade AI platforms integrating LLMs, RAG, embeddings, and agentic AI protocols.
Implement and standardize Model Context Protocol (MCP) for consistent context management across models and agents.
MLOps & Observability:
Establish and enforce best practices for MLOps, monitoring, and observability, ensuring scalable and maintainable AI solutions.
Applied AI Prototyping:
Rapidly prototype, experiment, and iterate to improve AI agent capabilities.
Collaboration & Research:
Participate in the full research cycleliterature review, data exploration, experimentation, and presentation of findings.
Collaborate effectively with other engineers, researchers, and data scientists.Contribute to the documentation and standardization of technical code and practices.
Required Education
Bachelors degree in Computer Science, Engineering, or a related quantitative field.
Masters or Ph.D. is a strong plus.
Required Experience
5+ years overall experience in software development, data science, or machine learning.
1+ year of hands-on experience developing AI applications with LLMs and systems such as
retrieval-based methods, fine-tuning, or agent-based architectures.
1+ year of experience with frameworks like
LangChain, LlamaIndex, OpenAI, or similar tools.
Required Technical Skills
Strong programming skills in Python and basics in
SQL.
Expertise with LLM/SLM APIs, embeddings, and RAG systems.
Experience deploying on Google Cloud Platform (GCP) with
Vertex AI, and
IBM WatsonX.
Familiarity with agentic AI protocols and exposure to
Agent Development Kits (ADKs).
Preferred Qualifications
Experience implementing Model Context Protocol (MCP) for agent coordination.
Prior exposure to LangGraph, AutoGen, or related orchestration frameworks.
Knowledge of MLOps best practices (CI/CD for ML, observability, monitoring, scaling).
Familiarity with responsible AI principles (safety, fairness, interpretability).
Experience in enterprise-scale deployments of AI-driven platforms.
Contributions to open-source AI/ML projects are a plus.
PermanentUPS is committed to providing a workplace free of discrimination, harassment, and retaliation.