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Posted 24 May, 2026

Agentic AI Engineer

TraceLink, Inc
APAC - India - Pune Full Time
Reference: 102_701008_5086195007

About the Role

We are looking for an early-career Agentic AI Engineer to help build and evolve AI-powered systems that automate and improve supply chain workflows. In this role, you'll work alongside experienced engineers and data scientists to develop agentic AI / GenAI features, integrate knowledge-based retrieval (RAG) patterns, and contribute to testing and validation approaches for AI systems that can behave in non-deterministic ways.

This is a strong opportunity for someone who is eager to grow in both software engineering and applied GenAI, and wants to work on real-world enterprise problems in supply chain and (optionally) life sciences.

Key Responsibilities

  • Support the design and implementation of agentic AI / GenAI systems that assist in automating supply chain workflows.

  • Build and maintain backend services and integrations using Python and/or Java.

  • Contribute to multi-agent workflows, such as tool execution, routing, agent collaboration patterns, and task orchestration.

  • Assist in creating testing and validation strategies for AI systems, including evaluation datasets, regression testing, and behavior monitoring.

  • Help implement and improve knowledge base systems, including RAG pipelines, grounding strategies, and retrieval quality improvements.

  • Contribute to experimentation with:

    • lightweight fine-tuning approaches for small language models (SLMs)

    • reinforcement-learning-inspired improvement loops for NLP/GenAI tasks (where applicable)

  • Partner with product and domain teams to understand supply chain needs and translate them into working software.

  • Participate in code reviews, documentation, and operational support to ensure high-quality production systems.

Required Qualifications

  • Master's/Bachelors degree in Data Science, Artificial Intelligence, Machine Learning, Computer Science, or a closely related discipline.

  • 0-2 years of professional experience in software engineering, AI engineering, or ML engineering (internships and co-ops count) OR equivalent experience

  • Strong programming skills in Python and/or Java, including writing production-quality code.

  • Familiarity with cloud platforms such as AWS, GCP, or Azure (academic, personal, or internship experience is acceptable).

  • Interest or exposure to Generative AI concepts, such as LLMs, agent workflows, tool calling, or multi-step reasoning.

  • Understanding of core engineering fundamentals:

    • APIs and services

    • basic distributed systems concepts

    • debugging and performance basics

    • data structures & algorithms

  • Ability to learn quickly, take feedback well, and collaborate effectively in a team environment.

Preferred Qualifications

  • Coursework, projects, or hands-on experience with agentic or multi-step AI systems, including non-deterministic behavior patterns.

  • Exposure to designing knowledge base solutions, such as:

    • Retrieval-Augmented Generation (RAG)

    • embedding-based search

    • hybrid search approaches

    • reranking or relevance evaluation

  • Experience or academic background in one of the following:

    • fine-tuning small language models (SLMs)

    • training or adapting NLP models

    • Reinforcement learning concepts applied to language systems

  • Exposure to event-driven or reactive systems

  • Interest in supply chain domains (logistics, manufacturing, procurement, etc.).

  • Knowledge of the life sciences supply chain is a plus, but not required.

What Success Looks Like

  • You can take a defined task (e.g., building a new RAG retriever, improving evaluation coverage, or implementing a new agent tool) and deliver a working solution with support from senior engineers.

  • You write clean, testable code and steadily improve your ability to debug real-world production issues.

  • You contribute to AI system reliability through experiments, evaluation improvements, and thoughtful engineering.

Who You Are

  • Curious, motivated, and excited to build AI-driven products that ship to real users.

  • Comfortable working with a mix of predictable engineering tasks and emerging AI workflows.

  • Strong team player with a growth mindset and a willingness to learn.

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