Posted on: 05/02/2026
Description :
Senior ML Engineer GenAI & Agentic ML Systems
About the Role :
We are seeking a highly experienced Senior ML Engineer GenAI & ML Systems to lead the design, architecture, and implementation of advanced agentic AI systems within our next-generation supply chain platforms.
This role is hands-on and execution-focused. You will design, build, deploy, and maintain large-scale multi-agent systems capable of reasoning, planning, and executing complex workflows in dynamic, non-deterministic environments. You will also own production concerns, including context management, knowledge orchestration, evaluation, observability, and system reliability.
This position is ideal for a strong ML Engineer or Software Engineer with deep practical exposure to GenAI, data science, and modern ML systems, who is comfortable working end-to-endfrom architecture through production deployment. Experience in life sciences supply chain or other regulated environments is a strong plus.
Key Responsibilities :
- Architect, implement, and operate large-scale agentic AI / GenAI systems that automate and coordinate complex supply chain workflows.
- Design and build multi-agent systems, including agent coordination, planning, tool execution, long-term memory, feedback loops, and supervision.
- Develop and maintain advanced context and knowledge management systems, including :
- RAG and Advanced RAG pipelines
- Hybrid retrieval, reranking, grounding, and citation strategies
- Context window optimization and long-horizon task reliability
- Own the technical strategy for reliability and evaluation of non-deterministic AI systems, including :
a. Agent evaluation frameworks
b. Simulation-based testing
c. Regression testing for probabilistic outputs
d. Validation of agent decisions and outcomes
- Fine-tune and optimize LLMs/SLMs for domain performance, latency, cost efficiency, and task specialization (strong plus).
- Design and deploy scalable backend services using Python and Java, ensuring production-grade performance, security, and observability.
- Implement AI observability and feedback loops, including agent tracing, prompt/tool auditing, quality metrics, and continuous improvement pipelines.
- Apply and experiment with reinforcement learning or iterative improvement techniques within GenAI or agentic workflows where appropriate.
- Collaborate closely with product, data science, and domain experts to translate real-world supply chain requirements into intelligent automation solutions.
- Guide system architecture across distributed services, event-driven systems, and real-time data pipelines using cloud-native patterns.
- Mentor engineers, influence technical direction, and establish best practices for agentic AI and ML systems across teams.
Required Qualifications :
- 4+ years of experience building and operating cloud-native SaaS systems on AWS, GCP, or Azure (minimum 5 years with AWS).
- Strong ML Engineer / Software Engineer background with deep practical exposure to data science and GenAI systems.
- Expert-level, hands-on experience designing, deploying, and maintaining large multi-agent systems in production.
- Proven experience with advanced RAG and context management, including memory, state handling, tool grounding, and long-running workflows.
- 4+ years of hands-on Python experience delivering production-grade systems.
- Practical experience evaluating, monitoring, and improving non-deterministic AI behavior in real-world deployments.
- Hands-on experience with agent frameworks such as LangGraph, AutoGen, CrewAI, Semantic Kernel, or equivalent.
- Solid understanding of distributed systems, microservices, and production reliability best practices.
Big Plus / Preferred Qualifications :
- Hands-on experience fine-tuning LLMs or SLMs for domain-specific tasks (training, evaluation, deployment).
- Experience designing and deploying agentic systems in supply chain domains (logistics, manufacturing, planning, procurement).
- Strong knowledge of knowledge organization techniques, including RAG, Advanced RAG, hybrid search, and reranking.
- Experience applying reinforcement learning, reward modeling, or iterative optimization in GenAI workflows.
- Familiarity with Java and JavaScript/ECMAScript.
- Experience deploying AI solutions in regulated or enterprise environments with governance, security, and compliance requirements.
- Knowledge of life sciences supply chain or regulated industry ecosystems.
Who You Are :
- A hands-on technical leader who moves seamlessly between architecture and implementation.
- A builder who values practical, production-ready solutions over prototypes.
- Comfortable designing systems with probabilistic and emergent behavior.
- Passionate about building GenAI systems that are reliable, observable, explainable, and scalable.
- A clear communicator who can align stakeholders and drive execution across teams.
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