Senior AI and ML Engineer, Agentic AI Systems

NVIDIA NVIDIA · Semiconductors · Hanoi, Vietnam +1

Senior AI/ML Engineer focused on building and advancing agentic AI systems, combining LLMs, retrieval, and reasoning capabilities for autonomous problem-solving and knowledge retrieval. The role involves designing, developing, and optimizing these systems for production, with a strong emphasis on evaluation, experimentation, and improving accuracy, robustness, and user trust.

What you'd actually do

  1. Design and develop AI-powered systems that combine large language models, retrieval architectures, knowledge systems, and agentic workflows.
  2. Develop capabilities that enable AI systems to reason across multiple information sources and generate high-quality recommendations.
  3. Build intelligent workflows that continuously improve through evaluation, feedback, and experimentation.
  4. Explore emerging approaches in AI agents, planning systems, memory architectures, reasoning frameworks, and autonomous workflows.
  5. Collaborate with software engineers to transform research concepts into reliable production capabilities.

Skills

Required

  • Python
  • building AI/ML systems in production environments
  • large language models (LLMs)
  • Retrieval-Augmented Generation (RAG)
  • AI agents
  • intelligent software systems
  • designing experiments
  • evaluating model performance
  • machine learning fundamentals
  • modern AI system architectures
  • retrieval systems
  • embeddings
  • vector databases
  • semantic search technologies
  • information retrieval
  • debugging
  • analytical thinking
  • problem-solving skills

Nice to have

  • building production AI copilots, agents, or autonomous systems
  • designing evaluation frameworks, benchmark suites, or model comparison pipelines
  • retrieval systems
  • semantic search
  • ranking systems
  • recommendation systems
  • knowledge graphs
  • improving AI accuracy through retrieval optimization, workflow design, and prompt engineering
  • training, fine-tuning, adapting, or evaluating foundation models
  • applying AI to software engineering, debugging, developer productivity, or operational workflows
  • Contributions to open-source AI projects, research publications, or technical communities

What the JD emphasized

  • AI agents
  • reasoning
  • evaluation
  • retrieval architectures
  • agentic workflows
  • autonomous systems
  • evaluating model performance
  • retrieval systems
  • vector databases
  • semantic search
  • evaluation frameworks
  • retrieval optimization
  • foundation models
  • AI accuracy
  • reliable production systems

Other signals

  • design and develop AI-powered systems that combine large language models, retrieval architectures, knowledge systems, and agentic workflows
  • develop capabilities that enable AI systems to reason across multiple information sources and generate high-quality recommendations
  • build intelligent workflows that continuously improve through evaluation, feedback, and experimentation
  • explore emerging approaches in AI agents, planning systems, memory architectures, reasoning frameworks, and autonomous workflows
  • collaborate with software engineers to transform research concepts into reliable production capabilities
  • design and execute experiments to improve model accuracy, robustness, and user trust
  • build evaluation, benchmarking, and testing frameworks for AI systems
  • design and optimize retrieval architectures, semantic search systems, vector databases, and knowledge pipelines