AI Engineer

Posted 6hrs ago

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Job Description

AI Engineer developing LLM-powered solutions for a premier AI services provider. Collaborating with engineering to implement AI innovations and enhance product features.

Responsibilities:

  • Architect and implement production-ready AI solutions involving LLMs, transformer-based models, retrieval systems, agentic workflows, and AI agents for generative tasks and automation.
  • Design and iterate on prompts, workflows, and RAG pipelines to improve accuracy, cost-efficiency, latency, and safety.
  • Design and build multi-step agentic systems that break down complex tasks, invoke external tools or APIs, manage state, and handle reasoning chains robustly.
  • Deploy models and GenAI pipelines in production environments (API, batch, streaming), ensuring reliability and scalability.
  • Build and maintain evaluation frameworks to measure model grounding, factuality, latency, and cost.
  • Develop and integrate guardrails (e.g., prompt-injection protections, content moderation, output validation), and safeguards for agent loops (e.g., loop prevention, tool call limits, state validation).
  • Collaborate cross-functionally with Product, Engineering, and ML Ops to deliver high-quality AI features end-to-end.

Requirements:

  • 3+ years applied machine learning, with hands-on focus on NLP, transformers, or generative AI systems.
  • Hands-on experience with LLM-related libraries (e.g. LangChain, LlamaIndex, OpenAI API, CrewAI, or similar) and services (Azure Prompt flow, AWS Bedrock agents, or similar)
  • Experience designing multi-step agents that combine LLM reasoning with tool/API calls, with safeguards against errors, loops, and unsafe tool use.
  • Proven experience building and deploying machine learning models to production (API, batch, or streaming).
  • Fluency in Python, with clean, modular, production-grade code practices.
  • Strong ability to design and analyze ML experiments; track performance using metrics, not gut feel.
  • Ability to develop, deploy and monitor AI-powered applications in cloud environments (e.g. AWS, Azure, GCP) using APIs, batch, or streaming architectures.
  • Familiarity with containerization, versioning, and CI/CD.
  • Experience implementing privacy, bias mitigation, safety guardrails, or related practices.
  • Degree in Computer Science, Data Science, Engineering, or a related field (or equivalent experience).
  • Expertise in transformer-based models and LLM architectures.
  • Strong collaborator who thrives at the intersection of DS + Engineering.

Benefits:

  • medical
  • dental
  • vision
  • 401K
  • PTO
  • paid holidays
  • commuter benefits
  • spending accounts
  • life insurance
  • disability coverage
  • EAPs