Staff Applied AI Engineer

Snowflake Snowflake · Data AI · Warsaw, Poland · Engineering

Staff Applied AI Engineer role at Snowflake focused on leading customer engagements for enterprise AI programs, including agentic AI solutions and LLM-based applications. The role involves hands-on technical leadership, mentoring engineers, and owning the full lifecycle from scoping to deployment and monitoring, with a strong emphasis on productionizing AI at scale and advising customers.

What you'd actually do

  1. Own the full lifecycle of complex, multi-engineer AI engagements — from scoping and architecture through deployment, monitoring, and handoff. Be accountable for delivery quality and customer outcomes across your portfolio of strategic accounts.
  2. Provide day-to-day technical leadership and mentorship to a team of 2–4 Applied AI Engineers. Review designs and code, unblock teammates, and actively develop their skills and careers.
  3. Remain a hands-on contributor — designing, iterating, and shipping high-quality ML pipelines and agentic AI solutions alongside your team. Translate ambiguous business objectives into robust, scalable, and performant solutions.
  4. Own the full implementation lifecycle for AI solutions, from developing prototypes to deploying, monitoring, and optimizing them in secure, large-scale production environments. Define evaluation frameworks, safety guardrails, observability, and human-review workflows that keep AI applications reliable, measurable, and trustworthy in production.
  5. Serve as a senior technical advisor to customer data science and engineering leadership. Set the standard for how Snowflake AI is deployed and articulate complex technical concepts to both technical and executive stakeholders.

Skills

Required

  • Demonstrated experience leading technical projects or teams, including setting technical direction, reviewing others' work, and driving delivery to completion.
  • Excellent problem-solving and communication skills, with an ability to articulate complex technical concepts to both technical and executive stakeholders.
  • Comfort with ambiguity and the ability to independently structure and execute on complex, open-ended problems.
  • Proven experience building and productionizing applications using LLMs, especially with technologies like RAG and agentic workflows.
  • 8+ years of professional software engineering experience.

Nice to have

  • Hands-on experience with the MLOps lifecycle, including model deployment, monitoring, and evaluation in a cloud environment (AWS, Azure, or GCP).
  • Familiarity with core data science libraries and tools (e.g., pandas, numpy, Snowpark).
  • Experience in a customer-facing technical role.
  • Experience defining and executing AI project roadmaps across multiple concurrent engagements or customers.
  • Startup experience or experience in a high-growth, fast-paced environment.

What the JD emphasized

  • Own the full lifecycle of complex, multi-engineer AI engagements
  • productionizing AI at scale
  • agentic AI solutions
  • LLMs
  • RAG
  • agentic workflows
  • MLOps lifecycle
  • model deployment, monitoring, and evaluation

Other signals

  • end-to-end delivery of enterprise AI programs
  • leading a team of 2-4 engineers
  • productionize AI at scale
  • customer-facing technical role