staff machine learning Applied Scientist ic
$228,600 – $342,800
USD per year

About this role

Databricks is hiring a staff-level Applied Scientist in the machine learning function based in Mountain View, CA | San Francisco, CA. The posting calls out experience with SQL, Elasticsearch, Spark, Databricks. Compensation is listed at $228,600–$342,800 per year.

Role
Applied Scientist
Function
machine learning
Level
staff
Track
Individual contributor
Employment
Full-time
Location
Mountain View, CA | San Francisco, CA
Department
Engineering

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Job description

from Databricks careers

P-1549

At Databricks, we are passionate about enabling data teams to solve the world's toughest problems — from making the next mode of transportation a reality to accelerating the development of medical breakthroughs. We do this by building and running the world's best data and AI infrastructure platform so our customers can use deep data insights to improve their business.

The Mission

Databricks agents are only as good as the context they can retrieve. Whether an agent is answering a question about last quarter's revenue, debugging a failing job, generating SQL against a 10,000-table lakehouse, or summarizing a Wiki page, its quality is bounded by what it can find — and how well it understands what it finds.

We are hiring a Senior Staff Applied AI Engineer to own context retrieval for Databricks agents across SaaS providers. This is a zero-to-one role with two deeply connected charters:

  1. Build the retrieval stack — query understanding, content understanding, ranking, retrieval, and evaluation — across the Enterprise SaaS data stored across multiple systems.
  2. Build the search subagents that sit on top of that stack and reason about what context is needed, how to retrieve it, and whether the right thing actually came back — closing the loop between an agent's intent and the substrate that serves it.
  3. This is an excerpt. Read the full job description on Databricks careers →
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