Develops and operates large-scale search engine infrastructure, including retrieval algorithms, indexing, and ML ranking models integrated with Grok AI. Requires experience with search systems, vector databases, and production ML in Python, Go, or Rust.
180k – 440k
On-siteML Engineering
About the role
Responsibilities
Build search and retrieval algorithms that scale to millions of users
Build and operate large scale search engine and search infrastructure
Train state of the art ML ranking models
Integrate Grok in search systems and products
Basic Qualifications
Tech Stack: Python, Go, Rust
Have worked with vector databases, search indices, or similar data stores for search applications
Have worked on large-scale search systems
Have deep experience building or working with production ML systems
Take full ownership of problems and learn whatever you need to solve them
Can move quickly in a fast-paced environment with shifting priorities and tight deadlines
Compensation and Benefits
$180,000 - $440,000 USD
Base salary is just one part of total rewards package, which also includes equity, comprehensive medical, vision, and dental coverage, access to a 401(k) retirement plan, short & long-term disability insurance, life insurance, and various other discounts and perks
Skills
PythonGoRustVector DatabasesSearch IndicesMl Ranking ModelsInformation RetrievalProduction Ml Systems
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