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Lightfield

Software Engineer, Applied AI, New Grad

HQ: San Francisco$160k–$180kfulltimeentryAdded today

About this role

Lightfield is hiring a Software Engineer to build AI-powered CRM features that automatically organize customer interactions from email, calendar, and meetings. You'll own full-stack projects leveraging LLMs, working with a team of experienced engineers in a fast-paced startup environment.

What you'll do

  • Collaborate with product to identify problems and implement end-to-end solutions
  • Build and maintain full-stack product features ensuring reliability and scalability
  • Develop observability, metrics, and monitoring for continuous improvement
  • Participate in code reviews and contribute to engineering culture
  • Help recruit and mentor teammates on the engineering team

What they're looking for

  • TypeScript and JavaScript
  • React and Next.js
  • Node.js backend development
  • GraphQL and Apollo
  • PostgreSQL and database design
  • Large Language Models (LLMs)
  • Full-stack software engineering
  • System design and scalability

Benefits

  • Meaningful early-stage equity
  • Health insurance (medical, dental, vision)
  • 3 weeks PTO plus 11 paid holidays
  • 3 months paid family leave
  • Flexible work (Wednesdays remote)
  • 401k plan, commuter and lunch stipends
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Lightfield

Lightfield builds an AI-native CRM that automatically organizes customer interactions and powers sales teams through LLM-driven features and intelligent assistants. The company is hiring AI Product Engineers, Machine Learning Engineers, and Customer Success Engineers to develop full-stack AI capabilities, scale support systems, and shape the technical direction of their product.

View all jobs at Lightfield

Likely interview questions

  • Tell us about a time you owned a project end-to-end—how did you approach it and what was the outcome?
  • Describe your experience working with LLMs or AI systems. How would you apply that to a CRM product?