Applied AI Engineer
Indexed description
Luminai structures the chaos, automates the manual handoffs, and deploys end-to-end workflows across every system, providing the integrated intelligence layer to improve processes over time. By delegating to autonomous AI systems those mission-critical workflows that previously expended valuable human time, Luminai allows doctors and administrators to do what they do best: Focus on Patients.
We've raised $60M in funding, including our recent Series B led by Peak XV Partners (formerly Sequoia India), with participation from healthcare-focused Define Ventures and continued support from General Catalyst and Y Combinator. We're backed by some of the best investors in Silicon Valley, including Kevin Weil (Chief Product Officer at OpenAI), Arash Ferdowsi (co-founder of Dropbox), Katie Stanton (former VP Global Media, Twitter), and CEOs of companies such as Flexport, Notion, Front, Ramp, and Twitch.
Our team is in-office 3 days a week (Mon, Tue, Thu) in either San Mateo, California or New York, New York.
About The Role
As a Software Engineer working on AI systems, you will play a foundational role in research, experimentation and rapid improvement of AI systems towards building a capable, reliable AI automation platform. The platform is used by organizations worldwide to deploy and scale executable AI automations in mission critical production environments. You are expected to have a strong proficiency in fundamentals of software engineering, a willingness to pick new concepts as needed and an ability to drive technical projects in ambitious environments.
What You'll Do
- Design experiments and test ideas to optimize key internal AI benchmarks
- Design and improve evaluation frameworks to accelerate the speed and direction of experimentation
- Train, fine-tune, and optimize machine learning models. Perform rigorous evaluation and testing to ensure model accuracy, generalization, and performance.
- Collaborate and contribute on the core product development to deliver higher platform capabilities
- Set up observability and monitoring systems to safety check model behavior in critical settings
- Proven track record of shipping high-quality code in challenging projects
- Bachelor's or Master's degree in Computer Science, Machine Learning, or a related field
- Solid fundamentals in algorithms, data structures, system design
- Attention to detail and a first-principles thinking towards real world deployment of intelligent systems.
- Experience shipping ML models to production
- Previous experience working with distributed computing systems in production
Create a free Caio profile to unlock more results and save your role and location preferences.
Unlock free search