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Machine Learning Engineer

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Overview

Schedule
Full-time
Career level
Senior-level
Remote
Hybrid remote
Benefits
Health Insurance
Dental Insurance
Vision Insurance

Job Description

About Apiphany

Apiphany is a pioneering foundational AI company for physical product development. We empower global innovators in automotive, aerospace, medtech, and energy to transform mountains of unstructured technical data into real-time, actionable insights. Backed by world-class investors from Markforged, Databricks, GM, and Character, our mission is to revolutionize how engineering decisions are made, turning complexity into clarity for the world’s top manufacturers.

Our models are built for the complexities of engineering and manufacturing. Our models understand physics principles, design specifications, and program constraints. We’re a small, elite team of builders from Stanford, Berkeley, MIT, UW, and CMU, alongside industry leaders from GM, Ford, and Genesis Therapeutics. We’re passionate about transforming hard-tech and building a category-defining company together.

About the Role

As a ML Engineer at Apiphany, you’ll develop and implement advanced machine learning models to tackle some of the hardest problems in the physical world. You’ll design systems that can reason about complex engineering data and build AI that understands physics, design constraints, and real-world performance tradeoffs.

This is a role for builders who want to push the frontier of what AI can do in the physical world.

Experience & Skills

  • Expert-level programming skills in Python

  • Solid understanding of deep learning and its applications in natural language processing (NLP)

  • Deep understanding of large language models (LLMs)

  • Exceptional problem-solving skills and a passion for pushing the boundaries of AI technology.

Bonus Skills

  • Background in competitive programming.

  • Contributions to open-source initiatives.

Personality & Values:

  • Startup mindset: bias toward action, rapid iteration, and ownership

  • Mission-driven and customer-obsessed

  • Self-motivated, collaborative, and eager to raise the bar for the whole team

  • Passion for building in a fast-paced, hyper-growth startup environment.

Benefits:

  • Visa Sponsorship

  • Hybrid work: 3 days in San Francisco office

  • 401(k) plan

  • Medical, Dental, and Vision insurance coverage

  • Snacks at the office

  • Paid Time Off (PTO): Flexible vacation policy

Automate your job search with Sonara.

Submit 10x as many applications with less effort than one manual application.

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FAQs About Machine Learning Engineer Jobs at Apiphany

What is the work location for this position at Apiphany?
This job at Apiphany is located in San Francisco, California, according to the details provided by the employer. Some roles may also include multiple work locations depending on the requirement.
What pay range can candidates expect for this role at Apiphany?
Employer has not shared pay details for this role.
What employment applies to this position at Apiphany?
Apiphany lists this role as a Full-time position.
What experience level is required for this role at Apiphany?
Apiphany is looking for a candidate with "Senior-level" experience level.
What benefits are offered by Apiphany for this role?
Apiphany offers following benefits: Health Insurance, Dental Insurance, Vision Insurance, Paid Vacation, Flexible/Unlimited PTO, and 401k Matching/Retirement Savings for this position. Actual benefits may vary depending on the employer's policies and employment terms.
What is the process to apply for this position at Apiphany?
You can apply for this role at Apiphany either through Sonara's automated application system, which helps you submit applications 10X faster with minimal effort, or by applying manually using the direct link on the job page.