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AssemblyAI

Software Engineer, Machine Learning

Posted 2 Days Ago
Remote
Hiring Remotely in USA
158K-175K
Mid level
Remote
Hiring Remotely in USA
158K-175K
Mid level
As a Machine Learning Engineer, you will accelerate AI research-to-production by building infrastructure for deploying and testing models, and creating high-performance inference pipelines, while collaborating closely with research and engineering teams.
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About AssemblyAI

At AssemblyAI, we’re building at the forefront of Speech AI, creating powerful models for speech-to-text and speech understanding available through a straightforward API. With more than 200,000 developers building on our API and over 5,000 paying customers, AssemblyAI is helping unlock and support the next generation of powerful, meaningful products built with AI. 

Progress in AI is moving at an unprecedented pace– and our team is made up of experts in AI research that are focused on making sure that our customers are able to stay on the cutting edge, with production-ready AI models that are constantly updating and improving as our team continues to improve accuracy, latency, and what’s possible with Speech AI. Our models consistently rank highest in industry benchmarks for accuracy, outperforming models from Google and Amazon, and up to 30% fewer hallucinations than OpenAI’s Whisper. Our models power more than 2 billion end-user experiences each day, helping companies better understand customer feedback, run more productive meetings with automated meeting notes, and helping improve childhood literacy via ed tech tools. 

We’ve raised funding by leading investors including Accel, Insight Partners, Y Combinator’s AI Fund, Patrick and John Collision, Nat Friedman, and Daniel Gross. We’re a remote team looking to build one of the next great AI companies, and are looking for driven, talented people to help us get there!

About the role:

We're looking for a Machine Learning Engineer to accelerate our AI research-to-production pipeline. This person will build infrastructure enabling our research team to rapidly deploy and safely test new models while maintaining efficient, scalable production inference systems. This person should have a strong backend engineering background in distributed systems and containerization, and be deeply interested in optimizing the path from research innovation to production value. This is a cross-functional role that requires close collaboration with both research teams developing models and engineering teams supporting the broader platform.

What You’ll Do:
  • Design and implement tooling that enables researchers to quickly deploy and evaluate new models in production 
  • Build and maintain high-performance, cost-efficient inference pipelines in production
  • Optimize infrastructure for both iteration speed and production reliability
  • Develop and maintain user-facing APIs that interact with our ML systems
  • Implement comprehensive observability solutions to monitor model performance and system health
  • Troubleshoot complex production issues across distributed systems
  • Continuously improve our MLOps practices to reduce friction between research and production
What You’ll Need:
  • Strong backend engineering experience with Python
  • Experience building and operating distributed, containerized applications, preferably on AWS 
  • Proficiency implementing observability solutions (monitoring, logging, alerting) for production systems
  • Ability to design and implement resilient, scalable architectures

An ideal candidate should also have some of the following:

  • MLOps experience, including familiarity with PyTorch and Kubernetes
  • Experience working in startup environments demonstrating ownership, decisiveness, and rapid iteration
  • Experience collaborating with remote, globally distributed teams
  • Comfort working across the entire ML lifecycle from model serving to API development
  • Experience in audio-related domains (ASR, TTS, or other domains involving audio processing)
  • Experience with other cloud providers
  • Familiarity with Ray.io, Bazel, and monorepos
  • Experience with alternative ML inference frameworks beyond PyTorch
  • Experience optimizing for low-latency, real-time inference

Pay Transparency:

AssemblyAI strives to recruit and retain exceptional talent from diverse backgrounds while ensuring pay equity for our team. Our salary ranges are based on paying competitively for our size, stage, and industry, and are one part of many compensation, benefit, and other reward opportunities we provide.

There are many factors that go into salary determinations, including relevant experience, skill level, qualifications assessed during the interview process, and maintaining internal equity with peers on the team. The range shared below is a general expectation for the function as posted, but we are also open to considering candidates who may be more or less experienced than outlined in the job description. In this case, we will communicate any updates in the expected salary range.

The provided range is the expected salary for candidates in the U.S. Outside of those regions, there may be a change in the range which will be communicated to candidates throughout the interview process.

Salary range: $157,500-$175,000

Working at AssemblyAI

We are a small but mighty group of startup veterans and experienced AI researchers with over 20 years of expertise in Machine Learning, Speech Recognition, and NLP. As a fully remote team, we’re looking for people to join our team who are ambitious, curious, and lead with integrity. We’re still in the early days of AI and of AssemblyAI’s journey, and are looking for teammates who won’t just fit in, but will help us define and build our company culture. 

We’re committed to creating a space where our employees can bring their full selves to work and have equal opportunity to succeed. No matter your race, gender identity or expression, sexual orientation, religion, origin, ability, age, veteran status, if joining this mission speaks to you, we encourage you to apply!

Keep Exploring AssemblyAI:

Check us out on YouTube!

Learn more about AI models for speech recognition

Core Transcription | Audio Intelligence | LeMUR | Try the Playground

Our $50M Series C fundraise

Top Skills

AWS
Bazel
Kubernetes
Python
PyTorch
Ray.Io

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