Retell AI Logo

Retell AI

Senior Machine Learning Engineer

Reposted 11 Days Ago
In-Office or Remote
6 Locations
225K-325K Annually
Senior level
In-Office or Remote
6 Locations
225K-325K Annually
Senior level
The role involves building production ML models for voice AI, focusing on fine-tuning, deploying, and evaluating models to enhance human-like interactions.
The summary above was generated by AI
ABOUT RETELL AI

Retell AI is using first principles to reimagine the call center with cutting-edge voice AI.

Thousands of companies now utilize Retell’s AI voice agents to handle sales, support, and logistics calls that once required large teams of human agents. Backed by Y Combinator, Alt Capital, and other leading investors, we have scaled to $60M ARR with a team of 40 people, up from $5M at the start of 2025.

Our vision for 2026 is to build a modern CX platform where entire contact centers are powered by AI. Instead of basic automation that needs constant human tuning, we’re creating intelligent AI “workers” that can act as frontline agents, QA analysts, and managers — continuously executing, monitoring, and improving customer interactions.

We’re growing quickly and looking for ambitious builders who want to tackle hard technical problems, move fast, and have real impact at one of the fastest-growing voice AI startups.

Let’s build the future together.

  • We’re a top 50 AI app in a16z list: https://tinyurl.com/5853dt2x

  • #4 on Brex's Fast-Growing Software Vendors of 2025: https://www.brex.com/journal/brex-benchmark-december-2025

  • We're also one of the top ranking startups on: https://leanaileaderboard.com/

  • Enterprise tech 30: https://www.wing.vc/et30/overview

ABOUT THE ROLE

This is a hands-on, high-ownership role for ML engineers who want to build production models that actually ship, and perform under real-world constraints. As a Founding Senior Machine Learning Engineer at Retell, you’ll work across the ML stack to power human-like voice agents that handle millions of real-time phone conversations.

You’ll fine-tune large language models and audio models, evaluate them with rigorous benchmarks (and human feedback), and deploy them into latency-sensitive, high-traffic systems. You’ll own model performance end-to-end—from training pipelines to post-deployment monitoring—and shape our ML strategy alongside the founding team.

If you’re excited by hard technical challenges, fast iteration, and the opportunity to define how voice AI works at scale, this role is a rare chance to do it from the ground up.

KEY RESPONSIBILITIES

  • Train & Tune Models – Fine-tune LLMs and audio models to maximize speed, accuracy, and production-readiness—pushing the frontier of real-time AI voice experiences.

  • Benchmark & Evaluate – Build datasets, define rigorous metrics, and measure model performance across high-impact voice AI tasks to guide development.

  • Deploy to Production – Work closely with engineering to ship models, monitor them in the wild, and ensure they stay fast, reliable, and accurate at scale.

  • Run Human Evaluations – Build scalable pipelines to collect structured human feedback, benchmark subjective quality, and inform model iterations.

  • Level Up Infrastructure – Design and maintain the ML infrastructure needed for fast experimentation, robust training, and continuous deployment.

YOU MIGHT THRIVE IF YOU

  • ML Engineer with Real-World Experience – You’ve trained and shipped models in production. Bonus if you’ve worked with LLMs or audio models.

  • Fluent in Modern ML Stack – You know your way around Python, PyTorch, and today’s ML tools—from training pipelines to evaluation benchmarks.

  • Execution-Oriented – You move fast, take ownership, and focus on solving real problems over perfect ones.

  • Startup-Ready – You’re adaptable, resilient, and energized by ambiguity and fast-changing priorities.

  • Clear Communicator & Team Player – You collaborate well across functions and push decisions forward.

JOB DETAILS

  • Cash: $225,000 - $325,000 base salary

  • Equity: Offers Equity

  • Location: Redwood City, CA, US

  • US Visas: Retell AI is open to sponsoring work authorization for qualified candidates, including H1B/H-1B, TN, L-1, E-3, F-1 (OPT/CPT), and O-1 visas.

OTHER BENEFITS

  • 100% coverage for medical, dental, and vision insurance

  • $70/day DoorDash credit for unlimited breakfast, lunch, dinner, and snacks

  • $200/month wellness reimbursement (gym, fitness classes, etc.)

  • $300/month commuter reimbursement (gas, Caltrain, etc.)

  • $75/month phone bill reimbursement

  • $50/month internet reimbursement

COMPENSATION PHILOSOPHY

  • Best Offer Upfront: Choose from three cash-equity balance options, no negotiation needed.

  • Top 1% Talent: Above-market pay (top 5 percentile) to attract high performers.

  • High Ownership: Small teams, >$1M revenue/employee, and significant equity.

  • Performance-Based: Offers tied to interview performance, not experience or past salaries.

INTERVIEW PROCESS

  • Talent Screen (15min): chat with our recruiter to get a better sense of the role, the team, and what it’s like to work here.

  • Technical Interview (45 min): MLE coding

  • Technical Interview (45 min): ML questions deepdive

  • Onsite/Virtual Interviews (3 hrs): Hosted in our office if located in the Bay Area or virtual, with three rounds:

    1. ML System Design: A non-coding interview focused on whiteboarding and high-level system architecture.

    2. ML Question Deep Dive: In-depth discussion exploring your approach to a machine learning problem.

    3. Backend + AI Practical: A hands-on coding interview combining backend development with AI integration.

#LI-JC1

HQ

Retell AI San Carlos, California, USA Office

1121 Industrial Rd, San Carlos, California , United States, 94070

Similar Jobs

6 Days Ago
In-Office or Remote
6 Locations
170K-280K Annually
Senior level
170K-280K Annually
Senior level
Angel or VC Firm • Financial Services
Senior Machine Learning Engineers will develop ML products and lead projects end-to-end—from initial concept through final launch—across S32 portfolio companies. Candidates should drive product direction, have strong ML engineering and productization experience, and make significant business impact.
7 Days Ago
Remote
128K-171K Annually
Senior level
128K-171K Annually
Senior level
Internet of Things
Build, operate, and optimize core AI platform components for training and serving ML models at scale. Own model serving, inference workflows, GPU orchestration, CI/CD for ML, observability, and deployment automation. Improve performance, reliability, and cost efficiency across CPU/GPU workloads, participate in incident response/on-call, mentor junior engineers, and collaborate with product, infrastructure, security, and data teams.
Top Skills: Ci/CdCloudDockerGpuKubernetesLoggingModel BatchingModel ConversionModel QuantizationObservability (MetricsPythonTracing)
20 Days Ago
Easy Apply
In-Office or Remote
United States
Easy Apply
200K-230K Annually
Senior level
200K-230K Annually
Senior level
Artificial Intelligence • Hardware • Healthtech • Software
As a Senior Machine Learning Engineer, you'll design and develop workflows utilizing vision-language models, manage data pipelines, and collaborate with multiple teams to enhance model accuracy and efficiency.
Top Skills: Cloud Inference ApisPythonPyTorch

What you need to know about the San Francisco Tech Scene

San Francisco and the surrounding Bay Area attracts more startup funding than any other region in the world. Home to Stanford University and UC Berkeley, leading VC firms and several of the world’s most valuable companies, the Bay Area is the place to go for anyone looking to make it big in the tech industry. That said, San Francisco has a lot to offer beyond technology thanks to a thriving art and music scene, excellent food and a short drive to several of the country’s most beautiful recreational areas.

Key Facts About San Francisco Tech

  • Number of Tech Workers: 365,500; 13.9% of overall workforce (2024 CompTIA survey)
  • Major Tech Employers: Google, Apple, Salesforce, Meta
  • Key Industries: Artificial intelligence, cloud computing, fintech, consumer technology, software
  • Funding Landscape: $50.5 billion in venture capital funding in 2024 (Pitchbook)
  • Notable Investors: Sequoia Capital, Andreessen Horowitz, Bessemer Venture Partners, Greylock Partners, Khosla Ventures, Kleiner Perkins
  • Research Centers and Universities: Stanford University; University of California, Berkeley; University of San Francisco; Santa Clara University; Ames Research Center; Center for AI Safety; California Institute for Regenerative Medicine

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account