Jobs Companies Plaud Machine Learning Engineer, Speech LLM Training - San Francisco

About this Machine Learning Engineer, Speech LLM Training - San Francisco role at Plaud

Plaud · Hybrid · San Francisco, CA

About Plaud Inc.

Plaud is building the world's most trusted AI work companion for professionals to elevate productivity and performance through note-taking solutions, loved by over 1,500,000 users worldwide since 2023. With a mission to amplify human intelligence, Plaud is building the next-generation intelligence infrastructure and interfaces to capture, extract, and utilize what you say, hear, see, and think.

 

Plaud Inc. is a Delaware-incorporated, San Francisco-based company pushing the boundary of human–AI intelligence through a hardware–software combination. With SOC 2, HIPAA, GDPR, ISO27001, ISO27701, and EN18031 compliance, Plaud is committed to the highest standards of data security and privacy protection.

To learn more about Plaud, please visit https://www.Plaud.ai and follow along on Instagram, X, Facebook, LinkedIn, and YouTube

 

Why You Should Join Us

Plaud is building the next generation intelligence infrastructure and interfaces to capture, extract, and utilize intelligence from what people say, hear, see, and think.

  • Plaud is a bootstrapped, skyrocketing, profitable company with a $250M revenue run rate achieved in just three years.

  • Define the next-gen paradigm for human-AI interaction.

  • Gain exposure to cutting-edge AI for Pro tools and play a direct role in our global expansion.

  • Work with passionate teammates who value innovation, collaboration, and customer success.

  • Grow your career in a culture that champions continuous learning and fast career development.

  • Market-competitive compensation, global exposure, and a vibrant, creativity-fueled work atmosphere.

 

You may be a good fit if you:

  • Have a proven track record of building and training large-scale audio or speech models from the ground up, whether that involves unified SpeechLLMs, advanced ASR, expressive TTS, or generative audio architectures.

  • Love living at the intersection of research and engineering, eager to design novel sequence modeling architectures one day and debug distributed training clusters the next.

  • Are highly comfortable traversing the entire stack—from fundamental signal processing and raw acoustic representations to massive foundation model training and edge-device optimization.

  • Possess deep expertise in PyTorch or JAX, with battle scars from optimizing large-scale distributed training runs, managing GPU memory utilization, and resolving complex performance bottlenecks.

  • Thrive in a fast-paced, high-growth startup environment where you are expected to take extreme ownership of ambiguous problems and drive them directly into production.

  • Are obsessed with building AI systems that natively understand and generate speech, ultimately creating a hardware-software AI companion that amplifies human productivity.

 

Strong candidates may also have experience with:

  • Text-based LLMs: Hands-on experience with core text-based Large Language Model pretraining, instruction tuning, or RLHF.

  • Neural Audio Codecs: Hands-on experience designing and training state-of-the-art neural audio codecs for streamable, high-fidelity audio.

  • Generative Architectures: Designing and training diffusion models, flow matching, or autoregressive architectures specifically for speech and voice generation.

  • Alignment & Steerability: Applying Reinforcement Learning (RL) techniques (like RLHF or GRPO) to improve conversational cadence, steerability, and alignment in foundation models.

  • Deep System Optimization: End-to-end inference and performance optimization, leveraging high-throughput serving frameworks (e.g., vLLM, TensorRT-LLM, SGLang) to minimize latency for real-time cloud streaming.

  • Large-Scale Infrastructure: Managing massive GPU clusters, utilizing advanced distributed training frameworks (e.g., FSDP, DeepSpeed), and navigating orchestration tools like Kubernetes.

 
 

What We Offer

  • Founding Team Initiative: Opportunity to be an early, foundational member of our core SpeechLLM lab, with meaningful ownership and impact on a fast-growing startup.

  • Competitive Compensation: $200K - $540K base salary + performance bonus + Equity.

  • Comprehensive Benefits: Top-tier healthcare for employees and dependents, including dental and vision, and a generous employer subsidy.

  • Retirement Planning: 401(k) plan for full-time employees with company matching.

  • Paid Time Off: Unlimited PTO, plus 13 paid holidays.

  • New Parent Leave: 12 weeks of paid time off to spend time with your new family, regardless of gender.

  • Hybrid Office: Minimum of 3x in-office per week to foster highly collaborative, fast-paced research.

  • Gear & Perks: Choice of top-of-the-line laptops/workstations, annual offsites, and a fully stocked office.

 

Plaud is and will continue to be an equal opportunity employer. We do not discriminate on the basis of race, religion, color, national origin, sex, sexual orientation, age, veteran status, disability, genetic information, or other applicable legally protected characteristics.

Ready to apply to Plaud?
Apply to Plaud

How this ML Engineer salary compares

This role pays $370,000/yrabove the typical range for ML Engineer roles.

$170,000 median $246,500 $345,868

Typical range $203,625–$293,188/yr, from 94 comparable ML Engineer listings on JobsRadar (pay annualized to USD). See ML Engineer salary insights →

Similar jobs

Redwood Materials
Software Engineer - ML/Computer Vision (Battery Sorting)
Redwood Materials
⚡ Apply early McCarran, NV; San Francisco, C... Onsite $152,500–$287,500
● New 👁 Seen ✓ Applied 7h ago
Handshake
Machine Learning Engineer I
Handshake
⚡ Apply early San Francisco, CA Onsite $151,000–$189,000
● New 👁 Seen ✓ Applied 3d ago
Kodiak
Staff Machine Learning Engineer - Data
Kodiak
⚡ Apply early San Francisco Bay Area Onsite $200,000–$265,000
● New 👁 Seen ✓ Applied 3d ago
Kodiak
Staff Machine Learning Engineer - Deployment
Kodiak
⚡ Apply early San Francisco Bay Area Onsite $200,000–$265,000
● New 👁 Seen ✓ Applied 3d ago
Faire
Senior Staff Machine Learning Platform Engineer
Faire
⚡ Apply early Kitchener-Waterloo, ON; Toront... Onsite $248,000–$341,000
● New 👁 Seen ✓ Applied 3d ago
Faire
Senior Staff Machine Learning Platform Engineer
Faire
⚡ Apply early San Francisco, CA Onsite $295,000–$405,500
● New 👁 Seen ✓ Applied 3d ago
Plaud
Machine Learning Engineer, Inference & Serving (Speech LLM) - San Francisco
Plaud
⚡ Apply early San Francisco, CA Hybrid $170,000–$320,000
● New 👁 Seen ✓ Applied 3d ago
Lumafield
Application Engineer, AI/ML
Lumafield
⚡ Apply early San Francisco, CA Onsite
● New 👁 Seen ✓ Applied 3d ago
DoorDash USA
Senior Software Engineer, Machine Learning Infrastructure - Generative AI
DoorDash USA
⚡ Apply early San Francisco, CA; Sunnyvale,... Onsite $137,100–$201,600
● New 👁 Seen ✓ Applied 3d ago

Sign up for suggestions tailored to the jobs you open and the searches you save.

Apply now
🤖

Whoa — hold up

JobsRadar was built for real people having a rough time in their job search — not for automated requests. You're clicking way too fast and you're now temporarily blocked.

Come back later. If you're genuinely job hunting, we've got your back — just act like a human.

Catch your next role the second it’s posted.

Create a free account and we’ll watch the boards for you — the instant a job matches your search, it lands in your inbox or Telegram. No digging, no refreshing.

Create free account

Free forever · takes 30 seconds · already have one?

Get an edge on your job hunt.

Join our Telegram channel for the stuff that helps you land the role — salary benchmarks, the weekly market pulse, and new-feature drops. No spam, just signal.

Join the channel — it's free