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Applied ML Engineer

Job in San Francisco, San Francisco County, California, 94199, USA
Listing for: Knowtex
Full Time position
Listed on 2026-06-17
Job specializations:
  • Software Development
    Machine Learning/ ML Engineer, AI Engineer (Applied/Software)
Salary/Wage Range or Industry Benchmark: 80000 - 100000 USD Yearly USD 80000.00 100000.00 YEAR
Job Description & How to Apply Below

About Knowtex

Knowtex is building the future of voice AI operating systems for clinicians, transforming how healthcare documentation happens at the point of care. Founded by Stanford AI scientists with deep clinical experience, we’re experiencing explosive growth across both commercial health systems and federal healthcare, with our ambient documentation platform scaling rapidly to thousands of clinicians across hundreds of specialties. We’re at an inflection point where cutting‑edge AI meets real clinical impact, giving clinicians hours back each day to focus on what matters most – their patients.

Position Overview

We are seeking an Applied ML Engineer to product ionize and scale machine learning systems powering our voice AI platform. This role bridges research and engineering — transforming models into reliable, low‑latency, production‑grade systems deployed across enterprise healthcare environments.

You will work closely with ML Scientists, Backend Engineers, and Platform teams to optimize inference performance, build evaluation pipelines, and ensure robust model deployment in regulated environments.

Key Responsibilities
  • Productionize ML models for real‑time clinical applications

  • Optimize inference pipelines for low latency and high throughput

  • Deploy and scale models using AWS‑based infrastructure

  • Build automated evaluation and regression testing frameworks for LLM outputs

  • Implement monitoring systems for model performance and drift detection

  • Collaborate with Backend teams to integrate ML services into APIs and workflows

  • Improve model efficiency through quantization, batching, caching, and optimization techniques

  • Support specialty‑level model evaluation and performance analysis

  • Contribute to CI/CD workflows for ML deployment

Required Qualifications
  • 3–7 years of experience in machine learning engineering or applied ML roles

  • Strong proficiency in Python and PyTorch (or Tensor Flow)

  • Experience deploying ML models in production environments

  • Familiarity with transformer architectures and large language models

  • Experience with model optimization techniques (quantization, distillation, pruning)

  • Experience working with cloud infrastructure (AWS preferred)

  • Strong software engineering fundamentals and debugging skills

Preferred Qualifications
  • Experience with speech recognition systems or NLP pipelines

  • Experience with Triton Inference Server or similar deployment frameworks

  • Familiarity with healthcare data or clinical documentation workflows

  • Experience working in regulated environments (HIPAA, Gov Cloud, etc.)

  • Knowledge of medical coding systems (ICD‑10, CPT)

Technical Environment
  • Python, PyTorch / Tensor Flow

  • Transformer‑based LLM architectures

  • AWS (Sage Maker, ECS, Lambda, S3)

  • Triton Inference Server

  • CI/CD pipelines for ML deployment

  • Observability tools for performance and drift monitoring

Compensation & Benefits
  • Meaningful equity compensation

  • Unlimited PTO

  • Premium health, dental, and vision coverage

  • 401(k) plan

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