Harman International Industries

Audio ML Engineer (Research)

Harman International Industries$134K — $196K *
Consumer Technology
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • MS or PhD in Computer Science, Electrical Engineering, Statistics, or Applied Machine Learning, or BS with relevant experience.
  • 5+ years of applied ML engineering experience; 2+ years in audio/speech or time-series ML preferred.
  • Strong proficiency in Python, PyTorch/TensorFlow, and dataset pipelines.
  • Experience deploying models to embedded and/or cloud environments using MLOps practices.
  • Working knowledge of DSP/audio fundamentals and their interaction with ML.
  • Experience using AI-assisted tools for coding, testing, and documentation.

Responsibilities

  • Develop machine learning models for audio perception tasks like quality prediction and scene classification.
  • Design solutions for both on-device and cloud-based deployment.
  • Create personalization strategies that integrate with DSP pipelines.
  • Define and implement data collection, quality assurance, and experiment tracking tools.
  • Optimize ML models using techniques such as quantization and pruning.
  • Collaborate with engineering teams to deliver integration guidelines and metrics for product releases.
  • Utilize modern AI tools for faster iteration and rigorous validation of models.

Benefits

  • Flexible work environment with full-time remote options.
  • Employee discounts on leading audio products.
  • Extensive training opportunities through HARMAN University.
  • Robust wellness benefits.
  • Tuition reimbursement program.
  • Recognition and rewards program for employee contributions.
  • Commitment to an inclusive and diverse work environment.
Full Job Description
About the Role

The Audio ML Engineer (Research) develops learning-based perception and personalization models that enhance Intelligent Audio experiences across devices and contexts. You will build models that understand audio scenes, predict perceptual outcomes, personalize tuning, and drive adaptive behavior-designed from the start for embedded and cloud deployment paths. In Year 1, your work is expected to feed directly into productization by delivering models that are measurable, reproducible, and deployable (or easily productizable) with clear compute/memory tradeoffs. Success means your models improve user experience in controlled testing and remain robust in the messiness of real-world use cases.

What You Will Do

  • Learning-Based Perception Models: Develop ML models for perception-related tasks (e.g., quality prediction, artifact detection, scene/context classification, personalization embeddings, preference modeling).
  • Embedded + Cloud Deployment Focus: Design solutions that can run on-device (quantized, efficient inference) and/or scale in cloud pipelines (batch evaluation, fleet learning, offline training + on-device inference).
  • Personalization & Adaptation: Build personalization and adaptation strategies that integrate with DSP pipelines (e.g., model outputs drive adaptive EQ/DRC/spatial parameters) while maintaining stability and explainability.
  • Data Strategy & Tooling: Define data collection and labeling strategies, data QA, augmentation, bias checks, and experiment tracking-so results are reproducible and transferable to product.
  • Model Optimization: Apply compression/acceleration techniques (quantization, pruning, distillation, ONNX export, hardware-aware training) to meet latency and footprint constraints.
  • Cross-Functional Handoff: Partner with DSP, perceptual, and productization engineers to deliver reference pipelines, integration guidelines, and acceptance metrics for OneUX releases.
  • AI Tools: Use modern AI tooling (LLM-based coding assistants, data analysis copilots, automated report generation) to accelerate iteration while keeping rigorous review and validation.


What You Need to Be Successful

  • Education: MS or PhD in CS/EE/Statistics/Applied ML (or BS with strong equivalent experience).
  • Experience:5+ years applied ML engineering experience; 2+ years specifically in audio/speech or time-series ML strongly preferred.
  • ML Stack: Strong proficiency in Python, PyTorch/TensorFlow, dataset pipelines, evaluation methodology, and experiment tracking.
  • Deployment Skills: Experience deploying models to embedded (TFLite / ONNX Runtime / custom inference) and/or cloud (service or batch pipelines, MLOps practices).
  • Signal + Perception Understanding: Working knowledge of DSP/audio fundamentals and how ML interacts with perceptual outcomes.
  • AI Tools: Demonstrated experience using AI-assisted tools to speed up coding, testing, debugging, and documentation.

Bonus Points if You Have

  • Experience with audio ML domains (speech enhancement, denoising, source separation, spatial audio ML, perceptual audio metrics, recommendation/personalization).
  • Familiarity with on-device acceleration (NNAPI, Core ML concepts, CUDA/TensorRT-like optimization where applicable).
  • Experience with privacy-preserving learning or on-device personalization approaches.
  • Patents/publications or shipped ML features in consumer/automotive audio products.


What Makes You Eligible

  • Successfully complete a background investigation and drug screen as a condition of employment (post-offer).


What We Offer
  • Flexible work environment, allowing for full-time remote work globally for positions that can be performed outside a HARMAN or customer location
  • Access to employee discounts on world-class products (JBL, HARMAN Kardon, AKG, and more)
  • Extensive training opportunities through our own HARMAN University
  • Competitive wellness benefits
  • Tuition reimbursement
  • "Be Brilliant" employee recognition and rewards program
  • An inclusive and diverse work environment that fosters and encourages professional and personal development


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Salary Ranges:

$ 134,250 - $ 196,900

About Harman International Industries

Harman International Industries, Incorporated is an American company that designs and engineers connected products for automakers, consumers, and enterprises worldwide, including connected car systems, audio and visual products, enterprise automation solutions; and services supporting the Internet of Things. With leading brands including AKG, Harman Kardon, Infinity, JBL, Lexicon, Mark Levinson and Revel, HARMAN is admired by audiophiles, musicians and the entertainment venues where they perform around the world. More than 50 million automobiles on the road today are equipped with HARMAN audio and connected car systems. The Company's software services power billions of mobile devices and systems that are connected, integrated and secure across all platforms, from work and home to car and mobile. HARMAN has a workforce of approximately 30,000 people across the Americas, Europe, and Asia.
Learn more about Harman International Industries
Size
30,000 employees
Industry
Founded
1980

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