Bose Corporation
Framingham, MA, USA

DSP/ML Research Engineer Co-op

Hybrid$40 – $51/hrPosted 2 weeks agoWebsiteLinkedIn

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About this role

ABOUT THE CO-OP PROGRAM

Bose Corporation is seeking students to participate in our Co-op Program who share our belief that sound is power. During the six-month co-op, students will have the chance to apply classroom learning in a hands-on work environment. Co-op participants will network across the business to gain diverse perspectives within Bose Corporation. Additionally, co-ops will connect with other students and colleagues, building valuable professional relationships for the future.

Fall Co-op: Candidates must be available to work full-time (40 hours per week) in a hybrid, in-office format from July 13 through December 18, 2026. No relocation assistance is available.

THE ROLE

We are looking for a Machine Learning/DSP Engineer Co-op to join our research lab this spring! In this role you will help build our next generation of wearable and out-loud product experiences enabling people to hear better, relish musical experiences, and achieve more. The duration of this position is 6 months starting July 2026 (full-time 40 hours/week).

Responsibilities

  • Develop and evaluate DSP and Machine Learning algorithms with a focus on room acoustic applications.
  • Develop acoustic simulations experiments using common simulation packages.
  • Research, implement and evaluate a variety of published approaches and algorithms for problems in DSP, Machine Learning, and audio signal processing.
  • Develop machine learning models, training data, and evaluation infrastructure.

Minimum Qualification

  • Currently in the process of obtaining a M.S., or PhD in Electrical Engineering, Acoustic Engineering, Computer Science, or related field.
  • Strong experience with programing in Python and MatLab.
  • Strong experience with TensorFlow or PyTorch.
  • Experience with Pyroomacoustics, COMSOL or similar acoustic modeling packages
  • Familiar Machine Learning, including deep learning neural networks, transfer learning, and training data development.
  • Familiar with real time processing applications.
  • Familiar with room acoustics, geometric, and wave based acoustic modeling.
  • Experience with cross-group and cross-culture collaboration.
  • High levels of creativity and quick problem-solving capabilities.

Preferred Qualification

  • Demonstrated Machine Learning Engineer experience via an internship, co-op, class, or personal project.
  • Knowledge of embedded DSP.
  • Knowledge of C/C++, and bash scripting
  • Music or Acoustic experience and interests