Collaborate with cross-functional teams to design and implement machine learning models and algorithms for audio processing, analysis, and enhancement.
Train, validate, and fine-tune machine learning models for various applications.
Evaluate and benchmark the performance of machine learning models using appropriate metrics and statistical techniques.
Collaborate with software engineers to integrate machine learning algorithms into audio software products and ensure seamless functionality and performance.
Debug and solve issues related to machine learning algorithms and audio software applications.
Document software development processes, algorithms, and experiments, and communicate findings and recommendations to the team effectively.
Our Minimum Qualifications for this Role:
Ph.D. in relevant field with 0+ years or Masters in relevant field with 3+ years of experience in developing and deploying machine learning models for audio related applications.
Must have Strong programming skills in Python and Matlab, with experience in audio processing libraries (e.g., librosa, torch audio, or similar).
Must understand machine learning techniques, including deep learning architectures (e.g., CNNs, RNNs, GANs) and relevant frameworks (e.g., PyTorch).
Must be proficiency in data preprocessing, feature extraction, and data augmentation techniques for audio.
Expected to have strong problem-solving skills and ability to think creatively to devise innovative solutions to audio-related challenges is required.
Our Preferred Qualifications for this Role:
Familiarity with audio signal processing concepts, such as Fourier analysis, spectral modeling, and time-frequency representations is essential.