Design, implement, and optimize advanced generative models, including diffusion models, tailored for high-quality audio synthesis and transformation.
Collaborate with researchers to adapt, innovate, and refine existing architectures for novel and complex generative challenges.
Fine-tune and evaluate state-of-the-art deep learning models, ensuring they meet both technical benchmarks and creative intent.
Build robust pipelines for data preprocessing, augmentation, and efficient large-scale model training.
Analyze and monitor model performance using key metrics and iterate to enhance fidelity and reliability.
Work closely with engineering teams to integrate models into production environments, optimizing for performance and scalability.
Stay current with recent advancements in generative AI and bring fresh ideas into research and deployment efforts.
Requirements:
Experienced: You bring 3+ years of hands-on experience in deep learning, particularly with generative architectures.
Innovative Thinker: You're driven to push the boundaries of what generative models can achieve, always seeking smarter and more elegant solutions.
Mathematically Grounded: You possess strong knowledge in linear algebra, probability, and optimization—essential for understanding and improving model behavior.
Detail-Oriented: You rigorously test, evaluate, and tune models to ensure they perform robustly across different use cases.
Team Player: You work well in multidisciplinary environments, communicating effectively to align technical development with strategic goals.
Skills:
Proficiency with deep learning frameworks such as PyTorch or TensorFlow.
Hands-on experience with generative models like diffusion models, GANs, VAEs, or transformers.
Familiarity with audio signal processing and tools like librosa, torchaudio, or custom DSP workflows.
Knowledge of distributed training techniques and GPU/TPU performance optimization for large-scale model development.
Experience with prompt-based or conditional generation tasks.
Practical experience deploying models using cloud platforms (AWS, GCP, Azure) and containerization technologies (Docker, Kubernetes).
Strong background in managing datasets for generative applications in audio, image, or text.
Undisclosed Salary
B2B
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