Deepgram · 16 hours ago
Research Scientist - Voice AI Foundations
Maximize your interview chances
Artificial Intelligence (AI)Data Collection and Labeling
Insider Connection @Deepgram
Get 3x more responses when you reach out via email instead of LinkedIn.
Responsibilities
Design and carry out experimental programs to build new speech and language AI foundation models across modalities and tasks, that solve critical problems for our customers.
Drive large-scale training jobs successfully on massive distributed computing infrastructure.
Optimize model architectures to make them as fast and memory-efficient as possible; deploy new models into production for use at massive scale.
Document and present results and complex technical concepts clearly for internal and external audiences
Stay up to date with the latest advances in deep learning with a particular eye towards their implications and applications within our products.
Qualification
Find out how your skills align with this job's requirements. If anything seems off, you can easily click on the tags to select or unselect skills to reflect your actual expertise.
Required
PhD in Physics, Electrical Engineering, Computer Science or another related field
Prior experience in designing and conducting experimental programs aimed at understanding complex phenomena, with the ability to rapidly iterate and change course as needed.
Proven experience building models from a blank page and owning the entire deep learning stack including data curation, characterization and cleaning, architecture design and model building, distributed large-scale training, and model optimization for inference.
Strong communication skills and the ability to translate complex concepts in simple terms, depending on the target audience
Strong software engineering skills with particular emphasis on developing clean, modular code in Python and working with Pytorch.
Preferred
Prior industry experience in building deep learning models to solve complex problems, with a solid understanding toward the applications and implications of different neural network types, architectures, and loss mechanisms.
Deep understanding and experience working with state-of-the-art network architectures including transformers.
Understanding of different parallelism paradigms for efficient distributed training.
Company
Deepgram
Power your apps with real-time voice AI by Deepgram
Funding
Current Stage
Growth StageTotal Funding
$85.92MKey Investors
Tiger Global ManagementIn-Q-TelWing Venture Capital
2022-11-29Series B· $47M
2021-02-03Series B· $25M
2020-06-04Series Unknown· undefined
Company data provided by crunchbase