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What you’ll be doing:
Architect, analyze, develop, and prototype key deep learning algorithms and solutions as a core member of our growing software team.
Collaborate with diverse software, research, and hardware teams across geographies to analyze the interplay of hardware and software architectures solve critical problems and future applications
Develop algorithms (such as zero/few-shot learning, unsupervised learning) to address data scarcity and collection challenges.
Apply generative models (Diffusion, GANs, VAEs) and LLMs for data generation to overcome data scarcity issues.
Drive the design and implementation of complex AI projects, providing technical guidance and support, mentoring junior engineers.
Create and refine algorithms for a varied number of computer vision and multi-modal tasks
What we need to see:
3 years or more of working experience
MS or PhD or equivalent experience in Computer Science, Computer Engineering, Electrical Engineering, or a related field with a focus on Deep Learning, Machine Learning, and Computer Vision.
Experience in algorithm development for AI, computer vision or multi-modal algorithms, especially with LLMs and Multi-Modal Foundation models.
Experience working with and curating multi-modal datasets.
Experience with algorithms including zero/few-shot learning, fully-supervised, weakly-supervised, self-supervised and unsupervised learning techniques, and domain adaptation techniques like Parameter Efficient Fine-Tuning
Proficiency in working with deep learning frameworks such as TensorFlow and PyTorch, Strong programming skills in Python and/or C++, and Experience developing integrated AI solutions.
Ability to lead projects, manage timelines, and deliver results.
Expert analytical and problem-solving skills with a focus on practical and scalable AI solutions.
Strong communication skills and ability to work in a collaborative environment.
Ways to stand out from the crowd:
Proven experience in building and deploying optimized AI models
Experience with model optimization techniques like model distillation, quantization, and pruning
Experience with techniques for optimizing training and fine-tuning pipeline development such as PEFT, AutoML
Background with NVIDIA SDKs such as TensorRT, RAPIDS, CUDA, and CUDNN
You will also be eligible for equity and .
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