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Experience in at least one machine learning platform (PyTorch, TensorFlow, Keras, MATLAB Deep Learning Toolbox or equivalent) Prior research experience to one or more of the following areas: Electromagnetics and antenna technology (simulation tools such as CST and HFSS, characterization techniques) Radio-frequency systems (wireless communication, radars, SDRs) Signal processing and machine learning (DSP, wireless perception algorithms.
ExpandApply NowActive JobUpdated 9 days ago - UpvoteDownvoteShare Job
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Data science, machine learning, optimization models, Master’s degree in Machine Learning, Computer Science, Information Technology, Operations Research, Statistics, Applied Mathematics, Econometrics, Successful completion of one or more assessments in Python, Spark, Scala, or R, Using open source frameworks (for example, scikit learn, tensorflow, torch)Primary Location.
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Hands-on experience running deep learning models on popular ML frameworks such as PyTorch, TensorFlow, ONNX, Caffe2. The Qualcomm Cloud Computing team is developing hardware and software for Machine Learning solutions spanning the data center, edge, infrastructure, automotive market.
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Experience in supporting Deep Learning, Machine Learning or HPC networking infrastructures; experience with networking technologies as well as understanding deep learning frameworks such as TensorFlow or PyTorch.
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Experience with Machine Learning tools (Tensorflow, Apache Spark) Experience with Machine Learning tools (Tensorflow, Apache Spark) Demonstrated experience with popular software stacks e.g. Python-Django, Ruby on Rails, LAMP.
ExpandApply NowActive JobUpdated 10 days ago - UpvoteDownvoteShare Job
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And/or TensorFlow/Py Torch 3 years of experience coding on models that implement natural language translation, image recognition, and sequence to sequence deep learning models. We are seeking a Machine Learning Software Engineer with a history of contributions to commercial optimization and deployment projects.
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Strong understanding of machine learning principles, especially in the context of LLMs. 5+ years of proficiency in Python, including machine learning packages like Jax/Tensorflow or PyTorch Skills in Java/scala (preferred) Experience building scalable deep learning systems.
Full-timeExpandApply NowActive JobUpdated 6 days ago - UpvoteDownvoteShare Job
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These efforts have resulted in making machine learning more accessible to teams at Waymo, including Perception, Behavior Prediction, Planner, Routing, Maps and Research, ensuring greater degrees of consistency and repeatability, and addressing the “last mile” of getting models into production and managing them once they are in place.
ExpandApply NowActive JobUpdated 7 days ago - UpvoteDownvoteShare Job
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Demonstrated ability to reduce algorithms and theoretical knowledge to practice and produce innovative research resultsFamiliarity with machine learning frameworks such as PyTorch, TensorFlow, Julia.
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Experience with machine learning frameworks such as TensorFlow or Pytorch, Lightning, Mosaic ML etc. New York City (Hybrid On-Site): $201,400 - $229,900 for Lead Machine Learning Engineer San Francisco, California (Hybrid On-Site): $213,400 - $243,500 for Lead Machine Learning Engineer Remote (Regardless of Location): $170,700 - $194,800 for Lead Machine Learning Engineer.
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Experience in developing camera imaging, machine vision, and deep learning algorithms and applications. Explore novel camera image pipeline algorithms and architectures for future ISP including deep learning methods to achieve unprecedented image quality (IQ.
Full-timeExpandApply NowActive JobUpdated 11 days ago - UpvoteDownvoteShare Job
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Machine Learning Engineer with a strong background in Machine Learning (Client) and Natural Language Processing (NLP). Strong proficiency in Python programming and popular Client/NLP libraries such as TensorFlow, PyTorch, NLTK, spaCy, etc.
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As an applied machine learning engineer, you will take today’s state-of-the-art solutions in various verticals and adapt them to run on the new Cerebras system architecture. Familiarity with JAX/TensorFlow/PyTorch.
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2 years of experience with machine learning algorithms and tools (e.g., TensorFlow), artificial intelligence, deep learning and/or natural language processing. 2 years of experience with machine learning algorithms and tools (e.g., TensorFlow), artificial intelligence, deep learning and/or natural language processing.
ExpandApply NowActive JobUpdated 10 days ago - UpvoteDownvoteShare Job
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Proficient programming skills in Python and one of the deep learning toolkits such as JAX, PyTorch, or Tensorflow. You will work with a close-knit and fast growing team of world-class engineers and scientists to tackle some of the most challenging problems in foundation models and deep learning, including natural language processing, multi-modal understanding, and combining learning with knowledge.
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