SENIOR DATA SCIENTIST - Computer Vision / Generative AI HYBRID

ARCA Resourcing Ltd
Bristol
1 month ago
Applications closed

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Senior Data Scientist - Computer Vision / AI Data Scientist / Generative AIHYBRID / BRISTOL 3 days per weekUnlock the Power of AI Innovation!Join my client, an AI trailblazer with an international presence, helping industries like healthcare, sports, manufacturing, and agriculture transform through advanced artificial intelligence solutions. As a Data Scientist specialising in Computer Vision, you'll play a pivotal role in developing machine learning products that redefine what AI can achieve across diverse industries.Why You Should Apply * Be part of a revolutionary AI startup shaping the future across multiple sectors * Work on cutting-edge computer vision projects with real-world impact * Collaborate with experts across business, product, and engineering teams * Contribute directly to deploying AI solutions with enterprise clientsWhat You’ll Be Doing * Develop deep learning models for a range of computer vision tasks * Define and implement assessment criteria to measure solution performance * Stay on top of and apply recent advancements in deep learning and computer vision * Support and maintain our suite of machine learning productsAbout You * Be able to do the job as described * Skilled in deep learning algorithms applied to computer vision challenges * Knowledgeable about key architectures like Vision Transformers, DeepLabv3, and SegFormer * Proficient in Python and ML tools, inc...

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Tips for Staying Inspired: How Machine Learning Pros Fuel Creativity and Innovation

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