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Shanay Wadhwani
Mid-level Data Scientist specializing in NLP, computer vision, and applied ML
World BankGeorgetown UniversityWashington, DC6 Years ExperienceMid LevelWorks Remote
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About
AI/ML engineer with impactful work for the World Bank across both LLM systems and computer vision, including a PRAI evaluator-assistance platform and a production UNet model for slum detection from multispectral satellite imagery. Earlier built multilingual NLP-based borrower segmentation and credit scoring at Creditmate through its acquisition by Paytm, showing strong experience in ambiguous, high-impact environments.
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