Anish Shah

MLOps Engineer - Growth at Weights & Biases

Anish Shah has been working in the tech industry since 2015. In 2015, they were a Technical Support at Fox School of Business at Temple University. In 2016, they were an Undergraduate Research Assistant at Temple University Science Education and Research Center, a Project Associate at Excellis Health Solutions, and a Teaching Assistant for Legal Studies 4596 (Capstone) at Fox School of Business at Temple University. In 2017, they were a Computer Vision Research Assistant and an Undergraduate Teaching Assistant at Temple University, and a Data Scientist, a Data Scientist, and a COE BI Analyst at SAP. In 2020, they were a Data Scientist / Machine Learning Engineer at Brilliant Hire by SAP, where they analyzed and spearhead the software design, structure, and organization of various data-driven use cases by leveraging the latest and most appropriate technologies. In 2021, they have been an MLOps Engineer - Growth and a Tier 2 Support Machine Learning Engineer at Weights & Biases.

Anish Shah has an educational background that includes a Professional Certificate Program from FourthBrain in MLOps and Systems (2021), a Bachelor of Science (B.S.) from Temple University in Mathematics and Computer Science (2015-2019) and Data Science: Computational Analytics (2015-2019), and a High School Diploma from Bensalem High School (2011-2015). Anish has also obtained several certifications, including MLOPs and Systems Certificate from FourthBrain (September 2021), PMC Level I from Pragmatic Institute (July 2021), Applied Graph Algorithms from Neo4j (March 2020), and Data Science with Neo4J from Neo4j (March 2020).

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Philadelphia, United States

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Weights & Biases

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Performance Visualization tools for Machine Learning that excel at Scale! Weights & Biases helps companies turn deep learning research projects into deployed software by helping teams track their models, visualize model performance and easily automate training and improving models.