Parth Vadhadiya

Machine Learning Engineer at Endeavor Labs

Ahmedabad, Gujarat, India
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Summary

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Senior
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Top School
Parth Vadhadiya is a Machine Learning Engineer with nine years of experience building production-ready AI systems and backend services from Ahmedabad, India. He has progressed from research and Python development roles into leadership positions and now focuses on deploying ML solutions at Endeavor Labs after leading AI work and web teams at Thinkwik. Parth contributes to the ML community through practical documentation—maintaining a machine learning glossary with clarified definitions and Scikit-Learn examples—showing his emphasis on clear, reproducible models. Comfortable across the stack (Python, NodeJS, backend systems), he blends research sensibilities with production engineering to turn models into business outcomes.
code9 years of coding experience
job5 years of employment as a software developer
bookM.Sc. in Computer Application and Information Technology Computer Science, M.Sc. in Computer Application and Information Technology Computer Science at Krantiguru Shyamji Krishna Verma Kachchh University, Kachchh (Gujarat)
languagesGujarati, English, Hindi
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119reputation
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1answer
5questions
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Github Skills (17)

scikit10
machine-learning10
deeplearning-ai10
deep-learning10
scikit-learn10
data-science9
neural-network8
glossary7
python7
pip6
cryptocurrency6
html6
computer-science6
tensorflow6
gpu6

Programming languages (5)

TypeScriptC++JavaScriptVuePython

Github contributions (5)

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bfortuner/ml-glossary

Oct 2018 - Oct 2019

Machine learning glossary
Role in this project:
userData Scientist
Contributions:6 commits, 6 PRs in 11 months
Contributions summary:Parth primarily contributed to the machine learning glossary by updating definitions and adding new terms related to deep learning, loss functions, and data dimensions. They also revised an example related to logistic regression, updating the code to use Scikit-Learn. Their work focused on enhancing the glossary's content with key machine learning concepts and examples, aligning with the repository's purpose of documenting machine learning terminology.
data-sciencedeep-learningmachine-learningdeep-learning-tutorialglossary
AI chatbot using watson
Contributions:14 commits, 3 PRs, 13 pushes in 2 months
nlpzomato-apiexpressjsglitchaxios
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