erkhushigupta

erkhushigupta

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erkhushigupta's repositories

leetcode_solutions

Collection of LeetCode questions to ace the coding interview! - Created using [LeetHub](https://github.com/QasimWani/LeetHub)

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Voice-Asssistant-For-The-Disabled

to help the differently abled

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Attendance-Management-System

Helps to manage student's Attendance

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awesome-toolyard

It's a Yet Another curated list of awesome tools, sites, and other resources over the internet🗿

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python-fundamentals

Hands on Python programming fundamentals : I have written code snippets to practice multiple python paradigms

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Smart-Irrigation-Breakthrough-Model-using-Polymers-

Built an interdisciplinary approach to Smart Irrigation to explore the potential for integrating smart irrigation systems with other agricultural technologies like precision agriculture, remote sensing, and greenhouse automation; address technical, economic, and social challenges associated with the implementation of smart irrigation systems

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Exploratory-Data-Analysis---Prediction-Model-for-Survival-Rate

: Building a prediction model to predict the survival rate of a class of people using passenger data. The training data included name, gender, economic status, passenger class, fare, cabin , age with data size of 891 with ground truth training records and 419 records for testing purposes.

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