Mohit Jain (mjain72)

mjain72

User data from Github https://github.com/mjain72

Location:East Coast of USA

GitHub:@mjain72

Mohit Jain's repositories

Condition-monitoring-of-hydraulic-systems-using-xgboost-modeling

We will do a condition monitoring of a test hydraulic rig, using various sensor values and using xgboost for classification

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brainwave

The code in this repository allows the visualization of brainwaves detected using TGAM brainwave sensor module. It uses python, d3.js and Bootstrap. A detailed description of the code can be found in this article - https://medium.com/@mohitjain72/detection-and-visualization-of-brainwaves-using-python-d3-and-bootstrap-742129f9ed97

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sentiment-analysis-using-CNN-LSTM-for-twitter

We will do the sentiment analysis on twitter using a combination of CNN and LSTM. The data

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Sentiment-Analysis-using-Word2Vec-and-LSTM

We will do sentiment analysis using Google's pre-trained word2vec model

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XGBoost-to-classify-activities-using-smartphone-sensors

We will classify activity performed by the user, using the data collected from the users smartphone and provide in UCI Machine Learning Repository.

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TaLuActivationFunction

A new hyperbolic tangent based activation function

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Transfer-learning-multi-model-CNN-XGBoost-SVC-

Combining Transfer Learning with Various Classifiers

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cdcChallenge

This code was developed during a CDC challenge. It provides a user friendly interface to explore data from CDC Environmental Public Health Tracking Network. Uses data from ephtracking.cdc.gov and census.gov. Inspired form CDC’s “Info by Location” website . The app uses open source software with either MIT or BSD License. Following frameworks/libraries were used: - Bootstrap - Framework for Website Development - v4 - D3.js - JavaScript Library for Data Visualization - v4 - jQuery - JavaScript Library - v3.3 - jStat - JavaScript Statistical Library - v1.6 - flexDataList - JavaScript Plugin

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Transfer-Learning-OpenCv-XGBoost-CNN

Plant seedlings classification using XGBoost in combination with transfer learning, OpenCV and CNN

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Word2Vec-and-Keras-and-Gensim

Using Word2Vec from Gensim and LSTM from Keras to predict Frasier Dialoges

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XGBoost-to-predict-safe-driver

XGBoost model to predict safe driver for a auto/home insurance company

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Detecting-face-using-openCV

Detect facial features using openCV (version 3)

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OpenCV-and-CNN-for-plant-classification

OpenCV and CNN is used to classify 12 species of plants seedlings

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Transfer-Learning-OpenCV-CNN

OpenCV and CNN are used, with transfer learning, to classify 12 species of plants seedlings

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