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  1. computer_vision_project computer_vision_project Public

    Project Description – Image classification using CNNs in Keras Data Description: You are provided with a dataset of images of plant seedlings at various stages of grown. Each image has a filename t…

    Jupyter Notebook 1

  2. Term-Deposit-Sale-Ensemble-Technique Term-Deposit-Sale-Ensemble-Technique Public

    Using the data collected from existing customers, build a model that will help the marketing team identify potential customers who are relatively more likely to subscribe term deposit and thus incr…

    Jupyter Notebook

  3. -Concrete-Strength-Prediction-FMST -Concrete-Strength-Prediction-FMST Public

    To predict the concrete strength using the data available in file "concrete.csv". Apply feature engineering and model tuning to obtain a score above 85%.

    Jupyter Notebook

  4. Bank-Churn-Prediction-Neural-Network Bank-Churn-Prediction-Neural-Network Public

    Given a Bank customer, build a neural network-based classifier that can determine whether they will leave or not in the next 6 months.

    Jupyter Notebook

  5. -Twitter-US-Airline-Sentiment-NLP -Twitter-US-Airline-Sentiment-NLP Public

    To implement the techniques learnt as a part of the course. Learning Outcomes: • Basic understanding of text pre-processing. • What to do after text pre-processing • Bag of words • Tf-idf • Build t…

    Jupyter Notebook

  6. Thera-Bank-Personal-Loan-Campaign Thera-Bank-Personal-Loan-Campaign Public

    The dataset contains data on 5000 customers. The data include customer demographic information (age, income, etc.), the customer's relationship with the bank (mortgage, securities account, etc.), a…

    Jupyter Notebook