Menu

Executive Programs

Workshops

Projects

Blogs

Careers

Student Reviews



More

Academic Training

Informative Articles

Find Jobs

We are Hiring!


All Courses

Choose a category

Loading...

All Courses

All Courses

logo

Project 1

https://www.kaggle.com/plutosenthil/descent-work   https://www.kaggle.com/plutosenthil/descent-work

    Project Details

    Loading...

    Leave a comment

    Thanks for choosing to leave a comment. Please keep in mind that all the comments are moderated as per our comment policy, and your email will not be published for privacy reasons. Please leave a personal & meaningful conversation.

    Please  login to add a comment

    Other comments...

    No comments yet!
    Be the first to add a comment

    Read more Projects by Senthil Arumugam S (30)

    Project 11

    Objective:

    https://www.kaggle.com/plutosenthil/credit-card-fraud-detection   https://www.kaggle.com/plutosenthil/credit-card-fraud-detection

    calendar

    26 Nov 2021 07:05 PM IST

      Read more

      Project 10

      Objective:

      https://www.kaggle.com/plutosenthil/sms-spam   https://www.kaggle.com/plutosenthil/sms-spam

      calendar

      25 Nov 2021 10:41 AM IST

        Read more

        Project 9

        Objective:

        Gradient descent algorithm finds the global minimum of the cost function In which information travels through the neural network from input neurons to the output neurons, while the error is calculated and propagated back through the network to update the weights. In RNNs, information from previous time points is used as…

        calendar

        23 Nov 2021 05:29 PM IST

          Read more

          Project 8

          Objective:

           https://www.kaggle.com/plutosenthil/vehicle-recognition   https://www.kaggle.com/plutosenthil/vehicle-recognition

          calendar

          22 Nov 2021 05:04 PM IST

            Read more

            Project 7

            Objective:

            Answer as file

            calendar

            22 Nov 2021 01:48 PM IST

              Read more

              Project 6

              Objective:

              https://www.kaggle.com/plutosenthil/machine-failure-data   https://www.kaggle.com/plutosenthil/machine-failure-data

              calendar

              21 Nov 2021 04:43 PM IST

                Read more

                Project 5

                Objective:

                    Advantages of Gradient Boosting provides predictive accuracy, flexibility, No data pre-processing required, Handles missing data Disadvantages of Gradient Boosting overfitting, expensive

                calendar

                21 Nov 2021 11:50 AM IST

                  Read more

                  Project 4

                  Objective:

                  Answer as a file

                  calendar

                  20 Nov 2021 05:12 PM IST

                    Read more

                    Project 3

                    Objective:

                     Answer as file

                    calendar

                    20 Nov 2021 03:29 PM IST

                      Read more

                      Project 2

                      Objective:

                      Answer as a file

                      calendar

                      20 Nov 2021 12:22 PM IST

                        Read more

                        Project 1

                        Objective:

                        https://www.kaggle.com/plutosenthil/descent-work   https://www.kaggle.com/plutosenthil/descent-work

                        calendar

                        19 Nov 2021 08:36 PM IST

                          Read more

                          Project 2

                          Objective:

                          https://www.kaggle.com/plutosenthil/medical-cost-personal-datasets-neural   https://www.kaggle.com/plutosenthil/medical-cost-personal-datasets-neural

                          calendar

                          19 Nov 2021 02:18 PM IST

                            Read more

                            Project 1

                            Objective:

                            https://www.kaggle.com/plutosenthil/eda-logistic-regression   https://www.kaggle.com/plutosenthil/eda-logistic-regression

                            calendar

                            18 Nov 2021 11:18 AM IST

                              Read more

                              Project 2

                              Objective:

                              Answer as file    I have used  school-performance .csv   CREATE DATABASE alumini CREATE TABLE if not exists alumini.performance (DBN varchar(20),Quality_Review_Year year,Quality_Review_Score varchar(255),Progress_Rpt_10_11 char(10),Student_Progress_10_11 char(10),Student_Perf_10_11 char(10),Envi_10_11…

                              calendar

                              15 Nov 2021 03:26 PM IST

                                Read more

                                Project 1

                                Objective:

                                Answer as a file

                                calendar

                                14 Nov 2021 06:06 AM IST

                                  Read more

                                  Project 2

                                  Objective:

                                  Answer as file

                                  calendar

                                  12 Nov 2021 02:32 PM IST

                                    Read more

                                    Project 1

                                    Objective:

                                    Answer as file

                                    calendar

                                    10 Nov 2021 05:33 PM IST

                                      Read more

                                      Project 2

                                      Objective:

                                      I can't able to find csv So I tried to solve similar problem   https://www.kaggle.com/plutosenthil/backorder-prediction   https://www.kaggle.com/plutosenthil/backorder-prediction  

                                      calendar

                                      08 Nov 2021 07:16 AM IST

                                        Read more

                                        Project 1

                                        Objective:

                                        https://www.kaggle.com/plutosenthil/microsoft-stock-data   https://www.kaggle.com/plutosenthil/microsoft-stock-data

                                        calendar

                                        07 Nov 2021 11:02 AM IST

                                          Read more

                                          Project 2

                                          Objective:

                                          https://www.kaggle.com/plutosenthil/credit-card-dataset-for-clustering   https://www.kaggle.com/plutosenthil/credit-card-dataset-for-clustering

                                          calendar

                                          28 Oct 2021 04:23 PM IST

                                            Read more

                                            Project 1

                                            Objective:

                                              https://www.kaggle.com/plutosenthil/analysis1   https://www.kaggle.com/plutosenthil/analysis1

                                            calendar

                                            27 Oct 2021 06:41 PM IST

                                              Read more

                                              Unsupervised Learning - Kmeans Week 11 Challenge

                                              Objective:

                                              1. How does similarity is calculated if data is categorical in nature We have Kmean to cluster data but it uses the distance between data to find clusters So we need Kmode  Kmode clustering is one of the unsupervised Machine learning techniques used to cluster categorical variables, It uses dissimilarity(total difference)…

                                              calendar

                                              26 Oct 2021 10:23 AM IST

                                                Read more

                                                Supervised Learning - Classification Week 9 Challenge

                                                Objective:

                                                1. What is a Neural Network? It is the algorithm that recognizes the pattern of data like mimics the human brain (neuron)   2. What is deep learning? It is computer learning to think using a structural model, It is a type of Machine learning where Machine Learning is a subset of Artificial Intelligence and  neural…

                                                calendar

                                                24 Oct 2021 10:29 PM IST

                                                  Read more

                                                  Supervised Learning - Classification Week 8 Challenge

                                                  Objective:

                                                  1. Apply knn to the “Surface defects in stainless steel plates” and identify the differences pipe_df=pd.read_csv('faults.csv')X=pipe_df.iloc[:,:-1]y=pipe_df['Other_Faults'] # Splitting the dataset into training and test set. from sklearn.model_selection import train_test_split x_train, x_test, y_train, y_test=…

                                                  calendar

                                                  23 Oct 2021 09:09 AM IST

                                                    Read more

                                                    Supervised Learning - Classification Week 7 Challenge

                                                    Objective:

                                                     1. Pros and cons of SVM Advantages: effective in a higher dimension, margin separation, memory effective  Disadvantages: size of the dataset, the noise of data, no probabilistic explanation    2. Apply SVM to the “Surface defects in stainless steel plates” dataset and evaluate it import…

                                                    calendar

                                                    22 Oct 2021 07:17 PM IST

                                                      Read more

                                                      Supervised Learning - Prediction Week 3 Challenge

                                                      Objective:

                                                      1.Perform Gradient Descent in Python with any loss function def gradient_descent(x,y,iteration=30): m_current=b_current=0 #intialize m and b learning_rate =0.0004 # step's n=len(x) for i in range(iteration): y_predict = (m_current*x)+b_current #y=mx+b cost = (1/n) * sum( [val**2 for val in ( y-y_predict )]) # mean_squared_error…

                                                      calendar

                                                      15 Oct 2021 02:48 PM IST

                                                        Read more

                                                        Basics of ML & AL Week 2 Challenge

                                                        Objective:

                                                        1)Calculate all 4 business moments using pen and paper for the below data set? Mean = 1.4 Variance =1.84 Skewness=0.572( moderate) Kurtosis=-0.9522(platykurtic)   2)What is the significance of expected value when simple mean (Sum of all observations/number of observations) is already in place Expected value is equal…

                                                        calendar

                                                        05 Oct 2021 09:27 AM IST

                                                          Read more

                                                          Basics of Probability and Statistics Week 1 Challenge

                                                          Objective:

                                                          1. Why there is a difference in the formula of variance for population and sample For Both populations, we first need to find the difference of mean and Standard deviation then square all the deviations and sum all the squared deviation values  Here comes the point where for population variance we divide by the number…

                                                          calendar

                                                          02 Oct 2021 05:51 PM IST

                                                            Read more

                                                            Project 2 Library Book Management System

                                                            Objective:

                                                            I uploaded my answer as exe

                                                            calendar

                                                            18 Sep 2021 04:47 PM IST

                                                              Read more

                                                              Project 1 English Dictionary App

                                                              Objective:

                                                              As answer is uploaded as file  python_project_1_english_dictionary_app.py

                                                              calendar

                                                              30 Aug 2021 04:50 PM IST

                                                                Read more
                                                                Showing 1 of 30 projects