Unsupervised Machine Learning with 2 Capstone ML Projects

seeders: 0
leechers: 0
Added 4 years ago by freecoursewb in Other

Download Fast Safe Anonymous
movies, software, shows...

Files

Unsupervised Machine Learning with 2 Capstone ML Projects (Size: 2.7 GB)
  1. Conclusion.mp4 46.3 MB
  1. Conclusion.srt 2.9 KB
  1. Introduction to Clustering.mp4 57.8 MB
  1. Introduction to Clustering.srt 3.1 KB
  1. Setting up the Environment.mp4 46.4 MB
  1. Setting up the Environment.srt 3.1 KB
  1. Understanding the Problem Statement.mp4 53.5 MB
  1. Understanding the Problem Statement.srt 3 KB
  1. Why High Dimensional Datasets are a Problem.mp4 79.3 MB
  1. Why High Dimensional Datasets are a Problem.srt 4.3 KB
  10. Introduction the Boruta Algorithm.mp4 52.5 MB
  10. Introduction the Boruta Algorithm.srt 3 KB
  10. Introduction to Hierarchical Clustering.mp4 88.4 MB
  10. Introduction to Hierarchical Clustering.srt 4.8 KB
  10. Summarizing the Key-Points.mp4 40.5 MB
  10. Summarizing the Key-Points.srt 2.3 KB
  11. Implementing the Boruta Algorithm.mp4 43.2 MB
  11. Implementing the Boruta Algorithm.srt 4.5 KB
  11. Introduction to Dendrograms.mp4 41.8 MB
  11. Introduction to Dendrograms.srt 3.9 KB
  12. Implementing Hierarchical Clustering.mp4 52.4 MB
  12. Implementing Hierarchical Clustering.srt 3.6 KB
  12. Introduction to Principal Component Analysis.mp4 73.7 MB
  12. Introduction to Principal Component Analysis.srt 4.1 KB
  13. Implementing PCA.mp4 55.5 MB
  13. Implementing PCA.srt 4.3 KB
  13. Introduction to DBSCAN Clustering.mp4 75.6 MB
  13. Introduction to DBSCAN Clustering.srt 4.5 KB
  14. Implementing DBSCAN Clustering.mp4 47.8 MB
  14. Implementing DBSCAN Clustering.srt 3.6 KB
  14. Introduction to t-SNE.mp4 81.2 MB
  14. Introduction to t-SNE.srt 4.5 KB
  15. Implementing t-SNE.mp4 36.1 MB
  15. Implementing t-SNE.srt 2.3 KB
  16. Introduction to Linear Discriminant Analysis.mp4 48.8 MB
  16. Introduction to Linear Discriminant Analysis.srt 2.7 KB
  17. Implementing LDA.mp4 36.7 MB
  17. Implementing LDA.srt 2.7 KB
  18. Difference between PCA, t-SNE, and LDA.mp4 64.8 MB
  18. Difference between PCA, t-SNE, and LDA.srt 3.4 KB
  2. Methods to solve the problem of High Dimensionality.mp4 57.1 MB
  2. Methods to solve the problem of High Dimensionality.srt 3.3 KB
  2. Setting up the Environment.mp4 28.8 MB
  2. Setting up the Environment.srt 2.1 KB
  2. Types of Clustering.mp4 65.3 MB
  2. Types of Clustering.srt 3.9 KB
  2. Understanding the Dataset.mp4 55.1 MB
  2. Understanding the Dataset.srt 3.2 KB
  3. Applications of Clustering.mp4 56 MB
  3. Applications of Clustering.srt 3.3 KB
  3. Data Analysis and Visualization.mp4 77.7 MB
  3. Data Analysis and Visualization.srt 17.3 KB
  3. Solving a Real World Problem.jpeg 192.5 KB
  3. Solving a Real World Problem.mp4 98.8 MB
  3. Solving a Real World Problem.srt 8.4 KB
  3. Understanding the Problem Statement.mp4 35.4 MB
  3. Understanding the Problem Statement.srt 1.9 KB
  4. Introduction to Correlation using Heatmap.mp4 71.4 MB
  4. Introduction to Correlation using Heatmap.srt 5.4 KB
  4. KMeans Clustering Analysis.mp4 61.8 MB
  4. KMeans Clustering Analysis.srt 9.1 KB
  4. Performing Descriptive Statistics.mp4 73.4 MB
  4. Performing Descriptive Statistics.srt 6.3 KB
  4. Using the Elbow Method for Choosing the Best Value for K.mp4 67 MB
  4. Using the Elbow Method for Choosing the Best Value for K.srt 3.6 KB
  5. Analyzing Agricultural Conditions.mp4 39.1 MB
  5. Analyzing Agricultural Conditions.srt 2.9 KB
  5. Applying Hierarchical Clustering.mp4 40.8 MB
  5. Applying Hierarchical Clustering.srt 1.8 KB
  5. Introduction to K Means Clustering.mp4 49.3 MB
  5. Introduction to K Means Clustering.srt 3.8 KB
  5. Removing Highly Correlated Columns using Correlation.mp4 48.9 MB
  5. Removing Highly Correlated Columns using Correlation.srt 4 KB
  6. Clustering Similar Crops.mp4 63.6 MB
  6. Clustering Similar Crops.srt 4.1 KB
  6. Introduction to Variance Inflation Filtering.mp4 48.7 MB
  6. Introduction to Variance Inflation Filtering.srt 2.3 KB
  6. Solving a Real World Problem.mp4 71.1 MB
  6. Solving a Real World Problem.srt 4.9 KB
  6. Three Dimensional Clustering.mp4 36.7 MB
  6. Three Dimensional Clustering.srt 1.8 KB
  7. Implementing K Means on the Mall Dataset.mp4 71.6 MB
  7. Implementing K Means on the Mall Dataset.srt 6.2 KB
  7. Implementing VIF using statsmodel.mp4 47.9 MB
  7. Implementing VIF using statsmodel.srt 3.6 KB
  7. Visualizing the Hidden Patterns.mp4 27.8 MB
  7. Visualizing the Hidden Patterns.srt 2.6 KB
  8. Building a Machine Learning Classification Model.mp4 40.4 MB
  8. Building a Machine Learning Classification Model.srt 3.2 KB
  8. Introduction to Recursive Feature Selection.mp4 56.7 MB
  8. Introduction to Recursive Feature Selection.srt 3.1 KB
  8. Using Silhouette Score to analyze the clusters.mp4 96.3 MB
  8. Using Silhouette Score to analyze the clusters.srt 6.9 KB
  9. Clustering Multiple Dimensions.mp4 50 MB
  9. Clustering Multiple Dimensions.srt 307.2 B
  9. Implementing Recursive Feature Selection.mp4 50.9 MB
  9. Implementing Recursive Feature Selection.srt 4.2 KB
  9. Real Time Predictions.mp4 27.7 MB
  9. Real Time Predictions.srt 2.1 KB
  Bonus Resources.txt 307.2 B
  Get Bonus Downloads Here.url 204.8 B
  ▲ 101 total files

Description


Unsupervised Machine Learning with 2 Capstone ML Projects

Created by Data Is Good Academy | Published 7/2021
Duration: 3h 0m | 6 sections | 51 lectures | Video: 1280x720, 44 KHz | 2.678 GB
Genre: eLearning | Language: English + Sub
Learn Complete Unsupervised ML: Clustering Analysis and Dimensionality Reduction

What you'll learn
Understand the Working of K Means, Hierarchical, and DBSCAN Clustering.
Implement K Means, Hierarchical, and DBSCAN Clustering using Sklearn.
Learn Evaluation Metrics for Clustering Analysis.
Learn Techniques used for Treating Dimensionality.
Implement Correlation Filtering, VIF, and Feature Selection.
Implement PCA, LDA, and t-SNE for Dimensionality Reduction.
Analyze the Climatic Factors Best to Grow Certain Crops.
Recommend Crops by looking at Certain Climatic Factors.
Categorize the data into n number of relevant groups which are useful for Marketing Purposes.
Identify the Target Group of Customers.

Requirements
Python and Jupyter Notebook installed in your System.Knowledge about Basic Concepts of Python and its functions.Familiarity with Concepts of Data Analysis.Understanding of Data Visualizations.Understanding of Data Processing.Knowledge of Unsupervised Algorithms.Knowledge of K Means Clustering Algorithm.Good if you have interest in Agricultural Domain.
Description
Crazy about Unsupervised Machine Learning?
This course is a perfect fit for you.
This course will take you step by step into the world of Unsupervised Machine Learning.
Unsupervised machine learning, uses machine learning algorithms to analyze and cluster unlabeled datasets.
These algorithms discover hidden patterns or data groupings without the need for human intervention. Its ability to discover similarities and differences in information make it the ideal solution for exploratory data analysis, cross-selling strategies, customer segmentation, and image recognition.
This course will give you theoretical as well as practical knowledge of Unsupervised Machine Learning.
This Unsupervised Machine Learning course is fun as well as exciting.
It will cover all common and important algorithms and will give you the experience of working on some real-world projects.
This course will cover the following topics:-
K Means Clustering
Hierarchical Clustering
DBSCAN Clustering
Evaluation Metrics for Clustering Analysis
Techniques used for Treating Dimensionality
Different algorithms for clustering
Different methods to deal with imbalanced data.
Correlation filtering
Variance filtering
PCA & LDA
t-SNE for Dimensionality Reduction
\n
We have covered each and every topic in detail and also learned to apply them to real-world problems.
\n
There are lots and lots of exercises for you to practice and also 2 bonus Unsupervised Machine Learning Project "Optimizing Crop Production" and "Customer Segmentation Engine".
In this Optimizing Crop Production project, you will learn about Precision Farming using Data Science Technologies such as Clustering Analysis and Classification Analysis. You will be able to Recommend the best Crops to Farmers to Increase their Productivity.
In this Customer Segmentation Engine project, you will divide the customer base into several groups of individuals that share a similarity in different ways that are relevant to marketing such as gender, age, interests, and miscellaneous spending habits.
\n
You will make use of all the topics read in this course.
You will also have access to all the resources used in this course.
\n
Enroll now and become a master in Unsupervised machine learning.
Who this course is for:Anyone who want to start a career in Unsupervised Machine Learning.Any people who want to level up their Unsupervised Machine Learning Knowledge.Software developers or programmers or Tech lover who want to change their career path to Unsupervised machine learning.

,

Related Torrents

torrent name size uploader age seed leech
2
0
0
1
0