9.79 GB | 14min 15s | mp4 | 1280X720 | 16:9
Genre:eLearning |Language:English
Files Included :
1 -Introduction to Course.mp4 (38.03 MB)
2 -Introduction to Udemy and Where to Ask a Question.mp4 (28.91 MB)
3 -The Data Scientist Role.mp4 (94.44 MB)
1 -Signing Up and Getting Started with Azure.mp4 (32.24 MB)
2 -Optimizing and Managing Azure Costs.mp4 (49.43 MB)
3 -Setting Up Your Workspace and Compute Environment.mp4 (48.06 MB)
4 -Creating and Importing Data Assets.mp4 (79.85 MB)
5 -Design the Model in Azure Machine Learning Designer.mp4 (182.74 MB)
6 -Interpreting the Confusion Matrix for Model Evaluation.mp4 (20.38 MB)
7 -Measuring Model Accuracy and AUC.mp4 (38.53 MB)
8 -Evaluating Model Precision, Recall, and F1 Score.mp4 (47.75 MB)
9 -Final Model Evaluation and Insights.mp4 (72.42 MB)
1 -Setting Up the Model Pipeline in Azure ML Designer Part 1.mp4 (77.95 MB)
2 -Setting Up the Regression Model Pipeline in Azure ML Designer Part 2.mp4 (134.35 MB)
3 -Evaluating and Comparing the Regression Models.mp4 (91.36 MB)
4 -Deploying an Inference Pipeline in Azure ML Designer.mp4 (109.48 MB)
1 -Dataset Overview.mp4 (83.31 MB)
2 -Setting Up an AutoML Job.mp4 (88.62 MB)
3 -Evaluating the Best Performing Algorithm.mp4 (74.88 MB)
1 -Creating a Resource Group in Azure.mp4 (85.41 MB)
2 -Setting Up a Language Resource in Azure.mp4 (35.76 MB)
3 -Introduction to Natural Language Processing Concepts.mp4 (33.98 MB)
4 -Extracting Key Information Using Azure Language Studio.mp4 (93.84 MB)
5 -Analyzing Sentiment and Summarizing Text.mp4 (67.31 MB)
6 -Email Enquiries.zip (5.52 KB)
6 -Hands-On Project Training a Text Classification Model with Our Own Data.mp4 (117.67 MB)
7 -Hands-On Project Testing and Evaluating Our Text Classification Model.mp4 (60.45 MB)
1 -Project Introduction and Notebook Setup.mp4 (85.23 MB)
10 -Enhancing Model Performance with Random Over-Sampling.mp4 (180.73 MB)
11 -Summarizing Model Results and Drawing Conclusions.mp4 (88.99 MB)
2 -Exploring Features Investigate the Customer Data.mp4 (62.92 MB)
3 -Exploratory Data Analysis 1 Understanding the Discrete and Categorical Features.mp4 (170.7 MB)
4 -Exploratory Data Analysis 2 Understanding the Continuous Features.mp4 (120.27 MB)
5 -Exploratory Data Analysis 3 Creating Box and Count Plots for Analysis.mp4 (76.41 MB)
6 -Data Preparation Getting the Data Ready for Modeling.mp4 (84.68 MB)
7 -Building a Logistic Regression Model to Predict Customer Churn.mp4 (163.23 MB)
8 -Building a Logistic Regression Model to Predict Customer Churn and Compare.mp4 (47.14 MB)
9 -Applying the XGBoost Algorithm to Our Model.mp4 (116.61 MB)
1 -Download Tableau and Connect to Data.mp4 (45.91 MB)
10 -Building Your Bank Churn Dashboard Part 1.mp4 (86 MB)
11 -Building Your Bank Churn Dashboard Part 2.mp4 (119.32 MB)
12 -Adding Filters and Publishing Your Dashboard.mp4 (108.69 MB)
2 -Creating Cards for Key Metrics.mp4 (83.82 MB)
3 -Calculating the Churn Rate.mp4 (67.54 MB)
4 -Exploring Histograms in Tableau.mp4 (54.29 MB)
5 -Visualizing Credit Scores with a Horizontal Bar Chart.mp4 (90.85 MB)
6 -Grouping and Analyzing Churn by Age with a Bar Chart.mp4 (49.98 MB)
7 -Creating a Donut Chart.mp4 (33.67 MB)
8 -Using a Waterfall Chart to Visualize Tenure.mp4 (57.45 MB)
9 -Creating a Table to Analyze Churn by Products Held Per Customer.mp4 (47.47 MB)
1 -Setting Up Your Python Environment with Anaconda and Jupyter Notebook.mp4 (77.55 MB)
10 -Using For Loops.mp4 (59.35 MB)
11 -Combining For Loops with Conditional Statements.mp4 (120.2 MB)
12 -Defining Functions in Python.mp4 (129.66 MB)
13 -Test your Knowledge Python Basics Q & A.mp4 (140.38 MB)
2 -Jupyter Notebook Overview.mp4 (94.46 MB)
3 -Notebooks.zip (3.9 MB)
3 -Understanding Variables in Python.mp4 (111.41 MB)
4 -Data Types and Their Importance.mp4 (48.01 MB)
5 -Working with Lists.mp4 (39.92 MB)
6 -Exploring Dictionaries.mp4 (54.12 MB)
7 -Tuples and Sets.mp4 (74.07 MB)
8 -Introduction to Arithmetic and Comparison Operators.mp4 (52.19 MB)
9 -Conditional Statements in Python.mp4 (90.88 MB)
1 -Descriptive Statistics Mean, Median, and Mode Explained.mp4 (69.69 MB)
2 -Measuring Spread Standard Deviation and Variance.mp4 (43.89 MB)
3 -Understanding Sampling Techniques in Data Science.mp4 (104.13 MB)
4 -Understanding Variables.mp4 (66.22 MB)
5 -Frequency Distribution Organizing Data for Insights.mp4 (37.8 MB)
1 -Reading CSV Files with Pandas.mp4 (80.16 MB)
10 -Converting Dates in Pandas.mp4 (126.64 MB)
10 -web sales.zip (424.1 KB)
11 -Plotting Data with Pandas.mp4 (73.14 MB)
12 -Test your Knowledge Pandas Q & A.mp4 (125.04 MB)
2 -Using Describe to Summarize Data.mp4 (122.69 MB)
3 -Algebraic Operations in Pandas.mp4 (98.74 MB)
4 -Renaming Columns.mp4 (93.2 MB)
5 -Handling Missing Values.mp4 (153 MB)
6 -Counting Values Understanding Data Distribution.mp4 (58 MB)
7 -Grouping Data Aggregating Insights.mp4 (85.49 MB)
8 -Filtering Data in Pandas.mp4 (138.15 MB)
9 -Applying Functions to Data.mp4 (121.57 MB)
1 -Introduction Signing Up for ChatGPT.mp4 (25.53 MB)
2 -Assigning a Role for ChatGPT.mp4 (60.97 MB)
3 -Crafting Effective Instructions for ChatGPT.mp4 (62.14 MB)
4 -Enhancing Responses by Providing Context.mp4 (91.49 MB)
5 -Improving Responses with Few-Shot Examples.mp4 (112.88 MB)
6 -Limitations and Considerations When Using ChatGPT.mp4 (44.68 MB)
7 -Practical Data Analysis with ChatGPT (Part 1).mp4 (127.7 MB)
8 -Practical Data Analysis with ChatGPT (Part 2).mp4 (66.34 MB)
1 -Introduction to Line Plots.mp4 (146.54 MB)
10 -Visualizing Categorical Data with Bar Plots.mp4 (58.84 MB)
11 -Advanced Scatter Plots with Seaborn.mp4 (80.45 MB)
12 -Correlation Heatmaps.mp4 (124.88 MB)
13 -Using Pair Plots for Multi-Variable Relationships.mp4 (126.19 MB)
14 -Test Your Knowledge Seaborn and Matplotlib Q & A.mp4 (101.67 MB)
2 -Creating Histograms.mp4 (93.07 MB)
3 -Customizing Plot Size (Figsize).mp4 (23.99 MB)
4 -Formatting Your Plots.mp4 (69.07 MB)
5 -Correlation Explained.mp4 (46.63 MB)
6 -Building Basic Scatter Plots.mp4 (116.48 MB)
7 -Creating Subplots.mp4 (158.3 MB)
8 -Box Plots for Data Spread and Outliers.mp4 (57.71 MB)
9 -Using Violin Plots for Distribution.mp4 (26.57 MB)
1 -Understanding the Machine Learning Lifecycle.mp4 (50.33 MB)
2 -Supervised and Unsupervised Learning.mp4 (37.13 MB)
3 -Supervised Learning Explained.mp4 (43.08 MB)
4 -Unsupervised Learning Explained.mp4 (54.73 MB)
5 -Practical Example of Linear Regression in Python - Part 1.mp4 (108.45 MB)
6 -Practical Example of Linear Regression in Python - Part 2.mp4 (146.41 MB)
1 -Data Import and Initial Analysis.mp4 (112.66 MB)
10 -Understanding Mean Squared Error (MSE).mp4 (48.94 MB)
11 -Introduction to Random Forests.mp4 (48.8 MB)
12 -Applying Random Forest to the Housing Project.mp4 (72.44 MB)
13 -Exploring Feature Importance in Random Forests.mp4 (86.64 MB)
2 -Preparing Categorical Data with One-Hot Encoding.mp4 (110.02 MB)
3 -Mapping Geographic Data with Longitude and Latitude.mp4 (46.13 MB)
4 -Scaling Data with Log Transformation.mp4 (71.37 MB)
5 -Feature Engineering.mp4 (26.03 MB)
6 -Understanding Multicollinearity.mp4 (25.75 MB)
7 -Detecting Multicollinearity with a Heatmap.mp4 (140.02 MB)
8 -Training the Regression Model.mp4 (78.65 MB)
9 -Evaluating Model Performance with R-Squared.mp4 (95.23 MB)
1 -Introduction to Hypothesis Testing.mp4 (25.52 MB)
2 -Understanding Null and Alternative Hypotheses.mp4 (32 MB)
3 -Exploring t-Tests and z-Tests.mp4 (16.76 MB)
4 -Understanding the P-Value.mp4 (20.79 MB)
5 -Practical Example of Hypothesis Testing with Python.mp4 (73.24 MB)]
Screenshot
RapidGator
TurboBithttps://rapidgator.net/file/3dab620addd442d17020e137e9c6c072/
https://rapidgator.net/file/575f9c6dcb32734aae6d880015269693/
https://rapidgator.net/file/00ee75e80e979835966f54fc903bc71f/
https://rapidgator.net/file/06cff027ee897912b9c2af7473956147/
https://rapidgator.net/file/4ac955e3d6be76f17ab9031a37091c21/
Feel free to post your Data Science for Beginners Python Azure ML and Tableau Free Download, torrent, subtitles, free download, quality, NFO, Dangerous Data Science for Beginners Python Azure ML and Tableau Torrent Download, free premium downloads movie, game, mp3 download, crack, serial, keygen.