Udemy - Artificial Intelligence with Machine Learning, Deep Learning

10 Views | 0 Comments | Posted in: Tutorials
05
October
2024
Udemy - Artificial Intelligence with Machine Learning, Deep Learning
4.99 GB | 00:14:43 | mp4 | 1920X1080 | 16:9
Genre:eLearning |Language:English



Files Included :
1 - Installing Anaconda Distribution for Windows (158.54 MB)
10 - Creating NumPy Array with Ones Function (13.54 MB)
11 - Creating NumPy Array with Full Function (8 MB)
12 - Creating NumPy Array with Arange Function (8.73 MB)
13 - Creating NumPy Array with Eye Function (9.3 MB)
14 - Creating NumPy Array with Linspace Function (4.76 MB)
15 - Creating NumPy Array with Random Function (39.9 MB)
16 - Properties of NumPy Array (19.13 MB)
17 - Identifying the Largest Element of a Numpy Array (13.21 MB)
18 - Detecting Least Element of Numpy Array Min Ar (7.5 MB)
19 - Reshaping a NumPy Array Reshape Function (20.31 MB)
20 - Concatenating Numpy Arrays Concatenate Functio (28.79 MB)
21 - Splitting OneDimensional Numpy Arrays The Split (15.79 MB)
22 - Splitting TwoDimensional Numpy Arrays Split (22.56 MB)
23 - Sorting Numpy Arrays Sort Function (12.54 MB)
24 - Indexing Numpy Arrays (19.54 MB)
25 - Slicing OneDimensional Numpy Arrays (16.29 MB)
26 - Slicing TwoDimensional Numpy Arrays (25.57 MB)
27 - Assigning Value to OneDimensional Arrays (13.57 MB)
28 - Assigning Value to TwoDimensional Array (26.4 MB)
29 - Fancy Indexing of OneDimensional Arrrays (13.19 MB)
3 - Installing Anaconda Distribution for MacOs (71.5 MB)
30 - Fancy Indexing of TwoDimensional Arrrays (29.6 MB)
31 - Combining Fancy Index with Normal Indexing (9.43 MB)
32 - Combining Fancy Index with Normal Slicing (12.05 MB)
33 - Operations with Comparison Operators (16.24 MB)
34 - Arithmetic Operations in Numpy (83.18 MB)
35 - Statistical Operations in Numpy (36.61 MB)
36 - Solving SecondDegree Equations with NumPy (18.32 MB)
5 - Installing Anaconda Distribution for Linux (178.11 MB)
6 - Introduction to NumPy Library (54.55 MB)
7 - The Power of NumPy (48.2 MB)
8 - Creating NumPy Array with The Array Function (23.56 MB)
9 - Creating NumPy Array with Zeros Function (21.28 MB)
109 - K Nearest Neighbors Algorithm Theory (17.44 MB)
110 - K Nearest Neighbors Algorithm with Python Part 1 (19.8 MB)
111 - K Nearest Neighbors Algorithm with Python Part 2 (41.55 MB)
112 - K Nearest Neighbors Algorithm with Python Part 3 (19.67 MB)
113 - Hyperparameter Optimization Theory (34.74 MB)
114 - Hyperparameter Optimization with Python (34.49 MB)
115 - Decision Tree Algorithm Theory (24.77 MB)
116 - Decision Tree Algorithm with Python Part 1 (22.6 MB)
117 - Decision Tree Algorithm with Python Part 2 (32.26 MB)
118 - Decision Tree Algorithm with Python Part 3 (8.98 MB)
119 - Decision Tree Algorithm with Python Part 4 (33.63 MB)
120 - Decision Tree Algorithm with Python Part 5 (25.41 MB)
121 - Random Forest Algorithm Theory (18.01 MB)
122 - Random Forest Algorithm with Pyhon Part 1 (28.54 MB)
123 - Random Forest Algorithm with Pyhon Part 2 (27.32 MB)
124 - Support Vector Machine Algorithm Theory (14.96 MB)
125 - Support Vector Machine Algorithm with Python Part 1 (48.01 MB)
126 - Support Vector Machine Algorithm with Python Part 2 (33.12 MB)
127 - Support Vector Machine Algorithm with Python Part 3 (28.56 MB)
128 - Support Vector Machine Algorithm with Python Part 4 (23.14 MB)
129 - Unsupervised Learning Overview (12.05 MB)
130 - K Means Clustering Algorithm Theory (11.34 MB)
131 - K Means Clustering Algorithm with Python Part 1 (18.81 MB)
132 - K Means Clustering Algorithm with Python Part 2 (21.58 MB)
133 - K Means Clustering Algorithm with Python Part 3 (22.89 MB)
134 - K Means Clustering Algorithm with Python Part 4 (20.64 MB)
135 - Hierarchical Clustering Algorithm Theory (24.06 MB)
136 - Hierarchical Clustering Algorithm with Python Part 1 (20.98 MB)
137 - Hierarchical Clustering Algorithm with Python Part 2 (20.97 MB)
138 - Principal Component Analysis PCA Theory (29.43 MB)
139 - Principal Component Analysis PCA with Python Part 1 (15.06 MB)
140 - Principal Component Analysis PCA with Python Part 2 (5.09 MB)
141 - Principal Component Analysis PCA with Python Part 3 (22.08 MB)
142 - What is the Recommender System Part 1 (14.66 MB)
143 - What is the Recommender System Part 2 (12.35 MB)
38 - Introduction to Pandas Library (23.37 MB)
39 - Creating a Pandas Series with a List (44.13 MB)
40 - Creating a Pandas Series with a Dictionary (14.42 MB)
41 - Creating Pandas Series with NumPy Array (9.06 MB)
42 - Object Types in Series (15.43 MB)
43 - Examining the Primary Features of the Pandas Seri (12.31 MB)
44 - Most Applied Methods on Pandas Series (39.27 MB)
45 - Indexing and Slicing Pandas Series (23.33 MB)
46 - Creating Pandas DataFrame with List (16.95 MB)
47 - Creating Pandas DataFrame with NumPy Array (8.93 MB)
48 - Creating Pandas DataFrame with Dictionary (11.6 MB)
49 - Examining the Properties of Pandas DataFrames (19.02 MB)
50 - Element Selection Operations in Pandas DataFrames Lesson 1 (22.11 MB)
51 - Element Selection Operations in Pandas DataFrames Lesson 2 (22.34 MB)
52 - Top Level Element Selection in Pandas DataFramesLesson 1 (27.7 MB)
53 - Top Level Element Selection in Pandas DataFramesLesson 2 (22.39 MB)
54 - Top Level Element Selection in Pandas DataFramesLesson 3 (16.37 MB)
55 - Element Selection with Conditional Operations in Pandas Data Frames (34.22 MB)
56 - Adding Columns to Pandas Data Frames (24.68 MB)
57 - Removing Rows and Columns from Pandas Data frames (9.52 MB)
58 - Null Values in Pandas Dataframes (78.39 MB)
59 - Dropping Null Values Dropna Function (24.63 MB)
60 - Filling Null Values Fillna Function (38.38 MB)
61 - Setting Index in Pandas DataFrames (34.46 MB)
62 - MultiIndex and Index Hierarchy in Pandas DataFrames (27.18 MB)
63 - Element Selection in MultiIndexed DataFrames (21.2 MB)
64 - Selecting Elements Using the xs Function in MultiIndexed DataFrames (26.92 MB)
65 - Concatenating Pandas Dataframes Concat Function (54.12 MB)
66 - Merge Pandas Dataframes Merge Function Lesson 1 (43.15 MB)
67 - Merge Pandas Dataframes Merge Function Lesson 2 (26.03 MB)
68 - Merge Pandas Dataframes Merge Function Lesson 3 (71.27 MB)
69 - Merge Pandas Dataframes Merge Function Lesson 4 (36.04 MB)
70 - Joining Pandas Dataframes Join Function (48.19 MB)
71 - Loading a Dataset from the Seaborn Library (31.36 MB)
72 - Examining the Data Set 1 (31.51 MB)
73 - Aggregation Functions in Pandas DataFrames (110.64 MB)
74 - Examining the Data Set 2 (37.24 MB)
75 - Coordinated Use of Grouping and Aggregation Functions in Pandas Dataframes (77.05 MB)
76 - Advanced Aggregation Functions Aggregate Function (23.4 MB)
77 - Advanced Aggregation Functions Filter Function (19.47 MB)
78 - Advanced Aggregation Functions Transform Function (36.81 MB)
79 - Advanced Aggregation Functions Apply Function (49.23 MB)
80 - Examining the Data Set 3 (29.71 MB)
81 - Pivot Tables in Pandas Library (65.95 MB)
82 - Accessing and Making Files Available (41.53 MB)
83 - Data Entry with Csv and Txt Files (38.85 MB)
84 - Data Entry with Excel Files (17.79 MB)
85 - Outputting as an CSV Extension (22.36 MB)
86 - Outputting as an Excel File (17.35 MB)
144 - AI Machine Learning and Deep Learning (9.87 MB)
145 - History of Machine Learning (13.63 MB)
146 - Turing Machine and Turing Test (23.61 MB)
147 - What is Deep Learning (12.67 MB)
148 - Learning Representations From Data (23.14 MB)
149 - Workflow of Machine Learning (18.86 MB)
150 - Machine Learning Methods (30.94 MB)
151 - Supervised Machine Learning Methods 1 (20.06 MB)
152 - Supervised Machine Learning Methods 2 (37.03 MB)
153 - Supervised Machine Learning Methods 3 (35.24 MB)
154 - Supervised Machine Learning Methods 4 (79.33 MB)
155 - Gathering data (10.61 MB)
156 - Data preprocessing (15.38 MB)
157 - Choosing the right algorithm and model (43.51 MB)
158 - Training and testing the model (25.77 MB)
159 - Evaluation (14.42 MB)
160 - What Is ANN (14.83 MB)
161 - Anatomy of Neural Network (26.73 MB)
162 - Optimizers in Ai (26.13 MB)
163 - What is TensorFlow (38.14 MB)
164 - What is CNN (56.48 MB)
165 - Understanding RNN and LSTM Networks (31.05 MB)
166 - What is Transfer Learning (46.14 MB)
167 - What Is Data Science (12.97 MB)
168 - Data literacy in Data Science (6.61 MB)
169 - What is Numpy (15.87 MB)
170 - Why Numpy (8.15 MB)
87 - What is Machine Learning (20.3 MB)
88 - Machine Learning Terminology (8.92 MB)
90 - Classification vs Regression in Machine Learning (12.5 MB)
91 - Machine Learning Model Performance Evaluation Classification Error Metrics (106.19 MB)
92 - Evaluating Performance Regression Error Metrics in Python (29.38 MB)
93 - Machine Learning With Python (93.47 MB)
94 - What is Supervised Learning in Machine Learning (26.47 MB)
95 - Linear Regression Algorithm Theory in Machine Learning AZ (22.23 MB)
96 - Linear Regression Algorithm With Python Part 1 (54.91 MB)
97 - Linear Regression Algorithm With Python Part 2 (78.48 MB)
98 - Linear Regression Algorithm With Python Part 3 (51.76 MB)
99 - Linear Regression Algorithm With Python Part 4 (67.59 MB)
100 - What is Bias Variance TradeOff (36.27 MB)
101 - What is Logistic Regression Algorithm in Machine Learning (17.61 MB)
102 - Logistic Regression Algorithm with Python Part 1 (85.28 MB)
103 - Logistic Regression Algorithm with Python Part 2 (60.29 MB)
104 - Logistic Regression Algorithm with Python Part 3 (25.21 MB)
105 - Logistic Regression Algorithm with Python Part 4 (34.62 MB)
106 - Logistic Regression Algorithm with Python Part 5 (23.85 MB)
107 - KFold CrossValidation Theory (11.55 MB)
108 - KFold CrossValidation with Python (37.74 MB)
[center]
Screenshot


[/center]




Note:
Only Registed user can add comment, view hidden links and more, please register now
At 0dayhome.net, you'll find a vast collection of educational and informative tutorials to help you enhance your skills and knowledge in various fields. Our tutorials section serves as a valuable resource for beginners and experts alike, providing step-by-step guides, tips, and tricks on subjects such as technology, design, programming, photography, and much more. Whether you're looking to expand your professional repertoire or simply indulge in a new hobby, 0dayhome.net has got you covered. Why choose 0dayhome.net for all your tutorial needs? Here are a few reasons: Diverse Topics: Our platform offers a diverse range of tutorials, catering to various interests and skill levels. From learning the basics of coding to mastering advanced graphic design techniques, our tutorials cover it all. Easy-to-Follow Guides: We understand the importance of clear and concise instructions. Our tutorials are meticulously crafted with simplicity in mind, allowing you to easily grasp complex concepts and apply your newfound knowledge. Comprehensive Content: Whether you're a beginner seeking introductory tutorials or an expert looking for advanced techniques, our comprehensive collection has tutorials for every level of expertise. Take your skills to the next level with 0dayhome.net . Regular Updates: We frequently update our tutorials section, ensuring that you have access to the latest trends and techniques in your chosen field. Stay ahead of the curve and expand your knowledge with our up-to-date content. Community Engagement: Join our thriving community of learners and experts to connect, share insights, and seek guidance. Interact with fellow enthusiasts, exchange ideas, and strengthen your skills through collaboration. Free Access: Yes, you read it right! 0dayhome.net offers free access to its tutorials section. Learn and grow without any financial constraints. So, whether you're an aspiring programmer, a budding designer, or simply curious about exploring new subjects, 0dayhome.net tutorials are your go-to resource. Visit our website today and embark on a journey of continuous learning and improvement.
все шаблоны для dle на сайте шаблоны dle 11.2 скачать