[FreeCoursesOnline Me] Coursera – Applied Machine Learning in Python

[FreeCoursesOnline Me] Coursera – Applied Machine Learning in Python | Tutorial | MP4,URL | 881.09 MiB

395 kb/s 1280×720 | AAC 128 kb/s 1 CH eng

File List (Click to Show)

189M	001.Module 1  Fundamentals of Machine Learning - Intro to SciKit Learn
32M	001.Module 1  Fundamentals of Machine Learning - Intro to SciKit Learn/001. Introduction.mp4
20K	001.Module 1  Fundamentals of Machine Learning - Intro to SciKit Learn/001. Introduction.srt
45M	001.Module 1  Fundamentals of Machine Learning - Intro to SciKit Learn/002. Key Concepts in Machine Learning.mp4
20K	001.Module 1  Fundamentals of Machine Learning - Intro to SciKit Learn/002. Key Concepts in Machine Learning.srt
13M	001.Module 1  Fundamentals of Machine Learning - Intro to SciKit Learn/003. Python Tools for Machine Learning.mp4
8.0K	001.Module 1  Fundamentals of Machine Learning - Intro to SciKit Learn/003. Python Tools for Machine Learning.srt
32M	001.Module 1  Fundamentals of Machine Learning - Intro to SciKit Learn/004. An Example Machine Learning Problem.mp4
16K	001.Module 1  Fundamentals of Machine Learning - Intro to SciKit Learn/004. An Example Machine Learning Problem.srt
33M	001.Module 1  Fundamentals of Machine Learning - Intro to SciKit Learn/005. Examining the Data.mp4
16K	001.Module 1  Fundamentals of Machine Learning - Intro to SciKit Learn/005. Examining the Data.srt
37M	001.Module 1  Fundamentals of Machine Learning - Intro to SciKit Learn/006. K-Nearest Neighbors Classification.mp4
28K	001.Module 1  Fundamentals of Machine Learning - Intro to SciKit Learn/006. K-Nearest Neighbors Classification.srt
317M	002.Module 2  Supervised Machine Learning
38M	002.Module 2  Supervised Machine Learning/007. Introduction to Supervised Machine Learning.mp4
24K	002.Module 2  Supervised Machine Learning/007. Introduction to Supervised Machine Learning.srt
20M	002.Module 2  Supervised Machine Learning/008. Overfitting and Underfitting.mp4
16K	002.Module 2  Supervised Machine Learning/008. Overfitting and Underfitting.srt
12M	002.Module 2  Supervised Machine Learning/009. Supervised Learning  Datasets.mp4
8.0K	002.Module 2  Supervised Machine Learning/009. Supervised Learning  Datasets.srt
23M	002.Module 2  Supervised Machine Learning/010. K-Nearest Neighbors  Classification and Regression.mp4
20K	002.Module 2  Supervised Machine Learning/010. K-Nearest Neighbors  Classification and Regression.srt
31M	002.Module 2  Supervised Machine Learning/011. Linear Regression  Least-Squares.mp4
24K	002.Module 2  Supervised Machine Learning/011. Linear Regression  Least-Squares.srt
40M	002.Module 2  Supervised Machine Learning/012. Linear Regression  Ridge, Lasso, and Polynomial Regression.mp4
28K	002.Module 2  Supervised Machine Learning/012. Linear Regression  Ridge, Lasso, and Polynomial Regression.srt
21M	002.Module 2  Supervised Machine Learning/013. Logistic Regression.mp4
20K	002.Module 2  Supervised Machine Learning/013. Logistic Regression.srt
23M	002.Module 2  Supervised Machine Learning/014. Linear Classifiers  Support Vector Machines.mp4
16K	002.Module 2  Supervised Machine Learning/014. Linear Classifiers  Support Vector Machines.srt
16M	002.Module 2  Supervised Machine Learning/015. Multi-Class Classification.mp4
12K	002.Module 2  Supervised Machine Learning/015. Multi-Class Classification.srt
40M	002.Module 2  Supervised Machine Learning/016. Kernelized Support Vector Machines.mp4
28K	002.Module 2  Supervised Machine Learning/016. Kernelized Support Vector Machines.srt
20M	002.Module 2  Supervised Machine Learning/017. Cross-Validation.mp4
16K	002.Module 2  Supervised Machine Learning/017. Cross-Validation.srt
38M	002.Module 2  Supervised Machine Learning/018. Decision Trees.mp4
32K	002.Module 2  Supervised Machine Learning/018. Decision Trees.srt
161M	003.Module 3  Evaluation
47M	003.Module 3  Evaluation/019. Model Evaluation & Selection.mp4
32K	003.Module 3  Evaluation/019. Model Evaluation & Selection.srt
21M	003.Module 3  Evaluation/020. Confusion Matrices & Basic Evaluation Metrics.mp4
16K	003.Module 3  Evaluation/020. Confusion Matrices & Basic Evaluation Metrics.srt
13M	003.Module 3  Evaluation/021. Classifier Decision Functions.mp4
12K	003.Module 3  Evaluation/021. Classifier Decision Functions.srt
9.3M	003.Module 3  Evaluation/022. Precision-recall and ROC curves.mp4
8.0K	003.Module 3  Evaluation/022. Precision-recall and ROC curves.srt
20M	003.Module 3  Evaluation/023. Multi-Class Evaluation.mp4
16K	003.Module 3  Evaluation/023. Multi-Class Evaluation.srt
18M	003.Module 3  Evaluation/024. Regression Evaluation.mp4
8.0K	003.Module 3  Evaluation/024. Regression Evaluation.srt
35M	003.Module 3  Evaluation/025. Model Selection  Optimizing Classifiers for Different Evaluation Metrics.mp4
20K	003.Module 3  Evaluation/025. Model Selection  Optimizing Classifiers for Different Evaluation Metrics.srt
152M	004.Module 4  Supervised Machine Learning - Part 2
22M	004.Module 4  Supervised Machine Learning - Part 2/026. Naive Bayes Classifiers.mp4
12K	004.Module 4  Supervised Machine Learning - Part 2/026. Naive Bayes Classifiers.srt
27M	004.Module 4  Supervised Machine Learning - Part 2/027. Random Forests.mp4
20K	004.Module 4  Supervised Machine Learning - Part 2/027. Random Forests.srt
12M	004.Module 4  Supervised Machine Learning - Part 2/028. Gradient Boosted Decision Trees.mp4
12K	004.Module 4  Supervised Machine Learning - Part 2/028. Gradient Boosted Decision Trees.srt
42M	004.Module 4  Supervised Machine Learning - Part 2/029. Neural Networks.mp4
28K	004.Module 4  Supervised Machine Learning - Part 2/029. Neural Networks.srt
18M	004.Module 4  Supervised Machine Learning - Part 2/030. Deep Learning (Optional).mp4
12K	004.Module 4  Supervised Machine Learning - Part 2/030. Deep Learning (Optional).srt
33M	004.Module 4  Supervised Machine Learning - Part 2/031. Data Leakage.mp4
20K	004.Module 4  Supervised Machine Learning - Part 2/031. Data Leakage.srt
54M	005.Optional  Unsupervised Machine Learning
11M	005.Optional  Unsupervised Machine Learning/032. Introduction.mp4
8.0K	005.Optional  Unsupervised Machine Learning/032. Introduction.srt
17M	005.Optional  Unsupervised Machine Learning/033. Dimensionality Reduction and Manifold Learning.mp4
16K	005.Optional  Unsupervised Machine Learning/033. Dimensionality Reduction and Manifold Learning.srt
28M	005.Optional  Unsupervised Machine Learning/034. Clustering.mp4
20K	005.Optional  Unsupervised Machine Learning/034. Clustering.srt
9.9M	006.Conclusion
9.9M	006.Conclusion/035. Conclusion.mp4
4.0K	006.Conclusion/035. Conclusion.srt
4.0K	[FTU Forum].url
4.0K	[FreeCoursesOnline.Me].url
4.0K	[FreeTutorials.Us].url
882M	total

File: 001. Introduction.mp4
Size: 32558618 bytes (31.05 MiB), duration: 00:11:00, avg.bitrate: 395 kb/s
Audio: aac, 44100 Hz, mono (eng)
Video: h264, yuv420p, 1280x720, 29.97 fps(r) (und)


Download [FreeCoursesOnline Me] Coursera – Applied Machine Learning in Python ( Size: 881.09 MiB ) :

Filehosts: Nitroflare, Rapidgator

Download from Nitroflare

1 Link/s Download
Download

https://nitro.download/view/C67663C9CC3482E/dcaigCoApMaLeinPy.zip

Download from Rapidgator

1 Link/s Download
Download

https://rapidgator.net/file/447ae99176d21fb6f1d853d77e3f994e/dcaigCoApMaLeinPy.zip.html

Keywords: FreeCoursesOnline, Coursera, 8211, Applied, Machine, Learning, Python
Tutorial
Comments (0)
Add Comment