Machine Learning with SciKit-Learn with Python
- Description
- Curriculum
- FAQ
- Reviews
The goal of this course is to help the trainee’s expertise working with the python based Scikit-learn library. This training will enable one to implement the concepts of Machine learning using applications by the virtue of Scikit-learn. The sole purpose of this course is to provide a practical understanding of the Scikit-learn library to the trainees. After completing this training, the trainees will be able to endure the application development that requires ML implementation using the Scikit-learn library. In this unit, you will be getting a brief introduction of the concept which includes all the basic details together with the topics that are important to understand. You will understand how this library helps the application by helping the developers in adding machine learning-based concepts. After the mid part of the video, you will be learning about the topics that fall under the court of advanced level concepts. After this unit, you will be able to work to implement the concepts of Machine learning with the help of SciKit-Learn.
Scikit-learn can be defined as the python based library which is used to implement the concepts of machine learning in the application. It could also be explained as the predefined set of functions that is leveraged to bring the features in the application which are considered linked with machine learning. It is the library that consists of various tools for statistical modeling and machine learning. Regression, clustering, and classification are some of the most useful tools that could be found in this library. It is built on top of NumPy, SciPy, and Matplotlib which is one of the reason behind the functions it provides. Being based on python, it will only be supported while implementing things using the python programming language. It can be used the same way as other libraries are used in python but the features it will offer will be unique and focused on Machine learning.
-
5NumPy Array CreationVideo lesson
-
6NumPy Array AttributesVideo lesson
-
7NumPy Array OperationsVideo lesson
-
8NumPy Array Operations ContinueVideo lesson
-
9NumPy Array Unary OperationsVideo lesson
-
10Numpy Array SplicingVideo lesson
-
11NumPy Array ShpeVideo lesson
-
12Stacking Together Different ArraysVideo lesson
-
13Splitting one Array into Several Smaller onesVideo lesson
-
14Copies and ViewsVideo lesson
-
21Intro to PandasVideo lesson
-
22Intro to Pandas ContinueVideo lesson
-
23Data Structure in PandasVideo lesson
-
24Data Structure in Pandas ContinueVideo lesson
-
25Pandas Column SelectVideo lesson
-
26Remove OperationsVideo lesson
-
27Pandas Arithmetic OperationsVideo lesson
-
28Pandas Arithmetic Operations ContinueVideo lesson
-
38Cross ValidationVideo lesson
-
39Cross Validation TechniquesVideo lesson
-
40K-Means Clustering ExampleVideo lesson
-
41AgglomerationVideo lesson
-
42PCA PipelineVideo lesson
-
43Face RecognitionVideo lesson
-
44Face Recognition OutputVideo lesson
-
45Right EstimatorVideo lesson
-
46Text Data ExampleVideo lesson
-
47Extracting FeaturesVideo lesson
-
48Occurrences to FrequenciesVideo lesson
-
49Classifier TrainingVideo lesson
-
50Performance Analysis on the Test SetVideo lesson
-
51Parameter TuningVideo lesson
-
52Language IdentifcationVideo lesson
External Links May Contain Affiliate Links read more