ML Guide: Learn ML Algorithms
To enhance machine learning models, this course offers fundamental understanding of artificial intelligence, machine learning methods like classification, regression, and clustering.
Description for ML Guide: Learn ML Algorithms
Fundamentals of AI and Machine Learning: Learn the fundamental ideas in artificial intelligence and machine learning.
Classification and Regression Techniques: To create prediction models, and become knowledgeable about various classification and regression techniques.
Clustering Methods: Research clustering techniques such as k-means and k-nearest neighbors.
Decision Trees and Regression Analysis: Acquire a comprehensive understanding of the application of decision trees for classification purposes, as well as the utilization of regression analysis for the development of trend lines.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On Udemy provided by Grid Wire
Duration: 1h 6m
Schedule: Flexible
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