WebIIRS also conducts e-learning programme on Remote Sensing and Geoinformation Science (http://elearning.iirs.gov.in). Contact Details Dr. Anil Kumar Course Coordinator and … Web8 feb. 2024 · By Great Learning Team Updated on Feb 8, 2024 68064. Table of contents. This Machine Learning tutorial provides both intermediate and basics of machine learning. It is designed for students and working professionals who are complete beginners. At the end of this tutorial, you will be able to make machine learning models that can perform …
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Web14 jun. 2024 · Machine learning to Deep Learning: A journey for remote sensing data classification Course 5th July to 9th July 2024 The interested applicants can visit the … Web25 okt. 2024 · This tutorial provides an explanation of the bias-variance tradeoff in machine learning, including examples. Statology. Statistics Made Easy. Skip to content. Menu. About; Course; Basic ... statistics study guide that helps you study and practice all of the core concepts taught in any elementary statistics course and makes your life ... new zealand airport passenger statistics
ISRO announces free short course on AI for remote sensing data
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