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Natural Language Processing (NLP) This is a field of computerscience that deals with the interaction between computers and human language. Computer Vision This is a field of computerscience that deals with the extraction of information from images and videos.
Understanding Data Science Data Science involves analysing and interpreting complex data sets to uncover valuable insights that can inform decision-making and solve real-world problems. Also Read: Explore data effortlessly with Python Libraries for (Partial) EDA: Unleashing the Power of Data Exploration.
Artificial Intelligence (AI): A branch of computerscience focused on creating systems that can perform tasks typically requiring human intelligence. DecisionTrees: A supervised learning algorithm that creates a tree-like model of decisions and their possible consequences, used for both classification and regression tasks.
We went through the core essentials required to understand XGBoost, namely decisiontrees and ensemble learners. Since we have been dealing with trees, we will assume that our adaptive boosting technique is being applied to decisiontrees. Or requires a degree in computerscience? That’s not the case.
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