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How Statistics Fits into Data Science & AI<br><br>Big data and AI are greatly influenced by statistics. It's the backbone that gives us ways to gather, look at, make sense of, and show data. If you want to do well in data science and AI, you need to know stats inside and out.<br>
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How Statistics Fits into Data Science & AI https://nareshit.com/courses/data-science-and-ai- online-training
INTRODUCTION Big data and AI are greatly influenced by statistics. It's the backbone that gives us ways to gather, look at, make sense of, and show data. If you want to do well in data science and AI, you need to know stats inside and out. https://nareshit.com/courses/data-science-and-ai-online-training
Why Stats Are Important Stats give you a smart way to gather info. They make sure the stuff you collect is useful, right, and enough to work with. People use things like surveys, tests, and watching what happens to get their data. 01 - DATA COLLECTION: After you've got your data, you use stats tricks to sum it up and figure out what it means. Some stats help you see the main points of your data. 02 - DATA ANALYSIS: 03 - MODEL BUILDING: When you're doing data science and AI stu.f making models that can predict things is super important. You need stats methods like looking at how things are connected testing ideas.
One of the big problems in data science and AI is to deal with uncertainty. Confidence intervals and p- values are two examples of the instruments that statistics provides for measuring uncertainty. 04. Uncertainty Quantification: 01 - COLLECTION: APR Performance Evaluation: To check how good AI models are, we need stats metrics. Things like precision, recall, F1- score, and ROC curves all come from stats ideas. 05. Performance Evaluation:
CRUCIAL STATISTICS CONCEPTS FOR AI AND DATA SCIENCE Probability Theory: Knowing the chances of stuff happening is key in data science. This theory has an impact on lots of the math and models AI uses.
Things like average middle number most common number, and how spread out data is help sum up what's typical in a bunch of numbers. Descriptive Statistics : Methods like t-tests chi-square tests, and ANOVA let us guess about big groups from smaller samples. This helps to test ideas and make choices. Inferential Statistics: Straight-line and curved-line math tricks are great to predict what might happen and show how different things are connected. Regression Analysis:
LEARNING STATISTICS FOR DATA SCIENCE & AI A prerequisite for work in data science and AI is statistical proficiency. It's super important. Naresh IT has online classes to teach data science and AI that cover all the big ideas and methods in statistics. These classes don't just teach you about statistics - they also show you how to use what you learn in real life. This helps you get better at statistics and gives you 01 - BRANDING hands-on experience to apply these ideas in actual situations. 03 - SOCIAL MEDIA
CONCLUSION Statistics are fundamental to both data science and artificial intelligence. We can collect, examine, and interpret data with the help of these essential technologies. When data pros get stats, they can guess better, make stronger models, and make smarter choices. If you want to do well in data science and AI, think about signing up for Naresh IT's data science and AI online training. It'll help you get good at stats and other big parts of the field.
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