Welcome to the 100 Days of Machine Learning series — one of the most watched and most trusted and Evergreen Machine Learning playlists on Indian YouTube, followed by millions of learners who want to build a strong foundation in ML. This playlist is designed as a step-by-step roadmap to master Machine Learning, starting from the absolute basics and gradually moving toward advanced concepts and real-world implementation. Instead of jumping directly into code, the series focuses on building clear intuition, strong fundamentals, and practical understanding of how machine learning actually works. What you will learn in this series: • AI vs Machine Learning vs Deep Learning • Types of Machine Learning (Supervised, Unsupervised, Reinforcement Learning) • Data preprocessing and feature engineering • Exploratory Data Analysis (EDA) • Important ML algorithms (Regression, Classification, Clustering, etc.) • Model evaluation and validation techniques • Real-world ML workflow and best practices Each video covers a specific concept in a simple and structured way so you can build knowledge one step at a time, just like a 100-day learning roadmap. If you want to build a strong Machine Learning foundation for Data Science, AI, or ML Engineering, this playlist will guide you from beginner concepts to industry-level understanding. Notes: https://learnwith.campusx.in/s/store/courses/YouTube%20Notes
Curated by: CampusX (134 videos)
Quality data is fundamental to any data science engagement. To gain actionable insights, the appropriate data must be sourced and cleansed. Understanding Your Data is the foundational step in any data analysis, involving exploring data characteristics, patterns, and relationships to gain insights. It is important at the beginning of a project to consider potential harms from your tool. These harms can be caused by designing for only a narrow group of users, having insufficient representation of sub-populations, or human labelers favoring a privileged group. Machine learning discovers and generalizes patterns in the data and could, therefore, replicate bias. If a group is under-represented, the machine learning model has fewer examples to learn from, resulting in reduced accuracy for those individuals in this group. When implementing these models at scale, it can result in a large number of biased decisions, harming a large number of people. Ensure you have evaluated risks and have techniques in place to mitigate them. ============================ Do you want to learn from me? Check my affordable mentorship program at : https://learnwith.campusx.in/s/store ============================ 📱 Grow with us: CampusX' LinkedIn: https://www.linkedin.com/company/campusx-official CampusX on Instagram for daily tips: https://www.instagram.com/campusx.official My LinkedIn: https://www.linkedin.com/in/nitish-singh-03412789 Discord: https://discord.gg/PsWu8R87Z8 Instagram: https://www.instagram.com/campusx.official E-mail us at support@campusx.in ⌚Time Stamps⌚ 00:00 - Intro 00:27 - Understanding your data 00:53 - Asking Basic Questions to your Data 03:00 - How big is the data? 03:35 - How does the data looks like? 05:02 - What is the data type of columns? 06:50 - Are there any missing values? 08:39 - How does the data looks mathematically? 10:25 - Are there any duplicate values? 11:27 - How is the Corelation between the columns?
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