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Foundations Of Artificial Intelligence - OneDDL - 08-23-2024 Free Download Foundations Of Artificial Intelligence Published 8/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 8.77 GB | Duration: 18h 21m Foundations of Artificial Intelligence What you'll learn Gain hands-on experience in data analysis and modeling using Python within Jupyter Notebooks. Learn to manage and query databases using MySQL and its graphical interface, MySQL Workbench. Develop interactive web applications for data visualization and machine learning model deployment. Create dynamic and interactive dashboards to visualize complex datasets. Requirements Basic Understanding of Programming: Familiarity with any programming language, preferably Python. Fundamental Knowledge of Databases: Basic understanding of database concepts and SQL. Proficiency in Excel: Basic skills in using Excel for data manipulation and analysis. Description Welcome to the "Hands-on Data Science Projects" course! This comprehensive program is designed to equip you with practical skills and experience in data science through a series of real-world projects. Throughout this course, you will work with a variety of powerful tools and technologies, including Jupyter Notebook, Streamlit, MySQL Workbench, Power BI, and Excel. These tools will help you analyze and visualize data, build predictive models, and create interactive dashboards, giving you a robust and practical understanding of the data science workflow.You will start with an introduction to data analysis techniques and progress through various projects, each designed to provide hands-on experience with different aspects of data science.Tailored for students, aspiring data scientists, and professionals looking to enhance their data science skills, this course provides practical experience in solving real-world problems using industry-standard tools. You will learn to collect, clean, and analyze data, build and evaluate predictive models, and create interactive visualizations and dashboards. By the end of this course, you will be well-prepared to apply your data science skills in professional settings, equipped with a comprehensive portfolio of projects demonstrating your expertise. Embark on your journey with us and unlock boundless opportunities in data science and technology Overview Section 1: Introduction to Python IDEs Lecture 1 Google Colab - Part 1 Lecture 2 Google Colab - Part 2 Lecture 3 Anaconda Installation Lecture 4 Jupyter notebook install Section 2: Python and its importance in Modern day Lecture 5 Understanding Programming Lecture 6 Python properties and applications Section 3: Data Types Lecture 7 Variables and Values Lecture 8 Data Types-Integer Lecture 9 Data Types-Float Lecture 10 Data Types-Boolean Lecture 11 Data Types- String Section 4: Operators Lecture 12 Conditionals Lecture 13 Arithmetic operators Lecture 14 Logical operations in conditionals Lecture 15 Expression Evaluation Section 5: Simple If, If-Else, Nested If-Else, If-Elif-Else Lecture 16 If statements Lecture 17 Else & Elif Statement Lecture 18 Nested If statement Section 6: Control structures: Iterative control structures (For and while Loop) Lecture 19 Loops Lecture 20 For loop with range Lecture 21 For loop with variables Lecture 22 While Section 7: String indexing, Accessing and strings using For loop Lecture 23 Indexing & Slicing in Strings Lecture 24 String access using for loop Section 8: Break and Continue statements Lecture 25 Break and continue statements Section 9: Fuctions and Types of Arguments Lecture 26 Functions Lecture 27 Functions without Arguments Lecture 28 Functions with Arguments Lecture 29 Functions with multiple arguments Lecture 30 Functions with multiple keyword arguments Lecture 31 Scope of a function Section 10: Recursion Lecture 32 Recursion Introduction Lecture 33 Recursion summation function part 1 Lecture 34 Recursion base case Lecture 35 Recursion summation function part 2 Section 11: Collections: Lists List Functions Lecture 36 Lists - Introduction Lecture 37 Creating Lists Lecture 38 Accessing Lists Lecture 39 Methods in List - 1 Lecture 40 Methods in List - 2 Section 12: Collectionsictionary Lecture 41 Dictionaries - Introduction Lecture 42 Creating Dictionaries Lecture 43 Accessing Dictionaries Lecture 44 Methods in Dictionaries Section 13: Collections:Tuples and Sets Lecture 45 Sets - Intro Lecture 46 Creating Sets Lecture 47 Methods in Sets - 1 Lecture 48 Methods in Sets - 2 Lecture 49 Tuples - Intro Lecture 50 Creating Tuples Lecture 51 Accessing & Methods in Tuples Section 14: Assignment Lecture 52 Assignment Section 15: Quiz Section 16: Data and Statistics Lecture 53 What statistics is and what data are? Lecture 54 Qualitative data (nominal and ordinal) Lecture 55 Quantitative data (discrete and continuous) Section 17: Sample & Population Lecture 56 Sample and Population Section 18: Sampling Techniques Lecture 57 Sampling techniques Section 19: Numerical (continuous and discrete) and categorical Lecture 58 Data Types Section 20: Measures of central tendency Lecture 59 Measures of Central Tendency (Mean, median and mode) Section 21: Measures of dispersion Lecture 60 Measures of Dispersion (variance, sd and IQR) and skewness Section 22: Important terminology Lecture 61 Bar plot Lecture 62 Pie chart Lecture 63 Histograms Lecture 64 Box whiskers-Plot Lecture 65 Scatter plots Section 23: Normal Distribution & Central Limit Theorem Lecture 66 Normal distribution Section 24: Correlation Lecture 67 Correlation Section 25: Z,test,T test, Anova and chi-squared test Lecture 68 T distribution and degree of freedom Lecture 69 One sample T test Lecture 70 z-test Lecture 71 Independent sample T test Lecture 72 Paired T test Lecture 73 One way Anova Lecture 74 Two way Anova Lecture 75 Chi-square Test Section 26: Statistical Model using Python Lecture 76 Statistical Model using Python Section 27: Probability Lecture 77 Intro to probability Section 28: Quiz Section 29: Supervised Learning Lecture 78 Supervised Learning: Regression Lecture 79 Supervised Learning : Classification Section 30: Decision Tree Lecture 80 What is a Decision Tree Lecture 81 Decision Tree in Brief Lecture 82 Terminologies used Lecture 83 Case study - ML Section 31: Random Forest Lecture 84 What is Random Forest? Lecture 85 Working Philosophy Lecture 86 Terminologies & Real-life examples Lecture 87 Case Study - ML Section 32: KNN Lecture 88 What is K-nearest-neighbour? Lecture 89 How does this work? Lecture 90 Walk through Sci-kit website Lecture 91 Case study - ML Section 33: SVM Lecture 92 Basics of Support Vector Machine Lecture 93 Why the name Lecture 94 Kernel, Gamma and C value Lecture 95 Case Study - ML Section 34: Neural Networks Lecture 96 Neural Networks Section 35: Ensemble Methods Lecture 97 Ensemble Methods Section 36: Unsupervised Learning Lecture 98 What is unsupervised learning? Section 37: Clustering Lecture 99 What is k-means & clustering Lecture 100 Case Study - ML Section 38: Dimensionality Reduction using PCA Lecture 101 Understanding PCA Lecture 102 Case study - ML Section 39: Association Rules Lecture 103 What is Market Basket Analysis Lecture 104 How does it work Lecture 105 Case study - ML Section 40: Quiz Section 41: Introduction to DataBases Lecture 106 Introduction to SQL Section 42: Installation Lecture 107 MySQL Workbench Installation for Windows Lecture 108 MYSQL Workbench Installation For MAC Section 43: Database schema Lecture 109 Create Database Lecture 110 Insert Lecture 111 Alter Lecture 112 Select Section 44: String Functions Lecture 113 String Functions Section 45: Numeric and Temporal functions Lecture 114 Numeric and Temporal functions Section 46: SQL Functions Lecture 115 SQL functions- Order by, Limit Lecture 116 Like and ILike (wildcards) Lecture 117 Aggregate functions in SQL Lecture 118 Group By Lecture 119 Having Section 47: SQL Joins Lecture 120 SQL Joins Lecture 121 Inner Join Lecture 122 Full outer join Lecture 123 Left Outer Join Lecture 124 Right Outer Join Section 48: Union Lecture 125 Union Section 49: Database normalization Lecture 126 Database normalization Lecture 127 Types of normal forms-1 Lecture 128 Types of Normal forms-2 Section 50: Clustered and non clustered index Lecture 129 Clustered and non clustered index Section 51: SQL views Lecture 130 Temporary Tables Lecture 131 SQL views Lecture 132 Subqueries Section 52: Quiz Aspiring Data Scientists,Data Analysts,Software Developers,Business Analysts,Students,Career Changers,Anyone Interested in Data Science Projects. 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