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Udemy - Ai, Machine Learning, Statistics & Python - OneDDL - 03-06-2025 ![]() Free Download Udemy - Ai, Machine Learning, Statistics & Python Published: 2/2025 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 1.33 GB | Duration: 5h 16m AI/ML : Overview, Statistics, Python, Machine learning, Methods, Use Cases in Telecom What you'll learn AI Basics Machine Learning Overview Types of Machine Learning Deep Learning Applications in Telecom Introduction to Statistics Overview of Python & its libraries Descriptive Statistics Central Tendency, Dispersion & Visualization (hands on - excel & python) Probability and Distributions Normal, Binomial & Poisson Distribution (hands on - excel & python) Inferential Statistics Hypothesis testing (t-tests) Introduction to Supervised Learning Linear Regression Hypothesis, Cost function, Gradient Descent, Regularization Logistic Regression Sigmoid Function, Decision Boundary, Anomaly detection Use cases in Telecom Requirements It is a course for everyone from beginner to expert level Description This course provides a comprehensive introduction to Artificial Intelligence (AI) and Machine Learning (ML) with a focus on applications in the telecommunications industry. Learners will begin with an Overview of AI/ML concepts, followed by a deep dive into essential statistical foundations and Python programming for data analysis. The course covers key machine learning techniques, including supervised and unsupervised learning, model evaluation, and optimization methods. Finally, real-world use cases in telecom, such as network optimization, fraud detection, and customer experience enhancement, will be explored. By the end of the course, participants will have a strong foundation in AI/ML and its practical implementations.Course includes -AI BasicsMachine Learning OverviewTypes of Machine LearningDeep LearningApplications in TelecomIntroduction to Statistics ·Overview of Python & its libraries ·Descriptive StatisticsCentral Tendency, Dispersion & Visualization (hands on - excel & python)Probability and DistributionsNormal, Binomial & Poisson Distribution (hands on - excel & python)Inferential StatisticsHypothesis testing (t-tests)Confidence IntervalIntroduction to Supervised LearningLinear RegressionHypothesis, Cost function, Gradient Descent, RegularizationExample of telecom networkLogistic RegressionSigmoid Function, Decision Boundary, Anomaly detectionExample of telecom networkThroughout the course, participants will engage in hands-on projects and case studies, applying AI/ML techniques to real telecom datasets. By the end of the program, learners will have a strong technical foundation in AI/ML, practical coding skills, and the ability to implement AI-driven solutions tailored to the telecommunications sector. Overview Section 1: Introduction to AI & ML Lecture 1 Introduction Lecture 2 AI & ML Basics Lecture 3 Machine Learning & its use cases Lecture 4 Deep Learning & its use cases Lecture 5 GenAI & its use cases Lecture 6 Types of Machine learning Lecture 7 Machine Learning in Telecom Section 2: Statistics & Python: Foundation of AI/ML Lecture 8 Introduction Lecture 9 Statistics Basics Lecture 10 Overview of Python Lecture 11 Loop function in Python Lecture 12 Conditional Statements & Visualization in Python Lecture 13 Descriptive Statistics : Central Tendency Lecture 14 Descriptive Statistics : Dispersion Lecture 15 Descriptive Statistics : Visualization Lecture 16 Data Distributions - Basics Lecture 17 Probability Distribution Lecture 18 Normal Distribution Lecture 19 Z - Score Lecture 20 Binomial Distribution Lecture 21 Poisson Distribution Lecture 22 Bayes' Theorem Lecture 23 Inferential Statistics Lecture 24 t - tests Section 3: Supervised Learning Lecture 25 Supervised Learning Overview Lecture 26 Linear Regression Lecture 27 Logistic Regression Overview Lecture 28 Logistic Regression : Decision Boundary Lecture 29 Logistic Regression : Cost Function Lecture 30 Logistic Regression : Gradient Descent Suitable for the engineers working in AI and IT/Telecom space or planning to get into technical domain of AI/ML and Telecom,Suitable for Managers working in telecom operators and planning to deploy or manage ML models in Telecom networks,Suitable for beginners who are interested to get into telecom domain and learn new technology such as AI/ML Homepage: DOWNLOAD NOW: Udemy - Ai, Machine Learning, Statistics & Python Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live No Password - Links are Interchangeable |