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Udemy - Intermediate Machine Learning - OneDDL - 11-24-2024 Free Download Udemy - Intermediate Machine Learning Published 11/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 5.59 GB | Duration: 14h 24m Understanding, designing and implementing machine learning solutions for basic to intermediate problems. What you'll learn Recognize the various important steps within data pipelines Identify the common pitfalls when conducting data collection for machine learning projects Examine the collected data to find any potential feature relationships and data quality concerns Create data visualizations that will assist with exposing any patterns that could be exploited Select features that are likely to be informative Clean datasets by addressing potential data quality issues Organize datasets such that they will be ready for model ingestion Differentiate between supervised, unsupervised, semi-supervised and self-supervised learning Contrast conventional machine learning and deep learning Discuss various popular supervised and unsupervised learning models Use Scikit-learn to solve basic to intermediate machine learning problems Explain what neural networks are Contrast the different variants of neural networks Implement basic to intermediate deep learning solutions using PyTorch Requirements Programming experience is not required to follow the course or the concepts that are being discussed. However, if you want to be able to do the homework and to implement models yourself, you will need to know how to program in Python. Foundational knowledge of derivatives and statistics will be beneficial, but is not required. As far as possible we aim to avoid unnecessary mathematical and statistical details when discussing the various concepts in this course. Description This course will introduce students to the field of machine learning by providing a broad overview of all of the various aspects of a machine learning pipeline, as well as the various types and subfields of machine learning models. We will explain various aspects of the data pipeline, such as what to consider during data collection, how to analyze and interpret your datasets, how to create meaningful visualizations of your data and how to clean and prepare your datasets for training machine learning models. These discussions will also provide students with insights regarding how the various aspects of the data pipeline changes for different types of data, such as tabular, image, text and time series data. Students will then learn about the various subfields of machine learning, with a particular focus on the most popular supervised and unsupervised machine learning models, as well as a few deep learning architectures. We will also discuss semi-supervised and reinforcement learning to a lesser extent. Lectures regarding specific models will aim to teach students what the core idea behind the models are, what the main differences between the various models are and what is considered to be their pros and cons. We will not provide detailed mathematical explanations regarding these models, but certain discussions provide some insights into aspects of the underlying mathematics that influence how the models work and what problems they are suitable for.Apart from discussing data pipelines and the various types of machine learning models, this course will also provide students with the necessary information to be able to build their own machine learning solutions for basic to intermediate problems. This includes discussions of the popular machine learning frameworks in Python (Scikit-learn, PyTorch, Tensorflow and Jax), the steps that should be considered when designing a machine learning project, how to train, finetune and evaluate machine learning models in a way that will provide robust performance estimations as well as a few practical examples where machine learning models are applied to some demonstrative datasets.There is considerable overlap between our Introduction to Machine Learning course and this course, but we discuss the various topics in more detail in this course with the aim to enable students to be able to implement their own machine learning solutions by the end of the course. Overview Section 1: Introduction Lecture 1 Introducing Machine Learning Lecture 2 A Brief History Lecture 3 Motivating the use of Machine Learning Lecture 4 Machine Learning Applications Lecture 5 Machine Learning Pipeline Overview Section 2: Data Exploration and Visualization Lecture 6 Data Collection Lecture 7 Data Exploration Lecture 8 Data Visualization Lecture 9 Feature Importance Lecture 10 Demonstration Section 3: Data Preprocessing Lecture 11 Cleaning Tabular Data Lecture 12 Cleaning Image Data Lecture 13 Cleaning Textual Datasets Lecture 14 Cleaning Time Series Data Lecture 15 Preparing Tabular Data Lecture 16 Preparing Image Data Lecture 17 Preparing Textual Data Lecture 18 Dimensionality Reduction Lecture 19 Feature Engineering Lecture 20 Data Pipeline Homework Section 4: Machine Learning Taxonomy Lecture 21 Supervised Learning Overview Lecture 22 UnsupervisedLearningOverview Lecture 23 Supervised vs Unsupervised Learning Lecture 24 Semi-supervised Learning Lecture 25 Reinforcement Learning Lecture 26 Deep Learning Section 5: Supervised Learning Lecture 27 Linear and Logistic Regression Lecture 28 Support Vector Machines Lecture 29 K Nearest Neighbours Lecture 30 Decision Trees Lecture 31 Ensembles Lecture 32 Tree-based Ensembles Section 6: Model Training Lecture 33 Understanding under- and overfitting Lecture 34 Creating Dataset Splits Lecture 35 Data Leakage Lecture 36 Optimisation Strategies Lecture 37 Performance Metrics Lecture 38 Hyperparameter Optimisation Lecture 39 Model Comparison and Selection Section 7: Unsupervised Learning Lecture 40 Similarity Metrics Lecture 41 K-Means Lecture 42 Hierarchical Clustering Lecture 43 Gaussian Mixture Models Lecture 44 DBSCAN Lecture 45 Association Rules Lecture 46 Anomaly Detection Section 8: Scikit-learn Lecture 47 Datasets Lecture 48 Preprocessing Lecture 49 Model API Lecture 50 Model Evaluation Lecture 51 Model Performance Lecture 52 Model Persistence Lecture 53 SKLearn Demonstration Lecture 54 Homework Section 9: Deep Learning Lecture 55 Introduction to Deep Learning Lecture 56 Perceptron Lecture 57 Artificial Neural Networks Lecture 58 Convolutional Neural Networks Lecture 59 Recurrent Neural Networks Lecture 60 Autoencoders Section 10: Deep Learning Frameworks Lecture 61 PyTorch Lecture 62 PyTorch Lightning Lecture 63 Tensorflow Lecture 64 Jax Lecture 65 Model libraries Lecture 66 Tools for Deep Learning Lecture 67 PyTorch Demonstration Lecture 68 Deep Learning Homework Section 11: Transfer learning and End-to-End Design Lecture 69 Transfer Learning Lecture 70 Pretraining Tasks Lecture 71 Dataset Design Lecture 72 Model Design Lecture 73 Framework Selection Section 12: Practical Examples Lecture 74 Estimate Vessel Time of Arrival Practical Problem Lecture 75 Network Intrusion Anomaly Detection Practical Problem This course is intended for engineers and developers that want to learn more about machine learning and want to potentially move into a data science or machine learning engineer role. We will not discuss the underlying mathematical principles, but you will know enough by the end of this course to be able to use existing implementations to solve basic to intermediate machine learning problems.,This course will benefit students that are considering pursuing a career as a data scientist or machine learning engineer. This course will provide you with a strong foundational knowledge regarding most of the core aspects of a machine learning project and will provide you with a strong basis on which to continue building your understanding of the field.,This course will also be useful for managers that want to be able to understand what the important aspects are of machine learning projects and what they will need to consider when pursuing such a project. It will also provide them with enough knowledge to participate in discussions regarding machine learning and to know which questions are important to ask.,This course could be beneficial for someone that has completed our introduction to machine learning course and wants to continue learning about the various models and how one can implement them in Scikit-learn or PyTorch. However, there is some overlap between the material in the two courses and thus some information will be repeated (although we will generally provide more information in this course).,This course is not intended for anyone that already has a strong foundational understanding of machine learning, nor for anyone that wants to learn about the mathematical/statistical underpinnings on which machine learning models were built. Homepage Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live No Password - Links are Interchangeable |