Machine Learning and NLP Basics
About this Course
Welcome to the \"Machine Learning and NLP Basics\" course, a comprehensive learning resource designed for enthusiasts keen on mastering the foundational aspects of machine learning (ML) and natural language processing (NLP). This course is structured to provide a deep dive into the core concepts, algorithms, and applications of ML and NLP, preparing you for advanced exploration and application in these fields. Throughout this course, participants will gain a solid understanding of machine learning fundamentals, dive into various ML types, explore classification and regression techniques, and wrap up with practical assessments. Additionally, the course offers an in-depth look at deep learning concepts, TensorFlow usage, digit classification with neural networks, convolutional neural networks (CNNs), recurrent neural networks (RNNs), and long short-term memory (LSTM) networks. We\'ll also cover essential NLP topics, including text mining, text preprocessing, analyzing sentence structure, and text classification. By the end of this course, you will be able to: -Understand and apply core concepts of machine learning and NLP. -Differentiate between various types of machine learning and when to use them. -Implement classification, regression, and optimization techniques in ML. -Utilize deep learning models for complex problem-solving. -Navigate TensorFlow for building and training models. -Explore CNNs and RNNs for image and sequence data processing. -Explore NLP techniques for text analysis and classification. This course caters to a wide audience, including students, budding data scientists, software engineers, and anyone with an interest in machine learning and natural language processing. Whether you\'re starting your journey in ML and NLP or looking to solidify your foundational knowledge, this course offers valuable insights and practical skills. Learners are expected to have a basic understanding of programming concepts. Familiarity with Python and fundamental artificial intelligence concepts will be beneficial but is not mandatory. The course is divided into four modules, each focusing on different aspects of machine learning, deep learning, and natural language processing. Each lesson includes video lectures, readings, practical assignments, and discussion prompts to foster interactive learning and application of concepts. Embark on this educational journey to explore the fascinating world of machine learning and natural language processing. This course is designed to equip you with the knowledge and skills necessary to navigate the evolving landscape of AI and data science, setting a strong foundation for further exploration and innovation.Created by: Edureka

Related Online Courses
The Version Control with Git course provides you with a solid, hands-on foundation for understanding the Git version control system. Git is open source software originally created by Linus... more
This course focuses on examining various practical applications of the fundamental financial analysis and valuation techniques employed in the investment banking industry. Specifically, we will... more
This Specialization is intended for new or pivoting Data Analysts, seeking to add Teradata Vantage to their role. These courses will get new users up and running and will also leverage the... more
In this fourth course of the Python, Bash and SQL Essentials for Data Engineering Specialization, you will build upon the data engineering concepts introduced in the first three courses to apply... more
This Specialization is designed to help anyone involved in developing software for Arm Cortex-M processors. Over four courses you will develop your knowledge of this popular microcontroller variant... more