Become Machine Learning Engineer
Become Machine Learning Engineer
Published 9/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.34 GB | Duration: 2h 51m
Master machine learning algorithms, data preprocessing, and real-world model deployment with Python and essential tools.
What you'll learn
Build and deploy end-to-end machine learning models in real-world applications.
Master key machine learning algorithms like regression, classification, and clustering.
Preprocess, clean, and analyze data to improve model performance.
Implement machine learning workflows using Python and essential libraries like Scikit-Learn and TensorFlow.
Requirements
Basic knowledge of Python programming is recommended, but not required.
No prior machine learning experience needed—everything will be taught from the ground up.
A computer with internet access and the ability to install Python software.
Description
Unlock the creative potential of artificial intelligence with "Master the Machine Muse: Build Generative AI with ML." This comprehensive course takes you on an exciting journey into the world of generative AI, blending the art of machine learning with the science of creativity. Whether you're an aspiring data scientist, a tech enthusiast, or a creative professional looking to harness the power of AI, this course will provide you with the skills and knowledge to build and deploy your generative models.Course Highlights:- Introduction to Generative AI: Understand the fundamentals of generative AI and its applications across various domains such as art, music, text, and design.- Foundations of Machine Learning: Learn the core concepts of machine learning, including supervised and unsupervised learning, and how they apply to generative models.- Deep Learning for Creativity: Dive deep into neural networks and explore architectures like GANs (Generative Adversarial Networks), VAEs (Variational Autoencoders), and transformers that are driving the generative AI revolution.- Hands-On Projects: Engage in practical, hands-on projects that will guide you through the process of building your generative models. From generating art to composing music, you'll experience the thrill of creating with AI.- Python Programming: Gain proficiency in Python programming, focusing on libraries and frameworks essential for generative AI, such as TensorFlow, PyTorch, and Keras.- Ethics and Future of Generative AI: Discuss the ethical considerations and future implications of generative AI, ensuring you are well-equipped to navigate this rapidly evolving field responsibly.Who Should Enroll:- Data Scientists and Machine Learning Engineers looking to specialize in generative models.- Artists, Musicians, and Designers interested in exploring AI as a tool for creativity.- Tech Enthusiasts and Innovators eager to stay ahead in the field of AI.- Students and Professionals aiming to enhance their skill set with cutting-edge technology.Prerequisites:- Basic understanding of Python programming.- Familiarity with machine learning concepts is beneficial but not required.Course Outcomes:By the end of this course, you will:- Have a strong grasp of generative AI concepts and techniques.- Be able to build and train generative models using state-of-the-art machine learning frameworks.- Understand the ethical considerations and potential impacts of generative AI.- Be prepared to apply generative AI skills in real-world projects and innovative applications.Join us in "Master the Machine Muse: Build Generative AI with ML" and embark on a creative journey that merges technology with imagination, empowering you to shape the future of AI-driven creativity.
Overview
Section 1: Logistic Regression Fundamentals
Lecture 1 Logistic Regression: From Zero to Hero
Lecture 2 Demystifying Logistic Regression Math
Lecture 3 Logistic Regression: Real-World Examples
Section 2: Data Preparation and Evaluation
Lecture 4 Data Cleaning: The Unsung Hero of ML
Lecture 5 Feature Engineering Magic: Transform Your Data
Lecture 6 Know Your Model: Essential Evaluation Metrics
Section 3: Logistic Regression for NLP
Lecture 7 NLP for Beginners: Start with Logistic Regression
Lecture 8 Supercharge Your NLP with Advanced Techniques
Lecture 9 Transfer Learning: The NLP Shortcut You Need
Section 4: Logistic Regression in Action: COVID-19 Case Study
Lecture 10 Taming COVID-19 dаta: A Data Scientist's Guide
Lecture 11 Unmasking COVID-19 Trends: Data-Driven Insights
Lecture 12 The Machine Learning Lifecycle: From Data to Deployment
Section 5: Text Preprocessing and EDA
Lecture 13 Text Preprocessing: Clean Up Your Act
Lecture 14 Advanced Text Preprocessing: Unlock Hidden Patterns
Lecture 15 Telling Stories with Text dаta: EDA Mastery
Section 6: Feature Engineering for NLP
Lecture 16 Feature Engineering: The Secret to NLP Success
Lecture 17 Optimize Your Model: Hyperparameter Tuning Tips
Aspiring machine learning engineers and data scientists.,Developers looking to transition into AI and machine learning roles.,Python programmers interested in enhancing their skill set with machine learning.,Students and professionals wanting to build machine learning models and solve real-world problems.
What you'll learn
Build and deploy end-to-end machine learning models in real-world applications.
Master key machine learning algorithms like regression, classification, and clustering.
Preprocess, clean, and analyze data to improve model performance.
Implement machine learning workflows using Python and essential libraries like Scikit-Learn and TensorFlow.
Requirements
Basic knowledge of Python programming is recommended, but not required.
No prior machine learning experience needed—everything will be taught from the ground up.
A computer with internet access and the ability to install Python software.
Description
Unlock the creative potential of artificial intelligence with "Master the Machine Muse: Build Generative AI with ML." This comprehensive course takes you on an exciting journey into the world of generative AI, blending the art of machine learning with the science of creativity. Whether you're an aspiring data scientist, a tech enthusiast, or a creative professional looking to harness the power of AI, this course will provide you with the skills and knowledge to build and deploy your generative models.Course Highlights:- Introduction to Generative AI: Understand the fundamentals of generative AI and its applications across various domains such as art, music, text, and design.- Foundations of Machine Learning: Learn the core concepts of machine learning, including supervised and unsupervised learning, and how they apply to generative models.- Deep Learning for Creativity: Dive deep into neural networks and explore architectures like GANs (Generative Adversarial Networks), VAEs (Variational Autoencoders), and transformers that are driving the generative AI revolution.- Hands-On Projects: Engage in practical, hands-on projects that will guide you through the process of building your generative models. From generating art to composing music, you'll experience the thrill of creating with AI.- Python Programming: Gain proficiency in Python programming, focusing on libraries and frameworks essential for generative AI, such as TensorFlow, PyTorch, and Keras.- Ethics and Future of Generative AI: Discuss the ethical considerations and future implications of generative AI, ensuring you are well-equipped to navigate this rapidly evolving field responsibly.Who Should Enroll:- Data Scientists and Machine Learning Engineers looking to specialize in generative models.- Artists, Musicians, and Designers interested in exploring AI as a tool for creativity.- Tech Enthusiasts and Innovators eager to stay ahead in the field of AI.- Students and Professionals aiming to enhance their skill set with cutting-edge technology.Prerequisites:- Basic understanding of Python programming.- Familiarity with machine learning concepts is beneficial but not required.Course Outcomes:By the end of this course, you will:- Have a strong grasp of generative AI concepts and techniques.- Be able to build and train generative models using state-of-the-art machine learning frameworks.- Understand the ethical considerations and potential impacts of generative AI.- Be prepared to apply generative AI skills in real-world projects and innovative applications.Join us in "Master the Machine Muse: Build Generative AI with ML" and embark on a creative journey that merges technology with imagination, empowering you to shape the future of AI-driven creativity.
Overview
Section 1: Logistic Regression Fundamentals
Lecture 1 Logistic Regression: From Zero to Hero
Lecture 2 Demystifying Logistic Regression Math
Lecture 3 Logistic Regression: Real-World Examples
Section 2: Data Preparation and Evaluation
Lecture 4 Data Cleaning: The Unsung Hero of ML
Lecture 5 Feature Engineering Magic: Transform Your Data
Lecture 6 Know Your Model: Essential Evaluation Metrics
Section 3: Logistic Regression for NLP
Lecture 7 NLP for Beginners: Start with Logistic Regression
Lecture 8 Supercharge Your NLP with Advanced Techniques
Lecture 9 Transfer Learning: The NLP Shortcut You Need
Section 4: Logistic Regression in Action: COVID-19 Case Study
Lecture 10 Taming COVID-19 dаta: A Data Scientist's Guide
Lecture 11 Unmasking COVID-19 Trends: Data-Driven Insights
Lecture 12 The Machine Learning Lifecycle: From Data to Deployment
Section 5: Text Preprocessing and EDA
Lecture 13 Text Preprocessing: Clean Up Your Act
Lecture 14 Advanced Text Preprocessing: Unlock Hidden Patterns
Lecture 15 Telling Stories with Text dаta: EDA Mastery
Section 6: Feature Engineering for NLP
Lecture 16 Feature Engineering: The Secret to NLP Success
Lecture 17 Optimize Your Model: Hyperparameter Tuning Tips
Aspiring machine learning engineers and data scientists.,Developers looking to transition into AI and machine learning roles.,Python programmers interested in enhancing their skill set with machine learning.,Students and professionals wanting to build machine learning models and solve real-world problems.