Introduction to Creative AI

External: Coursera Courses ↗ · Coursera

Open Course on External: Coursera

Free to audit · Opens on External: Coursera

Introduction to Creative AI

Coursera · Beginner ·📐 ML Fundamentals ·3mo ago

Key Takeaways

Introduction to Creative AI, including neural networks and applications in artistic practice

Original Description

This course is an introduction to Creative AI, a growing field at the intersection of machine learning and artistic practice. During the course, you’ll learn how neural networks work, how they are trained, and how they can be applied. Exploring how artificial intelligence can be used as a transformative tool across a variety of creative practices. By the end of this course you will be able to: - Understand the core principles of artificial intelligence and how they apply within creative contexts, including visual art, design, music, and performance. - Identify the roles of neural networks and machine learning in creative AI systems, and recognise how artists are using these tools in practice. - Reflect critically on the ethical, legal, and cultural implications of working with AI, including questions of authorship, bias, and creative agency. - Experiment with basic AI tools and techniques, developing an informed and hands-on understanding of how generative systems can support co-creative processes. Through hands-on coding exercises and guided walkthroughs, you’ll train your first AI model and gain a practical understanding of how machine learning functions beneath the surface. Alongside technical skills, the course also invites you to reflect on broader issues: What does it mean to create with AI? How is AI changing authorship, labour, and the creative industries? What ethical concerns arise when training models on existing cultural data? Featuring insights from leading AI artists, researchers, and technologists, this course will give you both the technical foundation and critical perspective to begin working with AI in your own creative practice. No prior coding experience is required, just curiosity and a willingness to experiment.
Watch on External: Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related Reads

📰
Introducing Alpha Capital Bank: How I’m Transitioning from Data Science to Credit Risk by Building…
Learn how to transition from data science to credit risk by building a project-based journey in banking and quantitative finance
Medium · Machine Learning
📰
multiple linear regression in scratch [P]
Implement multiple linear regression from scratch in Scratch, a beginner-friendly programming environment
Reddit r/MachineLearning
📰
Classifying heartbeats as normal or abnormal, and being honest about when it stops working
Learn to classify heartbeats as normal or abnormal using machine learning and understand the importance of acknowledging limitations in medical AI models
Medium · Machine Learning
📰
AI Inference, Explained the Way I Wish Someone Had Explained It to Me
Learn the difference between AI training, fine-tuning, serving, and inference to improve your AI architecture meetings
Medium · Machine Learning
Up next
Part 2 | MLOps On GitHub | Deploy and Automate ML Workflow |Using GitHub Actions and CML for CI & CD
Abonia Sojasingarayar
Watch →