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What’s Included?

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Prerequisites

    • Basic programming knowledge – Familiarity with Python or similar languages.
    • Understanding of audio signal processing – Know fundamental audio manipulation techniques.
    • Machine learning fundamentals – Basic knowledge of algorithms and model training.
    • Mathematical proficiency – Comfort with linear algebra and probability concepts.
    • Experience with audio software tools – Hands-on use of DAWs or similar tools.

Skills You’ll Gain

  • AI-Driven Music Composition
  • Audio Signal Processing
  • Sound Classification and Tagging
  • Speech and Voice Recognition
  • Generative Audio Synthesis
  • Neural Audio Enhancement
  • Emotion-Based Sound Design
  • Intelligent Mixing and Mastering
  • Adaptive Soundscapes for Interactive Media
  • Real-Time Audio Analysis and Optimization

Self Study Materials Included

Videos

Engaging visual content to enhance understanding and learning experience.

Podcasts

Insightful audio sessions featuring expert discussions and real-world cases.

E-Books

Comprehensive digital guides offering in-depth knowledge and learning support.

Audiobooks

Listen and learn anytime with convenient audio-based knowledge sharing.

Module Wise Quizzes

Interactive assessments to reinforce learning and test conceptual clarity.

Additional Resources

Supplementary references and list of tools to deepen knowledge and practical application.

Tools You’ll Master

TensorFlow Audio Recognition

TensorFlow Audio Recognition

PyTorch Sound Classification

PyTorch Sound Classification

Librosa

Librosa

OpenAI Jukebox

OpenAI Jukebox

Google Magenta Studio

Google Magenta Studio

Audacity AI Plugins

Audacity AI Plugins

Adobe Podcast AI Tools

Adobe Podcast AI Tools

AIVA

AIVA

Wav2Vec

Wav2Vec

SpeechBrain

SpeechBrain

JUCE Framework

JUCE Framework

FL Studio with AI Integrations

FL Studio with AI Integrations

Logic Pro Smart Tools

Logic Pro Smart Tools

Sonible Smart EQ

Sonible Smart EQ

Spotify Audio Analysis API

Spotify Audio Analysis API

NVIDIA Riva Speech SDK

NVIDIA Riva Speech SDK

Deep Learning for Audio Toolkit

Deep Learning for Audio Toolkit

AudioLDM

AudioLDM

Sound Design Automation Tools

Sound Design Automation Tools

What You’ll Learn

AI-Powered Sound Creation

Learn to use AI tools for music composition, sound synthesis, and real-time audio generation.

Audio Intelligence and Recognition

Develop skills in speech recognition, sound tagging, and classification through machine learning models.

Generative and Adaptive Audio

Explore how AI creates dynamic soundscapes that adapt to user interactions and environments.

AI-Driven Production Techniques

Gain hands-on experience with AI tools for mixing, mastering, restoration, and audio enhancement.

Ethical and Industry Applications

Understand how AI transforms audio innovation across music, media, and entertainment while ensuring responsible creative use.

Course Modules

Module 1: Introduction to AI and Sound
  1. 1.1 What is AI?
  2. 1.2 AI in Daily Life: Audio Examples
  3. 1.3 Basics of Sound Waves, Amplitude, Frequency
  4. 1.4 Digital Audio Fundamentals
Module 2: Harnessing AI Across Audio Domains
  1. 2.1 AI for Audio Enhancement and Restoration
  2. 2.2 AI for Audio Accessibility and Personalization
  3. 2.3 AI in Speech and Voice Technologies
  4. 2.4 Popular Audio Libraries: Librosa, PyAudio
  5. 2.5 Use Case:AI-Driven Real-Time Captioning and Translation for Live Events
  6. 2.6 Case Study:Personalized Hearing Aid Adaptation Using AI and Smart Earbuds
  7. 2.7 Hands-on: Voice Emotion Detection using Deepgram’s Voice AI Platform
Module 3: Machine Learning & AI for Audio
  1. 3.1 Machine Learning Models for Audio Applications
  2. 3.2 Deep Learning & Advanced AI Techniques for Audio
  3. 3.3 Audio-Specific Architectures: CNNs, RNNs, Transformers
  4. 3.4 Transfer Learning in Audio AI
  5. 3.5 Use Case: Speech-to-Text Transcription for Medical Records
  6. 3.6 Case Study: AI-powered Music Generation with Deep Learning
  7. 3.7 Hands-on: Build a Speech-to-Text Model Using TensorFlow
Module 4: Speech Recognition & Text-to-Speech
  1. 4.1 Fundamentals of Speech Recognition & Phonetics
  2. 4.2 API-based ASR Solutions
  3. 4.3 Building Custom ASR Models with Transformers
  4. 4.4 Introduction to TTS & Voice Cloning
  5. 4.5 Use Case: Automating Meeting Transcriptions with Google Speech-to-Text API
  6. 4.6 Case Study: Custom Transformer-based ASR Model for Multilingual Customer Support
  7. 4.7 Hands-on: Transcribe audio with an ASR API; generate speech from text
Module 5: Audio Enhancement & Noise Reduction
  1. 5.1 Common Audio Issues
  2. 5.2 AI-based Noise Filtering & Enhancement
  3. 5.3 Use Cases: Enhancing Audio Quality for Remote Work Calls Using AI Noise Reduction
  4. 5.4 Case Study: Krisp’s AI-powered Noise Cancellation in Podcast Production
  5. 5.5 Hands-on: Use Krisp or Adobe Enhance Speech to clean noisy audio
Module 6: Emotion & Sentiment Detection from Audio
  1. 6.1 Introduction to Emotion Detection
  2. 6.2 AI Models for Emotion Detection: RNNs, LSTMs, CNNs
  3. 6.3 Challenges: Bias, Multilingual Contexts, Reliability
  4. 6.4 Use Case: Enhancing Customer Service with Emotion Detection from Speech
  5. 6.5 Case Study: IBM Watson Tone Analyzer for Real-Time Emotion Recognition
  6. 6.6 Hands-on: Use IBM Watson Tone Analyzer or similar APIs to analyze speech samples
Module 7: Ethical and Privacy Considerations
  1. 7.1 Deepfakes and Voice Cloning Risks
  2. 7.2 Privacy and Data Security
  3. 7.3 Bias and Fairness in Audio AI
  4. 7.4 Use Case: Implementing Ethical Voice Data Collection and Consent Management
  5. 7.5 Case Study: Addressing Bias and Privacy in Audio AI under GDPR Compliance
  6. 7.6 Hands-on: Detect fake audio clips; create an ethical AI checklist
Module 8: Advanced Applications & Future Trends
  1. 8.1 Sound Event Detection & Classification
  2. 8.2 Audio Search and Indexing
  3. 8.3 Innovations: Multimodal AI, Edge Computing, 3D Audio
  4. 8.4 Emerging Careers in Audio AI

Frequently Asked Questions

Yes, you’ll gain hands-on experience with AI tools for music creation, sound design, and speech recognition that can be immediately applied across industries like music production, entertainment, and media technology.

This course uniquely blends AI with audio engineering, focusing on generative music, intelligent sound processing, and adaptive audio systems that redefine how sound is created, customized, and experienced.

You’ll work on projects like AI-generated music composition, real-time sound enhancement, intelligent voice synthesis, and a capstone project focused on building an AI-powered audio application or tool.

The course combines foundational theory with interactive labs, practical assignments, and real-world projects that help you apply AI in sound processing, production, and intelligent audio design.

You’ll develop specialized AI and audio technology skills that prepare you for roles such as AI Audio Engineer, Sound Designer, Audio Data Scientist, or Speech Processing Specialist in music, gaming, and media industries.