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AI in Education Technology Course

Original price was: USD $120.00.Current price is: USD $59.00.

This self-paced program delves into the integration of AI in educational settings, emphasizing AI-driven personalization, intelligent tutoring systems, and data-driven strategies to enhance learning experiences. Participants will explore cutting-edge AI applications and their impacts on education.

Aim

This course provides participants with a comprehensive understanding of speech recognition and signal processing technologies. It covers the core principles of how speech is captured, processed, and transformed into usable data for voice assistants, speech-to-text systems, and other voice-enabled applications. Learners will also explore advanced techniques such as deep learning models for speech recognition and natural language understanding for building robust speech systems.

Program Objectives

  • Learn the fundamental concepts of speech recognition and signal processing for voice data.
  • Understand the voice-to-text process and explore techniques to improve speech accuracy and recognition performance.
  • Master advanced models like deep neural networks (DNNs) and recurrent neural networks (RNNs) for speech recognition.
  • Gain hands-on experience in building speech recognition systems using popular frameworks such as TensorFlow and PyTorch.
  • Apply speech recognition to real-world problems such as virtual assistants, transcription tools, and speech-based analytics.

Program Structure

Module 1: Introduction to Speech Recognition

  • What is speech recognition and why it is important in modern applications.
  • Understanding acoustic features and phonemes used in speech recognition.
  • Overview of key components in speech recognition: signal processing, feature extraction, and classification.

Module 2: Signal Processing for Speech Recognition

  • Overview of speech signals and sound waveforms.
  • Techniques for preprocessing audio signals: noise reduction, normalization, and feature extraction.
  • Hands-on implementation: spectrogram generation, MFCC (Mel-frequency cepstral coefficients), and filter banks for speech processing.

Module 3: Feature Extraction and Speech Models

  • Extracting acoustic features from raw audio signals for machine learning models.
  • Understanding the role of Hidden Markov Models (HMMs) in traditional speech recognition systems.
  • Modern approaches: Deep Learning methods like DNNs and RNNs for speech recognition.

Module 4: Speech-to-Text Conversion

  • How speech-to-text works: from sound waves to transcription.
  • Exploring challenges in language models and pronunciation variations.
  • Hands-on implementation: Building a basic speech-to-text conversion system using Python and SpeechRecognition library.

Module 5: Deep Learning in Speech Recognition

  • Introduction to deep learning architectures in speech recognition: RNNs, LSTMs, and Transformers.
  • How sequence-to-sequence models are used for text generation tasks like speech-to-text.
  • Hands-on implementation: Building a speech recognition system using an LSTM or Transformer architecture.

Module 6: Speech Recognition Systems and Applications

  • Exploring different speech recognition systems: cloud-based, offline, and hybrid models.
  • Applications of speech recognition in virtual assistants (e.g., Alexa, Siri), transcription services, and voice commands.
  • Case study: Developing a simple voice assistant with speech recognition and natural language understanding (NLU).

Module 7: Challenges and Improvements in Speech Recognition

  • Challenges in speech recognition: accents, background noise, and multi-speaker environments.
  • Techniques for improving speech recognition accuracy, such as data augmentation, transfer learning, and domain adaptation.
  • Hands-on implementation: noise reduction and data augmentation for improving speech models.

Module 8: Natural Language Understanding (NLU) for Speech

  • Introduction to Natural Language Understanding (NLU) and its role in speech applications.
  • Building conversational systems: intent recognition, slot filling, and dialog management.
  • Hands-on implementation: Training a basic NLU model using intents and entities in speech-based applications.

Module 9: Speech Recognition in Real-World Scenarios

  • Case studies of real-world speech recognition applications in healthcare, automotive, and education.
  • How to deploy a speech-to-text application for real-time transcription or speech-driven analytics.
  • Hands-on project: Building and deploying a real-time speech recognition application for transcription or command recognition.

Module 10: Ethical Considerations and Privacy in Speech Recognition

  • Ethical implications of using speech recognition in sensitive areas like healthcare, finance, and personal data.
  • Ensuring privacy and data security in speech-based applications.
  • Understanding regulatory requirements: GDPR, HIPAA, and ethical AI practices for voice data.

Final Project

  • Develop an advanced speech recognition application with specific functionalities like voice command recognition, real-time transcription, or virtual assistant.
  • Integrate NLU for contextual understanding and dialog management.
  • Evaluate the model's performance in real-world scenarios with real-time audio data.

Participant Eligibility

  • Students and professionals in Computer Science, Electrical Engineering, and Data Science.
  • Researchers and practitioners interested in speech recognition and natural language processing (NLP).
  • Anyone interested in building real-time speech applications and voice-driven systems.

Program Outcomes

  • Comprehensive understanding of speech recognition techniques and their applications.
  • Hands-on experience with speech-to-text systems, deep learning models, and real-time speech processing.
  • Proficiency in using popular libraries like TensorFlow, PyTorch, and SpeechRecognition to build speech systems.
  • Ability to create real-world speech applications and optimize models for accuracy and efficiency.

Program Deliverables

  • Access to e-LMS: Full access to course materials, tutorials, and resources.
  • Hands-on Project Work: Practical assignments on building and implementing speech recognition models.
  • Research Paper Publication: Opportunities to publish research findings in relevant journals.
  • Final Examination: Certification awarded after completing the exam and final project.
  • e-Certification and e-Marksheet: Digital credentials provided upon successful completion.

Future Career Prospects

  • Speech Recognition Engineer
  • Natural Language Processing (NLP) Engineer
  • Voice Assistant Developer
  • AI and Machine Learning Engineer
  • Data Scientist (Speech and Audio Data)

Job Opportunities

  • AI Companies: Developing speech recognition models for applications in virtual assistants and speech analytics.
  • Tech Firms: Working on voice-activated systems and speech-driven products.
  • Healthcare and Finance: Developing speech-to-text and voice analytics systems for transcription and reporting.
  • Startups and Research Institutes: Advancing speech recognition technology for real-time applications in various industries.
Category

E-LMS, E-LMS+Video, E-LMS+Video+Live Lectures

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What You’ll Gain

  • Full access to e-LMS
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate

All Live Workshops

Feedbacks

This was a good workshop some of the recommended apps are not compatible with MAC based computers. More would recommend to update the recommendations.
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thank you for the lecture and if l ever face any challenges will reach out


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