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Beginnt 4 June 2026 10:20

Endet 4 June 2026

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Become AI-Ready: Deep Learning Fundamentals

Explore the fundamental infrastructure shifts required for AI/HPC workloads, covering power consumption, cooling evolution, and networking architectural changes for next-gen compute.
NANOG via YouTube

NANOG

6076 Kurse


1 hour 1 minute

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Übersicht

Want to learn how AI systems work behind tools such as ChatGPT and develop a solid foundation for careers in AI & Generative AI? Many professionals study AI theory but struggle to apply it to real-world systems.

This course fills that gap by introducing you to how deep learning models are built, trained, and ultimately fail and get optimized in practice. Why This Course Works? 1) Real-World AI Focus – Learn where deep learning is used across GenAI, healthcare, and finance. 2) Industry Evolution Clarity – From Neural Networks → ImageNet → Generative AI shift. 3) Hands-On Understanding – Visual training using TensorFlow Playground and simulators.

What You’ll Be Able To Do? -Build neural network foundations -Understand forward pass and backpropagation -Identify when to use ML vs Deep Learning -Understand RNN, LSTM, and sequence modeling This course is intended for software engineers, application developers, data analysts, professionals transitioning into AI & deep learning, as well as ML beginners who want to build job-ready AI skills. Build strong AI foundations, prepare for advanced deep learning and Generative AI roles.

Enroll and start building future-ready AI skills today.

Lehrplan

  • Module-1: AI to Deep Learning: Foundations Behind Modern Intelligent Systems
  • This module builds the foundation of modern AI by explaining how deep learning evolved and why it powers today’s intelligent systems. You’ll understand how AI models learn from data and how neural networks were inspired by the human brain.
  • Module-2: Inside Neural Networks: How Deep Learning Models Actually Learn
  • This module takes you inside neural networks to show how deep learning models actually learn using forward pass, parameters, and backpropagation. You’ll visually explore how models improve through training, errors, and optimization.
  • Module-3: Sequence Intelligence: RNNs, LSTMs, and AI Memory Systems
  • This module introduces sequence intelligence and explains how AI systems handle time-based and language data using memory models. You’ll learn how RNNs and LSTMs enable AI to understand context, sequences, and long-term dependencies.

Unterrichtet von

LearnKartS and Dr Sunil Kumar Vuppala


Fachgebiete

Computer Science