Artificial intelligence can also be divided into different types based on how it itself learns and adapts to problems:

1. Symbolic AI (Rule-based)

  • Approach based on logic and predefined rules
  • Expert systems, fuzzy logic, decision trees
  • Application example: Rule-based medical diagnostic systems

2. Machine Learning (Learning from Data)

  • Models that learn by analyzing large amounts of data
  • Supervised, unsupervised algorithms and reinforcement (autonomous learning)
  • Application example: Recognition of bank fraud

3. Deep Learning (Complex Neural Networks)

  • AI models inspired by human brain functioning
  • Ability to recognize complex patterns within images, text and audio
  • Examples of applications: Facial recognition, machine translation

4. Generative AI (LLM and Content Creation)

  • Systems capable of generating new content
  • Models such as GPT, DALL-E, Stable Diffusion, Sora
  • Examples of applications: Advanced chatbots, image and video creation, automated writing

Each category of AI has its own strengths and weaknesses:

  • Symbolic AI = Reliable but rigid
  • Machine Learning = Suitable for complex analysis
  • Deep Learning = Requires large amounts of data
  • Generative AI = Powerful but subject to bias