Artificial intelligence (AI) is a discipline of computer science that aims to create systems or machines capable of performing tasks that normally require human intelligence. This includes in particular:

• Learn from experience
• Reason and solve problems
• Understand natural language
• Perceive the environment (vision, sounds...)
• Make decisions
• Demonstrate creativity (increasingly present since 2022-2023)

Here is a common definition of AI in 2026:
"AI is the ability of a machine to simulate intelligent behaviors, particularly through learning from data rather than explicit programming of all rules."

Artificial intelligence is a discipline that has several branches. Here is a summary table presenting the different branches of AI as well as concrete examples in 2026.

 

Branch Main description Very concrete examples in 2026 Current significance
Machine Learning – ML) Machines learn from data without being explicitly programmed for each case Fraud detection, Netflix/Spotify recommendation, advanced weather forecast Fundamental – socle of almost all modern AI
Deep Learning – DL) ML subset using deep artificial neural networks (many layers) Image recognition, voice recognition, almost all generative AI The technique that has changed everything since ~2012
Generative AI Creates new content (text, image, video, audio, code, 3D...) from instructions ChatGPT, Claude, Gemini, Midjourney, Runway Gen-3, Flux.1, Veo, Suno, Udio, Luma Dream Machine... The most visible and invested branch in 2025-2026
Natural Language Processing (NLP / NLProc) Understand, generate and manipulate human language Translators (DeepL, Google Translate), chatbots, sentiment analysis, automated summary, voice assistants Very advanced thanks to the large language models
Computer Vision Make machines understand and interpret images/videos Facial recognition, autonomous cars, medical diagnostic imaging, industrial quality control Very industrially mature
Intelligent robotics Combine AI + perception + physical action Humanoid robots (Figure 01, Tesla Optimus, 1X, Apptronik), autonomous drones, collaborative robotic arms In very strong acceleration in 2025-2027
Multimodal AI Models that understand and generate multiple data types at the same time (text + image + sound + video...) GPT-4o, Gemini 1.5/2, Claude 3.5/4, Grok with vision, Llama 4 (if out), etc. The big trend 2024 2026
Reinforcement Learning – RL) Learn by trying and receiving rewards / penalties AlphaGo/AlphaZero, robots that learn to walk, industrial optimization, AI video games Very powerful but still difficult to stabilize on a large scale
Planning & symbolic reasoning Reason logically, plan complex sequences of actions Planners for logistics, games, advanced math problem solving Comes back in force with the "reasoning" techniques of LLM (chain-of-thought, o1-like)
AI agents / agentive systems autonomous AI that can chain multiple tools, take initiatives, work on multiple steps Autonomous personal assistants, research agents, code agents (Devin-like), "AI employees" The great fashion of late 2025 – early 2026