AI Fundamentals & History - AI has been studied for almost a century and integrated into daily life for decades, exemplified by facial recognition and voice assistants [2] - Large language models (LLMs) have driven recent AI advancements, making AI conversational and accessible [5] - AI systems learn from vast amounts of text and other data, enabling them to generate human-like text, but they lack human-level understanding, feelings, and consciousness [8] AI Risks & Ethical Considerations - AI-generated content raises copyright concerns due to the lack of mechanisms to trace the origin of training data and compensate original creators [12] - AI can perpetuate and amplify societal biases present in the data it is trained on, leading to discriminatory outcomes [19] - The use of AI for social scoring, as experimented with in some countries, raises concerns about privacy and restriction of personal freedoms [15] - The European Union's AI Act aims to regulate AI development and usage based on risk levels, prohibiting certain applications like social scoring [16] AI Limitations & Future Directions - AI systems, particularly LLMs, struggle with numerical and spatial reasoning [21][22] - It is crucial to educate and promote conscious development and usage of AI [24] - AI is not a magical solution but a tool that requires human intelligence to understand, regulate, and guide its development [25] - Research efforts, such as the EU-funded Infinity project, focus on improving the quality and representativeness of data used to train AI, particularly in the context of cultural heritage [20]
Il nostro futuro è (anche) AI: capirla ora per costruirla domani | Valentina Presutti | TEDxEnna
TEDx Talks·2025-07-24 15:03