What if the fundamental building block of modern AI is wrong?
For more than a decade, artificial intelligence has been built on tokens—small fragments of text that allow language models to predict what comes next. This approach has produced remarkable systems capable of writing, coding, translating, and reasoning. Yet despite their power, large language models still struggle with long-range coherence, multilingual consistency, deep reasoning, and the reliable representation of meaning.
Large Concept Models explores a radically different path.
Drawing from cutting-edge research and the groundbreaking Large Concept Model architecture introduced by Meta AI, this book examines how AI systems can move beyond token prediction and begin operating directly on concepts—the semantic units that carry meaning across languages, contexts, and modalities.
Inside, you'll discover:
• Why tokens are not the same as thoughts
• The hidden limitations of next-token prediction
• How modern language models actually represent knowledge
• The rise of sentence embeddings and multilingual concept spaces
• The SONAR architecture and concept-level reasoning
• Diffusion models operating in semantic space
• Hybrid LLM-LCM systems and future AI architectures
• Implications for reasoning, memory, safety, and multimodal intelligence
• The research frontier that may define the next generation of AI
Written for machine learning engineers, AI researchers, developers, technical leaders, and intellectually curious readers, this book combines rigorous technical analysis with accessible explanations to illuminate one of the most important architectural shifts in artificial intelligence.
Whether Large Concept Models ultimately replace traditional language models or evolve alongside them, one question can no longer be ignored:
Is the token really the right unit of thought?
This book provides the evidence, the architecture, and the argument.
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Paperback. Condition: new. Paperback. What if the fundamental building block of modern AI is wrong?For more than a decade, artificial intelligence has been built on tokens-small fragments of text that allow language models to predict what comes next. This approach has produced remarkable systems capable of writing, coding, translating, and reasoning. Yet despite their power, large language models still struggle with long-range coherence, multilingual consistency, deep reasoning, and the reliable representation of meaning.Large Concept Models explores a radically different path.Drawing from cutting-edge research and the groundbreaking Large Concept Model architecture introduced by Meta AI, this book examines how AI systems can move beyond token prediction and begin operating directly on concepts-the semantic units that carry meaning across languages, contexts, and modalities.Inside, you'll discover: - Why tokens are not the same as thoughts- The hidden limitations of next-token prediction- How modern language models actually represent knowledge- The rise of sentence embeddings and multilingual concept spaces- The SONAR architecture and concept-level reasoning- Diffusion models operating in semantic space- Hybrid LLM-LCM systems and future AI architectures- Implications for reasoning, memory, safety, and multimodal intelligence- The research frontier that may define the next generation of AIWritten for machine learning engineers, AI researchers, developers, technical leaders, and intellectually curious readers, this book combines rigorous technical analysis with accessible explanations to illuminate one of the most important architectural shifts in artificial intelligence.Whether Large Concept Models ultimately replace traditional language models or evolve alongside them, one question can no longer be ignored: Is the token really the right unit of thought?This book provides the evidence, the architecture, and the argument. This item is printed on demand. Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability. Seller Inventory # 9798199304528
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Taschenbuch. Condition: Neu. Neuware - What if the fundamental building block of modern AI is wrong For more than a decade, artificial intelligence has been built on tokens-small fragments of text that allow language models to predict what comes next. This approach has produced remarkable systems capable of writing, coding, translating, and reasoning. Yet despite their power, large language models still struggle with long-range coherence, multilingual consistency, deep reasoning, and the reliable representation of meaning.Large Concept Models explores a radically different path.Drawing from cutting-edge research and the groundbreaking Large Concept Model architecture introduced by Meta AI, this book examines how AI systems can move beyond token prediction and begin operating directly on concepts-the semantic units that carry meaning across languages, contexts, and modalities.Inside, you'll discover: - Why tokens are not the same as thoughts- The hidden limitations of next-token prediction- How modern language models actually represent knowledge- The rise of sentence embeddings and multilingual concept spaces- The SONAR architecture and concept-level reasoning- Diffusion models operating in semantic space- Hybrid LLM-LCM systems and future AI architectures- Implications for reasoning, memory, safety, and multimodal intelligence- The research frontier that may define the next generation of AIWritten for machine learning engineers, AI researchers, developers, technical leaders, and intellectually curious readers, this book combines rigorous technical analysis with accessible explanations to illuminate one of the most important architectural shifts in artificial intelligence.Whether Large Concept Models ultimately replace traditional language models or evolve alongside them, one question can no longer be ignored: Is the token really the right unit of thought This book provides the evidence, the architecture, and the argument. Seller Inventory # 9798199304528