Эти странные новые разумы: Как ИИ научился говорить и что это значит - Кристофер Саммерфилд
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А Б В Г Д Е Ж З И К Л М Н О П Р С Т У Ф Х Ц Ч Ш Щ Э Ю Я
А
пространство действий, LLM, 274–5
Адамс, Дуглас: «Автостопом по галактике», 1–2, 325
Adept AI, 294
реклама, 188, 220–21, 223, 224, 248, 249, 261–2, 263, 314
аффективные состояния, 122, 124
#AIhype, 308–9, 311
Институт безопасности ИИ (AI Safety Institute), 311н, 346
алгоритмы, 21, 38, 59, 75, 76, 99, 249–50, 263, 278, 279, 326–31
выравнивание, LLM, 179–238
проблема выравнивания, 322
AlphaCode, 287
AlphaFold, 3–4, 347
AlphaGo, 4, 267
Альтман, Сэм, 1, 2, 5, 162, 222–3
альтернативные правые (alt-right), 181–2
американский жестовый язык (ASL), 58, 60, 61, 63, 65
Anthropic, 5, 51, 192, 209, 215, 235, 251, 342
антропоморфизм, 71–2, 129, 264
Эпплуайт, Маршалл, 217, 219
интерфейс прикладного программирования (API), 283–5, 290–91, 292, 295, 300, 301
Аристотель, 13, 16, 32; De Interpretatione («Об истолковании»), 73
искусственный общий интеллект (AGI), 1, 136, 140
Искусственный интеллект (ИИ)
искусственный общий интеллект (AGI), 1, 136, 140
ассистенты, персональные, 7, 227–8, 243, 246–7, 251, 263, 272, 292, 295, 297, 300, 301, 332, 334, 335, 342–3
системы глубокого