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Проектування промптів×Генерація природної мови×
ГалузьІнтелектуальний аналіз текстуІнтелектуальний аналіз тексту
РодинаProcess / pipelineProcess / pipeline
Рік появи2020 (few-shot prompting); 2022 (chain-of-thought)1970s (rule-based origins); 2000s (probabilistic); 2017+ (neural/transformer era)
Автор методуTom Brown et al. (GPT-3 / few-shot framing, 2020); chain-of-thought extended by Jason Wei et al. (2022)Reiter & Dale (classical pipeline, 2000); Gatt & Krahmer (modern survey, 2018)
ТипNLP pipeline — structured instruction design for large language modelsNLP generative task — structured data to natural language
Основоположне джерелоBrown, T. et al. (2020). Language Models are Few-Shot Learners. Advances in Neural Information Processing Systems (NeurIPS), 33, 1877-1901. link ↗Gatt, A. & Krahmer, E. (2018). Survey of the State of the Art in Natural Language Generation: Core Tasks, Applications and Evaluation. Journal of Artificial Intelligence Research, 61, 65-170. link ↗
Інші назвиinstruction design, LLM prompting, Yönerge Mühendisliği (Prompt Engineering)NLG, data-to-text, text generation, Doğal Dil Üretimi (NLG)
Пов'язані77
ПідсумокPrompt engineering is the practice of crafting structured natural-language instructions — prompts — to elicit targeted outputs from large language models (LLMs). Formalised by Brown et al. (2020) in the context of GPT-3 and extended by Wei et al. (2022) with chain-of-thought prompting, it encompasses four main strategies: zero-shot, few-shot, chain-of-thought, and tree-of-thought. Rather than re-training a model, the analyst shapes the model's behaviour entirely through the design of the input text.Natural Language Generation (NLG) is the branch of natural language processing that automatically produces fluent, human-readable text from structured data, knowledge graphs, or semantic representations. Formalised in the classical pipeline by Reiter and Dale (2000) and surveyed comprehensively by Gatt and Krahmer (2018), NLG powers applications ranging from automated financial reporting and weather bulletins to data storytelling and conversational agents.
ScholarGateНабір даних
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ScholarGateПорівняння методів: Prompt Engineering · Natural Language Generation. Отримано 2026-06-18 з https://scholargate.app/uk/compare