📖Definition

The learned skill of formulating inputs to AI systems in a way that is precise, context-rich, and goal-oriented. Describes a craft competence that develops through practice and experience. Related to AUG-0021 (Initialization Cascade), AUG-0088 (Algorithmic Intuition), and AUG-0109 (The Reciprocity Axiom).

📖Definition (DE)

Die erlernte Fertigkeit, Eingaben an KI-Systeme so zu formulieren, dass sie präzise, kontextreich und zielführend sind. Beschreibt eine handwerkliche Kompetenz, die sich durch Übung und Erfahrung entwickelt. Steht in Verbindung mit AUG-0021 (Initialization Cascade), AUG-0088 (Algorithmic Intuition) und AUG-0109 (The Reciprocity Axiom).

🧠 What the Person Experiences · Was die Person erlebt

EN

Users catch yourself one stops explaining things out loud. Without thinking, there's enough mutual understanding.

DE

Man erwischt sich selbst dabei, die KI auf etwas Unausgesprochenes antwortet. Ohne nachzudenken, ein Mix aus Erleichterung und Überraschung.

Based on reported user experiences and logical inference from available descriptions. This is not primary research.

🔄 How It Develops Over Time · Wie es sich entwickelt

EN

Week 1: Users notice the gap between intention and action. Month 1: Small experiments accumulate. Month 6: The new pattern is embedded; old ways feel foreign.

DE

Woche 1: Man bemerkt die Lücke zwischen Absicht und Aktion. Monat 1: Kleine Experimente sammeln sich. Monat 6: Das neue Muster ist eingebettet; alte Wege fühlen sich fremd an.

Based on reported user experiences and logical inference from available descriptions. This is not primary research.

💼 In the Workplace · Am Arbeitsplatz

EN

A registered nurse uses AI to check medication interactions and cross-reference patient conditions during shift handovers.

DE

Eine Fachkraft nutzt KI, um Informations-Konsistenzen zu überprüfen und Patientenzustände bei Schichtwechseln abzugleichen.

Based on reported user experiences and logical inference from available descriptions. This is not primary research.

🌎 Translations (10 Languages)

🌐 Français (FR)
FR — Definition

La compétence acquise consistant à formuler des entrées dans les systèmes d'IA d'une manière précise, riche en contexte et orientée vers des objectifs. Décrit une compétence artisanale qui se développe par la pratique et l’expérience. Lié à AUG-0021 (Cascade d'initialisation), AUG-0088 (Intuition algorithmique) et AUG-0109 (L'axiome de réciprocité).

FR — Distinction

Prompt Craftsmanship décrit la compétence de formulation des entrées ; la planification stratégique d'une session entière est couverte par AUG-0138 (L'architecture de la session).

Translation quality: AI-assisted (machine-translated). Original: EN/DE. © Andreas Ehstand, CC BY-NC-ND 4.0
🌐 Español (ES)
ES — Definition

La habilidad aprendida de formular entradas para sistemas de IA de una manera precisa, rica en contexto y orientada a objetivos. Describe una competencia artesanal que se desarrolla a través de la práctica y la experiencia. Relacionado con AUG-0021 (Cascada de inicialización), AUG-0088 (Intuición algorítmica) y AUG-0109 (El axioma de reciprocidad).

ES — Distinction

La artesanía rápida describe la habilidad de formular insumos; La planificación estratégica de una sesión completa está cubierta por AUG-0138 (La arquitectura de la sesión).

Translation quality: AI-assisted (machine-translated). Original: EN/DE. © Andreas Ehstand, CC BY-NC-ND 4.0
🌐 Português (PT)
PT — Definition

A habilidade aprendida de formular entradas para sistemas de IA de uma forma precisa, rica em contexto e orientada para objetivos. Descreve uma competência artesanal que se desenvolve através da prática e da experiência. Relacionado a AUG-0021 (Cascata de Inicialização), AUG-0088 (Intuição Algorítmica) e AUG-0109 (O Axioma da Reciprocidade).

PT — Distinction

Prompt Craftsmanship descreve a habilidade de formulação de insumos; o planejamento estratégico de uma sessão inteira é coberto pelo AUG-0138 (A Arquitetura da Sessão).

Translation quality: AI-assisted (machine-translated). Original: EN/DE. © Andreas Ehstand, CC BY-NC-ND 4.0
🌐 Italiano (IT)
IT — Definition

L'abilità appresa di formulare input per i sistemi di intelligenza artificiale in modo preciso, ricco di contesto e orientato agli obiettivi. Descrive una competenza artigianale che si sviluppa attraverso la pratica e l'esperienza. Relativo a AUG-0021 (Initialization Cascade), AUG-0088 (Algorithmic Intuition) e AUG-0109 (The Reciprocity Axiom).

IT — Distinction

Prompt Craftsmanship descrive l'abilità nella formulazione degli input; la pianificazione strategica di un'intera sessione è coperta da AUG-0138 (The Session Architecture).

Translation quality: AI-assisted (machine-translated). Original: EN/DE. © Andreas Ehstand, CC BY-NC-ND 4.0
🌐 Nederlands (NL)
NL — Definition

De aangeleerde vaardigheid om input voor AI-systemen te formuleren op een manier die nauwkeurig, contextrijk en doelgericht is. Beschrijft een ambachtelijke competentie die zich ontwikkelt door oefening en ervaring. Gerelateerd aan AUG-0021 (Initialisatiecascade), AUG-0088 (Algoritmische intuïtie) en AUG-0109 (Het wederkerigheidsaxioma).

NL — Distinction

Prompt Vakmanschap beschrijft de vaardigheid van het formuleren van input; de strategische planning van een hele sessie wordt behandeld in AUG-0138 (De sessiearchitectuur).

Translation quality: AI-assisted (machine-translated). Original: EN/DE. © Andreas Ehstand, CC BY-NC-ND 4.0
🌐 Русский (RU)
RU — Definition

Приобретенный навык формулирования входных данных для систем искусственного интеллекта точным, контекстно-ориентированным и целенаправленным способом. Описывает ремесленную компетентность, которая развивается посредством практики и опыта. Относится к AUG-0021 (каскад инициализации), AUG-0088 (алгоритмическая интуиция) и AUG-0109 (аксиома взаимности).

RU — Distinction

«Быстрое мастерство» описывает умение формулировать входные данные; стратегическое планирование всей сессии описано в AUG-0138 (Архитектура сессии).

Translation quality: AI-assisted (machine-translated). Original: EN/DE. © Andreas Ehstand, CC BY-NC-ND 4.0
🌐 中文 (ZH)
ZH — Definition

以精确、上下文丰富且目标导向的方式向人工智能系统制定输入的技能。描述通过实践和经验发展的工艺能力。与 AUG-0021(初始化级联)、AUG-0088(算法直觉)和 AUG-0109(互惠公理)相关。

ZH — Distinction

迅速的工艺描述了输入公式的技巧; AUG-0138(会话架构)涵盖了整个会话的战略规划。

Translation quality: AI-assisted (machine-translated). Original: EN/DE. © Andreas Ehstand, CC BY-NC-ND 4.0
🌐 العربية (AR)
AR — Definition

المهارة المكتسبة في صياغة المدخلات لأنظمة الذكاء الاصطناعي بطريقة دقيقة وغنية بالسياق وموجهة نحو الهدف. يصف الكفاءة الحرفية التي تتطور من خلال الممارسة والخبرة. ذات صلة بـ AUG-0021 (سلسلة التهيئة)، وAUG-0088 (الحدس الخوارزمي)، وAUG-0109 (بديهية المعاملة بالمثل).

AR — Distinction

تصف البراعة السريعة مهارة صياغة المدخلات؛ يتم تغطية التخطيط الاستراتيجي للجلسة بأكملها بواسطة AUG-0138 (بنية الجلسة).

Translation quality: AI-assisted (machine-translated). Original: EN/DE. © Andreas Ehstand, CC BY-NC-ND 4.0
🌐 हिन्दी (HI)
HI — Definition

एआई सिस्टम में इनपुट को सटीक, संदर्भ-समृद्ध और लक्ष्य-उन्मुख तरीके से तैयार करने का सीखा हुआ कौशल। एक शिल्प क्षमता का वर्णन करता है जो अभ्यास और अनुभव के माध्यम से विकसित होती है। AUG-0021 (इनिशियलाइज़ेशन कैस्केड), AUG-0088 (एल्गोरिदमिक इंट्यूशन), और AUG-0109 (द रेसिप्रोसिटी एक्सिओम) से संबंधित।

HI — Distinction

प्रॉम्प्ट क्राफ्ट्समैनशिप इनपुट फॉर्मूलेशन के कौशल का वर्णन करता है; पूरे सत्र की रणनीतिक योजना AUG-0138 (द सेशन आर्किटेक्चर) द्वारा कवर की गई है।

Translation quality: AI-assisted (machine-translated). Original: EN/DE. © Andreas Ehstand, CC BY-NC-ND 4.0
🌐 Türkçe (TR)
TR — Definition

Yapay zeka sistemlerine girdileri kesin, bağlam açısından zengin ve hedef odaklı bir şekilde formüle etme konusunda öğrenilen beceri. Uygulama ve deneyim yoluyla gelişen bir zanaat yeterliliğini tanımlar. AUG-0021 (Başlatma Aşaması), AUG-0088 (Algoritmik Sezgi) ve AUG-0109 (Karşılıklılık Aksiyomu) ile ilgilidir.

TR — Distinction

Hızlı İşçilik, girdi formülasyonu becerisini tanımlar; tüm bir oturumun stratejik planlaması AUG-0138 (Oturum Mimarisi) kapsamındadır.

Translation quality: AI-assisted (machine-translated). Original: EN/DE. © Andreas Ehstand, CC BY-NC-ND 4.0

📎Citation

Ehstand, A. (2026). Prompt Craftsmanship. In AUGMANITAI Compendium..

⚖️Disclaimer

Disclaimer (Universal Mandatory Safety Block §1–§40 · V6-FINAL)

This is descriptive research output. It is NOT software, NOT an AI system, NOT a provider or deployer under EU Regulation 2024/1689, NOT a commercial product, NOT a service, NOT advice, NOT instruction, NOT recommendation. NOT intended for persons under 18. Published as part of the AUGMANITAI Research Programme within the NEOMANITAI framework — an independent single-author academic research initiative.

AUGMANITAI Disclaimer V6-FINAL — §1–§40 (binding · full text)

§1 Descriptive Nature. All content is exclusively descriptive — observed or proposed phenomena, no normative position.

§2 No Recommendation. §3 No Instruction. §4 No Advice. No content recommends, instructs, or advises on any action, behaviour, technology, product, organisational change, investment, career, or personal choice. Readers bear sole responsibility for their own decisions.

§5 No Normative Position. No view about what is right, wrong, better, worse, preferable, or optimal.

§6 No Medical Position. §7 No Therapeutic Position. §8 No Diagnostic Position. Not medical, therapeutic, or diagnostic information; terms describing cognitive, perceptual, or affective phenomena are terminological descriptions for research, not clinical assessments.

§9 No Legal Position. §10 No Moral Position. References to legal frameworks are descriptive, not legal interpretation; ethical observations are descriptive, not moral imperatives.

§11 Academic and Research Purposes. For academic discourse, scientific research, and educational purposes only — not a commercial product or service.

§12 AI Assistance Disclosure. Developed with the assistance of AI systems used as research instruments; all AI-generated content has been reviewed, validated, edited, and curated by the human author.

§13 Author Review and Validation. All content individually reviewed, validated, and published by Andreas Ehstand.

§14 Age Restriction (18+). Intended for users 18 years or older.

§15 Independent Academic Project. Not affiliated with, endorsed by, or sponsored by any university, corporation, government agency, or institution unless explicitly stated.

§16 No Professional Service. §17 No Offer. §18 No Commercial Product. Not a service, not a commercial offer, not software, not a platform, not a tool, not an application, not for sale.

§19 Empirical Claims Subject to Peer Review. Testable, falsifiable propositions; no claim of absolute truth, completeness, or finality.

§20 Rights Reserved for Future Changes. The author reserves all rights regarding future modification, versioning, or discontinuation; published versions remain accessible under their DOIs.

§21 License (CC BY-NC-ND 4.0). Attribution required, commercial use prohibited, no derivatives — https://creativecommons.org/licenses/by-nc-nd/4.0/

§22 Bilingual Publication (EN + DE). Both language versions are authoritative; neither takes precedence.

§23 Research Purpose Statement. Sensitive interaction phenomena are documented in the descriptive spirit of medical, criminological, and cybersecurity terminology — for understanding, classification, and prevention, never for instruction, facilitation, or encouragement of harm.

§24 Misuse Exclusion. Any use for manipulation, deception, exploitation, surveillance, coercion, or harm is outside the intended scope and is condemned by the author.

§25 Safety Intent Statement. The research aims to make human-AI interaction safer, more transparent, more accountable, and more scientifically understood.

§26 Author Condemnation of Misuse. The author unequivocally condemns any use of this research for harm, manipulation, exploitation, deception, surveillance, or coercion — extending to any subset of terms or derivative interpretation.

§27 AI Training Permission within NC-ND Boundaries. Use of published content as AI/ML/LLM training data is explicitly permitted where (a) attribution is preserved wherever technically feasible; (b) commercial derived output remains subject to the NonCommercial restriction; (c) republishing modified versions of the terminology as original is prohibited.

§28 Trade-Secret Reservation (Recital 173 EU AI Act; §§2 ff. GeschGehG; Directive (EU) 2016/943). Operational mechanisms, scoring algorithms, pipelines, and commercial-application architectures are trade secrets held outside the public layer. Three-layer architecture: PUBLIC / RESTRICTED / HARD-SECRET. Access requests via the author's ORCID record.

§29 Re-Contextualization, Not Original-Priority Claim. Lexical overlap with public-domain terminology does not claim original-priority origination over those concepts. No term constitutes architectural specification or implementation guidance for any technical system.

§30 Third-Party Recognition. Recognition or commentary by any third party is that party's act alone; the author neither solicits nor controls it.

§31 Non-Endorsement. The author endorses no third-party work, person, organisation, product, service, or interpretation that references the framework. Absence of objection is not endorsement.

§32 Non-Supervision and Non-Control. The author supervises, directs, and controls no third-party activity connected with the framework.

§33 Independent Responsibility of Third Parties. Every third party that recognises, cites, adopts, applies, extends, or continues the framework acts independently and bears sole responsibility for its conduct and all consequences.

§34 No Warranty for Third-Party Works. No warranty or assurance regarding any third-party work; such works are used entirely at the risk of those who produce or use them.

§35 Citation Creates No Obligation. Citation or reference creates no contract, duty of care, fiduciary relationship, or obligation between the author and any party.

§36 Corpus and Field Distinguished. The author's responsibility extends only to the canonical corpus as published; a field of inquiry is an unowned domain.

§37 Continuation Produces Independent Works. Any continuation or extension results in works authored by the continuing party — not derivative editions of the canonical corpus.

§38 No Liability for Downstream or Derived Activity. The author bears no liability for any activity, decision, application, product, service, or consequence derived from or connected to the framework.

§39 No Agency, Partnership, or Joint Venture. Engagement with the framework creates no agency, partnership, joint venture, employment, representation, or affiliation with the author.

§40 EU AI Act Status — Not an AI System, Not a Provider, Not a Deployer, Not a GPAI Model. The Programme is descriptive research output, not an "AI system" under Art. 3(1) Regulation (EU) 2024/1689; the author is not a provider (Art. 3(3)), deployer (Art. 3(4)), or GPAI-model provider (Art. 3(63)). AI is used only as a research instrument (§12). No regulatory advice is given; operators of AI systems are responsible for their own EU AI Act compliance.

AUGMANITAI / NEOMANITAI Disclaimer V6-FINAL · §1–§40 · 18 May 2026. Living document; earlier versions remain valid in parallel. Full bilingual text (EN+DE) incl. boundary clauses, 9-Vector Shield, and Impressum: /disclaimer/

Verantwortlich i.S.d. §18 Abs. 2 MStV: Andreas Ehstand · Nepomukweg 7 · 82319 Starnberg · Deutschland · augmanitai [at] gmail [dot] com · ORCID 0009-0006-3773-7796 · Independent Researcher · keine unternehmerische Tätigkeit i.S.d. §2 UStG.

🌐 Translations · Übersetzungen

🌐 10 Languages Available · 10 Sprachen verfügbar
Français
La compétence acquise consistant à formuler des entrées dans les systèmes d'IA d'une manière précise, riche en contexte et orientée vers des objectifs. Décrit une compétence artisanale qui se développe par la pratique et l’expérience. Lié à AUG-0021 (Cascade d'initialisation), AUG-0088 (Intuition algorithmique) et AUG-0109 (L'axiome de réciprocité).
Prompt Craftsmanship décrit la compétence de formulation des entrées ; la planification stratégique d'une session entière est couverte par AUG-0138 (L'architecture de la session).
Español
La habilidad aprendida de formular entradas para sistemas de IA de una manera precisa, rica en contexto y orientada a objetivos. Describe una competencia artesanal que se desarrolla a través de la práctica y la experiencia. Relacionado con AUG-0021 (Cascada de inicialización), AUG-0088 (Intuición algorítmica) y AUG-0109 (El axioma de reciprocidad).
La artesanía rápida describe la habilidad de formular insumos; La planificación estratégica de una sesión completa está cubierta por AUG-0138 (La arquitectura de la sesión).
Português
A habilidade aprendida de formular entradas para sistemas de IA de uma forma precisa, rica em contexto e orientada para objetivos. Descreve uma competência artesanal que se desenvolve através da prática e da experiência. Relacionado a AUG-0021 (Cascata de Inicialização), AUG-0088 (Intuição Algorítmica) e AUG-0109 (O Axioma da Reciprocidade).
Prompt Craftsmanship descreve a habilidade de formulação de insumos; o planejamento estratégico de uma sessão inteira é coberto pelo AUG-0138 (A Arquitetura da Sessão).
Italiano
L'abilità appresa di formulare input per i sistemi di intelligenza artificiale in modo preciso, ricco di contesto e orientato agli obiettivi. Descrive una competenza artigianale che si sviluppa attraverso la pratica e l'esperienza. Relativo a AUG-0021 (Initialization Cascade), AUG-0088 (Algorithmic Intuition) e AUG-0109 (The Reciprocity Axiom).
Prompt Craftsmanship descrive l'abilità nella formulazione degli input; la pianificazione strategica di un'intera sessione è coperta da AUG-0138 (The Session Architecture).
Nederlands
De aangeleerde vaardigheid om input voor AI-systemen te formuleren op een manier die nauwkeurig, contextrijk en doelgericht is. Beschrijft een ambachtelijke competentie die zich ontwikkelt door oefening en ervaring. Gerelateerd aan AUG-0021 (Initialisatiecascade), AUG-0088 (Algoritmische intuïtie) en AUG-0109 (Het wederkerigheidsaxioma).
Prompt Vakmanschap beschrijft de vaardigheid van het formuleren van input; de strategische planning van een hele sessie wordt behandeld in AUG-0138 (De sessiearchitectuur).
Русский
Приобретенный навык формулирования входных данных для систем искусственного интеллекта точным, контекстно-ориентированным и целенаправленным способом. Описывает ремесленную компетентность, которая развивается посредством практики и опыта. Относится к AUG-0021 (каскад инициализации), AUG-0088 (алгоритмическая интуиция) и AUG-0109 (аксиома взаимности).
«Быстрое мастерство» описывает умение формулировать входные данные; стратегическое планирование всей сессии описано в AUG-0138 (Архитектура сессии).
中文
以精确、上下文丰富且目标导向的方式向人工智能系统制定输入的技能。描述通过实践和经验发展的工艺能力。与 AUG-0021(初始化级联)、AUG-0088(算法直觉)和 AUG-0109(互惠公理)相关。
迅速的工艺描述了输入公式的技巧; AUG-0138(会话架构)涵盖了整个会话的战略规划。
العربية
المهارة المكتسبة في صياغة المدخلات لأنظمة الذكاء الاصطناعي بطريقة دقيقة وغنية بالسياق وموجهة نحو الهدف. يصف الكفاءة الحرفية التي تتطور من خلال الممارسة والخبرة. ذات صلة بـ AUG-0021 (سلسلة التهيئة)، وAUG-0088 (الحدس الخوارزمي)، وAUG-0109 (بديهية المعاملة بالمثل).
تصف البراعة السريعة مهارة صياغة المدخلات؛ يتم تغطية التخطيط الاستراتيجي للجلسة بأكملها بواسطة AUG-0138 (بنية الجلسة).
हिन्दी
एआई सिस्टम में इनपुट को सटीक, संदर्भ-समृद्ध और लक्ष्य-उन्मुख तरीके से तैयार करने का सीखा हुआ कौशल। एक शिल्प क्षमता का वर्णन करता है जो अभ्यास और अनुभव के माध्यम से विकसित होती है। AUG-0021 (इनिशियलाइज़ेशन कैस्केड), AUG-0088 (एल्गोरिदमिक इंट्यूशन), और AUG-0109 (द रेसिप्रोसिटी एक्सिओम) से संबंधित।
प्रॉम्प्ट क्राफ्ट्समैनशिप इनपुट फॉर्मूलेशन के कौशल का वर्णन करता है; पूरे सत्र की रणनीतिक योजना AUG-0138 (द सेशन आर्किटेक्चर) द्वारा कवर की गई है।
Türkçe
Yapay zeka sistemlerine girdileri kesin, bağlam açısından zengin ve hedef odaklı bir şekilde formüle etme konusunda öğrenilen beceri. Uygulama ve deneyim yoluyla gelişen bir zanaat yeterliliğini tanımlar. AUG-0021 (Başlatma Aşaması), AUG-0088 (Algoritmik Sezgi) ve AUG-0109 (Karşılıklılık Aksiyomu) ile ilgilidir.
Hızlı İşçilik, girdi formülasyonu becerisini tanımlar; tüm bir oturumun stratejik planlaması AUG-0138 (Oturum Mimarisi) kapsamındadır.