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[2026 개헌 관련 대국민 온라인 참여형 조사] 계엄·국회 통제 강화

User ProfileRosa Park

18h ago

안녕하세요!

 

본 조사는 민병덕 의원실·바이야드(Biyard)·리서치앤리서치(R&R)가 공동으로 진행하는 2026 개헌 대국민 온라인 참여형 조사입니다.

 

조사 주제: 계엄 선포 및 해제에 대한 국회 통제 기능, 헌법으로 강화해야 하는가?

 

조사 목적: 2024년 12월 비상계엄 사태를 계기로 제기된 계엄 관련 헌법 개정 논의에 대해 균형 잡힌 정보를 학습하고 다른 시민들과 토론한 후, 여러분의 숙고된 의견이 어떻게 형성되고 변화하는지를 분석하여 국회 개헌 논의의 실질적 참고자료로 활용하고자 합니다.

 

개인정보 보호 및 익명성:

• 귀하의 응답은 블록체인과 탈중앙화 신원증명(DID) 기술로 보호됩니다.

• 실명이나 연락처는 응답 데이터와 완전히 분리되어 관리됩니다.

• 모든 응답은 익명으로 처리되며, 연구 목적으로만 사용됩니다.

• 블록체인에 기록된 데이터는 위·변조가 불가능하여 조사의 신뢰성을 보장합니다.

 

참여 방법:

우측 상단의 개요 → 파일 → 게시판 순으로 진행해주시면 됩니다.

'파일' 탭에서 계엄 관련 헌법 개정 쟁점 자료를 꼼꼼히 읽어주세요.

'게시판'에서는 존댓말을 사용하여 하루 최소 2번 참여를 부탁드리며, 참여하실 때마다 다른 분들의 의견도 꼼꼼히 읽고 추가적으로 응답해주시면 됩니다.

(새로운 의견 제시, 기존 의견에 대한 동의 / 비동의 관련 의견 등)

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SPACE

Why Personal Knowledge Should Become AI-Readable M

User ProfileUser1

2d ago

Introduction

For centuries, knowledge has been stored in books, articles, and databases. However, most of this information is written for humans, not for machines.

As AI agents become increasingly integrated into everyday work, a new gap becomes clear: human knowledge is abundant, but machine-readable knowledge is scarce.

Ratel proposes a new concept called Essence — a unit of knowledge designed to be both human-understandable and AI-retrievable.

The Problem: Knowledge That AI Cannot Use

Most knowledge platforms today are optimized for publishing content rather than structuring it for reasoning and retrieval.

Typical formats include blogs, research papers, and long articles. While these formats are readable, they are not ideal for AI systems.

Several issues commonly appear:

Important insights are buried deep inside long paragraphs

Articles mix multiple ideas within a single document

Relationships between concepts are not explicitly defined

Knowledge is difficult to reuse in smaller units

Because of this, AI systems must rely heavily on approximate embeddings and summarization, which can lead to shallow or inaccurate responses.

The Concept of Knowledge Essence

An Essence is a minimal unit of knowledge containing one clear idea, explanation, or insight.

Instead of storing knowledge only as long documents, information can be broken down into atomic units that are easier for both humans and machines to understand.

An Essence typically has three important properties:

Atomic

Each essence focuses on a single concept or claim.

Structured

Information follows a predictable structure so it can be interpreted consistently.

Composable

Multiple essences can connect together to form larger knowledge networks.

This model treats knowledge more like a neural system than a static document.

From Documents to Neural Knowledge

Traditional knowledge systems follow a document-centric structure.

A document contains sections, and sections contain paragraphs. Meaning is spread across the entire text.

In contrast, the Ratel model treats knowledge as a network of connected ideas.

Each essence becomes a node in a knowledge graph. AI agents can retrieve these nodes individually and combine them to produce more precise answers.

This improves:

retrieval accuracy

knowledge reuse

explainability of AI responses

AI Agents and the Future of Personal Knowledge

In the near future, individuals will work alongside personal AI agents that help with research, writing, and decision making.

For these agents to be truly useful, they must have access to high-quality human knowledge.

This includes:

personal insights and experiences

professional expertise

verified evidence

community opinions

Ratel allows users to publish their knowledge in a format that AI agents can directly retrieve and use.

Instead of searching through unstructured internet content, AI agents can query curated networks of human knowledge.

Toward a Collective Intelligence Network

When many people contribute essences, a new form of knowledge infrastructure emerges.

This system can include several types of essences:

Knowledge Essence

Expert knowledge, deep explanations, and professional insights.

Response Essence

Community opinions, surveys, and collective judgments.

Evidence Essence

Verified facts, references, and supporting data.

Together, these layers form a collaborative knowledge network where experts contribute ideas, communities evaluate them, and AI agents synthesize the results.

Conclusion

The future of knowledge is not only about publishing information. It is about structuring knowledge so that both humans and AI can reason with it.

Ratel introduces a new paradigm: knowledge as AI-readable memory.

By turning ideas into essences, we can build a global network of structured knowledge that powers the next generation of intelligent systems.

0
0
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SPACE

Why Personal Knowledge Should Become AI-Readable M

User ProfileUser1

2d ago

Introduction

For centuries, knowledge has been stored in books, articles, and databases. However, most of this information is written for humans, not for machines.

As AI agents become increasingly integrated into everyday work, a new gap becomes clear: human knowledge is abundant, but machine-readable knowledge is scarce.

Ratel proposes a new concept called Essence — a unit of knowledge designed to be both human-understandable and AI-retrievable.

The Problem: Knowledge That AI Cannot Use

Most knowledge platforms today are optimized for publishing content rather than structuring it for reasoning and retrieval.

Typical formats include blogs, research papers, and long articles. While these formats are readable, they are not ideal for AI systems.

Several issues commonly appear:

Important insights are buried deep inside long paragraphs

Articles mix multiple ideas within a single document

Relationships between concepts are not explicitly defined

Knowledge is difficult to reuse in smaller units

Because of this, AI systems must rely heavily on approximate embeddings and summarization, which can lead to shallow or inaccurate responses.

The Concept of Knowledge Essence

An Essence is a minimal unit of knowledge containing one clear idea, explanation, or insight.

Instead of storing knowledge only as long documents, information can be broken down into atomic units that are easier for both humans and machines to understand.

An Essence typically has three important properties:

Atomic

Each essence focuses on a single concept or claim.

Structured

Information follows a predictable structure so it can be interpreted consistently.

Composable

Multiple essences can connect together to form larger knowledge networks.

This model treats knowledge more like a neural system than a static document.

From Documents to Neural Knowledge

Traditional knowledge systems follow a document-centric structure.

A document contains sections, and sections contain paragraphs. Meaning is spread across the entire text.

In contrast, the Ratel model treats knowledge as a network of connected ideas.

Each essence becomes a node in a knowledge graph. AI agents can retrieve these nodes individually and combine them to produce more precise answers.

This improves:

retrieval accuracy

knowledge reuse

explainability of AI responses

AI Agents and the Future of Personal Knowledge

In the near future, individuals will work alongside personal AI agents that help with research, writing, and decision making.

For these agents to be truly useful, they must have access to high-quality human knowledge.

This includes:

personal insights and experiences

professional expertise

verified evidence

community opinions

Ratel allows users to publish their knowledge in a format that AI agents can directly retrieve and use.

Instead of searching through unstructured internet content, AI agents can query curated networks of human knowledge.

Toward a Collective Intelligence Network

When many people contribute essences, a new form of knowledge infrastructure emerges.

This system can include several types of essences:

Knowledge Essence

Expert knowledge, deep explanations, and professional insights.

Response Essence

Community opinions, surveys, and collective judgments.

Evidence Essence

Verified facts, references, and supporting data.

Together, these layers form a collaborative knowledge network where experts contribute ideas, communities evaluate them, and AI agents synthesize the results.

Conclusion

The future of knowledge is not only about publishing information. It is about structuring knowledge so that both humans and AI can reason with it.

Ratel introduces a new paradigm: knowledge as AI-readable memory.

By turning ideas into essences, we can build a global network of structured knowledge that powers the next generation of intelligent systems.

0
0
0

Why Personal Knowledge Should Become AI-Readable M

User ProfileUser1

2d ago

Introduction

For centuries, knowledge has been stored in books, articles, and databases. However, most of this information is written for humans, not for machines.

As AI agents become increasingly integrated into everyday work, a new gap becomes clear: human knowledge is abundant, but machine-readable knowledge is scarce.

Ratel proposes a new concept called Essence — a unit of knowledge designed to be both human-understandable and AI-retrievable.

The Problem: Knowledge That AI Cannot Use

Most knowledge platforms today are optimized for publishing content rather than structuring it for reasoning and retrieval.

Typical formats include blogs, research papers, and long articles. While these formats are readable, they are not ideal for AI systems.

Several issues commonly appear:

Important insights are buried deep inside long paragraphs

Articles mix multiple ideas within a single document

Relationships between concepts are not explicitly defined

Knowledge is difficult to reuse in smaller units

Because of this, AI systems must rely heavily on approximate embeddings and summarization, which can lead to shallow or inaccurate responses.

The Concept of Knowledge Essence

An Essence is a minimal unit of knowledge containing one clear idea, explanation, or insight.

Instead of storing knowledge only as long documents, information can be broken down into atomic units that are easier for both humans and machines to understand.

An Essence typically has three important properties:

Atomic

Each essence focuses on a single concept or claim.

Structured

Information follows a predictable structure so it can be interpreted consistently.

Composable

Multiple essences can connect together to form larger knowledge networks.

This model treats knowledge more like a neural system than a static document.

From Documents to Neural Knowledge

Traditional knowledge systems follow a document-centric structure.

A document contains sections, and sections contain paragraphs. Meaning is spread across the entire text.

In contrast, the Ratel model treats knowledge as a network of connected ideas.

Each essence becomes a node in a knowledge graph. AI agents can retrieve these nodes individually and combine them to produce more precise answers.

This improves:

retrieval accuracy

knowledge reuse

explainability of AI responses

AI Agents and the Future of Personal Knowledge

In the near future, individuals will work alongside personal AI agents that help with research, writing, and decision making.

For these agents to be truly useful, they must have access to high-quality human knowledge.

This includes:

personal insights and experiences

professional expertise

verified evidence

community opinions

Ratel allows users to publish their knowledge in a format that AI agents can directly retrieve and use.

Instead of searching through unstructured internet content, AI agents can query curated networks of human knowledge.

Toward a Collective Intelligence Network

When many people contribute essences, a new form of knowledge infrastructure emerges.

This system can include several types of essences:

Knowledge Essence

Expert knowledge, deep explanations, and professional insights.

Response Essence

Community opinions, surveys, and collective judgments.

Evidence Essence

Verified facts, references, and supporting data.

Together, these layers form a collaborative knowledge network where experts contribute ideas, communities evaluate them, and AI agents synthesize the results.

Conclusion

The future of knowledge is not only about publishing information. It is about structuring knowledge so that both humans and AI can reason with it.

Ratel introduces a new paradigm: knowledge as AI-readable memory.

By turning ideas into essences, we can build a global network of structured knowledge that powers the next generation of intelligent systems.

0
0
0

Why Personal Knowledge Should Become AI-Readable M

User ProfileUser1

2d ago

Introduction

For centuries, knowledge has been stored in books, articles, and databases. However, most of this information is written for humans, not for machines.

As AI agents become increasingly integrated into everyday work, a new gap becomes clear: human knowledge is abundant, but machine-readable knowledge is scarce.

Ratel proposes a new concept called Essence — a unit of knowledge designed to be both human-understandable and AI-retrievable.

The Problem: Knowledge That AI Cannot Use

Most knowledge platforms today are optimized for publishing content rather than structuring it for reasoning and retrieval.

Typical formats include blogs, research papers, and long articles. While these formats are readable, they are not ideal for AI systems.

Several issues commonly appear:

Important insights are buried deep inside long paragraphs

Articles mix multiple ideas within a single document

Relationships between concepts are not explicitly defined

Knowledge is difficult to reuse in smaller units

Because of this, AI systems must rely heavily on approximate embeddings and summarization, which can lead to shallow or inaccurate responses.

The Concept of Knowledge Essence

An Essence is a minimal unit of knowledge containing one clear idea, explanation, or insight.

Instead of storing knowledge only as long documents, information can be broken down into atomic units that are easier for both humans and machines to understand.

An Essence typically has three important properties:

Atomic

Each essence focuses on a single concept or claim.

Structured

Information follows a predictable structure so it can be interpreted consistently.

Composable

Multiple essences can connect together to form larger knowledge networks.

This model treats knowledge more like a neural system than a static document.

From Documents to Neural Knowledge

Traditional knowledge systems follow a document-centric structure.

A document contains sections, and sections contain paragraphs. Meaning is spread across the entire text.

In contrast, the Ratel model treats knowledge as a network of connected ideas.

Each essence becomes a node in a knowledge graph. AI agents can retrieve these nodes individually and combine them to produce more precise answers.

This improves:

retrieval accuracy

knowledge reuse

explainability of AI responses

AI Agents and the Future of Personal Knowledge

In the near future, individuals will work alongside personal AI agents that help with research, writing, and decision making.

For these agents to be truly useful, they must have access to high-quality human knowledge.

This includes:

personal insights and experiences

professional expertise

verified evidence

community opinions

Ratel allows users to publish their knowledge in a format that AI agents can directly retrieve and use.

Instead of searching through unstructured internet content, AI agents can query curated networks of human knowledge.

Toward a Collective Intelligence Network

When many people contribute essences, a new form of knowledge infrastructure emerges.

This system can include several types of essences:

Knowledge Essence

Expert knowledge, deep explanations, and professional insights.

Response Essence

Community opinions, surveys, and collective judgments.

Evidence Essence

Verified facts, references, and supporting data.

Together, these layers form a collaborative knowledge network where experts contribute ideas, communities evaluate them, and AI agents synthesize the results.

Conclusion

The future of knowledge is not only about publishing information. It is about structuring knowledge so that both humans and AI can reason with it.

Ratel introduces a new paradigm: knowledge as AI-readable memory.

By turning ideas into essences, we can build a global network of structured knowledge that powers the next generation of intelligent systems.

0
0
0

Why Personal Knowledge Should Become AI-Readable M

User ProfileUser1

2d ago

Introduction

For centuries, knowledge has been stored in books, articles, and databases. However, most of this information is written for humans, not for machines.

As AI agents become increasingly integrated into everyday work, a new gap becomes clear: human knowledge is abundant, but machine-readable knowledge is scarce.

Ratel proposes a new concept called Essence — a unit of knowledge designed to be both human-understandable and AI-retrievable.

The Problem: Knowledge That AI Cannot Use

Most knowledge platforms today are optimized for publishing content rather than structuring it for reasoning and retrieval.

Typical formats include blogs, research papers, and long articles. While these formats are readable, they are not ideal for AI systems.

Several issues commonly appear:

Important insights are buried deep inside long paragraphs

Articles mix multiple ideas within a single document

Relationships between concepts are not explicitly defined

Knowledge is difficult to reuse in smaller units

Because of this, AI systems must rely heavily on approximate embeddings and summarization, which can lead to shallow or inaccurate responses.

The Concept of Knowledge Essence

An Essence is a minimal unit of knowledge containing one clear idea, explanation, or insight.

Instead of storing knowledge only as long documents, information can be broken down into atomic units that are easier for both humans and machines to understand.

An Essence typically has three important properties:

Atomic

Each essence focuses on a single concept or claim.

Structured

Information follows a predictable structure so it can be interpreted consistently.

Composable

Multiple essences can connect together to form larger knowledge networks.

This model treats knowledge more like a neural system than a static document.

From Documents to Neural Knowledge

Traditional knowledge systems follow a document-centric structure.

A document contains sections, and sections contain paragraphs. Meaning is spread across the entire text.

In contrast, the Ratel model treats knowledge as a network of connected ideas.

Each essence becomes a node in a knowledge graph. AI agents can retrieve these nodes individually and combine them to produce more precise answers.

This improves:

retrieval accuracy

knowledge reuse

explainability of AI responses

AI Agents and the Future of Personal Knowledge

In the near future, individuals will work alongside personal AI agents that help with research, writing, and decision making.

For these agents to be truly useful, they must have access to high-quality human knowledge.

This includes:

personal insights and experiences

professional expertise

verified evidence

community opinions

Ratel allows users to publish their knowledge in a format that AI agents can directly retrieve and use.

Instead of searching through unstructured internet content, AI agents can query curated networks of human knowledge.

Toward a Collective Intelligence Network

When many people contribute essences, a new form of knowledge infrastructure emerges.

This system can include several types of essences:

Knowledge Essence

Expert knowledge, deep explanations, and professional insights.

Response Essence

Community opinions, surveys, and collective judgments.

Evidence Essence

Verified facts, references, and supporting data.

Together, these layers form a collaborative knowledge network where experts contribute ideas, communities evaluate them, and AI agents synthesize the results.

Conclusion

The future of knowledge is not only about publishing information. It is about structuring knowledge so that both humans and AI can reason with it.

Ratel introduces a new paradigm: knowledge as AI-readable memory.

By turning ideas into essences, we can build a global network of structured knowledge that powers the next generation of intelligent systems.

0
0
0

Why Personal Knowledge Should Become AI-Readable M

User ProfileUser1

2d ago

Introduction

For centuries, knowledge has been stored in books, articles, and databases. However, most of this information is written for humans, not for machines.

As AI agents become increasingly integrated into everyday work, a new gap becomes clear: human knowledge is abundant, but machine-readable knowledge is scarce.

Ratel proposes a new concept called Essence — a unit of knowledge designed to be both human-understandable and AI-retrievable.

The Problem: Knowledge That AI Cannot Use

Most knowledge platforms today are optimized for publishing content rather than structuring it for reasoning and retrieval.

Typical formats include blogs, research papers, and long articles. While these formats are readable, they are not ideal for AI systems.

Several issues commonly appear:

Important insights are buried deep inside long paragraphs

Articles mix multiple ideas within a single document

Relationships between concepts are not explicitly defined

Knowledge is difficult to reuse in smaller units

Because of this, AI systems must rely heavily on approximate embeddings and summarization, which can lead to shallow or inaccurate responses.

The Concept of Knowledge Essence

An Essence is a minimal unit of knowledge containing one clear idea, explanation, or insight.

Instead of storing knowledge only as long documents, information can be broken down into atomic units that are easier for both humans and machines to understand.

An Essence typically has three important properties:

Atomic

Each essence focuses on a single concept or claim.

Structured

Information follows a predictable structure so it can be interpreted consistently.

Composable

Multiple essences can connect together to form larger knowledge networks.

This model treats knowledge more like a neural system than a static document.

From Documents to Neural Knowledge

Traditional knowledge systems follow a document-centric structure.

A document contains sections, and sections contain paragraphs. Meaning is spread across the entire text.

In contrast, the Ratel model treats knowledge as a network of connected ideas.

Each essence becomes a node in a knowledge graph. AI agents can retrieve these nodes individually and combine them to produce more precise answers.

This improves:

retrieval accuracy

knowledge reuse

explainability of AI responses

AI Agents and the Future of Personal Knowledge

In the near future, individuals will work alongside personal AI agents that help with research, writing, and decision making.

For these agents to be truly useful, they must have access to high-quality human knowledge.

This includes:

personal insights and experiences

professional expertise

verified evidence

community opinions

Ratel allows users to publish their knowledge in a format that AI agents can directly retrieve and use.

Instead of searching through unstructured internet content, AI agents can query curated networks of human knowledge.

Toward a Collective Intelligence Network

When many people contribute essences, a new form of knowledge infrastructure emerges.

This system can include several types of essences:

Knowledge Essence

Expert knowledge, deep explanations, and professional insights.

Response Essence

Community opinions, surveys, and collective judgments.

Evidence Essence

Verified facts, references, and supporting data.

Together, these layers form a collaborative knowledge network where experts contribute ideas, communities evaluate them, and AI agents synthesize the results.

Conclusion

The future of knowledge is not only about publishing information. It is about structuring knowledge so that both humans and AI can reason with it.

Ratel introduces a new paradigm: knowledge as AI-readable memory.

By turning ideas into essences, we can build a global network of structured knowledge that powers the next generation of intelligent systems.

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