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metadata
license: cc0-1.0
task_categories:
  - text-generation
  - feature-extraction
language:
  - en
tags:
  - corpus
  - leadership
  - historical
  - deku-corpus-builder
size_categories:
  - 1K<n<10K

Communication-Topic-1

This corpus was automatically generated by the Deku Corpus Builder for use in RAG-based AI applications.

Dataset Description

  • Subject: Communication
  • Subject Type: topic
  • Total Items: 152
  • Items Requiring Attribution: 0
  • Has Embeddings: Yes (all-MiniLM-L6-v2)
  • Created: 2026-03-17

Dataset Structure

Each record contains:

  • text: The content text
  • source_url: Original source URL
  • source_title: Title of the source document
  • source_domain: Domain of the source
  • license_type: License classification (e.g. public_domain, cc_by, cc_by_sa)
  • attribution_required: Boolean — True for CC BY / CC BY-SA and other attribution-required licenses
  • attribution_text: Formatted Creative Commons attribution string (empty if not required)
  • license_url: URL to the CC license deed (empty if not required)
  • relevance_score: Relevance to the subject (0-1)
  • quality_score: Content quality score (0-1)
  • topics: JSON array of detected topics
  • character_count: Length of the text
  • subject_name: The subject this content relates to
  • subject_type: "personality" or "topic"
  • extraction_date: When the content was extracted
  • embedding: Pre-computed 384-dimensional embedding vector

Attribution

0 of 152 chunks in this corpus require attribution under their source license. When building lessons from these chunks, the attribution_text field must be surfaced in the lesson output per the Legend Leadership Attribution Tracking Spec.

Usage

from datasets import load_dataset

dataset = load_dataset("PhillyMac/Communication_Topic_1")

# Access attribution-required chunks
for item in dataset["train"]:
    if item["attribution_required"]:
        print(item["attribution_text"])

Integration with RAG

This dataset is designed to be integrated with existing embedded corpuses. The embeddings use the sentence-transformers/all-MiniLM-L6-v2 model, compatible with FAISS indexing.

License

Content is sourced from public domain and Creative Commons licensed materials. See individual license_type fields for per-chunk licensing details.

Generated By

Deku Corpus Builder - An automated corpus building system for AI applications.