--- dataset_name: "FryAI Pie – AI Knowledge Graph Dataset (Preview)" pretty_name: "FryAI Pie Knowledge Graph (Preview)" license: "apache-2.0" tags: - ai - rag - knowledge-graph - embeddings - semantic-search - llm - machine-learning - dataset - education size_categories: - n<1K task_categories: - text-retrieval - feature-extraction - question-answering task_ids: - document-retrieval - utterance-retrieval homepage: "https://automatekc.gumroad.com/l/lghqtv" repository: "https://huggingface.co/datasets/Lucasautomatekc/fryai-pie-knowledge-graph" language: - en annotations_creators: - machine-generated --- # FryAI Pie – AI Knowledge Graph Dataset (Preview) ### Structured AI explanations, topic clusters, embeddings, and RAG‑ready data This repository contains a **free preview** of the FryAI Pie Knowledge Graph Dataset — a structured, developer‑friendly dataset designed for: - RAG pipelines - Semantic search - AI education tools - Topic clustering - Knowledge graph exploration - Embedding‑based retrieval - LLM fine‑tuning and evaluation The **full dataset** (500+ explanations, full graph, full embeddings, full RAG chunks) is available on Gumroad. --- ## 🔗 Full Dataset (Paid) Get the complete dataset here: **https://automatekc.gumroad.com/l/lghqtv** Includes: - 500+ human‑readable explanations - Full topic/category/cluster metadata - Full knowledge graph (hundreds of nodes + edges) - Full RAG chunks - Full embeddings (26MB) - Clean JSON structure - Ready for production RAG systems --- ## 🔗 API Access (RapidAPI) Prefer API access instead of downloading files? Use the hosted API version: **https://rapidapi.com/lucasautomatekc/api/fryai-knowledge-graph-api** --- # 📦 What’s Included in This Preview This HuggingFace repo includes **small, safe sample files** that demonstrate the dataset structure without revealing the full paid content. ### Included (Free Preview) - `sample_topics.json` - `sample_clusters.json` - `sample_embeddings.json` - `sample_graph.json` - `sample_rag_chunks.json` ### Not Included (Paid Only) - Full articles - Full topic/category metadata - Full clusters - Full knowledge graph - Full embeddings - Full RAG chunks - Full ZIP dataset --- # 🧠 Dataset Structure (Preview) ### Topics (sample) ``` { "ai-chips-memory-requirements": { "slug": "ai-chips-memory-requirements", "question": "How do AI chip memory requirements work?" }, "agentic-ai": { "slug": "agentic-ai", "question": "How does agentic AI work?" } } ``` --- ### Clusters (sample) ``` { "artificial-intelligence": { "slug": "artificial-intelligence", "name": "Artificial Intelligence Topic Cluster", "articles": ["what-is-ai-liability"] } } ``` --- ### Knowledge Graph (sample) ``` [ { "id": "topic:ai-chips-memory-requirements", "type": "topic", "slug": "ai-chips-memory-requirements", "edges": [ { "target": "article:how-does-ai-chips-memory-requirements-work", "type": "explains" } ] } ] ``` --- ### Embeddings (sample) ``` [ { "id": "topic:ai-chips-memory-requirements", "type": "topic", "slug": "ai-chips-memory-requirements", "vector": [0.0313, -0.0237, 0.0314, -0.0207, 0.0215] } ] ``` --- ### RAG Chunks (sample) ``` [ { "id": "chunk:ai-chips-memory-requirements-1", "articleSlug": "how-does-ai-chips-memory-requirements-work", "chunkIndex": 0, "text": "Sample text explaining how AI chip memory requirements work...", "vector": [0.0123, -0.0044, 0.0099, 0.0021, -0.0033] } ] ``` --- # 🧪 Example Usage (Python) ### Load topics ```python import json with open("sample_topics.json") as f: topics = json.load(f) print(topics.keys()) ``` --- ### Load embeddings ```python import json import numpy as np with open("sample_embeddings.json") as f: data = json.load(f) vec = np.array(data[0]["vector"]) print(vec.shape) ``` --- ### Simple semantic search (preview) ```python import numpy as np def cosine_similarity(a, b): return np.dot(a, b) / (np.linalg.norm(a) * np.linalg.norm(b)) query = np.array([0.01, -0.02, 0.03, -0.01, 0.02]) scores = [] for item in data: sim = cosine_similarity(query, np.array(item["vector"])) scores.append((item["slug"], sim)) sorted(scores, key=lambda x: x[1], reverse=True) ``` --- ### RAG Chunk Example ```python with open("sample_rag_chunks.json") as f: chunks = json.load(f) for c in chunks: print(c["articleSlug"], c["text"]) ``` --- # 🏗️ Intended Use Cases - RAG pipelines - Semantic search - AI education tools - Topic clustering - Knowledge graph exploration - Embedding‑based retrieval - LLM evaluation - Fine‑tuning datasets - AI explainability tools --- # 🏷️ Tags ``` ai rag knowledge-graph embeddings semantic-search llm machine-learning dataset education ``` --- # 📄 License **Preview License:** apache-2.0 Full dataset license included in the Gumroad package. --- # 🙌 Support the Project If you find this dataset useful, consider grabbing the full version or starring the repo. Your support helps expand the dataset with new topics, clusters, and explanations. ```