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KnowledgeGraph GPT

Convert unstructured text into a structured knowledge graph

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Traffic Trends

Traffic and engagement over the recent period

Live Insight
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Traffic Trend & Ranking

A unified view of monthly visits, global ranking, and region-level ranking.

Monthly Visits --
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All-channel Traffic Sources

A breakdown of how traffic is distributed across inbound channels.

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User Engagement Analysis

Use bounce rate, visit depth, and time on site to understand engagement quality.

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Top Countries

Countries and regions contributing the highest share of visits.

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Why choose KnowledgeGraph GPT?

KnowledgeGraph GPT aims to utilize OpenAI's GPT-3 model to convert unstructured text data into a structured knowledge graph representation.

Main Features:

  • Text to Knowledge Graph Conversion: Processes unstructured text via the GPT-3 model to automatically generate a structured knowledge graph.
  • Generate Operation: Provides a Generate function to extract and build a graph from input text with one click.
  • Clear Operation: Provides a Clear function to quickly reset the current input and the generated graph.
  • Data Import and Export: Supports Export JSON and Import JSON, allowing users to save the generated graph structure data or load existing data.
  • Visualization Layout Modes: Offers three different graph visualization display modes: Simple, Hierarchical, and Circle, to meet various observational needs.

Core Advantages:

  • GPT-3 Based: Utilizes advanced large language models for natural language understanding and entity-relation extraction.
  • Open Source: The project code is hosted on GitHub, allowing developers to inspect the source code, perform secondary development, or deploy locally.
  • Structured Output: Transforms unstructured information into clear networks of nodes and relationships, improving information organization efficiency.

Typical Use Cases:

  • Information extraction and knowledge management
  • Data visualization analysis
  • Developer integration and testing

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