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Hacker News Comments Summarization Llama 3.2 3B Instruct GGUF

Developed by georgeck
This is a quantized model fine-tuned based on Llama-3.2-3B-Instruct, specifically designed for generating structured summaries of Hacker News discussions.
Downloads 28
Release Time : 4/3/2025

Model Overview

The model analyzes hierarchical comment structures to extract key themes, insights, and viewpoints, generating concise and informative summaries of Hacker News discussions.

Model Features

Structured Summary Generation
Organizes hierarchical comment topics into structured summary formats, including discussion overviews, main themes, detailed breakdowns, and key viewpoints.
Community Engagement Prioritization
Prioritizes high-quality and highly engaged content based on comment ratings, reply counts, and downvote information.
Technical Discussion Optimization
Specifically optimized for technical discussions in the Hacker News community, effectively identifying and summarizing community consensus and expert insights on technical topics.

Model Capabilities

Text Summary Generation
Structured Information Extraction
Multi-level Comment Analysis
Community Engagement Evaluation

Use Cases

Information Aggregation
Quick Understanding of Lengthy Discussions
Helps users quickly grasp key points and main viewpoints in lengthy discussion topics on Hacker News.
Generates concise and informative summaries, saving users time.
Technical Consensus Mining
Identifies community consensus and expert explanations on technical topics.
Highlights important insights and expert viewpoints in technical discussions.
Content Enhancement
Hacker News Companion
Provides discussion summary functionality for the Hacker News Companion project.
Enhances user experience by offering a more efficient way to access information.
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