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Autonlp Gibberish Detector 492513457

Developed by madhurjindal
A DistilBERT-based nonsense text detection model that accurately identifies gibberish, spam, and incoherent inputs in English with 97.36% accuracy.
Downloads 162.38k
Release Time : 3/2/2022

Model Overview

This model specializes in detecting nonsense text in English, capable of distinguishing between noise, word salad, mild nonsense, and clean text. Suitable for content moderation, chatbot input validation, and text quality assurance scenarios.

Model Features

High accuracy
Achieves 97.36% accuracy in nonsense text detection tasks.
Fast inference
Based on optimized DistilBERT architecture, suitable for real-time applications.
Multi-level detection
Capable of distinguishing between noise, word salad, mild nonsense, and clean text.
Eco-friendly design
Low carbon emissions (5.53 grams of CO2).

Model Capabilities

Text classification
Nonsense text detection
Spam filtering
Content moderation

Use Cases

Content moderation
User-generated content filtering
Automatically detects nonsense or spam content in forums and social media.
Improves platform content quality and reduces manual moderation workload.
Chatbots
Input validation
Filters nonsense inputs received by chatbots.
Enhances chatbot response quality and user experience.
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