Project

Reverse Dependencies for onnxruntime

The projects listed here declare onnxruntime as a runtime or development dependency

0.01
No release in over 3 years
Low commit activity in last 3 years
There's a lot of open issues
Arabic diacriticizer from Interscript.
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0.0
The project is in a healthy, maintained state
Detect credential stuffing, SQL injection, XSS, and other attacks using ML embeddings. Lightweight (~30MB model) with ~2ms inference time.
2021
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0.0
No release in over 3 years
An AI-powered Ruby library that performs comprehensive on-device compromise detection for mobile applications. Features include root/jailbreak detection, emulator detection, hooking framework detection, application integrity checks, advanced network security analysis with certificate pinning and ...
2021
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0.0
The project is in a healthy, maintained state
OpenAI CLIP embeddings, uses ONNX models. Allows to create embeddings for images and text
2021
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0.0
No release in over 3 years
A comprehensive forensic deepfake detection toolkit designed for law enforcement, military, and national security applications. Features AI/ML detection algorithms, forensic reporting, and court-admissible evidence generation with high accuracy deepfake detection for video, audio, and image fi...
2021
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0.0
The project is in a healthy, maintained state
A Ruby port of FastEmbed - fast text embeddings using ONNX Runtime
2021
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0.0
No release in over 3 years
Denoises audio (Speech Enhancement) using GTCRN model
2021
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0.0
No release in over 3 years
Determines file content types using original Magika's ONNX model
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0.0
Repository is archived
No release in over 3 years
Low commit activity in last 3 years
Detect NSFW images quickly using a pre-trained model ported from nsfwjs
2021
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0.0
No release in over 3 years
Security pipelines for LLM applications using ONNX models from Hugging Face Hub. Detect prompt injections, jailbreaks, and PII leaks. Models are lazily downloaded and cached locally. Fast local inference (~10-20ms after initial load).
2021
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0.0
The project is in a healthy, maintained state
Ruby implementation of Google's SigLIP2 model for creating text and image embeddings. Uses ONNX models from HuggingFace onnx-community.
2021
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