Website for data science undergraduate capstone project "Improving Performance of Vision Encoding Large Language Models with Contextual Prompts" @UCSD HDSI 2024
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Updated
Mar 17, 2024 - HTML
Website for data science undergraduate capstone project "Improving Performance of Vision Encoding Large Language Models with Contextual Prompts" @UCSD HDSI 2024
A simple fun app to create your linkedin profile roast
FreeVA: Offline MLLM as Training-Free Video Assistant
Describe images in the WordPress Media Library using a local large language model. Generates titles, captions, descriptions, and alt tags.
a unique blend of features from your favorite social media platforms like Facebook, Twitter, Reddit, and Instagram, all in one convenient place
Explore the rich flavors of Indian desserts with TunedLlavaDelights. Utilizing the in Llava fine-tuning, our project unveils detailed nutritional profiles, taste notes, and optimal consumption times for beloved sweets. Dive into a fusion of AI innovation and culinary tradition
⚗️ Llava 13b model repository trained by liuhaotian managed by DVC
a Discord chatbot trained on Mistral and LLaVA language models
Joint work as part of a bachelor's thesis on utilizing a combination of NLP and CV methods in implementing multimodal approaches to combat hate speech in memes.
Docker image for LLaVA: Large Language and Vision Assistant
Computer Vision Research for Multimedia Understanding at DSO National Laboratories Internship 2023 under the DSTA JC Scholarship
Python-based WebSocket for CLI LLaVA inference.
The ever-evolving landscape of artificial intelligence has presented an intersection of visual and linguistic data through large vision-language models (LVLMs). MoE-LLaVA is one of these models which stands at the forefront of revolutionizing how machines interpret and understand the world, mirroring human-like perception. However, the challenge s
Kani extension for supporting vision-language models (VLMs). Comes with model-agnostic support for GPT-Vision and LLaVA.
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