Dmitry Ryumin's picture

Dmitry Ryumin

DmitryRyumin

AI & ML interests

Machine Learning and Applications, Multi-Modal Understanding

Recent Activity

reacted to singhsidhukuldeep's post with šŸ”„ 4 days ago
Exciting New Tool for Knowledge Graph Extraction from Plain Text! I just came across a groundbreaking new tool called KGGen that's solving a major challenge in the AI world - the scarcity of high-quality knowledge graph data. KGGen is an open-source Python package that leverages language models to extract knowledge graphs (KGs) from plain text. What makes it special is its innovative approach to clustering related entities, which significantly reduces sparsity in the extracted KGs. The technical approach is fascinating: 1. KGGen uses a multi-stage process involving an LLM (GPT-4o in their implementation) to extract entities and relations from source text 2. It aggregates graphs across sources to reduce redundancy 3. Most importantly, it applies iterative LM-based clustering to refine the raw graph The clustering stage is particularly innovative - it identifies which nodes and edges refer to the same underlying entities or concepts. This normalizes variations in tense, plurality, stemming, and capitalization (e.g., "labors" clustered with "labor"). The researchers from Stanford and University of Toronto also introduced MINE (Measure of Information in Nodes and Edges), the first benchmark for evaluating KG extractors. When tested against existing methods like OpenIE and GraphRAG, KGGen outperformed them by up to 18%. For anyone working with knowledge graphs, RAG systems, or KG embeddings, this tool addresses the fundamental challenge of data scarcity that's been holding back progress in graph-based foundation models. The package is available via pip install kg-gen, making it accessible to everyone. This could be a game-changer for knowledge graph applications!
liked a Space 4 days ago
FunAudioLLM/CosyVoice2-0.5B
upvoted a collection 8 days ago
C2SER
View all activity

Organizations

Gradio-Themes-Party's profile picture Gradio-Blocks-Party's profile picture Blog-explorers's profile picture New Era Artificial Intelligence's profile picture ICCV2023's profile picture ZeroGPU Explorers's profile picture Journalists on Hugging Face's profile picture Social Post Explorers's profile picture Dev Mode Explorers's profile picture

Posts 64

view post
Post
3622
šŸš€šŸŽ­šŸŒŸ New Research Alert - WACV 2025 (Avatars Collection)! šŸŒŸšŸŽ­šŸš€
šŸ“„ Title: EmoVOCA: Speech-Driven Emotional 3D Talking Heads šŸ”

šŸ“ Description: EmoVOCA is a data-driven method for generating emotional 3D talking heads by combining speech-driven lip movements with expressive facial dynamics. This method has been developed to overcome the limitations of corpora and to achieve state-of-the-art animation quality.

šŸ‘„ Authors: @FedeNoce , Claudio Ferrari, and Stefano Berretti

šŸ“… Conference: WACV, 28 Feb ā€“ 4 Mar, 2025 | Arizona, USA šŸ‡ŗšŸ‡ø

šŸ“„ Paper: https://arxiv.org/abs/2403.12886

šŸŒ Github Page: https://fedenoce.github.io/emovoca/
šŸ“ Repository: https://github.com/miccunifi/EmoVOCA

šŸš€ CVPR-2023-24-Papers: https://github.com/DmitryRyumin/CVPR-2023-24-Papers

šŸš€ WACV-2024-Papers: https://github.com/DmitryRyumin/WACV-2024-Papers

šŸš€ ICCV-2023-Papers: https://github.com/DmitryRyumin/ICCV-2023-Papers

šŸ“š More Papers: more cutting-edge research presented at other conferences in the DmitryRyumin/NewEraAI-Papers curated by @DmitryRyumin

šŸš€ Added to the Avatars Collection: DmitryRyumin/avatars-65df37cdf81fec13d4dbac36

šŸ” Keywords: #EmoVOCA #3DAnimation #TalkingHeads #SpeechDriven #FacialExpressions #MachineLearning #ComputerVision #ComputerGraphics #DeepLearning #AI #WACV2024
view post
Post
2745
šŸ”„šŸŽ­šŸŒŸ New Research Alert - HeadGAP (Avatars Collection)! šŸŒŸšŸŽ­šŸ”„
šŸ“„ Title: HeadGAP: Few-shot 3D Head Avatar via Generalizable Gaussian Priors šŸ”

šŸ“ Description: HeadGAP introduces a novel method for generating high-fidelity, animatable 3D head avatars from few-shot data, using Gaussian priors and dynamic part-based modelling for personalized and generalizable results.

šŸ‘„ Authors: @zxz267 , @walsvid , @zhaohu2 , Weiyi Zhang, @hellozhuo , Xu Chang, Yang Zhao, Zheng Lv, Xiaoyuan Zhang, @yongjie-zhang-mail , Guidong Wang, and Lan Xu

šŸ“„ Paper: HeadGAP: Few-shot 3D Head Avatar via Generalizable Gaussian Priors (2408.06019)

šŸŒ Github Page: https://headgap.github.io

šŸš€ CVPR-2023-24-Papers: https://github.com/DmitryRyumin/CVPR-2023-24-Papers

šŸš€ WACV-2024-Papers: https://github.com/DmitryRyumin/WACV-2024-Papers

šŸš€ ICCV-2023-Papers: https://github.com/DmitryRyumin/ICCV-2023-Papers

šŸ“š More Papers: more cutting-edge research presented at other conferences in the DmitryRyumin/NewEraAI-Papers curated by @DmitryRyumin

šŸš€ Added to the Avatars Collection: DmitryRyumin/avatars-65df37cdf81fec13d4dbac36

šŸ” Keywords: #HeadGAP #3DAvatar #FewShotLearning #GaussianPriors #AvatarCreation #3DModeling #MachineLearning #ComputerVision #ComputerGraphics #GenerativeAI #DeepLearning #AI

models

None public yet

datasets

None public yet