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burtenshaw 
posted an update 5 days ago
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27606
We’re launching a FREE and CERTIFIED course on Agents!

We're thrilled to announce the launch of the Hugging Face Agents course on Learn! This interactive, certified course will guide you through building and deploying your own AI agents.

Here's what you'll learn:

- Understanding Agents: We'll break down the fundamentals of AI agents, showing you how they use LLMs to perceive their environment (observations), reason about it (thoughts), and take actions. Think of a smart assistant that can book appointments, answer emails, or even write code based on your instructions.
- Building with Frameworks: You'll dive into popular agent frameworks like LangChain, LlamaIndex and smolagents. These tools provide the building blocks for creating complex agent behaviors.
- Real-World Applications: See how agents are used in practice, from automating SQL queries to generating code and summarizing complex documents.
- Certification: Earn a certification by completing the course modules, implementing a use case, and passing a benchmark assessment. This proves your skills in building and deploying AI agents.
Audience

This course is designed for anyone interested in the future of AI. Whether you're a developer, data scientist, or simply curious about AI, this course will equip you with the knowledge and skills to build your own intelligent agents.

Enroll today and start building the next generation of AI agent applications!

https://bit.ly/hf-learn-agents
·
aiqcamp 
posted an update about 20 hours ago
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1065
# 🎨 FLUX Diagram Generator - Create Hand-Drawn Style Diagrams

aiqcamp/diagram

Generate beautiful mind maps and diagrams with AI! Using the FLUX.1-schnell model, create natural hand-drawn style diagrams that bring your ideas to life.

## ✨ Key Features

- 💡 Intuitive prompt-based input system
- 🎯 Rich examples including knowledge trees, digital transformation, creative process, and more
- 🛠 Customizable settings for image size, seed values, and more
- 🖼 Support for resolutions up to 2048x2048
- ⚡ Fast generation (4 steps default)

## 🎯 Use Cases

- Educational materials
- Project planning
- Idea structuring
- Presentation visuals
- Business process visualization

Built with Gradio for a user-friendly interface that anyone can use. Start creating your own diagrams now! 🚀

Try it out to transform your ideas into visually appealing diagrams with a unique hand-drawn aesthetic.

#AIart #Diagram #Mindmap #Visualization #HuggingFace
  • 1 reply
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cutechicken 
posted an update 2 days ago
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2354
🔬 PaperImpact
: Scientific Impact Predictor Powered by Deep Learning 🎯

VIDraft/PaperImpact

📚 Overview
A cutting-edge AI system that combines transformer architecture with citation pattern analysis to predict research impact. Our model, trained on 120,000+ CS papers, analyzes innovation potential, methodological robustness, and future impact, providing researchers with valuable insights before publication.
🧠 Scientific Foundation

BERT-based semantic analysis
Citation network pattern learning
NDCG optimization & MSE loss
Cross-validated prediction engine
GPU-accelerated inference

💫 Why Researchers Need This

Pre-submission impact assessment
Research direction optimization
Time-saving paper evaluation
Competitive edge in academia
Trend identification advantage

🎯 Key Features

One-click arXiv paper analysis
Real-time impact scoring (0-1)
9-tier grading system (AAA-C)
Smart input validation
Instant visual feedback

🌟 Unique Benefits
"Don't wait years to know your paper's impact. Get instant, AI-powered insights to strengthen your research strategy and maximize your academic influence."
Perfect for:

Research authors
PhD students
Journal editors
Research institutions
Grant committees

#ResearchImpact #AcademicAI #ScienceMetrics #ResearchExcellence
  • 1 reply
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openfree 
posted an update about 23 hours ago
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1012
🌟 Creating Presidential Images with FLUX: A Guide 🇰🇷
Model Link: openfree/korea-president-yoon
Service Link: openfree/korea-president-yoon

Hello! Today we'll explore how to generate presidential images using the FLUX model!
📱 Basic Settings

Base Model: black-forest-labs/FLUX.1-dev
LoRA: korea-president-yoon
License: flux-1-dev-non-commercial-license

🎨 How to Use

Always include 'president yoon' in your prompts
Various scenarios available:

In a cafe setting
As a soldier
Participating in a marathon, etc.



💻 Running the Code
pythonCopyfrom diffusers import AutoPipelineForText2Image
import torch

# Load FLUX model
pipeline = AutoPipelineForText2Image.from_pretrained(
'black-forest-labs/FLUX.1-dev',
torch_dtype=torch.bfloat16
).to('cuda')

# Apply LoRA weights
pipeline.load_lora_weights(
'openfree/korea-president-yoon',
weight_name='korea-president-yoon.safetensors'
)

# Generate and save image
image = pipeline('A person in a bustling cafe president yoon').images[0]
image.save("my_image.png")
🔧 Compatible Tools

ComfyUI
AUTOMATIC1111
SD.Next
Invoke AI

✨ Tips and Notes

Available in Safetensors format
Download from Files & versions tab
For non-commercial use only

For more details, please refer to the Hugging Face documentation! Happy image generation! 🎉
  • 1 reply
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nyuuzyou 
posted an update 2 days ago
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1202
🎨 Artfol Dataset - nyuuzyou/artfol

A collection of 1,892,816 artwork posts featuring:
- High-quality art pieces with various styles and techniques
- Complete metadata including artist IDs, titles, and moderation flags
- Content from Artfol social media platform

The dataset contains:
- Public domain artwork posts
- Artist attribution and identifiers
- Direct image URLs and web page links
- Content safety flags (NSFW, gore)
- Post titles and descriptions

All content is available under CC0 license, allowing unrestricted use including commercial applications.
kadirnar 
posted an update about 17 hours ago
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774
I created my own AI image and video from scratch using the fal.ai platform 💫

Workflow: Flux Lora Training + Upscale + Kling AI(1.6)
  • 3 replies
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mkurman 
posted an update 2 days ago
KnutJaegersberg 
posted an update about 10 hours ago
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394
Understanding and Benchmarking Artificial Intelligence: OpenAI's o3 Is Not AGI

It's an interesting paper that argues "new approaches are required that can reliably solve a wide variety of problems without existing skills."
"It is therefore hoped that the benchmark outlined in this article contributes to further exploration of this direction of research and incentivises the development of new AGI approaches that focus on intelligence rather than skills."

https://arxiv.org/abs/2501.07458
singhsidhukuldeep 
posted an update about 12 hours ago
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541
Exciting breakthrough in large-scale recommendation systems! ByteDance researchers have developed a novel real-time indexing method called "Streaming Vector Quantization" (Streaming VQ) that revolutionizes how recommendations work at scale.

>> Key Innovations

Real-time Indexing: Unlike traditional methods that require periodic reconstruction of indexes, Streaming VQ attaches items to clusters in real time, enabling immediate capture of emerging trends and user interests.

Superior Balance: The system achieves remarkable index balancing through innovative techniques like merge-sort modification and popularity-aware cluster assignment, ensuring all clusters participate effectively in recommendations.

Implementation Efficiency: Built on VQ-VAE architecture, Streaming VQ features a lightweight and clear framework that makes it highly implementation-friendly for large-scale deployments.

>> Technical Deep Dive

The system operates in two key stages:
- An indexing step using a two-tower architecture for real-time item-cluster assignment
- A ranking step that employs sophisticated attention mechanisms and deep neural networks for precise recommendations.

>> Real-world Impact

Already deployed in Douyin and Douyin Lite, replacing all major retrievers and delivering significant user engagement improvements. The system handles a billion-scale corpus while maintaining exceptional performance and computational efficiency.

This represents a significant leap forward in recommendation system architecture, especially for platforms dealing with dynamic, rapidly-evolving content. The ByteDance team's work demonstrates how rethinking fundamental indexing approaches can lead to substantial real-world improvements.
neph1 
posted an update about 13 hours ago
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471
There's a new version of the Swedish instruct model, bellman. Due to 'popular demand' (at least as opposed to 'no demand'), I based it off the latest mistral 7b, v0.3. The v0.2 seems to be the most popular of the bunch, despite being quite old by now. Why, I don't know. Must be a link in some old reddit post that is drawing clicks. :)
Anyway, here it is:
neph1/bellman-mistral-7b-instruct-v0.3
You can also try it out (on cpu), here:
neph1/bellman