thesantatitan/Qwen2-0.5B-svg-SFT

Warm
Public
0.5B
BF16
32768
Hugging Face
Overview

Overview

The thesantatitan/Qwen2-0.5B-svg-SFT model is a specialized language model with 0.5 billion parameters, derived from the Qwen2.5-0.5B-Instruct architecture. Its primary distinction lies in its fine-tuning on the thesantatitan/deepseek-svg-dataset, specifically to enhance its proficiency with SVG (Scalable Vector Graphics) syntax. This training was conducted using the TRL (Transformer Reinforcement Learning) framework.

Key Capabilities

  • SVG Syntax Generation: The model is designed to understand and generate valid SVG code, making it suitable for tasks requiring vector graphic descriptions.
  • Fine-tuned Performance: Leveraging the Qwen2.5-0.5B-Instruct base, it offers a compact yet capable foundation for SVG-related language tasks.
  • TRL Training: The use of TRL indicates a focus on optimizing the model's output quality for its specific domain.

Good For

  • SVG Code Assistance: Developers and designers working with SVG can use this model for generating or understanding SVG code snippets.
  • Educational Purposes: It can serve as a tool for learning and experimenting with SVG syntax generation.
  • Specialized Applications: Ideal for applications that require programmatic generation or manipulation of vector graphics through text-based commands.