--- license: apache-2.0 base_model: - Qwen/Qwen3-4B tags: - nexora - chat - qwen3 - conversational language: - en pipeline_tag: text-generation library_name: transformers ---

Nexora-Vector

# Nexora-Vector-v0.1

Status: Beta License: Apache 2.0 Base Model Output: SVG

> **Nexora-Vector-v0.1** is an experimental text-to-vector model that generates structured SVG graphics from natural language prompts. This is the inaugural release of the Nexora Vector series, intended for research, prototyping, and early-stage development workflows. --- ## ⚠️ Update Notice An issue was identified in the initial release where an incorrect base model was uploaded. This has now been **fully corrected**, and the current version is properly based on **Qwen3-4B**. Users are advised to **re-download the latest version** to ensure correct behavior and performance. --- ## Table of Contents - [Overview](#overview) - [Model Details](#model-details) - [Capabilities](#capabilities) - [Limitations](#limitations) - [Intended Use](#intended-use) - [Architecture & Training](#architecture--training) - [Usage Recommendations](#usage-recommendations) - [Quantized Versions](#quantized-versions) - [Evaluation](#evaluation) - [Risks & Considerations](#risks--considerations) - [Future Work](#future-work) - [Community & Support](#community--support) - [License](#license) - [Acknowledgements](#acknowledgements) --- ## Overview Nexora-Vector-v0.1 is a supervised fine-tuned language model built on top of **Qwen3-4B**, adapted specifically to generate structured vector graphics in SVG format from natural language instructions. This release is in **beta** and is scoped to research, experimentation, and early-stage design tooling. All outputs should be validated before use in any downstream pipeline. --- ## Capabilities Nexora-Vector-v0.1 is designed to translate textual instructions into structured SVG code. The model is best suited for: - Generating SVG markup for simple vector graphics - Producing geometric shapes and basic illustrations - Creating lightweight icons and minimal design assets - Supporting rapid prototyping in vector-based design workflows > **Tip:** The model performs best with concise, clearly scoped prompts focused on simple visual compositions. --- ## Limitations This is an early-stage beta release. Users should be aware of the following constraints before integrating the model: - **High hallucination rate** — outputs may be invalid or non-renderable SVG - **Limited generalization** — the small dataset size affects output consistency - **Weak complex scene handling** — highly detailed or multi-element prompts may produce poor results - **Manual correction required** — outputs should be validated and post-processed before use - **Not production-ready** — not suitable for safety-critical or automated pipelines --- ## Intended Use ### ✅ Supported Use Cases - Academic and applied research in text-to-vector generation - Experimental AI-assisted design systems - Educational exploration of structured output generation - Lightweight SVG prototyping and ideation ### ❌ Out-of-Scope Use Cases - Production-grade or commercial vector asset pipelines - High-precision design deliverables without human validation - Automated systems where SVG correctness is required without manual review --- ## Architecture & Training The model is built on **Qwen3-4B** and fine-tuned using supervised learning to improve structured SVG output generation. ### Training Configuration | Parameter | Details | |---|---| | **Fine-tuning Method** | Supervised Fine-Tuning (SFT) | | **Dataset Composition** | Curated prompt–SVG pairs | | **Dataset Size** | ~1,500 samples | | **Training Objective** | Structured output generation for SVG formats | > **Note:** The relatively small dataset size may result in instability and limited generalization across diverse prompts. Improved dataset coverage is planned for future versions. --- ## Usage Recommendations To get the best results from Nexora-Vector-v0.1: 1. **Keep prompts simple and specific** — avoid multi-scene or highly complex compositions 2. **Validate all SVG outputs** before rendering or integrating into any pipeline 3. **Post-process outputs** to correct syntax or structural issues 4. **Use iterative prompting** — refining prompts across multiple turns often yields better results 5. **Expect imperfections** — this is a beta model; treat outputs as drafts, not finals --- ## Quantized Versions Official quantized releases are available via **[Open4bits](https://huggingface.co/Open4bits)** — the dedicated quantization project under **ArkAiLabs** — for efficient local inference across different hardware platforms: | Version | Format | Link | |---|---|---| | **GGUF** (Q2_K / Q4_K_M / Q6_K / Q8_0) | GGUF | [Open4bits/nexora-vector-v0.1-GGUF](https://huggingface.co/Open4bits/nexora-vector-v0.1-GGUF) | | **MLX 4-Bit** (Apple Silicon) | MLX | [Open4bits/nexora-vector-v0.1-mlx-4Bit](https://huggingface.co/Open4bits/nexora-vector-v0.1-mlx-4Bit) | - Use the **GGUF** version for local inference on Windows, Linux, or macOS with tools like `llama.cpp`, Ollama, or LM Studio. - Use the **MLX** version for optimized inference on Apple Silicon (M1/M2/M3/M4) via the MLX framework. --- ## Evaluation Nexora-Vector-v0.1 has not yet undergone formal benchmark evaluation. Current assessment is qualitative, based on manual testing of SVG generation tasks. Planned evaluation metrics for future releases include: | Metric | Description | |---|---| | **SVG Validity Rate** | Percentage of outputs that are parseable, valid SVG | | **Structural Correctness** | Adherence to SVG schema and element hierarchy | | **Prompt Adherence** | Alignment between user intent and generated output | | **Visual Consistency** | Stability of outputs across similar prompts | --- ## Risks & Considerations Developers integrating Nexora-Vector-v0.1 should account for the following risks: - Generation of malformed or non-functional SVG code - Inconsistent instruction following across prompt variations - Unpredictable outputs due to limited training data coverage **Recommendation:** Implement downstream validation layers and SVG syntax checking before any rendering or integration. --- ## Future Work The following improvements are planned for upcoming versions of the Nexora Vector series: - [ ] Expanded and more diverse training dataset - [ ] Improved SVG syntax correctness and validity rates - [ ] Reduced hallucination rates - [ ] Enhanced natural language understanding for complex prompts - [ ] Support for richer vector compositions and multi-element scenes - [ ] Formal benchmark evaluation suite --- ## Community & Support Join the community for updates and discussion: 💬 **[Join our Discord Server](https://discord.gg/mwdrgYbzuG)** --- ## License This model is released under the **Apache License 2.0**. You may use, modify, and distribute this model in accordance with the terms of the Apache 2.0 license. See the [LICENSE](./LICENSE) file for full details, or refer to the [official Apache 2.0 license text](https://www.apache.org/licenses/LICENSE-2.0). --- ## Acknowledgements Nexora-Vector-v0.1 is built upon **[Qwen3-4B](https://huggingface.co/Qwen/Qwen3-4B)** by the Qwen team. We thank the open-source AI community for their continued contributions that make projects like this possible. --- ## About Nexora **Nexora** is an experimental AI initiative under **ArkAiLabs**, focused on building lightweight, practical, and creative AI systems for real-world applications. The Nexora Vector series represents our exploration into AI-assisted vector graphics generation.