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

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 — 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
MLX 4-Bit (Apple Silicon) MLX 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


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 file for full details, or refer to the official Apache 2.0 license text.


Acknowledgements

Nexora-Vector-v0.1 is built upon 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.

Downloads last month
322
Safetensors
Model size
4B params
Tensor type
BF16
·
Inference Providers NEW
This model isn't deployed by any Inference Provider. 🙋 Ask for provider support

Model tree for ArkAiLab-Adl/nexora-vector-v0.1

Finetuned
Qwen/Qwen3-4B
Finetuned
(572)
this model
Quantizations
4 models

Collection including ArkAiLab-Adl/nexora-vector-v0.1