Z-image Online Training - First Training FREE!

Z-image Online Training - First Training FREE!


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Z- image Online Training - First Time FREE! & 50% OFF

By anchoring in the SFT stage, Z-Image achieves a superior balance between visual fidelity, generative diversity, and precise instruction following.

It's your go-to choice due to its rapid training speeds and minimal dataset requirements.

🔥 Limited Time Offer

To celebrate our launch and empower creators, we are offering

  • 50% OFF on all online training

  • your FIRST session is on us!

Note: We will rebate up to 1,000 credits to your account upon the successful completion of your first training.

Don’t miss out!

📌 Go to Training 👉 https://tensor.art/train

Training Tutorial

1. Online Training Workbench

In the online training workbench, select Custom as the model type, then choose z-image as the base foundation model for training.

2. Training Samples

Select high-quality samples according to the training task. The recommended number of samples is approximately 30–300, and the more, the better.

In our internal testing, the Base model uses a relatively high proportion of photorealistic style data during the SFT (Supervised Fine-Tuning) stage, which results in excellent image quality for realistic styles.

3. Data Processing & Labeling

The workbench provides multiple advanced multimodal models for Labeling, including the latest Gemini-3-Flash model.

You can use the default caption prompt for labeling, or customize your own prompt. After annotation is completed, add a trigger word and a training sample preview prompt. For example, jzxdda_style can be used as a trigger token — it carries no inherent semantic meaning and is used solely to activate the learned style.

4. Start Training

Click the “Start Training” button to launch the training task.

The training details page will display the estimated remaining time, which typically ranges from 10 minutes to 1 hour, depending on the number of training samples and training steps.

During training, you can monitor real-time loss curves and accuracy changes. The task can be stopped early at an appropriate epoch to prevent overfitting.

5. Testing & Publishing

Click “Publish” to create a project and deploy the trained model.

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