> For the complete documentation index, see [llms.txt](https://docs.batching.ai/meta-match/llms.txt). Markdown versions of documentation pages are available by appending `.md` to page URLs; this page is available as [Markdown](https://docs.batching.ai/meta-match/nft-integration/card-creation-process.md).

# Card Creation Process

<figure><img src="/files/pMITq5B3bUJSWtDNuOwr" alt=""><figcaption></figcaption></figure>

### Card Creation Process

1. **NFT Selection**\
   Players choose one NFT from their collection. This NFT serves as the basis for the card's visual look.&#x20;
2. **AI Extraction**\
   The NFT Extractor examines the selected image and its features using AI technology. This step transforms the NFT's visual elements into potential game card qualities.&#x20;
3. **Attribute Assignment** \
   The AI evaluates the card's core attributes, including as attack, defense, and special abilities, based on NFT features.
4. **Whitelisted NFTs**\
   If the chosen NFT is on the whitelist, it gains additional qualities beyond the baseline level, which raises its overall performance.&#x20;
5. **Finalization**\
   Players review AI-generated attributes and customize the framework to finish their card.

### Attribute Table Explanation

* An attribute table is a preset collection of qualities that may be applied to a card.
* It covers fundamental stats like as attack, defense, mana cost, and special abilities or boost effects.
* It additionally includes enhanced attributes that are only available to whitelisted NFTs.
* It guides the AI through the NFT extraction process, assuring consistency in attribute assignment and balanced gameplay.


---

# Agent Instructions
This documentation is published with GitBook. GitBook is the documentation platform designed so that both humans and AI agents can read, navigate, and reason over technical content effectively. Learn more at gitbook.com.

## Querying This Documentation
If you need additional information that is not directly available in this page, you can query the documentation dynamically by asking a question.

Perform an HTTP GET request on the current page URL with the `ask` query parameter, and the optional `goal` query parameter:

```
GET https://docs.batching.ai/meta-match/nft-integration/card-creation-process.md?ask=<question>&goal=<endgoal>
```

`ask` is the immediate question: it should be specific, self-contained, and written in natural language.
`goal` is optional and describes the broader end goal you are ultimately trying to accomplish on behalf of the user. GitBook uses it to tailor the answer towards what is most useful for that goal.

The response will contain a direct answer to the question and relevant excerpts and sources from the documentation.

Use this mechanism when the answer is not explicitly present in the current page, you need clarification or additional context, or you want to retrieve related documentation sections.
