# Key Features of the Grafi AI App Store

1. **Listing and Distribution**\
   • Developers can submit their AI agents, applications and models for review and once approved, list them on the AI App Store. The platform provides visibility to both developers and users, allowing contributors to reach a wider audience.<br>
2. AI App Categories:\
   • The AI App Store offers a range of categories for users to explore, such as:
   1. **AI Agents:** Intelligent, customizable AI agents that provide autonomous functionality, such as task automation, personalized user assistance or data analytics.
   2. **Machine Learning Models:** Pre-trained models ready to be integrated into AI projects.
   3. **AI Image:** Applications for Generative Image.
   4. **AI Chat:** Applications that offer services like AI-based chat bot, natural language processing (NLP), and computer vision.
   5. **AI Video:** Applications for Generative Video.
   6. **AI Writing:** Application that offer services like professional writing or thesis writing.
   7. **AI Voice:** Applications that offer machine learning on a series of voices and mimic it.
   8. **AI Translate:** Applications for real time AI language translation.<br>
3. **Monetization for Developers:**\
   • Developers have options to monetize their AI applications through subscriptions, one-time payments, or pay-per-use pricing models. Additionally, developers earn $GRAFI tokens based on app usage and engagement.<br>
4. **Payments:**\
   • Payments in the Grafi AI App Store are handled through Telegram wallet (Telegram AI Store) or $GRAFI tokens (web application) or other supported cryptocurrencies. <br>


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