Telegram launches a no-code AI bot tool, supporting GPT and Llama models

Telegram AI機器人工具

According to Techiexpert’s report on April 27, Telegram has launched a no-code AI bot-building tool. Users can build and deploy AI bots through simple tapping and selection operations without any programming skills. The new tool supports various AI models such as GPT and Llama, and is integrated into Telegram Business.

No-Code Build Process: LobsterFather Bot and Integration with Third-Party Platforms

LobsterFather機器人

(Source: Techiexpert)

According to Techiexpert’s report, the build process consists of two steps: first, users interact with the LobsterFather bot on the Telegram platform to obtain a new project’s key (token); then, they enter the token into third-party platforms such as Telewer, GPTBots, or Lazy AI, where they set the bot’s conversation style and functions by selecting options from a menu.

Supported AI models include GPT and Llama. Users can configure the bot to perform tasks such as answering questions, managing groups, or sharing information. According to Techiexpert’s report, Telegram also simultaneously rolled out a smart text editor that uses AI models to help users rewrite or modify messages.

Master Bot Feature: Centralized Management of Multiple Sub-Bots

According to Techiexpert’s report, one of the key new features in this update is Master Bot (the control bot). Users can create a Master Bot that centrally manages other sub-bots and assigns specific tasks to each sub-bot, which is suitable for scenarios that require handling multiple chat groups or customer inquiries at the same time.

This feature is integrated with Telegram Business. The bots can autonomously carry out tasks 24/7 such as welcoming new members, filtering spam messages, and answering frequently asked questions, without requiring user manual intervention. Techiexpert’s report states that users can grant the bot permission to perform specific tasks, without having to share a private password or give up full control of the account.

Data Security Considerations for Third-Party Platforms

According to Techiexpert’s report, when using the no-code tools mentioned above, user data is handled by third-party platforms such as Telewer, GPTBots, and Lazy AI, rather than being directly managed by Telegram. Techiexpert points out that users should review the security settings of each third-party platform and confirm the scope of data shared with third-party developers. As of the publication of this report, Telegram’s official website has not provided specific details regarding data security measures for the above third-party platforms.

Frequently Asked Questions

How do Telegram’s no-code AI bot tools work?

According to Techiexpert’s April 27, 2026 report, users need to first interact with the LobsterFather bot to obtain a key (token). They then connect the key to third-party platforms such as Telewer, GPTBots, or Lazy AI, and configure the bot’s functions and conversation style through selectable options—throughout the entire process with no code required.

What are the specific uses of the Master Bot feature, and which scenarios is it best for?

According to Techiexpert’s report, the Master Bot feature allows users to create a master bot that centrally manages and assigns tasks to multiple sub-bots. It is suitable for scenarios that require simultaneously managing multiple Telegram groups or handling customer inquiries. This feature has been integrated into Telegram Business.

What data security considerations are there when building bots using third-party no-code platforms?

According to Techiexpert’s report, when using third-party platforms such as Telewer, GPTBots, or Lazy AI, user data is processed by the relevant third parties. Users should review each platform’s security settings and data-sharing terms. Telegram’s official site has not provided additional explanations regarding cybersecurity measures for the above third-party platforms.

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