gpt-trainer

Create a personalized AI chatbot using your own data

Integrate the gpt-trainer API with the MySQL API

Setup the gpt-trainer API trigger to run a workflow which integrates with the MySQL API. Pipedream's integration platform allows you to integrate gpt-trainer and MySQL remarkably fast. Free for developers.

Create Chat Session with gpt-trainer API on New Column from MySQL API
MySQL + gpt-trainer
 
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Create Chat Session with gpt-trainer API on New or Updated Row from MySQL API
MySQL + gpt-trainer
 
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Create Chat Session with gpt-trainer API on New Row (Custom Query) from MySQL API
MySQL + gpt-trainer
 
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Create Chat Session with gpt-trainer API on New Row from MySQL API
MySQL + gpt-trainer
 
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Create Chat Session with gpt-trainer API on New Table from MySQL API
MySQL + gpt-trainer
 
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New Column from the MySQL API

Emit new event when you add a new column to a table. See the docs here

 
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New or Updated Row from the MySQL API

Emit new event when you add or modify a new row in a table. See the docs here

 
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New Row from the MySQL API

Emit new event when you add a new row to a table. See the docs here

 
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New Row (Custom Query) from the MySQL API

Emit new event when new rows are returned from a custom query. See the docs here

 
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New Table from the MySQL API

Emit new event when a new table is added to a database. See the docs here

 
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Create Chat Session with the gpt-trainer API

Create a chat session for a chatbot specified by chatbot UUID. See the documentation

 
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Create Row with the MySQL API

Adds a new row. See the docs here

 
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Create Chatbot with the gpt-trainer API

Creates a new chatbot that belongs to the authenticated user. See the documentation

 
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Delete Row with the MySQL API

Delete an existing row. See the docs here

 
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Create Message with the gpt-trainer API

Create a session message for a chatbot session specified by session UUID. See the documentation

 
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Overview of gpt-trainer

The gpt-trainer API is a tool designed to train, run, and manage custom GPT-2 and GPT-3 models. It provides endpoints for submitting training data, starting the training process, and generating text from the trained model. With Pipedream's serverless integration platform, you can automate workflows that interact with the gpt-trainer API. You can trigger workflows using webhooks, schedule them, or even run them in response to events from other apps. Integrate the gpt-trainer API with other services on Pipedream to create powerful applications such as automated content creation, personalized messaging, or AI-driven data analysis.

Connect gpt-trainer

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import { axios } from "@pipedream/platform"
export default defineComponent({
  props: {
    gpt_trainer: {
      type: "app",
      app: "gpt_trainer",
    }
  },
  async run({steps, $}) {
    return await axios($, {
      url: `https://app.gpt-trainer.com/api/v1/chatbots`,
      headers: {
        Authorization: `Bearer ${this.gpt_trainer.$auth.api_key}`,
      },
    })
  },
})

Overview of MySQL

The MySQL application on Pipedream enables direct interaction with your MySQL databases, allowing you to perform CRUD operations—create, read, update, delete—on your data with ease. You can leverage these capabilities to automate data synchronization, report generation, and event-based triggers that kick off workflows in other apps. With Pipedream's serverless platform, you can connect MySQL to hundreds of other services without managing infrastructure, crafting complex code, or handling authentication.

Connect MySQL

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import mysql from '@pipedream/mysql';

export default defineComponent({
  props: {
    mysql,
  },
  async run({steps, $}) {
    // Component source code:
    // https://github.com/PipedreamHQ/pipedream/tree/master/components/mysql

    const queryObj = {
      sql: "SELECT NOW()",
      values: [], // Ignored since query does not contain placeholders
    };
    return await this.mysql.executeQuery(queryObj);
  },
});