← Discord Bot + Runware integrations

Image Inference with Runware API on New Guild Member from Discord Bot API

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Trigger workflow on
New Guild Member from the Discord Bot API
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Image Inference with the Runware API
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Getting Started

This integration creates a workflow with a Discord Bot trigger and Runware action. When you configure and deploy the workflow, it will run on Pipedream's servers 24x7 for free.

  1. Select this integration
  2. Configure the New Guild Member trigger
    1. Connect your Discord Bot account
    2. Select a Guild
    3. Configure timer
  3. Configure the Image Inference action
    1. Connect your Runware account
    2. Select a Structure
    3. Configure Model
    4. Configure Positive Prompt
    5. Configure Height
    6. Configure Width
    7. Optional- Configure Upload Endpoint
    8. Optional- Configure Check NSFW
    9. Optional- Configure Include Cost
    10. Optional- Configure Scheduler
    11. Optional- Configure Seed
    12. Optional- Configure Number Of Results
  4. Deploy the workflow
  5. Send a test event to validate your setup
  6. Turn on the trigger

Details

This integration uses pre-built, source-available components from Pipedream's GitHub repo. These components are developed by Pipedream and the community, and verified and maintained by Pipedream.

To contribute an update to an existing component or create a new component, create a PR on GitHub. If you're new to Pipedream component development, you can start with quickstarts for trigger span and action development, and then review the component API reference.

Trigger

Description:Emit new event for every member added to a guild. [See docs here](https://discord.com/developers/docs/resources/guild#list-guild-members)
Version:0.1.4
Key:discord_bot-new-guild-member

Discord Bot Overview

The Discord Bot API unlocks the power to interact with Discord users and channels programmatically, making it possible to automate messages, manage servers, and integrate with other services. With Pipedream's serverless platform, you can create complex workflows that respond to events in Discord, process data, and trigger actions in other apps. This opens up opportunities for community engagement, content moderation, analytics, and more, without the overhead of managing infrastructure.

Trigger Code

import { DEFAULT_POLLING_SOURCE_TIMER_INTERVAL } from "@pipedream/platform";
import common from "../common.mjs";

export default {
  ...common,
  key: "discord_bot-new-guild-member",
  name: "New Guild Member",
  description: "Emit new event for every member added to a guild. [See docs here](https://discord.com/developers/docs/resources/guild#list-guild-members)",
  type: "source",
  dedupe: "unique",
  version: "0.1.4",
  props: {
    ...common.props,
    db: "$.service.db",
    timer: {
      type: "$.interface.timer",
      default: {
        intervalSeconds: DEFAULT_POLLING_SOURCE_TIMER_INTERVAL,
      },
    },
  },
  async run({ $ }) {
    const { guildId } = this;
    const params = {
      limit: 100,
      after: this._getLastMemberID(),
    };

    while (true) {
      const members = await this.discord.getGuildMembers({
        $,
        guildId,
        params,
      });

      if (members.length === 0) {
        return;
      }

      for (const member of members) {
        const {
          user,
          joined_at: joinedAt,
        } = member;

        params.after = user.id;
        if (user.bot) continue;

        this.$emit(member, {
          summary: `New member: ${user.username}`,
          id: user.id,
          ts: Date.parse(joinedAt),
        });
      }

      this._setLastMemberID(params.after);
    }
  },
};

Trigger Configuration

This component may be configured based on the props defined in the component code. Pipedream automatically prompts for input values in the UI and CLI.
LabelPropTypeDescription
Discord BotdiscordappThis component uses the Discord Bot app.
GuildguildIdstringSelect a value from the drop down menu.
N/Adb$.service.dbThis component uses $.service.db to maintain state between executions.
timer$.interface.timer

Trigger Authentication

Discord Bot uses API keys for authentication. When you connect your Discord Bot account, Pipedream securely stores the keys so you can easily authenticate to Discord Bot APIs in both code and no-code steps.

This app allows you to use the Discord API using your own Discord bot. If you don't want to use a custom bot, and you just need to use the Discord API, exit this screen and use the Discord app, instead.


If you want to use your own Discord bot, but haven't created one yet, see these instructions or watch this video. You'll need to add this bot to your server(s) to make successful API requests.

Once you've created your bot, you'll find the Bot token within the Bot section of your app. Enter that token below.

About Discord Bot

Use this app to interact with the Discord API using a bot in your account

Action

Description:Request an image inference task to be processed by the Runware API. [See the documentation](https://docs.runware.ai/en/image-inference/api-reference).
Version:0.0.1
Key:runware-image-inference

Action Code

import { v4 as uuid } from "uuid";
import app from "../../runware.app.mjs";
import constants from "../../common/constants.mjs";

export default {
  key: "runware-image-inference",
  name: "Image Inference",
  description: "Request an image inference task to be processed by the Runware API. [See the documentation](https://docs.runware.ai/en/image-inference/api-reference).",
  version: "0.0.1",
  type: "action",
  props: {
    app,
    structure: {
      type: "string",
      label: "Structure",
      description: "The structure of the task to be processed.",
      options: Object.values(constants.IMAGE_INFERENCE_STRUCTURE),
      reloadProps: true,
    },
    model: {
      type: "string",
      label: "Model",
      description: "This identifier is a unique string that represents a specific model. You can find the AIR identifier of the model you want to use in our [Model Explorer](https://docs.runware.ai/en/image-inference/models#model-explorer), which is a tool that allows you to search for models based on their characteristics. More information about the AIR system can be found in the [Models page](https://docs.runware.ai/en/image-inference/models). Eg. `civitai:78605@83390`.",
    },
    positivePrompt: {
      type: "string",
      label: "Positive Prompt",
      description: "A positive prompt is a text instruction to guide the model on generating the image. It is usually a sentence or a paragraph that provides positive guidance for the task. This parameter is essential to shape the desired results. For example, if the positive prompt is `dragon drinking coffee`, the model will generate an image of a dragon drinking coffee. The more detailed the prompt, the more accurate the results. The length of the prompt must be between 4 and 2000 characters.",
    },
    height: {
      propDefinition: [
        app,
        "height",
      ],
    },
    width: {
      propDefinition: [
        app,
        "width",
      ],
    },
    uploadEndpoint: {
      type: "string",
      label: "Upload Endpoint",
      description: "This parameter allows you to specify a URL to which the generated image will be uploaded as binary image data using the HTTP PUT method. For example, an S3 bucket URL can be used as the upload endpoint. When the image is ready, it will be uploaded to the specified URL.",
      optional: true,
    },
    checkNSFW: {
      type: "boolean",
      label: "Check NSFW",
      description: "This parameter is used to enable or disable the NSFW check. When enabled, the API will check if the image contains NSFW (not safe for work) content. This check is done using a pre-trained model that detects adult content in images. When the check is enabled, the API will return `NSFWContent: true` in the response object if the image is flagged as potentially sensitive content. If the image is not flagged, the API will return `NSFWContent: false`. If this parameter is not used, the parameter `NSFWContent` will not be included in the response object. Adds `0.1` seconds to image inference time and incurs additional costs. The NSFW filter occasionally returns false positives and very rarely false negatives.",
      optional: true,
    },
    includeCost: {
      propDefinition: [
        app,
        "includeCost",
      ],
    },
    scheduler: {
      type: "string",
      label: "Scheduler",
      description: "An scheduler is a component that manages the inference process. Different schedulers can be used to achieve different results like more detailed images, faster inference, or more accurate results. The default scheduler is the one that the model was trained with, but you can choose a different one to get different results. Schedulers are explained in more detail in the [Schedulers page](https://docs.runware.ai/en/image-inference/schedulers).",
      optional: true,
    },
    seed: {
      type: "string",
      label: "Seed",
      description: "A seed is a value used to randomize the image generation. If you want to make images reproducible (generate the same image multiple times), you can use the same seed value. When requesting multiple images with the same seed, the seed will be incremented by 1 (+1) for each image generated. Min: `0` Max: `9223372036854776000`. Defaults to `Random`.",
      optional: true,
    },
    numberResults: {
      type: "integer",
      label: "Number Of Results",
      description: "The number of images to generate from the specified prompt. If **Seed** is set, it will be incremented by 1 (+1) for each image generated.",
      optional: true,
    },
  },
  additionalProps() {
    const { structure } = this;

    const seedImage = {
      type: "string",
      label: "Seed Image",
      description: "When doing Image-to-Image, Inpainting or Outpainting, this parameter is **required**. Specifies the seed image to be used for the diffusion process. The image can be specified in one of the following formats:\n - An UUID v4 string of a [previously uploaded image](https://docs.runware.ai/en/getting-started/image-upload) or a [generated image](https://docs.runware.ai/en/image-inference/api-reference).\n - A data URI string representing the image. The data URI must be in the format `data:<mediaType>;base64,` followed by the base64-encoded image. For example: `data:image/png;base64,iVBORw0KGgo...`.\n - A base64 encoded image without the data URI prefix. For example: `iVBORw0KGgo...`.\n - A URL pointing to the image. The image must be accessible publicly. Supported formats are: PNG, JPG and WEBP.",
    };

    const maskImage = {
      type: "string",
      label: "Mask Image",
      description: "When doing Inpainting or Outpainting, this parameter is **required**. Specifies the mask image to be used for the inpainting process. The image can be specified in one of the following formats:\n - An UUID v4 string of a [previously uploaded image](https://docs.runware.ai/en/getting-started/image-upload) or a [generated image](https://docs.runware.ai/en/image-inference/api-reference).\n - A data URI string representing the image. The data URI must be in the format `data:<mediaType>;base64,` followed by the base64-encoded image. For example: `data:image/png;base64,iVBORw0KGgo...`.\n - A base64 encoded image without the data URI prefix. For example: `iVBORw0KGgo...`.\n - A URL pointing to the image. The image must be accessible publicly. Supported formats are: PNG, JPG and WEBP.",
    };

    const strength = {
      type: "string",
      label: "Strength",
      description: "When doing Image-to-Image, Inpainting or Outpainting, this parameter is used to determine the influence of the **Seed Image** image in the generated output. A higher value results in more influence from the original image, while a lower value allows more creative deviation. Min: `0` Max: `1` and Default: `0.8`.",
      optional: true,
    };

    const controlNetModel = {
      type: "string",
      label: "ControlNet Model 0",
      description: "For basic/common ControlNet models, you can check the list of available models [here](https://docs.runware.ai/en/image-inference/models#basic-controlnet-models). For custom or specific ControlNet models, we make use of the [AIR system](https://github.com/civitai/civitai/wiki/AIR-%E2%80%90-Uniform-Resource-Names-for-AI) to identify ControlNet models. This identifier is a unique string that represents a specific model. You can find the AIR identifier of the ControlNet model you want to use in our [Model Explorer](https://docs.runware.ai/en/image-inference/models#model-explorer), which is a tool that allows you to search for models based on their characteristics. More information about the AIR system can be found in the [Models page](https://docs.runware.ai/en/image-inference/models).",
    };

    const controlNetGuideImage = {
      type: "string",
      label: "ControlNet Guide Image 0",
      description: "The guide image for ControlNet.",
    };

    const controlNetWeight = {
      type: "integer",
      label: "ControlNet Weight 0",
      description: "The weight for ControlNet.",
    };

    const controlNetStartStep = {
      type: "integer",
      label: "ControlNet Start Step 0",
      description: "The start step for ControlNet.",
    };

    const controlNetEndStep = {
      type: "integer",
      label: "ControlNet End Step 0",
      description: "The end step for ControlNet.",
    };

    const controlNetControlMode = {
      type: "string",
      label: "ControlNet Control Mode 0",
      description: "The control mode for ControlNet.",
    };

    const loraModel = {
      type: "string",
      label: "LoRA Model 0",
      description: "We make use of the [AIR system](https://github.com/civitai/civitai/wiki/AIR-%E2%80%90-Uniform-Resource-Names-for-AI) to identify LoRA models. This identifier is a unique string that represents a specific model. You can find the AIR identifier of the LoRA model you want to use in our [Model Explorer](https://docs.runware.ai/en/image-inference/models#model-explorer), which is a tool that allows you to search for models based on their characteristics. More information about the AIR system can be found in the [Models page](https://docs.runware.ai/en/image-inference/models).",
    };

    const loraWeight = {
      type: "integer",
      label: "LoRA Weight 0",
      description: "It is possible to use multiple LoRAs at the same time. With the `weight` parameter you can assign the importance of the LoRA with respect to the others. The sum of all `weight` parameters must always be `1`. If needed, we will increase the values proportionally to achieve it.",
      optional: true,
    };

    if (structure === constants.IMAGE_INFERENCE_STRUCTURE.TEXT_TO_IMAGE.value) {
      return {
        outputType: {
          type: "string",
          label: "Output Type",
          description: "Specifies the output type in which the image is returned.",
          optional: true,
          options: [
            "base64Data",
            "dataURI",
            "URL",
          ],
        },
        outputFormat: {
          type: "string",
          label: "Output Format",
          description: "Specifies the format of the output image.",
          optional: true,
          options: [
            "PNG",
            "JPG",
            "WEBP",
          ],
        },
        negativePrompt: {
          type: "string",
          label: "Negative Prompt",
          description: "A negative prompt is a text instruction to guide the model on generating the image. It is usually a sentence or a paragraph that provides negative guidance for the task. This parameter helps to avoid certain undesired results. For example, if the negative prompt is `red dragon, cup`, the model will follow the positive prompt but will avoid generating an image of a red dragon or including a cup. The more detailed the prompt, the more accurate the results. The length of the prompt must be between 4 and 2000 characters.",
          optional: true,
        },
        steps: {
          type: "integer",
          label: "Steps",
          description: "The number of steps is the number of iterations the model will perform to generate the image. The higher the number of steps, the more detailed the image will be. However, increasing the number of steps will also increase the time it takes to generate the image and may not always result in a better image (some [schedulers](https://docs.runware.ai/en/image-inference/api-reference#request-scheduler) work differently). When using your own models you can specify a new default value for the number of steps. Defaults to `20`.",
          min: 1,
          max: 100,
          optional: true,
        },
        CFGScale: {
          type: "string",
          label: "CFG Scale",
          description: "Guidance scale represents how closely the images will resemble the prompt or how much freedom the AI model has. Higher values are closer to the prompt. Low values may reduce the quality of the results. Min: `0`, Max: `30` Default: `7`.",
          optional: true,
        },
      };
    }

    if (structure === constants.IMAGE_INFERENCE_STRUCTURE.IMAGE_TO_IMAGE.value) {
      return {
        seedImage,
        strength,
      };
    }

    if (structure === constants.IMAGE_INFERENCE_STRUCTURE.IN_OUT_PAINTING.value) {
      return {
        seedImage,
        maskImage,
        strength,
      };
    }

    if (structure === constants.IMAGE_INFERENCE_STRUCTURE.REFINER.value) {
      return {
        refinerModel: {
          type: "string",
          label: "Refiner Model",
          description: "We make use of the [AIR system](https://github.com/civitai/civitai/wiki/AIR-%E2%80%90-Uniform-Resource-Names-for-AI) to identify refinement models. This identifier is a unique string that represents a specific model. Note that refiner models are only SDXL based. You can find the AIR identifier of the refinement model you want to use in our [Model Explorer](https://docs.runware.ai/en/image-inference/models#model-explorer), which is a tool that allows you to search for models based on their characteristics. More information about the AIR system can be found in the [Models page](https://docs.runware.ai/en/image-inference/models).",
        },
        refinerStartStep: {
          type: "integer",
          label: "Refiner Start Step",
          description: "Represents the step number at which the refinement process begins. The initial model will generate the image up to this step, after which the refiner model takes over to enhance the result. It can take values from `0` (first step) to the number of [steps](https://docs.runware.ai/en/image-inference/api-reference#request-steps) specified.",
          optional: true,
        },
      };
    }

    if (structure === constants.IMAGE_INFERENCE_STRUCTURE.CONTROL_NET.value) {
      return {
        controlNetModel1: {
          ...controlNetModel,
          label: "Control Net Model 1",
        },
        controlNetGuideImage1: {
          ...controlNetGuideImage,
          label: "Control Net Guide Image 1",
        },
        controlNetWeight1: {
          ...controlNetWeight,
          label: "Control Net Weight 1",
        },
        controlNetStartStep1: {
          ...controlNetStartStep,
          label: "Control Net Start Step 1",
        },
        controlNetEndStep1: {
          label: "Control Net End Step 1",
          ...controlNetEndStep,
        },
        controlNetControlMode1: {
          ...controlNetControlMode,
          label: "Control Net Control Mode 1",
        },
        controlNetModel2: {
          ...controlNetModel,
          label: "Control Net Model 2",
          optional: true,
        },
        controlNetGuideImage2: {
          ...controlNetGuideImage,
          label: "Control Net Guide Image 2",
          optional: true,
        },
        controlNetWeight2: {
          ...controlNetWeight,
          label: "Control Net Weight 2",
          optional: true,
        },
        controlNetStartStep2: {
          ...controlNetStartStep,
          label: "Control Net Start Step 2",
          optional: true,
        },
        controlNetEndStep2: {
          ...controlNetEndStep,
          label: "Control Net End Step 2",
          optional: true,
        },
        controlNetControlMode2: {
          ...controlNetControlMode,
          label: "Control Net Control Mode 2",
          optional: true,
        },
      };
    }

    if (structure === constants.IMAGE_INFERENCE_STRUCTURE.LORA.value) {
      return {
        loraModel1: {
          ...loraModel,
          label: "LoRA Model 1",
        },
        loraWeight1: {
          label: "LoRA Weight 1",
          ...loraWeight,
        },
        loraModel2: {
          label: "LoRA Model 2",
          ...loraModel,
          optional: true,
        },
        loraWeight2: {
          label: "LoRA Weight 2",
          ...loraWeight,
        },
      };
    }

    return {};
  },
  async run({ $ }) {
    const {
      app,
      outputType,
      outputFormat,
      uploadEndpoint,
      checkNSFW,
      includeCost,
      positivePrompt,
      negativePrompt,
      seedImage,
      maskImage,
      strength,
      height,
      width,
      model,
      steps,
      scheduler,
      seed,
      numberResults,
      CFGScale,
      refinerModel,
      refinerStartStep,
      controlNetModel1,
      controlNetGuideImage1,
      controlNetWeight1,
      controlNetStartStep1,
      controlNetEndStep1,
      controlNetControlMode1,
      controlNetModel2,
      controlNetGuideImage2,
      controlNetWeight2,
      controlNetStartStep2,
      controlNetEndStep2,
      controlNetControlMode2,
      loraModel1,
      loraWeight1,
      loraModel2,
      loraWeight2,
    } = this;

    const data = {
      taskType: constants.TASK_TYPE.IMAGE_INFERENCE.value,
      taskUUID: uuid(),
      positivePrompt,
      outputType,
      outputFormat,
      uploadEndpoint,
      checkNSFW,
      includeCost,
      negativePrompt,
      seedImage,
      maskImage,
      strength,
      height,
      width,
      model,
      steps,
      scheduler,
      seed: seed
        ? parseInt(seed)
        : undefined,
      numberResults,
      CFGScale,
      refiner: refinerModel
        ? {
          model: refinerModel,
          startStep: refinerStartStep,
        }
        : undefined,
      controlNet: controlNetModel1
        ? [
          {
            model: controlNetModel1,
            guideImage: controlNetGuideImage1,
            weight: controlNetWeight1,
            startStep: controlNetStartStep1,
            endStep: controlNetEndStep1,
            controlMode: controlNetControlMode1,
          },
          ...(controlNetModel2
            ? [
              {
                model: controlNetModel2,
                guideImage: controlNetGuideImage2,
                weight: controlNetWeight2,
                startStep: controlNetStartStep2,
                endStep: controlNetEndStep2,
                controlMode: controlNetControlMode2,
              },
            ]
            : []
          ),
        ]
        : undefined,
      lora: loraModel1
        ? [
          {
            model: loraModel1,
            weight: loraWeight1,
          },
          ...(loraModel2
            ? [
              {
                model: loraModel2,
                weight: loraWeight2,
              },
            ]
            : []
          ),
        ]
        : undefined,
    };

    const response = await app.post({
      $,
      data: [
        data,
      ],
    });

    $.export("$summary", `Successfully requested image inference task with UUID \`${response.data[0].taskUUID}\`.`);
    return response;
  },
};

Action Configuration

This component may be configured based on the props defined in the component code. Pipedream automatically prompts for input values in the UI.

LabelPropTypeDescription
RunwareappappThis component uses the Runware app.
StructurestructurestringSelect a value from the drop down menu:{ "value": "textToImage", "label": "Text to Image" }{ "value": "imageToImage", "label": "Image to Image" }{ "value": "inOutpainting", "label": "In/Outpainting" }{ "value": "refiner", "label": "Refiner" }{ "value": "controlNet", "label": "Control Net" }{ "value": "lora", "label": "LoRA" }
Modelmodelstring

This identifier is a unique string that represents a specific model. You can find the AIR identifier of the model you want to use in our Model Explorer, which is a tool that allows you to search for models based on their characteristics. More information about the AIR system can be found in the Models page. Eg. civitai:78605@83390.

Positive PromptpositivePromptstring

A positive prompt is a text instruction to guide the model on generating the image. It is usually a sentence or a paragraph that provides positive guidance for the task. This parameter is essential to shape the desired results. For example, if the positive prompt is dragon drinking coffee, the model will generate an image of a dragon drinking coffee. The more detailed the prompt, the more accurate the results. The length of the prompt must be between 4 and 2000 characters.

Heightheightinteger

Used to define the height dimension of the generated image. Certain models perform better with specific dimensions. The value must be divisible by 64, eg: 512, 576, 640 ... 2048.

Widthwidthinteger

Used to define the width dimension of the generated image. Certain models perform better with specific dimensions. The value must be divisible by 64, eg: 512, 576, 640 ... 2048.

Upload EndpointuploadEndpointstring

This parameter allows you to specify a URL to which the generated image will be uploaded as binary image data using the HTTP PUT method. For example, an S3 bucket URL can be used as the upload endpoint. When the image is ready, it will be uploaded to the specified URL.

Check NSFWcheckNSFWboolean

This parameter is used to enable or disable the NSFW check. When enabled, the API will check if the image contains NSFW (not safe for work) content. This check is done using a pre-trained model that detects adult content in images. When the check is enabled, the API will return NSFWContent: true in the response object if the image is flagged as potentially sensitive content. If the image is not flagged, the API will return NSFWContent: false. If this parameter is not used, the parameter NSFWContent will not be included in the response object. Adds 0.1 seconds to image inference time and incurs additional costs. The NSFW filter occasionally returns false positives and very rarely false negatives.

Include CostincludeCostboolean

If set to true, the cost to perform the task will be included in the response object. Defaults to false.

Schedulerschedulerstring

An scheduler is a component that manages the inference process. Different schedulers can be used to achieve different results like more detailed images, faster inference, or more accurate results. The default scheduler is the one that the model was trained with, but you can choose a different one to get different results. Schedulers are explained in more detail in the Schedulers page.

Seedseedstring

A seed is a value used to randomize the image generation. If you want to make images reproducible (generate the same image multiple times), you can use the same seed value. When requesting multiple images with the same seed, the seed will be incremented by 1 (+1) for each image generated. Min: 0 Max: 9223372036854776000. Defaults to Random.

Number Of ResultsnumberResultsinteger

The number of images to generate from the specified prompt. If Seed is set, it will be incremented by 1 (+1) for each image generated.

Action Authentication

Runware uses API keys for authentication. When you connect your Runware account, Pipedream securely stores the keys so you can easily authenticate to Runware APIs in both code and no-code steps.

About Runware

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Request Task with Runware API on New Thread Message from Discord Bot API
Discord Bot + Runware
 
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Request Task with Runware API on New Tag Added to Forum Thread from Discord Bot API
Discord Bot + Runware
 
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New Message in Channel from the Discord Bot API

Emit new event for each message posted to one or more channels

 
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New Forum Thread Message from the Discord Bot API

Emit new event for each forum thread message posted. Note that your bot must have the MESSAGE_CONTENT privilege intent to see the message content. See the documentation.

 
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New Guild Member from the Discord Bot API

Emit new event for every member added to a guild. See docs here

 
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New Tag Added to Forum Thread from the Discord Bot API

Emit new event when a new tag is added to a thread

 
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New Thread Message from the Discord Bot API

Emit new event for each thread message posted.

 
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Add Role with the Discord Bot API

Assign a role to a user. Remember that your bot requires the MANAGE_ROLES permission. See the docs here

 
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Change Nickname with the Discord Bot API

Modifies the nickname of the current user in a guild.

 
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Create Channel Invite with the Discord Bot API

Create a new invite for the channel. See the docs here

 
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Create Guild Channel with the Discord Bot API

Create a new channel for the guild. See the docs here

 
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Delete Channel with the Discord Bot API

Delete a Channel.

 
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