AI Automate UX Feedback: Sentiment & Emotion Analysis in Google Sheets + OpenAI — n8n ワークフロー

複雑度 トリガー11個のノード👩‍💻 IT Ops👁 1回閲覧作成者:Parhum Khoshbakht

概要

Who's it for

Product managers, customer success teams, and UX researchers who collect feedback in Google Sheets and want to automatically categorize and analyze it with sentiment and emotions insights. Ideal for teams processing dozens or hundreds of customer comments daily.

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What it does

This workflow automatically tags and analyzes customer feedback stored in Google Sheets using OpenAI's GPT-4. It reads unprocessed feedback entries, sends them in batches to

使用ノード

Google SheetsCodeOpenAI

ワークフロープレビュー

💬 Auto-tag customer feedback in Google Sheet
This workflow automatically tags user feedback stored i
🏷️ Fetch Allowed Tags
Reads the list of available tag names from your Tags Sh
Each tag is stored in an array and later passed to Open
✅ Make sure your Tags she
💬 Fetch New Feedbacks
Reads feedback entries from Feedbacks Sheet where `Stat
Expected Columns
- Feedbacks: The feedback text
- Status: Empty = new | "Updated" =
🤖 Tag Feedbacks with OpenAI
Sends entire batch (10 items) as ONE OpenAI request. 🚀
Output per feedback:
- Up to 3 tags from allowed_tags (preferred)
- Up to 2 AI-generated tags (fallback
📊 Update Google Sheet (Tagged)
Updates Feedbacks Sheet with:
- `Tag 1-3` (from allowed list)
- `AI Tag 1-2` (fallback tags)
- `Sentiment`
- `Primary Emotion` & `Secondary Emotion`
🔁 Split In Batches
Breaks large feedback lists into smaller batches to avo
After each batch is processed, the loop continues autom
💡 De
🔗 Merge Tags & Feedbacks
This node combines two input streams:
- Input 1: Feedback items fetched from the Feedbacks Sh
- Input 2: Allowed tag list fetched from the Tags Sheet
M
🧩 Attach Tags Array
Adds the list of tags from the Tags Sheet to each feedb
The result includes a field named `tags`, used by OpenA
🖱️ Manual Trigger
Runs the workflow manually when you click "Execute Work
Use this for quick testing or when setting up new crede
💡 Best for test
⏰ Schedule Trigger
Runs every 60 minutes automatically.
Processes all feedback where Status = empty/blank.
Created by: Parhum Khoshbakht
Product Manager & Leadership Coach
📦 Aggregate Batch Items
Collects all feedback items in the current batch and co
This allows us to send all 10 feedbacks (or configured
🔀 Split Batch Results
Parses the OpenAI response and splits it back into indi
Each item contains:
- `row_number`: To match with the original Google Sheet
- `tags
W
When clicking 'Execute w…
Fetch Allowed Tags
Fetch New Feedbacks
M
Merge Tags & Feedbacks
A
Attach Tags Array
Tag Feedbacks with AI
Update Google Sheet (Tag…
P
Process Feedbacks in Bat…
Aggregate Batch Items
Split Batch Results
S
Schedule Trigger
11 nodes13 edges

仕組み

  1. 1

    トリガー

    このワークフローは トリガー トリガーで開始します。

  2. 2

    処理

    データは 11 個のノードを流れます, connecting code, googlesheets, manualtrigger。

  3. 3

    出力

    ワークフローは自動化を完了し、設定された宛先に結果を配信します。

ノード詳細 (11)

GO

Google Sheets

googleSheets

#1
CO

Code

code

#2
OP

OpenAI

n8n-nodes-langchain.openAi

#3

このワークフローのインポート方法

  1. 1右側の JSONをダウンロード ボタンをクリックしてワークフローファイルを保存します。
  2. 2n8nインスタンスを開き、ワークフロー → 新規 → ファイルからインポート に進みます。
  3. 3ダウンロードした ai-automate-ux-feedback-sentiment-emotion-analysis-in-google-sheets-openai ファイルを選択し、インポートをクリックします。
  4. 4各サービスノードの 認証情報(APIキー、OAuthなど)を設定します。
  5. 5ワークフローをテスト をクリックして動作確認し、有効化します。

またはn8nの JSONからインポート に直接貼り付け:

{ "name": "AI Automate UX Feedback: Sentiment & Emotion Analysis in Google Sheets + OpenAI", "nodes": [...], ...}

インテグレーション

codegooglesheetsmanualtriggermergeopenaischeduletriggersetsplitinbatches

このワークフローを取得

ワンクリックでダウンロード&インポート

JSONをダウンロードn8n.ioで見る
ノード11
複雑度medium
トリガーtrigger
閲覧数1
カテゴリIT Ops

作成者

Parhum Khoshbakht

Parhum Khoshbakht

@parhumm

タグ

codegooglesheetsmanualtriggermergeopenaischeduletriggersetsplitinbatches

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