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Notion Rich Text Data Analysis

Notion NLP

To read text from a Notion database and perform natural language processing analysis.

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English / 简体中文

Introduction

To achieve functionality similar to flomo, I have created a database using Notion, where I have recorded my thoughts and insights over the years, accumulating a rich corpus of language. However, the random roaming feature of flomo did not meet my needs, so I decided to develop a small tool that integrates with the Notion API and performs NLP analysis.

Now, the tool can:

  • Output intuitive and visually appealing word cloud images.

  • Generate thematic summaries of your Notion notes.

    📝 Example thematic summary

  • Support multiple languages. I have added stopword lists for several languages including Chinese, English, Russian, French, Japanese, and German. Users can also customize their own stopword lists.

    🌏 Stopword lists for multiple languages

  • Support multiple tasks. Users can configure multiple databases and corresponding filtering and sorting conditions to create rich analysis tasks.

    🔍 Example configuration file

    For example, I have added the following tasks:

    • 🤔 Reflections from the past year
    • 🚩 Optimization of annual summaries for the current year
    • ⚠️ Self-admonitions from all time periods

I am pleased to share this tool and hope it can be helpful to you. 😆

Pipline

flowchart TB
A1[(Get personal access token from note-taking software)]
B2[Customize NLP module parameters]
B3[Customize visualization module parameters]
B1[Configure API key and corresponding database ID]
C1((Run task))
D1([Read rich text via API]) 
D2([Segment/Clean/Build word-sentence mapping])
D3[/Calculate TF-IDF/]
E1{{Markdown of keywords and source sentences}}
E2{{Word cloud with multiple color styles}}

  A1 -- Configure_task_parameters --> Parameter_types
  subgraph Parameter_types
  B1
  B2
  B3
  end
  B1 & B2 & B3 --> C1
  C1 --> Calculation_module
  subgraph Calculation_module
  D1 --> D2 --> D3
  end
  Calculation_module --> Visualization_module
  subgraph Visualization_module
  E1
  E2
  end
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Installation and Usage

  • Windows System

    Download the latest release of the Windows version zip file, extract it, and double-click start.bat to follow the script prompts and start experiencing.

  • Linux System

    • Method 1: Download the latest release of the Linux version zip file, extract it, open the terminal in the current directory, and enter ./notion-nlp-linux --help to view the command details.

    • Method 2: Install the package from PyPI to the Python environment.

      pip install notion-nlp

Configure Tasks

  • Configuration file reference config.sample.yaml (hereinafter config, please rename to config.yaml as your own configuration file)

Get the integration token

  • In notion integrations create a new integration, get your own token and fill in the token in the config.yaml file afterwards.

    Graphic Tutorial: tango / markdown

Add integration to database/get database ID

  • If you open the notion database page in your browser or click on the share copy link, you will see the database id in the address link (similar to a string of jumbles) and fill in the database_id under the task of config.

    Graphic Tutorial: tango / markdown

Configure the filter sort database entry extra parameter

Run all tasks

  • Select "Run all tasks" through Windows interactive script

  • Call using terminal or Python code after installing the package from PyPI

    • Run from command line

      python3.8 -m notion_nlp run-all-tasks --config-file /path/to/your/config/file
    • Run from Python code

      from notion_nlp import run_all_tasks
      config_file = "./notion-nlp-dataset/configs/config.yaml"
      run_all_tasks(config_file)

Run a single task

  • Select "Run specified task" through Windows interactive script

  • Call using terminal or Python code after installing the package from PyPI

    • In the run_task command, you can specify the task in several ways, including:

      • task: an instance of TaskParams;
      • task_json: a JSON string representing the task information;
      • task_name: the name of the task.
    • If config_file exists, you can use task_name to specify the task. Note that the task needs to be activated, otherwise an exception will be thrown. If config_file does not exist, you need to provide a token and either TaskParams or task_json.

      • With an existing config file, pass in task name/task json/task parameter class

        • Run from command line

          # Option 1
          python3.8 -m notion_nlp run-task --task-name task_1 --config-file /path/to/your/config/file
          
          # Option 2
          python3.8 -m notion_nlp run-task --task-json '{"name": "task_1", "database_id": "your_database_id"}' --config-file /path/to/your/config/file
        • Run from Python code

          from notion_nlp import run_task
          task_name = "task_1"
          database_id = "your_database_id"
          config_file="./notion-nlp-dataset/configs/config.yaml"
          
          # Option 1
          run_task(task_name=task_name, config_file=config_file)
          
          # Option 2 (not recommended for Python code)
          import json
          task_info = {"name": task_name, "database_id": database_id}
          run_task(task_json=json.dumps(task_info, ensure_ascii=False), config_file=config_file)
          
          # Option 3 (recommended)
          from notion_nlp.parameter.config import TaskParams
          task = TaskParams(name=task_name, database_id=database_id)
          run_task(task=task, config_file=config_file)
      • Without a config file, pass in token and task json/task parameter class

        • Run from command line

          # Option 1
          python3.8 -m notion_nlp run-task --task-json '{"name": "task_1", "database_id": "your_database_id"}' --token 'your_notion_integration_token'
        • Run from Python code

          from notion_nlp import run_task
          task_name = "task_1"
          database_id = "your_database_id"
          notion_token = "your_notion_integration_token"
          
          # Option 1 (not recommended for Python code)
          import json
          task_info = {"name": task_name, "database_id": database_id}
          run_task(task_json=json.dumps(task_info, ensure_ascii=False), token=notion_token)
          
          # Option 2 (recommended)
          from notion_nlp.parameter.config import TaskParams
          task = TaskParams(name=task_name, database_id=database_id)
          run_task(task=task, token=notion_token)

Enhance Personal Experience

🛃 Custom Stopword List

  • Add a text file in the stopwords directory with the suffix stopwords.txt, such as custom.stopwords.txt. Each stopword should be on a separate line in the file.

📝 Share Your Ideas with the Author

💝 Buy the author a cup of coffee and request a personalized customization. Donate PayPal

Development

  • Welcome to fork and add new features/fix bugs.

  • After cloning the project, use the create_python_env_in_new_machine.sh script to create a Poetry virtual environment.

  • After completing the code development, use the invoke command to perform a series of formatting tasks, including black/isort tasks added in task.py.

    invoke check
  • After submitting the formatted changes, run unit tests to check coverage.

    poetry run tox
    

Note

  • The word segmentation tool has two built-in options: jieba/pkuseg. (Considering adding language analysis to automatically select the most suitable word segmentation tool for that language.)

    • jieba is used by default.
    • pkuseg cannot be installed with poetry and needs to be installed manually with pip. In addition, this library is slow and requires high memory usage. It has been tested that a VPS with less than 1G memory needs to load virtual memory to use it.
  • The analysis method using tf-idf is too simple. Consider integrating the API of LLM (such as openAI GPT-3) for further analysis.

Contributions

License and Copyright

  • MIT License
    1. The MIT License is a permissive open-source software license. This means that anyone is free to use, copy, modify, and distribute your software, as long as they include the original copyright notice and license in their derivative works.

    2. However, the MIT License comes with no warranty or liability, meaning that you cannot be held liable for any damages or losses arising from the use or distribution of your software.

    3. By using this software, you agree to the terms and conditions of the MIT License.

Contact information