Notion Client extension to import notion Database into pandas Dataframe
Project description
Notion2Pandas
Notion2Pandas is a Python 3 package that extends the capabilities of the excellent notion-sdk-py by Ramnes. It enables the seamless import of a Notion database into a pandas dataframe and vice versa, requiring just a single line of code.
Installation
pip install notion2pandas
Quick Start
Synchronous Client
from notion2pandas import Notion2PandasClient
import os
# Create client
n2p = Notion2PandasClient(auth=os.environ["NOTION_TOKEN"])
# Import database to NotionDataFrame
ndf = n2p.get_dataframe(os.environ["DATABASE_ID"])
# Work with your data
ndf.loc[ndf['Status'] == 'Todo', 'Status'] = 'In Progress'
# Save changes back to Notion
n2p.sync_to_notion(ndf)
Asynchronous Client
from notion2pandas import AsyncNotion2PandasClient
import os
# Create async client
async_n2p = AsyncNotion2PandasClient(auth=os.environ["NOTION_TOKEN"])
# Import database to NotionDataFrame (concurrent processing)
ndf = await async_n2p.get_dataframe(os.environ["DATABASE_ID"])
# Work with your data
ndf.loc[ndf['Status'] == 'Todo', 'Status'] = 'In Progress'
# Save changes back to Notion (concurrent updates)
await async_n2p.sync_to_notion(ndf)
Usage
Choosing Between Sync and Async
Use the synchronous client (Notion2PandasClient) when:
- Working in Jupyter notebooks or simple scripts
- You prefer straightforward, blocking code
Use the asynchronous client (AsyncNotion2PandasClient) when:
- You need concurrent operations for better performance
- Working with large databases or multiple data sources
- Your application is already async
Basic Usage (Sync)
from notion2pandas import Notion2PandasClient
# Create client
n2p = Notion2PandasClient(auth=os.environ["NOTION_TOKEN"])
# Get database as NotionDataFrame
ndf = n2p.get_dataframe(os.environ["DATABASE_ID"])
# Work with your data
ndf.loc[ndf['Status'] == 'Todo', 'Priority'] = 'High'
# Sync changes back to Notion
n2p.sync_to_notion(ndf)
Basic Usage (Async)
from notion2pandas import AsyncNotion2PandasClient
# Create async client
async_n2p = AsyncNotion2PandasClient(auth=os.environ["NOTION_TOKEN"])
# Get database as NotionDataFrame (with concurrent page fetching)
ndf = await async_n2p.get_dataframe(os.environ["DATABASE_ID"])
# Work with your data
ndf.loc[ndf['Status'] == 'Todo', 'Priority'] = 'High'
# Sync changes back to Notion (concurrent updates)
await async_n2p.sync_to_notion(ndf)
Configuring Concurrent Requests (Async Only)
Control the number of concurrent API requests to balance speed and rate limits:
# Conservative (safer for rate limits)
async_n2p = AsyncNotion2PandasClient(
auth=os.environ["NOTION_TOKEN"],
max_concurrent_requests=5
)
# Aggressive (faster, but might hit rate limits)
async_n2p = AsyncNotion2PandasClient(
auth=os.environ["NOTION_TOKEN"],
max_concurrent_requests=20
)
# Default is 10 concurrent requests
Working with Filters and Sorts
Sync
filter_params = {
"filter": {
"property": "Status",
"select": {
"equals": "Published"
}
},
"sorts": [
{
"property": "Created",
"direction": "descending"
}
]
}
ndf = n2p.get_dataframe(
database_id=os.environ["DATABASE_ID"],
filter_params=filter_params
)
Async
filter_params = {
"filter": {
"property": "Status",
"select": {
"equals": "Published"
}
}
}
ndf = await async_n2p.get_dataframe(
database_id=os.environ["DATABASE_ID"],
filter_params=filter_params
)
Filtering by View
You can also fetch pages using the filters and sorts already configured in a Notion view, without replicating them in code:
# Sync
ndf = n2p.get_dataframe(
database_id=os.environ["DATABASE_ID"],
view_id=os.environ["VIEW_ID"]
)
# Async
ndf = await async_n2p.get_dataframe(
database_id=os.environ["DATABASE_ID"],
view_id=os.environ["VIEW_ID"]
)
⚠️ Performance warning: the Notion Views API currently returns only page stubs, requiring one additional API request per page. This makes view-based fetching significantly slower than standard
filter_params. Avoid for large datasets.
Filtering Columns (filter_properties)
To reduce payload size and improve performance, you can limit which columns are returned by the Notion API:
# Sync
ndf = n2p.get_dataframe(
database_id=os.environ["DATABASE_ID"],
filter_properties=["Name", "Status"]
)
# Async
ndf = await async_n2p.get_dataframe(
database_id=os.environ["DATABASE_ID"],
filter_properties=["Name", "Status"]
)
Accepts property names or property IDs. Particularly effective for databases with many or
complex properties (rollups, relations, formulas). Can be combined with filter_params:
ndf = n2p.get_dataframe(
database_id=os.environ["DATABASE_ID"],
filter_params=filter_params,
filter_properties=["Name", "Status"]
)
ℹ️
filter_propertiesis ignored when usingview_id.
NotionDataFrame:
NotionDataFrame extends pandas.DataFrame with Notion-specific features:
Key Features
- page_id as index: Direct access to Notion pages
- Built-in metadata:
database_id,data_source_idstored in the DataFrame - Change tracking: Only modified rows are synced to Notion
Example
# Get data
ndf = n2p.get_dataframe(database_id)
# Check metadata
print(ndf.database_id) # 'db_xyz789...'
print(ndf.data_source_id) # 'ds_abc123...'
# Access by page_id (the index)
page_id = ndf.index[0]
ndf.loc[page_id, 'Status'] = 'Done'
# See what changed
changed = ndf.get_changed_rows()
print(f"Changed {len(changed)} rows")
# Add new page
ndf.add_page({
"Name": "New Task",
"Status": "Todo",
"Priority": "High"
})
# Sync only changes
n2p.sync_to_notion(ndf)
NotionDataFrame Methods
get_changed_rows()- Get all modified rowsget_new_rows()- Get rows without page_id (to be created)add_page(data_dict, template=None, timezone=None)- Add a new row with optional template supportinfo_extended()- Detailed info including Notion metadatato_pandas()- Convert to regular DataFrame (loses metadata)
Working with Data Sources (API 2025-09-03)
Starting with Notion API version 2025-09-03, databases can contain multiple data sources. Notion2Pandas fully supports this feature!
Understanding Data Sources
Each Notion database contains one or more data sources. When you don't specify a data source, Notion2Pandas automatically uses the first data source in the database.
Getting Data Source Information
Sync
# Get list of all data sources in a database
data_sources = n2p.get_data_source_ids(database_id)
# Returns: [{'id': 'ds_abc123...', 'name': 'Main Tasks'},
# {'id': 'ds_def456...', 'name': 'Archive'}]
Async
# Get list of all data sources in a database
data_sources = await async_n2p.get_data_source_ids(database_id)
Working with Specific Data Sources
Sync
# Get a specific data source
ndf = n2p.get_dataframe(
database_id=os.environ["DATABASE_ID"],
data_source_id="your_data_source_id"
)
# Sync back to the same data source
n2p.sync_to_notion(ndf) # data_source_id is stored in ndf
Async
# Get a specific data source
ndf = await async_n2p.get_dataframe(
database_id=os.environ["DATABASE_ID"],
data_source_id="your_data_source_id"
)
# Sync back to the same data source
await async_n2p.sync_to_notion(ndf)
Get All Data Sources
Sync
# Get all data sources from a database
all_ndfs = n2p.get_dataframes(database_id)
# Access individual data sources
for ds_id, ndf in all_ndfs.items():
print(f"Data Source: {ds_id}, Shape: {ndf.shape}")
# Work with each NotionDataFrame
Async (Concurrent Processing!)
# Get all data sources concurrently
all_ndfs = await async_n2p.get_dataframes(database_id)
# All data sources were fetched in parallel!
for ds_id, ndf in all_ndfs.items():
print(f"Data Source: {ds_id}, Shape: {ndf.shape}")
Backward Compatibility
All existing code continues to work! If you don't specify a data_source_id, Notion2Pandas
automatically:
- Retrieves all data sources for the database
- Selects the first one
- Logs which data source is being used
Adding and Removing Rows
Adding Rows
Use the add_page() method to add new rows:
Basic Usage (Sync)
# Add a new page/row
ndf.add_page({
"Name": "New Task",
"Status": "Todo",
"Priority": "High",
"Due Date": "2024-12-31"
})
# Sync to create the page in Notion
n2p.sync_to_notion(ndf)
Basic Usage (Async)
# Add a new page/row
ndf.add_page({
"Name": "New Task",
"Status": "Todo"
})
# Sync to create the page in Notion
await async_n2p.sync_to_notion(ndf)
Adding Pages with Templates
You can create pages using Notion templates to automatically populate content and structure:
Using the Default Template
# Create a page using the database's default template
ndf.add_page(
{"Name": "Q4 Report", "Status": "Draft"},
template='default'
)
# Sync to Notion (works with both sync and async)
n2p.sync_to_notion(ndf)
# or
await async_n2p.sync_to_notion(ndf)
# The page will be created with all blocks from the default template
Using a Specific Template
# Create a page using a specific template by ID
ndf.add_page(
{"Name": "Meeting Notes", "Type": "Meeting"},
template='your_template_id'
)
# Optional: specify timezone for template application
ndf.add_page(
{"Name": "Project Plan", "Status": "Planning"},
template='your_template_id',
timezone='Europe/Rome'
)
# Sync to Notion
n2p.sync_to_notion(ndf)
Important Notes:
- Templates are applied asynchronously by Notion. The page is created immediately, but template content appears within a few seconds.
- Works with both sync and async clients - async version still processes multiple page creations concurrently.
For more information, see the official Notion documentation.
Removing Rows
Sync
# Delete specific pages by page_id
page_ids_to_delete = ['page_id_1', 'page_id_2', 'page_id_3']
n2p.delete_pages(ndf, page_ids_to_delete)
Async
# Delete specific pages by page_id
page_ids_to_delete = ['page_id_1', 'page_id_2', 'page_id_3']
await async_n2p.delete_pages(ndf, page_ids_to_delete)
This method:
- Deletes the pages from Notion
- Removes the rows from the NotionDataFrame
Utility Functions
Notion2Pandas extends the Client ( or AsyncClient) class from notion_client, so all notion_client features are available. Additionally, Notion2Pandas provides convenient wrapper functions:
Database and Data Source Methods
All methods are available in both sync and async versions. Async methods require await.
get_dataframe(database_id, **kwargs)- Get a NotionDataFrame from a database/data sourceget_dataframes(database_id, **kwargs)- Get all data sources as dict of NotionDataFramessync_to_notion(ndf)- Sync NotionDataFrame changes back to Notionget_data_source_ids(database_id)- Get all data sources in a databaseget_database_columns(database_id, data_source_id=None)- Get columns/properties
Page Methods
All methods are available in both sync and async versions. Async methods require await.
create_page(parent_id, properties=None, parent_type='data_source_id', template=None, timezone=None)
update_page(page_id, **kwargs)retrieve_page(page_id)delete_page(page_id)delete_pages(ndf, page_ids)- Delete multiple pages from Notion and NotionDataFrame
Block Methods
All methods are available in both sync and async versions. Async methods require await.
retrieve_block(block_id)retrieve_block_children_list(block_id)update_block(block_id, field, field_value_updated)
Read Write Functions
Notion2Pandas automatically parses Notion data types, but you can customize this behavior. Each Notion data type is associated with a tuple of two functions: one for reading and one for writing.
Example: Custom Date Parsing
Parse only the start date from date ranges:
def date_read_only_start(notion_property):
return notion_property.get('date').get('start') if notion_property.get(
'date') is not None else ''
def date_write_only_start(row_value):
return {'date': {'start': row_value} if row_value != '' else None}, True
# Works for both sync and async clients
n2p.set_lambdas('date', date_read_only_start, date_write_only_start)
# or
async_n2p.set_lambdas('date', date_read_only_start, date_write_only_start)
Function Signatures
Read and write functions can accept up to three arguments:
- Primary argument:
notion_property(read) orrow_value(write) - the data being processed column_name(optional): the column name, useful for column-specific logicn2p(optional): the Notion2PandasClient instance
Return values:
- Read functions: Return the value to insert into the DataFrame
- Write functions: Return a tuple
(value_for_notion, should_update_bool)
⚠️ Important: Arguments must always be in this
order: (notion_property/row_value, column_name, n2p)
Example: Column-Specific Logic
Handle different columns differently:
def relation_read(notion_property: dict, column_name: str) -> list:
relations = notion_property.get('relation', [])
relation_ids = [relation.get('id') for relation in relations]
# Special handling for single-relation columns
if column_name == 'Primary Project':
return relation_ids[0] if relation_ids else ''
# Return list for multi-relation columns
return relation_ids
def relation_write(row_value, column_name: str):
if row_value == '' or row_value == []:
return {"relation": []}, True
# Single relation
if column_name == 'Primary Project':
return {"relation": [{"id": row_value}]}, True
# Multi relation
if isinstance(row_value, str):
return {"relation": [{"id": row_value}]}, True
relation_ids = [{"id": rel_id} for rel_id in row_value]
return {"relation": relation_ids}, True
n2p.set_lambdas('relation', relation_read, relation_write)
Rich Text and Title Handling
Notion2Pandas preserves formatting and mentions in rich_text and title fields using
Markdown-like syntax:
- Bold:
**text** - Italic:
*text* - Underline:
<u>text</u> - Strikethrough:
~~text~~ - Code:
<code>text</code> - Color:
<span style="color:{color}">text</span> - Links:
[text](url) - Equations:
$expression$ - Mentions:
- Users:
<notion-user id="{user_id}" name="{name}" /> - Pages:
<notion-page id="{page_id}" title="{title}" href="{url}" />
- Users:
This allows you to edit formatted text in DataFrames while preserving all formatting when writing back to Notion.
💡 Tip: To implement custom parsing, start with the original functions from n2p_read_write.py and modify them.
You can work with these directly as lists:
# Add a tag
tags = ndf.loc[page_id, 'Tags']
tags.append('Machine Learning')
ndf.loc[page_id, 'Tags'] = tags
# Filter rows with specific tag
python_tasks = ndf[ndf['Tags'].apply(lambda x: 'Python' in x if isinstance(x, list) else False)]
Supported Data Types
| Notion Data Type | Function Key | v2.0 Return Type |
|---|---|---|
| Title | title | str |
| Rich Text | rich_text | str |
| Checkbox | checkbox | bool |
| Number | number | int/float |
| Date | date | str (ISO) |
| Date Range | date_range | dict |
| Select | select | str |
| Multi Select | multi_select | list[str] |
| Status | status | str |
| str | ||
| People | people | list[str] |
| Phone Number | phone_number | str |
| URL | url | str |
| Relation | relation | list[str] |
| Rollup | rollup | varies |
| Files | files | list[str] |
| Formula | formula | varies |
| String | string | str |
| Unique ID | unique_id | str |
| Button | button | None |
| Created By | created_by | str |
| Created Time | created_time | str (ISO) |
| Last Edited By | last_edited_by | str |
| Last Edited Time | last_edited_time | str (ISO) |
| Place | place | str |
Adding Page Data to the DataFrame
Sometimes you need data from the Notion page itself (not just database properties). You can add custom columns during DataFrame creation:
Sync Example
from notion2pandas import Notion2PandasClient
def get_cover_page(notion_page):
"""Extract the cover image URL from a Notion page"""
cover_obj = notion_page.get('cover')
if cover_obj is None:
return ''
cover_type = cover_obj.get('type')
if cover_type == 'external':
return cover_obj.get('external').get('url')
if cover_type == 'file':
return cover_obj.get('file').get('url')
return ''
def get_icon_page(notion_page):
"""Extract the icon from a Notion page"""
icon_obj = notion_page.get('icon')
if icon_obj is None:
return ''
icon_type = icon_obj.get('type')
if icon_type == 'external':
return icon_obj.get('external').get('url')
if icon_type == 'file':
return icon_obj.get('file').get('url')
if icon_type == 'emoji':
return icon_obj.get('emoji')
return ''
# Define custom columns
custom_page_prop = {
'icon': get_icon_page,
'cover': get_cover_page
}
# Create NotionDataFrame with custom columns
n2p = Notion2PandasClient(auth='token')
ndf = n2p.get_dataframe(
'database_id',
columns_from_page=custom_page_prop
)
Async Example
from notion2pandas import AsyncNotion2PandasClient
# Use the same custom functions as above
# Define custom columns
custom_page_prop = {
'icon': get_icon_page,
'cover': get_cover_page
}
# Create NotionDataFrame with custom columns (processes pages concurrently)
async_n2p = AsyncNotion2PandasClient(auth='token')
ndf = await async_n2p.get_dataframe(
'database_id',
columns_from_page=custom_page_prop
)
Important Notes
⚠️ Performance Warning: Using columns_from_page or columns_from_blocks results in:
- One API call per row for
columns_from_page - One API call per row for
columns_from_blocks - Using both means two API calls per row
💡 Async Advantage: The async client processes these calls concurrently, significantly reducing total execution time for large databases.
🔒 Read-Only: Custom columns are read-only. Modifying their values in the NotionDataFrame will not update Notion. Use the appropriate Notion API methods to update this data.
Notion Executor
The _notion_executor method handles all Notion API calls with automatic retry logic for:
- Network issues
- Rate limits
- Internal server errors
- Other transient failures
Configuration (Sync)
n2p = Notion2PandasClient(
auth=token,
secondsToRetry=20, # Wait 20 seconds between retries
maxAttemptsExecutioner=10 # Try up to 10 times
)
Configuration (Async)
async_n2p = AsyncNotion2PandasClient(
auth=token,
secondsToRetry=20, # Wait 20 seconds between retries
maxAttemptsExecutioner=10, # Try up to 10 times
max_concurrent_requests=10 # Async-specific: concurrent requests limit
)
Default values:
secondsToRetry: 30 secondsmaxAttemptsExecutioner: 3 attemptsmax_concurrent_requests: 10 (async only)
Logging
Both Notion2PandasClient and AsyncNotion2PandasClient use the built-in logger
from NotionClient to provide helpful debug and info messages during execution.
Option 1: Set Log Level (Simple)
import logging
from notion2pandas import Notion2PandasClient, AsyncNotion2PandasClient
# Sync
n2p = Notion2PandasClient(auth="your_token", log_level=logging.DEBUG)
# Async
async_n2p = AsyncNotion2PandasClient(auth="your_token", log_level=logging.DEBUG)
Option 2: Custom Logger (Advanced)
For full control over logging behavior:
import logging
from notion2pandas import Notion2PandasClient
# Create a custom logger
logger = logging.getLogger("notion2pandas")
logger.setLevel(logging.DEBUG)
# Create handler (e.g., output to stdout)
handler = logging.StreamHandler()
# Define custom format
formatter = logging.Formatter("[%(levelname)s] %(asctime)s - %(message)s")
handler.setFormatter(formatter)
# Add handler to logger
logger.addHandler(handler)
# Pass the logger to the client (works for both sync and async)
n2p = Notion2PandasClient(auth="your_token", logger=logger)
Note: If both logger and log_level are provided, the custom logger takes precedence.
Migrating from v1.x
Version 2.0 introduces several improvements and breaking changes. If you're upgrading from v1.x:
Quick Migration Summary
| v1.x | v2.0 |
|---|---|
from_notion_DB_to_dataframe() |
get_dataframe() |
update_notion_DB_from_dataframe() |
sync_to_notion() |
from_notion_database_to_dataframes() |
get_dataframes() |
delete_rows_and_pages() |
delete_pages() |
Returns pd.DataFrame |
Returns NotionDataFrame |
PageID column |
page_id index |
| Manual row appending | ndf.add_page() |
Full Migration Guide
📖 Complete migration guide with examples: MIGRATION-GUIDE.md
📚 v1.x documentation: README-v1.md
All v1.x methods still work with deprecation warnings - you have time to migrate!
Roadmap
Planned features for upcoming releases:
- Managing the 2700 API calls / 15 minutes rate limit
Changelog
View the complete version history on the changelog page.
Support
Notion2Pandas is an open-source project. Contributions are welcome!
- Report Issues: Found a bug? Open an issue
- Propose Changes: Have an improvement? Submit a merge request
- Fork the Project: Disagree with the direction? You're free to fork with our blessing!
All proposals will be evaluated and responded to.
License
This project is open-source and available under the MIT License.
Project details
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