THE scrapbook library records a notebook’s data values and generated visual content as "scraps". Recorded scraps can be read at a future time.
See the scrapbook documentation for more information on how to use scrapbook.
Notebook users may wish to record data produced during a notebook's execution. This recorded data, scraps, can be used at a later time or passed in a workflow to another notebook as input.
Namely, scrapbook lets you:
- persist data and visual content displays in a notebook as scraps
- recall any persisted scrap of data
- summarize collections of notebooks
This library's long term support target is Python 3.5+. It currently also supports Python 2.7 until Python 2 reaches end-of-life in 2020. After this date, Python 2 support will halt, and only 3.x versions will be maintained.
Install using pip
:
pip install nteract-scrapbook
For installing optional IO dependencies, you can specify individual store bundles,
like s3
or azure
:
pip install nteract-scrapbook[s3]
or use all
:
pip install nteract-scrapbook[all]
Scrapbook defines the following items:
- scraps: serializable data values and visualizations such as strings, lists of objects, pandas dataframes, charts, images, or data references.
- notebook: a wrapped nbformat notebook object with extra methods for interacting with scraps.
- scrapbook: a collection of notebooks with an interface for asking questions of the collection.
- encoders: a registered translator of data to/from notebook storage formats.
The scrap
model houses a few key attributes in a tuple, including:
- name: The name of the scrap
- data: Any data captured by the scrapbook api call
- encoder: The name of the encoder used to encode/decode data to/from the notebook
- display: Any display data used by IPython to display visual content
Scrapbook adds a few basic api commands which enable saving and retrieving data including:
glue
to persist scraps with or without display outputread_notebook
reads one notebookscraps
provides a searchable dictionary of all scraps by namereglue
which copies a scrap from another notebook to the current notebookread_notebooks
reads many notebooks from a given pathscraps_report
displays a report about collected scrapspapermill_dataframe
andpapermill_metrics
for backward compatibility for two deprecated papermill features
The following sections provide more detail on these api commands.
Records a scrap
(data or display value) in the given notebook cell.
The scrap
(recorded value) can be retrieved during later inspection of the
output notebook.
"""glue example for recording data values"""
import scrapbook as sb
sb.glue("hello", "world")
sb.glue("number", 123)
sb.glue("some_list", [1, 3, 5])
sb.glue("some_dict", {"a": 1, "b": 2})
sb.glue("non_json", df, 'arrow')
The scrapbook library can be used later to recover scraps
from the output
notebook:
# read a notebook and get previously recorded scraps
nb = sb.read_notebook('notebook.ipynb')
nb.scraps
scrapbook will imply the storage format by the value type of any registered
data encoders. Alternatively, the implied encoding format can be overwritten by
setting the encoder
argument to the registered name (e.g. "json"
) of a
particular encoder.
This data is persisted by generating a display output with a special media type identifying the content encoding format and data. These outputs are not always visible in notebook rendering but still exist in the document. Scrapbook can then rehydrate the data associated with the notebook in the future by reading these cell outputs.
To display a named scrap with visible display outputs, you need to indicate that the scrap is directly renderable.
This can be done by toggling the display
argument.
# record a UI message along with the input string
sb.glue("hello", "Hello World", display=True)
The call will save the data and the display attributes of the Scrap object,
making it visible as well as encoding the original data. This leans on the
IPython.core.formatters.format_display_data
function to translate the data
object into a display and metadata dict for the notebook kernel to parse.
Another pattern that can be used is to specify that only the display data
should be saved, and not the original object. This is achieved by setting
the encoder to be display
.
# record an image without the original input object
sb.glue("sharable_png",
IPython.display.Image(filename="sharable.png"),
encoder='display'
)
Finally the media types that are generated can be controlled by passing a list, tuple, or dict object as the display argument.
sb.glue("media_as_text_only",
media_obj,
encoder='display',
display=('text/plain',) # This passes [text/plain] to format_display_data's include argument
)
sb.glue("media_without_text",
media_obj,
encoder='display',
display={'exclude': 'text/plain'} # forward to format_display_data's kwargs
)
Like data scraps, these can be retrieved at a later time be accessing the scrap's
display
attribute. Though usually one will just use Notebook's reglue
method
(described below).
Reads a Notebook object loaded from the location specified at path
.
You've already seen how this function is used in the above api call examples,
but essentially this provides a thin wrapper over an nbformat
's NotebookNode
with the ability to extract scrapbook scraps.
nb = sb.read_notebook('notebook.ipynb')
This Notebook object adheres to the nbformat's json schema, allowing for access to its required fields.
nb.cells # The cells from the notebook
nb.metadata
nb.nbformat
nb.nbformat_minor
There's a few additional methods provided, most of which are outlined in more detail below:
nb.scraps
nb.reglue
The abstraction also makes saved content available as a dataframe referencing each key and source. More of these methods will be made available in later versions.
# Produces a data frame with ["name", "data", "encoder", "display", "filename"] as columns
nb.scrap_dataframe # Warning: This might be a large object if data or display is large
The Notebook object also has a few legacy functions for backwards compatibility with papermill's Notebook object model. As a result, it can be used to read papermill execution statistics as well as scrapbook abstractions:
nb.cell_timing # List of cell execution timings in cell order
nb.execution_counts # List of cell execution counts in cell order
nb.papermill_metrics # Dataframe of cell execution counts and times
nb.papermill_record_dataframe # Dataframe of notebook records (scraps with only data)
nb.parameter_dataframe # Dataframe of notebook parameters
nb.papermill_dataframe # Dataframe of notebook parameters and cell scraps
The notebook reader relies on papermill's registered iorw to enable access to a variety of sources such as -- but not limited to -- S3, Azure, and Google Cloud.
The scraps
method allows for access to all of the scraps in a particular notebook.
nb = sb.read_notebook('notebook.ipynb')
nb.scraps # Prints a dict of all scraps by name
This object has a few additional methods as well for convenient conversion and execution.
nb.scraps.data_scraps # Filters to only scraps with `data` associated
nb.scraps.data_dict # Maps `data_scraps` to a `name` -> `data` dict
nb.scraps.display_scraps # Filters to only scraps with `display` associated
nb.scraps.display_dict # Maps `display_scraps` to a `name` -> `display` dict
nb.scraps.dataframe # Generates a dataframe with ["name", "data", "encoder", "display"] as columns
These methods allow for simple use-cases to not require digging through model abstractions.
Using reglue
one can take any scrap glue'd into one notebook and glue into the
current one.
nb = sb.read_notebook('notebook.ipynb')
nb.reglue("table_scrap") # This copies both data and displays
Any data or display information will be copied verbatim into the currently
executing notebook as though the user called glue
again on the original source.
It's also possible to rename the scrap in the process.
nb.reglue("table_scrap", "old_table_scrap")
And finally if one wishes to try to reglue without checking for existence the
raise_on_missing
can be set to just display a message on failure.
nb.reglue("maybe_missing", raise_on_missing=False)
# => "No scrap found with name 'maybe_missing' in this notebook"
Reads all notebooks located in a given path
into a Scrapbook object.
# create a scrapbook named `book`
book = sb.read_notebooks('path/to/notebook/collection/')
# get the underlying notebooks as a list
book.notebooks # Or `book.values`
The path reuses papermill's registered iorw
to list and read files form various sources, such that non-local urls can load data.
# create a scrapbook named `book`
book = sb.read_notebooks('s3://bucket/key/prefix/to/notebook/collection/')
The Scrapbook (book
in this example) can be used to recall all scraps across
the collection of notebooks:
book.notebook_scraps # Dict of shape `notebook` -> (`name` -> `scrap`)
book.scraps # merged dict of shape `name` -> `scrap`
The Scrapbook collection can be used to generate a scraps_report
on all the
scraps from the collection as a markdown structured output.
book.scraps_report()
This display can filter on scrap and notebook names, as well as enable or disable an overall header for the display.
book.scraps_report(
scrap_names=["scrap1", "scrap2"],
notebook_names=["result1"], # matches `/notebook/collections/result1.ipynb` pathed notebooks
header=False
)
By default the report will only populate with visual elements. To also report on data elements set include_data.
book.scraps_report(include_data=True)
Finally the scrapbook provides two backwards compatible features for deprecated
papermill
capabilities:
book.papermill_dataframe
book.papermill_metrics
Encoders are accessible by key names to Encoder objects registered
against the encoders.registry
object. To register new data encoders
simply call:
from encoder import registry as encoder_registry
# add encoder to the registry
encoder_registry.register("custom_encoder_name", MyCustomEncoder())
The encode class must implement two methods, encode
and decode
:
class MyCustomEncoder(object):
def encode(self, scrap):
# scrap.data is any type, usually specific to the encoder name
pass # Return a `Scrap` with `data` type one of [None, list, dict, *six.integer_types, *six.string_types]
def decode(self, scrap):
# scrap.data is one of [None, list, dict, *six.integer_types, *six.string_types]
pass # Return a `Scrap` with `data` type as any type, usually specific to the encoder name
This can read transform scraps into a json object representing their contents or location and load those strings back into the original data objects.
A basic string storage format that saves data as python strings.
sb.glue("hello", "world", "text")
sb.glue("foo_json", {"foo": "bar", "baz": 1}, "json")
Implementation Pending!
scrapbook provides a robust and flexible recording schema. This library replaces papermill's existing
record
functionality.
Documentation for papermill record
exists on ReadTheDocs.
In brief, the deprecated record
function:
pm.record(name, value)
: enables values to be saved
with the notebook [API documentation]
pm.record("hello", "world")
pm.record("number", 123)
pm.record("some_list", [1, 3, 5])
pm.record("some_dict", {"a": 1, "b": 2})
pm.read_notebook(notebook)
: pandas could be used later to recover recorded
values by reading the output notebook into a dataframe. For example:
nb = pm.read_notebook('notebook.ipynb')
nb.dataframe
Papermill's record
function was deprecated due to these limitations and challenges:
- The
record
function didn't follow papermill's pattern of linear execution of a notebook. It was awkward to describerecord
as an additional feature of papermill, and really felt like describing a second less developed library. - Recording / Reading required data translation to JSON for everything. This is a tedious, painful process for dataframes.
- Reading recorded values into a dataframe would result in unintuitive dataframe shapes.
- Less modularity and flexiblity than other papermill components where custom operators can be registered.
To overcome these limitations in Papermill, a decision was made to create Scrapbook.