Package to read data from Apple Numbers spreadsheets
Project description
numbers-parser
numbers-parser
is a Python module for parsing Apple Numbers
.numbers
files. It supports Numbers files generated by Numbers version 10.3, and up with the latest tested version being 12.1
(current as of June 2022).
It supports and is tested against Python versions from 3.8 onwards. It is not compatible with earlier versions of Python.
Currently supported features of Numbers files are:
- Multiple sheets per document
- Multiple tables per sheet
- Text, numeric, date, currency, duration, percentage cell types
Formulas rely on Numbers storing current values which should usually be the case. Formulas themselves rather than the computed values can optionally be extracted. Styles are not supported.
As of version 3.0, numbers-parser
has limited support for creating Numbers files.
Installation
python3 -m pip install numbers-parser
A pre-requisite for this package is python-snappy which will be installed by Python automatically, but python-snappy also requires that the binary libraries for snappy compression are present. The most straightforward way to achieve this is to use Homebrew and source Python from Homebrew rather than from macOS:
brew install snappy python3
python3 -m pip install numbers-parser
On Apple Silicon, the default installation of the protobuf package that is installed by PIP is pure-python rather than native code. Processing speed of Numbers spreadsheets can be greatly improved by installing C++ support as described in thie README in Protobuf updates
Usage
Reading documents:
from numbers_parser import Document
doc = Document("my-spreasdsheet.numbers")
sheets = doc.sheets
tables = sheets[0].tables
rows = tables[0].rows()
Referring to sheets and tables
Both sheets and names can be accessed from lists of these objects using an integer index (list
syntax) and using the name
of the sheet/table (dict
syntax):
# list access method
sheet_1 = doc.sheets[0]
print("Opened sheet", sheet_1.name)
# dict access method
table_1 = sheets["Table 1"]
print("Opened table", table_1.name)
As of version 3.0, the Document.sheets()
and Sheet.tables()
methods are deprecated and will issue a DeprecationWarning
if used. Instead of these functions, you should use the properties as demonstrated above. The legacy methods will be removed in a future version of numbers-parser
.
Accessing data
Table
objects have a rows
method which contains a nested list with an entry for each row of the table. Each row is
itself a list of the column values. Empty cells in Numbers are returned as None
values.
data = sheets["Table 1"].rows()
print("Cell A1 contains", data[0][0])
print("Cell C2 contains", data[2][1])
Cell references
In addition to extracting all data at once, individual cells can be referred to as methods
doc = Document("my-spreasdsheet.numbers")
sheets = doc.sheets
tables = sheets["Sheet 1"].tables
table = tables["Table 1"]
# row, column syntax
print("Cell A1 contains", table.cell(0, 0))
# Excel/Numbers-style cell references
print("Cell C2 contains", table.cell("C2"))
Merged cells
When extracting data using data()
merged cells are ignored since only text values
are returned. The cell()
method of Table
objects returns a Cell
type
object which is typed by the type of cell in the Numbers table. MergeCell
objects
indicates cells removed in a merge.
doc = Document("my-spreasdsheet.numbers")
sheets = doc.sheets
tables = sheets["Sheet 1"].tables
table = tables["Table 1"]
cell = table.cell("A1")
print(cell.merge_range)
print(f"Cell A1 merge size is {cell.size[0]},{cell.size[1]})
Row and column iterators
Tables have iterators for row-wise and column-wise iteration with each iterator returning a list of the cells in that row or column
for row in table.iter_rows(min_row=2, max_row=7, values_only=True):
sum += row
for col in table.iter_cole(min_row=2, max_row=7):
sum += col.value
Pandas
Since the return value of data()
is a list of lists, you can pass this directly to pandas. Assuming you have a Numbers table with a single header which contains the names of the pandas series you want to create you can construct a pandas dataframe using:
import pandas as pd
doc = Document("simple.numbers")
sheets = doc.sheets
tables = sheets[0].tables
data = tables[0].rows(values_only=True)
df = pd.DataFrame(data[1:], columns=data[0])
Bullets and lists
Cells that contain bulleted or numbered lists can be identified by the is_bulleted
property. Data from such cells is returned using the value
property as with other cells, but can additionally extracted using the bullets
property. bullets
returns a list of the paragraphs in the cell without the bullet or numbering character. Newlines are not included when bullet lists are extracted using bullets
.
doc = Document("bullets.numbers")
sheets = doc.sheets
tables = sheets[0].tables
table = tables[0]
if not table.cell(0, 1).is_bulleted:
print(table.cell(0, 1).value)
else:
bullets = ["* " + s for s in table.cell(0, 1).bullets]
print("\n".join(bullets))
Bulleted and numbered data can also be extracted with the bullet or number characters present in the text for each line in the cell in the same way as above but using the formatted_bullets
property. A single space is inserted between the bullet character and the text string and in the case of bullets, this will be the Unicode character seen in Numbers, for example "• some text"
.
Writing Numbers files
This is considered experimental and has a number of limitations. You are highly recommened not to overwrite working Numbers files and instead save data to a new file.
Limitations
Currently only documents with single table in single sheet are supported. Most cell formats should work with the expception of MergedCell
and BulletedTextCell
. The following features may be introduced in the future:
- bullets in text cells (
BulletedTextCell
) - multiple tables per sheet
- multiple sheets for spreadsheet document
During the same process, cell widths are reset and cell formats are removed from the saved file.
Editing cells
numbers-parser
will automatically empty rows and columns for any cell references that out of range of the current table. The write
method accepts the same cell numbering notation as cell
plus an additional argument representing the new cell value. The type of the new value will be used to determine the cell type.
doc = Document("my-spreadsheet.numbers")
sheets = doc.sheets
tables = sheets[0].tables
table = tables[0]
table.write(1, 1, "This is new text")
table.write("B7", datetime(2020, 12, 25))
doc.save("my-edited-spreadsheet.numbers")
Sheet names and table names can be changed by assigning a new value to the name
of each:
sheets[0].name = "My new sheet"
tables[0].name = "Edited table"
Numbers File Formats
Numbers uses a proprietary, compressed binary format to store its tables.
This format is comprised of a zip file containing images, as well as
Snappy-compressed
Protobuf .iwa
files containing
metadata, text, and all other definitions used in the spreadsheet.
Protobuf updates
As numbers-parser
includes private Protobuf definitions extracted from a copy of Numbers, new versions of Numbers will inevitably create .numbers
files that cannot be read by numbers-parser
. As new versions of Numbers are released, running make bootstrap
will perform all the steps necessary to recreate the protobuf files used numbers-parser
to read Numbers spreadsheets.
On Apple Silicon Macs, the default protobuf package installation does not include the C++ optimised version which is required by the bootstrapping scripts to extract protobufs. You will receive the following error during build if this is the case:
This script requires the Protobuf installation to use the C++ implementation. Please reinstall Protobuf with C++ support.
To include the C++ support, download a released version of Google protobuf from github. Build instructions are in the src/README.md
in the distribution but for macOS with Homebrew the two steps are, firstly to install the native protobuf libraries, which must be on your LD_LIBRARY_PATH
:
brew install autoconf automake libtool
./autogen.sh
./configure --prefix=/usr/local
make check -j`sysctl -n hw.ncpu`
sudo make install
And then to install the Python libraries with C++ support. If you already have protobuf install via Homebrew, you will need to brew unlink
the installation.
cd python
python3 setup.py build --cpp_implementation
python3 setup.py test --cpp_implementation
python3 setup.py install --cpp_implementation
This will install protobuf in a folder above the source installation which can then be used by make bootstrap
in the numbers-parser
source tree.
Credits
numbers-parser
was built by Jon Connell but relies heavily on from prior work by Peter Sobot to read the IWA format archives used by Apple's iWork family of applications, and to regenerate the mapping files required for Python. Both modules are derived from previous work by Sean Patrick O'Brien.
Decoding the data structures inside Numbers files was helped greatly by Stingray-Reader by Steven Lott.
Formula tests were adapted from JavaScript tests used in fast-formula-parser.
Decimal128 conversion to and from byte storage was adapted from work done by the SheetsJS project. SheetJS also helped greatly with some of the steps required to successfully save a Numbers spreadsheet.
License
All code in this repository is licensed under the MIT License
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