bokeh.models.sources¶
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class
AjaxDataSource(*args, **kw)[source]¶ Bases:
bokeh.models.sources.RemoteSourceA data source that can populate columns by making Ajax calls to REST enpoints.
The
AjaxDataSourcecan be especially useful if you want to make a standalone document (i.e. not backed by the Bokeh server) that can still dynamically update using an existing REST API.The response from the REST API should match the
.dataproeprty of a standardColumnDataSource, i.e. a JSON dict that maps names to arrays of values:{ 'x' : [1, 2, 3, ...], 'y' : [9, 3, 2, ...] }
A full example can be seen at examples/howto/ajax_source.py
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http_headers¶ property type:
Dict(String,String)Specify HTTP headers to set for the Ajax request.
Example:
ajax_source.headers = { 'x-my-custom-header': 'some value' }
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if_modified¶ property type:
BoolWhether to include an
If-Modified-Sinceheader in Ajax requests to the server. If this header is supported by the server, then only new data since the last request will be returned.
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max_size¶ property type:
IntMaximum size of the data columns. If a new fetch would result in columns larger than
max_size, then earlier data is dropped to make room.
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class
CDSView(**kwargs)[source]¶ Bases:
bokeh.model.ModelA view into a ColumnDataSource that represents a row-wise subset.
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source¶ property type:
Instance(ColumnarDataSource)The ColumnDataSource associated with this view. Used to determine the length of the columns.
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class
ColumnDataSource(*args, **kw)[source]¶ Bases:
bokeh.models.sources.ColumnarDataSourceMaps names of columns to sequences or arrays.
The
ColumnDataSourceis a fundamental data structure of Bokeh. Most plots, data tables, etc. will be driven by aColumnDataSource.If the ColumnDataSource initializer is called with a single argument that can be any of the following:
A Python
dictthat maps string names to sequences of values, e.g. lists, arrays, etc.data = {'x': [1,2,3,4], 'y': np.ndarray([10.0, 20.0, 30.0, 40.0])} source = ColumnDataSource(data)
A Pandas
DataFrameobjectsource = ColumnDataSource(df)
In this case the CDS will have columns corresponding to the columns of the
DataFrame. If theDataFramehas a named index column, then CDS will also have a column with this name. However, if the index name (or any subname of aMultiIndex) isNone, then the CDS will have a column generically namedindexfor the index.A Pandas
GroupByobjectgroup = df.groupby(('colA', 'ColB'))
In this case the CDS will have columns corresponding to the result of calling
group.describe(). Thedescribemethod generates columns for statistical measures such asmeanandcountfor all the non-grouped orginal columns. The CDS columns are formed by joining original column names with the computed measure. For example, if aDataFramehas columns'year'and'mpg'. Then passingdf.groupby('year')to a CDS will result in columns such as'mpg_mean'If the
GroupBy.describeresult has a named index column, then CDS will also have a column with this name. However, if the index name (or any subname of aMultiIndex) isNone, then the CDS will have a column generically namedindexfor the index.Note this capability to adapt
GroupByobjects may only work with Pandas>=0.20.0.
Note
There is an implicit assumption that all the columns in a given
ColumnDataSourceall have the same length at all times. For this reason, it is usually preferable to update the.dataproperty of a data source “all at once”.-
data¶ property type:
ColumnData(String,Seq(Any) )Mapping of column names to sequences of data. The data can be, e.g, Python lists or tuples, NumPy arrays, etc.
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__init__(*args, **kw)[source]¶ If called with a single argument that is a dict or pandas.DataFrame, treat that implicitly as the “data” attribute.
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add(data, name=None)[source]¶ Appends a new column of data to the data source.
Parameters: - data (seq) – new data to add
- name (str, optional) – column name to use. If not supplied, generate a name of the form “Series ####”
Returns: the column name used
Return type:
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classmethod
from_df(data)[source]¶ Create a
dictof columns from a Pandas DataFrame, suitable for creating a ColumnDataSource.Parameters: data (DataFrame) – data to convert Returns: dict[str, np.array]
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classmethod
from_groupby(data)[source]¶ Create a
dictof columns from a Pandas GroupBy, suitable for creating a ColumnDataSource.The data generated is the result of running
describeon the group.Parameters: data (Groupby) – data to convert Returns: dict[str, np.array]
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patch(patches, setter=None)[source]¶ Efficiently update data source columns at specific locations
If it is only necessary to update a small subset of data in a ColumnDataSource, this method can be used to efficiently update only the subset, instead of requiring the entire data set to be sent.
This method should be passed a dictionary that maps column names to lists of tuples that describe a patch change to apply. To replace individual items in columns entirely, the tuples should be of the form:
(index, new_value) # replace a single column value # or (slice, new_values) # replace several column values
Values at an index or slice will be replaced with the corresponding new values.
In the case of columns whose values are other arrays or lists, (e.g. image or patches glyphs), it is also possible to patch “subregions”. In this case the first item of the tuple should be a whose first element is the index of the array item in the CDS patch, and whose subsequent elements are integer indices or slices into the array item:
# replace the entire 10th column of the 2nd array: +----------------- index of item in column data source | | +--------- row subindex into array item | | | | +- column subindex into array item V V V ([2, slice(None), 10], new_values)
Imagining a list of 2d NumPy arrays, the patch above is roughly equivalent to:
data = [arr1, arr2, ...] # list of 2d arrays data[2][:, 10] = new_data
There are some limitations to the kinds of slices and data that can be accepted.
- Negative
start,stop, orstepvalues for slices will result in aValueError. - In a slice,
start > stopwill result in aValueError - When patching 1d or 2d subitems, the subitems must be NumPy arrays.
- New values must be supplied as a flattened one-dimensional array of the appropriate size.
Parameters: patches (dict[str, list[tuple]]) – lists of patches for each column Returns: None Raises: ValueErrorExample:
The following example shows how to patch entire column elements. In this case,
source = ColumnDataSource(data=dict(foo=[10, 20, 30], bar=[100, 200, 300])) patches = { 'foo' : [ (slice(2), [11, 12]) ], 'bar' : [ (0, 101), (2, 301) ], } source.patch(patches)
After this operation, the value of the
source.datawill be:dict(foo=[11, 22, 30], bar=[101, 200, 301])
For a more comprehensive complete example, see examples/howto/patch_app.py.
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remove(name)[source]¶ Remove a column of data.
Parameters: name (str) – name of the column to remove Returns: None Note
If the column name does not exist, a warning is issued.
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stream(new_data, rollover=None)[source]¶ Efficiently update data source columns with new append-only data.
In cases where it is necessary to update data columns in, this method can efficiently send only the new data, instead of requiring the entire data set to be re-sent.
Parameters: - new_data (dict[str, seq]) –
a mapping of column names to sequences of new data to append to each column.
All columns of the data source must be present in
new_data, with identical-length append data. - rollover (int, optional) – A maximum column size, above which data from the start of the column begins to be discarded. If None, then columns will continue to grow unbounded (default: None)
Returns: None
Raises: Example:
source = ColumnDataSource(data=dict(foo=[], bar=[])) # has new, identical-length updates for all columns in source new_data = { 'foo' : [10, 20], 'bar' : [100, 200], } source.stream(new_data)
- new_data (dict[str, seq]) –
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column_names¶ A list of the column names in this data source.
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class
ColumnarDataSource(**kwargs)[source]¶ Bases:
bokeh.models.sources.DataSourceA base class for data source types, which can be mapped onto a columnar format.
Note
This is an abstract base class used to help organize the hierarchy of Bokeh model types. It is not useful to instantiate on its own.
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selection_policy¶ property type:
Instance(SelectionPolicy)An instance of a SelectionPolicy that determines how selections are set.
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class
DataSource(**kwargs)[source]¶ Bases:
bokeh.model.ModelA base class for data source types.
Note
This is an abstract base class used to help organize the hierarchy of Bokeh model types. It is not useful to instantiate on its own.
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class
RemoteSource(*args, **kw)[source]¶ Bases:
bokeh.models.sources.ColumnDataSourceBase class for remote column data sources that can update from data URLs at prescribed time intervals.
Note
This base class is typically not useful to instantiate on its own.
Note
This is an abstract base class used to help organize the hierarchy of Bokeh model types. It is not useful to instantiate on its own.