bokeh.util¶
Provide a collection of general utilities useful for implementing Bokeh functionality.
bokeh.util.browser
¶
Utility functions for helping with operations involving browsers.
-
get_browser_controller
(browser=None)[source]¶ Return a browser controller.
Parameters: browser (str or None) – browser name, or
None
(default:None
) If passed the string'none'
, a dummy web browser controller is returnedOtherwise, use the value to select an appropriate controller using the
webbrowser
standard library module. In the value isNone
then a system default is used.Note
If the environment variable
BOKEH_BROWSER
is set, it will take precedence.Returns: a web browser controller Return type: controller
-
view
(location, browser=None, new='same', autoraise=True)[source]¶ Open a browser to view the specified location.
Parameters: - location (str) – Location to open If location does not begin with “http:” it is assumed to be a file path on the local filesystem.
- browser (str or None) – what browser to use (default: None)
If
None
, use the system default browser. - new (str) –
How to open the location. Valid values are:
'same'
- open in the current tab'tab'
- open a new tab in the current window'window'
- open in a new window - autoraise (bool) – Whether to automatically raise the location in a new browser window (default: True)
Returns: None
bokeh.util.callback_manager
¶
Provides PropertyCallbackManager
and EventCallbackManager
mixin classes for adding on_change
and on_event
callback
interfaces to classes.
-
class
EventCallbackManager
(*args, **kw)[source]¶ A mixin class to provide an interface for registering and triggering event callbacks on the Python side.
bokeh.util.compiler
¶
Provide functions and classes to help with various JS and CSS compilation.
-
exception
CompilationError
(error)[source]¶ A RuntimeError subclass for reporting JS compilation errors.
-
class
CoffeeScript
(code, file=None)[source]¶ An implementation for a Bokeh custom model in CoffeeSript.
Example
class MyExt(Model): __implementation__ = CoffeeScript(""" <CoffeeScript code> """)
Note that
CoffeeScript
is the default implementation language for custom model implementations. The following is equivalent to example above:class MyExt(Model): __implementation__ == """ <some coffeescript code> """
-
class
FromFile
(path)[source]¶ A custom model implementation read from a separate source file.
Parameters: path (str) – The path to the file containing the extension source code
-
class
Inline
(code, file=None)[source]¶ Base class for representing Bokeh custom model implementations that may be given as inline code in some language.
Parameters:
-
class
JavaScript
(code, file=None)[source]¶ An implementation for a Bokeh custom model in JavaSript
Example
class MyExt(Model): __implementation__ = Javacript(""" <Javactipt code> """)
-
class
TypeScript
(code, file=None)[source]¶ An implementation for a Bokeh custom model in TypeSript
Example
class MyExt(Model): __implementation__ = TypeScript(""" <TypeSctipt code> """)
-
calc_cache_key
()[source]¶ Generate a key to cache a custom extension implementation with.
There is no metadata other than the Model classes, so this is the only base to generate a cache key.
We build the model keys from the list of
model.full_name
. This is not ideal but possibly a better solution can be found found later.
-
exts
= ('.coffee', '.ts', '.js', '.css', '.less')¶ recognized extensions that can be compiled
bokeh.util.dependencies
¶
Utilities for checking dependencies
-
detect_phantomjs
(version='2.1')[source]¶ Detect if PhantomJS is avaiable in PATH, at a minimum version.
Parameters: version (str, optional) – Required minimum version for PhantomJS (mostly for testing) Returns: str, path to PhantomJS
-
import_optional
(mod_name)[source]¶ Attempt to import an optional dependency.
Silently returns None if the requested module is not available.
Parameters: mod_name (str) – name of the optional module to try to import Returns: imported module or None, if import fails
bokeh.util.deprecation
¶
bokeh.util.future
¶
Utilities for Py2/Py3 interop.
-
with_metaclass
(meta, *bases)[source]¶ Add metaclasses in both Python 2 and Python 3.
Function from jinja2/_compat.py. License: BSD.
Use it like this:
class BaseForm(object): pass class FormType(type): pass class Form(with_metaclass(FormType, BaseForm)): pass
This requires a bit of explanation: the basic idea is to make a dummy metaclass for one level of class instantiation that replaces itself with the actual metaclass. Because of internal type checks we also need to make sure that we downgrade the custom metaclass for one level to something closer to type (that’s why __call__ and __init__ comes back from type etc.).
This has the advantage over six.with_metaclass of not introducing dummy classes into the final MRO.
bokeh.util.logconfig
¶
Configure the logging system for Bokeh.
By default, logging is not configured, to allow users of Bokeh to have full
control over logging policy. However, it is useful to be able to enable
logging arbitrarily during when developing Bokeh. This can be accomplished
by setting the environment variable BOKEH_PY_LOG_LEVEL
. Valid values are,
in order of increasing severity:
debug
info
warn
error
fatal
none
The default logging level is none
.
bokeh.util.options
¶
Utilities for specifying, validating, and documenting configuration options.
-
class
Options
(kw=None)[source]¶ Leverage the Bokeh properties type system for specifying and validating configuration options.
Subclasses of
Options
specify a set of configuration options using standard Bokeh properties:class ConnectOpts(Options): host = String(default="127.0.0.1", help="a host value") port = Int(default=5590, help="a port value")
Then a
ConnectOpts
can be created by passing a dictionary containing keys and values corresponding to the configuration options, as well as any additional keys and values. The items corresponding to the properties onConnectOpts
will be *removed* from the dictionary. This can be useful for functions that accept their own set of config keyword arguments in addition to some set of Bokeh model properties.
bokeh.util.paths
¶
bokeh.util.platform
¶
Functions for testing what kind of Python or Python environment is in use.
bokeh.util.plot_utils
¶
bokeh.util.serialization
¶
Functions for helping with serialization and deserialization of Bokeh objects.
Certain NunPy array dtypes can be serialized to a binary format for performance and efficiency. The list of supported dtypes is:
np.float64
np.uint32
np.uint8
np.int32
np.int8
np.float32
np.int16
np.uint16
-
array_encoding_disabled
(array)[source]¶ Determine whether an array may be binary encoded.
The NumPy array dtypes that can be encoded are:
np.float64
np.uint32
np.uint8
np.int32
np.int8
np.float32
np.int16
np.uint16
Parameters: array (np.ndarray) – the array to check Returns: bool
-
convert_datetime_array
(array)[source]¶ Convert NumPy datetime arrays to arrays to milliseconds since epoch.
Parameters: array – (obj) A NumPy array of datetime to convert
If the value passed in is not a NumPy array, it will be returned as-is.
Returns: array
-
convert_datetime_type
(obj)[source]¶ Convert any recognized date, datetime or time delta value to floating point milliseconds
Date and Datetime values are converted to milliseconds since epoch.
TimeDeleta values are converted to absolute milliseconds.
- Arg:
- obj (object) : the object to convert
Returns: milliseconds Return type: float
-
decode_base64_dict
(data)[source]¶ Decode a base64 encoded array into a NumPy array.
Parameters: data (dict) – encoded array data to decode Data should have the format encoded by
encode_base64_dict()
.Returns: np.ndarray
-
encode_base64_dict
(array)[source]¶ Encode a NumPy array using base64:
The encoded format is a dict with the following structure:
{ '__ndarray__' : << base64 encoded array data >>, 'shape' : << array shape >>, 'dtype' : << dtype name >>, }
Parameters: array (np.ndarray) – an array to encode Returns: dict
-
encode_binary_dict
(array, buffers)[source]¶ Send a numpy array as an unencoded binary buffer
The encoded format is a dict with the following structure:
{ '__buffer__' : << an ID to locate the buffer >>, 'shape' : << array shape >>, 'dtype' : << dtype name >>, 'order' : << byte order at origin (little or big)>> }
Parameters: - array (np.ndarray) – an array to encode
- buffers (set) –
Set to add buffers to
This is an “out” parameter. The values it contains will be modified in-place.
Returns: dict
-
is_datetime_type
(obj)[source]¶ Whether an object is any date, datetime, or time delta type recognized by Bokeh.
- Arg:
- obj (object) : the object to test
Returns: True if obj
is a datetime typeReturn type: bool
-
make_id
()[source]¶ Return a new unique ID for a Bokeh object.
Normally this function will return UUIDs to use for identifying Bokeh objects. This is especally important for Bokeh objects stored on a Bokeh server. However, it is convenient to have more human-readable IDs during development, so this behavior can be overridden by setting the environment variable
BOKEH_SIMPLE_IDS=yes
.
-
serialize_array
(array, force_list=False, buffers=None)[source]¶ Transforms a NumPy array into serialized form.
Parameters: - array (np.ndarray) – the NumPy array to transform
- force_list (bool, optional) – whether to only output to standard lists This function can encode some dtypes using a binary encoding, but setting this argument to True will override that and cause only standard Python lists to be emitted. (default: False)
- buffers (set, optional) –
If binary buffers are desired, the buffers parameter may be provided, and any columns that may be sent as binary buffers will be added to the set. If None, then only base64 encodinfg will be used (default: None)
If force_list is True, then this value will be ignored, and no buffers will be generated.
This is an “out” parameter. The values it contains will be modified in-place.
Returns: list or dict
-
transform_array
(array, force_list=False, buffers=None)[source]¶ Transform a NumPy arrays into serialized format
Converts un-serializable dtypes and returns JSON serializable format
Parameters: - array (np.ndarray) – a NumPy array to be transformed
- force_list (bool, optional) – whether to only output to standard lists This function can encode some dtypes using a binary encoding, but setting this argument to True will override that and cause only standard Python lists to be emitted. (default: False)
- buffers (set, optional) –
If binary buffers are desired, the buffers parameter may be provided, and any columns that may be sent as binary buffers will be added to the set. If None, then only base64 encodinfg will be used (default: None)
If force_list is True, then this value will be ignored, and no buffers will be generated.
This is an “out” parameter. The values it contains will be modified in-place.
Returns: JSON
-
transform_array_to_list
(array)[source]¶ Transforms a NumPy array into a list of values
Parameters: array (np.nadarray) – the NumPy array series to transform Returns: list or dict
-
transform_column_source_data
(data, buffers=None, cols=None)[source]¶ Transform ColumnSourceData data to a serialized format
Parameters: - data (dict) – the mapping of names to data columns to transform
- buffers (set, optional) –
If binary buffers are desired, the buffers parameter may be provided, and any columns that may be sent as binary buffers will be added to the set. If None, then only base64 encodinfg will be used (default: None)
This is an “out” parameter. The values it contains will be modified in-place.
- cols (list[str], optional) – Optional list of subset of columns to transform. If None, all columns will be transformed (default: None)
Returns: JSON compatible dict
-
transform_series
(series, force_list=False, buffers=None)[source]¶ Transforms a Pandas series into serialized form
Parameters: - series (pd.Series) – the Pandas series to transform
- force_list (bool, optional) – whether to only output to standard lists This function can encode some dtypes using a binary encoding, but setting this argument to True will override that and cause only standard Python lists to be emitted. (default: False)
- buffers (set, optional) –
If binary buffers are desired, the buffers parameter may be provided, and any columns that may be sent as binary buffers will be added to the set. If None, then only base64 encodinfg will be used (default: None)
If force_list is True, then this value will be ignored, and no buffers will be generated.
This is an “out” parameter. The values it contains will be modified in-place.
Returns: list or dict
-
traverse_data
(obj, use_numpy=True, buffers=None)[source]¶ Recursively traverse an object until a flat list is found.
If NumPy is available, the flat list is converted to a numpy array and passed to transform_array() to handle
nan
,inf
, and-inf
.Otherwise, iterate through all items, converting non-JSON items
Parameters: - obj (list) – a list of values or lists
- use_numpy (bool, optional) – This argument is only useful for testing (default: True)
bokeh.util.session_id
¶
Utilities for generating and manipulating session IDs.
A session ID would typically be associated with each browser tab viewing an application or plot. Each session has its own state separate from any other sessions hosted by the server.
-
check_session_id_signature
(session_id, secret_key=None, signed=False)[source]¶ Check the signature of a session ID, returning True if it’s valid.
The server uses this function to check whether a session ID was generated with the correct secret key. If signed sessions are disabled, this function always returns True.
Parameters:
-
generate_secret_key
()[source]¶ Generate a new securely-generated secret key appropriate for SHA-256 HMAC signatures. This key could be used to sign Bokeh server session IDs for example.
-
generate_session_id
(secret_key=None, signed=False)[source]¶ Generate a random session ID.
Typically, each browser tab connected to a Bokeh application has its own session ID. In production deployments of a Bokeh app, session IDs should be random and unguessable - otherwise users of the app could interfere with one another.
If session IDs are signed with a secret key, the server can verify that the generator of the session ID was “authorized” (the generator had to know the secret key). This can be used to have a separate process, such as another web application, which generates new sessions on a Bokeh server. This other process may require users to log in before redirecting them to the Bokeh server with a valid session ID, for example.
Parameters:
bokeh.util.string
¶
Functions useful for string manipulations or encoding.
-
decode_utf8
(u)[source]¶ Decode a sequence of bytes to a UTF-8 string
Parameters: u (str) – the bytes to decode Returns: UTF-8 string
-
encode_utf8
(u)[source]¶ Encode a UTF-8 string to a sequence of bytes.
Parameters: u (str) – the string to encode Returns: bytes
-
format_docstring
(docstring, *args, **kwargs)[source]¶ Safely format docstrings.
When Python is executed with the
-OO
option, doc strings are removed and replaced the valueNone
. This function guards against applying the string formatting options in that case.Parameters: Returns: str or None
-
indent
(text, n=2, ch=' ')[source]¶ Indent all the lines in a given block of text by a specified ammount.
Parameters:
bokeh.util.testing
¶
Functions to help with testing Bokeh and reporting issues.
bokeh.util.tornado
¶
Internal utils related to Tornado
bokeh.util.version
¶
Provide a version for the Bokeh library.
This module uses versioneer to manage version strings. During development, versioneer will compute a version string from the current git revision. For packaged releases based off tags, the version string is hard coded in the files packaged for distribution.
-
__version__
¶ The full version string for this installed Bokeh library
-
__base_version__
¶ The base version string , without any “dev”, “rc” or local build information appended.
bokeh.util.warnings
¶
Provide Bokeh-specific warning subclasses.
The primary use of these subclasses to to force them to be unconditionally displayed to users by default.