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"""
Utility routines
"""
from collections.abc import Mapping, MutableMapping
from copy import deepcopy
import json
import itertools
import re
import sys
import traceback
import warnings
from typing import (
Callable,
TypeVar,
Any,
Union,
Dict,
Optional,
Tuple,
Sequence,
Type,
cast,
)
from types import ModuleType
import jsonschema
import pandas as pd
import numpy as np
from pandas.api.types import infer_dtype
from altair.utils.schemapi import SchemaBase
from altair.utils._dfi_types import Column, DtypeKind, DataFrame as DfiDataFrame
if sys.version_info >= (3, 10):
from typing import ParamSpec
else:
from typing_extensions import ParamSpec
from typing import Literal, Protocol, TYPE_CHECKING
if TYPE_CHECKING:
from pandas.core.interchange.dataframe_protocol import Column as PandasColumn
_V = TypeVar("_V")
_P = ParamSpec("_P")
class _DataFrameLike(Protocol):
def __dataframe__(self, *args, **kwargs) -> DfiDataFrame:
...
TYPECODE_MAP = {
"ordinal": "O",
"nominal": "N",
"quantitative": "Q",
"temporal": "T",
"geojson": "G",
}
INV_TYPECODE_MAP = {v: k for k, v in TYPECODE_MAP.items()}
# aggregates from vega-lite version 4.6.0
AGGREGATES = [
"argmax",
"argmin",
"average",
"count",
"distinct",
"max",
"mean",
"median",
"min",
"missing",
"product",
"q1",
"q3",
"ci0",
"ci1",
"stderr",
"stdev",
"stdevp",
"sum",
"valid",
"values",
"variance",
"variancep",
]
# window aggregates from vega-lite version 4.6.0
WINDOW_AGGREGATES = [
"row_number",
"rank",
"dense_rank",
"percent_rank",
"cume_dist",
"ntile",
"lag",
"lead",
"first_value",
"last_value",
"nth_value",
]
# timeUnits from vega-lite version 4.17.0
TIMEUNITS = [
"year",
"quarter",
"month",
"week",
"day",
"dayofyear",
"date",
"hours",
"minutes",
"seconds",
"milliseconds",
"yearquarter",
"yearquartermonth",
"yearmonth",
"yearmonthdate",
"yearmonthdatehours",
"yearmonthdatehoursminutes",
"yearmonthdatehoursminutesseconds",
"yearweek",
"yearweekday",
"yearweekdayhours",
"yearweekdayhoursminutes",
"yearweekdayhoursminutesseconds",
"yeardayofyear",
"quartermonth",
"monthdate",
"monthdatehours",
"monthdatehoursminutes",
"monthdatehoursminutesseconds",
"weekday",
"weeksdayhours",
"weekdayhoursminutes",
"weekdayhoursminutesseconds",
"dayhours",
"dayhoursminutes",
"dayhoursminutesseconds",
"hoursminutes",
"hoursminutesseconds",
"minutesseconds",
"secondsmilliseconds",
"utcyear",
"utcquarter",
"utcmonth",
"utcweek",
"utcday",
"utcdayofyear",
"utcdate",
"utchours",
"utcminutes",
"utcseconds",
"utcmilliseconds",
"utcyearquarter",
"utcyearquartermonth",
"utcyearmonth",
"utcyearmonthdate",
"utcyearmonthdatehours",
"utcyearmonthdatehoursminutes",
"utcyearmonthdatehoursminutesseconds",
"utcyearweek",
"utcyearweekday",
"utcyearweekdayhours",
"utcyearweekdayhoursminutes",
"utcyearweekdayhoursminutesseconds",
"utcyeardayofyear",
"utcquartermonth",
"utcmonthdate",
"utcmonthdatehours",
"utcmonthdatehoursminutes",
"utcmonthdatehoursminutesseconds",
"utcweekday",
"utcweeksdayhours",
"utcweekdayhoursminutes",
"utcweekdayhoursminutesseconds",
"utcdayhours",
"utcdayhoursminutes",
"utcdayhoursminutesseconds",
"utchoursminutes",
"utchoursminutesseconds",
"utcminutesseconds",
"utcsecondsmilliseconds",
]
_InferredVegaLiteType = Literal["ordinal", "nominal", "quantitative", "temporal"]
def infer_vegalite_type(
data: object,
) -> Union[_InferredVegaLiteType, Tuple[_InferredVegaLiteType, list]]:
"""
From an array-like input, infer the correct vega typecode
('ordinal', 'nominal', 'quantitative', or 'temporal')
Parameters
----------
data: object
"""
typ = infer_dtype(data, skipna=False)
if typ in [
"floating",
"mixed-integer-float",
"integer",
"mixed-integer",
"complex",
]:
return "quantitative"
elif typ == "categorical" and hasattr(data, "cat") and data.cat.ordered:
return ("ordinal", data.cat.categories.tolist())
elif typ in ["string", "bytes", "categorical", "boolean", "mixed", "unicode"]:
return "nominal"
elif typ in [
"datetime",
"datetime64",
"timedelta",
"timedelta64",
"date",
"time",
"period",
]:
return "temporal"
else:
warnings.warn(
"I don't know how to infer vegalite type from '{}'. "
"Defaulting to nominal.".format(typ),
stacklevel=1,
)
return "nominal"
def merge_props_geom(feat: dict) -> dict:
"""
Merge properties with geometry
* Overwrites 'type' and 'geometry' entries if existing
"""
geom = {k: feat[k] for k in ("type", "geometry")}
try:
feat["properties"].update(geom)
props_geom = feat["properties"]
except (AttributeError, KeyError):
# AttributeError when 'properties' equals None
# KeyError when 'properties' is non-existing
props_geom = geom
return props_geom
def sanitize_geo_interface(geo: MutableMapping) -> dict:
"""Santize a geo_interface to prepare it for serialization.
* Make a copy
* Convert type array or _Array to list
* Convert tuples to lists (using json.loads/dumps)
* Merge properties with geometry
"""
geo = deepcopy(geo)
# convert type _Array or array to list
for key in geo.keys():
if str(type(geo[key]).__name__).startswith(("_Array", "array")):
geo[key] = geo[key].tolist()
# convert (nested) tuples to lists
geo_dct: dict = json.loads(json.dumps(geo))
# sanitize features
if geo_dct["type"] == "FeatureCollection":
geo_dct = geo_dct["features"]
if len(geo_dct) > 0:
for idx, feat in enumerate(geo_dct):
geo_dct[idx] = merge_props_geom(feat)
elif geo_dct["type"] == "Feature":
geo_dct = merge_props_geom(geo_dct)
else:
geo_dct = {"type": "Feature", "geometry": geo_dct}
return geo_dct
def numpy_is_subtype(dtype: Any, subtype: Any) -> bool:
try:
return np.issubdtype(dtype, subtype)
except (NotImplementedError, TypeError):
return False
def sanitize_dataframe(df: pd.DataFrame) -> pd.DataFrame: # noqa: C901
"""Sanitize a DataFrame to prepare it for serialization.
* Make a copy
* Convert RangeIndex columns to strings
* Raise ValueError if column names are not strings
* Raise ValueError if it has a hierarchical index.
* Convert categoricals to strings.
* Convert np.bool_ dtypes to Python bool objects
* Convert np.int dtypes to Python int objects
* Convert floats to objects and replace NaNs/infs with None.
* Convert DateTime dtypes into appropriate string representations
* Convert Nullable integers to objects and replace NaN with None
* Convert Nullable boolean to objects and replace NaN with None
* convert dedicated string column to objects and replace NaN with None
* Raise a ValueError for TimeDelta dtypes
"""
df = df.copy()
if isinstance(df.columns, pd.RangeIndex):
df.columns = df.columns.astype(str)
for col_name in df.columns:
if not isinstance(col_name, str):
raise ValueError(
"Dataframe contains invalid column name: {0!r}. "
"Column names must be strings".format(col_name)
)
if isinstance(df.index, pd.MultiIndex):
raise ValueError("Hierarchical indices not supported")
if isinstance(df.columns, pd.MultiIndex):
raise ValueError("Hierarchical indices not supported")
def to_list_if_array(val):
if isinstance(val, np.ndarray):
return val.tolist()
else:
return val
for dtype_item in df.dtypes.items():
# We know that the column names are strings from the isinstance check
# further above but mypy thinks it is of type Hashable and therefore does not
# let us assign it to the col_name variable which is already of type str.
col_name = cast(str, dtype_item[0])
dtype = dtype_item[1]
dtype_name = str(dtype)
if dtype_name == "category":
# Work around bug in to_json for categorical types in older versions
# of pandas as they do not properly convert NaN values to null in to_json.
# We can probably remove this part once we require Pandas >= 1.0
col = df[col_name].astype(object)
df[col_name] = col.where(col.notnull(), None)
elif dtype_name == "string":
# dedicated string datatype (since 1.0)
# https://pandas.pydata.org/pandas-docs/version/1.0.0/whatsnew/v1.0.0.html#dedicated-string-data-type
col = df[col_name].astype(object)
df[col_name] = col.where(col.notnull(), None)
elif dtype_name == "bool":
# convert numpy bools to objects; np.bool is not JSON serializable
df[col_name] = df[col_name].astype(object)
elif dtype_name == "boolean":
# dedicated boolean datatype (since 1.0)
# https://pandas.io/docs/user_guide/boolean.html
col = df[col_name].astype(object)
df[col_name] = col.where(col.notnull(), None)
elif dtype_name.startswith("datetime") or dtype_name.startswith("timestamp"):
# Convert datetimes to strings. This needs to be a full ISO string
# with time, which is why we cannot use ``col.astype(str)``.
# This is because Javascript parses date-only times in UTC, but
# parses full ISO-8601 dates as local time, and dates in Vega and
# Vega-Lite are displayed in local time by default.
# (see https://github.com/altair-viz/altair/issues/1027)
df[col_name] = (
df[col_name].apply(lambda x: x.isoformat()).replace("NaT", "")
)
elif dtype_name.startswith("timedelta"):
raise ValueError(
'Field "{col_name}" has type "{dtype}" which is '
"not supported by Altair. Please convert to "
"either a timestamp or a numerical value."
"".format(col_name=col_name, dtype=dtype)
)
elif dtype_name.startswith("geometry"):
# geopandas >=0.6.1 uses the dtype geometry. Continue here
# otherwise it will give an error on np.issubdtype(dtype, np.integer)
continue
elif dtype_name in {
"Int8",
"Int16",
"Int32",
"Int64",
"UInt8",
"UInt16",
"UInt32",
"UInt64",
"Float32",
"Float64",
}: # nullable integer datatypes (since 24.0) and nullable float datatypes (since 1.2.0)
# https://pandas.pydata.org/pandas-docs/version/0.25/whatsnew/v0.24.0.html#optional-integer-na-support
col = df[col_name].astype(object)
df[col_name] = col.where(col.notnull(), None)
elif numpy_is_subtype(dtype, np.integer):
# convert integers to objects; np.int is not JSON serializable
df[col_name] = df[col_name].astype(object)
elif numpy_is_subtype(dtype, np.floating):
# For floats, convert to Python float: np.float is not JSON serializable
# Also convert NaN/inf values to null, as they are not JSON serializable
col = df[col_name]
bad_values = col.isnull() | np.isinf(col)
df[col_name] = col.astype(object).where(~bad_values, None)
elif dtype == object:
# Convert numpy arrays saved as objects to lists
# Arrays are not JSON serializable
col = df[col_name].astype(object).apply(to_list_if_array)
df[col_name] = col.where(col.notnull(), None)
return df
def sanitize_arrow_table(pa_table):
"""Sanitize arrow table for JSON serialization"""
import pyarrow as pa
import pyarrow.compute as pc
arrays = []
schema = pa_table.schema
for name in schema.names:
array = pa_table[name]
dtype = schema.field(name).type
if str(dtype).startswith("timestamp"):
arrays.append(pc.strftime(array))
elif str(dtype).startswith("duration"):
raise ValueError(
'Field "{col_name}" has type "{dtype}" which is '
"not supported by Altair. Please convert to "
"either a timestamp or a numerical value."
"".format(col_name=name, dtype=dtype)
)
else:
arrays.append(array)
return pa.Table.from_arrays(arrays, names=schema.names)
def parse_shorthand(
shorthand: Union[Dict[str, Any], str],
data: Optional[Union[pd.DataFrame, _DataFrameLike]] = None,
parse_aggregates: bool = True,
parse_window_ops: bool = False,
parse_timeunits: bool = True,
parse_types: bool = True,
) -> Dict[str, Any]:
"""General tool to parse shorthand values
These are of the form:
- "col_name"
- "col_name:O"
- "average(col_name)"
- "average(col_name):O"
Optionally, a dataframe may be supplied, from which the type
will be inferred if not specified in the shorthand.
Parameters
----------
shorthand : dict or string
The shorthand representation to be parsed
data : DataFrame, optional
If specified and of type DataFrame, then use these values to infer the
column type if not provided by the shorthand.
parse_aggregates : boolean
If True (default), then parse aggregate functions within the shorthand.
parse_window_ops : boolean
If True then parse window operations within the shorthand (default:False)
parse_timeunits : boolean
If True (default), then parse timeUnits from within the shorthand
parse_types : boolean
If True (default), then parse typecodes within the shorthand
Returns
-------
attrs : dict
a dictionary of attributes extracted from the shorthand
Examples
--------
>>> data = pd.DataFrame({'foo': ['A', 'B', 'A', 'B'],
... 'bar': [1, 2, 3, 4]})
>>> parse_shorthand('name') == {'field': 'name'}
True
>>> parse_shorthand('name:Q') == {'field': 'name', 'type': 'quantitative'}
True
>>> parse_shorthand('average(col)') == {'aggregate': 'average', 'field': 'col'}
True
>>> parse_shorthand('foo:O') == {'field': 'foo', 'type': 'ordinal'}
True
>>> parse_shorthand('min(foo):Q') == {'aggregate': 'min', 'field': 'foo', 'type': 'quantitative'}
True
>>> parse_shorthand('month(col)') == {'field': 'col', 'timeUnit': 'month', 'type': 'temporal'}
True
>>> parse_shorthand('year(col):O') == {'field': 'col', 'timeUnit': 'year', 'type': 'ordinal'}
True
>>> parse_shorthand('foo', data) == {'field': 'foo', 'type': 'nominal'}
True
>>> parse_shorthand('bar', data) == {'field': 'bar', 'type': 'quantitative'}
True
>>> parse_shorthand('bar:O', data) == {'field': 'bar', 'type': 'ordinal'}
True
>>> parse_shorthand('sum(bar)', data) == {'aggregate': 'sum', 'field': 'bar', 'type': 'quantitative'}
True
>>> parse_shorthand('count()', data) == {'aggregate': 'count', 'type': 'quantitative'}
True
"""
from altair.utils._importers import pyarrow_available
if not shorthand:
return {}
valid_typecodes = list(TYPECODE_MAP) + list(INV_TYPECODE_MAP)
units = {
"field": "(?P<field>.*)",
"type": "(?P<type>{})".format("|".join(valid_typecodes)),
"agg_count": "(?P<aggregate>count)",
"op_count": "(?P<op>count)",
"aggregate": "(?P<aggregate>{})".format("|".join(AGGREGATES)),
"window_op": "(?P<op>{})".format("|".join(AGGREGATES + WINDOW_AGGREGATES)),
"timeUnit": "(?P<timeUnit>{})".format("|".join(TIMEUNITS)),
}
patterns = []
if parse_aggregates:
patterns.extend([r"{agg_count}\(\)"])
patterns.extend([r"{aggregate}\({field}\)"])
if parse_window_ops:
patterns.extend([r"{op_count}\(\)"])
patterns.extend([r"{window_op}\({field}\)"])
if parse_timeunits:
patterns.extend([r"{timeUnit}\({field}\)"])
patterns.extend([r"{field}"])
if parse_types:
patterns = list(itertools.chain(*((p + ":{type}", p) for p in patterns)))
regexps = (
re.compile(r"\A" + p.format(**units) + r"\Z", re.DOTALL) for p in patterns
)
# find matches depending on valid fields passed
if isinstance(shorthand, dict):
attrs = shorthand
else:
attrs = next(
exp.match(shorthand).groupdict() # type: ignore[union-attr]
for exp in regexps
if exp.match(shorthand) is not None
)
# Handle short form of the type expression
if "type" in attrs:
attrs["type"] = INV_TYPECODE_MAP.get(attrs["type"], attrs["type"])
# counts are quantitative by default
if attrs == {"aggregate": "count"}:
attrs["type"] = "quantitative"
# times are temporal by default
if "timeUnit" in attrs and "type" not in attrs:
attrs["type"] = "temporal"
# if data is specified and type is not, infer type from data
if "type" not in attrs:
if pyarrow_available() and data is not None and hasattr(data, "__dataframe__"):
dfi = data.__dataframe__()
if "field" in attrs:
unescaped_field = attrs["field"].replace("\\", "")
if unescaped_field in dfi.column_names():
column = dfi.get_column_by_name(unescaped_field)
try:
attrs["type"] = infer_vegalite_type_for_dfi_column(column)
except (NotImplementedError, AttributeError, ValueError):
# Fall back to pandas-based inference.
# Note: The AttributeError catch is a workaround for
# https://github.com/pandas-dev/pandas/issues/55332
if isinstance(data, pd.DataFrame):
attrs["type"] = infer_vegalite_type(data[unescaped_field])
else:
raise
if isinstance(attrs["type"], tuple):
attrs["sort"] = attrs["type"][1]
attrs["type"] = attrs["type"][0]
elif isinstance(data, pd.DataFrame):
# Fallback if pyarrow is not installed or if pandas is older than 1.5
#
# Remove escape sequences so that types can be inferred for columns with special characters
if "field" in attrs and attrs["field"].replace("\\", "") in data.columns:
attrs["type"] = infer_vegalite_type(
data[attrs["field"].replace("\\", "")]
)
# ordered categorical dataframe columns return the type and sort order as a tuple
if isinstance(attrs["type"], tuple):
attrs["sort"] = attrs["type"][1]
attrs["type"] = attrs["type"][0]
# If an unescaped colon is still present, it's often due to an incorrect data type specification
# but could also be due to using a column name with ":" in it.
if (
"field" in attrs
and ":" in attrs["field"]
and attrs["field"][attrs["field"].rfind(":") - 1] != "\\"
):
raise ValueError(
'"{}" '.format(attrs["field"].split(":")[-1])
+ "is not one of the valid encoding data types: {}.".format(
", ".join(TYPECODE_MAP.values())
)
+ "\nFor more details, see https://altair-viz.github.io/user_guide/encodings/index.html#encoding-data-types. "
+ "If you are trying to use a column name that contains a colon, "
+ 'prefix it with a backslash; for example "column\\:name" instead of "column:name".'
)
return attrs
def infer_vegalite_type_for_dfi_column(
column: Union[Column, "PandasColumn"],
) -> Union[_InferredVegaLiteType, Tuple[_InferredVegaLiteType, list]]:
from pyarrow.interchange.from_dataframe import column_to_array
try:
kind = column.dtype[0]
except NotImplementedError as e:
# Edge case hack:
# dtype access fails for pandas column with datetime64[ns, UTC] type,
# but all we need to know is that its temporal, so check the
# error message for the presence of datetime64.
#
# See https://github.com/pandas-dev/pandas/issues/54239
if "datetime64" in e.args[0] or "timestamp" in e.args[0]:
return "temporal"
raise e
if (
kind == DtypeKind.CATEGORICAL
and column.describe_categorical["is_ordered"]
and column.describe_categorical["categories"] is not None
):
# Treat ordered categorical column as Vega-Lite ordinal
categories_column = column.describe_categorical["categories"]
categories_array = column_to_array(categories_column)
return "ordinal", categories_array.to_pylist()
if kind in (DtypeKind.STRING, DtypeKind.CATEGORICAL, DtypeKind.BOOL):
return "nominal"
elif kind in (DtypeKind.INT, DtypeKind.UINT, DtypeKind.FLOAT):
return "quantitative"
elif kind == DtypeKind.DATETIME:
return "temporal"
else:
raise ValueError(f"Unexpected DtypeKind: {kind}")
def use_signature(Obj: Callable[_P, Any]):
"""Apply call signature and documentation of Obj to the decorated method"""
def decorate(f: Callable[..., _V]) -> Callable[_P, _V]:
# call-signature of f is exposed via __wrapped__.
# we want it to mimic Obj.__init__
f.__wrapped__ = Obj.__init__ # type: ignore
f._uses_signature = Obj # type: ignore
# Supplement the docstring of f with information from Obj
if Obj.__doc__:
# Patch in a reference to the class this docstring is copied from,
# to generate a hyperlink.
doclines = Obj.__doc__.splitlines()
doclines[0] = f"Refer to :class:`{Obj.__name__}`"
if f.__doc__:
doc = f.__doc__ + "\n".join(doclines[1:])
else:
doc = "\n".join(doclines)
try:
f.__doc__ = doc
except AttributeError:
# __doc__ is not modifiable for classes in Python < 3.3
pass
return f
return decorate
def update_nested(
original: MutableMapping, update: Mapping, copy: bool = False
) -> MutableMapping:
"""Update nested dictionaries
Parameters
----------
original : MutableMapping
the original (nested) dictionary, which will be updated in-place
update : Mapping
the nested dictionary of updates
copy : bool, default False
if True, then copy the original dictionary rather than modifying it
Returns
-------
original : MutableMapping
a reference to the (modified) original dict
Examples
--------
>>> original = {'x': {'b': 2, 'c': 4}}
>>> update = {'x': {'b': 5, 'd': 6}, 'y': 40}
>>> update_nested(original, update) # doctest: +SKIP
{'x': {'b': 5, 'c': 4, 'd': 6}, 'y': 40}
>>> original # doctest: +SKIP
{'x': {'b': 5, 'c': 4, 'd': 6}, 'y': 40}
"""
if copy:
original = deepcopy(original)
for key, val in update.items():
if isinstance(val, Mapping):
orig_val = original.get(key, {})
if isinstance(orig_val, MutableMapping):
original[key] = update_nested(orig_val, val)
else:
original[key] = val
else:
original[key] = val
return original
def display_traceback(in_ipython: bool = True):
exc_info = sys.exc_info()
if in_ipython:
from IPython.core.getipython import get_ipython
ip = get_ipython()
else:
ip = None
if ip is not None:
ip.showtraceback(exc_info)
else:
traceback.print_exception(*exc_info)
def infer_encoding_types(args: Sequence, kwargs: MutableMapping, channels: ModuleType):
"""Infer typed keyword arguments for args and kwargs
Parameters
----------
args : Sequence
Sequence of function args
kwargs : MutableMapping
Dict of function kwargs
channels : ModuleType
The module containing all altair encoding channel classes.
Returns
-------
kwargs : dict
All args and kwargs in a single dict, with keys and types
based on the channels mapping.
"""
# Construct a dictionary of channel type to encoding name
# TODO: cache this somehow?
channel_objs = (getattr(channels, name) for name in dir(channels))
channel_objs = (
c for c in channel_objs if isinstance(c, type) and issubclass(c, SchemaBase)
)
channel_to_name: Dict[Type[SchemaBase], str] = {
c: c._encoding_name for c in channel_objs
}
name_to_channel: Dict[str, Dict[str, Type[SchemaBase]]] = {}
for chan, name in channel_to_name.items():
chans = name_to_channel.setdefault(name, {})
if chan.__name__.endswith("Datum"):
key = "datum"
elif chan.__name__.endswith("Value"):
key = "value"
else:
key = "field"
chans[key] = chan
# First use the mapping to convert args to kwargs based on their types.
for arg in args:
if isinstance(arg, (list, tuple)) and len(arg) > 0:
type_ = type(arg[0])
else:
type_ = type(arg)
encoding = channel_to_name.get(type_, None)
if encoding is None:
raise NotImplementedError("positional of type {}" "".format(type_))
if encoding in kwargs:
raise ValueError("encoding {} specified twice.".format(encoding))
kwargs[encoding] = arg
def _wrap_in_channel_class(obj, encoding):
if isinstance(obj, SchemaBase):
return obj
if isinstance(obj, str):
obj = {"shorthand": obj}
if isinstance(obj, (list, tuple)):
return [_wrap_in_channel_class(subobj, encoding) for subobj in obj]
if encoding not in name_to_channel:
warnings.warn(
"Unrecognized encoding channel '{}'".format(encoding), stacklevel=1
)
return obj
classes = name_to_channel[encoding]
cls = classes["value"] if "value" in obj else classes["field"]
try:
# Don't force validation here; some objects won't be valid until
# they're created in the context of a chart.
return cls.from_dict(obj, validate=False)
except jsonschema.ValidationError:
# our attempts at finding the correct class have failed
return obj
return {
encoding: _wrap_in_channel_class(obj, encoding)
for encoding, obj in kwargs.items()
}