import logging
from functools import partial
from os import PathLike
from pathlib import Path
from typing import TYPE_CHECKING, Callable, Collection, Iterable, Optional, Union
from warnings import warn
import pyam
import genno.operator
from genno.core.key import Key, KeyLike
from genno.core.operator import Operator
from . import util
if TYPE_CHECKING:
from genno.core.computer import Computer
from genno.core.quantity import Quantity
log = logging.getLogger(__name__)
__all__ = ["as_pyam", "concat", "write_report"]
[docs]@Operator.define()
def as_pyam(
scenario,
quantity: "Quantity",
*,
rename=dict(),
collapse: Optional[Callable] = None,
replace=dict(),
drop: Union[Collection[str], str] = "auto",
unit=None,
):
"""Return a :class:`pyam.IamDataFrame` containing the data from `quantity`.
Warnings are logged if the arguments result in additional, unhandled columns in the
resulting data frame that are not part of the IAMC spec.
The conversion has the following steps:
1. `quantity` is converted to a temporary :class:`pandas.DataFrame`.
2. Labels for the following IAMC dimensions are filled:
- ``model``, ``scenario``: from attributes of the `scenario` argument.
- ``variable``: from the :attr:`~.Quantity.name` of `quantity`, if any.
- ``unit``: from the :attr:`~.Quantity.units` of `quantity`, if any.
3. The actions specified by the optional arguments `rename`, `collapse`, `replace`,
`drop`, and `unit`, if any, are applied in that order.
4. The resulting data frame is converted to :class:`pyam.IamDataFrame`.
Parameters
----------
scenario :
Any object with :attr:`model` and :attr:`scenario` attributes of type
:class:`str`, for instance an :class:`ixmp.Scenario`.
rename : dict (str -> str), *optional*
Mapping from dimension names in `quantity` to column names; either IAMC
dimension names, or others that are consumed by `collapse`.
collapse : callable, *optional*
Function that takes a :class:`pandas.DataFrame` and returns the same type.
This function **may** collapse 2 or more dimensions, for example to construct
labels for the IAMC ``variable`` dimension, or any other.
replace : *optional*
Values to be replaced and their replaced. Passed directly to
:meth:`pandas.DataFrame.replace`.
drop : str or collection of str, *optional*
Columns to drop. Passed to :func:`.util.drop`, so if not given, all non-IAMC
columns are dropped.
unit : str, *optional*
Label for the IAMC ``unit`` dimension. Passed to
:func:`~.pyam.util.clean_units`.
Raises
------
ValueError
If the resulting data frame has duplicate keys in the IAMC dimensions.
:class:`pyam.IamDataFrame` cannot handle such data.
"""
# - Convert to pd.DataFrame
# - Rename one dimension to 'year' or 'time'
# - Fill variable, unit, model, and scenario columns
# - Replace values
# - Apply the collapse callback, if given
# - Drop any unwanted columns
# - Clean units
df = (
quantity.to_series()
.rename("value")
.reset_index()
.assign(
variable=quantity.name,
unit=quantity.units,
# TODO accept these from separate strings
model=scenario.model,
scenario=scenario.scenario,
)
.rename(columns=rename)
.pipe(collapse or util.collapse)
.replace(replace, regex=True)
.pipe(util.drop, columns=drop)
.pipe(util.clean_units, unit)
)
# Raise exception for non-unique data
duplicates = df.duplicated(subset=set(df.columns) - {"value"})
if duplicates.any():
raise ValueError(
"Duplicate IAMC indices cannot be converted:\n"
+ str(df[duplicates].drop(columns=["model", "scenario"]))
)
return pyam.IamDataFrame(df)
[docs]@as_pyam.helper
def add_as_pyam(
func,
c: "Computer",
quantities: Union[KeyLike, Iterable[KeyLike]],
tag="iamc",
/,
**kwargs,
):
""":meth:`.Computer.add` helper for :func:`.as_pyam`.
Add conversion of one or more `quantities` to the IAMC data structure.
Parameters
----------
quantities : str or Key or list of (str, Key)
Keys for quantities to transform.
tag : str, *optional*
Tag to append to new Keys.
Other parameters
----------------
kwargs :
Any keyword arguments accepted by :func:`.as_pyam`.
Returns
-------
list of Key
Each task converts a :class:`.Quantity` into a :class:`pyam.IamDataFrame`.
"""
# Handle single vs. iterable of inputs
if isinstance(quantities, (str, Key)):
quantities = [quantities]
multi_arg = False
else:
multi_arg = True
if len(kwargs.get("replace", {})) and not isinstance(
next(iter(kwargs["replace"].values())), dict
):
kwargs["replace"] = dict(variable=kwargs.pop("replace"))
warn(
f"replace must be nested dict(), e.g. {repr(kwargs['replace'])}",
DeprecationWarning,
)
# Check keys
quantities = c.check_keys(*quantities)
# The callable for the task. If pyam is not available, require_compat() above will
# fail; so this will never be None
comp = partial(func, **kwargs)
keys = []
for qty in quantities:
# Key for the input quantity, e.g. foo:x-y-z
key = Key(qty)
# Key for the task/output, e.g. foo::iamc
keys.append(Key(key.name, tag=tag))
# Add the task and store the key
c.add_single(keys[-1], (comp, "scenario", key))
return tuple(keys) if multi_arg else keys[0]
[docs]def concat(*args, **kwargs):
"""Concatenate *args*, which must all be :class:`pyam.IamDataFrame`.
Otherwise, equivalent to :func:`genno.operator.concat`.
"""
if isinstance(args[0], pyam.IamDataFrame):
# pyam.concat() takes an iterable of args
return pyam.concat(args, **kwargs)
else:
# genno.operator.concat() takes a variable number of positional arguments
return genno.operator.concat(*args, **kwargs)
[docs]def write_report(obj, path: Union[str, PathLike]) -> None:
"""Write `obj` to the file at `path`.
If `obj` is a :class:`pyam.IamDataFrame` and `path` ends with ".csv" or ".xlsx",
use :mod:`pyam` methods to write the file to CSV or Excel format, respectively.
Otherwise, equivalent to :func:`genno.operator.write_report`.
"""
if not isinstance(obj, pyam.IamDataFrame):
return genno.operator.write_report(obj, path)
path = Path(path)
if path.suffix == ".csv":
obj.to_csv(path)
elif path.suffix == ".xlsx":
obj.to_excel(path)
else:
raise ValueError(
f"pyam.IamDataFrame can be written to .csv or .xlsx, not {path.suffix}"
)