PlasmaCalcs.dimensions.components.ComponentHaver

class PlasmaCalcs.dimensions.components.ComponentHaver(*, component=None, components=[Component('x', 0), Component('y', 1), Component('z', 2)], **kw)

Bases: DimensionHaver

class which “has” a ComponentDimension. (ComponentDimension instance will be at self.component_dim)
self.component stores the current vector component (possibly multiple). If None, use self.components instead.
self.components stores “all possible vector components” for the ComponentHaver.
Additionally, has various helpful methods for working with the ComponentDimension,
e.g. current_n_component, iter_components, take_component.
See ComponentDimension.setup_haver for details.
components defaults to XYZ (==ComponentList.from_strings(‘xyz’))
__init__(*, component=None, components=[Component('x', 0), Component('y', 1), Component('z', 2)], **kw)

Methods

__init__(*[, component, components])

as_single_dimpoint([values, dims])

assign_dim_coords(array, *dims[, skip])

check_pickle([x])

current_n_dimpoints([dims])

dim_values([dims])

dims_apply(funcname, *args_func[, dims])

dims_get(attr[, dims])

enumerate_dimpoints([dims, all])

get_behavior([keys])

get_first_dimpoint([dims, enumerate])

get_ncpu()

iter_dimpoints([dims, all, restore, enumerate])

load_across_dims(loader, *args_loader[, ...])

load_across_dims_implied_by(var, loader, ...)

maintaining_attrs(*attrs, **attrs_as_flags)

pop_dim_keys(kw)

set_attrs(**attrs)

set_pop_dim_attrs(kw)

using_attrs([attrs_as_dict, _unset_sentinel])

using_first_dimpoint([dims])

Attributes

array_MBmax

assign_component_along

assign_component_coord

behavior

behavior_attrs

cls_behavior_attrs

component

component_dim

component_is_iterable

component_list

component_type

components

current_n_component

dimensions

dims

enumerate_component

enumerate_components

iter_component

iter_components

iter_components_partition

join_components

maintaining

ncoarse

ncpu

nondim_behavior_attrs

print_freq

print_freq_explicit

take_component

take_components

timeout

using

property array_MBmax
UNSET, None, or number
maximum result size allowed, in Megabytes.
will raise a MemorySizeError if result size would be larger than this.
UNSET –> use DEFAULTS.ARRAY_MBYTES_MAX (default: 1000 MB).
None –> no limit.
Assumes that each result (at each dimpoint) will be the same size.
as_single_dimpoint(values=None, *, dims=None, **values_as_kw)
return DimPoint with values for dims, but raise DimensionValueError if any value is_iterable_dim.
values: None or dict
values to use for the dimpoint.
values will be joined with **values_as_kw; provided any of either will be equivalent.
E.g. can use values={‘fluid’: ‘e’} or use fluid=’e’.
if any are provided –> use values corresponding to self.{dim}=values[dim] for dim in dims.
else –> use values of self.{dim} for dim in dims. (equivalent: self.dims_apply(‘_as_single’, dims=dims))
dims: None or iterable of strs appearing in self.dimensions.keys()
dimensions to include.
None –> infer dimensions from keys of values (and values_as_kw).
if no values were provided (values=None, and empty values_as_kw),
use all dimensions from self.dimensions.keys().
additional kwargs provide other {dim: value} items.
Examples:
self.as_single_dimpoint() –> DimPoint({dim: self.{dim} for dim in self.dimensions})
self.as_single_dimpoint({‘fluid’: ‘e’}) –> DimPoint({‘fluid’: ‘e’})
self.as_single_dimpoint(fluid=’e’) –> DimPoint({‘fluid’: ‘e’})
self.as_single_dimpoint({‘fluid’: ‘e’}, snap=0) –> DimPoint({‘fluid’: ‘e’, ‘snap’: 0})
self.as_single_dimpoint(dims=[‘fluid’, ‘snap’]) –> DimPoint({‘fluid’: self.fluid, ‘snap’: self.snap})
property assign_component_along
alias to self.component_dim.assign_coord_along
property assign_component_coord
alias to self.component_dim.assign_coord
assign_dim_coords(array, *dims, skip=[])
assign all dimensions in self as coords for array. (self.assign_{dim}_coord(array))
Assumes array is an xarray and does not have any dimensions in self.
(array is not edited directly; returns result of assigning coords.)
dims: iterable of dimensions in self
assign only these dimensions as coords. (use all dimensions if len(dims)==0)
skip: iterable of dimensions in self
do not assign these dimensions as coords.
property behavior
dict of {attr: self.attr} for attr in self.behavior_attrs. Note dims are separate;
dims go in behavior.dims. E.g. Behavior({‘units’:’si’,…}, dims={‘snap’:0,…}).
property behavior_attrs
list of attrs in self which control behavior of self.
Here, returns self.cls_behavior_attrs.
Subclasses could override if any behavior attrs are not known at the class-level,
e.g. if MySubclass’s list of behavior attrs varies between instances of MySubclass.
check_pickle(x=None)
checks that self (or, x, if provided) is pickleable, by pickling then unpickling.
Returns result of unpickling. Useful for debugging.
property component
alias to self.component_dim.v
property component_dim
component dimension for ComponentHaver.
component_dim_cls

alias of ComponentDimension

property component_is_iterable
alias to self.component_dim.is_iterable
property component_list
alias to self.component_dim.list
property component_type
alias to self.component_dim.get_type
property components
alias to self.component_dim.values
property current_n_component
alias to self.component_dim.current_n
current_n_dimpoints(dims=None)
return number of points represented by current values of dims.
dims: None or iterable of strs appearing in self.dimensions.keys()
dimensions to consider. None –> use all dimensions.
E.g. current_n_dimpoints(self, dims=[‘fluid’, ‘snap’]) –> number of (fluid, snap) points;
e.g. 3 fluids and 2 snaps –> 6 points.
Note, for classes using maindims, maindims are not included in the number of dimpoints.
Equivalent to len(list(self.iter_dimpoints(dims=dims, current=True)))
dim_values(dims=None)
return dict of current values for dimensions in self.
dims: None or iterable
if provided, only include these dimensions.

Equivalent: DimRegion(self.dims_get(‘v’, dims=dims))

property dimensions
dict of dimensions in self; {dimension name: Dimension object}.
e.g. {‘fluid’: self.fluid_dim, ‘snap’: self.snap_dim, …}.
property dims
return dict of current values for dimensions in self. Equivalent: self.dim_values()
dims_apply(funcname, *args_func, dims=None, **kw_func)
apply funcname to each dimension in self, with args_func and kw_func.
dims: None or iterable of strs
if provided, only apply to these dimensions.
See also: dims_get
dims_get(attr, dims=None)
return dict of {dim: getattr(self.dimensions[dim], attr) for dim in dims}.
dims: None or iterable
if provided, only include these dimensions.
See also: dims_apply
property enumerate_component
alias to self.component_dim.enumerate
property enumerate_components
alias to self.component_dim.enumerate_values
enumerate_dimpoints(dims=None, *, all=False)
iterate through values of dims, yielding (idx, DimPoint) pairs.
idx is a dict of {dim: i} such that DimPoint values are {dim: dims[i] for dim,i in idx.items()}.
Also, during iteration, set self.{dim} = value, as with self.iter_dim.
Equivalent to self.iter_dimpoints(dims=dims, all=all, enumerate=True)
get_behavior(keys=None)
return value of self.behavior.
keys: None or iterable
if provided, only include these attrs.
from nondim_behavior_attrs, or dims.
get_first_dimpoint(dims=None, *, enumerate=False)
return DimPoint taking the first value of each dim in self.dimensions.
dims: None or iterable of strs appearing in self.dimensions.keys()
dimensions to include. None –> use all dimensions.
enumerate: bool
whether to return (idx, DimPoint) instead of just DimPoint.
get_ncpu()
returns ncpu, but if None, return multiprocessing.cpu_count() instead.
(This is for convenience; using None will also work with any methods defined here.)
property iter_component
alias to self.component_dim.iter
property iter_components
alias to self.component_dim.iter_values
property iter_components_partition
alias to self.component_dim.iter_partition
iter_dimpoints(dims=None, *, all=False, restore=True, enumerate=False)
iterate through values of dims, returning DimPoints and setting dim values during iteration.
DimPoints are dicts of {dim: value} for dim in dims, where not is_iterable_dim(value).
Also, during iteration, set self.{dim} = value, as with self.iter_dim.
dims: None or iterable of strs appearing in self.dimensions.keys()
dimensions to consider. None –> use all dimensions.
all: bool
whether to iterate through all possible values, or only the current values.
False –> iterate through current values (e.g., self.snap, self.fluid, …).
similar to itertools.product(self.iter_snap(), self.iter_fluid(), …)
True –> iterate through all possible values (e.g., self.snaps, self.fluid, …)
similar to itertools.product(self.iter_snaps(), self.iter_fluids(), …)
Equivalent to all=False if all dims are set to None, e.g. self.snap=None, …
restore: bool
whether to restore original dim values after iteration.
enumerate: bool, default False
whether to yield indices too, i.e. (idx, DimPoint) instead of just DimPoint.
idx would be a dict of {dim: i} such that DimPoint values are {dim: dims[i] for dim,i in idx.items()}.
property join_components
alias to self.component_dim.join_along
load_across_dims(loader, *args_loader, dims=[], assign_coords=None, loader0=None, **kw_loader)
return loader(…), iterating & joining across each dimension.
loader: callable of (*args_loader, **kw_loader) -> xarray.DataArray.
will call loader to get result values at each combination of dims values in self.
(loader will probably depend on dims values from self.)
dims: iterable of strs or Dimension objects
load across these Dimensions.
loads across the current values (when this method was called) of each dimension,
not necessarily “all” values. (e.g., self.snap, not self.snaps)
str values –> use self.dimensions[d] (where d is a str in dims).
len(dims)==0 –> just return loader(var, *args_loader, **kw_loader).
While loading, set dim.loading=True for each dim.
assign_coords: None or bool, default None
whether to dim.assign_coord for each result of loader, for each dimension.
None –> assign coord only if dim.name not already in array.coords.
loader0: None or callable
if provided, use loader0 to get the first array, then use loader for the rest.
Internally the first array’s .coords and .attrs are used to label the result;
however all other arrays do not need to be converted to xarray.
— MULTIPROCESSING STRATEGY OPTIONS (from self) —
timeout: None or int
max duration, in seconds. Must be None or integer (due to limitations of signal.alarm method)
None –> no time limit.
Note: if time_limit is reached, will raise a TimeoutError and save the result so far.
(in this case, any not-yet-calculated values will each be RESULT_MISSING.)
# [TODO] make this happen, without making self un-picklable:
in case of crash, results so far can be found in self._latest_load_tasks.
Then possibly continued via:
results = self._latest_load_tasks(…, reset=False, skip_done=True)
result = self._load_across_dims_postprocess(results, dims, …)
# [TODO] if crashing and resuming is common, make that easier to do^
elf.timeout has not been set, use DEFAULTS.LOADING_TIMEOUT (default: None).
ncpu: None or int
max number of cpus to use for multiprocessing.
None –> use multiprocessing.cpu_count()
int –> use this value. if 0 or 1, do not use multiprocessing here.
Note: will actually use min(ncpu, number of calls to be made);
e.g. if ncpu=4 but len(arg_kw_tuples)=2, will only use 2 cpus.
elf.ncpu has not been set, use DEFAULTS.LOADING_NCPU (default: 1).
ncoarse: int
if >1, group tasks into groups of size ncoarse before performing them.
elf.ncoarse has not been set, use DEFAULTS.LOADING_NCOARSE (default: 1).
print_freq: None, or number (possibly negative or 0)
>0 –> Minimum number of seconds between progress updates.
=0 –> print every progress update.
<0 –> never print progress updates.
None –> use DEFAULTS.PROGRESS_UPDATES_PRINT_FREQ
elf.print_freq has not been set, infer from self.verbose if it exists,
use DEFAULTS.PROGRESS_UPDATES_PRINT_FREQ (default: 2).
additional args & kwargs are passed as loader(*args_loader, **kw_loader).
load_across_dims_implied_by(var, loader, *args_loader, assign_coords=None, _min_split=1, **kw_loader)
return loader(…), iterating & joining across each dimension implied by var.
Equivalent to self.load_across_dims(loader, …, dims=self.match_var_loading_dims(var)).
var: str
variable which implies dims to load across, via self.match_var_loading_dims(var).
loader: callable of (*args_loader, **kw_loader) -> xarray.DataArray.
will call loader to get result values at each combination of dims values in self.
(loader will probably depend on dims values from self.)
assign_coords: None or bool, default None
whether to dim.assign_coord for each result of loader, for each dimension.
None –> assign coord only if dim.name not already in array.coords.
_min_split: int, default 1
if an implied dim has current_n() < min_split, don’t load across it.
1 –> no minimum.
additional args & kwargs are passed as loader(*args_loader, **kw_loader).
property maintaining
alias to maintaining_attrs
maintaining_attrs(*attrs, **attrs_as_flags)
returns context manager which restores attrs of self to their original values, upon exit.
E.g. maintaining_attrs(obj, ‘attr1’, ‘attr2’, attr3=True, attr4=False)
–> will restore upon exit, original values of obj.attr1, attr2, and attr3, but not attr4.
property ncoarse
int
if >1, group tasks into groups of size ncoarse before performing them.
property ncpu
None or int
max number of cpus to use for multiprocessing.
None –> use multiprocessing.cpu_count()
int –> use this value. if 0 or 1, do not use multiprocessing here.
Note: will actually use min(ncpu, number of calls to be made);
e.g. if ncpu=4 but len(arg_kw_tuples)=2, will only use 2 cpus.
see also: self.get_ncpu() to read actual number of cpus when self.ncpu is None.
property nondim_behavior_attrs
list of attrs in self which control behavior of self, but which are NOT in self.dimensions.
pop_dim_keys(kw)
return ({key: kw.pop(key) for key in self.dimensions if key in kw}, kw).
property print_freq
None, or number (possibly negative or 0)
>0 –> Minimum number of seconds between progress updates.
=0 –> print every progress update.
<0 –> never print progress updates.
None –> use DEFAULTS.PROGRESS_UPDATES_PRINT_FREQ
property print_freq_explicit
like self.print_freq, but converts UNSET to value based on self.verbose,
UNSET –> result depends on self.verbose:
False or <=0 –> -1
True or (>=1 and <5) –> None
>=5 –> 0 (i.e. print every progress update)
if self.verbose doesn’t exist –> None
if result would be None, instead give DEFAULTS.PROGRESS_UPDATES_PRINT_FREQ.
set_attrs(**attrs)
sets these attrs in self.
set_pop_dim_attrs(kw)
set self.{key} = kw.pop(key) for each key in self.dimensions if key in kw.
property take_component
alias to self.component_dim.take
property take_components
alias to self.component_dim.take_along
property timeout
None or int
max duration, in seconds. Must be None or integer (due to limitations of signal.alarm method)
None –> no time limit.
Note: if time_limit is reached, will raise a TimeoutError and save the result so far.
(in this case, any not-yet-calculated values will each be RESULT_MISSING.)
property using
alias to using_attrs
using_attrs(attrs_as_dict={}, _unset_sentinel=ATTR_UNSET, **attrs_and_values)
returns context manager which sets attrs of obj upon entry; restores original values upon exit.
_unset_sentinel: any value, default ATTR_UNSET
upon entry, delete any attrs with value _unset_sentinel (compared via ‘is’).
E.g. using_attrs(obj, _unset_sentinel=None, x=None) –> del obj.x upon entry.
using_first_dimpoint(dims=None)
return context manager which sets dimensions to their first values (when called); restore original on exit.
Useful for testing a single code at a single dimpoint without needing to set each dimension individually.
dims: None or iterable of strs appearing in self.dimensions.keys()
dimensions to include. None –> use all dimensions.