QuAcc/quacc/evaluation/report.py

565 lines
18 KiB
Python

from pathlib import Path
from typing import List, Tuple
import numpy as np
import pandas as pd
from quacc import plot
from quacc.environment import env
from quacc.utils import fmt_line_md
def _get_metric(metric: str):
return slice(None) if metric is None else metric
def _get_estimators(estimators: List[str], cols: np.ndarray):
return slice(None) if estimators is None else cols[np.in1d(cols, estimators)]
class EvaluationReport:
def __init__(self, name=None):
self.data: pd.DataFrame = None
self.fit_score = None
self.name = name if name is not None else "default"
def append_row(self, basep: np.ndarray | Tuple, **row):
bp = basep[1]
_keys, _values = zip(*row.items())
# _keys = list(row.keys())
# _values = list(row.values())
if self.data is None:
_idx = 0
self.data = pd.DataFrame(
{k: [v] for k, v in row.items()},
index=pd.MultiIndex.from_tuples([(bp, _idx)]),
columns=_keys,
)
return
_idx = len(self.data.loc[(bp,), :]) if (bp,) in self.data.index else 0
not_in_data = np.setdiff1d(list(row.keys()), self.data.columns.unique(0))
self.data.loc[:, not_in_data] = np.nan
self.data.loc[(bp, _idx), :] = row
return
@property
def columns(self) -> np.ndarray:
return self.data.columns.unique(0)
@property
def prevs(self):
return np.sort(self.data.index.unique(0))
class CompReport:
def __init__(
self,
reports: List[EvaluationReport],
name="default",
train_prev=None,
valid_prev=None,
times=None,
):
self._data = (
pd.concat(
[er.data for er in reports],
keys=[er.name for er in reports],
axis=1,
)
.swaplevel(0, 1, axis=1)
.sort_index(axis=1, level=0, sort_remaining=False)
.sort_index(axis=0, level=0)
)
self.fit_scores = {
er.name: er.fit_score for er in reports if er.fit_score is not None
}
self.train_prev = train_prev
self.valid_prev = valid_prev
self.times = times
@property
def prevs(self) -> np.ndarray:
return np.sort(self._data.index.unique(0))
@property
def np_prevs(self) -> np.ndarray:
return np.around([(1.0 - p, p) for p in self.prevs], decimals=2)
def data(self, metric: str = None, estimators: List[str] = None) -> pd.DataFrame:
_metric = _get_metric(metric)
_estimators = _get_estimators(estimators, self._data.columns.unique(1))
f_data: pd.DataFrame = self._data.copy().loc[:, (_metric, _estimators)]
if len(f_data.columns.unique(0)) == 1:
f_data = f_data.droplevel(level=0, axis=1)
return f_data
def shift_data(
self, metric: str = None, estimators: List[str] = None
) -> pd.DataFrame:
shift_idx_0 = np.around(
np.abs(
self._data.index.get_level_values(0).to_numpy() - self.train_prev[1]
),
decimals=2,
)
shift_idx_1 = np.empty(shape=shift_idx_0.shape, dtype="<i4")
for _id in np.unique(shift_idx_0):
_wh = np.where(shift_idx_0 == _id)[0]
shift_idx_1[_wh] = np.arange(_wh.shape[0], dtype="<i4")
shift_data = self._data.copy()
shift_data.index = pd.MultiIndex.from_arrays([shift_idx_0, shift_idx_1])
shift_data = shift_data.sort_index(axis=0, level=0)
_metric = _get_metric(metric)
_estimators = _get_estimators(estimators, shift_data.columns.unique(1))
shift_data: pd.DataFrame = shift_data.loc[:, (_metric, _estimators)]
if len(shift_data.columns.unique(0)) == 1:
shift_data = shift_data.droplevel(level=0, axis=1)
return shift_data
def avg_by_prevs(
self, metric: str = None, estimators: List[str] = None
) -> pd.DataFrame:
f_dict = self.data(metric=metric, estimators=estimators)
return f_dict.groupby(level=0).mean()
def stdev_by_prevs(
self, metric: str = None, estimators: List[str] = None
) -> pd.DataFrame:
f_dict = self.data(metric=metric, estimators=estimators)
return f_dict.groupby(level=0).std()
def table(self, metric: str = None, estimators: List[str] = None) -> pd.DataFrame:
f_data = self.data(metric=metric, estimators=estimators)
avg_p = f_data.groupby(level=0).mean()
avg_p.loc["avg", :] = f_data.mean()
return avg_p
def get_plots(
self, mode="delta", metric="acc", estimators=None, conf="default", stdev=False
) -> List[Tuple[str, Path]]:
if mode == "delta":
avg_data = self.avg_by_prevs(metric=metric, estimators=estimators)
return plot.plot_delta(
base_prevs=self.np_prevs,
columns=avg_data.columns.to_numpy(),
data=avg_data.T.to_numpy(),
metric=metric,
name=conf,
train_prev=self.train_prev,
)
elif mode == "delta_stdev":
avg_data = self.avg_by_prevs(metric=metric, estimators=estimators)
st_data = self.stdev_by_prevs(metric=metric, estimators=estimators)
return plot.plot_delta(
base_prevs=self.np_prevs,
columns=avg_data.columns.to_numpy(),
data=avg_data.T.to_numpy(),
metric=metric,
name=conf,
train_prev=self.train_prev,
stdevs=st_data.T.to_numpy(),
)
elif mode == "diagonal":
f_data = self.data(metric=metric + "_score", estimators=estimators)
ref: pd.Series = f_data.loc[:, "ref"]
f_data.drop(columns=["ref"], inplace=True)
return plot.plot_diagonal(
reference=ref.to_numpy(),
columns=f_data.columns.to_numpy(),
data=f_data.T.to_numpy(),
metric=metric,
name=conf,
train_prev=self.train_prev,
)
elif mode == "shift":
shift_data = (
self.shift_data(metric=metric, estimators=estimators)
.groupby(level=0)
.mean()
)
shift_prevs = np.around(
[(1.0 - p, p) for p in np.sort(shift_data.index.unique(0))],
decimals=2,
)
return plot.plot_shift(
shift_prevs=shift_prevs,
columns=shift_data.columns.to_numpy(),
data=shift_data.T.to_numpy(),
metric=metric,
name=conf,
train_prev=self.train_prev,
)
def to_md(self, conf="default", metric="acc", estimators=None, stdev=False) -> str:
res = f"## {int(np.around(self.train_prev, decimals=2)[1]*100)}% positives\n"
res += fmt_line_md(f"train: {str(self.train_prev)}")
res += fmt_line_md(f"validation: {str(self.valid_prev)}")
for k, v in self.times.items():
res += fmt_line_md(f"{k}: {v:.3f}s")
res += "\n"
res += self.table(metric=metric, estimators=estimators).to_html() + "\n\n"
plot_modes = np.array(["delta", "diagonal", "shift"], dtype="object")
if stdev:
whd = np.where(plot_modes == "delta")[0]
if len(whd) > 0:
plot_modes = np.insert(plot_modes, whd + 1, "delta_stdev")
for mode in plot_modes:
op = self.get_plots(
mode=mode,
metric=metric,
estimators=estimators,
conf=conf,
stdev=stdev,
)
res += f"![plot_{mode}]({op.relative_to(env.OUT_DIR).as_posix()})\n"
return res
class DatasetReport:
def __init__(self, name, crs=None):
self.name = name
self.crs: List[CompReport] = [] if crs is None else crs
def data(self, metric: str = None, estimators: str = None) -> pd.DataFrame:
def _cr_train_prev(cr: CompReport):
return cr.train_prev[1]
def _cr_data(cr: CompReport):
return cr.data(metric, estimators)
_crs_sorted = sorted(
[(_cr_train_prev(cr), _cr_data(cr)) for cr in self.crs],
key=lambda cr: len(cr[1].columns),
reverse=True,
)
_crs_train, _crs_data = zip(*_crs_sorted)
_data = pd.concat(_crs_data, axis=0, keys=np.around(_crs_train, decimals=2))
_data = _data.sort_index(axis=0, level=0)
return _data
def shift_data(self, metric: str = None, estimators: str = None) -> pd.DataFrame:
_shift_data: pd.DataFrame = pd.concat(
sorted(
[cr.shift_data(metric, estimators) for cr in self.crs],
key=lambda d: len(d.columns),
reverse=True,
),
axis=0,
)
shift_idx_0 = _shift_data.index.get_level_values(0)
shift_idx_1 = np.empty(shape=shift_idx_0.shape, dtype="<i4")
for _id in np.unique(shift_idx_0):
_wh = np.where(shift_idx_0 == _id)[0]
shift_idx_1[_wh] = np.arange(_wh.shape[0])
_shift_data.index = pd.MultiIndex.from_arrays([shift_idx_0, shift_idx_1])
_shift_data = _shift_data.sort_index(axis=0, level=0)
return _shift_data
def add(self, cr: CompReport):
if cr is None:
return
self.crs.append(cr)
def __add__(self, cr: CompReport):
if cr is None:
return
return DatasetReport(self.name, crs=self.crs + [cr])
def __iadd__(self, cr: CompReport):
self.add(cr)
return self
def to_md(self, conf="default", metric="acc", estimators=[], stdev=False):
res = f"# {self.name}\n\n"
for cr in self.crs:
res += f"{cr.to_md(conf, metric=metric, estimators=estimators, stdev=stdev)}\n\n"
_data = self.data(metric=metric, estimators=estimators)
_shift_data = self.shift_data(metric=metric, estimators=estimators)
res += "## avg\n"
######################## avg on train ########################
res += "### avg on train\n"
avg_on_train = _data.groupby(level=1).mean()
prevs_on_train = np.sort(avg_on_train.index.unique(0))
stdev_on_train = _data.groupby(level=1).std() if stdev else None
avg_on_train_tbl = _data.groupby(level=1).mean()
avg_on_train_tbl.loc["avg", :] = _data.mean()
res += avg_on_train_tbl.to_html() + "\n\n"
delta_op = plot.plot_delta(
base_prevs=np.around([(1.0 - p, p) for p in prevs_on_train], decimals=2),
columns=avg_on_train.columns.to_numpy(),
data=avg_on_train.T.to_numpy(),
metric=metric,
name=conf,
train_prev=None,
avg="train",
)
res += f"![plot_delta]({delta_op.relative_to(env.OUT_DIR).as_posix()})\n"
if stdev:
delta_stdev_op = plot.plot_delta(
base_prevs=np.around(
[(1.0 - p, p) for p in prevs_on_train], decimals=2
),
columns=avg_on_train.columns.to_numpy(),
data=avg_on_train.T.to_numpy(),
metric=metric,
name=conf,
train_prev=None,
stdevs=stdev_on_train.T.to_numpy(),
avg="train",
)
res += f"![plot_delta_stdev]({delta_stdev_op.relative_to(env.OUT_DIR).as_posix()})\n"
######################## avg on test ########################
res += "### avg on test\n"
avg_on_test = _data.groupby(level=0).mean()
prevs_on_test = np.sort(avg_on_test.index.unique(0))
stdev_on_test = _data.groupby(level=0).std() if stdev else None
avg_on_test_tbl = _data.groupby(level=0).mean()
avg_on_test_tbl.loc["avg", :] = _data.mean()
res += avg_on_test_tbl.to_html() + "\n\n"
delta_op = plot.plot_delta(
base_prevs=np.around([(1.0 - p, p) for p in prevs_on_test], decimals=2),
columns=avg_on_test.columns.to_numpy(),
data=avg_on_test.T.to_numpy(),
metric=metric,
name=conf,
train_prev=None,
avg="test",
)
res += f"![plot_delta]({delta_op.relative_to(env.OUT_DIR).as_posix()})\n"
if stdev:
delta_stdev_op = plot.plot_delta(
base_prevs=np.around([(1.0 - p, p) for p in prevs_on_test], decimals=2),
columns=avg_on_test.columns.to_numpy(),
data=avg_on_test.T.to_numpy(),
metric=metric,
name=conf,
train_prev=None,
stdevs=stdev_on_test.T.to_numpy(),
avg="test",
)
res += f"![plot_delta_stdev]({delta_stdev_op.relative_to(env.OUT_DIR).as_posix()})\n"
######################## avg shift ########################
res += "### avg dataset shift\n"
avg_shift = _shift_data.groupby(level=0).mean()
prevs_shift = np.sort(avg_shift.index.unique(0))
shift_op = plot.plot_shift(
shift_prevs=np.around([(1.0 - p, p) for p in prevs_shift], decimals=2),
columns=avg_shift.columns.to_numpy(),
data=avg_shift.T.to_numpy(),
metric=metric,
name=conf,
train_prev=None,
)
res += f"![plot_shift]({shift_op.relative_to(env.OUT_DIR).as_posix()})\n"
return res
def __iter__(self):
return (cr for cr in self.crs)
def __test():
df = None
print(f"{df is None = }")
if df is None:
bp = 0.75
idx = 0
d = {"a": 0.0, "b": 0.1}
df = pd.DataFrame(
d,
index=pd.MultiIndex.from_tuples([(bp, idx)]),
columns=d.keys(),
)
print(df)
print("-" * 100)
bp = 0.75
idx = len(df.loc[bp, :])
df.loc[(bp, idx), :] = {"a": 0.2, "b": 0.3}
print(df)
print("-" * 100)
bp = 0.90
idx = len(df.loc[bp, :]) if bp in df.index else 0
df.loc[(bp, idx), :] = {"a": 0.2, "b": 0.3}
print(df)
print("-" * 100)
bp = 0.90
idx = len(df.loc[bp, :]) if bp in df.index else 0
d = {"a": 0.2, "v": 0.3, "e": 0.4}
notin = np.setdiff1d(list(d.keys()), df.columns)
df.loc[:, notin] = np.nan
df.loc[(bp, idx), :] = d
print(df)
print("-" * 100)
bp = 0.90
idx = len(df.loc[bp, :]) if bp in df.index else 0
d = {"a": 0.3, "v": 0.4, "e": 0.5}
notin = np.setdiff1d(list(d.keys()), df.columns)
print(f"{notin = }")
df.loc[:, notin] = np.nan
df.loc[(bp, idx), :] = d
print(df)
print("-" * 100)
print(f"{np.sort(np.unique(df.index.get_level_values(0))) = }")
print("-" * 100)
print(f"{df.loc[(0.75, ),:] = }\n")
print(f"{df.loc[(slice(None), 1),:] = }")
print("-" * 100)
print(f"{(0.75, ) in df.index = }")
print(f"{(0.7, ) in df.index = }")
print("-" * 100)
df1 = pd.DataFrame(
{
"a": np.linspace(0.0, 1.0, 6),
"b": np.linspace(1.0, 2.0, 6),
"e": np.linspace(2.0, 3.0, 6),
"v": np.linspace(0.0, 1.0, 6),
},
index=pd.MultiIndex.from_product([[0.75, 0.9], [0, 1, 2]]),
columns=["a", "b", "e", "v"],
)
df2 = (
pd.concat([df, df1], keys=["a", "b"], axis=1)
.swaplevel(0, 1, axis=1)
.sort_index(axis=1, level=0)
)
df3 = pd.concat([df1, df], keys=["b", "a"], axis=1)
print(df)
print(df1)
print(df2)
print(df3)
df = df3
print("-" * 100)
print(df.loc[:, ("b", ["e", "v"])])
print(df.loc[:, (slice(None), ["e", "v"])])
print(df.loc[:, ("b", slice(None))])
print(df.loc[:, ("b", slice(None))].droplevel(level=0, axis=1))
print(df.loc[:, (slice(None), ["e", "v"])].droplevel(level=0, axis=1))
print(len(df.loc[:, ("b", slice(None))].columns.unique(0)))
print("-" * 100)
idx_0 = np.around(np.abs(df.index.get_level_values(0).to_numpy() - 0.8), decimals=2)
midx = pd.MultiIndex.from_arrays([idx_0, df.index.get_level_values(1)])
print(midx)
dfs = df.copy()
dfs.index = midx
print(df)
print(dfs)
print("-" * 100)
df.loc[(0.85, 0), :] = np.linspace(0, 1, 8)
df.loc[(0.85, 1), :] = np.linspace(0, 1, 8)
df.loc[(0.85, 2), :] = np.linspace(0, 1, 8)
idx_0 = np.around(np.abs(df.index.get_level_values(0).to_numpy() - 0.8), decimals=2)
print(np.where(idx_0 == 0.05))
idx_1 = np.empty(shape=idx_0.shape, dtype="<i4")
print(idx_1)
for _id in np.unique(idx_0):
wh = np.where(idx_0 == _id)[0]
idx_1[wh] = np.arange(wh.shape[0])
midx = pd.MultiIndex.from_arrays([idx_0, idx_1])
dfs = df.copy()
dfs.index = midx
dfs.sort_index(level=0, axis=0, inplace=True)
print(df)
print(dfs)
print("-" * 100)
print(np.sort(dfs.index.unique(0)))
print("-" * 100)
print(df.groupby(level=0).mean())
print(dfs.groupby(level=0).mean())
print("-" * 100)
s = df.mean(axis=0)
dfa = df.groupby(level=0).mean()
dfa.loc["avg", :] = s
print(dfa)
print("-" * 100)
print(df)
dfn = df.loc[:, (slice(None), slice(None))]
print(dfn)
print(f"{df is dfn = }")
print("-" * 100)
a = np.array(["abc", "bcd", "cde", "bcd"], dtype="object")
print(a)
whb = np.where(a == "bcd")[0]
if len(whb) > 0:
a = np.insert(a, whb + 1, "pippo")
print(a)
print("-" * 100)
dff: pd.DataFrame = df.loc[:, ("a",)]
print(dff.to_dict(orient="list"))
dff = dff.drop(columns=["v"])
print(dff)
s: pd.Series = dff.loc[:, "e"]
print(s)
print(s.to_numpy())
print(type(s.to_numpy()))
print("-" * 100)
df3 = pd.concat([df, df], axis=0, keys=[0.5, 0.3]).sort_index(axis=0, level=0)
print(df3)
df3n = pd.concat([df, df], axis=0).sort_index(axis=0, level=0)
print(df3n)
df = df3
print("-" * 100)
print(df.groupby(level=1).mean(), df.groupby(level=1).count())
print("-" * 100)
print(df)
for ls in df.T.to_numpy():
print(ls)
print("-" * 100)
if __name__ == "__main__":
__test()