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compile_roi_results.py
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compile_roi_results.py
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import argparse
import logging
import pandas as pd
import numpy as np
from pathlib import Path
from cik_benchmark import ALL_TASKS
TASKS_STR_TO_TASK = {x.__name__: x for x in ALL_TASKS}
logging.basicConfig(level=logging.INFO)
CAP = 5
METRIC_NAMES = {
"standard_crps": "unweighted_CRPS",
"crps": "RCRPS",
"roi_crps": "RoI_only_CRPS",
"non_roi_crps": "nonRoI_only_CRPS",
"violation_crps": "violation_CRPS",
}
def get_df(input_folder) -> pd.DataFrame:
entries = []
for f in input_folder.glob("*/*/*/*/evaluation"):
instance = f.parts[-2]
task = f.parts[-3]
model = f.parts[-4]
model_family = f.parts[-5]
if task not in TASKS_STR_TO_TASK.keys():
continue
s = open(f, "r").read().replace("nan", "10000000")
try:
entry = eval(s)
entry["model_family"] = model_family
entry["model"] = model
entry["Task"] = task
entry["instance"] = instance
for key, value in entry.items():
if type(value) != str and value < 0:
entry[key] = 10000000
entries.append(entry)
except:
logging.info(f"Cannot read file for: {model}, {task}, {instance}")
return pd.DataFrame(entries)
def get_pivot_table(df: pd.DataFrame, metric) -> pd.DataFrame:
def aggfunc(x):
x = list(x)
for idx, value in enumerate(x):
if value > CAP or np.isnan(value):
x[idx] = CAP
if len(x) < 5:
x.extend([CAP for _ in range(CAP - len(x))])
mean = np.mean(x)
std = np.std(x, ddof=1)
stderr = std / np.sqrt(len(x))
return f"{mean:.3f} ± {stderr:.3f}"
def missing_count(x):
x = list(x)
return 5 - len(x)
def count_nans(x):
x = pd.Series(x)
return x.isna().sum()
def get_capped_counts(x):
x = list(x)
return len([value for value in x if value > CAP])
capped_counts = pd.pivot_table(
df,
values=metric,
index=["Task"],
columns=["model_family"],
aggfunc=get_capped_counts,
)
missing_counts = pd.pivot_table(
df,
values=metric,
index=["Task"],
columns=["model_family"],
aggfunc=missing_count,
)
nan_counts = pd.pivot_table(
df, values=metric, index=["Task"], columns=["model_family"], aggfunc=count_nans
)
pivot_df = pd.pivot_table(
df, values=metric, index=["Task"], columns=["model_family"], aggfunc=aggfunc
)
return pivot_df, capped_counts, missing_counts, nan_counts
def main():
parser = argparse.ArgumentParser()
parser.add_argument(
"--resultsdir",
type=str,
default="/starcaster/data/benchmark/results_24_sep_with_transform",
help="Input folder containing experiment results",
)
args = parser.parse_args()
input_folder = Path(args.resultsdir)
output_folder = Path(args.resultsdir)
df = get_df(input_folder)
significant_failures_count = {}
missing_failures_count = {}
nan_failures_count = {}
# Add the violation_crps to the various CRPS versions
for metric in METRIC_NAMES.keys():
df[metric] = df[metric] + df.violation_crps
for (
metric,
output_name,
) in METRIC_NAMES.items():
(
pivot_df,
significant_failures_count[metric],
missing_failures_count[metric],
nan_failures_count[metric],
) = get_pivot_table(df, metric)
# Get task-level views
significant_failures_count[metric].to_csv(
output_folder / f"significant_failures_count_{metric}_df_CAP_{CAP}.csv"
)
missing_failures_count[metric].to_csv(
output_folder / f"missing_failures_count_{metric}_df_CAP_{CAP}.csv"
)
nan_failures_count[metric].to_csv(
output_folder / f"nan_failures_count_{metric}_df_CAP_{CAP}.csv"
)
# Aggregate view: sum values from all tasks
significant_failures_count[metric] = (
significant_failures_count[metric].sum().to_dict()
)
missing_failures_count[metric] = missing_failures_count[metric].sum().to_dict()
nan_failures_count[metric] = nan_failures_count[metric].sum().to_dict()
pivot_df = pivot_df.sort_index()
pivot_df.to_csv(output_folder / f"results_{output_name}_CAP_{CAP}_oct16.csv")
significant_failures_count_df = pd.DataFrame.from_dict(
significant_failures_count, orient="index"
).astype(int)
missing_failures_count_df = pd.DataFrame.from_dict(
missing_failures_count, orient="index"
).astype(int)
nan_failures_count_df = pd.DataFrame.from_dict(
nan_failures_count, orient="index"
).astype(int)
total_failures_count_df = (
significant_failures_count_df.add(missing_failures_count_df)
.add(nan_failures_count_df)
.astype(int)
)
significant_failures_count_df.to_csv(
output_folder / f"significant_failures_count_df_CAP_{CAP}.csv"
)
missing_failures_count_df.to_csv(
output_folder / f"missing_failures_count_df_CAP_{CAP}.csv"
)
nan_failures_count_df.to_csv(output_folder / f"nan_failures_count_df_CAP_{CAP}.csv")
total_failures_count_df.to_csv(
output_folder / f"total_failures_count_df_CAP_{CAP}.csv"
)
if __name__ == "__main__":
main()