Files
deepset-ai--haystack/haystack/evaluation/eval_run_result.py
T
wehub-resource-sync c56bef871b
Sync docs with Docusaurus / sync (push) Waiting to run
Tests / Check if changed (push) Waiting to run
Tests / format (push) Blocked by required conditions
Tests / check-imports (push) Blocked by required conditions
Tests / Unit / macos-latest (push) Blocked by required conditions
Tests / Unit / ubuntu-latest (push) Blocked by required conditions
Tests / Unit / windows-latest (push) Blocked by required conditions
Tests / mypy (push) Blocked by required conditions
Tests / Integration / ubuntu-latest (push) Blocked by required conditions
Tests / Integration / macos-latest (push) Blocked by required conditions
Tests / Integration / windows-latest (push) Blocked by required conditions
Tests / notify-slack-on-failure (push) Blocked by required conditions
Tests / Mark tests as completed (push) Blocked by required conditions
Docker image release / Build base image (push) Waiting to run
CodeQL / Analyze (python) (push) Has been cancelled
Update Platform Components Table / update (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 13:22:28 +08:00

232 lines
9.7 KiB
Python

# SPDX-FileCopyrightText: 2022-present deepset GmbH <info@deepset.ai>
#
# SPDX-License-Identifier: Apache-2.0
import csv
from copy import deepcopy
from typing import Any, Literal, Union
from haystack import logging
from haystack.lazy_imports import LazyImport
with LazyImport("Run 'pip install pandas'") as pandas_import:
from pandas import DataFrame
logger = logging.getLogger(__name__)
class EvaluationRunResult:
"""
Contains the inputs and the outputs of an evaluation pipeline and provides methods to inspect them.
"""
def __init__(self, run_name: str, inputs: dict[str, list[Any]], results: dict[str, dict[str, Any]]) -> None:
"""
Initialize a new evaluation run result.
:param run_name:
Name of the evaluation run.
:param inputs:
Dictionary containing the inputs used for the run. Each key is the name of the input and its value is a list
of input values. The length of the lists should be the same.
:param results:
Dictionary containing the results of the evaluators used in the evaluation pipeline. Each key is the name
of the metric and its value is dictionary with the following keys:
- 'score': The aggregated score for the metric.
- 'individual_scores': A list of scores for each input sample.
"""
self.run_name = run_name
self.inputs = deepcopy(inputs)
self.results = deepcopy(results)
if len(inputs) == 0:
raise ValueError("No inputs provided.")
if len({len(lst) for lst in inputs.values()}) != 1:
raise ValueError("Lengths of the inputs should be the same.")
expected_len = len(next(iter(inputs.values())))
for metric, outputs in results.items():
if "score" not in outputs:
raise ValueError(f"Aggregate score missing for {metric}.")
if "individual_scores" not in outputs:
raise ValueError(f"Individual scores missing for {metric}.")
if len(outputs["individual_scores"]) != expected_len:
raise ValueError(
f"Length of individual scores for '{metric}' should be the same as the inputs. "
f"Got {len(outputs['individual_scores'])} but expected {expected_len}."
)
@staticmethod
def _write_to_csv(csv_file: str, data: dict[str, list[Any]]) -> str:
"""
Write data to a CSV file.
:param csv_file: Path to the CSV file to write
:param data: Dictionary containing the data to write
:return: Status message indicating success or failure
"""
list_lengths = [len(value) for value in data.values()]
if len(set(list_lengths)) != 1:
raise ValueError("All lists in the JSON must have the same length")
try:
headers = list(data.keys())
num_rows = list_lengths[0]
rows = []
for i in range(num_rows):
row = [data[header][i] for header in headers]
rows.append(row)
with open(csv_file, "w", newline="") as csvfile:
writer = csv.writer(csvfile)
writer.writerow(headers)
writer.writerows(rows)
return f"Data successfully written to {csv_file}"
except PermissionError:
return f"Error: Permission denied when writing to {csv_file}"
except OSError as e:
return f"Error writing to {csv_file}: {str(e)}"
except Exception as e:
return f"Error: {str(e)}"
@staticmethod
def _handle_output(
data: dict[str, list[Any]], output_format: Literal["json", "csv", "df"] = "csv", csv_file: str | None = None
) -> Union[str, "DataFrame", dict[str, list[Any]]]:
"""
Handles output formatting based on `output_format`.
:returns: DataFrame for 'df', dict for 'json', or confirmation message for 'csv'
"""
if output_format == "json":
return data
if output_format == "df":
pandas_import.check()
return DataFrame(data)
if output_format == "csv":
if not csv_file:
raise ValueError("A file path must be provided in 'csv_file' parameter to save the CSV output.")
return EvaluationRunResult._write_to_csv(csv_file, data)
raise ValueError(f"Invalid output format '{output_format}' provided. Choose from 'json', 'csv', or 'df'.")
def aggregated_report(
self, output_format: Literal["json", "csv", "df"] = "json", csv_file: str | None = None
) -> Union[dict[str, list[Any]], "DataFrame", str]:
"""
Generates a report with aggregated scores for each metric.
:param output_format: The output format for the report, "json", "csv", or "df", default to "json".
:param csv_file: Filepath to save CSV output if `output_format` is "csv", must be provided.
:returns:
JSON or DataFrame with aggregated scores, in case the output is set to a CSV file, a message confirming the
successful write or an error message.
"""
results = {k: v["score"] for k, v in self.results.items()}
data = {"metrics": list(results.keys()), "score": list(results.values())}
return self._handle_output(data, output_format, csv_file)
def detailed_report(
self, output_format: Literal["json", "csv", "df"] = "json", csv_file: str | None = None
) -> Union[dict[str, list[Any]], "DataFrame", str]:
"""
Generates a report with detailed scores for each metric.
:param output_format: The output format for the report, "json", "csv", or "df", default to "json".
:param csv_file: Filepath to save CSV output if `output_format` is "csv", must be provided.
:returns:
JSON or DataFrame with the detailed scores, in case the output is set to a CSV file, a message confirming
the successful write or an error message.
"""
combined_data = {col: self.inputs[col] for col in self.inputs}
# enforce columns type consistency
scores_columns = list(self.results.keys())
for col in scores_columns:
col_values = self.results[col]["individual_scores"]
if any(isinstance(v, float) for v in col_values):
col_values = [float(v) for v in col_values]
combined_data[col] = col_values
return self._handle_output(combined_data, output_format, csv_file)
def comparative_detailed_report(
self,
other: "EvaluationRunResult",
keep_columns: list[str] | None = None,
output_format: Literal["json", "csv", "df"] = "json",
csv_file: str | None = None,
) -> Union[str, "DataFrame", None]:
"""
Generates a report with detailed scores for each metric from two evaluation runs for comparison.
:param other: Results of another evaluation run to compare with.
:param keep_columns: List of common column names to keep from the inputs of the evaluation runs to compare.
:param output_format: The output format for the report, "json", "csv", or "df", default to "json".
:param csv_file: Filepath to save CSV output if `output_format` is "csv", must be provided.
:returns:
JSON or DataFrame with a comparison of the detailed scores, in case the output is set to a CSV file,
a message confirming the successful write or an error message.
:raises TypeError: If `other` is not an EvaluationRunResult instance, or if the detailed reports are not
dictionaries.
:raises ValueError: If the `other` parameter is missing required attributes.
"""
if not isinstance(other, EvaluationRunResult):
raise TypeError("Comparative scores can only be computed between EvaluationRunResults.")
if not hasattr(other, "run_name") or not hasattr(other, "inputs") or not hasattr(other, "results"):
raise ValueError("The 'other' parameter must have 'run_name', 'inputs', and 'results' attributes.")
if self.run_name == other.run_name:
logger.warning(
"The run names of the two evaluation results are the same ('{run_name}')", run_name=self.run_name
)
if self.inputs.keys() != other.inputs.keys():
logger.warning(
"The input columns differ between the results; using the input columns of '{run_name}'",
run_name=self.run_name,
)
# got both detailed reports
detailed_a = self.detailed_report(output_format="json")
detailed_b = other.detailed_report(output_format="json")
# ensure both detailed reports are in dictionaries format
if not isinstance(detailed_a, dict) or not isinstance(detailed_b, dict):
raise TypeError("Detailed reports must be dictionaries.")
# determine which columns to ignore
if keep_columns is None:
ignore = list(self.inputs.keys())
else:
ignore = [col for col in list(self.inputs.keys()) if col not in keep_columns]
# filter out ignored columns from pipe_b_dict
filtered_detailed_b = {
f"{other.run_name}_{key}": value for key, value in detailed_b.items() if key not in ignore
}
# rename columns in pipe_a_dict based on ignore list
renamed_detailed_a = {
(key if key in ignore else f"{self.run_name}_{key}"): value for key, value in detailed_a.items()
}
# combine both detailed reports
combined_results = {**renamed_detailed_a, **filtered_detailed_b}
return self._handle_output(combined_results, output_format, csv_file)