File size: 3,377 Bytes
8977100
b783bce
 
 
e5a087b
 
 
 
 
1ec0dd2
6f3c593
763caa5
1ec0dd2
 
c4dd600
31a2849
e5a087b
f32487c
b783bce
e5a087b
6798e06
7ed7ada
e5a087b
b783bce
ebafcc4
763caa5
 
 
e5a087b
 
 
 
63ac409
e5a087b
c4dd600
e5a087b
 
b783bce
c776a48
63ac409
 
e5a087b
b783bce
f32487c
e5a087b
37cecae
63ac409
 
e5a087b
 
 
6798e06
b783bce
63ac409
b783bce
6452fbf
e5a087b
63ac409
 
e5a087b
f95da7e
8977100
 
63ac409
 
5818152
 
e5a087b
 
 
63ac409
 
5818152
 
8977100
 
 
 
 
 
 
63ac409
7ed7ada
63ac409
 
fbd19c3
 
8977100
 
 
 
 
fbd19c3
8977100
 
 
 
 
 
 
 
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
from typing import Dict, Iterable, List

import evaluate

from .artifact import __file__ as _
from .blocks import __file__ as _
from .card import __file__ as _
from .catalog import __file__ as _
from .collections import __file__ as _
from .collections_operators import __file__ as _
from .dataclass import __file__ as _
from .dataset_utils import __file__ as _
from .deprecation_utils import __file__ as _
from .dialog_operators import __file__ as _
from .dict_utils import __file__ as _
from .eval_utils import __file__ as _
from .file_utils import __file__ as _
from .formats import __file__ as _
from .fusion import __file__ as _
from .generator_utils import __file__ as _
from .hf_utils import __file__ as _
from .hf_utils import verify_versions_compatibility
from .instructions import __file__ as _
from .loaders import __file__ as _
from .logging_utils import __file__ as _
from .metric_utils import UNITXT_METRIC_SCHEMA
from .metric_utils import __file__ as _
from .metric_utils import _compute
from .metrics import __file__ as _
from .normalizers import __file__ as _
from .operator import __file__ as _
from .operators import __file__ as _
from .parsing_utils import __file__ as _
from .processors import __file__ as _
from .random_utils import __file__ as _
from .recipe import __file__ as _
from .register import __file__ as _
from .schema import __file__ as _
from .settings_utils import __file__ as _
from .settings_utils import get_constants
from .span_lableing_operators import __file__ as _
from .split_utils import __file__ as _
from .splitters import __file__ as _
from .standard import __file__ as _
from .stream import __file__ as _
from .string_operators import __file__ as _
from .struct_data_operators import __file__ as _
from .system_prompts import __file__ as _
from .task import __file__ as _
from .templates import __file__ as _
from .text_utils import __file__ as _
from .type_utils import __file__ as _
from .utils import __file__ as _
from .utils import is_package_installed
from .validate import __file__ as _
from .version import __file__ as _

constants = get_constants()


class Metric(evaluate.Metric):
    calc_confidence_intervals: bool = True

    VERSION = constants.version

    def _info(self):
        return evaluate.MetricInfo(
            description="_DESCRIPTION",
            citation="_CITATION",
            features=UNITXT_METRIC_SCHEMA,
            codebase_urls=[constants.codebase_url],
            reference_urls=[constants.website_url],
        )

    def _compute(
        self,
        predictions: List[str],
        references: Iterable,
        flatten: bool = False,
        split_name: str = "all",
    ):
        if is_package_installed("unitxt"):
            verify_versions_compatibility("metric", self.VERSION)

            from unitxt.metric_utils import _compute as _compute_installed

            return _compute_installed(
                predictions=predictions,
                references=references,
                flatten=flatten,
                split_name=split_name,
                calc_confidence_intervals=self.calc_confidence_intervals,
            )

        return _compute(
            predictions=predictions,
            references=references,
            flatten=flatten,
            split_name=split_name,
            calc_confidence_intervals=self.calc_confidence_intervals,
        )