evaluator.py 16.9 KB
Newer Older
lintangsutawika's avatar
lintangsutawika committed
1
import random
Leo Gao's avatar
Leo Gao committed
2
import itertools
FarzanehNakhaee's avatar
FarzanehNakhaee committed
3
import json
lintangsutawika's avatar
lintangsutawika committed
4
import collections
FarzanehNakhaee's avatar
FarzanehNakhaee committed
5
6
import logging
import sys
lintangsutawika's avatar
lintangsutawika committed
7

8
9
import torch

10
import numpy as np
lintangsutawika's avatar
lintangsutawika committed
11
12

import lm_eval.api
13
import lm_eval.tasks
lintangsutawika's avatar
lintangsutawika committed
14
import lm_eval.benchmarks
lintangsutawika's avatar
lintangsutawika committed
15
import lm_eval.models
lintangsutawika's avatar
lintangsutawika committed
16
import lm_eval.api.metrics
lintangsutawika's avatar
lintangsutawika committed
17
import lm_eval.api.registry
lintangsutawika's avatar
lintangsutawika committed
18

lintangsutawika's avatar
lintangsutawika committed
19
20
21
22
from lm_eval.utils import (
    positional_deprecated,
    run_task_tests,
    make_table,
23
    create_iterator,
lintangsutawika's avatar
lintangsutawika committed
24
25
    get_git_commit_hash,
)
26

lintangsutawika's avatar
lintangsutawika committed
27
28
from lm_eval.logger import eval_logger

FarzanehNakhaee's avatar
FarzanehNakhaee committed
29
30
31
32
logger = logging.getLogger(__name__)
logger.setLevel(logging.INFO)
logger.addHandler(logging.StreamHandler(sys.stdout))

Fabrizio Milo's avatar
Fabrizio Milo committed
33

34
@positional_deprecated
Fabrizio Milo's avatar
Fabrizio Milo committed
35
36
37
38
def simple_evaluate(
    model,
    model_args=None,
    tasks=[],
39
    num_fewshot=None,
Fabrizio Milo's avatar
Fabrizio Milo committed
40
    batch_size=None,
41
    max_batch_size=None,
Fabrizio Milo's avatar
Fabrizio Milo committed
42
    device=None,
haileyschoelkopf's avatar
haileyschoelkopf committed
43
    use_cache=None,
Fabrizio Milo's avatar
Fabrizio Milo committed
44
    limit=None,
Ethan Smith's avatar
Ethan Smith committed
45
46
    bootstrap_iters: int = 100000,
    check_integrity: bool = False,
Fabrizio Milo's avatar
Fabrizio Milo committed
47
    decontamination_ngrams_path=None,
Ethan Smith's avatar
Ethan Smith committed
48
49
    write_out: bool = False,
    log_samples: bool = True,
Fabrizio Milo's avatar
Fabrizio Milo committed
50
):
51
    """Instantiate and evaluate a model on a list of tasks.
52

53
54
55
    :param model: Union[str, LM]
        Name of model or LM object, see lm_eval.models.get_model
    :param model_args: Optional[str]
Fabrizio Milo's avatar
Fabrizio Milo committed
56
        String arguments for each model class, see LM.create_from_arg_string.
57
58
        Ignored if `model` argument is a LM object.
    :param tasks: list[Union[str, Task]]
Leo Gao's avatar
Leo Gao committed
59
        List of task names or Task objects. Task objects will be taken to have name task.EVAL_HARNESS_NAME if defined and type(task).__name__ otherwise.
60
61
    :param num_fewshot: int
        Number of examples in few-shot context
62
    :param batch_size: int or str, optional
63
        Batch size for model
64
65
    :param max_batch_size: int, optional
        Maximal batch size to try with automatic batch size detection
66
    :param device: str, optional
67
        PyTorch device (e.g. "cpu" or "cuda:0") for running models
haileyschoelkopf's avatar
haileyschoelkopf committed
68
69
    :param use_cache: str, optional
        A path to a sqlite db file for caching model responses. `None` if not caching.
70
71
    :param limit: int or float, optional
        Limit the number of examples per task (only use this for testing), If <1, limit is a percentage of the total number of examples.
72
73
    :param bootstrap_iters:
        Number of iterations for bootstrap statistics
Stephen Hogg's avatar
Stephen Hogg committed
74
75
    :param check_integrity: bool
        Whether to run the relevant part of the test suite for the tasks
76
    :param write_out: bool
77
78
79
        If True, write out an example document and model input for checking task integrity
    :param log_samples: bool
        If True, write out all model outputs and documents for per-sample measurement and post-hoc analysis
80
    :return
81
        Dictionary of results
82
    """
83
    random.seed(0)
84
    np.random.seed(1234)
85
86
87
    torch.manual_seed(
        1234
    )  # TODO: this may affect training runs that are run with evaluation mid-run.
88

89
90
91
    assert (
        tasks != []
    ), "No tasks specified, or no tasks found. Please verify the task names."
92
93

    if isinstance(model, str):
Fabrizio Milo's avatar
Fabrizio Milo committed
94
95
        if model_args is None:
            model_args = ""
lintangsutawika's avatar
lintangsutawika committed
96
        lm = lm_eval.api.registry.get_model(model).create_from_arg_string(
lintangsutawika's avatar
lintangsutawika committed
97
98
99
100
101
102
            model_args,
            {
                "batch_size": batch_size,
                "max_batch_size": max_batch_size,
                "device": device,
            },
Fabrizio Milo's avatar
Fabrizio Milo committed
103
        )
104
    else:
105
        assert isinstance(model, lm_eval.api.model.LM)
106
        lm = model
107

haileyschoelkopf's avatar
haileyschoelkopf committed
108
109
110
111
112
113
114
115
116
117
    if use_cache is not None:
        print(f"Using cache at {use_cache + '_rank' + str(lm.rank) + '.db'}")
        lm = lm_eval.api.model.CachingLM(
            lm,
            use_cache
            # each rank receives a different cache db.
            # necessary to avoid multiple writes to cache at once
            + "_rank" + str(lm.rank) + ".db",
        )

118
119
    task_dict = lm_eval.tasks.get_task_dict(tasks)
    for task_name in task_dict.keys():
lintangsutawika's avatar
lintangsutawika committed
120
121
122
123
124
        task_obj = task_dict[task_name]
        if type(task_obj) == tuple:
            group, task_obj = task_obj

        config = task_obj._config
125
126
127
128
129
130
131
        if num_fewshot is not None:
            if config["num_fewshot"] > 0:
                default_num_fewshot = config["num_fewshot"]
                eval_logger.warning(
                    f"Overwriting default num_fewshot of {task_name} from {default_num_fewshot} to {num_fewshot}"
                )

Lintang Sutawika's avatar
Lintang Sutawika committed
132
            task_obj._config["num_fewshot"] = num_fewshot
Jonathan Tow's avatar
Merge  
Jonathan Tow committed
133

Stephen Hogg's avatar
Stephen Hogg committed
134
    if check_integrity:
135
        run_task_tests(task_list=tasks)
Stephen Hogg's avatar
Stephen Hogg committed
136

137
138
139
140
    results = evaluate(
        lm=lm,
        task_dict=task_dict,
        limit=limit,
Niklas Muennighoff's avatar
Niklas Muennighoff committed
141
        bootstrap_iters=bootstrap_iters,
Fabrizio Milo's avatar
Fabrizio Milo committed
142
        decontamination_ngrams_path=decontamination_ngrams_path,
143
        write_out=write_out,
144
        log_samples=log_samples,
145
    )
146

147
148
149
    if lm.rank == 0:
        # add info about the model and few shot config
        results["config"] = {
lintangsutawika's avatar
lintangsutawika committed
150
151
152
            "model": model
            if isinstance(model, str)
            else model.model.config._name_or_path,
153
154
            "model_args": model_args,
            "batch_size": batch_size,
lintangsutawika's avatar
lintangsutawika committed
155
156
157
            "batch_sizes": list(lm.batch_sizes.values())
            if hasattr(lm, "batch_sizes")
            else [],
158
            "device": device,
haileyschoelkopf's avatar
haileyschoelkopf committed
159
            "use_cache": use_cache,
160
161
162
            "limit": limit,
            "bootstrap_iters": bootstrap_iters,
        }
163
        results["git_hash"] = get_git_commit_hash()
164
165
166
        return results
    else:
        return None
167

Leo Gao's avatar
Leo Gao committed
168

169
decontaminate_suffix = "_decontaminate"
Leo Gao's avatar
Leo Gao committed
170

Fabrizio Milo's avatar
Fabrizio Milo committed
171

172
@positional_deprecated
Fabrizio Milo's avatar
Fabrizio Milo committed
173
174
175
176
def evaluate(
    lm,
    task_dict,
    limit=None,
Ethan Smith's avatar
Ethan Smith committed
177
    bootstrap_iters: int = 100000,
Fabrizio Milo's avatar
Fabrizio Milo committed
178
    decontamination_ngrams_path=None,
Ethan Smith's avatar
Ethan Smith committed
179
180
    write_out: bool = False,
    log_samples: bool = True,
Fabrizio Milo's avatar
Fabrizio Milo committed
181
):
182
183
184
185
186
    """Instantiate and evaluate a model on a list of tasks.

    :param lm: obj
        Language Model
    :param task_dict: dict[str, Task]
haileyschoelkopf's avatar
haileyschoelkopf committed
187
        Dictionary of tasks. Tasks will be taken to have name type(task).config.task .
188
189
190
191
    :param limit: int, optional
        Limit the number of examples per task (only use this for testing)
    :param bootstrap_iters:
        Number of iterations for bootstrap statistics
192
    :param write_out: bool
193
194
195
        If True, write out an example document and model input for checking task integrity
    :param log_samples: bool
        If True, write out all model outputs and documents for per-sample measurement and post-hoc analysis
196
197
198
    :return
        Dictionary of results
    """
199

lintangsutawika's avatar
lintangsutawika committed
200
    # decontaminate = decontamination_ngrams_path is not None
201

202
    # stores the final result for each task, for each metric/filter pair.
Leo Gao's avatar
Leo Gao committed
203
    results = collections.defaultdict(dict)
204
    # Tracks each task's version.
Leo Gao's avatar
Leo Gao committed
205
    versions = collections.defaultdict(dict)
206
    # Tracks the YAML configs of all chosen tasks.
207
    configs = collections.defaultdict(dict)
208
    # logs info about each document evaluated.
lintangsutawika's avatar
lintangsutawika committed
209
    samples = collections.defaultdict(list)
210
    # tracks all Instances/requests a model must generate output on.
Leo Gao's avatar
Leo Gao committed
211
    requests = collections.defaultdict(list)
Lintang Sutawika's avatar
Lintang Sutawika committed
212
    # Stores task scores based on task grouping.
lintangsutawika's avatar
lintangsutawika committed
213
    aggregate = collections.defaultdict(dict)
214
    # tracks if a task was chosen via user selecting a group containing it
215
    task_groups = collections.defaultdict(dict)
216
217
    # stores the amount to pad out reqs per req. type so that
    # number of fwd passes per distributed rank is equal
218
219
    padding_requests = collections.defaultdict(int)

Lintang Sutawika's avatar
Lintang Sutawika committed
220
    # Stores group related keys and values for group-aggregation
lintangsutawika's avatar
lintangsutawika committed
221
    task_groups = collections.defaultdict(dict)
222

223
    # get lists of each type of request
224
    for task_name, task in task_dict.items():
225
226
        if type(task) == tuple:
            group, task = task
227
            task_groups[task_name] = group
228
            aggregate[task_name] = {}
229

Leo Gao's avatar
Leo Gao committed
230
        versions[task_name] = task.VERSION
haileyschoelkopf's avatar
haileyschoelkopf committed
231
232
        configs[task_name] = dict(task.dump_config())

Hailey Schoelkopf's avatar
Hailey Schoelkopf committed
233
        if limit is not None:
234
235
236
237
238
239
            if task.has_test_docs():
                task_docs = task.test_docs()
            elif task.has_validation_docs():
                task_docs = task.validation_docs()
            else:
                raise RuntimeError("Task has neither test_docs nor validation_docs")
240
            limit = int(len(task_docs) * limit) if limit < 1.0 else int(limit)
241

242
243
        task.build_all_requests(limit=limit, rank=lm.rank, world_size=lm.world_size)

haileyschoelkopf's avatar
haileyschoelkopf committed
244
245
246
247
248
249
250
        eval_logger.info(
            f"Task: {task_name}; number of requests on this rank: {len(task.instances)}"
        )

        if write_out:
            for inst in task.instances:
                # print the prompt for the first few documents
Hailey Schoelkopf's avatar
Hailey Schoelkopf committed
251
252
                if inst.doc_id < 1:
                    eval_logger.info(
haileyschoelkopf's avatar
haileyschoelkopf committed
253
254
                        f"Task: {task_name}; document {inst.doc_id}; context prompt (starting on next line):\
\n{inst.args[0]}\n(end of prompt on previous line)\ntarget string or answer choice index (starting on next line):\n{task.doc_to_target(inst.doc)}\n(end of target on previous line)"
haileyschoelkopf's avatar
haileyschoelkopf committed
255
                    )
haileyschoelkopf's avatar
haileyschoelkopf committed
256
                    eval_logger.info(f"Request: {str(inst)}")
haileyschoelkopf's avatar
haileyschoelkopf committed
257

258
        # aggregate Instances by LM method requested to get output.
lintangsutawika's avatar
lintangsutawika committed
259
260
        reqtype = (
            "loglikelihood"
Hailey Schoelkopf's avatar
Hailey Schoelkopf committed
261
            if task.OUTPUT_TYPE == "multiple_choice"
lintangsutawika's avatar
lintangsutawika committed
262
263
264
            else task.OUTPUT_TYPE
        )  # TODO: this is hacky, fix in task.py
        requests[reqtype].extend(task.instances)
265
266

        if lm.world_size > 1:
267
268
269
270
            instances_rnk = torch.tensor(len(task._instances), device=lm.device)
            gathered_item = (
                lm.accelerator.gather(instances_rnk).cpu().detach().numpy().tolist()
            )
271

272
            # compute number of pseudobatches to pad with (FSDP/DDP require even batches among ranks)
273
            numpad = max(gathered_item) - gathered_item[lm.rank]
274
            padding_requests[task.OUTPUT_TYPE] += numpad
275

276
    ### Run LM on inputs, get all outputs ###
Leo Gao's avatar
Leo Gao committed
277
278
    # execute each type of request
    for reqtype, reqs in requests.items():
lintangsutawika's avatar
lintangsutawika committed
279
        eval_logger.info("Running {} requests".format(reqtype))
280
281
282
283
        # create `K` copies of each request `req` based off `K = req.repeats`
        cloned_reqs = []
        for req in reqs:
            cloned_reqs.extend([req] * req.repeats)
lintangsutawika's avatar
lintangsutawika committed
284

285
286
        if (lm.world_size > 1) and (padding_requests[reqtype] > 0):
            for _ in range(padding_requests[reqtype]):
287
288
                cloned_reqs.extend([req] * req.repeats)

289
290
291
292
293
294
295
        # run requests through model
        resps = getattr(lm, reqtype)(cloned_reqs)

        # put responses from model into a list of length K for each request.
        for x, req in zip(resps, cloned_reqs):
            req.resps.append(x)

296
297
        if lm.world_size > 1:
            lm.accelerator.wait_for_everyone()
298

299
300
301
    ### Postprocess outputs ###
    # TODO: del model here, maybe (idea: allow user to specify device of e.g. reward model separately)
    for task_name, task in task_dict.items():
302
303
        if type(task) == tuple:
            group, task = task
304
305
306
        task.apply_filters()

    ### Collect values of metrics on all datapoints ###
Leo Gao's avatar
Leo Gao committed
307
308
309
    vals = collections.defaultdict(list)

    # unpack results and sort back in order and return control to Task
310
    for task_name, task in task_dict.items():
311
312
        if type(task) == tuple:
            group, task = task
haileyschoelkopf's avatar
haileyschoelkopf committed
313
314
        # TODO: make it possible to use a different metric per filter
        # iterate over different filters used
315
        for key in task.instances[0].filtered_resps.keys():
316
317
318
319
            doc_iterator = (
                itertools.islice(
                    enumerate(task.test_docs()), lm.rank, limit, lm.world_size
                )
lintangsutawika's avatar
lintangsutawika committed
320
                if task.has_test_docs()
321
322
323
324
                else itertools.islice(
                    enumerate(task.validation_docs()), lm.rank, limit, lm.world_size
                )
            )
325
            for doc_id, doc in doc_iterator:
326
327
                # subset instances to only this document id ; sort by idx
                requests = list(filter(lambda x: x.doc_id == doc_id, task.instances))
328
                requests.sort(key=lambda x: x.idx)
lintangsutawika's avatar
lintangsutawika committed
329
330
331
                metrics = task.process_results(
                    doc, [req.filtered_resps[key] for req in requests]
                )
332
333
334
335
336
337
338
339
340
341
342
343
                if log_samples:
                    target = task.doc_to_target(doc)
                    example = {
                        "doc_id": doc_id,
                        "doc": doc,
                        "target": target,
                        "arguments": [req.args for req in requests],
                        "resps": [req.resps for req in requests],
                        "filtered_resps": [req.filtered_resps[key] for req in requests],
                    }
                    example.update(metrics)
                    samples[task_name].append(example)
344
345
346
                for metric, value in metrics.items():
                    vals[(task_name, key, metric)].append(value)

347
    if lm.world_size > 1:
348
        # if multigpu, then gather data across all ranks
349
350
351
352
353
354
355
356
        # first gather logged samples across all ranks
        for task_name, task_samples in list(samples.items()):
            full_samples = [None] * lm.world_size
            torch.distributed.all_gather_object(full_samples, task_samples)

            samples[task_name] = list(itertools.chain.from_iterable(full_samples))

        # then collect metrics across all ranks
357
358
        vals_torch = collections.defaultdict(list)
        for (task_name, key, metric), items in vals.items():
359
            numitem = 0
360
            if type(items[0]) == tuple:
361
362
                numitem = len(items[0])

363
364
365
366
            if isinstance(items[0], (str, list)):
                # handle the string case
                gathered_items = [None] * lm.accelerator.num_processes
                torch.distributed.all_gather_object(gathered_items, items)
367

368
                gathered_item = list(itertools.chain.from_iterable(gathered_items))
369
            else:
370
371
372
373
374
375
376
377
378
379
                # distributed gather requires all ranks to have same dimensions
                # so we pad out with float32 min value
                pad_value = torch.finfo(torch.float32).min
                metrics_tensor = torch.tensor(items, device=lm.device)

                original_dtype = metrics_tensor.dtype  # store original dtype
                torch_device_tensor = lm.accelerator.pad_across_processes(
                    metrics_tensor.to(torch.float32), pad_index=pad_value
                )
                gathered_item = lm.accelerator.gather(torch_device_tensor)
380

381
382
383
384
385
386
387
388
389
390
391
                if numitem > 0:
                    gathered_filtered = gathered_item[gathered_item[:, 0] != pad_value]
                else:
                    gathered_filtered = gathered_item[gathered_item != pad_value]

                gathered_item = (
                    gathered_filtered.to(original_dtype).cpu().detach().numpy().tolist()
                )
                # reconvert if we were passed a tuple of values
                if numitem > 0:
                    gathered_item = [tuple(g) for g in gathered_item]
392

393
394
            if lm.rank == 0:
                vals_torch[(task_name, key, metric)] = gathered_item
395

396
        vals = vals_torch
397

398
399
400
401
402
    if lm.rank == 0:
        ### Aggregate results over all datapoints ###
        # aggregate results ; run bootstrap CIs
        for (task_name, key, metric), items in vals.items():
            task = task_dict[task_name]
403
404
            if type(task) == tuple:
                group, task = task
lintangsutawika's avatar
lintangsutawika committed
405
406
407
            task_score = task.aggregation()[metric](items)
            results[task_name][metric + "," + key] = task_score

408
409
410
411
412
413
            # Need to put back in results
            # pythia | acc
            #        | perplexity
            #        | word_perplexity
            #        | byte_perplexity
            #        | bits_per_byte
414
            if task_name in task_groups:
415
                group_name = task_groups[task_name]
416
                if metric in list(aggregate[group_name].keys()):
417
                    aggregate[group_name][metric].append(task_score)
418
419
                else:
                    aggregate[group_name][metric] = [task_score]
Leo Gao's avatar
Leo Gao committed
420

421
422
            # hotfix: bleu, chrf, ter seem to be really expensive to bootstrap
            # so we run them less iterations. still looking for a cleaner way to do this
423
            if False:  # bootstrap_iters > 0:
haileyschoelkopf's avatar
haileyschoelkopf committed
424
425
426
427
428
429
                stderr = lm_eval.api.metrics.stderr_for_metric(
                    metric=task.aggregation()[metric],
                    bootstrap_iters=min(bootstrap_iters, 1000)
                    if metric in ["bleu", "chrf", "ter"]
                    else bootstrap_iters,
                )
430

haileyschoelkopf's avatar
haileyschoelkopf committed
431
432
                if stderr is not None:
                    results[task_name][metric + "_stderr" + "," + key] = stderr(items)
Fabrizio Milo's avatar
Fabrizio Milo committed
433

lintangsutawika's avatar
lintangsutawika committed
434
        if bool(aggregate):
435
436
437
438
            for group in aggregate.keys():
                for metric in aggregate[group].keys():
                    aggregate[group][metric] = np.average(aggregate[group][metric])
                    versions[group] = "N/A"
lintangsutawika's avatar
lintangsutawika committed
439

440
        results_dict = {
441
442
443
444
445
446
447
448
            "results": dict(sorted(results.items())),
            **(
                {"aggregate": dict(sorted(aggregate.items()))}
                if bool(aggregate)
                else {}
            ),
            "configs": dict(sorted(configs.items())),
            "versions": dict(sorted(versions.items())),
449
        }
450
451
452
453
        if log_samples:
            results_dict["samples"] = dict(samples)

        return results_dict
Fabrizio Milo's avatar
Fabrizio Milo committed
454

455
456
    else:
        return None