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import glob |
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import json |
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import os |
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from tqdm import tqdm |
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from dataclasses import dataclass |
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import dateutil |
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from src.display.formatting import make_clickable_model |
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from src.display.utils import AutoEvalColumn, ModelType, Tasks, Precision, WeightType |
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from src.submission.check_validity import is_model_on_hub |
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from typing import Optional |
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def is_float(string): |
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try: |
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float(string) |
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return True |
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except ValueError: |
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return False |
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@dataclass |
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class EvalResult: |
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eval_name: str |
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full_model: str |
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org: str |
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model: str |
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revision: str |
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results: dict |
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precision: Precision = Precision.Unknown |
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model_type: ModelType = ModelType.Unknown |
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weight_type: WeightType = WeightType.Original |
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architecture: str = "Unknown" |
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license: str = "?" |
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likes: int = 0 |
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num_params: int = 0 |
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date: str = "" |
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still_on_hub: bool = False |
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@staticmethod |
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def init_from_json_file(json_filepath, is_backend: bool = False): |
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"""Inits the result from the specific model result file""" |
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with open(json_filepath) as fp: |
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data = json.load(fp) |
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config = data.get("config", data.get("config_general", None)) |
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precision = Precision.from_str(config.get("model_dtype")) |
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org_and_model = config.get("model_name", config.get("model_args", None)) |
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org_and_model = org_and_model.split("/", 1) |
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if len(org_and_model) == 1: |
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org = None |
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model = org_and_model[0] |
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result_key = f"{model}_{precision.value.name}" |
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else: |
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org = org_and_model[0] |
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model = org_and_model[1] |
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result_key = f"{org}_{model}_{precision.value.name}" |
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full_model = "/".join(org_and_model) |
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still_on_hub, error, model_config = is_model_on_hub( |
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full_model, config.get("model_sha", "main"), trust_remote_code=True, test_tokenizer=False |
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) |
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architecture = "?" |
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if model_config is not None: |
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architectures = getattr(model_config, "architectures", None) |
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if architectures: |
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architecture = ";".join(architectures) |
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results = {} |
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for benchmark, benchmark_results in data["results"].items(): |
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if benchmark not in results: |
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results[benchmark] = {} |
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for metric, value in benchmark_results.items(): |
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to_add = True |
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if "_stderr" in metric: |
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to_add = False |
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if "alias" in metric: |
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to_add = False |
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if "," in metric: |
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metric = metric.split(",")[0] |
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metric = metric.replace("exact_match", "em") |
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if to_add is True: |
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multiplier = 100.0 |
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if "rouge" in metric and "truthful" not in benchmark: |
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multiplier = 1.0 |
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if "squad" in benchmark: |
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multiplier = 1.0 |
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results[benchmark][metric] = value * multiplier |
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res = EvalResult( |
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eval_name=result_key, |
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full_model=full_model, |
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org=org, |
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model=model, |
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results=results, |
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precision=precision, |
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revision=config.get("model_sha", ""), |
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still_on_hub=still_on_hub, |
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architecture=architecture, |
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) |
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return res |
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def update_with_request_file(self, requests_path): |
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"""Finds the relevant request file for the current model and updates info with it""" |
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request_file = get_request_file_for_model(requests_path, self.full_model, self.precision.value.name) |
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try: |
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with open(request_file, "r") as f: |
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request = json.load(f) |
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self.model_type = ModelType.from_str(request.get("model_type", "")) |
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self.weight_type = WeightType[request.get("weight_type", "Original")] |
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self.license = request.get("license", "?") |
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self.likes = request.get("likes", 0) |
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self.num_params = request.get("params", 0) |
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self.date = request.get("submitted_time", "") |
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except Exception as e: |
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print(f"Could not find request file for {self.org}/{self.model} -- path: {requests_path} -- {e}") |
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def is_complete(self) -> bool: |
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for task in Tasks: |
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if task.value.benchmark not in self.results: |
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return False |
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return True |
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def to_dict(self): |
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"""Converts the Eval Result to a dict compatible with our dataframe display""" |
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data_dict = { |
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"eval_name": self.eval_name, |
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AutoEvalColumn.precision.name: self.precision.value.name, |
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AutoEvalColumn.model_type.name: self.model_type.value.name, |
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AutoEvalColumn.model_type_symbol.name: self.model_type.value.symbol, |
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AutoEvalColumn.weight_type.name: self.weight_type.value.name, |
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AutoEvalColumn.architecture.name: self.architecture, |
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AutoEvalColumn.model.name: make_clickable_model(self.full_model), |
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AutoEvalColumn.dummy.name: self.full_model, |
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AutoEvalColumn.revision.name: self.revision, |
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AutoEvalColumn.license.name: self.license, |
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AutoEvalColumn.likes.name: self.likes, |
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AutoEvalColumn.params.name: self.num_params, |
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AutoEvalColumn.still_on_hub.name: self.still_on_hub, |
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} |
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for task in Tasks: |
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if task.value.benchmark in self.results: |
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data_dict[task.value.col_name] = self.results[task.value.benchmark] |
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return data_dict |
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def get_request_file_for_model(requests_path, model_name, precision): |
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"""Selects the correct request file for a given model. Only keeps runs tagged as FINISHED and RUNNING""" |
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request_files = os.path.join( |
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requests_path, |
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f"{model_name}_eval_request_*.json", |
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) |
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request_files = glob.glob(request_files) |
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request_file = "" |
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request_files = sorted(request_files, reverse=True) |
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for tmp_request_file in request_files: |
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with open(tmp_request_file, "r") as f: |
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req_content = json.load(f) |
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if req_content["precision"] == precision.split(".")[-1]: |
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request_file = tmp_request_file |
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return request_file |
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def get_request_file_for_model_open_llm(requests_path, model_name, precision): |
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"""Selects the correct request file for a given model. Only keeps runs tagged as FINISHED""" |
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request_files = os.path.join( |
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requests_path, |
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f"{model_name}_eval_request_*.json", |
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) |
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request_files = glob.glob(request_files) |
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request_file = "" |
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request_files = sorted(request_files, reverse=True) |
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for tmp_request_file in request_files: |
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with open(tmp_request_file, "r") as f: |
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req_content = json.load(f) |
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if req_content["status"] in ["FINISHED"] and req_content["precision"] == precision.split(".")[-1]: |
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request_file = tmp_request_file |
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return request_file |
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def update_model_type_with_open_llm_request_file(result, open_llm_requests_path): |
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"""Finds the relevant request file for the current model and updates info with it""" |
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request_file = get_request_file_for_model_open_llm( |
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open_llm_requests_path, result.full_model, result.precision.value.name |
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) |
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if request_file: |
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try: |
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with open(request_file, "r") as f: |
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request = json.load(f) |
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open_llm_model_type = request.get("model_type", "Unknown") |
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if open_llm_model_type != "Unknown": |
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result.model_type = ModelType.from_str(open_llm_model_type) |
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except Exception as e: |
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pass |
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return result |
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def get_raw_eval_results(results_path: str, requests_path: str, is_backend: bool = False) -> list[EvalResult]: |
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"""From the path of the results folder root, extract all needed info for results""" |
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model_result_filepaths = [] |
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for root, _, files in os.walk(results_path): |
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if len(files) == 0 or any([not f.endswith(".json") for f in files]): |
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continue |
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try: |
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files.sort(key=lambda x: x.removesuffix(".json").removeprefix("results_")[:-7]) |
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except dateutil.parser._parser.ParserError: |
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files = [files[-1]] |
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for file in files: |
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model_result_filepaths.append(os.path.join(root, file)) |
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eval_results = {} |
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for model_result_filepath in tqdm(model_result_filepaths, desc="reading model_result_filepaths"): |
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eval_result = EvalResult.init_from_json_file(model_result_filepath, is_backend=is_backend) |
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eval_result.update_with_request_file(requests_path) |
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eval_name = eval_result.eval_name |
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if eval_name in eval_results.keys(): |
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eval_results[eval_name].results.update({k: v for k, v in eval_result.results.items() if v is not None}) |
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else: |
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eval_results[eval_name] = eval_result |
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results = [] |
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for v in eval_results.values(): |
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results.append(v) |
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return results |
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