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#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Data processing used for analyzing and presenting the results"""
import json
import os
import pandas as pd
_COMMON_METRIC_PREFERENCES = {
"accelerator_memory_reserved_avg": "lower",
"accelerator_memory_max": "lower",
"accelerator_memory_reserved_99th": "lower",
"total_time": "lower",
"train_time": "lower",
"file_size": "lower",
"train_loss": "lower",
"num_trainable_params": "lower",
}
_TASK_METRIC_PREFERENCES = {
"MetaMathQA": {
"test_accuracy": "higher",
"forgetting*": "lower",
},
"image-gen": {
"test_dino_similarity": "higher",
"drift*": "lower",
},
}
_TASK_PARETO_DEFAULTS = {
"MetaMathQA": ("accelerator_memory_max", "test_accuracy"),
"image-gen": ("accelerator_memory_max", "test_dino_similarity"),
}
_METRIC_EXPLANATIONS = {
"MetaMathQA": (
"*forgetting: This is the reduction in CE loss on a sample of Wikipedia data and reflects how much the "
"model 'forgot' during training. The lower the number, the better."
),
"image-gen": (
"*drift: This measures how much the generated images drift from the base model's outputs on unrelated "
"prompts, reflecting how much the model 'forgot' during training. The lower the number, the better."
),
}
def _get_metric_explanation(task_name):
return _METRIC_EXPLANATIONS.get(task_name, "")
def _preprocess_common(row):
"""Extract fields common to all tasks from a single result row.
Returns a tuple of metainfo dict and train metrics, or None if the row should be skipped.
"""
run_info = row["run_info"]
train_info = row["train_info"]
meta_info = row["meta_info"]
if run_info["peft_config"]:
peft_type = run_info["peft_config"]["peft_type"]
else:
peft_type = "full-finetuning"
if train_info["status"] != "success":
return None
train_metrics = train_info["metrics"][-1]
dct = {
"experiment_name": run_info["experiment_name"],
"model_id": run_info["train_config"]["model_id"],
"train_config": run_info["train_config"],
"peft_type": peft_type,
"peft_config": run_info["peft_config"],
"accelerator_memory_reserved_avg": train_info["accelerator_memory_reserved_avg"],
"accelerator_memory_max": train_info["accelerator_memory_max"],
"accelerator_memory_reserved_99th": train_info["accelerator_memory_reserved_99th"],
"total_time": run_info["total_time"],
"train_time": train_info["train_time"],
"file_size": train_info["file_size"],
"num_trainable_params": train_info["num_trainable_params"],
"train_loss": train_metrics["train loss"],
"train_samples": train_metrics["train samples"],
"peft_version": meta_info["package_info"]["peft-version"],
"peft_branch": run_info["peft_branch"],
"transformers_version": meta_info["package_info"]["transformers-version"],
"datasets_version": meta_info["package_info"]["datasets-version"],
"torch_version": meta_info["package_info"]["torch-version"],
"package_info": meta_info["package_info"],
"system_info": meta_info["system_info"],
"created_at": run_info["created_at"],
}
return dct, train_metrics
def _preprocess_metamathqa(dct, train_metrics, meta_info):
"""Add MetaMathQA-specific fields."""
dct["test_accuracy"] = train_metrics["test accuracy"]
dct["train_total_tokens"] = train_metrics["train total tokens"]
dct["forgetting*"] = train_metrics.get("forgetting", 123)
dct["bitsandbytes_version"] = meta_info["package_info"]["bitsandbytes-version"]
def _preprocess_image_gen(dct, train_metrics, meta_info):
"""Add image-gen-specific fields."""
dct["test_dino_similarity"] = train_metrics["test dino_similarity"]
dct["drift*"] = train_metrics.get("drift", 123)
dct["diffusers_version"] = meta_info["package_info"]["diffusers-version"]
_TASK_PREPROCESSORS = {
"MetaMathQA": _preprocess_metamathqa,
"image-gen": _preprocess_image_gen,
}
def format_df(df):
return df.style.format(precision=3, thousands=",", decimal=".")
def preprocess(rows, task_name: str, print_fn=print):
task_preprocessor = _TASK_PREPROCESSORS.get(task_name)
if task_preprocessor is None:
raise ValueError(f"Unknown task_name: {task_name!r}. Choose from {list(_TASK_PREPROCESSORS)}")
results = []
skipped = 0
for row in rows:
common = _preprocess_common(row)
if common is None:
skipped += 1
continue
dct, train_metrics = common
dct["task_name"] = task_name
task_preprocessor(dct, train_metrics, row["meta_info"])
results.append(dct)
if skipped:
print_fn(f"Skipped {skipped} of {len(rows)} entries because the train status != success")
return results
def load_jsons(path):
results = []
for fn in os.listdir(path):
if fn.endswith(".json"):
with open(os.path.join(path, fn)) as f:
row = json.load(f)
results.append(row)
return results
_COMMON_DTYPES = {
"task_name": "string",
"experiment_name": "string",
"model_id": "string",
"train_config": "string",
"peft_type": "string",
"peft_config": "string",
"accelerator_memory_reserved_avg": int,
"accelerator_memory_max": int,
"accelerator_memory_reserved_99th": int,
"total_time": float,
"train_time": float,
"file_size": int,
"train_loss": float,
"train_samples": int,
"num_trainable_params": int,
"peft_version": "string",
"peft_branch": "string",
"transformers_version": "string",
"datasets_version": "string",
"torch_version": "string",
"package_info": "string",
"system_info": "string",
"created_at": "string",
}
_TASK_DTYPES = {
"MetaMathQA": {
"test_accuracy": float,
"train_total_tokens": int,
"forgetting*": float,
"bitsandbytes_version": "string",
},
"image-gen": {
"test_dino_similarity": float,
"drift*": float,
"diffusers_version": "string",
},
}
_TASK_IMPORTANT_COLUMNS = {
"MetaMathQA": [
"experiment_name",
"peft_type",
"total_time",
"train_time",
"test_accuracy",
"train_loss",
"accelerator_memory_max",
"accelerator_memory_reserved_99th",
"accelerator_memory_reserved_avg",
"num_trainable_params",
"file_size",
"created_at",
"task_name",
"forgetting*",
],
"image-gen": [
"experiment_name",
"peft_type",
"total_time",
"train_time",
"test_dino_similarity",
"drift*",
"train_loss",
"accelerator_memory_max",
"accelerator_memory_reserved_99th",
"accelerator_memory_reserved_avg",
"num_trainable_params",
"file_size",
"created_at",
"task_name",
],
}
def load_df(path, task_name, print_fn=print):
jsons = load_jsons(path)
preprocessed = preprocess(jsons, task_name=task_name, print_fn=print_fn)
dtype_dict = {**_COMMON_DTYPES, **_TASK_DTYPES.get(task_name, {})}
if not preprocessed:
return pd.DataFrame(columns=dtype_dict.keys())
df = pd.DataFrame(preprocessed)
df = df.astype(dtype_dict)
df["created_at"] = pd.to_datetime(df["created_at"])
# round training time to nearest second
df["train_time"] = df["train_time"].round().astype(int)
df["total_time"] = df["total_time"].round().astype(int)
# reorder columns for better viewing, pinned_columns arg in Gradio seems not to work correctly
important_columns = _TASK_IMPORTANT_COLUMNS.get(task_name, ["experiment_name", "peft_type"])
other_columns = [col for col in df if col not in important_columns]
df = df[important_columns + other_columns]
columns = ["experiment_name", "model_id", "peft_type", "created_at"]
# we want to keep only the most recent run for each experiment
df = df.sort_values("created_at").drop_duplicates(columns, keep="last")
return df
def get_metric_preferences(task_name):
prefs = dict(_COMMON_METRIC_PREFERENCES)
prefs.update(_TASK_METRIC_PREFERENCES.get(task_name, {}))
return prefs
def get_model_ids(task_name, df):
filtered = df[df["task_name"] == task_name]
return sorted(filtered["model_id"].unique())
def filter_data(task_name, model_id, df):
filtered = df[(df["task_name"] == task_name) & (df["model_id"] == model_id)]
return filtered
# Compute the Pareto frontier for two selected metrics.
def compute_pareto_frontier(df, metric_x, metric_y, metric_preferences):
if df.empty:
return df
df = df.copy()
points = df[[metric_x, metric_y]].values
selected_indices = []
def dominates(a, b, metric_x, metric_y):
# Check for each metric whether b is as good or better than a
if metric_preferences[metric_x] == "higher":
cond_x = b[0] >= a[0]
better_x = b[0] > a[0]
else:
cond_x = b[0] <= a[0]
better_x = b[0] < a[0]
if metric_preferences[metric_y] == "higher":
cond_y = b[1] >= a[1]
better_y = b[1] > a[1]
else:
cond_y = b[1] <= a[1]
better_y = b[1] < a[1]
return cond_x and cond_y and (better_x or better_y)
for i, point in enumerate(points):
dominated = False
for j, other_point in enumerate(points):
if i == j:
continue
if dominates(point, other_point, metric_x, metric_y):
dominated = True
break
if not dominated:
selected_indices.append(i)
pareto_df = df.iloc[selected_indices]
return pareto_df
def load_task_results(task_configs):
dfs = []
for task_name, path in task_configs.items():
if os.path.isdir(path):
task_df = load_df(path, task_name=task_name)
if not task_df.empty:
dfs.append(task_df)
return pd.concat(dfs, ignore_index=True)
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