SciTS / process /infer_template.py
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import json
import random
from pathlib import Path
from typing import Sequence, Callable
import fire
import h5py
import numpy as np
from tqdm import tqdm
from infer_eval_utils import (
read_time_series_data,
GENERATION_TASK_IDS,
CLASSIFICATION_TASK_IDS,
EVENT_DETECTION_TASK_IDS,
ANOMALY_DETECTION_TASK_IDS,
MCQ_TASK_IDS,
IMPUTATION_TASK_IDS
)
def read_raw_data(path: str | None) -> Sequence:
if path is None:
return []
return read_time_series_data(path)
def transform_raw_data_single_channel(raw_data: list | np.ndarray,
dataset_id: str) -> str:
if dataset_id in GENERATION_TASK_IDS:
data_str_list = []
for x in raw_data:
if x != "X":
data_str_list.append(f"{float(x):.3f}")
else:
data_str_list.append(x)
data_text = " ".join(data_str_list)
else:
data_text = " ".join([f"{float(x):.3f}" for x in raw_data])
return data_text
def transform_raw_data_to_text(raw_data: list | np.ndarray, dataset_id: str,
channel_detail: list[str]) -> str:
if isinstance(raw_data, np.ndarray):
if raw_data.ndim > 1 and raw_data.shape[1] > 1 and len(
channel_detail) == 0:
channel_detail = [f"channel {i}" for i in range(raw_data.shape[1])]
if len(channel_detail) <= 1:
data_text = transform_raw_data_single_channel(raw_data, dataset_id)
else:
data_text = ""
for channel_idx, channel_name in enumerate(channel_detail):
channel_data = raw_data[:, channel_idx]
channel_data_text = transform_raw_data_single_channel(
channel_data, dataset_id)
data_text += f"{channel_name}: {channel_data_text} "
else:
data_text = transform_raw_data_single_channel(raw_data, dataset_id)
return data_text
def transform_gt_data_to_text(gt_data: list | np.ndarray,
dataset_id: str) -> str:
gt_data = np.array(gt_data)
if gt_data.ndim == 1:
data_text = transform_raw_data_single_channel(gt_data, dataset_id)
else:
data_text = ""
for channel_idx in range(gt_data.shape[1]):
channel_data = gt_data[:, channel_idx]
channel_data_text = transform_raw_data_single_channel(
channel_data, dataset_id)
data_text += f"{channel_data_text}\n"
return data_text
def get_extra_instruction(dataset_id: str, ) -> str:
extra_instruction = ""
if dataset_id == "ASU01_ASG02":
extra_instruction = "Answer yes or no in the first line. If the Gravitational Wave is detected, answer the index of the starting time point in the second line."
elif dataset_id == "EAU01_EAG02":
extra_instruction = "Answer yes or no in the first line. If an Earthquake event is detected, answer the starting time point index of the P-wave in the second line, " \
"answer the starting time point index of the S-wave in the third line."
elif dataset_id == "MFU01_MFU02":
extra_instruction = "Output the diameter in the first line, and the position in the second line."
elif dataset_id == "PHU01":
extra_instruction = "Give each answer in a line. For example, if the answer is ['NORM', 'MI'], you should output: NORM\nMI."
elif dataset_id == "MAG01":
extra_instruction = "Give answer of each channel in a line so the number of predicted time points in each line should match the given one. For example, if " \
"it is required to predict the next 5 time points, and the predicted x0, x1, x2 are [[0.1, 0.2, 0.3, 0.4, 0.5], [0.4, 0.5, 0.6, 0.7, 0.8], [0.7, 0.8, 0.9, 0.1, 0.2]], " \
"you should output: 0.1 0.2 0.3 0.4 0.5\n0.4 0.5 0.6 0.7 0.8\n0.7 0.8 0.9 0.1 0.2."
elif dataset_id in ANOMALY_DETECTION_TASK_IDS:
extra_instruction = "Answer yes if anomaly points are detected, and no if there are only normal points."
elif dataset_id in GENERATION_TASK_IDS:
extra_instruction = "Output the values separated by spaces."
return extra_instruction
def extract_gt(data: dict, dataset_id: str) -> str | dict | Path:
if dataset_id in CLASSIFICATION_TASK_IDS:
gt = data["gt_result"]["gt_class"]
if isinstance(gt, dict) and len(gt) == 1:
gt = gt["default"]
if isinstance(gt, list) and len(gt) == 1:
gt = gt[0]
elif dataset_id in GENERATION_TASK_IDS:
gt = data["gt_ts"]["path"].strip("/")
elif dataset_id in EVENT_DETECTION_TASK_IDS:
gt = data["gt_result"]
elif dataset_id in ANOMALY_DETECTION_TASK_IDS:
gt = data["gt_result"]["contain"]
elif dataset_id in MCQ_TASK_IDS:
gt = data["gt_result"]["answer"]
else:
raise ValueError(f"Unsupported dataset id: {dataset_id}")
return gt
def initialize_model() -> Callable:
"""
Initialize the model here. The model can be called by:
```python
response = model(prompt)
# or
response = model(prompt, max_tokens=max_tokens) # to limit the response length
```
"""
pass
def infer_dataset(model: Callable, dataset_data: list, scits_dir: Path,
dataset_id: str, output_path: Path):
print(f"Inferring {dataset_id}")
if dataset_id in GENERATION_TASK_IDS:
ext = "h5"
else:
ext = "jsonl"
output_path = Path(output_path) / f"{dataset_id}.{ext}"
output_path.parent.mkdir(parents=True, exist_ok=True)
completed_ids = []
if str(output_path).endswith(".jsonl"):
has_metadata = False
if output_path.exists():
if str(output_path).endswith(".jsonl"):
with open(output_path, 'r') as f:
for line in f.readlines():
data = json.loads(line)
if "id" in data:
completed_ids.append(data["id"])
else:
has_metadata = True
elif str(output_path).endswith(".h5"):
with h5py.File(output_path, 'r') as f:
completed_ids = list(f.keys())
completed_ids = set(completed_ids)
random.shuffle(dataset_data)
dataset_data = dataset_data[:10]
try:
seq_length = dataset_data[0]["input_ts"]["length"]
except:
seq_length = None
for sample in tqdm(dataset_data):
id = sample["id"].replace(
"/", "%2F") # to avoid errors related to "/" in hdf5
if id in completed_ids:
continue
# Load raw data
if sample["input_ts"] is None:
raw_data_path = None
channel_detail = None
else:
raw_data_path = scits_dir / sample["input_ts"]["path"].strip("/")
channel_detail = sample["input_ts"]["channel_detail"]
raw_data = read_raw_data(raw_data_path)
raw_data_text = transform_raw_data_to_text(raw_data, dataset_id,
channel_detail)
gt = extract_gt(sample, dataset_id)
extra_instruction = get_extra_instruction(dataset_id)
if dataset_id in GENERATION_TASK_IDS:
# give max_tokens to save cost for generation tasks
gt_data = read_time_series_data(scits_dir / gt)
gt_data_text = transform_gt_data_to_text(
gt_data, dataset_id)
max_tokens = len(gt_data_text)
else:
max_tokens = None
prompt_text = f'{sample["input_text"]} {extra_instruction} Give me the answer directly, ' \
f'without any other extra content (including punctuation). ' \
f'{raw_data_text}'
output_text = model(text=prompt_text, max_tokens=max_tokens)
# print(f"output_text: {output_text}")
if dataset_id not in GENERATION_TASK_IDS:
with open(output_path, 'a') as writer:
if not has_metadata:
metadata = {}
if dataset_id in EVENT_DETECTION_TASK_IDS:
metadata["seq_length"] = seq_length
writer.write(json.dumps(metadata) + "\n")
has_metadata = True
pred_results = output_text
if "class_list" in sample["gt_result"] and isinstance(
sample["gt_result"]["class_list"], dict) and len(
sample["gt_result"]["class_list"]) > 1:
if len(output_text.split("\n")) != len(
sample["gt_result"]["class_list"]):
pred_results = "NA"
else:
pred_results = {}
for class_name, pred_result in zip(
sample["gt_result"]["class_list"],
output_text.split("\n")):
pred_results[class_name] = pred_result
writer.write(
json.dumps({
"id": id,
"output": pred_results,
"ground_truth": gt
}) + "\n")
else:
if "\n" not in output_text:
pred_result = np.fromstring(output_text.strip(),
dtype=np.float32,
sep=' ')
else:
try:
pred_result = np.vstack([
np.fromstring(x.strip(), dtype=np.float32, sep=' ')
for x in output_text.split("\n")
]).transpose()
except ValueError:
pred_result = np.array([])
with h5py.File(output_path, 'a') as writer:
writer[f"{id}/pred_result"] = pred_result
writer[f"{id}/gt_path"] = gt.__str__().encode("utf-8")
if dataset_id in IMPUTATION_TASK_IDS:
writer[f"{id}/input_ts_path"] = sample["input_ts"][
"path"].strip("/").encode("utf-8")
if "base_path" not in writer:
writer["base_path"] = scits_dir.__str__().encode("utf-8")
def infer(
scits_dir: str,
output_dir: str,
):
# Initialize caller
model: Callable = initialize_model()
scits_dir = Path(scits_dir)
output_dir = Path(output_dir)
dataset_data = []
prev_dataset_id = None
with open(scits_dir / "meta_data.jsonl", 'r') as f:
for line in f.readlines():
sample = json.loads(line)
dataset_id = "_".join(sample["task_id"])
if dataset_id != prev_dataset_id:
if prev_dataset_id is not None:
infer_dataset(model, dataset_data, scits_dir, prev_dataset_id,
output_dir)
dataset_data = []
prev_dataset_id = dataset_id
dataset_data.append(sample)
infer_dataset(model, dataset_data, scits_dir, prev_dataset_id, output_dir)
if __name__ == '__main__':
fire.Fire(infer)