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Update tasks/text.py
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from fastapi import APIRouter
from datetime import datetime
from datasets import load_dataset, Dataset
from sklearn.metrics import accuracy_score, f1_score
import random
from torch.utils.data import DataLoader
from transformers import AutoTokenizer, AutoModelForSequenceClassification, Trainer, TrainingArguments, DataCollatorWithPadding
from .utils.evaluation import TextEvaluationRequest
from .utils.emissions import tracker, clean_emissions_data, get_space_info
import torch
import numpy as np
router = APIRouter()
DESCRIPTION = "BERT V1.1"
ROUTE = "/text"
@router.post(ROUTE, tags=["Text Task"],
description=DESCRIPTION)
async def evaluate_text(request: TextEvaluationRequest):
"""
Evaluate text classification for climate disinformation detection.
Current Model: BERT
- Uses a pre-trained BERT model for sequence classification
"""
# Get space info
username, space_url = get_space_info()
# Define the label mapping
LABEL_MAPPING = {
"0_not_relevant": 0,
"1_not_happening": 1,
"2_not_human": 2,
"3_not_bad": 3,
"4_solutions_harmful_unnecessary": 4,
"5_science_unreliable": 5,
"6_proponents_biased": 6,
"7_fossil_fuels_needed": 7
}
# Load and prepare the dataset
dataset = load_dataset(request.dataset_name)
# Convert string labels to integers
dataset = dataset.map(lambda x: {"label": LABEL_MAPPING[x["label"]]})
# Split dataset
train_test = dataset["train"]
test_dataset = dataset["test"]
print('dataset type: ' , test_dataset.column_names) # Debugging step
print('dataset type: ' , test_dataset['quote'][:5]) # Debugging step
# Start tracking emissions
tracker.start()
tracker.start_task("inference")
#--------------------------------------------------------------------------------------------
# YOUR MODEL INFERENCE CODE HERE
# Update the code below to replace the random baseline by your model inference within the inference pass where the energy consumption and emissions are tracked.
#--------------------------------------------------------------------------------------------
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
model_name = ["cococli/bert-base-uncased-frugalai", 'cococli/roberta-base-frugalai', "cococli/distilbert-base-uncased-frugalai",
"cococli/albert-base-v2-frugalai", "cococli/bert-base-uncased-coco-frugalai",
"cococli/distilbert-base-uncased-coco-frugalai", "cococli/albert-base-v2-coco-frugalai","cococli/electra-small-discriminator-coco-frugalai",
'cococli/roberta-base-coco-frugalai', "cococli/distilbert-base-uncased-climate-frugalai","cococli/albert-base-v2-climate-frugalai",
"cococli/electra-small-discriminator-frugalai", "cococli/bert-base-uncased-climate-frugalai","cococli/roberta-base-climate-frugalai",
]
tokenizer = AutoTokenizer.from_pretrained(model_name[0])
model = AutoModelForSequenceClassification.from_pretrained(model[0]).to(device)
# def tokenize_function(examples):
# return tokenizer(examples["quote"], padding=True, truncation=True, return_tensors='pt')
# print('BEFORE TOKENIZING')
# # Tokenize the test dataset
# tokenized_test = test_dataset.map(tokenize_function, batched=True)
# print('AFTER TOKENIZING')
# print(tokenized_test.column_names) # Debugging step
# print(tokenized_test['input_ids'][:5]) # Debugging step
# # Create DataLoader
# data_collator = DataCollatorWithPadding(tokenizer=tokenizer)
# dataloader = DataLoader(tokenized_test, batch_size=16, shuffle=False, collate_fn=data_collator)
print("Started prediction run")
# tokenized_test = tokenizer(test_dataset['quote'], padding=True, truncation=True, return_tensors='pt')
# Model inference
model.eval()
predictions = np.array([])
batch_size = 32
with torch.no_grad():
for i in range(0, len(test_dataset['quote']), batch_size):
batch_quotes = test_dataset['quote'][i:i + batch_size]
print(f'Processing batch {i // batch_size + 1}')
# Tokenize the input data for the current batch
tokenized_inputs = tokenizer(batch_quotes, padding=True, truncation=True, return_tensors='pt').to(device)
# Forward pass through the model
p = model(**tokenized_inputs)
output = torch.argmax(p.logits, dim=1).cpu().numpy()
# print(p)
predictions = np.append(predictions, output)
print("Finished prediction run")
# Ensure "label" column exists in dataset
print(test_dataset.column_names) # Debugging step
# Extract true labels
true_labels = test_dataset["label"]
#--------------------------------------------------------------------------------------------
# YOUR MODEL INFERENCE STOPS HERE
#--------------------------------------------------------------------------------------------
print(predictions)
print(true_labels)
print('Accuracy: ', (true_labels == predictions)/len(true_labels))
print('Accuracy: ', accuracy_score(true_labels, predictions))
print('F1 SCORE: ', f1_score(true_labels, predictions))
# Stop tracking emissions
emissions_data = tracker.stop_task()
# Calculate accuracy
accuracy = accuracy_score(true_labels, predictions)
print('Accuracy: ', accuracy)
# Prepare results dictionary
results = {
"username": username,
"space_url": space_url,
"submission_timestamp": datetime.now().isoformat(),
"model_description": DESCRIPTION,
"accuracy": float(accuracy),
"energy_consumed_wh": emissions_data.energy_consumed * 1000,
"emissions_gco2eq": emissions_data.emissions * 1000,
"emissions_data": clean_emissions_data(emissions_data),
"api_route": ROUTE,
"dataset_config": {
"dataset_name": request.dataset_name,
"test_size": request.test_size,
"test_seed": request.test_seed
}
}
print('Results: ', results)
return results