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Comprehensive Japanese Counseling Model Benchmark Script
Based on KokoroChat paper evaluation methodology
"""
import torch
from transformers import AutoModelForCausalLM, AutoTokenizer
import numpy as np
from typing import List, Dict, Tuple, Optional, Any
import json
from tqdm import tqdm
import os
import gc
import warnings
from datetime import datetime
import pandas as pd
import matplotlib.pyplot as plt
import seaborn as sns
from collections import defaultdict
import MeCab
from rouge_score import rouge_scorer
from nltk.translate.bleu_score import sentence_bleu, corpus_bleu, SmoothingFunction
import sacrebleu
from bert_score import score as bert_score
import re
import statistics
warnings.filterwarnings('ignore')
# Set style for better visualizations
plt.style.use('seaborn-v0_8-darkgrid')
sns.set_palette("husl")
class JapaneseCounselingBenchmark:
"""
Comprehensive benchmark suite for Japanese counseling models
Following KokoroChat paper evaluation methodology
"""
def __init__(self,
base_model_name: str = "LiquidAI/LFM2-1.2B",
finetuned_model_path: str = "./merged_counselor_model",
test_data_path: str = "./processed_data_score70/test.jsonl",
device: str = None):
"""
Initialize Japanese counseling benchmark
Args:
base_model_name: Name/path of base model
finetuned_model_path: Path to fine-tuned merged model
test_data_path: Path to test dataset
device: Device to run on (cuda/cpu)
"""
self.base_model_name = base_model_name
self.finetuned_model_path = finetuned_model_path
self.test_data_path = test_data_path
self.device = device or ("cuda" if torch.cuda.is_available() else "cpu")
print("="*80)
print("๐ Japanese Counseling Model Benchmark Suite")
print("="*80)
print(f"๐ Device: {self.device}")
if self.device == "cuda":
print(f" GPU: {torch.cuda.get_device_name(0)}")
print(f" Memory: {torch.cuda.get_device_properties(0).total_memory / 1e9:.2f} GB")
# Initialize MeCab for Japanese tokenization
try:
self.mecab = MeCab.Tagger("-Owakati") # Wakati-gaki mode for word segmentation
print("โ
MeCab initialized for Japanese tokenization")
except:
print("โ ๏ธ MeCab not available. Install with: apt-get install mecab libmecab-dev mecab-ipadic-utf8")
print(" and: pip install mecab-python3")
print(" Using fallback character-level tokenization")
self.mecab = None
# Initialize ROUGE scorer (without lang parameter)
self.rouge_scorer = rouge_scorer.RougeScorer(
['rouge1', 'rouge2', 'rougeL'],
use_stemmer=False # Don't use stemming for Japanese
)
# Smoothing function for BLEU
self.smoothing = SmoothingFunction().method1
# Results storage
self.results = {}
self.detailed_results = []
def tokenize_japanese(self, text: str) -> List[str]:
"""
Tokenize Japanese text using MeCab or fallback method
Args:
text: Japanese text to tokenize
Returns:
List of tokens
"""
if self.mecab:
try:
# Use MeCab for proper Japanese tokenization
tokens = self.mecab.parse(text).strip().split()
return tokens if tokens else list(text)
except:
# Fallback if MeCab fails
pass
# Fallback to character-level tokenization
# Remove punctuation and split
text = re.sub(r'[ใใ๏ผ๏ผ\n\s]', ' ', text)
# Split by spaces and then into characters
words = text.split()
if words:
# Try to keep some word boundaries
tokens = []
for word in words:
if len(word) <= 4: # Keep short words together
tokens.append(word)
else: # Split longer words into characters
tokens.extend(list(word))
return tokens
else:
# Pure character-level tokenization
return list(text.replace(' ', ''))
def load_test_data(self, max_samples: Optional[int] = None) -> List[Dict]:
"""
Load test dataset
Args:
max_samples: Maximum number of samples to load
Returns:
List of test examples
"""
print(f"\n๐ Loading test data from {self.test_data_path}")
test_data = []
if not os.path.exists(self.test_data_path):
print(f"โ Test data not found at {self.test_data_path}")
print(" Creating synthetic test data for demonstration...")
return self.create_synthetic_test_data()
with open(self.test_data_path, 'r', encoding='utf-8') as f:
for i, line in enumerate(f):
if max_samples and i >= max_samples:
break
try:
data = json.loads(line)
# Parse the text field to extract input and response
text = data.get('text', '')
# Extract input and reference response
if "### Input:" in text and "### Response:" in text:
parts = text.split("### Input:")
if len(parts) > 1:
input_part = parts[1].split("### Response:")[0].strip()
response_part = text.split("### Response:")[1].strip()
test_data.append({
'input': input_part,
'reference': response_part,
'score': data.get('score', 0),
'topic': data.get('topic', 'Unknown')
})
except Exception as e:
print(f"โ ๏ธ Error parsing line {i}: {e}")
continue
if not test_data:
print("โ ๏ธ No valid test data found. Creating synthetic data...")
return self.create_synthetic_test_data()
print(f"โ
Loaded {len(test_data)} test examples")
return test_data
def create_synthetic_test_data(self) -> List[Dict]:
"""Create synthetic test data for demonstration"""
synthetic_data = [
{
'input': 'ๆ่ฟในใใฌในใๆใใฆใใพใใ',
'reference': 'ในใใฌในใๆใใฆใใใฎใงใใญใใใใฏๅคงๅคใคใใใใจใ ใจๆใใพใใใฉใฎใใใช็ถๆณใงในใใฌในใๆใใใใจใๅคใใงใใ๏ผ',
'score': 75,
'topic': 'ในใใฌใน'
},
{
'input': 'ไปไบใใใพใใใใชใใฆๆฉใใงใใพใใ',
'reference': 'ไปไบใงใๆฉใฟใชใฎใงใใญใใใพใใใใชใใจๆใใใจใๆฌๅฝใซ่พใใงใใใญใๅ
ทไฝ็ใซใฉใฎใใใช็นใงๅฐ้ฃใๆใใฆใใใฃใใใใพใใ๏ผ',
'score': 78,
'topic': 'ไปไบ'
},
{
'input': 'ไบบ้้ขไฟใงๅฐใฃใฆใใพใใ',
'reference': 'ไบบ้้ขไฟใฎๆฉใฟใฏๆฌๅฝใซๅฟใ็ฒใใพใใใญใใๆฐๆใกใๅฏใใใพใใใฉใฎใใใช้ขไฟๆงใงใๅฐใใงใใใใ๏ผ',
'score': 80,
'topic': 'ไบบ้้ขไฟ'
},
{
'input': 'ๅฐๆฅใไธๅฎใงใใ',
'reference': 'ๅฐๆฅใธใฎไธๅฎใๆฑใใฆใใใฃใใใใฎใงใใญใๅ
ใ่ฆใใชใไธๅฎใฏใใจใฆใ้ใๆใใใใใใจใจๆใใพใใ',
'score': 72,
'topic': 'ไธๅฎ'
},
{
'input': '่ชไฟกใๆใฆใพใใใ',
'reference': '่ชไฟกใๆใฆใชใใจใใใๆฐๆใกใใใใใใใพใใๅคใใฎๆนใๅใใใใชๆฉใฟใๆฑใใฆใใพใใ',
'score': 76,
'topic': '่ชไฟก'
}
]
return synthetic_data
def load_models(self):
"""Load base and fine-tuned models"""
print("\n๐ค Loading models for benchmarking...")
# Load tokenizer
print(" Loading tokenizer...")
try:
self.tokenizer = AutoTokenizer.from_pretrained(self.base_model_name)
except:
print(" Using GPT2 tokenizer as fallback...")
self.tokenizer = AutoTokenizer.from_pretrained("gpt2")
if self.tokenizer.pad_token is None:
self.tokenizer.pad_token = self.tokenizer.eos_token
# Load base model
print(" Loading base model...")
try:
self.base_model = AutoModelForCausalLM.from_pretrained(
self.base_model_name,
torch_dtype=torch.float16 if self.device == "cuda" else torch.float32,
device_map="auto" if self.device == "cuda" else None,
trust_remote_code=True,
low_cpu_mem_usage=True
)
except Exception as e:
print(f" โ ๏ธ Could not load base model {self.base_model_name}: {e}")
print(" Using GPT2 as fallback base model...")
self.base_model = AutoModelForCausalLM.from_pretrained(
"gpt2",
torch_dtype=torch.float16 if self.device == "cuda" else torch.float32,
device_map="auto" if self.device == "cuda" else None
)
self.base_model.eval()
# Load fine-tuned model
print(f" Loading fine-tuned model from {self.finetuned_model_path}...")
# Check if model exists
if not os.path.exists(self.finetuned_model_path):
print(f" โ ๏ธ Fine-tuned model not found at {self.finetuned_model_path}")
print(" Using base model for both comparisons (for demonstration)")
self.finetuned_model = self.base_model
else:
try:
self.finetuned_model = AutoModelForCausalLM.from_pretrained(
self.finetuned_model_path,
torch_dtype=torch.float16 if self.device == "cuda" else torch.float32,
device_map="auto" if self.device == "cuda" else None,
trust_remote_code=True,
low_cpu_mem_usage=True,
local_files_only=True
)
self.finetuned_model.eval()
except Exception as e:
print(f" โ ๏ธ Error loading fine-tuned model: {e}")
print(" Using base model for comparison")
self.finetuned_model = self.base_model
print("โ
Models loaded successfully!")
def generate_response(self, model, prompt: str, max_length: int = 150) -> str:
"""
Generate response from model
Args:
model: Model to use for generation
prompt: Input prompt
max_length: Maximum length of generated response
Returns:
Generated response text
"""
# Format prompt for counseling
formatted_prompt = f"""### Instruction:
ใใชใใฏๆใใใใฎใใๅฟ็ใซใฆใณใปใฉใผใงใใ
ใฏใฉใคใขใณใใฎๆๆ
ใ็่งฃใใๅ
ฑๆ็ใงๆฏๆด็ใชๅฟ็ญใๆไพใใฆใใ ใใใ
### Input:
{prompt}
### Response:
"""
# Tokenize input
inputs = self.tokenizer(
formatted_prompt,
return_tensors="pt",
truncation=True,
max_length=512
)
if self.device == "cuda":
inputs = {k: v.cuda() for k, v in inputs.items()}
# Generate response
try:
with torch.no_grad():
outputs = model.generate(
**inputs,
max_new_tokens=max_length,
temperature=0.7,
do_sample=True,
top_p=0.9,
repetition_penalty=1.1,
pad_token_id=self.tokenizer.pad_token_id,
eos_token_id=self.tokenizer.eos_token_id
)
# Decode response
full_response = self.tokenizer.decode(outputs[0], skip_special_tokens=True)
# Extract only the generated response
if "### Response:" in full_response:
response = full_response.split("### Response:")[-1].strip()
else:
response = full_response[len(formatted_prompt):].strip()
except Exception as e:
print(f" โ ๏ธ Generation error: {e}")
response = "็ณใ่จณใใใใพใใใๅฟ็ญใ็ๆใงใใพใใใงใใใ"
return response
def calculate_bleu_scores(self, reference: str, hypothesis: str) -> Dict[str, float]:
"""
Calculate BLEU scores using Japanese tokenization
Args:
reference: Reference text
hypothesis: Generated text
Returns:
Dictionary of BLEU scores
"""
# Tokenize using MeCab or fallback
ref_tokens = self.tokenize_japanese(reference)
hyp_tokens = self.tokenize_japanese(hypothesis)
# Ensure we have tokens
if not ref_tokens:
ref_tokens = ['empty']
if not hyp_tokens:
hyp_tokens = ['empty']
# Calculate BLEU scores
scores = {}
try:
# BLEU-1 through BLEU-4
for n in range(1, 5):
weights = tuple([1/n] * n + [0] * (4-n))
score = sentence_bleu(
[ref_tokens],
hyp_tokens,
weights=weights,
smoothing_function=self.smoothing
)
scores[f'BLEU-{n}'] = score
except Exception as e:
print(f" โ ๏ธ BLEU calculation error: {e}")
for n in range(1, 5):
scores[f'BLEU-{n}'] = 0.0
return scores
def calculate_rouge_scores(self, reference: str, hypothesis: str) -> Dict[str, float]:
"""
Calculate ROUGE scores for Japanese text
Args:
reference: Reference text
hypothesis: Generated text
Returns:
Dictionary of ROUGE scores
"""
try:
# For Japanese, we need to add spaces between tokens for ROUGE scorer
if self.mecab:
ref_tokenized = ' '.join(self.tokenize_japanese(reference))
hyp_tokenized = ' '.join(self.tokenize_japanese(hypothesis))
else:
# Character-level with spaces
ref_tokenized = ' '.join(list(reference))
hyp_tokenized = ' '.join(list(hypothesis))
# Calculate ROUGE scores
scores = self.rouge_scorer.score(ref_tokenized, hyp_tokenized)
return {
'ROUGE-1': scores['rouge1'].fmeasure,
'ROUGE-2': scores['rouge2'].fmeasure,
'ROUGE-L': scores['rougeL'].fmeasure
}
except Exception as e:
print(f" โ ๏ธ ROUGE calculation error: {e}")
return {
'ROUGE-1': 0.0,
'ROUGE-2': 0.0,
'ROUGE-L': 0.0
}
def calculate_bert_score(self, references: List[str], hypotheses: List[str]) -> Dict[str, float]:
"""
Calculate BERTScore for semantic similarity
Args:
references: List of reference texts
hypotheses: List of generated texts
Returns:
Dictionary with BERTScore metrics
"""
try:
# Calculate BERTScore
P, R, F1 = bert_score(
hypotheses,
references,
lang='ja',
verbose=False,
device=self.device
)
return {
'BERTScore_P': float(P.mean()),
'BERTScore_R': float(R.mean()),
'BERTScore_F1': float(F1.mean())
}
except Exception as e:
print(f" โ ๏ธ BERTScore calculation failed: {e}")
print(" Install with: pip install bert-score")
return {
'BERTScore_P': 0.0,
'BERTScore_R': 0.0,
'BERTScore_F1': 0.0
}
def evaluate_counseling_quality(self, response: str) -> Dict[str, float]:
"""
Evaluate counseling-specific qualities
Based on KokoroChat paper evaluation criteria
Args:
response: Generated counseling response
Returns:
Dictionary of counseling quality scores
"""
scores = {}
# 1. Empathy Score (ๅ
ฑๆๅบฆ)
empathy_keywords = [
'ใใใใพใ', '็่งฃ', 'ๅ
ฑๆ', 'ใๆฐๆใก', 'ใคใใ',
'ๅคงๅค', 'ใๅฏใ', 'ใใใงใใญ', 'ใชใใปใฉ', 'ๆใ'
]
empathy_score = sum(1 for keyword in empathy_keywords if keyword in response)
scores['empathy'] = min(empathy_score / 5.0, 1.0) # Normalize to 0-1
# 2. Support Score (ๆฏๆดๅบฆ)
support_keywords = [
'ใตใใผใ', 'ๆฏๆด', 'ๅฉใ', 'ไธ็ทใซ', 'ๅๅ',
'ๅฟๆด', 'ใๆไผใ', 'ๅใซใชใ', '็ธ่ซ', '่ฉฑใ่'
]
support_score = sum(1 for keyword in support_keywords if keyword in response)
scores['support'] = min(support_score / 5.0, 1.0)
# 3. Active Listening (ๅพ่ด)
listening_indicators = ['๏ผ', 'ใงใใใใ', 'ใงใใ', 'ใใใใงใใ', 'ใฉใฎใใใช']
scores['active_listening'] = 1.0 if any(ind in response for ind in listening_indicators) else 0.3
# 4. Positivity (ๅๅใใ)
positive_keywords = ['ๅคงไธๅคซ', '่ฏใ', '็ด ๆดใใใ', '้ ๅผต', 'ๅธๆ', 'ๆนๅ', '่งฃๆฑบ']
positive_score = sum(1 for keyword in positive_keywords if keyword in response)
scores['positivity'] = min(positive_score / 3.0, 1.0)
# 5. Response Appropriateness (ๅฟ็ญใฎ้ฉๅใ)
response_length = len(response)
if 30 <= response_length <= 200:
scores['appropriateness'] = 1.0
elif 20 <= response_length < 30 or 200 < response_length <= 300:
scores['appropriateness'] = 0.7
else:
scores['appropriateness'] = 0.4
return scores
def run_comprehensive_benchmark(self, num_samples: Optional[int] = None):
"""
Run comprehensive benchmark evaluation
Args:
num_samples: Number of samples to evaluate (None for all)
"""
print("\n" + "="*80)
print("๐ Running Comprehensive Benchmark")
print("="*80)
# Load test data
test_data = self.load_test_data(max_samples=num_samples)
if not test_data:
raise ValueError("No test data available!")
# Initialize metric collectors
base_metrics = defaultdict(list)
finetuned_metrics = defaultdict(list)
# Collect all responses for BERTScore
all_references = []
all_base_responses = []
all_finetuned_responses = []
print(f"\n๐ Evaluating {len(test_data)} test examples...")
print("-"*80)
# Process each test example
for i, example in enumerate(tqdm(test_data, desc="Evaluating")):
input_text = example['input']
reference = example['reference']
# Generate responses
base_response = self.generate_response(self.base_model, input_text)
finetuned_response = self.generate_response(self.finetuned_model, input_text)
# Collect for BERTScore
all_references.append(reference)
all_base_responses.append(base_response)
all_finetuned_responses.append(finetuned_response)
# Calculate BLEU scores
base_bleu = self.calculate_bleu_scores(reference, base_response)
finetuned_bleu = self.calculate_bleu_scores(reference, finetuned_response)
for key, value in base_bleu.items():
base_metrics[key].append(value)
for key, value in finetuned_bleu.items():
finetuned_metrics[key].append(value)
# Calculate ROUGE scores
base_rouge = self.calculate_rouge_scores(reference, base_response)
finetuned_rouge = self.calculate_rouge_scores(reference, finetuned_response)
for key, value in base_rouge.items():
base_metrics[key].append(value)
for key, value in finetuned_rouge.items():
finetuned_metrics[key].append(value)
# Evaluate counseling quality
base_quality = self.evaluate_counseling_quality(base_response)
finetuned_quality = self.evaluate_counseling_quality(finetuned_response)
for key, value in base_quality.items():
base_metrics[f'quality_{key}'].append(value)
for key, value in finetuned_quality.items():
finetuned_metrics[f'quality_{key}'].append(value)
# Store detailed results
self.detailed_results.append({
'input': input_text,
'reference': reference,
'base_response': base_response,
'finetuned_response': finetuned_response,
'base_metrics': {**base_bleu, **base_rouge, **base_quality},
'finetuned_metrics': {**finetuned_bleu, **finetuned_rouge, **finetuned_quality}
})
# Show sample outputs
if i < 3:
print(f"\n๐ Example {i+1}:")
print(f"Input: {input_text[:100]}...")
print(f"Base BLEU-4: {base_bleu['BLEU-4']:.3f}, Fine-tuned BLEU-4: {finetuned_bleu['BLEU-4']:.3f}")
# Calculate BERTScore for all examples
if len(all_references) > 0:
print("\n๐งฎ Calculating BERTScore...")
base_bert = self.calculate_bert_score(all_references, all_base_responses)
finetuned_bert = self.calculate_bert_score(all_references, all_finetuned_responses)
for key, value in base_bert.items():
base_metrics[key] = [value] * len(test_data)
for key, value in finetuned_bert.items():
finetuned_metrics[key] = [value] * len(test_data)
# Calculate aggregate statistics
self.results = self.calculate_aggregate_statistics(base_metrics, finetuned_metrics)
# Print results
self.print_results()
return self.results
def calculate_aggregate_statistics(self, base_metrics: Dict, finetuned_metrics: Dict) -> Dict:
"""
Calculate aggregate statistics from collected metrics
Args:
base_metrics: Base model metrics
finetuned_metrics: Fine-tuned model metrics
Returns:
Dictionary of aggregate results
"""
results = {
'metrics': {},
'improvements': {},
'summary': {}
}
# Calculate statistics for each metric
all_metric_names = set(base_metrics.keys()) | set(finetuned_metrics.keys())
for metric in all_metric_names:
base_values = base_metrics.get(metric, [0])
finetuned_values = finetuned_metrics.get(metric, [0])
results['metrics'][metric] = {
'base': {
'mean': float(np.mean(base_values)),
'std': float(np.std(base_values)),
'min': float(np.min(base_values)),
'max': float(np.max(base_values))
},
'finetuned': {
'mean': float(np.mean(finetuned_values)),
'std': float(np.std(finetuned_values)),
'min': float(np.min(finetuned_values)),
'max': float(np.max(finetuned_values))
}
}
# Calculate improvement
base_mean = np.mean(base_values)
finetuned_mean = np.mean(finetuned_values)
if base_mean > 0:
improvement = ((finetuned_mean - base_mean) / base_mean) * 100
else:
improvement = 0
results['improvements'][metric] = improvement
# Calculate summary statistics
bleu_metrics = [m for m in results['metrics'] if 'BLEU' in m]
rouge_metrics = [m for m in results['metrics'] if 'ROUGE' in m]
quality_metrics = [m for m in results['metrics'] if 'quality' in m]
# Average improvements
results['summary'] = {
'bleu_avg_improvement': np.mean([results['improvements'][m] for m in bleu_metrics]) if bleu_metrics else 0,
'rouge_avg_improvement': np.mean([results['improvements'][m] for m in rouge_metrics]) if rouge_metrics else 0,
'quality_avg_improvement': np.mean([results['improvements'][m] for m in quality_metrics]) if quality_metrics else 0,
'overall_improvement': np.mean(list(results['improvements'].values())) if results['improvements'] else 0
}
return results
def print_results(self):
"""Print formatted benchmark results"""
print("\n" + "="*80)
print("๐ BENCHMARK RESULTS")
print("="*80)
# Group metrics by category
bleu_metrics = sorted([m for m in self.results['metrics'] if 'BLEU' in m])
rouge_metrics = sorted([m for m in self.results['metrics'] if 'ROUGE' in m])
bert_metrics = sorted([m for m in self.results['metrics'] if 'BERT' in m])
quality_metrics = sorted([m for m in self.results['metrics'] if 'quality' in m])
# Print BLEU scores
if bleu_metrics:
print("\n๐ BLEU Scores:")
print("-"*60)
print(f"{'Metric':<15} {'Base Model':<20} {'Fine-tuned':<20} {'Improvement':<15}")
print("-"*60)
for metric in bleu_metrics:
base = self.results['metrics'][metric]['base']['mean']
finetuned = self.results['metrics'][metric]['finetuned']['mean']
improvement = self.results['improvements'][metric]
print(f"{metric:<15} {base:.4f}ยฑ{self.results['metrics'][metric]['base']['std']:.3f} "
f"{finetuned:.4f}ยฑ{self.results['metrics'][metric]['finetuned']['std']:.3f} "
f"{improvement:+.1f}%")
# Print ROUGE scores
if rouge_metrics:
print("\n๐ ROUGE Scores:")
print("-"*60)
for metric in rouge_metrics:
base = self.results['metrics'][metric]['base']['mean']
finetuned = self.results['metrics'][metric]['finetuned']['mean']
improvement = self.results['improvements'][metric]
print(f"{metric:<15} {base:.4f}ยฑ{self.results['metrics'][metric]['base']['std']:.3f} "
f"{finetuned:.4f}ยฑ{self.results['metrics'][metric]['finetuned']['std']:.3f} "
f"{improvement:+.1f}%")
# Print BERTScore
if bert_metrics:
print("\n๐ BERTScore:")
print("-"*60)
for metric in bert_metrics:
base = self.results['metrics'][metric]['base']['mean']
finetuned = self.results['metrics'][metric]['finetuned']['mean']
improvement = self.results['improvements'][metric]
print(f"{metric:<15} {base:.4f} {finetuned:.4f} {improvement:+.1f}%")
# Print Counseling Quality scores
if quality_metrics:
print("\n๐ฌ Counseling Quality Metrics:")
print("-"*60)
for metric in quality_metrics:
base = self.results['metrics'][metric]['base']['mean']
finetuned = self.results['metrics'][metric]['finetuned']['mean']
improvement = self.results['improvements'][metric]
metric_name = metric.replace('quality_', '').capitalize()
print(f"{metric_name:<15} {base:.4f}ยฑ{self.results['metrics'][metric]['base']['std']:.3f} "
f"{finetuned:.4f}ยฑ{self.results['metrics'][metric]['finetuned']['std']:.3f} "
f"{improvement:+.1f}%")
# Print summary
print("\n" + "="*80)
print("๐ SUMMARY")
print("="*80)
print(f"Average BLEU Improvement: {self.results['summary']['bleu_avg_improvement']:+.1f}%")
print(f"Average ROUGE Improvement: {self.results['summary']['rouge_avg_improvement']:+.1f}%")
print(f"Average Quality Improvement: {self.results['summary']['quality_avg_improvement']:+.1f}%")
print(f"Overall Improvement: {self.results['summary']['overall_improvement']:+.1f}%")
print("="*80)
def save_results(self, output_dir: str = "./benchmark_results"):
"""Save all benchmark results"""
os.makedirs(output_dir, exist_ok=True)
# Save detailed results
with open(os.path.join(output_dir, "detailed_results.json"), 'w', encoding='utf-8') as f:
json.dump(self.detailed_results, f, ensure_ascii=False, indent=2, default=str)
# Save aggregate results
with open(os.path.join(output_dir, "aggregate_results.json"), 'w', encoding='utf-8') as f:
json.dump(self.results, f, ensure_ascii=False, indent=2, default=str)
print(f"โ
Results saved to {output_dir}/")
def main():
"""Main execution function"""
import argparse
parser = argparse.ArgumentParser(description='Japanese Counseling Model Benchmark')
parser.add_argument('--base_model', type=str, default='LiquidAI/LFM2-1.2B',
help='Base model name or path')
parser.add_argument('--finetuned_model', type=str, default='./merged_counselor_model',
help='Path to fine-tuned merged model')
parser.add_argument('--test_data', type=str, default='./processed_data_score70/test.jsonl',
help='Path to test data')
parser.add_argument('--num_samples', type=int, default=None,
help='Number of samples to evaluate (None for all)')
parser.add_argument('--output_dir', type=str, default='./benchmark_results',
help='Directory to save results')
args = parser.parse_args()
try:
# Initialize benchmark
print("๐ Initializing Japanese Counseling Benchmark Suite")
benchmark = JapaneseCounselingBenchmark(
base_model_name=args.base_model,
finetuned_model_path=args.finetuned_model,
test_data_path=args.test_data
)
# Load models
benchmark.load_models()
# Run benchmark
results = benchmark.run_comprehensive_benchmark(num_samples=args.num_samples)
# Save results
benchmark.save_results(args.output_dir)
print("\nโ
Benchmark completed successfully!")
print(f"๐ Results saved to {args.output_dir}/")
except Exception as e:
print(f"\nโ Error during benchmarking: {e}")
import traceback
traceback.print_exc()
if __name__ == "__main__":
main()
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