burme-coder-max / src /data_processing.py
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"""Data Validation and Split Module
Validates and splits datasets for training/validation/testing.
"""
import json
import random
import hashlib
from pathlib import Path
from typing import List, Dict, Tuple, Optional, Callable
from dataclasses import dataclass
from enum import Enum
import re
class SplitType(Enum):
"""Dataset split types."""
TRAIN = "train"
VALIDATION = "validation"
TEST = "test"
@dataclass
class DatasetItem:
"""Single dataset item."""
system: str
instruction: str
response: str
metadata: Dict
@dataclass
class ValidationResult:
"""Validation result."""
valid: bool
errors: List[str]
warnings: List[str]
class DataValidator:
"""Validate dataset items."""
MIN_RESPONSE_LENGTH = 10
MAX_RESPONSE_LENGTH = 10000
MIN_INSTRUCTION_LENGTH = 3
@classmethod
def validate_item(cls, item: Dict) -> ValidationResult:
"""Validate a single dataset item."""
errors = []
warnings = []
# Check required fields
required_fields = ["system", "instruction", "response"]
for field in required_fields:
if field not in item:
errors.append(f"Missing required field: {field}")
elif not isinstance(item[field], str):
errors.append(f"Field '{field}' must be a string")
if errors:
return ValidationResult(valid=False, errors=errors, warnings=warnings)
# Validate lengths
if len(item["response"]) < cls.MIN_RESPONSE_LENGTH:
errors.append(f"Response too short: {len(item['response'])} chars")
if len(item["response"]) > cls.MAX_RESPONSE_LENGTH:
warnings.append(f"Response very long: {len(item['response'])} chars")
if len(item["instruction"]) < cls.MIN_INSTRUCTION_LENGTH:
errors.append(f"Instruction too short: {len(item['instruction'])} chars")
# Check for code blocks
if "```" not in item["response"]:
warnings.append("Response contains no code blocks")
# Check for Myanmar content
myanmar_pattern = re.compile(r"[\u1000-\u109f]+")
has_myanmar = bool(myanmar_pattern.search(item["instruction"]))
if not has_myanmar and not has_myanmar:
warnings.append("No Myanmar text found")
return ValidationResult(
valid=len(errors) == 0,
errors=errors,
warnings=warnings
)
@classmethod
def validate_dataset(cls, items: List[Dict]) -> Tuple[List[Dict], List[Dict]]:
"""Validate entire dataset, return valid and invalid items."""
valid = []
invalid = []
for item in items:
result = cls.validate_item(item)
if result.valid:
valid.append(item)
else:
invalid.append({**item, "validation_errors": result.errors})
return valid, invalid
class DataSplitter:
"""Split dataset into train/validation/test sets."""
def __init__(self, train_ratio: float = 0.7, val_ratio: float = 0.15, test_ratio: float = 0.15):
self.train_ratio = train_ratio
self.val_ratio = val_ratio
self.test_ratio = test_ratio
assert abs(train_ratio + val_ratio + test_ratio - 1.0) < 0.001, "Ratios must sum to 1.0"
def split(
self,
items: List[Dict],
stratify_by: Optional[Callable] = None
) -> Dict[SplitType, List[Dict]]:
"""Split dataset with optional stratification."""
if stratify_by:
return self._stratified_split(items, stratify_by)
else:
return self._random_split(items)
def _random_split(self, items: List[Dict]) -> Dict[SplitType, List[Dict]]:
"""Randomly split dataset."""
shuffled = items.copy()
random.shuffle(shuffled)
total = len(shuffled)
train_size = int(total * self.train_ratio)
val_size = int(total * self.val_ratio)
return {
SplitType.TRAIN: shuffled[:train_size],
SplitType.VALIDATION: shuffled[train_size:train_size + val_size],
SplitType.TEST: shuffled[train_size + val_size:]
}
def _stratified_split(
self,
items: List[Dict],
stratify_by: Callable
) -> Dict[SplitType, List[Dict]]:
"""Split with stratification by a key function."""
buckets: Dict[str, List[Dict]] = {}
for item in items:
key = stratify_by(item)
if key not in buckets:
buckets[key] = []
buckets[key].append(item)
train_buckets = {k: [] for k in buckets}
val_buckets = {k: [] for k in buckets}
test_buckets = {k: [] for k in buckets}
for key, bucket_items in buckets.items():
random.shuffle(bucket_items)
total = len(bucket_items)
train_size = int(total * self.train_ratio)
val_size = int(total * self.val_ratio)
train_buckets[key] = bucket_items[:train_size]
val_buckets[key] = bucket_items[train_size:train_size + val_size]
test_buckets[key] = bucket_items[train_size + val_size:]
return {
SplitType.TRAIN: [item for bucket in train_buckets.values() for item in bucket],
SplitType.VALIDATION: [item for bucket in val_buckets.values() for item in bucket],
SplitType.TEST: [item for bucket in test_buckets.values() for item in bucket],
}
def hash_split(self, items: List[Dict], salt: str = "") -> Dict[SplitType, List[Dict]]:
"""Split based on hash for reproducibility."""
result = {SplitType.TRAIN: [], SplitType.VALIDATION: [], SplitType.TEST: []}
for item in items:
hash_val = hashlib.md5(
f"{json.dumps(item, sort_keys=True)}{salt}".encode()
).hexdigest()
hash_num = int(hash_val[:8], 16)
normalized = hash_num / 0xFFFFFFFF
if normalized < self.train_ratio:
result[SplitType.TRAIN].append(item)
elif normalized < self.train_ratio + self.val_ratio:
result[SplitType.VALIDATION].append(item)
else:
result[SplitType.TEST].append(item)
return result
class DatasetManager:
"""Manage dataset operations."""
@staticmethod
def load_jsonl(file_path: str) -> List[Dict]:
"""Load data from JSONL file."""
items = []
with open(file_path, "r", encoding="utf-8") as f:
for line in f:
if line.strip():
items.append(json.loads(line))
return items
@staticmethod
def save_jsonl(file_path: str, items: List[Dict]):
"""Save data to JSONL file."""
Path(file_path).parent.mkdir(parents=True, exist_ok=True)
with open(file_path, "w", encoding="utf-8") as f:
for item in items:
f.write(json.dumps(item, ensure_ascii=False) + "\n")
@staticmethod
def load_json(file_path: str) -> List[Dict]:
"""Load data from JSON file."""
with open(file_path, "r", encoding="utf-8") as f:
data = json.load(f)
return data if isinstance(data, list) else data.get("data", data.get("items", [data]))
@staticmethod
def save_json(file_path: str, items: List[Dict]):
"""Save data to JSON file."""
Path(file_path).parent.mkdir(parents=True, exist_ok=True)
with open(file_path, "w", encoding="utf-8") as f:
json.dump(items, f, indent=2, ensure_ascii=False)
@staticmethod
def save_split(
output_dir: str,
splits: Dict[SplitType, List[Dict]],
format: str = "jsonl"
):
"""Save split datasets to files."""
output_path = Path(output_dir)
output_path.mkdir(parents=True, exist_ok=True)
for split_type, items in splits.items():
file_path = output_path / f"{split_type.value}.jsonl"
DatasetManager.save_jsonl(str(file_path), items)
@staticmethod
def get_dataset_stats(items: List[Dict]) -> Dict:
"""Get statistics about a dataset."""
if not items:
return {"count": 0}
response_lengths = [len(item.get("response", "")) for item in items]
instruction_lengths = [len(item.get("instruction", "")) for item in items]
systems = [item.get("system", "") for item in items]
unique_systems = len(set(systems))
return {
"count": len(items),
"avg_response_length": sum(response_lengths) / len(response_lengths),
"min_response_length": min(response_lengths),
"max_response_length": max(response_lengths),
"avg_instruction_length": sum(instruction_lengths) / len(instruction_lengths),
"unique_systems": unique_systems,
}
def main():
"""Demo the data validation and split module."""
print("=" * 50)
print("📊 Data Validation and Split Demo")
print("=" * 50)
# Sample data
sample_data = [
{
"system": "Expert Python programmer",
"instruction": "Python decorator hta ya py",
"response": "# Python Decorator\n```python\ndef decorator(func):\n return func\n```"
},
{
"system": "Expert JavaScript developer",
"instruction": "JavaScript async/await hta ya",
"response": "// Async/Await\nasync function fetch() {\n const data = await fetch('/api');\n}"
},
{
"system": "Database expert",
"instruction": "SQL JOIN operations",
"response": "-- SQL JOIN\nSELECT * FROM a INNER JOIN b ON a.id = b.id;"
},
] * 10 # Multiply for demo
print(f"\n📁 Sample data: {len(sample_data)} items")
# Validate
print("\n🔍 Validating data...")
validator = DataValidator()
valid, invalid = validator.validate_dataset(sample_data)
print(f" ✓ Valid: {len(valid)}")
print(f" ✗ Invalid: {len(invalid)}")
# Split
print("\n✂️ Splitting data (70/15/15)...")
splitter = DataSplitter()
splits = splitter.hash_split(sample_data, salt="burme-coder-v1")
for split_type, items in splits.items():
print(f" {split_type.value}: {len(items)} items")
# Stats
print("\n📈 Dataset statistics:")
stats = DatasetManager.get_dataset_stats(valid)
for key, value in stats.items():
print(f" {key}: {value:.2f}" if isinstance(value, float) else f" {key}: {value}")
if __name__ == "__main__":
main()