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import json
import random
from pathlib import Path

random.seed(0)

# Simple package + version catalog
PKG_VERSIONS = {
    "numpy": ["1.21.0", "1.22.0", "1.23.5"],
    "pandas": ["1.3.5", "1.4.4", "2.0.3"],
    "scipy": ["1.7.3", "1.8.1", "1.10.0"],
    "scikit-learn": ["0.24.2", "1.0.2", "1.2.2"],
    "torch": ["1.8.0", "1.13.1", "2.1.0"],
    "torchvision": ["0.9.0", "0.14.1", "0.16.0"],
    "torchaudio": ["0.8.0", "0.13.1", "2.1.0"],
    "pytorch-lightning": ["1.5.0", "2.0.0", "2.2.0"],
    "tensorflow": ["1.15.0", "2.9.0", "2.15.0"],
    "keras": ["2.4.0", "2.9.0", "3.0.0"],
    "jax": ["0.3.25", "0.4.13"],
    "flax": ["0.5.1", "0.7.2"],
    "fastapi": ["0.78.0", "0.99.0"],
    "uvicorn[standard]": ["0.17.6", "0.23.2"],
    "starlette": ["0.19.1", "0.27.0"],
    "pydantic": ["1.10.13", "2.3.0"],
    "sqlalchemy": ["1.4.46", "2.0.20"],
    "alembic": ["1.7.7", "1.12.0"],
    "psycopg2-binary": ["2.9.3"],
    "requests": ["2.27.1", "2.31.0"],
    "httpx": ["0.23.0", "0.25.1"],
    "beautifulsoup4": ["4.10.0", "4.12.2"],
    "scrapy": ["2.5.1", "2.9.0"],
    "opencv-python": ["4.5.5.64", "4.8.0.76"],
    "pillow": ["9.0.1", "10.0.0"],
    "matplotlib": ["3.5.1", "3.7.2"],
    "seaborn": ["0.11.2", "0.13.0"],
    "plotly": ["5.6.0", "5.17.0"],
    "langchain": ["0.0.350", "0.1.0"],
    "openai": ["0.28.0", "1.6.0"],
    "tiktoken": ["0.5.1"],
    "chromadb": ["0.4.8", "0.4.23"],
    "weaviate-client": ["3.21.0"],
    "redis": ["4.3.4", "5.0.1"],
    "celery": ["5.2.7", "5.3.4"],
    "gunicorn": ["20.1.0"],
    "uvloop": ["0.17.0"],
}

PKG_NAMES = list(PKG_VERSIONS.keys())


def make_requirements(num_lines: int, force_conflict: bool = False):
    """
    Create one synthetic requirements.txt-style env.
    Some are valid, some invalid.
    """
    chosen = random.sample(PKG_NAMES, num_lines)
    req_lines = []
    pinned_versions = {}

    # Basic random env
    for pkg in chosen:
        ver = random.choice(PKG_VERSIONS[pkg])
        pinned_versions[pkg] = ver
        # Sometimes no exact pin
        if random.random() < 0.2:
            line = pkg
        else:
            line = f"{pkg}=={ver}"
        req_lines.append(line)

    label = "valid"
    conflict_reason = None

    # Rule 1: torch & pytorch-lightning conflict
    # synthetic rule: torch<2.0 with pl>=2.0 is "invalid"
    if "torch" in pinned_versions and "pytorch-lightning" in pinned_versions:
        tver = pinned_versions["torch"]
        plver = pinned_versions["pytorch-lightning"]
        if force_conflict or (random.random() < 0.5 and tver.startswith("1.") and plver.startswith("2.")):
            # enforce explicit problematic pins
            for i, line in enumerate(req_lines):
                if line.startswith("torch"):
                    req_lines[i] = "torch==1.8.0"
                if line.startswith("pytorch-lightning"):
                    req_lines[i] = "pytorch-lightning==2.2.0"
            label = "invalid"
            conflict_reason = "pytorch-lightning>=2.0 is assumed to require torch>=2.0 but torch==1.8.0 is pinned."

    # Rule 2: tensorflow 1.15 with keras 3.0
    if label == "valid" and "tensorflow" in pinned_versions and "keras" in pinned_versions:
        tver = pinned_versions["tensorflow"]
        kver = pinned_versions["keras"]
        if force_conflict or (random.random() < 0.5 and tver.startswith("1.") and kver.startswith("3.")):
            for i, line in enumerate(req_lines):
                if line.startswith("tensorflow"):
                    req_lines[i] = "tensorflow==1.15.0"
                if line.startswith("keras"):
                    req_lines[i] = "keras==3.0.0"
            label = "invalid"
            conflict_reason = "keras==3.0.0 is assumed to require TensorFlow 2.x but tensorflow==1.15.0 is pinned."

    # Rule 3: old fastapi with pydantic v2
    if label == "valid" and "fastapi" in pinned_versions and "pydantic" in pinned_versions:
        fver = pinned_versions["fastapi"]
        pver = pinned_versions["pydantic"]
        # synthetic rule: fastapi 0.78 with pydantic 2.x is invalid
        if force_conflict or (random.random() < 0.5 and fver.startswith("0.78") and pver.startswith("2.")):
            for i, line in enumerate(req_lines):
                if line.startswith("fastapi"):
                    req_lines[i] = "fastapi==0.78.0"
                if line.startswith("pydantic"):
                    req_lines[i] = "pydantic==2.3.0"
            label = "invalid"
            conflict_reason = "fastapi==0.78.0 is assumed to require pydantic v1, but pydantic==2.3.0 is pinned."

    # Rule 4: generic conflict – same package pinned twice to different versions
    if label == "valid" and force_conflict:
        pkg = chosen[0]
        existing_ver = pinned_versions[pkg]
        alt_candidates = [v for v in PKG_VERSIONS[pkg] if v != existing_ver]
        if alt_candidates:
            alt_ver = random.choice(alt_candidates)
        else:
            alt_ver = existing_ver
        req_lines.append(f"{pkg}=={alt_ver}")
        label = "invalid"
        conflict_reason = f"{pkg} is pinned to multiple incompatible versions."

    return "\n".join(req_lines), label, conflict_reason


def generate_dataset(n_samples: int = 100):
    samples = []
    for i in range(n_samples):
        num_lines = random.randint(4, 10)
        # roughly half forced invalid
        force_conflict = (i % 2 == 1)
        req_str, label, reason = make_requirements(num_lines, force_conflict=force_conflict)
        samples.append(
            {
                "id": i + 1,
                "requirements": req_str,
                "label": label,
                "conflict_reason": reason,
            }
        )
    return samples


if __name__ == "__main__":
    samples = generate_dataset(n_samples=120)  # 120 just to be safe for "at least 100"

    out_path = Path("synthetic_requirements_dataset.json")
    out_path.write_text(json.dumps(samples, indent=2))
    print(f"Wrote {len(samples)} samples to {out_path.resolve()}")

    # Optional: also write each requirements.txt separately
    base_dir = Path("synthetic_requirements_txt")
    base_dir.mkdir(exist_ok=True)
    for s in samples:
        fname = base_dir / f"requirements_{s['id']:03d}_{s['label']}.txt"
        fname.write_text(s["requirements"])