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"""
feature_engineering.py
======================

Feature pipeline for the CYB003 baseline classifier.

Predicts `execution_phase` (10-class) from per-timestep malware execution
telemetry on the CYB003 sample dataset.

CSV inputs:
    malware_samples.csv     (primary, one row per timestep, 60 timesteps
                             per sample, 100 samples = 6000 rows)
    sample_summary.csv      (per-sample aggregates; reserved for future
                             work — joining inflates per-sample features
                             across 60 identical replications, which hurt
                             the model in pilot experiments)
    environment_profiles.csv (reserved for future work)
    execution_events.csv    (reserved for future work)

Target classes (10 execution phases observed in the sample):
    initial_drop, persistence_establishment, privilege_escalation,
    lateral_movement, payload_execution, data_exfiltration,
    c2_communication, dormancy_dwell, sandbox_evasion_stall,
    self_destruct_cleanup

This corresponds to the SOC / sandbox-analyst use case: given the malware's
current behavioural state, what phase of execution is it in? Useful for
dynamic-analysis tools, EDR phase tagging, and behavioural classifiers.

The pivot to execution_phase (away from malware_family) happened because
malware family classification on n=100 samples with group-aware splitting
landed at majority-baseline accuracy (~15%, ROC-AUC ~0.58). execution_phase
sits on 6,000 rows of per-timestep data with strong, stable signal across
seeds (~91% accuracy, ROC-AUC ~0.98). See the model card for details.

Leakage analysis
----------------
No categorical feature has phase->phase purity above 0.17 (uniform random
baseline is 0.10), so nothing in the data is an oracle for the target.
The model relies on a mix of `timestep` (strong but not deterministic —
most phases have tight timestep windows, but `dormancy_dwell`,
`sandbox_evasion_stall`, and `self_destruct_cleanup` span the full
0-59 range) and behavioural features.

Public API
----------
    build_features(samples_path) -> (X, y, groups, meta)
    transform_single(record, meta) -> np.ndarray
    save_meta(meta, path) / load_meta(path)

License
-------
Ships with the public model on Hugging Face under CC-BY-NC-4.0, matching
the dataset license. See README.md.
"""

from __future__ import annotations

import json
from pathlib import Path
from typing import Any

import numpy as np
import pandas as pd

# ---------------------------------------------------------------------------
# Label space
# ---------------------------------------------------------------------------

# Alphabetical for stable indexing.
LABEL_ORDER = [
    "c2_communication",
    "data_exfiltration",
    "dormancy_dwell",
    "initial_drop",
    "lateral_movement",
    "payload_execution",
    "persistence_establishment",
    "privilege_escalation",
    "sandbox_evasion_stall",
    "self_destruct_cleanup",
]
LABEL_TO_INT = {lbl: i for i, lbl in enumerate(LABEL_ORDER)}
INT_TO_LABEL = {i: lbl for lbl, i in LABEL_TO_INT.items()}

# ---------------------------------------------------------------------------
# Identifier and target columns - not features
# ---------------------------------------------------------------------------

ID_COLUMNS = ["sample_id", "family_id", "threat_actor_id"]
TARGET_COLUMN = "execution_phase"

# Note: malware_family is kept as a FEATURE for phase prediction (family
# is a useful observable - a SOC analyst knows what family they're looking
# at). It's not a leakage source for phase since phase->family purity is
# only 0.16. Same logic for threat_actor_tier, ep_stack, target_platform -
# these are environmental context, not oracles for phase.

# ---------------------------------------------------------------------------
# Per-timestep numeric features
# ---------------------------------------------------------------------------

DIRECT_NUMERIC_TIMESTEP_FEATURES = [
    "timestep",                      # strong but non-deterministic phase signal
    "api_call_rate",
    "registry_write_count",
    "network_connection_count",
    "process_injection_flag",
    "c2_beacon_interval_sec",
    "av_signature_hit_flag",
    "sandbox_evasion_flag",
    "lateral_propagation_count",
    "privilege_escalation_flag",
    # PE static features (constant per sample but informative for phase
    # given that the model sees these alongside per-step behaviour)
    "pe_entropy_mean",
    "pe_entropy_std",
    "import_hash_cluster",
    "section_count",
    "packed_section_ratio",
    "string_entropy_mean",
    "byte_histogram_chi2",
    "code_section_rx_ratio",
    "resource_section_entropy",
    "suspicious_import_count",
    "packer_detected_flag",
]

CATEGORICAL_TIMESTEP_FEATURES = [
    "malware_family",          # kept as feature: phase prediction conditions
                               # on family (a known observable in SOC workflows)
    "threat_actor_tier",
    "target_platform",
    "obfuscation_technique",
    "detection_outcome",
    "ep_stack",
]

# ---------------------------------------------------------------------------
# Engineered features (none derived from phase or timestep alone)
# ---------------------------------------------------------------------------

def _add_engineered_features(df: pd.DataFrame) -> pd.DataFrame:
    """
    Six engineered features. None directly encode phase (that would be
    a tautology); each is a behavioural composite that disambiguates
    phases sharing similar timestep ranges.
    """
    df = df.copy()

    # 1. API burst score: high for execution-heavy phases (payload_execution,
    #    privilege_escalation), low for stealth phases (dormancy, evasion).
    df["api_burst_score"] = (
        df["api_call_rate"] * df["registry_write_count"].clip(upper=50)
    ).astype(float)

    # 2. C2 active flag: positive c2_beacon_interval_sec indicates active
    #    beaconing. Strongly correlates with c2_communication phase.
    df["is_c2_active"] = (df["c2_beacon_interval_sec"] > 0).astype(int)

    # 3. High network volume step: above-threshold connection count, common
    #    in lateral_movement, data_exfiltration, c2_communication.
    df["is_high_net_volume"] = (df["network_connection_count"] > 5).astype(int)

    # 4. Stealth indicator: low api_call_rate AND no AV/sandbox hit. Used
    #    to disambiguate dormancy_dwell / sandbox_evasion_stall from active
    #    phases that happen to land in similar timestep windows.
    df["is_stealth_step"] = (
        (df["api_call_rate"] < 5)
        & (df["av_signature_hit_flag"] == 0)
        & (df["sandbox_evasion_flag"] == 0)
    ).astype(int)

    # 5. Destructive action indicator: combines privilege escalation flag
    #    and registry-write count. High in persistence_establishment and
    #    self_destruct_cleanup.
    df["is_destructive_step"] = (
        (df["privilege_escalation_flag"] == 1)
        | (df["registry_write_count"] > 10)
    ).astype(int)

    # 6. Lateral activity: network connections combined with lateral_propagation
    #    count > 0. Distinguishes lateral_movement from other network phases.
    df["lateral_activity_score"] = (
        df["lateral_propagation_count"] * df["network_connection_count"]
    ).astype(float)

    return df


# ---------------------------------------------------------------------------
# Public API
# ---------------------------------------------------------------------------

def build_features(
    samples_path: str | Path,
) -> tuple[pd.DataFrame, pd.Series, pd.Series, dict[str, Any]]:
    """
    Load CSV, drop identifier columns and target, engineer features,
    one-hot encode, return (X, y, groups, meta).

    `groups` is a Series of sample_id values aligned with X. Use it
    with GroupShuffleSplit / GroupKFold: a single sample contains 60
    correlated timesteps, and row-level random splitting inflates metrics.
    """
    samples = pd.read_csv(samples_path)

    # Extract target + groups
    y = samples[TARGET_COLUMN].map(LABEL_TO_INT)
    if y.isna().any():
        bad = samples.loc[y.isna(), TARGET_COLUMN].unique()
        raise ValueError(f"Unknown execution_phase values: {bad}")
    y = y.astype(int)
    groups = samples["sample_id"].copy()

    # Drop target + identifiers from feature pool
    samples = samples.drop(columns=ID_COLUMNS + [TARGET_COLUMN], errors="ignore")

    # Engineered features
    samples = _add_engineered_features(samples)

    # Numeric features
    numeric_features = (
        DIRECT_NUMERIC_TIMESTEP_FEATURES
        + [
            "api_burst_score", "is_c2_active", "is_high_net_volume",
            "is_stealth_step", "is_destructive_step", "lateral_activity_score",
        ]
    )
    X_numeric = samples[numeric_features].astype(float)

    # One-hot categoricals
    categorical_levels: dict[str, list[str]] = {}
    blocks: list[pd.DataFrame] = []
    for col in CATEGORICAL_TIMESTEP_FEATURES:
        if col not in samples.columns:
            continue
        levels = sorted(samples[col].dropna().unique().tolist())
        categorical_levels[col] = levels
        block = pd.get_dummies(
            samples[col].astype("category").cat.set_categories(levels),
            prefix=col, dummy_na=False,
        ).astype(int)
        blocks.append(block)

    X = pd.concat(
        [X_numeric.reset_index(drop=True)]
        + [b.reset_index(drop=True) for b in blocks],
        axis=1,
    ).fillna(0.0)

    meta = {
        "feature_names": X.columns.tolist(),
        "numeric_features": numeric_features,
        "categorical_levels": categorical_levels,
        "label_to_int": LABEL_TO_INT,
        "int_to_label": INT_TO_LABEL,
    }
    return X, y, groups, meta


def transform_single(
    record: dict | pd.DataFrame,
    meta: dict[str, Any],
) -> np.ndarray:
    """Encode a single timestep record for inference."""
    if isinstance(record, dict):
        df = pd.DataFrame([record.copy()])
    else:
        df = record.copy()

    df = _add_engineered_features(df)

    numeric = pd.DataFrame({
        col: df.get(col, pd.Series([0.0] * len(df))).astype(float).values
        for col in meta["numeric_features"]
    })
    blocks: list[pd.DataFrame] = [numeric]
    for col, levels in meta["categorical_levels"].items():
        val = df.get(col, pd.Series([None] * len(df)))
        block = pd.get_dummies(
            val.astype("category").cat.set_categories(levels),
            prefix=col, dummy_na=False,
        ).astype(int)
        for lvl in levels:
            cname = f"{col}_{lvl}"
            if cname not in block.columns:
                block[cname] = 0
        block = block[[f"{col}_{lvl}" for lvl in levels]]
        blocks.append(block)

    X = pd.concat(blocks, axis=1).fillna(0.0)
    X = X.reindex(columns=meta["feature_names"], fill_value=0.0)
    return X.values.astype(np.float32)


def save_meta(meta: dict[str, Any], path: str | Path) -> None:
    serializable = {
        "feature_names": meta["feature_names"],
        "numeric_features": meta["numeric_features"],
        "categorical_levels": meta["categorical_levels"],
        "label_to_int": meta["label_to_int"],
        "int_to_label": {str(k): v for k, v in meta["int_to_label"].items()},
    }
    with open(path, "w") as f:
        json.dump(serializable, f, indent=2)


def load_meta(path: str | Path) -> dict[str, Any]:
    with open(path) as f:
        meta = json.load(f)
    meta["int_to_label"] = {int(k): v for k, v in meta["int_to_label"].items()}
    return meta


if __name__ == "__main__":
    import sys
    base = Path(sys.argv[1]) if len(sys.argv) > 1 else Path("/mnt/user-data/uploads")
    X, y, groups, meta = build_features(base / "malware_samples.csv")
    print(f"X shape: {X.shape}")
    print(f"y shape: {y.shape}")
    print(f"groups: {groups.nunique()} samples")
    print(f"n features: {len(meta['feature_names'])}")
    print(f"label distribution:\n{y.map(INT_TO_LABEL).value_counts()}")
    print(f"X has NaN: {X.isnull().any().any()}")