chore: export repeated methods into lib

This commit is contained in:
2026-01-21 19:12:11 +01:00
parent 7fcd18c3cb
commit 56308ecb10
5 changed files with 357 additions and 0 deletions

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lib/features.py Normal file
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"""Unified featurization utilities for trajectory -> feature vector conversion
Used by both experiments/ml/ and sim/rl/ components
"""
import numpy as np
from collections import defaultdict
from typing import List, Dict, Callable, Optional, Any, Set
from datetime import datetime
def transition_histogram(events: List, state_fn: Callable, max_states: int = 50) -> np.ndarray:
"""compute normalized histogram of state transitions in trajectory
events: list of event objects/dicts
state_fn: function mapping event -> state string
max_states: maximum dimensions for histogram
"""
if len(events) < 2:
return np.zeros(max_states, dtype=np.float32)
states = [state_fn(e) for e in events]
trans_counts = defaultdict(int)
for s, s_next in zip(states, states[1:]):
trans_counts[(s, s_next)] += 1
total = sum(trans_counts.values())
hist = np.array(list(trans_counts.values())[:max_states], dtype=np.float32)
hist = np.pad(hist, (0, max(0, max_states - len(hist))))
return hist / (total + 1e-10)
def temporal_signature(events: List, ts_fn: Callable) -> np.ndarray:
"""extract temporal features: mean/std/skew of inter-event times plus count
events: list of event objects/dicts
ts_fn: function mapping event -> timestamp (float seconds)
returns: [mean_dt, std_dt, skew, n_intervals] array
"""
if len(events) < 2:
return np.zeros(4, dtype=np.float32)
times = sorted([ts_fn(e) for e in events])
diffs = np.diff(times).astype(np.float32)
if len(diffs) == 0:
return np.zeros(4, dtype=np.float32)
mean_dt, std_dt = np.mean(diffs), np.std(diffs) + 1e-10
skew = np.mean(((diffs - mean_dt) / std_dt) ** 3) if std_dt > 1e-8 else 0.0
return np.array([mean_dt, std_dt, skew, len(diffs)], dtype=np.float32)
def state_coverage(events: List, state_fn: Callable, mdp_states: Set[str]) -> float:
"""fraction of MDP states visited by trajectory
events: list of event objects/dicts
state_fn: function mapping event -> state string
mdp_states: set of all possible MDP states
"""
if not mdp_states:
return 0.0
visited = set(state_fn(e) for e in events)
return len(visited & mdp_states) / len(mdp_states)
def transition_entropy(events: List, state_fn: Callable) -> float:
"""compute entropy of transition distribution (randomness of navigation)
higher entropy = more random browsing pattern
"""
if len(events) < 2:
return 0.0
states = [state_fn(e) for e in events]
trans_counts = defaultdict(int)
for s, s_next in zip(states, states[1:]):
trans_counts[(s, s_next)] += 1
total = sum(trans_counts.values())
probs = [c / total for c in trans_counts.values()]
return -sum(p * np.log(p + 1e-10) for p in probs)
def event_type_distribution(events: List, event_name_fn: Callable) -> np.ndarray:
"""compute proportions of different event type categories
returns: [page_view_ratio, hover_ratio, cart_ratio, purchase_ratio]
"""
if not events:
return np.zeros(4, dtype=np.float32)
n = len(events)
names = [event_name_fn(e).lower() for e in events]
return np.array([
sum(1 for nm in names if 'page' in nm or 'view' in nm) / n,
sum(1 for nm in names if 'hover' in nm) / n,
sum(1 for nm in names if 'cart' in nm) / n,
sum(1 for nm in names if 'purchase' in nm or 'checkout' in nm) / n
], dtype=np.float32)
def featurize_trajectory(events: List, state_fn: Callable, ts_fn: Callable,
event_name_fn: Callable, mdp_states: Optional[Set[str]] = None,
output_dim: int = 64) -> np.ndarray:
"""convert trajectory to fixed-dimension feature vector
events: list of event objects/dicts
state_fn: function mapping event -> state string
ts_fn: function mapping event -> timestamp (float)
event_name_fn: function mapping event -> event name string
mdp_states: optional set of all MDP states for coverage calculation
output_dim: desired output dimension (will pad/truncate)
"""
feats = []
feats.extend(transition_histogram(events, state_fn, max_states=40)) # 40 dims
feats.extend(temporal_signature(events, ts_fn)) # 4 dims
feats.append(state_coverage(events, state_fn, mdp_states or set())) # 1 dim
feats.append(transition_entropy(events, state_fn)) # 1 dim
feats.append(float(len(events))) # trajectory length
feats.append(float(len(set(state_fn(e) for e in events)))) # unique states
feats.extend(event_type_distribution(events, event_name_fn)) # 4 dims
feats = np.array(feats[:output_dim], dtype=np.float32)
if len(feats) < output_dim:
feats = np.pad(feats, (0, output_dim - len(feats)))
return feats
def parse_timestamp(ts: Any) -> float:
"""parse various timestamp formats to float seconds"""
if ts is None:
return 0.0
if isinstance(ts, (int, float)):
return float(ts)
if isinstance(ts, str):
try:
return datetime.fromisoformat(ts.replace('Z', '+00:00')).timestamp()
except ValueError:
return 0.0
return 0.0