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import gc
import logging
import time
from pathlib import Path
import numpy as np
import pandas as pd
from gomez_cloud.utils.date_utils import iterate_days
logging.basicConfig(
level=logging.INFO,
format="%(asctime)s | %(levelname)s | %(name)s | %(message)s",
)
log = logging.getLogger(__name__)
def _haversine_m(lat1, lon1, lat2, lon2):
"""Vectorised haversine distance in meters."""
R = 6371000.0
phi1 = np.radians(lat1); phi2 = np.radians(lat2)
dphi = np.radians(lat2 - lat1); dl = np.radians(lon2 - lon1)
a = np.sin(dphi/2)**2 + np.cos(phi1)*np.cos(phi2)*np.sin(dl/2)**2
return 2*R*np.arcsin(np.sqrt(a))
def _meters_to_deg(lat_deg, dx_m, dy_m):
"""Convert local meter offsets (east=dx, north=dy) to lon/lat degrees at given latitude."""
lat_rad = np.radians(lat_deg)
m_per_deg_lat = 111_320.0
m_per_deg_lon = 111_320.0 * np.cos(lat_rad)
dlat = dy_m / m_per_deg_lat
dlon = dx_m / m_per_deg_lon
return dlat, dlon
def jitter_points(df, lat_col, lon_col, radius_m=50, seed=42, shuffle=True):
"""
Add uniform random jitter within a circle of radius_m meters.
Returns a new DataFrame with columns <lat_col>_jit, <lon_col>_jit.
"""
rng = np.random.default_rng(seed)
n = len(df)
# uniform in disk: r = R*sqrt(u), theta ~ U[0,2pi)
u = rng.random(n)
r = radius_m * np.sqrt(u)
theta = rng.random(n) * 2*np.pi
dx = r * np.cos(theta)
dy = r * np.sin(theta)
lat = df[lat_col].to_numpy(dtype=float, copy=False)
dlat, dlon = _meters_to_deg(lat, dx, dy)
out = df.copy()
out[f"{lat_col}_jit"] = lat + dlat
out[f"{lon_col}_jit"] = df[lon_col].to_numpy(dtype=float, copy=False) + dlon
if shuffle:
out = out.sample(frac=1.0, random_state=seed).reset_index(drop=True)
return out
def jitter_signal(series, sigma_db=2.0, seed=42, clip=(-120, -20)):
"""
Add small Gaussian noise (dBm) to signal, robust to strings like '-083'.
"""
rng = np.random.default_rng(seed)
sig = pd.to_numeric(series, errors="coerce") # "-083" -> -83
noise = rng.normal(0.0, sigma_db, size=len(sig))
out = (sig + noise).clip(clip[0], clip[1])
return out
# ----- difference metrics -----
def displacement_stats(orig_lat, orig_lon, jit_lat, jit_lon):
d = _haversine_m(orig_lat, orig_lon, jit_lat, jit_lon)
return {
"n": d.size,
"mean_m": float(np.nanmean(d)),
"p50_m": float(np.nanpercentile(d, 50)),
"p90_m": float(np.nanpercentile(d, 90)),
"p95_m": float(np.nanpercentile(d, 95)),
"max_m": float(np.nanmax(d)),
}
def js_distance_2d(orig_lat, orig_lon, jit_lat, jit_lon, bins=100, eps=1e-12):
"""
Jensen–Shannon distance between 2D (lat,lon) distributions via hist2d.
Range: 0 identical … 1 very different (we return sqrt(JS divergence)).
"""
lat_all = np.concatenate([orig_lat, jit_lat])
lon_all = np.concatenate([orig_lon, jit_lon])
lat_edges = np.linspace(lat_all.min(), lat_all.max(), bins+1)
lon_edges = np.linspace(lon_all.min(), lon_all.max(), bins+1)
H1, _, _ = np.histogram2d(orig_lat, orig_lon, bins=[lat_edges, lon_edges])
H2, _, _ = np.histogram2d(jit_lat, jit_lon, bins=[lat_edges, lon_edges])
P = (H1.ravel() + eps); P /= P.sum()
Q = (H2.ravel() + eps); Q /= Q.sum()
M = 0.5*(P+Q)
def kl(p, q): # both already have eps
return np.sum(p * np.log(p/q))
js_div = 0.5*kl(P, M) + 0.5*kl(Q, M)
return float(np.sqrt(js_div))
def ks_1d_marginals(orig, jit):
"""Kolmogorov–Smirnov D for 1D arrays (simple numpy implementation)."""
x = np.sort(np.asarray(orig))
y = np.sort(np.asarray(jit))
# empirical CDFs on merged support
grid = np.sort(np.unique(np.concatenate([x, y])))
Fx = np.searchsorted(x, grid, side='right') / x.size
Fy = np.searchsorted(y, grid, side='right') / y.size
return float(np.max(np.abs(Fx - Fy)))
def main() -> None:
start_all = time.time()
partitions = iterate_days(first="2025-03-01", last="2025-06-30")
output_dir = Path(...)
output_dir.mkdir(parents=True, exist_ok=True)
base_uri = ...
storage_opts = {"token": "cloud"} # ADC via gcsfs
week_buffers = []
week_idx = 1
day_idx = 0
total_rows_written = 0
total_days_processed = 0
for day in partitions:
t0 = time.time()
uri = f"{base_uri}/day={day}"
try:
df = pd.read_parquet(uri, storage_options=storage_opts)
except FileNotFoundError:
log.warning("Partition not found (skipping): %s", uri)
continue
except Exception as e:
log.exception("Failed to read partition %s: %s", uri, e)
continue
log.info("Loaded %s rows x %s cols from %s", len(df), len(df.columns), uri)
try:
# Jitter location
pings_jit = jitter_points(
df,
lat_col="latitude",
lon_col="longitude",
radius_m=20,
seed=456,
shuffle=True,
)
# Jitter signal
pings_jit["signal_level_jit"] = jitter_signal(
df["signal_level"], sigma_db=2.0, seed=456
)
# Replace originals with jittered
pings_jit = (
pings_jit.drop(columns=["latitude", "longitude", "signal_level"])
.rename(
columns={
"latitude_jit": "latitude",
"longitude_jit": "longitude",
"signal_level_jit": "signal_level",
}
)
)
# Keep only 'Full Service Loss (>120s)', else set to None
if "measurement_type_name" in pings_jit.columns:
pings_jit["measurement_type_name"] = pings_jit["measurement_type_name"].apply(
lambda x: x if x == "Full Service Loss (>120s)" else None
)
else:
log.warning("Column 'measurement_type_name' missing in partition %s", day)
log.info(
"Transformed day=%s → %s rows", day, len(pings_jit)
)
week_buffers.append(pings_jit)
total_days_processed += 1
day_idx += 1
except Exception as e:
log.exception("Transform failed for day=%s: %s", day, e)
# Drop heavy refs before moving on
del df
gc.collect()
continue
finally:
# free the original df ASAP
del df
gc.collect()
# Flush every 14 days
if day_idx % 14 == 0:
try:
week_df = pd.concat(week_buffers, ignore_index=True)
out_path = output_dir / f"np_extract_part_{week_idx}.csv"
week_df.to_csv(out_path, index=False)
total_rows_written += len(week_df)
log.info(
"Wrote week %d: %s rows to %s (elapsed %.2fs)",
week_idx, len(week_df), out_path, time.time() - t0
)
finally:
week_buffers.clear()
week_idx += 1
# encourage memory to return
del week_df
gc.collect()
log.info("Processed day=%s in %.2fs", day, time.time() - t0)
# Final partial week flush
if week_buffers:
week_df = pd.concat(week_buffers, ignore_index=True)
week_df.to_csv(f"/home/tom_freeman_vodafone_com/tom-foolery/data/np_extractions/part_{week_idx}.csv", index=False)
total_rows_written += len(week_df)
log.info(
"Wrote FINAL part %d: %s rows to %s",
week_idx, len(week_df), out_path
)
week_buffers.clear()
del week_df
gc.collect()
log.info(
"Done. Days processed: %d | Rows written: %d | Total time: %.2fs",
total_days_processed, total_rows_written, time.time() - start_all
)
if __name__ == "__main__":
main()
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