feat: Add 12 ADRs for RuVector RVF integration and proof-of-reality #31

Merged
ruvnet merged 33 commits from claude/integrate-ruvector-rvf-mF1Hp into main 2026-02-28 22:43:59 +08:00
2 changed files with 97 additions and 24 deletions
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@@ -385,12 +385,53 @@ class CSIProcessor:
return correlation_matrix return correlation_matrix
def _extract_doppler_features(self, csi_data: CSIData) -> tuple: def _extract_doppler_features(self, csi_data: CSIData) -> tuple:
"""Extract Doppler and frequency domain features.""" """Extract Doppler and frequency domain features from temporal CSI history.
# Simple Doppler estimation (would use history in real implementation)
doppler_shift = np.random.rand(10) # Placeholder
# Power spectral density Computes Doppler spectrum by analyzing temporal phase differences across
psd = np.abs(scipy.fft.fft(csi_data.amplitude.flatten(), n=128))**2 frames in self.csi_history, then applying FFT to obtain the Doppler shift
frequency components. If fewer than 2 history frames are available, returns
a zero-filled Doppler array (never random data).
Returns:
tuple: (doppler_shift, power_spectral_density) as numpy arrays
"""
n_doppler_bins = 64
if len(self.csi_history) >= 2:
# Build temporal phase matrix from history frames
# Each row is the mean phase across antennas for one time step
history_list = list(self.csi_history)
phase_series = []
for frame in history_list:
# Average phase across antennas to get per-subcarrier phase
if frame.phase.ndim == 2:
phase_series.append(np.mean(frame.phase, axis=0))
else:
phase_series.append(frame.phase.flatten())
phase_matrix = np.array(phase_series) # shape: (num_frames, num_subcarriers)
# Compute temporal phase differences between consecutive frames
phase_diffs = np.diff(phase_matrix, axis=0) # shape: (num_frames-1, num_subcarriers)
# Average phase diff across subcarriers for each time step
mean_phase_diff = np.mean(phase_diffs, axis=1) # shape: (num_frames-1,)
# Apply FFT to get Doppler spectrum from the temporal phase differences
doppler_spectrum = np.abs(scipy.fft.fft(mean_phase_diff, n=n_doppler_bins)) ** 2
# Normalize to prevent scale issues
max_val = np.max(doppler_spectrum)
if max_val > 0:
doppler_spectrum = doppler_spectrum / max_val
doppler_shift = doppler_spectrum
else:
# Not enough history for Doppler estimation -- return zeros, never random
doppler_shift = np.zeros(n_doppler_bins)
# Power spectral density of the current frame
psd = np.abs(scipy.fft.fft(csi_data.amplitude.flatten(), n=128)) ** 2
return doppler_shift, psd return doppler_shift, psd

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@@ -19,6 +19,15 @@ class CSIValidationError(Exception):
pass pass
class CSIExtractionError(Exception):
"""Exception raised when CSI data extraction fails.
This error is raised instead of silently returning random/placeholder data.
Callers should handle this to inform users that real hardware data is required.
"""
pass
@dataclass @dataclass
class CSIData: class CSIData:
"""Data structure for CSI measurements.""" """Data structure for CSI measurements."""
@@ -78,10 +87,32 @@ class ESP32CSIParser:
frequency = frequency_mhz * 1e6 # MHz to Hz frequency = frequency_mhz * 1e6 # MHz to Hz
bandwidth = bandwidth_mhz * 1e6 # MHz to Hz bandwidth = bandwidth_mhz * 1e6 # MHz to Hz
# Parse amplitude and phase arrays (simplified for now) # Parse amplitude and phase arrays from the remaining CSV fields.
# In real implementation, this would parse actual CSI matrix data # Expected format after the header fields: comma-separated float values
amplitude = np.random.rand(num_antennas, num_subcarriers) # representing interleaved amplitude and phase per antenna per subcarrier.
phase = np.random.rand(num_antennas, num_subcarriers) data_values = parts[6:]
expected_values = num_antennas * num_subcarriers * 2 # amplitude + phase
if len(data_values) < expected_values:
raise CSIExtractionError(
f"ESP32 CSI data incomplete: expected {expected_values} values "
f"(amplitude + phase for {num_antennas} antennas x {num_subcarriers} subcarriers), "
f"but received {len(data_values)} values. "
"Ensure the ESP32 firmware is configured to output full CSI matrix data. "
"See docs/hardware-setup.md for ESP32 CSI configuration."
)
try:
float_values = [float(v) for v in data_values[:expected_values]]
except ValueError as ve:
raise CSIExtractionError(
f"ESP32 CSI data contains non-numeric values: {ve}. "
"Raw CSI fields must be numeric float values."
)
all_values = np.array(float_values)
amplitude = all_values[:num_antennas * num_subcarriers].reshape(num_antennas, num_subcarriers)
phase = all_values[num_antennas * num_subcarriers:].reshape(num_antennas, num_subcarriers)
return CSIData( return CSIData(
timestamp=datetime.fromtimestamp(timestamp_ms / 1000, tz=timezone.utc), timestamp=datetime.fromtimestamp(timestamp_ms / 1000, tz=timezone.utc),
@@ -126,19 +157,20 @@ class RouterCSIParser:
raise CSIParseError("Unknown router CSI format") raise CSIParseError("Unknown router CSI format")
def _parse_atheros_format(self, raw_data: bytes) -> CSIData: def _parse_atheros_format(self, raw_data: bytes) -> CSIData:
"""Parse Atheros CSI format (placeholder implementation).""" """Parse Atheros CSI format.
# This would implement actual Atheros CSI parsing
# For now, return mock data for testing Raises:
return CSIData( CSIExtractionError: Always, because Atheros CSI parsing requires
timestamp=datetime.now(timezone.utc), the Atheros CSI Tool binary format parser which has not been
amplitude=np.random.rand(3, 56), implemented yet. Use the ESP32 parser or contribute an
phase=np.random.rand(3, 56), Atheros implementation.
frequency=2.4e9, """
bandwidth=20e6, raise CSIExtractionError(
num_subcarriers=56, "Atheros CSI format parsing is not yet implemented. "
num_antennas=3, "The Atheros CSI Tool outputs a binary format that requires a dedicated parser. "
snr=12.0, "To collect real CSI data from Atheros-based routers, you must implement "
metadata={'source': 'atheros_router'} "the binary format parser following the Atheros CSI Tool specification. "
"See docs/hardware-setup.md for supported hardware and data formats."
) )