another attempt at parsing RWA - seems to work better
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40
src/main.py
40
src/main.py
@@ -179,19 +179,20 @@ def deduplicate_instruments_from_layers(layers):
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# "rheed_system": rheeds,
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# "rheed_system": rheeds,
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# }
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# }
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def analyse_rheed_data(data, n_layers: int):
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def analyse_rheed_data(data):
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'''
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'''
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Takes the content of a tsv file and returns a dictionary with timestamps and intensities.
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Takes the content of a tsv file and returns a dictionary with timestamps and intensities.
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The file should contain a 2D array composed of 3N+1 columns - where N is the total number of layers in a given sample - and an unspecified number of rows.
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The file should contain a 2D array composed of 4 columns - where the first column is a timestamp and the other three are RHEED intensities - and an unspecified number of rows.
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-----
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-----
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Time Layer1_Int1 Layer1_Int2 Layer1_Int3 (repeat...)
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Time Layer1_Int1 Layer1_Int2 Layer1_Int3
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-----
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-----
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Distinct ValueErrors are raised if:
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Distinct ValueErrors are raised if:
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- The array is not 2-dimensional;
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- The array is not 2-dimensional;
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- The number of (intensity) columns is not a multiple of 3;
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- The total number of columns does not equate exactly 1+3 (= 4).
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- The total number of columns does not equate exactly 3N+1.
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Time is expressed in seconds, intensities are normalized (adimensional).
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# TO-DO: complete this description...
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# TO-DO: complete this description...
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Written with help from DeepSeek.
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Written with help from DeepSeek.
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@@ -200,29 +201,17 @@ def analyse_rheed_data(data, n_layers: int):
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if data.ndim != 2:
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if data.ndim != 2:
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raise ValueError(f"Unexpected trace format: expected 2D array, got ndim = {data.ndim}.")
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raise ValueError(f"Unexpected trace format: expected 2D array, got ndim = {data.ndim}.")
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n_cols = data.shape[1] # 0 = rows, 1 = columns
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n_cols = data.shape[1] # 0 = rows, 1 = columns
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if (n_cols - 1) % 3 != 0:
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if n_cols > 4:
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raise ValueError(f"Unexpected number of columns: expected 3N+1 columns, got {n_cols}.")
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print(f"Warning! The input file (for Realtime Window Analysis) has {n_cols-4} more than needed.\nOnly 4 columns will be considered - with the first representing time and the others representing RHEED intensities.")
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if (n_cols - 1) // 3 != n_layers:
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if n_cols < 4:
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exp = n_layers * 3 + 1
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raise ValueError(f"Insufficient number of columns: expected 4, got n_cols = {n_cols}.")
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raise ValueError(f"Unexpected volume of data: found {n_layers} layers, expected {exp} (3N+1) columns, got {n_cols}.")
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n_time_points = data.shape[0]
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n_time_points = data.shape[0]
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# Get time (all rows of col 0) as Float64:
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# Get time (all rows of col 0) as Float64:
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time = data[:, 0].astype(np.float64, copy=False) # copy=False suggested by LLM for mem. eff.
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time = data[:, 0].astype(np.float64, copy=False) # copy=False suggested by LLM for mem. eff.
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# Empty 3D array for intensities:
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# Get intensities (all rows of cols 1,2,3) as Float32:
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intensities = np.zeros(
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intensities = data[:, 1:4].astype(np.float32, copy=False)
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(n_layers, n_time_points, 3)
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)
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# Loop through layers:
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for layer_index in range(n_layers):
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layer_name = f"layer_{layer_index + 1}"
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# Columns for this layer are from 3i+1 to 3i+3 incl. (= 3i+4 excl.)
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start_col = 1 + layer_index * 3
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end_col = start_col + 3 # remember this gets excluded!
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# Get layer-specific intensities (all rows of columns start_col:end_col) as Float32:
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intensities[layer_index, :, :] = data[:, start_col:end_col].astype(np.float32, copy=False)
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return {
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return {
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"time": time,
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"time": time,
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@@ -566,5 +555,8 @@ if __name__=="__main__":
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# and merge all data in a single file to analyse it
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# and merge all data in a single file to analyse it
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with open(f"tests/Realtime_Window_Analysis.txt", "r") as o:
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with open(f"tests/Realtime_Window_Analysis.txt", "r") as o:
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osc = np.loadtxt(o, delimiter="\t")
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osc = np.loadtxt(o, delimiter="\t")
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rheed_osc = analyse_rheed_data(data=osc, n_layers=n_layers) or None # analyze rheed data first, build the file later
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try:
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rheed_osc = analyse_rheed_data(data=osc) or None # analyze rheed data first, build the file later
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except ValueError as ve:
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raise ValueError(f"Error with function analyse_rheed_data. {ve}\nPlease make sure the Realtime Window Analysis file is exactly 4 columns wide - where the first column represents time and the others are RHEED intensities.")
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build_nexus_file(result, output_path=f"output/sample-{sample_name}-nexus.h5", rheed_osc=rheed_osc)
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build_nexus_file(result, output_path=f"output/sample-{sample_name}-nexus.h5", rheed_osc=rheed_osc)
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