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https://github.com/sbrl/research-rainfallradar
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rainfallwrangler json2tfrecord.py: normalise data
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@ -11,6 +11,10 @@ if not os.environ.get("NO_SILENCE"):
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silence_tensorflow()
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import tensorflow as tf
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# The maximum value allowed for the rainfall radar data. Used to normalise the data when converting to .tfrecord files
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# TODO: Enter the optimal value for this.
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RAINFALL_MAX_NUMBER = 100
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def parse_args():
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parser = argparse.ArgumentParser(description="Convert a generated .jsonl.gz file to a .tfrecord.gz file")
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parser.add_argument("--input", "-i", help="Path to the input file to convert.", required=True)
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@ -37,7 +41,8 @@ def convert(filepath_in, filepath_out):
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rainfall = tf.constant(obj["rainfallradar"], dtype=tf.float32)
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water = tf.constant(obj["waterdepth"], dtype=tf.float32)
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# TODO: cast float32 → divide by max_value → clip 0-1 (or -1 to +1? I don't know)
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# Normalise the rainfall radar data (the water depth data is already normalised as it's just 0 or 1)
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rainfall = tf.clip_by_value(rainfall / RAINFALL_MAX_NUMBER, 0, 1)
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###
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## 3: Print shape definitions (required when parsing)
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