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README: note about RANDSEED
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@ -170,7 +170,9 @@ ARGS | Optional. Any additional arguments to pass to the python program.
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> It is strongly advised that all filepaths do **NOT** contain spaces.
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**Making predictions:** Set `PATH_CHECKPOINT` to point to a checkpoint file to make predictions with an existing model that you trained earlier instead of training a new one. Data is pulled from the given dataset, same as during training. The first `PREDICT_COUNT` items in the dataset are picked to make a prediction.
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**Making predictions:** Set `PATH_CHECKPOINT` to point to a checkpoint file to make predictions with an existing model that you trained earlier instead of training a new one. Data is pulled from the given dataset, same as during training. The first `PREDICT_COUNT` items in the dataset are picked to make a prediction.
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**`RANDSEED`:** The experiment runs in the series in the conference paper (see above!) uses `RANDSEED=QPnwyRZbLJBaTS7pjo4JZcl8vy9yv1D0SCpbS6olD5cmy`
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> [!NOTE]
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> The dataset pipeline is naturally non-deterministic with respect to the order in which samples are read. Ensuring the ordering of samples is not mangled is only possible when making predictions, and requires a number of environment variables to be set:
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