|
| 1 | +"""Minimal example for use of maskpred pretraining.""" |
| 2 | + |
| 3 | +from typing import Tuple |
| 4 | + |
| 5 | +from graphnet.models.pretraining_maskpred import mask_pred_frame |
| 6 | +from graphnet.models.pretraining_maskpred import default_mask_augment |
| 7 | +from graphnet.models.pretraining_maskpred import default_loss_calc |
| 8 | +from graphnet.models import Model |
| 9 | +from torch_geometric.data import Data |
| 10 | +from graphnet.models.data_representation.graphs import KNNGraph |
| 11 | +from graphnet.data.dataset.sqlite.sqlite_dataset import SQLiteDataset |
| 12 | +from graphnet.data.dataloader import DataLoader |
| 13 | +from graphnet.constants import EXAMPLE_DATA_DIR |
| 14 | + |
| 15 | +from torch_scatter import scatter |
| 16 | + |
| 17 | +import torch |
| 18 | +from torch import Tensor |
| 19 | + |
| 20 | +from graphnet.models.detector.prometheus import Prometheus |
| 21 | +from graphnet.models.graphs.nodes import NodesAsPulses |
| 22 | + |
| 23 | +from graphnet.models.task.task import UnsupervisedTask |
| 24 | + |
| 25 | + |
| 26 | +class simple_model(Model): |
| 27 | + """Just for a dummy model.""" |
| 28 | + |
| 29 | + def __init__( |
| 30 | + self, |
| 31 | + ) -> None: |
| 32 | + """Construct.""" |
| 33 | + super().__init__() |
| 34 | + self.net = torch.nn.Sequential( |
| 35 | + torch.nn.Linear(4, 10), torch.nn.SELU(), torch.nn.Linear(10, 5) |
| 36 | + ) |
| 37 | + |
| 38 | + def forward(self, data: Data) -> Tuple[Tensor, Tensor]: |
| 39 | + """Forward pass.""" |
| 40 | + x = self.net(data.x) |
| 41 | + x_rep = scatter(src=x, index=data.batch, dim=0, reduce="max") |
| 42 | + return x, x_rep |
| 43 | + |
| 44 | + |
| 45 | +def test() -> None: |
| 46 | + """Short test with saving at the end.""" |
| 47 | + graph_definition = KNNGraph( |
| 48 | + detector=Prometheus(), |
| 49 | + node_definition=NodesAsPulses(), |
| 50 | + nb_nearest_neighbours=8, |
| 51 | + ) |
| 52 | + |
| 53 | + dataset = SQLiteDataset( |
| 54 | + path=f"{EXAMPLE_DATA_DIR}/sqlite/prometheus/prometheus-events.db", |
| 55 | + pulsemaps="total", |
| 56 | + truth_table="mc_truth", |
| 57 | + features=["sensor_pos_x", "sensor_pos_y", "sensor_pos_z", "t", "q"], |
| 58 | + truth=["injection_energy", "injection_zenith"], |
| 59 | + data_representation=graph_definition, |
| 60 | + ) |
| 61 | + |
| 62 | + dataloader = DataLoader( |
| 63 | + dataset, |
| 64 | + batch_size=3, |
| 65 | + num_workers=10, |
| 66 | + ) |
| 67 | + |
| 68 | + for batch in dataloader: |
| 69 | + data = batch |
| 70 | + break |
| 71 | + |
| 72 | + dummy_model = simple_model() |
| 73 | + default_task = UnsupervisedTask( |
| 74 | + default_mask_augment(), default_loss_calc() |
| 75 | + ) |
| 76 | + |
| 77 | + model = mask_pred_frame( |
| 78 | + encoder=dummy_model, |
| 79 | + bert_task=default_task, |
| 80 | + encoder_out_dim=5, |
| 81 | + need_charge_rep=False, |
| 82 | + ) |
| 83 | + |
| 84 | + out = model(data) |
| 85 | + print(out) |
| 86 | + |
| 87 | + # for training |
| 88 | + # model.fit(train_dataloader=dataloader, max_epochs=10, gpus=1) |
| 89 | + |
| 90 | + # for saving |
| 91 | + # model.save_pretrained_model('some/path') |
| 92 | + |
| 93 | + |
| 94 | +if __name__ == "__main__": |
| 95 | + test() |
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