230 lines
8.3 KiB
Python
230 lines
8.3 KiB
Python
"""Tests for Flow Matching training pipeline."""
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from __future__ import annotations
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import json
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import math
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from pathlib import Path
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import numpy as np
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import pytest
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from ai_mouse.trainer import load_and_prepare_data, train, _augment
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def _make_synthetic_trace(start, end, n_moves=30):
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"""Create a synthetic trace dict mimicking real JSONL format."""
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sx, sy = start
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ex, ey = end
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dist = math.hypot(ex - sx, ey - sy)
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angle = math.degrees(math.atan2(ey - sy, ex - sx))
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events = []
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for i in range(n_moves):
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t_frac = i / (n_moves - 1)
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x = int(sx + (ex - sx) * t_frac + np.random.normal(0, 3))
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y = int(sy + (ey - sy) * t_frac + np.random.normal(0, 3))
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t = int(t_frac * 500 + np.random.normal(0, 5))
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events.append({"type": "move", "x": x, "y": y, "t": max(0, t)})
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events.sort(key=lambda e: e["t"])
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events[0]["t"] = 0
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last_t = events[-1]["t"]
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events.append({"type": "down", "x": ex, "y": ey, "t": last_t + 50})
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events.append({"type": "up", "x": ex, "y": ey, "t": last_t + 130})
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return {
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"meta": {"start": [sx, sy], "end": [ex, ey], "dist": int(dist), "angle": round(angle, 1)},
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"events": events,
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}
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@pytest.fixture
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def synthetic_traces_file(tmp_path):
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"""Create a temp JSONL file with 25 synthetic traces."""
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traces_path = tmp_path / "traces.jsonl"
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rng = np.random.default_rng(42)
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lines = []
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for _ in range(25):
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sx, sy = int(rng.integers(50, 750)), int(rng.integers(50, 750))
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angle = rng.uniform(0, 2 * math.pi)
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dist = int(rng.integers(100, 500))
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ex = int(sx + dist * math.cos(angle))
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ey = int(sy + dist * math.sin(angle))
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ex = max(0, min(800, ex))
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ey = max(0, min(600, ey))
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trace = _make_synthetic_trace((sx, sy), (ex, ey))
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lines.append(json.dumps(trace))
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traces_path.write_text("\n".join(lines), encoding="utf-8")
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return traces_path
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class TestLoadAndPrepare:
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def test_returns_correct_shapes(self, synthetic_traces_file):
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seq, cond, click_durs = load_and_prepare_data(synthetic_traces_file, seq_len=64)
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assert seq.shape[1] == 64
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assert seq.shape[2] == 3
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assert cond.shape[1] == 3
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assert len(seq) > 0
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def test_forward_starts_near_zero(self, synthetic_traces_file):
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seq, cond, _ = load_and_prepare_data(synthetic_traces_file, seq_len=64)
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assert abs(seq[:, 0, 0].mean()) < 0.15
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def test_forward_ends_near_one(self, synthetic_traces_file):
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seq, cond, _ = load_and_prepare_data(synthetic_traces_file, seq_len=64)
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assert abs(seq[:, -1, 0].mean() - 1.0) < 0.15
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class TestAugment:
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def test_augmentation_multiplies_data(self, synthetic_traces_file):
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seq, cond, _ = load_and_prepare_data(synthetic_traces_file, seq_len=64)
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n_orig = len(seq)
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seq_aug, cond_aug = _augment(seq, cond)
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assert len(seq_aug) == n_orig * 6
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assert len(cond_aug) == n_orig * 6
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class TestTrain:
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def test_train_produces_model_files(self, synthetic_traces_file, tmp_path):
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output_dir = tmp_path / "models"
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train(
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data_path=synthetic_traces_file,
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output_dir=output_dir,
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epochs=3,
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batch_size=8,
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seq_len=64,
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)
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assert (output_dir / "flow_model.pt").exists()
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assert (output_dir / "click_dist.json").exists()
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assert (output_dir / "duration_dist.json").exists()
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assert (output_dir / "train_config.json").exists()
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def test_train_loss_decreases(self, synthetic_traces_file, tmp_path):
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output_dir = tmp_path / "models"
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losses = []
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def cb(msg):
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if "loss" in msg:
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losses.append(msg["loss"])
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train(
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data_path=synthetic_traces_file,
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output_dir=output_dir,
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epochs=20,
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batch_size=8,
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seq_len=64,
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progress_callback=cb,
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)
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first_half = np.mean(losses[:10])
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second_half = np.mean(losses[10:])
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assert second_half < first_half
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class TestTrajectoryDataset:
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def test_dataset_length_with_augmentation(self):
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"""Dataset length = N * 6 when augment=True."""
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from ai_mouse.trainer import TrajectoryDataset
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seq = np.zeros((10, 64, 3), dtype=np.float32)
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cond = np.zeros((10, 3), dtype=np.float32)
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ds = TrajectoryDataset(seq, cond, augment=True)
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assert len(ds) == 60
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def test_dataset_length_without_augmentation(self):
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from ai_mouse.trainer import TrajectoryDataset
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seq = np.zeros((10, 64, 3), dtype=np.float32)
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cond = np.zeros((10, 3), dtype=np.float32)
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ds = TrajectoryDataset(seq, cond, augment=False)
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assert len(ds) == 10
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def test_getitem_returns_tensors(self):
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from ai_mouse.trainer import TrajectoryDataset
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import torch
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seq = np.random.randn(5, 64, 3).astype(np.float32)
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cond = np.random.randn(5, 3).astype(np.float32)
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ds = TrajectoryDataset(seq, cond, augment=True)
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s, c = ds[0]
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assert isinstance(s, torch.Tensor)
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assert isinstance(c, torch.Tensor)
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assert s.shape == (64, 3)
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assert c.shape == (3,)
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def test_aug_id_zero_returns_original(self):
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"""Aug id 0 (idx=0 % 6 == 0) should return the original sample unchanged."""
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from ai_mouse.trainer import TrajectoryDataset
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import torch
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seq = np.array([[[0.5, 0.7, 0.3]] * 64] * 3, dtype=np.float32)
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cond = np.array([[1.0, 2.0, 3.0]] * 3, dtype=np.float32)
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ds = TrajectoryDataset(seq, cond, augment=True)
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s0, c0 = ds[0]
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np.testing.assert_allclose(s0.numpy(), seq[0], rtol=1e-5)
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np.testing.assert_allclose(c0.numpy(), cond[0], rtol=1e-5)
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def test_aug_id_one_flips_lateral(self):
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"""Aug id 1 should flip the sign of the lateral channel (index 1)."""
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from ai_mouse.trainer import TrajectoryDataset
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seq = np.zeros((1, 64, 3), dtype=np.float32)
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seq[0, :, 1] = 0.5 # lateral all positive
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cond = np.zeros((1, 3), dtype=np.float32)
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ds = TrajectoryDataset(seq, cond, augment=True)
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# idx=1 → base_idx=0, aug_id=1 → flip
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s1, _ = ds[1]
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assert (s1[:, 1] < 0).all()
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class TestResumeFrom:
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def test_resume_from_loads_checkpoint(self, synthetic_traces_file, tmp_path):
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"""train() with resume_from should load weights from given checkpoint dir."""
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import torch
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from ai_mouse.trainer import train
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from ai_mouse.models import TrajectoryFlowModel
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# First, train an initial model and save it
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ckpt_dir = tmp_path / "pretrain"
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train(
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data_path=synthetic_traces_file,
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output_dir=ckpt_dir,
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epochs=2,
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batch_size=8,
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seq_len=64,
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)
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assert (ckpt_dir / "flow_model.pt").exists()
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# Read its weights to compare later
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m_pretrain = TrajectoryFlowModel(seq_len=64)
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m_pretrain.load_state_dict(torch.load(ckpt_dir / "flow_model.pt", weights_only=True))
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first_param_pre = next(m_pretrain.parameters()).clone()
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# Now train with resume_from for 1 epoch — weights should still be loaded
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out_dir = tmp_path / "finetune"
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train(
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data_path=synthetic_traces_file,
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output_dir=out_dir,
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epochs=1,
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batch_size=8,
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seq_len=64,
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resume_from=ckpt_dir,
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)
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m_after = TrajectoryFlowModel(seq_len=64)
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m_after.load_state_dict(torch.load(out_dir / "flow_model.pt", weights_only=True))
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first_param_after = next(m_after.parameters())
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# After 1 epoch, weights should be close to pre-train, not random init
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# (random init would be O(1) magnitude apart; 1 epoch on small data shifts O(0.1))
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diff = (first_param_pre - first_param_after).abs().mean().item()
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assert diff < 0.5, f"Resume_from weights diverged too much: {diff}"
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def test_resume_from_missing_path_raises(self, synthetic_traces_file, tmp_path):
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from ai_mouse.trainer import train
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with pytest.raises(FileNotFoundError):
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train(
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data_path=synthetic_traces_file,
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output_dir=tmp_path / "out",
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epochs=1,
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batch_size=8,
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seq_len=64,
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resume_from=tmp_path / "nonexistent",
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)
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