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caption-test/tests/test_trainer.py

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"""Tests for src.training.trainer_new.Trainer.
Scope: __init__ behaviour, backbone validation, ModelsConfig type union.
Out of scope: actual training (requires GPU + datasets + model checkpoints).
The Trainer class is designed to defer all heavy lifting (CUDA, model
construction, dataset loading) to .train(); __init__ just stores the 6 cfg
objects and zeros out runtime state. This makes it cheap to test.
"""
from __future__ import annotations
from typing import get_args
import pytest
from src.conf.config_loader import load_all_configs
from src.conf.models_dinov3_conf import DINOv3ModelsConfig
from src.conf.models_stripnet_conf import StripNetModelsConfig
from src.training.trainer_new import (
ModelsConfig,
Trainer,
_SUPPORTED_BACKBONES,
)
from conftest import DINOV3_PRESETS, STRIPNET_PRESETS
# -- module-level constants ------------------------------------------------
def test_supported_backbones_is_frozenset() -> None:
"""_SUPPORTED_BACKBONES must be a frozenset (immutable, hashable)."""
assert isinstance(_SUPPORTED_BACKBONES, frozenset)
def test_supported_backbones_contents() -> None:
"""Exactly dinov3 and stripnet are supported in the current refactor.
Sofia (v1/v71) is intentionally absent — see Trainer._validate_backbone
for the rationale and the steps to add it later.
"""
assert _SUPPORTED_BACKBONES == frozenset({"dinov3", "stripnet"})
def test_models_config_union_contents() -> None:
"""ModelsConfig union mirrors _SUPPORTED_BACKBONES (dinov3 | stripnet)."""
union_members = set(get_args(ModelsConfig))
assert union_members == {DINOv3ModelsConfig, StripNetModelsConfig}
# -- _validate_backbone --------------------------------------------------
@pytest.mark.parametrize("backbone", ["dinov3", "stripnet"])
def test_validate_backbone_accepts_supported(
path2cfg: str, backbone: str,
) -> None:
"""Supported backbones pass _validate_backbone silently.
We use a real preset to build a valid Trainer — this also exercises
the load_all_configs → Trainer(...) integration.
"""
preset = "gtauav_balanced" if backbone == "dinov3" else "gtauav_balanced_stripnet"
cfgs = load_all_configs(path2cfg, preset)
trainer = Trainer(
pipeline_cfg=cfgs["pipeline"],
hardware_cfg=cfgs["hardware"],
training_cfg=cfgs["training"],
tracking_cfg=cfgs["tracking"],
models_common_cfg=cfgs["models_common"],
models_cfg=cfgs["models"],
)
# Must not raise.
trainer._validate_backbone()
@pytest.mark.parametrize("bad_backbone", ["sofia_v1", "sofia_v71", "mistral_42b", ""])
def test_validate_backbone_rejects_unsupported(
path2cfg: str, bad_backbone: str,
) -> None:
"""Unsupported backbones (incl. sofia) raise NotImplementedError, not ImportError.
The user must get a clear, actionable message — not a stack trace from
a missing module.
"""
cfgs = load_all_configs(path2cfg, "gtauav_balanced")
trainer = Trainer(
pipeline_cfg=cfgs["pipeline"],
hardware_cfg=cfgs["hardware"],
training_cfg=cfgs["training"],
tracking_cfg=cfgs["tracking"],
models_common_cfg=cfgs["models_common"],
models_cfg=cfgs["models"],
)
# Tamper with backbone — simulate what would happen if config_loader
# were extended to accept sofia presets.
trainer.models_common_cfg.backbone = bad_backbone
with pytest.raises(NotImplementedError) as excinfo:
trainer._validate_backbone()
# Error message must mention the offending backbone name and what's supported.
msg = str(excinfo.value)
assert bad_backbone in msg or repr(bad_backbone) in msg
assert "dinov3" in msg
assert "stripnet" in msg
# -- Trainer.__init__ smoke tests ------------------------------------------
@pytest.mark.parametrize("preset_name", DINOV3_PRESETS + STRIPNET_PRESETS)
def test_trainer_init_with_real_preset(path2cfg: str, preset_name: str) -> None:
"""Trainer(...) instantiates from every real preset's loaded cfgs.
Heavy work (CUDA, model build, dataset open) is deferred to .train();
__init__ only stores cfgs and zeros runtime state, so this is cheap and
GPU-free.
"""
cfgs = load_all_configs(path2cfg, preset_name)
trainer = Trainer(
pipeline_cfg=cfgs["pipeline"],
hardware_cfg=cfgs["hardware"],
training_cfg=cfgs["training"],
tracking_cfg=cfgs["tracking"],
models_common_cfg=cfgs["models_common"],
models_cfg=cfgs["models"],
)
# Cfgs are stored as-is.
assert trainer.pipeline_cfg is cfgs["pipeline"]
assert trainer.hardware_cfg is cfgs["hardware"]
assert trainer.training_cfg is cfgs["training"]
assert trainer.tracking_cfg is cfgs["tracking"]
assert trainer.models_common_cfg is cfgs["models_common"]
assert trainer.models_cfg is cfgs["models"]
def test_trainer_init_zeros_runtime_state(path2cfg: str) -> None:
"""All runtime fields are None / 0 / [] before .train() is called."""
cfgs = load_all_configs(path2cfg, "gtauav_balanced")
trainer = Trainer(
pipeline_cfg=cfgs["pipeline"],
hardware_cfg=cfgs["hardware"],
training_cfg=cfgs["training"],
tracking_cfg=cfgs["tracking"],
models_common_cfg=cfgs["models_common"],
models_cfg=cfgs["models"],
)
# None-typed runtime fields.
for attr in (
"output_dir", "full_config", "tracker", "csv_logger", "model",
"loss_fn", "neg_bank", "optimizer", "scheduler", "scaler",
"train_ds", "test_ds", "train_eval_ds",
"train_loader", "test_loader", "train_eval_loader",
"batch_sampler", "emb_cache", "profiler", "resume_ckpt",
):
assert getattr(trainer, attr) is None, (
f"trainer.{attr} should be None before .train(), "
f"got {type(getattr(trainer, attr)).__name__}"
)
# Counter / loop state initialized to identity values.
assert trainer.start_epoch == 0
assert trainer.global_step == 0
assert trainer.best_r1 == 0.0
assert trainer.history == []
assert trainer.steps_per_epoch == 0
# -- Trainer.train end-to-end signature ------------------------------------
def test_trainer_train_method_exists_and_takes_no_args() -> None:
"""Trainer.train() takes only `self` — main.py calls trainer.train()."""
import inspect
sig = inspect.signature(Trainer.train)
params = [p for p in sig.parameters.values() if p.name != "self"]
assert params == [], (
f"Trainer.train() must take only self; got extra params: {params}"
)