BaseRunner¶
danling.runners.BaseRunner
¶
Backend-agnostic runner state and orchestration utilities.
BaseRunner intentionally keeps only the shared runtime contract used by
concrete runners such as TorchRunner:
- configuration and process lifecycle bootstrap
- datasets/dataloaders/result containers
- checkpoint/result persistence helpers
- progress and score bookkeeping
Concrete runners are expected to customize runtime behavior through the explicit training/checkpoint hooks below, not by overriding bootstrap internals.
Construction lifecycle:
- Normalize config and create
RunnerState. - Bind workspace, containers, default
FileCheckpointManager, and supervisor. - Call early service hooks in order:
init_distributed,init_checkpoint_manager,init_fault_tolerance,init_garbage_collection. - Apply seed/determinism policy.
- Initialize logging, TensorBoard/W&B, print routing, signal handlers, and heartbeat.
MetaRunnercalls__post_init__. Concrete runners such asTorchRunnermaterialize models, optimizers, schedulers, and resume checkpoints there before delegating back toBaseRunner.__post_init__for metadata persistence.
Override rule: early hooks run while the runner is only partially
constructed; model/runtime hooks run in concrete __post_init__; loop
hooks (train_step, evaluate_step, infer_step) run after all runtime
components are bound.
Attributes:
| Name | Type | Description |
|---|---|---|
state |
RunnerState
|
Checkpointable aggregate state object. |
config |
RunnerConfig
|
Runner configuration. |
train_state |
RunnerTrainState
|
Training progress counters. |
elastic_state |
RunnerElasticState
|
Torchelastic restart metadata. |
rng_state |
RunnerRNGState
|
Python/NumPy/Torch RNG snapshots. |
datasets |
FlatDict
|
Dataset mapping keyed by split. |
dataloaders |
FlatDict
|
Dataloader mapping keyed by split. |
checkpoint_manager |
CheckpointManager
|
Active checkpoint backend manager. |
workspace |
RunnerWorkspace
|
Workspace, logging, metadata, and print-routing helper. |
supervisor |
RunnerSupervisor
|
Signal, heartbeat, and garbage-collection helper. |
ft |
FaultTolerance | None
|
Optional fault-tolerance runtime handle. |
Source code in danling/runners/base_runner.py
| Python | |
|---|---|
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is_local_main_process
property
¶
is_local_main_process: bool
Whether current rank is local main process.
scores
property
¶
scores: FlatDict | None
Index-to-score mapping extracted from score_split/score_name.
best_result
property
¶
Best result row according to configured score metric.
is_best
property
¶
is_best: bool
Whether latest score matches current best score.
Returns True only when comparable scalar scores are available and
agree within tolerance. Returns True on the first iteration (no
prior results), and False when scores cannot be resolved (e.g.,
no score_split/score_name configured) — silently reporting best
in that case would trigger phantom “best” checkpoint copies.
max_grad_value
cached
property
¶
max_grad_value: float | None
Gradient value clipping threshold.
skip_nonfinite_grad
cached
property
¶
skip_nonfinite_grad: bool
Whether to skip optimizer updates when gradients are non-finite.
evaluate_splits
property
¶
Configured or inferred evaluation split names.
checkpoint_interval
property
¶
checkpoint_interval: int
Checkpoint cadence in optimizer steps (step mode) or epochs (epoch mode).
__post_init__
¶
auto_restore
¶
Auto-load resume/pretrained sources declared in config.
Precedence
config.resume > config.auto_resume > config.pretrained.
Source code in danling/runners/base_runner.py
init_distributed
¶
Initialize the distributed environment.
The default is a no-op (single-process). Concrete runners override
this hook to initialize the torch.distributed process group; see
TorchRunner.init_distributed
for the canonical specification.
Source code in danling/runners/base_runner.py
init_checkpoint_manager
¶
Bind the runner’s checkpoint manager.
The default is a no-op — BaseRunner.__init__ already binds the
FileCheckpointManager. Concrete runners override this hook to swap
in the backend-appropriate manager via set_checkpoint_manager(...);
see
TorchRunner.init_checkpoint_manager
for the canonical specification.
Source code in danling/runners/base_runner.py
init_fault_tolerance
¶
init_heartbeat
¶
init_garbage_collection
¶
init_signal_handlers
¶
prepare_for_shutdown_checkpoint
¶
init_tensorboard
¶
Initialize tensorboard writer.
Source code in danling/runners/base_runner.py
init_wandb
¶
Initialize Weights & Biases run for scalar logging.
Source code in danling/runners/base_runner.py
set_seed
¶
Set python/numpy RNG seeds and snapshot RNG state.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
int | None
|
Base seed. Defaults to |
None
|
|
int | bool | None
|
Optional per-process bias. |
None
|
Returns:
| Type | Description |
|---|---|
int
|
The process-local seed after applying bias. |
Source code in danling/runners/base_runner.py
set_deterministic
¶
train
¶
train_epochs
¶
train_epoch
¶
train_steps
¶
train_step
¶
Run one training micro-step.
Concrete runners define the override contract; see
TorchRunner.train_step for
the canonical specification.
Source code in danling/runners/base_runner.py
backward
¶
step
¶
evaluate
¶
evaluate_epoch
¶
evaluate_steps
¶
evaluate_step
¶
Run one evaluation step.
Concrete runners define the override contract; see
TorchRunner.evaluate_step
for the canonical specification.
Source code in danling/runners/base_runner.py
| Python | |
|---|---|
infer
¶
infer_step
¶
Run one inference step.
Concrete runners define the override contract; see
TorchRunner.infer_step for
the canonical specification.
Source code in danling/runners/base_runner.py
unwrap
¶
state_dict
¶
Build the backend-neutral runner checkpoint payload.
The base payload contains semantic runner config, mutable runner state, RNG snapshots, and dataloader resume state. Backend runners extend this payload with model/optimizer/scheduler state.
Called when: checkpoint managers build a payload for
save_checkpoint, and fault-tolerance callbacks need a runner state
snapshot.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
type
|
Mapping factory used for nested payloads. Backends may pass
|
dict
|
Returns:
| Type | Description |
|---|---|
Mapping
|
Mapping with |
Side effects: snapshots Python and NumPy RNG state into
self.rng_state before exporting.
Do not
- Mutate model or optimizer state here.
- Drop the
runnerconfig payload; resume validation depends on it. - Override without calling
super()unless you fully replace the checkpoint format.
Source code in danling/runners/base_runner.py
load_state_dict
¶
load_state_dict(checkpoint: Mapping[str, Any]) -> None
Restore backend-neutral runner state from a checkpoint payload.
This restores semantic runner state and Python/NumPy RNG state. Model,
EMA, optimizer, scheduler, and dataloader component loading is owned by
load_checkpoint.
Called when: load_checkpoint restores a full checkpoint, and
fault-tolerance callbacks receive a runner state payload.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
Mapping[str, Any]
|
Mapping produced by |
required |
Raises:
| Type | Description |
|---|---|
ValueError
|
checkpoint runner config differs semantically from the current runner config. |
Side effects: updates self.state, self.train_state,
self.elastic_state, self.rng_state, and process RNG state.
Do not
- Load model/optimizer/scheduler state here; use component loaders
through
load_checkpoint. - Suppress semantic config diffs unless you also update the resume policy deliberately.
Source code in danling/runners/base_runner.py
save_checkpoint
¶
save_checkpoint(
name: str = "latest",
epochs: int | None = None,
save_best: bool = True,
last_step: bool = False,
force: bool = False,
) -> None
Persist runner state through the active checkpoint manager.
Backend collective semantics are owned by
checkpoint_manager.is_collective. File-style managers save on the
main process only; collective managers require every rank to enter this
method together.
Called when: training loops hit checkpoint cadence, final
last_step saves run, or the supervisor handles a shutdown signal.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
str
|
Logical checkpoint alias, usually |
'latest'
|
|
int | None
|
Epoch index used for history checkpoint naming. Defaults
to |
None
|
|
bool
|
Whether to publish/update the best-checkpoint alias
when |
True
|
|
bool
|
Whether this save is the final save for the run. |
False
|
|
bool
|
Bypass cadence checks inside the manager. |
False
|
Side effects: delegates to
self.checkpoint_manager.save_checkpoint(...).
Do not
- Add a main-process guard around calls to this method; DCP-style managers need all ranks to participate.
- Bypass the checkpoint manager for normal runner checkpoints.
Source code in danling/runners/base_runner.py
save_seed_checkpoint
¶
save_seed_checkpoint(name: str = 'seed') -> None
Persist an initialization checkpoint for cross-topology experiments.
Seed checkpoints are intended to be created before training advances,
then loaded with checkpoint.load_only=True or resume/pretrained
when comparing different parallel layouts from the same initial model
state. They are saved through the final-checkpoint path, so
checkpoint.last_save_model_only=True intentionally applies.
Source code in danling/runners/base_runner.py
load_checkpoint
¶
load_checkpoint(
checkpoint: Mapping | bytes | str | PathLike,
*args: Any,
**kwargs: Any
) -> None
Restore a full runner checkpoint.
This is the full-state restore path: runtime state, model/EMA, optimizer, scheduler, and dataloader progress are restored when present and applicable to the current runner.
Called when: users resume a run explicitly, auto_restore selects
a resume source, from_checkpoint constructs a runner, or
fault-tolerance callbacks restore a full runner payload.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
Mapping | bytes | str | PathLike
|
In-memory checkpoint mapping or backend-specific path. |
required |
|
Any
|
Forwarded to |
()
|
|
Any
|
Forwarded to |
{}
|
Raises:
| Type | Description |
|---|---|
ValueError
|
checkpoint is missing required component state for an initialized component, or config validation fails. |
Side effects: updates runner state, model/EMA weights, optimizer,
scheduler, dataloader progress, and config.resume for path inputs.
Do not
- Use this for model-only finetuning payloads; use
load_pretrainedinstead. - Override just to support a new path type; prefer overriding
read_checkpoint.
Source code in danling/runners/base_runner.py
| Python | |
|---|---|
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load_model
¶
Load model state.
Source code in danling/runners/base_runner.py
load_ema
¶
Load EMA state.
Source code in danling/runners/base_runner.py
load_optimizer
¶
Load optimizer state.
Source code in danling/runners/base_runner.py
| Python | |
|---|---|
load_scheduler
¶
Load scheduler state.
Source code in danling/runners/base_runner.py
| Python | |
|---|---|
load_dataloaders
¶
Load dataloader progress state when the current runner has matching loaders.
Source code in danling/runners/base_runner.py
load_pretrained
¶
load_pretrained(
checkpoint: Mapping | bytes | str | PathLike,
*args: Any,
**kwargs: Any
) -> None
Load model weights only from a checkpoint payload or path.
When checkpoint payload provides EMA weights (ema), EMA is preferred as
the pretrained source. Otherwise model is used.
Called when: users initialize from pretrained weights, or
auto_restore selects config.pretrained.
Parameters:
| Name | Type | Description | Default |
|---|---|---|---|
|
Mapping | bytes | str | PathLike
|
In-memory payload or backend-specific path containing
|
required |
|
Any
|
Forwarded to |
()
|
|
Any
|
Forwarded to |
{}
|
Raises:
| Type | Description |
|---|---|
ValueError
|
model is not initialized, or the payload has no usable model/EMA state. |
Side effects: loads model weights and updates config.pretrained
for path inputs. Optimizer, scheduler, runner state, and dataloaders
are intentionally untouched.
Do not
- Use this to resume training state; use
load_checkpointfor full-state restore. - Load optimizer/scheduler state in this path.
Source code in danling/runners/base_runner.py
from_checkpoint
classmethod
¶
from_checkpoint(
checkpoint: Mapping | bytes | str | PathLike,
*args,
**kwargs
) -> BaseRunner
Instantiate runner from checkpoint config and restore full state.
Source code in danling/runners/base_runner.py
read_config
classmethod
¶
read_config(
checkpoint: Mapping | bytes | str | PathLike,
*args,
**kwargs
) -> RunnerConfig
Read runner config from checkpoint mapping or file path.
Note
BaseRunner only accepts file checkpoints for path input. Backend-specific directory checkpoints must be handled in subclasses.
Source code in danling/runners/base_runner.py
from_pretrained
classmethod
¶
from_pretrained(
config: RunnerConfig | Mapping[str, Any],
checkpoint: Mapping | bytes | str | PathLike,
*args,
**kwargs
) -> BaseRunner
Build a runner from config and load model weights only.
Source code in danling/runners/base_runner.py
read_checkpoint
¶
read_checkpoint(
checkpoint: Mapping | bytes | str | PathLike,
*args,
**kwargs
) -> Mapping[str, Any]
Normalize checkpoint input into an in-memory mapping payload.
Source code in danling/runners/base_runner.py
save
¶
Save an object with optional main-process guard.
Source code in danling/runners/base_runner.py
| Python | |
|---|---|
close
¶
Finalize checkpoint/log/writer resources before shutdown.