Using YAML configuration files¶
In both the command line and the Python module, options for video loading, training, and prediction can be set by passing a YAML file instead of passing arguments directly. YAML files (.yml
or .yaml
) are commonly used to serialize data in an easily readable way.
The basic structure of a YAML model configuration is:
$ cat basic_config.yaml
video_loader_config:
model_input_height: 240
model_input_width: 426
total_frames: 16
# other video loading parameters
train_config:
model_name: time_distributed
data_dir: example_vids/
labels: example_labels.csv
# other training parameters, eg. batch_size
predict_config:
model_name: time_distributed
data_directoty: example_vids/
# other training parameters, eg. batch_size
For example, the configuration below will predict labels for the videos in example_vids
using the time_distributed
model. When videos are loaded, each will be resized to 240x426 pixels and 16 frames will be selected:
video_loader_config:
model_input_height: 240
model_input_width: 426
total_frames: 16
predict_config:
model_name: time_distributed
data_directoty: example_vids/
Required arguments¶
Either predict_config
or train_config
is required, based on whether you will be running inference or training a model. See All Configuration Options for a full list of what can be specified under each class. To run inference, data_dir
and/or filepaths
must be specified. To train a model, labels
must be specified.
In video_loader_config
, you must specify at least model_input_height
, model_input_width
, and total_frames
. While this is the minimum required, we strongly recommend being intentional in your choice of frame selection method. total_frames
by itself will just take the first n
frames. For a full list of frame selection methods, see the section on Video loading arguments.
- For
time_distributed
oreuropean
,total_frames
must be 16 - For
slowfast
,total_frames
must be 32
Command line interface¶
A YAML configuration file can be passed to the command line interface with the --config
argument. For example, say the example configuration above is saved as example_config.yaml
. To run prediction:
$ zamba predict --config example_config.yaml
Only some of the possible parameters can be passed directly as arguments to the command line. Those not listed in zamba predict --help
or zamba train --help
must be passed in a YAML file (see the Quickstart guide for details).
Python package¶
The main API for zamba is the ModelManager
class that can be accessed with:
from zamba.models.manager import ModelManager
The ModelManager
class is used by zamba
’s command line interface to handle preprocessing the filenames, loading the videos, training the model, performing inference, and saving predictions. Therefore any functionality available to the command line interface is accessible via the ModelManager
class.
To instantiate the ModelManager
based on a configuration file saved at test_config.yaml
:
>>> manager = ModelManager.from_yaml('test_config.yaml')
We can now run inference or model training without specifying any additional parameters, because they are already associated with our instance of the ModelManager
class. To run inference or training:
manager.predict() # inference
manager.train() # training
In our user tutorials, we refer to train_model
and predict_model
functions. The ModelManager
class calls these same functions behind the scenes when .predict()
or .train()
is run.
Default configurations¶
In the command line, the default configuration for each model is passed in using a specified YAML file that ships with zamba
. You can see the default configuration YAML files on Github in the config.yaml
file within each model's folder.
For example, the default configuration for the time_distributed
model is:
train_config:
scheduler_config:
scheduler: MultiStepLR
scheduler_params:
gamma: 0.5
milestones:
- 3
verbose: true
model_name: time_distributed
backbone_finetune_config:
backbone_initial_ratio_lr: 0.01
multiplier: 1
pre_train_bn: true
train_bn: false
unfreeze_backbone_at_epoch: 3
verbose: true
early_stopping_config:
patience: 5
video_loader_config:
model_input_height: 240
model_input_width: 426
crop_bottom_pixels: 50
fps: 4
total_frames: 16
ensure_total_frames: true
megadetector_lite_config:
confidence: 0.25
fill_mode: score_sorted
n_frames: 16
predict_config:
model_name: time_distributed
public_checkpoint: time_distributed_9e710aa8c92d25190a64b3b04b9122bdcb456982.ckpt
Templates¶
To make modifying existing mod easier, we've set up the official models as templates in the templates
folder. Just fill in your data directory and labels, make any desired tweaks to the model config, and then kick off some training. Happy modeling!