Expand description
§use-ml-training
Training run and hyperparameter metadata primitives for RustUse.
§Experimental
use-ml-training is experimental while use-ml remains below 0.3.0.
§Example
use use_ml_training::{MlBatchSize, MlLearningRate, MlOptimizerKind, MlTrainingRunId};
let run_id = MlTrainingRunId::new("run-001")?;
let batch_size = MlBatchSize::new(32)?;
let learning_rate = MlLearningRate::new(0.001)?;
let optimizer: MlOptimizerKind = "adamw".parse()?;
assert_eq!(run_id.as_str(), "run-001");
assert_eq!(batch_size.get(), 32);
assert_eq!(learning_rate.value(), 0.001);
assert_eq!(optimizer, MlOptimizerKind::AdamW);§Scope
- Training run IDs, job names, status, phases, optimizer labels, and loss labels.
- Positive batch sizes and epoch counts.
- Finite positive learning rates and hyperparameter names/values.
§Non-goals
- Performing training, tuning, checkpointing, or model export.
- Agent training loops, prompt optimization, RLHF, RLAIF, or instruction-tuning-specific APIs in v0.1.
§License
Licensed under either Apache-2.0 or MIT.
Modules§
Structs§
- MlBatch
Size - MlEpoch
Count - MlHyperparameter
Name - MlHyperparameter
Value - MlLearning
Rate - MlTraining
JobName - MlTraining
RunId