Expand description
Aprender Compatibility Layer
Re-exports from the aprender crate for users who need direct access to
aprender’s ML primitives without adding a separate dependency.
§Architecture Boundary
Entrenar owns training orchestration (autograd, optimizers, LoRA, training loop). Aprender owns ML primitives (loss functions, metrics, pruning algorithms, HF Hub client).
Entrenar delegates to aprender internally (e.g., regression metrics) and re-exports aprender’s APIs here for convenience.
§Loss Functions
Aprender provides standalone loss functions that operate on Vector<f32>.
For training with autograd backward passes, use entrenar’s train::LossFn trait instead.
use entrenar::aprender_compat::loss;
use entrenar::aprender_compat::primitives::Vector;
let y_pred = Vector::from_slice(&[0.9, 0.1, 0.8]);
let y_true = Vector::from_slice(&[1.0, 0.0, 1.0]);
let error = loss::mse_loss(&y_pred, &y_true);§Metrics
Aprender provides standalone metric functions. Entrenar’s train::Metric trait
wraps these for integration with the training loop.
use entrenar::aprender_compat::metrics;
use entrenar::aprender_compat::primitives::Vector;
let y_pred = Vector::from_slice(&[1.1, 2.0, 3.2]);
let y_true = Vector::from_slice(&[1.0, 2.0, 3.0]);
let r2 = metrics::r_squared(&y_pred, &y_true);§Pruning
Aprender provides low-level pruning algorithms (magnitude, WANDA, SparseGPT).
Entrenar’s prune module wraps these with training-loop integration.
Modules§
- estimators
- sklearn estimator coverage via aprender’s ML algorithms (CP-05)
- loss
- Re-export aprender’s loss functions
- metrics
- Re-export aprender’s metrics
- primitives
- Re-export aprender’s primitive types
- pruning
- Re-export aprender’s pruning primitives