| import flax.linen as nn |
| import jax |
| import jax.numpy as jnp |
|
|
| import openpi.models.lora as lora |
|
|
|
|
| def test_lora_einsum_params_shape(): |
| shape = (3, 8, 32, 4) |
| einsum = lora.Einsum(shape) |
| lora0 = lora.Einsum(shape, lora_config=lora.LoRAConfig(rank=2)) |
| lora1 = lora.Einsum(shape, lora_config=lora.LoRAConfig(rank=2, axes=(1, 2))) |
|
|
| key = jax.random.key(0) |
| x = jax.random.normal(key, (8, 64, 32)) |
| eqn = "BSD,3KDH->3BSKH" |
|
|
| |
| params = einsum.init(key, eqn, x) |
| assert "lora_a" not in params["params"] |
| assert "lora_b" not in params["params"] |
|
|
| |
| params_lora0 = lora0.init(key, eqn, x) |
| assert params_lora0["params"]["lora_a"].shape == (3, 8, 32, 2) |
| assert params_lora0["params"]["lora_b"].shape == (3, 8, 2, 4) |
|
|
| |
| params_lora1 = lora1.init(key, eqn, x) |
| assert params_lora1["params"]["lora_a"].shape == (3, 8, 2, 4) |
| assert params_lora1["params"]["lora_b"].shape == (3, 2, 32, 4) |
|
|
|
|
| def test_lora_einsum_same_output(): |
| shape = (3, 8, 32, 4) |
| einsum = lora.Einsum(shape) |
| einsum_lora = lora.Einsum(shape, lora_config=lora.LoRAConfig(rank=2, init_fn=nn.initializers.zeros)) |
|
|
| key = jax.random.key(0) |
| x = jax.random.normal(key, (8, 64, 32)) |
| eqn = "BSD,3KDH->3BSKH" |
|
|
| params = einsum.init(key, eqn, x) |
| output = einsum.apply(params, eqn, x) |
|
|
| params_lora = einsum_lora.init(key, eqn, x) |
| output_lora = einsum_lora.apply(params_lora, eqn, x) |
|
|
| |
| assert jnp.allclose(output, output_lora) |
|
|
|
|
| def test_lora_ffn_params_shape(): |
| ffn = lora.FeedForward(features=8, hidden_dim=32) |
| ffn_lora = lora.FeedForward( |
| features=8, |
| hidden_dim=32, |
| lora_config=lora.LoRAConfig(rank=2), |
| ) |
|
|
| key = jax.random.key(0) |
| x = jax.random.normal(key, (2, 8)) |
|
|
| params = ffn.init(key, x) |
| assert params["params"]["gating_einsum"].shape == (2, 8, 32) |
| assert params["params"]["linear"].shape == (32, 8) |
|
|
| params_lora = ffn_lora.init(key, x) |
| assert params_lora["params"]["gating_einsum"].shape == (2, 8, 32) |
| assert params_lora["params"]["linear"].shape == (32, 8) |
| assert params_lora["params"]["gating_einsum_lora_a"].shape == (2, 8, 2) |
| assert params_lora["params"]["gating_einsum_lora_b"].shape == (2, 2, 32) |
| assert params_lora["params"]["linear_lora_a"].shape == (32, 2) |
| assert params_lora["params"]["linear_lora_b"].shape == (2, 8) |
|
|
|
|
| def test_lora_ffn_same_output(): |
| ffn = lora.FeedForward(features=8, hidden_dim=32) |
| ffn_lora = lora.FeedForward( |
| features=8, |
| hidden_dim=32, |
| lora_config=lora.LoRAConfig(rank=2, init_fn=nn.initializers.zeros), |
| ) |
|
|
| key = jax.random.key(0) |
| x = jax.random.normal(key, (2, 8)) |
|
|
| params = ffn.init(key, x) |
| output = ffn.apply(params, x) |
|
|
| params_lora = ffn_lora.init(key, x) |
| output_lora = ffn_lora.apply(params_lora, x) |
|
|
| assert jnp.allclose(output, output_lora) |
|
|