| import logging |
|
|
| import einops |
| import flax.nnx as nnx |
| import flax.nnx.bridge as nnx_bridge |
| import jax |
| import jax.numpy as jnp |
| from typing_extensions import override |
|
|
| from openpi.models import model as _model |
| from openpi.models import pi0_config |
| import openpi.models.gemma as _gemma |
| import openpi.models.siglip as _siglip |
| from openpi.shared import array_typing as at |
|
|
| logger = logging.getLogger("openpi") |
|
|
|
|
| def make_attn_mask(input_mask, mask_ar): |
| """Adapted from big_vision. |
| |
| Tokens can attend to valid inputs tokens which have a cumulative mask_ar |
| smaller or equal to theirs. This way `mask_ar` bool[?B, N] can be used to |
| setup several types of attention, for example: |
| |
| [[1 1 1 1 1 1]]: pure causal attention. |
| |
| [[0 0 0 1 1 1]]: prefix-lm attention. The first 3 tokens can attend between |
| themselves and the last 3 tokens have a causal attention. The first |
| entry could also be a 1 without changing behaviour. |
| |
| [[1 0 1 0 1 0 0 1 0 0]]: causal attention between 4 blocks. Tokens of a |
| block can attend all previous blocks and all tokens on the same block. |
| |
| Args: |
| input_mask: bool[B, N] true if its part of the input, false if padding. |
| mask_ar: bool[?B, N] mask that's true where previous tokens cannot depend on |
| it and false where it shares the same attention mask as the previous token. |
| """ |
| mask_ar = jnp.broadcast_to(mask_ar, input_mask.shape) |
| cumsum = jnp.cumsum(mask_ar, axis=1) |
| attn_mask = cumsum[:, None, :] <= cumsum[:, :, None] |
| valid_mask = input_mask[:, None, :] * input_mask[:, :, None] |
| return jnp.logical_and(attn_mask, valid_mask) |
|
|
|
|
| @at.typecheck |
| def posemb_sincos( |
| pos: at.Real[at.Array, " b"], embedding_dim: int, min_period: float, max_period: float |
| ) -> at.Float[at.Array, "b {embedding_dim}"]: |
| """Computes sine-cosine positional embedding vectors for scalar positions.""" |
| if embedding_dim % 2 != 0: |
| raise ValueError(f"embedding_dim ({embedding_dim}) must be divisible by 2") |
|
|
| fraction = jnp.linspace(0.0, 1.0, embedding_dim // 2) |
| period = min_period * (max_period / min_period) ** fraction |
| sinusoid_input = jnp.einsum( |
| "i,j->ij", |
| pos, |
| 1.0 / period * 2 * jnp.pi, |
| precision=jax.lax.Precision.HIGHEST, |
| ) |
| return jnp.concatenate([jnp.sin(sinusoid_input), jnp.cos(sinusoid_input)], axis=-1) |
|
|
|
|
| class Pi0(_model.BaseModel): |
| def __init__(self, config: pi0_config.Pi0Config, rngs: nnx.Rngs): |
| super().__init__(config.action_dim, config.action_horizon, config.max_token_len) |
| self.pi05 = config.pi05 |
| paligemma_config = _gemma.get_config(config.paligemma_variant) |
| action_expert_config = _gemma.get_config(config.action_expert_variant) |
| |
| llm = nnx_bridge.ToNNX( |
| _gemma.Module( |
| configs=[paligemma_config, action_expert_config], |
| embed_dtype=config.dtype, |
| adarms=config.pi05, |
| ) |
| ) |
| llm.lazy_init(rngs=rngs, method="init", use_adarms=[False, True] if config.pi05 else [False, False]) |
| img = nnx_bridge.ToNNX( |
| _siglip.Module( |
| num_classes=paligemma_config.width, |
| variant="So400m/14", |
| pool_type="none", |
| scan=True, |
| dtype_mm=config.dtype, |
| ) |
| ) |
| img.lazy_init(next(iter(config.fake_obs().images.values())), train=False, rngs=rngs) |
| self.PaliGemma = nnx.Dict(llm=llm, img=img) |
| self.action_in_proj = nnx.Linear(config.action_dim, action_expert_config.width, rngs=rngs) |
| if config.pi05: |
| self.time_mlp_in = nnx.Linear(action_expert_config.width, action_expert_config.width, rngs=rngs) |
| self.time_mlp_out = nnx.Linear(action_expert_config.width, action_expert_config.width, rngs=rngs) |
| else: |
| self.state_proj = nnx.Linear(config.action_dim, action_expert_config.width, rngs=rngs) |
| self.action_time_mlp_in = nnx.Linear(2 * action_expert_config.width, action_expert_config.width, rngs=rngs) |
| self.action_time_mlp_out = nnx.Linear(action_expert_config.width, action_expert_config.width, rngs=rngs) |
| self.action_out_proj = nnx.Linear(action_expert_config.width, config.action_dim, rngs=rngs) |
|
|
| |
| self.deterministic = True |
|
|
| @at.typecheck |
| def embed_prefix( |
| self, obs: _model.Observation |
| ) -> tuple[at.Float[at.Array, "b s emb"], at.Bool[at.Array, "b s"], at.Bool[at.Array, " s"]]: |
| input_mask = [] |
| ar_mask = [] |
| tokens = [] |
| |
| for name in obs.images: |
| image_tokens, _ = self.PaliGemma.img(obs.images[name], train=False) |
|
|
| tokens.append(image_tokens) |
| input_mask.append( |
| einops.repeat( |
| obs.image_masks[name], |
| "b -> b s", |
| s=image_tokens.shape[1], |
| ) |
| ) |
| |
| ar_mask += [False] * image_tokens.shape[1] |
|
|
| |
| if obs.tokenized_prompt is not None: |
| tokenized_inputs = self.PaliGemma.llm(obs.tokenized_prompt, method="embed") |
| tokens.append(tokenized_inputs) |
| input_mask.append(obs.tokenized_prompt_mask) |
| |
| ar_mask += [False] * tokenized_inputs.shape[1] |
| tokens = jnp.concatenate(tokens, axis=1) |
| input_mask = jnp.concatenate(input_mask, axis=1) |
| ar_mask = jnp.array(ar_mask) |
| return tokens, input_mask, ar_mask |
|
|
| @at.typecheck |
| def embed_suffix( |
| self, obs: _model.Observation, noisy_actions: _model.Actions, timestep: at.Float[at.Array, " b"] |
| ) -> tuple[ |
| at.Float[at.Array, "b s emb"], |
| at.Bool[at.Array, "b s"], |
| at.Bool[at.Array, " s"], |
| at.Float[at.Array, "b emb"] | None, |
| ]: |
| input_mask = [] |
| ar_mask = [] |
| tokens = [] |
| if not self.pi05: |
| |
| state_token = self.state_proj(obs.state)[:, None, :] |
| tokens.append(state_token) |
| input_mask.append(jnp.ones((obs.state.shape[0], 1), dtype=jnp.bool_)) |
| |
| ar_mask += [True] |
|
|
| action_tokens = self.action_in_proj(noisy_actions) |
| |
| time_emb = posemb_sincos(timestep, self.action_in_proj.out_features, min_period=4e-3, max_period=4.0) |
| if self.pi05: |
| |
| time_emb = self.time_mlp_in(time_emb) |
| time_emb = nnx.swish(time_emb) |
| time_emb = self.time_mlp_out(time_emb) |
| time_emb = nnx.swish(time_emb) |
| action_expert_tokens = action_tokens |
| adarms_cond = time_emb |
| else: |
| |
| time_tokens = einops.repeat(time_emb, "b emb -> b s emb", s=self.action_horizon) |
| action_time_tokens = jnp.concatenate([action_tokens, time_tokens], axis=-1) |
| action_time_tokens = self.action_time_mlp_in(action_time_tokens) |
| action_time_tokens = nnx.swish(action_time_tokens) |
| action_time_tokens = self.action_time_mlp_out(action_time_tokens) |
| action_expert_tokens = action_time_tokens |
| adarms_cond = None |
| tokens.append(action_expert_tokens) |
| input_mask.append(jnp.ones(action_expert_tokens.shape[:2], dtype=jnp.bool_)) |
| |
| ar_mask += [True] + ([False] * (self.action_horizon - 1)) |
| tokens = jnp.concatenate(tokens, axis=1) |
| input_mask = jnp.concatenate(input_mask, axis=1) |
| ar_mask = jnp.array(ar_mask) |
| return tokens, input_mask, ar_mask, adarms_cond |
|
|
| @override |
| def compute_loss( |
| self, rng: at.KeyArrayLike, observation: _model.Observation, actions: _model.Actions, *, train: bool = False |
| ) -> at.Float[at.Array, "*b ah"]: |
| preprocess_rng, noise_rng, time_rng = jax.random.split(rng, 3) |
| observation = _model.preprocess_observation( |
| preprocess_rng, observation, train=train, image_keys=list(observation.images.keys()) |
| ) |
|
|
| batch_shape = actions.shape[:-2] |
| noise = jax.random.normal(noise_rng, actions.shape) |
| time = jax.random.beta(time_rng, 1.5, 1, batch_shape) * 0.999 + 0.001 |
| time_expanded = time[..., None, None] |
| x_t = time_expanded * noise + (1 - time_expanded) * actions |
| u_t = noise - actions |
|
|
| |
| prefix_tokens, prefix_mask, prefix_ar_mask = self.embed_prefix(observation) |
| suffix_tokens, suffix_mask, suffix_ar_mask, adarms_cond = self.embed_suffix(observation, x_t, time) |
| input_mask = jnp.concatenate([prefix_mask, suffix_mask], axis=1) |
| ar_mask = jnp.concatenate([prefix_ar_mask, suffix_ar_mask], axis=0) |
| attn_mask = make_attn_mask(input_mask, ar_mask) |
| positions = jnp.cumsum(input_mask, axis=1) - 1 |
| (prefix_out, suffix_out), _ = self.PaliGemma.llm( |
| [prefix_tokens, suffix_tokens], mask=attn_mask, positions=positions, adarms_cond=[None, adarms_cond] |
| ) |
| v_t = self.action_out_proj(suffix_out[:, -self.action_horizon :]) |
|
|
| return jnp.mean(jnp.square(v_t - u_t), axis=-1) |
|
|
| @override |
| def sample_actions( |
| self, |
| rng: at.KeyArrayLike, |
| observation: _model.Observation, |
| *, |
| num_steps: int | at.Int[at.Array, ""] = 10, |
| noise: at.Float[at.Array, "b ah ad"] | None = None, |
| ) -> _model.Actions: |
| observation = _model.preprocess_observation( |
| None, observation, train=False, image_keys=list(observation.images.keys()) |
| ) |
| |
| |
| dt = -1.0 / num_steps |
| batch_size = observation.state.shape[0] |
| if noise is None: |
| noise = jax.random.normal(rng, (batch_size, self.action_horizon, self.action_dim)) |
|
|
| |
| prefix_tokens, prefix_mask, prefix_ar_mask = self.embed_prefix(observation) |
| prefix_attn_mask = make_attn_mask(prefix_mask, prefix_ar_mask) |
| positions = jnp.cumsum(prefix_mask, axis=1) - 1 |
| _, kv_cache = self.PaliGemma.llm([prefix_tokens, None], mask=prefix_attn_mask, positions=positions) |
|
|
| def step(carry): |
| x_t, time = carry |
| suffix_tokens, suffix_mask, suffix_ar_mask, adarms_cond = self.embed_suffix( |
| observation, x_t, jnp.broadcast_to(time, batch_size) |
| ) |
| |
| |
| suffix_attn_mask = make_attn_mask(suffix_mask, suffix_ar_mask) |
| |
| |
| prefix_attn_mask = einops.repeat(prefix_mask, "b p -> b s p", s=suffix_tokens.shape[1]) |
| |
| |
| full_attn_mask = jnp.concatenate([prefix_attn_mask, suffix_attn_mask], axis=-1) |
| assert full_attn_mask.shape == ( |
| batch_size, |
| suffix_tokens.shape[1], |
| prefix_tokens.shape[1] + suffix_tokens.shape[1], |
| ) |
| |
| positions = jnp.sum(prefix_mask, axis=-1)[:, None] + jnp.cumsum(suffix_mask, axis=-1) - 1 |
|
|
| (prefix_out, suffix_out), _ = self.PaliGemma.llm( |
| [None, suffix_tokens], |
| mask=full_attn_mask, |
| positions=positions, |
| kv_cache=kv_cache, |
| adarms_cond=[None, adarms_cond], |
| ) |
| assert prefix_out is None |
| v_t = self.action_out_proj(suffix_out[:, -self.action_horizon :]) |
|
|
| return x_t + dt * v_t, time + dt |
|
|
| def cond(carry): |
| x_t, time = carry |
| |
| return time >= -dt / 2 |
|
|
| x_0, _ = jax.lax.while_loop(cond, step, (noise, 1.0)) |
| return x_0 |
|
|