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#!/usr/bin/env python

# Copyright 2025 Physical Intelligence and The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

import builtins
import logging
import math
from collections import deque
from pathlib import Path
from typing import TYPE_CHECKING, Literal, TypedDict

import torch
import torch.nn.functional as F  # noqa: N812
from torch import Tensor, nn
from typing_extensions import Unpack

from lerobot.utils.import_utils import _transformers_available

# Conditional import for type checking and lazy loading
if TYPE_CHECKING or _transformers_available:
    from transformers.models.auto import CONFIG_MAPPING
    from transformers.models.gemma import modeling_gemma
    from transformers.models.gemma.modeling_gemma import GemmaForCausalLM
    from transformers.models.paligemma.modeling_paligemma import PaliGemmaForConditionalGeneration
else:
    CONFIG_MAPPING = None
    modeling_gemma = None
    GemmaForCausalLM = None
    PaliGemmaForConditionalGeneration = None

from lerobot.configs.policies import PreTrainedConfig
from lerobot.policies.pi05.configuration_pi05 import PI05Config
from lerobot.policies.pretrained import PreTrainedPolicy, T
from lerobot.policies.rtc.modeling_rtc import RTCProcessor
from lerobot.utils.constants import (
    ACTION,
    OBS_LANGUAGE_ATTENTION_MASK,
    OBS_LANGUAGE_TOKENS,
    OPENPI_ATTENTION_MASK_VALUE,
)


class ActionSelectKwargs(TypedDict, total=False):
    inference_delay: int | None
    prev_chunk_left_over: Tensor | None
    execution_horizon: int | None


def get_safe_dtype(target_dtype, device_type):
    """Get a safe dtype for the given device type."""
    if device_type == "mps" and target_dtype == torch.float64:
        return torch.float32
    if device_type == "cpu":
        # CPU doesn't support bfloat16, use float32 instead
        if target_dtype == torch.bfloat16:
            return torch.float32
        if target_dtype == torch.float64:
            return torch.float64
    return target_dtype


def create_sinusoidal_pos_embedding(  # see openpi `create_sinusoidal_pos_embedding` (exact copy)
    time: torch.Tensor, dimension: int, min_period: float, max_period: float, device="cpu"
) -> Tensor:
    """Computes sine-cosine positional embedding vectors for scalar positions."""
    if dimension % 2 != 0:
        raise ValueError(f"dimension ({dimension}) must be divisible by 2")

    if time.ndim != 1:
        raise ValueError("The time tensor is expected to be of shape `(batch_size, )`.")

    dtype = get_safe_dtype(torch.float64, device.type)
    fraction = torch.linspace(0.0, 1.0, dimension // 2, dtype=dtype, device=device)
    period = min_period * (max_period / min_period) ** fraction

    # Compute the outer product
    scaling_factor = 1.0 / period * 2 * math.pi
    sin_input = scaling_factor[None, :] * time[:, None]
    return torch.cat([torch.sin(sin_input), torch.cos(sin_input)], dim=1)


def sample_beta(alpha, beta, bsize, device):  # see openpi `sample_beta` (exact copy)
    alpha_t = torch.as_tensor(alpha, dtype=torch.float32, device=device)
    beta_t = torch.as_tensor(beta, dtype=torch.float32, device=device)
    dist = torch.distributions.Beta(alpha_t, beta_t)
    return dist.sample((bsize,))


def make_att_2d_masks(pad_masks, att_masks):  # see openpi `make_att_2d_masks` (exact copy)
    """Copied 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` int[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: int32[B, N] mask that's 1 where previous tokens cannot depend on
        it and 0 where it shares the same attention mask as the previous token.
    """
    if att_masks.ndim != 2:
        raise ValueError(att_masks.ndim)
    if pad_masks.ndim != 2:
        raise ValueError(pad_masks.ndim)

    cumsum = torch.cumsum(att_masks, dim=1)
    att_2d_masks = cumsum[:, None, :] <= cumsum[:, :, None]
    pad_2d_masks = pad_masks[:, None, :] * pad_masks[:, :, None]
    return att_2d_masks & pad_2d_masks


def pad_vector(vector, new_dim):
    """Pad the last dimension of a vector to new_dim with zeros.

    Can be (batch_size x sequence_length x features_dimension)
    or (batch_size x features_dimension)
    """
    if vector.shape[-1] >= new_dim:
        return vector
    return F.pad(vector, (0, new_dim - vector.shape[-1]))


def resize_with_pad_torch(  # see openpi `resize_with_pad_torch` (exact copy)
    images: torch.Tensor,
    height: int,
    width: int,
    mode: str = "bilinear",
) -> torch.Tensor:
    """PyTorch version of resize_with_pad. Resizes an image to a target height and width without distortion
    by padding with black. If the image is float32, it must be in the range [-1, 1].

    Args:
        images: Tensor of shape [*b, h, w, c] or [*b, c, h, w]
        height: Target height
        width: Target width
        mode: Interpolation mode ('bilinear', 'nearest', etc.)

    Returns:
        Resized and padded tensor with same shape format as input
    """
    # Check if input is in channels-last format [*b, h, w, c] or channels-first [*b, c, h, w]
    if images.shape[-1] <= 4:  # Assume channels-last format
        channels_last = True
        if images.dim() == 3:
            images = images.unsqueeze(0)  # Add batch dimension
        images = images.permute(0, 3, 1, 2)  # [b, h, w, c] -> [b, c, h, w]
    else:
        channels_last = False
        if images.dim() == 3:
            images = images.unsqueeze(0)  # Add batch dimension

    batch_size, channels, cur_height, cur_width = images.shape

    # Calculate resize ratio
    ratio = max(cur_width / width, cur_height / height)
    resized_height = int(cur_height / ratio)
    resized_width = int(cur_width / ratio)

    # Resize
    resized_images = F.interpolate(
        images,
        size=(resized_height, resized_width),
        mode=mode,
        align_corners=False if mode == "bilinear" else None,
    )

    # Handle dtype-specific clipping
    if images.dtype == torch.uint8:
        resized_images = torch.round(resized_images).clamp(0, 255).to(torch.uint8)
    elif images.dtype == torch.float32:
        resized_images = resized_images.clamp(-1.0, 1.0)
    else:
        raise ValueError(f"Unsupported image dtype: {images.dtype}")

    # Calculate padding
    pad_h0, remainder_h = divmod(height - resized_height, 2)
    pad_h1 = pad_h0 + remainder_h
    pad_w0, remainder_w = divmod(width - resized_width, 2)
    pad_w1 = pad_w0 + remainder_w

    # Pad
    constant_value = 0 if images.dtype == torch.uint8 else -1.0
    padded_images = F.pad(
        resized_images,
        (pad_w0, pad_w1, pad_h0, pad_h1),  # left, right, top, bottom
        mode="constant",
        value=constant_value,
    )

    # Convert back to original format if needed
    if channels_last:
        padded_images = padded_images.permute(0, 2, 3, 1)  # [b, c, h, w] -> [b, h, w, c]

    return padded_images


# Define the complete layer computation function for gradient checkpointing
def compute_layer_complete(
    layer_idx, inputs_embeds, attention_mask, position_ids, adarms_cond, paligemma, gemma_expert
):
    models = [paligemma.language_model, gemma_expert.model]
    query_states = []
    key_states = []
    value_states = []
    gates = []
    for i, hidden_states in enumerate(inputs_embeds):
        layer = models[i].layers[layer_idx]
        hidden_states, gate = layer.input_layernorm(hidden_states, cond=adarms_cond[i])  # noqa: PLW2901
        gates.append(gate)
        input_shape = hidden_states.shape[:-1]
        hidden_shape = (*input_shape, -1, layer.self_attn.head_dim)
        query_state = layer.self_attn.q_proj(hidden_states).view(hidden_shape).transpose(1, 2)
        key_state = layer.self_attn.k_proj(hidden_states).view(hidden_shape).transpose(1, 2)
        value_state = layer.self_attn.v_proj(hidden_states).view(hidden_shape).transpose(1, 2)
        query_states.append(query_state)
        key_states.append(key_state)
        value_states.append(value_state)
    # Concatenate and process attention
    query_states = torch.cat(query_states, dim=2)
    key_states = torch.cat(key_states, dim=2)
    value_states = torch.cat(value_states, dim=2)
    dummy_tensor = torch.zeros(
        query_states.shape[0],
        query_states.shape[2],
        query_states.shape[-1],
        device=query_states.device,
        dtype=query_states.dtype,
    )
    cos, sin = paligemma.model.language_model.rotary_emb(dummy_tensor, position_ids)
    query_states, key_states = modeling_gemma.apply_rotary_pos_emb(
        query_states, key_states, cos, sin, unsqueeze_dim=1
    )
    batch_size = query_states.shape[0]
    scaling = paligemma.language_model.layers[layer_idx].self_attn.scaling
    # Attention computation
    att_output, _ = modeling_gemma.eager_attention_forward(
        paligemma.language_model.layers[layer_idx].self_attn,
        query_states,
        key_states,
        value_states,
        attention_mask,
        scaling,
    )
    # Get head_dim from the current layer, not from the model
    head_dim = paligemma.language_model.layers[layer_idx].self_attn.head_dim
    att_output = att_output.reshape(batch_size, -1, 1 * 8 * head_dim)
    # Process layer outputs
    outputs_embeds = []
    start_pos = 0
    for i, hidden_states in enumerate(inputs_embeds):
        layer = models[i].layers[layer_idx]
        end_pos = start_pos + hidden_states.shape[1]
        if att_output.dtype != layer.self_attn.o_proj.weight.dtype:
            att_output = att_output.to(layer.self_attn.o_proj.weight.dtype)
        out_emb = layer.self_attn.o_proj(att_output[:, start_pos:end_pos])
        # first residual
        out_emb = modeling_gemma._gated_residual(hidden_states, out_emb, gates[i])  # noqa: SLF001
        after_first_residual = out_emb.clone()
        out_emb, gate = layer.post_attention_layernorm(out_emb, cond=adarms_cond[i])
        # Convert to bfloat16 if the next layer (mlp) uses bfloat16
        if layer.mlp.up_proj.weight.dtype == torch.bfloat16:
            out_emb = out_emb.to(dtype=torch.bfloat16)
        out_emb = layer.mlp(out_emb)
        # second residual
        out_emb = modeling_gemma._gated_residual(after_first_residual, out_emb, gate)  # noqa: SLF001
        outputs_embeds.append(out_emb)
        start_pos = end_pos
    return outputs_embeds


class GemmaConfig:  # see openpi `gemma.py: Config`
    """Configuration for Gemma model variants."""

    def __init__(self, width, depth, mlp_dim, num_heads, num_kv_heads, head_dim):
        self.width = width
        self.depth = depth
        self.mlp_dim = mlp_dim
        self.num_heads = num_heads
        self.num_kv_heads = num_kv_heads
        self.head_dim = head_dim


def get_gemma_config(variant: str) -> GemmaConfig:  # see openpi `gemma.py: get_config`
    """Returns config for specified gemma variant."""
    if variant == "gemma_300m":
        return GemmaConfig(
            width=1024,
            depth=18,
            mlp_dim=4096,
            num_heads=8,
            num_kv_heads=1,
            head_dim=256,
        )
    elif variant == "gemma_2b":
        return GemmaConfig(
            width=2048,
            depth=18,
            mlp_dim=16_384,
            num_heads=8,
            num_kv_heads=1,
            head_dim=256,
        )
    else:
        raise ValueError(f"Unknown variant: {variant}")


class PaliGemmaWithExpertModel(
    nn.Module
):  # see openpi `gemma_pytorch.py: PaliGemmaWithExpertModel` this class is almost a exact copy of PaliGemmaWithExpertModel in openpi
    """PaliGemma model with action expert for PI05."""

    def __init__(
        self,
        vlm_config,
        action_expert_config,
        use_adarms=None,
        precision: Literal["bfloat16", "float32"] = "bfloat16",
    ):
        if use_adarms is None:
            use_adarms = [False, False]
        super().__init__()

        vlm_config_hf = CONFIG_MAPPING["paligemma"]()
        vlm_config_hf._vocab_size = 257152  # noqa: SLF001
        vlm_config_hf.image_token_index = 257152
        vlm_config_hf.text_config.hidden_size = vlm_config.width
        vlm_config_hf.text_config.intermediate_size = vlm_config.mlp_dim
        vlm_config_hf.text_config.num_attention_heads = vlm_config.num_heads
        vlm_config_hf.text_config.head_dim = vlm_config.head_dim
        vlm_config_hf.text_config.num_hidden_layers = vlm_config.depth
        vlm_config_hf.text_config.num_key_value_heads = vlm_config.num_kv_heads
        vlm_config_hf.text_config.hidden_activation = "gelu_pytorch_tanh"
        vlm_config_hf.text_config.torch_dtype = "float32"
        vlm_config_hf.text_config.vocab_size = 257152
        vlm_config_hf.text_config.use_adarms = use_adarms[0]
        vlm_config_hf.text_config.adarms_cond_dim = vlm_config.width if use_adarms[0] else None
        vlm_config_hf.vision_config.intermediate_size = 4304
        vlm_config_hf.vision_config.projection_dim = 2048
        vlm_config_hf.vision_config.projector_hidden_act = "gelu_fast"
        vlm_config_hf.vision_config.torch_dtype = "float32"

        action_expert_config_hf = CONFIG_MAPPING["gemma"](
            head_dim=action_expert_config.head_dim,
            hidden_size=action_expert_config.width,
            intermediate_size=action_expert_config.mlp_dim,
            num_attention_heads=action_expert_config.num_heads,
            num_hidden_layers=action_expert_config.depth,
            num_key_value_heads=action_expert_config.num_kv_heads,
            vocab_size=257152,
            hidden_activation="gelu_pytorch_tanh",
            torch_dtype="float32",
            use_adarms=use_adarms[1],
            adarms_cond_dim=action_expert_config.width if use_adarms[1] else None,
        )

        self.paligemma = PaliGemmaForConditionalGeneration(config=vlm_config_hf)
        self.gemma_expert = GemmaForCausalLM(config=action_expert_config_hf)
        self.gemma_expert.model.embed_tokens = None

        self.to_bfloat16_for_selected_params(precision)

    def to_bfloat16_for_selected_params(self, precision: Literal["bfloat16", "float32"] = "bfloat16"):
        if precision == "bfloat16":
            self.to(dtype=torch.bfloat16)
        elif precision == "float32":
            self.to(dtype=torch.float32)
            return
        else:
            raise ValueError(f"Invalid precision: {precision}")

        params_to_keep_float32 = [
            "vision_tower.vision_model.embeddings.patch_embedding.weight",
            "vision_tower.vision_model.embeddings.patch_embedding.bias",
            "vision_tower.vision_model.embeddings.position_embedding.weight",
            "input_layernorm",
            "post_attention_layernorm",
            "model.norm",
        ]

        for name, param in self.named_parameters():
            if any(selector in name for selector in params_to_keep_float32):
                param.data = param.data.to(dtype=torch.float32)

    def embed_image(self, image: torch.Tensor):
        return self.paligemma.model.get_image_features(image)

    def embed_language_tokens(self, tokens: torch.Tensor):
        return self.paligemma.language_model.embed_tokens(tokens)

    def forward(
        self,
        attention_mask: torch.Tensor | None = None,
        position_ids: torch.LongTensor | None = None,
        past_key_values: list[torch.FloatTensor] | None = None,
        inputs_embeds: list[torch.FloatTensor] | None = None,
        use_cache: bool | None = None,
        adarms_cond: list[torch.Tensor] | None = None,
    ):
        if adarms_cond is None:
            adarms_cond = [None, None]
        if inputs_embeds[1] is None:
            prefix_output = self.paligemma.language_model.forward(
                inputs_embeds=inputs_embeds[0],
                attention_mask=attention_mask,
                position_ids=position_ids,
                past_key_values=past_key_values,
                use_cache=use_cache,
                adarms_cond=adarms_cond[0] if adarms_cond is not None else None,
            )
            prefix_past_key_values = prefix_output.past_key_values
            prefix_output = prefix_output.last_hidden_state
            suffix_output = None
        elif inputs_embeds[0] is None:
            suffix_output = self.gemma_expert.model.forward(
                inputs_embeds=inputs_embeds[1],
                attention_mask=attention_mask,
                position_ids=position_ids,
                past_key_values=past_key_values,
                use_cache=use_cache,
                adarms_cond=adarms_cond[1] if adarms_cond is not None else None,
            )
            suffix_output = suffix_output.last_hidden_state
            prefix_output = None
            prefix_past_key_values = None
        else:
            models = [self.paligemma.language_model, self.gemma_expert.model]
            num_layers = self.paligemma.config.text_config.num_hidden_layers

            # Check if gradient checkpointing is enabled for any of the models
            use_gradient_checkpointing = (
                hasattr(self.gemma_expert.model, "gradient_checkpointing")
                and self.gemma_expert.model.gradient_checkpointing
                and self.training
            ) or (hasattr(self, "gradient_checkpointing") and self.gradient_checkpointing and self.training)

            # Process all layers with gradient checkpointing if enabled
            for layer_idx in range(num_layers):
                if use_gradient_checkpointing:
                    inputs_embeds = torch.utils.checkpoint.checkpoint(
                        compute_layer_complete,
                        layer_idx,
                        inputs_embeds,
                        attention_mask,
                        position_ids,
                        adarms_cond,
                        use_reentrant=False,
                        preserve_rng_state=False,
                        paligemma=self.paligemma,
                        gemma_expert=self.gemma_expert,
                    )
                else:
                    inputs_embeds = compute_layer_complete(
                        layer_idx,
                        inputs_embeds,
                        attention_mask,
                        position_ids,
                        adarms_cond,
                        paligemma=self.paligemma,
                        gemma_expert=self.gemma_expert,
                    )

            # final norm
            def compute_final_norms(inputs_embeds, adarms_cond):
                outputs_embeds = []
                for i, hidden_states in enumerate(inputs_embeds):
                    out_emb, _ = models[i].norm(hidden_states, cond=adarms_cond[i])
                    outputs_embeds.append(out_emb)
                return outputs_embeds

            # Apply gradient checkpointing to final norm if enabled
            if use_gradient_checkpointing:
                outputs_embeds = torch.utils.checkpoint.checkpoint(
                    compute_final_norms,
                    inputs_embeds,
                    adarms_cond,
                    use_reentrant=False,
                    preserve_rng_state=False,
                )
            else:
                outputs_embeds = compute_final_norms(inputs_embeds, adarms_cond)

            prefix_output = outputs_embeds[0]
            suffix_output = outputs_embeds[1]
            prefix_past_key_values = None

        return [prefix_output, suffix_output], prefix_past_key_values


class PI05Pytorch(nn.Module):  # see openpi `PI0Pytorch`
    """Core PI05 PyTorch model."""

    def __init__(self, config: PI05Config, rtc_processor: RTCProcessor | None = None):
        super().__init__()
        self.config = config
        self.rtc_processor = rtc_processor

        paligemma_config = get_gemma_config(config.paligemma_variant)
        action_expert_config = get_gemma_config(config.action_expert_variant)

        self.paligemma_with_expert = PaliGemmaWithExpertModel(
            paligemma_config,
            action_expert_config,
            use_adarms=[False, True],
            precision=config.dtype,
        )

        self.action_in_proj = nn.Linear(config.max_action_dim, action_expert_config.width)
        self.action_out_proj = nn.Linear(action_expert_config.width, config.max_action_dim)

        self.time_mlp_in = nn.Linear(action_expert_config.width, action_expert_config.width)
        self.time_mlp_out = nn.Linear(action_expert_config.width, action_expert_config.width)

        # Initialize gradient checkpointing flag
        self.gradient_checkpointing_enabled = False

        # Compile model if requested
        if config.compile_model:
            torch.set_float32_matmul_precision("high")
            self.sample_actions = torch.compile(self.sample_actions, mode=config.compile_mode)

        msg = """An incorrect transformer version is used, please create an issue on https://github.com/huggingface/lerobot/issues"""

        # PATCH: make transformers version guard non-fatal and robust across versions
        try:
            from transformers.models.siglip import check

            if hasattr(check, "check_whether_transformers_replace_is_installed_correctly"):
                ok = check.check_whether_transformers_replace_is_installed_correctly()
                if not ok:
                    logging.warning("[pi05] %s", msg)
            else:
                logging.warning(
                    "[patch_pi05] SigLIP check helper missing; skipping strict transformers version guard."
                )
        except Exception as e:  # noqa: BLE001
            logging.warning(
                "[patch_pi05] Could not run transformers version guard (%s). "
                "Continuing without strict transformers check. %s",
                msg,
                e,
            )

    def gradient_checkpointing_enable(self):
        """Enable gradient checkpointing for memory optimization."""
        self.gradient_checkpointing_enabled = True
        self.paligemma_with_expert.paligemma.language_model.gradient_checkpointing = True
        self.paligemma_with_expert.paligemma.vision_tower.gradient_checkpointing = True
        self.paligemma_with_expert.gemma_expert.model.gradient_checkpointing = True
        logging.info("Enabled gradient checkpointing for PI05Pytorch model")

    def gradient_checkpointing_disable(self):
        """Disable gradient checkpointing."""
        self.gradient_checkpointing_enabled = False
        self.paligemma_with_expert.paligemma.language_model.gradient_checkpointing = False
        self.paligemma_with_expert.paligemma.vision_tower.gradient_checkpointing = False
        self.paligemma_with_expert.gemma_expert.model.gradient_checkpointing = False
        logging.info("Disabled gradient checkpointing for PI05Pytorch model")

    def _rtc_enabled(self):
        return self.config.rtc_config is not None and self.config.rtc_config.enabled

    def _apply_checkpoint(self, func, *args, **kwargs):
        """Helper method to apply gradient checkpointing if enabled."""
        if self.gradient_checkpointing_enabled and self.training:
            return torch.utils.checkpoint.checkpoint(
                func, *args, use_reentrant=False, preserve_rng_state=False, **kwargs
            )
        return func(*args, **kwargs)

    def _prepare_attention_masks_4d(self, att_2d_masks):
        """Helper method to prepare 4D attention masks for transformer."""
        att_2d_masks_4d = att_2d_masks[:, None, :, :]
        return torch.where(att_2d_masks_4d, 0.0, OPENPI_ATTENTION_MASK_VALUE)

    def sample_noise(self, shape, device):
        return torch.normal(
            mean=0.0,
            std=1.0,
            size=shape,
            dtype=torch.float32,
            device=device,
        )

    def sample_time(self, bsize, device):
        time_beta = sample_beta(
            self.config.time_sampling_beta_alpha, self.config.time_sampling_beta_beta, bsize, device
        )
        time = time_beta * self.config.time_sampling_scale + self.config.time_sampling_offset
        return time.to(dtype=torch.float32, device=device)

    def embed_prefix(
        self, images, img_masks, tokens, masks
    ) -> tuple[torch.Tensor, torch.Tensor, torch.Tensor]:
        """Embed images with SigLIP and language tokens with embedding layer."""
        embs = []
        pad_masks = []
        att_masks = []

        # Process images
        for img, img_mask in zip(images, img_masks, strict=True):

            def image_embed_func(img):
                return self.paligemma_with_expert.embed_image(img)

            img_emb = self._apply_checkpoint(image_embed_func, img)
            bsize, num_img_embs = img_emb.shape[:2]

            embs.append(img_emb)
            pad_masks.append(img_mask[:, None].expand(bsize, num_img_embs))
            att_masks += [0] * num_img_embs

        # Process language tokens
        def lang_embed_func(tokens):
            lang_emb = self.paligemma_with_expert.embed_language_tokens(tokens)
            lang_emb_dim = lang_emb.shape[-1]
            return lang_emb * math.sqrt(lang_emb_dim)

        lang_emb = self._apply_checkpoint(lang_embed_func, tokens)
        embs.append(lang_emb)
        pad_masks.append(masks)

        num_lang_embs = lang_emb.shape[1]
        att_masks += [0] * num_lang_embs

        embs = torch.cat(embs, dim=1)
        pad_masks = torch.cat(pad_masks, dim=1)
        att_masks = torch.tensor(att_masks, dtype=torch.bool, device=pad_masks.device)

        bsize = pad_masks.shape[0]
        att_masks = att_masks[None, :].expand(bsize, len(att_masks))

        return embs, pad_masks, att_masks

    def embed_suffix(self, noisy_actions, timestep):
        """Embed noisy_actions, timestep to prepare for Expert Gemma processing."""
        embs = []
        pad_masks = []
        att_masks = []

        # Embed timestep using sine-cosine positional encoding
        time_emb = create_sinusoidal_pos_embedding(
            timestep,
            self.action_in_proj.out_features,
            min_period=self.config.min_period,
            max_period=self.config.max_period,
            device=timestep.device,
        )
        time_emb = time_emb.type(dtype=timestep.dtype)

        # Fuse timestep + action information using an MLP
        def action_proj_func(noisy_actions):
            return self.action_in_proj(noisy_actions)

        action_emb = self._apply_checkpoint(action_proj_func, noisy_actions)

        def time_mlp_func(time_emb):
            x = self.time_mlp_in(time_emb)
            x = F.silu(x)
            x = self.time_mlp_out(x)
            return F.silu(x)

        time_emb = self._apply_checkpoint(time_mlp_func, time_emb)
        action_time_emb = action_emb
        adarms_cond = time_emb

        embs.append(action_time_emb)
        bsize, action_time_dim = action_time_emb.shape[:2]
        action_time_mask = torch.ones(bsize, action_time_dim, dtype=torch.bool, device=timestep.device)
        pad_masks.append(action_time_mask)

        # Set attention masks so that image, language and state inputs do not attend to action tokens
        att_masks += [1] + ([0] * (self.config.chunk_size - 1))

        embs = torch.cat(embs, dim=1)
        pad_masks = torch.cat(pad_masks, dim=1)
        att_masks = torch.tensor(att_masks, dtype=embs.dtype, device=embs.device)
        att_masks = att_masks[None, :].expand(bsize, len(att_masks))

        return embs, pad_masks, att_masks, adarms_cond

    def forward(self, images, img_masks, tokens, masks, actions, noise=None, time=None) -> Tensor:
        """Do a full training forward pass and compute the loss."""
        if noise is None:
            noise = self.sample_noise(actions.shape, actions.device)

        if time is None:
            time = self.sample_time(actions.shape[0], actions.device)

        time_expanded = time[:, None, None]
        x_t = time_expanded * noise + (1 - time_expanded) * actions
        u_t = noise - actions

        prefix_embs, prefix_pad_masks, prefix_att_masks = self.embed_prefix(images, img_masks, tokens, masks)
        suffix_embs, suffix_pad_masks, suffix_att_masks, adarms_cond = self.embed_suffix(x_t, time)

        if (
            self.paligemma_with_expert.paligemma.language_model.layers[0].self_attn.q_proj.weight.dtype
            == torch.bfloat16
        ):
            suffix_embs = suffix_embs.to(dtype=torch.bfloat16)
            prefix_embs = prefix_embs.to(dtype=torch.bfloat16)

        pad_masks = torch.cat([prefix_pad_masks, suffix_pad_masks], dim=1)
        att_masks = torch.cat([prefix_att_masks, suffix_att_masks], dim=1)

        att_2d_masks = make_att_2d_masks(pad_masks, att_masks)
        position_ids = torch.cumsum(pad_masks, dim=1) - 1

        att_2d_masks_4d = self._prepare_attention_masks_4d(att_2d_masks)

        def forward_func(prefix_embs, suffix_embs, att_2d_masks_4d, position_ids, adarms_cond):
            (_, suffix_out), _ = self.paligemma_with_expert.forward(
                attention_mask=att_2d_masks_4d,
                position_ids=position_ids,
                past_key_values=None,
                inputs_embeds=[prefix_embs, suffix_embs],
                use_cache=False,
                adarms_cond=[None, adarms_cond],
            )
            return suffix_out

        suffix_out = self._apply_checkpoint(
            forward_func, prefix_embs, suffix_embs, att_2d_masks_4d, position_ids, adarms_cond
        )

        suffix_out = suffix_out[:, -self.config.chunk_size :]
        suffix_out = suffix_out.to(dtype=torch.float32)

        def action_out_proj_func(suffix_out):
            return self.action_out_proj(suffix_out)

        v_t = self._apply_checkpoint(action_out_proj_func, suffix_out)

        return F.mse_loss(u_t, v_t, reduction="none")

    @torch.no_grad()  # see openpi `sample_actions` (slightly adapted)
    def sample_actions(
        self,
        images,
        img_masks,
        tokens,
        masks,
        noise=None,
        num_steps=None,
        **kwargs: Unpack[ActionSelectKwargs],
    ) -> Tensor:
        """Do a full inference forward and compute the action."""
        if num_steps is None:
            num_steps = self.config.num_inference_steps

        bsize = tokens.shape[0]
        device = tokens.device

        if noise is None:
            # Sample noise with padded dimension as expected by action_in_proj
            actions_shape = (
                bsize,
                self.config.chunk_size,
                self.config.max_action_dim,
            )  # Use config max_action_dim for internal processing
            noise = self.sample_noise(actions_shape, device)

        prefix_embs, prefix_pad_masks, prefix_att_masks = self.embed_prefix(images, img_masks, tokens, masks)
        prefix_att_2d_masks = make_att_2d_masks(prefix_pad_masks, prefix_att_masks)
        prefix_position_ids = torch.cumsum(prefix_pad_masks, dim=1) - 1

        prefix_att_2d_masks_4d = self._prepare_attention_masks_4d(prefix_att_2d_masks)
        self.paligemma_with_expert.paligemma.language_model.config._attn_implementation = "eager"  # noqa: SLF001

        _, past_key_values = self.paligemma_with_expert.forward(
            attention_mask=prefix_att_2d_masks_4d,
            position_ids=prefix_position_ids,
            past_key_values=None,
            inputs_embeds=[prefix_embs, None],
            use_cache=True,
        )

        dt = -1.0 / num_steps
        dt = torch.tensor(dt, dtype=torch.float32, device=device)

        x_t = noise
        time = torch.tensor(1.0, dtype=torch.float32, device=device)
        while time >= -dt / 2:
            expanded_time = time.expand(bsize)

            # Define a closure function to properly capture expanded_time
            # This avoids the lambda expression (E731) and loop variable binding (B023) issues
            def denoise_step_partial_call(input_x_t, current_timestep=expanded_time):
                return self.denoise_step(
                    prefix_pad_masks=prefix_pad_masks,
                    past_key_values=past_key_values,
                    x_t=input_x_t,
                    timestep=current_timestep,
                )

            if self._rtc_enabled():
                inference_delay = kwargs.get("inference_delay")
                prev_chunk_left_over = kwargs.get("prev_chunk_left_over")
                execution_horizon = kwargs.get("execution_horizon")

                v_t = self.rtc_processor.denoise_step(
                    x_t=x_t,
                    prev_chunk_left_over=prev_chunk_left_over,
                    inference_delay=inference_delay,
                    time=time,
                    original_denoise_step_partial=denoise_step_partial_call,
                    execution_horizon=execution_horizon,
                )
            else:
                v_t = denoise_step_partial_call(x_t)

            # Euler step
            x_t += dt * v_t

            # Record x_t and v_t after Euler step
            if self.rtc_processor is not None and self.rtc_processor.is_debug_enabled():
                self.rtc_processor.track(time=time, x_t=x_t, v_t=v_t)

            time += dt

        return x_t

    def denoise_step(
        self,
        prefix_pad_masks,
        past_key_values,
        x_t,
        timestep,
    ):
        """Apply one denoising step of the noise `x_t` at a given timestep."""
        suffix_embs, suffix_pad_masks, suffix_att_masks, adarms_cond = self.embed_suffix(x_t, timestep)

        suffix_len = suffix_pad_masks.shape[1]
        batch_size = prefix_pad_masks.shape[0]
        prefix_len = prefix_pad_masks.shape[1]

        prefix_pad_2d_masks = prefix_pad_masks[:, None, :].expand(batch_size, suffix_len, prefix_len)
        suffix_att_2d_masks = make_att_2d_masks(suffix_pad_masks, suffix_att_masks)
        full_att_2d_masks = torch.cat([prefix_pad_2d_masks, suffix_att_2d_masks], dim=2)

        prefix_offsets = torch.sum(prefix_pad_masks, dim=-1)[:, None]
        position_ids = prefix_offsets + torch.cumsum(suffix_pad_masks, dim=1) - 1

        full_att_2d_masks_4d = self._prepare_attention_masks_4d(full_att_2d_masks)
        self.paligemma_with_expert.gemma_expert.model.config._attn_implementation = "eager"  # noqa: SLF001

        outputs_embeds, _ = self.paligemma_with_expert.forward(
            attention_mask=full_att_2d_masks_4d,
            position_ids=position_ids,
            past_key_values=past_key_values,
            inputs_embeds=[None, suffix_embs],
            use_cache=False,
            adarms_cond=[None, adarms_cond],
        )

        suffix_out = outputs_embeds[1]
        suffix_out = suffix_out[:, -self.config.chunk_size :]
        suffix_out = suffix_out.to(dtype=torch.float32)
        return self.action_out_proj(suffix_out)


class PI05Policy(PreTrainedPolicy):
    """PI05 Policy for LeRobot."""

    config_class = PI05Config
    name = "pi05"

    def __init__(
        self,
        config: PI05Config,
    ):
        """
        Args:
            config: Policy configuration class instance.
        """
        super().__init__(config)
        config.validate_features()
        self.config = config

        # Initialize the core PI05 model
        self.init_rtc_processor()
        self.model = PI05Pytorch(config, rtc_processor=self.rtc_processor)

        # Enable gradient checkpointing if requested
        if config.gradient_checkpointing:
            self.model.gradient_checkpointing_enable()

        self.model.to(config.device)

        self.reset()

    @classmethod
    def from_pretrained(
        cls: builtins.type[T],
        pretrained_name_or_path: str | Path,
        *,
        config: PreTrainedConfig | None = None,
        force_download: bool = False,
        resume_download: bool | None = None,
        proxies: dict | None = None,
        token: str | bool | None = None,
        cache_dir: str | Path | None = None,
        local_files_only: bool = False,
        revision: str | None = None,
        strict: bool = True,
        **kwargs,
    ) -> T:
        """Override the from_pretrained method to handle key remapping and display important disclaimer."""
        print(
            "The PI05 model is a direct port of the OpenPI implementation. \n"
            "This implementation follows the original OpenPI structure for compatibility. \n"
            "Original implementation: https://github.com/Physical-Intelligence/openpi"
        )
        if pretrained_name_or_path is None:
            raise ValueError("pretrained_name_or_path is required")

        # Use provided config if available, otherwise create default config
        if config is None:
            config = PreTrainedConfig.from_pretrained(
                pretrained_name_or_path=pretrained_name_or_path,
                force_download=force_download,
                resume_download=resume_download,
                proxies=proxies,
                token=token,
                cache_dir=cache_dir,
                local_files_only=local_files_only,
                revision=revision,
                **kwargs,
            )

        # Initialize model without loading weights
        # Check if dataset_stats were provided in kwargs
        model = cls(config, **kwargs)

        # Now manually load and remap the state dict
        try:
            # Try to load the pytorch_model.bin or model.safetensors file
            print(f"Loading model from: {pretrained_name_or_path}")
            try:
                from transformers.utils import cached_file

                # Try safetensors first
                resolved_file = cached_file(
                    pretrained_name_or_path,
                    "model.safetensors",
                    cache_dir=kwargs.get("cache_dir"),
                    force_download=kwargs.get("force_download", False),
                    resume_download=kwargs.get("resume_download"),
                    proxies=kwargs.get("proxies"),
                    use_auth_token=kwargs.get("use_auth_token"),
                    revision=kwargs.get("revision"),
                    local_files_only=kwargs.get("local_files_only", False),
                )
                from safetensors.torch import load_file

                original_state_dict = load_file(resolved_file)
                print("✓ Loaded state dict from model.safetensors")
            except Exception as e:  # noqa: BLE001
                print(f"Could not load state dict from remote files: {e}")
                print("Returning model without loading pretrained weights")
                return model

            # First, fix any key differences # see openpi `model.py, _fix_pytorch_state_dict_keys`
            fixed_state_dict = model._fix_pytorch_state_dict_keys(original_state_dict, model.config)

            # Then add "model." prefix for all keys that don't already have it
            remapped_state_dict = {}
            remap_count = 0

            for key, value in fixed_state_dict.items():
                if not key.startswith("model."):
                    new_key = f"model.{key}"
                    remapped_state_dict[new_key] = value
                    remap_count += 1
                    if remap_count <= 10:  # Only print first 10 to avoid spam
                        print(f"Remapped: {key} -> {new_key}")
                else:
                    remapped_state_dict[key] = value

            if remap_count > 0:
                print(f"Remapped {remap_count} state dict keys")

            # Load the remapped state dict into the model
            missing_keys, unexpected_keys = model.load_state_dict(remapped_state_dict, strict=strict)

            # --- PATCH: tie embed_tokens to lm_head if ckpt omitted embed_tokens ---
            if any("embed_tokens.weight" in k for k in missing_keys):
                try:
                    with torch.no_grad():
                        embed = model.model.paligemma_with_expert.paligemma.model.language_model.embed_tokens
                        lm_head = model.model.paligemma_with_expert.paligemma.lm_head
                        if embed is not None and lm_head is not None:
                            embed.weight = lm_head.weight
                except Exception as _e:  # noqa: BLE001
                    print("[patch_pi05] Could not tie embed_tokens to lm_head:", _e)

            # --- FIX: tie embed_tokens to lm_head if embed_tokens missing in ckpt ---
            if any("embed_tokens.weight" in k for k in missing_keys):
                with torch.no_grad():
                    embed = model.model.paligemma_with_expert.paligemma.model.language_model.embed_tokens
                    lm_head = model.model.paligemma_with_expert.paligemma.lm_head
                    embed.weight = lm_head.weight

            if missing_keys:
                print(f"Missing keys when loading state dict: {len(missing_keys)} keys")
                if len(missing_keys) <= 5:
                    for key in missing_keys:
                        print(f"  - {key}")
                else:
                    for key in missing_keys[:5]:
                        print(f"  - {key}")
                    print(f"  ... and {len(missing_keys) - 5} more")

            if unexpected_keys:
                print(f"Unexpected keys when loading state dict: {len(unexpected_keys)} keys")
                if len(unexpected_keys) <= 5:
                    for key in unexpected_keys:
                        print(f"  - {key}")
                else:
                    for key in unexpected_keys[:5]:
                        print(f"  - {key}")
                    print(f"  ... and {len(unexpected_keys) - 5} more")

            if not missing_keys and not unexpected_keys:
                print("All keys loaded successfully!")

        except Exception as e:  # noqa: BLE001
            print(f"Warning: Could not remap state dict keys: {e}")

        return model

    def _fix_pytorch_state_dict_keys(
        self, state_dict, model_config
    ):  # see openpi `BaseModelConfig, _fix_pytorch_state_dict_keys`
        """Fix state dict keys to match current model architecture."""
        import re

        fixed_state_dict = {}

        for key, value in state_dict.items():
            new_key = key

            # Handle layer norm structure changes: .weight -> .dense.weight + .dense.bias
            # For gemma expert layers
            if re.match(
                r"paligemma_with_expert\.gemma_expert\.model\.layers\.\d+\.(input_layernorm|post_attention_layernorm)\.weight",
                key,
            ):
                # Check if the model actually has adaRMS enabled for the expert
                expert_uses_adarms = getattr(
                    self.model.paligemma_with_expert.gemma_expert.config, "use_adarms", False
                )
                if expert_uses_adarms:
                    logging.warning(f"Skipping layer norm key (adaRMS mismatch): {key}")
                    continue

            if re.match(r"paligemma_with_expert\.gemma_expert\.model\.norm\.weight", key):
                # Check if the model actually has adaRMS enabled for the expert
                expert_uses_adarms = getattr(
                    self.model.paligemma_with_expert.gemma_expert.config, "use_adarms", False
                )
                if expert_uses_adarms:
                    logging.warning(f"Skipping norm key (adaRMS mismatch): {key}")
                    continue

            # Handle MLP naming changes for pi05
            # pi05 model expects time_mlp_*, but checkpoint might have action_time_mlp_*
            if key.startswith("action_time_mlp_in."):
                new_key = key.replace("action_time_mlp_in.", "time_mlp_in.")
            elif key.startswith("action_time_mlp_out."):
                new_key = key.replace("action_time_mlp_out.", "time_mlp_out.")
            # Also handle state_proj which shouldn't exist in pi05
            if key.startswith("state_proj."):
                logging.warning(f"Skipping state_proj key in pi05 mode: {key}")
                continue

            # Handle vision tower embedding layer potential differences
            if "patch_embedding" in key:
                # Some checkpoints might have this, but current model expects different structure
                logging.warning(f"Vision embedding key might need handling: {key}")

            fixed_state_dict[new_key] = value

        return fixed_state_dict

    def get_optim_params(self) -> dict:
        return self.parameters()

    def reset(self):
        """Reset internal state - called when environment resets."""
        self._action_queue = deque(maxlen=self.config.n_action_steps)
        self._queues = {
            ACTION: deque(maxlen=self.config.n_action_steps),
        }

    def init_rtc_processor(self):
        """Initialize RTC processor if RTC is enabled in config."""
        self.rtc_processor = None

        # Create processor if config provided
        # If RTC is not enabled - we can still track the denoising data
        if self.config.rtc_config is not None:
            self.rtc_processor = RTCProcessor(self.config.rtc_config)

            model_value = getattr(self, "model", None)
            if model_value is not None:
                model_value.rtc_processor = self.rtc_processor

    def _rtc_enabled(self) -> bool:
        return self.config.rtc_config is not None and self.config.rtc_config.enabled

    def _preprocess_images(self, batch: dict[str, Tensor]) -> tuple[list[Tensor], list[Tensor]]:
        """Preprocess images for the model.

        Images from LeRobot are typically in [B, C, H, W] format and normalized to [0, 1].
        PaliGemma expects images in [B, C, H, W] format and normalized to [-1, 1].
        """
        images = []
        img_masks = []

        # Get device from model parameters
        device = next(self.parameters()).device

        present_img_keys = [key for key in self.config.image_features if key in batch]
        missing_img_keys = [key for key in self.config.image_features if key not in batch]

        if len(present_img_keys) == 0:
            raise ValueError(
                f"All image features are missing from the batch. At least one expected. "
                f"(batch: {batch.keys()}) (image_features: {self.config.image_features})"
            )

        # Preprocess image features present in the batch
        for key in present_img_keys:
            img = batch[key]

            # Ensure tensor is on the same device as the model
            if img.device != device:
                img = img.to(device)

            # Ensure float32 dtype for consistency
            if img.dtype != torch.float32:
                img = img.to(torch.float32)

            # from openpi preprocess_observation_pytorch: Handle both [B, C, H, W] and [B, H, W, C] formats
            is_channels_first = img.shape[1] == 3  # Check if channels are in dimension 1

            if is_channels_first:
                # Convert [B, C, H, W] to [B, H, W, C] for processing
                img = img.permute(0, 2, 3, 1)

            # from openpi preprocess_observation_pytorch: Resize with padding if needed
            if img.shape[1:3] != self.config.image_resolution:
                img = resize_with_pad_torch(img, *self.config.image_resolution)

            # Normalize from [0,1] to [-1,1] as expected by siglip
            img = img * 2.0 - 1.0

            # from openpi preprocess_observation_pytorch: Convert back to [B, C, H, W] format if it was originally channels-first
            if is_channels_first:
                img = img.permute(0, 3, 1, 2)  # [B, H, W, C] -> [B, C, H, W]

            images.append(img)
            # Create mask (all ones for real images)
            bsize = img.shape[0]
            mask = torch.ones(bsize, dtype=torch.bool, device=device)
            img_masks.append(mask)

        # Create image features not present in the batch as fully 0 padded images
        for _num_empty_cameras in range(len(missing_img_keys)):
            img = torch.ones_like(img) * -1  # Padded with -1 for SigLIP
            mask = torch.zeros_like(mask)  # Mask is zero for empty cameras
            images.append(img)
            img_masks.append(mask)

        return images, img_masks

    def prepare_action(self, batch):
        """Pad action"""
        actions = pad_vector(batch[ACTION], self.config.max_action_dim)
        return actions

    @torch.no_grad()
    def select_action(self, batch: dict[str, Tensor]) -> Tensor:
        """Select a single action given environment observations."""
        assert not self._rtc_enabled(), (
            "RTC is not supported for select_action, use it with predict_action_chunk"
        )

        self.eval()

        # Action queue logic for n_action_steps > 1
        if len(self._action_queue) == 0:
            actions = self.predict_action_chunk(batch)[:, : self.config.n_action_steps]
            # Transpose to get shape (n_action_steps, batch_size, action_dim)
            self._action_queue.extend(actions.transpose(0, 1))

        return self._action_queue.popleft()

    @torch.no_grad()
    def predict_action_chunk(self, batch: dict[str, Tensor], **kwargs: Unpack[ActionSelectKwargs]) -> Tensor:
        """Predict a chunk of actions given environment observations."""
        self.eval()

        # Prepare inputs
        images, img_masks = self._preprocess_images(batch)
        tokens, masks = batch[f"{OBS_LANGUAGE_TOKENS}"], batch[f"{OBS_LANGUAGE_ATTENTION_MASK}"]

        # Sample actions using the model (pass through RTC kwargs, no separate state needed for PI05)
        actions = self.model.sample_actions(images, img_masks, tokens, masks, **kwargs)

        # Unpad actions to actual action dimension
        original_action_dim = self.config.output_features[ACTION].shape[0]
        actions = actions[:, :, :original_action_dim]

        return actions

    def forward(self, batch: dict[str, Tensor]) -> tuple[Tensor, dict]:
        """Run the batch through the model and compute the loss for training."""

        # Prepare inputs
        images, img_masks = self._preprocess_images(batch)
        tokens, masks = batch[f"{OBS_LANGUAGE_TOKENS}"], batch[f"{OBS_LANGUAGE_ATTENTION_MASK}"]

        actions = self.prepare_action(batch)

        # Compute loss (no separate state needed for PI05)
        losses = self.model.forward(images, img_masks, tokens, masks, actions)

        # Truncate losses to actual action dimensions
        original_action_dim = self.config.output_features[ACTION].shape[0]
        losses = losses[:, :, :original_action_dim]

        loss = losses.mean()

        loss_dict = {
            "loss": loss.item(),
            "loss_per_dim": losses.mean(dim=[0, 1]).detach().cpu().numpy().tolist(),
        }

        return loss, loss_dict

# PATCH: downgrade transformer version guard