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# Copyright 2024 Big Vision Authors.
#
# 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.

"""
Gemma model implementation from big_vision/models/ppp/gemma.py (with small modifications for NNX compatibility)
Used for FAST autoregressive policies.
"""

import dataclasses
from typing import Literal, TypeAlias

import einops
import flax.linen as nn
import jax
import jax.numpy as jnp
import ml_collections

import openpi.models.lora as lora
import openpi.shared.array_typing as at

Variant = Literal["gemma_2b", "gemma_2b_lora"]


def get_config(variant):
    """Returns config for specified gemma variant."""
    if variant == "gemma_2b":
        return ml_collections.ConfigDict(
            {
                "variant": variant,
                "width": 2048,
                "depth": 18,
                "mlp_dim": 16_384,
                "num_heads": 8,
                "num_kv_heads": 1,
                "head_dim": 256,
                "norm_eps": 1e-6,
                "vocab_size": 257_152,
                "scan": True,
                "remat_policy": "nothing_saveable",
            }
        )
    if variant == "gemma_2b_lora":
        return ml_collections.ConfigDict(
            {
                "variant": variant,
                "width": 2048,
                "depth": 18,
                "mlp_dim": 16_384,
                "num_heads": 8,
                "num_kv_heads": 1,
                "head_dim": 256,
                "norm_eps": 1e-6,
                "vocab_size": 257_152,
                "scan": True,
                "remat_policy": "nothing_saveable",
                "lora_configs": {
                    "attn": lora.LoRAConfig(rank=16, alpha=16.0),
                    "ffn": lora.LoRAConfig(rank=16, alpha=16.0),
                },
            }
        )
    raise ValueError(f"Unknown variant: {variant}")


@at.typecheck
class Einsum(nn.Module):
    shape: tuple[int, ...]

    @nn.compact
    def __call__(self, eqn, x):
        dtype = x.dtype  # original dtype, could be half-precision
        w = self.param("w", nn.initializers.zeros_init(), self.shape).astype(dtype)
        return jnp.einsum(eqn, x, w)


@at.typecheck
class RMSNorm(nn.Module):
    @nn.compact
    def __call__(self, x):
        dtype = x.dtype  # original dtype, could be half-precision
        scale = self.param("scale", nn.initializers.zeros_init(), (x.shape[-1]))
        var = jnp.mean(jnp.square(x.astype(jnp.float32)), axis=-1, keepdims=True)  # compute variance in float32
        normed_inputs = jnp.asarray(x * jnp.reciprocal(jnp.sqrt(var + 1e-06)))  # compute normalization in float32
        normed_inputs = normed_inputs * (
            1 + scale
        )  # scale by learned parameter in float32 (matches Flax implementation)
        return normed_inputs.astype(dtype)  # return in original dtype


@at.typecheck
class Embedder(nn.Module):
    """Embedder module."""

    vocab_size: int
    embed_dim: int

    def setup(self):
        self.input_embedding_table = self.param(
            "input_embedding",
            nn.initializers.zeros_init(),
            (self.vocab_size, self.embed_dim),
        )

    def encode(self, x):
        x = self.input_embedding_table[(x,)]
        x *= jnp.sqrt(self.embed_dim).astype(x.dtype)
        return x

    def decode(self, x):
        return jnp.dot(x, self.input_embedding_table.T)


@at.typecheck
class Attention(nn.Module):
    """Attention module."""

    num_heads: int
    num_kv_heads: int
    features: int
    head_dim: int

    cache_dtype: str | None = None

    lora_config: lora.LoRAConfig | None = None

    def setup(self):
        if self.num_kv_heads == self.num_heads:
            self.qkv_einsum = lora.Einsum(
                shape=(3, self.num_heads, self.features, self.head_dim),
                name="qkv_einsum",
                init_fn=nn.initializers.lecun_normal(in_axis=-2, out_axis=-1, batch_axis=(0, 1)),
                lora_config=self.lora_config,
            )
        else:
            self.q_einsum = lora.Einsum(
                shape=(self.num_heads, self.features, self.head_dim),
                name="q_einsum",
                init_fn=nn.initializers.lecun_normal(in_axis=-2, out_axis=-1, batch_axis=(0,)),
                lora_config=self.lora_config,
            )
            self.kv_einsum = lora.Einsum(
                shape=(2, self.num_kv_heads, self.features, self.head_dim),
                name="kv_einsum",
                init_fn=nn.initializers.lecun_normal(in_axis=-2, out_axis=-1, batch_axis=(0, 1)),
                lora_config=self.lora_config,
            )
        self.attn_vec_einsum = lora.Einsum(
            shape=(self.num_heads, self.head_dim, self.features),
            name="attn_vec_einsum",
            init_fn=nn.initializers.lecun_normal(in_axis=-2, out_axis=-1, batch_axis=(0,)),
            lora_config=self.lora_config,
        )

    def _init_cache(self, k, v, cache_size):
        """Initialize KV cache"""
        prefill_len = k.shape[1]
        pad_width = ((0, 0), (0, cache_size - prefill_len), (0, 0), (0, 0))
        cache_dtype = self.cache_dtype or k.dtype
        k_cache = jnp.pad(k.astype(cache_dtype), pad_width)
        v_cache = jnp.pad(v.astype(cache_dtype), pad_width)
        idx = jnp.zeros((k.shape[0],), dtype=jnp.int32) + prefill_len
        return idx, k_cache, v_cache

    def _update_cache(self, k, v, idx, k_cache, v_cache):
        """Update KV cache with new values"""
        assert k.shape[1] == 1, "Only support kv-cache updates of length 1"
        indices = (0, idx[0], 0, 0)
        cache_dtype = self.cache_dtype or k.dtype
        k_new = jax.lax.dynamic_update_slice(k_cache, k.astype(cache_dtype), indices)
        v_new = jax.lax.dynamic_update_slice(v_cache, v.astype(cache_dtype), indices)
        idx_new = idx + 1
        return idx_new, k_new, v_new

    @nn.compact
    def __call__(self, x, positions, attn_mask, kv_cache, decode, deterministic=True):  # noqa: FBT002
        dtype = x.dtype  # original dtype, could be half-precision
        if self.num_kv_heads == self.num_heads:
            q, k, v = self.qkv_einsum("BSD,3KDH->3BSKH", x)
        else:
            q = self.q_einsum("BTD,NDH->BTNH", x)
            k, v = self.kv_einsum("BSD,2KDH->2BSKH", x)

        q = _apply_rope(q, positions=positions)  # promotes to float32
        q *= self.head_dim**-0.5

        k = _apply_rope(k, positions=positions)  # promotes to float32

        if kv_cache is None:
            idx, k_cache, v_cache = self._init_cache(k, v, attn_mask.shape[-1])
        else:
            idx, k_cache, v_cache = kv_cache
            idx, k_cache, v_cache = self._update_cache(k, v, idx, k_cache, v_cache)

        k, v = k_cache, v_cache
        kv_cache = (idx, k_cache, v_cache)

        q = einops.rearrange(q, "B T (K G) H -> B T K G H", K=self.num_kv_heads)
        logits = jnp.einsum("BTKGH,BSKH->BKGTS", q, k, preferred_element_type=jnp.float32)

        if attn_mask.shape != (q.shape[0], 1, q.shape[1], k.shape[1]):
            raise ValueError(
                f"Attention mask with shape {attn_mask.shape} but shapes for q and k are: {q.shape} and {k.shape}"
            )

        # big_neg = jnp.finfo(logits.dtype).min
        big_neg = -2.3819763e38  # See gemma/modules.py
        masked_logits = jnp.where(attn_mask[:, :, None, :, :], logits, big_neg)

        probs = jax.nn.softmax(masked_logits, axis=-1).astype(dtype)

        encoded = jnp.einsum("BKGTS,BSKH->BTKGH", probs, v)
        encoded = einops.rearrange(encoded, "B T K G H -> B T (K G) H")
        return self.attn_vec_einsum("BTNH,NHD->BTD", encoded), kv_cache


@at.typecheck
class Block(nn.Module):
    """Transformer block."""

    num_heads: int
    num_kv_heads: int
    embed_dim: int
    head_dim: int
    hidden_dim: int

    dropout: float = 0.0
    dropout_bdims: tuple[int, ...] = ()
    cache_dtype: str | None = None
    lora_configs: ml_collections.ConfigDict = dataclasses.field(default_factory=ml_collections.ConfigDict)

    def setup(self):
        self.pre_attention_norm = RMSNorm()
        self.attn = Attention(
            num_heads=self.num_heads,
            num_kv_heads=self.num_kv_heads,
            features=self.embed_dim,
            head_dim=self.head_dim,
            cache_dtype=self.cache_dtype,
            lora_config=self.lora_configs.get("attn"),
        )
        self.pre_ffw_norm = RMSNorm()
        self.mlp = lora.FeedForward(
            features=self.embed_dim, hidden_dim=self.hidden_dim, name="mlp", lora_config=self.lora_configs.get("ffn")
        )
        if self.dropout:
            self.drop = nn.Dropout(self.dropout, self.dropout_bdims)
        else:
            self.drop = lambda x, _: x

    def __call__(self, x, kv_cache, positions, attn_mask, decode, deterministic=True):  # noqa: FBT002
        x = nn.with_logical_constraint(x, ("act_batch", "act_len", "act_emb"))
        inputs_normalized = self.pre_attention_norm(x)
        attn_output, kv_cache = self.attn(inputs_normalized, positions, attn_mask, kv_cache, decode, deterministic)
        attn_output = self.drop(attn_output, deterministic)
        attn_output += x
        residual = attn_output
        attn_output = self.pre_ffw_norm(attn_output)
        outputs = self.mlp(attn_output)
        outputs = self.drop(outputs, deterministic)
        outputs = residual + outputs
        return outputs, kv_cache


KVCache: TypeAlias = tuple[at.Int[at.Array, " b"], at.Float[at.Array, "b _t _k _h"], at.Float[at.Array, "b _t _v _h"]]


@at.typecheck
class Module(nn.Module):
    """gemma model."""

    variant: str

    width: int
    depth: int
    mlp_dim: int
    num_heads: int
    num_kv_heads: int
    head_dim: int
    norm_eps: float
    vocab_size: int
    embed_dtype: str

    dropout: float = 0.0
    dropout_bdims: tuple[int, ...] = ()  # Every float is dropped independently.
    cache_dtype: str | None = None

    scan: bool = False
    remat_policy: str = "none"
    lora_configs: ml_collections.ConfigDict = dataclasses.field(default_factory=ml_collections.ConfigDict)

    @nn.compact
    def __call__(
        self,
        tokens=None,
        embedded_prefix=None,
        embed_only=False,  # noqa: FBT002
        pre_logits=None,
        positions=None,
        mask=None,
        decode=False,  # noqa: FBT002
        kv_cache=None,
        deterministic=True,  # noqa: FBT002
        return_prelogits=False,  # noqa: FBT002
    ):
        """Embed only, or complete forward pass.

        Args:
          tokens: Embedded, then and appended to `embedded_prefix`. Can be None.
          embedded_prefix: Optional prefix that is already embedded.
          embed_only: Whether to compute embeddings only.
          pre_logits: If present computes logits from pre_logits and returns.
          positions: Optional `[B, T]` allows to specify the absolute position of
            the tokens.
          mask: Optional attention mask `[B, T, S]`.
          decode: Whether to use kv-cache. Caller must pass masks and positions.
          deterministic: Forwarded to all dropout layers.
          return_prelogits: Whether to return the pre-logits.

        Returns:
          If `embed_only=False`, then `(logits, out)` will be returned.
          If `embed_only=True`, then the embeddings will be returned.
          If `return_prelogits=True`, then the pre-logits will be returned.
        """
        out = {}

        embedder = Embedder(vocab_size=self.vocab_size, embed_dim=self.width, name="embedder")

        if pre_logits is not None:
            x = out["pre_logits"] = pre_logits
            logits = out["logits"] = embedder.decode(x)
            return logits, out

        x = []
        if embedded_prefix is not None:
            x.append(embedded_prefix)
        if tokens is not None:
            x.append(embedder.encode(tokens))

        x = jnp.concatenate(x, axis=-2)
        x = x.astype(self.embed_dtype)
        batch_size, seq_len, width = x.shape

        if embed_only:
            return x

        if decode:
            assert positions is not None and mask is not None, (  # noqa: PT018
                "Must explicitly pass positions and mask for decoding."
            )

        if positions is None:
            positions = jnp.arange(seq_len).astype(jnp.int32)[None, :]
        assert positions.shape[1] == x.shape[1], (positions.shape, x.shape)

        if mask is None:
            mask = nn.attention.make_causal_mask(jnp.ones([batch_size, seq_len]))
        if mask.ndim == 3:
            mask = mask[:, None, :, :]
        cache_size = max(seq_len, mask.shape[-1])
        assert mask.shape == (batch_size, 1, seq_len, cache_size), mask.shape

        if self.remat_policy == "none":
            block_cls = Block
        else:
            block_cls = nn.remat(
                Block,
                prevent_cse=not self.scan,
                static_argnums=(5, 6),  # 0=self, 5=decode, 6=deterministic
                policy=getattr(jax.checkpoint_policies, self.remat_policy),
            )

        block_kw = {
            "num_heads": self.num_heads,
            "head_dim": self.head_dim,
            "num_kv_heads": self.num_kv_heads,
            "embed_dim": width,
            "hidden_dim": self.mlp_dim,
            "dropout": self.dropout,
            "dropout_bdims": self.dropout_bdims,
            "cache_dtype": self.cache_dtype,
            "lora_configs": self.lora_configs,
        }
        layers = self.scope.push("layers")
        blocks = [
            nn.scan(
                block_cls,
                variable_axes={"params": 0},
                split_rngs={"params": True, "dropout": True},
                in_axes=(0, nn.broadcast, nn.broadcast, nn.broadcast, nn.broadcast),  # 0=kv_cache, 1=positions, 2=mask
                length=self.depth,
            )(parent=layers, **block_kw)
        ]
        for block in blocks:
            x, kv_cache = block(x, kv_cache, positions, mask, decode, deterministic)

        assert x.dtype == jnp.dtype(self.embed_dtype)  # Sanity check.
        out["encoded"] = x

        x = RMSNorm(name="final_norm")(x)
        out["pre_logits"] = x
        if return_prelogits:
            return x, kv_cache, out

        x = embedder.decode(x)
        out["logits"] = x

        return x, kv_cache, out

    def init(self):
        """Convenience method for initializing all parameters, necessary due to the quirks of linen."""
        self(jnp.zeros((1, 1), dtype=jnp.int32))


def _apply_rope(x, *, positions, max_wavelength=10_000):
    """Applies RoPE positions [B, L] to x [B, L, H, D]."""
    freq_exponents = (2.0 / x.shape[-1]) * jnp.arange(x.shape[-1] // 2, dtype=jnp.float32)
    timescale = max_wavelength**freq_exponents
    radians = positions[..., None] / timescale[None, None, :]
    radians = radians[..., None, :]
    assert radians.dtype == jnp.float32
    # radians.shape = [...,L,1,d=D/2]
    sin, cos = jnp.sin(radians), jnp.cos(radians)
    x1, x2 = jnp.split(x, 2, axis=-1)
    res = jnp.concatenate([x1 * cos - x2 * sin, x2 * cos + x1 * sin], axis=-1)
    assert res.dtype == jnp.float32
    return res