moondream2-batched / moondream.py
HV-Khurdula's picture
Updating source code to support batching
6f6a9d6 verified
raw
history blame
46.3 kB
import torch
import torch.nn as nn
import random
from typing import Literal, Tuple, TypedDict, Union, Dict, Any, Optional, List
from PIL import Image
from dataclasses import dataclass
from tokenizers import Tokenizer
from .config import MoondreamConfig
from .image_crops import reconstruct_from_crops
from .vision import vision_encoder, vision_projection, prepare_crops, build_vision_model
from .text import build_text_model, text_encoder, lm_head, text_decoder
from .region import (
decode_coordinate,
encode_coordinate,
decode_size,
encode_size,
encode_spatial_refs,
SpatialRefs,
)
from .layers import QuantizedLinear
from .lora import variant_state_dict
from .utils import remove_outlier_points
ImageEncodingSettings = TypedDict(
"ImageEncodingSettings",
{"variant": str},
total=False,
)
TextSamplingSettings = TypedDict(
"TextSamplingSettings",
{
"max_tokens": int,
"temperature": float,
"top_p": float,
"variant": str,
},
total=False,
)
ObjectSamplingSettings = TypedDict(
"ObjectSamplingSettings",
{"max_objects": int, "variant": str},
total=False,
)
DEFAULT_MAX_TOKENS = 768
DEFAULT_TEMPERATURE = 0.5
DEFAULT_TOP_P = 0.3
DEFAULT_MAX_OBJECTS = 50
@dataclass(frozen=True)
class EncodedImage:
pos: int
caches: List[Tuple[torch.Tensor, torch.Tensor]]
class KVCache(nn.Module):
def __init__(self, n_heads, n_kv_heads, max_context, dim, device, dtype):
super().__init__()
cache_shape = (1, n_kv_heads, max_context, dim // n_heads)
self.register_buffer(
"k_cache", torch.zeros(*cache_shape, device=device, dtype=dtype)
)
self.register_buffer(
"v_cache", torch.zeros(*cache_shape, device=device, dtype=dtype)
)
def update(self, pos_ids, k, v):
kout, vout = self.k_cache, self.v_cache
kout[:, :, pos_ids, :] = k
vout[:, :, pos_ids, :] = v
return kout, vout
class MoondreamModel(nn.Module):
def __init__(
self, config: MoondreamConfig, dtype=torch.bfloat16, setup_caches=True
):
super().__init__()
self.config = config
self.tokenizer = Tokenizer.from_pretrained("moondream/starmie-v1")
self.vision = build_vision_model(config.vision, dtype)
self.text = build_text_model(config.text, dtype)
# Region Model
linear_cls = (
QuantizedLinear if config.region.group_size is not None else nn.Linear
)
self.region = nn.ModuleDict(
{
"coord_encoder": linear_cls(
config.region.coord_feat_dim, config.region.dim, dtype=dtype
),
"coord_decoder": nn.ModuleDict(
{
"fc1": linear_cls(
config.region.dim, config.region.inner_dim, dtype=dtype
),
"fc2": linear_cls(
config.region.inner_dim,
config.region.coord_out_dim,
dtype=dtype,
),
}
),
"size_encoder": linear_cls(
config.region.size_feat_dim, config.region.dim, dtype=dtype
),
"size_decoder": nn.ModuleDict(
{
"fc1": linear_cls(
config.region.dim, config.region.inner_dim, dtype=dtype
),
"fc2": linear_cls(
config.region.inner_dim,
config.region.size_out_dim,
dtype=dtype,
),
}
),
}
)
self.region.coord_features = nn.Parameter(
torch.empty(config.region.coord_feat_dim // 2, 1, dtype=dtype).T
)
self.region.size_features = nn.Parameter(
torch.empty(config.region.size_feat_dim // 2, 2, dtype=dtype).T
)
attn_mask = torch.tril(
torch.ones(
1, 1, config.text.max_context, config.text.max_context, dtype=torch.bool
)
)
patch_w = config.vision.crop_size // config.vision.enc_patch_size
prefix_attn_len = 1 + patch_w**2
attn_mask[..., :prefix_attn_len, :prefix_attn_len] = 1
self.register_buffer("attn_mask", attn_mask, persistent=False)
# Initialize KV caches.
if setup_caches:
self._setup_caches()
def _setup_caches(self):
c = self.config.text
for b in self.text.blocks:
b.kv_cache = KVCache(
c.n_heads,
c.n_kv_heads,
c.max_context,
c.dim,
device=self.device,
dtype=self.vision.pos_emb.dtype,
)
@property
def device(self):
return self.vision.pos_emb.device
def _vis_enc(self, x: torch.Tensor):
return vision_encoder(x, self.vision, self.config.vision)
def _vis_proj(self, g: torch.Tensor, r: torch.Tensor):
return vision_projection(g, r, self.vision, self.config.vision)
def _prefill(
self,
x: torch.Tensor,
attn_mask: torch.Tensor,
pos_ids: torch.Tensor,
lora: Optional[torch.Tensor],
):
return text_decoder(x, self.text, attn_mask, pos_ids, self.config.text, lora)
def _decode_one_tok(
self,
x: torch.Tensor,
attn_mask: torch.Tensor,
pos_ids: torch.Tensor,
lora: Optional[torch.Tensor],
):
hidden = text_decoder(x, self.text, attn_mask, pos_ids, self.config.text, lora)
logits = lm_head(hidden, self.text)
return logits, hidden
def compile(self):
for module in self.modules():
if isinstance(module, QuantizedLinear):
module.unpack()
# TODO: vision_projection is not being compiled
self._vis_enc = torch.compile(self._vis_enc, fullgraph=True)
self._prefill = torch.compile(self._prefill, fullgraph=True)
self._decode_one_tok = torch.compile(
self._decode_one_tok, fullgraph=True, mode="reduce-overhead"
)
def _run_vision_encoder(self, image: Image.Image) -> torch.Tensor:
all_crops, tiling = prepare_crops(image, self.config.vision, device=self.device)
torch._dynamo.mark_dynamic(all_crops, 0)
outputs = self._vis_enc(all_crops)
global_features = outputs[0]
local_features = outputs[1:].view(
-1,
self.config.vision.enc_n_layers,
self.config.vision.enc_n_layers,
self.config.vision.enc_dim,
)
reconstructed = reconstruct_from_crops(
local_features,
tiling,
patch_size=1,
overlap_margin=self.config.vision.overlap_margin,
)
return self._vis_proj(global_features, reconstructed)
def encode_image(
self,
image: Union[Image.Image, EncodedImage],
settings: Optional[ImageEncodingSettings] = None,
) -> EncodedImage:
if isinstance(image, EncodedImage):
return image
elif not isinstance(image, Image.Image):
raise ValueError("image must be a PIL Image or EncodedImage")
lora = (
variant_state_dict(settings["variant"], device=self.device)
if settings is not None and "variant" in settings
else None
)
# Run through text model in addition to the vision encoder, to minimize
# re-computation if multiple queries are performed on this image.
with torch.inference_mode():
img_emb = self._run_vision_encoder(image)
bos_emb = text_encoder(
torch.tensor([[self.config.tokenizer.bos_id]], device=self.device),
self.text,
)
inputs_embeds = torch.cat([bos_emb, img_emb[None]], dim=1)
mask = self.attn_mask[:, :, 0 : inputs_embeds.size(1), :]
pos_ids = torch.arange(inputs_embeds.size(1), dtype=torch.long)
self._prefill(inputs_embeds, mask, pos_ids, lora)
return EncodedImage(
pos=inputs_embeds.size(1),
caches=[
(
b.kv_cache.k_cache[:, :, : inputs_embeds.size(1), :].clone(),
b.kv_cache.v_cache[:, :, : inputs_embeds.size(1), :].clone(),
)
for b in self.text.blocks
],
)
def _apply_top_p(self, probs: torch.Tensor, top_p: float):
probs_sort, probs_idx = torch.sort(probs, dim=-1, descending=True)
probs_sum = torch.cumsum(probs_sort, dim=-1)
mask = probs_sum - probs_sort > top_p
probs_sort[mask] = 0.0
probs_sort.div_(probs_sort.sum(dim=-1, keepdim=True))
next_probs = torch.zeros_like(probs)
next_probs.scatter_(dim=-1, index=probs_idx, src=probs_sort)
return next_probs
def _prefill_prompt(
self,
prompt_tokens: torch.Tensor,
pos: int,
temperature: float,
top_p: float,
spatial_refs: Optional[SpatialRefs] = None,
attn_mask: Optional[torch.Tensor] = None,
lora: Optional[dict] = None,
):
with torch.inference_mode():
prompt_emb = text_encoder(prompt_tokens, self.text)
if spatial_refs:
encoded_refs = encode_spatial_refs(spatial_refs, self.region)
prompt_emb[prompt_tokens == self.config.tokenizer.coord_id] = (
encoded_refs["coords"]
)
if encoded_refs["sizes"] is not None:
prompt_emb[prompt_tokens == self.config.tokenizer.size_id] = (
encoded_refs["sizes"]
)
torch._dynamo.mark_dynamic(prompt_emb, 1)
if attn_mask is None:
attn_mask = self.attn_mask
mask = attn_mask[:, :, pos : pos + prompt_emb.size(1), :]
pos_ids = torch.arange(pos, pos + prompt_emb.size(1), dtype=torch.long)
hidden_BC = self._prefill(prompt_emb, mask, pos_ids, lora)
logits_BV = lm_head(hidden_BC, self.text)
if temperature == 0:
next_token = torch.argmax(logits_BV, dim=-1).unsqueeze(1)
else:
probs = torch.softmax(logits_BV / temperature, dim=-1)
probs = self._apply_top_p(probs, top_p)
next_token = torch.multinomial(probs, num_samples=1)
pos = pos + prompt_emb.size(1)
return logits_BV, hidden_BC, next_token, pos
def _generate_reasoning(
self,
prompt_tokens,
pos,
settings: Optional[TextSamplingSettings] = None,
spatial_refs: Optional[SpatialRefs] = None,
attn_mask: Optional[torch.Tensor] = None,
) -> Tuple[int, str, List[dict]]:
max_tokens = (
settings.get("max_tokens", DEFAULT_MAX_TOKENS)
if settings
else DEFAULT_MAX_TOKENS
)
temperature = (
settings.get("temperature", DEFAULT_TEMPERATURE)
if settings
else DEFAULT_TEMPERATURE
)
lora = (
variant_state_dict(settings["variant"], device=self.device)
if settings is not None and "variant" in settings
else None
)
top_p = settings.get("top_p", DEFAULT_TOP_P) if settings else DEFAULT_TOP_P
eos_id = self.config.tokenizer.answer_id
_, last_hidden_BC, next_token, pos = self._prefill_prompt(
prompt_tokens,
pos,
temperature,
top_p,
spatial_refs,
attn_mask=attn_mask,
lora=lora,
)
text_token_chunks = [[]]
grounding_chunks = [[]]
mask = torch.zeros(1, 1, 2048, device=self.device, dtype=torch.bool)
mask[:, :, :pos] = 1
pos_ids = torch.tensor([pos], device=self.device, dtype=torch.long)
generated_tokens = 0
while (
next_token_id := next_token.item()
) != eos_id and generated_tokens < max_tokens:
if (
next_token_id == self.config.tokenizer.start_ground_points_id
or next_token_id == self.config.tokenizer.end_ground_id
):
text_token_chunks.append([])
grounding_chunks.append([])
text_token_chunks[-1].append(next_token_id)
with torch.inference_mode():
if next_token_id == self.config.tokenizer.coord_id:
coord_logits = decode_coordinate(last_hidden_BC, self.region)
coord = torch.argmax(coord_logits, dim=-1) / coord_logits.size(-1)
grounding_chunks[-1].append(coord.item())
next_emb = encode_coordinate(
coord.to(dtype=coord_logits.dtype), self.region
).unsqueeze(0)
else:
next_emb = text_encoder(next_token, self.text)
mask[:, :, pos], pos_ids[0] = 1, pos
logits_BV, last_hidden_BC = self._decode_one_tok(
next_emb, mask, pos_ids, lora
)
logits_BV[:, self.config.tokenizer.eos_id] = float("-inf")
logits_BV[:, self.config.tokenizer.size_id] = float("-inf")
pos += 1
if temperature == 0:
next_token = torch.argmax(logits_BV, dim=-1).unsqueeze(1) # (1, 1)
else:
probs = torch.softmax(logits_BV / temperature, dim=-1) # (1, V)
probs = self._apply_top_p(probs, top_p)
next_token = torch.multinomial(probs, num_samples=1) # (1, 1)
generated_tokens += 1
text_chunks = [
self.tokenizer.decode(chunk_tokens) for chunk_tokens in text_token_chunks
]
text = "".join(text_chunks)
start_idx = 0
grounding = []
for text_chunk, grounding_chunk in zip(text_chunks, grounding_chunks):
if len(grounding_chunk) > 1:
points = []
for i in range(0, len(grounding_chunk) - (len(grounding_chunk) % 2), 2):
points.append((grounding_chunk[i], grounding_chunk[i + 1]))
grounding.append(
{
"start_idx": start_idx,
"end_idx": start_idx + len(text_chunk),
"points": points,
}
)
start_idx += len(text_chunk)
return pos, text, grounding
def _generate_answer(
self,
prompt_tokens: torch.Tensor,
pos: int,
settings: Optional[TextSamplingSettings] = None,
spatial_refs: Optional[SpatialRefs] = None,
eos_id: Optional[int] = None,
attn_mask: Optional[torch.Tensor] = None,
):
max_tokens = (
settings.get("max_tokens", DEFAULT_MAX_TOKENS)
if settings
else DEFAULT_MAX_TOKENS
)
temperature = (
settings.get("temperature", DEFAULT_TEMPERATURE)
if settings
else DEFAULT_TEMPERATURE
)
top_p = settings.get("top_p", DEFAULT_TOP_P) if settings else DEFAULT_TOP_P
eos_id = eos_id if eos_id is not None else self.config.tokenizer.eos_id
lora = (
variant_state_dict(settings["variant"], device=self.device)
if settings is not None and "variant" in settings
else None
)
_, _, next_token, pos = self._prefill_prompt(
prompt_tokens,
pos,
temperature,
top_p,
spatial_refs,
attn_mask=attn_mask,
lora=lora,
)
def generator(next_token, pos):
mask = torch.zeros(1, 1, 2048, device=self.device, dtype=torch.bool)
mask[:, :, :pos] = 1
pos_ids = torch.tensor([pos], device=self.device, dtype=torch.long)
generated_tokens = 0
# For properly handling token streaming with Unicode
token_cache = []
print_len = 0
while (
next_token_id := next_token.item()
) != eos_id and generated_tokens < max_tokens:
# Add token to our cache
token_cache.append(next_token_id)
# Decode all tokens collected so far
text = self.tokenizer.decode(token_cache)
# After a newline, we flush the cache completely
if text.endswith("\n"):
printable_text = text[print_len:]
token_cache = []
print_len = 0
if printable_text:
yield printable_text
# If the last token is a CJK character, we can safely print it
elif len(text) > 0 and _is_cjk_char(ord(text[-1])):
printable_text = text[print_len:]
print_len += len(printable_text)
if printable_text:
yield printable_text
# Otherwise, only yield up to the last space to avoid cutting words
else:
last_space_idx = text.rfind(" ", print_len)
if last_space_idx >= print_len:
printable_text = text[print_len : last_space_idx + 1]
print_len += len(printable_text)
if printable_text:
yield printable_text
with torch.inference_mode():
next_emb = text_encoder(next_token, self.text)
mask[:, :, pos], pos_ids[0] = 1, pos
logits_BV, _ = self._decode_one_tok(next_emb, mask, pos_ids, lora)
logits_BV[:, self.config.tokenizer.answer_id] = float("-inf")
pos += 1
if temperature == 0:
next_token = torch.argmax(logits_BV, dim=-1).unsqueeze(
1
) # (1, 1)
else:
probs = torch.softmax(logits_BV / temperature, dim=-1) # (1, V)
probs = self._apply_top_p(probs, top_p)
next_token = torch.multinomial(probs, num_samples=1) # (1, 1)
generated_tokens += 1
# Flush any remaining text in the cache
if token_cache:
text = self.tokenizer.decode(token_cache)
printable_text = text[print_len:]
if printable_text:
yield printable_text
return generator(next_token, pos)
def query(
self,
image: Optional[Union[Image.Image, EncodedImage]] = None,
question: str = None,
reasoning: bool = False,
spatial_refs: Optional[SpatialRefs] = None,
stream: bool = False,
settings: Optional[TextSamplingSettings] = None,
):
if self.config.tokenizer.templates["query"] is None:
raise NotImplementedError("Model does not support querying.")
if question is None:
raise ValueError("question must be provided.")
if spatial_refs and image is None:
raise ValueError("spatial_refs can only be used with an image.")
attn_mask = self.attn_mask
if image is not None:
image = self.encode_image(image, settings)
self.load_encoded_image(image)
pos = image.pos
prompt_toks = self.config.tokenizer.templates["query"]["prefix"]
else:
self._setup_caches()
pos = 0
prompt_toks = [
self.config.tokenizer.bos_id
] + self.config.tokenizer.templates["query"]["prefix"]
max_context = self.config.text.max_context
attn_mask = torch.tril(
torch.ones(1, 1, max_context, max_context, dtype=torch.bool)
).to(self.device)
spatial_toks = []
if spatial_refs:
for ref in spatial_refs:
coord_id = self.config.tokenizer.coord_id
size_id = self.config.tokenizer.size_id
if len(ref) == 2:
spatial_toks.extend([coord_id, coord_id])
else:
spatial_toks.extend([coord_id, coord_id, size_id])
prompt_tokens = [
prompt_toks
+ spatial_toks
+ self.tokenizer.encode(question).ids
+ self.config.tokenizer.templates["query"]["suffix"]
]
if reasoning:
prompt_tokens[0] += [self.config.tokenizer.thinking_id]
prompt_tokens = torch.tensor(prompt_tokens, device=self.device)
pos, reasoning_text, reasoning_grounding = self._generate_reasoning(
prompt_tokens, pos, settings, spatial_refs, attn_mask=attn_mask
)
prompt_tokens = [self.config.tokenizer.templates["query"]["suffix"]]
reasoning_dict = {
"reasoning": {"text": reasoning_text, "grounding": reasoning_grounding}
}
else:
prompt_tokens[0] += self.config.tokenizer.templates["query"]["suffix"]
reasoning_dict = {}
prompt_tokens = torch.tensor(prompt_tokens, device=self.device)
def generator():
for token in self._generate_answer(
prompt_tokens, pos, settings, spatial_refs, attn_mask=attn_mask
):
yield token
if stream:
return {**reasoning_dict, "answer": generator()}
else:
return {**reasoning_dict, "answer": "".join(list(generator()))}
def load_encoded_image(self, encoded_image: EncodedImage):
for b, (k, v) in zip(self.text.blocks, encoded_image.caches):
b.kv_cache.k_cache[:, :, : k.size(2), :] = k
b.kv_cache.v_cache[:, :, : v.size(2), :] = v
def caption(
self,
image: Union[Image.Image, EncodedImage],
length: Literal["normal", "short", "long"] = "normal",
stream: bool = False,
settings: Optional[TextSamplingSettings] = None,
):
if self.config.tokenizer.templates["caption"] is None:
raise NotImplementedError("Model does not support captioning.")
if length not in self.config.tokenizer.templates["caption"]:
raise ValueError(f"Model does not support caption length '{length}'.")
image = self.encode_image(image, settings)
self.load_encoded_image(image)
prompt_tokens = torch.tensor(
[self.config.tokenizer.templates["caption"][length]], device=self.device
)
def generator():
for token in self._generate_answer(prompt_tokens, image.pos, settings):
yield token
if stream:
return {"caption": generator()}
else:
return {"caption": "".join(list(generator()))}
def _generate_points(
self,
hidden: torch.Tensor,
next_token: torch.Tensor,
pos: int,
include_size: bool = True,
max_objects: int = DEFAULT_MAX_OBJECTS,
lora: Optional[dict] = None,
):
out = []
mask = torch.zeros(1, 1, 2048, device=self.device, dtype=torch.bool)
mask[:, :, :pos] = 1
pos_ids = torch.tensor([pos], device=self.device, dtype=torch.long)
with torch.inference_mode():
while (
next_token.item() != self.config.tokenizer.eos_id
and len(out) < max_objects
):
x_logits = decode_coordinate(hidden, self.region)
x_center = torch.argmax(x_logits, dim=-1) / x_logits.size(-1)
next_emb = encode_coordinate(
x_center.to(dtype=x_logits.dtype), self.region
).unsqueeze(0)
# Decode y-coordinate
mask[:, :, pos], pos_ids[0] = 1, pos
_, hidden = self._decode_one_tok(next_emb, mask, pos_ids, lora)
pos += 1
y_logits = decode_coordinate(hidden, self.region)
y_center = torch.argmax(y_logits, dim=-1) / y_logits.size(-1)
next_emb = encode_coordinate(
y_center.to(dtype=y_logits.dtype), self.region
).unsqueeze(0)
# Decode size
if include_size:
mask[:, :, pos], pos_ids[0] = 1, pos
logits, hidden = self._decode_one_tok(next_emb, mask, pos_ids, lora)
pos += 1
size_logits = decode_size(hidden, self.region)
# Get bin indices from the logits
w_bin = torch.argmax(size_logits[0], dim=-1)
h_bin = torch.argmax(size_logits[1], dim=-1)
# Convert from bin indices to actual size values using the inverse of the log-scale mapping
# Formula: size = 2^((bin / 1023.0) * 10.0 - 10.0)
w = torch.pow(2.0, (w_bin.float() / 1023.0) * 10.0 - 10.0)
h = torch.pow(2.0, (h_bin.float() / 1023.0) * 10.0 - 10.0)
next_emb = (
encode_size(
torch.tensor(
[w, h], device=self.device, dtype=size_logits.dtype
),
self.region,
)
.unsqueeze(0)
.unsqueeze(0)
)
# Add object
out.append(
{
"x_min": x_center.item() - w.item() / 2,
"y_min": y_center.item() - h.item() / 2,
"x_max": x_center.item() + w.item() / 2,
"y_max": y_center.item() + h.item() / 2,
}
)
else:
out.append({"x": x_center.item(), "y": y_center.item()})
# Decode next token (x-coordinate, or eos)
mask[:, :, pos], pos_ids[0] = 1, pos
logits, hidden = self._decode_one_tok(next_emb, mask, pos_ids, lora)
pos += 1
next_token = torch.argmax(logits, dim=-1)
return out
def detect(
self,
image: Union[Image.Image, EncodedImage],
object: str,
settings: Optional[ObjectSamplingSettings] = None,
):
if self.config.tokenizer.templates["detect"] is None:
raise NotImplementedError("Model does not support object detection.")
image = self.encode_image(image, settings)
self.load_encoded_image(image)
prompt_tokens = torch.tensor(
[
self.config.tokenizer.templates["detect"]["prefix"]
+ self.tokenizer.encode(" " + object).ids
+ self.config.tokenizer.templates["detect"]["suffix"]
],
device=self.device,
)
lora = (
variant_state_dict(settings["variant"], device=self.device)
if settings is not None and "variant" in settings
else None
)
_, hidden, next_token, pos = self._prefill_prompt(
prompt_tokens, image.pos, temperature=0, top_p=0, lora=lora
)
hidden = hidden[:, -1:, :]
max_objects = (
settings.get("max_objects", DEFAULT_MAX_OBJECTS)
if settings
else DEFAULT_MAX_OBJECTS
)
objects = self._generate_points(
hidden,
next_token,
pos,
include_size=True,
max_objects=max_objects,
lora=lora,
)
return {"objects": objects}
def point(
self,
image: Union[Image.Image, EncodedImage],
object: str,
settings: Optional[ObjectSamplingSettings] = None,
):
if self.config.tokenizer.templates["point"] is None:
raise NotImplementedError("Model does not support pointing.")
image = self.encode_image(image, settings)
self.load_encoded_image(image)
prompt_tokens = torch.tensor(
[
self.config.tokenizer.templates["point"]["prefix"]
+ self.tokenizer.encode(" " + object).ids
+ self.config.tokenizer.templates["point"]["suffix"]
],
device=self.device,
)
lora = (
variant_state_dict(settings["variant"], device=self.device)
if settings is not None and "variant" in settings
else None
)
_, hidden, next_token, pos = self._prefill_prompt(
prompt_tokens, image.pos, temperature=0, top_p=0, lora=lora
)
hidden = hidden[:, -1:, :]
max_objects = (
settings.get("max_objects", DEFAULT_MAX_OBJECTS)
if settings
else DEFAULT_MAX_OBJECTS
)
objects = self._generate_points(
hidden,
next_token,
pos,
include_size=False,
max_objects=max_objects,
lora=lora,
)
return {"points": objects}
# === BEGIN: Batched multi-label detection additions ===
def _load_encoded_image_batched(self, encoded_image, batch_size: int):
"""
Clone single-image KV caches into a batch-B cache so we can decode B labels in parallel.
"""
for b, (k, v) in zip(self.text.blocks, encoded_image.caches):
T = k.size(2)
# Allocate new [B, n_kv_heads, T_max, head_dim] caches if needed
if b.kv_cache.k_cache.size(0) != batch_size:
new_k = b.kv_cache.k_cache.new_zeros((batch_size,) + b.kv_cache.k_cache.shape[1:])
new_v = b.kv_cache.v_cache.new_zeros((batch_size,) + b.kv_cache.v_cache.shape[1:])
b.kv_cache.k_cache = new_k
b.kv_cache.v_cache = new_v
# Copy current prefix from the encoded image into all B rows
b.kv_cache.k_cache[:, :, :T, :] = k.expand(batch_size, -1, -1, -1)
b.kv_cache.v_cache[:, :, :T, :] = v.expand(batch_size, -1, -1, -1)
def _prefill_prompt_batched(self, labels, pos: int, lora=None, temperature: float = 0.0, top_p: float = 0.0):
"""
Build detect prompts for many labels, pad to same length, prefill once as a batch,
then return (last_hidden per row, next_token per row, pos per row).
"""
import torch
from .text import text_encoder, lm_head
tpl = self.config.tokenizer.templates["detect"]
if tpl is None:
raise NotImplementedError("Model does not support object detection (no detect template).")
rows, lens = [], []
for lab in labels:
ids = tpl["prefix"] + self.tokenizer.encode(" " + lab).ids + tpl["suffix"]
rows.append(torch.tensor(ids, device=self.device, dtype=torch.long))
lens.append(len(ids))
B = len(rows); T = max(lens)
eos = self.config.tokenizer.eos_id
# Pad with eos so we can prefill as a single batch
prompt_ids = torch.full((B, T), eos, device=self.device, dtype=torch.long)
for i, ids in enumerate(rows):
prompt_ids[i, : ids.numel()] = ids
# Embed & prefill once
prompt_emb = text_encoder(prompt_ids, self.text) # (B, T, C)
import torch
torch._dynamo.mark_dynamic(prompt_emb, 1) # allow variable T
attn_mask = self.attn_mask
mask = attn_mask[:, :, pos : pos + T, :].expand(B, -1, -1, -1).contiguous()
pos_ids = torch.arange(pos, pos + T, device=self.device, dtype=torch.long)
hidden_BTC = self._prefill(prompt_emb, mask, pos_ids, lora) # (B, T, C)
logits_BTV = lm_head(hidden_BTC, self.text) # (B, T, V)
# Take the last *real* token per row (ignore padding positions)
idx = (torch.tensor(lens, device=self.device, dtype=torch.long) - 1).clamp_min(0)
last_hidden = hidden_BTC[torch.arange(B, device=self.device), idx][:, None, :] # (B, 1, C)
last_logits = logits_BTV[torch.arange(B, device=self.device), idx] # (B, V)
if temperature == 0.0:
next_token = last_logits.argmax(dim=-1, keepdim=True) # (B, 1)
else:
probs = torch.softmax(last_logits / temperature, dim=-1)
probs = self._apply_top_p(probs, top_p)
next_token = torch.multinomial(probs, num_samples=1) # (B, 1)
pos_vec = torch.tensor([pos], device=self.device, dtype=torch.long).repeat(B) + torch.tensor(lens, device=self.device)
return last_hidden, next_token, pos_vec # (B,1,C), (B,1), (B,)
def _generate_points_batched(self, hidden, next_token, pos_vec, include_size: bool = True, max_objects: int = 50, lora=None):
"""
Vectorized version of _generate_points() that decodes x -> y -> size -> next-token
for all rows in the batch simultaneously.
Returns: list-of-lists of dicts, length B.
"""
import torch
from .region import decode_coordinate, encode_coordinate, decode_size, encode_size
B = hidden.size(0)
device = self.device
out = [[] for _ in range(B)]
eos_id = self.config.tokenizer.eos_id
# Per-row attention/masking state
max_ctx = self.config.text.max_context
mask = torch.zeros(B, 1, max_ctx, device=device, dtype=torch.bool)
for i in range(B):
mask[i, :, : int(pos_vec[i].item())] = 1
pos_ids = pos_vec.clone()
alive = torch.ones(B, dtype=torch.bool, device=device)
counts = torch.zeros(B, dtype=torch.int32, device=device)
with torch.inference_mode():
while alive.any() and (counts < max_objects).any():
# --- x coordinate (from current hidden) ---
x_logits = decode_coordinate(hidden, self.region) # (B, 1, 1024) or (B, 1024)
if x_logits.dim() == 3:
x_logits = x_logits.squeeze(1) # (B, 1024)
x_bin = x_logits.argmax(dim=-1).to(torch.float32) # (B,)
x_center = x_bin / float(x_logits.size(-1)) # normalize to [0,1]
x_emb = encode_coordinate(x_center.to(dtype=x_logits.dtype), self.region).unsqueeze(1) # (B,1,C)
# step: decode to get hidden for y
for i in range(B):
if alive[i]:
mask[i, :, pos_ids[i]] = 1
logits, hidden = self._decode_one_tok(x_emb, mask, pos_ids, lora)
pos_ids = pos_ids + alive.to(torch.long)
# --- y coordinate ---
y_logits = decode_coordinate(hidden, self.region)
if y_logits.dim() == 3:
y_logits = y_logits.squeeze(1) # (B, 1024)
y_bin = y_logits.argmax(dim=-1).to(torch.float32)
y_center = y_bin / float(y_logits.size(-1))
y_emb = encode_coordinate(y_center.to(dtype=y_logits.dtype), self.region).unsqueeze(1)
# step: decode to get hidden for size (or eos)
for i in range(B):
if alive[i]:
mask[i, :, pos_ids[i]] = 1
logits, hidden = self._decode_one_tok(y_emb, mask, pos_ids, lora)
pos_ids = pos_ids + alive.to(torch.long)
if include_size:
# --- size logits (batched) ---
size_logits = decode_size(hidden, self.region) # tuple/list [w_logits, h_logits] shaped (B,1,1024)
w_logits, h_logits = size_logits[0].squeeze(1), size_logits[1].squeeze(1) # (B,1024), (B,1024)
w_bin = w_logits.argmax(dim=-1).to(torch.float32)
h_bin = h_logits.argmax(dim=-1).to(torch.float32)
# Convert from log-scale bin to size in [0,1]
w = torch.pow(2.0, (w_bin / 1023.0) * 10.0 - 10.0)
h = torch.pow(2.0, (h_bin / 1023.0) * 10.0 - 10.0)
size_emb = encode_size(torch.stack([w, h], dim=0), self.region).transpose(0,1).unsqueeze(1) # (B,1,C)
# Commit boxes for alive rows
for i in range(B):
if not alive[i]:
continue
out[i].append({
"x_min": (x_center[i] - w[i] / 2).item(),
"y_min": (y_center[i] - h[i] / 2).item(),
"x_max": (x_center[i] + w[i] / 2).item(),
"y_max": (y_center[i] + h[i] / 2).item(),
})
# step: decode "next token" to decide continuation
for i in range(B):
if alive[i]:
mask[i, :, pos_ids[i]] = 1
logits, hidden = self._decode_one_tok(size_emb, mask, pos_ids, lora)
pos_ids = pos_ids + alive.to(torch.long)
next_tok = logits.argmax(dim=-1).squeeze(-1) # (B,)
else:
# Points mode (no size)
for i in range(B):
if not alive[i]:
continue
out[i].append({"x": x_center[i].item(), "y": y_center[i].item()})
# step: decode next token from y_emb
for i in range(B):
if alive[i]:
mask[i, :, pos_ids[i]] = 1
logits, hidden = self._decode_one_tok(y_emb, mask, pos_ids, lora)
pos_ids = pos_ids + alive.to(torch.long)
next_tok = logits.argmax(dim=-1).squeeze(-1)
# Update which rows are done and count
finished_now = (next_tok == eos_id) | (counts >= max_objects - 1)
counts = counts + (~finished_now & alive).to(counts.dtype)
alive &= ~finished_now
return out
def detect_multi(self, image, objects, settings=None):
"""
Parallel multi-label detection.
Args:
image: PIL.Image or EncodedImage
objects: list[str], e.g. ["person", "car"]
settings: Optional[ObjectSamplingSettings], honors "max_objects" and "variant"
Returns:
{"objects": {label: [box_dict, ...]}}
"""
import torch
from typing import Optional, List, Union
if self.config.tokenizer.templates["detect"] is None:
raise NotImplementedError("Model does not support object detection.")
settings = settings or {}
# Encode once; reuse caches
image = self.encode_image(image, settings)
B = len(objects)
self._load_encoded_image_batched(image, B)
# Optional LoRA variant (same as detect())
lora = None
if "variant" in settings:
from .lora import variant_state_dict
lora = variant_state_dict(settings["variant"], device=self.device)
# Prefill all prompts at once
last_hidden, next_token, pos_vec = self._prefill_prompt_batched(
objects, image.pos, lora=lora, temperature=0.0, top_p=0.0
)
# Batched decode loop
max_objects = settings.get("max_objects", 50)
det_lists = self._generate_points_batched(
last_hidden, next_token, pos_vec,
include_size=True, max_objects=max_objects, lora=lora
)
# Map back to labels and add "label" tags
res = {}
for lab, lst in zip(objects, det_lists):
for d in lst:
d["label"] = lab
res[lab] = lst
return {"objects": res}
# === END: Batched multi-label detection additions ===
def _detect_gaze(
self,
image: EncodedImage,
source: Tuple[float, float],
force_detect: bool = False,
):
with torch.inference_mode():
before_emb = text_encoder(
torch.tensor(
[self.tokenizer.encode("\n\nPoint:").ids], device=self.device
),
self.text,
)
after_emb = text_encoder(
torch.tensor(
[self.tokenizer.encode(" gaze\n\n").ids], device=self.device
),
self.text,
)
x_emb = encode_coordinate(
torch.tensor([[[source[0]]]], device=self.device, dtype=torch.bfloat16),
self.region,
)
y_emb = encode_coordinate(
torch.tensor([[[source[1]]]], device=self.device, dtype=torch.bfloat16),
self.region,
)
prompt_emb = torch.cat([before_emb, x_emb, y_emb, after_emb], dim=1)
self.load_encoded_image(image)
mask = self.attn_mask[:, :, image.pos : image.pos + prompt_emb.size(1), :]
pos_ids = torch.arange(
image.pos, image.pos + prompt_emb.size(1), dtype=torch.long
)
hidden = self._prefill(prompt_emb, mask, pos_ids, lora=None)
logits = lm_head(hidden, self.text)
next_token = torch.argmax(logits, dim=-1)
pos = image.pos + prompt_emb.size(1)
hidden = hidden[:, -1:, :]
if force_detect:
next_token = torch.tensor([[0]], device=self.device)
if next_token.item() == self.config.tokenizer.eos_id:
return None
gaze = self._generate_points(
hidden, next_token, pos, include_size=False, max_objects=1
)
return gaze[0]
def detect_gaze(
self,
image: Union[Image.Image, EncodedImage],
eye: Optional[Tuple[float, float]] = None,
face: Optional[Dict[str, float]] = None,
unstable_settings: Dict[str, Any] = {},
):
if "force_detect" in unstable_settings:
force_detect = unstable_settings["force_detect"]
else:
force_detect = False
if "prioritize_accuracy" in unstable_settings:
prioritize_accuracy = unstable_settings["prioritize_accuracy"]
else:
prioritize_accuracy = False
if not prioritize_accuracy:
if eye is None:
raise ValueError("eye must be provided when prioritize_accuracy=False")
image = self.encode_image(image)
return {"gaze": self._detect_gaze(image, eye, force_detect=force_detect)}
else:
if (
not isinstance(image, Image.Image)
and "flip_enc_img" not in unstable_settings
):
raise ValueError(
"image must be a PIL Image when prioritize_accuracy=True, "
"or flip_enc_img must be provided"
)
if face is None:
raise ValueError("face must be provided when prioritize_accuracy=True")
encoded_image = self.encode_image(image)
if (
isinstance(image, Image.Image)
and "flip_enc_img" not in unstable_settings
):
flipped_pil = image.copy()
flipped_pil = flipped_pil.transpose(method=Image.FLIP_LEFT_RIGHT)
encoded_flipped_image = self.encode_image(flipped_pil)
else:
encoded_flipped_image = unstable_settings["flip_enc_img"]
N = 10
detections = [
self._detect_gaze(
encoded_image,
(
random.uniform(face["x_min"], face["x_max"]),
random.uniform(face["y_min"], face["y_max"]),
),
force_detect=force_detect,
)
for _ in range(N)
]
detections = [
(gaze["x"], gaze["y"]) for gaze in detections if gaze is not None
]
flipped_detections = [
self._detect_gaze(
encoded_flipped_image,
(
1 - random.uniform(face["x_min"], face["x_max"]),
random.uniform(face["y_min"], face["y_max"]),
),
force_detect=force_detect,
)
for _ in range(N)
]
detections.extend(
[
(1 - gaze["x"], gaze["y"])
for gaze in flipped_detections
if gaze is not None
]
)
if len(detections) < N:
return {"gaze": None}
detections = remove_outlier_points(detections)
mean_gaze = (
sum(gaze[0] for gaze in detections) / len(detections),
sum(gaze[1] for gaze in detections) / len(detections),
)
return {"gaze": {"x": mean_gaze[0], "y": mean_gaze[1]}}
def _is_cjk_char(cp):
"""Checks whether CP is the codepoint of a CJK character."""
# This defines a "chinese character" as anything in the CJK Unicode block:
# https://en.wikipedia.org/wiki/CJK_Unified_Ideographs_(Unicode_block)
if (
(cp >= 0x4E00 and cp <= 0x9FFF)
or (cp >= 0x3400 and cp <= 0x4DBF)
or (cp >= 0x2F800 and cp <= 0x2FA1F)
):
return True
return False