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from typing import List, Sequence
import math
import os
from pathlib import Path
import safetensors
import sys
import time
import json
import torch
import transformers
from libinfinicore_infer import (
JiugeModel,
JiugeMetaCStruct,
JiugeWeightsCStruct,
DataType,
DeviceType,
KVCacheCStruct,
)
from infer_task import InferTask, KVCache
from ctypes import POINTER, c_float, c_int, c_uint, c_void_p, byref
torch.set_default_device("cpu")
class LlamaWeightsNaming:
def input_embd(self):
return "model.embed_tokens.weight"
def output_norm(self):
return "model.norm.weight"
def output_embd(self):
return "lm_head.weight"
def attn_norm(self, i):
return f"model.layers.{i}.input_layernorm.weight"
def attn_q(self, i):
return f"model.layers.{i}.self_attn.q_proj.weight"
def attn_k(self, i):
return f"model.layers.{i}.self_attn.k_proj.weight"
def attn_v(self, i):
return f"model.layers.{i}.self_attn.v_proj.weight"
def attn_o(self, i):
return f"model.layers.{i}.self_attn.o_proj.weight"
def attn_q_b(self, i):
return f"model.layers.{i}.self_attn.q_proj.bias"
def attn_k_b(self, i):
return f"model.layers.{i}.self_attn.k_proj.bias"
def attn_v_b(self, i):
return f"model.layers.{i}.self_attn.v_proj.bias"
def ffn_norm(self, i):
return f"model.layers.{i}.post_attention_layernorm.weight"
def gate(self, i):
return f"model.layers.{i}.mlp.gate_proj.weight"
def up(self, i):
return f"model.layers.{i}.mlp.up_proj.weight"
def down(self, i):
return f"model.layers.{i}.mlp.down_proj.weight"
def match(state_dict):
return (
"model.norm.weight" in state_dict
and "model.layers.0.self_attn.q_proj.weight" in state_dict
)
class JiugeMetaFromLlama(JiugeMetaCStruct):
def __init__(self, config, dtype=torch.float16, max_tokens=None):
if dtype == torch.float16:
dt_ = DataType.INFINI_DTYPE_F16
elif dtype == torch.float32:
dt_ = DataType.INFINI_DTYPE_F32
elif dtype == torch.bfloat16:
dt_ = DataType.INFINI_DTYPE_BF16
else:
dt_ = DataType.INFINI_DTYPE_F16
self.scale_input = 1.0
self.scale_output = 1.0
self.scale_o = 1.0
self.scale_down = 1.0
if (
config["model_type"] in ["fm9g", "minicpm"]
and "scale_emb" in config
and "scale_depth" in config
and "dim_model_base" in config
):
self.scale_input = config["scale_emb"]
self.scale_output = config["hidden_size"] // config["dim_model_base"]
self.scale_o = config["scale_depth"] / math.sqrt(
config["num_hidden_layers"]
)
self.scale_down = config["scale_depth"] / math.sqrt(
config["num_hidden_layers"]
)
super().__init__(
dt_logits=dt_,
nlayer=config["num_hidden_layers"],
d=config["hidden_size"],
nh=config["num_attention_heads"],
nkvh=(
config["num_key_value_heads"]
if "num_key_value_heads" in config
else config["num_attention_heads"]
),
dh=config["hidden_size"] // config["num_attention_heads"],
di=config["intermediate_size"],
dctx=(
config["max_position_embeddings"] if max_tokens is None else max_tokens
),
dvoc=config["vocab_size"],
epsilon=config["rms_norm_eps"],
theta=(config["rope_theta"] if "rope_theta" in config else 100000.0),
end_token=2,
)
self.torch_dtype_logits = dtype
class JiugeWeightsImpl(JiugeWeightsCStruct):
def __init__(
self,
meta,
naming,
state_dict,
torch_dt_mat=torch.float16,
torch_dt_norm=torch.float32,
ndev=1,
transpose_weight=True,
):
nlayer = meta.nlayer
nh = meta.nh
nkvh = meta.nkvh
dh = meta.dh
d = meta.d
di = meta.di
scale_input = meta.scale_input
scale_output = meta.scale_output
scale_o = meta.scale_o
scale_down = meta.scale_down
assert nh % nkvh == 0
assert nh % ndev == 0
assert nkvh % ndev == 0
assert di % ndev == 0
torch_dt_logits = meta.torch_dtype_logits
if torch_dt_mat == torch.float16:
self.dt_mat = DataType.INFINI_DTYPE_F16
elif torch_dt_mat == torch.float32:
self.dt_mat = DataType.INFINI_DTYPE_F32
elif torch_dt_mat == torch.bfloat16:
self.dt_mat = DataType.INFINI_DTYPE_BF16
else:
raise ValueError("Unsupported proj weight data type")
if torch_dt_norm == torch.float16:
self.dt_norm = DataType.INFINI_DTYPE_F16
elif torch_dt_norm == torch.float32:
self.dt_norm = DataType.INFINI_DTYPE_F32
elif torch_dt_norm == torch.bfloat16:
self.dt_norm = DataType.INFINI_DTYPE_BF16
else:
raise ValueError("Unsupported norm weight data type")
input_embd_naming = (
naming.input_embd()
if naming.input_embd() in state_dict
else naming.output_embd()
)
output_embd_naming = (
naming.output_embd()
if naming.output_embd() in state_dict
else naming.input_embd()
)
self.transpose_linear_weights = 1 if transpose_weight else 0
self.nlayer = nlayer
self.input_embd_tensor = (
state_dict[input_embd_naming].to(torch_dt_logits) * scale_input
)
self.input_embd = self.input_embd_tensor.data_ptr()
self.output_norm_tensor = (
state_dict[naming.output_norm()].to(torch_dt_norm) * scale_output
)
self.output_norm = self.output_norm_tensor.data_ptr()
self.output_embd_tensor = state_dict[output_embd_naming].to(torch_dt_mat)
if not transpose_weight:
self.output_embd_tensor = self.output_embd_tensor.transpose(
0, 1
).contiguous()
self.output_embd = self.output_embd_tensor.data_ptr()
self.attn_norm_tensors = [
state_dict[naming.attn_norm(i)].to(torch_dt_norm) for i in range(nlayer)
]
self.attn_norm_ptrs = [
self.attn_norm_tensors[i].data_ptr() for i in range(nlayer)
]
self.attn_norm = (c_void_p * nlayer)(*self.attn_norm_ptrs)
def qkv_slices(_i):
_Q = (
state_dict[naming.attn_q(_i)]
.reshape([nh, 2, dh // 2, d])
.transpose(1, 2)
)
_K = (
state_dict[naming.attn_k(_i)]
.reshape([nkvh, 2, dh // 2, d])
.transpose(1, 2)
)
_V = state_dict[naming.attn_v(_i)].reshape([nkvh, dh // 2, 2, d])
_result = []
_nh = nh // ndev
_nkvh = nkvh // ndev
for _idev in range(ndev):
_result.append(_Q[_idev * _nh : (_idev + 1) * _nh, :, :, :])
_result.append(_K[_idev * _nkvh : (_idev + 1) * _nkvh, :, :, :])
_result.append(_V[_idev * _nkvh : (_idev + 1) * _nkvh, :, :])
return _result
self.qkv_tensor = [
torch.concat(qkv_slices(i)).to(torch_dt_mat) for i in range(nlayer)
]
if not transpose_weight:
for i in range(nlayer):
self.qkv_tensor[i] = (
self.qkv_tensor[i]
.reshape(ndev, (nh + 2 * nkvh) // ndev * dh, d)
.transpose(1, 2)
.contiguous()
)
self.qkv_tensor_ptrs = [self.qkv_tensor[i].data_ptr() for i in range(nlayer)]
self.attn_qkv = (c_void_p * nlayer)(*self.qkv_tensor_ptrs)
def qkv_b_slices(_i):
_QB = (
state_dict[naming.attn_q_b(_i)]
.reshape([nh, 2, dh // 2])
.transpose(1, 2)
)
_KB = (
state_dict[naming.attn_k_b(_i)]
.reshape([nkvh, 2, dh // 2])
.transpose(1, 2)
)
_VB = state_dict[naming.attn_v_b(_i)].reshape([nkvh, dh // 2, 2])
_result = []
_nh = nh // ndev
_nkvh = nkvh // ndev
for _idev in range(ndev):
_result.append(_QB[_idev * _nh : (_idev + 1) * _nh, :, :].flatten())
_result.append(_KB[_idev * _nkvh : (_idev + 1) * _nkvh, :, :].flatten())
_result.append(_VB[_idev * _nkvh : (_idev + 1) * _nkvh, :, :].flatten())
return _result
if naming.attn_q_b(0) in state_dict:
self.qkv_b_tensors = [
torch.concat(qkv_b_slices(i)).to(torch_dt_logits) for i in range(nlayer)
]
self.qkv_b_tensor_ptrs = [
self.qkv_b_tensors[i].data_ptr() for i in range(nlayer)
]
self.attn_qkv_b = (c_void_p * nlayer)(*self.qkv_b_tensor_ptrs)
else:
self.attn_qkv_b = None
self.attn_o_tensor = [
(
state_dict[naming.attn_o(i)]
.to(torch_dt_mat)
.reshape([d, ndev, nh // ndev * dh])
.transpose(0, 1)
.contiguous()
if transpose_weight
else state_dict[naming.attn_o(i)]
.transpose(0, 1)
.to(torch_dt_mat)
.contiguous()
)
* scale_o
for i in range(nlayer)
]
self.attn_o_ptrs = [self.attn_o_tensor[i].data_ptr() for i in range(nlayer)]
self.attn_o = (c_void_p * nlayer)(*self.attn_o_ptrs)
self.ffn_norm_tensors = [
state_dict[naming.ffn_norm(i)].to(torch_dt_norm) for i in range(nlayer)
]
self.ffn_norm_ptrs = [
self.ffn_norm_tensors[i].data_ptr() for i in range(nlayer)
]
self.ffn_norm = (c_void_p * nlayer)(*self.ffn_norm_ptrs)
def gate_up_slices(_i):
_result = []
_di = di // ndev
for _idev in range(ndev):
_start = _idev * _di
_end = (_idev + 1) * _di
_result.append(state_dict[naming.gate(_i)][_start:_end, :])
_result.append(state_dict[naming.up(_i)][_start:_end, :])
return _result
self.gate_up_tensors = [
torch.concat(gate_up_slices(i)).to(torch_dt_mat) for i in range(nlayer)
]
if not transpose_weight:
for i in range(nlayer):
self.gate_up_tensors[i] = (
self.gate_up_tensors[i]
.reshape(ndev, 2 * di // ndev, d)
.transpose(1, 2)
.contiguous()
)
self.gate_up_ptrs = [self.gate_up_tensors[i].data_ptr() for i in range(nlayer)]
self.ffn_gate_up = (c_void_p * nlayer)(*self.gate_up_ptrs)
self.ffn_down_tensor = [
(
state_dict[naming.down(i)]
.to(torch_dt_mat)
.reshape([d, ndev, di // ndev])
.transpose(0, 1)
.contiguous()
if transpose_weight
else state_dict[naming.down(i)]
.transpose(0, 1)
.to(torch_dt_mat)
.contiguous()
)
* scale_down
for i in range(nlayer)
]
self.ffn_down_ptrs = [self.ffn_down_tensor[i].data_ptr() for i in range(nlayer)]
self.ffn_down = (c_void_p * nlayer)(*self.ffn_down_ptrs)
class JiugeBatchedTask:
def __init__(self, tasks: List[InferTask]):
self.tasks = tasks
self.nreq = len(tasks)
# Precompute fields
token_lists = [t.tokens for t in tasks]
self.req_lens_list = [len(toks) for toks in token_lists]
self.req_pos_list = [t.pos for t in tasks]
self.kv_cache_ptrs = [t.kvcache().data() for t in tasks]
self.temperaturas_list = [t.temperature for t in tasks]
self.topks_list = [t.topk for t in tasks]
self.topps_list = [t.topp for t in tasks]
# Flatten token lists
flat_tokens = [tok for toks in token_lists for tok in toks]
self.ntok = len(flat_tokens)
# Convert to ctypes arrays in one pass
self.tokens = (c_uint * self.ntok)(*flat_tokens)
self.req_lens = (c_uint * self.nreq)(*self.req_lens_list)
self.req_pos = (c_uint * self.nreq)(*self.req_pos_list)
self.kv_caches = (POINTER(KVCacheCStruct) * self.nreq)(*self.kv_cache_ptrs)
self.temperaturas = (c_float * self.nreq)(*self.temperaturas_list)
self.topks = (c_uint * self.nreq)(*self.topks_list)
self.topps = (c_float * self.nreq)(*self.topps_list)
def input_args(self):
return (
self.tokens,
self.ntok,
self.req_lens,
self.nreq,
self.req_pos,
self.kv_caches,
self.temperaturas,
self.topks,
self.topps,
)
class JiugeForCauslLM:
def __init__(
self, model_dir_path, device=DeviceType.DEVICE_TYPE_CPU, ndev=1, max_tokens=None
):
def load_all_safetensors_from_dir(dir_path_: str):
tensors_ = {}
dir_path_ = Path(dir_path_)
for file in sorted(dir_path_.glob("*.safetensors")):
data_ = safetensors.safe_open(file, "pt")
for name_ in data_.keys():
tensors_[name_] = data_.get_tensor(name_)
return tensors_
print("Loading model weights to host...")
load_start_time = time.time()
with open(os.path.join(model_dir_path, "config.json"), "r") as f:
config = json.load(f)
self.config = config
eos_token_id = self.config["eos_token_id"]
self.eos_token_id = (
[eos_token_id] if type(eos_token_id) == int else eos_token_id
)
transpose_weight = (
device != DeviceType.DEVICE_TYPE_ASCEND
) # y = xW is faster than y=xW^T on Ascend
self.jiuge_model = JiugeModel()
if "llama" == config["model_type"]:
model = (
transformers.LlamaForCausalLM.from_pretrained(model_dir_path)
.cpu()
.half()
)
self.meta = JiugeMetaFromLlama(config, max_tokens=max_tokens)
self.tokenizer = transformers.AutoTokenizer.from_pretrained(model_dir_path)
self.weights = JiugeWeightsImpl(
self.meta,
LlamaWeightsNaming(),
model.state_dict(),
ndev=ndev,
transpose_weight=transpose_weight,
)
elif "fm9g" == config["model_type"] or "minicpm" == config["model_type"]:
if any(
file.suffix == ".safetensors" for file in Path(model_dir_path).iterdir()
):
state_dict = load_all_safetensors_from_dir(model_dir_path)
else:
state_dict = torch.load(
os.path.join(model_dir_path, "pytorch_model.bin"),
weights_only=True,
map_location="cpu",
)
if LlamaWeightsNaming.match(state_dict):
self.meta = JiugeMetaFromLlama(config, max_tokens=max_tokens)
self.weights = JiugeWeightsImpl(
self.meta,
LlamaWeightsNaming(),
state_dict,
ndev=ndev,
transpose_weight=transpose_weight,
)
self.tokenizer = transformers.AutoTokenizer.from_pretrained(
model_dir_path, trust_remote_code=True
)
else:
raise ValueError("Unsupported weight naming")
elif "fm9g7b" == config["model_type"]:
if any(
file.suffix == ".safetensors" for file in Path(model_dir_path).iterdir()
):
state_dict = load_all_safetensors_from_dir(model_dir_path)
else:
state_dict = torch.load(
os.path.join(model_dir_path, "pytorch_model.bin"),
weights_only=True,
map_location="cpu",
)
if LlamaWeightsNaming.match(state_dict):
self.meta = JiugeMetaFromLlama(config, max_tokens=max_tokens)
self.weights = JiugeWeightsImpl(
self.meta,
LlamaWeightsNaming(),
state_dict,
ndev=ndev,
transpose_weight=transpose_weight,
)
self.tokenizer = transformers.AutoTokenizer.from_pretrained(
model_dir_path, trust_remote_code=True
)
else:
raise ValueError("Unsupported weight naming")
elif "qwen2" == config["model_type"]:
state_dict = load_all_safetensors_from_dir(model_dir_path)
if LlamaWeightsNaming.match(state_dict):
self.meta = JiugeMetaFromLlama(config, max_tokens=max_tokens)
self.weights = JiugeWeightsImpl(
self.meta,
LlamaWeightsNaming(),
state_dict,
ndev=ndev,
transpose_weight=transpose_weight,
)
self.tokenizer = transformers.AutoTokenizer.from_pretrained(
model_dir_path
)
else:
raise ValueError("Unsupported model architecture")
load_end_time = time.time()
print(f"Time used: {load_end_time - load_start_time:.3f}s")
print(f"Creating model on {ndev} devices...")
load_start_time = time.time()
self.dev_ids = (c_int * ndev)(*[i for i in range(ndev)])
self.ndev = ndev
self.device = device
self.model_instance = self.jiuge_model.create_model(
byref(self.meta),
byref(self.weights),
device,
ndev,
self.dev_ids,
)
load_end_time = time.time()
print(f"Time used: {load_end_time - load_start_time:.3f}s")
def max_context_len(self):
return self.meta.dctx
def create_kv_cache(self):
return self.jiuge_model.create_kv_cache(
self.meta.nlayer,
self.meta.dctx,
self.meta.nkvh,
self.meta.dh,
self.meta.dh,
self.meta.dt_logits,
self.device,
self.dev_ids,
self.ndev,
)
def drop_kv_cache(self, kv_cache):
self.jiuge_model.drop_kv_cache(kv_cache)
def batch_infer_one_round(self, tasks: List[InferTask]):
output = (c_uint * len(tasks))()
batch_inputs = JiugeBatchedTask(tasks)
self.jiuge_model.infer_batch(
self.model_instance,
*(batch_inputs.input_args()),
output,
)
return list(output)
def generate(self, input_content, max_steps, topp_=1.0, topk_=1, temperature_=1.0):
input_content = self.tokenizer.apply_chat_template(
conversation=[{"role": "user", "content": input_content}],
add_generation_prompt=True,
tokenize=False,
)
print(input_content, end="", flush=True)
tokens = self.tokenizer.encode(input_content)
infer_task = InferTask(
0,
tokens,
self.max_context_len(),
temperature_,
topk_,
topp_,
self.eos_token_id,
)
infer_task.bind_kvcache(KVCache(self))
steps = 0
total_time = 0
output_content = ""
for step_i in range(max_steps):
start_time = time.time()
output_tokens = self.batch_infer_one_round([infer_task])
end_time = time.time()
steps += 1
output_str = (
self.tokenizer._tokenizer.id_to_token(output_tokens[0])
.replace("▁", " ")
.replace("<0x0A>", "\n")
)
output_content += output_str
print(output_str, end="", flush=True)
if output_tokens[0] in self.eos_token_id:
break
infer_task.next(output_tokens[0])
if step_i > 0:
total_time += end_time - start_time
print("\n")
avg_time = total_time * 1000 / (steps - 1)
print(f"Time per step: {avg_time:.3f}ms")
infer_task._kv_cache.drop(self)
return output_content, avg_time
def perplexity(self, test_sequences: List[Sequence[int]], batch_size=10):
tasks = [
InferTask(i, [], self.max_context_len(), 1.0, 1, 1.0, self.eos_token_id)
for i in range(batch_size)
]
kv_caches = [KVCache(self) for _ in range(batch_size)]
nll = 0.0
total_len = 0
for i in range(0, len(test_sequences), batch_size):
batch_id = 0
true_tokens = []
while batch_id < batch_size and batch_id + i < len(test_sequences):
input_tokens = test_sequences[i + batch_id][:-1]
true_tokens.extend(test_sequences[i + batch_id][1:])
tasks[batch_id].tokens = input_tokens
tasks[batch_id].bind_kvcache(kv_caches[batch_id])
batch_id += 1
batch_inputs = JiugeBatchedTask(tasks[:batch_id])
log_probs = torch.zeros(
(batch_inputs.ntok, self.meta.dvoc), dtype=self.meta.torch_dtype_logits
)
self.jiuge_model.forward_batch(
self.model_instance,
batch_inputs.tokens,
batch_inputs.ntok,
batch_inputs.req_lens,
batch_inputs.nreq,
batch_inputs.req_pos,
batch_inputs.kv_caches,
log_probs.data_ptr(),
)
# forward_batch now returns log_softmax results, no need for additional calculation
log_probs = log_probs.float()
token_ids = torch.tensor(true_tokens, dtype=torch.int64) # [ntok,]
token_logprobs = log_probs[
torch.arange(batch_inputs.ntok), token_ids
] # (ntok,)
start = 0
for l in batch_inputs.req_lens_list:
nll += -token_logprobs[start : start + l].sum().item()
start += l
total_len += token_logprobs.numel()
for task in tasks:
task.release_kvcache()
return math.exp(nll / total_len)
def destroy_model_instance(self):
self.jiuge_model.destroy_model(self.model_instance)
print("Model destroyed")
def test():
if len(sys.argv) < 3:
print(
"Usage: python jiuge.py [--cpu | --nvidia| --cambricon | --ascend | --metax | --moore] <path/to/model_dir> [n_device]"
)
sys.exit(1)
model_path = sys.argv[2]
device_type = DeviceType.DEVICE_TYPE_CPU
if sys.argv[1] == "--cpu":
device_type = DeviceType.DEVICE_TYPE_CPU
elif sys.argv[1] == "--nvidia":
device_type = DeviceType.DEVICE_TYPE_NVIDIA
elif sys.argv[1] == "--cambricon":
device_type = DeviceType.DEVICE_TYPE_CAMBRICON
elif sys.argv[1] == "--ascend":
device_type = DeviceType.DEVICE_TYPE_ASCEND
elif sys.argv[1] == "--metax":
device_type = DeviceType.DEVICE_TYPE_METAX
elif sys.argv[1] == "--moore":
device_type = DeviceType.DEVICE_TYPE_MOORE
elif sys.argv[1] == "--iluvatar":
device_type = DeviceType.DEVICE_TYPE_ILUVATAR
else:
print(
"Usage: python jiuge.py [--cpu | --nvidia| --cambricon | --ascend | --metax | --moore] <path/to/model_dir> [n_device]"
)
sys.exit(1)
ndev = int(sys.argv[3]) if len(sys.argv) > 3 else 1
model = JiugeForCauslLM(model_path, device_type, ndev)
model.generate("山东最高的山是?", 500)
model.destroy_model_instance()
if __name__ == "__main__":
test()