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- from pathlib import Path
- from typing import List
- import json, argparse, random, time
- import tiktoken
- from tiktoken.load import load_tiktoken_bpe
- from extra.models.llama import Transformer, convert_from_huggingface, fix_bf16
- from tinygrad.nn.state import safe_load, torch_load, load_state_dict, get_parameters
- from tinygrad import Tensor, dtypes, nn, Context, Device, GlobalCounters
- from tinygrad.helpers import Profiling, Timing, DEBUG, colored, fetch, tqdm
- class Tokenizer:
- pat_str = r"(?i:'s|'t|'re|'ve|'m|'ll|'d)|[^\r\n\p{L}\p{N}]?\p{L}+|\p{N}{1,3}| ?[^\s\p{L}\p{N}]+[\r\n]*|\s*[\r\n]+|\s+(?!\S)|\s+"
- def __init__(self, model_path: str):
- mergeable_ranks = load_tiktoken_bpe(model_path)
- self.num_base_tokens = len(mergeable_ranks)
- special_tokens = [
- "<|begin_of_text|>",
- "<|end_of_text|>",
- "<|reserved_special_token_0|>",
- "<|reserved_special_token_1|>",
- "<|reserved_special_token_2|>",
- "<|reserved_special_token_3|>",
- "<|start_header_id|>",
- "<|end_header_id|>",
- "<|reserved_special_token_4|>",
- "<|eot_id|>",
- ] + [
- f"<|reserved_special_token_{i}|>"
- for i in range(5, 256 - 5)
- ]
- self.special_tokens = {token: len(mergeable_ranks) + i for i, token in enumerate(special_tokens)}
- self.model = tiktoken.Encoding(name=model_path, pat_str=self.pat_str, mergeable_ranks=mergeable_ranks, special_tokens=self.special_tokens)
- @property
- def bos_id(self): return self.special_tokens["<|begin_of_text|>"]
- @property
- def stop_tokens(self): return {self.special_tokens["<|end_of_text|>"], self.special_tokens["<|eot_id|>"]}
- def decode(self, toks): return self.model.decode([t for t in toks if t < self.num_base_tokens])
- def encode(self, text, allow_special=False):
- return self.model.encode(text, allowed_special="all" if allow_special else set(), disallowed_special=set())
- # **** helper functions ****
- def concat_weights(models, device=None):
- def convert(name) -> Tensor:
- disk_tensors: List[Tensor] = [model[name] for model in models]
- if len(disk_tensors) == 1 or len(disk_tensors[0].shape) == 1:
- return disk_tensors[0].to(device=device)
- axis = 1 if name.endswith(".attention.wo.weight") or name.endswith(".feed_forward.w2.weight") else 0
- lazy_tensors = [data.to(device=device) for data in disk_tensors]
- return lazy_tensors[0].cat(*lazy_tensors[1:], dim=axis)
- return {name: convert(name) for name in {name: None for model in models for name in model}}
- def load(fn:str):
- if fn.endswith('.index.json'):
- with open(fn) as fp: weight_map = json.load(fp)['weight_map']
- parts = {n: load(str(Path(fn).parent / Path(n).name)) for n in set(weight_map.values())}
- return {k: parts[n][k] for k, n in weight_map.items()}
- elif fn.endswith(".safetensors"):
- return safe_load(fn)
- else:
- return torch_load(fn)
- # **** quantized linears ****
- class Int8Linear:
- def __init__(self, in_features, out_features, bias=False):
- assert bias == False
- self.weight = Tensor.ones(out_features, in_features, dtype=dtypes.int8)
- self.scale = Tensor.ones(out_features, dtype=dtypes.half)
- def __call__(self, x):
- return x.dot(self.weight.cast(dtype=dtypes.half).T*self.scale)
- @staticmethod
- def quantize(tensors, device):
- new_tensors = {}
- for name,v in tensors.items():
- if "feed_forward" in name or "attention.w" in name:
- assert "weight" in name, name
- scale = v.abs().max(axis=1) / 127.0
- int8_weight = (v.T/scale).T.cast(dtype=dtypes.int8)
- new_tensors[name] = int8_weight
- new_tensors[name.replace('weight', 'scale')] = scale
- if isinstance(device, tuple):
- new_tensors[name].shard_(device, axis=-1)
- new_tensors[name.replace('weight', 'scale')].shard_(device, axis=None)
- else:
- new_tensors[name] = v
- return new_tensors
- def NF4Linear(block_size):
- _CODE = [
- -1.0, -0.6961928009986877, -0.5250730514526367, -0.39491748809814453, -0.28444138169288635, -0.18477343022823334, -0.09105003625154495, 0.0,
- 0.07958029955625534, 0.16093020141124725, 0.24611230194568634, 0.33791524171829224, 0.44070982933044434, 0.5626170039176941, 0.7229568362236023, 1.0,
- ]
- CODE = Tensor.stack(*[Tensor(c, dtype=dtypes.float16) for c in _CODE])
- class _NF4Linear:
- def __init__(self, in_features, out_features, bias=False):
- assert not bias, "bias not supported"
- self.in_features, self.out_features = in_features, out_features
- self.weight = Tensor.empty(int(out_features * in_features / 2), dtype=dtypes.uint8)
- self.scale = Tensor.empty(int(out_features * in_features / block_size), 1, dtype=dtypes.float16)
- def __call__(self, x: Tensor) -> Tensor:
- high_bits = self.weight
- low_bits = (self.weight * 2 ** 4).contiguous()
- unpacked = Tensor.stack(high_bits, low_bits, dim=-1).div(2 ** 4, upcast=False)
- unscaled = CODE[unpacked].to(x.device).reshape(-1, block_size) * self.scale
- return x.linear(unscaled.reshape(self.out_features, self.in_features).T)
- @staticmethod
- def quantize(state_dict: dict[str, Tensor], device) -> dict[str, Tensor]:
- new_state_dict = {}
- for k, v in state_dict.items():
- if "feed_forward" in k or "attention.w" in k:
- grouped = v.reshape(-1, block_size)
- scale = (grouped.abs().max(axis=1, keepdim=True))
- coded = ((grouped / scale).unsqueeze(-1) - CODE.to(v.device)).abs().argmin(axis=-1).cast(dtypes.uint8).flatten()
- new_state_dict[k] = coded[::2] * 2 ** 4 + coded[1::2]
- new_state_dict[k.replace(".weight", ".scale")] = scale.cast(dtypes.float16)
- if isinstance(device, tuple):
- new_state_dict[k].shard_(device, axis=-1)
- new_state_dict[k.replace('weight', 'scale')].shard_(device, axis=None)
- else:
- new_state_dict[k] = v
- return new_state_dict
- return _NF4Linear
- MODEL_PARAMS = {
- "8B": {
- "args": {"dim": 4096, "n_heads": 32, "n_kv_heads": 8, "n_layers": 32, "norm_eps": 1e-5, "rope_theta": 500000, "vocab_size": 128256, "hidden_dim": 14336},
- "files": 1
- },
- "70B": {
- "args": {"dim": 8192, "n_heads": 64, "n_kv_heads": 8, "n_layers": 80, "norm_eps": 1e-5, "rope_theta": 500000, "vocab_size": 128256, "hidden_dim": 28672},
- "files": 8
- }
- }
- def build_transformer(model_path: Path, model_size="8B", quantize=None, device=None):
- # build model
- if quantize == "int8": linear = Int8Linear
- elif quantize == "nf4": linear = NF4Linear(64)
- else: linear = nn.Linear
- with Context(THREEFRY=0):
- model = Transformer(**MODEL_PARAMS[model_size]["args"], linear=linear, max_context=8192, jit=True)
- # load weights
- if model_path.is_dir():
- if (model_path / "model.safetensors.index.json").exists(): weights = load(str(model_path / "model.safetensors.index.json"))
- elif (model_path / "model.safetensors").exists(): weights = load(str(model_path / "model.safetensors"))
- else: weights = concat_weights([load(str(model_path / f"consolidated.{i:02d}.pth")) for i in range(MODEL_PARAMS[model_size]["files"])], device[0] if isinstance(device, tuple) else device)
- else:
- weights = load(str(model_path))
- if "model.embed_tokens.weight" in weights:
- weights = convert_from_huggingface(weights, model, MODEL_PARAMS[model_size]["args"]["n_heads"], MODEL_PARAMS[model_size]["args"]["n_kv_heads"])
- weights = fix_bf16(weights)
- with Context(BEAM=0):
- # quantize
- if quantize is not None:
- weights = linear.quantize(weights, device)
- for _,v in weights.items(): v.realize()
- # shard
- if isinstance(device, tuple):
- for k,v in nn.state.get_state_dict(model).items():
- if 'scale' in k: v.shard_(device, axis=None) # from quantized
- elif '.attention.' in k: v.shard_(device, axis=-1)
- elif '.feed_forward.w1.' in k: v.shard_(device, axis=0)
- elif '.feed_forward.w3.' in k: v.shard_(device, axis=0)
- elif '.feed_forward.' in k: v.shard_(device, axis=-1)
- elif 'tok_embeddings.weight' in k: v.shard_(device, axis=0)
- elif 'output.weight' in k: v.shard_(device, axis=0)
- else: v.shard_(device, axis=None)
- # replace weights in model
- load_state_dict(model, weights, strict=False, consume=True)
- return model
- # default settings
- TEMPERATURE = 0.85
- TOP_K = 25
- TOP_P = 0.9
- ALPHA_F = 0.1
- ALPHA_P = 0.0
- last_seen_toks = []
- def prefill(model, toks, start_pos=0):
- global last_seen_toks
- # we can skip part of the prompt if it is the same as last and start_pos=0
- if start_pos == 0:
- for i, (a, b) in enumerate(zip(toks, last_seen_toks)):
- if a != b: break
- else: i = min(len(toks), len(last_seen_toks))
- start_pos += i
- last_seen_toks = toks
- toks = toks[i:]
- # prefill the model
- for tok in tqdm(toks):
- GlobalCounters.reset()
- model(Tensor([[tok]], device=device), start_pos, TEMPERATURE, TOP_K, TOP_P, ALPHA_F, ALPHA_P).realize()
- start_pos += 1
- return start_pos
- if __name__ == "__main__":
- Tensor.no_grad = True
- parser = argparse.ArgumentParser()
- parser.add_argument("--download_model", action="store_true", help="Download a 8B model")
- parser.add_argument("--model", type=Path, help="Model path")
- parser.add_argument("--size", choices=["8B", "70B"], default="8B", help="Model size")
- parser.add_argument("--shard", type=int, default=1, help="Shard the model across multiple devices")
- parser.add_argument("--quantize", choices=["int8", "nf4"], help="Quantization method")
- parser.add_argument("--no_api", action="store_true", help="Disable the api and run a cli test interface")
- parser.add_argument("--host", type=str, default="0.0.0.0", help="Web server bind address")
- parser.add_argument("--port", type=int, default=7776, help="Web server port")
- parser.add_argument("--debug", action="store_true", help="Enable debug mode")
- parser.add_argument("--seed", type=int, help="Random seed")
- parser.add_argument("--benchmark", action="store_true", help="Run a benchmark")
- parser.add_argument("--timing", action="store_true", help="Print timing per token")
- parser.add_argument("--profile", action="store_true", help="Output profile data")
- args = parser.parse_args()
- assert not (args.download_model and args.model), "either download or provide model"
- if args.download_model:
- fetch("https://huggingface.co/bofenghuang/Meta-Llama-3-8B/resolve/main/original/tokenizer.model", "tokenizer.model", subdir="llama3-8b-sfr")
- fetch("https://huggingface.co/TriAiExperiments/SFR-Iterative-DPO-LLaMA-3-8B-R/resolve/main/model-00001-of-00004.safetensors", "model-00001-of-00004.safetensors", subdir="llama3-8b-sfr")
- fetch("https://huggingface.co/TriAiExperiments/SFR-Iterative-DPO-LLaMA-3-8B-R/resolve/main/model-00002-of-00004.safetensors", "model-00002-of-00004.safetensors", subdir="llama3-8b-sfr")
- fetch("https://huggingface.co/TriAiExperiments/SFR-Iterative-DPO-LLaMA-3-8B-R/resolve/main/model-00003-of-00004.safetensors", "model-00003-of-00004.safetensors", subdir="llama3-8b-sfr")
- fetch("https://huggingface.co/TriAiExperiments/SFR-Iterative-DPO-LLaMA-3-8B-R/resolve/main/model-00004-of-00004.safetensors", "model-00004-of-00004.safetensors", subdir="llama3-8b-sfr")
- args.model = fetch("https://huggingface.co/TriAiExperiments/SFR-Iterative-DPO-LLaMA-3-8B-R/raw/main/model.safetensors.index.json", "model.safetensors.index.json", subdir="llama3-8b-sfr")
- assert args.model is not None, "please provide --model option"
- if args.seed is not None: Tensor.manual_seed(args.seed)
- if args.benchmark: Tensor.manual_seed(42)
- print(f"seed = {Tensor._seed}")
- tokenizer = Tokenizer(str((args.model if args.model.is_dir() else args.model.parent) / "tokenizer.model"))
- def encode_role(role: str):
- return [tokenizer.special_tokens["<|start_header_id|>"]] + tokenizer.encode(role) + [tokenizer.special_tokens["<|end_header_id|>"]] + tokenizer.encode("\n\n")
- def encode_message(role: str, content: str):
- return encode_role(role) + tokenizer.encode(content.strip()) + [tokenizer.special_tokens["<|eot_id|>"]]
- device = tuple(f"{Device.DEFAULT}:{i}" for i in range(args.shard)) if args.shard > 1 else Device.DEFAULT
- model = build_transformer(args.model, model_size=args.size, quantize=args.quantize, device=device)
- param_bytes = sum(x.lazydata.size * x.dtype.itemsize for x in get_parameters(model))
- if not args.no_api and not args.benchmark:
- from bottle import Bottle, request, response, HTTPResponse, abort, static_file
- app = Bottle()
- cors_headers = {
- "Access-Control-Allow-Origin": "*",
- "Access-Control-Allow-Methods": "GET, POST, PUT, DELETE, OPTIONS",
- "Access-Control-Allow-Headers": "Origin, Accept, Content-Type, X-Requested-With, X-CSRF-Token, Authorization",
- "Access-Control-Allow-Credentials": "true",
- }
- @app.hook("before_request")
- def handle_options():
- if request.method == "OPTIONS": raise HTTPResponse(headers=cors_headers)
- @app.hook("after_request")
- def enable_cors():
- for key, value in cors_headers.items(): response.set_header(key, value)
- @app.route("/<filename>")
- def server_static(filename):
- return static_file(filename, root=(Path(__file__).parent / "tinychat").as_posix())
- @app.route("/")
- def index():
- return static_file("index.html", root=(Path(__file__).parent / "tinychat").as_posix())
- @app.get("/v1/models")
- def models():
- return json.dumps([str(args.model)])
- @app.post("/v1/internal/token-count")
- def token_count():
- rjson = json.loads(request.body.read())
- return json.dumps(len(tokenizer.encode(rjson.get("text", ""))))
- @app.post("/v1/token/encode")
- def token_encode():
- rjson = json.loads(request.body.read())
- return json.dumps(tokenizer.encode(rjson.get("text", "")))
- @app.post("/v1/completions")
- def completions():
- rjson = json.loads(request.body.read())
- # check if we are streaming
- if rjson.get("stream", False):
- response.content_type = "text/event-stream"
- response.set_header("Cache-Control", "no-cache")
- else: abort(400, "streaming required")
- toks = [tokenizer.bos_id] + tokenizer.encode(rjson.get("prompt", ""), allow_special=True)
- start_pos = prefill(model, toks[:-1])
- last_tok = toks[-1]
- while True:
- GlobalCounters.reset()
- tok = model(Tensor([[last_tok]], device=device), start_pos, TEMPERATURE, TOP_K, TOP_P, ALPHA_F, ALPHA_P).item()
- start_pos += 1
- last_tok = tok
- if tok in tokenizer.stop_tokens: break
- res = {
- "choices": [{
- "text": tokenizer.decode([tok]),
- }]
- }
- yield f"data: {json.dumps(res)}\n\n"
- @app.post("/v1/chat/token/encode")
- def chat_token_encode():
- rjson = json.loads(request.body.read())
- if "messages" not in rjson: abort(400, "messages required")
- toks = [tokenizer.bos_id]
- for message in rjson["messages"]:
- toks += encode_message(message["role"], message["content"])
- if len(rjson["messages"]) > 0 and message["role"] == "user":
- toks += encode_role("assistant")
- return json.dumps(toks)
- @app.post("/v1/chat/completions")
- def chat_completions():
- global last_seen_toks
- rjson = json.loads(request.body.read())
- if "messages" not in rjson: abort(400, "messages required")
- # check if we are streaming
- if rjson.get("stream", False):
- response.content_type = "text/event-stream"
- response.set_header("Cache-Control", "no-cache")
- else: abort(400, "streaming required")
- toks = [tokenizer.bos_id]
- for message in rjson["messages"]:
- toks += encode_message(message["role"], message["content"])
- # ensure that the last message was a user message
- if message["role"] != "user": abort(400, "last message must be a user message")
- toks += encode_role("assistant")
- random_id = random.randbytes(16).hex()
- start_pos = prefill(model, toks[:-1])
- last_tok = toks[-1]
- last_seen_toks.append(last_tok)
- while True:
- GlobalCounters.reset()
- tok = model(Tensor([[last_tok]], device=device), start_pos, TEMPERATURE, TOP_K, TOP_P, ALPHA_F, ALPHA_P).item()
- start_pos += 1
- last_tok = tok
- last_seen_toks.append(tok)
- if tok in tokenizer.stop_tokens: break
- res = {
- "id": random_id,
- "object": "chat.completion.chunk",
- "created": int(time.time()),
- "model": str(args.model),
- "choices": [{
- "index": 0,
- "delta": {
- "role": "assistant",
- "content": tokenizer.decode([tok]),
- },
- "finish_reason": None,
- }]
- }
- yield f"data: {json.dumps(res)}\n\n"
- res = {
- "id": random_id,
- "object": "chat.completion.chunk",
- "created": int(time.time()),
- "model": str(args.model),
- "choices": [{
- "index": 0,
- "delta": {},
- "finish_reason": "stop",
- }]
- }
- yield f"data: {json.dumps(res)}\n\n"
- app.run(host=args.host, port=args.port, debug=args.debug)
- elif args.benchmark:
- toks = [tokenizer.bos_id] + encode_message("user", "Hello.") + encode_role("assistant")
- start_pos = prefill(model, toks[:-1])
- last_tok = toks[-1]
- generated = ""
- for _ in range(20):
- GlobalCounters.reset()
- st = GlobalCounters.time_sum_s
- with Profiling(enabled=args.profile):
- with Timing("total ", on_exit=lambda x: f", {1e9/x:.2f} tok/s, {GlobalCounters.global_mem/x:.2f} GB/s, param {param_bytes/x:.2f} GB/s"):
- with Timing("enqueue in ", on_exit=(lambda et: (f", {(GlobalCounters.time_sum_s-st)*1e3:.2f} ms on GPU" if DEBUG>=2 else "")+
- f", {GlobalCounters.global_ops*1e-9:.2f} GOPS, {GlobalCounters.global_mem*1e-9:.2f} GB"+
- (f", {GlobalCounters.global_mem*1e-9/(GlobalCounters.time_sum_s-st):.2f} GB/s, param {param_bytes*1e-9/(GlobalCounters.time_sum_s-st):.2f} GB/s" if DEBUG>=2 else "")) if DEBUG else None):
- tok = model(Tensor([[last_tok]], device=device), start_pos, TEMPERATURE, TOP_K, TOP_P, ALPHA_F, ALPHA_P)
- tok = tok.item()
- start_pos += 1
- last_tok = tok
- generated += tokenizer.decode([tok])
- print(generated)
- if "LLaMA-3/8B-SF-DPO" in args.model.as_posix():
- EXPECTED_TEXT = {
- 1: "Hello! How can I help you today? If you have any questions or need assistance with anything,",
- 2: "Hello! How can I help you today? If you have any questions, need assistance or just want",
- 3: "Hello! How can I help you today? If you have any questions or need assistance, feel free",
- 4: "Hello! How can I assist you today? If you have any questions, need information, or require",
- 5: "Hello! How can I assist you today? If you have any questions or need help with something",
- 6: "Hello! How can I assist you today? If you have any questions, need information, or require",
- }
- assert generated == EXPECTED_TEXT[args.shard], f"{generated=} {EXPECTED_TEXT[args.shard]}"
- print("\n" + colored("output validated", "green")) # NOTE: "\n" inside colored does not render the color in github action
- else:
- prompt = [tokenizer.bos_id] + encode_message("system", "You are an helpful assistant.")
- start_pos = prefill(model, prompt)
- while True:
- toks = encode_message("user", input("Q: ")) + encode_role("assistant")
- start_pos = prefill(model, toks[:-1], start_pos=start_pos)
- last_tok = toks[-1]
- while True:
- GlobalCounters.reset()
- if args.timing or args.profile: print("")
- st = GlobalCounters.time_sum_s
- with Profiling(enabled=args.profile):
- with Timing("total ", enabled=args.timing, on_exit=lambda x: f", {1e9/x:.2f} tok/s, {GlobalCounters.global_mem/x:.2f} GB/s, param {param_bytes/x:.2f} GB/s"):
- with Timing("enqueue in ", on_exit=(lambda et: (f", {(GlobalCounters.time_sum_s-st)*1e3:.2f} ms on GPU" if DEBUG>=2 else "")+
- f", {GlobalCounters.global_ops*1e-9:.2f} GOPS, {GlobalCounters.global_mem*1e-9:.2f} GB"+
- (f", {GlobalCounters.global_mem*1e-9/(GlobalCounters.time_sum_s-st):.2f} GB/s, param {param_bytes*1e-9/(GlobalCounters.time_sum_s-st):.2f} GB/s" if DEBUG>=2 else "")) if DEBUG else None, enabled=args.timing):
- tok = model(Tensor([[last_tok]], device=device), start_pos, TEMPERATURE, TOP_K, TOP_P, ALPHA_F, ALPHA_P)
- tok = tok.item()
- start_pos += 1
- last_tok = tok
- if tok in tokenizer.stop_tokens: break
- print(tokenizer.decode([tok]), end="", flush=True)
- print(flush=True)
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