Merge branch 'main' of https://github.com/abetlen/llama-cpp-python into main
This commit is contained in:
commit
f300d4310a
2 changed files with 123 additions and 34 deletions
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@ -510,6 +510,14 @@ class _LlamaBatch:
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self._llama_batch_free(self.batch)
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self.batch = None
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def n_tokens(self) -> int:
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assert self.batch is not None
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return self.batch.n_tokens
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def reset(self):
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assert self.batch is not None
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self.batch.n_tokens = 0
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def set_batch(self, batch: Sequence[int], n_past: int, logits_all: bool):
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assert self.batch is not None
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n_tokens = len(batch)
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@ -522,6 +530,20 @@ class _LlamaBatch:
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self.batch.logits[i] = logits_all
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self.batch.logits[n_tokens - 1] = True
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def add_sequence(self, batch: Sequence[int], seq_id: int, logits_all: bool):
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assert self.batch is not None
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n_tokens = len(batch)
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n_tokens0 = self.batch.n_tokens
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self.batch.n_tokens += n_tokens
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for i in range(n_tokens):
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j = n_tokens0 + i
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self.batch.token[j] = batch[i]
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self.batch.pos[j] = i
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self.batch.seq_id[j][0] = seq_id
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self.batch.n_seq_id[j] = 1
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self.batch.logits[j] = logits_all
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self.batch.logits[n_tokens - 1] = True
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class _LlamaTokenDataArray:
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def __init__(self, *, n_vocab: int):
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@ -717,10 +717,53 @@ class Llama:
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Returns:
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An embedding object.
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"""
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assert self._ctx.ctx is not None
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assert self._model.model is not None
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model_name: str = model if model is not None else self.model_path
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# get numeric embeddings
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embeds: List[List[float]]
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total_tokens: int
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embeds, total_tokens = self.embed(input, return_count=True) # type: ignore
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# convert to CreateEmbeddingResponse
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data: List[Embedding] = [
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{
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"object": "embedding",
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"embedding": emb,
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"index": idx,
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}
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for idx, emb in enumerate(embeds)
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]
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return {
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"object": "list",
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"data": data,
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"model": model_name,
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"usage": {
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"prompt_tokens": total_tokens,
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"total_tokens": total_tokens,
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},
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}
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def embed(
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self,
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input: Union[str, List[str]],
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normalize: bool = True,
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truncate: bool = True,
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return_count: bool = False,
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):
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"""Embed a string.
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Args:
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input: The utf-8 encoded string to embed.
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Returns:
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A list of embeddings
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"""
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assert self._ctx.ctx is not None
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n_embd = self.n_embd()
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n_ctx = self.n_ctx()
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if self.context_params.embedding == False:
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raise RuntimeError(
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"Llama model must be created with embedding=True to call this method"
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@ -734,48 +777,72 @@ class Llama:
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else:
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inputs = input
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data: List[Embedding] = []
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# reset batch
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self._batch.reset()
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# decode and fetch embeddings
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data: List[List[float]] = []
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def decode_batch(sizes: List[int]):
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assert self._ctx.ctx is not None
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llama_cpp.llama_kv_cache_clear(self._ctx.ctx)
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self._ctx.decode(self._batch)
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self._batch.reset()
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# store embeddings
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for i, s in enumerate(sizes):
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embedding = llama_cpp.llama_get_embeddings_ith(self._ctx.ctx, i)[
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:n_embd
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]
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norm = np.linalg.norm(embedding) if normalize else s
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embedding: List[float] = [v / float(norm) for v in embedding]
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data.append(embedding)
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# init state
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total_tokens = 0
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for index, input in enumerate(inputs):
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tokens = self.tokenize(input.encode("utf-8"), special=True)
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self.reset()
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self.eval(tokens)
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t_batch = 0
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s_sizes: List[int] = []
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# accumulate batches and encode
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for text in inputs:
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tokens = self.tokenize(text.encode("utf-8"))
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if truncate:
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tokens = tokens[:n_ctx]
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n_tokens = len(tokens)
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total_tokens += n_tokens
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embedding = llama_cpp.llama_get_embeddings(self._ctx.ctx)[
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: llama_cpp.llama_n_embd(self._model.model)
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]
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data.append(
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{
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"object": "embedding",
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"embedding": embedding,
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"index": index,
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}
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# check for overrun
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if n_tokens > n_ctx:
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raise ValueError(
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f"Requested tokens ({n_tokens}) exceed context window of {n_ctx}"
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)
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# time to eval batch
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if t_batch + n_tokens > self._n_ctx:
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decode_batch(s_sizes)
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t_batch = 0
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s_sizes = []
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# add to batch
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self._batch.add_sequence(tokens, len(s_sizes), False)
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t_batch += n_tokens
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s_sizes.append(n_tokens)
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# hanlde last batch
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decode_batch(s_sizes)
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if self.verbose:
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llama_cpp.llama_print_timings(self._ctx.ctx)
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return {
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"object": "list",
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"data": data,
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"model": model_name,
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"usage": {
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"prompt_tokens": total_tokens,
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"total_tokens": total_tokens,
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},
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}
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output = data[0] if isinstance(input, str) else data
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def embed(self, input: str) -> List[float]:
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"""Embed a string.
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llama_cpp.llama_kv_cache_clear(self._ctx.ctx)
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self.reset()
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Args:
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input: The utf-8 encoded string to embed.
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Returns:
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A list of embeddings
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"""
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return list(map(float, self.create_embedding(input)["data"][0]["embedding"]))
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if return_count:
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return output, total_tokens
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else:
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return output
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def _create_completion(
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self,
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