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| import re |
| from functools import partial |
| import pandas as pd |
| from api.db import LLMType |
| from api.db.services.conversation_service import structure_answer |
| from api.db.services.dialog_service import message_fit_in |
| from api.db.services.llm_service import LLMBundle |
| from api import settings |
| from agent.component.base import ComponentBase, ComponentParamBase |
|
|
|
|
| class GenerateParam(ComponentParamBase): |
| """ |
| Define the Generate component parameters. |
| """ |
|
|
| def __init__(self): |
| super().__init__() |
| self.llm_id = "" |
| self.prompt = "" |
| self.max_tokens = 0 |
| self.temperature = 0 |
| self.top_p = 0 |
| self.presence_penalty = 0 |
| self.frequency_penalty = 0 |
| self.cite = True |
| self.parameters = [] |
|
|
| def check(self): |
| self.check_decimal_float(self.temperature, "[Generate] Temperature") |
| self.check_decimal_float(self.presence_penalty, "[Generate] Presence penalty") |
| self.check_decimal_float(self.frequency_penalty, "[Generate] Frequency penalty") |
| self.check_nonnegative_number(self.max_tokens, "[Generate] Max tokens") |
| self.check_decimal_float(self.top_p, "[Generate] Top P") |
| self.check_empty(self.llm_id, "[Generate] LLM") |
| |
|
|
| def gen_conf(self): |
| conf = {} |
| if self.max_tokens > 0: |
| conf["max_tokens"] = self.max_tokens |
| if self.temperature > 0: |
| conf["temperature"] = self.temperature |
| if self.top_p > 0: |
| conf["top_p"] = self.top_p |
| if self.presence_penalty > 0: |
| conf["presence_penalty"] = self.presence_penalty |
| if self.frequency_penalty > 0: |
| conf["frequency_penalty"] = self.frequency_penalty |
| return conf |
|
|
|
|
| class Generate(ComponentBase): |
| component_name = "Generate" |
|
|
| def get_dependent_components(self): |
| inputs = self.get_input_elements() |
| cpnts = set([i["key"] for i in inputs[1:] if i["key"].lower().find("answer") < 0 and i["key"].lower().find("begin") < 0]) |
| return list(cpnts) |
|
|
| def set_cite(self, retrieval_res, answer): |
| retrieval_res = retrieval_res.dropna(subset=["vector", "content_ltks"]).reset_index(drop=True) |
| if "empty_response" in retrieval_res.columns: |
| retrieval_res["empty_response"].fillna("", inplace=True) |
| answer, idx = settings.retrievaler.insert_citations(answer, |
| [ck["content_ltks"] for _, ck in retrieval_res.iterrows()], |
| [ck["vector"] for _, ck in retrieval_res.iterrows()], |
| LLMBundle(self._canvas.get_tenant_id(), LLMType.EMBEDDING, |
| self._canvas.get_embedding_model()), tkweight=0.7, |
| vtweight=0.3) |
| doc_ids = set([]) |
| recall_docs = [] |
| for i in idx: |
| did = retrieval_res.loc[int(i), "doc_id"] |
| if did in doc_ids: |
| continue |
| doc_ids.add(did) |
| recall_docs.append({"doc_id": did, "doc_name": retrieval_res.loc[int(i), "docnm_kwd"]}) |
|
|
| del retrieval_res["vector"] |
| del retrieval_res["content_ltks"] |
|
|
| reference = { |
| "chunks": [ck.to_dict() for _, ck in retrieval_res.iterrows()], |
| "doc_aggs": recall_docs |
| } |
|
|
| if answer.lower().find("invalid key") >= 0 or answer.lower().find("invalid api") >= 0: |
| answer += " Please set LLM API-Key in 'User Setting -> Model providers -> API-Key'" |
| res = {"content": answer, "reference": reference} |
| res = structure_answer(None, res, "", "") |
|
|
| return res |
|
|
| def get_input_elements(self): |
| key_set = set([]) |
| res = [{"key": "user", "name": "Input your question here:"}] |
| for r in re.finditer(r"\{([a-z]+[:@][a-z0-9_-]+)\}", self._param.prompt, flags=re.IGNORECASE): |
| cpn_id = r.group(1) |
| if cpn_id in key_set: |
| continue |
| if cpn_id.lower().find("begin@") == 0: |
| cpn_id, key = cpn_id.split("@") |
| for p in self._canvas.get_component(cpn_id)["obj"]._param.query: |
| if p["key"] != key: |
| continue |
| res.append({"key": r.group(1), "name": p["name"]}) |
| key_set.add(r.group(1)) |
| continue |
| cpn_nm = self._canvas.get_compnent_name(cpn_id) |
| if not cpn_nm: |
| continue |
| res.append({"key": cpn_id, "name": cpn_nm}) |
| key_set.add(cpn_id) |
| return res |
|
|
| def _run(self, history, **kwargs): |
| chat_mdl = LLMBundle(self._canvas.get_tenant_id(), LLMType.CHAT, self._param.llm_id) |
| prompt = self._param.prompt |
|
|
| retrieval_res = [] |
| self._param.inputs = [] |
| for para in self.get_input_elements()[1:]: |
| if para["key"].lower().find("begin@") == 0: |
| cpn_id, key = para["key"].split("@") |
| for p in self._canvas.get_component(cpn_id)["obj"]._param.query: |
| if p["key"] == key: |
| kwargs[para["key"]] = p.get("value", "") |
| self._param.inputs.append( |
| {"component_id": para["key"], "content": kwargs[para["key"]]}) |
| break |
| else: |
| assert False, f"Can't find parameter '{key}' for {cpn_id}" |
| continue |
|
|
| component_id = para["key"] |
| cpn = self._canvas.get_component(component_id)["obj"] |
| if cpn.component_name.lower() == "answer": |
| hist = self._canvas.get_history(1) |
| if hist: |
| hist = hist[0]["content"] |
| else: |
| hist = "" |
| kwargs[para["key"]] = hist |
| continue |
| _, out = cpn.output(allow_partial=False) |
| if "content" not in out.columns: |
| kwargs[para["key"]] = "" |
| else: |
| if cpn.component_name.lower() == "retrieval": |
| retrieval_res.append(out) |
| kwargs[para["key"]] = " - " + "\n - ".join([o if isinstance(o, str) else str(o) for o in out["content"]]) |
| self._param.inputs.append({"component_id": para["key"], "content": kwargs[para["key"]]}) |
|
|
| if retrieval_res: |
| retrieval_res = pd.concat(retrieval_res, ignore_index=True) |
| else: |
| retrieval_res = pd.DataFrame([]) |
|
|
| for n, v in kwargs.items(): |
| prompt = re.sub(r"\{%s\}" % re.escape(n), str(v).replace("\\", " "), prompt) |
|
|
| if not self._param.inputs and prompt.find("{input}") >= 0: |
| retrieval_res = self.get_input() |
| input = (" - " + "\n - ".join( |
| [c for c in retrieval_res["content"] if isinstance(c, str)])) if "content" in retrieval_res else "" |
| prompt = re.sub(r"\{input\}", re.escape(input), prompt) |
|
|
| downstreams = self._canvas.get_component(self._id)["downstream"] |
| if kwargs.get("stream") and len(downstreams) == 1 and self._canvas.get_component(downstreams[0])[ |
| "obj"].component_name.lower() == "answer": |
| return partial(self.stream_output, chat_mdl, prompt, retrieval_res) |
|
|
| if "empty_response" in retrieval_res.columns and not "".join(retrieval_res["content"]): |
| empty_res = "\n- ".join([str(t) for t in retrieval_res["empty_response"] if str(t)]) |
| res = {"content": empty_res if empty_res else "Nothing found in knowledgebase!", "reference": []} |
| return pd.DataFrame([res]) |
|
|
| msg = self._canvas.get_history(self._param.message_history_window_size) |
| if len(msg) < 1: |
| msg.append({"role": "user", "content": "Output: "}) |
| _, msg = message_fit_in([{"role": "system", "content": prompt}, *msg], int(chat_mdl.max_length * 0.97)) |
| if len(msg) < 2: |
| msg.append({"role": "user", "content": "Output: "}) |
| ans = chat_mdl.chat(msg[0]["content"], msg[1:], self._param.gen_conf()) |
|
|
| if self._param.cite and "content_ltks" in retrieval_res.columns and "vector" in retrieval_res.columns: |
| res = self.set_cite(retrieval_res, ans) |
| return pd.DataFrame([res]) |
|
|
| return Generate.be_output(ans) |
|
|
| def stream_output(self, chat_mdl, prompt, retrieval_res): |
| res = None |
| if "empty_response" in retrieval_res.columns and not "".join(retrieval_res["content"]): |
| empty_res = "\n- ".join([str(t) for t in retrieval_res["empty_response"] if str(t)]) |
| res = {"content": empty_res if empty_res else "Nothing found in knowledgebase!", "reference": []} |
| yield res |
| self.set_output(res) |
| return |
|
|
| msg = self._canvas.get_history(self._param.message_history_window_size) |
| if len(msg) < 1: |
| msg.append({"role": "user", "content": "Output: "}) |
| _, msg = message_fit_in([{"role": "system", "content": prompt}, *msg], int(chat_mdl.max_length * 0.97)) |
| if len(msg) < 2: |
| msg.append({"role": "user", "content": "Output: "}) |
| answer = "" |
| for ans in chat_mdl.chat_streamly(msg[0]["content"], msg[1:], self._param.gen_conf()): |
| res = {"content": ans, "reference": []} |
| answer = ans |
| yield res |
|
|
| if self._param.cite and "content_ltks" in retrieval_res.columns and "vector" in retrieval_res.columns: |
| res = self.set_cite(retrieval_res, answer) |
| yield res |
|
|
| self.set_output(Generate.be_output(res)) |
|
|
| def debug(self, **kwargs): |
| chat_mdl = LLMBundle(self._canvas.get_tenant_id(), LLMType.CHAT, self._param.llm_id) |
| prompt = self._param.prompt |
|
|
| for para in self._param.debug_inputs: |
| kwargs[para["key"]] = para.get("value", "") |
|
|
| for n, v in kwargs.items(): |
| prompt = re.sub(r"\{%s\}" % re.escape(n), str(v).replace("\\", " "), prompt) |
|
|
| u = kwargs.get("user") |
| ans = chat_mdl.chat(prompt, [{"role": "user", "content": u if u else "Output: "}], self._param.gen_conf()) |
| return pd.DataFrame([ans]) |
|
|