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#
#  Copyright 2024 The InfiniFlow Authors. All Rights Reserved.
#
#  Licensed under the Apache License, Version 2.0 (the "License");
#  you may not use this file except in compliance with the License.
#  You may obtain a copy of the License at
#
#      http://www.apache.org/licenses/LICENSE-2.0
#
#  Unless required by applicable law or agreed to in writing, software
#  distributed under the License is distributed on an "AS IS" BASIS,
#  WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
#  See the License for the specific language governing permissions and
#  limitations under the License.
#
import re

from api.db import LLMType
from api.db.db_models import Dialog, Conversation
from api.db.services.common_service import CommonService
from api.db.services.knowledgebase_service import KnowledgebaseService
from api.db.services.llm_service import LLMService, TenantLLMService, LLMBundle
from api.settings import chat_logger, retrievaler
from rag.app.resume import forbidden_select_fields4resume
from rag.nlp.search import index_name
from rag.utils import rmSpace, num_tokens_from_string, encoder


class DialogService(CommonService):
    model = Dialog


class ConversationService(CommonService):
    model = Conversation


def message_fit_in(msg, max_length=4000):
    def count():
        nonlocal msg
        tks_cnts = []
        for m in msg:
            tks_cnts.append(
                {"role": m["role"], "count": num_tokens_from_string(m["content"])})
        total = 0
        for m in tks_cnts:
            total += m["count"]
        return total

    c = count()
    if c < max_length:
        return c, msg

    msg_ = [m for m in msg[:-1] if m["role"] == "system"]
    msg_.append(msg[-1])
    msg = msg_
    c = count()
    if c < max_length:
        return c, msg

    ll = num_tokens_from_string(msg_[0].content)
    l = num_tokens_from_string(msg_[-1].content)
    if ll / (ll + l) > 0.8:
        m = msg_[0].content
        m = encoder.decode(encoder.encode(m)[:max_length - l])
        msg[0].content = m
        return max_length, msg

    m = msg_[1].content
    m = encoder.decode(encoder.encode(m)[:max_length - l])
    msg[1].content = m
    return max_length, msg


def chat(dialog, messages, **kwargs):
    assert messages[-1]["role"] == "user", "The last content of this conversation is not from user."
    llm = LLMService.query(llm_name=dialog.llm_id)
    if not llm:
        llm = TenantLLMService.query(tenant_id=dialog.tenant_id, llm_name=dialog.llm_id)
        if not llm:
            raise LookupError("LLM(%s) not found" % dialog.llm_id)
        max_tokens = 1024
    else: max_tokens = llm[0].max_tokens
    kbs = KnowledgebaseService.get_by_ids(dialog.kb_ids)
    embd_nms = list(set([kb.embd_id for kb in kbs]))
    assert len(embd_nms) == 1, "Knowledge bases use different embedding models."

    questions = [m["content"] for m in messages if m["role"] == "user"]
    embd_mdl = LLMBundle(dialog.tenant_id, LLMType.EMBEDDING, embd_nms[0])
    chat_mdl = LLMBundle(dialog.tenant_id, LLMType.CHAT, dialog.llm_id)

    prompt_config = dialog.prompt_config
    field_map = KnowledgebaseService.get_field_map(dialog.kb_ids)
    # try to use sql if field mapping is good to go
    if field_map:
        chat_logger.info("Use SQL to retrieval:{}".format(questions[-1]))
        ans = use_sql(questions[-1], field_map, dialog.tenant_id, chat_mdl, prompt_config.get("quote", True))
        if ans: return ans

    for p in prompt_config["parameters"]:
        if p["key"] == "knowledge":
            continue
        if p["key"] not in kwargs and not p["optional"]:
            raise KeyError("Miss parameter: " + p["key"])
        if p["key"] not in kwargs:
            prompt_config["system"] = prompt_config["system"].replace(
                "{%s}" % p["key"], " ")

    for _ in range(len(questions) // 2):
        questions.append(questions[-1])
    if "knowledge" not in [p["key"] for p in prompt_config["parameters"]]:
        kbinfos = {"total": 0, "chunks": [], "doc_aggs": []}
    else:
        kbinfos = retrievaler.retrieval(" ".join(questions), embd_mdl, dialog.tenant_id, dialog.kb_ids, 1, dialog.top_n,
                                        dialog.similarity_threshold,
                                        dialog.vector_similarity_weight, top=1024, aggs=False)
    knowledges = [ck["content_with_weight"] for ck in kbinfos["chunks"]]
    chat_logger.info(
        "{}->{}".format(" ".join(questions), "\n->".join(knowledges)))

    if not knowledges and prompt_config.get("empty_response"):
        return {
            "answer": prompt_config["empty_response"], "reference": kbinfos}

    kwargs["knowledge"] = "\n".join(knowledges)
    gen_conf = dialog.llm_setting
    msg = [{"role": m["role"], "content": m["content"]}
           for m in messages if m["role"] != "system"]
    used_token_count, msg = message_fit_in(msg, int(max_tokens * 0.97))
    if "max_tokens" in gen_conf:
        gen_conf["max_tokens"] = min(
            gen_conf["max_tokens"],
            max_tokens - used_token_count)
    answer = chat_mdl.chat(
        prompt_config["system"].format(
            **kwargs), msg, gen_conf)
    chat_logger.info("User: {}|Assistant: {}".format(
        msg[-1]["content"], answer))

    if knowledges and prompt_config.get("quote", True):
        answer, idx = retrievaler.insert_citations(answer,
                                                   [ck["content_ltks"]
                                                       for ck in kbinfos["chunks"]],
                                                   [ck["vector"]
                                                       for ck in kbinfos["chunks"]],
                                                   embd_mdl,
                                                   tkweight=1 - dialog.vector_similarity_weight,
                                                   vtweight=dialog.vector_similarity_weight)
        idx = set([kbinfos["chunks"][int(i)]["doc_id"] for i in idx])
        recall_docs = [
            d for d in kbinfos["doc_aggs"] if d["doc_id"] in idx]
        if not recall_docs: recall_docs = kbinfos["doc_aggs"]
        kbinfos["doc_aggs"] = recall_docs

    for c in kbinfos["chunks"]:
        if c.get("vector"):
            del c["vector"]
    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'"
    return {"answer": answer, "reference": kbinfos}


def use_sql(question, field_map, tenant_id, chat_mdl, quota=True):
    sys_prompt = "你是一个DBA。你需要这对以下表的字段结构,根据用户的问题列表,写出最后一个问题对应的SQL。"
    user_promt = """

表名:{};

数据库表字段说明如下:

{}



问题如下:

{}

请写出SQL, 且只要SQL,不要有其他说明及文字。

""".format(
        index_name(tenant_id),
        "\n".join([f"{k}: {v}" for k, v in field_map.items()]),
        question
    )
    tried_times = 0

    def get_table():
        nonlocal sys_prompt, user_promt, question, tried_times
        sql = chat_mdl.chat(sys_prompt, [{"role": "user", "content": user_promt}], {
                            "temperature": 0.06})
        print(user_promt, sql)
        chat_logger.info(f"“{question}”==>{user_promt} get SQL: {sql}")
        sql = re.sub(r"[\r\n]+", " ", sql.lower())
        sql = re.sub(r".*select ", "select ", sql.lower())
        sql = re.sub(r" +", " ", sql)
        sql = re.sub(r"([;;]|```).*", "", sql)
        if sql[:len("select ")] != "select ":
            return None, None
        if not re.search(r"((sum|avg|max|min)\(|group by )", sql.lower()):
            if sql[:len("select *")] != "select *":
                sql = "select doc_id,docnm_kwd," + sql[6:]
            else:
                flds = []
                for k in field_map.keys():
                    if k in forbidden_select_fields4resume:
                        continue
                    if len(flds) > 11:
                        break
                    flds.append(k)
                sql = "select doc_id,docnm_kwd," + ",".join(flds) + sql[8:]

        print(f"“{question}” get SQL(refined): {sql}")

        chat_logger.info(f"“{question}” get SQL(refined): {sql}")
        tried_times += 1
        return retrievaler.sql_retrieval(sql, format="json"), sql

    tbl, sql = get_table()
    if tbl is None:
        return None
    if tbl.get("error") and tried_times <= 2:
        user_promt = """

        表名:{};

        数据库表字段说明如下:

        {}



        问题如下:

        {}



        你上一次给出的错误SQL如下:

        {}



        后台报错如下:

        {}



        请纠正SQL中的错误再写一遍,且只要SQL,不要有其他说明及文字。

        """.format(
            index_name(tenant_id),
            "\n".join([f"{k}: {v}" for k, v in field_map.items()]),
            question, sql, tbl["error"]
        )
        tbl, sql = get_table()
        chat_logger.info("TRY it again: {}".format(sql))

    chat_logger.info("GET table: {}".format(tbl))
    print(tbl)
    if tbl.get("error") or len(tbl["rows"]) == 0:
        return None

    docid_idx = set([ii for ii, c in enumerate(
        tbl["columns"]) if c["name"] == "doc_id"])
    docnm_idx = set([ii for ii, c in enumerate(
        tbl["columns"]) if c["name"] == "docnm_kwd"])
    clmn_idx = [ii for ii in range(
        len(tbl["columns"])) if ii not in (docid_idx | docnm_idx)]

    # compose markdown table
    clmns = "|" + "|".join([re.sub(r"(/.*|([^()]+))", "", field_map.get(tbl["columns"][i]["name"],
                           tbl["columns"][i]["name"])) for i in clmn_idx]) + ("|Source|" if docid_idx and docid_idx else "|")

    line = "|" + "|".join(["------" for _ in range(len(clmn_idx))]) + \
        ("|------|" if docid_idx and docid_idx else "")

    rows = ["|" +
            "|".join([rmSpace(str(r[i])) for i in clmn_idx]).replace("None", " ") +
            "|" for r in tbl["rows"]]
    if quota:
        rows = "\n".join([r + f" ##{ii}$$ |" for ii, r in enumerate(rows)])
    else: rows = "\n".join([r + f" ##{ii}$$ |" for ii, r in enumerate(rows)])
    rows = re.sub(r"T[0-9]{2}:[0-9]{2}:[0-9]{2}(\.[0-9]+Z)?\|", "|", rows)

    if not docid_idx or not docnm_idx:
        chat_logger.warning("SQL missing field: " + sql)
        return {
            "answer": "\n".join([clmns, line, rows]),
            "reference": {"chunks": [], "doc_aggs": []}
        }

    docid_idx = list(docid_idx)[0]
    docnm_idx = list(docnm_idx)[0]
    doc_aggs = {}
    for r in tbl["rows"]:
        if r[docid_idx] not in doc_aggs:
            doc_aggs[r[docid_idx]] = {"doc_name": r[docnm_idx], "count": 0}
        doc_aggs[r[docid_idx]]["count"] += 1
    return {
        "answer": "\n".join([clmns, line, rows]),
        "reference": {"chunks": [{"doc_id": r[docid_idx], "docnm_kwd": r[docnm_idx]} for r in tbl["rows"]],
                      "doc_aggs": [{"doc_id": did, "doc_name": d["doc_name"], "count": d["count"]} for did, d in doc_aggs.items()]}
    }