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from serenitas.analytics.tranche_basket import TrancheBasket, MarkitTrancheBasket
from serenitas.analytics.utils import prev_business_day
import datetime
import logging
import numpy as np
import pandas as pd
from yaml import full_load
import argparse


def get_lastdate(conn, index, series, tenor):
    sql_str = (
        "SELECT (max(date) AT TIME ZONE 'America/New_York')::date + 1 "
        "AS date FROM risk_numbers "
        "WHERE index=%s and series = %s and tenor = %s"
    )
    with conn.cursor() as c:
        c.execute(sql_str, (index, series, tenor))
        (date,) = c.fetchone()
    conn.commit()
    return date


def build_sql_str(df, use_markit=False):
    cols = ",".join(df.columns)
    cols_ex_tranche_id = ",".join([c for c in df.columns if c != "tranche_id"])
    cols_excluded = ",".join([f"excluded.{c}" for c in df.columns if c != "tranche_id"])
    place_holders = ",".join([f"%({c})s" for c in df.columns])
    sql_str = (
        f"INSERT INTO {'markit_' if use_markit else ''}tranche_risk({cols}) "
        f"VALUES({place_holders}) ON CONFLICT (tranche_id) DO "
        f"UPDATE SET ({cols_ex_tranche_id}) = ({cols_excluded})"
    )
    return sql_str


if __name__ == "__main__":
    from serenitas.utils import SerenitasFileHandler
    from serenitas.utils.db import dbconn
    from serenitas.utils.env import CONFIG_DIR

    logger = logging.getLogger("tranche_calib")
    parser = argparse.ArgumentParser()
    parser.add_argument(
        "-u",
        "--update",
        action="store_true",
        default=False,
        help="Update from the last run date [default %default]",
    )
    parser.add_argument(
        "-c",
        "--config",
        metavar="config_file",
        help="Runs the list of indices provided in CONFIG_FILE",
    )
    parser.add_argument("-i", "--index", help="Index name we want to run")
    parser.add_argument(
        "--tenor", default="5yr", help="Tenor we want to run [default '5yr']"
    )
    parser.add_argument(
        "--until",
        default=prev_business_day(datetime.date.today()),
        type=datetime.date.fromisoformat,
    )
    parser.add_argument("--start_from", default=None, type=datetime.date.fromisoformat)
    parser.add_argument(
        "-d", "--debug", action="store_true", help="more verbose logging"
    )
    parser.add_argument(
        "-s", "--skewtype", action="store", help="skew type", default="bottomup"
    )
    parser.add_argument("-m", "--markit", action="store_true", help="Use Markit quotes")
    args = parser.parse_args()
    logger.setLevel(logging.DEBUG if args.debug else logging.INFO)
    if args.markit:
        TrancheBasket = MarkitTrancheBasket

    if not args.debug:
        handler = SerenitasFileHandler(f"calib_tranches_{datetime.date.today()}.log")
    else:
        handler = logging.StreamHandler()
        handler.setFormatter(SerenitasFileHandler._formatter)
    logger.handlers = [handler]

    start_dates = {  # 'hy10': datetime.date(2014, 8, 11),
        # 'hy15': datetime.date(2014, 6, 10),
        # 'hy17': datetime.date(2013, 1, 1),
        "hy19": datetime.date(2013, 2, 1),
        "hy21": datetime.date(2013, 10, 4),
        "hy23": datetime.date(2014, 10, 16),
        "hy25": datetime.date(2015, 10, 1),
        "hy27": datetime.date(2016, 10, 4),
        "hy29": datetime.date(2017, 10, 3),
        "hy31": datetime.date(2018, 10, 2),
        "hy33": datetime.date(2019, 10, 1),
        "hy35": datetime.date(2020, 10, 2),
        "hy37": datetime.date(2021, 10, 1),
        "ig9": datetime.date(2013, 1, 1),
        "ig19": datetime.date(2013, 5, 1),
        "ig21": datetime.date(2013, 9, 26),
        "ig23": datetime.date(2014, 10, 14),
        "ig25": datetime.date(2015, 9, 22),
        "ig27": datetime.date(2016, 9, 27),
        "ig29": datetime.date(2017, 9, 26),
        "ig31": datetime.date(2018, 9, 25),
        "ig33": datetime.date(2019, 9, 25),
        "ig35": datetime.date(2020, 9, 25),
        "ig37": datetime.date(2021, 9, 24),
        "xo22": datetime.date(2014, 10, 20),
        "xo24": datetime.date(2015, 9, 28),
        "xo26": datetime.date(2016, 9, 27),
        "xo28": datetime.date(2017, 9, 28),
        "xo30": datetime.date(2018, 9, 25),
        "xo32": datetime.date(2019, 10, 2),
        "xo34": datetime.date(2020, 9, 22),
        "xo36": datetime.date(2021, 9, 24),
        "eu9": datetime.date(2014, 9, 15),
        "eu19": datetime.date(2013, 4, 3),
        "eu21": datetime.date(2014, 3, 27),
        "eu22": datetime.date(2014, 10, 22),
        "eu24": datetime.date(2015, 9, 23),
        "eu26": datetime.date(2016, 9, 27),
        "eu28": datetime.date(2017, 9, 28),
        "eu30": datetime.date(2018, 9, 25),
        "eu32": datetime.date(2019, 9, 25),
        "eu34": datetime.date(2020, 9, 22),
        "eu36": datetime.date(2021, 9, 24),
    }

    serenitas_conn = dbconn("serenitasdb")
    if args.config is None:
        if args.index is None:
            raise ValueError("Please provide an index to run")
        config = {"runs": [(args.index, args.tenor, args.skewtype)]}
    else:
        with (CONFIG_DIR / args.config).open("r") as fh:
            config = full_load(fh)

    for index, tenor, skewtype in config["runs"]:
        begin_date = None
        index, series = index[:2].upper(), int(index[2:])
        if args.start_from is not None:
            begin_date = args.start_from
        if args.update:
            begin_date = get_lastdate(serenitas_conn, index, series, tenor)
            if begin_date is None:
                continue
        if not args.update and begin_date is None:
            try:
                begin_date = start_dates[f"{index.lower()}{series}"]
            except KeyError:
                print(index, series)
                continue

        dr = pd.bdate_range(begin_date, args.until)
        if dr.empty:
            continue
        logger.info(f"calibrating {index}, {series}, {tenor}")
        tranche_index = None

        data = {}
        for d in dr.date:
            logger.debug(f"calibrating for {d}")
            try:
                if tranche_index is None:
                    tranche_index = TrancheBasket(index, series, tenor, value_date=d)
                else:
                    tranche_index.value_date = d
            except (RuntimeError, ValueError) as e:
                logger.error(e)
                continue

            try:
                tranche_index.tweak()
            except ValueError as e:
                logger.error(e)
                break
            try:
                tranche_index.build_skew(skewtype)
            except ValueError as e:
                logger.error(e)
                logger.debug("Trying topdown")
                tranche_index.rho[:] = np.nan
                try:
                    tranche_index.build_skew("topdown")
                except ValueError:
                    logger.error(e)
                    continue

            df = pd.concat(
                [
                    tranche_index.tranche_deltas(),
                    tranche_index.tranche_fwd_deltas(),
                    tranche_index.tranche_durations(),
                    tranche_index.tranche_EL(),
                    tranche_index.tranche_spreads(),
                ],
                axis=1,
            )
            try:
                df["theta"] = tranche_index.tranche_thetas(method="TLP")
            except ValueError:
                df["theta"] = None

            (
                df["index_duration"],
                df["index_expected_loss"],
                df["index_price"],
            ) = tranche_index.index_pv(clean=True)
            df["index_expected_loss"] *= -1
            df["index_basis"] = tranche_index.tweaks[0]
            df["index_theta"] = tranche_index.theta()[tenor]
            df["tranche_id"] = tranche_index.tranche_quotes.id.values
            df["corr_at_detach"] = tranche_index.rho[1:]
            df["corr01"] = tranche_index.tranche_corr01()
            del df["fwd_gamma"]
            df["quote_price"] = (
                1 - tranche_index.tranche_quotes.quotes.values - tranche_index._accrued
            )
            df["calibrated_price"] = tranche_index.tranche_pvs().bond_price
            data[d] = df

        if data:
            data = pd.concat(data)
            sql_str = build_sql_str(data, args.markit)
            with serenitas_conn.cursor() as c:
                c.executemany(sql_str, data.to_dict(orient="records"))
            serenitas_conn.commit()