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import streamlit as st
import pandas as pd
import pandas_datareader as pdr
import numpy as np
import yfinance as yf
import json
import requests
from bs4 import BeautifulSoup
from typing import List
import xgboost as xgb
from tqdm import tqdm
from sklearn import linear_model
import joblib
import os
from sklearn.metrics import roc_auc_score, precision_score, recall_score
import datetime
from pandas.tseries.offsets import BDay
from datasets import load_dataset

def walk_forward_validation(df, target_column, num_training_rows, num_periods):
    
    # Create an XGBRegressor model
    # model = xgb.XGBRegressor(n_estimators=100, objective='reg:squarederror', random_state = 42)
    model = linear_model.LinearRegression()

    overall_results = []
    # Iterate over the rows in the DataFrame, one step at a time
    for i in tqdm(range(num_training_rows, df.shape[0] - num_periods + 1),desc='LR Model'):
        # Split the data into training and test sets
        X_train = df.drop(target_column, axis=1).iloc[:i]
        y_train = df[target_column].iloc[:i]
        X_test = df.drop(target_column, axis=1).iloc[i:i+num_periods]
        y_test = df[target_column].iloc[i:i+num_periods]
        
        # Fit the model to the training data
        model.fit(X_train, y_train)
        
        # Make a prediction on the test data
        predictions = model.predict(X_test)
        
        # Create a DataFrame to store the true and predicted values
        result_df = pd.DataFrame({'True': y_test, 'Predicted': predictions}, index=y_test.index)
        
        overall_results.append(result_df)

    df_results = pd.concat(overall_results)
    # model.save_model('model_lr.bin')
    # Return the true and predicted values, and fitted model
    return df_results, model

def walk_forward_validation_seq(df, target_column_clf, target_column_regr, num_training_rows, num_periods):

    # Create run the regression model to get its target
    res, model1 = walk_forward_validation(df.drop(columns=[target_column_clf]).dropna(), target_column_regr, num_training_rows, num_periods)
    # joblib.dump(model1, 'model1.bin')

    # Merge the result df back on the df for feeding into the classifier
    for_merge = res[['Predicted']]
    for_merge.columns = ['RegrModelOut']
    for_merge['RegrModelOut'] = for_merge['RegrModelOut'] > 0
    df = df.merge(for_merge, left_index=True, right_index=True)
    df = df.drop(columns=[target_column_regr])
    df = df[[
        'CurrentGap','RegrModelOut',
        'CurrentHigh30toClose',
        'CurrentLow30toClose',
        'CurrentClose30toClose',
        'CurrentRange30',
        'GapFill30',target_column_clf
        ]]
    
    df[target_column_clf] = df[target_column_clf].astype(bool)
    df['RegrModelOut'] = df['RegrModelOut'].astype(bool)

    # Create an XGBRegressor model
    model2 = xgb.XGBClassifier(n_estimators=10, random_state = 42)
    # model = linear_model.LogisticRegression(max_iter=1500)
    
    overall_results = []
    # Iterate over the rows in the DataFrame, one step at a time
    for i in tqdm(range(num_training_rows, df.shape[0] - num_periods + 1),'CLF Model'):
        # Split the data into training and test sets
        X_train = df.drop(target_column_clf, axis=1).iloc[:i]
        y_train = df[target_column_clf].iloc[:i]
        X_test = df.drop(target_column_clf, axis=1).iloc[i:i+num_periods]
        y_test = df[target_column_clf].iloc[i:i+num_periods]
        
        # Fit the model to the training data
        model2.fit(X_train, y_train)
        
        # Make a prediction on the test data
        predictions = model2.predict_proba(X_test)[:,-1]
        
        # Create a DataFrame to store the true and predicted values
        result_df = pd.DataFrame({'True': y_test, 'Predicted': predictions}, index=y_test.index)
        
        overall_results.append(result_df)

    df_results = pd.concat(overall_results)
    # model1.save_model('model_ensemble.bin')
    # joblib.dump(model2, 'model2.bin')
    # Return the true and predicted values, and fitted model
    return df_results, model1, model2

def seq_predict_proba(df, trained_reg_model, trained_clf_model):
    regr_pred = trained_reg_model.predict(df)
    regr_pred = regr_pred > 0
    new_df = df.copy()
    new_df['RegrModelOut'] = regr_pred
    clf_pred_proba = trained_clf_model.predict_proba(new_df[['CurrentGap','RegrModelOut',
    'CurrentHigh30toClose',
    'CurrentLow30toClose',
    'CurrentClose30toClose',
    'CurrentRange30',
    'GapFill30']])[:,-1]
    return clf_pred_proba

def get_data():
    # f = open('settings.json')
    # j = json.load(f)
    # API_KEY_FRED = j["API_KEY_FRED"]

    API_KEY_FRED = os.getenv('API_KEY_FRED')
    
    def parse_release_dates(release_id: str) -> List[str]:
        release_dates_url = f'https://api.stlouisfed.org/fred/release/dates?release_id={release_id}&realtime_start=2015-01-01&include_release_dates_with_no_data=true&api_key={API_KEY_FRED}'
        r = requests.get(release_dates_url)
        text = r.text
        soup = BeautifulSoup(text, 'xml')
        dates = []
        for release_date_tag in soup.find_all('release_date', {'release_id': release_id}):
            dates.append(release_date_tag.text)
        return dates

    def parse_release_dates_obs(series_id: str) -> List[str]:
        obs_url = f'https://api.stlouisfed.org/fred/series/observations?series_id={series_id}&realtime_start=2015-01-01&include_release_dates_with_no_data=true&api_key={API_KEY_FRED}'
        r = requests.get(obs_url)
        text = r.text
        soup = BeautifulSoup(text, 'xml')
        observations  = []
        for observation_tag in soup.find_all('observation'):
            date = observation_tag.get('date')
            value = observation_tag.get('value')
            observations.append((date, value))
        return observations

    econ_dfs = {}

    econ_tickers = [
        'WALCL',
        'NFCI',
        'WRESBAL'
    ]

    for et in tqdm(econ_tickers, desc='getting econ tickers'):
        # p = parse_release_dates_obs(et)
        # df = pd.DataFrame(columns = ['ds',et], data = p)
        df = pdr.get_data_fred(et)
        df.index = df.index.rename('ds')
        # df.index = pd.to_datetime(df.index.rename('ds')).dt.tz_localize(None)
        # df['ds'] = pd.to_datetime(df['ds']).dt.tz_localize(None)
        econ_dfs[et] = df

    # walcl = pd.DataFrame(columns = ['ds','WALCL'], data = p)
    # walcl['ds'] = pd.to_datetime(walcl['ds']).dt.tz_localize(None)

    # nfci = pd.DataFrame(columns = ['ds','NFCI'], data = p2)
    # nfci['ds'] = pd.to_datetime(nfci['ds']).dt.tz_localize(None)

    release_ids = [
        "10", # "Consumer Price Index"
        "46", # "Producer Price Index"
        "50", # "Employment Situation"
        "53", # "Gross Domestic Product"
        "103", # "Discount Rate Meeting Minutes"
        "180", # "Unemployment Insurance Weekly Claims Report"
        "194", # "ADP National Employment Report"
        "323" # "Trimmed Mean PCE Inflation Rate"
    ]

    release_names = [
        "CPI",
        "PPI",
        "NFP",
        "GDP",
        "FOMC",
        "UNEMP",
        "ADP",
        "PCE"
    ]

    releases = {}

    for rid, n in tqdm(zip(release_ids, release_names), total = len(release_ids), desc='Getting release dates'):
        releases[rid] = {}
        releases[rid]['dates'] = parse_release_dates(rid)
        releases[rid]['name'] = n 

    # Create a DF that has all dates with the name of the col as 1
    # Once merged on the main dataframe, days with econ events will be 1 or None. Fill NA with 0
    # This column serves as the true/false indicator of whether there was economic data released that day.
    for rid in tqdm(release_ids, desc='Making indicators'):
        releases[rid]['df'] = pd.DataFrame(
            index=releases[rid]['dates'],
            data={
            releases[rid]['name']: 1
            })
        releases[rid]['df'].index = pd.DatetimeIndex(releases[rid]['df'].index)
        # releases[rid]['df']['ds'] = pd.to_datetime(releases[rid]['df']['ds']).dt.tz_localize(None)
        # releases[rid]['df'] = releases[rid]['df'].set_index('ds')

    vix = yf.Ticker('^VIX')
    spx = yf.Ticker('^GSPC')

        
    # Pull in data
    data = load_dataset("boomsss/SPX_full_30min", split='train')

    rows = [d['text'] for d in data]
    rows = [x.split(',') for x in rows]

    fr = pd.DataFrame(columns=[
        'Datetime','Open','High','Low','Close'
    ], data = rows)

    fr['Datetime'] = pd.to_datetime(fr['Datetime'])
    fr['Datetime'] = fr['Datetime'].dt.tz_localize('America/New_York')
    fr = fr.set_index('Datetime')
    fr['Open'] = pd.to_numeric(fr['Open'])
    fr['High'] = pd.to_numeric(fr['High'])
    fr['Low'] = pd.to_numeric(fr['Low'])
    fr['Close'] = pd.to_numeric(fr['Close'])

    # Get incremental date
    last_date = fr.index.date[-1]
    last_date = last_date + datetime.timedelta(days=1)
    # Get incremental data
    spx1 = yf.Ticker('^GSPC')
    yfp = spx1.history(start=last_date, interval='30m')
    # Concat current and incremental
    df_30m = pd.concat([fr, yfp])
    # Get the first 30 minute bar
    df_30m = df_30m.reset_index()
    df_30m['Datetime'] = df_30m['Datetime'].dt.date
    df_30m = df_30m.groupby('Datetime').head(2)
    df_30m = df_30m.set_index('Datetime',drop=True)
    # Rename the columns
    df_30m = df_30m[['Open','High','Low','Close']]

    opens_1h = df_30m.groupby('Datetime')['Open'].head(1)
    highs_1h = df_30m.groupby('Datetime')['High'].max()
    lows_1h = df_30m.groupby('Datetime')['Low'].min()
    closes_1h = df_30m.groupby('Datetime')['Close'].tail(1)
    
    df_1h = pd.DataFrame(index=df_30m.index.unique())
    df_1h['Open'] = opens_1h
    df_1h['High'] = highs_1h
    df_1h['Low'] = lows_1h
    df_1h['Close'] = closes_1h

    df_1h.columns = ['Open30','High30','Low30','Close30']

    prices_vix = vix.history(start='2018-07-01', interval='1d')
    prices_spx = spx.history(start='2018-07-01', interval='1d')
    prices_spx['index'] = [str(x).split()[0] for x in prices_spx.index]
    prices_spx['index'] = pd.to_datetime(prices_spx['index']).dt.date
    prices_spx.index = prices_spx['index']
    prices_spx = prices_spx.drop(columns='index')
    prices_spx.index = pd.DatetimeIndex(prices_spx.index)


    prices_vix['index'] = [str(x).split()[0] for x in prices_vix.index]
    prices_vix['index'] = pd.to_datetime(prices_vix['index']).dt.date
    prices_vix.index = prices_vix['index']
    prices_vix = prices_vix.drop(columns='index')
    prices_vix.index = pd.DatetimeIndex(prices_vix.index)


    data = prices_spx.merge(df_1h, left_index=True, right_index=True)
    data = data.merge(prices_vix[['Open','High','Low','Close']], left_index=True, right_index=True, suffixes=['','_VIX'])

    # Features
    data['PrevClose'] = data['Close'].shift(1)
    data['Perf5Day'] = data['Close'] > data['Close'].shift(5)
    data['Perf5Day_n1'] = data['Perf5Day'].shift(1)
    data['Perf5Day_n1'] = data['Perf5Day_n1'].astype(bool)
    data['GreenDay'] = (data['Close'] > data['PrevClose']) * 1
    data['RedDay'] = (data['Close'] <= data['PrevClose']) * 1

    data['VIX5Day'] = data['Close_VIX'] > data['Close_VIX'].shift(5)
    data['VIX5Day_n1'] = data['VIX5Day'].astype(bool)

    data['Range'] = data[['Open','High']].max(axis=1) - data[['Low','Open']].min(axis=1) # Current day range in points
    data['RangePct'] = data['Range'] / data['Close']
    data['VIXLevel'] = pd.qcut(data['Close_VIX'], 4)
    data['OHLC4_VIX'] = data[['Open_VIX','High_VIX','Low_VIX','Close_VIX']].mean(axis=1)
    data['OHLC4'] = data[['Open','High','Low','Close']].mean(axis=1)
    data['OHLC4_Trend'] = data['OHLC4'] > data['OHLC4'].shift(1)
    data['OHLC4_Trend_n1'] = data['OHLC4_Trend'].shift(1)
    data['OHLC4_Trend_n1'] = data['OHLC4_Trend_n1'].astype(float)
    data['OHLC4_Trend_n2'] = data['OHLC4_Trend'].shift(1)
    data['OHLC4_Trend_n2'] = data['OHLC4_Trend_n2'].astype(float)
    data['RangePct_n1'] = data['RangePct'].shift(1)
    data['RangePct_n2'] = data['RangePct'].shift(2)
    data['OHLC4_VIX_n1'] = data['OHLC4_VIX'].shift(1)
    data['OHLC4_VIX_n2'] = data['OHLC4_VIX'].shift(2)
    data['CurrentGap'] = (data['Open'] - data['PrevClose']) / data['PrevClose']
    data['CurrentGap'] = data['CurrentGap'].shift(-1)
    data['DayOfWeek'] = pd.to_datetime(data.index)
    data['DayOfWeek'] = data['DayOfWeek'].dt.day

    # Intraday features
    data['CurrentHigh30'] = data['High30'].shift(-1)
    data['CurrentLow30'] = data['Low30'].shift(-1)
    data['CurrentClose30'] = data['Close30'].shift(-1)

    # Open to High
    data['CurrentHigh30toClose'] = (data['CurrentHigh30'] / data['Close']) - 1
    data['CurrentLow30toClose'] = (data['CurrentLow30'] / data['Close']) - 1
    data['CurrentClose30toClose'] = (data['CurrentClose30'] / data['Close']) - 1
    data['CurrentRange30'] = (data['CurrentHigh30'] - data['CurrentLow30']) / data['Close']
    data['GapFill30'] = [low <= prev_close if gap > 0 else high >= prev_close for high, low, prev_close, gap in zip(data['CurrentHigh30'], data['CurrentLow30'], data['Close'], data['CurrentGap'])]

    # Target -- the next day's low
    data['Target'] = (data['OHLC4'] / data['PrevClose']) - 1
    data['Target'] = data['Target'].shift(-1)
    # data['Target'] = data['RangePct'].shift(-1)

    # Target for clf -- whether tomorrow will close above or below today's close
    data['Target_clf'] = data['Close'] > data['PrevClose']
    data['Target_clf'] = data['Target_clf'].shift(-1)
    data['DayOfWeek'] = pd.to_datetime(data.index)
    data['Quarter'] = data['DayOfWeek'].dt.quarter
    data['DayOfWeek'] = data['DayOfWeek'].dt.weekday

    for rid in tqdm(release_ids, desc='Merging econ data'):
        # Get the name of the release
        n = releases[rid]['name']
        # Merge the corresponding DF of the release
        data = data.merge(releases[rid]['df'], how = 'left', left_index=True, right_index=True)
        # Create a column that shifts the value in the merged column up by 1
        data[f'{n}_shift'] = data[n].shift(-1)
        # Fill the rest with zeroes
        data[n] = data[n].fillna(0)
        data[f'{n}_shift'] = data[f'{n}_shift'].fillna(0)
        
    data['BigNewsDay'] = data[[x for x in data.columns if '_shift' in x]].max(axis=1)

    def cumul_sum(col):
        nums = []
        s = 0
        for x in col:
            if x == 1:
                s += 1
            elif x == 0:
                s = 0
            nums.append(s)
        return nums

    consec_green = cumul_sum(data['GreenDay'].values)
    consec_red = cumul_sum(data['RedDay'].values)

    data['DaysGreen'] = consec_green
    data['DaysRed'] = consec_red

    final_row = data.index[-2]

    exp_row = data.index[-1]

    df_final = data.loc[:final_row,
    [
        'BigNewsDay',
        'Quarter',
        'Perf5Day',
        'Perf5Day_n1',
        'DaysGreen',
        'DaysRed',
        'CurrentHigh30toClose',
        'CurrentLow30toClose',
        'CurrentClose30toClose',
        'CurrentRange30',
        'GapFill30',
        # 'OHLC4_Trend',
        # 'OHLC4_Trend_n1',
        # 'OHLC4_Trend_n2',
        # 'VIX5Day',
        # 'VIX5Day_n1',
        'CurrentGap',
        'RangePct',
        'RangePct_n1',
        'RangePct_n2',
        'OHLC4_VIX',
        'OHLC4_VIX_n1',
        'OHLC4_VIX_n2',
        'Target',
        'Target_clf'
        ]]
    df_final = df_final.dropna(subset=['Target','Target_clf','Perf5Day_n1'])
    return data, df_final, final_row