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基于Python实现股票数据分析的可视化

2022-01-06 04:07 1191 查看
目录
  • 三、数据样例的展示
    • 四、效果展示
      • 一、简介

        我们知道在购买股票的时候,可以使用历史数据来对当前的股票的走势进行预测,这就需要对股票的数据进行获取并且进行一定的分析,当然了,人们是比较喜欢图形化的界面的,因此,我们在这里采用一种可视化的方法来实现股票数据的分析。

        二、代码

        1、主文件

        from work1 import get_data
        from work1 import read_data
        from work1 import plot_data
        import pymysql
        from uitest import MyFrame1
        import wx
        from database1 import write_to_base
        import time
        
        class CalcFrame(MyFrame1):
        def __init__(self, parent):
        MyFrame1.__init__(self, parent)
        # Virtual event handlers, overide them in your derived class
        
        def get_data(self, event):
        """
        获取数据
        :param event: 点击
        :return: 空
        """
        get_data()
        time.sleep(2)
        dlg = wx.MessageDialog(None, '已经成功获取数据', '获取数据')
        
        result = dlg.ShowModal()
        dlg.Destroy()
        
        event.Skip()
        
        def store_data(self, event):
        """
        存储数据
        :param event: 点击
        :return: 空
        """
        write_to_base()
        
        dlg = wx.MessageDialog(None, '已经成功存储数据', '存储数据')
        
        result = dlg.ShowModal()
        dlg.Destroy()
        
        event.Skip()
        
        def read_data(self, event):
        """
        读取数据
        :param event: 点击
        :return: 空
        """
        df0 = read_data()
        
        dlg = wx.MessageDialog(None, '已经成功读取数据', '读取数据')
        
        result = dlg.ShowModal()
        dlg.Destroy()
        
        event.Skip()
        
        def show_data(self, event):
        """
        展示数据
        :param event: 点击
        :return: 空
        """
        df0 = read_data()
        plot_data(df0)
        
        event.Skip()
        
        if __name__ == '__main__':
        """
        主函数
        """
        
        app = wx.App(False)
        frame = CalcFrame(None)
        frame.Show(True)
        # start the applications
        app.MainLoop()

        2、数据库使用文件

        import pymysql
        import pandas as pd
        
        def write_to_base():
        # pass
        
        """
        写入数据库
        :return:空
        """
        df0 = pd.read_csv('./data.csv')
        df0[['ts_code']] = df0[['ts_code']].astype(str)
        df0[['trade_date']] = df0[['trade_date']].astype(str)
        df0[['open']] = df0[['open']].astype(str)
        df0[['high']] = df0[['high']].astype(str)
        df0[['low']] = df0[['low']].astype(str)
        df0[['close']] = df0[['close']].astype(str)
        df0[['pre_close']] = df0[['pre_close']].astype(str)
        df0[['change']] = df0[['change']].astype(str)
        df0[['pct_chg']] = df0[['pct_chg']].astype(str)
        df0[['vol']] = df0[['vol']].astype(str)
        df0[['amount']] = df0[['amount']].astype(str)
        # df0[['pre_close']] = df0[['pre_close']].astype(str)
        # df0[['ts_code']] = df0[['ts_code']].astype(str)
        
        # 打开数据库连接
        # print(data)
        # data = tuple(data)
        db = pymysql.connect(host="localhost",
        user="root",
        password="671513",
        db="base1")
        
        # 使用cursor()方法获取操作游标
        cursor = db.cursor()
        # db.commit()
        # db.ping(reconnect=True)
        db.ping(reconnect=True)
        cursor.execute("use base1")
        
        db.commit()
        
        cursor.execute("truncate table tb")
        db.commit()
        
        sql = "INSERT INTO tb(ts_code,trdae_date,open,high,low,close,pre_close,changed,pct_chg,vol,amount) \
        VALUES ('%s', '%s',  '%s',  '%s',  '%s', '%s', '%s',  '%s',  '%s',  '%s', '%s')"
        # ('%s', '%s',  '%s',  '%s',  '%s', '%s', '%s',  '%s',  '%s',  '%s', '%s')"
        # ('000001.SZ','20210716','21.41','21.82','21.3','21.34','21.62','-0.28','-1.2951','573002.61','1230180.813')
        # ('%s', '%s',  '%s',  '%s',  '%s', '%s', '%s',  '%s',  '%s',  '%s', '%s')
        
        for i in range(220):
        
        db.ping(reconnect=True)
        # 执行sql语句
        cursor.execute(sql %\
        (df0.iloc[i, 1], df0.iloc[i, 2], df0.iloc[i, 3], df0.iloc[i, 4],
        df0.iloc[i, 5], df0.iloc[i, 6], df0.iloc[i, 7], df0.iloc[i, 8],
        df0.iloc[i, 9], df0.iloc[i, 10], df0.iloc[i, 11]))
        # 执行sql语句
        db.commit()
        
        # 关闭数据库连接
        db.close()

        3、ui设计模块

        # -*- coding: utf-8 -*-
        
        ###########################################################################
        ## Python code generated with wxFormBuilder (version Jun 17 2015)
        ## http://www.wxformbuilder.org/
        ##
        ## PLEASE DO "NOT" EDIT THIS FILE!
        ###########################################################################
        
        import wx
        import wx.xrc
        
        ###########################################################################
        ## Class MyFrame1
        ###########################################################################
        
        class MyFrame1(wx.Frame):
        
        def __init__(self, parent):
        wx.Frame.__init__(self, parent, id=wx.ID_ANY, title=u"股票数据分析", pos=wx.DefaultPosition, size=wx.Size(309, 300),
        style=wx.DEFAULT_FRAME_STYLE | wx.TAB_TRAVERSAL)
        
        self.SetSizeHintsSz(wx.DefaultSize, wx.DefaultSize)
        
        bSizer1 = wx.BoxSizer(wx.VERTICAL)
        
        self.m_button1 = wx.Button(self, wx.ID_ANY, u"获取数据", wx.DefaultPosition, wx.DefaultSize, 0)
        bSizer1.Add(self.m_button1, 1, wx.ALL | wx.EXPAND, 5)
        
        self.m_button2 = wx.Button(self, wx.ID_ANY, u"存储数据", wx.DefaultPosition, wx.DefaultSize, 0)
        bSizer1.Add(self.m_button2, 1, wx.ALL | wx.EXPAND, 5)
        
        self.m_button3 = wx.Button(self, wx.ID_ANY, u"读取数据", wx.DefaultPosition, wx.DefaultSize, 0)
        bSizer1.Add(self.m_button3, 1, wx.ALL | wx.EXPAND, 5)
        
        self.m_button4 = wx.Button(self, wx.ID_ANY, u"展示曲线", wx.DefaultPosition, wx.DefaultSize, 0)
        bSizer1.Add(self.m_button4, 1, wx.ALL | wx.EXPAND, 5)
        
        self.SetSizer(bSizer1)
        self.Layout()
        
        self.Centre(wx.BOTH)
        
        # Connect Events
        self.m_button1.Bind(wx.EVT_BUTTON, self.get_data)
        self.m_button2.Bind(wx.EVT_BUTTON, self.store_data)
        self.m_button3.Bind(wx.EVT_BUTTON, self.read_data)
        self.m_button4.Bind(wx.EVT_BUTTON, self.show_data)
        
        def __del__(self):
        pass
        
        # Virtual event handlers, overide them in your derived class
        def get_data(self, event):
        event.Skip()
        
        def store_data(self, event):
        event.Skip()
        
        def read_data(self, event):
        event.Skip()
        
        def show_data(self, event):
        event.Skip()
        #
        #
        # class CalcFrame(MyFrame1):
        #     def __init__(self, parent):
        #         MyFrame1.__init__(self, parent)
        #
        #
        # app = wx.App(False)
        #
        # frame = CalcFrame(None)
        #
        # frame.Show(True)
        #
        # # start the applications
        # app.MainLoop()

        4、数据处理模块

        import numpy as np
        import tushare as ts
        import matplotlib.pyplot as plt
        import pandas as pd
        
        def get_data():
        """
        获取数据
        :return: 空
        """
        
        # 获取股票的数据
        pro = ts.pro_api('c62ba9195fa8b54ff78a38cab1cec01b15def7f47c32f91fb273ee3a')
        df = pro.daily(ts_code='000001.SZ', start_date='20200101', end_date='20201130')
        # 存储数据到一个文件中
        df.to_csv('./data.csv')
        print(df)
        
        def read_data():
        """
        读取数据
        :return: 空
        """
        
        # 读取数据
        df = pd.read_csv('./data.csv')
        # 删除不需要的行
        df = df.drop(['Unnamed: 0'], axis=1)
        df = df.drop(['ts_code'], axis=1)
        # 反转行使得时间是从前到后的
        df = df.iloc[::-1, :]
        # 将时间由数字转为字符串
        for i in range(220):
        df.iloc[i, 0] = str(df.iloc[i, 0])
        # 将字符串转为时间类型的数据
        df['trade_date'] = pd.to_datetime(df['trade_date'])
        # 将时间设置为索引
        df = df.set_index(['trade_date'])
        df = df.iloc[:, :]
        print(df)
        return df
        
        def plot_data(df):
        """
        展示数据
        :param df: 一个DataFrame
        :return: 空
        """
        
        ma5 = (df['close'].rolling(5).mean()).iloc[30:]
        
        ma10 = (df['close'].rolling(10).mean()).iloc[30:]
        
        ma20 = (df['close'].rolling(20).mean()).iloc[30:]
        
        plt.figure(figsize=(16, 9))
        
        l1, = plt.plot(ma5, label="ma5")
        
        l2, = plt.plot(ma10, label="ma10")
        
        l3, = plt.plot(ma20, label="ma20")
        
        l4, = plt.plot(df['close'].iloc[30:], label="close")
        
        plt.legend(handles=[l1, l2, l3, l4], labels=["ma5", "ma10", "ma20", "close"])
        plt.show()

        三、数据样例的展示

        ,ts_code,trade_date,open,high,low,close,pre_close,change,pct_chg,vol,amount
        0,000001.SZ,20201130,19.9,20.88,19.59,19.74,19.7,0.04,0.203,1581441.28,3213680.47
        1,000001.SZ,20201127,20.0,20.0,19.38,19.7,19.5,0.2,1.0256,753773.74,1479430.635
        2,000001.SZ,20201126,19.05,19.61,19.03,19.5,19.06,0.44,2.3085,639657.89,1240074.378
        3,000001.SZ,20201125,19.48,19.7,19.05,19.06,19.36,-0.3,-1.5496,552585.01,1068352.014
        4,000001.SZ,20201124,19.62,19.68,19.17,19.36,19.62,-0.26,-1.3252,678543.23,1313496.136
        5,000001.SZ,20201123,18.85,19.62,18.8,19.62,18.86,0.76,4.0297,1165858.26,2252290.578
        6,000001.SZ,20201120,18.83,18.99,18.52,18.86,18.85,0.01,0.0531,673919.22,1265262.915
        7,000001.SZ,20201119,18.59,18.98,18.3,18.85,18.46,0.39,2.1127,1211740.62,2270476.474
        8,000001.SZ,20201118,17.78,18.5,17.75,18.46,17.83,0.63,3.5334,1373400.72,2508632.642
        9,000001.SZ,20201117,17.38,17.93,17.25,17.83,17.37,0.46,2.6482,852930.51,1509511.577
        10,000001.SZ,20201116,17.08,17.43,16.9,17.37,17.18,0.19,1.1059,759856.93,1308190.459
        11,000001.SZ,20201113,17.42,17.47,16.69,17.18,17.66,-0.48,-2.718,1289189.23,2191492.021
        12,000001.SZ,20201112,17.81,17.94,17.45,17.66,17.81,-0.15,-0.8422,677258.48,1197284.181
        13,000001.SZ,20201111,18.2,18.3,17.6,17.81,18.11,-0.3,-1.6565,940130.07,1677811.478
        14,000001.SZ,20201110,18.0,18.5,17.93,18.11,17.84,0.27,1.5135,1021062.81,1854142.808
        15,000001.SZ,20201109,17.67,18.0,17.54,17.84,17.64,0.2,1.1338,951424.32,1688807.401
        16,000001.SZ,20201106,17.71,17.75,17.22,17.64,17.7,-0.06,-0.339,848781.53,1486492.208
        17,000001.SZ,20201105,18.37,18.5,17.54,17.7,18.32,-0.62,-3.3843,1429469.44,2558562.453
        18,000001.SZ,20201104,18.35,18.48,17.96,18.32,17.96,0.36,2.0045,1247636.4,2275824.963
        19,000001.SZ,20201103,17.71,18.34,17.7,17.96,17.63,0.33,1.8718,957868.63,1727488.481
        20,000001.SZ,20201102,17.65,18.05,17.33,17.63,17.75,-0.12,-0.6761,968452.77,1702741.437
        21,000001.SZ,20201030,17.74,18.36,17.6,17.75,17.77,-0.02,-0.1125,1007803.83,1813064.343
        22,000001.SZ,20201029,17.54,17.93,17.35,17.77,17.63,0.14,0.7941,846603.62,1498040.947
        23,000001.SZ,20201028,17.76,17.9,17.29,17.63,17.76,-0.13,-0.732,1205823.86,2125604.541
        24,000001.SZ,20201027,18.0,18.0,17.5,17.76,17.7,0.06,0.339,1034865.04,1839243.224
        25,000001.SZ,20201026,18.2,18.29,17.45,17.7,18.13,-0.43,-2.3718,1175598.65,2085800.598
        26,000001.SZ,20201023,17.53,18.78,17.53,18.13,17.56,0.57,3.246,1698501.68,3105623.948
        27,000001.SZ,20201022,17.94,18.5,17.3,17.56,17.91,-0.35,-1.9542,1890519.05,3342069.01
        28,000001.SZ,20201021,17.64,18.0,17.33,17.91,17.54,0.37,2.1095,1244560.18,2204040.364
        29,000001.SZ,20201020,17.48,17.6,17.25,17.54,17.48,0.06,0.3432,960071.95,1673173.355
        30,000001.SZ,20201019,17.3,18.1,17.3,17.48,17.1,0.38,2.2222,2016105.52,3571336.006
        31,000001.SZ,20201016,16.56,17.37,16.54,17.1,16.56,0.54,3.2609,2095614.19,3589229.558
        32,000001.SZ,20201015,16.2,16.92,16.15,16.56,16.03,0.53,3.3063,1600062.32,2654379.585
        33,000001.SZ,20201014,16.04,16.12,15.8,16.03,16.06,-0.03,-0.1868,662562.36,1057937.816
        34,000001.SZ,20201013,15.9,16.11,15.77,16.06,15.9,0.16,1.0063,908819.48,1453986.337
        35,000001.SZ,20201012,15.22,16.05,15.21,15.9,15.18,0.72,4.7431,1591347.15,2509002.885
        36,000001.SZ,20201009,15.3,15.55,15.13,15.18,15.17,0.01,0.0659,900425.93,1376995.906
        37,000001.SZ,20200930,14.8,15.27,14.8,15.17,14.8,0.37,2.5,1217064.82,1838547.595
        38,000001.SZ,20200929,15.39,15.41,14.76,14.8,15.31,-0.51,-3.3312,1182374.4,1766848.544
        39,000001.SZ,20200928,15.19,15.37,14.98,15.31,15.19,0.12,0.79,612711.11,932800.766
        40,000001.SZ,20200925,15.2,15.31,15.11,15.19,15.12,0.07,0.463,614087.0,933035.044
        41,000001.SZ,20200924,15.59,15.61,15.12,15.12,15.63,-0.51,-3.263,1061011.24,1623376.2
        42,000001.SZ,20200923,15.59,15.83,15.51,15.63,15.57,0.06,0.3854,599200.47,939763.265
        43,000001.SZ,20200922,15.67,15.84,15.39,15.57,15.86,-0.29,-1.8285,867756.31,1354536.272
        44,000001.SZ,20200921,16.0,16.05,15.71,15.86,16.07,-0.21,-1.3068,896161.65,1418370.973
        45,000001.SZ,20200918,15.62,16.09,15.52,16.07,15.57,0.5,3.2113,1373193.3,2186759.087
        46,000001.SZ,20200917,15.54,15.72,15.4,15.57,15.44,0.13,0.842,988215.63,1543414.501
        47,000001.SZ,20200916,15.32,15.54,15.21,15.44,15.35,0.09,0.5863,722414.75,1114667.832
        48,000001.SZ,20200915,15.2,15.48,15.15,15.35,15.3,0.05,0.3268,657132.67,1007999.044
        49,000001.SZ,20200914,15.01,15.3,14.92,15.3,15.01,0.29,1.932,680251.05,1027508.108
        50,000001.SZ,20200911,15.18,15.3,14.82,15.01,15.34,-0.33,-2.1512,954236.25,1431844.02
        51,000001.SZ,20200910,15.32,15.48,15.2,15.34,15.21,0.13,0.8547,957092.39,1469402.768
        52,000001.SZ,20200909,15.26,15.56,15.13,15.21,15.43,-0.22,-1.4258,1013572.47,1554005.575
        53,000001.SZ,20200908,15.0,15.43,15.0,15.43,14.94,0.49,3.2798,1407601.66,2154220.778
        54,000001.SZ,20200907,14.88,15.24,14.83,14.94,14.96,-0.02,-0.1337,1031376.81,1551971.38
        55,000001.SZ,20200904,14.73,15.06,14.6,14.96,14.9,0.06,0.4027,909889.99,1353550.808
        56,000001.SZ,20200903,15.32,15.33,14.84,14.9,15.32,-0.42,-2.7415,1279841.59,1919266.726
        57,000001.SZ,20200902,15.01,15.53,15.01,15.32,15.14,0.18,1.1889,1679382.97,2575966.637
        58,000001.SZ,20200901,14.96,15.23,14.88,15.14,15.08,0.06,0.3979,813642.58,1228342.741
        59,000001.SZ,20200831,15.3,15.68,14.99,15.08,15.13,-0.05,-0.3305,1797129.54,2760350.322
        60,000001.SZ,20200828,14.26,15.18,14.26,15.13,14.46,0.67,4.6335,2410400.02,3599035.694
        61,000001.SZ,20200827,14.4,14.46,14.11,14.46,14.37,0.09,0.6263,626666.77,895618.648
        62,000001.SZ,20200826,14.6,14.61,14.28,14.37,14.6,-0.23,-1.5753,734117.72,1057274.169
        63,000001.SZ,20200825,14.56,14.69,14.46,14.6,14.46,0.14,0.9682,748320.22,1090756.854
        64,000001.SZ,20200824,14.5,14.71,14.41,14.46,14.45,0.01,0.0692,919448.86,1338031.969
        65,000001.SZ,20200821,14.71,14.71,14.32,14.45,14.59,-0.14,-0.9596,1234517.33,1787278.581
        66,000001.SZ,20200820,15.01,15.14,14.53,14.59,15.1,-0.51,-3.3775,1333801.62,1962605.013
        67,000001.SZ,20200819,15.11,15.35,14.96,15.1,15.15,-0.05,-0.33,1420928.11,2154215.097
        68,000001.SZ,20200818,15.2,15.3,14.91,15.15,15.19,-0.04,-0.2633,1350261.07,2033477.707
        69,000001.SZ,20200817,14.6,15.35,14.55,15.19,14.47,0.72,4.9758,3268027.8,4923669.137
        70,000001.SZ,20200814,14.1,14.51,14.06,14.47,14.18,0.29,2.0451,1103215.82,1578543.607
        71,000001.SZ,20200813,14.4,14.46,14.14,14.18,14.38,-0.2,-1.3908,837261.75,1190139.725
        72,000001.SZ,20200812,14.21,14.5,14.15,14.38,14.13,0.25,1.7693,1596811.7,2287731.088
        73,000001.SZ,20200811,13.97,14.66,13.97,14.13,13.95,0.18,1.2903,2603307.89,3748036.828
        74,000001.SZ,20200810,13.67,14.02,13.62,13.95,13.7,0.25,1.8248,1587710.35,2208568.316
        75,000001.SZ,20200807,13.8,13.9,13.62,13.7,13.9,-0.2,-1.4388,988678.37,1356305.781
        76,000001.SZ,20200806,13.82,13.96,13.65,13.9,13.76,0.14,1.0174,1352510.68,1868047.342
        77,000001.SZ,20200805,13.82,13.85,13.62,13.76,14.04,-0.28,-1.9943,1440203.13,1980352.978
        78,000001.SZ,20200804,13.66,14.15,13.48,14.04,13.59,0.45,3.3113,2445663.25,3388510.059
        79,000001.SZ,20200803,13.47,13.62,13.43,13.59,13.34,0.25,1.8741,1445096.16,1954607.257
        80,000001.SZ,20200731,13.28,13.53,13.25,13.34,13.37,-0.03,-0.2244,1165821.91,1559068.291
        81,000001.SZ,20200730,13.5,13.51,13.37,13.37,13.54,-0.17,-1.2555,964067.63,1294444.933
        82,000001.SZ,20200729,13.35,13.63,13.21,13.54,13.34,0.2,1.4993,1519580.25,2043847.472
        83,000001.SZ,20200728,13.34,13.43,13.18,13.34,13.24,0.1,0.7553,1217005.99,1618089.558
        84,000001.SZ,20200727,13.67,13.68,13.1,13.24,13.5,-0.26,-1.9259,1880653.35,2497551.472
        85,000001.SZ,20200724,13.97,13.99,13.42,13.5,14.01,-0.51,-3.6403,1830881.83,2504647.111
        86,000001.SZ,20200723,14.24,14.29,13.81,14.01,14.41,-0.4,-2.7759,2027525.87,2838535.21
        87,000001.SZ,20200722,14.49,14.65,14.27,14.41,14.49,-0.08,-0.5521,1312951.59,1895447.229
        88,000001.SZ,20200721,14.68,14.68,14.4,14.49,14.73,-0.24,-1.6293,1252865.69,1815570.3
        89,000001.SZ,20200720,14.23,14.77,14.1,14.73,14.14,0.59,4.1726,1979632.0,2872758.056
        90,000001.SZ,20200717,14.17,14.28,13.95,14.14,14.15,-0.01,-0.0707,1291346.77,1821043.927
        91,000001.SZ,20200716,14.3,14.55,14.12,14.15,14.27,-0.12,-0.8409,1930891.29,2771496.391
        92,000001.SZ,20200715,14.78,14.86,14.23,14.27,14.68,-0.41,-2.7929,2042562.83,2947173.149
        93,000001.SZ,20200714,14.9,15.19,14.55,14.68,14.89,-0.21,-1.4103,1953566.27,2891773.817
        94,000001.SZ,20200713,14.7,15.08,14.5,14.89,14.86,0.03,0.2019,1937160.12,2871414.844
        95,000001.SZ,20200710,15.35,15.48,14.76,14.86,15.53,-0.67,-4.3142,2158773.26,3254272.377
        96,000001.SZ,20200709,15.66,15.66,15.31,15.53,15.76,-0.23,-1.4594,2243994.4,3469517.329
        97,000001.SZ,20200708,15.23,16.0,15.23,15.76,15.48,0.28,1.8088,2631339.16,4095447.757
        98,000001.SZ,20200707,16.3,16.63,15.03,15.48,15.68,-0.2,-1.2755,3964427.47,6267919.683
        99,000001.SZ,20200706,14.6,15.68,14.59,15.68,14.25,1.43,10.0351,4711460.78,7168653.356
        100,000001.SZ,20200703,13.57,14.32,13.56,14.25,13.43,0.82,6.1057,3768333.63,5280918.011
        101,000001.SZ,20200702,13.08,13.49,12.97,13.43,13.12,0.31,2.3628,2590501.19,3433511.084
        102,000001.SZ,20200701,12.79,13.15,12.74,13.12,12.8,0.32,2.5,1697390.01,2202800.843
        103,000001.SZ,20200630,12.83,12.88,12.72,12.8,12.8,0.0,0.0,937940.22,1199181.601
        104,000001.SZ,20200629,12.92,12.97,12.71,12.8,12.8,0.0,0.0,1038480.06,1330678.288
        105,000001.SZ,20200624,12.64,12.88,12.6,12.8,12.6,0.2,1.5873,1523220.48,1946329.095
        106,000001.SZ,20200623,12.65,12.69,12.52,12.6,12.64,-0.04,-0.3165,990806.73,1248046.646
        107,000001.SZ,20200622,12.74,12.76,12.62,12.64,12.8,-0.16,-1.25,1319079.79,1671023.278
        108,000001.SZ,20200619,12.73,12.84,12.61,12.8,12.76,0.04,0.3135,1539521.78,1954584.919
        109,000001.SZ,20200618,12.76,12.8,12.59,12.76,12.85,-0.09,-0.7004,1119647.8,1419972.017
        110,000001.SZ,20200617,12.89,12.92,12.76,12.85,12.89,-0.04,-0.3103,716468.24,918251.153
        111,000001.SZ,20200616,12.9,12.99,12.86,12.89,12.82,0.07,0.546,718059.1,927043.687
        112,000001.SZ,20200615,12.85,12.97,12.8,12.82,12.99,-0.17,-1.3087,660313.07,850767.506
        113,000001.SZ,20200612,12.9,13.02,12.87,12.99,13.08,-0.09,-0.6881,1030550.57,1331618.728
        114,000001.SZ,20200611,13.38,13.39,13.0,13.08,13.49,-0.41,-3.0393,1349039.82,1774199.978
        115,000001.SZ,20200610,13.71,13.71,13.4,13.49,13.67,-0.18,-1.3168,580476.2,781995.749
        116,000001.SZ,20200609,13.64,13.73,13.53,13.67,13.62,0.05,0.3671,474300.07,646895.834
        117,000001.SZ,20200608,13.68,13.85,13.58,13.62,13.59,0.03,0.2208,585971.9,802115.792
        118,000001.SZ,20200605,13.6,13.62,13.43,13.59,13.57,0.02,0.1474,383026.9,517232.135
        119,000001.SZ,20200604,13.53,13.64,13.41,13.57,13.54,0.03,0.2216,583066.33,788707.63
        120,000001.SZ,20200603,13.64,13.88,13.5,13.54,13.55,-0.01,-0.0738,956803.08,1308782.294
        121,000001.SZ,20200602,13.29,13.63,13.28,13.55,13.32,0.23,1.7267,883458.88,1194375.822
        122,000001.SZ,20200601,13.1,13.39,13.08,13.32,13.0,0.32,2.4615,882960.55,1173619.006
        123,000001.SZ,20200529,13.01,13.04,12.92,13.0,13.07,-0.07,-0.5356,457808.22,594502.123
        124,000001.SZ,20200528,12.87,13.18,12.81,13.07,12.78,0.29,2.2692,960760.31,1255226.999
        125,000001.SZ,20200527,13.05,13.19,12.96,13.0,13.04,-0.04,-0.3067,482962.94,630305.864
        126,000001.SZ,20200526,13.02,13.07,12.94,13.04,12.96,0.08,0.6173,396212.4,515451.849
        127,000001.SZ,20200525,12.97,12.98,12.76,12.96,12.92,0.04,0.3096,410170.78,528769.352
        128,000001.SZ,20200522,13.33,13.34,12.92,12.92,13.4,-0.48,-3.5821,856237.33,1119433.491
        129,000001.SZ,20200521,13.52,13.57,13.36,13.4,13.51,-0.11,-0.8142,552312.0,742797.057
        130,000001.SZ,20200520,13.38,13.62,13.27,13.51,13.36,0.15,1.1228,690851.07,929928.885
        131,000001.SZ,20200519,13.41,13.45,13.27,13.36,13.2,0.16,1.2121,600368.64,801755.671
        132,000001.SZ,20200518,13.2,13.34,13.12,13.2,13.23,-0.03,-0.2268,637208.57,843479.669
        133,000001.SZ,20200515,13.39,13.43,13.14,13.23,13.3,-0.07,-0.5263,756794.47,1004313.267
        134,000001.SZ,20200514,13.55,13.59,13.22,13.3,13.63,-0.33,-2.4211,944672.09,1259440.848
        135,000001.SZ,20200513,13.75,13.78,13.53,13.63,13.79,-0.16,-1.1603,640358.79,871062.043
        136,000001.SZ,20200512,13.95,14.05,13.72,13.79,14.0,-0.21,-1.5,558511.14,772109.502
        137,000001.SZ,20200511,13.92,14.13,13.9,14.0,13.95,0.05,0.3584,612862.29,859156.594
        138,000001.SZ,20200508,13.76,14.02,13.68,13.95,13.69,0.26,1.8992,934781.7,1297924.588
        139,000001.SZ,20200507,13.76,13.76,13.6,13.69,13.77,-0.08,-0.581,662749.23,904349.531
        140,000001.SZ,20200506,13.76,13.89,13.61,13.77,13.93,-0.16,-1.1486,1008998.02,1382727.481
        141,000001.SZ,20200430,14.02,14.32,13.88,13.93,14.02,-0.09,-0.6419,819540.43,1155968.238
        142,000001.SZ,20200429,13.48,14.1,13.45,14.02,13.52,0.5,3.6982,1108722.39,1541638.203
        143,000001.SZ,20200428,13.45,13.56,13.27,13.52,13.5,0.02,0.1481,771564.17,1038718.08
        144,000001.SZ,20200427,13.3,13.64,13.25,13.5,13.24,0.26,1.9637,936829.9,1263809.737
        145,000001.SZ,20200424,13.17,13.28,13.11,13.24,13.23,0.01,0.0756,566001.61,747473.77
        146,000001.SZ,20200423,13.23,13.31,13.11,13.23,13.23,0.0,0.0,646989.63,855052.11
        147,000001.SZ,20200422,13.37,13.42,13.16,13.23,13.45,-0.22,-1.6357,1032802.74,1368222.854
        148,000001.SZ,20200421,13.3,13.7,13.3,13.45,12.99,0.46,3.5412,2122448.34,2861879.086
        149,000001.SZ,20200420,12.86,13.05,12.77,12.99,12.89,0.1,0.7758,818455.83,1058524.019
        150,000001.SZ,20200417,12.77,13.04,12.65,12.89,12.68,0.21,1.6562,1331164.77,1713215.766
        151,000001.SZ,20200416,12.79,12.79,12.54,12.68,12.87,-0.19,-1.4763,789154.98,997623.816
        152,000001.SZ,20200415,12.86,12.93,12.78,12.87,12.86,0.01,0.0778,656396.4,843649.273
        153,000001.SZ,20200414,12.65,12.86,12.57,12.86,12.59,0.27,2.1446,686086.87,874856.562
        154,000001.SZ,20200413,12.67,12.71,12.47,12.59,12.79,-0.2,-1.5637,446214.4,562008.05
        155,000001.SZ,20200410,12.76,12.98,12.65,12.79,12.74,0.05,0.3925,666674.95,853689.95
        156,000001.SZ,20200409,12.88,12.89,12.72,12.74,12.78,-0.04,-0.313,408553.77,522027.888
        157,000001.SZ,20200408,12.88,12.92,12.72,12.78,12.88,-0.1,-0.7764,528716.14,676604.872
        158,000001.SZ,20200407,12.89,12.94,12.81,12.88,12.61,0.27,2.1412,870313.71,1121200.115
        159,000001.SZ,20200403,12.82,12.89,12.55,12.61,12.97,-0.36,-2.7756,825348.14,1047282.4
        160,000001.SZ,20200402,12.75,12.97,12.66,12.97,12.89,0.08,0.6206,518365.04,663197.628
        161,000001.SZ,20200401,12.86,13.13,12.82,12.89,12.8,0.09,0.7031,520836.04,676070.117
        162,000001.SZ,20200331,13.05,13.09,12.78,12.8,12.94,-0.14,-1.0819,513370.3,662915.471
        163,000001.SZ,20200330,12.85,13.04,12.76,12.94,13.15,-0.21,-1.597,661738.79,852956.24
        164,000001.SZ,20200327,13.25,13.38,13.08,13.15,13.06,0.09,0.6891,653018.88,861618.663
        165,000001.SZ,20200326,12.78,13.34,12.72,13.06,12.87,0.19,1.4763,1075192.43,1408651.057
        166,000001.SZ,20200325,12.88,13.07,12.7,12.87,12.61,0.26,2.0619,1136957.74,1467534.956
        167,000001.SZ,20200324,12.4,12.68,12.27,12.61,12.15,0.46,3.786,1180200.26,1472909.399
        168,000001.SZ,20200323,12.0,12.35,11.93,12.15,12.52,-0.37,-2.9553,1071113.64,1300469.494
        169,000001.SZ,20200320,12.4,12.68,12.26,12.52,12.23,0.29,2.3712,1578352.96,1967487.818
        170,000001.SZ,20200319,12.68,12.74,11.91,12.23,12.71,-0.48,-3.7766,1891457.13,2313863.663
        171,000001.SZ,20200318,13.41,13.55,12.65,12.71,13.41,-0.7,-5.22,1384784.37,1816836.893
        172,000001.SZ,20200317,13.75,13.97,13.13,13.41,13.75,-0.34,-2.4727,1177849.06,1582506.075
        173,000001.SZ,20200316,14.45,14.46,13.75,13.75,14.52,-0.77,-5.303,1406202.18,1975824.191
        174,000001.SZ,20200313,13.9,14.58,13.9,14.52,14.68,-0.16,-1.0899,1169765.8,1669009.835
        175,000001.SZ,20200312,14.65,14.84,14.53,14.68,14.69,-0.01,-0.0681,986497.11,1447436.641
        176,000001.SZ,20200311,14.77,14.88,14.62,14.69,14.76,-0.07,-0.4743,814381.64,1201250.682
        177,000001.SZ,20200310,14.38,14.85,14.38,14.76,14.45,0.31,2.1453,1167864.97,1709084.565
        178,000001.SZ,20200309,14.71,14.73,14.42,14.45,15.03,-0.58,-3.8589,1665793.54,2420392.13
        179,000001.SZ,20200306,15.18,15.27,15.02,15.03,15.39,-0.36,-2.3392,1228531.03,1858691.259
        180,000001.SZ,20200305,14.8,15.64,14.73,15.39,14.69,0.7,4.7651,2686602.34,4089493.523
        181,000001.SZ,20200304,14.68,14.78,14.51,14.69,14.72,-0.03,-0.2038,862595.23,1261123.063
        182,000001.SZ,20200303,14.96,14.99,14.63,14.72,14.79,-0.07,-0.4733,1153584.32,1705816.271
        183,000001.SZ,20200302,14.55,14.95,14.46,14.79,14.5,0.29,2.0,1116580.66,1647432.269
        184,000001.SZ,20200228,14.85,15.04,14.46,14.5,15.11,-0.61,-4.0371,1300644.45,1906892.413
        185,000001.SZ,20200227,14.96,15.15,14.89,15.11,14.99,0.12,0.8005,975270.9,1464605.739
        186,000001.SZ,20200226,14.77,15.27,14.7,14.99,15.04,-0.05,-0.3324,1176599.15,1769612.245
        187,000001.SZ,20200225,15.0,15.13,14.78,15.04,15.23,-0.19,-1.2475,1144575.02,1710369.786
        188,000001.SZ,20200224,15.46,15.46,15.15,15.23,15.58,-0.35,-2.2465,1191794.5,1820183.854
        189,000001.SZ,20200221,15.49,15.72,15.45,15.58,15.59,-0.01,-0.0641,995071.02,1546692.93
        190,000001.SZ,20200220,15.27,15.62,15.1,15.59,15.24,0.35,2.2966,1235444.34,1897923.029
        191,000001.SZ,20200219,15.1,15.37,15.08,15.24,15.2,0.04,0.2632,874106.93,1333730.218
        192,000001.SZ,20200218,15.33,15.33,15.01,15.2,15.37,-0.17,-1.1061,973612.35,1478274.222
        193,000001.SZ,20200217,15.04,15.37,14.93,15.37,15.03,0.34,2.2621,1543696.01,2337993.586
        194,000001.SZ,20200214,14.75,15.14,14.7,15.03,14.65,0.38,2.5939,1512434.73,2253906.452
        195,000001.SZ,20200213,14.71,14.88,14.61,14.65,14.77,-0.12,-0.8125,1013205.28,1491327.713
        196,000001.SZ,20200212,14.79,14.82,14.6,14.77,14.79,-0.02,-0.1352,1070503.21,1573229.042
        197,000001.SZ,20200211,14.6,14.94,14.56,14.79,14.5,0.29,2.0,1407507.44,2077194.138
        198,000001.SZ,20200210,14.51,14.53,14.3,14.5,14.62,-0.12,-0.8208,1339495.24,1931983.482
        199,000001.SZ,20200207,14.6,14.69,14.41,14.62,14.77,-0.15,-1.0156,924852.96,1345053.255
        200,000001.SZ,20200206,14.81,14.87,14.51,14.77,14.63,0.14,0.9569,1185815.72,1740107.625
        201,000001.SZ,20200205,14.59,14.89,14.32,14.63,14.6,0.03,0.2055,1491380.21,2177632.043
        202,000001.SZ,20200204,14.05,14.66,14.02,14.6,13.99,0.61,4.3603,1706172.07,2442932.842
        203,000001.SZ,20200203,13.99,14.7,13.99,13.99,15.54,-1.55,-9.9743,2259194.83,3201454.164
        204,000001.SZ,20200123,15.92,15.92,15.39,15.54,16.09,-0.55,-3.4183,1100592.07,1723394.336
        205,000001.SZ,20200122,15.92,16.16,15.71,16.09,16.0,0.09,0.5625,719464.91,1150933.398
        206,000001.SZ,20200121,16.34,16.34,15.93,16.0,16.45,-0.45,-2.7356,896603.1,1442171.431
        207,000001.SZ,20200120,16.43,16.61,16.35,16.45,16.39,0.06,0.3661,746074.75,1226464.649
        208,000001.SZ,20200117,16.38,16.55,16.35,16.39,16.33,0.06,0.3674,605436.69,995909.007
        209,000001.SZ,20200116,16.52,16.57,16.2,16.33,16.52,-0.19,-1.1501,1028104.67,1678888.507
        210,000001.SZ,20200115,16.79,16.86,16.45,16.52,16.76,-0.24,-1.432,859439.12,1424889.228
        211,000001.SZ,20200114,16.99,17.27,16.76,16.76,16.99,-0.23,-1.3537,1304493.66,2217608.852
        212,000001.SZ,20200113,16.75,17.03,16.61,16.99,16.69,0.3,1.7975,872133.36,1468271.683
        213,000001.SZ,20200110,16.79,16.81,16.52,16.69,16.79,-0.1,-0.5956,585548.45,975154.818
        214,000001.SZ,20200109,16.81,16.93,16.53,16.79,16.66,0.13,0.7803,1031636.65,1725326.806
        215,000001.SZ,20200108,17.0,17.05,16.63,16.66,17.15,-0.49,-2.8571,847824.12,1423608.811
        216,000001.SZ,20200107,17.13,17.28,16.95,17.15,17.07,0.08,0.4687,728607.56,1247047.135
        217,000001.SZ,20200106,17.01,17.34,16.91,17.07,17.18,-0.11,-0.6403,862083.5,1477930.193
        218,000001.SZ,20200103,16.94,17.31,16.92,17.18,16.87,0.31,1.8376,1116194.81,1914495.474
        219,000001.SZ,20200102,16.65,16.95,16.55,16.87,16.45,0.42,2.5532,1530231.87,2571196.482

        四、效果展示

        我们采用视频的形式来进行效果的展示;

        https://www.bilibili.com/video/BV1RF411q7g2?spm_id_from=333.999.0.0

        股票数据分析的实现

        以上就是我实现的股票数据分析的可视化的处理的结果,谢谢大家的阅读与支持啦。 

        到此这篇关于基于Python实现股票数据分析的可视化的文章就介绍到这了,更多相关Python股票数据分析可视化内容请搜索脚本之家以前的文章或继续浏览下面的相关文章希望大家以后多多支持脚本之家!

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