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dataset_wide_old.go 11.21 KB
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王布衣 提交于 2024-02-18 16:11 . 调整pandas接口
package factors
import (
"gitee.com/quant1x/engine/cache"
"gitee.com/quant1x/engine/datasource/base"
"gitee.com/quant1x/exchange"
"gitee.com/quant1x/gotdx"
"gitee.com/quant1x/gotdx/proto"
"gitee.com/quant1x/gotdx/quotes"
"gitee.com/quant1x/gox/api"
"gitee.com/quant1x/gox/logger"
"gitee.com/quant1x/num"
"gitee.com/quant1x/pandas"
. "gitee.com/quant1x/pandas/formula"
"reflect"
"strconv"
)
var (
FBarsProtocolFields = []string{"Open", "Close", "High", "Low", "Vol", "Amount", "DateTime", "UpCount", "DownCount"}
FBarsRawFields = []string{"open", "close", "high", "low", "volume", "amount", "date", "up", "down"}
FBarsHalfFields = []string{"date", "open", "close", "high", "low", "volume", "amount", "up", "down", "open_volume", "open_turnz", "open_unmatched", "close_volume", "close_turnz", "close_unmatched", "inner_volume", "outer_volume", "inner_amount", "outer_amount"}
FBarsWideFields = []string{"date", "open", "close", "high", "low", "volume", "amount", "up", "down", "last_close", "change_rate", "open_volume", "open_turnz", "open_unmatched", "close_volume", "close_turnz", "close_unmatched", "inner_volume", "outer_volume", "inner_amount", "outer_amount"}
)
// SetKLineOffset 设置K线数据调整回补天数
func SetKLineOffset(days int) {
if days <= 1 {
return
}
base.DataDaysDiff = days
}
// loadCacheKLine 加载K线
//
// 第2个参数, 是否前复权
func loadCacheKLine(code string, adjust ...bool) pandas.DataFrame {
// 默认不复权
qfq := false
if len(adjust) > 0 {
qfq = adjust[0]
}
filename := cache.WideFilename(code)
var df pandas.DataFrame
if !api.FileExist(filename) {
return df
} else {
df = pandas.ReadCSV(filename)
}
// 调整字段流程
{
// turnover_rate 改为 change_rate
df.SetName("turnover_rate", "change_rate")
}
fields := FBarsWideFields
df = df.Select(fields)
if df.Nrow() == 0 {
return df
}
if qfq {
xdxrs := base.GetCacheXdxrList(code)
for i := 0; i < len(xdxrs); i++ {
xdxr := xdxrs[i]
if xdxr.Category != 1 {
continue
}
xdxrDate := xdxr.Date
factor := xdxr.Adjust()
for j := 0; j < df.Nrow(); j++ {
m1 := df.IndexOf(j, true)
dt := m1["date"].(reflect.Value).String()
if dt > xdxrDate {
break
}
if dt < xdxrDate {
po := m1["open"].(reflect.Value)
po.SetFloat(factor(po.Float()))
pc := m1["close"].(reflect.Value)
pc.SetFloat(factor(pc.Float()))
ph := m1["high"].(reflect.Value)
ph.SetFloat(factor(ph.Float()))
pl := m1["low"].(reflect.Value)
pl.SetFloat(factor(pl.Float()))
}
plc := m1["last_close"].(reflect.Value)
plc.SetFloat(factor(plc.Float()))
if dt == xdxrDate {
break
}
}
}
}
return df
}
// GetCacheKLine 加载K线
//
// 第2个参数, 是否前复权
func GetCacheKLine(code string, adjust ...bool) pandas.DataFrame {
df := loadCacheKLine(code, adjust...)
if df.Nrow() == 0 {
return df
}
// 取出成交量序列
VOL := df.Col("volume")
DATES := df.Col("date")
lastDay := DATES.IndexOf(-1).(string)
total := df.Nrow()
// 计算5日均量
mv5 := MA(VOL, 5)
mav := REF(mv5, 1)
lb := VOL.Div(mav)
lb = lb.Apply2(func(idx int, v any) any {
if idx+1 < total {
return v
} else {
tmp := num.Any2DType(v)
ms := num.DType(exchange.Minutes(lastDay)) / float64(exchange.CN_TOTALFZNUM)
tmp /= ms
return tmp
}
}, true)
// 链接量比序列
oLB := pandas.NewSeriesWithType(pandas.SERIES_TYPE_DTYPE, "lb", lb.DTypes())
oMV5 := pandas.NewSeriesWithType(pandas.SERIES_TYPE_DTYPE, "mv5", mv5.Div(exchange.CN_DEFAULT_TOTALFZNUM).DTypes())
vr := VOL.Div(REF(VOL, 1))
oVR := pandas.NewSeriesWithType(pandas.SERIES_TYPE_DTYPE, "vr", vr.DTypes())
CLOSE := df.Col("close")
chg5 := CLOSE.Div(REF(CLOSE, 5)).Sub(1.00).Mul(100)
chg10 := CLOSE.Div(REF(CLOSE, 10)).Sub(1.00).Mul(100)
oChg5 := pandas.NewSeriesWithType(pandas.SERIES_TYPE_FLOAT64, "chg5", chg5.DTypes())
oChg10 := pandas.NewSeriesWithType(pandas.SERIES_TYPE_FLOAT64, "chg10", chg10.DTypes())
ma5 := MA(CLOSE, 5)
ma10 := MA(CLOSE, 10)
ma20 := MA(CLOSE, 20)
oMA5 := pandas.NewSeriesWithType(pandas.SERIES_TYPE_FLOAT64, "ma5", ma5.DTypes())
oMA10 := pandas.NewSeriesWithType(pandas.SERIES_TYPE_FLOAT64, "ma10", ma10.DTypes())
oMA20 := pandas.NewSeriesWithType(pandas.SERIES_TYPE_FLOAT64, "ma20", ma20.DTypes())
AMOUNT := df.Col("amount")
averagePrice := AMOUNT.Div(VOL)
oAP := pandas.NewSeriesWithType(pandas.SERIES_TYPE_FLOAT64, "ap", averagePrice.DTypes())
df = df.Join(oLB, oMV5, oVR, oChg5, oChg10, oMA5, oMA10, oMA20, oAP)
return df
}
// GetKLineAll 获取日K线
func GetKLineAll(securityCode string, argv ...int) pandas.DataFrame {
kType := uint16(proto.KLINE_TYPE_RI_K)
if len(argv) == 1 {
kType = uint16(argv[0])
}
securityCode = exchange.CorrectSecurityCode(securityCode)
tdxApi := gotdx.GetTdxApi()
startDate := exchange.MARKET_CH_FIRST_LISTTIME
// 默认是缓存中是已经复权的数据
dfCache := loadCacheKLine(securityCode)
isIndex := exchange.AssertIndexBySecurityCode(securityCode)
rawFields := FBarsProtocolFields
newFields := FBarsRawFields
// 尝试选择一次字段, 如果出现异常, 则清空dataframe, 重新下载
dfCache = dfCache.Select(FBarsWideFields)
if dfCache.Nrow() == 0 {
dfCache = pandas.DataFrame{}
}
var info *quotes.FinanceInfo
var err error
var klineDaysOffset = base.DataDaysDiff
if dfCache.Nrow() > 0 {
ds := dfCache.Col("date").Strings()
if klineDaysOffset > len(ds) {
klineDaysOffset = len(ds)
}
startDate = ds[len(ds)-klineDaysOffset]
} else {
info, err = tdxApi.GetFinanceInfo(securityCode)
if err != nil {
return dfCache
}
if info.IPODate > 0 {
startDate = strconv.FormatInt(int64(info.IPODate), 10)
startDate = exchange.FixTradeDate(startDate)
}
}
endDate := exchange.Today()
ts := exchange.TradeRange(startDate, endDate)
history := []quotes.SecurityBar{}
step := uint16(quotes.TDX_SECURITY_BARS_MAX)
total := uint16(len(ts))
start := uint16(0)
hs := []quotes.SecurityBarsReply{}
for {
count := step
if total-start >= step {
count = step
} else {
count = total - start
}
var data *quotes.SecurityBarsReply
var err error
retryTimes := 0
for retryTimes < quotes.DefaultRetryTimes {
if isIndex {
data, err = tdxApi.GetIndexBars(securityCode, kType, start, count)
} else {
data, err = tdxApi.GetKLine(securityCode, kType, start, count)
}
if err == nil && data != nil {
break
}
retryTimes++
}
if err != nil {
logger.Errorf("code=%s, error=%s", securityCode, err.Error())
return pandas.DataFrame{}
}
hs = append(hs, *data)
if data.Count < count {
// 已经是最早的记录
// 需要排序
break
}
start += count
if start >= total {
break
}
}
hs = api.Reverse(hs)
startDate = exchange.FixTradeDate(startDate)
for _, v := range hs {
for _, row := range v.List {
dateTime := exchange.FixTradeDate(row.DateTime)
if dateTime < startDate {
continue
}
row.Vol = row.Vol * 100
history = append(history, row)
}
}
dfNew := pandas.LoadStructs(history)
dfNew = dfNew.Select(rawFields)
err = dfNew.SetNames(newFields...)
if err != nil {
return pandas.DataFrame{}
}
ds1 := dfNew.Col("date", true)
ds1.Apply2(func(idx int, v any) any {
date1 := v.(string)
dt, err := api.ParseTime(date1)
if err != nil {
return date1
}
return dt.Format(exchange.TradingDayDateFormat)
}, true)
// 补充昨日收盘和涨跌幅
dfNew = attachVolume(dfNew, securityCode)
dfNew = dfNew.Select(FBarsHalfFields)
if dfNew.Nrow() > 0 {
// 除权除息
xdxrs := base.GetCacheXdxrList(securityCode)
cacheLastDay := dfNew.Col("date").IndexOf(-1).(string)
for i := 0; i < len(xdxrs); i++ {
xdxr := xdxrs[i]
if xdxr.Category != 1 || xdxr.Date < startDate || xdxr.Date > cacheLastDay {
continue
}
xdxrDate := xdxr.Date
factor := xdxr.Adjust()
for j := 0; j < dfNew.Nrow(); j++ {
m1 := dfNew.IndexOf(j, true)
barCurrentDate := m1["date"].(reflect.Value).String()
if barCurrentDate > xdxrDate {
break
}
if barCurrentDate < xdxrDate {
po := m1["open"].(reflect.Value)
po.SetFloat(factor(po.Float()))
pc := m1["close"].(reflect.Value)
pc.SetFloat(factor(pc.Float()))
ph := m1["high"].(reflect.Value)
ph.SetFloat(factor(ph.Float()))
pl := m1["low"].(reflect.Value)
pl.SetFloat(factor(pl.Float()))
}
if barCurrentDate == xdxrDate {
break
}
}
}
}
dfCache = dfCache.Select(FBarsHalfFields)
df := dfCache.Subset(0, dfCache.Nrow()-klineDaysOffset)
if df.Nrow() > 0 {
df = df.Concat(dfNew)
} else {
df = dfNew
}
CLOSE := df.Col("close")
LAST := CLOSE.Shift(1)
rate := CLOSE.Sub(LAST).Div(LAST).Mul(100.00).DTypes()
lc := pandas.NewSeriesWithType(pandas.SERIES_TYPE_FLOAT64, "last_close", LAST.DTypes())
tr := pandas.NewSeriesWithType(pandas.SERIES_TYPE_FLOAT64, "change_rate", rate)
df = df.Join(lc, tr)
df = df.Select(FBarsWideFields)
if df.Nrow() > 0 {
filename := cache.WideFilename(securityCode)
_ = df.WriteCSV(filename)
}
return df
}
// 附加成交量
func attachVolume(df pandas.DataFrame, securityCode string) pandas.DataFrame {
securityCode = exchange.CorrectSecurityCode(securityCode)
dates := df.Col("date").Strings()
if len(dates) == 0 {
return df
}
buyVolumes := []int64{}
sellVolumes := []int64{}
buyAmounts := []num.DType{}
sellAmounts := []num.DType{}
openVolumes := []int64{}
openTurnZ := []num.DType{}
openUnmatched := []int64{}
closeVolumes := []int64{}
closeTurnZ := []num.DType{}
closeUnmatched := []int64{}
for _, tradeDate := range dates {
tmp := base.CheckoutTransactionData(securityCode, tradeDate, true)
logger.Warnf("tick: code=%s, date=%s, rows=%d", securityCode, tradeDate, len(tmp))
//summary := InflowCount(tmp, securityCode)
summary := CountInflow(tmp, securityCode, tradeDate)
buyVolumes = append(buyVolumes, summary.OuterVolume)
sellVolumes = append(sellVolumes, summary.InnerVolume)
buyAmounts = append(buyAmounts, summary.OuterAmount)
sellAmounts = append(sellAmounts, summary.InnerAmount)
openVolumes = append(openVolumes, summary.OpenVolume)
openTurnZ = append(openTurnZ, summary.OpenTurnZ)
openUnmatched = append(openUnmatched, summary.OpenUnmatched)
closeVolumes = append(closeVolumes, summary.CloseVolume)
closeTurnZ = append(closeTurnZ, summary.CloseTurnZ)
closeUnmatched = append(closeUnmatched, summary.CloseUnmatched)
}
// 调整字段名
bv := pandas.NewSeriesWithType(pandas.SERIES_TYPE_INT64, "outer_volume", buyVolumes)
sv := pandas.NewSeriesWithType(pandas.SERIES_TYPE_INT64, "inner_volume", sellVolumes)
ba := pandas.NewSeriesWithType(pandas.SERIES_TYPE_DTYPE, "outer_amount", buyAmounts)
sa := pandas.NewSeriesWithType(pandas.SERIES_TYPE_DTYPE, "inner_amount", sellAmounts)
// 新增字段
ov := pandas.NewSeriesWithType(pandas.SERIES_TYPE_INT64, "open_volume", openVolumes)
ot := pandas.NewSeriesWithType(pandas.SERIES_TYPE_FLOAT64, "open_turnz", openTurnZ)
ou := pandas.NewSeriesWithType(pandas.SERIES_TYPE_INT64, "open_unmatched", openUnmatched)
cv := pandas.NewSeriesWithType(pandas.SERIES_TYPE_INT64, "close_volume", closeVolumes)
ct := pandas.NewSeriesWithType(pandas.SERIES_TYPE_FLOAT64, "close_turnz", closeTurnZ)
cu := pandas.NewSeriesWithType(pandas.SERIES_TYPE_INT64, "close_unmatched", closeUnmatched)
df = df.Join(bv, sv, ba, sa, ov, ot, ou, cv, ct, cu)
return df
}
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https://gitee.com/quant1x/engine.git
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