Пример #1
0
weights = data.isel(time=0, field=0)
weights[:] = 0


def step(data):
    latest = data.isel(time=-1)

    is_liquid = latest.sel(field="is_liquid")
    sroc = latest.sel(field='sroc')
    k = latest.sel(field='k')
    d = latest.sel(field='d')

    need_open = xrf.logical_and(sroc > 0.05, xrf.logical_and(k < 31, d < 31))
    need_close = xrf.logical_or(xrf.logical_or(sroc < -0.05, is_liquid == 0),
                                xrf.logical_and(k > 92, d > 92))

    global weights
    weights.loc[need_open] = 1
    weights.loc[need_close] = 0

    return (weights / weights.sum('asset')).fillna(0)


output = test_strategy(data_ext, step=step, init_data_length=200)

stat = qnstats.calc_stat(data, output, max_periods=252 * 3)

print(stat.to_pandas())

qndata.write_output(output)
Пример #2
0
assets = load_assets()
print(len(assets))
ids = [i['id'] for i in assets]
print(ids)
data = load_data(assets=ids,
                 min_date='2015-01-01',
                 dims=(ds.TIME, ds.ASSET, ds.FIELD))

# print(data.sel(asset='AMEX:AIRI').dropna('time').to_pandas().to_csv())

output = test_strategy(data,
                       init=init,
                       step=step,
                       init_data_length=init_data_length)

write_output(output)

# output = output.loc[:'2019-01-05']
# print(len(find_missed_dates(output, data)))

pd.set_option('display.max_colwidth', -1)
stat1 = calc_stat(data, output)
stat2 = calc_stat(data, output[::-1])
print(
    xr.concat(
        [stat1.sel(field='sharpe_ratio'),
         stat2.sel(field='sharpe_ratio')], pd.Index(['f', 'b'],
                                                    name='d')).to_pandas())

stat1.to_pandas().to_csv("stat.csv")