module fundit::indicatorCalculator use fundit::dataPuller use fundit::returnCalculator use fundit::navCalculator /* * Annulized multiple */ def get_annulization_multiple(freq) { ret = 1; if (freq == 'd') { ret = 252; // We have differences here between Java and DolphinDB, Java uses 365.25 days } else if (freq == 'w') { ret = 52; } else if (freq == 'm') { ret = 12; } else if (freq == 'q') { ret = 4; } else if (freq == 's') { ret = 2; } else if (freq == 'a') { ret = 1; } return ret; } /* * 取主基准和BFI的历史月收益率 * * @param benchmarks : entity-benchmark 的对应关系表 * @param end_day : 收益的截止日期 * * @return
: benchmark_id, end_date, ret * */ def get_benchmark_return(benchmarks, end_day) { s_index_ids = ''; s_factor_ids = ''; // 前缀为 IN 的 benchmark id t_index_id = SELECT DISTINCT benchmark_id FROM benchmarks WHERE benchmark_id LIKE 'IN%'; s_index_ids = iif(isVoid(t_index_id), "", "'" + t_index_id.benchmark_id.concat("','") + "'"); // 前缀为 FA 的 benchmark id t_factor_id = SELECT DISTINCT benchmark_id FROM benchmarks WHERE benchmark_id LIKE 'FA%'; s_factor_ids = iif(isVoid(t_factor_id), "", "'" + t_factor_id.benchmark_id.concat("','") + "'"); // 目前指数的月度业绩存在 fund_performance 表 t_bmk = SELECT fund_id AS benchmark_id, temporalParse(end_date, 'yyyy-MM') AS end_date, ret FROM get_monthly_ret('IX', s_index_ids, 1990.01.01, end_day, true); // 而因子的月度业绩存在 cm_factor_performance 表 INSERT INTO t_bmk SELECT factor_id, temporalParse(end_date, 'yyyy-MM') AS end_date, ret FROM get_monthly_ret('FA', s_factor_ids, 1990.01.01, end_day, true); return t_bmk; } /* * Trailing Return, Standard Deviation, Skewness, Kurtosis, Max Drawdown, VaR, CVaR * @param ret: 收益表,需要有 entity_id, price_dat, end_date, nav * @param freq: 数据频率,d, w, m, q, s, a * * NOTE: standard deviation of Java version is noncompliant-GIPS annulized number * * Create: 20240904 Joey * TODO: var and cvar are silightly off compared with Java version * */ def cal_basic_performance(ret, freq) { t = SELECT entity_id, max(end_date) AS end_date, max(price_date) AS price_date, min(price_date) AS min_date, //(nav.last() \ nav.first() - 1).round(6) AS trailing_ret, ((1+ret).prod()-1).round(6) AS trailing_ret, iif(price_date.max().month()-price_date.min().month()>12, //(nav.last() \ nav.first()).pow(365 \(max(price_date) - min(price_date)))-1, //(nav.last() \ nav.first() - 1)).round(6) AS trailing_ret_a, ((1+ret).prod()-1) * sqrt(get_annulization_multiple(freq)), ((1+ret).prod()-1)).round(6) AS trailing_ret_a, ret.std() AS std_dev, ret.skew(false) AS skewness, ret.kurtosis(false) - 3 AS kurtosis, ret.min() AS wrst_month, max( 1 - nav \ nav.cummax() ) AS drawdown FROM ret GROUP BY entity_id; // var & cvar require return NOT NULL // NOTE: DolphinDB supports 4 different ways: normal, logNormal, historical, monteCarlo. we use historical t1 = SELECT entity_id, max(end_date) AS end_date, max(price_date) AS price_date, ret.VaR('historical', 0.95) AS var, ret.CVaR('historical', 0.95) AS cvar FROM ret WHERE ret.ret > - 1 GROUP BY entity_id; return (SELECT * FROM t LEFT JOIN t1 ON t.entity_id = t1.entity_id AND t.end_date = t1.end_date AND t.price_date = t1.price_date); } /* * Lower Partial Moment * NOTE: risk free rate is used as Minimal Accepted Rate (MAR) here * */ def cal_LPM(ret, risk_free) { t = SELECT *, count(entity_id) AS cnt FROM ret WHERE ret > -1 CONTEXT BY entity_id; lpm = SELECT t.entity_id, max(t.end_date) AS end_date, (sum (rfr.ret - t.ret) \ (t.cnt[0])).pow(1\1) AS lpm1, (sum2(rfr.ret - t.ret) \ (t.cnt[0])).pow(1\2) AS lpm2, (sum3(rfr.ret - t.ret) \ (t.cnt[0])).pow(1\3) AS lpm3 FROM t INNER JOIN risk_free rfr ON t.end_date = rfr.end_date WHERE t.ret < rfr.ret GROUP BY t.entity_id; return lpm; } /* * Downside Devision, Omega Ratio, Sortino Ratio, Kappa Ratio * * TODO: Java version of Downside Deviation (LPM2) uses cnt-1 as denominator to calculate mean excess return, which might be wrong * Java version of Omega could be wrong because Java uses annualized returns and cnt-1 * Java'version of Kappa could be very wrong * */ def cal_omega_sortino_kappa(ret, risk_free) { lpm = cal_LPM(ret, risk_free); tb = SELECT t.entity_id, l.lpm2[0] AS ds_dev, (t.ret - rfr.ret ).mean() \ l.lpm1[0] + 1 AS omega, (t.ret - rfr.ret ).mean() \ l.lpm2[0] AS sortino, (t.ret - rfr.ret ).mean() \ l.lpm3[0] AS kappa FROM ret t INNER JOIN lpm l ON t.entity_id = l.entity_id INNER JOIN risk_free rfr ON t.end_date = rfr.end_date GROUP BY t.entity_id; return tb; } /* * Alpha & Beta * NOTE: alpha of Java version is noncompliant-GIPS annulized number */ def cal_alpha_beta(ret, benchmarks, bmk_ret, risk_free) { t = SELECT t.entity_id, t.end_date, t.ret, bm.benchmark_id, bmk.ret AS ret_bmk FROM ret t INNER JOIN benchmarks bm ON t.entity_id = bm.entity_id INNER JOIN bmk_ret bmk ON t.end_date = bmk.end_date AND bm.benchmark_id = bmk.benchmark_id WHERE t.ret > -1 AND bmk.ret > -1; beta = SELECT entity_id, benchmark_id, ret.beta(ret_bmk) AS beta FROM t GROUP BY entity_id, benchmark_id; alpha = SELECT t.entity_id, t.benchmark_id, beta.beta[0] AS beta, (t.ret - rfr.ret).mean() - beta.beta[0] * (t.ret_bmk - rfr.ret).mean() AS alpha FROM t INNER JOIN beta beta ON t.entity_id = beta.entity_id AND t.benchmark_id = beta.benchmark_id INNER JOIN risk_free rfr ON t.end_date = rfr.end_date GROUP BY t.entity_id, t.benchmark_id; return alpha; } /* * Winning Ratio, Tracking Error, Information Ratio * TODO: Information Ratio is way off! * Not sure how to describe a giant number("inf"), for now 999 is used */ def cal_benchmark_tracking(ret, benchmarks, bmk_ret) { t0 = SELECT t.entity_id, t.end_date, t.price_date, t.ret, bmk.ret AS ret_bmk, count(t.entity_id) AS cnt, (t.ret - bmk.ret) AS exc_ret, bm.benchmark_id FROM ret t INNER JOIN benchmarks bm ON t.entity_id = bm.entity_id INNER JOIN bmk_ret bmk ON t.end_date = bmk.end_date AND bm.benchmark_id = bmk.benchmark_id WHERE t.ret > -1 AND bmk.ret > -1 CONTEXT BY t.entity_id, bm.benchmark_id; t = SELECT entity_id, end_date.max() AS end_date, price_date.max() AS price_date, price_date.min() AS min_date, benchmark_id, exc_ret.bucketCount(0:999, 1) \ cnt[0] AS winrate, exc_ret.std() AS track_error, exc_ret.mean() / exc_ret.std() AS info FROM t0 GROUP BY entity_id, benchmark_id; return t; } /* * Upside/Down Capture Return/Ratio * */ def cal_capture_ratio(ret, benchmarks, bmk_ret) { t1 = SELECT t.entity_id, (1+t.ret).prod() AS upside_ret, (1+bmk.ret).prod() AS bmk_upside_ret, bmk.end_date.count() AS bmk_upside_cnt, bm.benchmark_id FROM ret t INNER JOIN benchmarks bm ON t.entity_id = bm.entity_id INNER JOIN bmk_ret bmk ON t.end_date = bmk.end_date AND bm.benchmark_id = bmk.benchmark_id WHERE t.ret > -1 AND bmk.ret >= 0 GROUP BY t.entity_id, bm.benchmark_id; t2 = SELECT t.entity_id, (1+t.ret).prod() AS downside_ret, (1+bmk.ret).prod() AS bmk_downside_ret, bmk.end_date.count() AS bmk_downside_cnt, bm.benchmark_id FROM ret t INNER JOIN benchmarks bm ON t.entity_id = bm.entity_id INNER JOIN bmk_ret bmk ON t.end_date = bmk.end_date AND bm.benchmark_id = bmk.benchmark_id WHERE t.ret > -1 AND bmk.ret < 0 GROUP BY t.entity_id, bm.benchmark_id; t = SELECT iif(isNull(t1.entity_id), t2.entity_id, t1.entity_id) AS entity_id, iif(isNull(t1.benchmark_id), t2.benchmark_id, t1.benchmark_id) AS benchmark_id, t1.upside_ret.pow(1 \ t1.bmk_upside_cnt)-1 AS upside_capture_ret, (t1.upside_ret.pow(1 \ t1.bmk_upside_cnt)-1)/(t1.bmk_upside_ret.pow(1 \ t1.bmk_upside_cnt)-1) AS upside_capture_ratio, t2.downside_ret.pow(1 \ t2.bmk_downside_cnt)-1 AS downside_capture_ret, (t2.downside_ret.pow(1 \ t2.bmk_downside_cnt)-1)/(t2.bmk_downside_ret.pow(1 \ t2.bmk_downside_cnt)-1) AS downside_capture_ratio FROM t1 FULL JOIN t2 ON t1.entity_id = t2.entity_id AND t1.benchmark_id = t2.benchmark_id; return t; } /* * Sharpe Ratio * NOTE: Java version is noncompliant-GIPS annulized number */ def cal_sharpe(ret, std_dev, risk_free) { sharpe = SELECT t.entity_id, (t.ret - rfr.ret).mean() / std.std_dev[0] AS sharpe FROM ret t INNER JOIN std_dev std ON t.entity_id = std.entity_id INNER JOIN risk_free rfr ON t.end_date = rfr.end_date WHERE std.std_dev[0] <> 0 GROUP BY t.entity_id; return sharpe; } /* * Treynor Ratio */ def cal_treynor(ret, risk_free, beta) { t = SELECT *, count(entity_id) AS cnt FROM ret t INNER JOIN risk_free rfr ON t.end_date = rfr.end_date WHERE t.ret > -1 AND rfr.ret > -1 CONTEXT BY t.entity_id; treynor = SELECT t.entity_id, beta.benchmark_id, ((1 + t.ret).prod().pow(12\iif(t.cnt[0]<12, 12, t.cnt[0])) - (1 + t.rfr_ret).prod().pow(12\iif(t.cnt[0]<12, 12, t.cnt[0]))) / beta.beta[0] AS treynor FROM t INNER JOIN beta AS beta ON t.entity_id = beta.entity_id GROUP BY t.entity_id, beta.benchmark_id; return treynor; } /* * Jensen's Alpha * TODO: the result is slightly off */ def cal_jensen(ret, bmk_ret, risk_free, beta) { jensen = SELECT t.entity_id, t.ret.mean() - rfr.ret.mean() - beta.beta[0] * (bmk.ret.mean() - rfr.ret.mean()) AS jensen, beta.benchmark_id FROM ret t INNER JOIN beta beta ON t.entity_id = beta.entity_id INNER JOIN bmk_ret bmk ON t.end_date = bmk.end_date AND beta.benchmark_id = bmk.benchmark_id INNER JOIN risk_free rfr ON t.end_date = rfr.end_date GROUP BY t.entity_id, beta.benchmark_id; return jensen; } /* * Calmar Ratio * TODO: the result is off * */ def cal_calmar(ret_a){ calmar = SELECT entity_id, trailing_ret_a \ drawdown AS calmar FROM ret_a; return calmar; } /* * Modigliani Modigliani Measure (M2) * NOTE: M2 = sharpe * std(benchmark) + risk_free_rate * NOTE: Java version is noncompliant-GIPS annulized number */ def cal_m2(ret, benchmarks, bmk_ret, risk_free) { m2 = SELECT t.entity_id, (t.ret - rfr.ret).mean() / t.ret.std() * bmk.ret.std() + rfr.ret.mean() AS m2, bm.benchmark_id FROM ret t INNER JOIN benchmarks bm ON t.entity_id = bm.entity_id INNER JOIN bmk_ret bmk ON t.end_date = bmk.end_date AND bm.benchmark_id = bmk.benchmark_id INNER JOIN risk_free rfr ON t.end_date = rfr.end_date GROUP BY t.entity_id, bm.benchmark_id; return m2; } /* * Morningstar Return, Morningstar Risk-Adjusted Return * * TODO: Tax and loads are NOT taken care of * TODO: Assume Chinese methodology using 3, 5, 10 as number of traling years * * NOTE: Morningstar methodology requires monthly return for calculation, so that "12" is hard-coded here * * */ def cal_ms_return(ret, risk_free) { r = SELECT t.entity_id, t.end_date.max() AS end_date, t.price_date.max() AS price_date, t.price_date.min() AS min_date, ((1 + t.ret)\(1 + rfr.ret)).prod().pow(12\(t.end_date.max() - t.end_date.min()))-1 AS ms_ret_a, (1 + t.ret).pow(-2).mean().pow(-12/2)-1 AS ms_rar_a FROM ret t INNER JOIN risk_free rfr ON t.end_date = rfr.end_date GROUP BY t.entity_id; return r; } /* * Calculation for monthly indicators which need benchmark * @param ret
: 收益表,NEED COLUMNS entity_id, price_dat, end_date, nav * @param benchmarks
: entity-benchmark mapping table * @param index_ret
: historical benchmark return table, NEED COLUMNS fund_id, end_date, ret * @param risk_free
: historical risk free rate table, NEED COLUMNS fund_id, end_date, ret * * @return: indicators table * * * Create 20240904 模仿Java & python代码在Dolphin中实现,具体计算逻辑可能会有不同 Joey * TODO: some datapoints require more data, we need a way to disable calculation for them * */ def cal_indicators_with_benchmark(mutable ret, benchmarks, index_ret, risk_free) { // sorting for correct first() and last() value ret.sortBy!(['entity_id', 'price_date'], [1, 1]); // alpha, beta alpha_beta = cal_alpha_beta(ret, benchmarks, index_ret, risk_free); // 胜率、跟踪误差、信息比率 bmk_tracking = cal_benchmark_tracking(ret, benchmarks, index_ret); // 特雷诺 treynor = cal_treynor(ret, risk_free, alpha_beta); // 詹森指数 jensen = cal_jensen(ret, index_ret, risk_free, alpha_beta); // M2 m2 = cal_m2(ret, benchmarks, index_ret, risk_free); // 上下行捕获率、收益 capture_r = cal_capture_ratio(ret, benchmarks, index_ret); r = SELECT * FROM bmk_tracking a1 LEFT JOIN alpha_beta ON a1.entity_id = alpha_beta.entity_id AND a1.benchmark_id = alpha_beta.benchmark_id LEFT JOIN treynor ON a1.entity_id = treynor.entity_id AND a1.benchmark_id = treynor.benchmark_id LEFT JOIN jensen ON a1.entity_id = jensen.entity_id AND a1.benchmark_id = jensen.benchmark_id LEFT JOIN m2 ON a1.entity_id = m2.entity_id AND a1.benchmark_id = m2.benchmark_id LEFT JOIN capture_r ON a1.entity_id = capture_r.entity_id AND a1.benchmark_id = capture_r.benchmark_id; // 年化各数据点 // GIPS RULE: NO annulization for data less than 1 year plainAnnu = get_annulization_multiple('m'); sqrtAnnu = sqrt(get_annulization_multiple('m')); r.addColumn(['alpha_a', 'jensen_a', 'track_error_a', 'info_a', 'm2_a'], [DOUBLE, DOUBLE, DOUBLE, DOUBLE, DOUBLE]); UPDATE r SET alpha_a = alpha * iif(price_date.month() - min_date.month() >= 11, plainAnnu, 1), jensen_a = jensen * iif(price_date.month() - min_date.month() >= 11, plainAnnu, 1), track_error_a = track_error * iif(price_date.month() - min_date.month() >= 11, sqrtAnnu, 1), info_a = info * iif(price_date.month() - min_date.month() >= 11, sqrtAnnu, 1), m2_a = m2 * iif(price_date.month() - min_date.month() >= 11, plainAnnu, 1); return r.dropColumns!(['end_date', 'price_date', 'min_date']); } /* * Monthly standard indicator calculation * @param: ret
: 收益表,NEED COLUMNS entity_id, price_dat, end_date, nav * @param benchmarks
: entity-benchmark mapping table * @param index_ret
: historical benchmark return table, NEED COLUMNS fund_id, end_date, ret * @param risk_free
: historical risk free rate table, NEED COLUMNS fund_id, end_date, ret * @param freq : 数据频率,d, w, m, q, s, a * * @return: indicators table * * * Create 20240904 模仿Java & python代码在Dolphin中实现,具体计算逻辑可能会有不同 Joey * TODO: some datapoints require more data, we need a way to disable calculation for them * */ def cal_indicators(mutable ret, benchmarks, benchmark_ret, risk_free) { // sorting for correct first() and last() value ret.sortBy!(['entity_id', 'price_date'], [1, 1]); // 收益、标准差、偏度、峰度、最大回撤、VaR, CVaR rtn = cal_basic_performance(ret, 'm'); // 夏普 sharpe = cal_sharpe(ret, rtn, risk_free); // 卡玛比率 calmar = cal_calmar(rtn); // 整合后的下行标准差、欧米伽、索提诺、卡帕 lpms = cal_omega_sortino_kappa(ret, risk_free); // 需要基准的指标们 indicator_with_benchmark = cal_indicators_with_benchmark(ret, benchmarks, benchmark_ret, risk_free); r = SELECT * FROM rtn a1 LEFT JOIN sharpe ON a1.entity_id = sharpe.entity_id LEFT JOIN calmar ON a1.entity_id = calmar.entity_id LEFT JOIN lpms ON a1.entity_id = lpms.entity_id LEFT JOIN indicator_with_benchmark ON a1.entity_id = indicator_with_benchmark.entity_id; // 年化各数据点 // GIPS RULE: NO annulization for data less than 1 year plainAnnu = get_annulization_multiple('m'); sqrtAnnu = sqrt(get_annulization_multiple('m')); r.addColumn(['std_dev_a', 'ds_dev_a', 'sharpe_a', 'sortino_a'], [DOUBLE, DOUBLE, DOUBLE, DOUBLE]); UPDATE r SET std_dev_a = std_dev * iif(price_date.month() - min_date.month() >= 11, sqrtAnnu, 1), ds_dev_a = ds_dev * iif(price_date.month() - min_date.month() >= 11, sqrtAnnu, 1), sharpe_a = sharpe * iif(price_date.month() - min_date.month() >= 11, sqrtAnnu, 1), sortino_a = sortino * iif(price_date.month() - min_date.month() >= 11, sqrtAnnu, 1); return r; } /* * Calculate trailing 6m, ytd, 1y, 2y, 3y, 4y, 5y, 10y and since inception indicators * * @param: entity_info
: basic information of entity, NEED COLUMNS entity_id, inception_date * @param benchmarks
: entity-benchmark mapping table * @param: ret
: 收益表,NEED COLUMNS entity_id, price_dat, end_date, nav * @param: end_day : 计算截止日期 * @param index_ret
: historical benchmark return table, NEED COLUMNS fund_id, end_date, ret * @param risk_free
: historical risk free rate table, NEED COLUMNS fund_id, end_date, ret * */ def cal_trailing_indicators(entity_info, benchmarks, mutable tb_ret, end_day, bmk_ret, risk_free_rate) { r_incep = null; r_ytd = null; r_6m = null; r_1y = null; r_2y = null; r_3y = null; r_4y = null; r_5y = null; r_10y = null; r_ms_3y = null; r_ms_5y = null; r_ms_10y = null; // since inception if(tb_ret.size() > 0) { r_incep = cal_indicators(tb_ret, benchmarks, bmk_ret, risk_free_rate); } // ytd tb_ret_ytd = SELECT * FROM tb_ret WHERE end_date >= end_day.yearBegin().month(); if(tb_ret_ytd.size() > 0) { r_ytd = cal_indicators(tb_ret_ytd, benchmarks, bmk_ret, risk_free_rate); } // trailing 6m tb_ret_6m = SELECT * FROM tb_ret r INNER JOIN entity_info ei ON r.entity_id = ei.entity_id WHERE r.end_date > end_day.month()-6 AND (end_day.month() - ei.inception_date.month()) >= 6; if(tb_ret_6m.size() > 0) { r_6m = cal_indicators(tb_ret_6m, benchmarks, bmk_ret, risk_free_rate); } // trailing 1y tb_ret_1y = SELECT * FROM tb_ret r INNER JOIN entity_info ei ON r.entity_id = ei.entity_id WHERE r.end_date > end_day.month()-12 AND (end_day.month() - ei.inception_date.month()) >= 12; if(tb_ret_1y.size() > 0) { r_1y = cal_indicators(tb_ret_1y, benchmarks, bmk_ret, risk_free_rate); } // trailing 2y tb_ret_2y = SELECT * FROM tb_ret r INNER JOIN entity_info ei ON r.entity_id = ei.entity_id WHERE r.end_date > end_day.month()-24 AND (end_day.month() - ei.inception_date.month()) >= 24; if(tb_ret_2y.size() > 0) { r_2y = cal_indicators(tb_ret_2y, benchmarks, bmk_ret, risk_free_rate); } // trailing 3y tb_ret_3y = SELECT * FROM tb_ret r INNER JOIN entity_info ei ON r.entity_id = ei.entity_id WHERE r.end_date > end_day.month()-36 AND (end_day.month() - ei.inception_date.month()) >= 36; if(tb_ret_3y.size() > 0) { r_3y = cal_indicators(tb_ret_3y, benchmarks, bmk_ret, risk_free_rate); r_ms_3y = cal_ms_return(tb_ret_3y, risk_free_rate); } // trailing 4y tb_ret_4y = SELECT * FROM tb_ret r INNER JOIN entity_info ei ON r.entity_id = ei.entity_id WHERE r.end_date > end_day.month()-48 AND (end_day.month() - ei.inception_date.month()) >= 48; if(tb_ret_4y.size() > 0) { r_4y = cal_indicators(tb_ret_4y, benchmarks, bmk_ret, risk_free_rate); } // trailing 5y tb_ret_5y = SELECT * FROM tb_ret r INNER JOIN entity_info ei ON r.entity_id = ei.entity_id WHERE r.end_date > end_day.month()-60 AND (end_day.month() - ei.inception_date.month()) >= 60; if(tb_ret_5y.size() > 0) { r_5y = cal_indicators(tb_ret_5y, benchmarks, bmk_ret, risk_free_rate); r_ms_5y = cal_ms_return(tb_ret_5y, risk_free_rate); } // trailing 10y tb_ret_10y = SELECT * FROM tb_ret r INNER JOIN entity_info ei ON r.entity_id = ei.entity_id WHERE r.end_date > end_day.month()-120 AND (end_day.month() - ei.inception_date.month()) >= 120; if(tb_ret_10y.size() > 0) { r_10y = cal_indicators(tb_ret_10y, benchmarks, bmk_ret, risk_free_rate); r_ms_10y = cal_ms_return(tb_ret_10y, risk_free_rate); } return r_incep, r_ytd, r_6m, r_1y, r_2y, r_3y, r_4y, r_5y, r_10y, r_ms_3y, r_ms_5y, r_ms_10y; } /* * Calculate fund indicators for one date * * @param entity_type : MF, HF * @param fund_ids : 逗号和单引号分隔的fund_id * @param end_day : 要计算的日期 * @param isFromNav : 用净值实时计算还是从表中取月收益 * @param isFromSQL : TODO: 从MySQL还是本地DolphinDB取净值/收益数据 * * TODO: primary_benchmark_id seems not be used as benchmark, when it is FA00000VNB * * Example: cal_fund_indicators('HF', "'HF000004KN','HF000103EU','HF00018WXG'", 2024.06.28, true); * */ def cal_fund_indicators(entity_type, fund_ids, end_day, isFromNav) { very_old_date = 1990.01.01; fund_info = get_fund_info(fund_ids); fund_info.rename!('fund_id', 'entity_id'); if(isFromNav == true) { // 从净值开始计算收益 tb_ret = SELECT * FROM cal_fund_monthly_returns(entity_type, fund_ids, true) WHERE price_date <= end_day; tb_ret.rename!(['fund_id', 'cumulative_nav'], ['entity_id', 'nav']); } else { // 从fund_performance表里读月收益 tb_ret = get_monthly_ret('FD', fund_ids, very_old_date, end_day, true); tb_ret.rename!(['fund_id'], ['entity_id']); } // 取基金和基准的对照表 primary_benchmark = SELECT entity_id, iif(benchmark_id.isNull(), 'IN00000008', benchmark_id) AS benchmark_id FROM fund_info; // 取所有出现的基准月收益 bmk_ret = get_benchmark_return(primary_benchmark, end_day); risk_free_rate = SELECT fund_id, temporalParse(end_date, 'yyyy-MM') AS end_date, ret FROM get_risk_free_rate(very_old_date, end_day); return cal_trailing_indicators(fund_info, primary_benchmark, tb_ret, end_day, bmk_ret, risk_free_rate); } /* * Calculate portfolio indicators for one date * * @param portfolio_ids : comma-delimited portfolio ids * @param end_day : the date * @param cal_method : calculate based on cumulative nav (1) or nav (2) * @param isFromNav : calculate returns from NAV on-the-fly (true) or get from monthly return table (false) * * Example: cal_portfolio_indicators('166002,166114', 2024.08.31, 1, true); * */ def cal_portfolio_indicators(portfolio_ids, end_day, cal_method, isFromNav) { very_old_date = 1990.01.01; portfolio_info = get_portfolio_info(portfolio_ids); portfolio_info.rename!('portfolio_id', 'entity_id'); if(isFromNav == true) { // 从净值开始计算收益 tb_raw_ret = SELECT * FROM cal_portfolio_nav(portfolio_ids, very_old_date, cal_method) WHERE price_date <= end_day; // funky thing is you can't use "AS" for the grouping columns? tb_ret = SELECT portfolio_id, price_date.month(), price_date.last() AS price_date, (1+ret).prod()-1 AS ret, nav.last() AS nav FROM tb_raw_ret WHERE price_date <= end_day GROUP BY portfolio_id, price_date.month(); tb_ret.rename!(['portfolio_id', 'month_price_date'], ['entity_id', 'end_date']); } else { // 从pf_portfolio_performance表里读月收益 tb_ret = get_monthly_ret('PF', portfolio_ids, very_old_date, end_day, true); tb_ret.rename!(['portfolio_id'], ['entity_id']); } // 沪深300做基准,同SQL保持一致 bmk_ret = SELECT fund_id AS benchmark_id, 'PBI' AS benchmark_type, temporalParse(end_date, 'yyyy-MM') AS end_date, ret FROM get_monthly_ret('IX', "'IN00000008'", very_old_date, end_day, true); risk_free_rate = SELECT fund_id, temporalParse(end_date, 'yyyy-MM') AS end_date, ret FROM get_risk_free_rate(very_old_date, end_day); return cal_all_trailing_indicators(portfolio_info, tb_ret, end_day, bmk_ret, risk_free_rate, 'm'); }