# Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # import re, copy, time, datetime, demjson3, \ traceback, signal import numpy as np from deepdoc.parser.resume.entities import degrees, schools, corporations from rag.nlp import rag_tokenizer, surname from xpinyin import Pinyin from contextlib import contextmanager class TimeoutException(Exception): pass @contextmanager def time_limit(seconds): def signal_handler(signum, frame): raise TimeoutException("Timed out!") signal.signal(signal.SIGALRM, signal_handler) signal.alarm(seconds) try: yield finally: signal.alarm(0) ENV = None PY = Pinyin() def rmHtmlTag(line): return re.sub(r"<[a-z0-9.\"=';,:\+_/ -]+>", " ", line, 100000, re.IGNORECASE) def highest_degree(dg): if not dg: return "" if type(dg) == type(""): dg = [dg] m = {"初中": 0, "高中": 1, "中专": 2, "大专": 3, "专升本": 4, "本科": 5, "硕士": 6, "博士": 7, "博士后": 8} return sorted([(d, m.get(d, -1)) for d in dg], key=lambda x: x[1] * -1)[0][0] def forEdu(cv): if not cv.get("education_obj"): cv["integerity_flt"] *= 0.8 return cv first_fea, fea, maj, fmaj, deg, fdeg, sch, fsch, st_dt, ed_dt = [], [], [], [], [], [], [], [], [], [] edu_nst = [] edu_end_dt = "" cv["school_rank_int"] = 1000000 for ii, n in enumerate(sorted(cv["education_obj"], key=lambda x: x.get("start_time", "3"))): e = {} if n.get("end_time"): if n["end_time"] > edu_end_dt: edu_end_dt = n["end_time"] try: dt = n["end_time"] if re.match(r"[0-9]{9,}", dt): dt = turnTm2Dt(dt) y, m, d = getYMD(dt) ed_dt.append(str(y)) e["end_dt_kwd"] = str(y) except Exception as e: pass if n.get("start_time"): try: dt = n["start_time"] if re.match(r"[0-9]{9,}", dt): dt = turnTm2Dt(dt) y, m, d = getYMD(dt) st_dt.append(str(y)) e["start_dt_kwd"] = str(y) except Exception as e: pass r = schools.select(n.get("school_name", "")) if r: if str(r.get("type", "")) == "1": fea.append("211") if str(r.get("type", "")) == "2": fea.append("211") if str(r.get("is_abroad", "")) == "1": fea.append("留学") if str(r.get("is_double_first", "")) == "1": fea.append("双一流") if str(r.get("is_985", "")) == "1": fea.append("985") if str(r.get("is_world_known", "")) == "1": fea.append("海外知名") if r.get("rank") and cv["school_rank_int"] > r["rank"]: cv["school_rank_int"] = r["rank"] if n.get("school_name") and isinstance(n["school_name"], str): sch.append(re.sub(r"(211|985|重点大学|[,&;;-])", "", n["school_name"])) e["sch_nm_kwd"] = sch[-1] fea.append(rag_tokenizer.fine_grained_tokenize(rag_tokenizer.tokenize(n.get("school_name", ""))).split(" ")[-1]) if n.get("discipline_name") and isinstance(n["discipline_name"], str): maj.append(n["discipline_name"]) e["major_kwd"] = n["discipline_name"] if not n.get("degree") and "985" in fea and not first_fea: n["degree"] = "1" if n.get("degree"): d = degrees.get_name(n["degree"]) if d: e["degree_kwd"] = d if d == "本科" and ("专科" in deg or "专升本" in deg or "中专" in deg or "大专" in deg or re.search(r"(成人|自考|自学考试)", n.get( "school_name", ""))): d = "专升本" if d: deg.append(d) # for first degree if not fdeg and d in ["中专", "专升本", "专科", "本科", "大专"]: fdeg = [d] if n.get("school_name"): fsch = [n["school_name"]] if n.get("discipline_name"): fmaj = [n["discipline_name"]] first_fea = copy.deepcopy(fea) edu_nst.append(e) cv["sch_rank_kwd"] = [] if cv["school_rank_int"] <= 20 \ or ("海外名校" in fea and cv["school_rank_int"] <= 200): cv["sch_rank_kwd"].append("顶尖学校") elif cv["school_rank_int"] <= 50 and cv["school_rank_int"] > 20 \ or ("海外名校" in fea and cv["school_rank_int"] <= 500 and \ cv["school_rank_int"] > 200): cv["sch_rank_kwd"].append("精英学校") elif cv["school_rank_int"] > 50 and ("985" in fea or "211" in fea) \ or ("海外名校" in fea and cv["school_rank_int"] > 500): cv["sch_rank_kwd"].append("优质学校") else: cv["sch_rank_kwd"].append("一般学校") if edu_nst: cv["edu_nst"] = edu_nst if fea: cv["edu_fea_kwd"] = list(set(fea)) if first_fea: cv["edu_first_fea_kwd"] = list(set(first_fea)) if maj: cv["major_kwd"] = maj if fsch: cv["first_school_name_kwd"] = fsch if fdeg: cv["first_degree_kwd"] = fdeg if fmaj: cv["first_major_kwd"] = fmaj if st_dt: cv["edu_start_kwd"] = st_dt if ed_dt: cv["edu_end_kwd"] = ed_dt if ed_dt: cv["edu_end_int"] = max([int(t) for t in ed_dt]) if deg: if "本科" in deg and "专科" in deg: deg.append("专升本") deg = [d for d in deg if d != '本科'] cv["degree_kwd"] = deg cv["highest_degree_kwd"] = highest_degree(deg) if edu_end_dt: try: if re.match(r"[0-9]{9,}", edu_end_dt): edu_end_dt = turnTm2Dt(edu_end_dt) if edu_end_dt.strip("\n") == "至今": edu_end_dt = cv.get("updated_at_dt", str(datetime.date.today())) y, m, d = getYMD(edu_end_dt) cv["work_exp_flt"] = min(int(str(datetime.date.today())[0:4]) - int(y), cv.get("work_exp_flt", 1000)) except Exception as e: print("EXCEPTION: ", e, edu_end_dt, cv.get("work_exp_flt")) if sch: cv["school_name_kwd"] = sch if (len(cv.get("degree_kwd", [])) >= 1 and "本科" in cv["degree_kwd"]) \ or all([c.lower() in ["硕士", "博士", "mba", "博士后"] for c in cv.get("degree_kwd", [])]) \ or not cv.get("degree_kwd"): for c in sch: if schools.is_good(c): if "tag_kwd" not in cv: cv["tag_kwd"] = [] cv["tag_kwd"].append("好学校") cv["tag_kwd"].append("好学历") break if (len(cv.get("degree_kwd", [])) >= 1 and \ "本科" in cv["degree_kwd"] and \ any([d.lower() in ["硕士", "博士", "mba", "博士"] for d in cv.get("degree_kwd", [])])) \ or all([d.lower() in ["硕士", "博士", "mba", "博士后"] for d in cv.get("degree_kwd", [])]) \ or any([d in ["mba", "emba", "博士后"] for d in cv.get("degree_kwd", [])]): if "tag_kwd" not in cv: cv["tag_kwd"] = [] if "好学历" not in cv["tag_kwd"]: cv["tag_kwd"].append("好学历") if cv.get("major_kwd"): cv["major_tks"] = rag_tokenizer.tokenize(" ".join(maj)) if cv.get("school_name_kwd"): cv["school_name_tks"] = rag_tokenizer.tokenize(" ".join(sch)) if cv.get("first_school_name_kwd"): cv["first_school_name_tks"] = rag_tokenizer.tokenize(" ".join(fsch)) if cv.get("first_major_kwd"): cv["first_major_tks"] = rag_tokenizer.tokenize(" ".join(fmaj)) return cv def forProj(cv): if not cv.get("project_obj"): return cv pro_nms, desc = [], [] for i, n in enumerate( sorted(cv.get("project_obj", []), key=lambda x: str(x.get("updated_at", "")) if type(x) == type({}) else "", reverse=True)): if n.get("name"): pro_nms.append(n["name"]) if n.get("describe"): desc.append(str(n["describe"])) if n.get("responsibilities"): desc.append(str(n["responsibilities"])) if n.get("achivement"): desc.append(str(n["achivement"])) if pro_nms: # cv["pro_nms_tks"] = rag_tokenizer.tokenize(" ".join(pro_nms)) cv["project_name_tks"] = rag_tokenizer.tokenize(pro_nms[0]) if desc: cv["pro_desc_ltks"] = rag_tokenizer.tokenize(rmHtmlTag(" ".join(desc))) cv["project_desc_ltks"] = rag_tokenizer.tokenize(rmHtmlTag(desc[0])) return cv def json_loads(line): return demjson3.decode(re.sub(r": *(True|False)", r": '\1'", line)) def forWork(cv): if not cv.get("work_obj"): cv["integerity_flt"] *= 0.7 return cv flds = ["position_name", "corporation_name", "corporation_id", "responsibilities", "industry_name", "subordinates_count"] duas = [] scales = [] fea = {c: [] for c in flds} latest_job_tm = "" goodcorp = False goodcorp_ = False work_st_tm = "" corp_tags = [] for i, n in enumerate( sorted(cv.get("work_obj", []), key=lambda x: str(x.get("start_time", "")) if type(x) == type({}) else "", reverse=True)): if type(n) == type(""): try: n = json_loads(n) except Exception as e: continue if n.get("start_time") and (not work_st_tm or n["start_time"] < work_st_tm): work_st_tm = n["start_time"] for c in flds: if not n.get(c) or str(n[c]) == '0': fea[c].append("") continue if c == "corporation_name": n[c] = corporations.corpNorm(n[c], False) if corporations.is_good(n[c]): if i == 0: goodcorp = True else: goodcorp_ = True ct = corporations.corp_tag(n[c]) if i == 0: corp_tags.extend(ct) elif ct and ct[0] != "软外": corp_tags.extend([f"{t}(曾)" for t in ct]) fea[c].append(rmHtmlTag(str(n[c]).lower())) y, m, d = getYMD(n.get("start_time")) if not y or not m: continue st = "%s-%02d-%02d" % (y, int(m), int(d)) latest_job_tm = st y, m, d = getYMD(n.get("end_time")) if (not y or not m) and i > 0: continue if not y or not m or int(y) > 2022: y, m, d = getYMD(str(n.get("updated_at", ""))) if not y or not m: continue ed = "%s-%02d-%02d" % (y, int(m), int(d)) try: duas.append((datetime.datetime.strptime(ed, "%Y-%m-%d") - datetime.datetime.strptime(st, "%Y-%m-%d")).days) except Exception as e: print("kkkkkkkkkkkkkkkkkkkk", n.get("start_time"), n.get("end_time")) if n.get("scale"): r = re.search(r"^([0-9]+)", str(n["scale"])) if r: scales.append(int(r.group(1))) if goodcorp: if "tag_kwd" not in cv: cv["tag_kwd"] = [] cv["tag_kwd"].append("好公司") if goodcorp_: if "tag_kwd" not in cv: cv["tag_kwd"] = [] cv["tag_kwd"].append("好公司(曾)") if corp_tags: if "tag_kwd" not in cv: cv["tag_kwd"] = [] cv["tag_kwd"].extend(corp_tags) cv["corp_tag_kwd"] = [c for c in corp_tags if re.match(r"(综合|行业)", c)] if latest_job_tm: cv["latest_job_dt"] = latest_job_tm if fea["corporation_id"]: cv["corporation_id"] = fea["corporation_id"] if fea["position_name"]: cv["position_name_tks"] = rag_tokenizer.tokenize(fea["position_name"][0]) cv["position_name_sm_tks"] = rag_tokenizer.fine_grained_tokenize(cv["position_name_tks"]) cv["pos_nm_tks"] = rag_tokenizer.tokenize(" ".join(fea["position_name"][1:])) if fea["industry_name"]: cv["industry_name_tks"] = rag_tokenizer.tokenize(fea["industry_name"][0]) cv["industry_name_sm_tks"] = rag_tokenizer.fine_grained_tokenize(cv["industry_name_tks"]) cv["indu_nm_tks"] = rag_tokenizer.tokenize(" ".join(fea["industry_name"][1:])) if fea["corporation_name"]: cv["corporation_name_kwd"] = fea["corporation_name"][0] cv["corp_nm_kwd"] = fea["corporation_name"] cv["corporation_name_tks"] = rag_tokenizer.tokenize(fea["corporation_name"][0]) cv["corporation_name_sm_tks"] = rag_tokenizer.fine_grained_tokenize(cv["corporation_name_tks"]) cv["corp_nm_tks"] = rag_tokenizer.tokenize(" ".join(fea["corporation_name"][1:])) if fea["responsibilities"]: cv["responsibilities_ltks"] = rag_tokenizer.tokenize(fea["responsibilities"][0]) cv["resp_ltks"] = rag_tokenizer.tokenize(" ".join(fea["responsibilities"][1:])) if fea["subordinates_count"]: fea["subordinates_count"] = [int(i) for i in fea["subordinates_count"] if re.match(r"[^0-9]+$", str(i))] if fea["subordinates_count"]: cv["max_sub_cnt_int"] = np.max(fea["subordinates_count"]) if type(cv.get("corporation_id")) == type(1): cv["corporation_id"] = [str(cv["corporation_id"])] if not cv.get("corporation_id"): cv["corporation_id"] = [] for i in cv.get("corporation_id", []): cv["baike_flt"] = max(corporations.baike(i), cv["baike_flt"] if "baike_flt" in cv else 0) if work_st_tm: try: if re.match(r"[0-9]{9,}", work_st_tm): work_st_tm = turnTm2Dt(work_st_tm) y, m, d = getYMD(work_st_tm) cv["work_exp_flt"] = min(int(str(datetime.date.today())[0:4]) - int(y), cv.get("work_exp_flt", 1000)) except Exception as e: print("EXCEPTION: ", e, work_st_tm, cv.get("work_exp_flt")) cv["job_num_int"] = 0 if duas: cv["dua_flt"] = np.mean(duas) cv["cur_dua_int"] = duas[0] cv["job_num_int"] = len(duas) if scales: cv["scale_flt"] = np.max(scales) return cv def turnTm2Dt(b): if not b: return b = str(b).strip() if re.match(r"[0-9]{10,}", b): b = time.strftime("%Y-%m-%d %H:%M:%S", time.localtime(int(b[:10]))) return b def getYMD(b): y, m, d = "", "", "01" if not b: return (y, m, d) b = turnTm2Dt(b) if re.match(r"[0-9]{4}", b): y = int(b[:4]) r = re.search(r"[0-9]{4}.?([0-9]{1,2})", b) if r: m = r.group(1) r = re.search(r"[0-9]{4}.?[0-9]{,2}.?([0-9]{1,2})", b) if r: d = r.group(1) if not d or int(d) == 0 or int(d) > 31: d = "1" if not m or int(m) > 12 or int(m) < 1: m = "1" return (y, m, d) def birth(cv): if not cv.get("birth"): cv["integerity_flt"] *= 0.9 return cv y, m, d = getYMD(cv["birth"]) if not m or not y: return cv b = "%s-%02d-%02d" % (y, int(m), int(d)) cv["birth_dt"] = b cv["birthday_kwd"] = "%02d%02d" % (int(m), int(d)) cv["age_int"] = datetime.datetime.now().year - int(y) return cv def parse(cv): for k in cv.keys(): if cv[k] == '\\N': cv[k] = '' # cv = cv.asDict() tks_fld = ["address", "corporation_name", "discipline_name", "email", "expect_city_names", "expect_industry_name", "expect_position_name", "industry_name", "industry_names", "name", "position_name", "school_name", "self_remark", "title_name"] small_tks_fld = ["corporation_name", "expect_position_name", "position_name", "school_name", "title_name"] kwd_fld = ["address", "city", "corporation_type", "degree", "discipline_name", "expect_city_names", "email", "expect_industry_name", "expect_position_name", "expect_type", "gender", "industry_name", "industry_names", "political_status", "position_name", "scale", "school_name", "phone", "tel"] num_fld = ["annual_salary", "annual_salary_from", "annual_salary_to", "expect_annual_salary", "expect_salary_from", "expect_salary_to", "salary_month"] is_fld = [ ("is_fertility", "已育", "未育"), ("is_house", "有房", "没房"), ("is_management_experience", "有管理经验", "无管理经验"), ("is_marital", "已婚", "未婚"), ("is_oversea", "有海外经验", "无海外经验") ] rmkeys = [] for k in cv.keys(): if cv[k] is None: rmkeys.append(k) if (type(cv[k]) == type([]) or type(cv[k]) == type("")) and len(cv[k]) == 0: rmkeys.append(k) for k in rmkeys: del cv[k] integerity = 0. flds_num = 0. def hasValues(flds): nonlocal integerity, flds_num flds_num += len(flds) for f in flds: v = str(cv.get(f, "")) if len(v) > 0 and v != '0' and v != '[]': integerity += 1 hasValues(tks_fld) hasValues(small_tks_fld) hasValues(kwd_fld) hasValues(num_fld) cv["integerity_flt"] = integerity / flds_num if cv.get("corporation_type"): for p, r in [(r"(公司|企业|其它|其他|Others*|\n|未填写|Enterprises|Company|companies)", ""), (r"[//.· <\((]+.*", ""), (r".*(合资|民企|股份制|中外|私营|个体|Private|创业|Owned|投资).*", "民营"), (r".*(机关|事业).*", "机关"), (r".*(非盈利|Non-profit).*", "非盈利"), (r".*(外企|外商|欧美|foreign|Institution|Australia|港资).*", "外企"), (r".*国有.*", "国企"), (r"[ ()\(\)人/·0-9-]+", ""), (r".*(元|规模|于|=|北京|上海|至今|中国|工资|州|shanghai|强|餐饮|融资|职).*", "")]: cv["corporation_type"] = re.sub(p, r, cv["corporation_type"], 1000, re.IGNORECASE) if len(cv["corporation_type"]) < 2: del cv["corporation_type"] if cv.get("political_status"): for p, r in [ (r".*党员.*", "党员"), (r".*(无党派|公民).*", "群众"), (r".*团员.*", "团员")]: cv["political_status"] = re.sub(p, r, cv["political_status"]) if not re.search(r"[党团群]", cv["political_status"]): del cv["political_status"] if cv.get("phone"): cv["phone"] = re.sub(r"^0*86([0-9]{11})", r"\1", re.sub(r"[^0-9]+", "", cv["phone"])) keys = list(cv.keys()) for k in keys: # deal with json objects if k.find("_obj") > 0: try: cv[k] = json_loads(cv[k]) cv[k] = [a for _, a in cv[k].items()] nms = [] for n in cv[k]: if type(n) != type({}) or "name" not in n or not n.get("name"): continue n["name"] = re.sub(r"((442)|\t )", "", n["name"]).strip().lower() if not n["name"]: continue nms.append(n["name"]) if nms: t = k[:-4] cv[f"{t}_kwd"] = nms cv[f"{t}_tks"] = rag_tokenizer.tokenize(" ".join(nms)) except Exception as e: print("【EXCEPTION】:", str(traceback.format_exc()), cv[k]) cv[k] = [] # tokenize fields if k in tks_fld: cv[f"{k}_tks"] = rag_tokenizer.tokenize(cv[k]) if k in small_tks_fld: cv[f"{k}_sm_tks"] = rag_tokenizer.tokenize(cv[f"{k}_tks"]) # keyword fields if k in kwd_fld: cv[f"{k}_kwd"] = [n.lower() for n in re.split(r"[\t,,;;. ]", re.sub(r"([^a-zA-Z])[ ]+([^a-zA-Z ])", r"\1,\2", cv[k]) ) if n] if k in num_fld and cv.get(k): cv[f"{k}_int"] = cv[k] cv["email_kwd"] = cv.get("email_tks", "").replace(" ", "") # for name field if cv.get("name"): nm = re.sub(r"[\n——\-\((\+].*", "", cv["name"].strip()) nm = re.sub(r"[ \t ]+", " ", nm) if re.match(r"[a-zA-Z ]+$", nm): if len(nm.split(" ")) > 1: cv["name"] = nm else: nm = "" elif nm and (surname.isit(nm[0]) or surname.isit(nm[:2])): nm = re.sub(r"[a-zA-Z]+.*", "", nm[:5]) else: nm = "" cv["name"] = nm.strip() name = cv["name"] # name pingyin and its prefix cv["name_py_tks"] = " ".join(PY.get_pinyins(nm[:20], '')) + " " + " ".join(PY.get_pinyins(nm[:20], ' ')) cv["name_py_pref0_tks"] = "" cv["name_py_pref_tks"] = "" for py in PY.get_pinyins(nm[:20], ''): for i in range(2, len(py) + 1): cv["name_py_pref_tks"] += " " + py[:i] for py in PY.get_pinyins(nm[:20], ' '): py = py.split(" ") for i in range(1, len(py) + 1): cv["name_py_pref0_tks"] += " " + "".join(py[:i]) cv["name_kwd"] = name cv["name_pinyin_kwd"] = PY.get_pinyins(nm[:20], ' ')[:3] cv["name_tks"] = ( rag_tokenizer.tokenize(name) + " " + (" ".join(list(name)) if not re.match(r"[a-zA-Z ]+$", name) else "") ) if name else "" else: cv["integerity_flt"] /= 2. if cv.get("phone"): r = re.search(r"(1[3456789][0-9]{9})", cv["phone"]) if not r: cv["phone"] = "" else: cv["phone"] = r.group(1) # deal with date fields if cv.get("updated_at") and isinstance(cv["updated_at"], datetime.datetime): cv["updated_at_dt"] = cv["updated_at"].strftime('%Y-%m-%d %H:%M:%S') else: y, m, d = getYMD(str(cv.get("updated_at", ""))) if not y: y = "2012" if not m: m = "01" if not d: d = "01" cv["updated_at_dt"] = f"%s-%02d-%02d 00:00:00" % (y, int(m), int(d)) # long text tokenize if cv.get("responsibilities"): cv["responsibilities_ltks"] = rag_tokenizer.tokenize(rmHtmlTag(cv["responsibilities"])) # for yes or no field fea = [] for f, y, n in is_fld: if f not in cv: continue if cv[f] == '是': fea.append(y) if cv[f] == '否': fea.append(n) if fea: cv["tag_kwd"] = fea cv = forEdu(cv) cv = forProj(cv) cv = forWork(cv) cv = birth(cv) cv["corp_proj_sch_deg_kwd"] = [c for c in cv.get("corp_tag_kwd", [])] for i in range(len(cv["corp_proj_sch_deg_kwd"])): for j in cv.get("sch_rank_kwd", []): cv["corp_proj_sch_deg_kwd"][i] += "+" + j for i in range(len(cv["corp_proj_sch_deg_kwd"])): if cv.get("highest_degree_kwd"): cv["corp_proj_sch_deg_kwd"][i] += "+" + cv["highest_degree_kwd"] try: if not cv.get("work_exp_flt") and cv.get("work_start_time"): if re.match(r"[0-9]{9,}", str(cv["work_start_time"])): cv["work_start_dt"] = turnTm2Dt(cv["work_start_time"]) cv["work_exp_flt"] = (time.time() - int(int(cv["work_start_time"]) / 1000)) / 3600. / 24. / 365. elif re.match(r"[0-9]{4}[^0-9]", str(cv["work_start_time"])): y, m, d = getYMD(str(cv["work_start_time"])) cv["work_start_dt"] = f"%s-%02d-%02d 00:00:00" % (y, int(m), int(d)) cv["work_exp_flt"] = int(str(datetime.date.today())[0:4]) - int(y) except Exception as e: print("【EXCEPTION】", e, "==>", cv.get("work_start_time")) if "work_exp_flt" not in cv and cv.get("work_experience", 0): cv["work_exp_flt"] = int(cv["work_experience"]) / 12. keys = list(cv.keys()) for k in keys: if not re.search(r"_(fea|tks|nst|dt|int|flt|ltks|kwd|id)$", k): del cv[k] for k in cv.keys(): if not re.search("_(kwd|id)$", k) or type(cv[k]) != type([]): continue cv[k] = list(set([re.sub("(市)$", "", str(n)) for n in cv[k] if n not in ['中国', '0']])) keys = [k for k in cv.keys() if re.search(r"_feas*$", k)] for k in keys: if cv[k] <= 0: del cv[k] cv["tob_resume_id"] = str(cv["tob_resume_id"]) cv["id"] = cv["tob_resume_id"] print("CCCCCCCCCCCCCCC") return dealWithInt64(cv) def dealWithInt64(d): if isinstance(d, dict): for n, v in d.items(): d[n] = dealWithInt64(v) if isinstance(d, list): d = [dealWithInt64(t) for t in d] if isinstance(d, np.integer): d = int(d) return d