Ejemplo n.º 1
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def lagouSalaryDetail():
    sql = database.getLagouPositionInfo()
    # 获取数据库连接
    conn = database.getDatabaseConn()
    df = pd.read_sql(sql, conn)
    tmp = df['salary'].apply(salarySplit).rename(columns={0:'salary_low', 1:'salary_high', 2:'salary_mean'})
    df = df.combine_first(tmp)
    return df
Ejemplo n.º 2
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def get51IndustryNum():
    # 获取行业数据
    sql = database.get51IndustrySql()
    # 获取数据库连接
    conn = database.getDatabaseConn()
    data = pd.read_sql(sql, conn)
    data = data[(True ^ data.industry.isin(['1000-5000人', '5000-10000人', '500-1000人', '少于50人', '150-500人', '50-150人']))]
    data_sort = data.groupby('industry').size().sort_values(ascending=False)[:60]
    return data_sort.to_json(orient='index', force_ascii=False)
Ejemplo n.º 3
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def programingPositionRank(sql, query_key):
    # 获取数据库连接
    conn = database.getDatabaseConn()
    # 获取常用语言
    programing_language_list = helper.getProgramingLanguage()
    # 获取数据
    lg_rd_df = pd.read_sql(sql, conn)
    conn.close()
    # 查询数据
    lg_df_programing_rank = getNumByKeyWords(lg_rd_df, query_key, programing_language_list)
    return lg_df_programing_rank
Ejemplo n.º 4
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def job51CompanyPositionNum():
    # 获取51job的sql
    sql_position = database.get51JobPositionSql()
    sql_company = database.get51JobCompanySql()
    # 获取数据库连接
    conn = database.getDatabaseConn()
    j5_df = pd.read_sql(sql_position, conn)
    j5c_df = pd.read_sql(sql_company, conn)
    res_j5 = pd.merge(j5_df, j5c_df, on='company_md5', how='left')
    res_j5_g = res_j5.groupby('full_name').size().sort_values(ascending=False)
    return res_j5_g[0:60].to_json(orient='index', force_ascii=False)
Ejemplo n.º 5
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def zhilianCompanyPositionNum():
    # 获取51job的sql
    sql_position = database.getZhilianPositionSql()
    sql_company = database.getZhilianCompanySql()
    # 获取数据库连接
    conn = database.getDatabaseConn()
    zp_df = pd.read_sql(sql_position, conn)
    zc_df = pd.read_sql(sql_company, conn)
    res_zp = pd.merge(zp_df, zc_df, on='company_md5', how='left')
    res_zp_g = res_zp.groupby('full_name').size().sort_values(ascending=False)
    return res_zp_g[0:60].to_json(orient='index', force_ascii=False)
Ejemplo n.º 6
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def lagouPositionRank():
    # 获取拉钩的sql
    sql = database.getLagouSecondtype()
    # 获取数据库连接
    conn = database.getDatabaseConn()

    position_res_df = pd.read_sql(sql, conn)

    res_choose = getPositionRank(position_res_df, 'second_type')

    return res_choose.sort_values(ascending=False)[0:60].to_json(orient='index', force_ascii=False)
Ejemplo n.º 7
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def zhilianPositionRank():
    # 获取51job的sql
    sql = database.getZhilianPositionType()
    sql_Other = database.getZhilianPositionName()
    # 获取数据库连接
    conn = database.getDatabaseConn()

    position_res_df = pd.concat([pd.read_sql(sql, conn), pd.read_sql(sql_Other, conn)])

    res_choose = getPositionRank(position_res_df, 'position_type')

    return res_choose.sort_values(ascending=False)[0:60].to_json(orient='index', force_ascii=False)
Ejemplo n.º 8
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def getZLSalaryByPosition(type = 1, sort_type = 1):
    sql = database.getZLSalaryByPositionSql()
    conn = database.getDatabaseConn()
    df = pd.read_sql(sql, conn)
    if type == 1:
        condition = ['position_type']
    elif type == 2:
        condition = ['position_type', 'work_year', 'city']
    sort_status = True if sort_type == 1 else False
    df_res = df.groupby(condition).describe().salary_high.sort_values('mean', ascending=sort_status)[:100]
    res = pd.concat([df_res['std'].apply(lambda x: int(x)), df_res['mean'].apply(lambda x: int(x)), df_res['50%'].apply(lambda x: int(x))], axis=1).rename(columns={'std':'标准差','mean':'平均值','50%':'中位数'})
    res.to_excel('output/PositionSalaryByWE.xlsx')
    return res.to_json(orient='index', force_ascii=False)
Ejemplo n.º 9
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def job51SalaryPosition(type=1):
    import os
    # 获取数据库连接
    if type == 1 & os.path.exists('./salaryWE.h5'):
        df_res = pd.read_hdf('./salaryWE.h5')
    else:
        conn = database.getDatabaseConn()
        sql = database.getJ5ZCSql()
        df_51job_salary = pd.read_sql(sql, conn)
        df_51job_salary = df_51job_salary[df_51job_salary.salary != 'NULL']
        df_51job_salary_deal = df_51job_salary[True ^ df_51job_salary['salary'].str.contains('天|小时|\+')]
        df_tmp = df_51job_salary_deal.salary.apply(job51SalaryDeal)
        df_res = df_51job_salary_deal.combine_first(df_tmp.rename(columns={0: 'low', 1: 'high', 2: 'mean'}))
        df_res.to_hdf('./salaryWE.h5', 'salary_all')
    return df_res
Ejemplo n.º 10
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def lagouCompanyHrRankDf():
    # 获取数据库连接和sql
    conn = database.getDatabaseConn()
    sql_lagou_hr = database.getLagouHrInfo()
    sql_lagou_recruit_day = database.getLagourHrComId()
    sql_lagou_company = database.getLagouCompanyInfo()
    # 读取数据
    lagou_hr_df = pd.read_sql(sql_lagou_hr, conn)
    lagou_recruit_day = pd.read_sql(sql_lagou_recruit_day, conn)
    lagou_company = pd.read_sql(sql_lagou_company, conn)
    # 连接三张表,首先获取公司hr数量
    res_lrd_df = pd.merge(lagou_recruit_day, lagou_hr_df, on='publisher_id', how='left')
    res_com_df = pd.merge(lagou_company, res_lrd_df, on='company_id', how='left')
    res_com_df = res_com_df.set_index('company_id')
    res_g = res_com_df.groupby(['company_id'])
    res_hr_num_df = res_g.size().to_frame().rename(columns={0: 'hr_num'})
    # 然后将数量信息和公司表连接
    company_hr_num_df = pd.concat([lagou_company.set_index('company_id'), res_hr_num_df], axis=1)
    res = company_hr_num_df.sort_values('hr_num', ascending=False)
    return res
Ejemplo n.º 11
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def job51CompanyHighNumType(type=1):
    # 获取51job的sql
    sql_position = database.get51JobPositionSql()
    sql_company = database.get51JobCompanySql()
    # 获取数据库连接
    conn = database.getDatabaseConn()
    j5_df = pd.read_sql(sql_position, conn)
    j5c_df = pd.read_sql(sql_company, conn)
    res_j5 = pd.merge(j5_df, j5c_df, on='company_md5', how='left')
    res_j5_g = res_j5.groupby('full_name').size()
    res_j5_g = pd.DataFrame(list(zip(res_j5_g.index, res_j5_g.values))).rename(
        columns={0: 'full_name', 1: "total_recruit_num"})
    res_total = pd.merge(j5c_df, res_j5_g, on='full_name', how='left').sort_values('total_recruit_num',
                                                                                   ascending=False)[:100]
    if type == 1:
        query_column = 'size'
    elif type == 2:
        query_column = 'company_nature'
    elif type == 3:
        query_column = 'industry'
    res = res_total.groupby(query_column).size().sort_values(ascending=False)
    return res.to_json(orient='index', force_ascii=False)
Ejemplo n.º 12
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def getLagouPositionWordCloud(query_name, type=1, db_type=1):

    if db_type == 1:
        if type == 1:
            sql = getLGPositionContent()
        elif type == 2:
            sql = getZLPositionContent()
        elif type == 3:
            sql = getJ5PositionContent()

        res_df = pd.read_sql(sql, getDatabaseConn())
        res_df.to_hdf('/Users/monstar/Desktop/lg_wc.h5', 'wordCloud')
    else:
        res_df = pd.read_hdf('/Users/monstar/Desktop/lg_wc.h5')
    res_df = res_df[res_df['position_name'].str.contains(
        re.escape(query_name))]
    words = ' '.join(res_df.content)
    getWordCloud(content=words,
                 type=1,
                 status=1,
                 pic_file_path=os.path.join('/Users/monstar/Desktop',
                                            query_name + '.jpg'))
Ejemplo n.º 13
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def get51jobRecruitNumByEducation():
    # 获取数据库连接
    conn = database.getDatabaseConn()
    sql = database.getJ5ZCSql()
    df_51job_salary = pd.read_sql(sql, conn)
    return df_51job_salary.groupby('education').size().sort_values(ascending=False).to_json(orient='index', force_ascii=False)
Ejemplo n.º 14
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def workYearNum(sql):
    # 获取数据库连接
    conn = database.getDatabaseConn()
    df = pd.read_sql(sql, conn)
    df_g = df.groupby('work_year')
    return df_g.size().sort_values(ascending=False)[:7]
Ejemplo n.º 15
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def getJ5PositionWordCloud():
    res_df = pd.read_sql(getJ5Advantage(), getDatabaseConn())
    words = ' '.join(res_df.advantage)
    getWordCloud(content=words, type=1, status=2)