开心1+1涮烤投资方案:餐饮业新商机

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"开心1+1涮烤投资方案是一个综合了商业计划、策划书和经营方案的文档,主要介绍了一个名为‘开心1+1涮烤屋’的餐饮项目。该项目以独特的餐饮概念,将川式火锅与韩式烧烤结合,提供‘一店两菜系’的用餐体验,同时注重健康、环保的饮食环境,受到消费者的欢迎。" 在【标题】和【描述】中,我们可以提炼出以下知识点: 1. 项目理念:开心1+1涮烤屋以“开心源于感激,超越来自诚信”为核心价值观,鼓励员工和顾客在享受美食的同时,体验到互助和成功的喜悦。 2. 餐饮创新:项目打破了传统烹饪模式,将火锅与烧烤融为一体,创造出独特的“开心一体锅”,减少了油烟,使顾客能安心享用美食。 3. 市场定位:针对消费者对美食多样化、个性化的需求,开心1+1涮烤屋提供丰富的菜品选择和新颖的用餐体验,满足了市场对新意和感觉的追求。 4. 技术优势:采用独特设计解决烧烤油烟问题,实现了环保无烟的烧烤方式,提升了顾客的用餐体验。 5. 发展前景:餐饮业被看作是永不过时的市场,具有高增长潜力,尤其是像开心1+1涮烤屋这样的创新项目,被认为是投资者的理想选择,具有较强的赚钱潜力。 6. 商机分析:行业专家认为,开心1+1涮烤屋投资门槛低,爆发力强,是当前餐饮业中最具有商业价值的项目之一,有望引领千亿级别的市场。 7. 品牌战略:公司重视菜品质量和口味,拥有专业的韩式料理师和川式火锅调味师,致力于技术研发和创新,确保品牌特色和顾客满意度。 开心1+1涮烤投资方案是一个集创新、市场洞察、品牌塑造和技术应用于一体的餐饮投资项目,具备良好的发展前景和投资回报潜力。通过精心策划和经营,有望在餐饮行业中创造新的业绩,吸引更多的消费者和投资者。

SELECT PIS.SHOW_FLT_DETAIL AS SHOW_FLT_DETAIL -- new , PIS.SHOW_AWB_DETAIL AS SHOW_AWB_DETAIL -- new , PIS.DISPLAY_AIRLINE_CODE AS CARRIER_CODE , DECODE(PIS.REVERT_FLOW,'N',PIS.FLOW_TYPE,DECODE(PIS.FLOW_TYPE,'I','E','I')) AS FLOW_TYPE , PIS.SHIP_TO_LOCATION AS SHIP_TO_LOCATION , PIS.INVOICE_SEQUENCE AS INVOICE_SEQUENCE , PFT.FLIGHT_DATE AS FLIGHT_DATE , PFT.FLIGHT_CARRIER_CODE AS FLIGHT_CARRIER_CODE , PFT.FLIGHT_SERIAL_NUMBER AS FLIGHT_SERIAL_NUMBER , PFT.FLOW_TYPE AS AIRCRAFT_FLOW , FAST.AIRCRAFT_SERVICE_TYPE AS AIRCRAFT_SERVICE_TYPE , PPT.AWB_NUMBER AS AWB_NUMBER , PPT.WEIGHT AS WEIGHT , PPT.CARGO_HANDLING_OPERATOR AS CARGO_HANDLING_OPERATOR , PPT.SHIPMENT_PACKING_TYPE AS SHIPMENT_PACKING_TYPE , PPT.SHIPMENT_FLOW_TYPE AS SHIPMENT_FLOW_TYPE , PPT.SHIPMENT_BUILD_TYPE AS SHIPMENT_BUILD_TYPE , PPT.SHIPMENT_CARGO_TYPE AS SHIPMENT_CARGO_TYPE , PPT.REVENUE_TYPE AS REVENUE_TYPE , PFT.JV_FLIGHT_CARRIER_CODE AS JV_FLIGHT_CARRIER_CODE , PPT.PORT_TONNAGE_UID AS PORT_TONNAGE_UID , PPT.AWB_UID AS AWB_UID , PIS.INVOICE_SEPARATION_UID AS INVOICE_SEPARATION_UID , PFT.FLIGHT_TONNAGE_UID AS FLIGHT_TONNAGE_UID FROM PN_FLT_TONNAGES PFT , FZ_AIRLINES FA , PN_TONNAGE_FLT_PORTS PTFP , PN_PORT_TONNAGES PPT , FF_AIRCRAFT_SERVICE_TYPES FAST , SR_PN_INVOICE_SEPARATIONS PIS --new , SR_PN_INVOICE_SEP_DETAILS PISD--new , SR_PN_INV_SEP_PORT_TONNAGES PISPT --new WHERE PFT.FLIGHT_OPERATION_DATE >= trunc( CASE :rundate WHEN TO_DATE('01/01/1900', 'DD/MM/YYYY') THEN ADD_MONTHS(SYSDATE,-1) ELSE ADD_MONTHS(:rundate,-1) END, 'MON') AND PFT.FLIGHT_OPERATION_DATE < trunc( CASE :rundate WHEN TO_DATE('01/01/1900', 'DD/MM/YYYY') THEN TRUNC(SYSDATE) ELSE TRUNC(:rundate) END, 'MON') AND PFT.TYPE IN ('C', 'F') AND PFT.RECORD_TYPE = 'M' AND (PFT.TERMINAL_OPERATOR NOT IN ('X', 'A') OR (PFT.TERMINAL_OPERATOR <> 'X' AND FA.CARRIER_CODE IN (SELECT * FROM SPECIAL_HANDLING_AIRLINE) AND PPT.REVENUE_TYPE IN (SELECT * FROM SPECIAL_REVENUE_TYPE) AND PPT.SHIPMENT_FLOW_TYPE IN (SELECT * FROM SPECIAL_SHIPMENT_FLOW_TYPE) AND PFT.FLIGHT_OPERATION_DATE >= (select EFF_DATE from SPECIAL_HANDLING_EFF_DATE) )) AND PFT.DELETING_DATETIME IS NULL AND FA.AIRLINE_UID = PFT.AIRLINE_UID AND FA.DELETING_DATETIME IS NULL AND PTFP.FLIGHT_TONNAGE_UID = PFT.FLIGHT_TONNAGE_UID AND PTFP.RECORD_TYPE = 'M' AND PTFP.DELETING_DATETIME IS NULL AND PPT.TONNAGE_FLIGHT_PORT_UID (+)= PTFP.TONNAGE_FLIGHT_PORT_UID AND PPT.RECORD_TYPE (+)= 'M' AND PPT.DISCREPANCY_TYPE (+)= 'NONE' AND PPT.ADJUSTMENT_INC_FLAG (+)= 'Y' AND PPT.DELETING_DATETIME (+) IS NULL AND FAST.AIRCRAFT_SERVICE_TYPE_UID = PFT.AIRCRAFT_SERVICE_TYPE_UID AND FAST.DELETING_DATETIME IS NULL AND PIS.TEMPORAL_NAME = TO_CHAR((CASE :rundate --new WHEN TO_DATE('01/01/1900', 'DD/MM/YYYY') THEN TRUNC(SYSDATE) ELSE TRUNC(:rundate) END ), 'YYYYMM') || '00' AND PIS.INVOICE_SEPARATION_UID = PISD.INVOICE_SEPARATION_UID --new AND PISD.INVOICE_SEP_DETAIL_UID = PISPT.INVOICE_SEP_DETAIL_UID --new AND PISPT.PORT_TONNAGE_UID = PPT.PORT_TONNAGE_UID --new AND PIS.PRINT_SUPPORTING_DOC = 'Y';上面是oracle的写法,请转成spark SQL的写法。

2023-06-02 上传

import sys import re import jieba import codecs import gensim import numpy as np import pandas as pd def segment(doc: str): stop_words = pd.read_csv('data/stopwords.txt', index_col=False, quoting=3, names=['stopword'], sep='\n', encoding='utf-8') stop_words = list(stop_words.stopword) reg_html = re.compile(r'<[^>]+>', re.S) # 去掉html标签数字等 doc = reg_html.sub('', doc) doc = re.sub('[0-9]', '', doc) doc = re.sub('\s', '', doc) word_list = list(jieba.cut(doc)) out_str = '' for word in word_list: if word not in stop_words: out_str += word out_str += ' ' segments = out_str.split(sep=' ') return segments def doc2vec(file_name, model): start_alpha = 0.01 infer_epoch = 1000 doc = segment(codecs.open(file_name, 'r', 'utf-8').read()) vector = model.docvecs[doc_id] return model.infer_vector(doc) # 计算两个向量余弦值 def similarity(a_vect, b_vect): dot_val = 0.0 a_norm = 0.0 b_norm = 0.0 cos = None for a, b in zip(a_vect, b_vect): dot_val += a * b a_norm += a ** 2 b_norm += b ** 2 if a_norm == 0.0 or b_norm == 0.0: cos = -1 else: cos = dot_val / ((a_norm * b_norm) ** 0.5) return cos def test_model(file1, file2): print('导入模型') model_path = 'tmp/zhwk_news.doc2vec' model = gensim.models.Doc2Vec.load(model_path) vect1 = doc2vec(file1, model) # 转成句子向量 vect2 = doc2vec(file2, model) print(sys.getsizeof(vect1)) # 查看变量占用空间大小 print(sys.getsizeof(vect2)) cos = similarity(vect1, vect2) print('相似度:%0.2f%%' % (cos * 100)) if __name__ == '__main__': file1 = 'data/corpus_test/t1.txt' file2 = 'data/corpus_test/t2.txt' test_model(file1, file2) 有什么问题 ,怎么解决

2023-06-13 上传