HBase Python API

时间:2023-03-09 06:54:18
HBase Python API

HBase Python API

HBase通过thrift机制可以实现多语言编程,信息通过端口传递,因此Python是个不错的选择

吐槽

博主在Mac上配置HBase,奈何Zoomkeeper一直报错,结果Ubuntu虚拟机上10min解决……但是虚拟机里没有IDE写Java代码还是不方便,因此用Mac主机连接虚拟机的想法孕育而生,这样又可以愉快地使用主机的IDE了~

一、服务端启动Hbase Thrift RPC

HBase的启动方式有很多,这里不再赘述,Ubuntu启动HBase之后,启动thrift

hbase-daemon.sh start thrift

默认的服务端口是9090

二、客户端安装依赖包

sudo pip install thrift
sudo pip install hbase-thrift

三、编写客户端代码

# coding=utf-8
from thrift.transport import TSocket
from thrift.transport.TTransport import TBufferedTransport
from thrift.protocol import TBinaryProtocol from hbase import Hbase
from hbase.ttypes import ColumnDescriptor
from hbase.ttypes import Mutation class HBaseClient(object):
def __init__(self, ip, port=9090):
"""
建立与thrift server端的连接
"""
# server端地址和端口设定
self.__transport = TBufferedTransport(TSocket.TSocket(ip, port))
# 设置传输协议
protocol = TBinaryProtocol.TBinaryProtocol(self.__transport)
# 客户端
self.__client = Hbase.Client(protocol)
# 打开连接
self.__transport.open() def __del__(self):
self.__transport.close() def get_tables(self):
"""
获得所有表
:return:表名列表
"""
return self.__client.getTableNames() def create_table(self, table, *columns):
"""
创建表格
:param table:表名
:param columns:列族名
"""
func = lambda col: ColumnDescriptor(col)
column_families = map(func, columns)
self.__client.createTable(table, column_families) def put(self, table, row, columns):
"""
添加记录
:param table:表名
:param row:行键
:param columns:列名
:return:
"""
func = lambda (k, v): Mutation(column=k, value=v)
mutations = map(func, columns.items())
self.__client.mutateRow(table, row, mutations) def delete(self, table, row, column):
"""
删除记录
:param table:表名
:param row:行键
"""
self.__client.deleteAll(table, row, column) def scan(self, table, start_row="", columns=None):
"""
获得记录
:param table: 表名
:param start_row: 起始行
:param columns: 列族
:param attributes:
"""
scanner = self.__client.scannerOpen(table, start_row, columns)
func = lambda (k, v): (k, v.value)
while True:
r = self.__client.scannerGet(scanner)
if not r:
break
yield dict(map(func, r[0].columns.items())) if __name__ == '__main__':
client = HBaseClient("10.211.55.7") # client.create_table('student', 'name', 'course')
client.put("student", "1",
{"name:": "Jack",
"course:art": "88",
"course:math": "12"}) client.put("student", "2",
{"name:": "Tom", "course:art": "90",
"course:math": "100"}) client.put("student", "3",
{"name:": "Jerry"})
client.delete('student', '1', 'course:math')
for v in client.scan('student'):
print v

四、测试结果

{'course:art': '88', 'name:': 'Jack'}
{'course:art': '90', 'name:': 'Tom', 'course:math': '100'}
{'name:': 'Jerry'}

五、小结

有了Python接口后,编写简单任务脚本变得非常方便,这大大得益于RPC机制,很好地解耦了Client和Server,方便开发人员合作。