


Interconnection between Java and Alibaba Cloud Table Storage: How to achieve large-scale data storage and query?
Java and Alibaba Cloud Table Storage docking: How to achieve large-scale data storage and query?
With the development of Internet applications, large-scale data storage and query are becoming more and more important. In order to solve the storage and efficient query problems of massive data, Alibaba Cloud launched the table storage service. Table storage is a distributed NoSQL database with high scalability, high concurrency and low latency. This article will use Java language as an example to introduce how to connect Java with Alibaba Cloud Table Storage to achieve large-scale data storage and query.
- Register an Alibaba Cloud account and activate the table storage service
First, we need to register an account on the Alibaba Cloud official website and purchase the table storage service. In the Alibaba Cloud console, enter the "Table Storage" module, click the "Create Instance" button, select the instance specifications, region, storage type and other configuration items in the pop-up dialog box, confirm that they are correct, and click the "Purchase" button to succeed. Activate table storage service.
- Create data table
After successfully activating the table storage service, we need to create a data table to store data. In the table storage module of the Alibaba Cloud console, select the corresponding instance and click the "Data Table Management" tab to enter the data table management page. Click the "New Data Table" button, fill in the data table name, primary key and other information in the pop-up dialog box. After confirming that it is correct, click the "OK" button to successfully create the data table.
- Introducing Java SDK
In order to operate Alibaba Cloud Table Storage in Java, we need to introduce the relevant Java SDK. Alibaba Cloud provides a Java version of the table storage SDK. During use, we can directly introduce the corresponding SDK package.
- Initialize the client
In the Java code, we need to initialize the TableStoreClient client first. When initializing the client, we need to pass in the AccessKey ID and AccessKey Secret of the Alibaba Cloud account, as well as the Endpoint of the table storage service. The AccessKey ID and AccessKey Secret can be obtained in the "Access Control" module of the Alibaba Cloud console, and the Endpoint can be found on the instance details page of the Table Storage service.
import com.aliyun.openservices.ots.*; import com.aliyun.openservices.ots.model.*; import com.aliyun.openservices.ots.client.*; import com.aliyun.openservices.ots.ut.*; import com.aliyun.openservices.ots.model.condition.*; OTSClient client = new OTSClient("<your-accesskey-id>", "<your-accesskey-secret>", "<your-endpoint>");
- Create data table
In Java code, we can create data tables through the TableMeta and TableOptions classes. TableMeta is used to specify the name and primary key of the data table, while TableOptions is used to specify the options of the data table, such as reserved read/write throughput, expiration time, data type, etc.
String tableName = "myTable"; String primaryKey = "id"; TableMeta tableMeta = new TableMeta(tableName); tableMeta.addPrimaryKeyColumn(primaryKey, PrimaryKeyType.INTEGER); CapacityUnit capacityUnit = new CapacityUnit(0, 0); //设定预留读/写吞吐量 CreateTableRequest createTableRequest = new CreateTableRequest(); createTableRequest.setTableMeta(tableMeta); createTableRequest.setReservedThroughput(capacityUnit); try { client.createTable(createTableRequest); } catch (Exception e) { e.printStackTrace(); }
- Insert data
In Java code, we can use PutRowRequest to insert data. It should be noted that when inserting data, you need to specify the data table name, primary key, attribute value and other information.
PutRowRequest putRowRequest = new PutRowRequest(); putRowRequest.setTableName(tableName); PrimaryKey primaryKey = new PrimaryKey(); primaryKey.addPrimaryKeyColumn("id", PrimaryKeyValue.fromLong(1L)); putRowRequest.setPrimaryKey(primaryKey); RowPutChange rowPutChange = new RowPutChange(tableName); rowPutChange.setPrimaryKey(primaryKey); rowPutChange.addColumn("name", ColumnValue.fromString("John")); rowPutChange.addColumn("age", ColumnValue.fromLong(20L)); putRowRequest.setRowChange(rowPutChange); try { client.putRow(putRowRequest); } catch (Exception e) { e.printStackTrace(); }
- Query data
In Java code, we can use GetRowRequest to query data. It should be noted that when querying data, you need to specify the data table name, primary key and attribute column to be queried.
GetRowRequest getRowRequest = new GetRowRequest(); getRowRequest.setTableName(tableName); PrimaryKey primaryKey = new PrimaryKey(); primaryKey.addPrimaryKeyColumn("id", PrimaryKeyValue.fromLong(1L)); getRowRequest.setPrimaryKey(primaryKey); List<String> columnsToGet = new ArrayList<>(); columnsToGet.add("name"); columnsToGet.add("age"); getRowRequest.setColumnsToGet(columnsToGet); try { GetRowResult getRowResult = client.getRow(getRowRequest); Row row = getRowResult.getRow(); if (row != null) { System.out.println("name: " + row.getColumns().get("name").asString()); System.out.println("age: " + row.getColumns().get("age").asLong()); } } catch (Exception e) { e.printStackTrace(); }
Through the above code examples, we can see how to use Java to connect with Alibaba Cloud Table Storage to achieve large-scale data storage and query functions. Through reasonable data table design and optimization, coupled with appropriate read and write throughput configuration, we can achieve efficient access and query operations in the presence of massive data.
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