azure-data-tables-java
Build table storage applications with Azure Tables SDK for Java. Use when working with Azure Table Storage or Cosmos DB Table API for NoSQL key-value data, schemaless storage, or structured data at...
Best use case
azure-data-tables-java is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Build table storage applications with Azure Tables SDK for Java. Use when working with Azure Table Storage or Cosmos DB Table API for NoSQL key-value data, schemaless storage, or structured data at...
Teams using azure-data-tables-java should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/azure-data-tables-java/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How azure-data-tables-java Compares
| Feature / Agent | azure-data-tables-java | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Build table storage applications with Azure Tables SDK for Java. Use when working with Azure Table Storage or Cosmos DB Table API for NoSQL key-value data, schemaless storage, or structured data at...
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# Azure Tables SDK for Java
Build table storage applications using the Azure Tables SDK for Java. Works with both Azure Table Storage and Cosmos DB Table API.
## Installation
```xml
<dependency>
<groupId>com.azure</groupId>
<artifactId>azure-data-tables</artifactId>
<version>12.6.0-beta.1</version>
</dependency>
```
## Client Creation
### With Connection String
```java
import com.azure.data.tables.TableServiceClient;
import com.azure.data.tables.TableServiceClientBuilder;
import com.azure.data.tables.TableClient;
TableServiceClient serviceClient = new TableServiceClientBuilder()
.connectionString("<your-connection-string>")
.buildClient();
```
### With Shared Key
```java
import com.azure.core.credential.AzureNamedKeyCredential;
AzureNamedKeyCredential credential = new AzureNamedKeyCredential(
"<account-name>",
"<account-key>");
TableServiceClient serviceClient = new TableServiceClientBuilder()
.endpoint("<your-table-account-url>")
.credential(credential)
.buildClient();
```
### With SAS Token
```java
TableServiceClient serviceClient = new TableServiceClientBuilder()
.endpoint("<your-table-account-url>")
.sasToken("<sas-token>")
.buildClient();
```
### With DefaultAzureCredential (Storage only)
```java
import com.azure.identity.DefaultAzureCredentialBuilder;
TableServiceClient serviceClient = new TableServiceClientBuilder()
.endpoint("<your-table-account-url>")
.credential(new DefaultAzureCredentialBuilder().build())
.buildClient();
```
## Key Concepts
- **TableServiceClient**: Manage tables (create, list, delete)
- **TableClient**: Manage entities within a table (CRUD)
- **Partition Key**: Groups entities for efficient queries
- **Row Key**: Unique identifier within a partition
- **Entity**: A row with up to 252 properties (1MB Storage, 2MB Cosmos)
## Core Patterns
### Create Table
```java
// Create table (throws if exists)
TableClient tableClient = serviceClient.createTable("mytable");
// Create if not exists (no exception)
TableClient tableClient = serviceClient.createTableIfNotExists("mytable");
```
### Get Table Client
```java
// From service client
TableClient tableClient = serviceClient.getTableClient("mytable");
// Direct construction
TableClient tableClient = new TableClientBuilder()
.connectionString("<connection-string>")
.tableName("mytable")
.buildClient();
```
### Create Entity
```java
import com.azure.data.tables.models.TableEntity;
TableEntity entity = new TableEntity("partitionKey", "rowKey")
.addProperty("Name", "Product A")
.addProperty("Price", 29.99)
.addProperty("Quantity", 100)
.addProperty("IsAvailable", true);
tableClient.createEntity(entity);
```
### Get Entity
```java
TableEntity entity = tableClient.getEntity("partitionKey", "rowKey");
String name = (String) entity.getProperty("Name");
Double price = (Double) entity.getProperty("Price");
System.out.printf("Product: %s, Price: %.2f%n", name, price);
```
### Update Entity
```java
import com.azure.data.tables.models.TableEntityUpdateMode;
// Merge (update only specified properties)
TableEntity updateEntity = new TableEntity("partitionKey", "rowKey")
.addProperty("Price", 24.99);
tableClient.updateEntity(updateEntity, TableEntityUpdateMode.MERGE);
// Replace (replace entire entity)
TableEntity replaceEntity = new TableEntity("partitionKey", "rowKey")
.addProperty("Name", "Product A Updated")
.addProperty("Price", 24.99)
.addProperty("Quantity", 150);
tableClient.updateEntity(replaceEntity, TableEntityUpdateMode.REPLACE);
```
### Upsert Entity
```java
// Insert or update (merge mode)
tableClient.upsertEntity(entity, TableEntityUpdateMode.MERGE);
// Insert or replace
tableClient.upsertEntity(entity, TableEntityUpdateMode.REPLACE);
```
### Delete Entity
```java
tableClient.deleteEntity("partitionKey", "rowKey");
```
### List Entities
```java
import com.azure.data.tables.models.ListEntitiesOptions;
// List all entities
for (TableEntity entity : tableClient.listEntities()) {
System.out.printf("%s - %s%n",
entity.getPartitionKey(),
entity.getRowKey());
}
// With filtering and selection
ListEntitiesOptions options = new ListEntitiesOptions()
.setFilter("PartitionKey eq 'sales'")
.setSelect("Name", "Price");
for (TableEntity entity : tableClient.listEntities(options, null, null)) {
System.out.printf("%s: %.2f%n",
entity.getProperty("Name"),
entity.getProperty("Price"));
}
```
### Query with OData Filter
```java
// Filter by partition key
ListEntitiesOptions options = new ListEntitiesOptions()
.setFilter("PartitionKey eq 'electronics'");
// Filter with multiple conditions
options.setFilter("PartitionKey eq 'electronics' and Price gt 100");
// Filter with comparison operators
options.setFilter("Quantity ge 10 and Quantity le 100");
// Top N results
options.setTop(10);
for (TableEntity entity : tableClient.listEntities(options, null, null)) {
System.out.println(entity.getRowKey());
}
```
### Batch Operations (Transactions)
```java
import com.azure.data.tables.models.TableTransactionAction;
import com.azure.data.tables.models.TableTransactionActionType;
import java.util.Arrays;
// All entities must have same partition key
List<TableTransactionAction> actions = Arrays.asList(
new TableTransactionAction(
TableTransactionActionType.CREATE,
new TableEntity("batch", "row1").addProperty("Name", "Item 1")),
new TableTransactionAction(
TableTransactionActionType.CREATE,
new TableEntity("batch", "row2").addProperty("Name", "Item 2")),
new TableTransactionAction(
TableTransactionActionType.UPSERT_MERGE,
new TableEntity("batch", "row3").addProperty("Name", "Item 3"))
);
tableClient.submitTransaction(actions);
```
### List Tables
```java
import com.azure.data.tables.models.TableItem;
import com.azure.data.tables.models.ListTablesOptions;
// List all tables
for (TableItem table : serviceClient.listTables()) {
System.out.println(table.getName());
}
// Filter tables
ListTablesOptions options = new ListTablesOptions()
.setFilter("TableName eq 'mytable'");
for (TableItem table : serviceClient.listTables(options, null, null)) {
System.out.println(table.getName());
}
```
### Delete Table
```java
serviceClient.deleteTable("mytable");
```
## Typed Entities
```java
public class Product implements TableEntity {
private String partitionKey;
private String rowKey;
private OffsetDateTime timestamp;
private String eTag;
private String name;
private double price;
// Getters and setters for all fields
@Override
public String getPartitionKey() { return partitionKey; }
@Override
public void setPartitionKey(String partitionKey) { this.partitionKey = partitionKey; }
@Override
public String getRowKey() { return rowKey; }
@Override
public void setRowKey(String rowKey) { this.rowKey = rowKey; }
// ... other getters/setters
public String getName() { return name; }
public void setName(String name) { this.name = name; }
public double getPrice() { return price; }
public void setPrice(double price) { this.price = price; }
}
// Usage
Product product = new Product();
product.setPartitionKey("electronics");
product.setRowKey("laptop-001");
product.setName("Laptop");
product.setPrice(999.99);
tableClient.createEntity(product);
```
## Error Handling
```java
import com.azure.data.tables.models.TableServiceException;
try {
tableClient.createEntity(entity);
} catch (TableServiceException e) {
System.out.println("Status: " + e.getResponse().getStatusCode());
System.out.println("Error: " + e.getMessage());
// 409 = Conflict (entity exists)
// 404 = Not Found
}
```
## Environment Variables
```bash
# Storage Account
AZURE_TABLES_CONNECTION_STRING=DefaultEndpointsProtocol=https;AccountName=...
AZURE_TABLES_ENDPOINT=https://<account>.table.core.windows.net
# Cosmos DB Table API
COSMOS_TABLE_ENDPOINT=https://<account>.table.cosmosdb.azure.com
```
## Best Practices
1. **Partition Key Design**: Choose keys that distribute load evenly
2. **Batch Operations**: Use transactions for atomic multi-entity updates
3. **Query Optimization**: Always filter by PartitionKey when possible
4. **Select Projection**: Only select needed properties for performance
5. **Entity Size**: Keep entities under 1MB (Storage) or 2MB (Cosmos)
## Trigger Phrases
- "Azure Tables Java"
- "table storage SDK"
- "Cosmos DB Table API"
- "NoSQL key-value storage"
- "partition key row key"
- "table entity CRUD"
## When to Use
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