skills/codex/azure-data-tables-py/SKILL.md
<!-- AUTO-GENERATED by export-skills.py — DO NOT EDIT --> --- name: azure-data-tables-py description: "Azure Tables SDK for Python" --- # Azure Tables SDK for Python NoSQL key-value store for structured data (Azure Storage Tables or Cosmos DB Table API). ## Installation ```bash pip install azure-data-tables azure-identity ``` ## Environment Variables ```bash # Azure Storage Tables AZURE_STORAGE_ACCOUNT_URL=https://<account>.table.core.windows.net # Cosmos DB Table API COSMOS_TABLE_ENDPOIN
npx skillsauth add frank-luongt/faos-skills-marketplace skills/codex/azure-data-tables-pyInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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NoSQL key-value store for structured data (Azure Storage Tables or Cosmos DB Table API).
pip install azure-data-tables azure-identity
# Azure Storage Tables
AZURE_STORAGE_ACCOUNT_URL=https://<account>.table.core.windows.net
# Cosmos DB Table API
COSMOS_TABLE_ENDPOINT=https://<account>.table.cosmos.azure.com
from azure.identity import DefaultAzureCredential
from azure.data.tables import TableServiceClient, TableClient
credential = DefaultAzureCredential()
endpoint = "https://<account>.table.core.windows.net"
# Service client (manage tables)
service_client = TableServiceClient(endpoint=endpoint, credential=credential)
# Table client (work with entities)
table_client = TableClient(endpoint=endpoint, table_name="mytable", credential=credential)
| Client | Purpose |
|--------|---------|
| TableServiceClient | Create/delete tables, list tables |
| TableClient | Entity CRUD, queries |
# Create table
service_client.create_table("mytable")
# Create if not exists
service_client.create_table_if_not_exists("mytable")
# Delete table
service_client.delete_table("mytable")
# List tables
for table in service_client.list_tables():
print(table.name)
# Get table client
table_client = service_client.get_table_client("mytable")
Important: Every entity requires PartitionKey and RowKey (together form unique ID).
entity = {
"PartitionKey": "sales",
"RowKey": "order-001",
"product": "Widget",
"quantity": 5,
"price": 9.99,
"shipped": False
}
# Create (fails if exists)
table_client.create_entity(entity=entity)
# Upsert (create or replace)
table_client.upsert_entity(entity=entity)
# Get by key (fastest)
entity = table_client.get_entity(
partition_key="sales",
row_key="order-001"
)
print(f"Product: {entity['product']}")
# Replace entire entity
entity["quantity"] = 10
table_client.update_entity(entity=entity, mode="replace")
# Merge (update specific fields only)
update = {
"PartitionKey": "sales",
"RowKey": "order-001",
"shipped": True
}
table_client.update_entity(entity=update, mode="merge")
table_client.delete_entity(
partition_key="sales",
row_key="order-001"
)
# Query by partition (efficient)
entities = table_client.query_entities(
query_filter="PartitionKey eq 'sales'"
)
for entity in entities:
print(entity)
# Filter by properties
entities = table_client.query_entities(
query_filter="PartitionKey eq 'sales' and quantity gt 3"
)
# With parameters (safer)
entities = table_client.query_entities(
query_filter="PartitionKey eq @pk and price lt @max_price",
parameters={"pk": "sales", "max_price": 50.0}
)
entities = table_client.query_entities(
query_filter="PartitionKey eq 'sales'",
select=["RowKey", "product", "price"]
)
# List all (cross-partition - use sparingly)
for entity in table_client.list_entities():
print(entity)
from azure.data.tables import TableTransactionError
# Batch operations (same partition only!)
operations = [
("create", {"PartitionKey": "batch", "RowKey": "1", "data": "first"}),
("create", {"PartitionKey": "batch", "RowKey": "2", "data": "second"}),
("upsert", {"PartitionKey": "batch", "RowKey": "3", "data": "third"}),
]
try:
table_client.submit_transaction(operations)
except TableTransactionError as e:
print(f"Transaction failed: {e}")
from azure.data.tables.aio import TableServiceClient, TableClient
from azure.identity.aio import DefaultAzureCredential
async def table_operations():
credential = DefaultAzureCredential()
async with TableClient(
endpoint="https://<account>.table.core.windows.net",
table_name="mytable",
credential=credential
) as client:
# Create
await client.create_entity(entity={
"PartitionKey": "async",
"RowKey": "1",
"data": "test"
})
# Query
async for entity in client.query_entities("PartitionKey eq 'async'"):
print(entity)
import asyncio
asyncio.run(table_operations())
| Python Type | Table Storage Type |
|-------------|-------------------|
| str | String |
| int | Int64 |
| float | Double |
| bool | Boolean |
| datetime | DateTime |
| bytes | Binary |
| UUID | Guid |
upsert_entity for idempotent writesdevelopment
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