
azure-sql-optimization
Azure SQL Database optimization and platform-specific features. Use this skill when: (1) User asks about Azure SQL Database optimization, (2) User needs DTU/vCore guidance, (3) User wants to use automatic tuning, (4) User asks about Hyperscale or serverless, (5) User needs Azure SQL performance monitoring.
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Azure SQL Database Optimization
Platform-specific optimization for Azure SQL Database.
Quick Reference
Service Tier Comparison
| Tier | Best For | Max Size | Key Features |
|---|---|---|---|
| Basic | Dev/test, light workloads | 2 GB | Low cost |
| Standard | General workloads | 1 TB | S0-S12 DTUs |
| Premium | High I/O, low latency | 4 TB | P1-P15 DTUs |
| General Purpose (vCore) | Most workloads | 16 TB | Serverless option |
| Business Critical | High availability | 4 TB | In-memory, read replicas |
| Hyperscale | Large databases | 100 TB | Auto-scaling storage |
DTU vs vCore
| Aspect | DTU | vCore |
|---|---|---|
| Pricing | Bundled resources | Separate compute/storage |
| Control | Limited | Fine-grained |
| Reserved capacity | No | Yes (up to 72% savings) |
| Serverless | No | Yes (General Purpose) |
| Best for | Simple workloads | Predictable, migrated workloads |
Performance Monitoring
Resource Consumption
-- Last 15 minutes (avg 15-second intervals)
SELECT
end_time,
avg_cpu_percent,
avg_data_io_percent,
avg_log_write_percent,
avg_memory_usage_percent,
max_worker_percent,
max_session_percent
FROM sys.dm_db_resource_stats
ORDER BY end_time DESC;
-- Historical (last 14 days, hourly)
SELECT
start_time,
end_time,
avg_cpu_percent,
avg_data_io_percent,
avg_log_write_percent
FROM sys.resource_stats
WHERE database_name = DB_NAME()
ORDER BY start_time DESC;
Query Performance Insight
-- Top CPU consumers last hour
SELECT TOP 20
qt.query_sql_text,
rs.avg_cpu_time / 1000 AS avg_cpu_ms,
rs.count_executions,
rs.avg_cpu_time * rs.count_executions / 1000 AS total_cpu_ms
FROM sys.query_store_query q
JOIN sys.query_store_query_text qt ON q.query_text_id = qt.query_text_id
JOIN sys.query_store_plan p ON q.query_id = p.query_id
JOIN sys.query_store_runtime_stats rs ON p.plan_id = rs.plan_id
JOIN sys.query_store_runtime_stats_interval rsi ON rs.runtime_stats_interval_id = rsi.runtime_stats_interval_id
WHERE rsi.start_time >= DATEADD(hour, -1, GETUTCDATE())
ORDER BY rs.avg_cpu_time * rs.count_executions DESC;
Automatic Tuning
Enable Automatic Tuning
-- Enable all auto-tuning options
ALTER DATABASE current
SET AUTOMATIC_TUNING (
FORCE_LAST_GOOD_PLAN = ON,
CREATE_INDEX = ON,
DROP_INDEX = ON
);
-- Check current settings
SELECT * FROM sys.database_automatic_tuning_options;
View Tuning Recommendations
-- Current recommendations
SELECT
name,
reason,
score,
state_desc,
is_revertable_action,
is_executable_action,
details
FROM sys.dm_db_tuning_recommendations;
Apply Recommendations
-- Force a specific query plan
EXEC sp_query_store_force_plan @query_id = 12345, @plan_id = 67890;
-- Unforce plan
EXEC sp_query_store_unforce_plan @query_id = 12345, @plan_id = 67890;
Hyperscale Features
Storage Auto-Scaling
- Automatically grows up to 128 TB
- No need to pre-provision storage
- Pay only for storage used
Read Scale-Out
-- Connection string option
ApplicationIntent=ReadOnly
-- In application code
"Server=myserver.database.windows.net;Database=mydb;ApplicationIntent=ReadOnly;..."
Named Replicas
-- Create named replica
ALTER DATABASE MyDatabase
ADD SECONDARY ON SERVER MySecondaryServer
WITH (SERVICE_OBJECTIVE = 'HS_Gen5_2', SECONDARY_TYPE = Named, NAME = N'MyReadReplica');
Serverless Configuration
Configure Auto-Pause
-- Via Azure Portal, CLI, or PowerShell
-- Set auto-pause delay (minutes), min/max vCores
-- Check current usage
SELECT
cpu_percent,
auto_pause_delay_in_minutes_configured
FROM sys.dm_db_resource_stats_serverless;
Serverless Best Practices
- Use for intermittent workloads - Saves cost during idle periods
- Set appropriate min vCores - Prevents cold starts for time-sensitive apps
- Monitor auto-pause - Auto-resume adds latency
- Consider always-on for consistent workloads - Provisioned may be cheaper
Connection Optimization
Connection Pooling
// .NET connection string
"Server=tcp:myserver.database.windows.net,1433;Database=mydb;
Min Pool Size=10;Max Pool Size=100;Connection Timeout=30;"
Retry Logic
// Azure SQL requires retry logic for transient faults
var options = new SqlRetryLogicOption()
{
NumberOfTries = 5,
DeltaTime = TimeSpan.FromSeconds(1),
MaxTimeInterval = TimeSpan.FromSeconds(30)
};
Connection Best Practices
- Use connection pooling - Reduce connection overhead
- Implement retry logic - Handle transient faults (error 40613, 40197)
- Use redirect connection mode - Better performance after initial connection
- Close connections promptly - Don't hold connections unnecessarily
Azure-Specific Limitations
Not Supported
- SQL Agent (use Azure Functions, Logic Apps)
- BULK INSERT from files (use Blob Storage)
- Linked servers (use Elastic Query)
- FILESTREAM
- Cross-database queries in same server (use Elastic Query)
Workarounds
Bulk Insert from Blob Storage
-- Create credential
CREATE DATABASE SCOPED CREDENTIAL BlobCredential
WITH IDENTITY = 'SHARED ACCESS SIGNATURE',
SECRET = 'your_sas_token';
-- Create external data source
CREATE EXTERNAL DATA SOURCE BlobStorage
WITH (
TYPE = BLOB_STORAGE,
LOCATION = 'https://youraccount.blob.core.windows.net/container',
CREDENTIAL = BlobCredential
);
-- Bulk insert
BULK INSERT MyTable
FROM 'data.csv'
WITH (DATA_SOURCE = 'BlobStorage', FORMAT = 'CSV', FIRSTROW = 2);
Elastic Query for Cross-Database
-- On target database
CREATE MASTER KEY ENCRYPTION BY PASSWORD = 'password';
CREATE DATABASE SCOPED CREDENTIAL ElasticCredential
WITH IDENTITY = 'username', SECRET = 'password';
CREATE EXTERNAL DATA SOURCE RemoteDB
WITH (
TYPE = RDBMS,
LOCATION = 'remote-server.database.windows.net',
DATABASE_NAME = 'RemoteDatabase',
CREDENTIAL = ElasticCredential
);
CREATE EXTERNAL TABLE dbo.RemoteTable (...)
WITH (DATA_SOURCE = RemoteDB);
Cost Optimization
Reserved Capacity
- Up to 72% savings vs pay-as-you-go
- 1-year or 3-year terms
- Exchange/refund flexibility
Right-Sizing
-- Check if over-provisioned
SELECT
AVG(avg_cpu_percent) AS avg_cpu,
MAX(avg_cpu_percent) AS max_cpu,
AVG(avg_data_io_percent) AS avg_io,
MAX(avg_data_io_percent) AS max_io
FROM sys.dm_db_resource_stats
WHERE end_time >= DATEADD(day, -7, GETUTCDATE());
-- If avg < 40% consistently, consider downsizing
Hyperscale Cost Considerations
- Compute: Per-second billing
- Storage: Per-hour billing for used space
- Read replicas: Additional compute cost
- Memory not automatically released (monitor and scale appropriately)
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