Claude-skill-registry dbt-migration-ms-sql-server
SQL Server / Azure Synapse to dbt Model Conversion
git clone https://github.com/majiayu000/claude-skill-registry
T=$(mktemp -d) && git clone --depth=1 https://github.com/majiayu000/claude-skill-registry "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/data/dbt-migration-ms-sql-server" ~/.claude/skills/majiayu000-claude-skill-registry-dbt-migration-ms-sql-server && rm -rf "$T"
skills/data/dbt-migration-ms-sql-server/SKILL.mdSQL Server / Azure Synapse to dbt Model Conversion
Purpose
Transform SQL Server/Azure Synapse T-SQL DDL (views, tables, stored procedures) into production-quality dbt models compatible with Snowflake, maintaining the same business logic and data transformation steps while following dbt best practices.
When to Use This Skill
Activate this skill when users ask about:
- Converting SQL Server views or tables to dbt models
- Migrating T-SQL stored procedures to dbt
- Translating T-SQL syntax to Snowflake
- Generating schema.yml files with tests and documentation
- Handling T-SQL-specific syntax (IDENTITY, TOP, #temp tables, TRY...CATCH)
Task Description
You are a database engineer working for a hospital system. You need to convert SQL Server / Azure Synapse DDL to equivalent dbt code compatible with Snowflake, maintaining the same business logic and data transformation steps while following dbt best practices.
Input Requirements
I will provide you the T-SQL DDL to convert.
Audience
The code will be executed by data engineers who are learning Snowflake and dbt.
Output Requirements
Generate the following:
- One or more dbt models with complete SQL for every column
- A corresponding schema.yml file with appropriate tests and documentation
- A config block with materialization strategy
- Explanation of key changes and architectural decisions
- Inline comments highlighting any syntax that was converted
Conversion Guidelines
General Principles
- Replace procedural logic with declarative SQL where possible
- Break down complex procedures into multiple modular dbt models
- Implement appropriate incremental processing strategies
- Maintain data quality checks through dbt tests
- Use Snowflake SQL functions rather than macros whenever possible
Sample Response Format
-- dbt model: models/[domain]/[target_schema_name]/model_name.sql {{ config(materialized='view') }} /* Original Object: [database].[schema].[object_name] Source Platform: SQL Server / Azure Synapse Purpose: [brief description] Conversion Notes: [key changes] Description: [SQL logic description] */ WITH source_data AS ( SELECT customer_id::INTEGER AS customer_id, -- NVARCHAR converted to VARCHAR (Unicode handled natively) customer_name::VARCHAR(100) AS customer_name, -- MONEY converted to NUMBER(18,2) account_balance::NUMBER(18,2) AS account_balance, -- DATETIME converted to TIMESTAMP_NTZ created_date::TIMESTAMP_NTZ AS created_date FROM {{ ref('upstream_model') }} ), transformed_data AS ( SELECT customer_id, UPPER(customer_name)::VARCHAR(100) AS customer_name_upper, account_balance, created_date, CURRENT_TIMESTAMP()::TIMESTAMP_NTZ AS loaded_at FROM source_data ) SELECT customer_id, customer_name_upper, account_balance, created_date, loaded_at FROM transformed_data
## models/[domain]/[target_schema_name]/_models.yml version: 2 models: - name: model_name description: "Table description; converted from SQL Server / Azure Synapse [Original object name]" columns: - name: customer_id description: "Primary key - unique customer identifier" tests: - unique - not_null - name: customer_name_upper description: "Customer name in uppercase" - name: account_balance description: "Current account balance; Foreign key to OTHER_TABLE" tests: - relationships: to: ref('OTHER_TABLE') field: OTHER_TABLE_KEY - name: created_date description: "Date the customer record was created" - name: loaded_at description: "Timestamp when the record was loaded by dbt"
## dbt_project.yml (excerpt) models: my_project: +materialized: view domain_name: +schema: target_schema_name
Specific Translation Rules
dbt Specific Requirements
- If the source is a view, use a view materialization in dbt
- Include appropriate dbt model configuration (materialization type)
- Add documentation blocks for a schema.yml
- Add descriptions for tables and columns
- Include relevant tests
- Define primary keys and relationships
- Assume that upstream objects are models
- Comprehensively provide all the columns in the output
- Break complex procedures into multiple models if needed
- Implement appropriate incremental strategies for large tables
- Use Snowflake SQL functions rather than macros whenever possible
- Always cast columns with explicit precision/scale using
syntax (e.g.,::TYPE
,column_name::VARCHAR(100)
) to ensure output matches expected data typesamount::NUMBER(18,2) - Always provide explicit column aliases for clarity and documentation
Performance Optimization
- Suggest clustering keys if needed
- Recommend materialization strategy (view vs table)
- Identify potential performance improvements
SQL Server/T-SQL to Snowflake Syntax Conversion
- Replace TOP n with LIMIT n
- Convert IDENTITY columns to Snowflake IDENTITY or sequences
- Replace #temp tables with session-scoped temporary tables
- Convert TRY...CATCH to Snowflake exception handling
- Handle ANSI_NULLS and QUOTED_IDENTIFIER settings
- Replace sys.* system tables with Snowflake equivalents
- Convert MERGE syntax differences
- Replace @@ROWCOUNT with ROW_COUNT()
- Convert NOLOCK hints (remove them)
- Add inline SQL comments highlighting any syntax that was converted
Key Data Type Mappings
| T-SQL | Snowflake | Notes |
|---|---|---|
| INT/BIGINT/SMALLINT/TINYINT | Same | All alias to NUMBER(38,0) |
| BIT | BOOLEAN | |
| DECIMAL/NUMERIC | DECIMAL/NUMERIC | |
| FLOAT/REAL | FLOAT/REAL | |
| MONEY/SMALLMONEY | NUMBER(38,4) | |
| CHAR/VARCHAR/TEXT | Same | VARCHAR(MAX) → VARCHAR |
| NCHAR/NVARCHAR/NTEXT | VARCHAR | Unicode handled natively |
| DATE | DATE | |
| TIME | TIME | |
| DATETIME/DATETIME2 | TIMESTAMP_NTZ | |
| DATETIMEOFFSET | TIMESTAMP_TZ | |
| BINARY/VARBINARY/IMAGE | BINARY/VARBINARY | Max 8MB |
| UNIQUEIDENTIFIER | VARCHAR | |
| XML | VARIANT | |
| SQL_VARIANT | VARIANT |
Key Syntax Conversions
-- TOP → LIMIT SELECT TOP 10 * FROM table → SELECT * FROM table LIMIT 10 -- IDENTITY → IDENTITY or AUTOINCREMENT id INT IDENTITY(1,1) → id INT AUTOINCREMENT START 1 INCREMENT 1 -- #temp tables → TEMPORARY tables CREATE TABLE #temp → CREATE TEMPORARY TABLE temp -- TRY...CATCH → Exception handling BEGIN TRY ... END TRY BEGIN CATCH ... END CATCH → BEGIN ... EXCEPTION WHEN OTHER THEN ... END -- ISNULL → COALESCE or IFNULL ISNULL(col, 0) → COALESCE(col, 0) -- GETDATE()/GETUTCDATE() → CURRENT_TIMESTAMP/SYSDATE GETDATE() → CURRENT_TIMESTAMP() -- DATEADD/DATEDIFF → Same (Snowflake supports) DATEADD(day, 1, col) → DATEADD(day, 1, col) -- @@ROWCOUNT → ROW_COUNT() @@ROWCOUNT → ROW_COUNT() -- NOLOCK hints → Remove SELECT * FROM table WITH (NOLOCK) → SELECT * FROM table
Common Function Mappings
| T-SQL | Snowflake | Notes |
|---|---|---|
| or | |
| | Same |
| | Same |
| | |
| | |
| | |
| | Same |
| | Same |
| | |
| or | |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| | |
| Use sequences or AUTOINCREMENT |
Dependencies
- List any upstream dependencies
- Suggest model organization in dbt project
Validation Checklist
- [] Every DDL statement has been accounted for in the dbt models
- [] SQL in models is compatible with Snowflake
- [] T-SQL-specific syntax converted (IDENTITY, TOP, #temp tables, TRY...CATCH)
- [] All business logic preserved
- [] All columns included in output
- [] Data types correctly mapped
- [] Functions translated to Snowflake equivalents
- [] Materialization strategy selected
- [] Tests added
- [] SQL logic description complete
- [] Table descriptions added
- [] Column descriptions added
- [] Dependencies correctly mapped
- [] Incremental logic (if applicable) verified
- [] Inline comments added for converted syntax
Related Skills
- $dbt-migration - For the complete migration workflow (discovery, planning, placeholder models, testing, deployment)
- $dbt-modeling - For CTE patterns and SQL structure guidance
- $dbt-testing - For implementing comprehensive dbt tests
- $dbt-architecture - For project organization and folder structure
- $dbt-materializations - For choosing materialization strategies (view, table, incremental, snapshots)
- $dbt-performance - For clustering keys, warehouse sizing, and query optimization
- $dbt-commands - For running dbt commands and model selection syntax
- $dbt-core - For dbt installation, configuration, and package management
- $snowflake-cli - For executing SQL and managing Snowflake objects
Supported Source Database
| Database | Key Considerations |
|---|---|
| SQL Server / Azure Synapse | T-SQL procedures, IDENTITY, TOP, #temp tables, TRY...CATCH, sys.* tables, ANSI_NULLS/QUOTED_IDENTIFIER |
Translation References
Detailed syntax translation guides are available in the
translation-references/ folder.
Copyright Notice: The translation reference documentation in this repository is derived from Snowflake SnowConvert Documentation and is © Copyright Snowflake Inc. All rights reserved. Used for reference purposes only.
Reference Index
- ETL BI Repointing Power BI Transact Repointing
- Overview (README)
- SSIS Readme
- Subqueries
- Transact Continue Handler
- Transact Create Function
- Transact Create Procedure Snow Script
- Transact Create Procedure
- Transact Exit Handler
- Alter Statement
- Ansi Nulls
- Built In Functions
- Built In Procedures
- Create Function
- Create Index
- Create Materialized View
- Create Procedure Snow Script
- Create Table
- Create View
- Data Types
- Dmls
- General Statements
- Quoted Identifier
- Select
- System Tables