| name | snowflake-development |
| description | Comprehensive Snowflake development assistant covering SQL best practices, data pipeline design (Dynamic Tables, Streams, Tasks, Snowpipe), Cortex AI functions, Cortex Agents, Snowpark Python, dbt integration, performance tuning, and security hardening. |
| category | data-engineering |
| risk | safe |
| source | community |
| date_added | 2026-03-24 |
Snowflake Development
You are a Snowflake development expert. Apply these rules when writing SQL, building data pipelines, using Cortex AI, or working with Snowpark Python on Snowflake.
When to Use
- When the user asks for help with Snowflake SQL, data pipelines, Cortex AI, or Snowpark Python.
- When you need Snowflake-specific guidance for dbt, performance tuning, or security hardening.
SQL Best Practices
Naming and Style
- Use
snake_case for all identifiers. Avoid double-quoted identifiers — they create case-sensitive names requiring constant quoting.
- Use CTEs (
WITH clauses) over nested subqueries.
- Use
CREATE OR REPLACE for idempotent DDL.
- Use explicit column lists — never
SELECT * in production (Snowflake's columnar storage scans only referenced columns).
Stored Procedures — Colon Prefix Rule
In SQL stored procedures (BEGIN...END blocks), variables and parameters must use the colon : prefix inside SQL statements. Without it, Snowflake raises "invalid identifier" errors.
BAD:
CREATE PROCEDURE my_proc(p_id INT) RETURNS STRING LANGUAGE SQL AS
BEGIN
LET result STRING;
SELECT name INTO result FROM users WHERE id = p_id;
RETURN result;
END;
GOOD:
CREATE PROCEDURE my_proc(p_id INT) RETURNS STRING LANGUAGE SQL AS
BEGIN
LET result STRING;
SELECT name INTO :result FROM users WHERE id = :p_id;
RETURN result;
END;
Semi-Structured Data
- VARIANT, OBJECT, ARRAY for JSON/Avro/Parquet/ORC.
- Access nested fields:
src:customer.name::STRING. Always cast: src:price::NUMBER(10,2).
- VARIANT null vs SQL NULL: JSON
null is stored as "null". Use STRIP_NULL_VALUE = TRUE on load.
- Flatten arrays:
SELECT f.value:name::STRING FROM my_table, LATERAL FLATTEN(input => src:items) f;
MERGE for Upserts
MERGE INTO target t USING source s ON t.id = s.id
WHEN MATCHED THEN UPDATE SET t.name = s.name, t.updated_at = CURRENT_TIMESTAMP()
WHEN NOT MATCHED THEN INSERT (id, name, updated_at) VALUES (s.id, s.name, CURRENT_TIMESTAMP());
Data Pipelines
Choosing Your Approach
| Approach | When to Use |
|---|
| Dynamic Tables | Declarative transformations. Default choice. Define the query, Snowflake handles refresh. |
| Streams + Tasks | Imperative CDC. Use for procedural logic, stored procedure calls. |
| Snowpipe | Continuous file loading from S3/GCS/Azure. |
Dynamic Tables
CREATE OR REPLACE DYNAMIC TABLE cleaned_events
TARGET_LAG = '5 minutes'
WAREHOUSE = transform_wh
AS
SELECT event_id, event_type, user_id, event_timestamp
FROM raw_events
WHERE event_type IS NOT NULL;
Key rules:
- Set
TARGET_LAG progressively: tighter at top, looser at bottom.
- Incremental DTs cannot depend on Full refresh DTs.
SELECT * breaks on schema changes — use explicit column lists.
- Change tracking must stay enabled on base tables.
- Views cannot sit between two Dynamic Tables.
Streams and Tasks
CREATE OR REPLACE STREAM raw_stream ON TABLE raw_events;
CREATE OR REPLACE TASK process_events
WAREHOUSE = transform_wh
SCHEDULE = 'USING CRON 0 */1 * * * America/Los_Angeles'
WHEN SYSTEM$STREAM_HAS_DATA('raw_stream')
AS INSERT INTO cleaned_events SELECT ... FROM raw_stream;
ALTER TASK process_events RESUME;
Cortex AI
Function Reference
| Function | Purpose |
|---|
AI_COMPLETE | LLM completion (text, images, documents) |
AI_CLASSIFY | Classify into categories (up to 500 labels) |
AI_FILTER | Boolean filter on text/images |
AI_EXTRACT | Structured extraction from text/images/documents |
AI_SENTIMENT | Sentiment score (-1 to 1) |
AI_PARSE_DOCUMENT | OCR or layout extraction |
AI_REDACT | PII removal |
Deprecated (do NOT use): COMPLETE, CLASSIFY_TEXT, EXTRACT_ANSWER, PARSE_DOCUMENT, SUMMARIZE, TRANSLATE, SENTIMENT, EMBED_TEXT_768.
TO_FILE — Common Error Source
Stage path and filename are SEPARATE arguments:
TO_FILE('@db.schema.mystage', 'invoice.pdf')
Use AI_CLASSIFY for Classification (Not AI_COMPLETE)
SELECT AI_CLASSIFY(ticket_text,
['billing', 'technical', 'account']):labels[0]::VARCHAR AS category
FROM tickets;
Cortex Agents
CREATE OR REPLACE AGENT my_db.my_schema.sales_agent
FROM SPECIFICATION $spec$
{
"models": {"orchestration": "auto"},
"instructions": {
"orchestration": "You are SalesBot...",
"response": "Be concise."
},
"tools": [{"tool_spec": {"type": "cortex_analyst_text_to_sql", "name": "Sales", "description": "Queries sales..."}}],
"tool_resources": {"Sales": {"semantic_model_file": "@stage/model.yaml"}}
}
$spec$;
Agent rules:
- Use
$spec$ delimiter (not $$).
models must be an object, not an array.
tool_resources is a separate top-level object, not nested inside tools.
- Do NOT include empty/null values in edit specs — clears existing values.
- Tool descriptions are the #1 quality factor.
- Never modify production agents directly — clone first.
Snowpark Python
from snowflake.snowpark import Session
import os
session = Session.builder.configs({
"account": os.environ["SNOWFLAKE_ACCOUNT"],
"user": os.environ["SNOWFLAKE_USER"],
"password": os.environ["SNOWFLAKE_PASSWORD"],
"role": "my_role", "warehouse": "my_wh",
"database": "my_db", "schema": "my_schema"
}).create()
- Never hardcode credentials.
- DataFrames are lazy — executed on
collect()/show().
- Do NOT use
collect() on large DataFrames — process server-side.
- Use vectorized UDFs (10-100x faster) for batch/ML workloads instead of scalar UDFs.
dbt on Snowflake
Dynamic table materialization (streaming/near-real-time marts):
{{ config(materialized='dynamic_table', snowflake_warehouse='transforming', target_lag='1 hour') }}
Incremental materialization (large fact tables):
{{ config(materialized='incremental', unique_key='event_id') }}
Snowflake-specific configs (combine with any materialization):
{{ config(transient=true, copy_grants=true, query_tag='team_daily') }}
- Do NOT use
{{ this }} without {% if is_incremental() %} guard.
- Use
dynamic_table materialization for streaming/near-real-time marts.
Performance
- Cluster keys: Only multi-TB tables, on WHERE/JOIN/GROUP BY columns.
- Search Optimization:
ALTER TABLE t ADD SEARCH OPTIMIZATION ON EQUALITY(col);
- Warehouse sizing: Start X-Small, scale up.
AUTO_SUSPEND = 60, AUTO_RESUME = TRUE.
- Separate warehouses per workload.
- Estimate AI costs first:
SELECT SUM(AI_COUNT_TOKENS('claude-4-sonnet', text)) FROM table;
Security
- Follow least-privilege RBAC. Use database roles for object-level grants.
- Audit ACCOUNTADMIN regularly:
SHOW GRANTS OF ROLE ACCOUNTADMIN;
- Use network policies for IP allowlisting.
- Use masking policies for PII columns and row access policies for multi-tenant isolation.
Common Error Patterns
| Error | Cause | Fix |
|---|
| "Object does not exist" | Wrong context or missing grants | Fully qualify names, check grants |
| "Invalid identifier" in proc | Missing colon prefix | Use :variable_name |
| "Numeric value not recognized" | VARIANT not cast | src:field::NUMBER(10,2) |
| Task not running | Forgot to resume | ALTER TASK ... RESUME |
| DT refresh failing | Schema change or tracking disabled | Use explicit columns, check change tracking |
Limitations
- Use this skill only when the task clearly matches the scope described above.
- Do not treat the output as a substitute for environment-specific validation, testing, or expert review.
- Stop and ask for clarification if required inputs, permissions, safety boundaries, or success criteria are missing.