snowflake-development
$
npx mdskill add alirezarezvani/claude-skills/snowflake-developmentSnowflake SQL, data pipelines, Cortex AI, and Snowpark Python development. Covers the colon-prefix rule, semi-structured data, MERGE upserts, Dynamic Tables, Streams+Tasks, Cortex AI functions, agent specs, performance tuning, and security hardening.
SKILL.md
.github/skills/snowflake-developmentView on GitHub ↗
---
name: "snowflake-development"
description: "Use when writing Snowflake SQL, building data pipelines with Dynamic Tables or Streams/Tasks, using Cortex AI functions, creating Cortex Agents, writing Snowpark Python, configuring dbt for Snowflake, or troubleshooting Snowflake errors."
---
# Snowflake Development
Snowflake SQL, data pipelines, Cortex AI, and Snowpark Python development. Covers the colon-prefix rule, semi-structured data, MERGE upserts, Dynamic Tables, Streams+Tasks, Cortex AI functions, agent specs, performance tuning, and security hardening.
> Originally contributed by [James Cha-Earley](https://github.com/jamescha-earley) — enhanced and integrated by the claude-skills team.
## Quick Start
```bash
# Generate a MERGE upsert template
python scripts/snowflake_query_helper.py merge --target customers --source staging_customers --key customer_id --columns name,email,updated_at
# Generate a Dynamic Table template
python scripts/snowflake_query_helper.py dynamic-table --name cleaned_events --warehouse transform_wh --lag "5 minutes"
# Generate RBAC grant statements
python scripts/snowflake_query_helper.py grant --role analyst_role --database analytics --schemas public,staging --privileges SELECT,USAGE
```
---
## SQL Best Practices
### Naming and Style
- Use `snake_case` for all identifiers. Avoid double-quoted identifiers -- they force case-sensitive names that require 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, so explicit lists reduce I/O.
### 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 treats them as column identifiers and raises "invalid identifier" errors.
```sql
-- WRONG: missing colon prefix
SELECT name INTO result FROM users WHERE id = p_id;
-- CORRECT: colon prefix on both variable and parameter
SELECT name INTO :result FROM users WHERE id = :p_id;
```
This applies to DECLARE variables, LET variables, and procedure parameters when used inside SELECT, INSERT, UPDATE, DELETE, or MERGE.
### Semi-Structured Data
- VARIANT, OBJECT, ARRAY for JSON/Avro/Parquet/ORC.
- Access nested fields: `src:customer.name::STRING`. Always cast with `::TYPE`.
- VARIANT null vs SQL NULL: JSON `null` is stored as the string `"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
```sql
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());
```
> See `references/snowflake_sql_and_pipelines.md` for deeper SQL patterns and anti-patterns.
---
## 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, complex branching. |
| Snowpipe | Continuous file loading from cloud storage (S3, GCS, Azure). |
### Dynamic Tables
```sql
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 the top of the DAG, looser downstream.
- Incremental DTs cannot depend on Full-refresh DTs.
- `SELECT *` breaks on upstream schema changes -- use explicit column lists.
- Views cannot sit between two Dynamic Tables in the DAG.
### Streams and Tasks
```sql
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$STREAM_HAS_DATA('raw_stream')
AS INSERT INTO cleaned_events SELECT ... FROM raw_stream;
-- Tasks start SUSPENDED. You MUST resume them.
ALTER TASK process_events RESUME;
```
> See `references/snowflake_sql_and_pipelines.md` for DT debugging queries and Snowpipe patterns.
---
## Cortex AI
### Function Reference
| Function | Purpose |
|----------|---------|
| `AI_COMPLETE` | LLM completion (text, images, documents) |
| `AI_CLASSIFY` | Classify text into categories (up to 500 labels) |
| `AI_FILTER` | Boolean filter on text or images |
| `AI_EXTRACT` | Structured extraction from text/images/documents |
| `AI_SENTIMENT` | Sentiment score (-1 to 1) |
| `AI_PARSE_DOCUMENT` | OCR or layout extraction from documents |
| `AI_REDACT` | PII removal from text |
**Deprecated names (do NOT use):** `COMPLETE`, `CLASSIFY_TEXT`, `EXTRACT_ANSWER`, `PARSE_DOCUMENT`, `SUMMARIZE`, `TRANSLATE`, `SENTIMENT`, `EMBED_TEXT_768`.
### TO_FILE -- Common Pitfall
Stage path and filename are **separate** arguments:
```sql
-- WRONG: single combined argument
TO_FILE('@stage/file.pdf')
-- CORRECT: two arguments
TO_FILE('@db.schema.mystage', 'invoice.pdf')
```
### Cortex Agents
Agent specs use a JSON structure with top-level keys: `models`, `instructions`, `tools`, `tool_resources`.
- Use `$spec$` delimiter (not `$$`).
- `models` must be an object, not an array.
- `tool_resources` is a separate top-level key, not nested inside `tools`.
- Tool descriptions are the single biggest factor in agent quality.
> See `references/cortex_ai_and_agents.md` for full agent spec examples and Cortex Search patterns.
---
## Snowpark Python
```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. Use environment variables or key pair auth.
- DataFrames are lazy -- executed on `collect()` / `show()`.
- Do NOT call `collect()` on large DataFrames. Process server-side with DataFrame operations.
- Use **vectorized UDFs** (10-100x faster) for batch and ML workloads.
## dbt on Snowflake
```sql
-- 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 or near-real-time marts.
## Performance
- **Cluster keys**: Only for multi-TB tables. Apply on WHERE / JOIN / GROUP BY columns.
- **Search Optimization**: `ALTER TABLE t ADD SEARCH OPTIMIZATION ON EQUALITY(col);`
- **Warehouse sizing**: Start X-Small, scale up. Set `AUTO_SUSPEND = 60`, `AUTO_RESUME = TRUE`.
- **Separate warehouses** per workload (load, transform, query).
## 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.
---
## Proactive Triggers
Surface these issues without being asked when you notice them in context:
- **Missing colon prefix** in SQL stored procedures -- flag immediately, this causes "invalid identifier" at runtime.
- **`SELECT *` in Dynamic Tables** -- flag as a schema-change time bomb.
- **Deprecated Cortex function names** (`CLASSIFY_TEXT`, `SUMMARIZE`, etc.) -- suggest the current `AI_*` equivalents.
- **Task not resumed** after creation -- remind that tasks start SUSPENDED.
- **Hardcoded credentials** in Snowpark code -- flag as a security risk.
---
## Common Errors
| Error | Cause | Fix |
|-------|-------|-----|
| "Object does not exist" | Wrong database/schema context or missing grants | Fully qualify names (`db.schema.table`), check grants |
| "Invalid identifier" in procedure | Missing colon prefix on variable | Use `:variable_name` inside SQL statements |
| "Numeric value not recognized" | VARIANT field not cast | Cast explicitly: `src:field::NUMBER(10,2)` |
| Task not running | Forgot to resume after creation | `ALTER TASK task_name RESUME;` |
| DT refresh failing | Schema change upstream or tracking disabled | Use explicit columns, verify change tracking |
| TO_FILE error | Combined path as single argument | Split into two args: `TO_FILE('@stage', 'file.pdf')` |
---
## Practical Workflows
### Workflow 1: Build a Reporting Pipeline (30 min)
1. **Stage raw data**: Create external stage pointing to S3/GCS/Azure, set up Snowpipe for auto-ingest
2. **Clean with Dynamic Table**: Create DT with `TARGET_LAG = '5 minutes'` that filters nulls, casts types, deduplicates
3. **Aggregate with downstream DT**: Second DT that joins cleaned data with dimension tables, computes metrics
4. **Expose via Secure View**: Create `SECURE VIEW` for the BI tool / API layer
5. **Grant access**: Use `snowflake_query_helper.py grant` to generate RBAC statements
### Workflow 2: Add AI Classification to Existing Data
1. **Identify the column**: Find the text column to classify (e.g., support tickets, reviews)
2. **Test with AI_CLASSIFY**: `SELECT AI_CLASSIFY(text_col, ['bug', 'feature', 'question']) FROM table LIMIT 10;`
3. **Create enrichment DT**: Dynamic Table that runs `AI_CLASSIFY` on new rows automatically
4. **Monitor costs**: Cortex AI is billed per token — sample before running on full tables
### Workflow 3: Debug a Failing Pipeline
1. **Check task history**: `SELECT * FROM TABLE(INFORMATION_SCHEMA.TASK_HISTORY()) WHERE STATE = 'FAILED' ORDER BY SCHEDULED_TIME DESC;`
2. **Check DT refresh**: `SELECT * FROM TABLE(INFORMATION_SCHEMA.DYNAMIC_TABLE_REFRESH_HISTORY('my_dt')) ORDER BY REFRESH_END_TIME DESC;`
3. **Check stream staleness**: `SHOW STREAMS; -- check stale_after column`
4. **Consult troubleshooting reference**: See `references/troubleshooting.md` for error-specific fixes
---
## Anti-Patterns
| Anti-Pattern | Why It Fails | Better Approach |
|---|---|---|
| `SELECT *` in Dynamic Tables | Schema changes upstream break the DT silently | Use explicit column lists |
| Missing colon prefix in procedures | "Invalid identifier" runtime error | Always use `:variable_name` in SQL blocks |
| Single warehouse for all workloads | Contention between load, transform, and query | Separate warehouses per workload type |
| Hardcoded credentials in Snowpark | Security risk, breaks in CI/CD | Use `os.environ[]` or key pair auth |
| `collect()` on large DataFrames | Pulls entire result set to client memory | Process server-side with DataFrame operations |
| Nested subqueries instead of CTEs | Unreadable, hard to debug, Snowflake optimizes CTEs better | Use `WITH` clauses |
| Using deprecated Cortex functions | `CLASSIFY_TEXT`, `SUMMARIZE` etc. will be removed | Use `AI_CLASSIFY`, `AI_COMPLETE` etc. |
| Tasks without `WHEN SYSTEM$STREAM_HAS_DATA` | Task runs on schedule even with no new data, wasting credits | Add the WHEN clause for stream-driven tasks |
| Double-quoted identifiers | Forces case-sensitive names across all queries | Use `snake_case` unquoted identifiers |
---
## Cross-References
| Skill | Relationship |
|-------|-------------|
| `engineering/sql-database-assistant` | General SQL patterns — use for non-Snowflake databases |
| `engineering/database-designer` | Schema design — use for data modeling before Snowflake implementation |
| `engineering-team/senior-data-engineer` | Broader data engineering — pipelines, Spark, Airflow, data quality |
| `engineering-team/senior-data-scientist` | Analytics and ML — use alongside Snowpark for feature engineering |
| `engineering-team/senior-devops` | CI/CD for Snowflake deployments (Terraform, GitHub Actions) |
---
## Reference Documentation
| Document | Contents |
|----------|----------|
| `references/snowflake_sql_and_pipelines.md` | SQL patterns, MERGE templates, Dynamic Table debugging, Snowpipe, anti-patterns |
| `references/cortex_ai_and_agents.md` | Cortex AI functions, agent spec structure, Cortex Search, Snowpark |
| `references/troubleshooting.md` | Error reference, debugging queries, common fixes |
More from alirezarezvani/claude-skills
- a11y-auditAccessibility audit skill for scanning, fixing, and verifying WCAG 2.2 Level A and AA compliance across React, Next.js, Vue, Angular, Svelte, and plain HTML codebases. Use when auditing accessibility, fixing a11y violations, checking color contrast, generating compliance reports, or integrating accessibility checks into CI/CD pipelines.
- ab-test-setupWhen the user wants to plan, design, or implement an A/B test or experiment. Also use when the user mentions "A/B test," "split test," "experiment," "test this change," "variant copy," "multivariate test," "hypothesis," "conversion experiment," "statistical significance," or "test this." For tracking implementation, see analytics-tracking.
- ad-creativeWhen the user needs to generate, iterate, or scale ad creative for paid advertising. Use when they say 'write ad copy,' 'generate headlines,' 'create ad variations,' 'bulk creative,' 'iterate on ads,' 'ad copy validation,' 'RSA headlines,' 'Meta ad copy,' 'LinkedIn ad,' or 'creative testing.' This is pure creative production — distinct from paid-ads (campaign strategy). Use ad-creative when you need the copy, not the campaign plan.
- adversarial-reviewerAdversarial code review that breaks the self-review monoculture. Use when you want a genuinely critical review of recent changes, before merging a PR, or when you suspect Claude is being too agreeable about code quality. Forces perspective shifts through hostile reviewer personas that catch blind spots the author's mental model shares with the reviewer.
- aeoAnswer Engine Optimization (AEO) skill — optimize content to be cited by AI language models (ChatGPT, Perplexity, Claude, Gemini, Mistral) as authoritative sources. Distinct from SEO — AEO optimizes for citation in LLM-generated responses, not search rankings. Use when planning content for AI-first search audiences, auditing existing content for E-E-A-T signals, tracking which pages get cited by which LLMs, or building a citation-friendly content strategy. Triggers — 'AEO audit', 'optimize for ChatGPT', 'get cited by Perplexity', 'LLM citation strategy', 'answer engine optimization', 'content for AI search', 'E-E-A-T audit'. Output is a markdown audit report (default) or JSON for pipeline integration. Stdlib-only Python tools.
- agent-designerUse when the user asks to design a multi-agent system, pick an orchestration pattern (supervisor/swarm/pipeline), generate tool schemas for agents, or evaluate agent execution logs for cost, latency, and failure bottlenecks. Examples: 'design an agent architecture for research automation', 'generate Anthropic tool schemas from these tool descriptions', 'analyze these agent run logs for bottlenecks'. NOT for Claude Code workflow files (use workflow-builder) or single-agent prompt design (use agent-workflow-designer).
- agent-protocolInter-agent communication protocol for C-suite agent teams. Defines invocation syntax, loop prevention, isolation rules, and response formats. Use when C-suite agents need to query each other, coordinate cross-functional analysis, or run board meetings with multiple agent roles.
- agent-workflow-designerDesign production-grade multi-agent workflows with clear pattern choice (sequential, parallel, hierarchical), handoff contracts, failure handling, and cost/context controls. Use when architecting a multi-step agent pipeline, choosing between single-agent vs multi-agent approaches, or refactoring an LLM workflow that suffers from context bloat or unreliable handoffs.
- agenthubMulti-agent collaboration plugin that spawns N parallel subagents competing on the same task via git worktree isolation. Agents work independently, results are evaluated by metric or LLM judge, and the best branch is merged. Use when: user wants multiple approaches tried in parallel — code optimization, content variation, research exploration, or any task that benefits from parallel competition. Requires: a git repo.
- agile-product-ownerAgile product ownership for backlog management and sprint execution. Covers user story writing, acceptance criteria, sprint planning, and velocity tracking. Use when writing user stories, creating acceptance criteria, planning sprints, estimating story points, breaking down epics, or prioritizing the backlog.