MR
Mayur Rathi
@github
⭐ 34.1k GitHub stars

Snowflake-Semanticview

Snowflake-Semanticview是一款productivity方向的AI技能,核心价值是Create, alter, and validate Snowflake semantic views using Snowflake CLI (snow),可用于解决开发者在productivity领域的实际问题,帮助用户提升效率、自动化重复任务或优化工作流。

Create, alter, and validate Snowflake semantic views using Snowflake CLI (snow). Use when asked to build or troubleshoot semantic views/semantic layer definitions with CREATE/ALTER SEMANTIC VIEW, to v

Last verified on: 2026-05-30
mkdir -p ./skills/snowflake-semanticview && curl -sfL https://raw.githubusercontent.com/github/awesome-copilot/main/skills/snowflake-semanticview/SKILL.md -o ./skills/snowflake-semanticview/SKILL.md

Run in terminal / PowerShell. Requires curl (Unix) or PowerShell 5+ (Windows).

Skill Content

# Snowflake Semantic Views


One-Time Setup


- Verify Snowflake CLI installation by opening a new terminal and running `snow --help`.

- If Snowflake CLI is missing or the user cannot install it, direct them to https://docs.snowflake.com/en/developer-guide/snowflake-cli/installation/installation.

- Configure a Snowflake connection with `snow connection add` per https://docs.snowflake.com/en/developer-guide/snowflake-cli/connecting/configure-connections#add-a-connection.

- Use the configured connection for all validation and execution steps.


Workflow For Each Semantic View Request


1. Confirm the target database, schema, role, warehouse, and final semantic view name.

2. Confirm the model follows a star schema (facts with conformed dimensions).

3. Draft the semantic view DDL using the official syntax:

- https://docs.snowflake.com/en/sql-reference/sql/create-semantic-view

4. Populate synonyms and comments for each dimension, fact, and metric:

- Read Snowflake table/view/column comments first (preferred source):

- https://docs.snowflake.com/en/sql-reference/sql/comment

- If comments or synonyms are missing, ask whether you can create them, whether the user wants to provide text, or whether you should draft suggestions for approval.

5. Use SELECT statements with DISTINCT and LIMIT (maximum 1000 rows) to discover relationships between fact and dimension tables, identify column data types, and create more meaningful comments and synonyms for columns.

6. Create a temporary validation name (for example, append `__tmp_validate`) while keeping the same database and schema.

7. Always validate by sending the DDL to Snowflake via Snowflake CLI before finalizing:

- Use `snow sql` to execute the statement with the configured connection.

- If flags differ by version, check `snow sql --help` and use the connection option shown there.

8. If validation fails, iterate on the DDL and re-run the validation step until it succeeds.

9. Apply the final DDL (create or alter) using the real semantic view name.

10. Run a sample query against the final semantic view to confirm it works as expected. It has a different SQL syntax as can be seen here: https://docs.snowflake.com/en/user-guide/views-semantic/querying#querying-a-semantic-view

Example:


SQL
SELECT * FROM SEMANTIC_VIEW(
    my_semview_name
    DIMENSIONS customer.customer_market_segment
    METRICS orders.order_average_value
)
ORDER BY customer_market_segment;

11. Clean up any temporary semantic view created during validation.


Synonyms And Comments (Required)


- Use the semantic view syntax for synonyms and comments:


text
WITH SYNONYMS [ = ] ( 'synonym' [ , ... ] )
COMMENT = 'comment_about_dim_fact_or_metric'

- Treat synonyms as informational only; do not use them to reference dimensions, facts, or metrics elsewhere.

- Use Snowflake comments as the preferred and first source for synonyms and comments:

- https://docs.snowflake.com/en/sql-reference/sql/comment

- If Snowflake comments are missing, ask whether you can create them, whether the user wants to provide text, or whether you should draft suggestions for approval.

- Do not invent synonyms or comments without user approval.


Validation Pattern (Required)


- Never skip validation. Always execute the DDL against Snowflake with Snowflake CLI before presenting it as final.

- Prefer a temporary name for validation to avoid clobbering the real view.


Example CLI Validation (Template)


bash
# Replace placeholders with real values.
snow sql -q "<CREATE OR ALTER SEMANTIC VIEW ...>" --connection <connection_name>

If the CLI uses a different connection flag in your version, run:


bash
snow sql --help

Notes


- Treat installation and connection setup as one-time steps, but confirm they are done before the first validation.

- Keep the final semantic view definition identical to the validated temporary definition except for the name.

- Do not omit synonyms or comments; consider them required

🎯 Best For

  • UI designers
  • Product designers
  • Claude users
  • GitHub Copilot users
  • Knowledge workers

💡 Use Cases

  • Generating component mockups
  • Creating design system tokens
  • Using Snowflake-Semanticview in daily workflow
  • Automating repetitive productivity tasks

📖 How to Use This Skill

  1. 1

    Install the Skill

    Copy the install command from the Terminal tab and run it. The SKILL.md file downloads to your local skills directory.

  2. 2

    Load into Your AI Assistant

    Open Claude or GitHub Copilot and reference the skill. Paste the SKILL.md content or use the system prompt tab.

  3. 3

    Apply Snowflake-Semanticview to Your Work

    Provide context for your task — paste source material, describe your audience, or share existing work to guide the AI.

  4. 4

    Review and Refine

    Edit the AI output for accuracy, tone, and completeness. Add human insight where the AI lacks context.

❓ Frequently Asked Questions

Does this work with Figma?

Some design skills integrate with Figma plugins. Check the Works With section for supported tools.

How do I install Snowflake-Semanticview?

Copy the install command from the Terminal tab and run it. The skill downloads to ./skills/snowflake-semanticview/SKILL.md, ready to use.

Can I customize this skill for my team?

Absolutely. Edit the SKILL.md file to add team-specific instructions, examples, or workflows.

⚠️ Common Mistakes to Avoid

Skipping usability testing

AI-generated designs should be validated with real users before development.

Not reading the full skill

Skills contain important context and edge cases beyond the quick start.

🔗 Related Skills