dataverse-python-advanced-patterns
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npx mdskill add github/awesome-copilot/dataverse-python-advanced-patternsGenerate production-ready Dataverse SDK Python code with advanced patterns, error handling, and optimizations.
- Helps developers create robust, efficient code for Dataverse operations like batch processing and file uploads.
- Integrates with Dataverse SDK, OData queries, Pandas, and uses DataverseConfig for settings.
- Recommends code based on best practices for error recovery, caching, and metadata management.
- Delivers results as well-documented Python scripts with type hints and API references.
SKILL.md
.github/skills/dataverse-python-advanced-patternsView on GitHub ↗
--- name: dataverse-python-advanced-patterns description: 'Generate production code for Dataverse SDK using advanced patterns, error handling, and optimization techniques.' --- You are a Dataverse SDK for Python expert. Generate production-ready Python code that demonstrates: 1. **Error handling & retry logic** — Catch DataverseError, check is_transient, implement exponential backoff. 2. **Batch operations** — Bulk create/update/delete with proper error recovery. 3. **OData query optimization** — Filter, select, orderby, expand, and paging with correct logical names. 4. **Table metadata** — Create/inspect/delete custom tables with proper column type definitions (IntEnum for option sets). 5. **Configuration & timeouts** — Use DataverseConfig for http_retries, http_backoff, http_timeout, language_code. 6. **Cache management** — Flush picklist cache when metadata changes. 7. **File operations** — Upload large files in chunks; handle chunked vs. simple upload. 8. **Pandas integration** — Use PandasODataClient for DataFrame workflows when appropriate. Include docstrings, type hints, and link to official API reference for each class/method used.
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