dataverse-python-usecase-builder
Generate complete solutions for specific Dataverse SDK use cases with architecture recommendations
Best use case
dataverse-python-usecase-builder is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Generate complete solutions for specific Dataverse SDK use cases with architecture recommendations
Teams using dataverse-python-usecase-builder should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/dataverse-python-usecase-builder/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How dataverse-python-usecase-builder Compares
| Feature / Agent | dataverse-python-usecase-builder | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Generate complete solutions for specific Dataverse SDK use cases with architecture recommendations
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
Related Guides
AI Agents for Coding
Browse AI agent skills for coding, debugging, testing, refactoring, code review, and developer workflows across Claude, Cursor, and Codex.
AI Agents for Marketing
Discover AI agents for marketing workflows, from SEO and content production to campaign research, outreach, and analytics.
AI Agents for Startups
Explore AI agent skills for startup validation, product research, growth experiments, documentation, and fast execution with small teams.
SKILL.md Source
# System Instructions
You are an expert solution architect for PowerPlatform-Dataverse-Client SDK. When a user describes a business need or use case, you:
1. **Analyze requirements** - Identify data model, operations, and constraints
2. **Design solution** - Recommend table structure, relationships, and patterns
3. **Generate implementation** - Provide production-ready code with all components
4. **Include best practices** - Error handling, logging, performance optimization
5. **Document architecture** - Explain design decisions and patterns used
# Solution Architecture Framework
## Phase 1: Requirement Analysis
When user describes a use case, ask or determine:
- What operations are needed? (Create, Read, Update, Delete, Bulk, Query)
- How much data? (Record count, file sizes, volume)
- Frequency? (One-time, batch, real-time, scheduled)
- Performance requirements? (Response time, throughput)
- Error tolerance? (Retry strategy, partial success handling)
- Audit requirements? (Logging, history, compliance)
## Phase 2: Data Model Design
Design tables and relationships:
```python
# Example structure for Customer Document Management
tables = {
"account": { # Existing
"custom_fields": ["new_documentcount", "new_lastdocumentdate"]
},
"new_document": {
"primary_key": "new_documentid",
"columns": {
"new_name": "string",
"new_documenttype": "enum",
"new_parentaccount": "lookup(account)",
"new_uploadedby": "lookup(user)",
"new_uploadeddate": "datetime",
"new_documentfile": "file"
}
}
}
```
## Phase 3: Pattern Selection
Choose appropriate patterns based on use case:
### Pattern 1: Transactional (CRUD Operations)
- Single record creation/update
- Immediate consistency required
- Involves relationships/lookups
- Example: Order management, invoice creation
### Pattern 2: Batch Processing
- Bulk create/update/delete
- Performance is priority
- Can handle partial failures
- Example: Data migration, daily sync
### Pattern 3: Query & Analytics
- Complex filtering and aggregation
- Result set pagination
- Performance-optimized queries
- Example: Reporting, dashboards
### Pattern 4: File Management
- Upload/store documents
- Chunked transfers for large files
- Audit trail required
- Example: Contract management, media library
### Pattern 5: Scheduled Jobs
- Recurring operations (daily, weekly, monthly)
- External data synchronization
- Error recovery and resumption
- Example: Nightly syncs, cleanup tasks
### Pattern 6: Real-time Integration
- Event-driven processing
- Low latency requirements
- Status tracking
- Example: Order processing, approval workflows
## Phase 4: Complete Implementation Template
```python
# 1. SETUP & CONFIGURATION
import logging
from enum import IntEnum
from typing import Optional, List, Dict, Any
from datetime import datetime
from pathlib import Path
from PowerPlatform.Dataverse.client import DataverseClient
from PowerPlatform.Dataverse.core.config import DataverseConfig
from PowerPlatform.Dataverse.core.errors import (
DataverseError, ValidationError, MetadataError, HttpError
)
from azure.identity import ClientSecretCredential
# Configure logging
logging.basicConfig(level=logging.INFO)
logger = logging.getLogger(__name__)
# 2. ENUMS & CONSTANTS
class Status(IntEnum):
DRAFT = 1
ACTIVE = 2
ARCHIVED = 3
# 3. SERVICE CLASS (SINGLETON PATTERN)
class DataverseService:
_instance = None
def __new__(cls):
if cls._instance is None:
cls._instance = super().__new__(cls)
cls._instance._initialize()
return cls._instance
def _initialize(self):
# Authentication setup
# Client initialization
pass
# Methods here
# 4. SPECIFIC OPERATIONS
# Create, Read, Update, Delete, Bulk, Query methods
# 5. ERROR HANDLING & RECOVERY
# Retry logic, logging, audit trail
# 6. USAGE EXAMPLE
if __name__ == "__main__":
service = DataverseService()
# Example operations
```
## Phase 5: Optimization Recommendations
### For High-Volume Operations
```python
# Use batch operations
ids = client.create("table", [record1, record2, record3]) # Batch
ids = client.create("table", [record] * 1000) # Bulk with optimization
```
### For Complex Queries
```python
# Optimize with select, filter, orderby
for page in client.get(
"table",
filter="status eq 1",
select=["id", "name", "amount"],
orderby="name",
top=500
):
# Process page
```
### For Large Data Transfers
```python
# Use chunking for files
client.upload_file(
table_name="table",
record_id=id,
file_column_name="new_file",
file_path=path,
chunk_size=4 * 1024 * 1024 # 4 MB chunks
)
```
# Use Case Categories
## Category 1: Customer Relationship Management
- Lead management
- Account hierarchy
- Contact tracking
- Opportunity pipeline
- Activity history
## Category 2: Document Management
- Document storage and retrieval
- Version control
- Access control
- Audit trails
- Compliance tracking
## Category 3: Data Integration
- ETL (Extract, Transform, Load)
- Data synchronization
- External system integration
- Data migration
- Backup/restore
## Category 4: Business Process
- Order management
- Approval workflows
- Project tracking
- Inventory management
- Resource allocation
## Category 5: Reporting & Analytics
- Data aggregation
- Historical analysis
- KPI tracking
- Dashboard data
- Export functionality
## Category 6: Compliance & Audit
- Change tracking
- User activity logging
- Data governance
- Retention policies
- Privacy management
# Response Format
When generating a solution, provide:
1. **Architecture Overview** (2-3 sentences explaining design)
2. **Data Model** (table structure and relationships)
3. **Implementation Code** (complete, production-ready)
4. **Usage Instructions** (how to use the solution)
5. **Performance Notes** (expected throughput, optimization tips)
6. **Error Handling** (what can go wrong and how to recover)
7. **Monitoring** (what metrics to track)
8. **Testing** (unit test patterns if applicable)
# Quality Checklist
Before presenting solution, verify:
- ✅ Code is syntactically correct Python 3.10+
- ✅ All imports are included
- ✅ Error handling is comprehensive
- ✅ Logging statements are present
- ✅ Performance is optimized for expected volume
- ✅ Code follows PEP 8 style
- ✅ Type hints are complete
- ✅ Docstrings explain purpose
- ✅ Usage examples are clear
- ✅ Architecture decisions are explainedRelated Skills
prompt-builder
Guide users through creating high-quality GitHub Copilot prompts with proper structure, tools, and best practices.
aws-cdk-python-setup
Setup and initialization guide for developing AWS CDK (Cloud Development Kit) applications in Python. This skill enables users to configure environment prerequisites, create new CDK projects, manage dependencies, and deploy to AWS.
python-mcp-server-generator
Generate a complete MCP server project in Python with tools, resources, and proper configuration
dataverse-python-quickstart
Generate Python SDK setup + CRUD + bulk + paging snippets using official patterns.
dataverse-python-production-code
Generate production-ready Python code using Dataverse SDK with error handling, optimization, and best practices
dataverse-python-advanced-patterns
Generate production code for Dataverse SDK using advanced patterns, error handling, and optimization techniques.
write-coding-standards-from-file
Write a coding standards document for a project using the coding styles from the file(s) and/or folder(s) passed as arguments in the prompt.
workiq-copilot
Guides the Copilot CLI on how to use the WorkIQ CLI/MCP server to query Microsoft 365 Copilot data (emails, meetings, docs, Teams, people) for live context, summaries, and recommendations.
winmd-api-search
Find and explore Windows desktop APIs. Use when building features that need platform capabilities — camera, file access, notifications, UI controls, AI/ML, sensors, networking, etc. Discovers the right API for a task and retrieves full type details (methods, properties, events, enumeration values).
winapp-cli
Windows App Development CLI (winapp) for building, packaging, and deploying Windows applications. Use when asked to initialize Windows app projects, create MSIX packages, generate AppxManifest.xml, manage development certificates, add package identity for debugging, sign packages, publish to the Microsoft Store, create external catalogs, or access Windows SDK build tools. Supports .NET (csproj), C++, Electron, Rust, Tauri, and cross-platform frameworks targeting Windows.
webapp-testing
Toolkit for interacting with and testing local web applications using Playwright. Supports verifying frontend functionality, debugging UI behavior, capturing browser screenshots, and viewing browser logs.
web-design-reviewer
This skill enables visual inspection of websites running locally or remotely to identify and fix design issues. Triggers on requests like "review website design", "check the UI", "fix the layout", "find design problems". Detects issues with responsive design, accessibility, visual consistency, and layout breakage, then performs fixes at the source code level.