Zamil Majdy 0bb2b87c32 fix(backend): resolve UserBalance migration issues and credit spending bug (#11192)
## Summary
Fix critical UserBalance migration and spending issues affecting users
with credits from transaction history but no UserBalance records.

## Root Issues Fixed

### Issue 1: UserBalance Migration Complexity
- **Problem**: Complex data migration with timestamp logic issues and
potential race conditions
- **Solution**: Simplified to idempotent table creation only,
application handles auto-population

### Issue 2: Credit Spending Bug  
- **Problem**: Users with $10.0 from transaction history couldn't spend
$0.16
- **Root Cause**: `_add_transaction` and `_enable_transaction` only
checked UserBalance table, returning 0 balance for users without records
- **Solution**: Enhanced both methods with transaction history fallback
logic

### Issue 3: Exception Handling Inconsistency
- **Problem**: Raw SQL unique violations raised different exception
types than Prisma ORM
- **Solution**: Convert raw SQL unique violations to
`UniqueViolationError` at source

## Changes Made

### Migration Cleanup
- **Idempotent operations**: Use `CREATE TABLE IF NOT EXISTS`, `CREATE
INDEX IF NOT EXISTS`
- **Inline foreign key**: Define constraint within `CREATE TABLE`
instead of separate `ALTER TABLE`
- **Removed data migration**: Application creates UserBalance records
on-demand
- **Safe to re-run**: No errors if table/index/constraint already exists

### Credit Logic Fixes
- **Enhanced `_add_transaction`**: Added transaction history fallback in
`user_balance_lock` CTE
- **Enhanced `_enable_transaction`**: Added same fallback logic for
payment fulfillment
- **Exception normalization**: Convert raw SQL unique violations to
`UniqueViolationError`
- **Simplified `onboarding_reward`**: Use standardized
`UniqueViolationError` catching

### SQL Fallback Pattern
```sql
COALESCE(
    (SELECT balance FROM UserBalance WHERE userId = ? FOR UPDATE),
    -- Fallback: compute from transaction history if UserBalance doesn't exist
    (SELECT COALESCE(ct.runningBalance, 0) 
     FROM CreditTransaction ct 
     WHERE ct.userId = ? AND ct.isActive = true AND ct.runningBalance IS NOT NULL 
     ORDER BY ct.createdAt DESC LIMIT 1),
    0
) as balance
```

## Impact

### Before
-  Users with transaction history but no UserBalance couldn't spend
credits
-  Migration had complex timestamp logic with potential bugs  
-  Raw SQL and Prisma exceptions handled differently
-  Error: "Insufficient balance of $10.0, where this will cost $0.16"

### After  
-  Seamless spending for all users regardless of UserBalance record
existence
-  Simple, idempotent migration that's safe to re-run
-  Consistent exception handling across all credit operations
-  Automatic UserBalance record creation during first transaction
-  Backward compatible - existing users unaffected

## Business Value
- **Eliminates user frustration**: Users can spend their credits
immediately
- **Smooth migration path**: From old User.balance to new UserBalance
table
- **Better reliability**: Atomic operations with proper error handling
- **Maintainable code**: Consistent patterns across credit operations

## Test Plan
- [ ] Manual testing with users who have transaction history but no
UserBalance records
- [ ] Verify migration can be run multiple times safely
- [ ] Test spending credits works for all user scenarios
- [ ] Verify payment fulfillment (`_enable_transaction`) works correctly
- [ ] Add comprehensive test coverage for this scenario

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

---------

Co-authored-by: Claude <noreply@anthropic.com>
2025-10-17 19:46:13 +07:00
2025-01-29 10:31:57 -06:00
2025-03-24 18:11:56 +00:00
2025-07-25 15:39:29 +01:00

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