データ品質 - ベストプラクティス
10 分で読めます
Data Quality Best Practices
Clean data, better decisions. Garbage in, garbage out. Poor data quality leads to missed payments, duplicate clients, inaccurate reports, and bad business decisions.
Pro Tip: Prevention is 10× easier than cleanup. Spend time on proper data entry now, save hours on cleanup later.
The 4 Pillars of Data Quality
| Pillar | Definition | Example |
|---|---|---|
| Completeness | All required fields filled | Client has name, email, phone |
| Accuracy | Data reflects reality | Email is valid, phone is correct |
| Consistency | Same format across records | "John Smith" not "JOHN SMITH" |
| Uniqueness | No duplicate records | One client, one record |
Impact of Poor Data Quality
| Problem | Business Impact |
|---|---|
| Missing email | Can't send payment reminders → Lost revenue |
| Wrong phone number | Can't confirm appointments → No-shows |
| Duplicate clients | Overpayment reports incorrect → Tax issues |
| Inconsistent naming | Automation breaks → Manual work |
Data Entry Standards
Naming Conventions
- Good: John Smith, Jane Doe-Williams, Dr. Michael Johnson
- Bad: john (no last name), JANE DOE (all caps), Smith, John (last, first)
Email Validation
- Must contain
@and. - No spaces
- ClientFlow auto-validates and suggests corrections
Phone Number Format
Standard format: Country code + Area code + Number
+1-555-123-4567(US)+90-555-123-4567(Turkey)
Finding Data Quality Issues
Automated Data Quality Reports (PRO)
Analytics → Data Quality dashboard shows:
- Completeness: % of clients with all required fields
- Accuracy: % passing validation rules
- Duplicates: Number of potential duplicate clients
- Stale Data: Records not updated in 180+ days
Fixing Data Quality Issues
Merge Duplicate Clients
- Clients → "Find Duplicates"
- Review suggested matches
- Select pair to merge
- Choose primary record
- Confirm merge
Archive Inactive Clients
Criteria for archival: No appointment in 365+ days, No payment in 365+ days
Preventing Future Issues
Validation Rules (Settings → Data Validation)
- Email: Check syntax, suggest corrections, warn if duplicate
- Phone: Must be 10+ digits, auto-format with country code
- Amount: Must be > 0, auto-format to 2 decimals
Duplicate Prevention
Enable warnings when creating clients with same email or similar name + phone.
Maintenance Schedule
- Daily (5 min): Review data quality alerts
- Weekly (30 min): Review and merge duplicates
- Monthly (2 hours): Generate data quality report, archive inactive clients
- Quarterly (4 hours): Full duplicate scan, email validation, tag cleanup
Next Steps
Master data quality to:
- Reliable reports - Trust your numbers
- Better automation - No more "email failed" errors
- Professional image - Consistent, accurate records
- Compliance - Meet GDPR/KVKK requirements
Read time: ~10 minutes | Difficulty: Advanced
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