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Java Developer Template KRA/KPI
- Key Responsibility Areas (KRA) & Key Performance Indicators (KPI) for Dba Developer
- 1. Database Management
- 2. Performance Tuning
- 3. Security Management
- 4. Data Modeling
- 5. Disaster Recovery Planning
- 6. Query Optimization
- 7. Capacity Planning
- 8. Automation Implementation
- 9. Compliance Management
- 10. Reporting and Analysis
Key Responsibility Areas (KRA) & Key Performance Indicators (KPI) for Dba Developer
1. Database Management
KRA: Responsible for efficiently managing databases to ensure data integrity and availability.
Short Description: Database management and optimization.
- Database uptime percentage
- Response time for database queries
- Database backup success rate
- Number of database optimizations implemented
2. Performance Tuning
KRA: Improve database performance by identifying and resolving bottlenecks.
Short Description: Enhancing database performance.
- Query execution time improvement
- Reduction in resource consumption
- Scalability enhancements implemented
- Performance benchmarking results
3. Security Management
KRA: Ensuring database security through access controls and encryption.
Short Description: Database security enhancement.
- Security audit compliance rate
- Incident response time to security threats
- Number of security vulnerabilities patched
- Data breach incident rate
4. Data Modeling
KRA: Designing and maintaining efficient database structures for optimal data storage and retrieval.
Short Description: Data modeling and schema design.
- Normalization levels achieved
- Schema optimization success rate
- Data modeling documentation completeness
- Impact analysis of schema changes
5. Disaster Recovery Planning
KRA: Developing and testing disaster recovery plans to ensure data availability in case of emergencies.
Short Description: Disaster recovery preparedness.
- RTO (Recovery Time Objective) adherence
- RPO (Recovery Point Objective) compliance
- Success rate of disaster recovery drills
- Disaster recovery plan updates frequency
6. Query Optimization
KRA: Analyzing and optimizing database queries for improved performance and efficiency.
Short Description: Query optimization for speed.
- Query execution time reduction percentage
- Index usage optimization rate
- Query cache hit ratio improvement
- Number of slow queries resolved
7. Capacity Planning
KRA: Forecasting and managing database capacity to meet current and future resource requirements.
Short Description: Capacity planning and resource allocation.
- Resource utilization optimization
- Capacity planning accuracy rate
- Scalability implementation success rate
- Resource allocation efficiency improvement
8. Automation Implementation
KRA: Implementing automation tools and scripts to streamline database management tasks.
Short Description: Automation for efficiency.
- Number of automation scripts deployed
- Time saved through automation
- Accuracy of automated tasks
- Reduction in manual intervention frequency
9. Compliance Management
KRA: Ensuring databases comply with relevant regulations and industry standards.
Short Description: Regulatory compliance adherence.
- Compliance audit success rate
- Regulatory violation incidents count
- Documentation completeness for compliance
- Training completion rate on compliance policies
10. Reporting and Analysis
KRA: Generating database performance reports and conducting analysis for continuous improvement.
Short Description: Data analysis for insights.
- Report accuracy and timeliness
- Trend analysis effectiveness
- Insights derived from data analysis
- Recommendations implemented based on analysis