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SayPro Conduct internal SayPro M&E team interviews
Interview Objectives
- Assess internal alignment with SayPro’s Theory of Change and Results Frameworks
- Collect firsthand feedback on MEL tools, processes, and reporting effectiveness
- Identify capacity-building needs, success stories, and bottlenecks
- Inform development of future learning briefs, strategy updates, and team practices
🧠 Interview Themes & Questions
Theme | Sample Questions |
---|---|
Role Clarity & Contribution | “How would you describe your current role in SayPro’s MEL work?” “What do you feel has been your biggest contribution in the past quarter?” |
Tools & Technology | “What MEL tools or platforms are you using regularly? Are they helping you work effectively?” |
Data Collection & Use | “How confident are you in the accuracy and timeliness of the data collected?” “What kind of data do you think is missing or underused?” |
Challenges & Risks | “What are the biggest bottlenecks or challenges you’ve faced?” “How do you manage data fatigue or reporting overload?” |
Learning & Impact | “Can you share an example of how M&E data led to a positive program shift or decision?” |
Recommendations & Aspirations | “If you could change one thing about SayPro’s M&E approach, what would it be?” “What kind of support or training would you like in the next 6 months?” |
📋 Summary of Key Insights
Insight Area | Findings |
---|---|
Strong Alignment | Most team members feel well-aligned with SayPro’s mission, especially in evidence-based learning and youth engagement. |
Tool Utilization | KoboToolbox, Power BI, and Google Sheets remain primary tools, though many request better integration and automation. |
Data Bottlenecks | Common challenges include delays from field partners, inconsistencies in indicators, and limited time for reflection and analysis. |
Learning Culture | Several members praised peer learning circles and internal workshops, but asked for more cross-royalty sharing. |
Training Needs | High interest in advanced Excel, AI for M&E, and gender-sensitive data analysis. |
Strategic Shifts | Suggestions include decentralizing MEL feedback loops and involving beneficiaries in validation more directly. |
👥 Voices from the Team (Selected Quotes)
🗣️ “Our reporting is strong, but we don’t spend enough time unpacking what the data really means for our programs.”
— M&E Specialist, Western Cape
🗣️ “The integration of AI into our content evaluation is exciting—but we need proper onboarding to make it sustainable.”
— Digital M&E Associate
🗣️ “I feel proud when program staff actually use the dashboards we build. That’s when I know the work is making a difference.”
— Data & Reporting Officer
✅ Action Points Going Forward
- Develop internal “M&E Knowledge Hub” – shared folder for tools, guides, best practices, case studies
- Launch quarterly MEL learning sessions – rotate topics like indicator design, AI use, adaptive M&E
- Follow up on training requests – begin planning for July/August skill-building workshops
- Improve data turnaround time – pilot automated validation scripts and cleaner indicator banks
- Include field staff in reflection loops – start testing rapid feedback templates and stories of change forms
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