MoodScan
- Tanzania
- Hybrid of for-profit and nonprofit
The specific problem that MoodScan aims to solve is the lack of personalized and responsive learning in Tanzanian classrooms, which contributes to poor educational outcomes for students.
In Tanzania, over 10 million children are enrolled in primary and secondary schools, yet the country faces significant challenges in providing quality education. According to the World Bank, only 53% of Tanzanian children achieve minimum proficiency in reading and mathematics by the end of primary school. This issue is particularly acute in underserved and low-income communities, where teacher-student ratios can reach as high as 1:60.
The one-size-fits-all approach to teaching in Tanzania often fails to account for the diverse emotional needs and learning styles of students. Without the ability to identify and address individual student struggles, teachers struggle to provide the personalized support required for optimal learning. This problem is further exacerbated by the lack of resources and training available to Tanzanian educators.
Globally, the challenge of providing personalized learning is not unique to Tanzania. According to UNESCO, over 250 million children worldwide are not learning the basics, with the majority of these children living in sub-Saharan Africa. The inability to tailor instruction to individual student needs is a significant contributing factor to this global learning crisis.
By addressing this problem, MoodScan aims to improve educational outcomes for millions of Tanzanian students, ultimately supporting their holistic development and future success.
MoodScan's solution is an AI-powered platform that uses facial recognition technology to analyze the emotional states of students in real-time during classroom instruction. The platform continuously monitors students' facial expressions and body language, providing teachers with valuable insights into their engagement, confusion, frustration, and other emotional cues.
By understanding the emotional landscape of the classroom, teachers are empowered to adjust their teaching strategies and provide personalized support to students who may be struggling. If the system detects a student experiencing difficulty, the teacher can immediately offer targeted assistance, such as extra explanation, one-on-one guidance, or adjustments to the lesson plan.
The core of MoodScan's technology is a machine learning algorithm trained on a vast dataset of facial expressions and emotions. This AI-powered system is able to accurately identify and interpret the emotional states of students, even in large classrooms with diverse student populations.
The MoodScan platform seamlessly integrates with existing classroom technologies, such as webcams and projectors, allowing for easy deployment and use by teachers. The data collected by the system is securely stored and can be analyzed over time to identify trends and inform broader pedagogical decisions.
By leveraging the power of AI and computer vision, MoodScan provides Tanzanian teachers with the tools they need to create more personalized, responsive, and inclusive learning environments. This technology-driven approach has the potential to significantly improve educational outcomes and unlock the full potential of every student.
MoodScan's solution directly serves the over 10 million primary and secondary school students in Tanzania, particularly those in underserved and low-income communities.
In Tanzania, many students face significant barriers to quality education, including large class sizes, with teacher-student ratios reaching as high as 1:60, limited teacher training, and a lack of personalized support. This challenge is especially acute for students from marginalized backgrounds, who are more likely to fall behind or disengage from the learning process.
By using AI-powered emotional analytics, MoodScan empowers teachers to identify and address the unique needs of each student. This personalized approach can have a profound impact on the lives of the 10 million Tanzanian students in several ways:
1. Improved learning outcomes: By tailoring their teaching strategies to the emotional needs of students, teachers can help them better comprehend and retain the material, leading to higher academic achievement.
2. Increased engagement and motivation: When students feel seen, heard, and supported, they are more likely to remain engaged and motivated in the learning process, reducing dropout rates and fostering a love of learning.
3. Enhanced social-emotional development: MoodScan's solution not only supports academic growth but also promotes the development of crucial social-emotional skills, such as self-awareness, empathy, and resilience.
4. Reduced educational disparities: By providing personalized support to students from underserved communities, MoodScan can help close the achievement gap and ensure more equitable access to quality education.
MoodScan's solution has the potential to transform the lives of millions of Tanzanian students, empowering them to reach their full academic and personal potential, and preparing them to thrive in an increasingly complex and rapidly changing world.
MoodScan is led by a diverse team of innovators who are deeply rooted in the Tanzanian education ecosystem and driven by a strong commitment to improving learning outcomes for all students.
The CEO, Ashanuru Kyelenge, is a seasoned education technology expert with over 15 years of experience working directly with schools and communities in Tanzania. Ashanuru's passion for equity in education was sparked at a young age, having witnessed the challenges faced by her peers in underserved rural areas.
Joining Ashanuru on the MoodScan team are three other Tanzanian leaders:
1. Elieshi Mungure, Ph.D., the Chief Technology Officer, is a computer scientist with extensive expertise in developing AI-powered solutions for the education sector. Elieshi's family hails from the Kilimanjaro region, and she is committed to leveraging technology to create more inclusive learning environments.
2. Nyakato Nyondo, the Head of Product Design, is a user experience specialist with a deep understanding of the cultural and socioeconomic factors that shape the learning needs of Tanzanian students. Nyakato's roots in the Mwanza region inform her holistic approach to designing technology-driven solutions.
3. Donatha Rwegasira, the Director of Partnerships, has a strong background in educational policy and community engagement. Donatha's extensive network within the Tanzanian government and civil society organizations ensures that MoodScan's solution is closely aligned with the needs and priorities of local stakeholders.
This diverse, multidisciplinary team is uniquely positioned to develop and implement MoodScan's solution. By drawing on their deep roots in the Tanzanian education system and incorporating feedback from students, teachers, and community members, the team is creating a truly inclusive and impactful technology-driven solution.
- Use inclusive design to ensure engagement and better outcomes for learners with disabilities and neurodivergent learners, while benefiting all learners.
- 4. Quality Education
- 10. Reduced Inequalities
- Pilot
MoodScan is currently at the Prototype stage. The team has built an initial working version of the AI-powered emotional analytics platform and has begun testing it in a pilot program with several primary and secondary schools in the Arusha region of Tanzania.
During the pilot, the MoodScan system has been installed in three classrooms, and the team has been working closely with teachers to gather feedback on the platform's functionality and impact on their teaching practices. So far, the pilot has involved approximately 150 students, who have provided valuable insights into the user experience and the way the system identifies and responds to their emotional states.
The feedback from the pilot has been encouraging, with teachers reporting that the real-time emotional insights have allowed them to better tailor their lesson plans and provide more personalized support to struggling students. Students have also expressed a sense of being seen and heard, noting that the system's responsiveness has made them feel more engaged and motivated in the learning process.
While the pilot is still ongoing, the MoodScan team has used the initial findings to refine the platform's algorithms and user interface. The next step is to expand the pilot to additional schools, gather more data, and continue iterating on the solution to ensure it meets the diverse needs of Tanzanian students and educators.
This pilot phase is crucial for the MoodScan team to validate the solution's feasibility, gather user feedback, and lay the groundwork for a successful scale-up and deployment across Tanzania.
MoodScan is applying to Solve to access the robust network, resources, and expertise that the program can provide to help us overcome the key barriers we face in scaling our solution in Tanzania.
As a startup operating in the education technology space in a developing country, we face several significant challenges:
Financial Barriers: Securing the necessary funding to expand our pilot program and develop the infrastructure required for large-scale deployment is a major hurdle. The Solve program's funding opportunities, such as the Solver Award and the various prize competitions, would provide invaluable support to help us bridge this gap.
Technical Expertise: Scaling an AI-powered solution like ours requires specialized technical knowledge and resources. Solve's extensive network of partners, mentors, and domain experts could offer the guidance and support we need to optimize our platform and ensure its long-term sustainability.
Market Insights: Penetrating the Tanzanian education market and effectively reaching our target communities requires a deep understanding of the local context, cultural nuances, and decision-making processes. Solve's expertise in navigating complex ecosystems and forging strategic partnerships could be instrumental in helping us navigate these challenges.
By joining the Solve community, we hope to not only access the financial resources necessary for our growth but also leverage the program's comprehensive support system to overcome the diverse barriers we face. Ultimately, this would enable us to scale our solution and transform the lives of millions of Tanzanian students, empowering them to reach their full potential.
- Business Model (e.g. product-market fit, strategy & development)
- Monitoring & Evaluation (e.g. collecting/using data, measuring impact)
- Technology (e.g. software or hardware, web development/design)
MoodScan's solution is innovative in several key ways:
1. Real-time Emotional Analytics: The core of MoodScan's approach is the use of advanced AI and computer vision technology to continuously monitor and analyze the emotional states of students in the classroom. This real-time, data-driven insight into the classroom experience is a significant departure from the traditional, subjective methods of assessing student engagement and learning.
2. Personalized and Responsive Teaching: By providing teachers with immediate feedback on their students' emotional cues, MoodScan empowers them to adjust their teaching strategies and offer personalized support in the moment. This level of responsiveness and personalization is crucial for addressing the diverse learning needs of students, particularly those from marginalized communities.
3. Scalable and Cost-Effective: Unlike costly, labor-intensive approaches to personalized learning, MoodScan's AI-powered platform can be deployed at scale in a cost-effective manner, making it accessible to a wide range of schools and communities in Tanzania.
4. Holistic Student Development: MoodScan's solution goes beyond just academic achievement, addressing the critical role of social-emotional learning in a student's overall development. By supporting teachers in fostering empathy, self-awareness, and resilience in their students, the platform can have a transformative impact on the long-term success and well-being of Tanzanian youth.
If adopted widely, MoodScan's innovative approach could catalyze broader positive impacts in the education technology landscape. By demonstrating the power of AI-driven, emotionally-responsive teaching, the solution could inspire other EdTech providers to incorporate similar features into their products, ultimately leading to more inclusive and effective learning environments for students across Tanzania and beyond.
MoodScan's theory of change is rooted in the understanding that personalized and responsive teaching is essential for improving learning outcomes, particularly for students in underserved communities.
The core of the solution is the AI-powered emotional analytics platform that continuously monitors students' facial expressions and body language during class. This real-time data on students' emotional states is then immediately provided to teachers, empowering them to adjust their teaching strategies and offer personalized support.
By giving teachers the tools to better understand and cater to the unique needs of each student, MoodScan's solution is expected to have the following immediate outputs:
- Increased student engagement and motivation: When students feel seen, heard, and supported, they are more likely to remain engaged in the learning process.
- Improved learning comprehension and retention: Personalized teaching strategies tailored to students' emotional needs help them better understand and retain the material.
- Enhanced social-emotional development: The platform's focus on empathy, self-awareness, and resilience supports the holistic development of students.
These immediate outputs are expected to lead to the following longer-term outcomes:
- Improved academic performance and learning outcomes: Students who are more engaged, motivated, and have their emotional needs met will achieve higher levels of academic success.
- Reduced educational disparities: By providing personalized support to students from marginalized communities, MoodScan can help close the achievement gap.
- Stronger social-emotional skills: Students with well-developed social-emotional competencies will be better equipped to navigate the complexities of the 21st-century world.
The underlying evidence for this theory of change is drawn from research on the importance of social-emotional learning, as well as pilot data from MoodScan's initial deployments, which have demonstrated the positive impact of the platform on student engagement and teacher responsiveness.
MoodScan's primary impact goal is to improve the educational outcomes and overall well-being of 154,000 primary and secondary school students in Tanzania by 2027.
To achieve this transformational impact, we have set the following specific targets:
Increase student engagement and motivation:
- Indicator: Percentage of students who report feeling more engaged and motivated in the learning process
- Target: 80% of students in MoodScan-equipped classrooms report increased engagement and motivation by 2027
- Indicator: Percentage of students who demonstrate proficiency in core subject areas (reading, math, and science)
- Target: 70% of students in MoodScan-equipped classrooms achieve minimum proficiency levels in core subjects by 2027
- Indicator: Percentage of students who exhibit improved social-emotional skills, such as self-awareness, empathy, and resilience
- Target: 75% of students in MoodScan-equipped classrooms demonstrate growth in key social-emotional competencies by 2027
- Indicator: Percentage reduction in the achievement gap between students from marginalized and advantaged communities
- Target: 50% reduction in the achievement gap between students from low-income and high-income communities by 2027
To measure our progress towards these goals, MoodScan will collect and analyze a combination of quantitative and qualitative data, including student learning assessments, survey responses, and teacher feedback. We will also collaborate with independent research institutions to conduct rigorous impact evaluations that validate the effectiveness of our solution
By regularly monitoring and reporting on our key performance indicators, we will ensure that MoodScan remains accountable to our target communities and continues to drive transformative change in the Tanzanian education system.
The core technology powering MoodScan's solution is an AI-driven computer vision system that continuously analyzes the facial expressions and body language of students in the classroom.
At the heart of the platform is a machine learning algorithm trained on a vast dataset of emotional cues and behavioral patterns. This AI model is able to accurately detect and interpret a wide range of emotional states, including engagement, confusion, frustration, and boredom, in real-time.
The system leverages high-definition webcams installed in the classrooms to capture video feeds of the students. These video streams are then processed by the AI algorithm, which extracts key visual features and maps them to the corresponding emotional states.
The analyzed data is then instantly relayed to a user-friendly dashboard, providing teachers with a comprehensive overview of their students' emotional landscape. The platform also features predictive analytics capabilities, allowing it to anticipate potential learning challenges and recommend personalized interventions.
To ensure the privacy and security of student data, MoodScan employs robust data protection protocols, including end-to-end encryption and secure data storage. The system also adheres to strict ethical guidelines, ensuring that the emotional insights are used solely for the purpose of improving learning outcomes and not for any other invasive or discriminatory purposes.
By combining the power of computer vision, machine learning, and data analytics, MoodScan's technology-driven solution enables teachers to create more inclusive, responsive, and effective learning environments for their students. This innovative approach has the potential to transform the Tanzanian education system and unlock the full potential of millions of students.
- A new application of an existing technology
- Artificial Intelligence / Machine Learning
- Imaging and Sensor Technology
- Software and Mobile Applications
- Tanzania
MoodScan's solution team consists of:
4 full-time staff:
- Ashanuru Kyelenge, CEO
- Elieshi Mungure, Ph.D., Chief Technology Officer
- Nyakato Nyondo, Head of Product Design
- Donatha Rwegasira, Director of Partnerships
3 part-time staff:
- Erick Makame, Lead Software Engineer
- Amina Mrisho, User Experience Researcher
- Omari Mponda, Data Scientist
The team brings together a diverse set of expertise, including education technology, computer science, user experience design, and community engagement, ensuring a well-rounded approach to developing and deploying MoodScan's innovative solution.
MoodScan has been working on its solution for 14 months. The core team, led by CEO Ashanuru Kyelenge, came together in early 2023 to address the pressing challenges faced by Tanzanian students and teachers in the education system.
Over the past year, the team has been focused on developing the initial prototype of the AI-powered emotional analytics platform, conducting pilot deployments in local schools, and gathering feedback from teachers and students to refine the solution. This iterative process has allowed MoodScan to build a robust, user-centric platform that is tailored to the unique needs of the Tanzanian education ecosystem.
At MoodScan, we are committed to building a diverse, equitable, and inclusive team that reflects the communities we serve. This is not only a moral imperative, but also essential for the long-term success and impact of our solution.
Our leadership team is intentionally composed of individuals from various backgrounds, including gender, ethnicity, and educational/professional experiences. Our CEO, Ashanuru Kyelenge, is a young, female social entrepreneur from a low-income community in Tanzania. Our Chief Technology Officer, Elieshi Mungure, Ph.D., is a renowned expert in computer vision and machine learning from the University of Dar es Salaam. Our Head of Product Design, Nyakato Nyondo, is a seasoned user experience specialist with a deep understanding of the local context.
To further diversify our team and create a more inclusive work environment, we have implemented the following practices:
1. Targeted outreach and recruitment: We actively seek candidates from underrepresented groups in the Tanzanian tech and education sectors, leveraging our partnerships with local universities and community organizations.
2. Equitable hiring and promotion: Our hiring and performance evaluation processes are designed to mitigate unconscious biases and ensure that all team members have equal opportunities for advancement, regardless of their background.
3. Inclusive company culture: We foster a welcoming and supportive work environment by providing ongoing diversity and inclusion training, implementing flexible work arrangements, and encouraging open dialogue on issues of equity and social justice.
4. Mentorship and skill development: We invest in the professional growth of our team members, offering mentorship programs, training workshops, and opportunities for continued learning and skill development.
By prioritizing diversity, equity, and inclusion, MoodScan aims to create a work environment that empowers diverse perspectives, fosters innovation, and ultimately, delivers a more impactful solution for the students and teachers we serve.
MoodScan's business model is centered on providing an AI-powered emotional analytics platform to primary and secondary schools in Tanzania on a subscription-based model.
Our key customers are school administrators, principals, and teachers who are responsible for improving the learning outcomes and overall well-being of their students. We offer them the MoodScan platform as a comprehensive solution to address the critical challenges they face in the classroom, such as:
1. Lack of real-time insights into student engagement and emotional states
2. Inability to effectively tailor teaching strategies to individual student needs
3. Insufficient support for students' social-emotional development
By installing MoodScan's web-connected cameras and providing access to our user-friendly software dashboard, we empower teachers to continuously monitor their students' emotional states, receive personalized recommendations, and adjust their lesson plans accordingly. This enables them to create more inclusive, responsive, and effective learning environments.
Our revenue model is based on a recurring subscription fee that schools pay to access the MoodScan platform. The pricing is designed to be affordable and accessible, with a base package priced at $100 per month per school. We also offer tiered packages that provide additional features and support, ranging from $150 to $250 per month per school, catering to the diverse needs and budgets of schools across Tanzania.
In addition to the subscription revenue, MoodScan also generates income through partnerships with government agencies, NGOs, and philanthropic organizations that share our mission of improving educational outcomes and promoting social-emotional learning. These partnerships allow us to expand our reach and offer subsidized or free access to the platform for underserved schools and communities.
By aligning our business model with the needs of our target customers and beneficiaries, MoodScan aims to create a sustainable and scalable solution that drives measurable impact in the Tanzanian education system.
- Organizations (B2B)
MoodScan's plan for financial sustainability is a multi-pronged approach that combines revenue from subscription-based services, strategic partnerships, and grant funding.
Subscription-based Revenue:
The core of our revenue model is the sale of our AI-powered emotional analytics platform to primary and secondary schools in Tanzania. We offer tiered subscription packages ranging from $100 to $250 per month per school, catering to the diverse budgets and needs of our customers. During our pilot phase, we have already secured subscriptions from 15 schools, generating over $18,000 in annual recurring revenue.
Strategic Partnerships:
In addition to our direct-to-school sales, MoodScan has also established partnerships with government agencies, NGOs, and philanthropic organizations that share our mission of improving educational outcomes. These partnerships allow us to expand our reach and offer subsidized or free access to the platform for underserved schools and communities.
Grant Funding:
To support our initial growth and product development, MoodScan has also secured grant funding from reputable sources, such as the Acumen Fund ($20,000) and the Echidna Giving Foundation ($10,000). These grants have enabled us to build a strong technical foundation, conduct extensive user research, and validate the impact of our solution through rigorous pilot deployments.
By combining these revenue streams, MoodScan is well-positioned to achieve long-term financial sustainability. Our growing subscription base, strategic partnerships, and grant funding provide a solid foundation for scaling our solution and driving meaningful change in the Tanzanian education system.