Cross-Domain Personalized Neural-symbolic AI Agent

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musondabemba
Project Owner

Cross-Domain Personalized Neural-symbolic AI Agent

Expert Rating

n/a
  • Proposal for BGI Nexus 1
  • Funding Request $50,000 USD
  • Funding Pools Beneficial AI Solutions
  • Total 4 Milestones

Overview

This project aims to develop an Educational AI Tutor using Neural-Symbolic Reasoning, integrating deep neural networks with symbolic systems for enhanced interpretability. By incorporating Knowledge Graphs (KG), the AI will structure knowledge and improve decision-making. The project explores three integration models—“Neural for Symbol,” “Symbol for Neural,” and “Hybrid Integration”—to personalize learning, optimize outcomes, and ensure transparency, offering a more intuitive and reliable AI-driven educational experience.

Proposal Description

How Our Project Will Contribute To The Growth Of The Decentralized AI Platform

This proposal directly aligns with the Beneficial AI (BGI) mission by advancing AI technologies in a transparent and interpretable manner, improving trust and usability in AI systems. By combining neural networks with symbolic reasoning, the AI tutor fosters better educational outcomes and ethical AI use, ensuring positive impacts on society and learners globally.

Our Team

The team is passionate about improving AI transparency and creating educational tools that enhance personalized learning through the integration of advanced AI methods.

AI services (New or Existing)

Multilingual Speech Recognition

How it will be used

To enhance the AGI’s ability to process and understand inputs from users in different languages. This is crucial for domain adaptation especially when combining multimodal data sources (like text speech and images) from diverse linguistic backgrounds. Benefit: KGs act as a semantic bridge to integrate these multilingual data inputs allowing the AGI to make better-informed decisions by expanding its understanding beyond a single language domain.

Company Name (if applicable)

Digi Twin

The core problem we are aiming to solve

The core problem this project addresses is the opacity and interpretability of deep learning models, often referred to as the "Black Box" issue. Current AI systems, while powerful, lack the transparency needed for users to trust their decision-making processes. In the education sector, this problem hinders the adoption of AI-driven tutors, as users need to understand and trust how decisions are made to ensure fairness, accuracy, and reliability.

Our specific solution to this problem

Our solution is an Educational AI Tutor that combines deep neural networks with symbolic reasoning to create an interpretable, transparent, and reliable learning experience. By integrating Knowledge Graphs (KG) into the system, we can structure and enhance knowledge representation, enabling the AI to make more informed, explainable decisions. This system will utilize three neural-symbolic integration models—“Neural for Symbol,” “Symbol for Neural,” and “Hybrid Integration”—to dynamically adjust to learners' needs, provide personalized learning paths, and optimize educational outcomes. Additionally, the system’s transparency through explainable AI techniques ensures users understand how learning decisions are made, improving trust and user engagement in AI-powered education.

Project details

The project aims to revolutionize AI-driven education by leveraging the power of neural-symbolic integration. Deep neural networks excel at pattern recognition, but they are often difficult to interpret. By combining them with symbolic systems, specifically Knowledge Graphs (KG), we enhance the system’s ability to reason and explain its decisions in a way that aligns with human understanding. Knowledge Graphs play a key role in improving the interpretability of the AI by structuring knowledge in interconnected entities and relationships, enabling better decision-making and reasoning. This method also provides a robust framework for enhancing educational outcomes through personalized, adaptive learning paths that guide students in their educational journeys. The AI Tutor will dynamically adjust based on individual learner profiles, ensuring that every student receives a tailored, efficient learning experience. Our system’s explainability, a result of the integration of symbolic logic and deep learning, fosters trust and ensures that the AI’s decisions align with ethical standards, making it a reliable and equitable tool for educators and learners alike.

Open Source Licensing

Custom

Proposal Video

Placeholder for Spotlight Day Pitch-presentations. Video's will be added by the DF team when available.

  • Total Milestones

    4

  • Total Budget

    $50,000 USD

  • Last Updated

    11 Feb 2025

Milestone 1 - Project Kickoff & Requirements Gathering

Description

The first milestone focuses on the initiation of the project including the establishment of the project team finalizing the technical and functional requirements and setting the framework for development. This phase involves gathering input from the SNET/BGI community to ensure the project's objectives align with the educational goals and AI capabilities. Requirements will cover neural-symbolic reasoning models knowledge graph integration and system architecture.

Deliverables

Detailed system architecture document Prototype for neural-symbolic reasoning and knowledge graph integration Functional demonstration with basic user interactions User feedback report from initial prototype testing

Budget

$10,000 USD

Success Criterion

Prototype is completed with functional core features. Initial user testing provides constructive feedback on the system’s usability and logic.

Milestone 2 - Design & Prototype Development

Description

This milestone will focus on designing the system architecture and creating a prototype of the Educational AI Tutor. The prototype will demonstrate the core functionalities of the AI tutor including neural-symbolic reasoning basic Knowledge Graph (KG) integration and initial user interaction capabilities. The design will incorporate modular components that allow for the integration of various learning modules.

Deliverables

Detailed system architecture document Prototype for neural-symbolic reasoning and knowledge graph integration Functional demonstration with basic user interactions User feedback report from initial prototype testing

Budget

$12,000 USD

Success Criterion

Prototype is completed with functional core features. Initial user testing provides constructive feedback on the system’s usability and logic.

Milestone 3 - Development of Advanced Features & Refinement

Description

This phase will involve the development of advanced features including enhanced neural-symbolic reasoning multi-domain support and intelligent learning pathways. The integration of multiple Knowledge Graphs (KGs) for a more robust AI tutor will also be a key task. Additionally the user interface will be refined and performance optimizations will be implemented based on the feedback received from the prototype phase.

Deliverables

Advanced neural-symbolic reasoning engine Multi-domain Knowledge Graph integration Refined user interface and improved interaction design Optimization of system performance Feedback from ongoing user testing

Budget

$15,000 USD

Success Criterion

AI tutor demonstrates advanced reasoning capabilities across various domains. User interface is polished, and system performance meets project benchmarks. Continuous user feedback shows positive reception to enhancements.

Milestone 4 - Final Testing Documentation & Deployment

Description

The final milestone focuses on comprehensive testing including functional integration and user acceptance testing. Documentation for the system will be completed including technical manuals user guides and training materials. Once testing is complete the final version of the Educational AI Tutor will be deployed for production use with support plans in place for scaling and future enhancements.

Deliverables

Final system testing reports (functional integration user acceptance) Complete system documentation (technical user guides training) Deployment plan and operational support materials Final product available for production use

Budget

$13,000 USD

Success Criterion

All tests pass, and the system is deemed ready for production deployment. Documentation is complete and accurate, supporting end-users and developers. The system is deployed successfully, and initial users report satisfactory experience.

Join the Discussion (3)

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3 Comments
  • 0
    commentator-avatar
    Sky Yap
    Mar 9, 2025 | 12:11 PM

    The project could be improved by clearly defining the specific pain points—such as the lack of personalization and transparency in current AI tutors—with supporting case studies or statistics to underline these issues. Emphasizing the team's multidisciplinary expertise, along with clear success criteria (currently the milestone 1 and 2 are having same success criterias) and measurable evaluation metrics, will help showcase the project’s potential impact. Additionally, expanding on ethical guidelines, security protocols and scalability plans will address key concerns while a refined open source strategy with detailed licensing and community engagement plans can further strengthen the proposal. All the best!

    • 1
      commentator-avatar
      musondabemba
      Mar 11, 2025 | 3:42 PM

      I appreciate the time taken to review the proposal. This project is highly innovative and explores concepts that aren't always immediately familiar. While I understand the focus on areas for improvement, I also believe the proposal already outlines key aspects like pain points and ethical considerations. That said, Regarding the similarity between Milestone 1 and 2, this is intentional... The iterative approach ensures a strong foundational framework before progressing to more complex integrations. Milestone 1 focuses on the core neural-symbolic reasoning engine, while Milestone 2 expands its domain adaptability and personalization. This structured repetition is essential for refining the agent's generalization across diverse knowledge domains, which is a key innovation of this project.  Unlike conventional AI tutors, which often rely solely on neural or symbolic methods, this system bridges the gap by leveraging both. This allows for deeper contextual understanding, multi-hop reasoning, and adaptability across various subjects something traditional models struggle with. The project isn't just an incremental improvement; it's a paradigm shift in AI tutoring, ensuring personalization, transparency, and reasoning capabilities that go beyond existing solutions.I appreciate the feedback, but it's important to recognize that innovation sometimes requires unconventional methodologies. Thanks again for your input. 

  • 1
    commentator-avatar
    Devbasrahtop
    Feb 25, 2025 | 11:48 PM

    Awesome project. I am Looking forward to seeing how we can collaborate in the future. We proposed a similar idea but niched down to African Students 

    Upvoted by Project Owner

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