2. Literature Review
Al-Absi (2024) [
1], in his Master’s thesis, presents a detailed and highly relevant analysis of a business model specifically for an AI-powered idea marketplace. Using frameworks such as the Business Model Canvas, the study meticulously defines key components including value propositions, customer segments, revenue streams, and essential partnerships for such a platform. The research also identifies and proposes solutions for critical challenges like ensuring idea quality, fostering user trust, and creating a sustainable economic model. This work is directly foundational, providing a structured business perspective that aligns closely with the objectives of developing a specialized, collaborative innovation platform.
Chatterjee (2024) [
2] explores the practical application of AI-powered tools across the various stages of the software development life cycle (SDLC). The chapter details how AI enhances productivity and efficiency from initial requirements analysis to design, coding, testing, and maintenance. It highlights specific tools for tasks like automated code generation, intelligent bug detection, and optimized project management. This work provides a valuable perspective on the technical development process of modern software, though its focus is on the tools used to build applications rather than the user-facing AI functionalities of the final product itself.
Chowdhury (2024) [
3] investigates the security challenges and best practices in MERN stack applications, focusing on its layered architecture which, while flexible and scalable, presents unique vulnerabilities. Using qualitative insights from developers and security professionals in Bangladesh, the study identifies core practices such as JWT-based authentication, RBAC and ABAC for authorization, and AES and TLS for securing data both at rest and in transit. The research also stresses the value of secure coding, routine vulnerability assessments, and compliance with global standards like GDPR and CCPA. Emphasis is placed on embedding security throughout the development lifecycle to mitigate threats without sacrificing performance. Ultimately, Chowdhury presents a practical security framework for MERN developers and encourages future exploration into AI-driven defenses and evolving threat models.
Krutika Desai et al. (2022) [
4] investigated the development of a content-oriented social media platform named "Social", utilizing the MERN stack comprising MongoDB, ExpressJS, ReactJS, and NodeJS. Their research aimed to create a fully responsive web application that enables users to connect and share digital content (such as text, images, and GIFs) related to community, social, healthcare, and welfare services. The study focused on leveraging the JavaScript-based MERN stack to build a scalable and dynamic single-page application (SPA), integrating various APIs and tools to enhance functionality and user experience. This approach underscores the potential of modern web development technologies in facilitating efficient and interactive social networking platforms.
Falade (2024) [
5] provides a comprehensive analysis of how generative AI is reshaping traditional business models. The study explores the implications of AI on value creation, operational efficiency, and market dynamics, arguing that generative AI enables businesses to create hyper-personalized customer experiences and automate complex operational workflows. While the paper offers a strong strategic overview of AI’s broad economic impact, its focus remains on general business applications rather than specialized platforms. It does not specifically address the unique challenges of community-driven or purpose-driven marketplaces, such as those focused on sustainability innovation.
Goyal et al. (2024) [
6] examine the role of AI-powered tools in enhancing various stages of the software development lifecycle (SDLC). The authors detail how AI can be leveraged to automate tasks in requirements engineering, design, coding, and testing, thereby increasing productivity and reducing human error. The chapter provides a practical overview of existing AI tools and their direct benefits to software quality and development speed. This work is highly relevant as it underscores the technical foundations necessary for building and maintaining robust, scalable platforms like an AI-driven idea marketplace, even though it does not focus on the business or community aspects of such platforms.
In his foundational work, Democratizing Innovation, von Hippel (2005) [
7] establishes the principle that innovation is increasingly driven by users, not just producers. The book argues that users possess unique insights into their needs and, when equipped with appropriate "toolkits," can become powerful sources of novel ideas and solutions. While this work predates the widespread adoption of AI, it provides the core theoretical underpinning for idea marketplaces and collaborative platforms. It highlights the importance of empowering a community to ideate collectively—a principle that AI-powered tools can now accelerate and scale, even though the book itself does not cover these modern technologies.
Kiani and Kiani (2024) [
8] explore AI integration with the MERN stack (MongoDB, Express.js, React, Node.js) to create scalable, responsive, and intelligent web apps. Using GraphQL and Next.js, the stack supports personalized experiences, predictive behavior, biometric authentication, and automated API testing. The paper contrasts relational and NoSQL databases, emphasizing MongoDB’s synergy with AI for real-time personalization. It covers efficient state management (Redux, Hooks), Git workflows, and backend reliability with Node/Express, enabling modular, high-performing, and secure applications. While confirming MERN’s scalability and AI benefits, challenges like high traffic and AI ethics remain. The authors suggest future research on federated AI and enhanced security, positioning AI-powered MERN as a robust framework for next-gen web development.
Mishra, Kumar, and Sahoo (2021) [
9] provide a comprehensive overview of digital transformation driven by advanced Management Information Systems (MIS). The book highlights the critical role of scalable, cloud-based architecture and integrated digital platforms in modernizing organizational operations and enabling new data-driven business models. This work is highly relevant as it outlines the technological and strategic foundations necessary for building a robust, globally accessible platform like ThinkGreenly. It explains the architectural principles that support high-volume user interaction and data processing. The book’s perspective, however, is primarily centered on enterprise-level digital transformation for business efficiency and competitive advantage. It does not specifically address the unique challenges of building community-centric, non-commercial platforms, such as managing user-generated content at scale or integrating gamification to drive social engagement, which are core to a sustainability innovation hub.
Mohammad (2023) [
10] presents a comprehensive case study on the development of a full-stack e-commerce web application using the MERN (MongoDB, Express.js, React.js, Node.js) stack. The primary objective of the study was to design and implement a scalable, fully functional online store, demonstrating the practical application and advantages of this popular JavaScript-based technology stack. The author details the entire system architecture, from the component-based frontend built with React.js to the backend server logic handled by Node.js and Express.js. Key functionalities implemented include robust user authentication, dynamic product and category management, a persistent shopping cart, and secure payment processing integration. A significant contribution of this work is its practical demonstration of the MERN stack’s strengths for e-commerce, such as its unified JavaScript ecosystem which streamlines development, React’s efficiency in building interactive user interfaces, and the flexibility of MongoDB’s NoSQL database for managing complex product data. It also addresses critical challenges like application security and performance optimization. The resulting platform serves as a robust proof-of-concept, validating the MERN stack as a viable and efficient choice for building modern, feature-rich e-commerce applications. This work is particularly relevant for developers and organizations evaluating technology stacks for new web-based commercial platforms.
Mohammad (2023) [
11] investigates the MERN stack’s (MongoDB, Express.js, React.js, Node.js) applicability for food delivery platforms, combining theoretical analysis, practical implementation, and expert interviews from Finland, India, and Pakistan. The study highlights advantages like full JavaScript consistency, MongoDB’s flexible NoSQL database, Express.js’s efficient API management, React’s dynamic UI, and Node.js’s real-time processing. Using a Wolt case study, Mohammad demonstrates how these technologies enable real-time order tracking, secure payments, and responsive design. Challenges addressed include real-time synchronization, scalable architecture, and data security, with solutions like JWT, HTTPS, and cloud-based MongoDB. The thesis emphasizes user experience and business dynamics, showcasing MERN’s technical strengths and commercial viability for food delivery apps, while suggesting future directions like enhanced tracking, AI personalization, and ethical safeguards.
A study conducted by Nagothu et al. (2021) [
12] describes the design and development of an e-commerce web application using the MERN stack MongoDB, Express.js, React.js, and Node.js. The system is designed as a fully functional online shopping platform for t-shirts, featuring user authentication, product management, category creation, a shopping cart, and Stripe payment integration to ensure a seamless experience for both users and admins. The paper details the system’s frontend, backend, and database architecture, highlighting the advantages of e-commerce (broad product selection, convenience, price comparisons) while recognizing challenges such as security risks, delivery delays, and technological costs. By leveraging the MERN stack, the authors illustrate the creation of an efficient, scalable, and easy-to-maintain system. However, the paper points out that comparative analysis with other platforms and a deeper examination of security measures were not explored.
O’Regan’s (2021) [
13] book offers a foundational overview of the software business, covering essential topics from business models like SaaS to development methodologies and market entry strategies. The text serves as a comprehensive primer on the principles required to build and sustain a business centered around a software product. While not focused specifically on AI or idea marketplaces, it provides the essential business context for platform development, discussing core concepts like value proposition, customer acquisition, and monetization that are universally applicable to launching a successful cloud-based platform.
Paschek, Luminosu, and Draghici (2017) [
14] explore the foundational role of artificial intelligence in modern knowledge management systems. The work discusses how AI techniques, particularly Natural Language Processing (NLP) and expert systems, can be leveraged to capture, structure, and retrieve vast amounts of unstructured organizational knowledge, thereby enhancing decision-making and innovation. This provides a theoretical basis for platforms like ThinkGreenly, which function as specialized knowledge hubs for sustainability ideas. However, the book’s focus is primarily on internal, enterprise-level knowledge management to improve business processes. It does not delve into the dynamics of public-facing, user-driven idea marketplaces, nor the specific challenges of managing bias and fostering community engagement in an AI-powered collaborative environment. This leaves a gap for research into applying these foundational AI principles in a more open, purpose-driven context.
Perna, Petruzzelli, and Albino (2024) [
15] provide a strategic perspective on how AI enhances business models within digital marketplaces. Using the dynamic capabilities framework, they argue that AI is not merely a tool for operational efficiency but a core driver of value creation. The study details how AI enhances a firm’s ability to "sense" market changes, "seize" new opportunities, and "transform" existing operations. This perspective is valuable as it frames AI as a strategic asset for adaptation and innovation, though its focus is more on organizational strategy than on the specific functionalities or user-facing features of a collaborative platform.
Porter and Yang (2019) [
16] designed a RESTful IoT service using the MERN stack-MongoDB, Express.js, React.js, and Node.js. The system acts as a scalable gateway, enabling real-time communication between resource-constrained IoT devices and cloud infrastructure. MongoDB offers flexible data storage, Express.js defines RESTful API routes, and Node.js manages high-performance, non-blocking server-side processing. While React.js is part of the stack, it plays a minor role in the implementation. The architecture includes middleware for error handling, MongoDB connection utilities, and RESTful routes for GET and POST sensor data requests. Experimental results demonstrate sub-millisecond response times (0.36–0.89 ms), significantly outperforming Google’s 200 ms benchmark. The study highlights MERN’s efficiency and lightweight design for IoT-cloud integration, though it leaves edge computing, multi-gateway scalability, and complex data schemas for future research.
The integration of AI in healthcare enhances diagnostic accuracy, streamlines workflows, and boosts patient engagement. Reddy et al. (2025) [
17] present a web-based E-Health Center using the MERN stack, with features like appointment scheduling, a symptom analysis chatbot, and role-based dashboards. Addressing digital health challenges, the platform incorporates robust security measures achieving 99.8% protection against cyber threats. It scales efficiently, handling high user loads and showing a 42% increase in patient interaction and high satisfaction. While prior studies highlight the benefits of AI-powered tools and personalized care, challenges such as data privacy and scalability remain. Reddy et al. suggest future enhancements including AI-driven diagnostics, telemedicine, and blockchain-based security to align with broader healthcare technology trends. This research contributes to a practical and secure AI-driven healthcare platform, improving accessibility, efficiency, and patient satisfaction in digital health systems.
Rzepka (2024) [
18] investigates the strategic and managerial challenges inherent in operating digital marketplaces. The study moves beyond technical considerations to explore issues of governance, competition, data management, and the complexities of managing user communities within a platform economy. The author argues that long-term success depends not only on technology but also on robust strategic planning and effective community governance. This perspective provides a valuable non-technical counterpoint, highlighting the operational complexities and strategic foresight required to successfully manage a user-centric platform like an idea marketplace.
Shekhar et al. (2025) [
19] present Bid2Buy, a smart reselling platform built with the MERN stack (Firebase replacing MongoDB) and AI technologies like machine learning and computer vision. It tackles e-commerce issues such as fraud, incomplete transactions, and poor buyer-seller interactions through a secure, time-bound bidding model. Key features include AI-driven bid recommendations, product verification via computer vision, real-time updates with Firebase, and a 50% deposit to deter fake bids. The architecture combines React.js for smooth frontend interaction, Node.js and Express.js for efficient backend processing, and Firebase for real-time data synchronization. While Bid2Buy improves trust, engagement, and security, it lacks full integration with payment gateways and delivery systems, highlighting areas for future enhancement.
Valeri et al. (2024) [
20] propose a framework using AI and blockchain to automate and secure transactions in digital marketplaces, addressing issues of fraud and inefficient pricing. Their model, which includes an AI-driven pricing engine and a real-time fraud detection module, successfully achieved 98% accuracy in fraud detection and reduced transaction times by 30%. However, the study’s focus is primarily on transactional security and economic efficiency. It does not explore the use of AI for fostering community engagement or collaborative idea generation, a research gap that platforms like ThinkGreenly aim to fill by focusing on non-transactional, purpose-driven interaction.