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Agentic Workflows in Insurance Claim Processing

In 2025, agentic AI is transforming the insurance industry, enabling autonomous systems to perceive, reason, and act independently to achieve complex objectives. Insurers are heavily investing in these technologies to overcome legacy system limitations, deliver hyper-personalized customer experiences, and to capitalize on the $79.86 billion AI insurance market projected by 2032 . Central to this transformation is efficient claim processing. AI tools like natural language processing, image classification, and vector embedding help insurers effectively manage claim-related data. These capabilities generate precise catastrophe impact assessments, expedite claim routing with richer metadata, prevent litigation through better analysis, and minimize financial losses using more accurate risk evaluations. Because AI’s promises often sound compelling—but fall short when moving from experimentation to real-world production—this post explores how an AI agent can manage a multi-step claim processing workflow. In this workflow, the agent manages accident photos, assesses damage, and verifies insurance coverage to enhance process efficiency and improve customer satisfaction. This system employs large language models (LLMs) to analyze policy information and related documents provided by MongoDB Atlas Vector Search, with the outcomes stored in the Atlas database. Creating a work order for claim handlers The defining characteristic of AI agents, which is what sets them apart from simply prompting an LLM, is autonomy. The ability to be goal-driven and to operate without precise instructions makes AI agents powerful allies for humans, who can now delegate tedious tasks like never before. But each agent has a different degree of autonomy, and building such systems is a tradeoff between reliability and prescriptiveness. Since LLMs—which can be thought of as the agent's brain—tend to hallucinate and behave nondeterministically, developers need to be very cautious. Too much “freedom” can lead to unexpected outcomes. On the other hand, including too many constraints, instructions, or hardcoded steps defeats the purpose of building agents. To help agents understand their context, it is important to craft a prompt that describes their scope and goals. This is part of the prompt we’ve used for this exercise: "You are a claims handler assistant for an insurance company. Your goal is to help claim handlers understand the scope of the current claim and provide relevant information to help them make an informed decision. In particular, based on the description of the accident, you need to fetch and summarize relevant insurance guidelines so that the handler can determine the coverage and process the claim accordingly. Present your findings in a clear and extremely concise manner.” In addition to the definition of the tasks, it is also important to give instructions on the tools available to the agent and how to use them. Our system is pretty basic, featuring only two tools: Atlas Vector Search and write to the database (see Figure 1). Figure 1. Agentic workflow. The Vector Search step maps the vectorized image description to the vectorized related policy, which also contains the description of the coverages for that class of accident. The policy and the related coverages are used by the agent to figure out the recommended next actions and assign a work order to a claim handler. This information is persisted in the database using the second tool, write to the database. Figure 2. Claim handler workflow. What does the future hold? In our example, the degree of autonomy is quite low, and for the agent, it boils down to deciding when to use which tool. In real-life scenarios, such systems, even if simple, can save a lot of manual work. They eliminate the need for claim handlers to manually locate related policies and coverages, a cumbersome and error-prone process that involves searching multiple systems, reading lengthy PDFs, and summarizing all their findings. Agents are still in their infancy and require handholding, but they have the potential to act with a degree of autonomy never before seen in software. AI agents can reason, perceive, and act—and their performance is improving at a breakneck pace. The insurance industry (like everybody else!) needs to make sure it’s ready to start experimenting and to embrace change. This can only happen if systems and processes are aligned on one imperative: “ make the data easier to work with .” To learn more about integrating AI into insurance systems with MongoDB, check out the following resources: The MongoDB Ebook: Innovate With AI: The Future Enterprise The MongoDB Blog: AI-Powered Call Centers: A New Era of Customer Service The MongoDB Youtube Channel: Unlock PDF Search in Insurance with MongoDB & SuperDuperDB

May 21, 2025
Home

Innovating with MongoDB | Customer Successes, May 2025

Welcome back to MongoDB’s bi-monthly roundup of customer success stories! In this series, we’ll share inspirational examples of how organizations around the globe are working with MongoDB to succeed and address critical challenges in today’s multihyphenate (fast-paced, ever-evolving, always-on) world. This month’s theme—really, it could be every month’s theme—is adaptability. It’s almost cliché but true: adaptability has never been more essential to business success. Factors like the increasing amount of data in the world (currently almost 200 zettabytes) and the rise of AI means that organizations everywhere have to adapt to fundamental changes—in what work looks like, how software is developed and managed, and what end-users expect. So this issue of “Innovating With MongoDB” includes stories of MongoDB customers leveraging our database platform’s flexible schema, seamless scalability, and fully integrated AI capabilities to adapt to what’s next, and to build the agile foundations needed for real-time innovation and dynamic problem-solving. Read on to learn how MongoDB customers like LG U+, Citizens Bank, and L’Oreal aren’t just adapting to change—they’re leading it. LG U+ LG U+ , a leader in mobile, internet, and AI transformation, operates one of Korea's largest customer service centers, handling 3.5 million calls per month. To tackle inefficiencies and improve consultation quality, LG U+ developed Agent Assist on MongoDB Atlas . Leveraging MongoDB Atlas Vector Search , LG U+ integrates vector and operational data, unlocking real-time insights such as customer intent detection and contextual response suggestions. Within four months, LG U+ increased resource efficiency by 30% and reduced processing time per call by 7%, resulting in smoother interactions between agents and customers. By paving the way for intelligent AI solutions, LG U+ can deliver more reliable and personalized experiences for its customers. Citizens Bank Citizens Bank , a 200-year-old financial institution, undertook a significant technological transformation to address evolving fraud challenges. In 2023, the bank initiated an 18-20 month overhaul of its fragmented fraud management systems, shifting from legacy, batch-oriented processes to a comprehensive, cloud-based platform on MongoDB Atlas on AWS . This transition enables real-time fraud detection, significantly reducing losses and false positives. Importantly, the new platform provides Citizens Bank customers with enhanced security and a smoother, more reliable banking experience. With Atlas’ flexible schema and cloud-based capabilities, Citizens Bank can quickly implement new fraud prevention strategies in minutes instead of weeks. The bank is now experimenting with MongoDB Atlas Search and generative AI to improve predictive accuracy and stay ahead of emerging fraud patterns. Through our partnership with The Stack, learn how our customers are achieving extraordinary results with MongoDB. This exclusive content could spark the insights you need to drive your business forward. BioIntelliSense BioIntelliSense is revolutionizing patient monitoring. Their BioButton® wearable device continuously captures vital signs and transmits the data to the BioDashboard™. This platform allows clinicians to monitor patients, access patient information, and receive near real-time alerts about potential medical conditions. After outgrowing its legacy SQL database, BioIntelliSense reengineered the end-to-end architecture of BioDashboard™ using MongoDB Atlas on AWS, Atlas Search, and MongoDB Time Series Collections . The new system now scales to support hundreds of thousands of concurrent patients while ensuring 100% uptime. By optimizing their use of MongoDB 8.0 , BioIntelliSense also identified 25% of their spend that can be redirected to support future innovation. Enpal Enpal , a German start-up, is addressing climate change by developing one of Europe's largest renewable energy networks through solar panels, batteries, and EV chargers. Beyond infrastructure, Enpal fosters a community interconnected through data from over 65,000 devices. By utilizing MongoDB Atlas with native time series collections, Enpal efficiently manages 200+ real-time data streams from these devices. This innovative approach forms a virtual power plant that effectively supports the energy transition and is projected to reduce processing costs by nearly 60%. MongoDB enables Enpal to manage large data volumes cost-effectively while providing precise, real-time insights that empower individuals to make informed energy decisions. Video spotlight: L’Oreal Before you go, be sure to watch one of our recent customer videos featuring the world's largest cosmetics company, L’Oreal. See why L'Oréal's Tech Accelerator team says migrating to MongoDB Atlas was like “switching from a family car to a Ferrari.” Want to get inspired by your peers and discover all the ways we empower businesses to innovate for the future? Visit our Customer Success Stories hub to see why these customers, and so many more, build modern applications with MongoDB.

May 20, 2025
Applied

Unlocking Literacy: Ojje’s Journey With MongoDB

In the rapidly evolving landscape of education technology, one startup is making waves with a bold mission to revolutionize how young minds learn to read. Ojje is redefining literacy education by combating one of the most pressing issues in education today—reading proficiency. To do so, Ojje leverages groundbreaking technology to ensure every child can access the world of stories, at their own pace, in their own language. That transformative change is powered by a strategic partnership with MongoDB . Meet Ojje: A vision beyond words From electric cars to diabetes apps, Adrian Chernoff has been at the forefront of breakthrough innovations. Now, as the Founder and CEO of Ojje , he's channeling his passion for invention and entrepreneurship into something deeply personal and universally important—literacy. At its core, Ojje is an adaptive literacy learning platform that offers stories in 15 different reading levels, available in both English and Spanish. Grounded in the science of reading, it features elements like read-aloud functionality and dyslexia-friendly fonts to engage every learner. Ojje is not just a tool—it’s a gateway to personalized literacy education. Ojje's mission is to reach every learner by providing materials that are leveled, accessible, and engaging. By doing so, Ojje aims to vastly improve reading outcomes across K-12 education. Solving a literacy crisis with innovative solutions With literacy rates in the U.S. alarmingly low—almost 70% of low-income fourth grade students cannot read at a basic level according to the National Literacy Institute— Ojje's mission couldn't be more crucial. Chernoff and his team developed their platform in response to teachers' complaints about the stark lack of appropriate reading materials available to students. Schools needed a tool that could effortlessly cater to varying reading abilities within a single classroom. Ojje fills this gap by offering a dynamic platform that adapts to individual students’ needs, allowing educators to personalize instruction. The potential to genuinely connect with every student is realized through Ojje’s innovative use of technology. Powered by MongoDB At the root of every great tech innovation is an infrastructure that allows it to flourish. For Ojje, MongoDB is that foundation. As a startup, speed and adaptability are vital, and MongoDB’s flexible document model provides just that. It allows the Ojje team to launch rapidly, scale efficiently, and to handle a variety of data structures seamlessly—all without the cumbersome need for rigid schemas. “MongoDB handles everything from structured data to student performance tracking, without unnecessary overhead,” Chernoff said. “The platform scales with our needs, and the built-in monitoring tools give our team confidence as usage grows.” Why MongoDB? For Ojje, it was about the flexibility to handle educational content, ensure secure data handling for students, and to offer scalability for thousands of classrooms. MongoDB proved to be the perfect fit, offering a balance of adaptability and comprehensive data management. Working with MongoDB also offered Ojje access to the MongoDB for Startups program, providing essential Atlas credits, valuable technical resources, and access to our vast network of partners. This support played a crucial role during Ojje’s developmental stages and early launch, helping to position the company for successful growth and innovation. What’s next for Ojje? With an eye towards broadening their impact, the Ojje team plans to expand its library to include STEM materials and engaging biographies, alongside enhancing existing content. Additionally, Ojje will introduce tools for educators to track each reader’s progress in real time, further personalizing instruction. “We believe every student deserves the chance to love reading—and every teacher deserves tools that make that possible,” Chernoff said. “That’s why we’re building Ojje: To make literacy more accessible, engaging, and joyful. When students can learn to read and read to learn, it transforms not only their K–12 experience but their entire future.” In an exciting development, Ojje will soon unveil Ojje at Home. This initiative aims to extend literacy support beyond the classroom, providing families with valuable resources to join their children on the journey to literacy. Building a future where every child reads Ojje's combination of strategic foresight, cutting-edge technology, and genuine passion for educational impact make it a standout player in the education sector. By partnering with MongoDB, the company has created a robust, adaptive platform that not only meets the demands of today’s classrooms but is poised to address future literacy challenges. As the digital landscape continues to evolve, so must our methods of teaching and learning. Ojje is leading the charge, ensuring that every child has the opportunity to love reading and reap the lifelong benefits it brings. Interested in MongoDB but not sure where to start? Check out our quick start guides for detailed instructions on deploying and using MongoDB.

May 15, 2025
Applied

MongoDB Atlas is Now Available as a Microsoft Azure Native Integration

Since 2019, MongoDB and Microsoft Azure have striven to make it easy for enterprises to launch cutting-edge, modern applications. Key to this effort—and to enabling organizations everywhere to make an impact with AI—has been our work integrating MongoDB Atlas with the Microsoft Intelligent Data Platform. Our aim is to give developers a streamlined, fully integrated experience that they’ll love to use. So I’m very happy to announce the public preview of MongoDB Atlas as an Azure Native Integration (ANI). This latest step in MongoDB’s collaboration with Microsoft means that enterprise customers will be able to easily create and manage MongoDB Atlas organizations while also consolidating billing for Atlas within the Azure console, empowering them to interact with MongoDB Atlas as if it were a first-party service from Azure. I am also pleased to announce MongoDB Atlas on Azure Service Connector, one of several new integrations set to follow directly from the MongoDB Atlas as an Azure Native Integration announcement. Azure Service Connector makes it easy for developers to securely connect Azure compute services to backing services like databases, now including MongoDB Atlas. MongoDB’s mission has always been to empower our customers to move fast with data. With MongoDB Atlas as a native integrated service to Azure, we’re unlocking new possibilities for organizations to harness real-time insights, scale globally, and to accelerate their AI-driven roadmaps—all while reducing operational overhead. With Azure’s robust ecosystem of AI and analytics tools, teams can build and innovate with greater confidence, ultimately transforming how they serve their customers and shaping the future of software. "Integrating MongoDB Atlas as a Microsoft Azure Native Integration marks a significant milestone in our partnership with MongoDB. This integration empowers our customers to seamlessly manage their MongoDB Atlas resources within the Azure ecosystem, including unified billing and robust security features,” said Sandy Gupta, Vice President, Global Software Companies Ecosystem, Microsoft. “By simplifying operations and reducing technical complexity, we are enabling organizations to innovate faster and deliver exceptional value to their customers." Why this matters: Accelerated development & seamless operations This streamlined approach reduces technical and organizational complexity, with organizations benefiting from integrated billing, consolidated support, and simplified deployment. Connecting a database platform to external services typically requires juggling multiple portals, credentials, and security configurations. Starting today, with MongoDB Atlas as an Azure Native Integration, organizations can: Create and manage Atlas organizations directly within Azure, including the Azure Portal UI and CLI/SDK/ARM. Enjoy consolidated billing for both Azure and MongoDB Atlas. Access Azure’s AI services, data analytics, and more—all while harnessing the flexible, scalable power of MongoDB Atlas. It’s worth dwelling for a minute on the simplified onboarding and billing component of ANI, one of the biggest benefits of this integration for customers. As an Azure Native Integration, users can create their MongoDB Atlas organization and select their company billing plan directly from Azure, automatically applying the Azure billing plan to the Atlas Organization. This is made possible by leveraging Azure's comprehensive suite of billing and cost management tools, providing enterprises with enhanced control and visibility over their expenditures. Benefits of using MongoDB Atlas and Microsoft Azure together This latest MongoDB Atlas integration on Azure builds on a strong foundation of technical collaboration. Together, MongoDB Atlas on Azure already delivers a powerful set of integrations that offer customers and development teams a wide range of benefits, including: Unified workloads: MongoDB Atlas offers a single platform that supports a range of workloads, from transactional, time series, and search, to real-time analytics. With native integration on Azure, teams can quickly build across a wide variety of data-driven use cases. This can range from e-commerce transactions to generative AI applications, all without any re-architecting. Streamline AI integration: Accelerate machine learning (ML) workflows and generative AI projects with minimal configuration. Organizations can connect to Azure AI Foundry, Azure OpenAI Service, Microsoft Fabric, or Azure Databricks for advanced analytics, and MongoDB Atlas automatically scales in response to dynamic workloads. End-to-end security and compliance: MongoDB Atlas integrates with Microsoft Entra ID (formerly Azure AD), Azure Key Vault, and Azure private link for secure single sign-on, encryption key management, and private networking, respectively. With Microsoft Purview, organizations can meet stringent governance and compliance requirements, and teams remain agile without sacrificing enterprise-grade security. Scalability and global footprint: Azure’s extensive regional coverage enables organizations to deploy MongoDB Atlas in 40+ Azure regions worldwide. This ensures data remains close to users for low-latency, high-performance applications. How to deploy MongoDB Atlas as an Azure Native Integration 1. Search for MongoDB Atlas in the Azure Portal and the Azure Marketplace. 2. Create a MongoDB Atlas Organization and choose an Azure billing plan. That’s it! You’ve successfully created an Atlas Organization. From your new Atlas Organization, you can start taking advantage of other Azure services already integrated into MongoDB Atlas: Configure security and network settings using existing Azure Virtual Networks and Azure Private Link, as required. Begin building AI capabilities into applications by connecting to Azure AI Foundry, Azure Databricks, or Microsoft Fabric. Get started with deploying MongoDB Atlas as an Azure Native Integration through our quick start guide .

May 14, 2025
News

OrderOnline: AI Improves Conversion Rate by 56% with MongoDB

Established by Ordivo Group in 2018, OrderOnline has quickly become a driving force behind Indonesia’s thriving social commerce market. OrderOnline offers an end-to-end solution for organizations and individuals selling on social platforms like Facebook Marketplace, typically through social ads, landing pages, and storefronts. OrderOnline built its social commerce platform on the MongoDB Community Edition , and later migrated to MongoDB Atlas in 2022. The platform provides everything from managing orders to handling logistics for companies and individuals selling on social platforms. It addresses common social commerce pain points, such as complex logistics, failed deliveries, and unmanageable order processing due to scale. Speaking at MongoDB.local Jakarta 2024 , Wafda Mufti, Vice President of Technology for Ordivo Group, explained how his slogan—“Simple Input, High Accuracy”—drove OrderOnline to become one of Indonesia’s leading social commerce companies. “We have sellers using storefronts, landing pages, and checkout forms. Thanks to MongoDB's flexibility, we can manage these unpredictable business processes. We even store our front-end structure in MongoDB,” said Mufti. “Thanks to MongoDB, we can ensure we have the highest quality of data.” Mufti also shared how the company is using MongoDB Atlas Search and MongoDB Atlas Vector Search to power innovative search and AI use cases. Scaling social commerce with MongoDB Atlas Five years after its launch, OrderOnline had grown to 40,000 users and was handling 1.5 million transactions each month. This fast growth led to challenges, particularly around managing data at scale and ensuring high success rates for sellers. Most of OrderOnline’s users drive orders by using a wide range of sources. These include social ads, landing pages, and storefronts. Many of OrderOnline’s orders are handled via WhatsApp through Click to WhatsApp Ads (CTWA). Initially, managing orders via platforms like WhatsApp was feasible. However, as social commerce became more popular, the volume of orders increased, which quickly became overwhelming. Furthermore, for large sellers who do not handle their own products, OrderOnline had to manage order packing and shipping, as well as managing returns. “We were overwhelmed with orders, but we wanted to manage our SLAs,” said Mufti. “We wanted to ensure products were well-delivered.” MongoDB Atlas’s flexibility has enabled OrderOnline to manage unpredictable business processes, and to efficiently handle various complex tasks associated with order management and logistics. Because MongoDB Atlas is designed for fast iteration, it enables OrderOnline to swiftly adapt its platform in response to changing business needs and user demands. MongoDB Atlas also supports high scalability. This empowers OrderOnline to manage a growing user base and increasing transaction volumes without compromising performance. Additionally, MongoDB Atlas's reliability under high transactional loads ensures that OrderOnline can maintain quick response times—a core part of their SLA. This is critical for maintaining the agility needed in the dynamic world of social commerce. “We have a monitoring system that triggers alarms if response times fall below one second,” noted Mufti. Another critical SLA that OnlineOrder tracks is the delivery success rate. Previously, deliveries were only successful 94% of the time. Using MongoDB Atlas, OrderOnline built OExpress, a service that sellers can use to customize the number of delivery attempts based on specific service agreements. An upper limit cap of up to five delivery attempts is also mandated. OExpress closely tracks delivery attempts data. This ensures packages are delivered and minimizes returns and damages. “Thanks to MongoDB, we have achieved a success rate of 98.4%,” said Mufti. “We can manage multiple attempts to deliver to the customers, so sellers don’t have to worry about dealing with delivery issues anymore when using a marketplace.” Beyond deliveries, OrderOnline identified seamless search and customer support integrations as key operations that MongoDB could enhance. AI and search: conversion rates jump by 56% As OrderOnline’s business grew, scalability created specific challenges with CTWAs. Particularly, OrderOnline’s platform struggled to manage and make sense of the growing volume of inconsistent data types it was receiving, such as location, postal codes, and product details—accurate input of data is vital to ensuring orders are being processed and delivered. “People want [to be able to input] freeform text. They want things to be simple and easy, and not be restricted by rigid formats,” said Mufti. “But we still have to ensure data accuracy.” One of the standout features that helped OrderOnline improve search accuracy and management is MongoDB Atlas Search . Fuzzy search in MongoDB Atlas Search can handle typo errors when searching for districts. For example, if a user types “Surabaya,” Atlas Search will still fetch results for “Surabaya”. Furthermore, synonyms in MongoDB Atlas Search can handle shortened names for provinces and districts in Indonesia. For example, “Jabar” for Jawa Barat or “Jateng” for Jawa Tengah. Acronyms are also handled. “Because there’s AI in the background, there’s no need to manually input zip codes for example. Our engine can search for it,” said Mufti. “Someone clicks, then places an order, fills out the form, and it goes straight into our order management system, which supports fuzzy search.” As OrderOnline grew, it also needed to increase customer support with 24/7 availability and fast response times. MongoDB Atlas Vector Search supported the development of a seamless and user-friendly interface with the creation of an AI Chatbot. This chatbot provides sellers with ease in managing customer interactions, checking stock availability, and calculating shipping costs. “If the ad contains a WhatsApp link, it will be directly managed by the chatbot. The chatbot even checks shipping costs, compares prices, and shows how much it would cost if you purchased five items,” explained Mufti. “The AI handles requests for photos, checks stock availability, and much more. And once a deal is closed, it goes directly into our order management system.” Before the creation of the AI chatbot with MongoDB Atlas Vector Search, the WhatsApp conversion rate was 50%. Out of 100 interactions, 50 would successfully close the deal. With the implementation of AI, this rate has increased to 78%. Building on these successes, OrderOnline is now looking at further business and geographic expansion supported by MongoDB’s global reach, with the aim to help more sellers throughout Indonesia make the best out of social commerce. Visit the MongoDB Atlas Learning Hub to boost your MongoDB skills. To learn more about MongoDB Atlas Search, visit our product page . Get started with Atlas Vector Search today through our quick start guide .

May 13, 2025
Artificial Intelligence

How MongoDB and Google Cloud Power the Future of In-Car Assistants

The automotive industry is evolving fast: electrification, the rise of autonomous driving, and advanced safety systems are reshaping vehicles from the inside out. But innovation isn’t just happening to the drivetrain. Drivers (and passengers) now expect more intelligent, intuitive, and personalized experiences whenever they get into a car. That’s where things get tricky. While modern cars are packed with features, many of them are complex to use. Voice assistants were supposed to simplify things, but most still only handle basic tasks, like setting navigation or changing music. As consumers’ expectations of technology grow, so does pressure on automakers. Standing out in a competitive market, accelerating time to market, and managing rising development costs—all while delivering seamless digital experiences—is no small task. The good news? Drivers are ready for something better. According to a SoundHoundAI study , 79% of drivers in Europe would use voice assistants powered by generative AI. And 83% of those planning to buy a car in the next 12 months say they’d choose a model with AI features over one without. Gen AI is transforming voice assistants from simple command tools into dynamic copilots—able to answer questions, offer insights, and adapt to each user. At CES 2025, we saw major players like BMW, Honda, and HARMAN pushing the boundaries of AI-driven car assistants. To truly make these experiences personalized, you need the right data infrastructure. Real-time signals from the car, user preferences, and access to unstructured content like manuals and FAQs are essential for building truly intelligent systems. By combining gen AI with powerful data infrastructure, we can create more responsive, smarter in-car assistants. With flexible, scalable data access and built-in vector search, MongoDB Atlas is an ideal solution. Together with partners like Google Cloud, MongoDB is helping automotive companies innovate faster and deliver better in-car experiences. MongoDB as the data layer behind smarter assistants Building intelligent in-car assistants isn't just about having cutting-edge AI models—it’s about what feeds them. A flexible, scalable data platform is the foundation. To deliver real-time insights, personalize interactions, and evolve with new vehicle features, automakers need a data layer that can keep up. MongoDB gives developers the speed and simplicity they need to innovate. Its flexible document model lets teams store data the way applications use it—without rigid schemas or complex joins. That means faster development, fewer dependencies, and less architectural friction. Built-in capabilities like time series, full-text search, and real-time sync mean fewer moving parts and faster time to market. And because MongoDB Atlas is built for scale, availability, and security, automakers get the enterprise-grade reliability they need. Toyota Connected , for example, relies on MongoDB Atlas to power its Safety Connect platform across millions of vehicles, delivering real-time emergency support with 99.99% availability. But what really sets MongoDB apart for gen AI use cases is the way it handles data. AI workloads thrive on diverse, often unstructured inputs—text, metadata, contextual signals, vector embeddings. MongoDB’s document model handles all of it, side by side, in a single, unified platform. That’s why companies like Cognigy use MongoDB to power leading conversational AI platforms that manage hundreds of queries per second across multiple channels and data types. With Atlas Vector Search , development teams in the automotive industry can bring semantic search to unstructured data like manuals, support docs, or historical interactions. And by keeping operational, metadata, and vector data together, MongoDB makes it easier to deploy and scale gen AI apps that go beyond analytics and actually transform in-car experiences. MongoDB is already widely adopted across the automotive industry, powering innovation from the factory floor to the finish line . With its ability to scale and adapt to complex, evolving needs, MongoDB is helping automakers accelerate digital transformation and deliver next-gen in-car experiences. Architecture that drives intelligence at scale To bring generative AI into the driver’s seat, we designed an architecture that shows how these systems can work together in the real world. At the core, we combined the power of MongoDB Atlas with Google Cloud’s AI capabilities to build a seamless, scalable solution. Google Cloud powers speech recognition and language understanding, while MongoDB provides the data layer with Atlas Database and Atlas Vector Search . MongoDB has also worked with PowerSync to keep vehicle data in sync across cloud and edge environments. Imagine you're driving, and a red light pops up on your dashboard. You’re not sure what it means, so you ask the in-car assistant, “What is this red light on my dashboard?” The assistant transcribes your question, checks the real-time vehicle signals to identify the issue, and fetches relevant guidance from your car’s manual. It tells you what the warning means, whether it’s urgent, and what steps you should take. If it’s something that needs attention, it can suggest adding a service stop to your route. Or maybe switch your dashboard view to show more details. All of this happens through a natural voice interaction—no menus, no guesswork. Figure 1. A gen AI in-car assistant in action. Under the hood, this flow brings together several key technologies. Google Cloud’s Speech-to-Text and Text-to-Speech APIs handle the conversation. Document AI breaks the car manual into smaller, searchable chunks. Vertex AI generates text embeddings and powers the large language model. All of this connects to MongoDB Atlas, where Atlas Vector Search retrieves the most relevant content. Vehicle signals are kept up to date using PowerSync, which enables real-time, bidirectional data sync. And, by using the Vehicle Signal Specification (VSS) from COVESA, we’re following a widely adopted standard that makes it easy to expand and integrate with more systems down the road. Figure 2. Reference architecture overview. This is just one example of how flexible, future-ready architecture can unlock powerful, intuitive in-car experiences. Reimagining the driver experience Smarter in-car assistants start with smarter architectures. As generative AI becomes more capable, the real differentiator is how well it connects to the right data—securely, in real time, and at scale. With MongoDB Atlas, automakers can accelerate innovation, simplify architecture complexity, and cut development costs to deliver more intuitive, helpful experiences. It’s not just about adding features—it’s about making them work better together, so drivers get real value from the technology built into their cars. Learn how to power end-to-end value chain optimization with AI/ML, advanced analytics, and real-time data processing for innovative automotive applications. Visit our manufacturing and automotive web page. Want to get hands-on experience? Explore our GitHub repository for an in-depth guide on implementing this solution.

May 13, 2025
Home

Capgemini & MongoDB: Smarter AI and Data for Business

AI is reshaping the way enterprises operate, but one fundamental challenge still exists: Most applications were not built with AI in mind. Traditional enterprise systems are designed for transactions, not intelligent decision-making, making it difficult to integrate AI at scale. To bridge this gap, MongoDB and Capgemini are enabling businesses to modernize their infrastructure, unify data platforms, and power AI-driven applications. This blog explores the trends driving the AI revolution and the role that Capgemini and MongoDB play in powering AI solutions. The Challenge: Outdated infrastructure is slowing AI innovation In talking to many customers across industries, we have heard the following key challenges in adopting AI: Data fragmentation: Organizations have long struggled with siloed data, where operational and analytical systems exist separately, making it difficult to unify data for AI-driven insights. In fact, according to the Workday Global survey , 59% of C-suite executives said their organizations' data is somewhat or completely siloed, which results in inefficiencies and lost opportunities. Moreover, AI workloads such as retrieval-augmented generation (RAG), semantic search , and recommendation engines require vector databases, yet most traditional data architectures fail to support these new AI-driven capabilities. Lack of AI-ready data infrastructure: The lack of AI-ready data infrastructure forces developers to work with multiple disconnected systems, adding complexity to the development process. Instead of seamlessly integrating AI models, developers often have to manually sync data, join query results across multiple platforms, and ensure consistency between structured and unstructured data sources. This not only slows down AI adoption but also significantly increases the operational burden. The solution: AI-Ready data infrastructure with MongoDB and Capgemini Together, MongoDB and Capgemini provide enterprises with the end-to-end capabilities needed to modernize their data infrastructure and harness AI's full potential. MongoDB provides a flexible document model that allows businesses to store and query structured, semi-structured, and unstructured data seamlessly, a critical need for AI-powered applications. Its vector search capabilities enable semantic search, recommendation engines, RAG, and anomaly detection, eliminating the need for complex data pipelines while reducing latency and operational overhead. Furthermore, MongoDB’s distributed and serverless architecture ensures scalability, allowing businesses to deploy real-time AI workloads like chatbots, intelligent search, and predictive analytics with the agility and efficiency needed to stay competitive. Capgemini plays a crucial role in this transformation by leveraging AI-powered automation and migration frameworks to help enterprises restructure applications, optimize data workflows, and transition to AI-ready architectures like MongoDB. Using generative AI, Capgemini enables organizations to analyze existing systems, define data migration scripts, and seamlessly integrate AI-driven capabilities into their operations. Real-world use cases Let's explore impactful real-world use cases where MongoDB and Capgemini have collaborated to drive cutting-edge AI projects. AI-powered field operations for a global energy company: Workers in hazardous environments, such as oil rigs, previously had to complete complex 75-field forms, which slowed down operations and increased safety risks. To streamline this process, the company implemented a conversational AI interface, allowing workers to interact with the system using natural language instead of manual form-filling. This AI-driven solution has been adopted by 120,000+ field workers, significantly reducing administrative workload, improving efficiency, and enhancing safety in high-risk conditions. AI-assisted anomaly detection in the automotive industry: Manual vehicle inspections often led to delays in diagnostics and high maintenance costs, making it difficult to detect mechanical issues early. To address this, an automotive company implemented AI-powered engine sound analysis, which used vector embeddings to identify anomalies and predict potential failures before they occurred. This proactive approach has reduced breakdowns, optimized maintenance scheduling, and improved overall vehicle reliability, ensuring cost savings and enhanced operational efficiency. Making insurance more efficient: GenYoda, an AI-driven solution developed by Capgemini, is revolutionizing the insurance industry by enhancing the efficiency of professionals through advanced data analysis. By harnessing the power of MongoDB Atlas Vector Search, GenYoda processes vast amounts of customer information including policy statements, premiums, claims histories, and health records to provide actionable insights. This comprehensive analysis enables insurance professionals to swiftly evaluate underwriters' reports, construct detailed health summaries, and optimize customer interactions, thereby improving contact center performance. Remarkably, GenYoda can ingest 100,000 documents within a few hours and deliver responses to user queries in just two to three seconds, matching the performance of leading AI models. The tangible benefits of this solution are evident; for instance, one insurer reported a 15% boost in productivity, a 25% acceleration in report generation—leading to faster decision-making—and a 10% reduction in manual efforts associated with PDF searches, culminating in enhanced operational efficiency. Conclusion As AI becomes operational, real-time, and mission-critical for enterprises, businesses must modernize their data infrastructure and integrate AI-driven capabilities into their core applications. With MongoDB and Capgemini, enterprises can move beyond legacy limitations, unify their data, and power the next generation of AI applications. For more, watch this TechCrunch Disrupt session by Steve Jones (EVP, Data-Driven Business & Gen AI at Capgemini) and Will Shulman (former VP of Product at MongoDB) to learn about more real world use cases. And discover how Capgemini and MongoDB are driving innovation with AI and data solutions.

May 8, 2025
Artificial Intelligence

Reimagining Investment Portfolio Management with Agentic AI

Risk management in capital markets is becoming increasingly complex for investment portfolio managers. The need to process vast amounts of data—from real-time market to unstructured social media data—demands a level of flexibility and scalability that traditional systems struggle to keep up with. AI agents —a type of artificial intelligence that can operate autonomously and take actions based on goals and real-world interactions—are set to transform how investment portfolios are managed. According to Gartner, 33% of enterprise software applications will include agentic AI by 2028, up from less than 1% in 2024. At least 15% of day-to-day work decisions are being made autonomously through AI agents. 1 MongoDB empowers AI agents to effectively transform the landscape of investment portfolio management. By leveraging the combination of large language models (LLMs), retrieval-augmented generation (RAG), and MongoDB Atlas Vector Search , AI agents are enabled to analyze vast financial datasets, detect patterns, and adapt in real time to changing conditions dynamically. This advanced intelligence elevates decision-making and empowers portfolio managers to enhance portfolio performance, manage market risks more effectively, and perform precise asset impact analysis. Intelligent investment portfolio management Investment portfolio management is the process of selecting, balancing, and monitoring a mix of financial assets—such as stocks, bonds, commodities, and derivatives—to achieve a higher return on investment (ROI) while managing risk effectively and proactively. It involves thoughtful asset allocation, diversification to mitigate market volatility, continuous monitoring of market conditions, and the performance of underlying assets to stay aligned with investment objectives. To stay relevant today, investment portfolio management requires the integration of diverse unstructured alternative data like financial news, social media sentiment, and macroeconomic indicators, alongside structured market data such as price movements, trading volumes, index, spreads, and historical execution records. This complex data integration presents a new level of sophistication in portfolio analytics, as outlined in Figure 1. It requires a flexible, scalable, unified data platform that can efficiently store, retrieve, and manage such diverse datasets, and pave the way for building next-gen portfolio management solutions. Figure 1. Investment portfolio analysis Incorporating MongoDB’s flexible schema accelerates data ingestion across various data sources—such as real-time market feeds, historical performance records, and risk metrics. New portfolio management solutions enabled with alternative data supports more intelligent decision-making and proactive market risk mitigation. This paradigm shift realizes deeper insights, enhances alpha generation, and refines asset reallocation with greater precision, underscoring the critical role of data in intelligent portfolio management. How MongoDB unlocks AI-powered portfolio management AI-powered portfolio asset allocation has become a desirable characteristic of modern investment strategies. By leveraging AI-based portfolio analysis, portfolio managers gain access to advanced tools that provide insights tailored to specific financial objectives and risk tolerances. This approach optimizes portfolio construction by recommending an alternate mix of assets—ranging from equities and bonds to ETFs and emerging opportunities—while continuously assessing the evolving market conditions. Figure 2 illustrates a proposed workflow for AI-powered investment portfolio management that brings diverse market data, including stock price, volatility index (VIX), and macroeconomic indicators such as GDP, interest rate, and unemployment rate, into an AI analysis layer to generate actionable and more intelligent insights. Figure 2. AI-powered investment portfolio management MongoDB’s versatile document model unlocks a more intuitive way for the storage and retrieval of structured, semi-structured, and unstructured data. This is aligned with the way developers structure the objects inside the applications. In capital markets, time series are often used to store time-based trading data and market data. MongoDB time series collections are optimal for analyzing data over time, they are designed to efficiently ingest large volumes of market data with high performance and dynamic scalability. Discovering insights and patterns from MongoDB time series collections is easier and more efficient due to faster underlying ingestion and retrieval mechanisms. Taking advantage of MongoDB Atlas Charts' business intelligence dashboard and evaluating advanced AI-generated investment insights, portfolio managers gain access to sophisticated capabilities that integrate high-dimensional insights derived from diverse datasets, revealing new patterns that can lead to enhanced decision-making for alpha generation and higher portfolio performance. MongoDB Atlas Vector Search plays a critical role inthe analysis of market news sentiment by enabling context-aware retrieval of related news articles. Traditional keyword-based searches often fail to capture semantic relationships between news stories, while vector search, powered by embeddings, allows for a more contextual understanding of how different articles relate to a stock sentiment. Storing news as vectors: When stock-related news are ingested, each news article is vectorized as a high-dimensional numerical representation using an embedding model. These embeddings encapsulate the meaning and context of the text, rather than just individual words. The raw news articles are embedded and stored in MongoDB as vectors. Finding related news: Vector search is used to find news articles based on similarity algorithms, even if they don’t contain the exact same stock information. This helps in identifying patterns and trends across multiple news articles based on contextual similarity. Enhancing sentiment calculation: Instead of relying on a single news sentiment, a final sentiment score is aggregated from multiple related news sources with similar and relevant content. This prevents one individual outlier news from influencing the result and provides a more holistic view of market news sentiment. Agentic AI foundation Agentic AI incorporates an orchestrator layer that manages task execution in workflows. AI Agents can operate either fully autonomous or semi-autonomous with a human-in-the-loop (HITL). AI agents are equipped with advanced tools, models, memory, and data storage. Memory leverages both long and short-term contextual data for informed decision-making and continuity of the interactions. Tools and models enable the AI agents to decompose tasks into steps and execute them cohesively. The data storage and retrieval are pivotal to AI agent effectiveness and can be advanced by embedding and vector search capabilities. Figure 3. Agentic AI foundation AI agents’ key characteristics: Autonomy: The ability to make decisions based on the situation dynamically and to execute tasks with minimal human intervention. Chain of thoughts: The ability to perform step-by-step reasoning and breaking complex problems into logical smaller steps for better judgement and decision-making. Context aware: AI agents continuously adapt their actions based on the environment changing conditions. Learning: AI agents improve their performance over time by adapting and enhancing. Intelligent investment portfolio management with AI agents AI agents are positioned to revolutionize portfolio management by shifting from rule-based to adaptive, context aware, and AI-powered decision-making. AI-enabled portfolio management applications continuously learn, adapt, and optimize investment strategies more proactively and effectively. The future isn’t about AI replacing portfolio managers, but rather humans and AI working together to create more intelligent, adaptive, and risk-aware portfolios. Portfolio managers who leverage AI, gain a competitive edge and deeper insights to significantly enhance portfolio performance. The solution, illustrated in Figure 4 below, includes a data ingestion application, three AI Agents, and a market insight application that work in harmony to create a more intelligent, insights-driven approach to portfolio management. Data ingestion application The data ingestion application runs continuously, captures various market data, and stores it in time series or as standard collections in MongoDB. Market data: Collects and processes real-time market data, including prices, volumes, trade activity, and volatility index. Market news: Captures and extracts market and stock-related news. News data is vectorized and stored in MongoDB. Market indicators: Retrieves key macroeconomic and financial indicators, such as GDP, interest rate, and unemployment rate. AI agents In this solution, there are 3 AI agents. Market analysis agent and market news agent have AI analytical workflows. They run based on a daily schedule in a fully automated fashion, producing the expected output and storing it in MongoDB. Market assistant agent has a more dynamic workflow and is designed to play the role of an assistant to a portfolio manager. It works based on prompt engineering and agentic decision making. Market assistant agent is capable of responding to questions about asset reallocation and market risks based on current market conditions and bringing the new AI-powered insights to the portfolio managers. Market analysis agent: Analyzes market trends, volatility, and patterns to generate insights related to the risk of portfolio assets. Market news agent: Assesses the news sentiment for each of assets by analyzing news that directly and indirectly can impact the portfolio performance. This agent is empowered by MongoDB vector search. Market assistant agent: On demand and through a prompt, answers portfolio manager’s questions about market trends, risk exposure, and portfolio allocation by using data sources and insights that other agents create. Market insight application The market insight application is a visualization layer that provides charts, dashboards, and reports for portfolio managers, a series of actionable investment insights from the outputs created by AI agents. This information is generated based on a predetermined daily schedule automatically and presented to portfolio managers. Figure 4. Investment portfolio management powered by MongoDB AI agents AI agents enable portfolio managers to have an intelligent and risk-based approach by analyzing the impact of market conditions on the portfolio and its investment goals. The AI Agents capitalize on MongoDB’s powerful capabilities, including the aggregation framework and vector search, combined with embedding and generative AI models to perform intelligent analysis and deliver insightful portfolio recommendations. Next steps According to Deloitte, by 2027, AI-driven investment tools will become the primary source of advice for retail investors, with AI-powered investment management solutions projected to grow to around 80% by 2028. 2 By leveraging AI agents and MongoDB, financial institutions can unlock the full potential of AI-driven portfolio management to obtain advanced insights that allow them to stay ahead of market shifts, optimize investment strategies, and manage risk with greater confidence. MongoDB lays a strong foundation for Agentic AI journey and the implementation of next-gen investment portfolio management solutions. To learn more about how MongoDB can power AI innovation, check out these additional resources: Transforming capital markets with MongoDB | Solutions page Launching an agentic RAG chatbot with MongoDB and Dataworkz | Solutions page Demystifying AI Agents: A Guide for Beginners 7 Practical Design Patterns for Agentic Systems 1 Sun, D., " Capitalize on the AI Agent Opportunity ”, Gartner, February 27, 2025. 2 AI, wealth management and trust: Could machines replace human advisors? , World Economic Forum, Mar 17, 2025.

May 7, 2025
Artificial Intelligence

MongoDB 8.0, Predefined Roles Now Available on DigitalOcean

I’m pleased to announce that MongoDB 8.0 is now available on DigitalOcean Managed MongoDB, bringing enhanced performance, scalability, and security to DigitalOcean’s fully managed MongoDB service. This update improves query efficiency, expands encryption capabilities, and optimizes scaling for large workloads. Additionally, DigitalOcean Managed MongoDB now includes role-based access control (RBAC) with predefined roles, making it easier to manage access control, enhance security, and streamline database administration across MongoDB clusters on DigitalOcean. DigitalOcean is one of MongoDB’s premier Certified by MongoDBaaS partners, and since launching our partnership in 2021, developer productivity has been the core focus of MongoDB and DigitalOcean’s partnership together. These new enhancements to DigitalOcean Managed MongoDB are a testament to the importance of enabling developers, startups, and small and medium-sized businesses to rapidly build, deploy, and scale applications to accelerate innovation and increase productivity and agility. What’s new in MongoDB 8.0? MongoDB 8.0 features several upgrades designed to enhance its performance, security, and ease of use. Whether you’re managing high-throughput applications or looking for better query optimization, these improvements make DigitalOcean Managed MongoDB even more powerful: Higher throughput and improved replication performance: Dozens of architectural optimizations in MongoDB 8.0 have improved query and replication speed across the board. Better time series handling: Store and manage time series data more efficiently, helping to enable higher throughput with lower resource usage and costs. Expanded Queryable Encryption: MongoDB 8.0 adds range queries to Queryable Encryption, enabling new use cases for secure data operations. With encrypted searches that don’t expose sensitive data, MongoDB 8.0 enhances both privacy and compliance. Greater performance control: Set default maximum execution times for queries and persist query settings after restarts, providing more predictable database performance. MongoDB 8.0 features 36% better read throughput, 59% faster bulk writes, 200% faster time series aggregations, and new sharding capabilities that distribute data across shards up to 50 times faster—making MongoDB 8.0 the most secure, durable, available, and performant version of MongoDB yet. Learn more about MongoDB 8.0 on our release page. Benefits of RBAC for DigitalOcean Managed MongoDB Managing database access across organizations can be a challenge, especially as teams grow and security requirements become more complex. Without a structured approach, organizations risk unauthorized access, operational inefficiencies, and compliance gaps. With RBAC now available in their MongoDB environments, DigitalOcean Managed MongoDB users can avoid these risks and enforce clear, predefined access policies, helping to ensure secure, efficient, and scalable database management. Here’s how RBAC can benefit your business : Stronger data protection: Keep your sensitive information secure by ensuring that only authorized users have access, reducing the risk of data breaches and strengthening overall security. Less manual work, fewer errors: Predefined roles make it easier to manage user access, cutting down on time-consuming manual tasks and minimizing the risk of mistakes. Easier compliance management: Stay ahead of industry regulations with structured access controls that simplify audits and reporting, giving you peace of mind. Lower costs & reduced risk: Automating access management reduces administrative overhead and helps prevent costly security breaches. Seamless scalability: As your business grows, easily adjust user permissions to match evolving team structures and operational needs. Simplified access control: Manage database access efficiently by assigning roles at scale, making administration more intuitive and governance more effective. DigitalOcean Managed MongoDB: Better than ever With the introduction of MongoDB 8.0 and RBAC, DigitalOcean Managed MongoDB is now more powerful, secure, and efficient than ever. Whether you’re scaling workloads, optimizing queries, or strengthening security, these updates empower you to manage your MongoDB clusters with greater confidence and ease. Get started today and take full advantage of these cutting-edge enhancements in DigitalOcean’s Managed MongoDB! To create a new cluster with MongoDB 8.0, or to upgrade your existing cluster through the DigitalOcean Control Panel or API, check out the DigitalOcean site . Ream more about these new features in DigitalOcean's blog about MongoDB 8.0 and RBAC , 0r simply try DigitalOcean Managed MongoDB by getting started here !

May 7, 2025
Updates

Ubuy Scales E-Commerce Globally and Unlocks AI With MongoDB

In today’s digital era, global e-commerce presents a major growth opportunity. This is particularly acute for businesses looking to expand beyond their local markets. While some companies thrive by serving domestic customers, others capitalize on cross-border e-commerce to reach a wider audience. Ubuy , a Kuwait-based e-commerce company, is tapping into this opportunity. Operating in over 180 countries, Ubuy enables customers worldwide to purchase products that may not be available in their local markets. The Ubuy App, which is also available to users on both iOS and Android, supports over 60 languages internationally and is a popular way to access Ubuy’s platform. Ubuy simplifies logistics, customs, and shipping to create a seamless shopping experience. It acts as a bridge between customers and international sellers. Unlike traditional marketplaces, Ubuy provides end-to-end services, from sourcing products and performing quality checks to handling shipping and customs. This ensures that products, even those newly launched in international markets, are accessible to buyers globally with minimal hassle. Founded in 2012, Ubuy initially focused on the Gulf Cooperation Council region. Having identified a gap in international products’ availability there, it used the next three years to expand its services. Today, Ubuy offers a diverse catalog of over 300 million products, and customers worldwide can access products from nine warehouses strategically located in the United States, the United Kingdom, China (including in Hong Kong), Turkey, Korea, Japan, Germany, and Kuwait. Scaling such a vast operation represented a significant technological challenge. MongoDB Atlas proved critical in enabling Ubuy to scale its operations and address specific search performance and inventory management issues. Overcoming search and scalability challenges Before adopting MongoDB Atlas, Ubuy relied on MySQL to manage product data and search functions. However, this model’s limitations led to performance bottlenecks - it couldn’t handle large-scale search operations, lacked high availability, and struggled to manage complex search queries from customers across different markets. Slow query responses, averaging as much as 4–5 seconds per search, impacted the user experience, making it critical for Ubuy to identify a more scalable and performant solution. Ubuy migrated to MongoDB Atlas and implemented both MongoDB Atlas Search and MongoDB Atlas Vector Search to overcome these hurdles. By using these products, Ubuy significantly improved search efficiency, reducing response times to milliseconds. The company can now ensure high search relevancy, enabling users to find products more accurately and quickly. Migrating a large platform to MongoDB Atlas At Ubuy’s scale, the migration to MongoDB Atlas required careful planning. In March 2023, the team conducted a proof of concept to test MongoDB Atlas’s capabilities in handling its vast inventory. A month later, the migration was complete: Ubuy had transitioned from MySQL to a fully managed MongoDB Atlas environment. The transition was seamless, with no downtime. The MongoDB team provided ongoing guidance to help Ubuy optimize search filters and facilitate a smooth integration with its existing e-commerce systems. The result was an improved customer experience through faster and more relevant search results. Ubuy chose MongoDB Atlas for three key reasons: Scalability: MongoDB Atlas provides the ability to handle massive data loads efficiently, enabling smooth search performance even during peak traffic. High availability: As a fully managed cloud database, MongoDB Atlas provides resilience and reduces downtime. AI-powered search: The use of MongoDB Atlas Search improves Ubuy’s product discovery experience, helping customers find the right products without seeing unnecessary results. Additionally, MongoDB Atlas Vector Search provides semantic search capabilities. This enables more intuitive product discovery based on intent rather than merely on keywords, enhancing customer satisfaction. Using AI-powered enhancements to drive customer engagement Beyond improving search performance, Ubuy has been enhancing its customers’ shopping experience through AI. Ubuy integrated AI-powered search and recommendation systems with MongoDB Atlas’s vector database capabilities. This enabled a transition from simple keyword-based searches to a more intuitive, intent-driven discovery experience. For example, when a user searches for a specific keyword, like “Yamaha guitar,” the AI-enhanced product page now provides structured information on this product’s suitability for beginners, professionals, and trainers. This improves user experience and enhances SEO visibility, driving organic traffic to Ubuy’s platform. “With MongoDB Atlas Search and Atlas Vector Search, we are able to deliver personalized product recommendations in real-time, making it easier for customers to find what they need faster than ever before,” said Mr. Omprakash Swami, Head of IT at Ubuy. Achieving response speed and business growth Since implementing MongoDB Atlas and AI-driven enhancements, Ubuy has seen remarkable improvements: Search response time reduced from 4–5 seconds to milliseconds Over 150 million search queries handled annually with improved relevancy Higher engagement on product pages due to AI-enriched content Ability to scale inventory beyond 300 million products with zero performance concerns “Moving to MongoDB Atlas and being able to use features such as Atlas Vector Search have been a game changer,” said Swami. “The ability to handle massive search queries in milliseconds while maintaining high relevancy has dramatically improved our customer experience and business operations. The flexibility of MongoDB Atlas has not only improved our search performance but also set the stage for AI-powered innovations that were previously impossible with our relational database setup.” Enhancing the future of e-commerce Looking ahead, Ubuy aims to optimize search by consolidating inventory visibility across multiple stores. The goal is to enable users to search across all warehouses from a single interface, delivering even greater convenience. Ubuy’s transformation showcases how employing MongoDB Atlas, along with its fully-integrated search capabilities and AI-driven insights, can significantly enhance global e-commerce operations. By addressing scalability and search relevance challenges, the company has positioned itself as a leader in cross-border e-commerce. With a relentless focus on innovation, Ubuy is set to redefine how consumers access international products. Together, Ubuy and MongoDB are helping make shopping across borders effortless and efficient. Visit our product page to learn more about MongoDB Atlas Search. Check out our Atlas Vector Search Quick Start Guide to get started with Vector Search today. Boost your MongoDB skills with our Atlas Learning Hub .

May 6, 2025
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Teach & Learn with MongoDB: Professor Chanda Raj Kumar

Welcome to the second edition of our series highlighting how educators and students worldwide are using MongoDB to transform learning. In this post, we chat with Professor Chanda Raj Kumar of KL University Hyderabad. The MongoDB for Educators program provides free resources like curriculum materials, MongoDB Atlas credits, certifications, and access to a global community of more than 700 universities—helping educators teach practical database skills and inspire future tech talent. Applied learning: Using MongoDB in real-world teaching Chanda Raj Kumar , Assistant Professor at KLEF Deemed to be University, Hyderabad, India, is a MongoDB Educator and Leader of the MongoDB User Group—Hyderabad. With ten years of teaching experience, he empowers students to gain hands-on experience with MongoDB in their projects. Thanks to his mentorship, during last semester’s Skill Week, 80% of his students earned MongoDB certifications, preparing them for careers in tech. His dedication earned him the 2024 Distinguished Mentor Award from MongoDB. His story shows how educators can use MongoDB to inspire students and prepare them for careers in tech. Tell us about your educational and professional journey and what initially sparked your interest in databases and MongoDB. My educational journey consists of an undergraduate degree from Kakatiya University. Following that, I pursued an M.Tech from Osmania University, where I gained immense knowledge in the landscape of computer science, which aided in laying a strong foundation for my technical expertise. Currently, I am pursuing a PhD from Annamalai University, focusing my research on machine learning. Additionally, qualifying exams like UGC NET and TSET have further strengthened my understanding of databases and why they are a core aspect of developing an application. Over the past ten years, I have gained extensive experience in academia and industry, and I currently serve as an Assistant Professor at KL University, Hyderabad. My interest in databases stems from their universal presence in almost every application. Early on, when I first dabbled into the world of databases, I was intrigued by how efficient storage mechanisms severely impact the speed and accuracy of data retrieval and other operations that will be performed on data through our application. While working with relational databases, I encountered challenges related to fixed schemas—certain data insertions were not feasible due to strict structural constraints or the unavailability of data types corresponding to spatial and vectorial data. This led me to delve into MongoDB, where the flexible JSON-based document structure provided a more scalable and dynamic approach to data management, along with MongoDB Atlas conforming to the rapidly evolving cloud computing of today's time. What courses related to databases and MongoDB are you currently teaching? At my university, I teach database-related courses across different levels. As a core course, I teach Database Management Systems (DBMS), covering database fundamentals and operations. I also handle Python Full Stack, MERN Stack, and Java Full Stack Development, integrating MongoDB with modern frameworks. Additionally, I conduct MongoDB certification courses, helping students gain industry-standard knowledge in database technologies. What motivated you to incorporate MongoDB into your curriculum? My journey with databases began when I realized the challenges of relational databases like SQL, with their rigid schema and complex queries. This led me to explore MongoDB, which offers a more flexible, user-friendly approach to data management. I actively advocate for adding MongoDB to the college curriculum to prepare students for the growing demand for NoSQL technologies. By teaching MongoDB alongside relational databases, I aim to help students build practical skills to design and manage modern, dynamic applications. You have successfully built an active student community around MongoDB on your campus. Can you share some insights into how you achieved this and the impact it's had on students? Building an active student community around MongoDB on campus has not only been an exciting journey, but a very enlightening one as well. I had concentrated on a step-by-step teaching approach, beginning with the basics and slowly making my way up to more complex topics. This helped students build a strong foundation while feeling confident and thorough about the things they were learning. One of the main ways I involved students was by incorporating MongoDB into different courses, where they could work on hands-on projects that required using the database. I also encouraged students to earn certifications like Developer and DBA, which gave them valuable credentials and a nod to their MongoDB skills. Furthermore, I arranged group discussions where students brainstormed, solved problems together, and stayed actively engaged in their learning. On top of that, I held special training sessions each semester called “Skill Weeks” that lasted a week to make sure that everyone was aware of the ongoing MongoDB advancements while also teaching newcomers. How do you design your course content to integrate MongoDB in a way that engages students and ensures practical learning experiences? I often begin by building a strong foundation, going over fundamental concepts such as document-oriented storage, collections, indexing, and CRUD operations to ensure students grasp the essentials. Once a solid base has been established, I introduce advanced concepts like aggregation pipelines, indexing, query optimization techniques, and sharding, whilst putting utmost emphasis on hands-on learning with real datasets to further fortify understanding. I also incorporate real-world projects where students design and build complete applications that integrate MongoDB in the backend and thereby, simulate industry use cases to enhance their problem-solving in a professional environment. As for the certification component, I include model quizzes, practice tests, and assignments to evaluate their knowledge and ensure they are job-ready with a validated skill set. How has MongoDB supported you in enhancing your teaching methodologies and upskilling your students? The curated learning paths and comprehensive resources through MongoDB Academia , such as PowerPoint presentations for educators, have best supported me and my teaching methods. The platform offers a wide variety of materials, covering basic to advanced concepts, often accompanied by visual aids that make complex concepts easier to grasp. The learning paths also provide a set of practice questions for the students that can reinforce their understanding. Moreover, the availability of the Atlas free cluster allows students to experiment with real-world database operations without cost, providing a practical experience. These resources offered by MongoDB have significantly reshaped my pedagogy to better accommodate practical elements. Have you conducted any projects or studies on students' experiences with MongoDB? If so, what key insights have you discovered, and how can they benefit other educators? Through surveys, Q&A sessions, and project reviews, I have identified students' strengths and weaknesses in working with MongoDB. Many students find the document-oriented model intuitive and appreciate the flexibility of schema design, but often struggle with optimizing queries, indexing strategies, and understanding aggregation pipelines. These insights have helped me refine and iterate my teaching style by focusing more on demonstrations, interactive exercises, and explanations targeted at complex topics. Other educators can benefit from these conclusions I have arrived at by incorporating regular feedback sessions and adapting their teaching methods to address these loopholes. Could you share a memorable experience or success story of a project from your time teaching MongoDB that stands out to you? One of the most memorable experiences from my time teaching MongoDB was during Skill Week, where 80% of my students earned MongoDB certifications. The structured pedagogy I implemented—combining hands-on learning, real-world projects, and guided problem-solving—played a crucial role in their success. This success was further recognized when I received an award last semester for my contributions to MongoDB education, further proving the impact of my teaching approach. Seeing students excel, gain industry-recognized skills, and confidently apply MongoDB skills in their careers has been incredibly rewarding for me. How has your role as a MongoDB Educator impacted your professional growth and the growth of the student community at your university? I have been able to demonstrate the power of non-relational databases, breaking the initial stigma about NoSQL databases and helping students see the advantages of flexible, scalable data models. This journey has also helped me secure my position as a subject matter expert, allowing me to lead discussions on advanced database concepts and real-world applications. As a MongoDB User Group (MUG) leader, I have built a global network, collaborating with educators, developers, and industry professionals. Additionally, conducting mentoring workshops at other colleges has strengthened my leadership skills while expanding MongoDB awareness beyond the scope of my institution. Most importantly, this role has provided students with direct industry exposure, which I believe plays a pivotal role in the growth of their careers. What advice would you give to educators who are considering integrating MongoDB into their courses to ensure a successful and impactful learning experience for students? My advice is to build upon students’ pre-existing knowledge while gradually introducing the transition or shift to NoSQL concepts. Since most students start with relational databases, it’s important to first highlight the key differences between SQL and NoSQL, and to explain when to use each. Given that students are generally inclined toward SQL (as it’s often the first database they work with), introducing MongoDB as a schema-less, document-oriented database makes the transition smoother. Once the basics are covered, progressing to advanced topics like data modeling, aggregation pipelines, and indexing ensures students gain a deeper understanding of database optimization and performance tuning. By adopting this structured approach, educators can provide a comprehensive, real-world learning experience that prepares students for industry use cases. To learn more, apply to the MongoDB for Educators program and explore free resources for educators crafted by MongoDB experts to prepare learners with in-demand database skills and knowledge.

May 5, 2025
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Announcing the MongoDB MCP Server

Today, MongoDB is pleased to share the MongoDB Model Context Protocol (MCP) Server in public preview. The MongoDB MCP Server enables AI-powered development by connecting MongoDB deployments—whether they’re on MongoDB Atlas, MongoDB Community Edition, or MongoDB Enterprise Advanced—to MCP-supported clients like Windsurf, Cursor, GitHub Copilot in Visual Studio Code, and Anthropic’s Claude. Using MCP as the two-way communication protocol, the MongoDB MCP Server makes it easy to interact with your data using natural language and perform database operations with your favorite agentic AI tools, assistants, and platforms. Originally introduced by Anthropic, the Model Context Protocol has been gaining traction as an open standard for connecting AI agents and diverse data systems. The growing popularity of MCP comes at a pivotal moment as LLMs and agentic AI are reshaping how we build and interact with applications. MCP unlocks new levels of integrated functionality, ensuring that the LLMs behind agentic workflows have access to the most recent and contextually relevant information. And it makes it easier than ever for developers to take advantage of the fast-growing and fast-changing ecosystem of AI technologies. The MongoDB MCP Server: Connecting to the broader AI ecosystem The MongoDB MCP Server enables developer tools with MCP clients to interact directly with a MongoDB database and to handle a range of administrative tasks, such as managing cluster resources, as well as data-related operations like querying and indexing. Figure 1. Overview of MongoDB MCP Server integration with MCP components. Forget separate tools, custom integrations, and manual querying. With the MongoDB MCP Server, developers can leverage the intelligence of LLMs to perform crucial database tasks directly within their development environments, with access to the most recent and contextually relevant data. The MongoDB MCP Server enables: Effortless data exploration: Ask your AI to "show the schema of the 'users' collection" or "find the most active users in the collection." Streamlined database management: Use natural language to perform database administration tasks like "create a new database user with read-only access" or "list the current network access rules." Context-aware code generation: Describe the data you need, and let your AI generate the MongoDB queries and even the application code to interact with it. AI-powered software development with Windsurf and MongoDB To make it easier for developers everywhere to use the MongoDB MCP Server right away, we've made it available out of the box in Windsurf , an AI code editor used by over a million developers and counting. Developers building with MongoDB can leverage Windsurf's agentic AI capabilities to streamline their workflows and accelerate application development. “MongoDB is aligned with Windsurf’s mission of empowering everyone to continuously dream bigger,” said Rohan Phadte, Product Engineer at Windsurf. “Through our integration with the MongoDB MCP Server, we’re helping innovators to create, transform, and disrupt industries with software in this new age of development. Developers can get started today by accessing the MongoDB MCP Server through our official server templates, and take advantage of the combined power of Windsurf and MongoDB for building their next project.” Figure 2. Windsurf MCP server templates. The MongoDB MCP Server in action Check out the videos below to see how to use the MongoDB MCP Server with popular tools like Claude, Visual Studio Code, and Windsurf. Using the MongoDB MCP Server for data exploration With an AI agent capable of directly accessing and exploring your database guided by natural language prompts, you can minimize context switching and stay in the flow of your work. Using the MongoDB MCP Server for database management The MongoDB MCP Server enables AI agents to interact directly with MongoDB Atlas or self-managed MongoDB databases, making it easier to automate manual tasks around cluster and user management. Using the MongoDB MCP Server for code generation Using LLMs and code agents has become a core part of developers’ workflows. Providing context, such as schemas and data structures, enables more accurate code generation, reducing hallucinations and enhancing agent capabilities. The future of software development is agentic The MongoDB MCP Server is a step forward in MongoDB’s mission to empower developers with advanced technologies to effortlessly bring bold ideas to life. By providing an official MCP server release, we’re meeting developers in the workflows and tools they rely on to build the future on MongoDB. As MCP adoption continues to gain momentum, we’ll continue to actively listen to developer feedback and to prioritize enhancements to our MCP implementation. If you have input on the MongoDB MCP Server, please create an issue on GitHub . And to stay abreast of the latest news and releases from MongoDB, make sure you check out the MongoDB blog . Check out the MongoDB MCP Server on GitHub and give it a try—see how it can accelerate your development workflow!

May 1, 2025
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