Close Menu
    DevStackTipsDevStackTips
    • Home
    • News & Updates
      1. Tech & Work
      2. View All

      Sunshine And March Vibes (2025 Wallpapers Edition)

      June 4, 2025

      The Case For Minimal WordPress Setups: A Contrarian View On Theme Frameworks

      June 4, 2025

      How To Fix Largest Contentful Paint Issues With Subpart Analysis

      June 4, 2025

      How To Prevent WordPress SQL Injection Attacks

      June 4, 2025

      Players aren’t buying Call of Duty’s “error” excuse for the ads Activision started forcing into the game’s menus recently

      June 4, 2025

      In Sam Altman’s world, the perfect AI would be “a very tiny model with superhuman reasoning capabilities” for any context

      June 4, 2025

      Sam Altman’s ouster from OpenAI was so dramatic that it’s apparently becoming a movie — Will we finally get the full story?

      June 4, 2025

      One of Microsoft’s biggest hardware partners joins its “bold strategy, Cotton” moment over upgrading to Windows 11, suggesting everyone just buys a Copilot+ PC

      June 4, 2025
    • Development
      1. Algorithms & Data Structures
      2. Artificial Intelligence
      3. Back-End Development
      4. Databases
      5. Front-End Development
      6. Libraries & Frameworks
      7. Machine Learning
      8. Security
      9. Software Engineering
      10. Tools & IDEs
      11. Web Design
      12. Web Development
      13. Web Security
      14. Programming Languages
        • PHP
        • JavaScript
      Featured

      LatAm’s First Databricks Champion at Perficient

      June 4, 2025
      Recent

      LatAm’s First Databricks Champion at Perficient

      June 4, 2025

      Beyond AEM: How Adobe Sensei Powers the Full Enterprise Experience

      June 4, 2025

      Simplify Negative Relation Queries with Laravel’s whereDoesntHaveRelation Methods

      June 4, 2025
    • Operating Systems
      1. Windows
      2. Linux
      3. macOS
      Featured

      Players aren’t buying Call of Duty’s “error” excuse for the ads Activision started forcing into the game’s menus recently

      June 4, 2025
      Recent

      Players aren’t buying Call of Duty’s “error” excuse for the ads Activision started forcing into the game’s menus recently

      June 4, 2025

      In Sam Altman’s world, the perfect AI would be “a very tiny model with superhuman reasoning capabilities” for any context

      June 4, 2025

      Sam Altman’s ouster from OpenAI was so dramatic that it’s apparently becoming a movie — Will we finally get the full story?

      June 4, 2025
    • Learning Resources
      • Books
      • Cheatsheets
      • Tutorials & Guides
    Home»Development»Databases»Building Gen AI with MongoDB & AI Partners | August 2024

    Building Gen AI with MongoDB & AI Partners | August 2024

    November 10, 2024

    As the AI landscape continues to evolve, companies, industries, and developers seek tailored solutions to their unique challenges. Gone are the days when general-purpose AI models could be applied universally. Now, organizations are looking for industry-specific applications, verticalized AI solutions, and specialized tools to gain a competitive edge and best serve their customers. And as gen AI use cases have diversified—from healthcare diagnostics and autonomous driving, to personalized recommendations and creative content generation—so has the technology stack supporting them.

    The complexity of building and deploying AI models has led to the rise of specialized AI frameworks and platforms that streamline workflows and optimize performance for specific use cases. In this context, having the right AI stack is essential for driving innovation. AI development is no longer just about choosing the best model but also about selecting the right tools, libraries, and infrastructure to support that model across the board.

    All of which makes partnerships (and combining technical strengths) increasingly important to innovating with AI. Take, for example, our most recent integration with LangChain: the MongoDB-LangChain partnership exemplifies how having the right components in an AI stack allows teams to focus on innovating instead of managing infrastructure bottlenecks. By combining LangGraph with MongoDB’s vector search capabilities, developers can create more sophisticated, high-performing AI applications. This integration allows for the seamless development of agentic AI systems capable of generating actionable insights and delivering complex tasks.

    To learn more about building powerful AI agents with LangGraph.js and MongoDB, plus our recent work making vector search even more versatile with custom LangChain Retrievers, check out our tutorial.

    Welcoming new AI partners

    MongoDB’s partnership with LangChain highlights the importance of building adaptable solutions that can grow and change as the needs of developers and customers grow and change.

    Which is why MongoDB is always on the lookout for innovative partners and solutions—in August we welcomed five new AI partners that offer product integrations with MongoDB. Read on to learn more about each great new partner!

    BuildShip

    BuildShip is a low-code visual backend and workflow builder to instantly create APIs, scheduled tasks, backend cloud jobs, and automation, powered by AI.

    “We at BuildShip are thrilled to partner with MongoDB to introduce an innovative low-code approach for rapidly building AI workflows and backend tasks in a visual and scalable manner,” said Harini Janakiraman, CEO of BuildShip.com. “MongoDB offers a comprehensive data stack for AI developers and organizations, enabling them to efficiently build scalable databases and access vector or hybrid search options for their products. Our collaboration provides customizable low-code templates that allow for easy integration of MongoDB databases with a variety of AI models and tools. This enables teams and companies to quickly build powerful APIs, automations, vector search, and scheduled tasks, unlocking organizational efficiency and driving product innovation.”

    Inductor

    Inductor is a platform to prototype, evaluate, improve, and observe LLM apps and features, helping developers ship high-quality LLM-powered functionality rapidly and systematically.

    “We’re excited to partner with MongoDB to enable companies to rapidly create production-grade LLM applications, by combining MongoDB’s powerful vector search with Inductor’s developer platform enabling streamlined, systematic workflows for developing RAG-based applications,” said Ariel Kleiner, CEO of Inductor. “While many LLM-powered demos have been created, few have successfully evolved into production-grade applications that deliver business wins. Together, Inductor and MongoDB enable enterprises to build impactful, needle-moving LLM applications, accelerating time to market and delivering real value to customers.”

    Metabase

    Metabase is the easy-to-use, open source Business Intelligence tool that lets everyone work with data, with or without SQL, for internal and customer-facing, embedded analytics.

    “This partnership is an important step forward for NoSQL database analytics. By integrating Metabase with MongoDB, two popular open-source tools, we are making it easier for users to quickly get valuable insights from their MongoDB data,” explained Luiz Arakaki, Product Manager at Metabase. “Our goal is to create a better integration between the tools to offer more advanced features and stability, simplifying the use of NoSQL databases for advanced analytics.”

    Shakudo

    Shakudo is a comprehensive development platform that lets data professionals develop, run, and deploy data pipelines and applications in an all-in-one integrated environment.

    “Shakudo is thrilled to be partnering with MongoDB to streamline the entire retrieval-augmented generation (RAG) development lifecycle. Together we help companies test and optimize their RAG features for faster PoC, and production deployment,” noted Yevgeniy Vahlis, CEO of Shakudo. “MongoDB has made it dead simple to launch a scalable vector database with operational data, and Shakudo brings industry leading AI tooling to that data. Our collaboration speeds up time to market and helps companies get real value to customers faster.”

    VLM Run

    VLM Run is a versatile API that enables accurate JSON extraction from any visual content such as images, videos, and documents, helping users to integrate visual AI to applications.

    “VLM Run is excited to partner with MongoDB to help enterprises accurately extract structured insights from visual content such as images, videos and visual documents,” said Sudeep Pillai, Co-Founder and CEO of VLM Run. “Our combined solution will enable enterprises to turn their often-untapped unstructured visual content into actionable, queryable business intelligence.”

    But wait, there’s more!

    To learn more about building AI-powered apps with MongoDB, check out our AI Resources Hub, and stop by our Partner Ecosystem Catalog to read about our integrations with MongoDB’s ever-evolving AI partner ecosystem.

    Head over to our quick-start guide to get started with Atlas Vector Search today.

    Source: Read More

    Facebook Twitter Reddit Email Copy Link
    Previous ArticleUniversal Design for Cognitive Disabilities in Healthcare -Clear and Simple Communication – 1
    Next Article CodeSOD: Pay for this Later

    Related Posts

    Security

    HPE StoreOnce Faces Critical CVE-2025-37093 Vulnerability — Urges Immediate Patch Upgrade

    June 5, 2025
    Security

    35,000 Solar Power Systems Exposed To Internet Are Vulnerable To Cyberattacks

    June 5, 2025
    Leave A Reply Cancel Reply

    Continue Reading

    This AI Paper from Google DeepMind Explores the Effect of Communication Connectivity in Multi-Agent Systems

    Development

    New game blending Valheim and Mount & Blade comes to Xbox later this year

    News & Updates

    The best free website builders of 2025: Expert tested and reviewed

    News & Updates

    New Reports Uncover Jailbreaks, Unsafe Code, and Data Theft Risks in Leading AI Systems

    Development

    Highlights

    I graduated college last year. These are the 5 essentials you actually need

    June 7, 2024

    From earbuds that block out darties to portable chargers that saved my phone’s battery while…

    7 Steps to Define a Data Governance Structure for a Mid-Sized Bank (Without Losing Your Mind)

    March 25, 2025

    The best HDMI splitters of 2024: Expert recommended

    August 13, 2024

    Infragistics Ultimate 25.1 includes updates across several of its UI toolkit components

    May 29, 2025
    © DevStackTips 2025. All rights reserved.
    • Contact
    • Privacy Policy

    Type above and press Enter to search. Press Esc to cancel.