Live
Black Hat USADark ReadingBlack Hat AsiaAI BusinessGeopolitics, AI, and Cybersecurity: Insights From RSAC 2026Dark Reading[D] On-Device Real-Time Visibility Restoration: Deterministic CV vs. Quantized ML Models. Looking for insights on Edge Preservation vs. Latency.Reddit r/MachineLearningThe National Policy Framework on Artificial Intelligence: Implications for Employers Using AI - JD SupraGNews AI USAAdvanced Compact Patterns for Web3 DevelopersDEV CommunityA conversation on concentration of powerLessWrongBest Free Snyk Alternatives for Vulnerability ScanningDEV CommunityAccelerating Vision AI Pipelines with Batch Mode VC-6 and NVIDIA NsightNVIDIA Tech BlogDecoding the Black Box: LLM Observability with LangSmith & Helicone for Local ModelsDEV CommunityKernelEvolve: How Meta’s Ranking Engineer Agent Optimizes AI Infrastructureengineering.fb.comFrom language to testing: How AI is reshaping education in South Africa - cnn.comGNews AI educationKey AI, Cybersecurity, and Privacy Takeaways from the NAIC 2026 Spring Meeting - JD SupraGoogle News: AIAI LEGAL KEYNOTE SPEAKER & ARTIFICIAL INTELLIGENCE LAW FUTURIST FOR EVENTS - futuristsspeakers.comGNews AI legalBlack Hat USADark ReadingBlack Hat AsiaAI BusinessGeopolitics, AI, and Cybersecurity: Insights From RSAC 2026Dark Reading[D] On-Device Real-Time Visibility Restoration: Deterministic CV vs. Quantized ML Models. Looking for insights on Edge Preservation vs. Latency.Reddit r/MachineLearningThe National Policy Framework on Artificial Intelligence: Implications for Employers Using AI - JD SupraGNews AI USAAdvanced Compact Patterns for Web3 DevelopersDEV CommunityA conversation on concentration of powerLessWrongBest Free Snyk Alternatives for Vulnerability ScanningDEV CommunityAccelerating Vision AI Pipelines with Batch Mode VC-6 and NVIDIA NsightNVIDIA Tech BlogDecoding the Black Box: LLM Observability with LangSmith & Helicone for Local ModelsDEV CommunityKernelEvolve: How Meta’s Ranking Engineer Agent Optimizes AI Infrastructureengineering.fb.comFrom language to testing: How AI is reshaping education in South Africa - cnn.comGNews AI educationKey AI, Cybersecurity, and Privacy Takeaways from the NAIC 2026 Spring Meeting - JD SupraGoogle News: AIAI LEGAL KEYNOTE SPEAKER & ARTIFICIAL INTELLIGENCE LAW FUTURIST FOR EVENTS - futuristsspeakers.comGNews AI legal
AI NEWS HUBbyEIGENVECTOREigenvector

MongoDB.local NYC 2025: Defining the Ideal Database for the AI Era

mongodb.comSeptember 18, 20254 min read0 views
Source Quiz

Yesterday, we welcomed thousands of developers and executives to MongoDB.local NYC, the latest stop in our global .local series. Over the past year, we’ve connected with tens of thousands of partners and customers in 20 cities worldwide. But it’s especially meaningful to be in New York—where MongoDB was founded and where we are still headquartered. This post is also available in: Deutsch , Français , Español , Português , Italiano , 한국어 , 简体中文 . During the event, we introduced new capabilities that advance MongoDB’s position as the world’s leading modern database. With MongoDB 8.2, our most feature-rich and performant release yet, we are raising the bar for what developers can achieve. We also shared more about our Voyage AI embedding models and rerankers, which bring state-of-the-art accu

Yesterday, we welcomed thousands of developers and executives to MongoDB.local NYC, the latest stop in our global .local series. Over the past year, we’ve connected with tens of thousands of partners and customers in 20 cities worldwide. But it’s especially meaningful to be in New York—where MongoDB was founded and where we are still headquartered.

megaphone

During the event, we introduced new capabilities that advance MongoDB’s position as the world’s leading modern database. With MongoDB 8.2, our most feature-rich and performant release yet, we are raising the bar for what developers can achieve. We also shared more about our Voyage AI embedding models and rerankers, which bring state-of-the-art accuracy and efficiency to building trustworthy, reliable AI applications. And with Search and Vector Search now in public preview for both MongoDB Community Edition and Enterprise Server, we are putting powerful retrieval capabilities directly into customers’ environments—wherever they prefer to run.

I am particularly excited about the launch of the MongoDB Application Modernization Platform, or AMP. Enterprises everywhere are grappling with the massive costs of legacy systems that cannot support the demands of AI. AMP is not a simple “lift-and-shift.” It is a repeatable, end-to-end platform that combines AI-powered tooling, proven techniques, and specialized talent to reinvent critical business systems while minimizing cost and risk. Early results are impressive: enterprises moving from old systems to MongoDB are doing so two to three times faster, and tasks like code rewriting are accelerating by an order of magnitude.

Figure 1. MongoDB.local NYC keynote. Watch the  full keynote  on YouTube.

Becoming the world’s most popular modern database

When I reflect on MongoDB’s journey, I’m struck by how far we’ve come. When I joined just over a decade ago, we had only a few thousand customers. Today, MongoDB serves nearly 60,000 organizations across every industry and vertical, including more than 70% of the Fortune 500 and cutting-edge AI-native startups.

Yet the reason behind our growth remains the same. Relational databases built in the 1970s were never designed for the scale and complexity of modern applications. They were rigid, hard to scale, and slow to adapt. Our founders, who had lived those limitations first-hand while building DoubleClick, set out to create something better: a database model designed for the realities of the modern world. The document model was born.

Based in JSON, the document model is intuitive, flexible, and powerful. It allows developers to represent complex, interdependent, and constantly changing data in a natural way. And, as we enter the era of AI, those same qualities—adaptability, scalability, and security—are more critical than ever. The database a company chooses will be one of the most strategic decisions determining the success of its AI initiatives.

Generative AI applications have already begun delivering productivity gains, writing code, drafting documents, and answering questions. But the real transformation lies ahead with agentic AI—applications that perceive, decide, and act. These intelligent agents don’t just follow workflows; they pursue outcomes, reasoning about the best steps to achieve them. And in that loop, the database is indispensable. It provides the memory that allows agents to perceive context, the facts that allow them to decide intelligently, and the state that will enable them to act coherently.

This is why a company’s data is its most valuable asset. Large language models (LLMs) may generate responses, but it is the database that provides continuity, collaboration, and true intelligence. The future of AI is not only about reasoning—it is about context, memory, and the power of your data.

The ideal database for transformative AI

So what does the ideal database for agentic AI look like? It must reflect today’s complexity and tomorrow’s change. It must speak the language of AI, which is increasingly JSON. It must integrate advanced retrieval across raw data, metadata, and embeddings—not just exact matching but meaning and intent. It must bridge private data and LLMs with the highest-quality embeddings and rerankers. And it must deliver the performance, scalability, and security required to power mission-critical applications at a global scale.

This is precisely what MongoDB delivers. We don’t simply check the boxes on this list—we define them.

We’re only just getting started

That’s why I am so optimistic about our future. The energy and creativity we see at every MongoDB.local event remind me of the passion that has always fueled this company. As our customers continue to innovate, I know MongoDB is in the perfect position to help them succeed in the AI era.

We can’t wait to see what you build next.

megaphone

To see more announcements and for the latest product updates, visit our What’s New page. And head to the MongoDB.local hub to see where we’ll be next.

Was this article helpful?

Sign in to highlight and annotate this article

AI
Ask AI about this article
Powered by Eigenvector · full article context loaded
Ready

Conversation starters

Ask anything about this article…

Daily AI Digest

Get the top 5 AI stories delivered to your inbox every morning.

Knowledge Map

Knowledge Map
TopicsEntitiesSource
MongoDB.loc…modellanguage mo…releaselaunchannounceavailablemongodb.com

Connected Articles — Knowledge Graph

This article is connected to other articles through shared AI topics and tags.

Knowledge Graph100 articles · 173 connections
Scroll to zoom · drag to pan · click to open

Discussion

Sign in to join the discussion

No comments yet — be the first to share your thoughts!

More in Products