惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

博客园 - 司徒正美
OSCHINA 社区最新新闻
OSCHINA 社区最新新闻
腾讯CDC
WordPress大学
WordPress大学
爱范儿
爱范儿
GbyAI
GbyAI
酷 壳 – CoolShell
酷 壳 – CoolShell
博客园 - 聂微东
Google DeepMind News
Google DeepMind News
Recent Announcements
Recent Announcements
Latest news
Latest news
Last Week in AI
Last Week in AI
V2EX - 技术
V2EX - 技术
I
InfoQ
N
News | PayPal Newsroom
SecWiki News
SecWiki News
Microsoft Azure Blog
Microsoft Azure Blog
美团技术团队
T
Troy Hunt's Blog
H
Hacker News: Front Page
S
SegmentFault 最新的问题
TaoSecurity Blog
TaoSecurity Blog
V
Visual Studio Blog
Martin Fowler
Martin Fowler
钛媒体:引领未来商业与生活新知
钛媒体:引领未来商业与生活新知
博客园_首页
S
Security @ Cisco Blogs
K
KPMG report finds enterprise disconnect between AI and its ROI | CIO
小众软件
小众软件
L
LangChain Blog
奇客Solidot–传递最新科技情报
奇客Solidot–传递最新科技情报
T
Tor Project blog
L
LINUX DO - 热门话题
月光博客
月光博客
S
Schneier on Security
Y
Y Combinator Blog
freeCodeCamp Programming Tutorials: Python, JavaScript, Git & More
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
P
Proofpoint News Feed
Forbes - Security
Forbes - Security
cs.CV updates on arXiv.org
cs.CV updates on arXiv.org
Hugging Face - Blog
Hugging Face - Blog
A
Arctic Wolf
Webroot Blog
Webroot Blog
博客园 - 叶小钗
F
Fortinet All Blogs
S
Securelist
AI
AI
B
Blog RSS Feed
Security Latest
Security Latest

MongoDB | Blog

10 Years of MongoDB Atlas: Built for what’s Next Build Trust in Agentic AI: From POC to Production Production-Ready Agents Need A Production-Ready Data Platform Agentic Supplier Management with MongoDB Atlas, Voyage AI, and Multi-Modal Search Fighting Tool Sprawl: The Case for AI Tool Registries AI Is Changing What Customers Need From a Database. MongoDB 8.3 Is Built for It New Research Reveals Overcoming Legacy Tech Issues Key to AI Success MongoDB Predictive Auto-Scaling: An Experiment Introducing MongoDB Agent Skills and Plugins for Coding Agents Enhance Your In-IDE Data Browsing Experience With MongoDB Observability and OpenTelemetry: Introducing MongoDB Atlas Log Integration Towards Model-based Verification of a Key-Value Storage Engine Inside MongoDB Dublin: The Heart of Our International Growth Building a Movie Recommendation Engine with Hugging Face and Voyage AI Edge AI Made Easy: MongoDB and ObjectBox Data Synchronization MongoDB.local San Francisco 2026: Ship Production AI, Faster Vision RAG: Enabling Search on Any Documents That’s a Wrap! MongoDB’s 2025 in Review & 2026 Predictions Token-count-based Batching: Faster, Cheaper Embedding Inference for Queries MongoDB Announces Leadership Transition Cars24 Improves Search For 300 Million Users With MongoDB Atlas The Cost of Not Knowing MongoDB, Part 3: appV6R0 to appV6R4 The 10 Skills I Was Missing as a MongoDB User Innovating with MongoDB | Customer Successes, October 2025 Smarter AI Search, Powered by MongoDB Atlas and Pureinsights Charting a New Course for SaaS Security: Why MongoDB Helped Build the SSCF Top Considerations When Choosing a Hybrid Search Solution Endian Communication Systems and Information Exchange in Bytes MongoDB SQL Interface: Now Available for Enterprise Advanced From Niche NoSQL to Enterprise Powerhouse: The Story of MongoDB's Evolution Carrying Complexity, Delivering Agility MongoDB is a Glassdoor Best-Led Company of 2025 Build AI Agents Worth Keeping: The Canvas Framework Simplify AI-Driven Data Connectivity With MongoDB and MCP Toolbox MongoDB Community Edition to Atlas: A Migration Masterclass With BharatPE Modernizing Core Insurance Systems: Breaking the Batch Bottleneck MongoDB.local NYC 2025:定义 AI 时代的理想数据库 MongoDB.local NYC 2025: Defining the Ideal Database for the AI Era MongoDB.local NYC 2025: Definiendo la base de datos ideal para la era de la IA MongoDB.local NYC 2025 : définir la base de données idéale à l'ère de l'IA MongoDB.local NYC 2025: Definindo o Banco de Dados Ideal para a Era da IA MongoDB.local NYC 2025: AI 시대를 위한 이상적인 데이터베이스 정의 MongoDB.local NYC 2025: Definition der idealen Datenbank für das KI-Zeitalter MongoDB.local NYC 2025: Definire il database ideale per l'era dell'AI Hommage à l’excellence : MongoDB Global Partner Awards 2025 Wir feiern Spitzenleistungen: MongoDB Global Partner Awards 2025 Celebrating Excellence: MongoDB Global Partner Awards 2025 庆祝卓越:MongoDB 全球合作伙伴奖 2025 Celebrando la Excelencia: Premios Globales de Emparejar de MongoDB 2025 Começando a destacar a excelência: MongoDB GlobalPartner Services 2025 Celebrare l'eccellenza: MongoDB Global Partner Awards 2025 우수성을 기념하기: 2025년 MongoDB 글로벌 파트너 어워드 The Future of AI Software Development is Agentic MongoDB Queryable Encryption Expands Search Power Supercharge Self-Managed Apps With Search and Vector Search Capabilities Potencie las aplicaciones autogestionadas con capacidades de búsqueda y búsqueda vectorial
Innovating with MongoDB | Customer Successes, February 2026
Katie Palmer · 2026-02-25 · via MongoDB | Blog

Who says that winter is when things slow down? MongoDB has had a busy start to the year, with a steady stream of announcements and product features—all against the backdrop of an industry moving at warp speed. It's been a lot, and it's been a blast!

For example, the energy at January’s MongoDB.local San Francisco—where we announced capabilities to help teams ship production AI faster—was infectious. MongoDB isn’t just starting a new chapter in AI; we’re rewriting the book in real time. 

The next generation of AI companies isn't just looking for a temporary place to store data; they’re looking to build on a generational modern data platform. Indeed, the most innovative founders are moving away from rigid, legacy systems and embracing a single, fluid foundation that can grow with them. 

At MongoDB.local SF, our message was clear: Choose your data platform strategically in order to ship faster. From our new Voyage 4 models to the general availability of our Intelligent Assistant, we are obsessed with anticipating what developers need next. This assistant is particularly impactful because it embeds MongoDB-specific expertise directly into Compass and MongoDB Atlas, allowing developers to troubleshoot performance without the "context-switching" that traditionally slows them down. 

In this issue, I’m thrilled to spotlight four startups who are building the future on the right foundation. You’ll see how Modelence and Thesys are using our flexible document model to eliminate 'operational drag,' allowing them to iterate on AI-native workflows in real time. And then there’s Heidi and Emergent Labs, who both are proving that when you simplify your codebase with a unified platform, you can turn a plan into shipped code at record speeds.

I’ve highlighted their journeys below so you can see exactly how these leaders are setting a new pace and changing their trajectory with MongoDB.

Modelence

Modelence aims to modernize backend infrastructure for the era of AI-assisted development. Traditional relational databases and manual systems create significant operational drag, as their rigid schemas and heavy migrations cannot keep pace with agent-native workflows. These legacy systems struggle with the high-velocity requirements of intelligent coding agents, which must iterate on data structures in real time without causing system downtime.

To build a stable foundation for automation, Modelence integrated MongoDB Atlas as its core data layer. The platform utilizes the flexible document model to align with how intelligent systems think, allowing specifications and runtime events to coexist. This "fit" enables per-tenant isolation and managed credentials, ensuring automated changes remain safe and traceable without the tangle of relational joins.

Standardizing on MongoDB Atlas helped Modelence raise $3 million dollars in its Seed round. The company now moves from planning to running features in minutes, achieving faster iteration loops and fewer regressions.

Thesys 

Thesys aims to empower developers by making generative user interfaces—adaptive, real-time components—accessible to everyone. Previously, developers faced the friction of static chat bubbles and hardcoded dashboards that failed to visually represent complex AI outputs. These traditional interfaces forced teams to rebuild UI layers for every use case, which kills user engagement.

To solve these orchestration challenges, Thesys integrated MongoDB Atlas as the operational backbone for its C1 API middleware. The platform utilizes the document model to manage complex entities within a single, high-performance data layer. By removing the friction of mapping unstructured LLM outputs to rigid schemas, engineering teams can now ship updates weekly.

Through the MongoDB for Startups program, Thesys successfully accelerated its go-to-market timeline. By offloading operational management to MongoDB Atlas, Thesys now maintains the agility to evolve its data layer alongside emerging AI trends, ensuring its intelligent interfaces remain high-performing as they scale globally.

Emergent Labs

Emergent Labs sought to democratize software development through “vibe coding,” a platform where AI agents build applications from natural language prompts. The company’s initial use of PostgreSQL caused significant friction, as AI agents frequently failed during schema migrations when non-technical users iteratively changed their application requirements.

By switching to MongoDB Atlas, Emergent Labs provided its agents with a flexible, document-based architecture that matches the JSON data they naturally produce. This eliminated the PostgreSQL migration loops, allowing agents to modify data structures on the fly and deploy isolated, production-ready databases in minutes.

The transition has powered the creation of nearly 2 million applications across 180 countries in just four months. With MongoDB Atlas, the platform now supports complex builds of up to 300,000 lines of code, doubling deployment rates and allowing non-technical entrepreneurs to launch sophisticated tools without traditional engineering resources.

Heidi

Heidi aims to reclaim clinician time by automating administrative tasks. Previously, clinicians spent 40% of their shifts on paperwork, reducing time for patient care. To manage this at scale, Heidi initially used Amazon DocumentDB, but faced critical limitations including mandatory downtime for scaling, high latency, and a lack of native search functionalities essential for complex AI workloads.

To eliminate these bottlenecks, Heidi migrated to MongoDB Atlas for its flexible schema and built-in AI capabilities. Integrating MongoDB Vector Search enables Heidi to perform RAG without "bolt-on" databases, streamlining vector and semantic search under a single API. This technical fit enables developers to unify diverse medical data while meeting stringent healthcare security and regulatory requirements.

Since migrating, Heidi has supported 81 million consultations, returning 18 million hours to the frontline. By offloading management to MongoDB Atlas, Heidi ensures its platform remains high-performing while empowering practitioners to focus on their primary mission: providing compassionate patient care.

Video Spotlight

Before you go, watch TinyFish Co-founder and CEO, Sudheesh Nair, explain how “nano agents” are transforming web-based research.

Next Steps

Want to get inspired by your peers and discover all the ways we empower businesses to innovate for the future? Visit MongoDB’s Customer Success Stories hub to see why these customers, and so many more, build modern applications with MongoDB.