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

W
WeLiveSecurity
博客园 - 【当耐特】
Microsoft Azure Blog
Microsoft Azure Blog
WordPress大学
WordPress大学
Stack Overflow Blog
Stack Overflow Blog
cs.AI updates on arXiv.org
cs.AI updates on arXiv.org
IT之家
IT之家
Cloudbric
Cloudbric
The Register - Security
The Register - Security
小众软件
小众软件
PCI Perspectives
PCI Perspectives
G
Google Developers Blog
AI
AI
OSCHINA 社区最新新闻
OSCHINA 社区最新新闻
Google DeepMind News
Google DeepMind News
Google DeepMind News
Google DeepMind News
宝玉的分享
宝玉的分享
Recent Commits to openclaw:main
Recent Commits to openclaw:main
量子位
TaoSecurity Blog
TaoSecurity Blog
cs.CV updates on arXiv.org
cs.CV updates on arXiv.org
F
Full Disclosure
N
Netflix TechBlog - Medium
博客园_首页
Last Week in AI
Last Week in AI
A
Arctic Wolf
B
Blog RSS Feed
J
Java Code Geeks
C
Cybersecurity and Infrastructure Security Agency CISA
I
InfoQ
aimingoo的专栏
aimingoo的专栏
云风的 BLOG
云风的 BLOG
NISL@THU
NISL@THU
MyScale Blog
MyScale Blog
H
Hackread – Cybersecurity News, Data Breaches, AI and More
Jina AI
Jina AI
有赞技术团队
有赞技术团队
S
Schneier on Security
L
Lohrmann on Cybersecurity
P
Privacy & Cybersecurity Law Blog
T
Threat Research - Cisco Blogs
P
Palo Alto Networks Blog
S
Security @ Cisco Blogs
Security Archives - TechRepublic
Security Archives - TechRepublic
Security Latest
Security Latest
Vercel News
Vercel News
博客园 - 司徒正美
Webroot Blog
Webroot Blog
Hacker News: Ask HN
Hacker News: Ask HN
A
About on SuperTechFans

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 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 Innovating with MongoDB | Customer Successes, February 2026 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
AI Is Changing What Customers Need From a Database. MongoDB 8.3 Is Built for It
Ben Cefalo · 2026-05-07 · via MongoDB | Blog

Today, we announced at .local London that MongoDB 8.3 is built for the speed AI demands—and our customers can't afford to wait.

The data layer has to move at AI speed

The old contract between databases and the applications on top of them was simple: databases improve slowly, and architectures evolve around them. AI has changed that contract.

The workloads our customers are shipping today—agents retrieving at sub-100ms, retry storms hitting in milliseconds, multi-region deployments that can't trade compliance for latency—were edge cases 18 months ago. Now they're the baseline.

MongoDB 8.3, generally available today, is our fourth significant release in 19 months. These releases compound. Customers running on 8.0 have seen 36% faster reads and 59% higher throughput for updates. 8.3 adds another 35% to write throughput, 45% to reads, and 15% to ACID transactions over 8.0 — without changing a line of application code.

Enterprises like Adobe, running the most demanding AI in production, have made the requirements clear: sub-100ms retrieval, sub-second context updates, zero downtime. That's what MongoDB Atlas is built for.

That's the commitment: when the data platform keeps pace, our customers can focus on shipping.

Run anywhere. Stay secure.

Where you run your agents isn't just an infrastructure decision anymore. Now, it's a critical compliance and security decision as well. While most platforms force a trade-off between global reach and necessary control, with 130 regions across AWS, Google Cloud, and Microsoft Azure, Atlas doesn’t force you to compromise. Atlas even enables clusters spanning multiple providers simultaneously.

Avalara and Iron Mountain both took the cloud-agnostic path, modernizing on Atlas so they could meet their customers wherever they ran. The deployment shape changes. The data layer underneath doesn't.

What's shifted in the last year is the pressure on both ends. Customers want retrieval and embedding capabilities closer to their users, in more places, on more clouds. They also want more authority over the residency of their data. Those two demands used to be in tension. They don't have to be.

Cross-region connectivity for AWS PrivateLink, generally available today, is the clearest example. Traffic between Atlas clusters in different AWS regions stays on the AWS private backbone, with no public internet exposure. Security and compliance teams get the guarantees they need. Engineering teams design around fewer edge cases. Nobody has to make a trade-off.

Built to keep pace

Every capability in this post addresses friction that technical leaders have been engineering around for years. They solve different problems, but share one objective: to eliminate the infrastructure trade-offs that slow down production of AI.

The AI workloads our customers will run 18 months from now will look different from those today. That's not a risk. That's the point. Four significant releases in 19 months isn't a marketing number. It's a signal about how seriously we take the current pace of change, and our commitment to staying ahead of it for our 65,200+ customers.

Getting agents to retrieve the right information, accurately and at speed, is where embeddings and memory come in. Pablo Stern covers that in his blog, The Bottleneck in Enterprise AI Isn't the Model. It's the Data.