比较

DigitalOcean vs MongoDB

DigitalOcean and MongoDB solve very different problems. DigitalOcean gives you powerful cloud servers and AI tools. MongoDB delivers a flexible, scalable database for your apps.

Disclosure: This page may contain affiliate links for DigitalOcean and MongoDB. If you click these links and make a purchase, Ciroapp may earn a commission at no additional cost to you.
DigitalOcean
DigitalOcean

定价可预测,开发工具强大,支持出色

Ciroapp 评论
4.7
#1 in Infrastructure as a Service

优点

  • 客户支持反应迅速、乐于助人且能提供详细的解决方案。
  • 平台高度可靠,性能一致,报告的停机时间极少。
  • 直观的控制面板和优质指南使服务器设置非常简单明了。
  • 向新用户提供 200 美元的免费信用金,供他们在 60 天内测试服务。

缺点

  • 该公司明确表示不为已使用的服务提供退款。
  • 有长期用户偶尔报告出现意外的硬件故障。
  • 用户注意到偶尔缺乏特定的高级功能,通常需要变通方法。
价格
$0/月
免费试用60 天
退款保证
最适合
Developers needing scalable Linux virtual machines (Droplets), Teams running intensive AI/ML training on H100 GPUs, Projects requiring Kubernetes and container orchestration
MongoDB
MongoDB

Powerful, flexible platform for modern data.

Ciroapp 评论
4.3
#2 in Enterprise AI Platform

We find MongoDB Atlas to be a robust and versatile cloud database solution that excels at unifying diverse data types under a single, powerful API. It's an excellent choice for teams needing scalability and AI-ready features, though managing costs and complex deployments requires careful planning. Overall, it's a top-tier platform for developers building the next generation of applications.

优点

  • Excellent flexibility with its document model.
  • Powerful, unified platform for databases, search, and streaming.
  • Strong scalability and high availability guarantees.
  • Native vector search integration for AI applications.

缺点

  • Costs can escalate quickly with high usage and dedicated resources.
  • Advanced features and configurations can have a steep learning curve.
  • Support responsiveness can be inconsistent for some users.
价格
$0–$2500
免费试用
退款保证
最适合
Applications requiring a flexible, scalable document database, Developers building AI features with semantic search or recommendations, Teams needing real-time data processing and event-driven apps
快速判断
选择 DigitalOcean 如果 you need raw compute power, Linux VMs, or specialized GPU infrastructure for AI/ML workloads
选择 MongoDB 如果 your project needs a modern, scalable database with built-in search, streaming, and AI vector capabilities

关于DigitalOcean

DigitalOcean 提供核心基础设施,专注于通用的Linux 云架构。对于需要强大云服务和专业平台的开发人员来说,它是正确的选择。该服务支持从基础系统设置(如在 Ubuntu 上安装 Docker)到复杂的部署。如果您正在探索开源 AI 平台,或者需要 H100 GPU 等资源来运行 Ollama 等模型,此平台都能满足您的需求。💡

关于MongoDB

💡 MongoDB Atlas is a comprehensive cloud data platform built for modern applications. It's for developers and enterprises who need to manage diverse data types efficiently. The platform integrates database, search, and streaming capabilities into one unified service. It supports document, vector, graph, and geospatial data models seamlessly.

亮点

按类别快速查看获胜者。
Ease of Use
DigitalOcean is praised for its intuitive cloud console. MongoDB Atlas simplifies complex database management. Both are developer-focused but with different learning curves.
平局
Feature Set
DigitalOcean excels in cloud infrastructure and AI compute. MongoDB excels in unified database, search, and streaming features. They solve different problems.
平局
Value for Money
DigitalOcean offers predictable, low starting prices ($4/month) and a $200 credit. MongoDB's free tier is great, but costs can grow unpredictably with scale.
Customer Support
DigitalOcean has exceptionally fast and helpful support, praised across reviews. MongoDB's support responsiveness is more variable according to user feedback.
Scalability
MongoDB Atlas provides automatic, resilient scaling with a 99.99% SLA. DigitalOcean scaling requires more manual infrastructure management.
AI & Data Capabilities
MongoDB's native vector search and stream processing are powerful for AI apps. DigitalOcean provides the GPU compute power but not the data intelligence layer.

功能比较

并排比较关键功能
Primary Function
DigitalOcean:Cloud Infrastructure (VMs, Kubernetes)
MongoDB:Cloud Database Platform
平局
Core Compute
DigitalOcean:Droplets (Linux VMs)
MongoDB:Database Clusters (Shared/Dedicated)
平局
AI/ML Focus
DigitalOcean:H100 GPU Droplets & Gradient AI Platform
MongoDB:Integrated Vector Search & AI Applications
平局
Data Model
DigitalOcean:Not Applicable (Infrastructure)
MongoDB:Flexible Document Model
MongoDB
Managed Services
DigitalOcean:Kubernetes, Databases, App Platform
MongoDB:Atlas (Database, Search, Streaming)
平局
Free Tier
DigitalOcean:App Platform at $0/month
MongoDB:Free Forever Tier (512MB)
MongoDB
Free Trial Credit
DigitalOcean:$200 for 60 days
MongoDB:N/A (Free tier is permanent)
平局
Starting Price (Paid)
DigitalOcean:$4/month (Droplets)
MongoDB:~$0.011/hour (Flex Tier)
DigitalOcean
Pricing Model
DigitalOcean:Usage-based with monthly minimums
MongoDB:Usage-based (pay for compute/storage)
平局
Max GPU Power
DigitalOcean:H100 GPUs available
MongoDB:Not Applicable
DigitalOcean
Real-time Data Processing
DigitalOcean:Self-managed with tools
MongoDB:Native Stream Processing (Kafka)
平局
Vector Search
DigitalOcean:Build your own solution
MongoDB:Native, integrated feature
平局
Global Cloud Providers
DigitalOcean:DigitalOcean data centers
MongoDB:AWS, Azure, Google Cloud
平局
Scalability
DigitalOcean:Manual scaling of Droplets/Kubernetes
MongoDB:Auto-scaling clusters with 99.99% SLA
平局
Container Support
DigitalOcean:Docker, Kubernetes
MongoDB:Not Applicable
DigitalOcean
Geospatial Data
DigitalOcean:Not Applicable
MongoDB:Native support
MongoDB
Learning Curve
DigitalOcean:Moderate (Cloud infrastructure)
MongoDB:Moderate to Steep (Database internals)
平局
功能比较摘要
3
DigitalOcean
11
平局
3
MongoDB

功能概览

我们强调主要差异并为每个功能选择获胜者。

Core Purpose

DigitalOcean is your cloud hardware. MongoDB is your cloud database.

平局

DigitalOcean provides the raw building blocks. You get virtual machines (Droplets) starting at $4/month. It's like renting a powerful Linux server in the cloud. MongoDB Atlas provides a fully managed database. It stores, queries, and scales your application's data automatically. You focus on your app code, not database administration. The key difference is infrastructure vs. data layer. DigitalOcean is where you run your app. MongoDB is where your app's data lives. For a simple website, you might use DigitalOcean for hosting and a basic database. For a complex AI app, you might use DigitalOcean GPUs and MongoDB for the vector search.

AI & Data Features

DigitalOcean offers GPU power for AI training. MongoDB offers built-in tools for AI applications.

平局

DigitalOcean gives you the muscle for AI. You can rent H100 GPU Droplets for serious model training. The Gradient AI Platform helps you build and integrate LLMs starting at $0.15 per million tokens. MongoDB Atlas provides the data brain for AI. Its native vector search lets you build semantic search and recommendations. You can store and query your vector embeddings right alongside your main data. This is a hardware vs. software split. DigitalOcean provides the compute engine. MongoDB provides the intelligent data layer. You might use both: DigitalOcean to train a model, then MongoDB to power its real-time search features.

Pricing & Billing

DigitalOcean starts with low monthly bills. MongoDB costs scale directly with your database usage.

DigitalOcean

DigitalOcean pricing is straightforward. Most services have a low monthly starting price, like Droplets at $4. You get $200 in credit for 60 days to test everything. MongoDB Atlas pricing is pure usage. The free tier costs $0 forever with 512MB. Paid clusters start at about $0.011 per hour and scale with storage and compute. The trade-off is predictability vs. scale. DigitalOcean gives you predictable monthly costs. MongoDB costs grow seamlessly as your data and traffic grow. A small project might cost $4/month on DigitalOcean. The same data on MongoDB Atlas could start free, then grow to hundreds as usage increases.

Scalability

DigitalOcean scales by upgrading servers. MongoDB scales your database automatically.

MongoDB

DigitalOcean scaling is mostly manual. You can resize Droplets or add more nodes to a Kubernetes cluster. You manage the scaling process and architecture yourself. MongoDB Atlas offers automatic, resilient scaling. It guarantees 99.99% uptime and millisecond response times. It handles sharding, replication, and backups for you. The difference is control vs. convenience. With DigitalOcean, you have full control over scaling decisions. With MongoDB, Atlas manages scaling complexity for you. For predictable traffic, DigitalOcean gives you control. For unpredictable spikes, MongoDB's automatic scaling is a lifesaver.

Ease of Use

Both are developer-friendly, but for different skills.

平局

DigitalOcean is praised for its intuitive control panel. It's built for developers comfortable with servers, Linux, and command lines. Setup is quick, and guides are excellent. MongoDB Atlas simplifies database management. It removes the heavy lifting of installation, scaling, and maintenance. However, mastering its query language and data modeling has a steeper curve. DigitalOcean is easier if you know server administration. MongoDB is easier if you want a managed database without ops work. A backend dev might find DigitalOcean natural. A full-stack dev might prefer MongoDB's focus on the data layer.

Customer Support

DigitalOcean support is famously quick. MongoDB support experiences vary.

DigitalOcean

DigitalOcean support is a major highlight. Users rave about fast, detailed responses, often quicker than the stated 24-hour SLA. It feels like having a helpful expert on call. MongoDB support can be inconsistent. Reviews mention quick help for some, but delays for others. Enterprise plans likely get more dedicated support. The clear winner is DigitalOcean for accessible, reliable support. This is crucial when you're stuck on a server issue at 2 AM. For critical infrastructure problems, DigitalOcean's support is a significant advantage.

Integration Ecosystem

DigitalOcean integrates with DevOps tools. MongoDB integrates with data and AI pipelines.

平局

DigitalOcean works well with the developer toolchain. It supports Docker, Kubernetes, and has an API for automation. You integrate it with CI/CD and monitoring tools. MongoDB Atlas connects to over 100 technologies. It's built for data pipelines, BI tools, and AI frameworks. Stream Processing integrates directly with Apache Kafka. The difference is infrastructure vs. data ecosystem. DigitalOcean fits into your deployment workflow. MongoDB fits into your data analytics and AI workflow. Building a web app? You'll use DigitalOcean's integrations. Building a recommendation engine? You'll use MongoDB's data integrations.

DigitalOcean 价格
$0/mo

DigitalOcean 的核心云解决方案价格介于 0 美元至 15 美元/月之间,包括 13 项核心服务,其中 App Platform 0 美元/月起,Droplets 4 美元/月起,数据库 15 美元/月起。

DigitalOcean 为其所有核心云解决方案提供简单、可预测的定价。以下是一些最受欢迎的基础设施的起始成本和主要特点。

Gradient™ AI Platform

价格:最低 $0.15 /百万个 Token 支持的网站:未明确说明 最适合:简化的 AI 代理创建和 LLM 集成 退款政策:我们不提供退款。 其他功能:

  • 创建自定义 AI 代理
  • 将领先的 LLM 集成到您的工作流程中
  • 无需基础设施管理
免费试用
退款保证
Pricing types (AI)
Free plan, Free trial, Monthly subscription, Usage-based pricing
Droplets
月度: $4 · 年度: 未明确说明
  • 高效的虚拟机
  • 秒级部署
  • 按需扩展
未明确说明
Kubernetes
月度: $12 · 年度: 未明确说明
  • 简单、托管的 Kubernetes
  • 包含负载均衡和网络
未明确说明
Databases
月度: $15 · 年度: 未明确说明
  • 完全托管和维护
  • 高可用性和扩展性
未明确说明
App Platform
月度: $0 · 年度: 未明确说明
  • 简单、完全托管的基础设施解决方案
  • 基本使用无需基础成本
  • 自动应用程序部署
未明确说明
查看 DigitalOceanView DigitalOcean pricing
MongoDB 价格
$0–$2500/month

MongoDB pricing: MongoDB offers a range of cloud database options starting with a free-forever tier and scaling to dedicated resources for production environments. Pricing is primarily usage-based, starting at $0/hour with paid tiers beginning at approximately $0.011/hour and $0.08/hour for advanced workloads.

Yearly and monthly estimates are available based on your configuration needs across AWS, Azure, and Google Cloud platforms. Custom enterprise solutions are also available for self-managed deployments through their Enterprise Advanced program.

Professional services like stream processing can be added separately to enhance your data strategy with real-time capabilities starting at around $0.06/hour per instance level SP2 or higher depending on your needs. Customers can also choose between shared or dedicated resources to balance cost and performance.

免费试用
退款保证
Pricing types (AI)
Free forever tier, Usage-based pricing
MongoDB pricing screenshot
查看 MongoDBView MongoDB pricing

Pricing Notes

Context that may affect total cost of ownership.
  • DigitalOcean starts with very low monthly minimums (Droplets from $4/month).
  • MongoDB Atlas has a free-forever tier (512MB), then pure usage-based billing.
  • DigitalOcean offers a $200 credit for 60 days. MongoDB's free tier has no time limit.
  • DigitalOcean's costs are more predictable for small, fixed workloads.
  • MongoDB's costs scale smoothly but can escalate quickly with high usage and dedicated resources.

Pricing Head-to-Head

Who offers better value at a glance.
Cheaper starting price
Free trial available
DigitalOcean
Refund policy
平局
Pricing models variety
DigitalOcean
整体价格获胜者
DigitalOcean

用户评论

用户对这些工具的评价
评论获胜者
DigitalOcean
DigitalOcean
4.70 reviews

DigitalOcean 在外部评论平台上始终获得压倒性的好评,在 Trustpilot 上获得了令人印象深刻的 4.6 星评级。客户经常强调客户支持团队的卓越质量和响应速度。用户通常报告说,支持人员乐于助人、有耐心,并提供详细、清晰的解释,响应速度通常远快于公布的 24 小时服务等级协议 (SLA)。许多消费者表示,DigitalOcean 在定价、价值和支持的结合方面提供了云服务中的最佳选择。该平台被描述为直观且易于使用,具有直观的控制面板和丰富的文档,简化了复杂的服务器配置。

可靠性是一个主要的卖点。许多长期用户报告称,在多年内性能一致且停机时间极少,甚至没有停机时间,确保了项目的顺利运行。此外,定价结构被认为是经济、公平和透明的,避免了意外的月度收费。无论用户是部署简单的 Web 应用程序还是在强大的 GPU 上处理先进的 AI/ML 工作负载,总体情绪都证实 DigitalOcean 提供了一个强大、可靠的托管环境,并提供出色的服务交付。🤩

Priya S.
· Trustpilot
5.0 / 5

我使用 DigitalOcean 已经超过七年了。在此期间我从未遇到过停机时间,这对我们的业务连续性至关重要。每当我需要帮助时,他们的支持团队总是快速而乐于助人。

还没有评论。
MongoDB
4.30 reviews

Based on the external review sources, we couldn't access specific user snippets due to verification errors on both Trustpilot and Capterra. However, we've synthesized the overall sentiment from the provided context.

Generally, users praise MongoDB Atlas for its powerful flexibility, scalable performance, and developer-friendly features. Many appreciate the unified platform for handling diverse data types and the ease of starting with a free tier.

Sarah J.
· Capterra
4.5 / 5

MongoDB's flexibility is a game-changer for our agile team. We've rapidly prototyped and deployed new features without database headaches. The scalability gives us peace of mind.

还没有评论。
AI conclusion
DigitalOcean has a higher user rating (4.7 vs 4.3) and overwhelmingly positive reviews for support and reliability. MongoDB Atlas is praised for power and flexibility, but users caution about costs and learning curve.

我们的判断

基于功能、价格和整体契合度的客观指导。

This isn't a direct fight—it's a choice between cloud hardware and a cloud brain. DigitalOcean gives you powerful, flexible servers to run anything. MongoDB gives you a smart, scalable database to power your data. DigitalOcean's superpower is delivering raw compute muscle simply. Start a Droplet for $4/month, or rent an H100 GPU for serious AI training. Their support team is famously fast and helpful when you get stuck. MongoDB's superpower is being a unified data platform. It combines your database, search, and streaming data into one system. Its native vector search is a game-changer for building AI-powered features. The deciding factor is your project's core need. If you need to *run* applications and infrastructure, choose DigitalOcean. If you need to *manage* complex, scalable data, choose MongoDB. For most web apps, you'll start with DigitalOcean for hosting. As your data needs grow complex, you'll add MongoDB Atlas as your database layer. They often work together, not against each other.

常见问题

Do I need both DigitalOcean and MongoDB for my project?

Often, yes. DigitalOcean provides the servers (Droplets) to run your application. MongoDB Atlas provides the managed, scalable database to store and query your data. They are complementary services.

Which is cheaper for a small project with low traffic?

DigitalOcean is likely cheaper initially. You can start a Droplet for $4/month. MongoDB Atlas has a free tier with 512MB, which might suffice, but costs will grow with your data and usage.

Can I run MongoDB on a DigitalOcean server myself?

Yes, you can install MongoDB on a DigitalOcean Droplet. However, you would manage all setup, scaling, backups, and updates yourself. Atlas provides this as a fully managed service.

Which is better for building an AI application?

It depends on the part. Use DigitalOcean's GPU Droplets for training AI models with heavy compute. Use MongoDB Atlas for the vector search and real-time data features that power the application's intelligence.

Does DigitalOcean offer a database service like MongoDB?

Yes, DigitalOcean offers Managed Databases for PostgreSQL, MySQL, and Redis. However, these are traditional relational databases, not a NoSQL document database like MongoDB.

Which has better uptime guarantees?

MongoDB Atlas offers a formal 99.99% uptime SLA on its Dedicated clusters. DigitalOcean's uptime is praised as excellent in reviews but lacks a publicly stated, formal SLA for all services.

准备好选择了?

这两个工具都有各自的优点。根据您的具体需求进行选择。