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    Datadog Pro (Pay-As-You-Go) for GovCloud

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    Sold by: Datadog 
    Deployed on AWS
    Quick Launch
    Datadog is a SaaS-based unified observability and security platform providing full visibility into the health and performance of each layer of your environment at a glance.

    Overview

    Datadog is a SaaS-based unified observability and security platform providing full visibility into the health and performance of each layer of your environment at a glance. Datadog allows you to customize this insight to your stack by collecting and correlating data from more than 600 vendor-backed technologies and APM libraries, all in a single pane of glass. Monitor your underlying infrastructure, supporting services, applications alongside security data in a single observability platform.

    Prices are based on committed use per month over total term of the agreement (the Total Expected Use).

    Highlights

    • Get started in minutes from AWS Marketplace with our enhanced integration for account creation and setup. Turn-key integrations and easy-to-install agent to start monitoring all of your servers and resources in minutes.
    • Quickly deploy modern monitoring and security in one powerful observability platform.
    • Create actionable context to speed up, reduce costs, mitigate security threats and avoid downtime at any scale.

    Details

    Delivery method

    Deployed on AWS

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    Quick Launch

    Leverage AWS CloudFormation templates to reduce the time and resources required to configure, deploy, and launch your software.

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    Custom pricing options

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    Usage information

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    Delivery details

    Software as a Service (SaaS)

    SaaS delivers cloud-based software applications directly to customers over the internet. You can access these applications through a subscription model. You will pay recurring monthly usage fees through your AWS bill, while AWS handles deployment and infrastructure management, ensuring scalability, reliability, and seamless integration with other AWS services.

    Support

    Vendor support

    Contact our knowledgable Support Engineers via email, live chat, or in-app messages

    AWS infrastructure support

    AWS Support is a one-on-one, fast-response support channel that is staffed 24x7x365 with experienced and technical support engineers. The service helps customers of all sizes and technical abilities to successfully utilize the products and features provided by Amazon Web Services.

    Product comparison

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    Updated weekly

    Accolades

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    Top
    100
    In Log Analysis
    Top
    10
    In Monitoring and Observability, Migration
    Top
    10
    In Application Performance and UX Monitoring

    Customer reviews

     Info
    Sentiment is AI generated from actual customer reviews on AWS and G2
    Reviews
    Functionality
    Ease of use
    Customer service
    Cost effectiveness
    2 reviews
    Insufficient data
    Insufficient data
    Insufficient data
    Insufficient data
    Positive reviews
    Mixed reviews
    Negative reviews

    Overview

     Info
    AI generated from product descriptions
    Observability Platform
    Unified monitoring and security platform supporting data collection from over 600 vendor-backed technologies and APM libraries
    Infrastructure Monitoring
    Comprehensive monitoring capabilities for underlying infrastructure, services, and applications in a single interface
    Data Correlation
    Advanced data collection and correlation mechanism across multiple technology layers and components
    Agent-Based Monitoring
    Easy-to-install agent for rapid deployment and monitoring of servers and resources
    Multi-Technology Integration
    Supports monitoring and visibility across diverse technology ecosystems with extensive integration capabilities
    Infrastructure Auto-Discovery
    Automated device recognition and configuration for over 2,000 technologies with instant performance metric collection
    Hybrid Cloud Monitoring
    Comprehensive visibility across on-premises, hybrid, and cloud infrastructures with agentless monitoring capabilities
    Performance Metrics Collection
    Flexible data collection mechanism capable of pulling metrics from diverse devices and APIs with customizable graphing and dashboarding
    Monitoring Coverage
    Granular performance monitoring for thousands of technologies with preconfigured alert thresholds
    Monitoring Automation
    Automatic device detection, configuration, and performance tracking with intelligent, actionable monitoring capabilities
    Data Ingestion Capability
    Supports petabyte-scale telemetry ingestion with high-performance processing across logs, metrics, and traces
    AI-Powered Troubleshooting
    Utilizes natural language processing and AI-driven root cause analysis for complex incident investigation
    Knowledge Graph Technology
    Implements a proprietary Knowledge Graph for structured data correlation and advanced search capabilities
    Open Data Lake Architecture
    Built on Snowflake data lake infrastructure enabling flexible and scalable telemetry storage and analysis
    Multi-Dimensional Telemetry Analysis
    Enables context-aware correlation across different observability data types including logs, metrics, and distributed traces

    Contract

     Info
    Standard contract
    No

    Customer reviews

    Ratings and reviews

     Info
    4.3
    7 ratings
    5 star
    4 star
    3 star
    2 star
    1 star
    14%
    86%
    0%
    0%
    0%
    7 AWS reviews
    |
    49 external reviews
    Star ratings include only reviews from verified AWS customers. External reviews can also include a star rating, but star ratings from external reviews are not averaged in with the AWS customer star ratings.
    Ilja Summala

    Alerting and metrics improve monitoring efficiency while pricing presents challenges

    Reviewed on Aug 07, 2025
    Review provided by PeerSpot
    ">

    What is our primary use case?

    The primary purposes for which Datadog  is used include infrastructure monitoring and application monitoring.

    The main use case for Datadog  integration capabilities is to monitor workloads in public cloud, and those public cloud integrations that reached the public cloud metric natively were helpful or critical for us. We are not using Datadog for AI-driven data analysis tasks, but more cloud-native and vendor-native tools at the moment, and at the time when I was still in my last employer, we didn't use Datadog for the AI piece at all.

    What is most valuable?

    I find alerting and metrics to be the most effective features of Datadog for system monitoring. It was still cheaper to run Datadog than other alternatives, so the running costs were cheaper because it was SaaS and quite easy to use.

    Datadog is only available in SaaS.

    What needs improvement?

    The pricing nowadays is quite complex.

    In future updates, I would like to see AI features included in Datadog for monitoring AI spend and usage to make the product more versatile and appealing for the customer.

    For how long have I used the solution?

    I have been using Datadog since 2014.

    What was my experience with deployment of the solution?

    There were no problems with the deployment of Datadog.

    The deployment of Datadog just took a few hours.

    What do I think about the stability of the solution?

    The challenges I encountered while using Datadog were in the early days when the product was missing the ability to monitor Kubernetes  and similar features, but they have since added those features. At the moment, I don't think there are too many challenges that I am worrying about.

    How was the initial setup?

    One person is enough to do the installation.

    What other advice do I have?

    I am not working with any of these solutions currently because I'm on sabbatical, but I used to work with Datadog six months ago, and now at the moment I'm on sabbatical.

    We were using the tools that AWS  and Azure  came with natively to monitor the AI workflows on their platforms.

    I used to work as the CTO at Northcloud, but I no longer work there.

    On a scale of one to ten, I rate Datadog an eight out of ten.

    If public cloud, private cloud, or hybrid cloud, which cloud provider do you use?

    Other
    reviewer1599867

    Great technology with a nice interface

    Reviewed on Jan 20, 2025
    Review provided by PeerSpot
    ">

    What is most valuable?

    The technology itself is generally very useful and the interface it great.

    What needs improvement?

    There should be a clearer view of the expenses.

    For how long have I used the solution?

    I have used the solution for four years.

    What do I think about the stability of the solution?

    The solution is stable.

    How are customer service and support?

    I have not personally interacted with customer service. I am satisfied with tech support.

    How would you rate customer service and support?

    Neutral

    Which solution did I use previously and why did I switch?

    I am using ThousandEyes  and Datadog . Datadog  supports AI-driven data analysis, with some AI elements to analyze, like data processing tools and so on. AI helps in Datadog primarily for resolving application issues.

    How was the initial setup?

    It was not difficult to set up for me. There was no problem.

    What was our ROI?

    I can confirm there is a return on investment.

    What's my experience with pricing, setup cost, and licensing?

    I find the setup cost to be too expensive. The setup cost for Datadog is more than $100. I am evaluating the usage of this solution, however, it is too expensive.

    What other advice do I have?

    I would rate this solution eight out of ten. 

    Timothy Spangler

    Makes it easy to track down a malfunctioning service, diagnose the problem, and push a fix

    Reviewed on Jan 07, 2025
    Review provided by PeerSpot
    ">

    What is our primary use case?

    We use Datadog  for monitoring and observing all of our systems, which range in complexity from lightweight, user-facing serverless lambda functions with millions of daily calls to huge, monolithic internal applications that are essential to our core operations. The value we derive from Datadog  stems from its ability to handle and parse a massive volume of incoming data from many different sources and tie it together into a single, informative view of reliability and performance across our architecture.

    How has it helped my organization?

    Adopting Datadog has been fantastic for our observability strategy. Where previously we were grepping through gigabytes of plaintext logs, now we're able to quickly sort, filter, and search millions of log entries with ease. When an issue arises, Datadog makes it easy to track down the malfunctioning service, diagnose the problem, and push a fix.

    Consequently, our team efficiency has skyrocketed. No longer does it take hours to find the root cause of an issue across multiple services. Shortened debugging time, in turn, leads to more time for impactful, user-facing work.

    What is most valuable?

    Our services have many moving parts, all of which need to talk to each other. The Service Map makes visualizing this complex architecture - and locating problems - an absolute breeze. When I reflect on the ways we used to track down issues, I can't imagine how we ever managed before Datadog.

    Additionally, our architecture is written in several languages, and one area where Datadog particularly shines is in providing first-class support for a
    multitude of programming languages. We haven't found a case yet where we
    needed to roll out our own solution for communicating with our instance.

    What needs improvement?

    A tool as powerful as Datadog is, understandably, going to have a bit of a learning curve, especially for new team members who are unfamiliar with the bevy of features it offers. Bringing new team members up to speed on its abilities can be challenging and sometimes requires too much hand-holding. The documentation is adequate, but team members coming into a project could benefit from more guided, interactive tutorials, ideally leveraging real-world data. This would give them the confidence to navigate the tool and make the most of all it offers.

    For how long have I used the solution?

    The company was using it before I arrived; I'm unsure of how long before.

    reviewer092526

    Debugs slow performance with good support and a straightforward setup

    Reviewed on Oct 01, 2024
    Review provided by PeerSpot
    ">

    What is our primary use case?

    We use Datadog for monitoring the performance of our infrastructure across multiple types of hosts in multiple environments. We also use APM  to monitor our applications in production. 

    We have some Kubernetes clusters and multi-cloud hosts with Datadog agents installed. We have recently added RUM to monitoring our application from the user side, including replay sessions, and are hoping to use those to replace existing monitoring for errors and session replay for debugging issues in the application.

    How has it helped my organization?

    We have been using Datadog  since I started working at the company ten years ago and it has been used for many reasons over the years. Datadog  across our services has helped debug slow performance on specific parts of our application, which, in turn, allows us to provide a snappier and more performant application for our customers. 

    The monitoring and alerting system has allowed our team to be aware of the issues that have come up in our production system and react faster with more tools to debug and view to keep the system online for our customers.

    What is most valuable?

    Datadog infrastructure monitoring has helped us identify health issues with our virtual machines, such as high load, CPU, and disk usage, as well as monitoring uptime and alerting when Kubernetes containers have a bad time staying up. Our use of Datadog's Application Monitoring, APM  over the last six years or so has been crucial to identifying performance and bottleneck issues as well as alerting us when services are seeing high error rates, which have made it easier to debug when specific services may be going down.

    What needs improvement?

    We have found that some of the different options for filtering for logs ingestion, APM traces and span ingestion, and RUM sessions vs replay settings can be hard to discover and tough to determine how to adjust and tweak for both optimal performance and monitoring as well as for billing within the console. 

    It can sometimes be difficult to determine which information is documented, as we have found inconsistencies with deprecated information, such as environment variables within the documentation.

    For how long have I used the solution?

    I've been using the solution for ten years.

    What do I think about the stability of the solution?

    The solution seems pretty stable, as we've been using it for more than a decade.

    What do I think about the scalability of the solution?

    The solution seems quite scalable, especially within Kubernetes. Costs are a factor.

    How are customer service and support?

    SUpport has been very helpful whenever we need it.

    How would you rate customer service and support?

    Positive

    Which solution did I use previously and why did I switch?

    We had tried some other APM monitoring in the past, however, it was too expensive, and then we added it to Datadog since we were already using Datadog and it seemed like a good value add.

    How was the initial setup?

    The solution is straightforward to set up. Sometimes, it is complex to find the correct documentation.

    What about the implementation team?

    We handled the setup in-house.

    What was our ROI?

     Our ROI is ease  of mind with alerts and monitoring, as well as the ability to review and debug issues for our customers.

    What's my experience with pricing, setup cost, and licensing?

    Getting settled on pricing is something you want to keep an eye on, as things seem to change regularly.

    Which other solutions did I evaluate?

    We used New Relic previously.

    What other advice do I have?

    Datadog is a great service that is continually growing its solution for monitoring and security. It is easy to set up and turn on and off its features once you have instrumented agents and tailored solutions to your needs.

    Which deployment model are you using for this solution?

    Public Cloud

    If public cloud, private cloud, or hybrid cloud, which cloud provider do you use?

    Other
    reviewer2507895

    Good RUM and APM with good observability

    Reviewed on Sep 30, 2024
    Review provided by PeerSpot
    ">

    What is our primary use case?

    We use Datadog  across the enterprise for observability of infrastructure, APM , RUM, SLO management, alert management and monitoring, and other features. We're also planning on using the upcoming cloud cost management features and product analytics.

    For infrastructure, we integrate with our Kube systems to show all hosts and their data.

    For APM , we use it with all of our API and worker services, as well as cronjobs and other Kube deployments.

    We use serverless to monitor our Cloud Functions.

    We use RUM for all of our user interfaces, including web and mobile.

    How has it helped my organization?

    It's given us the observability we need to see what's happening in our systems, end to end. We get full stack visibility from APM and RUM, through to logging and infrastructure/host visibility. It's also becoming the basis of our incident management process in conjunction with PagerDuty.

    APM is probably the most prominent place where it has helped us. APM gives us detailed data on service performance, including latency and request count. This drives all of the work that we do on SLOs and SLAs.

    RUM is also prominent and is becoming the basis of our product team's vision of how our software is actually used.

    What is most valuable?

    APM is a fundamental part of our service management, both for viewing problems and improving latency and uptime. The latency views drive our SLOs and help us identify problems.

    We also use APM and metrics to view the status of our Pub/Sub topics and queues, especially when dealing with undelivered messages.

    RUM has been critical in identifying what our users are actually doing, and we'll be using the new product analytics tools to research and drive new feature development.

    All of this feeds into the PagerDuty integration, which we use to drive our incident management process.

    What needs improvement?

    Sometimes thesolution changes features so quickly that the UI keeps moving around. The cost is pretty high. Outside of that, we've been relatively happy.

    The APM service catalog is evolving fast. That said, it is redundant with our other tools and doesn't allow us to manage software maturity. However, we do link it with our other tools using the APIs, so that's helpful.

    Product analytics is relatively new and based on RUM, so it will be interesting to see how it evolves.

    Sometimes some of the graphs take a while to load, based on the window of data.

    Some stock dashboards don't allow customization. You need to clone them first, but this can lead to an abundance of dashboards. Also, there are some things that stock dashboards do that can't yet be duplicated with custom dashboards, especially around widget organization.

    The "top users" widget on the product analytics page only groups by user email, which is unfortunate, since user ID is the field we use to identify our users.

    For how long have I used the solution?

    I've used the solution for three and a half years.

    What do I think about the stability of the solution?

    The solution is pretty stable.

    What do I think about the scalability of the solution?

    The solution is very scalable.

    How are customer service and support?

    Support was excellent during the sales process, with a huge dropoff after we purchased the product. It has only recently (within the past year) they have begun to reach acceptable levels again.

    How would you rate customer service and support?

    Neutral

    Which solution did I use previously and why did I switch?

    We did not have a global solution. Some teams were using New Relic.

    How was the initial setup?

    The instructions aren't always clear, especially when dealing with multiple products across multiple languages. The tracer works very differently from one language to another.

    What about the implementation team?

    We handled the setup in-house.

    What's my experience with pricing, setup cost, and licensing?

    We have built our own set of installation instructions for our teams, to ensure consistent tagging and APM setup.

    Which other solutions did I evaluate?

    We did look at Dynatrace .

    What other advice do I have?

    The service was great during the initial testing phase. However, once we bought the product, the quality of service dropped significantly. However, in the past year or so, it has improved and is now approaching the level we'd expect based on the cost.

    Which deployment model are you using for this solution?

    Public Cloud

    If public cloud, private cloud, or hybrid cloud, which cloud provider do you use?

    Google
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