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Exploratory analytics now cover more bespoke scenarios, allowing you to access any element of test results stored in the Dynatrace Grail data lakehouse. Analyzing the delivered payload (response body), response headers, or even details of requests sent during the monitors execution is invaluable when analyzing the failures root cause.
That’s where Dynatrace business events and automation workflows come into play to provide a comprehensive view of your CI/CD pipelines. Let’s explore some of the advantages of monitoring GitHub runners using Dynatrace. Once the data is formatted, it is ingested into Dynatrace Business Analytics using the Dynatrace SDK.
Metadata enrichment improves collaboration and increases analytic value. The Dynatrace® platform continues to increase the value of your data — broadening and simplifying real-time access, enriching context, and delivering insightful, AI-augmented analytics. Our Business Analytics solution is a prominent beneficiary of this commitment.
By automating OneAgent deployment at the image creation stage, organizations can immediately equip every EC2 instance with real-time monitoring and AI-powered analytics. This integration allows organizations to correlate AWS events with Dynatrace automatic dependency mapping, real-time performance monitoring, and root-cause analysis.
Following the launch of Dynatrace® Grail for Log Management and Analytics , we’re excited to announce a major update to our Business Analytics solution. Business events deliver the industry’s broadest, deepest, and easiest access to your critical business data. Business events, Grail, and OneAgent.
This article is the second in a multi-part series sharing a breadth of Analytics Engineering work at Netflix, recently presented as part of our annual internal Analytics Engineering conference. This causal inference design involves a systematic framework we designed to measure game events that relies on synthetic control ( blogpost ).
Recently, we’ve expanded our digital experience monitoring to cover the entire customer journey, from conversion to fulfillment. Key insights for executives: Optimize customer experiences through end-to-end contextual analytics from observability, user behavior, and business data. Google or Adobe Analytics).
Exploding volumes of business data promise great potential; real-time business insights and exploratory analytics can support agile investment decisions and automation driven by a shared view of measurable business goals. To close these critical gaps, Dynatrace has defined a new class of events called business events.
The Dynatrace platform has been recognized for seamlessly integrating with the Microsoft Sentinel cloud-native security information and event management ( SIEM ) solution. They can automatically identify vulnerabilities, measure risks, and leverage advanced analytics and automation to mitigate issues. Runtime application protection.
Log monitoring, log analysis, and log analytics are more important than ever as organizations adopt more cloud-native technologies, containers, and microservices-based architectures. A log is a detailed, timestamped record of an event generated by an operating system, computing environment, application, server, or network device.
On average, organizations use 10 different tools to monitor applications, infrastructure, and user experiences across these environments. Clearly, continuing to depend on siloed systems, disjointed monitoring tools, and manual analytics is no longer sustainable.
As a result, organizations are implementing security analytics to manage risk and improve DevSecOps efficiency. Fortunately, CISOs can use security analytics to improve visibility of complex environments and enable proactive protection. What is security analytics? Why is security analytics important? Here’s how.
This is where Davis AI for exploratory analytics can make all the difference. For example, if you’re monitoring network traffic and the average over the past 7 days is 500 Mbps, the threshold will adapt to this baseline. Using a seasonal baseline, you can monitor sales performance based on the past fourteen days.
This is explained in detail in our blog post, Unlock log analytics: Seamless insights without writing queries. Using patent-pending high ingest stream-processing technologies, OpenPipeline currently optimizes data for Dynatrace analytics and AI at 0.5 Advanced analytics are not limited to use-case-specific apps.
By following key log analytics and log management best practices, teams can get more business value from their data. Challenges driving the need for log analytics and log management best practices As organizations undergo digital transformation and adopt more cloud computing techniques, data volume is proliferating.
Logs provide answers, but monitoring is a challenge Manual tagging is error-prone Making sure your required logs are monitored is a task distributed between the data owner and the monitoring administrator. Often, it comes down to provisioning YAML configuration files and listing the files or log sources required for monitoring.
As user experiences become increasingly important to bottom-line growth, organizations are turning to behavior analytics tools to understand the user experience across their digital properties. Here’s what these analytics are, how they work, and the benefits your organization can realize from using them.
In this blog post, we look at these enhancements, exploring methods for monitoring your Kubernetes environment and showcasing how modern dashboards can transform your data. Leverage dashboards to monitor your environment in real time through log data.
The Dynatrace platform automatically captures and maps metrics, logs, traces, events, user experience data, and security signals into a single datastore, performing contextual analytics through a “power of three AI”—combining causal, predictive, and generative AI. What’s behind it all?
RabbitMQ is designed for flexible routing and message reliability, while Kafka handles high-throughput event streaming and real-time data processing. Kafka is optimized for high-throughput event streaming , excelling in real-time analytics and large-scale data ingestion. What is Apache Kafka?
Most business processes are not monitored. If you can collect the relevant data (and that’s a big if), the problem shifts to analytics. As a result, most business processes remain unmonitored or under-monitored, leaving business leaders and IT operations teams in the dark. First and foremost, it’s a data problem.
Business events are a special class of events, new to Business Analytics; together with Grail, our data lakehouse, they provide the precision and advanced analytics capabilities required by your most important business use cases. What are business events? This diagram shows a few examples of business events.
In many cases, events are generated as these workloads go through different phases of their life cycles. For instance, events appear when the scheduler performs actions to bring workloads back to a desired state. For better or worse, every Kubernetes user learns about the CrashLoopBackOff and ImagePullBackOff events.
Increasingly, organizations seek to address these problems using AI techniques as part of their exploratory data analytics practices. The next challenge is harnessing additional AI techniques to make exploratory data analytics even easier. Start by asking yourself what’s there, whether it’s logs, metrics, or traces.
It gives you visibility into which components are monitored and which are not and helps automate time-consuming compliance configuration checks. Discovery & Coverage helps prevent unexpected outages by detecting and remediating monitoring coverage gaps across your entire enterprise.
This granular level of transparency helps identify cost drivers, monitor usage patterns, and uncover opportunities for cost savings. Figure 4: Set up an anomaly detector for peak cost events. With the release of Dynatrace SaaS version 1.303, Cost Allocation is available for host monitoring, security protection, and security analytics.
I’ve always been intrigued by monitoring the inner workings of technology to better understand its impact on the use cases it enables and supports. Executives drive business growth through strategic decisions, relying on data analytics for crucial insights. Common business analytics incur too much latency.
Agricultural businesses use IoT sensors to automate irrigation systems, while mining and water supply organizations traditionally rely on SCADA to optimize and monitor water distribution, quality, and consumption. This information is essential for later advanced analytics and aircraft tracking.
What is log analytics? Log analytics is the process of viewing, interpreting, and querying log data so developers and IT teams can quickly detect and resolve application and system issues. In what follows, we explore log analytics benefits and challenges, as well as a modern observability approach to log analytics.
What is log analytics? Log analytics is the process of viewing, interpreting, and querying log data so developers and IT teams can quickly detect and resolve application and system issues. In what follows, we explore log analytics benefits and challenges, as well as a modern observability approach to log analytics.
Digital experience monitoring (DEM) is crucial for organizations to meet this demand and succeed in today’s competitive digital economy. DEM solutions monitor and analyze the quality of digital experiences for users across digital channels. The time taken to complete the page load.
With the pace of digital transformation continuing to accelerate, organizations are realizing the growing imperative to have a robust application security monitoring process in place. What are the goals of continuous application security monitoring and why is it important?
With up to 70% of security events going uninvestigated, security analysts need all the help they can get. After a security event, many organizations often don’t know for months (or even years) when why or how it happened. But this limited approach causes challenges in today’s hybrid multicloud reality.
Dataflow overview Dynatrace ActiveGate extensions allow you to extend Dynatrace monitoring to any remote technology that exposes an interface. Dynatrace users typically use extensions to pull technical monitoring data, such as device metrics, into Dynatrace. There are three high-level steps to set up the database business-event stream.
Business analytics is a growing science that’s rising to meet the demands of data-driven decision making within enterprises. To measure service quality, IT teams monitor infrastructure, applications, and user experience metrics, which in turn often support service level objectives (SLO)s. What is business analytics?
IT pros want a data and analytics solution that doesn’t require tradeoffs between speed, scale, and cost. With a data and analytics approach that focuses on performance without sacrificing cost, IT pros can gain access to answers that indicate precisely which service just went down and the root cause. Event severity.
An example of a critical event-based messaging service for many businesses is adding a product to a shopping cart. We’ve introduced brand-new analytics capabilities by building on top of existing features for messaging systems. Apache Kafka. Finally, you can configure and activate them there. New to Dynatrace?
Dynatrace business events address these systemic problems, delivering real-time business observability to business and IT teams with the precision and context required to support data-driven decisions and improve business outcomes. Business data often lacks IT context, which prevents effective BizOps collaboration.
Not only that, teams struggle to correlate events and alerts from a wide range of security tools, need to put them into context, and infer their risk for the business. In this blog post, we’ll use Dynatrace Security Analytics to go threat hunting, bringing together logs, traces, metrics, and, crucially, threat alerts.
Monitoring business processes is one thing organizations can do to help improve the key business processes that enable them to provide great customer experiences. Business process monitoring refers to continuously tracking and analyzing key performance indicators (KPIs) from relevant process milestones.
With extended contextual analytics and AIOps for open observability, Dynatrace now provides you with deep insights into every entity in your IT landscape, enabling you to seamlessly integrate metrics, logs, and traces—the three pillars of observability. Dynatrace extends its unique topology-based analytics and AIOps approach.
Highlighting NewReleases For new content, impression history helps us monitor initial user interactions and adjust our merchandising efforts accordingly. Analytical Insights Additionally, impression history offers insightful information for addressing a number of platform-related analytics queries.
Recent platform enhancements in the latest Dynatrace, including business events powered by Grail™, make accessing the goldmine of business data flowing through your IT systems easier than ever. Business events can come from many sources, including OneAgent®, external business systems, RUM sessions, or log files.
This centralized approach can compel organizations to prioritize process monitoring and optimization initiatives to just a few mission-critical processes while neglecting those with less obviousthough significantimpact on business outcomes. These benefits come from robust process analytics, often augmented by AI.
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