DZone
Thanks for visiting DZone today,
Edit Profile
  • Manage Email Subscriptions
  • How to Post to DZone
  • Article Submission Guidelines
Sign Out View Profile
  • Post an Article
  • Manage My Drafts
Over 2 million developers have joined DZone.
Log In / Join
Please enter at least three characters to search
Refcards Trend Reports
Events Video Library
Refcards
Trend Reports

Events

View Events Video Library

Zones

Culture and Methodologies Agile Career Development Methodologies Team Management
Data Engineering AI/ML Big Data Data Databases IoT
Software Design and Architecture Cloud Architecture Containers Integration Microservices Performance Security
Coding Frameworks Java JavaScript Languages Tools
Testing, Deployment, and Maintenance Deployment DevOps and CI/CD Maintenance Monitoring and Observability Testing, Tools, and Frameworks
Culture and Methodologies
Agile Career Development Methodologies Team Management
Data Engineering
AI/ML Big Data Data Databases IoT
Software Design and Architecture
Cloud Architecture Containers Integration Microservices Performance Security
Coding
Frameworks Java JavaScript Languages Tools
Testing, Deployment, and Maintenance
Deployment DevOps and CI/CD Maintenance Monitoring and Observability Testing, Tools, and Frameworks

Last call! Secure your stack and shape the future! Help dev teams across the globe navigate their software supply chain security challenges.

Modernize your data layer. Learn how to design cloud-native database architectures to meet the evolving demands of AI and GenAI workloads.

Releasing software shouldn't be stressful or risky. Learn how to leverage progressive delivery techniques to ensure safer deployments.

Avoid machine learning mistakes and boost model performance! Discover key ML patterns, anti-patterns, data strategies, and more.

Related

  • How Generative AI Is Revolutionizing Cloud Operations
  • Data Architectures With Emphasis on Emerging Trends
  • AI-Driven API and Microservice Architecture Design for Cloud
  • The State of Observability 2024: Navigating Complexity With AI-Driven Insights

Trending

  • A Developer's Guide to Mastering Agentic AI: From Theory to Practice
  • Is Agile Right for Every Project? When To Use It and When To Avoid It
  • Unlocking the Potential of Apache Iceberg: A Comprehensive Analysis
  • The Cypress Edge: Next-Level Testing Strategies for React Developers
  1. DZone
  2. Data Engineering
  3. AI/ML
  4. Bridging the Observability Gap for Modern Cloud Architectures

Bridging the Observability Gap for Modern Cloud Architectures

Upgrades to the Dynatrace observability platform leverages AI and expanded data pipelines to accelerate cloud-native development by simplifying complexity.

By 
Tom Smith user avatar
Tom Smith
DZone Core CORE ·
Feb. 07, 24 · Analysis
Likes (1)
Comment
Save
Tweet
Share
4.2K Views

Join the DZone community and get the full member experience.

Join For Free

Cloud-native architectures have brought immense complexity along with increased business agility. But with this complexity comes fragility and lack of transparency into system performance and reliability. At Perform 2024, Dynatrace announced three major platform enhancements aimed squarely at bridging this observability gap for engineering teams. 

According to Steve Tack, SVP of Product Management at Dynatrace, a key goal is to "help organizations adopt new technologies with confidence." By leveraging Davis AI and other core platform capabilities, Dynatrace provides intelligent observability and automation from code to production to help teams build, run, and optimize modern cloud-native applications.

A central theme across the announcements is using AI to increase developer productivity and autonomy. As Tack notes, "You can't expect developers to worry about Kubernetes configuration. I want to remove things from the developers' care about so they can focus on being productive." He points to Dell as an example, where Dynatrace has helped improve developer productivity significantly by eliminating mundane tasks.

Bridging the Observability Gap for Modern Cloud Architectures

During our interview, Tack highlighted an insightful study on code quality from code generated by AI models versus humans. As AI capabilities like copilot become more prevalent, software teams need confidence that any auto-generated code meets necessary standards.

Key findings on AI-generated code quality:

  • Code complexity was lower in AI-generated files compared to human-authored files in the same projects
  • AI-generated code had better style guideline adherence overall
  • Test coverage was lower for AI-generated code
  • No significant difference in security vulnerabilities was found

As Tack noted, this demonstrates both the promise and current limitations of AI code generation. While AI promises improved productivity, teams need robust observability to validate the quality, security, and efficiency of the resulting applications.

Taming Generative AI Complexity

One of the most forward-looking announcements was Dynatrace AI Observability, providing end-to-end monitoring for generative AI workloads across the full stack — from infrastructure to models to orchestration. As cutting-edge as generative AI is, Tack warns it can also increase fragility. "Organizations need AI observability that covers every aspect of their generative AI solutions to overcome these challenges. Dynatrace is extending its observability and AI leadership to meet this need."

For development teams beginning to leverage generative AI models like GPT-3, this observability will provide guardrails by monitoring model performance, cost efficiency, and compliance. Ryan Berry of OneStream explains how Dynatrace AI Observability helps them build ML applications with confidence — "to ensure our services supporting these critical workloads are reliable and perform well."

Trusting Data for Analytics

The second major announcement aims to help both data teams and developers trust the accuracy of analytics by providing data observability of both Dynatrace-native data and external sources. As Kulvir Gahunia of TELUS states, "New Dynatrace data observability capabilities will help ensure the data from these custom sources is also high-quality fuel for our analytics and automation."

By monitoring key aspects like data freshness, volume, and lineage, issues can be detected proactively before they impact downstream analytics and decisions. As Bernd Greifeneder, Founder and CTO at Dynatrace explains, "A valuable analytics solution must detect issues in the data that fuels analytics and automation as early as possible."

Taming Data Complexity

Another announcement targets the mushrooming volume and variety of monitoring and business data from hybrid cloud environments. The new OpenPipeline technology provides a single data ingestion pipeline with much higher throughput to allow managing petabyte-scale volumes. 

Crucially, OpenPipeline retains full context as data streams in from sources like logs, metrics, and traces. This enables much richer analytics by understanding dependencies between events. Alex Hibbitt from PhotoBox Group explains how this will extend their use of Dynatrace: "It enables us to manage data from a broad spectrum of sources alongside real-time data collected natively in Dynatrace, all in one single platform, allowing us to make better-informed decisions."

By taming the complexity of hybrid cloud data, Dynatrace OpenPipeline also aims to ease the security and compliance burden for regulated industries as well as reduce costs by avoiding duplicate copies of data. As Tack summarizes, "We’re enabling our customers to evaluate data streams five to ten times faster than legacy technologies."

The Bottom Line

Taken together, these Observability 2.0 enhancements aim to abstract away complexity, increase developer productivity, and provide trusted analytics — ultimately helping Dynatrace customers innovate faster. Tack notes that "generative AI does increase the accessibility, usage, productivity, and efficiency" of developers. By providing robust observability of new technologies like generative AI and analytics over fast-changing hybrid cloud environments, Dynatrace hopes to accelerate cloud-native application development in the enterprise.

AI Architecture Observability Cloud generative AI

Opinions expressed by DZone contributors are their own.

Related

  • How Generative AI Is Revolutionizing Cloud Operations
  • Data Architectures With Emphasis on Emerging Trends
  • AI-Driven API and Microservice Architecture Design for Cloud
  • The State of Observability 2024: Navigating Complexity With AI-Driven Insights

Partner Resources

×

Comments
Oops! Something Went Wrong

The likes didn't load as expected. Please refresh the page and try again.

ABOUT US

  • About DZone
  • Support and feedback
  • Community research
  • Sitemap

ADVERTISE

  • Advertise with DZone

CONTRIBUTE ON DZONE

  • Article Submission Guidelines
  • Become a Contributor
  • Core Program
  • Visit the Writers' Zone

LEGAL

  • Terms of Service
  • Privacy Policy

CONTACT US

  • 3343 Perimeter Hill Drive
  • Suite 100
  • Nashville, TN 37211
  • support@dzone.com

Let's be friends:

Likes
There are no likes...yet! 👀
Be the first to like this post!
It looks like you're not logged in.
Sign in to see who liked this post!