New Relic expands enterprise full-stack observability to include MLOps (2024)

New Relic has updated its full-stack analysis and observability platform, New Relic One, to allow data scientists and machine learning engineers to import data from different systems, monitor ML application performance and retrain models.

New Relic expands enterprise full-stack observability to include MLOps (1)

As enterprises expand their machine learning (ML) capabilities to analyze data generated by increasingly complex applications, New Relic has updated its New Relic One full-stack observability application to include machine learning operations (MLOps) designed to help manage multiple data and ML models across different business units.

Along with application, network, infrastructure, browser monitoring, and log and error management, New Relic One is designed to allow data scientists and ML engineers to not only monitor ML model performance but also retrain models after raising alerts, said Guy Fighel, general manager of applied intelligence and group vice president of product engineering at New Relic.

Observability is a relatively new term in IT, used to describe the task of monitoring enterprise applications, data flow and distributed infrastructure. Systems that offer observability go beyond prior application performance monitoring (APM) programs, offering a high-level overview of IT infrastructure as well as granular metrics, to allow for efficient application, network, data, and security management.

According to a research report released by log-management application provider LogDNA, 75% of responding companies are still struggling to achieve true observability despite substantial investments in tools.

The study, which polled 200 senior engineering professionals across the US, showed that two-thirds of organizations currently spend $100K or more annually on observability tools, with 38% spending $300K or more annually.

MLOps aids system observability

The New Relic One update is designed to help alleviate several pain points for data scientists, chief among them the changing nature of ML or AI models, as they depend on underlying data and code that may become irrelevant as real-world conditions change.

“The ML models deteriorate over the course of time,” saidAndy Thurai, research vice president and principal analyst at Constellation Research. “So you need model monitoring to measure the model performance, skew, staleness/freshness of the model, model recall, model precision, and model accuracy metrics. Depending on the application and usage, the models can change in a matter of seconds or can be valid for days/weeks/years in rare cases.”

The New Relic One update allows software engineers and data scientists to either import their own data or integrate with data science platforms, as well as monitor machine learning models and interdependencies along with other application components, including infrastructure, Fighel said.

Currently, New Relic supports data science platforms such as AWS SageMaker, DataRobot, Aporia, Superwise, Comet, DAGsHub, Mona and TruEra among others.

The company said that enterprises can create custom dashboards to track accuracy of machine learning models and generate alerts for unusual changes before they have an impact on the business or customers.

Observability to break data silos, speed devops

Another problem for enterprises deploying ML applications, according to New Relic’s Fighel, is how different teams across enterprises cannot work with each other efficiently because of disparate dashboards and separate interfaces.

“There is a major gap between the model producers, AKA data scientists, versus model implementors, AKA data engineering, and devops teams. By having tools like this, a model can be productionized easily,” Thurai said.

The New Relic One platform can help bring the teams together even if the enterprise has already invested in separate data science platforms, by providing a common interface that lets data scientists and other users import data from, and view models built on, different ML platforms, Fighel said.

This capability can also help to address vendor lock-ins, Fighel said. According to the LogDNA research report, more than half of professionals surveyed said that enterprises can’t implement the tools they want because of vendor lock-in.

Pricing and availability

The new ML capabilities, which are in general availability, are being offered at no extra cost on the New Relic One platform with a 100GB per month capping. However, Fighel said that the new system will soon follow a consumption pricing model.

Some of New Relic’s competitors include companies such as Sumo Logic, AppDynamics, Dynatrace, ManageEngine and Microsoft Azure Application Insights suite.

Related content

  • analysisBeyond the usual suspects: 5 fresh data science tools to try today The mid-month report includes quick tips for easier Python installation, a new VS Code-like IDE just for Python and R users, and five newer data science tools you won't want to miss.By Serdar YegulalpJul 12, 20242 minsPythonProgramming LanguagesSoftware Development
  • analysisGenerative AI won’t fix cloud migration You’ve probably heard how generative AI will solve all cloud migration problems. It’s not that simple. Generative AI could actually make it harder and more costly. By David LinthicumJul 12, 20245 minsGenerative AIArtificial IntelligenceCloud Computing
  • newsHR professionals trust AI recommendations HireVue survey finds 73% of HR professionals trust AI to make candidate recommendations, while 75% of workers are opposed to AI making hiring decisions. By Paul KrillJul 11, 20243 minsTechnology IndustryCareers
  • how-toSafety off: Programming in Rust with `unsafe` What does it mean to write unsafe code in Rust, and what can you do (and not do) with the 'unsafe' keyword? The facts may surprise you.By Serdar YegulalpJul 11, 20248 minsRustProgramming LanguagesSoftware Development
  • Resources
  • Videos
New Relic expands enterprise full-stack observability to include MLOps (2024)

FAQs

Is New Relic an observability tool? ›

New Relic Platform

Get full-stack observability across your enterprise to predict and detect issues before they impact customers.

What is the full stack observability strategy? ›

Full stack observability tools use telemetry data, such as metrics, logs, and traces (also known as the three pillars of observability) from the entire IT environment of an organization to gain in-depth insights into the performance, health, and behavior of their applications and infrastructure.

What does New Relic recognize as observability maturity? ›

Observability plays a key role in achieving this by providing insights into the internal states of systems through the collection, processing, and analysis of the system's telemetry data. Observability maturity refers to an organization's capability to understand and improve its systems' performance and reliability.

What is full stack observability essentials? ›

Key notions and concepts of full-stack observability:
  • System state.
  • Microservices.
  • Telemetry querying.
  • Visualization and reporting.
  • Shift-left observability.
  • OpenTelemetry.

What is the difference between Splunk observability and New Relic? ›

New Relic and Splunk are monitoring and observability tools with similar features. However, both tools differ in terms of their application and use cases. New Relic is easier to get started and is cheaper to use compared to Splunk. Splunk on the other hand has more strength in log management and application security.

What is observability in MLOps? ›

Think of observability as a window into your data—without the ability to view the inputs, you won't understand why you're getting the outputs you receive. Once you have observability, your MLOps team will have actionable insights to improve your models.

What are the 4 signals of observability? ›

The golden signals — latency, traffic, errors, and saturation — help capture critical aspects of system behavior. SRE principles emphasize reliability, scalability, and operability, promoting observability as a core pillar of system design and operation.

What are New Relic golden metrics? ›

Golden metrics and golden tags are bits of information about an entity that we consider to be the most important for that entity. We use this information to display a brief overview of an entity across all New Relic.

What is an example of observability? ›

Example 1: Debugging Distributed Systems with Logs and Traces. Observability can be a powerful tool for debugging distributed systems. With detailed data from logs and traces, engineers can pinpoint the exact source of an issue, diagnose and fix it in a timely manner.

What does New Relic measure? ›

New Relic is a monitoring tool that tracks web applications' performance metrics and other data. Such tools provide essential information to help you quickly pinpoint any performance issues. This allows for more efficient troubleshooting, potentially reducing your site maintenance costs.

What is the difference between monitoring and observability in full-stack? ›

The main difference between observability and monitoring is that monitoring is better suited for simpler systems where parameters are well-known and performance is well-understood, while observability is better suited for more complex, multi-system environments with more potential unknowns.

What are the key components of observability? ›

The key components of observability: telemetry types and the core analysis loop. Observability emphasizes collecting and correlating diverse data sources to gain a holistic understanding of a system's behavior.

What is full observability? ›

Full-stack observability is the ability to determine the state of every endpoint in a distributed IT environment based on its telemetry data. Endpoints include on-premises servers, Kubernetes infrastructure, cloud-hosted infrastructure and services, and open-source technologies.

What type of tool is New Relic? ›

New Relic is a monitoring tool that tracks web applications' performance metrics and other data. Such tools provide essential information to help you quickly pinpoint any performance issues. This allows for more efficient troubleshooting, potentially reducing your site maintenance costs.

What is the observability tool? ›

Observability tools collect and analyze data, user experience, infrastructure, and network telemetry to resolve issues before they impact business key performance indicators (KPIs).

Is New Relic a monitoring tool? ›

New Relic is a web-based software used for full-stack monitoring. It allows you to monitor applications, infrastructure, web browsers, and other components on a single platform. This tool tracks and provides your web application performance details in real time.

What is the difference between observability and SIEM? ›

Observability, on the other hand, is the ability to gain insights into system behavior through telemetry data. SIEM systems rely on telemetry data, such as log files, network traffic, and endpoint data, to provide a holistic view of an organization's security posture.

References

Top Articles
Latest Posts
Article information

Author: Wyatt Volkman LLD

Last Updated:

Views: 5976

Rating: 4.6 / 5 (46 voted)

Reviews: 93% of readers found this page helpful

Author information

Name: Wyatt Volkman LLD

Birthday: 1992-02-16

Address: Suite 851 78549 Lubowitz Well, Wardside, TX 98080-8615

Phone: +67618977178100

Job: Manufacturing Director

Hobby: Running, Mountaineering, Inline skating, Writing, Baton twirling, Computer programming, Stone skipping

Introduction: My name is Wyatt Volkman LLD, I am a handsome, rich, comfortable, lively, zealous, graceful, gifted person who loves writing and wants to share my knowledge and understanding with you.