PLAY PODCASTS
Ep097: Specialized Agents & Agentic Orchestration - New Relic and the Future of Observability
Episode 97

Ep097: Specialized Agents & Agentic Orchestration - New Relic and the Future of Observability

AWS for Software Companies Podcast · Nate Goyer

April 28, 202529m 4s

Audio is streamed directly from the publisher (rss.art19.com) as published in their RSS feed. Play Podcasts does not host this file. Rights-holders can request removal through the copyright & takedown page.

Show Notes

New Relic's Head of AI and ML Innovation, Camden Swita discusses their four-cornered AI strategy and envisions a future of "agentic orchestration" with specialized agents.

Topics Include:

  • Introduction of Camden Swita, Head of AI at New Relic.
  • New Relic invented the observability space for monitoring applications.
  • Started with Java workloads monitoring and APM.
  • Evolved into full-stack observability with infrastructure and browser monitoring.
  • Uses advanced query language (NRQL) with time series database.
  • AI strategy focuses on AI ops for automation.
  • First cornerstone: Intelligent detection capabilities with machine learning.
  • Second cornerstone: Incident response with generative AI assistance.
  • Third cornerstone: Problem management with root cause analysis.
  • Fourth cornerstone: Knowledge management to improve future detection.
  • Initially overwhelmed by "ocean of possibilities" with LLMs.
  • Needed narrow scope and guardrails for measurable progress.
  • Natural language to NRQL translation proved immensely complex.
  • Selecting from thousands of possible events caused accuracy issues.
  • Shifted from "one tool" approach to many specialized tools.
  • Created routing layer to select right tool for each job.
  • Evaluation of NRQL is challenging even when syntactically correct.
  • Implemented multi-stage validation with user confirmation step.
  • AWS partnership involves fine-tuning models for NRQL translation.
  • Using Bedrock to select appropriate models for different tasks.
  • Initially advised prototyping on biggest, best available models.
  • Now recommends considering specialized, targeted models from start.
  • Agent development platforms have improved significantly since beginning.
  • Future focus: "Agentic orchestration" with specialized agents.
  • Envisions agents communicating through APIs without human prompts.
  • Integration with AWS tools like Amazon Q.
  • Industry possibly plateauing in large language model improvements.
  • Increasing focus on inference-time compute in newer models.
  • Context and quality prompts remain crucial despite model advances.
  • Potential pros and cons to inference-time compute approach.


Participants:


See how Amazon Web Services gives you the freedom to migrate, innovate, and scale your software company at https://aws.amazon.com/isv/

Topics

cloud computing providersawsAmazon.comcloud servicesAmazoncloud computingcloud serviceAI#AWSforSoftwareGenerative AIAgentic AI