AWS for Software Companies Podcast

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


Listen Later

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:

  • Camden Swita – Head of AI & ML Innovation, Product Management, New Relic


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

...more
View all episodesView all episodes
Download on the App Store

AWS for Software Companies PodcastBy AWS - Amazon Web Services

  • 5
  • 5
  • 5
  • 5
  • 5

5

9 ratings


More shows like AWS for Software Companies Podcast

View all
Planet Money by NPR

Planet Money

30,693 Listeners

Hidden Brain by Hidden Brain, Shankar Vedantam

Hidden Brain

43,582 Listeners

Economist Podcasts by The Economist

Economist Podcasts

4,166 Listeners

The Twenty Minute VC (20VC): Venture Capital | Startup Funding | The Pitch by Harry Stebbings

The Twenty Minute VC (20VC): Venture Capital | Startup Funding | The Pitch

537 Listeners

Security Now (Audio) by TWiT

Security Now (Audio)

2,011 Listeners

The a16z Show by Andreessen Horowitz

The a16z Show

1,089 Listeners

CyberWire Daily by N2K Networks

CyberWire Daily

1,022 Listeners

Super Data Science: ML & AI Podcast with Jon Krohn by Jon Krohn

Super Data Science: ML & AI Podcast with Jon Krohn

302 Listeners

Cybersecurity Today by Jim Love

Cybersecurity Today

181 Listeners

Practical AI by Practical AI LLC

Practical AI

211 Listeners

AWS Podcast by Amazon Web Services

AWS Podcast

203 Listeners

Dwarkesh Podcast by Dwarkesh Patel

Dwarkesh Podcast

511 Listeners

Cyber Security Headlines by CISO Series

Cyber Security Headlines

139 Listeners

Hard Fork by The New York Times

Hard Fork

5,512 Listeners

AI + a16z by a16z

AI + a16z

35 Listeners