Resolve.ai
  • Product
    • AI SRE
    • Debugging prod
  • Customers
    • AI SRE buyers guide
    • Evaluating AI for prod
    • AI ROI Playbook
    • Prompt library
    • Integrations
    • Security
    • Docs
  • Blog
    • About us
    • Careers
    • Events
Book a demo
Sign up
Sign up
  • Home
  • Product
  • Use cases
  • Customers
  • Resources
  • Blog
  • Company

Social

  • Linkedin
  • Youtube
  • X
Sign up
Privacy PolicyTerms of Service

©Resolve.ai - All rights reserved

Resolve.ai logo

Machines on call for humans

Contact us
Product
Use cases
AI SREDebugging prod
Customers
Resources
AI SRE buyers guideEvaluating AI for prodAI ROI PlaybookPrompt libraryGlossary
Blog
Company
About usCareersEvents
ProductCustomersBlog

Join the conversation

LinkedInX/TwitterYouTube

©Resolve.ai - All rights reserved

Terms of ServicePrivacy Policy
Back to Blog

How Coinbase Delivers 10x Engineering using AI for Prod

01/15/2026
Share:

How Coinbase Delivers 10x Engineering using AI for Prod

On Demand Event | Duration: 45 minutes | Originally aired: January 8, 2026

About This Session

10x engineers are no longer a myth. At Coinbase, AI already sits in incident channels, reads graphs, checks deploy logs, and flags false alarms so humans can focus on the hard problems. Learn how their engineering teams leverage Resolve AI hundreds of times per week to keep shipping velocity high while maintaining world-class reliability.

For more about how Coinbase made investigation time 72% faster, read the Coinbase case study.

What you'll learn:

  • How Coinbase runs AI-native ops in production: How AI plugs directly into their incident workflow, joins channels automatically, and collaborates with humans in real time instead of being a separate "AI SRE" tool.
  • How to use AI as the first responder for noisy production signals: How Coinbase taught Resolve AI to query custom Datadog events to spot recent Terraform applies or code deployments, and to check a dedicated load testing dashboard so it can quickly flag false alarms.
  • How to close the loop on reliability, every day: How Coinbase uses AI for daily SLO check-ins, automated reports on what breached, and continuous back testing so the system gets smarter with every incident.
  • A repeatable playbook you can adopt: Concrete patterns and design choices that you can use to move from "AI as an experiment" to "AI as the default way you operate production."

You'll walk away knowing how Coinbase uses AI today to actually run production systems, not just summarize tickets or act as a sidekick in an editor.

Get the “AI for prod” newsletter

Get the “AI for prod” newsletter

Stay current on how the best engineering teams are using AI in production. Customer spotlights, product updates, how-tos, and more delivered monthly.

Angelo Marletta's avatar

Angelo Marletta

Staff Software Engineer

@ Coinbase

Josh Grose's avatar

Josh Grose

Head of GTM

AI for prod ebook

AI for prod ebook

Learn how top engineering teams use AI to run production.

Download
Angelo Marletta's avatar

Angelo Marletta

Staff Software Engineer

@ Coinbase

Josh Grose's avatar

Josh Grose

Head of GTM

lead-title-icon

Related Post

The role of multi agent systems in making software engineers AI-native
Technology

The role of multi agent systems in making software engineers AI-native

Discover why most AI approaches like LLMs or individual AI agents fail in complex production environments and how multi-agent systems enable truly AI-native engineering. Learn the architectural patterns from our Stanford presentation that help engineering teams shift from AI-assisted to AI-native workflows.

Fireside Chat: How FinServ Companies Optimize Cost with AI for Prod

Fireside Chat: How FinServ Companies Optimize Cost with AI for Prod

Hear AI strategies and approaches from engineering leaders at FinServ companies including Affirm, MSCI, and SoFi.

Introducing Resolve AI
Company

Introducing Resolve AI

Resolve AI has launched with a $35M Seed round to automate software operations for engineers using agentic AI, reducing mean time to resolve incidents by 5x, and allowing engineers to focus on innovation by handling operational tasks autonomously.