Explore real-world engineering experiences from top tech companies.
Receive daily AI-curated summaries of engineering articles from top tech companies worldwide.
Artifacts is a distributed, versioned filesystem built on Git that enables AI agents and serverless compute to programmatically create, manage, and collaborate on code repositories.
Vercel Workflows is a new programming model for building durable, long-running agents and backends that eliminates the need for separate orchestration services.
Cloudflare rearchitected its Workflows control plane to support agent-triggered workflows at machine speed, scaling from 4,500 to 50,000 concurrent instances and 100 to 300 creations per second.
Cloudflare presents an enterprise architecture for securely scaling Model Context Protocol (MCP) deployment, integrating security controls with centralized governance.
Cloudflare's network has reached 500 Tbps of external capacity across 330+ cities, representing 16 years of scaling from a 2010 startup to a global security and developer platform.
Meta escaped the "forking trap" by migrating from a divergent WebRTC fork to a modular upstream-based architecture, enabling continuous upgrades while serving billions of users.
This post explains how Estée Lauder Companies used Cloud Run worker pools to build a scalable, pull-based infrastructure for their consumer-facing AI applications.
This article discusses the evolution of software infrastructure to support AI agents, driven by exponential growth in agent-initiated deployments.
This article describes how Databricks eliminates organizational silos in financial services institutions by providing a unified data platform for collaboration across clients, operations, and finance teams.
This article discusses Pinterest's evolution of the multi-objective optimization layer in their home feed recommendation system.
This article explains how Envoy proxy addresses the networking and policy enforcement challenges unique to agentic AI systems.
Meta's KernelEvolve is an agentic system that autonomously optimizes AI kernel code for heterogeneous hardware including NVIDIA GPUs, AMD GPUs, MTIA silicon, and CPUs.