Home/ Partners
§ Technology Ecosystem

The stack we
ship on.

Production AI systems live or die on the infrastructure underneath them. These are the technologies, APIs, and platforms our engineers deploy every week — chosen for performance, reliability, and the freedom to swap any layer without rewriting the system.

45+
Active integrations
12
Foundation models
4
Cloud providers
0
Vendor lock-in
OpenAI Anthropic AWS Google Cloud Cloudflare Vercel Next.js React TypeScript Python PostgreSQL Supabase Stripe Twilio Datadog Hugging Face Docker Kubernetes
§ 01 — Featured

Cornerstones of
every deployment.

Four technologies show up in nearly every AI system we ship. Not because of contracts — because of the gap between the work they do and the next best alternative.

OpenAI Foundation Models

OpenAI

GPT-4o, GPT-5, and the o-series for reasoning. The default provider when latency, multimodal capability, and tool-use reliability matter together. Heavily evaluated against every new release.

Conversational AI Agents Multimodal
Anthropic Foundation Models

Anthropic Claude

Claude 4.5 Sonnet and Opus for long-context, document-heavy workloads, and high-stakes reasoning. The model we reach for when accuracy on adversarial inputs is non-negotiable.

Long context Document AI Compliance-grade
AWS Cloud Infrastructure

Amazon Web Services

Compute, storage, queueing, and Bedrock for managed model hosting. The default substrate for enterprise deployments where compliance, regional control, and vendor maturity move first.

Lambda Bedrock S3 + Aurora
Vercel Edge & Frontend

Vercel

Edge functions, AI SDK, and the global CDN. The deployment layer for customer-facing surfaces — dashboards, AI copilots, and conversational UIs that need sub-200ms response anywhere in the world.

Edge runtime AI SDK Streaming UI
§ 02 — Ecosystem

Fifty-three technologies,
seven categories.

Every active integration in our deployment toolkit, organized by layer. Click a category to focus the grid.

OpenAIOpenAI
AnthropicAnthropic
Google GeminiGemini
Meta LlamaLlama
Hugging FaceHugging Face
CohereCohere
ReplicateReplicate
LangChainLangChain
PyTorchPyTorch
TensorFlowTensorFlow
AWSAWS
Google CloudGoogle Cloud
Microsoft AzureAzure
CloudflareCloudflare
VercelVercel
Fly.ioFly.io
RailwayRailway
RenderRender
PostgreSQLPostgres
SupabaseSupabase
MongoDBMongoDB
RedisRedis
PineconePinecone
ClickHouseClickHouse
SnowflakeSnowflake
Amazon S3S3
SwiftSwift
KotlinKotlin
XcodeXcode
Android StudioAndroid Studio
FlutterFlutter
FirebaseFirebase
FastlaneFastlane
GradleGradle
TypeScriptTypeScript
PythonPython
Node.jsNode.js
Next.jsNext.js
ReactReact
Tailwind CSSTailwind
DockerDocker
KubernetesKubernetes
TerraformTerraform
GitHubGitHub
StripeStripe
TwilioTwilio
PlaidPlaid
SlackSlack
WhatsAppWhatsApp
ResendResend
Auth0Auth0
DatadogDatadog
SentrySentry
GrafanaGrafana
OpenTelemetryOpenTelemetry
PostHogPostHog
Plausible AnalyticsPlausible

Logos shown represent technologies we actively deploy. They do not imply official partnerships or endorsements. Selection is project-driven and reviewed against best-in-class alternatives every quarter.

§ 03 — Architecture

From silicon
to surface.

A composable seven-layer stack. Each layer has a default choice and at least one tested alternative — so the system stays portable, even as the market underneath it shifts every quarter.

07 · Surface
Customer-facing UI
Vercel · Next.js · React
06 · API gateway
Edge orchestration
Cloudflare · Vercel Edge
05 · Application
Business logic
Node · Python · TypeScript
04 · AI runtime
Model orchestration
LangChain · Vercel AI SDK
03 · Foundation models
Reasoning & generation
OpenAI · Anthropic · Meta
02 · Data & retrieval
Vector + relational
Postgres · Pinecone · Redis
01 · Infrastructure
Compute & networking
AWS · GCP · Azure
§ Principle

Every layer is replaceable. By design.

We never let the system get locked into a layer it can't replace. If OpenAI raises prices 4×, the orchestration layer swaps to Anthropic in a day. If a client mandates EU sovereignty, the data layer moves from a US hyperscaler to a Frankfurt-hosted alternative without rewriting the application.

This is the difference between a system you own and a system that owns you.

§ 04 — Why it matters

The ecosystem
is the moat.

AI consultancies that recommend one vendor are selling the vendor. Our ecosystem is the product — and these four principles are why it stays defensible.

01

Model-agnostic

We benchmark frontier models against your actual workload every quarter. The system swaps the underlying model when a better one ships — without you renegotiating a contract.

02

Cloud-agnostic

AWS, GCP, Azure, or self-hosted on your own infrastructure. We ship the same architecture across all four — so where the data lives is your decision, not your vendor's.

03

Best-of-breed

Each tool earns its place on the stack against measurable criteria. No partner kick-backs, no "preferred vendor" agreements that quietly steer the recommendation.

04

No lock-in

Code, IP, models, and pipelines belong to you on day one. If we stop being the right partner, you keep running the system the next day — no handoff, no ransom.

§ Note

The technologies, platforms, and APIs listed throughout this page represent the active stack our engineers deploy at production scale. Logos and brand marks are the property of their respective owners and appear here solely to identify the tools we work with. Inclusion does not imply official partnership, sponsorship, or endorsement. Stack selection is project-driven and re-evaluated each quarter against the best alternatives available.

§ 05 — Engagement

Want to know which
stack fits your problem?

Twenty-minute call. We map your workload to the right layer of the ecosystem and tell you what we'd build — including what to leave out, and which existing vendor to keep.