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Everflow - Partner Marketing Platform Tech Stack

Enterprise affiliate tracking and partner marketing infrastructure

Technology, Information and Internet Mountain View, California 51–200 employees Founded 2016 Privately Held

Everflow operates an affiliate and partner marketing platform serving 1,200+ brands with tracking, attribution, and payout automation. The tech stack reveals an AI-first engineering organization: Gemini and Vertex AI are active adoptions paired with a model routing and token budgeting middleware project, indicating intentional cost and latency control as they embed LLMs into their core product. Hiring skews heavily toward engineering (6 of 13 open roles, mostly senior/manager level), with active projects in API security, fraud detection automation, and full-cycle feature ownership — a pattern suggesting they're scaling toward more complex, higher-touch product work.

Tech Stack 28 technologies

Core StackFigma Jira BigQuery Kubernetes Vertex AI HubSpot Playwright Jenkins Java Python C# JavaScript TypeScript MySQL Spring Angular gRPC Redis GCP Pub/Sub Gemini Cloud Run Outreach Robot Framework WireMock Tipalti
AdoptingVertex AI RAG Gemini
ReplacingRAG

What Everflow - Partner Marketing Platform Is Building

Challenges

  • Expanding referral program
  • Automated fraud detection
  • Messy data problems
  • Data hygiene and governance
  • Revenue system inefficiencies
  • Complex product development
  • Tight shipping deadlines
  • Transitioning from data-rich to ai-driven
  • Latency and cost control
  • High-concurrency distributed system

Active Projects

  • Model routing and token budgeting middleware
  • Secure api layer for gemini
  • Co-marketing initiatives
  • Referral tracking system management
  • Gemini and vertex ai integration
  • Sales tech stack automations
  • Leadership dashboards
  • Data hygiene program
  • Full-cycle feature ownership
  • Complex product development

Hiring Activity

Accelerating15 roles · 15 in 30d

Department

Engineering
6
Marketing
4
Sales
2
Design
1

Seniority

Senior
5
Manager
4
Mid
4
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About Everflow - Partner Marketing Platform

Everflow provides an enterprise-grade platform for managing affiliate and partner marketing programs at scale. The product includes cookieless tracking, deep-linking, anti-fraud capabilities, and a curated affiliate marketplace, integrated directly with major CRMs and ad platforms to automate partner payouts and attribution. The company operates out of Mountain View with a 51–200 person team, founded in 2016. Current focus spans building automated fraud detection, improving data hygiene governance, and transitioning the product architecture from data-rich systems toward AI-driven decision layers while managing latency and cost in high-concurrency distributed environments.

HeadquartersMountain View, California
Company Size51–200 employees
Founded2016
Hiring MarketsUnited States, Canada

Frequently Asked Questions

What tech stack does Everflow use?

Everflow runs on GCP (BigQuery, Pub/Sub, Kubernetes, Cloud Run), Java/Python/TypeScript backends, Angular frontend, with MySQL and Redis for state. They actively adopt Gemini, Vertex AI, and RAG; use Jenkins/Playwright/Robot Framework for testing and deployment.

How many brands use Everflow?

Over 1,200 brands use Everflow's Partner Marketing Platform for affiliate tracking, attribution, and payout management.

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How this profile is built

Everflow - Partner Marketing Platform's technology stack, projects, and hiring signals are inferred from public hiring and company data — career pages, public listings, and company web presence — then clustered and de-duplicated. Figures are estimates that refresh over time. Read our full methodology →

This is not an official vendor or customer list. It is a technology-adoption signal inferred from public data, intended for B2B research.