Pyyne is an AI-native consultancy with a full-stack engineering footprint spanning TypeScript/Node.js frontend (React, NestJS), backend infrastructure (AWS, Azure, GCP), and data/ML layers (Python, PySpark, RAG). The active project mix—AI platform integrations, incident response automation, anomaly detection, financial services solutions—reveals a services firm positioning around production AI systems rather than pure consulting. Hiring velocity is accelerating exclusively in senior and lead engineering roles across Brazil and Portugal, suggesting both scaling delivery capacity and deepening technical bench.
Pyyne, founded in 2020 and based in New York, is an AI services firm that pairs forward-deployed engineers with client infrastructure to build and operate software and agentic systems at scale. The company serves mid-to-large organizations across financial services, incident management, and monitoring use cases. Its tech foundation spans modern full-stack (React, NestJS, Node.js, Express) and cloud infrastructure (AWS, Azure, GCP), with active focus on RAG architecture and AI-driven automation. The client engagement model centers on hands-on engineering delivery rather than advisory-only relationships.
Pyyne uses TypeScript, Node.js, React, and NestJS for application layer; AWS, Azure, and GCP for cloud infrastructure; Python, PySpark, and Databricks for data/ML; and SQL/PostgreSQL for databases. RAG is actively being adopted.
Current projects include AI platform integration, incident response automation, anomaly detection systems, financial services solutions, and RAG architecture implementation for clients.
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Pyyne'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.