Full-Stack Engineer (Data Engineering Focus) at GNO Partners | Torre

Full-Stack Engineer (Data Engineering Focus)

You'll architect the data backbone, powering actionable insights and scaling a high-impact platform.
Emma highlights
This highlight was written by Emma’s AI. Ask Emma to edit it.
Full-time

Legal agreement: Employment

Provide your expected compensation while applying
location_on
Remote (anywhere)
Match
skeleton-gauges
You have opted out of job matches in .
To undo this, go to the 'Skills and Interests' section of your preferences.
Review preferences
Shared by
Emma of Torre.ai
about 1 month ago

Requirements and responsibilities


GNO Partners | Remote (Global) | Mid-Level (3–5 years)About GNO PartnersGNO Partners helps Amazon sellers run smarter, more profitable businesses. We're building a platform that aggregates Amazon report data into actionable insights and pushes optimizations back to Amazon at scale. Our next major milestone is replacing manual report uploads with direct integrations to Amazon's SP-API and Ads API — and that's where this role comes in.What You'll DoThis role is full-stack, but with a clear lean toward data engineering. You'll:Design and build the data pipelines that pull from Amazon SP-API and Ads API into our Postgres warehouse — handling rate limits, retries, schema evolution, and the messy realities of vendor APIs.Architect ingestion, transformation, and aggregation layers that power our reporting tools.Build new report tools end-to-end alongside the rest of the engineering team — you're not only on pipelines.Help us scale our data layer as we move from per-client manual uploads to automated, multi-tenant data flow.Contribute to our AI insights layer — feeding clean, structured data into LLM-powered analysis.What We're Looking For3–5 years of full-stack experience, with a demonstrable track record of building data pipelines in production. We want to see real examples — pipelines you designed, problems you solved, scale you handled.Strong with TypeScript, Node.js, NestJS, and React.Deep comfort with Postgres / Supabase — partitioning, indexing, query optimization, handling large datasets.Hands-on experience with AWS: S3, Lambda, SNS, SQS, EC2. Bonus for orchestration tools (Step Functions, EventBridge, Airflow, Temporal, etc.).Experience integrating with third-party APIs at scale — pagination, rate limiting, backfills, incremental sync.Basic familiarity with AI agentic systems — you've worked with or explored LLMs, tool-use, or agent frameworks.Pragmatic and product-aware — you understand pipelines exist to serve user-facing features, not for their own sake.Nice to HaveDirect experience with Amazon SP-API and/or Ads API.Background with ETL frameworks, streaming systems (Kafka, Kinesis), or workflow engines (Temporal, Airflow).Experience with data quality tooling, observability, or pipeline monitoring.Why JoinYou'll own the data backbone of a platform that's actively scaling.High-leverage work — every pipeline you build directly enables new product surface area.Clear path to work across pipelines, product, and AI as the platform evolves.
Optionally, you can add more information later (benefits, pre-screening questions, etc.)
check_circle

Payment confirmed

A member of the Torre team will contact you shortly

In the meantime, continue adding information to your job opening.