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Humoniq

Humoniq

via Ashby

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Data Engineer

Anywhere
Full-time
Posted 12/15/2025
Direct Apply
Key Skills:
Data Analytics
Process Improvement
Workflow Optimization
Dashboards

Compensation

Salary Range

$70K - 120K a year

Responsibilities

The job involves building data pipelines, analyzing logs, and developing tools for AI evaluation and monitoring.

Requirements

Requires experience in backend data engineering, Python, cloud platforms (preferably GCP), and building production ETL/data pipelines.

Full Description

Who We Are We are a YC-backed startup with $8M+ raised, led by repeat founders who’ve built and scaled successful companies before. Our mission is ambitious: we’re building deeply integrated AI systems that understand, reason, and act to solve real-world problems in travel and transport. We’re not another “move fast and burn out” shop. We believe peak productivity comes when humans have psychological safety, time to sleep, move, eat well, and be understood. That’s the culture we’re building. We don’t believe in overwork or equating hours with outcomes. What matters is results tied to business and customer outcomes—nothing else. What makes us different: We don’t worship grind culture. We believe peak output comes when people are well-rested, strong, loved, safe, and understood. Sleep > All-nighters Excercise & health > Burnout & “hustle” Psychological safety > Fear & politics Because humans at their best → happy, motivated, and productive Location: Mission Viejo, CA (Los Angeles Outskirts) As our Data Engineer, you’ll build the pipelines and tools that let us: Ingest and analyze thousands of AI-driven support conversations Run regression tests on new prompts and models before they hit production Detect drift in user behavior and model outputs before customers feel it You’ll sit at the intersection of data engineering, ML evaluation, and backend infra. You won’t be tuning models all day — you’ll be building the systems that make tuning safe and fast. You’ll work closely with: Min (AI lead) on evaluation design and metrics Victor (Technical product/backend Lead) on schemas, APIs, and internal tools Farzad (COO) on priorities and impact What you’ll do Your first 6–12 months, you’ll: Build a log ingestion pipeline Ingest GCP Cloud Run / application logs into a central store (BigQuery / Postgres) Parse logs into ticket-level and message-level records Join in evaluator comments and metadata so we can analyze behavior end-to-end Ship an AI regression and evaluations Re-run historical conversations through new prompts / models Compare End-of-Conversation classification/Issue/Task action-plan outputs over time Generate clear reports that show regressions, hallucinations, and wins Improve our AI agents through prompting and other changes. Implement drift detection Track distributions of intents, outcomes, and actions over time Detect when user behavior or model outputs deviate from baseline Surface drift in dashboards and alerts so we can act before customers are hurt Build internal dashboards & tools Let evaluators and product see problem tickets quickly Make it trivial to search for “all conversations where X went wrong” Visualize trends so we stop arguing anecdotes and start arguing data Own reliability + documentation Add monitoring and alerting around your pipelines Document your data models, assumptions, and runbooks Make it possible for someone new to pick up your work and move forward You might be a fit if… You’ve owned a data / infra pipeline in production before, not just written a script. You’re comfortable in Python and have used it for ETL, log parsing, or analytics. You’ve worked with cloud infra (GCP preferred; AWS/Azure okay if you can translate). You’ve used data warehouse platforms like BigQuery / Snowflake / Postgres with non-trivial schemas. You think in terms of metrics and failure modes: “What happens if the schema changes?” “How will we know if this silently stops working?” “What’s the rollback if this regression job reveals something bad?” You don’t need to be an ML research person. We care more that you can: Take messy logs and turn them into structured, usable data Design evaluation flows that are repeatable and automatable Make it obvious when things are getting better or worse Must-haves Explicit and demonstrable experience in backend, data engineering, or ML infra (or equivalent real-world work) Strong Python skills for scripting and small services Experience with at least one cloud platform (GCP ideal) Experience building and operating ETL / data pipelines in production Comfort with SQL and analytical databases (BigQuery, Snowflake, Redshift, or similar) Clear written communication and willingness to document decisions Nice-to-haves Experience with: GCP Cloud Run / Cloud Logging / Pub/Sub / Cloud Scheduler BigQuery specifically Data orchestration tools (Airflow, Dagster, Prefect, dbt, etc.) Experience with observability stacks (Grafana, Prometheus, OpenTelemetry, etc.) Familiarity with LLMs, prompt evaluation, or ML monitoring How we work Small team, high ownership — you won’t be a cog. We care about results, not hours. We give direct feedback, quickly. We expect you to push back with reasons, not vibes.

This job posting was last updated on 12/17/2025

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