[Remote] ML Engineer (AI-Native Systems & Forecasting)
Note: The job is a remote job and is open to candidates in USA. Ando is building AI-native workforce infrastructure for hourly workers, focusing on creating accurate demand forecasts and optimizing labor allocation. The ML Engineer will design, develop, and deploy machine learning systems, impacting real-world outcomes through the full data and ML lifecycle.
Responsibilities
- Design, build, and deploy production-grade ML systems for demand forecasting and labor optimization
- Own the full ML lifecycle, including data ingestion, feature engineering, model training, deployment, and monitoring
- Inherit and remediate messy, inconsistent datasets and establish scalable data pipelines
- Architect data systems across ingestion, warehousing, transformation, and feature stores
- Build and maintain LLM-native systems, including RAG pipelines, prompt systems, and evaluation frameworks
- Make pragmatic decisions on modeling approaches, including when to use APIs, fine-tuning, or custom models
- Design and implement model evaluation systems that measure performance continuously, not just at launch
- Implement monitoring, drift detection, and feedback loops to improve model performance over time
- Design and run experiments, including A/B testing and statistical validation of model performance
- Translate model performance and tradeoffs into clear insights for product and business stakeholders
- Collaborate closely with Product, Engineering, and Operations to integrate ML into core workflows
Skills
- 5–10+ years of experience in machine learning, data science, or applied AI roles
- Proven experience shipping ML systems into production environments
- Strong experience working with real-world, imperfect datasets in mid-maturity or scaling organizations
- Deep understanding of the full data stack, including ingestion, warehousing, feature engineering, and model serving
- Experience designing and operating ML pipelines and workflows in production
- Hands-on experience with LLM systems, including RAG, prompt design, and evaluation frameworks
- Strong foundation in statistics, experimentation, and model evaluation
- Experience with monitoring, observability, and model performance tracking over time
- Ability to operate with high ownership, ambiguity, and minimal process overhead
- Strong communication skills, with the ability to translate technical decisions into business impact
- Experience with time-series forecasting, demand modeling, or optimization systems
- Experience building or integrating with labor, logistics, or marketplace systems
- Familiarity with modern ML infrastructure (Airflow, dbt, feature stores, etc.)
- Experience fine-tuning or training custom models
- Experience hiring or mentoring ML or data team members
Company Overview
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