ML Engineer (Senior)
Quick Summary
Machine Learning Engineer (Senior) About AZX Our mission is to accelerate positive impact in critical industries through AI transformation. We specialize in physics-informed ML and enterprise AI solutions that directly address climate and sustainability challenges.
You will work on AI projects in client engagements and, over time, internal platform capabilities. You will: Turn ambiguous client problems into shipping code.
Our mission is to accelerate positive impact in critical industries through AI transformation. We specialize in physics-informed ML and enterprise AI solutions that directly address climate and sustainability challenges.
We’re growing quickly and already work with category-leaders in real estate (CBRE), energy (LevelTen Energy), logistics (Flexe) and utilities (Puget Sound Energy).
We’re a public benefit corporation, founded in 2024, and have been profitable from the beginning (bootstrapped with consulting).
We work on challenges in clean energy, decarbonization, climate risk, energy systems, and global economics. We’re building our company for long-term success and aim to create the ultimate place to work for those passionate about AI and making a positive impact.
About the Role
~1 min readWe seek a Machine Learning (ML) Software Engineer to help us deliver for our clients and invest in our platform. You’ll be one of the first full-time ML engineers and will have an enormous impact on all aspects of what we do.
You'll join a company founded by experienced, successful veterans in climate and AI. The team brings exceptional expertise from Microsoft, AI2, ARM, acquired startups, and even a major utility, including PhDs, published ML researchers, and former industry executives.
The role is initially 70% client delivery and 30% platform development, shifting to 50/50 over the first year.
Some of our client projects are enterprise-style, and some are fast innovation cycles. Over time, we’ll be investing more in our own platform to accelerate client value.
Responsibilities
~1 min readYou will work on AI projects in client engagements and, over time, internal platform capabilities.
You will:
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Turn ambiguous client problems into shipping code.
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Drive projects from discovery to deployment
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Collaborate with client and internal project teams
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Design and write clean, scalable code at appropriate quality standards (sometimes “right”, and sometimes “right now”).
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Design, integrate, and productionize ML solutions including predictive models, GenAI systems, physics-informed ML, and digital twins.
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Collaborate with domain experts in energy, real estate, and climate to translate business needs into ML solutions
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Advocate for engineering best practices and positive dev culture
Requirements
~1 min read5+ years building and deploying ML systems in production environments
Expert-level Python and experience with PyTorch / TensorFlow
Deep expertise in at least one domain: NLP, Computer Vision, Time-Series, or Reinforcement Learning
Generative AI and LLM-related capabilities (e.g., prompt engineering, RAG, fine-tuning, LangChain, model evaluation tooling)
MLOps and infrastructure automation (e.g., CI/CD for ML, Docker, Kubernetes, Terraform, MLflow, Kubeflow)
Strong engineering fundamentals: system design, scalability, testing, and monitoring
Track record of translating ambiguous business problems into production ML solutions
Experience with cloud ML platforms (AWS SageMaker, GCP Vertex AI, or Azure ML)
Champion for quality (model validation, reproducibility, monitoring, bias/variance checks)
Requirements
~1 min readHigh emotional intelligence and a learning mindset
Strong collaboration skills
Enjoy others' success and a fun, positive environment.
Comfortable making decisions in the face of ambiguity and course correcting as needed.
Requirements
~1 min readExperience in both startup and enterprise environments
Past work in energy, real estate, utilities, climate, or related fields
Bonus if you have experience and passion in one or more of
Advanced ML/AI frameworks and techniques (e.g., PyTorch Lightning, JAX, HuggingFace, ONNX optimizations)
Lower-level or performance-focused languages for ML acceleration (e.g., C++, Rust, CUDA)
Large-scale data and distributed training paradigms (e.g., Spark, Ray, Horovod, Dask)
Advanced data infrastructure (e.g., vector/graph databases, feature stores, data lakes)
What We Offer
~1 min readRemote, but only USA/Canada
Must be willing to travel to the Seattle area for the final interview and travel 2x/year for company summits
Additionally, depending on location, candidates can expect to spend 10-20% of their time working onsite with clients.
Applicants must be currently authorized to work in the United States on a full-time basis.
We are currently unable to sponsor or take over sponsorship of employment visas.
If this job sounds like a great fit, we’d love to hear from you. If you feel aligned with the company but don’t check ALL of these boxes, we’d still love to hear from you!
Location & Eligibility
Listing Details
- Posted
- October 1, 2025
- First seen
- May 5, 2026
- Last seen
- May 9, 2026
Posting Health
- Days active
- 0
- Repost count
- 0
- Trust Level
- 34%
- Scored at
- May 6, 2026
Signal breakdown
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