This job was posted more than 40 days ago and might be expired.
Habitat Energy logo

ML Ops Engineer

Posted about 2 months ago

OfficeOxford, England, United Kingdom

Machine Learning Operations Engineer

Habitat Energy is a fast growing technology company focussed on the physical and financial optimisation of energy storage and renewable generation assets globally through complex models and trading. By maximising the returns from these assets we aim to drive investment in renewable energy and accelerate the transition to a low carbon world. Our rapidly growing team of 130+ people in Austin, TX, Oxford, UK, and Melbourne, Australia brings together exceptionally talented and passionate people in the domains of energy trading, data science, software engineering and renewable energy management.

We have a vacancy for a Machine Learning Engineer to join our UK team based in Oxford. This role will take ownership of the Analytical foundation that powers our trading and analytics operations. Your primary focus will be the integrity, reliability, and long-term institutionalization of our most critical models with a particular emphasis on forecasting, optimization, financial engineering, and analytical workflows. You will also play a key supporting role in cross-functional work with our Quantitative and Applied Analytics teams to enhance modeling capabilities for front office objectives.

You will be responsible for:

Software Development Lifecycle (SDLC)

  • MLOps Ownership: Operationalize trading algorithms into reliable, distributed workflows covering feature extraction, training, evaluation, inference, and model lifecycle management.
  • Applied Research Integration: Bring structure, repeatability, and engineering best practices to an evolving applied research environment.

Forecasting & Optimization Capability Development

  • ML Infrastructure: Build the tooling and platforms that enable the data science team to scale model development and deployment.
  • Execution Systems: Optimize automated trading systems across power, forecasting, and portfolio management stacks.

Tool Selection & Architectural Standards

  • Architecture & Toolchain: Define architectural standards and select scalable, cloud-native toolchains aligned with long-term technology strategy.
  • Distributed ML Systems: Engineer solutions for distributed training and large-scale data processing.

Requirements

  • 3+ years in MLOps, ML Engineering, Data Engineering, or closely related roles building and running ML/data pipelines.
  • Strong Python data and ML stack experience, including tools such as Polars/Pandas, PyArrow, PySpark, NumPy/SciPy.
  • Experience integrating models built with frameworks such as PyTorch, TensorFlow, or Keras into scalable pipelines.
  • Hands-on experience with MLOps and orchestration tooling such as MLFlow, Ray, Prefect, or Airflow.
  • Practical CI/CD experience for ML/data services using Git-based workflows.
  • Experience working in AWS or similar cloud environments, including running containerized ML or data workloads in Kubernetes.

Nice to Have

  • Exposure to UK Power or financial markets, particularly automated trading or forecasting.
  • Demonstrated experience working with timeseries data, ideally including financial market-derived signals.
  • Experience building batch and streaming pipelines (Kafka, Debezium, Spark, Flink) for CDC and real-time ingestion.
  • Familiarity with modern data stack tooling: open table formats (Iceberg), compute engines (Spark, Trino, Snowflake), and advanced SQL.
  • Experience managing distributed data systems or Kubernetes clusters in production.
  • Optimization experience, especially linear programming and mixed-integer programming.
  • Understanding of time-series forecasting and integration of GenAI/LLMs into quantitative workflows.

Ultimately we are looking for someone who is a great fit for our company so we encourage you to apply even if you may not meet every requirement in this posting. We value diversity and our environment is supportive, challenging and focused on the consistent delivery of high quality, meaningful work.

In return, we’ll give you a competitive salary, flexible working arrangements and a lot of personal development opportunities. We operate a hybrid working model with at least 2 days in our office in Austin.

When you apply for a job with us, we process some of your personal information. You can find out more about how we process your information on our company website: https://habitat.energy/privacy-policy/

Job details
Workplace
Office
Location
Oxford, England, United Kingdom
Habitat Energy logo
Habitat Energy
View company page

Habitat Energy is a global leader in the trading and optimisation of battery storage and renewable energy assets.

Key team members

Val Angelkov

Val Angelkov

Andrew Luers

Andrew Luers

Stephen Bliley

Stephen Bliley

Klaas Peerenboom

Klaas Peerenboom

Apply smarter with Jobr

Jobr aggregates jobs directly from company career portals — no middlemen. Our team applies on your behalf with AI-tailored resumes, reviewed by a human before submission.

Direct from company career pages
AI-personalised cover letters
Human review before every submit
Application tracking & follow-ups