Remote Machine Learning Scientist Remote Sensing in Rotherham

Remote Machine Learning Scientist Remote Sensing in Rotherham

Rotherham Full-Time 60000 - 80000 £ / year (est.) Working from home possible
Treefera

At a Glance

  • Tasks: Develop machine learning models using satellite and remote sensing data to tackle real-world challenges.
  • Company: Join Treefera, a climate-tech company revolutionising global supply chains with AI and data.
  • Benefits: Competitive pay, equity options, and meaningful benefits in a high-trust environment.
  • Other info: Collaborate with top scientists and engineers while growing your skills in a dynamic team.
  • Why this job: Make a real impact on sustainability and environmental intelligence from day one.
  • Qualifications: Degree in a quantitative field and 3+ years of applied machine learning experience required.

The predicted salary is between 60000 - 80000 £ per year.

Grow with Treefera. We are a first-mile intelligence platform, delivering granular visibility into the point of origin in global ag & soft commodity supply chains - where risk, cost, performance and exposure are set.

You’ll join a global, cross-functional team that values rigour, curiosity and working close to real-world challenges. Whether your focus is AI, climate, product or operations, you’ll have space to contribute meaningfully and make an impact from day one. If you’re excited by complex problems and want to help reshape how nature is valued in real-world decision-making, we’d love to hear from you.

Role Purpose & Responsibilities

We are hiring a Machine Learning Scientist into the Science Team to contribute to the development of models — from classical statistics and gradient-boosted methods through to deep learning when warranted — that turn satellite, radar, and LiDAR observations into defensible, plot-level intelligence on the world's commodity supply chains. You will work across the full lifecycle — from research and prototyping through to validated, productionised models.

A meaningful fraction of the team's work centres on building lightweight downstream models — classifiers, regressors, similarity-search workflows. Likely focus areas for this role include:

  • Commodity and plantation mapping by region - palm oil, cocoa, coffee, rubber, soy, timber and similar - in support of EUDR compliance and supply-chain due diligence.
  • Forest degradation and biomass / canopy-height estimation from multi-sensor fusion.
  • Develop ARR feasibility models that fuse climate, soil, and remote-sensing inputs to estimate site potential, forecast biomass and carbon trajectories, and quantify physical and permanence risk.

Responsibilities:

  • Design, train and evaluate ML models - from gradient-boosted methods to CNNs, U-Nets and vision transformers - for commodity and plantation mapping, land-cover classification, change and disturbance detection, and biomass / canopy-height estimation.
  • Build embedding-driven workflows on top of EO foundation models - few-shot classifiers, similarity search, downstream regressors.
  • Design validation strategies that benchmark outputs against plot inventories and third-party reference datasets, quantify uncertainty, and surface failure modes; produce QA artefacts (maps, plots, model cards, error analyses) that internal teams and clients can trust and defend.
  • Partner with Engineering to take models into scalable, reproducible inference pipelines across millions of plots, and contribute to a strong research culture across Science, AI and Engineering - reviewed code, shared tooling, and active engagement with EO/ML literature.

Who you are:

Must-have requirements:

  • Degree in a quantitative field: environmental/earth science, computer science, physics, maths, engineering, or similar.
  • 3+ years of applied machine-learning experience, including time spent in an industry, product, or startup setting i.e. shipping models.
  • Expertise in geospatial Python tooling: rasterio, xarray, geopandas, GDAL, and the STAC ecosystem.
  • Hands-on experience training, evaluating, and debugging ML models across the modern Python stack - deep learning (CNNs, U-Nets, vision transformers) using PyTorch, as well as classical methods (gradient boosting, random forests) with scikit-learn.
  • Demonstrable experience with remote sensing data (optical, SAR) and an understanding of the sensor-specific quirks that matter for modelling.
  • Comfortable with Git, cloud compute (AWS or similar), and collaborative codebases.
  • Clear written and verbal communication: can explain modelling choices, uncertainties, and trade-offs to scientific and non-scientific stakeholders.
  • Domain exposure: deforestation, land-use change, biomass / canopy-height estimation, climate risk, or supply-chain transparency.

Desirable requirements:

  • Experience using EO foundation models as a downstream substrate - building lightweight classifiers, regressors, or similarity-search workflows on top of frozen embeddings (e.g., AlphaEarth Foundations, Clay, etc). Comfortable fine-tuning or pretraining where the case justifies it.
  • Multi-modal fusion experience - combining optical (Sentinel-2, Landsat), SAR (Sentinel-1, PALSAR), and/or LiDAR (GEDI, ICESat-2) into unified predictions.
  • Time-series modelling for environmental change detection - temporal transformers, sequence models, or self-supervised approaches.
  • Comfortable building with AI-assisted development tools as a core part of your workflow.
  • Familiarity with Google Earth Engine, Microsoft Planetary Computer, AWS Open Data, or other STAC-based catalogues.
  • Experience working in cross functional teams working alongside solutions architects, sales, and engineering.

Who you’ll work with

You’ll report to the Science Team Lead and partner day-to-day with the wider Science Team while working closely with Engineering and Product teams.

Interview process & what to expect

This is a Science Team role with regular touch points with Engineering and Product - the interview process gives you a chance to meet your immediate team and a couple of key partners.

  • Recruiter screen (30 min)
  • Hiring manager (45-60 min)
  • Science Team technical interview (45 min)
  • Engineering and/or Product interview (30 min)
  • Potential in-person problem-solving session with the team - designed to be interactive and a glimpse of what being part of the Science Team will be like!

Accessibility: Tell us if you need adjustments, we’ll accommodate.

What you’ll gain at Treefera

  • Build something that matters - join a high-growth climate-tech company applying AI, satellite data and quantitative modelling to real-world challenges across global supply chains, commodities and carbon.
  • Work on complex, meaningful problems - develop systems that balance risk, resilience, compliance and sustainability, giving organisations a genuine information advantage at global scale.
  • Collaborate with exceptional people - work alongside scientists, engineers and operators who are leaders in their fields, combining academic rigour with practical, cross-functional product delivery.
  • Ship and grow in a high-trust environment - experiment, iterate and take thoughtful risks in a team that values autonomy, creativity and continuous learning.
  • Develop your craft - dedicated space and time to grow your skills toward mastery, tackling technically demanding challenges that push the boundaries of applied AI and environmental data.
  • Be rewarded for your impact - competitive compensation, equity options, meaningful benefits, and the opportunity to help shape the future of AI-powered risk and environmental intelligence.

Diversity, Equity & Inclusion

Bold solutions come from diverse teams. Treefera is an equal opportunity employer. We believe the diversity of our people is as vital as the diversity of the ecosystems we work to protect, and we are committed to building an inclusive workplace where everyone can thrive. We welcome applicants of all backgrounds irrespective of race, colour, ethnicity, national origin, religion, gender identity or expression, sexual orientation, age, disability, pregnancy, or any other characteristic protected by applicable law. Reasonable accommodations are available upon request.

Remote Machine Learning Scientist Remote Sensing in Rotherham employer: Treefera

Treefera is an exceptional employer that fosters a high-growth, collaborative environment where employees can tackle complex, meaningful challenges in climate-tech. With a strong emphasis on autonomy, continuous learning, and professional development, team members are encouraged to innovate and contribute to impactful projects from day one. The company values diversity and inclusion, ensuring that all voices are heard and respected, making it a rewarding place to grow your career while making a difference in global supply chains.

Treefera

Contact Details:

Treefera Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Remote Machine Learning Scientist Remote Sensing in Rotherham

Get Involved in Data Science Meetups

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Apply Directly through Our Website

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We think you need these skills to ace Remote Machine Learning Scientist Remote Sensing in Rotherham

Machine Learning
Geospatial Python Tooling
Deep Learning (CNNs, U-Nets, Vision Transformers)
Gradient Boosting
Remote Sensing Data Analysis
Model Training and Evaluation
Data Debugging

Some tips for your application 🫡

Show Off Your Projects:In the world of data science, your projects can speak volumes about your skills. Make sure to showcase a few key projects in your CV or portfolio, especially those that highlight your ability to work with data sets, build models, or use relevant tools like Python, R, or SQL. Don’t forget to include links to any GitHub repositories if applicable!

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Stand Out with Relevant Courses and Certifications:Although experience talks, relevant courses or certifications can be your ticket to impressing hiring managers at Treefera. Mention any standout courses you've completed that equipped you with essential skills, such as machine learning certifications or data visualisation courses. This shows your commitment to continuously developing your skills in the field!

How to prepare for a job interview at Treefera

Brush Up on Your Statistics

For a data science role, we need to seriously sharpen our statistics skills. Get ready to tackle technical questions on probability distributions, hypothesis testing, and regression analysis. These are often the bread and butter of data science interviews, so don't just skim over them!

Showcase Your Projects

Prepare a killer portfolio showcasing your data science projects. We should include details about the datasets used, the tools and techniques applied, and the impact of your findings. If we can walk them through a particularly challenging project or a cool visualisation that had real-world implications, it’ll really make us stand out!

Get Comfortable with Python and R

Most data science positions require us to be proficient in programming languages like Python and R. We should practice common libraries like pandas, NumPy, and scikit-learn, and be ready for live coding exercises or algorithm questions. Showing off our coding chops can really impress the interviewers at Treefera!

Prepare for Case Studies

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