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Senior Machine Learning Research Engineer
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Senior Machine Learn....
drjobs Senior Machine Learning Research Engineer العربية

Senior Machine Learning Research Engineer

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1 Vacancy
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Job Location

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Berlin - Germany

Monthly Salary

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Not Disclosed

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Salary Not Disclosed

Vacancy

1 Vacancy

Job Description

Req ID : 2713114

Our growing team is looking for a Senior ML Research Engineer who will be instrumental driving our research and development agenda to model soil organic carbon around the world at unprecedented accuracies. Your primary responsibility will be to spearhead the creation and refinement of machine learning models and pipelines for our pioneering organization. Your contributions will be critical in quantifying soil organic carbon changes within agricultural soils. Collaborating with our team of applied scientists and engineers you will be involved in all aspects of model development drawing from the most recent scientific discoveries and enhancing our understanding of the influence of different parameters and constraints on model performance and uncertainty. Moreover you will play a vital role in refining our development workflows as we transition prototypes into fullyfledged products.

Tasks

  • Design enhance and implement machine learning models and pipelines to model soil organic carbon utilizing remote sensing data.
  • Develop and evaluate novel approaches for model regionalization in scarce data scenarios.Innovate new and enrich existing features for soil organic carbon modeling to accurately and precisely track carbon stock changes over time.
  • Assess the performance and uncertainty of model predictions illustrating how accuracy metrics are affected by the specific context and parameters of a carbon project.
  • Manage the entire research and development workflow efficiently from conducting exploratory data analysis and initial research & development to quick prototyping and enhancing models in production.
  • Collaborate closely with the Engineering Product and Business Development teams acting as a data science expert to evaluate feasibility define requirements and scope and shape initiatives on our Research Roadmap.
  • Keep our organization at the cutting edge of soil organic carbon modeling by staying informed on relevant research and incorporating novel ideas to foster innovation within our Research Team.
  • Communicate your findings both within and outside the organization through documentation presentations and contributions to peerreviewed literature.

Requirements

  • A Ph.D. or Masters degree in statistics mathematics computer science remote sensing AI/ML ecosystem science geography or another relevant STEM discipline.
  • 6 years of proficiency in Python programming and 4 years of industry experience writing code in a production environment.
  • Proficiency in math and statistics.
  • Proven track record in designing conducting and analyzing ML experiments.
  • Proven track record in developing machine learning models for regression problems.
  • Knowledge in quantifying different types of uncertainties within machine learning models using wellestablished statistical methods (e.g. confidence intervals prediction intervals hypothesis tests).
  • Experience in evolving prototype models and software into dependable productionready solutions.
  • Outstanding communication and teamwork abilities capable of working effectively with both functional and crossfunctional teams.
  • Selfdriven with the capability to manage a project from inception to completion and achieve outcomes.

What makes you stand out

  • Specialization in geospatial analysis/remote sensing tools and applications.
  • Knowledge in assessing the uncertainty of spatial maps or broadly in geostatistics or spatial statistics.
  • Experience with Google Earth Engine and geospatial libraries in Python.
  • Experience developing machine learning models applied to remote sensing time series data
  • Experience with a cloud platform (e.g. GCP AWS)
  • Background in a startup environment or possessing a strong entrepreneurial spirit typically gained through experience in private sector companies.

Benefits

  • Be part of our highly motivated committed and international team with flat hierarchies that is working on solving one of societies biggest challenges: Climate Change
  • Witness and shape the evolution of a new business being built
  • Collaborative DevOps culture with opportunities for continuous learning and improvement
  • Work in a casual environment with flexible hours and some ability to work from home
  • Competitive salary benefits and compensation package
  • Drinks snacks team events and your choice of hardware

Seqana is committed to building a workplace culture based on the values of proactivity authenticity creativity and empathy where equal employment opportunity is guaranteed to all applicants and team members regardless of their race color ethnicity sex sexual identity religion or disability. If this job intrigues you but youre thinking you might not have all of the qualifications please do apply anyway. We are looking for wellrounded people from around the world who can contribute in more ways than just what is listed in this job description. We are excited to build a team that celebrates diversity in all its forms.

Join us if you want to advance climate action in your daily work and are open to new insights and opportunities everyday!

Our Offer

  • 30 days of paid vacation (PTO)
  • Fulltime unlimited contract.
  • Stock options: take part in our success

Preferred starting date: As soon as possible

Location: Beautiful office in the heart of BerlinKreuzberg check out our LinkedIn for some impressions of the team and the office

Employment Type

Full Time

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