Structural Computational Biology – Who Needs Engineers
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Software Engineering RecruitmentTue, 24 Sep 2024 14:00:03 +0000en-US
hourly
1 https://wordpress.org/?v=6.6.2/wne_live/wp-content/uploads/2023/06/cropped-wne_logo-3-32x32.pngStructural Computational Biology – Who Needs Engineers
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3232Bioinformatician / Data Scientist
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Tue, 24 Sep 2024 14:00:03 +0000/wne_live/jobs/jobs-categories/bioinformatician-data-scientist/Bioinformatician / Data Scientist
Job Description:
Join us in tackling some of the most significant challenges in data science related to plant breeding, contributing to sustainable food production for the future. We are seeking a Bioinformatician / Data Scientist to be filled as soon as possible. This role is based at our headquarters in Einbeck, Lower Saxony, Germany, and offers a permanent full-time contract. In this position, you will engage in advanced plant breeding, employing modern data science methodologies. A proactive and creative mindset will be essential as you collaborate with breeding and research teams worldwide to develop innovative solutions. Your work will focus on building new data structures and analytical methods to address emerging challenges in breeding and molecular biology research, utilizing cutting-edge technologies such as large language models on biological datasets. You will apply machine learning tools for text mining to identify candidate genes for trait development and contribute to our internal biological recommendation systems by integrating various data sources, including multi-omics data. Proactively identifying and testing new analytical strategies will be crucial as you work effectively with cross-departmental teams and external academic and industry partners in a matrix environment. You will play a key role in shaping scientific and strategic priorities to accelerate portfolio advancement.
IT Languages:
Python
R
Rust
C/C++
The job involves various responsibilities aimed at enhancing data utilization and collaboration in plant breeding.:
Develop and implement new data structures and analytical methods for breeding and molecular biology research;; Utilize modern technologies, including large language models, on biological data to generate innovative solutions;; Apply machine learning techniques for text mining to identify candidate genes for trait development;; Contribute to internal biological recommendation systems by integrating multi-omics and other data sources;; Proactively identify and evaluate new approaches and strategies for data analysis;; Collaborate effectively with internal teams and external partners to advance scientific initiatives;; Support and lead initiatives in a matrix environment to drive portfolio development
Spoken Languages:
English;; German
Skillset:
Deep Learning
Keras
TensorFlow
PyTorch
Structural Computational Biology
Protein Design
Molecule Docking
No-SQL Databases
Graph Databases
Vector Databases
High-Performance Computing
Soft Skills:
High initiative
Independent working style
Effective communication skills
Qualifications:
PhD in Computational Biology, Bioinformatics, Data Science or MSc in related fields with relevant experience
Experience in computational and programming skills with demonstrated expertise in programming languages
Years of Experience:
5
Location:
Einbeck, Lower Saxony, Germany
Job Benefits:
Flexible working hours with remote working options
Subsidized canteen with healthy meal options
Company pension scheme
Financial incentives for company shares
Childcare subsidies
Job bike and job ticket
Working Conditions:
Full Time
Employment Type:
Permanent Contract
Company Culture:
We are a family-owned business that values proximity, reliability, foresight, and independence, fostering an open and friendly working atmosphere. Our motto 'Make yourself grow' reflects our commitment to supporting the professional and personal development of our employees.
Opportunities For Advancement:
Professional development opportunities, Collaborative projects with academic and industry partners