Data Scientist
Iasi, Moldavia, Romania
Arcadis
Arcadis is the leading global design & consultancy organization for natural and built assets. We are over 29,000 people, active in more than 70 countries that generate âŹ3.4 billion in revenues.Â
Arcadis is the world's leading company delivering sustainable design, engineering, and consultancy solutions for natural and built assets.
We are more than 36,000 people, in over 70 countries, dedicated to improving quality of life. Everyone has an important role to play. With the power of many curious minds, together we can solve the worldâs most complex challenges and deliver more impact together.
Role description:
As a Data Scientist at Arcadis, you will play a pivotal role in enhancing the performance and safety of our assets, with a focus on maximizing returns and improving utilization for societal and environmental benefit. Join our Asset Management Team in Arcadis to optimize, model, and analyze assets, employing complex data analytics and machine learning techniques within an open-source environment.
Role accountabilities:
- Optimize, model, and analyze assets to improve performance and safety.
- Conduct in-depth analysis of raw data to draw meaningful conclusions.
- Employ advanced statistical programming languages and cutting-edge machine learning algorithms for intricate data analytics.
- Enhance data management through quantitative and qualitative techniques, adhering to a "minimum viable product" approach.
- Develop robust data models and visualizations, ensuring the highest standards of quality control are upheld.
Qualifications & Experience:
- Bachelor's degree or higher in Computer Science, Mathematics, Physics, Statistics, or a related field.
- Expertise in using the Python programming language.
- Strong foundation in software engineering: can write well-tested and maintainable code, uses version control software like git, some knowledge of build automation.
- Some experience with deep learning frameworks (Tensorflow or PyTorch).
- Deep knowledge and experience in data science, with a focus on computer vision and machine learning techniques.
- Familiar with cloud computing (ideally in Azure, but AWS and GCP are also fine).
- Demonstrated ability to tackle complex "big data" challenges with a passion for problem-solving.
- Results-oriented mindset with a focus on accuracy and attention to detail.
- Strong analytical skills coupled with proficiency in English communication.
Nice to have
- Experience using deep learning to solve object detection and instance segmentation problems.
- Prior experience with Azure Machine Learning.
- Prior experience with Point Cloud/LiDAR technologies.
- Proficiency in other European languages.
- Expertise in data handling using SQL.
Why Arcadis?
We can only achieve our goals when everyone is empowered to be their best. We believe everyone's contribution matters. Itâs why we are pioneering a skills-based approach, where you can harness your unique experience and expertise to carve your career path and maximize the impact we can make together.
Youâll do meaningful work, and no matter what role, youâll be helping to deliver sustainable solutions for a more prosperous planet. Make your mark, on your career, your colleagues, your clients, your life and the world around you.
Together, we can create a lasting legacy.
Join Arcadis. Create a Legacy.
Our Commitment to Equality, Diversity, Inclusion & Belonging
We want you to be able to bring your best self to work every day, which is why we take equality and inclusion seriously and hold ourselves to account for our actions. Our ambition is to be an employer of choice and provide a great place to work for all our people.
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* Salary range is an estimate based on our AI, ML, Data Science Salary Index đ°
Tags: AWS Azure Big Data Computer Science Computer Vision Data Analytics Data management Deep Learning Engineering GCP Git Lidar Machine Learning Mathematics Open Source Physics Python PyTorch SQL Statistics TensorFlow
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