Machine Learning Engineer at Vrije Universiteit Amsterdam
Nederland, Nederland, Netherlands -
Full Time


Start Date

Immediate

Expiry Date

03 Aug, 25

Salary

4.537

Posted On

04 May, 25

Experience

0 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Product Management, Deep Learning, Operations, Cloud Services, Azure, Aws, Algorithms, Probability, Research, Decision Trees, Python

Industry

Information Technology/IT

Description

PERSONAL SKILLS:

  • You have the ability to experiment and analyze results. You are curious and eager to learn, think analytically, and work methodically. You are also enterprising and enjoy taking initiative.
  • Ability to communicate technical concepts and results in an understandable way to both technical and business stakeholders.
  • Ability to collaborate effectively with multiple teams and stakeholders, including analytics teams, development teams, product management, and operations. You have a constructive attitude and can connect interests.
  • Experimental and entrepreneurial mindset.
  • You are eager to learn and enjoy staying up-to-date with the latest (technical) developments.

TECHNICAL SKILLS:

  • Expert knowledge of PyTorch, cloud services (AWS, Azure, GCP), and Python.
  • Proficiency in machine learning algorithms such as multi-class classification, decision trees, support vector machines, and deep learning.
  • Understanding of probability and statistical models (generative and descriptive models).
  • Advanced programming experience with C/C++, Java, R, Python.
  • You have experience with version control systems.

PERSONAL SKILLS:

  • You have the ability to experiment and analyze results. You are curious and eager to learn, think analytically, and work methodically. You are also enterprising and enjoy taking initiative.
  • Ability to communicate technical concepts and results in an understandable way to both technical and business stakeholders.
  • Ability to collaborate effectively with multiple teams and stakeholders, including analytics teams, development teams, product management, and operations. You have a constructive attitude and can connect interests.
  • Experimental and entrepreneurial mindset.
  • You are eager to learn and enjoy staying up-to-date with the latest (technical) developments.

TECHNICAL SKILLS:

  • Expert knowledge of PyTorch, cloud services (AWS, Azure, GCP), and Python.
  • Proficiency in machine learning algorithms such as multi-class classification, decision trees, support vector machines, and deep learning.
  • Understanding of probability and statistical models (generative and descriptive models).
  • Advanced programming experience with C/C++, Java, R, Python.
  • You have experience with version control systems.
Responsibilities

Your tasks include:

  • Understanding and translating business and functional needs into concrete machine learning problem statements and results.
  • Designing and developing scalable machine learning and deep learning solutions that meet the organization’s needs.
  • Performing data processing tasks such as normalization, feature selection, dimensionality reduction, and handling missing or outlier data.
  • Working closely with data scientists, data engineers, and development teams to improve, develop, and implement machine learning algorithms.
  • Translating machine learning algorithms into production-ready code.
  • Evaluating model performance using cross-validation and relevant metrics.
  • Monitoring implemented models, detecting data or concept drift, and updating or retraining models as needed.
  • Ensuring compliance with performance standards and data security requirements.
  • Continuously staying informed about new developments in machine learning and implementing them within the organization

Your tasks include:

  • Understanding and translating business and functional needs into concrete machine learning problem statements and results.
  • Designing and developing scalable machine learning and deep learning solutions that meet the organization’s needs.
  • Performing data processing tasks such as normalization, feature selection, dimensionality reduction, and handling missing or outlier data.
  • Working closely with data scientists, data engineers, and development teams to improve, develop, and implement machine learning algorithms.
  • Translating machine learning algorithms into production-ready code.
  • Evaluating model performance using cross-validation and relevant metrics.
  • Monitoring implemented models, detecting data or concept drift, and updating or retraining models as needed.
  • Ensuring compliance with performance standards and data security requirements.
  • Continuously staying informed about new developments in machine learning and implementing them within the organization
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