Research Engineer – Artificial Intelligence, Machine Learning and Signal Processing
Portugal
International Iberian Nanotechnology Laboratory
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Research Engineer – Artificial Intelligence, Machine Learning and Signal Processing
Job Reference: Ref.04.24.20/1
Employer: International Iberian Nanotechnology Laboratory (INL)
Location: Braga, Portugal
Group/Unit: M. Martins Research Group
Number of Vacancies: 1
Employment Type: Full time
Contract Duration: 24 months
Open Date for Applications: November 8th, 2024
Closing Date for Applications: November 19th, 2024, 23h00m (Lisbon Time)
Key words: #ArtifitialIntelligence #MachineLearning #StatisticalPatternRecognition #DeepLearning #SupervisedLearning #UnsupervisedLearning #ReinforcementLearning #ArtificialNeuralNetworks
Overview
The M. Martins Research Group is expected to function as a cohesive, multifaceted engineering team that promotes the INL’s core R&D&I skills, in particular in the area of system engineering. It aims to expand the installed capacities for an interdisciplinary approach to transform concepts into high quality nanotechnology-based products and services.
The objective is to create a multidisciplinary team of Engineers from different areas, namely Mechanical, Electric, Physics, Computer Science, and Machine Learning, to work very closely with each other and that will ensure continuity between the knowledge accumulated at INL and the existing knowledge in companies, enabling a faster and more effective knowledge transfer. Each member will bring their contribution to the team to maximise the construction of very complex systems capable of responding to crosscutting needs of the companies with which they will be working.
For this position, INL is seeking a highly qualified, self-motivated Research Engineer to reinforce INL’s M. Martins Research Group under the TEAPOTS and ONE-BLUE projects.
Job Duties
The Research Engineer will be responsible for designing and building systems and interfaces in several areas of application, and will undertake the following main activities and responsibilities:
- Model, build, and test AI software to ensure it can take on large swaths of data and achieve desired results;
- Analyse and interpret data such as signals, images, time series, tabular data, etc.;
- Deep expertise in analysing and machine learning tasks in one or more of the previously mentioned data domains;
- Design and develop AI models from scratch;
- Find patterns and anomalies within large datasets in supervised and preferably unsupervised methods;
- Design, build and manage ML software applications;
- Experimentation and prototyping;
- Collaborate and communicate within the interdisciplinary team;
- Create a faster and more capable AI, using Python, JavaScript, and C++;
- Analyse statistics, data, and algorithms for projection accuracy;
- Stay current on AI knowledge, trends, and regulations;
- Implement responsible AI practices, and keep an up to date knowledge of ethical considerations.
Mandatory Qualifications
Education
- MSc in Artificial Intelligence, Machine Learning, Computer Engineering, Data Science, Computer Science, or any other related field.
Experience
- Professional experience of 2 years in the industry field, or related scientific environment in the field of expertise required for this position.
Technical Skills
Programming Languages
- Python, including libraries such as Numpy, Scipy, TensorFlow, PyTorch, Keras, Open CV, and scikit-learn;
- JavaScript, including frontend development and integration with Node.js frameworks;
- C++ for performance-critical AI tasks.
Machine Learning and Deep Learning
- Strong understanding of machine learning concepts, algorithms, and techniques, including supervised learning, unsupervised learning, reinforcement learning, and deep learning;
- Experience with popular deep learning frameworks (i.e., TensorFlow, PyTorch, and Keras) for building and training neural networks;
- Ability to use and adapt pre-trained neural network models for desired purposes;
- Experience in analysing and interpreting data collected by different sensors (e.g., signals, images, time series);
- Experience in adapting developed models to bare metal platforms;
- Knowledge of basic algorithms, object-oriented and functional design principles, and best-practice patterns;
- Familiarity with advanced topics in deep learning, such as Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), Generative Adversarial Networks (GANs), and transformer models.
Data Analysis and Visualisation
- Proficiency in data analysis and manipulation using libraries like Pandas and NumPy;
- Experience with data visualisation tools (i.e., Matplotlib, Seaborn, and Plotly) for creating insightful visualisations of complex datasets;
- Experience with designing and building graphical user interfaces (GUIs) using libraries such as Qt Designer and Tkinter.
Computer Vision
- Proficiency in Image Processing and Computer Vision concepts and algorithms, and familiarity with frameworks such as open CV, and Mahotas libraries.
- Experience in using different libraries and platform for tasks such as image classification, object detection, image segmentation, and facial recognition.
Model Evaluation and Optimisation
- Proficiency in evaluating and optimising machine learning models using techniques such as cross-validation, hyperparameter tuning, regularisation, and ensemble methods to improve model performance and generalisation.
Software Engineering Practices
- Knowledge of software engineering principles and best practices, including version control systems (e.g., Git), software design patterns, unit testing, and continuous integration/continuous deployment (CI/CD) pipelines.
Other Skills
- Excellent communication skills in English are required since it’s the working language of INL.
Preferred Qualifications
- Professional experience of 3 years or more in the industry field.
Personal Skills
- Strong motivation to work both independently and as part of a team in an interdisciplinary environment, with the ability to pay close attention to detail and to meet deadlines;
- Ability to adapt quickly to new scenarios;
- Desire to keep updated with current trends in machine learning and motivation to learn new skills in such a fast-paced environment;
- Excellent communication skills;
- Capable of establishing collaborative ties;
- Team work spirit.
Our Benefits
- Competitive salary;
- Tax benefits and other Diplomatic privileges;
- Private health insurance;
- Family allowances (according to family situation);
- Free nursery service at INL premises (subject to availability);
- Support for education fees of dependent children;
- Relocation support;
- 30 working days of annual leave.
How to Apply
The application must be in English and include the following mandatory documents:
a) Cover letter
b) Curriculum Vitae
c) Academic and/or Professional diplomas
Online application instructions:
- The application is made online by clicking the “Apply” button;
- The candidate must complete all required sections of the online application form;
- The candidate must submit the mandatory documents mentioned above in pdf format by including them in the “Additional files” section using the “Add portfolio” button.
Important note:
Incomplete applications including the failure to provide mandatory documents or providing inaccurate information will result in the application not being considered.
How the Selection Process works
A. Applications eligibility check
This stage will be carried out on the basis of the mandatory requirements, education, experience and technical skills defined for the job, as well as the validation of the mandatory documents. Only candidates who meet the eligibility criteria will move forward to the next stage.
B. CV Assessment
The Selection Committee will evaluate the eligible applications based on their CV and other submitted documents and the suitability for the position. The best ranked candidates will be shortlisted for the interview stage(s).
C. Interview(s)
The interview(s) may be done in different formats: video recording, online or onsite.
The question based interview will evaluate the match between the candidate’s profile and the requirements for the position, including the technical and personal skills. To better support this stage, the candidate may be requested to prepare a short presentation.
D. Nomination
The selected candidate will be nominated and formally offered the position, including the disclosure of the contractual conditions.
Additional Information
Application feedback
We highly value your interest in becoming part of the INL experience and it is important for us to maintain good communications with all candidates. No matter the outcome of your application, we will always provide you with feedback.
Equal Opportunity and Non-Discrimination Principle
INL follows a non-discrimination and equal access principle, wherefore no candidate can be privileged, benefited, impaired or deprived of any rights whatsoever, or be exempt of and duties based on any possible discriminatory issues.
The advertisement deadline may be extended at any time without previous notice in order to improve the suitability and effectiveness of the recruitment process.
About INL
The International Iberian Nanotechnology Laboratory – INL (http://www.inl.int), is the first and only Intergovernmental Organisation in the world entirely focused on Nanoscience and Nanotechnology.
It was founded under an international legal framework to perform interdisciplinary research, deploy and communicate nanotechnology for the benefit of society. INL aims to be a recognised leading global nanotechnology innovation hub.
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: CI/CD Classification Computer Science Computer Vision Data analysis Deep Learning Engineering GANs Git JavaScript Keras Machine Learning Matplotlib ML models Node.js NumPy Pandas Physics Pipelines Plotly Prototyping Python PyTorch R R&D Reinforcement Learning Research Responsible AI Scikit-learn SciPy Seaborn Statistics TensorFlow Testing Unsupervised Learning
Perks/benefits: Career development Competitive pay Health care Relocation support Team events
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