Call for Doctoral Students in Artificial Intelligence

The Finnish Doctoral Program Network in Artificial Intelligence is looking for 
100 new PhD students to work in fundamental AI and machine learning research 
and in five application areas. Come do a PhD tackling challenging research 
questions in a network that fosters industry and multidisciplinary 
collaboration!


  *   Call website: https://fcai.fi/doctoral-program
  *   Deadline: April 2, 2024

JOB DETAILS

The positions are based at one of the ten 
universities<https://fcai.fi/doctoral-program#offer> that are part of the 
Finnish Doctoral Program Network in Artificial Intelligence. The recruiting 
university will be the same as that of the primary supervisor. The matching of 
the candidates with supervisors will be done during the review process and the 
candidates will have a chance to prioritise the supervising professor they want 
to work with (see details in FAQ<https://fcai.fi/doctoral-program#faq>).
All positions are fully-funded. PhD student contracts will be made for three 
years. The terms of employment and the salaries are based on the General 
Collective Agreement for 
Universities<https://www.sivista.fi/wp-content/uploads/2023/08/Yo-tes-1.4.2023-31.5.2025-final-korjattu-versio-10.8.2023.pdf>.
 The contract includes occupational healthcare.
We are looking for 100 new PhD students in two calls (in spring and fall 2024). 
The accepted candidates of the spring call are expected to start in August 
2024, and the applicants from the fall call in January 2025.

HOW TO APPLY

We are looking for 100 new PhD students to join the Finnish Doctoral Program 
Network in Artificial Intelligence in two calls: the first one is open March 
11–April 2, 2024 and the second will open in fall 2024.
Candidates will apply to all universities and application areas with the same 
joint application. In the application form, you are able to indicate which 
specific research areas and supervisors you are interested in. Note: Candidates 
who apply to supervisors based at the University of Helsinki, will have to 
submit a parallel application to the university’s own recruitment system. 
Please note that the application needs to be submitted to both of the 
recruitment systems to ensure a proper review. See further 
details<https://www.helsinki.fi/en/research/doctoral-school/doctoral-education-pilot>.
The deadline for applications in the ongoing call is April 2, 2024. Please 
submit your application in our online recruitment 
system<https://aalto.wd3.myworkdayjobs.com/aalto/login?redirect=%2Faalto%2Fjob%2FOtaniemi-Espoo-Finland%2FCall-for-Doctoral-Students-in-Artificial-Intelligence_R39029-1%2Fapply>
 with the required attachments (detailed below).

Required attachments:

  1.  Motivation letter (1–2 pages). Please specify the research area(s) and 
preferably the supervisors with whom you want to work.
  2.  CV
  3.  List of publications (if relevant; please do not attach full copies of 
publications)
  4.  A transcript of master’s/bachelor’s studies and the degree certificate of 
your latest degree. If you don’t have a Master's degree, a plan of completion 
must be submitted.

In the application form, you are also asked to provide contact details of two 
senior academics who can provide references.
All materials should be submitted in English in a PDF format. Note: You can 
upload max. five files to the recruitment system, each max. 5MB.


RESEARCH AREAS

FUNDAMENTAL AI

Fundamental AI methods are the core of the FCAI research activities and the 
cornerstone in all application areas. Fundamental AI encompasses probabilistic 
AI for verifiable and uncertainty-aware model building, simulation-based 
inference for efficient and interpretable reasoning capabilities, 
data-efficient deep learning, privacy-preserving and secure AI, interactive AI 
for collaborative AI tools, autonomous AI, statistics, and decision-making. 
Widely applicable goals of the fundamental AI are AI-assisted decision-making, 
design and modeling.
Keywords: Artificial Intelligence, Causal Inference, Collaborative AI and human 
modeling, Machine Learning, Statistics


AI IN LANGUAGE AND SPEECH TECHNOLOGY

The area covers all aspects of natural language processing (NLP), a field of 
research dealing with computational analysis and generation of human language. 
NLP is a broad field which spans from highly technical research on machine 
learning techniques for written and spoken language data, through the myriad of 
individual tasks such as machine translation and information retrieval, to 
digital linguistics. The field is reliant on very large datasets and high 
performance computing, offering exciting software engineering and algorithmic 
challenges. Finland has a long tradition of top-notch NLP research, especially 
in the multilingual setting and, recently, large language model development.
Keywords: Foundation models, Human language technology, Natural Language 
Processing, NLP, Large language models, Speech recognition, Speech generation, 
Machine translation, Crosslingual models


AI IN COMMUNICATIONS AND SIGNAL PROCESSING

The area covers a wide range of advanced methods in communications and 
distributed intelligence technologies, statistical methods in signal 
processing, and analysis of images, video, speech, audio and array signals.
The methodologies can be applied in various layers of communications systems 
from applications to the radio connectivity with distributed intelligence that 
is an integral part of next generation communication and computing systems 
targeting to solve issues related to ultra densification of infrastructure, 
devices and people, and to guarantee secure, low latency and reliable use of 
ICT resources using advanced AI methods.
This research area also includes acquiring, processing, analyzing and 
understanding digital images, video sequences, views from multiple cameras, 
multi-dimensional data from a 3D scanner, 3D point clouds from LiDaR sensors, 
or medical scanning devices, and extraction of high-dimensional data from the 
real world in order to produce numerical or symbolic information, e.g. in the 
forms of decisions, using models constructed with the aid of geometry, physics, 
statistics, and learning theory.
Keywords: Array signal processing, Computer vision, Edge intelligence, 
Perception, Sensors, Wireless communications


AI IN HEALTH

The health and wellbeing field holds high potential to profit from advances in 
AI. Applications range from personalized care and precision medicine to 
preventive care and to process optimization. Increasing availability of large 
amounts of multi-source data combined with novel AI paradigms give huge 
opportunities. Challenges are how to extract valid actionable knowledge from 
all that data, how to develop AI-based solutions that are trustworthy, fit into 
healthcare processes, and that have an actual impact.
Keywords: Biomedical Image and Signal analysis; Multi-modal Health Data 
Analysis; Predictive, Preventive, Personalized, Participatory Healthcare, 
Trustworthy AI, Healthcare Processes


AI IN ENGINEERING

Industries are currently employing AI methods in numerous research and 
development tasks. Examples include product design, predictive maintenance, and 
combining physical models with data-based methods. There is a great potential 
also in replacing laboratory development and experiments with virtual 
laboratory-type approaches. Research topics include:

  *   AI methods in industrial research and development, including:
     *   AI for product design and optimization, combining physic-based and 
data-driven models.
     *   AI for improving industrial operations: cyber security, anomaly 
detection in industrial time series and predictive maintenance.
     *   Methods supporting AI in industrial deployments, including on-device 
learning and federated learning on edge devices.
     *   Virtual laboratories for experimentation and cost-effective product 
design and validation.
  *   AI methods for autonomous functions in land, sea, air and space vehicles 
and machines. These range from pilot assistance, collision avoidance and 
navigation systems to full-mission autopilots.
Keywords: Autonomous systems, Energy systems, Machine automation, 
Manufacturing, Materials, Mechanical engineering, Robotics


AI IN SOCIETY AND BUSINESS

The area examines the societal, ethical, and economic dimensions of AI, 
including trustworthy and societally acceptable AI as well as the consequences 
of the uses of AI. It brings together AI research with social sciences and 
humanities to gain in-depth understanding of AI’s role in organizations, 
society, business, and the economy. It includes uses of AI in education and 
education about AI. The area fosters interdisciplinarity to reinforce 
cross-cutting themes such as sustainability, ethics, equity, trust, and social 
responsibility.
Keywords: AI in business operations, AI in society, AI and Education, AI Ethics


--
*****************************************************************
Jörg Tiedemann
Language Technology      https://blogs.helsinki.fi/language-technology/
University of Helsinki


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