Difference between revisions of "MSCA Network"

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== EIT Digital ==
 
== EIT Digital ==
 
== Fraunhofer Institute ==
 
== Fraunhofer Institute ==
The Fraunhofer Institute is expected to contribute data to the project, contribute their expertise in enabling efficient and sustainable transfer of scientific knowledge into commercial use, and exposing the ESRs to a world-leading applied research environment.
 
  
=== Course/workshops host ===
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* Role: Contribute data to the project, contribute their expertise in enabling efficient and sustainable transfer of scientific knowledge into commercial use. Exposure to a world-leading applied research environment. (see Table 1.2.a GA)
Advanced course: Multi-Criteria Decision Making in Sustainable Finance (M30, 3 ECTS)
 
  
=== ESR host: ===
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=== Course/workshops ===
*[https://wiki.fin-ai.eu/index.php/MSCA_Individual_Research_Projects#Industry_standard_for_blockchain ESR 3]: Industry standard for blockchain (M12 – M15)
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* Advanced course: Multi-Criteria Decision Making in Sustainable Finance (M30, 3 ECTS): Principles of multi-criteria decision making. Various techniques and concepts (e.g., fuzzy set theory, analytical hierarchy process, preference modelling) to incorporate multiple objectives, in line with ESG principles
*[https://wiki.fin-ai.eu/index.php/MSCA_Individual_Research_Projects#Collaborative_learning_across_data_silos ESR 6]: Collaborative learning across data silos (M12 M15)
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* Lab Training: Virtual reality lab, optimization lab, computer graphics and visualisation lab, analytics lab
*[https://wiki.fin-ai.eu/index.php/MSCA_Individual_Research_Projects#Risk_index_for_cryptos ESR 7]: Risk index for cryptos (M27 – M30)
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*[https://wiki.fin-ai.eu/index.php/MSCA_Individual_Research_Projects#Audience-dependent_explanations ESR 9]: Audience-dependent explanations (M27 – M30)
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=== DC secondments ===
*[https://wiki.fin-ai.eu/index.php/MSCA_Individual_Research_Projects#Deep_Generation_of_Financial_Time_Series ESR 15]: Deep Generation of Financial Time Series (M18 – M21)
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* [https://wiki.fin-ai.eu/index.php/MSCA_Individual_Research_Projects#Industry_standard_for_blockchain DC3: Industry standard for blockchain], WP4, M12 – M15: applied industry-research, contribute to multiple projects on blockchain and decentralized finance
*[https://wiki.fin-ai.eu/index.php/MSCA_Individual_Research_Projects#Investigating_the_utility_of_classical_XAI_methods_in_financial_time_series ESR 16]: Investigating the utility of classical XAI methods in financial time series (M18 – M21)
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* [https://wiki.fin-ai.eu/index.php/MSCA_Individual_Research_Projects#Collaborative_learning_across_data_silos DC6: Collaborative learning across data silos], WP1, M12 - M15, applied industry-research, implement various use-cases
*[https://wiki.fin-ai.eu/index.php/MSCA_Individual_Research_Projects#Fair_Algorithmic_Design_and_Portfolio_Optimization_under_Sustainability_Concerns ESR 17]: Fair Algorithmic Design and Portfolio Optimization under Sustainability Concerns (M18 – M21)
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*[https://wiki.fin-ai.eu/index.php/MSCA_Individual_Research_Projects#Risk_index_for_cryptos DC7: Risk index for cryptos], WP4, M27 – M30, exposure to world-leading research centre and infrastructure, implementing a prototype solution
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*[https://wiki.fin-ai.eu/index.php/MSCA_Individual_Research_Projects#Audience-dependent_explanations DC9: Audience-dependent explanations], WP3, M27 – M30, improve know-how transfer by using and implementing advanced financial models
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*[https://wiki.fin-ai.eu/index.php/MSCA_Individual_Research_Projects#Deep_Generation_of_Financial_Time_Series DC15: Deep Generation of Financial Time Series], WP1, M18 – M21, applied industry-research, implementing several use-cases
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*[https://wiki.fin-ai.eu/index.php/MSCA_Individual_Research_Projects#Investigating_the_utility_of_classical_XAI_methods_in_financial_time_series DC16: Investigating the utility of classical XAI methods in financial time series], WP3, M18 – M21, Research needs to be validated with industry to achieve the envisioned impact
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*[https://wiki.fin-ai.eu/index.php/MSCA_Individual_Research_Projects#Fair_Algorithmic_Design_and_Portfolio_Optimization_under_Sustainability_Concerns DC17: Fair Algorithmic Design and Portfolio Optimization under Sustainability Concerns], WP3, M18 – M21, for training in portfolio optimization in the presence of sustainability scenarios
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(taken from Table 3.1.c GA)
  
 
= European Central Bank =
 
= European Central Bank =

Latest revision as of 18:38, 26 October 2023

Universities

University of Twente

WU Vienna

HU Berlin

Bucharest University of Economic Studies

Babes-Bolyai University

Bern Business School

Kaunas University of Technology

University of Naples

Industrial Partners

Deloitte

Swedbank

Intesa Sanpaolo

Raiffeisen Bank

Cardo AI

Royalton Partners

International Research Centres

ARC Greece

EIT Digital

Fraunhofer Institute

  • Role: Contribute data to the project, contribute their expertise in enabling efficient and sustainable transfer of scientific knowledge into commercial use. Exposure to a world-leading applied research environment. (see Table 1.2.a GA)

Course/workshops

  • Advanced course: Multi-Criteria Decision Making in Sustainable Finance (M30, 3 ECTS): Principles of multi-criteria decision making. Various techniques and concepts (e.g., fuzzy set theory, analytical hierarchy process, preference modelling) to incorporate multiple objectives, in line with ESG principles
  • Lab Training: Virtual reality lab, optimization lab, computer graphics and visualisation lab, analytics lab

DC secondments

(taken from Table 3.1.c GA)

European Central Bank