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PhD Talent Shines at AI PhD Poster Day 2024

Go to photo gallery On the sunny day of 25 June, the AI PhD Poster Day 2024 took place in the beautiful Hortus Botanicus of TU Delft. This day offered a blooming opportunity for PhD students to showcase their AI-related research, and exchange ideas with their peers from different faculties, and a big range of AI Labs. When showing all the AI successes from TU Delft, it is very important to include our PhD talent, and highlight the work they’re doing around both foundational work in machine learning or human-cantered AI, as well as the different contributions that AI makes to key scientific and societal domains. With this event, we provide a platform for early career researchers to network and exchange ideas, and offer them the opportunity to develop and practice key skills. Happy to see the amazing and innovative work done by these talented colleagues. Geert Jan Houben, Pro Vice Rector Magnificus AI, Data, and Digitalisation Congratulations to all of the 6 winners from 5 different labs across 4 faculties. Their research will be highlighted in the AI communication channels over the summer period, so keep an eye out for our YouTube , LinkedIn , X (Twitter) , and new Instagram accoun t ! Watch the pitch videos of all the winners here. Best pitch 2024 The PhDs had the opportunity to pitch their poster and discuss questions from peers within their category during the first half of the event. This was followed by a poster market with visiting faculty staff and fellow PhD researchers. To decide the winner for the best pitch, participating PhDs voted for their favourite pitch within one of three categories. The PhD with the most votes within their category won the best pitch prize. These are the best pitches per category: Category: Machine Learning & Foundational AI techniques Daniël Vos from the faculty of Electrical Engineering, Mathematics and Computer Science, Cyber Analytics Lab with his poster pitch “Optimal decision tree policies for Markov Decision Processes”. Category: Human Centred AI Systems Antonio Mone from the faculty of Electrical Engineering, Mathematics and Computer Science, AiBLE Lab with his poster pitch “Unsupervised Reward-Agnostic Clustering of Behavioral Trajectories for Multi-Intention Inverse Reinforcement Learning”. Category: Applications of AI Casper van Engelenburg from the faculty of Architecture and the Built Environment, AiDAPT Lab with his poster pitch “Self-Supervised Similarity Learning of Floor Layouts”. Best posters 2024 The best posters were decided by a selected jury for the event: Holger Caeser (Assistant Professor at the faculty of Mechanical Engineering, ELLIS Delft Unit ), Nazli Cila (Assistant Professor at Industrial Design Engineering, Lab Director of the AI DeMoS Lab ), Caroline Duterloo (Innovation Manager AI for Energy & Sustainability and Health & Care), and Christine Bel (Innovation Manager AI for Peace, Justice and Security and for Technological Industry). Category: Machine Learning & Foundational AI techniques Eva Memmel from the faculty of Mechanical Engineering, DeTAIL Lab with her poster “Position: Tensor Networks are a Valuable Asset for Green AI”. Eva successfully illustrated the fundamental research on tensor networks in a very accessible way. Not only were the scientific aspects explained, but the need and use of this research were clearly pointed out to fellow scientists and laymen. Christine Bel, Innovation Manager AI for Peace, Justice and Security and for Technological Industry Category: Human Centred AI Systems Amir Homayounirad from the faculty of Electrical Engineering, Mathematics and Computer Science, AiBLE Lab with his poster “Subjectivity Matters: A Hybrid (Human + AI) Method to Support the Identification and Representation of Subjective Values Behind Arguments”. Amir incorporated the nuanced ways in which people perceive things into AI systems by integrating human values. The importance and impact of this approach were also explained in an accessible manner.” Nazli Cila, Assistant Professor at Industrial Design Engineering, Lab Director of the AI DeMoS Lab Category: Applications of AI Alexander Garzón Díaz from the faculty of Civil Engineering and Geosciences, AidroLab with his poster “Autoregressive Graph Neural Network for Emulating Stormwater Drainage Simulations”. Alex's poster impressed the jury with its clear structure, effectively introducing the problem setting, methodology, results, and their implications. The detailed analysis considered performance in the target domain and the potential for generalization to other domains. The topic of stormwater drainage systems is both an intriguing application and highly relevant to our society. Holger Caeser, Assistant Professor at the faculty of Mechanical Engineering, ELLIS Delft Unit About the TU Delft AI Labs On this sunny day, many of the 24 TU Delft AI Labs, ELLIS faculty members, and some ICAI Labs were represented by their PhD students. All of these labs and teams are committed to education, research and innovation in AI, data and digitalisation. The 24 TU Delft AIlabs embody the bridge between research 'in' and 'with' AI, data and digitalisation. They foster cross-fertilisation between talent and expertise, working to increase the impact of AI in the fields of applied sciences, design techniques and society. Because of the TU Delft AI Labs & Talent Programme, academic faculty members and PhD students work together in each TU Delft AI Lab. The aim of this university-wide talent programme is to accelerate research in all relevant scientific disciplines and to increase educational capacity. Take a look back at the AI PhD Poster Event 2024 To top About TU Delft | AI Initiative AI, data and digitalisation are becoming increasingly important for solving major scientific and social issues. TU Delft is pursuing many strands of AI research, both ‘in AI’ and ‘with AI’. The role of AI technologies is also growing across our education and innovation activities. TU Delft aims to provide every student with AI education that embraces both ‘WITH’ and ‘IN’ learning. By equipping every student with a better and wider understanding, we can together build a society that’s capable of integrating AI responsibly and successfully. The TU Delft AI Initiative coordinates various activities and functions, providing a central platform for AI, data and digitalization-related research, for education and for innovation. It allows eight TU Delft faculties to collaborate intensively with multiple partners .

TU Delft zet volgende stap in Campus Den Haag

De TU Delft heeft groen licht gegeven aan de verdere ontwikkeling van haar aanwezigheid in Den Haag, onder de naam TU Delft | Campus Den Haag. Deze Haagse campus maakt, samen met Campus Rotterdam en AMS in Amsterdam, onderdeel uit van de multicampus strategie van de TU Delft. Het doel van Campus Den Haag is om Delftse studenten, onderzoekers en hun state-of-the-art technologische kennis beter te betrekken bij beleid en bestuur. ‘Met de prominente aanwezigheid en activiteiten van TU Delft in het bruisende hart van Den Haag, de stad waar beleid wordt gevormd en internationale betrekkingen centraal staan, geven we invulling aan onze maatschappelijke taak als universiteit. Dit doen we door bij te dragen aan weloverwogen politieke beslissingen, verbeteren van beleidsvorming en het verrijken van het publieke debat’ , Behnam Taebi, Academic Lead TU Delft | Campus Den Haag. In de komende jaren wordt verder gebouwd aan een campus waarin onderwijs, onderzoek en maatschappelijk impact samenkomen zijn rondom de drie maatschappelijke focusthema’s: Klimaat & Energy, Digitalisering en Safety & Security. Naast de bestaande master Engineering and Policy Analysis (EPA), worden twee nieuwe transdisciplinaire masterprogramma’s ontwikkeld en wordt er professioneel onderwijs opgezet onder de werktitel ‘Academy for Public Professionals’. Ook zal in de komende jaren het interfacultaire Climate Safety & Security onderzoekscentrum verder worden uitgebouwd. Vanaf 2026 zal samenhang binnen onze Haagse campus verder worden versterkt door verhuizing naar het nieuwe Universiteitsgebouw Spui (>3000 m2) midden in het centrum van Den Haag. Dit gebouw wordt gedeeld met Universiteit Leiden, UNL en enkele andere kennispartijen die actief zijn in Den Haag. Deze nieuwe stap en de nieuwe naamgeving werden aangekondigd en gevierd tijdens de zomerborrel op 26 juni in New Babylon, de huidige Haagse Campus locatie op loopafstand van de Tweede kamer (zie foto).

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Bipolar membranes for intrinsically stable and scalable CO2 electrolysis

The energy transition requires technology to supply sustainable carbon-based chemicals for hard-to-abate sectors such as long-distance transport and plastic manufacturing. These necessary hydrocarbon chemicals and fuels, responsible for 10-20% of the global greenhouse gas emissions, can be produced sustainably by the electrolysis of captured CO 2 using renewable electricity. Currently, the state-of-the-art CO 2 electrolyzers employ anion exchange membranes (AEMs) to facilitate the transport of hydroxide ions from the cathode to the anode. However, CO 2 is crossing the membrane as well, resulting in a loss of reactant and unfavourable anode conditions which necessitates the use of scarce anode materials. Bipolar membranes (BPMs) offer an alternative that addresses the problem of CO 2 crossover but still requires research to match the product selectivity of AEM-based systems. Our perspective, a collaboration between groups of David Vermaas, Tom Burdyny and Marc Koper, published in Nature Energy, assesses the potential of BPMs for CO 2 electrolysis by looking at CO 2 utilization, energy consumption, and strategies to improve the product selectivity. Abstract CO 2 electrolysis allows the sustainable production of carbon-based fuels and chemicals. However, state-of-the-art CO 2 electrolysers employing anion exchange membranes (AEMs) suffer from (bi)carbonate crossover, causing low CO 2 utilization and limiting anode choices to those based on precious metals. Here we argue that bipolar membranes (BPMs) could become the primary option for intrinsically stable and efficient CO 2 electrolysis without the use of scarce metals. Although both reverse- and forward-bias BPMs can inhibit CO 2 crossover, forward-bias BPMs fail to solve the rare-earth metals requirement at the anode. Unfortunately, reverse-bias BPM systems presently exhibit comparatively lower Faradaic efficiencies and higher cell voltages than AEM-based systems. We argue that these performance challenges can be overcome by focusing research on optimizing the catalyst, reaction microenvironment and alkali cation availability. Furthermore, BPMs can be improved by using thinner layers and a suitable water dissociation catalyst, thus alleviating core remaining challenges in CO 2 electrolysis to bring this technology to the industrial scale. Go to the publication Kostadin Petrov Christel Koopman David Vermaas Tom Burdyny Siddharta Subramanian

Understanding the learning process: machine learning and computational chemistry for hydrogenation

Machine learning is being mentioned all around, but can it be applied to modelling homogeneous catalysis? Researchers from TU Delft together with Janssen Pharmaceuticals published an extensive study accompanied by one of the biggest datasets on rhodium-catalyzed hydrogenation in Chemical Science trying to answer this question. Adarsh Kalikadien Evgeny Pidko For more than half a century, Rhodium-based catalysts have been used to produce chiral molecules via the asymmetric hydrogenation of prochiral olefins. The importance of this transformation was acknowledged by a Nobel prize given to Noyori and Knowles for their contributions in this field. Nowadays, asymmetric hydrogenation catalysts are widely used in the pharmaceutical industry, numerous chiral ligands are available to tackle a wide range of prochiral substrates and the reaction mechanism has been extensively studied. Consequently, one would expect that finding the best catalyst for the asymmetric hydrogenation of a new substrate is a trivial task. Unfortunately, this is not the case and a tedious and costly experimental screening is still needed. Adarsh Kalikadien and Evgeny Pidko from TU Delft together with experts in high-throughput-experimentation, data science and computational chemistry from Janssen Pharmaceutica in Belgium decided to investigate whether a well-trained machine could do the job. To their surprise, the machine was actually not able to learn as much as they expected. The idea was to set up a simple model reaction with a well-known rhodium catalyst. Based on the experimental data generated by the high-throughput experimentation team of Janssen, a computational dataset was built to which multiple machine learning models were applied. “We digitalized the 192 catalyst structures and represented them with features of various levels of complexity for the machine learning models,” says Kalikadien, a PhD student in Pidko’s group. "The interesting thing was that all the simpler models, including the random model, showed similar performances as the expensive variant, which intrigued us. It turned out to be an early indication that the machine was not really learning anything useful.” "One of our conclusions was, when tested more extensively, that for an out-of-domain modeling approach, it doesn't matter what representation you put in”. Nevertheless, although the team was not able to build an accurate model, their study was worth publishing. The publication process went relatively smoothly. “Although the first journal we contacted rejected our submission as too specialized, the high-impact journal Chemical Science saw the value of this work. Not many researchers are interested in just seeing the R2 value of a model and then having no possibility to use it, they are probably interested in an in-depth analysis like ours. So we were able to submit our data, code and even interactive figures there for everyone to use.” At the moment there is a big incentive for publishing negative data in order to help the community to assess the true added value of machine learning, since models trained on mainly positive results tend to become very biased. "We made everything open source," says Kalikadien. "Not only is all the data accessible, but we also offer the code including packages and instructions, so that anyone who is interested can do the same type of research." In this way, they have published one of the largest datasets of a certain type of hydrogenation reaction. What's next? "Our representation of the catalyst wasn't as meaningful for the machine learning models as we had hoped, so we are now looking for a representation that may be less simplified but still as simple as possible," says Kalikadien. "Creating a digital representation of your catalyst should not cost way more money than running the actual experiment, so we are trying to incorporate more information from the reaction mechanism into the model without making it too extensive. A more dynamic and hopefully more informative version of the representation." Read the publication Adarsh Kalikadien, Cecile Valsecchi, Robbert van Putten, Tor Maes, Mikko Muuronen, Natalia Dyubankova, Laurent Lefort and Evgeny A. Pidko

Start jij dit jaar je studie in Delft? ‘Discover your X’ tijdens de OWee en IP!

Wat tof, jij gaat aan de TU Delft studeren! Dan neem je vast ook deel aan de OWee of IP. Tijdens deze week ontdek je alles over de TU Delft, Delft zelf én natuurlijk wat er te doen is buiten je studie. Wil jij in Delft sporten? Jezelf creatief uiten? Helemaal ontspannen? Nieuwe mensen ontmoeten? Of af en toe een te gek evenement bijwonen? We zien jou graag tijdens de infomarkt én natuurlijk de Activity Market bij X! Op maandag 19 augustus staan we op de infomarkt in Delft. Hopelijk kunnen we daar alvast kennismaken! Avondprogramma Vanaf zondag 18 augustus t/m donderdag 22 augustus kun je alvast kennismaken met X door de evenementen uit ons rustige avondprogramma te bezoeken. Klik hier voor de agenda. Activity Market | 21 augustus Op woensdag 21 augustus vindt bij X de Activity Market plaats voor alle nieuwe en eerstejaars studenten. Je maakt hier kennis met de faciliteiten van X, de sport- & en cultuurverenigingen en alles wat X te bieden heeft op het gebied van sport, cultuur, kunst, lifestyle, games en eten en drinken. Volg ons alvast op Instagram voor een eerste sneak peek van X en de Activity Market! *Er worden foto's gemaakt op de Activity Market. Meer info over ons fotografiebeleid bij X vind je in de algemene voorwaarden. Beschikbaarheid X voor huidige X-leden X-leden kunnen nog steeds meedoen met het beschikbare aanbod, maar houd rekening met extra drukte. Zo kunnen de nieuwe studenten dit jaar ook een kijkje nemen in de Fitness op de Activity market tussen 11:00 en 15:00. Check de beschikbare lessen en waar ze komende week plaatsvinden in het rooster.

Opening van het academisch jaar 2024-2025 op 2 september

Vier met ons de opening van het academisch jaar! Je bent van harte uitgenodigd om op maandag 2 september aanwezig te zijn bij de opening van het Academisch Jaar 2024-2025 van de TU Delft. Met het thema 'Engineering the Future' kijken we dit jaar naar de bouwstenen van onze duurzame toekomst. Mobiliteit, voedselvoorziening, gezondheidszorg, energievoorziening en de manier waarop we grondstoffen gebruiken: ze zullen allemaal drastisch veranderen in deze eeuw. Aan de TU Delft kunnen we deze transities helpen vormgeven. Wat we hier doen kan invloed hebben op hoe bedrijven en eindgebruikers zich gedragen. Neem onze smartphones, waarvan het meeste goud en lithium na een paar jaar nog steeds op de vuilnisbelt belandt. Als je ze vanaf het begin anders ontwerpt, kun je uiteindelijk 'nul afval' bereiken - en dit is slechts één voorbeeld. Michiel Langezaal, alumnus en CEO van FastNed, het bedrijf dat een netwerk van snellaadpunten bouwt langs de snelwegen van Europa, is te gast. We praten met Dream Team Epoch, dat AI wil gebruiken om bij te dragen aan de Sustainable Development Goals van de Verenigde Naties. We verwelkomen ook Irek Roslon, alumnus en oprichter van SoundCell, de startup die een screening ontwikkelt waarmee artsen razendsnel de juiste antibiotica voor patiënten kunnen kiezen. Zij zullen het hebben over hun weg naar de toekomst, de bouwstenen die ze nodig hebben en de obstakels waar ze tegenaan lopen. Hoe ze hun eigen en onze toekomst vormgeven en met wie ze samenwerken. Muziek en dans maken ook deel uit van deze feestelijke bijeenkomst. En aan het eind heffen we met z'n allen het glas op het nieuwe academische jaar! Klik hier om je aan te melden.