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start [2021/08/06 20:13]
Justus Piater
start [2026/06/11 06:17] (current)
Justus Piater [Working With Us]
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 ===== Working With Us ===== ===== Working With Us =====
 +
 +  * We are hiring [[:jobs:|1 Postdoc and 3 PhD Students in Robot Learning]].
   * Check our thesis topics for [[theses/​start|Bachelor and Master students]].   * Check our thesis topics for [[theses/​start|Bachelor and Master students]].
-  * [[https://ellis.eu/|ELLIS]] PhD Program: ​[[https://ellis.eu/news/ellis-phd-program-call-for-applications-deadline-november-15-2021|Call for Applications]]+  * [[:​jobs:#​notice_for_non-eueea_prospective_master_students|Notice]] for non-[[https://en.wikipedia.org/​wiki/EU|EU]]/[[https://en.wikipedia.org/wiki/European_Economic_Area|EEA]] prospective Master students 
  
-<​html><​!-- 
-//Bachelor students://​{{ ::​mobile-manipulator-crop.jpg?​nolink&​100|}} **Want to create artificial intelligence for autonomous robots?** Want to join our [[@/​uibk/​piater/​courses/​RC_Poster2.pdf |interdisciplinary LFUI team]] to compete in the 2020 [[https://​www.robocup.org/​leagues/​16|RoboCup@Work]] competition?​ Take the [[https://​lfuonline.uibk.ac.at/​public/​lfuonline_lv.details?​sem_id_in=19W&​lvnr_id_in=703135|Introduction to Robotics]] course in the winter semester 2019-20! 
---></​html>​ 
  
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- +{{ ::iis_retreat_2024.jpg?direct&​900 ​|}}\\ 
-{{::dsc_0052.jpg?640|Group Picture}}\\ +<​html>​ 
-Group picture taken at our retreat ​in Obergurgl +<div style="​text-align:​ center;">​ 
 +  <p>Group picture taken at our 2024 retreat ​at Meissner Haus.</​p>​ 
 +</​div>​ 
 +</​html>​
  
 ===== News ===== ===== News =====
  
-<​HTML><​table><​tr valign="​top"><​td>​2021-03-24</​td><​td>​Justus Piater ​gives an invited lecture <​i>​Machine Learning, Perception, And Abstract Concepts</​i> ​at Invited lecture at Ontario Tech U, Canada, online. <span class="​actions">​<a href="javascript:void(0)"​ onclick="​showHide('​newsitem0',​ '​Abstract'​)">​[Abstract]<​/a></span><​blockquote id="​newsitem0Abstract"​ style="​display:​none">With every spectacular achievement of a machine learning +<​HTML><​table><​tr valign="​top"><​td>​2026-05-07</​td><​td>​Justus Piater ​is a panelist ​at a public discussion on <a href="https://www.uibk.ac.at/​de/​medien-kommunikation/​kommunikation/​intern/​">Invited 
-    ​system, the long-elusive AI breakthrough is popularly proclaimed +    ​expert interview on “Human-robotics relations: What does the 
-    to be just around ​the corner. ​ Most recent successes have been due +    ​future hold?​”</​a>​Innsbruck(Public event organized ​by the Department ​of MediaSociety and CommunicationUniversität Innsbruck)</​td></​tr><​tr valign="​top"><​td>​2026-04-15</​td><​td>​Justus Piater ​gives an invited talk <i>Some Latest Results in Robot Learning of Structure by 
-    ​in large part to massive data and computationin particular using +    Interaction</i> at <a href="​https://​airov.at/2026/workshop/TactileRobotics.html">​Austrian 
-    deep artificial neural networks But can artificial cognition +    Robotics Workshop</​a>, ​Leoben(Annual workshop of the GMAR; at AIRoV 2026)</​td></​tr><​tr valign="​top"><​td>​2026-04-08</​td><​td>​Justus Piater ​gives an invited talk <i>Generative KI: Funktionsweise,​ Möglichkeiten und 
-    really be achieved just by further scaling up existing +    Grenzen</i> at SchulleiterInnen-Tagung „IT-Sicherheit und KI-Einsatz in 
-    machine-learning techniques? ​ I discuss examples ​of simple, +    der Schule“, Pädagogische Hochschule Tirol. (Veranstaltung für Schulleitungen der Bildungsdirektion für Tirol) <span class="​actions">​<a href="javascript:void(0)"​ onclick="​showHide('​newsitem2',​ '​Abstract'​)">​[Abstract]<​/a></span><​blockquote id="​newsitem2Abstract"​ style="​display:​none">Generative KI-Systeme wie ChatGPT und Midjourney haben 
-    perceptual problems that are easily solved by humans but very +    die Welt im Sturm erobert. Wie können wir sie produktiv nutzen? 
-    difficult for today'​s machine learning methods. ​ These problems +    Wie können wir mit den Herausforderungen umgehendie durch sie 
-    reflect how humans conceptualize their world. ​ Their mastery is +    entstehen? Ich werde diese Fragen von der technischen Seite her 
-    thus likely to be an essential prerequisite for autonomous robots +    angehen und einen Eindruck davon vermittelnwie diese Systeme 
-    to attain higher levels of cognitive abilities. ​ To get there+    funktionieren. Daraus ergeben sich ein realistisches Verständnis 
-    few core issues can be identified that should drive research in +    für ihre Möglichkeiten und Grenzen sowie einige grundlegende 
-    cognitive robotics.</​blockquote>​</​td></​tr><​tr valign="​top"><​td>​2021-01-28</​td><​td>​Matteo Saveriano ​gives an invited talk <i>Making robots to learn from human observation?​</i> at <a href="​https://​www.bmeia.gv.at/en/austrian-embassy-ottawa/​news/​events/​detail/​article/​showcasing-young-austrian-scholars-and-scientists-an-original-seven-part-virtual-lectures-ser/">Showcasing Young Austrian ​Scholars and Scientists, Austrian cultural forum, Ottawa</​a>, ​online.</​td></​tr><​tr valign="​top"><​td>​2021-01-14</​td><​td>​Matteo Saveriano ​gives an invited talk <i>Hierarchical action decomposition and motion learning for the execution of manipulation tasks</i> at <a href="http://www.gmar.at/​aktuell/​">Hello Tyrol calling! Robotics Talk onlineGMARInnsbruck</a>, online.</​td></​tr><​tr valign="​top"><​td>​2020-11-19</​td><​td>​Justus Piater gives an invited talk <i>Machine ​Learning ​in Robotics</i> at <a href="​https://​baiome.org/">bAIome PI Talk, Center for +    Empfehlungen für den Umgang mit ihnen im Schulbetrieb.</blockquote></​td></​tr><​tr valign="​top"><​td>​2025-11-19</​td><​td>​Justus Piater gives an invited talk <i>Structural Understanding – The Grand Challenge of Robot 
-    Biomedical AI, University Medical Center Hamburg-Eppendorf</​a>, ​online. <span class="​actions"><​a href="​javascript:​void(0)"​ onclick="​showHide('​newsitem4', '​Abstract'​)">​[Abstract]</​a></​span><​blockquote id="newsitem4Abstract" style="​display:​none">​Machine Learning increasingly equips robots with +    ​Learning</​i>​ at <a href="​https://​elliit.se/​news-and-events/​focus-period-lund-2025/​symposium/">ELLIIT Focus Period Symposium: Robot Learning</​a>, ​Lund University(The ELLIIT Focus Period Symposium is the highlight of the five-week focus period, during which young international scholars, ELLIIT researchers and other well-established international academics gather in Lund to work together on joint research challenges.) ​<span class="​actions"><​a href="​javascript:​void(0)"​ onclick="​showHide('​newsitem3', '​Abstract'​)">​[Abstract]</​a></​span><​blockquote id="newsitem3Abstract" style="​display:​none">​AI has made great progress ​in recent years, ​and the 
-    learning capabilities and flexibility. ​ This will enable them to +    ​sophistication of robots has been rising with costs fallingYet, 
-    act purposefully ​in unstructured environments ​and to react to +    ​the capabilities ​of AI-enabled robots are not keeping paceI 
-    ​unforeseen events ​People can teach them intuitively to perform +    ​argue that this is due to a lack of structural understanding by 
-    ​tasks instead ​of having to program them in painstaking ways+    ​current AI systems. I will discuss several lines of research in my 
-    ​Robots can learn from experience and can improve their behavior +    ​lab that seek to enable robots to generalize better ​and learn 
-    ​over time In this talk I will give an overview ​of methods, +    ​faster thanks to explicit notions of structure.</​blockquote></​td></​tr><​tr valign="​top"><​td>​2025-09-18</​td><​td>​Samuele Tosatto gives an invited keynote ​<i>Where are all the intelligent robots? A quest for efficiency in reinforcement learning</i> at <a href="​https://​sarl-plus.github.io/​RL-Bootcamp2025/">Reinforcement Learning Bootcamp 2025</​a>, ​Salzburg. <span class="​actions"​><a href="javascript:​void(0)"​ onclick="​showHide('​newsitem4',​ '​Abstract'​)">[Abstract]</​a></​span><blockquote id="newsitem4Abstract"​ style="​display:none">As artificial intelligence reshapes our digital world at a breathtaking pace,  
-    ​opportunities, ​and challenges of machine learning in +    a curious question arises: Where are all the real-world, intelligent robots?  
-    ​robotics.</​blockquote></​td></​tr><​tr valign="​top"><​td>​2020-11-20</​td><​td>​Simon Haller-Seeber and Patrick Lamprecht present a show <i>Explainable AI: A sneak peek into the Black-Box</i> at <a href="​https://​youtube.com/watch?​v=4NVfPwdLnCg&​amp;​t=17m43s">Science Slam</​a>, ​online.</td></​tr><​tr valign="top"><​td>​2020-09-30</td><​td>​Erwan Renaudo contributes ​talk <i>ROSSINI: RobOt kidS deSIgn thiNkIng</iat <a href="https://​www.springer.com/​gp/​book/​9783030674106">Robotics ​in  +    While we have mastered the generation of text, images, and video by leveraging vast web-scale datasets, 
-    ​Education 2020</a>, online.</​td></​tr><​tr valign="​top"><​td>​2020-06-22</​td><​td>​Justus Piater gives an invited ​talk <i>Conditional Neural Movement Primitives</i> at <a href="http://www.gdr-isis.fr/index.php?​page=reunion&​amp;​idreunion=424">GdR +    robotics still faces a fundamental data bottleneck. Reinforcement learning (RL) offers a compelling solution,  
-    ​ISIS Réunion Apprentissage et Robotique</​a>, ​online. <span class="​actions"><​a href="​javascript:​void(0)"​ onclick="​showHide('​newsitem7', '​Abstract'​)">​[Abstract]</​a></​span><​blockquote id="newsitem7Abstract" style="​display:​none">​Conditional Neural Movement Primitives (CNMP) constitute +    enabling agents to learn autonomously by collecting their own experience.  
-    ​a novel framework for robot programming ​by demonstration based on +    However, the path to autonomy is often blocked by the staggering inefficiency of current RL algorithms,​ 
-    Conditional Neural Processes (CNP) Like Bayesian methods such as +    which can require millions of trials to master simple tasks. This talk embarks on a quest to tackle this  
-    ​Gaussian Processes (GP)CNP learn how target distributions depend +    efficiency problem head-on. I will argue that a crucial step toward unlocking the potential of  
-    ​on data, and can be conditioned on specific data points to infer +    robot learning lies in a two-pronged approach: first, by developing statistically efficient ​ 
-    new target distributions at test time ​Unlike GP that are +    ​algorithms that can reuse data by leveraging sound off-policy techniques, and second,  
-    ​expensive to train and scale poorly to high dimensionsCNP are +    by designing better action representations for physical, real-world agents.  
-    neural networks and are trained by gradient descent CNMP +    By making our algorithms more efficient and refining their core hypotheses,  
-    ​leverage CNP to represent motion trajectories that can be +    we can accelerate the journey toward real embodied artificial intelligence.</blockquote></​td></​tr><​tr valign="​top"><​td>​2025-07-15</​td><​td>​Justus Piater gives an invited ​keynote ​<i>Making robots learn to perceive and act with 
-    ​conditionedat test time, on task paramters such as goal +    understanding</i> at <a href="https://www.uibk.ac.at/​en/​congress/​multibody2025/​">The 
-    ​locations, via points, ​and/or force readings ​Moreover,​ CNMP are +    ​12th ECCOMAS Thematic Conference on Multibody Dynamics</​a>, ​Innsbruck. <span class="​actions"><​a href="​javascript:​void(0)"​ onclick="​showHide('​newsitem5', '​Abstract'​)">​[Abstract]</​a></​span><​blockquote id="newsitem5Abstract" style="​display:​none">​The flexibility and robustness of current robots is 
-    ​conditioned ​on sensor readings during executionresulting in +    ​limited ​by their lack of understanding of their environmentFor 
-    ​robustreactive behavior. ​ This talk will present an overview ​of +    ​this reasonmost robots operate in controlled environments. 
-    ​how CNMP work and how they can be used in various robot +    ​Machine learning ​can circumvent modeling problems but introduces 
-    ​applications.</​blockquote></​td></​tr><​tr valign="​top"><​td>​2020-06-03</​td><​td>​Justus Piater ​appears ​in the mediaWie der Roboter denken lernt.</​td></​tr><​tr valign="​top"><​td>​2020-01-29</​td><​td>​Justus Piater ​gives an invited talk <i>Digital Science</i> at <a href="​https://​www.graduateacademy.uni-heidelberg.de/karriere/veranstaltungsreihen.html">​Vortragsreihe +    new problems of generalizing from examplesHow can robots acquire 
-    „Primers for Predocs – Strategien für eine erfolgreiche +    ​understanding (of structurefunction, causality, etc.) that 
-    Promotion“<​/a>, Universität Heidelberg. <span class="​actions"><a href="​javascript:void(0)"​ onclick="​showHide('​newsitem10'​'​Abstract'​)">​[Abstract]</a></​span><​blockquote id="​newsitem10Abstract"​ style="​display:​none">​Massive availability of data and computing power are +    ​allows them to generalize from sparse experience? Motivated by 
-    promoting data-driven methods in all areas of science and +    ​shortcomings of current machine-learning methodsI will argue 
-    technology. ​ I will describe how the University of Innsbruck +    ​that &​quot;​understanding&​quot;​ is a meaningful notion in AI that reaches 
-    supports this via its new Digital Science Center, and will give a +    beyond prediction ​and controlI will discuss examples of our 
-    flavor of machine learning for data analysis.</​blockquote>​</​td></​tr><​tr valign="​top"><​td>​2020-01-20</​td><​td>​Joanna Chimiak-OpokaCarina König, and Justus Piater appear in the media: <a href="​https://​www.uibk.ac.at/​newsroom/ergaenzung-digital-science-erfolgreich-gestartet.html.de">Ergänzung Digital Science erfolgreich gestartet – UIBK Newsroom</​a>​.</​td></​tr></​table></​HTML>​+    ​recent work on learning visual relational conceptsextrapolation 
 +    ​of learned movements beyond the training distributionlearning ​of 
 +    ​symbolic concepts ​and rules, and structure-driven skill learning 
 +    ​from sensorimotor experience. Our long-term objective is to 
 +    improve abstraction,​ generalization,​ robustness, and ultimately 
 +    explainability of robot perception and action.</​blockquote></​td></​tr><​tr valign="​top"><​td>​2025-07-11</​td><​td>​Justus Piater ​and Alejandro Agostini give an invited talk <​i>​Learning Symbols and Abstractions ​in Robot Planning</​i>​ at <a href="​https://www.unibz.it/​en/​events/​abstraction-language-science-engineering">​Abstraction:​ 
 +    Language - Science - Engineering</​a>,​ Bolzano. (International Workshop)</​td></​tr><​tr valign="​top"><​td>​2025-04-25</​td><​td>​Simon Haller-Seeber ​gives an invited talk <i>AI-powered tools for real-time transcription and translation in action: A self-hosted open-source framework for digital spaces.</i> at <a href="​https://​www.uibk.ac.at/de/medien/veranstaltungen/​tagungen/​medien-wissen-bildung-2025/">Medien - Wissen - Bildung 2025Streif­züge an den Naht­stel­len von MedienBil­dung und Phi­lo­so­phie</a>, Universität ​Innsbruck.</​td></​tr><​tr valign="​top"><​td>​2025-04-10</​td><​td>​Simon Haller-Seeber gives an invited keynote <​i>​Hands-on Approaches to SoftwareRobotics, and AIExploring Experiments and Science in Action</​i>​ at <a href="​https://​iis.uibk.ac.at/​public/simon/ECER-2025/">​European Conference on Educational Robotics (ECER 2025)</​a>,​ HTL Anichstrasse.</​td></​tr><​tr valign="​top"><​td>​2025-04-10</td><​td>​Simon Haller-Seeber and Christopher Kelter teach tutorial <i>Was sind Roboter, was macht eine KI? Entwickle deine eigene KI und programmiere unsere Minibots</​i>​ at Campustag BG/BRG Sillgasse, Universität Innsbruck.</​td></​tr></​table></​HTML>​
  
 [[news|Older News]] [[news|Older News]]
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 Austria Austria
  
-**How to find us:** See the [[http://informatik.uibk.ac.at/​how-to-reach-us/​|directions]].+**How to find us:** See the [[https://www.uibk.ac.at/​informatik/kontakt/​anfahrt.html.en|directions]].
  
 **Legal Notice:** See the [[:​impressum|Impress and Privacy Notice]]. **Legal Notice:** See the [[:​impressum|Impress and Privacy Notice]].
start.1628273612.txt.gz · Last modified: 2021/08/06 20:13 by Justus Piater