Unterstützung bei Projekten in der Automatisierung
Wir sind auf der Suche nach motivierten und engagierten Studierenden (w/m/div)* zur Unterstützung unseres internationalen Teams in Villach. Ein spannendes Arbeitsumfeld zeichnet dieses Praktikum ebenso aus wie eine attraktive Entlohnung. Verstärken Sie unser Team!
Zu ihren neuen Aufgaben behören u. a.:
First point of contact als Schnittstelle zwischen Testwafer Bereitstellung und Produktion
Identifikation und Analyse des Verbesserungspotentials bei Testscheiben in der Produktion
Aufbau und Durchführung begleitender Tests in der Produktion
Support bei Reports in Tableau (SQL)
Erstellen von Online-Trainingsunterlagen in englischer Sprache
Aktive Mitarbeit bei der Wiki Wartung
Beschäftigungsart: Befristet / Teilzeit (Flexible Arbeitszeit von Montag bis Freitag zwischen 06:00 und 19:00 Uhr)
Thursday April 7th 2022 | 05.30 pm (CET) | via Zoom
Anuj Shah, Ph. D. | Senior Machine Learning Research Practitioner at Netflix
Abstract:
Recommendation systems today are widely used across many applications such as in multimedia content platforms, social networks, and ecommerce, to provide suggestions to users that are most likely to fulfill their needs, thereby improving the user experience. Academic research, to date, largely focuses on the performance of recommendation models in terms of ranking quality or accuracy measures, which often don’t directly translate into improvements in the real-world. In this talk, we present some of the most interesting challenges that we face in the personalization efforts at Netflix. The goal of this talk is to sunshine challenging research problems in industrial recommendation systems and start a conversation about exciting areas of future research.
Bio:
Anuj Shah is a Senior Machine Learning Research Practitioner at Netflix. For the past 10+ years, he’s been working on an applied research team focused on developing the next generation of algorithms used to generate the Netflix homepage through machine learning, ranking, recommendation, and large-scale software engineering. He is extremely passionate about algorithms and technologies that help improve the Netflix customer experience with highly personalized consumer-facing products like the Continue Watching row, the Top 10 rows amongst many others. Prior to Netflix, he worked on machine learning in the Computational Sciences Division at the Pacific Northwest National Laboratory focusing on technologies at the intersection of proteomics, bioinformatics and Computer Science for 8 years. He has a Ph.D. from the Computer Science department at Washington State University and a Masters in C.S. from Virginia Tech.
5G is the fifth generation of cellular networks. Up to 100 times faster than 4G, 5G is creating never-before-seen opportunities for people and businesses. Faster connectivity speeds, ultra-low latency and greater bandwidth is advancing societies, transforming industries and dramatically enhancing day-to-day experiences. Services that we used to see as futuristic, such as e-health, connected vehicles and traffic systems and advanced mobile cloud gaming have arrived. With 5G technology, we can help create a smarter, safer and more sustainable future.
Bio:
* Network performance and evolution lead for all Europe and Latin America, Ericsson Company (Poland office)
* Professional consultant for network performance and 5G evolution lead with more than 15 years of experience in different Telco topics
* Responsibilities covering all Europe and Latin America:
Spectrum & Regulatory Advisory (spectrum and bandwidth acquisition advisory to operators, also spectrum interference topics)
NSA to SA Evolutions (5G spectrum architecture and deployment strategy
5G Evolution Proof Points (NSA/SA coverage extension NR mid band link budget, ESS spectrum sharing system simulator and SA strategy)
Performance Benchmarking (OOKLA speed test and crowdsourced data analytics)
Dr. Anja Zernig | KAI Kompetenzzentrum Automobil- und Industrieelektronik GmbH Villach | Friday, November 26, 2021 | 10:00 (CET, 09:00 UTC) | Online:https://classroom.aau.at/b/sch-xte-ijl-jdg
Abstract: AI has infected the world. Today, there is a huge hype around Data Science activities all over the world, where one of the biggest challenges for the industry is to deliver financial value quickly but also sustainably. In her talk, she will show some examples on latest Use Cases in the area of Data Science within the semiconductor industry, including technical approaches and practical challenges. Further, she will give some personal insights on important enabling factors that make a Data Science project successful.
Bio: Anja Zernig coordinates Data Science projects at KAI Kompetenzzentrum Automobil- und Industrieelektronik GmbH in Villach, which is a 100% subsidiary of Infineon Technologies Austria AG. Dr. Zernig studied Technical Mathematics at the University of Klagenfurt and received her PhD in 2016. Afterwards, she has been applied as a researcher at KAI, focusing on topics like outlier and anomaly detection, pattern recognition, applied statistical methods and Machine Learning techniques. Since 2019 she is coordinating a team of Data Scientists, involved in various national and international funding projects and acts as a link between the industry and academic collaboration partners. She is supervising researchers and students, dealing with innovative data-analytical concepts within the semiconductor production, testing and optimization and publishes latest scientific insights in different conference and Journal papers. Beside this, Dr. Zernig participates in and supports local Data Science activities, e.g. she is part of the organizing team of the Women in Data Science Villach. In recent times, she is focusing on deployment strategies to guarantee sustainable Machine Learning lifecycles.
Sergey Gorinsky | IMDEA Networks Institute, Madrid | Friday, November 12, 2021 | 14:00 (CET, 13:00 UTC)| S.0.05
Abstract: Content delivery networks (CDNs) distribute much of the Internet content by caching and serving the objects requested by users. A major goal of a CDN is to maximize the hit rates of its caches, thereby enabling faster content downloads to the users. Content caching involves two components: an admission algorithm to decide whether to cache an object and an eviction algorithm to decide which object to evict from the cache when it is full. In this paper, we focus on cache admission and propose an algorithm called RL-Cache that uses model-free reinforcement learning (RL) to decide whether or not to admit a requested object into the CDN’s cache. Unlike prior approaches that use a small set of criteria for decision making, RL-Cache weights a large set of features that include the object size, recency, and frequency of access. We develop a publicly available implementation of RL-Cache and perform an evaluation using production traces for the image, video, and web traffic classes from Akamai’s CDN. The evaluation shows that RL-Cache improves the hit rate in comparison with the state of the art and imposes only a modest resource overhead on the CDN servers. Further, RL-Cache is robust enough that it can be trained in one location and executed on request traces of the same or different traffic classes in other locations of the same geographic region.
Bio: Sergey Gorinsky is a tenured Research Associate Professor at IMDEA Networks Institute in Madrid, Spain. He joined the institute in 2009 and leads the NetEcon (Network Economics) research group there. Dr. Gorinsky received his Ph.D. and M.S. degrees from the University of Texas at Austin, USA in 2003 and 1999 respectively and Engineer degree from Moscow Institute of Electronic Technology, Zelenograd, Russia in 1994. From 2003 to 2009, he served on the tenure-track faculty at Washington University in St. Louis, USA. In 2010-2014, Dr. Gorinsky was a Ramón y Cajal Fellow funded by the Spanish Government. Sergey Gorinsky graduated four Ph.D. students. The areas of his primary research interests are computer networking, distributed systems, and network economics. His work appeared at top conferences and journals such as SIGCOMM, CoNEXT, INFOCOM, Transactions on Networking, and Journal on Selected Areas in Communications. He served as a TPC chair of ICNP 2017 and other conferences, as well as a TPC member for a much broader conference population. Sergey Gorinsky contributed to conference organization in many roles, such as a general chair of SIGCOMM 2018 and ICNP 2020. He also served as an evaluator of research proposals and projects for the European Research Council (ERC StG), European Commission (Horizon 2020, FP7), COST Association, and numerous other funding agencies.
IoT40 Systems GmbH baut stabile zukunftssichere IoT und AI Lösungen und führt seine Kunden durch die digitale Transformation zum Erfolg!
„We don’t predict the future – we build it“
Im Zuge unserer Tätigkeiten im Industrie 4.0 Umfeld, haben wir uns auch auf individuelle Softwareentwicklung spezialisiert und Lösungen ausgearbeitet, die in bestehende ITStrukturen unserer Kunden nahtlos integriert werden können. Wir beschäftigen uns mit künstlicher Intelligenz und setzen diese in Produktionsbereich bei Kunden ein. Wir leben unsere Leidenschaft für das Internet der Dinge voll und ganz aus.
Weitere Informationen zur Stellenausschreibung / Bewerbung finden Sie hier:
Wir, das Ingenieurbüro Fehringer (IBF) GmbH, sind ein seit über 25 Jahren in Deutschland ansässiges internationales Ingenieurbüro für Elektrotechnik, das in Klagenfurt seit Kurzem eine Dependance hat. Diese möchten wir gemeinsam mit Ihnen auf- und ausbauen.
Unser Schwerpunkt liegt in der Automatisierungstechnik, hier sind wir in klassischen Projekten genauso unterwegs wie in innovativen Pilotprojekten.
Zur Unterstützung suchen wir einen Studenten (m/w/d)
zum Einpflegen von Daten und Programmen in eine Datenbank auf ACCESS-Basis sowie Schaffung einer visuellen Benutzeroberfläche.
Ihre Qualifikationen:
Laufendes Studium der Informations- und Kommunikationstechnologie (auch Absolventen sind willkommen)
Datenbankkenntnisse
Teamfähigkeit
Deutsch und Englisch in Wort und Schrift
Was wir bieten:
ein kleines Team mit flachen Hierarchien
einen modernen Arbeitsplatz in Klagenfurt
Platz für eigene Ideen
leistungsgerechte Vergütung
Arbeitsausmaß: ca. 5-10 Stunden / Woche
Arbeitsbeginn: So bald als möglich
Ihr Kontakt zu uns:
Schicken Sie Ihre Bewerbungsunterlagen asap per Email an: info@ibfdo.de.
Weitere Informationen zu unserem Unternehmen finden Sie unter www.ibfdo.de.
As a leading global supplier of wafer fabrication equipment and services to the semiconductor industry, Lam Research develops innovative solutions that help our customers build smaller, faster, and more power-efficient devices.
We are a company comprised of people who work hard, deliver outstanding results and maintain a sense of humor during even the most challenging times. Our success results from our employees‘ diverse technical and business expertise, which fuels close collaboration and ongoing innovation. We know that our dynamic, global team of exceptional employees is essential to our continued growth.
Join the Lam Research team, where you can play a vital role in the future of electronics and write your own success story.
Werner Bailer | Joanneum Research, Graz | Friday, June 25, 2021 | 10:00 (CET, 08:00 UTC) | online
Abstract:
Artificial neural networks have been adopted for a broad range of tasks in multimedia analysis and processing, such as visual and acoustic classification, extraction of multimedia descriptors or image and video coding. The trained neural networks for these applications contain a large number of parameters (weights), resulting in a considerable size. Thus, transferring them to a number of clients using them in applications (e.g., mobile phones, smart cameras) benefits from a compressed representation of neural networks.
MPEG Neural Network Coding and Representation is the first international standard for efficient compression of neural networks (NNs). The standard is designed as a toolbox of compression methods, which can be used to create coding pipelines. It can be either used as an independent coding framework (with its own bitstream format) or together with external neural network formats and frameworks. For providing the highest degree of flexibility, the network compression methods operate per parameter tensor in order to always ensure proper decoding, even if no structure information is provided. The standard contains compression-efficient quantization and an arithmetic coding scheme (DeepCABAC) as core encoding and decoding technologies, as well as neural network parameter pre-processing methods like sparsification, pruning, low-rank decomposition, unification, local scaling and batch norm folding. NNR achieves a compression efficiency of more than 97% for transparent coding cases, i.e. without degrading classification quality, such as top-1 or top-5 accuracies.
This talk presents an overview of the context, technical features and characteristics of NN coding standard, and discusses ongoing topics such as incremental neural network representation.
Werner Bailer is a Key Researcher at DIGITAL – Institute for Information and Communication Technologies at JOANNEUM RESEARCH in Graz, Austria. He received a degree in Media Technology and Design in 2002 for his diploma thesis on motion estimation and segmentation for film/video standards conversion. His research interests include audiovisual content analysis, multimedia retrieval and machine learning. He regularly contributes to standardization, among others in MPEG, where he co-chairs the ad-hoc group on neural network compression.
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