{"id":11410,"date":"2019-06-20T20:19:11","date_gmt":"2019-06-21T00:19:11","guid":{"rendered":"https:\/\/web.uri.edu\/cs\/?page_id=11410"},"modified":"2019-06-20T20:22:45","modified_gmt":"2019-06-21T00:22:45","slug":"jobs-and-internships","status":"publish","type":"page","link":"https:\/\/web.uri.edu\/cs\/news-and-events\/jobs-and-internships\/","title":{"rendered":"Jobs and Internships"},"content":{"rendered":"<ul class=\"display-posts-listing\"><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/women-in-ai-workshop\/\">Women in AI Workshop<\/a> <span class=\"date\">(4\/16\/2025)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Wednesday, April 16, 4:30-6:00 pm Where: Ballentine 115 Our Computer Science IGT Scholars are presenting a Women in AI Workshop that is open to all who are interested. The workshop will include a panel of women who have worked in the field of Artificial Intelligence in a variety of capacities: Panel: Dawn Fitzgerald &#8211; [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/stephen-bach-rigorously-benchmarking-llms-for-translating-text-to-structured-planning-languages-2\/\">Stephen Bach, Rigorously Benchmarking LLMs for Translating Text to Structured Planning Languages<\/a> <span class=\"date\">(3\/19\/2025)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Friday, 4\/18\/25 11:00 am; Where: Bliss 260 Abstract: Can large language models (LLMs) help with planning? And how should we even measure that ability? In this talk, I will present our work on Planetarium, a benchmark that evaluates LLMs&#8217; ability to generate PDDL (Planning Domain Definition Language) code from natural language descriptions of planning [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/hang-hua-advancing-generative-ai-for-multimodal-intelligence\/\">Hang Hua, Advancing Generative AI for Multimodal Intelligence<\/a> <span class=\"date\">(3\/4\/2025)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Friday, 3\/7 11 am &#8211; 12 pm; Where: Tyler Hall 055. Abstract: Generative AI is transforming how machines interact with and augment human capabilities. However, achieving artificial general intelligence (AGI) requires addressing significant challenges in retrained language models (PLM) and multimodal large language models (MLLMs), including the brittleness of language model fine-tuning, imbalanced vision-language [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/khaled-saifuddin-hypergraph-learning-from-algorithms-to-applications\/\">Khaled Saifuddin, Hypergraph Learning: From Algorithms to Applications<\/a> <span class=\"date\">(3\/3\/2025)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Thursday, 3\/6 11 am &#8211; 12 pm; Where: Tyler Hall 055 Abstract: This talk explores the advancement of Hypergraph Neural Networks (HyperGNNs) as a powerful extension of Graph Neural Networks (GNNs) to model higher-order relationships in complex systems, particularly in biomedical applications. While traditional GNNs struggle to capture higher-order intricate dependencies, HyperGNNs leverage hypergraphs [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/alina-barnett-inherently-interpretable-neural-networks-for-scientific-discovery-and-high-stakes-decision-support\/\">Alina Barnett, Inherently Interpretable Neural Networks for Scientific Discovery and High-Stakes Decision Support<\/a> <span class=\"date\">(3\/1\/2025)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Tuesday, 3\/4 11 am &#8211; 12 pm. Where: Tyler Hall 055. Abstract Artificial intelligence is increasingly performing high-stakes tasks traditionally reserved for skilled professionals, with AI systems often surpassing human expert performance on specific tasks. Despite these advances, the &#8220;black box&#8221; (i.e., uninterpretable) nature of many machine learning algorithms poses significant challenges. These opaque [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/mahmoud-nazzal-secure-robust-and-interpretable-ai-integrating-graph-and-language-models\/\">Mahmoud Nazzal, Secure, Robust, and Interpretable AI Integrating Graph and Language Models<\/a> <span class=\"date\">(2\/26\/2025)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Thursday, 2\/27 11:00 am Where: Tyler Hall 055 Abstract: Artificial intelligence (AI) has achieved remarkable performance across various domains. In most real-world applications, data often takes relational forms, such as graphs and networks, or sequential forms, such as text and time series. As AI evolves, specialized models have emerged to handle these structures\u2014Graph Neural [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/indrani-mandahl-honored-as-rhode-island-monthly-tech10-recipient\/\">Indrani Mandahl honored as Rhode Island Monthly Tech10 recipient<\/a> <span class=\"date\">(12\/3\/2024)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">Congratulations to Associate Teaching Professor Indrani Mandahl as one of two members of the URI community recognized among Rhode Island Monthly\u2019s 2024 Tech10 and Next Tech Generation Award recipients for their exceptional contributions to technology and education.<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/two-computer-science-students-honored-at-uri-black-scholar-awards\/\">Two Computer Science students honored at URI Black Scholar awards<\/a> <span class=\"date\">(5\/8\/2024)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">Computer science students Amoy Scott and Warith Balogun were honored Monday at the URI Black Scholar awards. Scott received the Sojourner Truth Award for Scholarly Persistence and Dedication, presented to a senior in recognition of success despite dire financial, physical and\/or personal problems that would ordinarily impede progress, and Balogun received the Earl N. Smith, [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/marco-alvarez-transforming-research-and-higher-education-with-generative-ai-and-foundation-models\/\">Marco Alvarez, Transforming Research and Higher Education with Generative AI and Foundation Models<\/a> <span class=\"date\">(4\/4\/2024)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Friday April 5. \u2013 noon-1 p.m. Where: Bliss 190 This talk delves into the transformative potential of generative AI and foundation models in both scientific research and higher education. Foundation models represent a seismic shift in AI capabilities, empowering researchers to analyze data, generate hypotheses, and uncover knowledge with unprecedented efficiency. Trained on vast [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/yuwen-gu-fastkqr-a-fast-algorithm-for-kernel-quantile-regression\/\">Yuwen Gu, fastkqr: A Fast Algorithm for Kernel Quantile Regression<\/a> <span class=\"date\">(3\/20\/2024)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Friday, March 22, from 2:00 PM to 3:00 PM Where: ENGR 045 Abstract: Quantile regression is a powerful tool for robust and heterogeneous learning that has seen applications in a diverse range of applied areas. Its broader application, however, is often hindered by the substantial computational demands arising from the nonsmooth quantile loss function. [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/caiwen-ding-co-designing-algorithms-and-hardware-for-efficient-machine-learning-ml-advancing-the-democratization-of-ml\/\">Caiwen Ding, Co-Designing Algorithms and Hardware for Efficient Machine Learning (ML): Advancing the Democratization of ML<\/a> <span class=\"date\">(3\/6\/2024)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Friday, March 8th, from 2:00 PM to 3:00 PM Where: ENGR 045 Abstract: The rapid deployment of ML has witnessed various challenges such as prolonged computation and high memory footprint on systems. In this talk, we will present several ML acceleration frameworks through algorithm-hardware co-design on various computing platforms. The first part presents a [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/oana-ignat-towards-language-vision-models-for-positive-societal-impact\/\">Oana Ignat, Towards Language-Vision Models for Positive Societal Impact<\/a> <span class=\"date\">(2\/16\/2024)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Monday 2\/19 from 1:00 to 2:00 PM Where: Tyler 055 Abstract: Solving complex real-world problems often requires AI models that can process information from multiple modalities, such as language and vision, which can align with the needs of people from diverse backgrounds. An effective AI model will not only learn how to interact with [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/kaleel-mahmood-on-the-robustness-of-vision-transformers-to-adversarial-examples\/\">Kaleel Mahmood, On the Robustness of Vision Transformers to Adversarial Examples<\/a> <span class=\"date\">(2\/14\/2024)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Friday 2\/16 from 10:00 to 11:00 AM Where: Ranger 202 Abstract: Machine learning has become ubiquitous, being deployed in a range for domains like self driving cars, medical imaging and face recognition. With this increased use of machine learning an important question arises, how secure are these systems? In this presentation we dive into [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/taslima-akter-designing-privacy-enhancing-technology-for-blind-and-low-vision-blv-people\/\">Taslima Akter, Designing Privacy Enhancing Technology for Blind and Low-Vision (BLV) People<\/a> <span class=\"date\">(2\/8\/2024)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">WHen: Tuesday 2\/13 from 1:00 to 2:00 PM. Where: Quinn 214 Abstract: Advancements in computer vision and machine learning have empowered Blind and Low-Vision (BLV) individuals through camera-based assistive applications. These systems, capable of recognizing objects, identifying colors, and reading text, provide independence to BLV users. However, the reliance on camera-based assistive systems introduces privacy [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/andrew-gallant-engineering-a-fast-grep\/\">Andrew Gallant, Engineering a Fast Grep<\/a> <span class=\"date\">(2\/5\/2024)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Tuesday February 27, 4PM Where: Kirk Auditorium Abstract: Grep is a command line tool for searching the contents of files for a regular expression and printing lines that match. Tools like grep are commonly used to search plain text such as log files and code repositories in an ad hoc manner. As the size [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/gianluca-brero-brown-university-stackelberg-pomdp-a-reinforcement-learning-approach-for-economic-design\/\">Gianluca Brero (Brown University), Stackelberg POMDP: A Reinforcement Learning Approach for Economic Design<\/a> <span class=\"date\">(1\/30\/2024)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Friday, Feb 2nd, from 2:00 PM to 3:00 PM Where: ENGR 045 Abstract: We introduce a reinforcement learning framework for economic platform design where the interaction between the platform designer and the participants is modeled as a Stackelberg game. In this game, the designer (leader) sets up the rules for the platform, while the [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/kelum-gajamannage-low-rank-data-imputation-using-hadamard-deep-autoencoders-with-applications-to-fragmented-trajectory-reconstruction-of-collective-motion\/\">Kelum Gajamannage, Low-rank data imputation using Hadamard deep autoencoders, with applications to fragmented trajectory reconstruction of collective motion<\/a> <span class=\"date\">(10\/9\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Friday, October 13 at 4:00 pm. Where: Fascitelli 040 Abstract: Data imputation is an essential preprocessing step in statistical learning that is to be performed before any technical analysis is conducted on partially observed data. Data originating from natural phenomena is low-rank due to diverse natural dependencies that a low-rank technique should primarily emphasize [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/antonios-argyriou-passive-wireless-sensing-implications-on-privacy-and-counter-measures\/\">Antonios Argyriou, Passive Wireless Sensing: Implications on Privacy and Counter-Measures<\/a> <span class=\"date\">(10\/2\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Monday, October 30 at 1:00 pm. Where: Quinn 211. Who: Dr. Antonios Argyriou, Associate Professor, Department of Electrical and Computer Engineering, University of Thessaly, Greece. Abstract: Emitters of wireless signals are all around us 24\/7. These wireless signals contain digital information that may be the target of different types of cyber security attacks. However, [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/ming-hui-chen-a-new-statistical-monitoring-approach-based-on-linear-mixed-effects-models-application-to-energy-usage-management-on-a-large-university-campus\/\">Ming-Hui Chen, A New Statistical Monitoring Approach Based on Linear Mixed-Effects Models: Application to Energy Usage Management on a Large University Campus<\/a> <span class=\"date\">(10\/2\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Friday, October 27th, from 4:00 PM to 5:00 PM Where: ENGR 040 Who: Professor Ming-Hui Chen, Department of Statistics, University of Connecticut Abstract: In this paper, we introduce a novel application of the linear mixed-effects model (LMM) repurposed for statistical monitoring. We develop an efficient EM algorithm to handle rapid estimation, especially in scenarios [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/ml-tlachac-digital-mental-health-screening-with-text-logs\/\">ML Tlachac, Digital Mental Health Screening with Text Logs<\/a> <span class=\"date\">(9\/26\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Friday, September 29th, from 4:00 PM to 5:00 PM Where: ENGR 040 Who: ML Tlachac, Assistant Professor of Data Science at Bryant University Abstract: In this talk, ML Tlachac will provide an overview of digital mental health screening research with a focus on digital phenotyping data. The presentation will include insights into research involving [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/lily-sisouvong-pair-programming-with-random-partners\/\">Lily Sisouvong, &#8220;Pair Programming with Random Partners&#8221;<\/a> <span class=\"date\">(7\/31\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">CSC Thesis Defense When: Monday, July 31, 4:00 pm Tyler Hall Room 052 Pair programming is a technique within the computer science space in which two programmers are paired on one computer to solve a related programming task. This technique is often practiced in both the industry and the academic setting, as it has a [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/basheer-qolomany-the-role-of-artificial-intelligence-and-machine-learning-in-complex-systems\/\">Basheer Qolomany, &#8220;The Role of Artificial Intelligence and Machine Learning in Complex Systems&#8221;<\/a> <span class=\"date\">(4\/24\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Friday, April 28, 2:00 PM Where: CBLS 100 Who: Basheer Qolomany, University of Nebraska at Kearney The Role of Artificial Intelligence and Machine Learning in Complex Systems Abstract: Current methods for diagnosing PAD require specialized vascular laboratory tests and do not allow natural environment detection, monitoring, or management of chronic PAD disease. The research [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/shaun-wallace-human-centric-systems-for-quality-data\/\">Shaun Wallace, &#8220;Human-Centric Systems for Quality Data&#8221;<\/a> <span class=\"date\">(4\/17\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Wednesday, April 19, 10:00 am Where: Ranger 208 Abstract: Information is often interpreted through tools, recently AI tools which sit closer to the user than the source information. From ChatGPT to instant answers on Google search and voice services on Siri and Alexa, these tools are only as good as their sources, especially for [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/new-england-computer-science-teachers-association-conference\/\">New England Computer Science Teachers Association Conference<\/a> <span class=\"date\">(3\/21\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">The New England chapter of the Computer Science Teachers Association (CSTA) is coming to UConn at Storrs on October 20, 2023. Educators of all grade levels, including post-secondary, education leaders, library media specialists, administrators, coaches, school counselors, and researchers are welcome to join in the fun! We will focus on BUILDING CS PATHWAYS. Keynote speakers [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/haihan-yu-a-composite-empirical-likelihood-method-for-time-series-in-frequency-domain-inference\/\">Haihan Yu, &#8220;A Composite Empirical Likelihood Method for Time Series in Frequency Domain Inference&#8221;<\/a> <span class=\"date\">(2\/24\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Mar 3rd, 11:00-12:00 Where: Tyler 053 Zoom link: https:\/\/uri-edu.zoom.us\/my\/guangyuzhu Abstract: Frequency domain analysis of time series is often difficult, as periodogram-based statistics involve non-linear averages with complicated variances. Due to the latter, nonparametric approximations from resampling or empirical likelihood (EL) are useful. However, current versions of periodogram-based EL for time series are highly restricted: [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/matthew-wascher-monitoring-disease-prevalence-and-transmission-in-a-population-under-repeated-testing\/\">Matthew Wascher, &#8220;Monitoring disease prevalence and transmission in a population under repeated testing&#8221;<\/a> <span class=\"date\">(2\/24\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Mar 2nd, 14:00-15:00 Where: Tyler 053, Zoom link: https:\/\/uri-edu.zoom.us\/my\/guangyuzhu Abstract: In this talk, I will describe a statistical methodology developed as part of the COVID-19 monitoring efforts of The Ohio State University (OSU) and which is designed for monitoring disease transmission using repeated testing data. Under a repeated testing scheme in which individuals who [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/xihao-li-statistical-methods-for-integrative-analysis-of-large-scale-whole-genome-sequencing-studies\/\">Xihao Li, &#8220;Statistical methods for integrative analysis of large-scale whole-genome sequencing studies&#8221;<\/a> <span class=\"date\">(2\/24\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Feb 28th, 13:30-14:30 Where: Tyler 049 Abstract: Large-scale whole genome sequencing (WGS) studies have enabled the analysis of rare variants (RVs) associated with complex human traits. There are several challenges in analyzing WGS data, including computation scalability, limited scope to integrate variant biological functions, and lack of ability to leverage summary statistics across multiple [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/fei-dou-machine-intelligence-of-ubiquitous-computing-in-the-internet-of-things\/\">Fei Dou, &#8220;Machine Intelligence of Ubiquitous Computing in the Internet of Things&#8221;<\/a> <span class=\"date\">(2\/17\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Friday, February 24th, 1:00-2:00PM Where: Beaupre 105 Abstract: The penetration of technologies such as Machine Learning (ML), Artificial Intelligence (AI), wireless broadband, and the Internet of Things (IoT) is propelling the rapid adoption of ubiquitous devices across a variety of sectors. However, the enhancement of machine intelligence in ubiquitous computing in the IoT is [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/xuhao-chen-domain-specific-computing-on-graphs\/\">Xuhao Chen, &#8220;Domain Specific Computing on Graphs&#8221;<\/a> <span class=\"date\">(2\/17\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: Thursday, February 23rd, 1:30-2:30PM Where: Woodward 216 Abstract: Numerous applications in social networks, e-commerce, biomedicine and security, are driven by graph algorithms. The graph data is massive and sparse, which poses great challenges in computing system design. In this talk, I will discuss the approach known as domain specific computing, to address this challenge. [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/machine-learning-workshop-series-spring-2023\/\">Machine Learning Workshop Series (Spring 2023)<\/a> <span class=\"date\">(2\/14\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">Hands-on workshops covering some introductory Machine Learning tools and techniques. Python Tools for Machine Learning &#8211; February 10th Classes in Python, Deep Learning Frameworks &#8211; February 24th Training and Fine Tuning Models for Downstream Tasks &#8211; March 24th Reporting Your Findings in LaTeX &#8211; April 14th February 10th, Python Tools for Machine Learning The first [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/sidi-lu-toward-reliable-scalable-and-efficient-edge-enabled-applications-for-connected-vehicles\/\">Sidi Lu, &#8220;Toward Reliable, Scalable, and Efficient Edge-enabled Applications for Connected Vehicles&#8221;<\/a> <span class=\"date\">(2\/7\/2023)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">When: February 13, 2023, 1-2 pm Where: Beaupre 105 As a mobile sensing, computing, communication, and energy storage platform, connected vehicle is transforming from the vehicle-centric, closed, fixed-function vehicle to the AI-centric, connected, and software-defined vehicle that enables vehicle-to-everything and vehicle-to-grid. However, this evolution brings a series of technical challenges across diverse areas (e.g., inference [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/tenure-track-faculty-position-in-statistics\/\">Tenure Track Faculty Position in Statistics<\/a> <span class=\"date\">(11\/2\/2022)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">&nbsp; University of Rhode Island Department of Computer Science and Statistics The Department of Computer Science and Statistics in the College of Arts and Sciences (A&amp;S) at the University of Rhode Island invites applications for a tenure-track Assistant Professor of Statistics position with appointment to begin the academic year 2023-2024. &nbsp; DUTIES AND RESPONSIBILITIES: The [&hellip;]<\/span><\/li><li class=\"listing-item\"><a class=\"title\" href=\"https:\/\/web.uri.edu\/cs\/tenure-track-faculty-position-in-computer-science\/\">Tenure-Track Faculty Position in Computer Science<\/a> <span class=\"date\">(10\/17\/2022)<\/span> <span class=\"excerpt-dash\">-<\/span> <span class=\"excerpt\">The University of Rhode Island invites applications for a tenure-track Assistant Professor in the Department of Computer Science and Statistics. We seek candidates who can contribute to both teaching and research in computer science. Of particular interest are candidates with expertise in the broad area of computer systems and its application across multiple disciplines. The [&hellip;]<\/span><\/li><\/ul>\n","protected":false},"excerpt":{"rendered":"","protected":false},"author":1962,"featured_media":0,"parent":703,"menu_order":0,"comment_status":"closed","ping_status":"closed","template":"","meta":{"_acf_changed":false,"footnotes":"","_links_to":"","_links_to_target":""},"class_list":["post-11410","page","type-page","status-publish","hentry"],"acf":[],"_links":{"self":[{"href":"https:\/\/web.uri.edu\/cs\/wp-json\/wp\/v2\/pages\/11410","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/web.uri.edu\/cs\/wp-json\/wp\/v2\/pages"}],"about":[{"href":"https:\/\/web.uri.edu\/cs\/wp-json\/wp\/v2\/types\/page"}],"author":[{"embeddable":true,"href":"https:\/\/web.uri.edu\/cs\/wp-json\/wp\/v2\/users\/1962"}],"replies":[{"embeddable":true,"href":"https:\/\/web.uri.edu\/cs\/wp-json\/wp\/v2\/comments?post=11410"}],"version-history":[{"count":2,"href":"https:\/\/web.uri.edu\/cs\/wp-json\/wp\/v2\/pages\/11410\/revisions"}],"predecessor-version":[{"id":11419,"href":"https:\/\/web.uri.edu\/cs\/wp-json\/wp\/v2\/pages\/11410\/revisions\/11419"}],"up":[{"embeddable":true,"href":"https:\/\/web.uri.edu\/cs\/wp-json\/wp\/v2\/pages\/703"}],"wp:attachment":[{"href":"https:\/\/web.uri.edu\/cs\/wp-json\/wp\/v2\/media?parent=11410"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}