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8/6/22

The University of Maryland’s National Foreign Language Center (UMD-NFLC) is proud to  announce that we have become a DLNSEO funded Language Training Center (LTC) which will  provide language courses in Korean, Russian, and Ukrainian beginning this fall.  

Additionally, UMD-NFLC’s existing Title VI Language Resource Center (LRC) has been  renewed for funding for another four years, 2022-2026.  

 

Please see information about each center below.  

LTC Background  

With decades of experience supporting government partners and developing courses, learning  materials, and assessments in over 100 languages, the LTC will provide language courses  specifically tailored to the government’s needs.  

In order to support government and military linguists to carry out their missions UMD-NFLC  will offer courses centered on current, relevant, and authentic curriculum which will be taught in  carefully sequenced thematic units that integrate culture, area studies, and language.  

UMD-NFLC offers five-week hybrid and online language courses, providing 150 hours of direct  instruction with an additional 50 hours of guided practice in the form of graded homework,  online assessments, and online learning modules. Students also have access to the UMD-NFLC’s  Language Portal, an online collection of language learning materials and assessments, and they  can earn ten Continuing Education Units for completing the course.  

Korean; Blended (classroom and online); Incoming ILR 2 Course pre-requisites

Russian; Blended (classroom and online); Incoming ILR 2 Course pre-requisites

Ukrainian; Online; Incoming ILR 2 Course pre-requisites

Pedagogical Approach  

UMD-NFLC’s courses are designed around its research-based principles of effective language  teaching, which maximize students’ proficiency gains:  

  • Implementing a standards-based and thematically organized curriculum  • Integrating culture, content, and language in the classroom
  • Adapting and using expertly-leveled, authentic materials 
  • Using the target language and providing comprehensible input 
  • Facilitating a learner-centered classroom 
  • Conducting performance-based assessments  

Institution Website: https://nflc.umd.edu/LTC  

LRC Background  

Professionals in Education Advancing Research and Language Learning (PEARLL) at the  University of Maryland promotes a multifaced, research-based program for excellence in  language instruction. PEARLL offers a common vision for high-quality language learning and  provides materials and models of professional learning for language educators, with a special  focus on the needs of instructors at community colleges, historically Black colleges and  universities (HBCUs), and of less commonly taught languages (LCTLs). PEARLL’s goals for  the 2022-2026 LRC grant period take a comprehensive view of the knowledge and skills world  language educators need to prepare students to thrive in an increasingly interconnected world,  particularly in light of post-pandemic teacher needs.  

  1. To promote models of educator effectiveness for language learning, PEARLL will  increase the reach of the Teacher Effectiveness for Language Learning (TELL)  Framework, develop and pilot model curricula for courses at community colleges and  HBCUs, and identify a network of model classrooms that serve as regional hubs for  professional learning. 
  2. PEARLL seeks to facilitate reflective practice for language educators by continuing to  contribute to the development of Catalyst, an online portfolio for language educators;  maintaining communities of practice; publishing a guide to action research for language  educators; and supporting an educator in resident who will contribute to PEARLL  projects.
  3. Recognizing the importance for language teachers of having knowledgeable and skilled  supervisors and teacher leaders, PEARLL will help leaders develop leadership skills to  support teacher effectiveness through a guide to effective world language programs, a  leadership certificate, a summer leadership academy, and research on how program  leaders adapt to and implement their learning.
  4. To connect language teacher educators and classroom practitioners, PEARLL will  support and host the International Language Teacher Education Conference and identify  how the TELL Framework can facilitate the transition from being a student teacher to a  classroom teacher by examining how the TELL Framework is used in language teacher  training. 
  5. Building on PEARLL’s experience offering in-person and virtual professional learning,  PEARLL will continue to provide professional learning opportunities for language  educators, including a hybrid summit focused on LCTL educators and a series of annual  summer institutes for classroom teachers. These activities will be supported by two  research projects, one to understand language teachers’ needs for professional learning,  and a second to identify whether there is a relationship between professional learning  offered by PEARLL and participating educators’ teaching practices.  

PEARLL’s projects will draw on PEARLL’s and UMD-NFLC’s expertise and experience in  offering high-quality professional learning opportunities; developing resources such as model  curricula; and collaborating with teachers, schools and districts, and colleges and universities  around the country.  

Institution Website: https://pearll.nflc.umd.edu  

 

10/28/21

There are myriad benefits to learning a new language—from conversing with people from other backgrounds, to easing international travel, to advancing your career. But acquiring a new language as an adult is not always easy, particularly if a person is trying to distinguish phonetic sounds not often heard in their native language.

With funding from the National Science Foundation (NSF), researchers in the Computational Linguistics and Information Processing (CLIP) Laboratory at the University of Maryland are exploring this phenomenon, using computational modeling to investigate learning mechanisms that can help listeners adapt their speech perception of a new language.

Naomi Feldman (left), an associate professor of linguistics with an appointment in the University of Maryland Institute for Advanced Computer Studies, is principal investigator of the $496K grant(link is external).

Feldman is overseeing five students in the CLIP Lab who are heavily involved in the project, including two who are pictured below. Craig Thorburn(link is external) (right), is a fourth-year doctoral student in linguistics, and Saahiti Potluri (left), is an undergraduate double majoring in applied mathematics and finances.

For their initial work, the researchers are taking a closer look at the specific difficulties native Japanese speakers face when learning English.

As an adult, it is often difficult to alter the speech categories that people have experienced since childhood, particularly as it relates to non-native or unfamiliar speech sounds. For example, native English speakers can easily distinguish between the “r” and “l” sound, which native Japanese speakers are not accustomed to.

Feldman’s research team is developing two types of computational models based on adult perceptual learning data: probabilistic cue weighting models, which are designed to capture fast, trial-by-trial changes in listeners’ reliance on different parts of the speech signal; and reinforcement learning models, which are designed to capture longer term, implicit perceptual learning of speech sounds. Thorburn and Potluri are working on the latter models.

With guidance from Feldman, the two researchers are exploring a reward-based mechanism that research suggests is particularly effective in helping adults acquire difficult sound contrasts when learning a second language.

“We're trying to uncover the precise mechanism that makes learning so effective in this paradigm,” Thorburn says. “This appears to be a situation in which people are able to change what they learned as an infant, something we refer to as having plasticity—the ability of the brain to adapt—in one’s representations. If we can pin down what is happening in this experiment, then we might be able understand what causes plasticity more generally.”

Potluri says that the powerful computational resources provided by UMIACS are critical to the project, noting that the model they are working with goes through hundreds of audio clips and “learns” over thousands of trials.

“The lab's servers can run these experiments in a matter of hours. Whereas with less computational power, it would literally take days to run a single experiment,” she says. “After running the model, we also need to analyze the massive datasets generated by the trials, and they are easier to store and manipulate—without concerning memory issues—on the lab's servers.”

Potluri says it was her interest in learning languages and a desire to get involved in linguistics research that drew her to apply to work in CLIP as an undergraduate. Despite having very little previous coursework in the subject, she and Feldman found that the NSF-funded project was a great area for her to exercise her knowledge in math while gaining new skills.

Feldman says the complementary skill sets of Thorburn and Potluri make them a good team to assist on the project.

“Craig and Saahiti have interests that are very interdisciplinary—spanning everything from language science to computer science to applied math—which makes them a perfect fit for research that uses computational models to study how people learn language,” she says. “Their collaborative work has already proven to be very impressive, and I am glad to have them on our team.”

—Story by Melissa Brachfeld

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