Shirin amini biography of rory

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  • BLEnD: A Benchmark for LLMs on Everyday Knowledge in Diverse Cultures and Languages

    Junho Myung1,∗, Nayeon Lee1,∗, Yi Zhou2,∗, Jiho Jin1, Rifki Afina Putri1,
    Dimosthenis Antypas2, Hsuvas Borkakoty2, Eunsu Kim1, Carla Perez-Almendros2,
    Abinew Ali Ayele3,4, Víctor Gutiérrez-Basulto2, Yazmín Ibáñez-García2, Hwaran Lee5,
    Shamsuddeen Hassan Muhammad6, Kiwoong Park1, Anar Sabuhi Rzayev1, Nina White2,
    Seid Muhie Yimam3, Mohammad Taher Pilehvar2, Nedjma Ousidhoum2,
    Jose Camacho-Collados2, Alice Oh1

    1KAIST, 2Cardiff University, 3Universität Hamburg, 4Bahir Dar University,
    5NAVER AI Lab, 6Imperial College London

    Abstract

    Large language models (LLMs) often lack culture-specific knowledge of daily life, especially across diverse regions and non-English languages. Existing benchmarks for evaluating LLMs’ cultural sensitivities are limited to a single language or collected from online sources such as Wikipedia, which do not refl

  • shirin amini biography of rory
  • Abstract:

    Large language models (LLMs) often hallucinate and lack the ability to provide attribution for their generations. Semi-parametric LMs, such as kNN-LM, approach these limitations by refining the output of an LM for a given prompt using its nearest neighbor matches in a non-parametric data store. However, these models often exhibit slow inference speeds and produce non-fluent texts. In this paper, we introduce Nearest Neighbor Speculative Decoding (NEST), a novel semi-parametric language modeling approach that is capable of incorporating real-world text spans of arbitrary length into the LM generations and providing attribution to their sources. NEST performs token-level retrieval at each inference step to compute a semi-parametric mixture distribution and identify promising span continuations in a corpus. It then uses an approximate speculative decoding procedure that accepts a prefix of the retrieved span or generates a new token. NEST significantly enhances the generation

    Iran International

    UK-based Persian-language TV station

    Television channel

    Frequency15630 kHz / 5830 kHz SW

    Iran International (Persian: ایران اینترنشنال, romanized: Irân Enternešenâl) is a Persian-languagesatellite television channel and multilingual digital news operation established in May 2017 and headquartered in London aimed at Iranians and people interested in Iranian news, culture, society and sports.[1]

    In February 2023, threats from the Iranian government against its UK-based journalists[2] led the network to move headquarters temporarily to Washington, D.C.[3]

    News content is available online, via radio and via satellite broadcasting worldwide including inside Iran despite official attempts at censorship. The network reports on Iran's geopolitical role, economy, human rights violations, political developments, LGBTQ+ rights and other topics sensitive to the government in Iran.[4][5]

    Overview

    [e