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metadata
base_model: google/t5-v1_1-base
tags:
  - datadreamer
  - datadreamer-0.28.0
  - synthetic
  - gpt-4
  - gpt-4
  - text2text-generation
widget:
  - text: >-
      In this paper, we present a novel method for Natural Language Processing
      (NLP) based on the introduction of deep learning techniques adapted to
      linguistics. We demonstrate that by integrating syntactic and semantic
      analysis in pre-processing stages, superior text understanding can be
      facilitated. Initial processes involve tokenization, POS-tagging,
      syntactic-semantic hinging for all corpus. To further the learning
      precision, we introduce a framework powered by a hybrid of Transformer and
      Recurrent Neural Networks architectures that manifest in increased
      efficiency both theoretically and empirically. This paper shares
      exhaustive results, detailing improvements in feature engineering,
      promising a reduction in human-size semantic labor. We additionally
      propose that integrating deep learning methods with traditional
      linguistics dramatically improves contextual understanding and performance
      on tasks such as language translation, sentiment analysis, and automated
      thesaurus generation. The innovations reported here make significant
      strides towards realizing viable, sophisticated machine-level NLP systems.
      Additionally, the research represents groundwork for further exploration
      and development promising higher degrees of culture-language contextuality
      and robustness integral in future NLP applications.
    example_title: Example 1
  - text: >-
      This paper proposes a novel approach to improve performance in Natural
      Language Processing (NLP) tasks by harnessing the potential of deep
      learning algorithms using multilingual transformer models. Our work
      investigates the challenging problem of understanding and manipulating
      sentences to Toucan dialogue language in context-dependent situations. We
      present a comprehensive analysis of established NLP approaches, novel
      methods based on transformer models, and thorough experiments that
      demonstrate substantial advancements over the state-of-art performances.
      Our primary contribution lies in the intelligent integration of thematic
      role labeling with multilingual models to improve the comprehension of
      sentence structure; for instance, recognizing grammatical relations
      irrespective of a word’s syntactic position or morphological form. In
      addition, our method progresses automatic predicate argument structure
      analysis, giving significance and having potential applications in tasks
      such as information extraction, summarization, and machine translation. We
      provide task-specific models that reveal the comparative strength of our
      architecture set over a cross-lingual task. Systematic evaluations
      conducted on several linguistic databases have demonstrated robust
      effectiveness in extracting and reconstructing meaningful entities from
      unstructured language data. The empirical results show notable
      enhancements in NLP task competence and thus stimulate further research
      avenues for substantial developments in multimodal natural language
      understanding and endow opportunities for practical applications.
    example_title: Example 2
  - text: >-
      In recent years, natural language processing (NLP) has seen impressive
      advancements because of the advent of deep learning technologies, like
      transformer-based models such as BERT., However, there remain significant
      challenges in obtaining human-level understanding, notably concerning
      effectively extracting semantics from context, deeper discourse analysis
      and anticipatory prediction during discourse development. In this research
      paper, we propose a novel integrative NLP model named Contextualized
      Anticipatory Semantic Humor Analysis (CASHA), which creates a
      sophisticated blend of semantic context understanding, discourse reference
      instantiation, and humorous setting anticipation. Inspired by human
      cognitive processing, CASHA layers a sentence-level semantic extractor and
      a transformer-based discourse modelling layer harboring informal semantics
      to understand intricate discourse embeddings accurately. It subsequently
      employs an adaptive humor anticipation layer based logically on previous
      discourse understanding. For rigorous model evaluation, we performed
      several experiments across diverse data sets encompassing assorted types
      of humor. Results demonstrate significantly improved performance in both
      humor detection and humor semantics understanding. They prompt profound
      thinking about NLP applications regarding human-level understanding of
      semantics from context. This work represents a potentially influential
      step in advancing the transformative urban initiatives prioritized by
      smart cities-examples abound about interfaces for ordinary citizens to
      interact more creatively with city experiences and for cities authorities
      to react empathetically to citizen-specific humor, metaphors, and cultural
      dialects.
    example_title: Example 3
pipeline_tag: text2text-generation

Model Card

Add more information here

Example Usage

from transformers import AutoModelForSeq2SeqLM, AutoTokenizer, pipeline

tokenizer = AutoTokenizer.from_pretrained('CCB/abstracts_to_tweet_model', revision=None) # Load tokenizer
model = AutoModelForSeq2SeqLM.from_pretrained('CCB/abstracts_to_tweet_model', revision=None) # Load model
pipe = pipeline('text2text-generation', model=model, tokenizer=tokenizer, pad_token_id=tokenizer.pad_token_id)

inputs = ['In this paper, we present a novel method for Natural Language Processing (NLP) based on the introduction of deep learning techniques adapted to linguistics. We demonstrate that by integrating syntactic and semantic analysis in pre-processing stages, superior text understanding can be facilitated. Initial processes involve tokenization, POS-tagging, syntactic-semantic hinging for all corpus. To further the learning precision, we introduce a framework powered by a hybrid of Transformer and Recurrent Neural Networks architectures that manifest in increased efficiency both theoretically and empirically. This paper shares exhaustive results, detailing improvements in feature engineering, promising a reduction in human-size semantic labor. We additionally propose that integrating deep learning methods with traditional linguistics dramatically improves contextual understanding and performance on tasks such as language translation, sentiment analysis, and automated thesaurus generation. The innovations reported here make significant strides towards realizing viable, sophisticated machine-level NLP systems. Additionally, the research represents groundwork for further exploration and development promising higher degrees of culture-language contextuality and robustness integral in future NLP applications.']
print(pipe(inputs, max_length=512, do_sample=False))

This model was trained with a synthetic dataset with DataDreamer 🤖💤. The synthetic dataset card and model card can be found here. The training arguments can be found here.