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By combining the strengths of BERT (Bidirectional Encoding Representations from Transformers) and GPT (Generative Pre-trained Transformer), this study presents a novel method for automated text synthesis. We combine BERT's bidirectional contextual awareness to improve the coherence & relevance of generated text, while utilizing the pre-trained abilities of GPT for innovative and context-aware content generation. In order to provide a more complex and contextually accurate output, our model uses a two-stage architecture, where GPT starts the content production process and BERT repeatedly refines it. We show through extensive experimentation that our approach performs better than others in a variety of text creation tasks, such as question-answering, creative writing, and summarizing. This hybrid GPT-BERT approach represents a major breakthrough in automated text creation techniques, demonstrating not just exceptional fluency & coherence but also a remarkable capacity to adapt to a variety of linguistic circumstances. The results highlight the possibility of integrating transformer-based models to produce language creation that is more complex and contextually sensitive.
Kumar et al. (Tue,) studied this question.
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