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Is the written word dead in the age of AI?

Source: DALL-E/OpenAI

Source: DALL-E/OpenAI

It is said that print technology is dead and the digital format has made ink on the page yesterday’s information dissemination. And while that is not entirely the case – published books are thriving – it still reflects the technological evolution of the way we consume information. Similarly, the nature of the written word is undergoing a transition from the static and limited presentation of words to a much richer dynamic where those words “live” in a broader and more dynamic context, releasing them and integrating them into a comprehensive perspective of interconnected wisdom. Let’s take a closer look.

The development of the written word

The written word has long been a cornerstone of human civilization, shaping education, culture, and communication. From ancient manuscripts to printed books, essays, and speeches, traditional text served as the primary medium for communicating ideas. Today, we are turning to plain text, and large language models (LLMs) are changing the way we interact with text. This transformation raises a provocative question: is the traditional written word dead, and are LLMs ushering in a new age of dynamic, living documents?

The static nature of traditional texts

Traditional written text, be it an essay, a book, or the 272 words of the Gettysburg Address, is inherently static. Once written, it remains unchanged and is bound to the linear structure and context provided by its author. The interpretation of such a text depends to a large extent on the reader’s cognitive abilities, prior knowledge, and available resources. Although this form of text has served humanity well, it is limited in its ability to adapt and evolve to different contexts and questions.

Dynamic connectivity: the LLM advantage

When text is embedded in an LLM, it becomes part of a vast, interconnected web of knowledge. Every word, phrase, and concept is linked to countless other data points within the model, creating a rich web of associations. This dynamic connectivity enables a deeper and more nuanced understanding of the text. For example, when the Gettysburg Address is processed by an LLM, the model draws on its extensive training data to place the speech within a broader historical, cultural, and linguistic context.

Adaptive Context: Beyond Static Interpretation

One of the most important and interesting benefits of LLMs is their ability to adapt to the context of the text based on user interactions. A traditional reading of the Gettysburg Address is bound by the reader’s perception and the limited resources available to them. In contrast, an LLM can offer different interpretations and insights based on the user’s specific questions and interests. This adaptability transforms static text into a living document that evolves with each interaction, offering new perspectives and deeper understanding.

Interactive engagement: A new dimension of reading

LLMs transform the passive act of reading into an interactive, engaging process. Users can query the model, request elaborations, and explore related topics, turning the text into a responsive entity. This ability enables a richer and more personalized reading experience. For example, a student studying the Gettysburg Address can ask the LLM for explanations of specific phrases, historical context, or comparisons to other significant speeches, gaining a richer and more interactive understanding.

Enhanced understanding: enriching the original text

Another transformative aspect is the ability of LLMs to enrich the text with additional layers of information. When edited by an LLM, the Gettysburg Address is not just a speech in its own right; it becomes a node in a broader network of historical and rhetorical knowledge. The LLM can provide background on the Civil War, analyze the rhetorical devices used by Lincoln, and make connections to other pivotal moments in history. This expansion provides a deeper understanding beyond what a static text alone can provide.

Emergent properties: discovering new insights

Texts in an LLM exhibit emergent properties—new insights and interpretations that arise from the complex interactions within the model. These properties can reveal patterns and connections that may not be immediately apparent in the static form. For example, the LLM could highlight themes such as freedom and equality in the Gettysburg Address and relate them to contemporary discussions of civil rights and social issues. This ability to generate novel interpretations makes the text more relevant and relevant to modern readers.

Quantifying the difference: A broad spectrum of understanding

To understand the magnitude of the difference between human perception and the capabilities of an LLM, consider the following quantification. A well-trained human reader may have read a few hundred books and have access to a limited number of external resources. In contrast, an LLM such as GPT-4 is trained on datasets containing billions of words, equivalent to the information content of millions of books. This training allows the LLM to draw from a vast and diverse pool of knowledge, making its ability to contextualize and understand text orders of magnitude greater—potentially millions of times more robust than that of a human reader.

Embracing the future of text

While the written word remains valuable and relevant in its traditional form, the integration of text into LLMs represents a significant development. This new form of text is dynamic, interactive and enriched, offering a richer and more engaging reading experience. This shift is not about discarding the past, but embracing the future, where text becomes a living, evolving entity that offers deeper connections and insights. This partnership between human perception and LLMs opens up a world of possibilities, enriching our engagement with the written word and taking it to new levels – and opening up a profound and exciting journey that promises to reshape our intellectual landscape.