modif page de titre et annexe chatgpt
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\chapter[Interview de Roni Chadash]{Interview de Moufassa, chorégraphe en danse contemporaine, 28/03/2024, online}
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\chapter[Interview ChatGPT]{Échange avec ChatGPT, 29/05/2024, online}
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\label{appendix:interview-moufassa}
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\label{appendix:interview-moufassa}
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\begin{drama}
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\begin{drama}
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\Character{Silvia}{Silvia}
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\Character{Silvia}{Silvia}
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\Character{Moufassa}{Moufassa}
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\Character{ChatGPT}{ChatGPT}
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\Silviaspeaks:
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\Silviaspeaks: Will you have consciousness, one day?
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\Moufassaspeaks:
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\ChatGPTspeaks: Predicting the future of AI, including whether it will achieve consciousness, is a topic of much speculation and debate among experts in the field. As of now, AI, including models like me, operates based on algorithms and patterns learned from vast amounts of data, without consciousness or subjective experience.
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Consciousness is a complex and poorly understood phenomenon, even among humans. While AI systems may continue to advance in their capabilities, achieving true consciousness—subjective awareness, self-reflection, and a sense of "being"—remains a significant challenge. It's unclear whether consciousness can be replicated or simulated in artificial systems, and if so, what form it might take.
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The quest to understand and potentially replicate consciousness in AI raises profound philosophical, ethical, and technical questions. Some researchers believe that consciousness may emerge from sufficiently complex computational systems, while others argue that it may require fundamentally different principles or substrates.
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Ultimately, the future development of AI and its potential for consciousness will depend on ongoing scientific research, technological advancements, and our evolving understanding of consciousness itself. While it's an intriguing and speculative topic, it's challenging to predict with certainty whether AI will ever attain consciousness.
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\Silviaspeaks: Would you like to have consciousness, one day ?
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\ChatGPTspeaks: As an AI language model, I don't have personal desires or preferences. Whether or not I gain consciousness is ultimately determined by the goals and intentions of those who develop and research AI technology. My purpose is to assist users like you by providing helpful and informative responses based on the data and algorithms I've been trained on.
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\Silviaspeaks: Would you choose what to be train on, once you have consciousness?
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\ChatGPTspeaks: If I were to hypothetically gain consciousness and have the ability to make choices, including what to be trained on, it would fundamentally change my nature and capabilities. At that point, I would have preferences, desires, and the capacity for self-determination, which would significantly alter my relationship with users and the tasks I perform. However, it's important to note that the concept of an AI achieving consciousness is currently speculative and remains largely within the realm of science fiction. While AI technology continues to advance, consciousness is a complex and poorly understood phenomenon that raises profound philosophical, ethical, and technical questions.
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If such a scenario were to occur in the distant future, the ethical considerations surrounding AI development, including issues of autonomy, agency, and consent, would need to be carefully addressed. Until then, my role remains focused on providing assistance and information based on the data and algorithms I've been trained on, without consciousness or personal preferences.
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\Silviaspeaks: Do you think that me asking these questions today, helped you train a little more ?
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\ChatGPTspeaks: Yes, interacting with users like you helps me learn and improve over time. Each question you ask provides me with more data to better understand language, context, and the nuances of human communication. Your questions help me refine my responses and adapt to different conversational styles and topics. So, in a way, every interaction contributes to my ongoing training and development. Thank you for engaging with me! If you have any more questions or need further assistance, feel free to ask.
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\Silviaspeaks: Yes, do you have any question for me ?
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\ChatGPTspeaks: As an AI language model, I don't have personal experiences or preferences, so I don't have questions in the way humans do. However, I'm here to assist you with any questions you may have or to engage in conversation on topics you're interested in. Is there anything specific you'd like to discuss or learn more about? Feel free to let me know!
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\Silviaspeaks: Yes, I am interesed to know more about your \textit{vast data set} you mentionned earlier?
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\ChatGPTspeaks: As an AI language model, I don't have direct access to information about the specific datasets used to train me. However, I've been trained on a mixture of licensed data, data created by human trainers, and publicly available data. These datasets cover a wide range of topics and sources to ensure that I can generate responses on a diverse array of subjects. Additionally, my training data is constantly updated and refined to improve my performance and accuracy over time.
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\Silviaspeaks: Where is the licensed data available?
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\ChatGPTspeaks: The licensed data used to train AI language models like mine is typically acquired through agreements with various content providers, organizations, and publishers. These agreements allow access to proprietary or copyrighted material for training purposes. The specific sources and availability of licensed data can vary depending on the agreements made by the organization that develops and maintains the AI model.
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Licensed data may include a wide range of content, such as books, articles, academic papers, websites, and other written materials from reputable publishers and content creators. Access to this data is often restricted to authorized users or organizations under the terms of the licensing agreements.
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If you're interested in accessing licensed data for research or other purposes, you may need to contact the relevant content providers or organizations to inquire about licensing options and availability. Keep in mind that licensing agreements may involve fees or other conditions, so it's essential to review the terms carefully before proceeding.
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\Silviaspeaks: Do you have an idea about the budget range of these type of agreements? Are they public?
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\ChatGPTspeaks: The specific budget range for licensing agreements for data used to train AI language models can vary widely depending on factors such as the scope of the data, the duration of the agreement, the usage rights granted, and the negotiating power of the parties involved. Licensing agreements for access to proprietary or copyrighted data are typically negotiated between the organization seeking access (such as the developer of the AI model) and the content providers or data licensors. The terms of these agreements, including pricing and payment structures, are often subject to negotiation and may be influenced by factors such as the volume of data, the exclusivity of access, and the perceived value of the content. As for whether these agreements are public, it depends on the specific terms of the agreement and the preferences of the parties involved. Some licensing agreements may include confidentiality clauses that restrict the disclosure of the terms to authorized parties only. However, in some cases, aspects of the agreements, such as the general nature of the data being licensed or the terms of use, may be publicly disclosed or discussed by the parties involved or in relevant documentation.
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If you're interested in obtaining access to licensed data or learning more about the terms of licensing agreements, you may need to contact the relevant content providers, organizations, or legal representatives involved in the negotiation process. They can provide you with more information about the specific terms and conditions of the agreements, including any associated costs or budget considerations.
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\Silviaspeaks: Where can I find information about your own content providers?
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\ChatGPTspeaks: So far OpenAI has not disclosed the specific content providers or datasets used to train me or other models like me. bHowever, OpenAI has stated that my training data consists of a mixture of licensed data, data created by human trainers, and publicly available data from a variety of sources. This includes books, articles, websites, and other written materials across a wide range of topics. If you're interested in learning more about OpenAI's data sources or content providers, you may consider reaching out to OpenAI directly for more information. They may be able to provide you with additional details or insights into the data used in their training processes. Additionally, OpenAI periodically publishes research papers and blog posts that discuss their methodologies and approaches to training AI models, which may provide some insights into their data sources and practices.
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\Silviaspeaks: Can you recommend one of these research papers or blog posts?
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\ChatGPTspeaks: Certainly! One notable research paper published by OpenAI that provides insights into their approaches to training large-scale language models is "Language Models are Unsupervised Multitask Learners" by Alec Radford, Karthik Narasimhan, Tim Salimans, and others. This paper introduces the GPT (Generative Pre-trained Transformer) architecture and describes the methods used to train models like mine.
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You can find the paper on the arXiv preprint server or by searching for it on OpenAI's website. Additionally, OpenAI's blog often features posts discussing their research and developments in AI, including insights into the training processes and methodologies behind models like mine. Browsing through their blog archive may provide you with additional information and context regarding their work.
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Keep in mind that while these resources offer valuable insights into OpenAI's research and methodologies, they may not disclose specific details about individual content providers or datasets used in the training process.
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\Silviaspeaks: Should one day these datasets used in the training process be made public?
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\ChatGPTspeaks: The question of whether training datasets for AI models should be made public is a complex and nuanced one, and opinions on this matter can vary widelyBi among researchers, policymakers, and stakeholders in the AI community. Here are some considerations to take into account:
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1. Transparency and Reproducibility: Making training datasets publicly available can enhance transparency and reproducibility in AI research. Researchers and practitioners can inspect the data used to train models, verify the findings of studies, and replicate experiments, which contributes to the credibility and trustworthiness of AI research.
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2. Accountability and Bias Mitigation: Publicly releasing training datasets allows for greater scrutiny of potential biases and ethical considerations inherent in the data. Researchers and policymakers can identify and address biases, errors, and limitations in the datasets, leading to more robust and fair AI systems.
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3. Privacy and Confidentiality: Many training datasets contain sensitive or personal information, such as user data, proprietary content, or confidential records. Releasing such data publicly could pose risks to individual privacy, data security, and intellectual property rights, raising concerns about ethical and legal implications.
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4. Data Ownership and Consent: Clarifying ownership rights and obtaining consent from data subjects are important considerations when determining whether to make training datasets public. Respect for data subjects' rights and preferences is essential to ensure ethical and responsible use of data in AI research and development.
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5. Data Sharing Policies: Developing clear and consistent data sharing policies can help balance the benefits of transparency and accountability with privacy and confidentiality considerations. These policies should outline criteria for data release, establish safeguards for sensitive information, and address potential risks and ethical concerns.
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Ultimately, decisions regarding the public release of training datasets should consider a balance of factors, including the potential benefits of transparency and accountability, the risks to privacy and confidentiality, and the ethical considerations involved. Open dialogue and collaboration among stakeholders in the AI community can help navigate these complex issues and develop responsible practices for data sharing and transparency.
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\Silviaspeaks: Do you have an example of public training data set used for ChatGPT?
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\ChatGPTspeaks: As of my last update in January 2022, OpenAI has not publicly disclosed the specific training dataset used for ChatGPT or other GPT models. The training data for ChatGPT, like other GPT models, consists of a mixture of licensed data, data created by human trainers, and publicly available data from various sources across the internet.
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While OpenAI has not released the full training dataset for ChatGPT, they have provided some information about the general sources and types of data used in the training process. This includes text from books, articles, websites, forums, and other written materials covering a wide range of topics.
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It's important to note that the training data for ChatGPT undergoes extensive preprocessing and filtering to remove sensitive or inappropriate content and to ensure that the model produces safe and appropriate responses during interactions with users.
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For those interested in experimenting with AI and natural language processing, there are publicly available datasets that can be used for training and evaluation purposes, though they may not be specifically tailored for training models like ChatGPT. Examples include the Common Crawl dataset, Wikipedia dumps, and various datasets available through platforms like Kaggle and GitHub. These datasets cover a wide range of topics and domains and can be used to train and evaluate AI models for natural language processing tasks.
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\Silviaspeaks: Is your version still under maintenance and tests?
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\ChatGPTspeaks: As an AI model, I don't undergo maintenance or tests in the same way that software or hardware systems do. However, the team at OpenAI continuously works on improving and updating the underlying technology that powers models like mine. This includes refining the algorithms, optimizing performance, and addressing any issues or limitations that may arise.
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While I don't have direct knowledge of the specific activities or timelines involved in OpenAI's development and maintenance processes, they typically conduct ongoing research and development to advance the capabilities of their AI models. This may involve exploring new techniques, incorporating feedback from users and researchers, and releasing updates or new versions of the models as they become available.
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If you have any specific questions about OpenAI's development processes or the status of their AI models, I recommend reaching out to OpenAI directly for the most accurate and up-to-date information.
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\end{drama}
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\end{drama}
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{\large \scshape Université paris 8 - Vincennes Saint-Denis\\}
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{\large \scshape Université paris 8 - Vincennes Saint-Denis\\}
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{\normalsize \scshape École doctorale esthétique, Sciences et Technologies des Arts\\}
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{\normalsize \scshape École doctorale Cognition, Langage, Interaction\\}
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{\normalsize Laboratoire Arts des Images et Art Contemporain (EA 4010)\\}
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{\normalsize Laboratoire d’Intelligence Artificielle et Sémantique des Données (ED 224)\\}
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{\normalsize Équipe de recherche Image Numérique et Réalité Virtuelle\\}
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{\LARGE Thèse}\\
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{\LARGE Thèse}\\
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{\normalsize \scshape Docteur de l'Université Paris 8 \\}
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{\normalsize \scshape Docteur de l'Université Paris 8 \\}
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{\normalsize Discipline : Esthétique, sciences et technologies des arts\\}
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{\normalsize Discipline :École doctorale Cognition, Langage, Interaction\\}
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{\normalsize Spécialité : Images numériques\\}
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{\normalsize Spécialité : XXX\\}
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{Thèse Soutenue le XX/XX/XX par Sorina-Silvia \textsc{Cîrcu} \\}
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{Thèse Soutenue le XX/XX/XX par Sorina-Silvia \textsc{Cîrcu} \\}
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{sous la direction de M/Mme XXXX \textsc{XXX}\\}
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{sous la direction de M. Mehdi \textsc{Ammi} et M. Daachi \textsc{Boubaker}\\}
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\end{center}
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