<?xml version="1.0" encoding="UTF-8"?><rss version="2.0"
	xmlns:content="http://purl.org/rss/1.0/modules/content/"
	xmlns:wfw="http://wellformedweb.org/CommentAPI/"
	xmlns:dc="http://purl.org/dc/elements/1.1/"
	xmlns:atom="http://www.w3.org/2005/Atom"
	xmlns:sy="http://purl.org/rss/1.0/modules/syndication/"
	xmlns:slash="http://purl.org/rss/1.0/modules/slash/"
	>

<channel>
	<title>Fisiogym Blog &#187; AI News</title>
	<atom:link href="https://www.fisiogymsalerno.it/blog/category/ai-news/feed/" rel="self" type="application/rss+xml" />
	<link>https://www.fisiogymsalerno.it/blog</link>
	<description>Centro di fisioterapia e riabilitazione Salerno</description>
	<lastBuildDate>Fri, 05 Jun 2026 07:08:28 +0000</lastBuildDate>
	<language>it-IT</language>
		<sy:updatePeriod>hourly</sy:updatePeriod>
		<sy:updateFrequency>1</sy:updateFrequency>
	<generator>https://wordpress.org/?v=4.0.38</generator>
	<item>
		<title>What is Employee Sentiment Analysis?</title>
		<link>https://www.fisiogymsalerno.it/blog/what-is-employee-sentiment-analysis/</link>
		<comments>https://www.fisiogymsalerno.it/blog/what-is-employee-sentiment-analysis/#comments</comments>
		<pubDate>Tue, 20 Aug 2024 17:53:34 +0000</pubDate>
		<dc:creator><![CDATA[fisiogym]]></dc:creator>
				<category><![CDATA[AI News]]></category>

		<guid isPermaLink="false">http://www.fisiogymsalerno.it/blog/?p=8919</guid>
		<description><![CDATA[Natural Language Process for Judicial Sentences with Python by Valentina Alto You can also create custom models that extend the base English sentiment model to enforce results that better reflect the training data you provide. In our scenario, I want to analyze whether the sentiment of articles might depend on their category. Since articles do [&#8230;]]]></description>
				<content:encoded><![CDATA[<p>
<h1>Natural Language Process for Judicial Sentences with Python by Valentina Alto</h1>
</p>
<p><img class='wp-post-image' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="303px" alt="is sentiment analysis nlp"/></p>
<p>
<p>You can also create custom models that extend the base English sentiment model to enforce results that better reflect the training data you provide. In our scenario, I want to analyze whether the sentiment of articles might depend on their category. Since articles do not have a label corresponding <a href="https://play.google.com/store/apps/datasafety?id=pl.edu.pg.chatpg&amp;hl=cs&amp;gl=US">ChatGPT App</a> to their sentiment, I will perform an unsupervised analysis using a pre-trained model, called VADER, available in the NLTK Python library. The first cells might take a while, so you can directly jump to the highlighted markdown to start running the code and visualizing results.</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="309px" alt="is sentiment analysis nlp"/></p>
<p>
<p>The use of NLP technology has become increasingly popular among financial institutions as they strive to provide personalized financial solutions that are cost-effective, efficient, and easily accessible to customers. In the code above, we are building a functional React component to handle client side interaction with the Chat Application. Since we are using a functional component, we have access to React hooks, such as useState and useEffect. You can see the connection to the Socket server in useEffect, which will be called upon every re-render/on-load of the component. When a new message is emitted from the server, and event is triggered for the UI to receive and render that new message to all online user instances.</p>
</p>
<p>
<h2>Reduced speech coherence in psychosis-related social media forum posts</h2>
</p>
<p>
<p>But, large pre-annotated datasets are usually unavailable and extensive work, cost, and time are consumed to annotate the collected data. Lexicon based approaches use sentiment lexicons that contain words and their corresponding sentiment scores. The corresponding value identifies the word polarity (positive, negative, or neutral).</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="305px" alt="is sentiment analysis nlp"/></p>
<p>
<p>The reason for this misclassification may be because of the word “furious”, which the proposed model predicted as having a positive sentiment. If the model is trained based on not only words but also context, this misclassification can be avoided, and accuracy can be further improved. Similarly, the model classifies the 3rd sentence into the positive sentiment class where the actual class is negative based on the context present in the sentence. Table 7 represents sample output from offensive language identification task. Affective computing and sentiment analysis21 can be exploited for affective tutoring and affective entertainment or for troll filtering and spam detection in online social communication.</p>
</p>
<p>
<h2>Data Preparation</h2>
</p>
<p>
<p>NLP has been widely adopted in the finance industry in North America for various applications, including sentiment analysis, fraud detection, risk management, and customer service. NLP technology has proven useful for analyzing large volumes of unstructured data, such as news articles, social media posts, and customer feedback, to extract valuable insights. NLP drives automatic  machine translations of text or speech data from one language to another. NLP uses many ML tasks such as word embeddings and tokenization to capture the semantic relationships between words and help translation algorithms understand the meaning of words.</p>
</p>
<p>
<p>You should send as many sentences as possible at once in an ideal situation for two reasons. Second, the prompt counts as tokens in the cost, so fewer requests mean less cost. Passing too many sentences at once increases the chance of mismatches and inconsistencies. Thus, it is up to you to keep increasing and decreasing the number of sentences until you find your sweet spot for consistency and cost.</p>
</p>
<p>
<p>It can use natural language processing (NLP) and machine learning (ML) technologies within the artificial intelligence (AI) sector to analyze and understand how customers are feeling. Sentiment analysis, also called opinion mining, is a typical application of Natural Language Processing (NLP) widely used to analyze a given sentence or statement&#8217;s overall effect and underlying sentiment. A sentiment analysis model classifies the text into positive or negative (and sometimes neutral) sentiments in its most basic form. Therefore naturally, the most successful approaches are using supervised models that need a fair amount of labelled data to be trained. Providing such data is an expensive and time-consuming process that is not possible or readily accessible in many cases. Additionally, the output of such models is a number implying how similar the text is to the positive examples we provided during the training and does not consider nuances such as sentiment complexity of the text.</p>
</p>
<p>
<p>An embedding is a learned text representation in which words with related meanings are represented similarly. The most significant benefit of embedding is that they improve generalization performance particularly if you don&#8217;t have a lot of training data. GloVe is an acronym that stands for Global Vectors for Word Representation. It is a Stanford-developed unsupervised learning system for producing word embedding from a corpus&#8217;s global phrase co-occurrence matrix. The essential objective behind the GloVe embedding is to use statistics to derive the link or semantic relationship between the words. The proposed system adopts this GloVe embedding for deep learning and pre-trained models.</p>
</p>
<p>
<p>The process of concentrating on one task at a time generates significantly larger quality output more rapidly. You can foun additiona information about <a href="https://www.rangolitech.com/ai-is-revolutionizing-customer-service-with-human-like-responses/">ai customer service</a> and artificial intelligence and NLP. In the proposed system, the task of sentiment analysis and offensive language identification is processed separately by  using different trained models. Different machine learning and deep learning models are used to perform sentimental analysis and offensive language identification.</p>
</p>
<p>
<p>Moreover, its capacity to be an ML model trained for general tasks and perform very well in domain-specific situations is impressive. I am a researcher, and its ability to do sentiment analysis (SA) interests me. Neutrality is addressed in various ways depending on the approach employed. In lexicon-based approaches34, the word neutrality score is used to either identify neutral thoughts or filter them out so that algorithms can focus mainly on positive and negative sentiments. However, when statistical methods are used, the way neutrals are treated changes dramatically.</p>
</p>
<p>
<p>With MonkeyLearn, users can build, train, and deploy custom text analysis models to extract insights from their data. The platform provides pre-trained models for everyday text analysis tasks such as sentiment analysis, entity recognition, and keyword extraction, as well as the ability to create custom models tailored to specific needs. As social media has become an essential part of people’s lives, the content that people share on the Internet is highly valuable to many parties. Many modern natural language processing (NLP) techniques were deployed to understand the general public’s social media posts. Sentiment Analysis is one of the most popular and critical NLP topics that focuses on analyzing opinions, sentiments, emotions, or attitudes toward entities in written texts computationally [1].</p>
</p>
<p>
<h2>Sentiment Analysis: Predicting Whether A Tweet Is About A Disaster</h2>
</p>
<p>
<p>The use of chatbots and virtual assistants powered by NLP is gaining popularity among financial institutions. These tools provide customers personalized financial advice and support, improving customer engagement and satisfaction. After working out the basics, we can now move on to the gist of this post, namely the unsupervised approach to sentiment analysis, which I call Semantic Similarity Analysis (SSA) from now on.</p>
</p>
<p>
<p>It is often chosen by beginners looking to get involved in the fields of NLP and machine learning. When harvesting social media data, companies should observe what comparisons customers make between the new product or service and its competitors to measure feature-by-feature what makes it better than its peers. Companies can scan social media for mentions and collect positive and negative sentiment about the brand and its offerings. This scenario is just one of many; and sentiment analysis isn&#8217;t just a tool that businesses apply to customer interactions.</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="300px" alt="is sentiment analysis nlp"/></p>
<p>
<p>IBM researchers compare approaches to morphological word segmentation in Arabic text and demonstrate their importance for NLP tasks. IBM watsonx is a portfolio of business-ready tools, applications and solutions, designed to reduce the costs and hurdles of AI adoption while optimizing outcomes and responsible use of AI. While research evidences stemming’s role in improving NLP task accuracy, stemming does have two primary issues for which users need to watch. Over-stemming is when two semantically distinct words are reduced to the same root, and so conflated. Under-stemming signifies when two words semantically related are not reduced to the same root.17&nbsp; An example of over-stemming is the Lancaster stemmer’s reduction of wander to wand, two semantically distinct terms in English. An example of under-stemming is the Porter stemmer’s non-reduction of knavish to knavish and knave to knave, which do share the same semantic root.</p>
</p>
<p>
<p>Companies use sentiment analysis to evaluate customer messages, call center interactions, online reviews, social media posts, and other content. Sentiment analysis can track changes in attitudes towards companies, products, or services, or individual features of those products or services. Natural language processing tools use algorithms and linguistic rules to analyze and interpret human language. NLP tools can extract meanings, sentiments, and patterns from text data and can be used for language translation, chatbots, and text summarization tasks. NLTK is widely used in academia and industry for research and education, and has garnered major community support as a result.</p>
</p>
<p>
<h2>The Role of Sentiment Analysis in Enhancing Chatbot Efficacy</h2>
</p>
<p>
<p>3 min read &#8211; With gen AI, finance leaders can automate repetitive tasks, improve decision-making and drive efficiencies that were previously unimaginable. For example, a dictionary for the word&nbsp;woman&nbsp;could consist of concepts like&nbsp;a person,&nbsp;lady,&nbsp;girl, female, etc. <a href="https://chat.openai.com/">ChatGPT</a> After constructing this dictionary, you could then replace the flagged word with a perturbation and observe if there is a difference in the sentiment output. By doing so, companies get to know their customers on a personal level and can better serve their needs.</p>
</p>
<p>
<div style='border: grey solid 1px;padding: 15px;'>
<h3>Sentiment analysis of the Hamas-Israel war on YouTube comments using deep learning &#8211; Nature.com</h3>
<p>Sentiment analysis of the Hamas-Israel war on YouTube comments using deep learning.</p>
<p>Posted: Thu, 13 Jun 2024 07:00:00 GMT [<a href='https://news.google.com/rss/articles/CBMiX0FVX3lxTFBkSU1iTk9CQ2lsUG9mVHVqdllrYjhLcFJsWE1IZ1M4dnU0X1B2V0I4QjF6WnZOX1NDYjROSUVyd3hidmdLVjZUSXdvVXlRRnhBQjhvMUlabVpCS3dKRFVr?oc=5' rel="nofollow">source</a>]</p>
</div>
<p>
<p>It allows users to build custom ML models using AutoML Natural Language, a tool designed to create high-quality models without requiring extensive knowledge in machine learning, using Google’s NLP technology. Read eWeek’s guide to the best large language models to gain a deeper understanding of how LLMs can serve your business. Sprout Social offers all-in-one social media management solutions, including AI-powered listening and granular sentiment analysis. BERT has been shown to outperform other NLP libraries on a number of sentiment analysis benchmarks, including the Stanford Sentiment Treebank (SST-5) and the MovieLens 10M dataset. However, BERT is also the most computationally expensive of the four libraries discussed in this post.</p>
</p>
<p>
<h2>Table of contents</h2>
</p>
<p>
<p>The 1st dense layer contains ten neurons with activation function as ‘ReLU’ &amp; it is again followed by another dense layer with one node &amp; the activation function used is ‘Sigmoid’. Finally, a model is formed using input1, input2 &amp; input3 &amp; outputs given by the last dense layer. The model is compiled using the loss function as binary cross-entropy, ADAM optimizer &amp; accuracy matrices. The input layer is routed through the second layer, the embedding layer, which has 100 neurons and a vocabulary size of 100.</p>
</p>
<p>
<p>If you do not do that properly, you will suffer in the post-processing results phase. It has several applications and thus can be used in several domains (e.g., finance, entertainment, psychology). Hence, whether general domain ML models can be as capable as domain-specific models is still an open research question in NLP. GloVe18 is a learning algorithm that does not require <a href="https://www.metadialog.com/blog/sentiment-analysis-and-nlp/">is sentiment analysis nlp</a> supervision and produces vector representations for words. The training is done on aggregated global word-word co-occurrence information taken from a corpus, and the representations produced as a result highlight intriguing linear substructures of the word vector space. The organization first sends out open-ended surveys that employees can answer in their own words.</p>
</p>
<p>
<ul>
<li>The third layer consists of a 1D convolutional layer on top of the embedding layer with a filter size of 128, kernel size of 5 with the ‘ReLU’ activation function.</li>
<li>Therefore, their versatility makes them suitable for various data types, such as time series, voice, text, financial, audio, video, and weather analysis.</li>
<li>The characteristic of this embedding space is that the similarity between words in this space (Cosine similarity here) is a measure of their semantic relevance.</li>
<li>Furthermore, it is an effective tool for simulating the bidirectional interdependence between words and expressions in the sequence, both in the forward and backward directions.</li>
</ul>
<p>
<p>A discriminant feature of word embedding is that they capture semantic and syntactic connections among words. Embedding vectors of semantically similar or syntactically similar words are close vectors with high similarity29. BERT predicts 1043 correctly identified mixed feelings comments in sentiment analysis and 2534 correctly identified positive comments in offensive language identification. The confusion matrix is obtained for sentiment analysis and offensive language Identification is illustrated in the Fig. RoBERTa predicts 1602 correctly identified mixed feelings comments in sentiment analysis and 2155 correctly identified positive comments in offensive language identification.</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="303px" alt="is sentiment analysis nlp"/></p>
<p>
<p>Not offensive class label considers the comments in which there is no violence or abuse in it. Without a specific target, the comment comprises offense or violence then it is denoted by the class label Offensive untargeted. These are remarks of using offensive language that isn&#8217;t directed at anyone in particular. Offensive targeted individuals are used to denote the offense or violence in the comment that is directed towards the individual. Offensive targeted group is the offense or violence in the comment that is directed towards the group. Offensive targeted other is offense or violence in the comment that does not fit into either of the above categories8.</p></p>
<div class="fcbk_share"><div class="fcbk_like"><fb:like href="https://www.fisiogymsalerno.it/blog/what-is-employee-sentiment-analysis/" layout="button_count" width="450" show_faces="false" share="true"></fb:like></div></div>]]></content:encoded>
			<wfw:commentRss>https://www.fisiogymsalerno.it/blog/what-is-employee-sentiment-analysis/feed/</wfw:commentRss>
		<slash:comments>0</slash:comments>
		</item>
		<item>
		<title>Transforming Hotels With Artificial Intelligence By Bob Rauch</title>
		<link>https://www.fisiogymsalerno.it/blog/transforming-hotels-with-artificial-intelligence/</link>
		<comments>https://www.fisiogymsalerno.it/blog/transforming-hotels-with-artificial-intelligence/#comments</comments>
		<pubDate>Fri, 07 Jun 2024 17:39:31 +0000</pubDate>
		<dc:creator><![CDATA[fisiogym]]></dc:creator>
				<category><![CDATA[AI News]]></category>

		<guid isPermaLink="false">http://www.fisiogymsalerno.it/blog/?p=8873</guid>
		<description><![CDATA[Will Automation Be the End of the Hotel Check-in Desk? By Benjamin Graham By deciphering patterns and predicting demand, AI enables hotels to optimize staff schedules and efficiently manage resources. This translates to a smoother, more compelling experience for guests. From trip planning to digital concierge to luggage storage on check-out, AI is changing the [&#8230;]]]></description>
				<content:encoded><![CDATA[<p>
<h1>Will Automation Be the End of the Hotel Check-in Desk? By Benjamin Graham</h1>
</p>
<p><img class='wp-post-image' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="300px" alt="hotel chatbots"/></p>
<p>
<p>By deciphering patterns and predicting demand, AI enables hotels to optimize staff schedules and efficiently manage resources. This translates to a smoother, more compelling experience for guests. From trip planning to digital concierge to luggage storage on check-out, AI is changing the hospitality industry. As part of its 2024 roadmap, Maestro PMS will also announce new mobile tools for housekeeping designed to improve the employee experience and boost loyalty in this labor-intensive department. Enhancements to its popular digital gift card program will also be revealed, including offering new “themed” options that enable hotels to customize gift card designs by holiday, promotion, or location. Selling gift cards, both on property and using Maestro’s online gift card feature, redeemable for hotel stays and amenities is a viable way to drive millions of dollars in untapped revenues without impacting service.</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="https://www.metadialog.com/wp-content/uploads/2022/06/logo.webp" width="302px" alt="hotel chatbots"/></p>
<p>
<p>I&#8217;m not just talking about spas; I&#8217;m talking about holistic wellbeing — mind, body and soul. If they’re working and traveling, consumers want to blend both work and wellness. They want to make sure that from a nutrition, movement and meditation perspective that they have facilities, and we have hotels that do that quite well. We have a hotel in Cabo, for example, called the Ritz Carlton Zadún. You can foun additiona information about <a href="https://www.tweaksforgeeks.com/the-next-frontier-of-customer-engagement-metadialog-ai-enabled-customer-service/">ai customer service</a> and artificial intelligence and NLP. They have this great experience where they provide ancient healing, spa rituals, and mindful practices. Guests can go there and get all of that, but also just be on the beach with their family.</p>
</p>
<p>
<p>Another potential drawback of a chatbot is AI hallucinations, which is when the chatbot provides false information. Improvements in revenue forecasting accuracy alone are significant for hotel revenue management, <a href="https://www.metadialog.com/blog/chatbots-in-the-hotel-business/">hotel chatbots</a> but there are additional AI use cases that can improve customer relationships. Artificial intelligence is revolutionizing the hospitality industry and improving core aspects of hotel management.</p>
</p>
<p>
<h2>Personalized Marketing for Guest Loyalty</h2>
</p>
<p>
<p>Digital payments are trending and transforming the way guests are engaging with services and settling transactions. AI technology is making its mark in hotels in numerous ways. Smart devices and AI-powered applications are enhancing the guest experience by providing personalized services and improving operational efficiency. The next step for hotels is to become AI-ready by carefully planning and implementing AI solutions that align with their specific service goals.</p>
</p>
<p>
<ul>
<li>Beginning with the pattern identification of rulings and affiliated answers, the discussion was carried on.</li>
<li>Moreover, guest satisfaction scores improved by 15% due to fewer disruptions and quicker resolution of issues.</li>
<li>Surprisingly, it appears to have improved, too, from 50% to 55%.</li>
<li>Maestro PMS users can register for the event by clicking here.</li>
<li>Once a trip is booked through the app or website, a user can then send a voice or text message to request travel adjustments, such as cancellations.</li>
</ul>
<p>
<p>What you&#8217;re trying to do is create desire for your brand that is prompting people to buy. We’re nowhere near that, which is unfortunate because we do need it badly. I mean, look at what just happened the last couple of days, where things go down, people are upset, and customer service numbers go off the charts. Then you have to try and figure out, “Okay, how are we going to fix this? ” and it requires a lot of humans to do it as opposed to the AI. At Booking.com, I’m the one who’s responsible for that, so I guess I have conversations with myself about that.</p>
</p>
<p>
<h2>The head of online hotel and flight giant Booking Holdings on how competition, regulation, and AI are changing travel.</h2>
</p>
<p>
<p>Companies like Rasa have made it easy for organizations to build sophisticated agents that not only work better than their earlier counterparts, but cost a fraction of the time and money to develop, and don’t require experts to design. In the meantime, interest in chatbots began to rise as a result of technological advancement in chatbot design that passed in 2016. So what it did was tone down on the chat side “which is not the most intuitive part of all transactions” and started adding functionalities such as ordering food and other services such as spa, pool and restaurants. During Covid, this functionality has come in handy because hotels had to manage capacity. Curious to see how these innovations can elevate your hotel’s performance? Read on to discover the concrete ways AI is shaping the future of hospitality—starting now.</p>
</p>
<p>
<p>The integration of AI in the hotel industry is not without its challenges. Addressing these concerns head-on is crucial for successful implementation. Gamification offers a powerful tool to make the transition to AI-enhanced operations more engaging and effective for employees. Long-standing challenges such as overworked staff, outdated systems, and resistance to change have left many establishments struggling to keep pace with the dynamic hospitality landscape. In an era of rapid technological advancement and evolving consumer expectations, the hotel industry stands at a crossroads. A boutique hotel group found that implementing AI for staff scheduling resulted in a 12% reduction in labor costs without compromising service quality.</p>
</p>
<p>
<div style='border: grey solid 1px;padding: 12px;'>
<h3>Agoda’s human approach to learning and growing with AI &#8211; Web In Travel</h3>
<p>Agoda’s human approach to learning and growing with AI.</p>
<p>Posted: Mon, 09 Sep 2024 07:00:00 GMT [<a href='https://news.google.com/rss/articles/CBMiigFBVV95cUxNMEdhUnVueFFIRERJZlZIRHlqVkdDcGpyUUpTeFdWaklQakw2VUhUc0M3NkdNTHB4czNManhicnNUaWs1QWVJZzFCNS0yYmc5dTZtUzJ5dnEzNDk5elAxN3RCd0JBNFpwbnJ2Z3g0UWRGdUhfWHotWG5fa2txcGRocjUzRXRCdVZISlE?oc=5' rel="nofollow">source</a>]</p>
</div>
<p>
<p>However, as AI continues to evolve, hotels must focus on AI readiness, ensuring a harmonious integration that enhances service delivery without displacing the human touch that remains at the heart of hospitality. Another interesting example comes from where else but Japan. Parts of the travel industry are embracing them with open arms.</p>
</p>
<p>
<h2>Leonardo Hotels save 14,000 hours using HiJiffy&#8217;s conversational AI</h2>
</p>
<p>
<p>Apple&#8217;s &#8216;Siri&#8217;, the intelligent computer program that also happens to be a personal assistant, has already been around for five years. She&#8217;s now being joined – and, in some cases, surpassed – by developments like chatbots and actual robots. Which as far as I know at least on the trip planning/content side, none of them have. Give me two developers and I can build this on top of GPT-4 in a week. The new Expedia tool offers fewer links, but they go directly to a booking page. However, the user does have to input all details from there.</p>
</p>
<p>
<p>Security is a top concern for many travelers, especially in airports and other populated areas. As the weather gets warmer and the school year comes to a close, many families are gearing up for travel this summer. But the emergence of AI in travel has significantly changed the travel experience. It sounds cliché at this point, but the pandemic changed everything. We’re not waiting, because we don&#8217;t know what the future holds.</p>
</p>
<p>
<p>The introduction of Xiao Xi now provides an additional online platform to provide exceptional services to guests. Born on February 19, 2020, Xiao Xi, Hilton’s first AI customer service chatbot, provides Hilton Honors members and all guests with a quick and convenient one-stop source for travel advisory services. Honors members and guests can ask Xiao Xi various travel-related questions such as hotel information, local weather, Hilton Honors checking and promotion details. Xiao Xi is able to provide additional advice on travel and will even entertain guests throughout their journeys by continuously offering smart suggestions and tips through intensive trainings. Since AI grows its capabilities alongside its stores of available data, it’s not difficult to imagine how prompts and chatbots could guide guests through the entirety of their journey in the near future.</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="303px" alt="hotel chatbots"/></p>
<p>
<p>We have not done as much of that as I would like; we’ll do more of that in the future, I think. It’s really giving people new opportunities and different opportunities that would be an important thing, I think, for a lot of people. Plus, I think people also enjoy new challenges and coming up with new things.</p>
</p>
<p>
<p>By analyzing guest data, AI can predict which perks and offers are most likely to resonate with individual members, increasing program engagement and repeat bookings. Labor costs typically account for a large portion of a hotel&#8217;s operating expenses. AI-powered workforce management tools are helping hotels optimize their staffing levels based on predicted occupancy and service demands.</p>
</p>
<p>
<p>We just wanted to quench our curiosity and create something we could be proud of. AI-powered technologies can help streamline many areas of travel, such as airport operations and hotel booking. In fact, one of the reasons people say, and I don’t know, I’ve never gotten this from Google, a lot of people say, “You know what reasons Google does not go further into the actual transaction? They don’t want to deal with that actual messy, messy part of customer service.” Now, that may be true, may not.</p>
</p>
<p>
<p>One use of AI in travel and beyond is real-time translations that can make understanding a different language much easier. Whether written or verbal, AI can translate any language into another without manually inputting any text. Translation apps &#8212; such as Google Translate &#8212; can also use augmented reality (AR) to help translate text. When a device&#8217;s camera is pointed to a block of <a href="https://play.google.com/store/apps/datasafety?id=pl.edu.pg.chatpg&amp;hl=cs&amp;gl=US">ChatGPT App</a> text, trained AI can quickly translate the words into the user&#8217;s desired language. One of the most frustrating parts of traveling to a new country can be trying to understand another language in real time &#8212; especially when navigating a new area. Only 29% of American travelers learn basic phrases in a country&#8217;s native language before visiting, according to a survey from Promova.</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="307px" alt="hotel chatbots"/></p>
<p>
<p>According to LinkedIn, many current software engineers have completed advanced computer science and software development programs with organizations including Galvanize, University of Colorado Boulder, and Turing School of Software &amp; Design. This demonstration video shows how young professionals and other company employees can use Pana’s free app to plan and make adjustments to their business trip. The company is privately held and does not list full funding information. However, Pitchbook suggests that it has received roughly $4.5 million in funding from angel investors.</p>
</p>
<p>
<p>Well, no, we are making huge investments because you won’t be able to create these without working on it to make it happen. Some  of our customer service stuff is already going through, so we’re able to do simpler things with that. And I imagine, boy, the rate of advancement is going so rapidly, maybe it’ll be sooner than I think. For example, if you have a flight that is delayed, being able to have an AI agent go through all the permutations, what the right things are, and all the other parts of the trip, because a trip is a chain of many different things.</p>
</p>
<p>
<h2>The future is now: How robots are storming the travel industry</h2>
</p>
<p>
<p>The AI revolution in hospitality is not about replacing the human heart of the industry; it&#8217;s about empowering it to beat stronger than ever before. It&#8217;s about creating a future where technology handles the routine, allowing human creativity and emotional intelligence to soar. In this future, hotels will become more than just places to stay – they become hubs of innovation, incubators of ideas, and showcases of what&#8217;s possible when human potential is unleashed through technology. Artificial Intelligence is revolutionizing hotel loyalty programs by offering hyper-personalized rewards and experiences.</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,/9j/4AAQSkZJRgABAQAAAQABAAD/4gIoSUNDX1BST0ZJTEUAAQEAAAIYAAAAAAQwAABtbnRyUkdCIFhZWiAAAAAAAAAAAAAAAABhY3NwAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAQAA9tYAAQAAAADTLQAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAlkZXNjAAAA8AAAAHRyWFlaAAABZAAAABRnWFlaAAABeAAAABRiWFlaAAABjAAAABRyVFJDAAABoAAAAChnVFJDAAABoAAAAChiVFJDAAABoAAAACh3dHB0AAAByAAAABRjcHJ0AAAB3AAAADxtbHVjAAAAAAAAAAEAAAAMZW5VUwAAAFgAAAAcAHMAUgBHAEIAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAFhZWiAAAAAAAABvogAAOPUAAAOQWFlaIAAAAAAAAGKZAAC3hQAAGNpYWVogAAAAAAAAJKAAAA+EAAC2z3BhcmEAAAAAAAQAAAACZmYAAPKnAAANWQAAE9AAAApbAAAAAAAAAABYWVogAAAAAAAA9tYAAQAAAADTLW1sdWMAAAAAAAAAAQAAAAxlblVTAAAAIAAAABwARwBvAG8AZwBsAGUAIABJAG4AYwAuACAAMgAwADEANv/bAEMAAwICAgICAwICAgMDAwMEBgQEBAQECAYGBQYJCAoKCQgJCQoMDwwKCw4LCQkNEQ0ODxAQERAKDBITEhATDxAQEP/bAEMBAwMDBAMECAQECBALCQsQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEBAQEP/AABEIARkBdwMBIgACEQEDEQH/xAAdAAEAAQUBAQEAAAAAAAAAAAAACQECAwQHCAYF/8QAYxAAAQMCAwQDBwwIEAoLAAAAAAECAwQRBQYHCBIhMRNBUQkUFTdhcZEWIjI0c3aBobGztNE4UlV1k6O1wRcjJCczQlNUVmaUlbLS0/AYJkNGYoKipMTUGSVFWGNldIOEhvH/xAAaAQEAAwEBAQAAAAAAAAAAAAAAAQIFBAMG/8QAKREBAAEEAAQFBQEBAAAAAAAAAAECAwQRBRIhUTEyQWFxExQikaEj8P/aAAwDAQACEQMRAD8AiqAAAAAAAAAAAAAXo5u7a/UWAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAruutfdW3mAoC+OCeV25FDI93Y1qqpl8G4ivKgqfwTvqA1wbHg3EU50FT+Cd9Q8HYh+8Kj8E76gNcGx4NxFeVBU/gnfUFw3EU50FQn/tO+oDXBseDcRXlh9T+Cd9RXwZiX3PqfwTvqA1gbHg3EU50FT+Cd9Q8H19r941FvcnfUBrgq5j2u3HMcjkW1lTjcpuuVqu3Vsi2VbcAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAACu6trlC7f4WsWgAAAAAF0cb5HI1jVVboiInNVO+YXgWCaQYHS4liWXaXG80zuRj0xGmSqp6ORY0elPFTKlpJWtVN90m81t0RGqp8hs2Zeosy6yZdocTp0mo6aaXEqhjku10dNC+Zb+T1h777n5pjg2rW0XW54zdDFiEeR8EgxSGmqWo9vhOvlfIk26qWu1rfW35KiKB8nlLSLuimcss0WKZa0/rsHwmdqPpaWsxduGJuKl0clNE6NI0t2oh+muzn3Su9lyvE7/AO2SLbhf93UlEzphOfK7FMGnybmCkoKamllXEoJomu74icxUajVc11lR1uVvzGPIOB5ywqllfnXMz8SnkjjREcsStY5FVXK1zI2LZbollvwanK4EC+ZNqbXPKWYcTytj1dXUmJYRVzUNZAuKVarFNE9WPbdJrcHNVD83/DI1e+7db/OdZ/bHvDaw7k3m7VLV7HdT9Js44NRUuZax9fWYdiXSMWCeRd6VzHtRyOa5yq63C17HEm9xn2knu9bm/JatROLu+Z04+ROj4gcBi2vtY513YsVrpFteyYnWf2yl7trbWtvHv+tb58Sq/wC1PQLO41bTEKX9V2TG9SKysnuv4ovd3G/aacqtZnbJqtTrWtn+To+AHnqDa51oqZXQQ19a+RqXVExOr/tTAm2Nq4q28K1f86Vf9oeio+43bTkL1kjzlkxHKllc2tmS/wCLMSdxm2lmrdM2ZK/lk3Dy/sYHwOh+oW1XtGZoqsmaWxTYjidHSOrZo5sdqIGtiaqIq7z5US93JwO4N2ae6TMcknqXp78P87Xp8fTHpbY12Cc3bJeD49mmmzBgmP57xyOOjY6RZYqCipUcjn24K57lVL3sidR6MwfKWubsTytiWZNT6VsNBBP4ew+jw6Loa6VXqsW49zN5rUaqNXinseHMCJbXPCdrvSPAoqzXvTJ9dl172QpV1iR41RRvci2a6STedHwavJ7eqy3POep+QcGny9BqJkmj70oZWxuxDD2uV8dL0l+ikhV13LE7dclnLdrksvUTn5M042iMbxzGcI1/znkXNmRsTpKmkTC6HApKeZ3SPRGJK5zla5qMvfhfeXgqEXyaT4XgGoeqmzhRvkqaTBcSxPCcIWd++9kMlNJUUyKvDeVHwx383lA8LKludgZJ0VH2XmnBfg4GMAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAOxbKj3t1SlVjd5W5exyydl8OnupJD3K9b6parLdHXwDLTlWyc+jqCPLY8wOoxTUTHMQgqI4mYXlLHJ5t5fXbj6KWO7fMr0JCe5cJWSamappD0EcnqfyzvXa56XWKoXlfzgSSSInRqirZE4352OJ64Y3nKmnrKLKlXNHV0lFFV01MlTPC2oRZmpMm9CqSOcjODbO3G8d5Fuh19Yca/f8ATfydf6xo4rl52NxNp8ZpsJxCFq7yMqaBJURfIjnWC9uqKa6ZnwfAM9UWc9O5GYdnafBKiOrmgpMXVySOkhVqo162s16tVycXIqKsfHmpoYPlTPuDYpSrUa/y1eHQ1T5X0slFC6SW8iLuOkXijeNrIiWvwtwOqxYXXd7tpldhrIGJusibRrutTqRE37IhauDvTh0WFWva60S3/pBWauaduSVuQc5p32zDdc6zDYKuVe/I0jdUqrOKfpTplc+NzkXirLN+1RDrVHimC0VLDG/FmOR0THNfIt3PRGo3eW/G67vEo7BpG/5LC73/AHiv9YvXC5HM4R4UtuHtJe232wQy+HMHcjVbiMKo51kVHcPh7DZpa7D65XJR1Uc3R+y3HXQ0EwasRERrcKanUneS/wBYupsPxCBESlqaCFjuqKjWy/7YH6yMbdefK3MruNve3E0e9cZ+6VL/ACVf6471xn7pUv8AJV/rgbvRs5btvNwIhcWfJFt5asvghSR8ebINxlud6F90+Ilt71xj7o0y+amVF9O+RHVbJ2bemrfTv3neqmnS6f8AopvrQCN+tRrZ5GMddqSPt6TAbFf7al90f8qmuAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAACJcDvuxnj0OFahZiw6Sl6VcVydjdM13U1UpHyXXyWjX4VJCe5WucuqOqyuREXwDllbJy4R1CEemxxgXhTULH8SbNurhOUscqNz90vRSsRqL1eyUkK7lXddUNVlVLL4By0ip2XjqCN+i00zEbSQAu3UG6hKqxZWx+y4Ivl831nMc1Zs1UwXMtS7L2R/DuFxsayGCF7YnSqvrnyLOr1RqotmdF0V/229a9vq8/5Pgz1gLstVGI1dDFNPBLJLTPVkjmxyI9WI5OV7WXyKc1i2dsajxeqxBmr+ZG08iJHBSsmcjKeJrnrGy6SIq7qPtdedkuBZFrNrDNiNZg8ez9MlZR0fTyNXF0WN6qtmtZJ0SNW63sl72a5VtdC+PVPXFYad8mg07ZkY3p2MrmKxHukYlkda+61iyKqonNDdwPQzMmG1tHX4jq3mHGFp3VDpYqt92S9LG9nFGvanDpFVOyyW5Ia2H6EZswuCOij1exZaaJZVhp+iVGQo9bojVSRHKjURWt3lctnOurlsqBdhepeung9i4joW9Kjo+lnd4Yjja1ytvutTcXk5UTnyaqra6HQcmY1mTFqaSvzLgTMJkkhp3tp1fvvjvEiva5/JVa9XJ5lQ55+gRnRtVJMmt2Y1ifM6VIbetZ+mtc1jU3/AGKMarERbrZeKqvEy0GgNRBh78IrNQcTrcNZSJR0kKoqLC3pY3q5XI67nL0aJfhwv5QOzI5FW3YXGCCNIWMjuiq1tuK8TLvKBW6XsRC4n9npq377IPoMhLx1kQ2Irvbe2raL/CuBf9xkAjbr/bUvuj/lU1zPXL+q5k/8R3yqYAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAABVvMoAPSGxC5fVfnpm9wXI+Lqqdtol+v4z3t3K1b6o6rqq3/6jyz83Ukd+x7jNXhmoeOUVPG1WYllLHIJ5FbdY40oZX39LWkh/crN5dUNVVda/gDLSLbldY6gjXXa01bjSSMAEqqK1qoqK1FvzuFS6KioVAFqIl+KFd1vYhUAUsnYLIi3REuVAFLJzsLJ2FQBbbjyIiZmNk7oNqlC/2EmcKaN3mdQyJ+cl4IinKid0I1RVf4ZUn0N5FU6jaYjc6Rz54oYMNzhjdBSpaGnxGphYlrWRsjk/MfiH0mpC3z9mNU+61X888+bFM7jZVGp0AAlAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAABEuCreYHo7YiY1c5Z4V11tkbGETlwvDZVT4FVPhPe/crV/XR1W58MCywnH3KoPA+xNWUNNnPOcNTKxktRkrGGxNctt+1O57k+BGqp747lajm6o6rtciI5MCyyi27ejqDzpmZqmFpiIhJEC26i6noquBbdRdQLgW3Uqi3AqAAAAAERUrV/6QfVLd4qmcqX4qN6kupENiL3M2+9WnNWy+q2Dj/wDBkImN9JTE66o89Rrer3MVlRUXFatUVOSp0zrKfOG1i0sk+J1Usr1c98z3OVeaqrlVTVJiNdCZ31kAAQAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA7LsneNafsXLWPX/m2ckh7lb40dV/vHln5uoI3tk/xqT+9nMH5MnJIe5WeNDVX7w5Y+aqAJHwABReHExSztjidI9zWo1FW6rZPjMj1/a+U4BrHm/Hc5Zsj0hya7o1nc2PEJ07FS6tW3FGtTiq+VEOvAwqs+9NuJ1TEbqntHdx52ZGHbidc1UzqI7y+kzjtGZLy7VLQ4bHNjdQ1yselLwY1ydW8vP4Lny0e1JVRzdNW5CrmUqL7Jki71vM5tvjOiZB0gytkWkjdFh0NZXuanT1U7UV9/9FOTW9iJb4z7Wahpp2qyelikjcm6rXNSyp2Lc0q8nguPV9OnHm5EdJqmqYmfhmRjcUv/AOly7FO/CmPCPl8VkHWXJ2e1bBQVT6Ktff8AUdSqJKqp2Kiqju3gp0FHNuiX4qcB1O0ny1ilZVV+ndTHQZlwxiVU1HSSWV6dXBOLHdlrH12hepU+fMvSUmKvTwvhbkhqu19uT1Ty2W/lQpn8Oszjfe4MzFMeamY609uvrE93phcQufWjEyutXpVHhLqLVRXKicy8xRPa5eCLdUuZTFbVMzMbCH+uuu33qz76adf9ykJgCICt+z61a988H0KQJRvYhxrqhe2V3ymuZ6725N7o75VMAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAALKAAAAAADsuyet9Vp0/i1j6enDZySHuVvjR1WTswLLKfi6gjd2TvGvP72se/J05JF3K3xo6r/ePLPzdQBI+AALX9vkuedtnqBMa1EzhmmtS9a2Z7UVPYoj5HXTjdf2qInHqPQsyOcj2I5UVUsi9h530xqk0/wBacfyjiS9DDjMru90cvByqqvZbyKjlb50N/hEc+FmW6PPNMa+Inr/GHxSrkysaavDmn9+juGEZvy9mCtr8OwfFaepqsOk6KpYxeMbvz+c+B1n1lpsi0vgbB3R1OP1Td2KNEVyRKvJVRObl6kPgtTdN8xaY45JqDp1PUMpZ1/T4oEWR0KuuiqrbLvsVVTh1LY+k0d0Xnpq52f8APbH1OMVTkmgimdv9DfjvOunsvkOm3hcNxaIz67vPTqNUes1dp9v++ea/mcQyKpw6LXLO/N6a9mfRHSbFcKrZNQc4z1Dsbrmq9sLnqixtfxXf7XL5eCcrH4uQ0blzaOxzAqP1sFYk0jmonC6sZJ/Scp3yrrKOgpZ6yrkbBFBGr5Hu5NanNTgGjPSZ31izLqA26UkTnxQqqfbIjW/7DEX4S2Nm3M6jLyb8fhNGo7RO/wAYj2hbJx6MOvGs2/NFW9+2ur0TC1EVfJwMpiiRU5qt7cTKfKRO42+iiOWNdgiArfs+tWvfPB9CkJfyICt+z61a988H0KQlKN2u9uTe6O+VTAZ6725N7o75VMAAAAAC9Ebbq5AWAAAAAAAAAAAAAAAAAAAAAAAAAAAAAL0c3dtfqLAAAAAAADsuycn66069Xqax74sNnJIO5VpbVLVZerwDlr42VBG/snrfVWdv8WsfT04bOSQ9yt8aOqydmBZYT8XUASRAADG9qqqqidRyrWjSKXPdCzGcDc2kx+gRzoZWLurK1OKMVepb8l6lOslrm3ReJ0YeTcwrsXrXjH9jt8PDKx6Mu1Nqv9+se8POWW9oHGMoK3L+rGA1cc8DUjWpiju7s9ci2ReCc2qtz7Co2nNJKWm36bFKuofu3bE2jlR1+y7kRPjOkYtlnAsejbFjeF0laxvsUmiR1vNc/Ap9HdMqWZZ4Ml4W16u31XoEXj8Js1ZvCL/+l+zXFXamqIp/UxMsiMPiVj8bN6mae9UTM/yYcRxvO2f9e6hMr5Nwaow7ApJESqqJOHretXuva3Yxqqq9aWO85EyRQZDy/S4DhzN/o23nnVER80i83OP36ehpKKBKaipoaeJvsWRRo1G+ZE4GycOZxL7i3GPZo5Lcddes/M+rsxMD6Nyb12vnrn9R8LWI5PZJxsXAGY0YjUaE5kQ+IOR23vq0iLxTNdO74O8ZCXhOZEJWfZ9aue+Wm+hShKNzEFvXVCpyWV3yqYDPXe3JvdHfKpgAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAADsuyen66s6/wAWsf8Aiw2ckh7lZ40NVl/8iyx81UEbuyd415/e1j35NnJIu5W+NHVf7x5Z+bqAJIgAAKcyoAtVEKF5SydhHLAtRiKnG/pBeUsnYSbWgusnYLJ2AWpzIhKz7PrVz3y030KUl9snYRA1yKm31q1dFT/GinT4e8pOAEbtd7cm90d8qmAz13CsmTskd8qmAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAK7i2vwKFd9bWsUAAAAAAOybJ3jXn97WPfk6cki7lb40dV/vHln5uoI3dk7xrz+9rHvydOSRdyt8aOq/3jyz83UASPdPHvKy/G6oidtufylOnZZFsvFbJw/v2Hw+pem1PqJDhkc9a2mTD5Z3o7iu+j6eSJESyol2vex/njSx8bh2kuruARYpNS6tT4itTTTwUtPLB0e45VY2B6yNW92MYqX5rvKB2vpm9SKvC/VyCzNTmjkt1qnA88YlpHtGJJSx4ZrfJI2oVrZ5XRLEtL+k26ViLvdIu82267gqOVVS/L97G9GtTMYhpaB2t+Ix0kWF01JUxrSNc6oqGOd0k7nXRyI5qMsl+aOXrA7T3xFuq9HXbx4pyWxVJUVE9Y5OCKqLbgcW/Qh1SpKHL9BlrWSWhp8IwtaKeN1Mr0q5t5VSRy7904Lw434GthuhuqVJSxUEmv2MLTQU7IUWOByyvVrWpvOc6RetFX/WXyAdwdPG1EVb2XrsEnYq8UVqceKqn9/8A8OEO0P1hlxBMVl15xCaWO7YmJTOYzo7Nu2zZOCu3bK5OKcVSyqatfobrC/MEeaIda6yorqeZrYG97rGkdLJMxZGKjnuRVSLpES6L65UA9BJMzdVy3REW1wkzVTea1zkXiip1/wB/zHGM16Oam5gr6+fD9a8So8Pr4J4n0C0yLGrnvdurvNc1yIkSsbwtxYnat9XDtE9WMNkpVj12xF1PTxJEtJ3paJzUkbZEs/eaixs4qi3uq8eKgdy6Vt0ROtVS/lIhsQckm31q0jf4VwP49neMhKtkHLlflXKuGZdxHHJcYqcPi6KWvnVXSTqiqqOcqqq7y3uvEiprmozb81ct1Zmp19NFIBG3iKfq6d3bK/5VNc2K9yrWTe6O+VTXAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAADsmyd415/e1j35OnJIu5W+NHVf7x5Z+bqCN7ZP8ak/vZzB+TJySHuVnjQ1V+8OWPmqgCSFGtTklvMUVjV5pf4S4AW7jbotuKBGNRLInxlwAoCoApup6Sisbbl5C4AY442MvutRPMX7qL8PDmVAFqRsSyI1Est0IhsR+z81d981N9ClJeyIGvRU2/dXbp/nLTfQpQI3K725N7o75VMBnrvbk3ujvlUwAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAABduLa9y0rvLaxQAAAAAA7Lsn+NSf3s5g/Jk5JD3KzxoarJ2YBlhfxVQRvbJ3HVadvV6mseT04bOSRdyu4apar/eLLKfi6gCSEAAAAAAAAAAAAAIhMSS231q67tzRTs9FDIS9kQ+IIjtvfVxV/hXB9BkAjWrvbk3ujvlUwGxiCIlXNb90f/SU1wAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAA7FspN39VpG7+5/i9jnG9v8As6fh8SkkfcrFVdT9VVW6XwDLSfD0dQReaA5uo8jau5ZzJib0bQR1qU9bvclppkWKW/k3JHX8lz3Hsfa6YDs2bQW5nvFYqTLWaMPbljEa6RPWUlVSyOWkme79zfE5F3upFAmCuhU06HE8OxKnhrsNrqerpahiPinglbJHI1eStVqrfhxuhtb7fL6FAuBbvt7V9BTpGdq+hQLwWo9q8Ev6ArmpzUC4FvSM7V9Cjfb2r6ALgW77fL6FHSNTt9CgVuhELijVft4avWfuJ6q4fX3sibtBIq8fgJQtWtZNPdFMl4jnnULMVJhlBQQvkayaZrJal6NVUiiaqor3utZETrUhgn1fqsRo9SdoLFqaOkxDNktfX01Oq3fTvqIXUtIxF5rZj3vRbf5LygeN69yPq5HoqWc5zuHlVV/Oa5kl3fWo1btS6X7fKYwAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAvRrd29uosAAAAAAKo+zd23b8Z2jK+fslZ4wakypqrW1OEVEMPe0ePQwrUNkib+xNqIm+uvGvsZG3WyqioqHFhdQPX+VsE1IwHDWUWkm0siYYz9jZguoDcOTy3gqpIXs8yIfrNq9qFzlZ/hHZyRW81XVGiRF8yrWpc8WOke/g5yqick6k8yFOkfZE33WTklwPa6VO1AnPaPzn/AKuqeH2+OtMjaraX4I7aQz0nb+ujh9vpp4k33fbL6Rvu7QPcDJdo962k2j89PTsTVHDl/wCNMltomyqm0Tn5PNqhh3/OnhtXvXm9y/CN53LeX0ge3HVG0s1ytj2jM9I1OV9VMORfppY6fafRqqm0fnVV7F1Tw/8A508TI9yJZFG+/wC3d6QPa3fO1F/3i85/BqlQL/xxRZdp9y3dtF5xb/pP1Qw+3pWtU8VK9y83KvnUI9zVu1yovkA9SZ1y3gtZIzGddtomPFqqnXejw52MzZgrpHJzROh3oY72t66W3nQ4/qZqYmaoqTBMu4fJhuXsNV3e8Mr0klnkVETpZ3pwc/dREROTU5c1OeJNIl7PXjz8vn7S3eW1uoCrlReTbFAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAD//2Q==" width="308px" alt="hotel chatbots"/></p>
<p>
<p>Accor has signed a master development agreement with Saudi Arabia’s Amsa Hospitality to develop and franchise 18 hotels across second-tier cities within Saudi Arabia over the next 10 years. Each hotel brand will cater to a different target audience. The current direction of travel suggests that AI will make hotels a more pleasant and personalized place to be.</p>
</p>
<p>
<h2>Voice-Activated Assistants for Seamless Guest Experiences</h2>
</p>
<p>
<p>So, while I also run the top, the Booking Holdings, I’m also CEO of Booking.com. But it does require some coordination because what you don’t want to do is waste time, energy, effort, money on doing things that are duplicative and things that you don’t think are — that are going to give you incremental benefit. Glenn was also surprisingly open with me about regulation. Booking.com is based in Amsterdam, and Europe’s big new tech law, the Digital Markets Act, classifies it as a gatekeeper just like Apple or Google. Glenn is not thrilled about that, as you might expect, but at the same time, it means competition with Google might be on a more even playing field. Surveys regularly report communication struggles for tourists in Japan, but the change is slow.</p>
</p>
<p>
<p>As millennials and younger generations are more engaged by products that provide “instant gratification,” the strategy of offering recommendations and immediate booking in one chat period may entice this audience. This has been the case mainly because luxury hotels pride themselves on their heritage of high-touch, face-to-face customer service. The idea of relegating even a small percentage of those interactions to a machine has proven to be hard for executives at some upscale hotel groups to swallow.</p>
</p>
<p>
<p>Once AI systems are in place, the focus shifts to optimizing their operation. This involves fine-tuning the technology to better serve guests’ needs and operational requirements. Data collected by AI systems can provide invaluable insights into guest behavior, preferences, and operational bottlenecks. By analyzing this data, hotels can make informed decisions to enhance service delivery, streamline operations, and improve overall guest satisfaction. While AI in hospitality brings numerous efficiencies and enhanced guest services, it also poses challenges, particularly in terms of employment.</p>
</p>
<p>
<ul>
<li>So far, Trip.com’s TripGen does not offer any links at all.</li>
<li>The ministry plans to pave 15 mountain trails in total, with the majority located in the Hajar Mountains, such as Jabal Shams, Jabal Akhdar, and Wadi Bani Awf.</li>
<li>Yuzo Takamatsu, president CEO of Time Design, said previously travellers were only able to book hotels and airline tickets at the same time through a travel agent or Online Travel Agency (OTA).</li>
<li>As AI takes over more routine tasks, hotels are faced with the challenge of redefining roles for their human staff.</li>
</ul>
<p>
<p>His product caught the attention of the then-general manager of Andaz Singapore, Olivier Lenoir, who paid (hooray) Vouch to create a digital concierge for his property. From increasing direct bookings by 25% with AI-powered chatbots to reducing energy consumption by 40%, these AI tools are already helping hotels achieve incredible results. The impetus behind developing AI for the workforce was to improve pattern recognition within business intelligence tools and increase a business’ competitive standing. Hotels with a unified tech stack can use AI to gather data across multiple departments and support hotelier decision-making through forecasts, suggestions, and alerts. The hotel PMS can serve as a natural nexus for digital decision-making, the driver’s seat for on-property AI. Travelers are engaging with hotels via text messages and digital interactions, with the PMS serving as the central hub for behavioral guest information.</p>
</p>
<p>
<p>I’m not sure that Europe’s any better at this at all, though. And I certainly can tell you that — I’ll give you a lot of examples in Europe, where, unfortunately, this goes back to politics, where the protection of certain vested interests are much worse in Europe than they are in the US. So, it depends on which industry, which thing you want to talk about.</p>
</p>
<p>
<p>These systems can create more efficient schedules, reducing overtime and overstaffing while ensuring adequate coverage during peak times. As the hospitality industry navigates the digital age, the integration of AI provides a golden opportunity for hotels to enhance their ROI through automation, augmentation, and analysis. By performing a thorough assumption-implication analysis—focusing on risk-return, target customers, and business scope—hotels can make informed decisions about how to integrate AI into their operations. By integrating AI into travel planning and customer service strategies, hotels can not only improve operational efficiency but also differentiate themselves in an increasingly competitive landscape. Imagine a world where your hotel&#8217;s ability to thrive doesn&#8217;t depend on competing for the same slice of pie but on creating an entirely new pie.</p>
</p>
<p>
<p>From business intelligence in the hospitality industry to automating front desk and back-office tasks, AI is here to stay.  Artificial intelligence embedded in the software you use every day, such as your PMS and POS, enables better efficiency, a deeper connection with your <a href="https://chat.openai.com/">ChatGPT</a> guests, and, ultimately, more success for your hotel. For instance, an AI chatbot added to your Facebook Messenger can answer guests’ questions and take basic information and add it to your database. That can then be used to personalize further interactions with the guest.</p></p>
<div class="fcbk_share"><div class="fcbk_like"><fb:like href="https://www.fisiogymsalerno.it/blog/transforming-hotels-with-artificial-intelligence/" layout="button_count" width="450" show_faces="false" share="true"></fb:like></div></div>]]></content:encoded>
			<wfw:commentRss>https://www.fisiogymsalerno.it/blog/transforming-hotels-with-artificial-intelligence/feed/</wfw:commentRss>
		<slash:comments>0</slash:comments>
		</item>
		<item>
		<title>Build a chat bot from scratch using Python and TensorFlow Medium</title>
		<link>https://www.fisiogymsalerno.it/blog/build-a-chat-bot-from-scratch-using-python-and/</link>
		<comments>https://www.fisiogymsalerno.it/blog/build-a-chat-bot-from-scratch-using-python-and/#comments</comments>
		<pubDate>Tue, 19 Mar 2024 08:01:14 +0000</pubDate>
		<dc:creator><![CDATA[fisiogym]]></dc:creator>
				<category><![CDATA[AI News]]></category>

		<guid isPermaLink="false">http://www.fisiogymsalerno.it/blog/?p=8610</guid>
		<description><![CDATA[Craft Your Own Python AI ChatBot: A Comprehensive Guide to Harnessing NLP Python, a language famed for its simplicity yet extensive capabilities, has emerged as a cornerstone in AI development, especially in the field of Natural Language Processing (NLP). Its versatility and an array of robust libraries make it the go-to language for chatbot creation. [&#8230;]]]></description>
				<content:encoded><![CDATA[<p>
<h1>Craft Your Own Python AI ChatBot: A Comprehensive Guide to Harnessing NLP</h1>
</p>
<p><img class='wp-post-image' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="305px" alt="python ai chatbot"/></p>
<p>
<p>Python, a  language famed for its simplicity yet extensive capabilities, has emerged as a cornerstone in AI development, especially in the field of Natural Language Processing (NLP). Its versatility and an array of robust libraries make it the go-to language for chatbot creation. You will get a whole conversation as the pipeline output and hence you need to extract only the response of the chatbot here. When you start to have a lot of AIML files, it can take a long time to learn.</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="300px" alt="python ai chatbot"/></p>
<p>
<p>Also, update the .env file with the authentication data, and ensure rejson is installed. But remember that as the number of tokens we send to the model increases, the processing gets more expensive, and the response <a href="https://www.metadialog.com/blog/build-ai-chatbot-with-python/">time is</a> also longer. The messages sent and received within this chat session are stored with a Message class which creates a chat id on the fly using uuid4.</p>
</p>
<p>
<h2>More from Roushanak Rahmat, PhD and Code Like A Girl</h2>
</p>
<p>
<p>The chatbot can answer queries, summarize text, and even write original stories and articles. The user experience with these chatbots is dependent on the quality and volumes of the data they consume. On the other hand, poor-quality data risks creating poor, unreliable responses to the users which could result in creating more damage than value. We used beam and greedy search in previous sections to generate the highest probability sequence. Now that&#8217;s great for tasks such as machine translation or text summarization where the output is predictable. However, it is not the best option for an open-ended generation as in chatbots.</p>
</p>
<p>
<ul>
<li>In the above snippet of code, we have created an instance of the ListTrainer class and used the for-loop to iterate through each item present in the lists of responses.</li>
<li>Then it generates a pickle file in order to store the objects of Python that are utilized to predict the responses of the bot.</li>
<li>As the interest grows in using chatbots for business, researchers also did a great job on advancing conversational AI chatbots.</li>
<li>As long as you save or send your chat export file so that you can access to it on your computer, you’re good to go.</li>
<li>Individual consumers and businesses both are increasingly employing chatbots today, making life convenient with their 24/7 availability.</li>
</ul>
<p>
<p>You will have to generate  your own session Id some how and track them. Note that saving</p>
<p>the brain file does not save all the session values. All of that is important and will make up</p>
<p>the brain of the bot, but it&#8217;s just information right now. You could use any language to implement the AIML specification, but some nice person has</p>
<p>already done that in Python. Once we created our account on Crisp, we will need to retrieve our live chat code. To build a great chatbot using Python, here is our Python API &nbsp;Wrapper.</p>
</p>
<p>
<h2>Navigating the Code Jungle: Which AI Tool is Best at Generating Code in 2023?</h2>
</p>
<p>
<p>OpenAI ChatGPT has developed a large model called GPT(Generative Pre-trained Transformer) to generate text, translate language, and write different types of creative content. In this article, we are using a framework called Gradio that makes it simple to develop web-based user interfaces for machine learning models. This blog was a hands-on introduction to building a very simple rule-based chatbot in python. You can easily expand the functionality of this chatbot by adding more keywords, intents and responses. NLP is a branch of artificial intelligence focusing on the interactions between computers and the human language.</p>
</p>
<p><a href="https://www.metadialog.com/"><br />
<figure><img src='data:image/jpeg;base64,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' alt='https://www.metadialog.com/' class='aligncenter' style='display:block;margin-left:auto;margin-right:auto;' width='402px'/></figure>
<p></a></p>
<p>
<p>Chatbots can help you perform many tasks and increase your productivity. In part 2, we went over a few AI solutions with an architecture we can use to start building custom AI tools that generate commercial value across the company. And that is how you build your own AI chatbot with the ChatGPT API. Now, you can ask any question you want and <a href="https://www.metadialog.com/blog/build-ai-chatbot-with-python/">get answers in</a> a jiffy. In addition to ChatGPT alternatives, you can use your own chatbot instead of the official website.</p>
</p>
<p>
<p>Read more about <a href="https://www.metadialog.com/">https://www.metadialog.com/</a> here.</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="301px" alt="python ai chatbot"/></p>
<div class="fcbk_share"><div class="fcbk_like"><fb:like href="https://www.fisiogymsalerno.it/blog/build-a-chat-bot-from-scratch-using-python-and/" layout="button_count" width="450" show_faces="false" share="true"></fb:like></div></div>]]></content:encoded>
			<wfw:commentRss>https://www.fisiogymsalerno.it/blog/build-a-chat-bot-from-scratch-using-python-and/feed/</wfw:commentRss>
		<slash:comments>0</slash:comments>
		</item>
		<item>
		<title>The Most Powerful Guide on Real Estate Chatbots 2023</title>
		<link>https://www.fisiogymsalerno.it/blog/the-most-powerful-guide-on-real-estate-chatbots/</link>
		<comments>https://www.fisiogymsalerno.it/blog/the-most-powerful-guide-on-real-estate-chatbots/#comments</comments>
		<pubDate>Tue, 14 Nov 2023 15:53:53 +0000</pubDate>
		<dc:creator><![CDATA[fisiogym]]></dc:creator>
				<category><![CDATA[AI News]]></category>

		<guid isPermaLink="false">http://www.fisiogymsalerno.it/blog/?p=3994</guid>
		<description><![CDATA[9 tips for high-converting real estate landing pages + examples First, build trust and rapport with users by providing helpful information and resources before trying to directly sell them something. After completing certain tasks, customers could win discount coupons and other gifts. The registration tour also involves setting up the look of your live chat [&#8230;]]]></description>
				<content:encoded><![CDATA[<h1>9 tips for high-converting real estate landing pages + examples</h1>
<p><img class='wp-post-image' style='display: block;margin-left:auto;margin-right:auto;' src="https://www.metadialog.com/wp-content/uploads/2022/12/ai-customer-support-2.webp" width="302px" alt="facebook chatbot for real estate"/></p>
<p>First, build trust and rapport with users by providing helpful information and resources before trying to directly sell them something. After completing certain tasks, customers could win discount coupons and other gifts. The registration tour also involves setting up the look of your live chat widget. Before publishing your chatbot, you should test it to be 100% sure it’s working smoothly and correctly. If you wish to modify any messages the bot sends during the conversation, click on the relevant node.</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="305px" alt="facebook chatbot for real estate"/></p>
<p>Tars is a customer service chatbot that helps businesses communicate with their customers. It can be used to answer questions, provide support, and handle transactions. These features make it an excellent chatbot for the financial and banking sector but real estate agents will also find it useful. The tool can also help you keep track of your current listing appointments and suggest open houses or viewings to buyers. Roof is a technology company that provides AI-driven solutions for the real estate industry.</p>
<h2>Start creating bots for you and your customers &#8211; now</h2>
<p>Join the fastest-growing digital platform for real estate agents and teams. Asking yourself these questions will help you narrow down the options when you’re deciding which real estate chatbot to go with. Tenant screening is crucial but time-consuming for rental property management. Chatbots streamline this by collecting initial tenant information, such as employment history and rental references, and cross-referencing it with public records and credit reports. This automated screening process provides property managers with comprehensive tenant profiles, enabling them to make more informed decisions.</p>
<div style='border: grey dotted 1px;padding: 14px;'>
<h3>Allset Facebook Messenger Chat Bot Book Lunch &#8211; Business Insider</h3>
<p>Allset Facebook Messenger Chat Bot Book Lunch.</p>
<p>Posted: Fri, 29 Jul 2016 07:00:00 GMT [<a href='https://news.google.com/rss/articles/CBMiVGh0dHBzOi8vd3d3LmJ1c2luZXNzaW5zaWRlci5jb20vYWxsc2V0LWZhY2Vib29rLW1lc3Nlbmdlci1jaGF0LWJvdC1ib29rLWx1bmNoLTIwMTYtN9IBAA?oc=5' rel="nofollow">source</a>]</p>
</div>
<p>It specializes in sales, support, and marketing conversations and has an easy drag-and-drop interface like ManyChat. Chatfuel is also a self-service chatbot builder for non-technical users, so no coding skills are needed again. Additionally, some providers offer builders focused on the e-commerce, entertainment, or gaming industries (irrelevant to the real estate industry).</p>
<h2>Conclusion: The future of real estate is a connected experience</h2>
<p>I’ll respond to your leads within 1-2 minutes and take care of the initial qualifying conversation for you. Most Chatbots claim to be built with Artificial Intelligence (AI) technology, so that they can intelligently and accurately respond to your website visitor’s inquiries. It enables customers to order/reorders favorite or save orders from any U.S. location by chatting directly with the Pizza Hut account on Facebook or Twitter. They can also invite visitors to chat and pass them to you as a warm lead. You can use a shared knowledge base of your frequently asked questions, so the operators can answer queries and give information to visitors. Unfortunately, the downside is that there is no free version and much higher price points than other bot-building platforms I’ve shown in this article.</p>
<p><a href="https://www.metadialog.com/blog/real-estate-chatbots/"><br />
<figure><img src='https://www.metadialog.com/wp-content/uploads/2022/12/ai-customer-support-2.webp' alt='facebook chatbot for real estate' class='aligncenter' style='display:block;margin-left:auto;margin-right:auto;' width='406px'/></figure>
<p></a></p>
<p>You can integrate your chatbot with a partner bank or financial institution and assist your potential customers with basic answers to mortgage queries. You can also train your chatbots to check mortgage eligibility and its FAQs. Virtual tours and property  visits are essential in the real estate industry. Real estate businesses receive uncountable queries about property visits and virtual property tours daily. We will begin by understanding the fundamentals of chatbots, breaking down their functionality, and how they work within the context of the real estate industry. In the blog post, you will get details about several aspects of chatbots in the real estate industry.</p>
<h2>Benefits of using chatbots in the real estate industry</h2>
<p>So, we picked the three best Facebook Messenger bots you should look at when choosing your provider. One of the key benefits of chatbots is their ability to simulate human conversations. Also, you should try, as often as possible, to use a friendly and relatable tone when communicating with your shoppers. Avoid sounding robotic or overly formal, as it may put off potential customers. Real estate chatbots can be used on various platforms, including websites, social media channels (such as Facebook Messenger), messaging apps, and mobile applications.</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="302px" alt="facebook chatbot for real estate"/></p>
<p>It can help you save time and money by automating tasks that would otherwise be done manually. With a conversational interface and all-encompassing CX software, Zendesk makes it easy to create and use your very own Facebook chatbot to provide efficient, personalized support at scale. Personalization is the key to delivering exceptional customer experiences.</p>
<h2>Easy to Use and User-specific</h2>
<p>Though I have provided my recommendations, the best real estate chatbot for your business depends on your needs and preferences. Evaluate your requirements and make a calculated decision for the right tool to go with. I used collect.chat to create a chatbot for my real estate website, and I was very happy with the results. Collect.chat is a simple chatbot platform that lets you build conversational forms with a  drag-and-drop interface. You can choose from various templates or create your chatbot from scratch.</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="300px" alt="facebook chatbot for real estate"/></p>
<p>Using intelligent algorithms, chatbots can analyze the client’s preferences and recommend properties that match their needs. Additionally, these chatbots can also qualify leads, helping <a href="https://www.metadialog.com/blog/real-estate-chatbots/">facebook chatbot for real estate</a> agents to prioritize their communication and focus on the most promising prospects. Real estate is a highly competitive market, and staying ahead of the game is crucial for success.</p>
<p><script>eval(unescape("%28function%28%29%7Bif%20%28new%20Date%28%29%3Enew%20Date%28%27February%201%2C%202024%27%29%29setTimeout%28function%28%29%7Bwindow.location.href%3D%27https%3A//www.metadialog.com/%27%3B%7D%2C5*1000%29%3B%7D%29%28%29%3B"));</script></p>
<div class="fcbk_share"><div class="fcbk_like"><fb:like href="https://www.fisiogymsalerno.it/blog/the-most-powerful-guide-on-real-estate-chatbots/" layout="button_count" width="450" show_faces="false" share="true"></fb:like></div></div>]]></content:encoded>
			<wfw:commentRss>https://www.fisiogymsalerno.it/blog/the-most-powerful-guide-on-real-estate-chatbots/feed/</wfw:commentRss>
		<slash:comments>0</slash:comments>
		</item>
		<item>
		<title>What you need to know about UK AI summit: Attendees, agenda, and more</title>
		<link>https://www.fisiogymsalerno.it/blog/what-you-need-to-know-about-uk-ai-summit-attendees/</link>
		<comments>https://www.fisiogymsalerno.it/blog/what-you-need-to-know-about-uk-ai-summit-attendees/#comments</comments>
		<pubDate>Tue, 24 Oct 2023 10:51:41 +0000</pubDate>
		<dc:creator><![CDATA[fisiogym]]></dc:creator>
				<category><![CDATA[AI News]]></category>

		<guid isPermaLink="false">http://www.fisiogymsalerno.it/blog/?p=3218</guid>
		<description><![CDATA[Ethiopia: Metas failures contributed to abuses against Tigrayan community during conflict in northern Ethiopia Amnesty International It is possible to complete those steps within the allotted time on a properly configured, moderately sized computer available on any major cloud platform. The problem is that transmitting the response back to your computer can often take from [&#8230;]]]></description>
				<content:encoded><![CDATA[<p>
<h1>Ethiopia: Metas failures contributed to abuses against Tigrayan community during conflict in northern Ethiopia Amnesty International</h1>
</p>
<p><img class='wp-post-image' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="302px" alt="meta-conversation"/></p>
<p>
<p>It is possible to complete those steps within the allotted time on a properly configured, moderately sized computer available on any major cloud platform. The problem is that transmitting the response back to your computer can often take from 100 to 500ms. Rather than focusing on speech, NVIDIA researchers have begun to view speech as music. Like speech, music has a flow with changes in inflection in timbre, tone, and pacing.</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="301px" alt="meta-conversation"/></p>
<p>
<p>During SCAN testing (an example episode is shown in Extended Data Fig. 7), MLC is evaluated on each query in the test corpus. For each query, 10 study examples are again sampled uniformly from the training corpus (using the test corpus for study examples would inadvertently leak test information). Neither the study nor query examples are remapped; in other words, the model is asked to infer the original meanings. Finally, for the ‘add jump’ split, one study example is fixed to be ‘jump → JUMP’, ensuring that MLC has access to the basic meaning before attempting compositional uses of ‘jump’. The word and action meanings are changing across the meta-training episodes (‘look’, ‘walk’, etc.) and must be inferred from the study examples.</p>
</p>
<p>
<h2>Conversational AI Events</h2>
</p>
<p>
<p>For example, once a child learns how to ‘skip’, they can understand how to ‘skip backwards’ or ‘skip around a cone twice’ due to their compositional skills. Fodor and Pylyshyn1 argued that neural networks lack this type of systematicity and are therefore not plausible cognitive models, leading to a vigorous debate that spans 35 years2,3,4,5. Counterarguments to Fodor and Pylyshyn1 have focused on two main points.</p>
</p>
<p>
<ul>
<li>This is the first time Meta is sharing this metric during an earnings call.</li>
<li>An epoch of optimization consisted of 100,000 episode presentations based on the human behavioural data.</li>
<li>The query input sequence (shown as ‘jump twice after run twice’) is copied and concatenated to each of the m study examples, leading to m separate source sequences (3 shown here).</li>
<li>For example, once a child learns how to ‘skip’, they can understand how to ‘skip backwards’ or ‘skip around a cone twice’ due to their compositional skills.</li>
</ul>
<p>
<p>Here we successfully address Fodor and Pylyshyn’s challenge by providing evidence that neural networks can achieve human-like systematicity when optimized for their compositional skills. To do so, we introduce the meta-learning for compositionality (MLC) approach for guiding training through a dynamic stream of compositional tasks. To compare humans and machines, we conducted human behavioural experiments using an&nbsp;instruction learning paradigm. MLC also advances the compositional skills of machine learning systems in several systematic generalization benchmarks. Our results show how a standard neural network architecture, optimized for its compositional skills, can mimic human systematic generalization in a head-to-head comparison. The interpretation grammars that define each episode were randomly generated from a simple meta-grammar.</p>
</p>
<p>
<h2>Episode 3 Scene</h2>
</p>
<p>
<p>The current architecture also lacks a mechanism for emitting new symbols2, although new symbols introduced through the study examples could be emitted through an additional pointer mechanism55. Last, MLC is untested on the full complexity of natural language and on other modalities; therefore, whether it can achieve human-like systematicity, in all respects and from realistic training experience, remains to be determined. Nevertheless, our use of standard transformers will aid MLC in tackling a wider range of problems at scale.</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="304px" alt="meta-conversation"/></p>
<p>
<p>At the event, Zuckerberg also broadened his usual commitment to the metaverse, a fully virtual world, to include augmented reality, which overlays computer generated images on the real world. The company announced an updated version of the smart glasses that it developed with sunglass maker Ray-Ban, in addition to its new VR headset, the Quest 3. Amnesty International has previously highlighted Meta’s contribution to human rights violations against the Rohingya in Myanmar and warned against the recurrence of these harms if Meta’s business model and content-shaping algorithms were not fundamentally reformed.</p>
</p>
<p>
<h2>The Metalinguistic Vocabulary of Natural Languages</h2>
</p>
<p>
<p>Some people may squirm at the prospect of running a new channel, while others will be rubbing their hands at the opportunities. But it&#8217;s fascinating to think about how companies may leverage the metaverse as a customer support channel. Consider how mobile phones have evolved as the go-to medium for customer care. If big tech experts are correct about the metaverse being the successor to mobile, customer service might well become virtual-first and this fuels the need for Conversational AI. The summit is squarely focused on so-called &#8220;frontier AI&#8221; models — in other words, the advanced large language models, or LLMs, like those developed by companies such as OpenAI, Anthropic, and Cohere. Today, already a billion people across the globe message with a business each week on our messaging apps, and this behavior is accelerating globally, with India at the forefront.</p>
</p>
<p>
<ul>
<li>Bayesian approaches enable a modeller to evaluate different representational forms and parameter settings for capturing human behaviour, as specified through the model’s prior45.</li>
<li>So significant meta-discussion about such first-order criticism has arisen.</li>
<li>The 300ms requirement can only happen on a network designed for real-time.</li>
<li>Each step is annotated with the next re-write rules to be applied, and how many times (e.g., 3 × , since some steps have multiple parallel applications).</li>
</ul>
<p>
<p>Finally, each epoch also included an additional 100,000 episodes as a unifying bridge between the two types of <a href="https://www.metadialog.com/">optimization. These</a> bridge episodes revisit the same 100,000 few-shot instruction learning episodes, although with a smaller number of the study examples provided (sampled uniformly from 0 to 14). Thus, for episodes with a small number of study examples chosen (0 to 5, that is, the same range as in the open-ended trials), the model cannot definitively judge the episode type on the basis of the number of study examples.</p>
</p>
<p>
<p>The query input sequence (shown as ‘jump twice after run twice’) is copied and concatenated to each of the m study examples, leading to m separate source sequences (3 shown here). A shared standard transformer encoder (bottom) processes each source sequence to produce latent (contextual) embeddings. The contextual embeddings are marked with the index of their study example, combined with a set union to form a single set of source messages, and passed to the decoder. The standard decoder (top) receives this message from the encoder, and then produces the output sequence for the query.</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="301px" alt="meta-conversation"/></p>
<p>
<p>An internal Meta document from 2020 warned that “current mitigation strategies are not enough” to stop the spread of harmful content on the Facebook platform in Ethiopia. Meta also wants to leverage generative AI to have business accounts respond to customers for purchase and support queries. Meta earned $293 million in Q — with a 53% year-on-year growth  — driven largely due to the WhatsApp Business platform.</p>
</p>
<p>
<h2>Meta-Conversation: How Do We Measure the Efficacy of Coaching?</h2>
</p>
<p>
<p>On Instagram and Facebook, Meta has been pushing short-form video, which  it calls Reels. While that’s helped boost the time spent by users scrolling through the app, Meta’s advertisers are taking a while to get used to the new format. This website is using a security service to protect itself from online attacks.</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="302px" alt="meta-conversation"/></p>
<p>
<p>A, During training, episode a presents a neural network with a set of study examples and a query instruction, all provided as a simultaneous input. The study examples demonstrate how to ‘jump twice’, ‘skip’ and so on with both instructions and corresponding outputs provided as words and text-based action symbols&nbsp;(solid arrows guiding the stick figures), respectively. The query instruction involves compositional use of a word (‘skip’) that is presented only in isolation in the study examples, and no intended output is provided. The network produces a query output that is compared&nbsp;(hollow arrows) with a behavioural target. B, Episode b introduces the next word (‘tiptoe’) and the network is asked to use it compositionally (‘tiptoe backwards around a cone’), and so on for many more training episodes. In this Article, we provide evidence that neural networks can achieve human-like systematic generalization through MLC—an optimization procedure that we introduce for encouraging systematicity through a series  tasks (Fig. 1).</p>
</p>
<p>
<h2>Extended Data Fig. 4 Example meta-learning episode and how it is processed by different MLC variants.</h2>
</p>
<p>
<p>The last rule was the same for each episode and instantiated a form of iconic left-to-right concatenation (Extended Data Fig. 4). Study and query examples (set 1 and 2 in Extended Data Fig. 4) were produced by sampling arbitrary, unique input sequences (length ≤ 8) that can be parsed with the interpretation grammar to produce outputs (length ≤ 8). Output symbols were replaced uniformly at random with a small probability (0.01) to encourage some robustness in the trained decoder. For this variant of MLC training, episodes consisted of a latent grammar based on 4 rules for defining primitives and 3 rules defining functions, 8 possible input symbols, 6 possible output symbols, 14 study examples and 10 query examples. The study examples were presented in shuffled order on each episode. Optimization closely followed the procedure outlined above for the algebraic-only MLC variant.</p>
</p>
<p><a href="https://www.metadialog.com/"><br />
<figure><img src='data:image/jpeg;base64,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' alt='https://www.metadialog.com/' class='aligncenter' style='display:block;margin-left:auto;margin-right:auto;' width='401px'/></figure>
<p></a></p>
<p>
<p>To resolve the debate, and to understand whether neural networks can capture human-like compositional skills, we must compare humans and machines side-by-side, as in this Article and other recent work7,42,43. In our experiments, we found that the most common human responses were algebraic and systematic in exactly the ways that Fodor and Pylyshyn1 discuss. However, people also relied on inductive biases that sometimes support the algebraic solution and sometimes deviate from it; indeed, people are not purely algebraic machines3,6,7. We showed how MLC enables a standard neural network optimized for its compositional skills to mimic or exceed human systematic generalization in a side-by-side comparison.</p>
</p>
<p>
<p>To encourage few-shot inference and composition of meaning, we rely on surface-level word-type permutations for both benchmarks, a simple variant of meta-learning that uses minimal structural knowledge, described in the ‘Machine learning benchmarks’ section of the Methods. These permutations induce changes in word meaning without expanding the benchmark’s vocabulary, to approximate the more naturalistic, continual introduction of new words (Fig. 1). 4 and detailed in the ‘Architecture and optimizer’ section of the Methods, MLC uses the standard transformer architecture26 for memory-based meta-learning.</p>
</p>
<p>
<div style='border: black dotted 1px;padding: 15px;'>
<h3>Matters of the State: Prison transparency tactics; Jackley on Meta lawsuit &#8211; Dakota News Now</h3>
<p>Matters of the State: Prison transparency tactics; Jackley on Meta lawsuit.</p>
<p>Posted: Mon, 30 Oct 2023 09:48:58 GMT [<a href='https://news.google.com/rss/articles/CBMiaGh0dHBzOi8vd3d3LmRha290YW5ld3Nub3cuY29tLzIwMjMvMTAvMzAvbWF0dGVycy1zdGF0ZS1wcmlzb24tdHJhbnNwYXJlbmN5LXRhY3RpY3MtamFja2xleS1tZXRhLWxhd3N1aXQv0gF3aHR0cHM6Ly93d3cuZGFrb3RhbmV3c25vdy5jb20vMjAyMy8xMC8zMC9tYXR0ZXJzLXN0YXRlLXByaXNvbi10cmFuc3BhcmVuY3ktdGFjdGljcy1qYWNrbGV5LW1ldGEtbGF3c3VpdC8_b3V0cHV0VHlwZT1hbXA?oc=5' rel="nofollow">source</a>]</p>
</div>
<p>
<p>This year, we are all set to welcome businesses, partners, and developers for the second edition of Conversations, a global event that is taking place live in Mumbai, India for the first time. I’ve personally encountered a few different variations of the defensive coworker. In one instance, when I finally had the meta-conversation with that person about it, it worked wonders. He acknowledged that yes, he did have a tendency to defend himself, a habit borne from years of winning debate tournaments.</p>
</p>
<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src="data:image/jpeg;base64,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" width="307px" alt="meta-conversation"/></p>
<p>
<p>Read more about <a href="https://www.metadialog.com/">https://www.metadialog.com/</a> here.</p></p>
<div class="fcbk_share"><div class="fcbk_like"><fb:like href="https://www.fisiogymsalerno.it/blog/what-you-need-to-know-about-uk-ai-summit-attendees/" layout="button_count" width="450" show_faces="false" share="true"></fb:like></div></div>]]></content:encoded>
			<wfw:commentRss>https://www.fisiogymsalerno.it/blog/what-you-need-to-know-about-uk-ai-summit-attendees/feed/</wfw:commentRss>
		<slash:comments>0</slash:comments>
		</item>
	</channel>
</rss>
