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AI analysis unveils the most effective email subject lines for the holidays
The Transform Technology Summits start October 13th with Low-Code/No Code: Enabling Enterprise Agility. Retailers are already preparing for a 2021 holiday ecommerce season that mirrors last year. A recent survey by Radial found that 65% of consumers plan to spend the same as or even more than last year. Radial itself plans to hire 27,000 seasonal workers ahead of the shopping season to fulfill ecommerce orders. But to snag a share of that market, retailers will need to use the right email marketing language and tactics, according to a new report from AI-powered copywriting platform Phrasee.
Looking for AI Success? It's All About the Data
As the number of industries integrating artificial intelligence (AI) into their operations continues to grow, more organizations are scrutinizing their AI system design workflows, including the roles of modeling and data. Within the workflows, organizations are finding and confirming that starting with good data plays the largest role in producing accurate insights. That is because when the data is fed into a model, it shapes how the model analyzes, learns, and arrives at its decisions. If that model is forced to analyze substandard data, its insights will be substandard. Conversely, if the model is fed the most accurate and useful data available, its insights will be useful.
Mobile Robots Market Research Report: Market size, Industry outlook, Market Forecast, Demand Analysis, Market Share, Market Report 2021-2026
Mobile Robots Market is forecast to reach $54.2 billion by 2026, growing at a CAGR 20.0% from 2021 to 2026. Autonomous Mobile robot is an integration of artificial intelligence with physical robots, and has a locomotive feature, which ensures that they have the capacity to navigate around physically. They are powered by fleet management software and use sensors and other gears to identify and understand their surroundings. Robot technology is experiencing increased acceptance in different commercial and industrial environments. Hospitals, for example, are now using autonomous mobile robots to move supplies and monitor patient health.
The AI Revolution and Strategic Competition with China - OPINION
Artificial intelligence is going to reorganize the world and change the course of human history. With China increasingly using technology to usher in a new form of authoritarianism, the world's democracies must come together and stand up for their own values and strategic interests. The world is only starting to grapple with how profound the artificial-intelligence revolution will be. AI technologies will create waves of progress in critical infrastructure, commerce, transportation, health, education, financial markets, food production, and environmental sustainability. Successful adoption of AI will drive economies, reshape societies, and determine which countries set the rules for the coming century.
Here's why Elon Musk's robot is electrified neoliberalism Van Badham
A few weeks ago, Elon Musk announced that his company, Tesla, plans to have a humanoid robot prototype ready next year. The intention is to create a 56kg machine that isn't "super expensive" to retail. Oh, yes: the commercial application of the planned robot is absolutely to replace human jobs – the ones that Musk himself finds "boring". Some argued the announcement was a troll. It wasn't just that Musk's speech was preceded by a dancer grooving to dubstep in costume as the robot, or that robotics companies with more skin in the long game than Tesla say the technology is nowhere near what Musk's proposing.
COVID-19: quality of life and artificial intelligence
Bongs Lainjo Cybermatic International, Montréal, QC, Canada Correspondence: Bongs Lainjo Email [email protected] Abstract: The objective of the study is to conduct an exploratory review of the Covid-19 pandemic by focusing on the theme of Covid-19 pandemic morbidity and mortality, considering the dynamics of artificial intelligence and quality of life (QOL). The methods used in this research paper include a review of literature, anecdotal evidence, and reports on the morbidity of COVID-19, including the scope of its devastating effects in different countries such as the US, Africa, UK, China, and Brazil, among others. The findings of this study suggested that the devastating effects of the coronavirus are felt across different vulnerable populations. These include the elderly, front-line workers, marginalized communities, visible minorities, and more. The challenge in Africa is especially daunting because of inadequate infrastructure, and financial and human resources, among others. Besides, AI technology is being successfully used by scientists to enhance the development process of vaccines and drugs. However, its usage in other stages of the pandemic has not been adequately explored. Ultimately, it has been concluded that the effects of the Covid-19 are producing unprecedented and catastrophic outcomes in many countries. With a few exceptions, the common and current intervention approach is driven by many factors, including the compilation of relevant reliable and compelling data sets. On a positive note, the compelling trailblazing and catalytic contributions of AI towards the rapid discovery of COVID-19 vaccines are a good indication of future technological innovations and their effectiveness. History has a way of reminding us that while the good times are great, a business as usual comes with many unforeseen risks and challenges. On a positive note, stress, anxiety, and other mental health issues have turned around many mindsets in certain groups. There are now significant and unprecedented levels of compassion, empathy, and more, originating from many populations. One such instance, wherein significant challenges were posed to the community is at the time of the First World War. Besides, there was the Spanish plague, there was the second world war and for the last 60 plus years, we have had to live in a world of misgivings; ranging from populism to political unrests and instability in several parts of the world, primarily the Middle East and some parts of Asia.
mMARCO: A Multilingual Version of MS MARCO Passage Ranking Dataset
Bonifacio, Luiz Henrique, Campiotti, Israel, Lotufo, Roberto, Nogueira, Rodrigo
The MS MARCO ranking dataset has been widely used for training deep learning models for IR tasks, achieving considerable effectiveness on diverse zero-shot scenarios. However, this type of resource is scarce in other languages than English. In this work we present mMARCO, a multilingual version of the MS MARCO passage ranking dataset comprising 8 languages that was created using machine translation. We evaluated mMARCO by fine-tuning mono and multilingual re-ranking models on it. Experimental results demonstrate that multilingual models fine-tuned on our translated dataset achieve superior effectiveness than models fine-tuned on the original English version alone. Also, our distilled multilingual re-ranker is competitive with non-distilled models while having 5.4 times fewer parameters. The translated datasets as well as fine-tuned models are available at https://github.com/unicamp-dl/mMARCO.git.
TNNT: The Named Entity Recognition Toolkit
Seneviratne, Sandaru, Méndez, Sergio J. Rodríguez, Zhang, Xuecheng, Omran, Pouya G., Taylor, Kerry, Haller, Armin
Extraction of categorised named entities from text is a complex task given the availability of a variety of Named Entity Recognition (NER) models and the unstructured information encoded in different source document formats. Processing the documents to extract text, identifying suitable NER models for a task, and obtaining statistical information is important in data analysis to make informed decisions. This paper presents TNNT, a toolkit that automates the extraction of categorised named entities from unstructured information encoded in source documents, using diverse state-of-the-art Natural Language Processing (NLP) tools and NER models. TNNT integrates 21 different NER models as part of a Knowledge Graph Construction Pipeline (KGCP) that takes a document set as input and processes it based on the defined settings, applying the selected blocks of NER models to output the results. The toolkit generates all results with an integrated summary of the extracted entities, enabling enhanced data analysis to support the KGCP, and also, to aid further NLP tasks.
Phy-Q: A Benchmark for Physical Reasoning
Xue, Cheng, Pinto, Vimukthini, Gamage, Chathura, Nikonova, Ekaterina, Zhang, Peng, Renz, Jochen
Humans are well-versed in reasoning about the behaviors of physical objects when choosing actions to accomplish tasks, while it remains a major challenge for AI. To facilitate research addressing this problem, we propose a new benchmark that requires an agent to reason about physical scenarios and take an action accordingly. Inspired by the physical knowledge acquired in infancy and the capabilities required for robots to operate in real-world environments, we identify 15 essential physical scenarios. For each scenario, we create a wide variety of distinct task templates, and we ensure all the task templates within the same scenario can be solved by using one specific physical rule. By having such a design, we evaluate two distinct levels of generalization, namely the local generalization and the broad generalization. We conduct an extensive evaluation with human players, learning agents with varying input types and architectures, and heuristic agents with different strategies. The benchmark gives a Phy-Q (physical reasoning quotient) score that reflects the physical reasoning ability of the agents. Our evaluation shows that 1) all agents fail to reach human performance, and 2) learning agents, even with good local generalization ability, struggle to learn the underlying physical reasoning rules and fail to generalize broadly. We encourage the development of intelligent agents with broad generalization abilities in physical domains.
E-Commerce Promotions Personalization via Online Multiple-Choice Knapsack with Uplift Modeling
Albert, Javier, Goldenberg, Dmitri
Promotions and discounts are essential components of modern e-commerce platforms, where they are often used to incentivize customers towards purchase completion. Promotions also affect revenue and may incur a monetary loss that is often limited by a dedicated promotional budget. We study the Online Constrained Multiple-Choice Promotions Personalization Problem, where the optimization goal is to select for each customer which promotion to present in order to maximize purchase completions, while also complying with global budget limitations. Our work formalizes the problem as an Online Multiple Choice Knapsack Problem and extends the existent literature by addressing cases with negative weights and values. We provide a real-time adaptive method that guarantees budget constraints compliance and achieves above 99.7% of the optimal promotional impact on various datasets. Our method is evaluated on a large-scale experimental study at one of the leading online travel platforms in the world.