[{"data":1,"prerenderedAt":147},["ShallowReactive",2],{"person-900d3d71-f017-446f-8cc8-b4e9fc69cef3":3},{"success":4,"person":5,"request":143},true,{"lastName":6,"role":7,"name":8,"description":9,"_id":10,"designation":7,"id":7,"email":11,"url":7,"createDate":12,"filiation":13,"slugs":14,"articles":17},"Oliveira","","Fernando A.",{},"900d3d71-f017-446f-8cc8-b4e9fc69cef3","fernando.alvarus@gmail.com","2025-12-17T00:19:08-03:00","Escola Superior de Desenho Industrial da UERJ",[15,16],"fernando-a-oliveira","oliveira-fernando-a",[18],{"parent":19,"metaData":20,"updateDate":12,"data":22,"langs":31,"_id":34,"contributors":35,"contributorsIds":62,"type":63,"typeData":64,"status":139,"download":140,"slugs":141,"slug":142},"1ab1f6ea-e043-44d8-a7ab-1bd0d96c1c82",{"updateDate":7,"createDate":21,"deleteDate":7},1765941548,{"secondary":23,"primary":27},{"keywords":24,"excerpt":25,"title":26},"\u003Cp>artificial intelligence, explainable artificial intelligence, neural networks\u003C/p>","Launched in November 2022, ChatGPT made an artificial intelligence (AI) tool accessible to the public whose rapid popularity has shown the potential to change the way we act in various areas of knowledge, despite not being completely reliable and still making mistakes. These systems requires a large amount of data to be instructed, and it not possible to access the process completely, which gave rise to the expression \"black-box\". Thus, the introduction of Explainable Artificial Intelligence (XAI), where the machine reveals these processes, establishes a new paradigm. This article is based on the belief that design, due to its epistemological nature, plays a fundamental role in this approach. The very design of AI models was based on visualization techniques, corroborating the de","Towards Explainable Artificial Intelligence: Evolution of AI Models and Their Visualizations",{"keywords":28,"excerpt":29,"title":30},"\u003Cp>inteligência artificial, inteligência artificial explicável, redes neurais\u003C/p>","Lançado em novembro de 2022, o ChatGPT tornou acessível ao público uma ferramenta de inteligência artificial (IA) cuja rápida popularidade mostrou potencial de mudar a forma de agir em várias áreas do conhecimento, apesar de não ser totalmente confiável e ainda cometer erros. Para que estes sistemas sejam instruídos, é necessária grande quantidade de dados, e não tem sido possível acessar o processo completamente, o que deu origem a expressão \"caixa-preta\". Assim, a introdução de uma Inteligência Artificial Explicável (IAX), onde a máquina revela estes processos, estabelece novo paradigma. Este artigo parte da crença que o design, por sua natureza epistemológica, tem papel fundamental nessa abordagem. A própria concepção de modelos de IA apoiou-se em técnicas de visualização, corroborando a ideia da aderência do design ao tema. Uma revisão da literatura, na parte final deste artigo, aponta para oportunidade da produção de conteúdo acadêmico relacionando IA e design.","A Caminho de uma Inteligência Artificial Explicável: Evolução dos Modelos de Ia e de Suas Visualizações",[32,33],"primary","secondary","9ce59100-d4cf-4d54-831c-658a51b7513d",[36,42,52],{"id":7,"name":8,"lastName":6,"email":11,"designation":7,"description":37,"role":7,"_id":10,"createDate":38,"filiation":13,"slugs":39,"url":7,"path":40,"lastmodified":41,"objectID":10},{},"2025-12-17T03:19:08.243Z",[15,16],"people/900d3d71-f017-446f-8cc8-b4e9fc69cef3",1765941548243,{"id":7,"name":43,"lastName":44,"email":45,"designation":7,"description":46,"role":7,"_id":47,"createDate":38,"filiation":13,"slugs":48,"url":7,"path":51,"lastmodified":41,"objectID":47},"Almir","Mirabeau","amirabeau@esdi.uerj.br",{},"f869a7e1-1d70-45bd-a1d5-66acbc48c35c",[49,50],"almir-mirabeau","mirabeau-almir","people/f869a7e1-1d70-45bd-a1d5-66acbc48c35c",{"id":7,"name":53,"lastName":54,"email":55,"designation":7,"description":56,"role":7,"_id":57,"createDate":38,"filiation":13,"slugs":58,"url":7,"path":61,"lastmodified":41,"objectID":57},"André Soares","Monat","andresmonat@yahoo.com.br",{},"b85f78fc-7c29-459b-b11f-886ac3346d80",[59,60],"andre-soares-monat","monat-andre-soares","people/b85f78fc-7c29-459b-b11f-886ac3346d80",[10,47,57],"article",{"startPage":65,"file":66,"references":69,"endPage":136,"track":137,"doi":138},3520,{"fullpath":67,"name":68},"https://storage.googleapis.com/memoria-ped.appspot.com/articles%2F15_pd_design_2024%2F16674_10186.pdf","16674_10186.pdf",[70,73,76,79,82,85,88,91,94,97,100,103,106,109,112,115,118,121,124,127,130,133],{"id":71,"label":72},"9dfdb3d8-8826-423b-9b71-31324d201da3","\u003Cp>Applied AI Letters, Special Issue: DARPA's \u003Cstrong>Explainable Artificial Intelligence (XAI) Program\u003C/strong> - Volume2, Issue4, dezembro de 2021. https://doi.org/10.1002/ail2.15.\u003C/p>",{"id":74,"label":75},"ccc5c589-66a7-4671-b356-74e9c73e1c32","\u003Cp>ANDRADE, Patrícia Santos. \u003Cstrong>Sistemas híbridos neuro simbólicos, estudo e implementação\u003C/strong>. 104f. 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