Inteligência artificial 

Produtividade aumentada Catalisador de inovação. Colaborador criativo. Seja qual for sua visão de IA, a Unisys fornece as soluções, a experiência e as ferramentas para realizar todo o potencial de negócios da sua organização.
Explore

Segurança digital

A Unisys oferece soluções empresariais com segurança integrada para defender seus ativos digitais, combater ameaças, ganhar a confiança do cliente e atender aos padrões de conformidade.
Leia mais

Consultoria

A natureza do trabalho está mudando. Vamos fazer seu negócio evoluir juntos. Prepare sua organização para o futuro com os serviços de consultoria da Unisys e avance como uma entidade digital em primeiro lugar.
Explore

Histórias de clientes

Explore vídeos e histórias em que a Unisys ajudou empresas e governos a melhorar a vida de seus clientes e cidadãos.
Explore

Pesquisa

Embarque em uma jornada rumo a um futuro resiliente com acesso às abrangentes pesquisas da Unisys, desenvolvidas em colaboração com os principais analistas e empresas de pesquisa do setor.
Explore

Centro de recursos

Encontre, compartilhe e explore ativos para apoiar seus principais objetivos operacionais.
Explore

Carreiras

Curiosidade, criatividade e um desejo constante de melhorar. Nossos associados moldam o amanhã indo além do conhecimento especializado para dar vida a soluções.
Explore

Relações com investidores

Somos uma empresa global de soluções tecnológicas dedicada a impulsionar o progresso das principais organizações do mundo.
Explore

Parceiros

Nós colaboramos com um ecossistema de parceiros para fornecer aos nossos clientes produtos e serviços de ponta em muitas das maiores indústrias do mundo.
Explore

Opções de idiomas

Idioma selecionado:

Português

Theme: Innovation beyond boundaries

The Innovation Beyond Boundaries theme invites students to develop groundbreaking solutions that leverage the power of interconnected systems and collective intelligence and advanced AI technologies. This theme encourages participants to think holistically, combining open innovation principles with cutting-edge algorithmic and AI-driven approaches to address complex, real-world challenges.

By emphasizing collaboration, cross-disciplinary partnerships, and the synergy between human creativity and technological advancements, this theme creates an environment where innovative ideas can flourish and evolve. Participants are encouraged to explore how different elements within an ecosystem can work together to create sustainable, scalable, and impactful solutions.

We encourage you to accentuate your imagination with the least restrictions. Build the ideas that you believe in! We invite all ideas across all domains, where you could solve some compelling problems with your innovative solutions.

Key aspects of this theme include:

  1. Open Collaboration: Embracing diverse perspectives and expertise from various domains to co-create solutions.
  2. Algorithmic: Leveraging advanced algorithms and data-driven approaches to optimize and enhance ecosystem functions.
  3. Systemic Thinking: Addressing challenges by considering the interconnections and interdependencies within complex systems.
  4. Adaptive Technologies: Developing flexible and responsive technologies that can evolve with changing ecosystem needs.
  5. AI/ML: Innovative use of data preprocessing, feature engineering for supervised, unsupervised, and reinforcement learning.

AI as a Catalyst for Innovation

AI, Machine Learning (ML), and Generative AI are transforming innovation across industries. AI enables intelligent automation and decision-making, while ML leverages data to uncover patterns, predict outcomes, and optimize processes. Generative AI, including large language models and retrieval-augmented generation, creates new content and solutions. Together, these technologies drive advancements in areas like image recognition, speech-to-text, predictive analysis, and adaptive systems. By combining creativity with technical expertise, organizations can address complex challenges and deliver impactful, scalable solutions in healthcare, finance, education, sustainability, and beyond.

Participants are encouraged to:

  • Experiment with datasets, train and fine-tune models, and explore synergies between Generative AI and Classical AI techniques.
  • Apply AI to real-world challenges in domains such as healthcare, finance, education, sustainability, and beyond.

Illustrative AI technologies and approaches include:

  • Generative AI (LLMs, Retrieval-Augmented Generation, PEFT techniques)
  • Machine Learning, Deep Learning, Neural Networks
  • Vision and Speech technologies (Image Recognition, Text-to-Speech, Bi-directional Voice Translation)
  • AI-Native Development Platforms: Generative AI tools accelerate innovation for small teams.
  • AI Supercomputing Platforms: High-performance computing powers large AI models and analytics.
  • Confidential Computing: Trusted execution environments (TEEs) secure sensitive data in use.
  • Domain-Specific Language Models (DSLMs): Industry-tuned AI models deliver higher accuracy for regulated sectors.
  • Physical AI: Robots, drones, and smart machines bring AI into real-world operations.
  • Digital Provenance: Tracks and verifies data and content origins for trust and transparency.

Examples of areas where you can innovate:

  1. Smart and Sustainable Cities:
    • Integrated urban systems combining IoT, AI, and community engagement
    • Collaborative platforms for citizen-driven urban planning and development
    • Integrate IoT, AI, and ML to optimize urban systems, enable citizen-driven planning, and enhance resource management.
  2. Health Ecosystems:
    • Interconnected healthcare networks leveraging telemedicine, AI diagnostics, and community health initiatives
    • Collaborative research platforms for accelerating medical discoveries and treatments
    • AI-powered diagnostics, telemedicine, and collaborative research platforms.
  3. Circular Economy Solutions:
    • Ecosystem-wide approaches to waste reduction, resource optimization, and sustainable production
    • Collaborative platforms for sharing economy and resource redistribution
    • AI-driven waste reduction and resource optimization
  4. Education Ecosystems:
    • Adaptive learning environments combining AI, peer-to-peer learning, and industry partnerships for personalized education.
    • Collaborative knowledge creation and sharing platforms across institutions and borders
  5. Financial Inclusion Ecosystems:
    • Integrated fintech solutions combining blockchain, AI, and community-based financial models
    • Collaborative risk assessment and credit systems for underserved populations
    • AI-enhanced fintech solutions and ML-driven risk assessment for underserved populations.
  6. Environmental Conservation Networks:
    • Ecosystem monitoring and preservation using AI, citizen science, and collaborative governance models
    • Integrated systems for climate change mitigation and adaptation strategies
    • AI-based ecosystem monitoring and climate change mitigation.
  7. Supply Chain Ecosystems:
    • Transparent and efficient supply networks using blockchain, IoT, and collaborative planning algorithms
    • Ecosystem-wide approaches to ethical sourcing and sustainable production
  8. Innovation Hubs and Living Labs:
    • Collaborative spaces integrating academia, industry, and community for real-world problem-solving
    • Ecosystem simulation platforms for testing and refining innovative solutions
  9. Disaster Resilience Networks:
    • Integrated early warning systems combining AI predictions, IoT sensors, and community response networks
    • Collaborative platforms for resource allocation and coordination during crisis situations
    • AI-driven early warning systems and resource coordination platforms.
  10. Language and Cultural Preservation Ecosystems:
    • Collaborative platforms for documenting and revitalizing endangered languages and cultures
    • AI-powered translation and cultural exchange systems fostering global understanding
  11. AI Development platform for legacy systems
    • Automate data migration and transformation from outdated systems.
    • Facilitate gradual modernization through modular AI components
    • Enable integration of legacy applications with modern AI services.