Skip links

Generative AI

Unleash Creativity and Enhance Productivity

Generative AI is a revolutionary branch of Artificial Intelligence that has gained significant attention for its ability to create new content, ranging from text and images to music and even complex simulations.

Leveraging advanced machine learning models, Generative AI opens up new possibilities for creativity, business innovation, and operational efficiency across various industries.

Essence

Functioning

Models

Applications

Challenges

Essence

Functioning

Models

Applications

Challenges

What is Generative AI?

Generative AI refers to the use of AI algorithms to generate new content based on pre-existing training data. Traditional AI typically focuses on recognizing patterns or making predictions. Generative AI, instead, creates novel outputs replicating patterns learned from input data, producing unique content that mimics human creativity.

How it works

Generative AI models are trained on massive datasets to learn underlying  patterns and structures. A key breakthrough was the paper "Attention is all you need" (Vaswani et al., 2018) which introduced self-attention mechanisms in deep learning, paving the way to transformers. Transformer architectures, largely used in Natural Language Processing, are categorized based on their inner workings, and each category is suited for specific tasks.

1
Encoder-Decoder Transformers

Encoder-decoder transformers employ self-attention mechanisms both when processing the input and when generating the output. This enables the model to assign each token a different levels of relevance based on their context. This mechanism is fundamental for capturing dependencies and relationships among words.

2
Encoder-Only Transformers

Encoder-only transformers focus on the comprehension of the input. They show unprecedented ability in grasping the meaning of a sentence, so they are typically used in tasks that require language understanding, such as NER, Sentiment Analysis, and so on.

3
Decoder-Only Transformers

Decoder-only transformers are the best in class when it comes to language generation and creativity. Their self-attention mechanisms are oriented toward the output generation phase, so they are better suited for tasks such as conversation, summarization or content generation.

Generative AI Models

AI Models may differ according to the type of content they can handle and generate.

Potential Applications

Automation and Business Support

AI-driven systems streamline business operations by generating reports, analyzing data through natural language queries, and optimizing workflows with automated task management.

Research and Information Synthesis

Advanced AI enhances search capabilities, generates structured responses to complex queries, summarizes lengthy texts, and monitors news for topic-specific press reviews.

Education and Learning Aid

AI-powered virtual tutors assist with concept explanations, content creation, and student feedback, while also supporting language learning through translation and interactive practice.

Writing and Content Creation

Automated writing tools refine text formatting, generate structured content, and produce personalized emails for business communication and customer service.

 

Challenges and Ethical Considerations

Discover more aboutGenerative AI

LLM

More than just a buzzword, LLMs are a powerful tool used for a vast array of scopes and applications.

RAG

A state-of-the-art approach to improve insights extraction and information retrieval techniques.

NLQ

An innovative and immediate way to access and interact with structured data using natural language.

AI Orchestrator

An architecture that enables the seamless integration of Generative AI into business applications.