Remove Explainability Remove Explainable AI Remove NLP
article thumbnail

DeepSeek vs. OpenAI: The Battle of Open Reasoning Models

Unite.AI

This shift has increased competition among major AI companies, including DeepSeek, OpenAI, Google DeepMind , and Anthropic. Each brings unique benefits to the AI domain. DeepSeek focuses on modular and explainable AI, making it ideal for healthcare and finance industries where precision and transparency are vital.

OpenAI 147
article thumbnail

AI Paves a Bright Future for Banking, but Responsible Development Is King

Unite.AI

AI chatbots, for example, are now commonplace with 72% of banks reporting improved customer experience due to their implementation. Integrating natural language processing (NLP) is particularly valuable, allowing for more intuitive customer interactions.

professionals

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

Enhancing AI Transparency and Trust with Composite AI

Unite.AI

These techniques include Machine Learning (ML), deep learning , Natural Language Processing (NLP) , Computer Vision (CV) , descriptive statistics, and knowledge graphs. Composite AI plays a pivotal role in enhancing interpretability and transparency. Combining diverse AI techniques enables human-like decision-making.

article thumbnail

How to responsibly scale business-ready generative AI

IBM Journey to AI blog

Possibilities are growing that include assisting in writing articles, essays or emails; accessing summarized research; generating and brainstorming ideas; dynamic search with personalized recommendations for retail and travel; and explaining complicated topics for education and training. What is generative AI?

article thumbnail

The importance of diversity in AI isn’t opinion, it’s math

IBM Journey to AI blog

Additionally, the models themselves are created from limited architectures: “Almost all state-of-the-art NLP models are now adapted from one of a few foundation models, such as BERT, RoBERTa, BART, T5, etc. How are you making your model explainable? Typical questions include: What is your model’s use case?

Algorithm 247
article thumbnail

InstructAV: Transforming Authorship Verification with Enhanced Accuracy and Explainability Through Advanced Fine-Tuning Techniques

Marktechpost

Authorship Verification (AV) is critical in natural language processing (NLP), determining whether two texts share the same authorship. This lack of explainability is a gap in academic interest and a practical concern. This is a critical limitation as the demand for explainable AI grows.

article thumbnail

How to use foundation models and trusted governance to manage AI workflow risk

IBM Journey to AI blog

Foundation models: The power of curated datasets Foundation models , also known as “transformers,” are modern, large-scale AI models trained on large amounts of raw, unlabeled data. The development and use of these models explain the enormous amount of recent AI breakthroughs.

Metadata 220