New board members named and enhancements to the governance structure introduced
Artificial Intelligence (AI) is a rapidly expanding field with new daily applications. However, ensuring these models’ accuracy and dependability continues to be a difficult task. Conventional AI assessment techniques are frequently cumbersome and require extensive manual setup, which impedes ongoing development and disrupts developers’ workflows. There is no set framework, application, or set of rules…
The popularity of AI has skyrocketed in the past few years, with new avenues being opened up with the rise in the use of large language models (LLMs). Having knowledge of AI has now become quite essential as recruiters are actively looking for candidates with a strong foundation in the same. This article lists the…
In Large language models(LLM), developers and researchers face a significant challenge in accurately measuring and comparing the capabilities of different chatbot models. A good benchmark for evaluating these models should accurately reflect real-world usage, distinguish between different models’ abilities, and regularly update to incorporate new data and avoid biases. Traditionally, benchmarks for large language models,…
Traditional methods for training vision-language models (VLMs) often require the centralized aggregation of vast datasets, which raises concerns regarding privacy and scalability. Federated learning offers a solution by allowing models to be trained across a distributed network of devices while keeping data locally but adapting VLMs to this framework presents unique challenges. To address these…
Reinforcement learning (RL) is a type of learning approach where an agent interacts with an environment to collect experiences and aims to maximize the reward received from the environment. This usually involves a looping process of experience collecting and enhancement, and due to the requirement of policy rollouts, it is called online RL. Both on-policy…