Whole-body pose estimation is an integral aspect in enhancing the capabilities of AI systems that center around human interaction. It plays a significant role in various applications such as human-computer interaction, avatar animation, and the film industry. Despite the progression of lightweight tools like MediaPipe that deliver good real-time performance, the accuracy still requires further…
The field of robotics has seen significant changes with the integration of generative methods such as Large Language Models (LLMs). Such advancements are promoting the development of systems that can autonomously navigate and adapt to diverse environments. Specifically, the application of LLMs in the design and control processes of robots signifies a massive leap forward…
Robotic technology is quickly evolving, with large language models (LLMs) driving significant advances in the sector. These generative methods allow for the creation of intricate systems capable of independent navigation and adaptation to various settings, improving efficiency and the ability to complete complex tasks.
Designing optimal robot structures is a significant challenge due to the extensive…
Conversational Recommender Systems (CRS) are systems that leverage advanced machine learning techniques to offer users highly personalized suggestions through interactive dialogues. Unlike traditional recommendation systems that present pre-determined options, CRS allows users to dynamically state and modify their preferences, leading to an intuitive and engaging user experience. These systems are particularly relevant for small and…
Artificial intelligence (AI) has significantly impacted traditional research, taking it to new heights. However, its application is yet to be fully realized in areas such as causal reasoning. Training AI models in causal reasoning is a crucial aspect of AI, with traditional methods heavily dependent on huge datasets containing explicitly labeled causal relationships. These datasets…
The OpenGPT-X team has launched the European Large Language Models (LLM) Leaderboard, a key step forward in the creation and assessment of multilingual language models. The project began in 2022 with backing from the BMWK and the support of TU Dresden and a 10-partner consortium comprised of numerous sectors. The primary target is to expand…
Google researchers have been investigating how large Transformer models can be efficiently used for large natural language processing projects. Although these models have revolutionised the field, they require careful planning and memory optimisations. The team have focused on creating techniques for multi-dimensional positioning that can work for TPU v4 slices. In turn, these have been…
GPT-4, the latest version of OpenAI’s Generative Pre-trained Transformer models, breaks new ground with its array of advanced capabilities that allow it to perform tasks unattainable by its predecessor, GPT-3.5. These enhancements span various domains and include ten main functions, which underscore GPT-4's potential and versatility.
Firstly, GPT-4 integrates advanced multimodal functionalities enabling the simultaneous processing…
Web data collection, monitoring, and maintenance can prove daunting, particularly when dealing with large volumes of data. Traditional methods, through inadequate handling of pagination, dynamic content, bot detection, and site modifications, can compromise data quality and availability. Typically, companies opt to either build an in-house technical team or outsource to a lower-cost country. While each…
Improving Major Language Models (LLMs) on CPUs: Strategies for Increased Precisions and Performance.
Large Language Models (LLMs), particularly those built on the Transformer architecture, have recently achieved significant technological advances. These models have displayed remarkable proficiency in understanding and generating human-like text, bringing a significant impact to various Artificial Intelligence (AI) applications. However, implementing these models in environments with limited resources can be challenging, especially in instances where…
Evaluating the performance of large language model (LLM) inference systems comes with significant difficulties, especially when using conventional metrics. Existing measurements such as Time To First Token (TTFT), Time Between Tokens (TBT), normalized latency and Time Per Output Token (TPOT) fail to provide a complete picture of the user experience during actual, real-time interactions. Such…
Large language model (LLM) inference systems have become vital tools in the field of AI, with applications ranging from chatbots to translators. Their performance is crucial in ensuring optimal user interaction and overall experience. However, traditional metrics used for evaluation, such as Time To First Token (TTFT) and Time Between Tokens (TBT), have been found…