The increase in the volume and variety of data has increased the reliance of data scientists on shared computational resources, either in-house or obtained via cloud providers, to execute machine learning and artificial intelligence programs. This, in turn, has created challenges of exploiting available resources to execute such "cognitive workloads" quickly and effectively to gather the needed knowledge and data insight. A common challenge in machine learning is knowing when to stop model building. This is often exacerbated in the presence of big data as a trade off between the cost of producing the model (time, volume of training data, resources utilised) and its general performance. Whilst there are many tools and application stacks avai...
International audienceThe most popular framework for distributed training of machine learning models...
Traditional resource management techniques that rely on simple heuristics often fail to achieve pred...
Large-scale machine learning models are routinely trained in a distributed fashion due to their incr...
Training large, complex machine learning models such as deep neural networks with big data requires ...
Despite major advances in recent years, the field of Machine Learning continues to face research and...
Distributed machine learning is becoming increasingly popular for large scale data mining on large s...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
In the era of Big Data, machine learning has taken on a whole new role. With the amount of data pres...
Machine learning (ML) has become a powerful building block for modern services, scientific endeavors...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
Machine learning (ML) is prevalent in today’s world. Starting from the need to improve artificial in...
Distributed machine learning has typically been approached from a data parallel perspective, where b...
Stemming from the growth and increased complexity of computer vision, natural language processing, a...
In recent years, proficiency in data science and machine learning (ML) became one of the most reques...
Machine learning algorithms have shown great promises in many applications, the increase of data has...
International audienceThe most popular framework for distributed training of machine learning models...
Traditional resource management techniques that rely on simple heuristics often fail to achieve pred...
Large-scale machine learning models are routinely trained in a distributed fashion due to their incr...
Training large, complex machine learning models such as deep neural networks with big data requires ...
Despite major advances in recent years, the field of Machine Learning continues to face research and...
Distributed machine learning is becoming increasingly popular for large scale data mining on large s...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
In the era of Big Data, machine learning has taken on a whole new role. With the amount of data pres...
Machine learning (ML) has become a powerful building block for modern services, scientific endeavors...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
Machine learning (ML) is prevalent in today’s world. Starting from the need to improve artificial in...
Distributed machine learning has typically been approached from a data parallel perspective, where b...
Stemming from the growth and increased complexity of computer vision, natural language processing, a...
In recent years, proficiency in data science and machine learning (ML) became one of the most reques...
Machine learning algorithms have shown great promises in many applications, the increase of data has...
International audienceThe most popular framework for distributed training of machine learning models...
Traditional resource management techniques that rely on simple heuristics often fail to achieve pred...
Large-scale machine learning models are routinely trained in a distributed fashion due to their incr...