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Researchers from Fudan University and Shanghai AI Lab Introduces DOLPHIN: A Closed-Loop Framework for Automating Scientific Research with Iterative Feedback

Marktechpost

Fudan University and the Shanghai Artificial Intelligence Laboratory have developed DOLPHIN, a closed-loop auto-research framework covering the entire scientific research process. Experiments proceed iteratively, with results categorized as improvements, maintenance, or declines. Dont Forget to join our 65k+ ML SubReddit.

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LightAutoML: AutoML Solution for a Large Financial Services Ecosystem

Unite.AI

It was in 2014 when ICML organized the first AutoML workshop that AutoML gained the attention of ML developers. A majority of these frameworks implement a general purpose AutoML solution that develops ML-based models automatically across different classes of applications across financial services, healthcare, education, and more.

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Prioritizing employee well-being: An innovative approach with generative AI and Amazon SageMaker Canvas

AWS Machine Learning Blog

Solution overview SageMaker Canvas brings together a broad set of capabilities to help data professionals prepare, build, train, and deploy ML models without writing any code. For Problem type , select Classification. Then we train, build, test, and deploy the model using SageMaker Canvas, without writing any code. Choose Create.

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Hosting ML Models on Amazon SageMaker using Triton: XGBoost, LightGBM, and Treelite Models

AWS Machine Learning Blog

With the ability to solve various problems such as classification and regression, XGBoost has become a popular option that also falls into the category of tree-based models. SageMaker provides single model endpoints , which allow you to deploy a single machine learning (ML) model against a logical endpoint.

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Use custom metadata created by Amazon Comprehend to intelligently process insurance claims using Amazon Kendra

AWS Machine Learning Blog

The custom metadata helps organizations and enterprises categorize information in their preferred way. The insurance provider receives payout claims from the beneficiary’s attorney for different insurance types, such as home, auto, and life insurance. Custom classification is a two-step process.

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Build an image-to-text generative AI application using multimodality models on Amazon SageMaker

AWS Machine Learning Blog

For instance, in ecommerce, image-to-text can automate product categorization based on images, enhancing search efficiency and accuracy. CLIP model CLIP is a multi-modal vision and language model, which can be used for image-text similarity and for zero-shot image classification.

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FlashSigmoid: A Hardware-Aware and Memory-Efficient Implementation of Sigmoid Attention Yielding a 17% Inference Kernel Speed-Up over FlashAttention-2 on H100 GPUs

Marktechpost

In supervised image classification and self-supervised learning, there’s a trend towards using richer pointwise Bernoulli conditionals parameterized by sigmoid functions, moving away from output conditional categorical distributions typically parameterized by softmax. If you like our work, you will love our newsletter.