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How Apoidea Group enhances visual information extraction from banking documents with multimodal models using LLaMA-Factory on Amazon SageMaker HyperPod

AWS Machine Learning Blog

The banking industry has long struggled with the inefficiencies associated with repetitive processes such as information extraction, document review, and auditing. By using cutting-edge generative AI and deep learning technologies, Apoidea has developed innovative AI-powered solutions that address the unique needs of multinational banks.

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Top 8 Machine Learning Algorithms

Data Science Dojo

Recurrent Neural Networks (RNNs): These powerful deep learning models can learn complex patterns and long-term dependencies within time series data, making them suitable for more intricate forecasting tasks. Clustering Algorithms: Clustering algorithms can group data points with similar features. shirt, pants).

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How Deltek uses Amazon Bedrock for question and answering on government solicitation documents

AWS Machine Learning Blog

Question and answering (Q&A) using documents is a commonly used application in various use cases like customer support chatbots, legal research assistants, and healthcare advisors. In this collaboration, the AWS GenAIIC team created a RAG-based solution for Deltek to enable Q&A on single and multiple government solicitation documents.

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Efficiently train models with large sequence lengths using Amazon SageMaker model parallel

AWS Machine Learning Blog

These longer sequence lengths allow models to better understand long-range dependencies in text, generate more globally coherent outputs, and handle tasks requiring analysis of lengthy documents. More details about FP8 can be found at FP8 Formats For Deep Learning. supports the Llama 3.1 (and

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Reduce energy consumption of your machine learning workloads by up to 90% with AWS purpose-built accelerators

Flipboard

For reference, GPT-3, an earlier generation LLM has 175 billion parameters and requires months of non-stop training on a cluster of thousands of accelerated processors. The Carbontracker study estimates that training GPT-3 from scratch may emit up to 85 metric tons of CO2 equivalent, using clusters of specialized hardware accelerators.

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Amazon SageMaker model parallel library now accelerates PyTorch FSDP workloads by up to 20%

AWS Machine Learning Blog

As a result, machine learning practitioners must spend weeks of preparation to scale their LLM workloads to large clusters of GPUs. To learn more about the SageMaker model parallel library, refer to SageMaker model parallelism library v2 documentation. You can also refer to our example notebooks to get started.

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An Important Guide To Unsupervised Machine Learning

Smart Data Collective

With that being said, let’s have a closer look at how unsupervised machine learning is omnipresent in all industries. What Is Unsupervised Machine Learning? If you’ve ever come across deep learning, you might have heard about two methods to teach machines: supervised and unsupervised. Source ].