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4 Ways Banks Can Hyper-Personalize Customer Experiences at Scale

SharpenCX

Banks and credit unions are no exception here. Banks have long been struggling to keep up with digital customer experience expectations. In a world where digital trends and mobile apps are the norm, many banks are still playing catch up. It’s time for banks to take their customer experience to the next level.

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An Ultimate Speech Analytics Guide to Improve Sales and Customer Service

JustCall

Speech analytics is one such technology that allows companies to increase their sales by tailoring their interactions with prospects and enhancing sales pitches. So, if you are yet to integrate speech analytics into your system, it is high time to do so. What is Speech Analytics? The term “speech analytics” is self-explanatory.

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Amazon SageMaker Feature Store now supports cross-account sharing, discovery, and access

AWS Machine Learning

For example, the analytics team may curate features like customer profile, transaction history, and product catalogs in a central management account. Their task is to construct and oversee efficient data pipelines. Drawing data from source systems, they mold raw data attributes into discernable features. Take “age” for instance.

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FMOps/LLMOps: Operationalize generative AI and differences with MLOps

AWS Machine Learning

These teams are as follows: Advanced analytics team (data lake and data mesh) – Data engineers are responsible for preparing and ingesting data from multiple sources, building ETL (extract, transform, and load) pipelines to curate and catalog the data, and prepare the necessary historical data for the ML use cases.

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Unlock the potential of generative AI in industrial operations

AWS Machine Learning

However, complex NLQs, such as time series data processing, multi-level aggregation, and pivot or joint table operations, may yield inconsistent Python script accuracy with a zero-shot prompt. To enhance code generation accuracy, we propose dynamically constructing multi-shot prompts for NLQs. setup.sh. (a a challenge-level question).