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More Than Just Number-Crunchers: How Accountants Provide Value-Added Services

Method:CRM

Those poor accountants. In fact, today’s accountants are far more than just number-crunchers — they’re leaders, strategists, technologists, advisors and business specialists. The accounting industry: (p)art of the deal. Accountants speak the language of business. They get a bad rap. Becoming a part-time CFO.

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Getir end-to-end workforce management: Amazon Forecast and AWS Step Functions

AWS Machine Learning

SARIMA extends ARIMA by incorporating additional parameters to account for seasonality in the time series. These additional variables are considered in the model to improve forecasting accuracy by accounting for external influences beyond the historical values of the time series.

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Top Customer Success Courses and Training that every CSM needs in 2022

CustomerSuccessBox

Learn and apply basic statistical tools to solve real-world Customer Success problems Track churn accurately Measure and interpret NPS and CSAT in new ways Construct predictive customer health scores Increase forecasting accuracy Improve business results. Creator: Nils Vinje , Founder & CEO, Glide Consulting. Enroll here.

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How Patsnap used GPT-2 inference on Amazon SageMaker with low latency and cost

AWS Machine Learning

They use big data (such as a history of past search queries) to provide many powerful yet easy-to-use patent tools. A recent initiative is to simplify the difficulty of constructing search expressions by autofilling patent search queries using state-of-the-art text generation models. client('sts').get_caller_identity()['Account']

APIs 65
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Enable fully homomorphic encryption with Amazon SageMaker endpoints for secure, real-time inferencing

AWS Machine Learning

fit the model sklearn estimator.fit("s3://" + bucket + "/training data") # construct predictor from trained model predictor = sklearn_estimator.deploy(instance_type="ml.c4.xlarge", With some customization, you can implement this same encryption process for different model types and frameworks, independent of the training data.

Scripts 93
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Secure Amazon SageMaker Studio presigned URLs Part 3: Multi-account private API access to Studio

AWS Machine Learning

One important aspect of this foundation is to organize their AWS environment following a multi-account strategy. In this post, we show how you can extend that architecture to multiple accounts to support multiple LOBs. In this post, we show how you can extend that architecture to multiple accounts to support multiple LOBs.

APIs 69
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Contact Center Performance: How To Turn Operations Around When Things Are Going Bad?

NobelBiz

After all, running a contact center without taking human, technological, and managerial facts into account in every operational element is comparable to driving a car without a dashboard. This kind of KPI helps you assign a cost to process this type of request, by comparing it to the hourly wage of a consultant for example.