Remove Analytics Remove Engineering Remove industry solution
article thumbnail

Driving advanced analytics outcomes at scale using Amazon SageMaker powered PwC’s Machine Learning Ops Accelerator

AWS Machine Learning

Many businesses already have data scientists and ML engineers who can build state-of-the-art models, but taking models to production and maintaining the models at scale remains a challenge. Just like DevOps combines development and operations for software engineering, MLOps combines ML engineering and IT operations.

Analytics 129
article thumbnail

Streamline Sales Processes with Enterprise CPQ

Cincom

These Configure, Price, Quote engines can encode deeply technical manufacturing specifications required for specialized equipment. Embedded analytics quantify account growth rates and surface cross-sell targets. What Makes Cincom’s CPQ Solutions Stand Out?

Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

Trending Sources

article thumbnail

Modernizing data science lifecycle management with AWS and Wipro

AWS Machine Learning

Wipro further accelerated their ML model journey by implementing Wipro’s code accelerators and snippets to expedite feature engineering, model training, model deployment, and pipeline creation. About the Authors Stephen Randolph is a Senior Partner Solutions Architect at Amazon Web Services (AWS).

article thumbnail

Enhance call center efficiency using batch inference for transcript summarization with Amazon Bedrock

AWS Machine Learning

We also explore best practices for optimizing your batch inference workflows on Amazon Bedrock, helping you maximize the value of your data across different use cases and industries. Solution overview The batch inference feature in Amazon Bedrock provides a scalable solution for processing large volumes of data across various domains.

article thumbnail

Calabrio Charts Record Year-on-Year UK Growth as Demand for Cloud Technology Soars During Lockdown

CSM Magazine

Niall Gallacher has joined Calabrio as Business Intelligence (BI) strategic consultant and will be instrumental in the design of services that drive value from data and analytics, helping Calabrio customers to solve complex business problems. Before joining Calabrio, Niall spent 6 years with Qlik as Industry Solutions Director.

article thumbnail

Automated exploratory data analysis and model operationalization framework with a human in the loop

AWS Machine Learning

Now we have low-code and no-code tools like Amazon SageMaker Data Wrangler , AWS Glue DataBrew , and Amazon SageMaker Canvas to assist with data feature engineering. However, a lot of these processes are still currently done manually by a data engineer or analyst who analyzes the data using these tools. SageMaker Pipeline Execution.

article thumbnail

Build an agronomic data platform with Amazon SageMaker geospatial capabilities

AWS Machine Learning

These platforms help farmers make sense of their data by integrating information from multiple sources for use in visualization and analytics applications. By removing masked pixels (clouds) from further image processing, downstream analytics and products have improved accuracy and provide value to farmers and their trusted advisors.

APIs 87