AUDI AG Slashes Response Times with Generative AI Chatbot Powered by Storm Reply and AWS

Executive Summary

German premium and luxury vehicle manufacturer AUDI AG’s Cloud Foundations Team creates documentation that helps internal teams use Amazon Web Services (AWS) solutions efficiently and securely. The ever-increasing amount of information available made it challenging for internal customers to find the answers they needed. This led to more time spent by the Cloud Foundations Team trying to help. To quickly and accurately address the most frequently asked questions, Audi worked with AWS Partner Storm Reply to build an interactive chatbot using Amazon SageMaker in only four weeks. The solution, which had 90 percent accuracy in initial testing, cut response time for FAQs to six seconds.

Making Internal Documentation Work

To simplify and standardize cloud usage across the organization, German premium and luxury vehicle manufacturer AUDI AG created a Cloud Foundations Team. The team is charged with ensuring consistent security, compliance, and quality standards across AWS accounts companywide. Part of that mandate includes creating documentation internal teams can use to work more efficiently and make better-informed decisions.

Over time, the amount of documentation has grown significantly, making it difficult for people to find what they need quickly without having to wade through pages of irrelevant information. This growth also created more work for the Cloud Foundations Team, who were answering the same questions over and over.

To get internal customers accurate, relevant information fast—and to free up the Cloud Foundations Team for higher-value activities—Audi turned to AWS Premier Consulting Partner Storm Reply to build a secure generative artificial intelligence (AI) chatbot on AWS.

Storm Reply Delivers Chatbot in a Month

Part of the Reply group, Storm Reply specializes in the design and implementation of cloud-based solutions. Storm Reply has worked with AWS since 2008, completing hundreds of successful cloud projects across the entire AWS technology stack.

The generative AI chatbot developed for the Cloud Foundations Team uses Llama 2 large language models (LLMs) on Amazon SageMaker. The solution employs Retrieval Augmented Generation (RAG) technology, which combines vector databases and LLMs to make the search of large amounts of data more structured and efficient.

“Thanks to Storm Reply, we were able to move from idea to minimum viable product in only four weeks,” said Bernd Schuster, cloud solutions architect at Audi’s Cloud Foundations Team. “Reply is our partner of choice when it comes to building on AWS.”

kr_quotemark

Our customers used to have to submit an internal ticket and then wait for us to respond. Now they ask the chatbot and get exactly what they need in 100 characters, without having to go through pages of documentation.”

Bernd Schuster
Cloud Solutions, AUDI AG

90% Accuracy Reduces Repeat Requests

To test the initial chatbot, Schuster’s team uploaded 80 gigabytes of internal documentation. “We looked at the most frequently asked questions, and we achieved nearly 90 percent accuracy from the very beginning,” Schuster said. Because the chatbot provides accurate answers tailored to the asker’s specific question, Schuster’s team has seen a decrease in the number of repeat requests for information.

kr_quotemark

Thanks to Storm Reply, we were able to move from idea to minimum viable product in only four weeks.”

Bernd Schuster
Cloud Solutions Architect, AUDI AG

Response Times Slashed to Six Seconds

Since implementing the chatbot, response times to FAQs have dropped to six seconds. “Our customers used to have to submit an internal ticket and then wait for us to respond. Now they ask the chatbot and get exactly what they need in 100 characters, without having to go through pages of documentation,” said Schuster.

Building on the Next Generation of Generative AI

Going forward, the Cloud Foundations Team will continue to tune the model with the help of Storm Reply’s data science experts. The team is also planning to see how fully managed Amazon Bedrock compares to Amazon SageMaker.

“Thanks to Storm Reply and AWS, our Cloud Foundations Team can focus on what it does best,” Schuster concluded. “That’s coding and making great cars.”

Audi

About AUDI AG

The AUDI AG is one of the most largest manufacturers of automobiles and motorcycles in the premium and luxury segments. The brands Audi, Bentley, Lamborghini, and Ducati are produced at 21 locations in 12 countries. Audi and its partners are present in more than 100 markets worldwide.

AWS Services Used

Benefits

  • Achieved 90% accuracy with initial chatbot solution
  • Cut response time for FAQs to 6 seconds
  • Reduced time spent answering internal questions

More Automotive Success Stories

Showing results: 5-8
Total results: 12

no items found 

  • Automotive

    VDS Automotive & Mendix

    VDS Automotive Group helps customers import and export cars to and from the Netherlands. However, moving vehicles from one country can be complicated, as all cars must be inspected and taxed based on local jurisdictions. For many years, VDS relied on spreadsheets and emails to track documents and the status of each customer’s vehicle. But that approach lacked a centralized view of all vehicles that all departments could access. Aiming to digitize its processes, the VDS team turned to AWS Partner Mendix to accelerate its software delivery and used AWS services to augment its solutions. In just three months, VDS launched its first application with Mendix—an online portal.

    2024
  • Automotive

    Marelli & Sonatus

    Global independent automotive supplier, Marelli has a strong and established track record in innovation and manufacturing excellence. The company is focused on co-creating the future of mobility with its customers and technology partners by bringing innovations and emerging technology to the automotive industry. Marelli, automotive software supplier Sonatus, and AWS are working together to drive the future of automotive by widening access to dynamic in-vehicle personalization. Through working with Sonatus, Marelli has built the infrastructure to deliver lifetime value to the vehicle’s owner or fleet manager, all powered by an AWS integration for faster development and deployment, giving them an edge over competitors.

    2024
  • Automotive

    Audi Volkswagen Middle East & Inawisdom

    Audi Volkswagen Middle East (AVME) improved its after-sales retention and loyalty using a machine learning (ML) solution built on Amazon Web Services (AWS). AVME is one of the world’s largest automotive manufacturers by sales and serves customers across the Middle East. The company wanted to improve its customer experience and unlock insights from historical vehicle data while improving after-sales retention. AVME engaged Inawisdom, an AWS Partner, to build a predictive after-sales ML model using Amazon SageMaker and Amazon Redshift. AVME has improved after-sales retention, improved its customer experience, and increased sales revenue.

    2023
  • Automotive

    GGroup-VMEngine

    GGroup, an Italian distributor of automotive parts, was being held back by its on-premises infrastructure. With the support of AWS Partner VMEngine, GGroup migrated the SAP workloads that managed its stock inventory, supply, and delivery to SAP Business One with AWS. It also completed that migration well ahead of schedule. As a result, the company can now scale faster, protect and back up its data, and ensure more robust business continuity, all while reducing costs per instance in its test environments.

    2023
1 3

About AWS Partner Storm Reply

Part of the Reply Group, Storm Reply specializes in the design and implementation of innovative cloud-based solutions and services for a global client base. As an AWS Premier Consulting Partner, Storm Reply works with mid-sized and large companies to help them exploit the full potential of the cloud. The company supports the complete cloud lifecycle: strategic consultation and idea generation, development of applications and infrastructures, integration into hybrid IT landscapes, and 24/7 operations.

Published March 2024