Reply Logo
Menu
  • TOPICS
    TOPICS
    • Architecture
    • Artificial Intelligence & Machine Learning
    • AUGMENTED & VIRTUAL REALITY
    • Big Data & Analytics
    • Blockchain
    • Cloud Computing
    • CRM
    • Digital Experience
    • Digital Workplace
    • eCommerce
    • Game & Gamification
    • Industrie 4.0
    • Internet of Things
    • Mobile
    • Quantum Computing
    • Risk, Regulation & Reporting
    • Security
    • Social Networking & Crowdsourcing
    • Supply Chain Management
    • Video
  • INDUSTRIES
    INDUSTRIES
    • Automotive
    • Energy & Utilities
    • Financial Services
    • Logistics & Manufacturing
    • Public Sector & Healthcare
    • Retail & Consumer Products
    • Telco & Media
  • JOIN
    JOIN

    join reply work with us

    Reply is the place to meet an incredible variety of enthusiastic, passionate, ideas-driven people, who want to make a difference and an i​mpact.
    ​Would you like to know more?

    Go to careers​​​​
  • ABOUT
    ABOUT
    • ABOUT
    • REPLY AT A GLANCE
    • ALL REPLY WEBSITES
    • CAREERS
    • OFFICE LOCATIONS & CONTACTS
    • Reply Code For Kids
    • INVESTORS
    • FINANCIAL NEWS
    • REPLY SHARE INFORMATION
    • FINANCIAL HIGHLIGHTS
    • FINANCIAL CALENDAR AND EVENTS
    • FINANCIAL REPORTS
    • SHAREHOLDERS' MEETING
    • LOYALTY SHARES
    • CORPORATE GOVERNANCE
    • EXTRAORDINARY TRANSACTIONS
    • NEWSROOM
    • News
    • Events
    • Press
    • Webinars
  • Login
    Your ProfileLogout
Choose language:
Reply Logo

Search

Automotive

Best Practice

Parking Space detection with sensor data

The nerve-wracking search for a parking space has come to an end thanks to Advanced Analytics and Data Science.

FOCUS ON: Big Data & Analytics, Automotive, Analytics,

The daily search for a parking space eats up around 560 million hours a year in Germany.

Comsysto Reply has developed a service for parking space detection as part of the driver assistance functions for an innovative global automobile manufacturer. The customer required a system for parking spaces detection based on data collected via ultrasound sensors on the vehicle. The data are filtered from several terabytes of log data from the test fleet and then aggregated. Statistical models are created based on the pre-analysed data.

A further objective was to set up a highly scalable data analysis platform for batch and streaming data analysis. The efficient storage and retrieval of georeferenced data was another of the project's challenges.

Comsysto Reply opted to use an exploratory approach with rough targets to develop the parking space detection, which is part of the driver assistance as standard. The solution visualises the data in real time, and checks whether the data gathered are suitable for the models. The services are provided via REST web services (microservices). The GeoJSON standard is used so that the data gathered can also be easily used by other systems. Comsysto Reply used automated configuration and administration of the IT infrastructure - quality assured for AWS or internal servers.

Advanced Analytics and Data Science

By using Advanced Analytics and Data Science, users benefit from visual and statistical data exploration with data science notebooks. Missing figures such as GPS data are added using data curation. The solution uses feature extraction to provide the prediction model for the sensor data and make it operational. Comsysto Reply uses statistical models for a variety of services in order to continuously improve the service for those looking for parking spaces. Another key part of the project was the discretisation of the sensor and geodata for the aggregation.

The service has been in use since March 2017 for selected vehicle models in ten German inner cities (Berlin, Bremen, Düsseldorf, Frankfurt/Main, Hanover, Hamburg, Cologne, Munich, Nuremberg, Stuttgart) and helped drivers find a parking space.

The service displays the parking space situation at the destination in real time and shows the customer the probability of finding a parking space.

Parking detection 

Comsysto Reply

Comsysto Reply has pioneered and leads the lean and agile delivery of tailor made solutions, designed to meet the challenges of digital transformation in enterprises. With a clear focus on agile organization, flexible open source frameworks and cloud services, Comsysto Reply accelerates innovation, mitigates risk and provides sustainable business value. Comsysto Reply´s cross-functional product teams collaborate with customers, partners and sister companies within the Reply Network, by sharing and applying their expertise in Lean & Agile methods, Big Data, User Experience Research, DevOps and Continuous Delivery.
www.comsystoreply.com

RELATED CONTENTS

credit management

Case Study

The Fire Group: how data-driven processes are reshaping sustainable credit management

Working as one team with Microsoft and its partner Cluster Reply, Fire has used Microsoft Azure Synapse Analytics to unify its data, creating a single source of information at the centre of its operations. It is a solution that stands to benefit both its internal teams and its customers.

Machine Learning

Case Study

Machine Learning for long term benefits

In a global enterprise like BMW, translating text is an often necessary, but time consuming and tedious task. Cutting down translation times aids the business in working faster and more efficiently. Reply achieved this for their client providing a low-cost shared service based on AWS for the entire enterprise using BMW’s state-of-the-art neural machine translation models with specific adaption to the automotive domain.

Machine Learning for long term benefits 0

Individual workshops

Service

THE MACHINE LEARNING INCUBATOR

The Machine Learning workshops are tailored to the needs of the participants and work with the latest trends in artificial intelligence. The experts from Machine Learning Reply show which use cases can already be implemented today with little effort and how added value can be generated.

THE MACHINE LEARNING INCUBATOR 0
 
 
 
 
Reply ©​​ 2021​ - Company Information
  • About Reply​
  • Inves​tors​​
  • Newsroom
  • Follow us on
  • ​
​
  • ​Privacy Policy
  • Privacy Notice (Client)
  • Privacy Notice (Supplier)
  • Privacy Notice (Candidate)
  • Modern Slavery Act Tran​sparency Statement (UK & IR)​
​​Reply Enterprise Social Network​​