Automotive Companies only Access 5% of their Vehicle Data
Computers & Technology → Technology
- Author Alexandra Nguyen
- Published April 16, 2021
- Word count 725
Although vehicle sensors collect massive amounts of data, only 5% of it is currently being used for product development. Better infrastructure and data processing hold the keys to progress.
The promise of fully autonomous vehicles continues to excite and inspire millions of people around the world. The amazing things that safe, reliable, self-driving vehicles can do for humanity--from providing newfound mobility to senior citizens to reducing traffic accidents--are closer to our reach than ever. But we still have a long way to go.
Along with the fuel (gasoline, diesel or electricity) that powers automobiles, autonomous vehicles require a fuel of their own to “drive” safely and effectively: data. Although that data, already collected by millions of sensors on thousands of vehicles around the world, is readily available, it’s not being utilized to its full potential.
Sensor datasets power the algorithms that make all levels of autonomous driving possible. As automotive companies aggressively pursue data-driven product development, data handling (including the exploration, querying, curation and evaluation of data) is a common bottleneck on the road to progress.
These essential but hard-to-manage datasets bring a unique set of challenges for those hoping to make use of them:
-
Unstructured and diverse formats
-
Need for rich semantics in order to access them
-
Huge sizes that require high-performance computing
-
Strong need for data versioning
-
Access and security issues
-
Need for continuous failure-case driven data exploration
With the proper data processing and analytics software, engineering users can overcome all of these challenges and vehicle data can fulfill its potential. By upgrading legacy technology for data access and analysis, OEMs and mobility tech companies can bump up data utilisation rates by up to 40% and generate additional ROI as data exploration, search, analysis, anomaly detection, and evaluation require less manual engineering work and yield better results.
Data infrastructure and management are being neglected
Currently, vehicle technology developers are focused on machine learning models and ground truth labeling. These same developers are neglecting infrastructure upgrades, leading many to use legacy technology for data management. Terabytes of unstructured, unprocessed vehicle data easily overwhelm these systems, causing them to malfunction. Raw data has no metadata and billions of frames, and technology developers are left to use tools ill-suited to the task of data management to organize data on their own.
Highly-paid engineers search datasets manually on sluggish database systems, spending up to 75% of their time on raw data handling issues instead of training and validating models. Furthermore, the lack of insights garnered from these vehicle datasets means machine learning and data science systems are unable to effectively build AI functions that rely on sensor data as an input.
Purpose-built data infrastructure is the solution
Infrastructure that is designed and built specifically to house raw sensor data and extract insights is the answer. This infrastructure should be as simple and easy to navigate as spreadsheets and SQL databases that bring order and usefulness to data in other industries. For vehicle sensor data, infrastructure that uses a flexible and minimalist data model and a scalable method to produce semantics, along with fast queries and integrated endpoints to use and share data, is most effective.
These and other infrastructure elements improve data re-use and result in faster insights. Enabled by semantic automation, data can be ranked according to its importance based on context, content, criticality, and usability. This reduces redundancy and maximizes information density. Low-importance data is archived or deleted, while high-importance data is easily accessible for everyone. Furthermore, data insights can be provided almost immediately with overviews of the content and the redundancy.
Users can augment retention recommendations with tailored rule-based constraints, e.g. unprotected left turns should always be kept.
Better autonomous vehicles, sooner
Advances in automated data infrastructure and processing liberate automotive technology developers from the constraints of legacy technology systems. Automated, semantic data management systems such as SiaSearch make data handling easier than ever, enabling automotive companies to save valuable engineering time, boosting productivity and increasing overall utilization.
Put simply, more robust, effective infrastructure for unstructured sensor data will lead to higher ROI on research and development by freeing up engineers to do what they do best: building algorithms that will power the autonomous vehicles of the future. And with those engineers working more efficiently, the dreams of autonomous vehicles improving our lives are that much closer to reality.
Dealing with lots of raw sensor data? Learn more about the SiaSearch data management platform: https://www.siasearch.io/
Originally published by Clemens Viernickel on: https://www.siasearch.io/blog/raw-sensor-data-needs-infrastructure-to-be-useful/
Article source: https://articlebiz.comRate article
Article comments
There are no posted comments.
Related articles
- Master the Art of Gamification with Our Engaging App
- 10 Reasons Business Central Users Leverage Advanced Inventory Count
- The Ultimate Guide to 3D Animation: From Basics to Advanced Techniques
- Mitsubishi Electric proves heat pump compatibility with microbore pipework
- Google DeepMind Launches Gemma 2: A New AI Model Revolutionizing Research and Development
- How Do AI Solutions Drive Productivity And ROI In Business?
- Is Verizon Total the same as Verizon Prepaid?
- What is the best prepaid phone company?
- Why Small to Large Companies Continue to Use Dated/Dinosaur Technology
- 10 Ways Business Central’s Quality Inspector App Streamlines Quality Assurance
- 10 Ways Business Central’s Quality Inspector App Streamlines Quality Assurance
- The Rise of Sustainable Technology: Shaping a Greener Future
- Why Bullseye Engagement Offers the Best OKR Software for Businesses
- Web Development Companies in Canada
- How EasyPDF™ Forms Save Time & Money at Home and in the Workplace
- The One and Only 15-Second Digital Lien Waiver to Complete and Submit in Record Time Using the Free Adobe Reader
- The Impact of Employer Branding on Leadership Recruitment
- Augmented Reality (AR) in Business: Why Your Company Needs It
- Top 10 Reasons to Use Business Central’s License Plating App
- The Hidden Advantages of European Offshore Development Companies
- App Development: Transforming Ideas into Reality
- Automate you Chauffeur Service with A to Z Dispatch
- The Impact of Machine Learning and AI on Business: What the Future Holds In the modern busine
- Generate Flashcards Fast with AI: The Ultimate Solution for Developers
- Blockchain Interview Guide: Essential Questions and Answers for Success
- Eight Free Business Central Apps That You’ll Wish You Had
- How Artificial Intelligence (AI) and Machine Learning (ML) Are Transforming Computer-Based Trading Platforms
- The Role of Gas Engineers in Modern Energy Systems: Linking to Sustainability and Innovation
- The Significance of Stars in the Universe and Their Impact on Human Culture Throughout Evolution
- Exploiting Artificial Intelligence for Urban Mobility Transformation: A Case Study of Guatemala City