logoAiPathly

TTTech Auto

T

Overview

TTTech Auto is a leading platform product and service provider specializing in System, Safety, and Security for Software-Defined Vehicles (SDVs). Founded in 2018 as a spin-off from TTTech Group, the company has rapidly grown to become a key player in the automotive technology sector.

Ownership and Global Presence

Initially backed by strategic investors including Audi, Infineon, and Samsung, TTTech Auto was acquired by NXP Semiconductors for €625 million in January 2025. The company is headquartered in Vienna, Austria, with a global presence spanning Germany, Spain, Serbia, Croatia, Turkey, China, and South Korea.

Products and Services

TTTech Auto's flagship product is MotionWise, a safety middleware that enables safe SDVs. Key offerings include:

  • MotionWise: A software framework for integrating safety-critical systems in autonomous and connected vehicles
  • Modular Products: Advanced tooling for safe in-vehicle communication and execution
  • Electronic Controls Design: Complex electronics design and development for SDVs
  • Testing Tools: Solutions for data logging and testing of modern vehicle networks and ADAS/AD video streams MotionWise is used in various series production programs, including those with Audi, SAIC Motor Corporation, and Hyundai Kia Motors Corporation.

Expertise and Focus

The company specializes in middleware and safety solutions, particularly for advanced driver assistance systems (ADAS) and autonomous driving. TTTech Auto's solutions address the challenges of integration, safety, and scalability in SDVs.

Partnerships and Workforce

TTTech Auto employs approximately 1,100 highly skilled professionals and maintains a network of over 60 OEMs, Tier 1 suppliers, and technology partners. The company also collaborates closely with technical universities and has strategically acquired and invested in various technology companies to enhance its offerings.

Future Outlook

Following the acquisition by NXP, TTTech Auto will continue serving its existing customers while expanding its global footprint under the NXP brand. The integration of TTTech Auto's MotionWise with NXP's CoreRide platform is expected to deliver a robust foundation for SDVs, enabling real-time data processing, secure over-the-air updates, and enhanced system scalability.

Leadership Team

As of October 2022, TTTech Auto AG's leadership team comprises experienced professionals with diverse backgrounds in the automotive and technology sectors:

Dr. Dirk Linzmeier - CEO

Dr. Linzmeier joined TTTech Auto as CEO and Executive Board member, bringing over 20 years of automotive industry experience. His previous roles include CEO of OSRAM Continental and executive positions at Robert Bosch GmbH and DaimlerChrysler AG.

Stefan Poledna - Co-Founder and Chief Technology Officer (CTO)

As a co-founder and CTO, Stefan Poledna continues to play a crucial role in TTTech Auto's technological development and innovation strategies.

Harald Triplat - Chief Financial Officer (CFO)

Harald Triplat oversees TTTech Auto's financial management and strategy, ensuring the company's fiscal health and growth.

Friedhelm Pickhard - Chief Growth Officer (CGO)

Joining in 2021, Friedhelm Pickhard, former CEO of Bosch subsidiary ETAS, focuses on TTTech Auto's expansion and growth strategies as CGO.

Georg Kopetz - Supervisory Board Member

Co-founder and former CEO Georg Kopetz transitioned to the Supervisory Board, maintaining his role as CEO of TTTech Computertechnik AG, TTTech Auto's largest shareholder. This position facilitates structural cooperation and knowledge exchange between the two companies. This leadership team combines extensive industry experience with technological expertise, positioning TTTech Auto for continued innovation and growth in the automotive technology sector.

History

TTTech Auto's journey in the automotive technology sector, though relatively recent, has been marked by significant milestones and rapid growth:

Founding and Initial Growth (2018-2021)

  • Founded in 2018 through a collaboration of technology leaders including Audi, Infineon, Samsung, and TTTech
  • Established with the goal of developing a global, safe vehicle software platform for automated and autonomous driving
  • Headquartered in Vienna, Austria, with a growing global presence

Product Development and Market Expansion

  • Launched MotionWise, a series-proven software platform for automated driving
  • Secured partnerships with major automotive manufacturers, including Audi, SAIC Motor Corporation, and Hyundai Kia Motors Corporation
  • Expanded global footprint with offices in Germany, Spain, Serbia, Croatia, Turkey, USA, China, Japan, and South Korea

Funding and Growth (2022)

  • Raised USD 285 million (EUR 250 million) in a funding round led by Aptiv and Audi
  • Grew to employ approximately 1,200 people globally
  • Continued to enhance and expand its product offerings in safe software and hardware platforms for automated driving

Acquisition by NXP Semiconductors (2025)

  • Acquired by NXP Semiconductors for $625 million in January 2025
  • Integration aimed at enhancing NXP's automotive software solutions for software-defined vehicles (SDVs)
  • TTTech Auto's management team, intellectual property, assets, and approximately 1,100 engineering staff joined NXP's automotive team
  • MotionWise platform to be integrated with NXP's CoreRide platform, promising improved performance, safety, and time to market for automakers This timeline showcases TTTech Auto's rapid evolution from a startup to a key player in the automotive technology sector, culminating in its strategic acquisition by NXP Semiconductors. The company's focus on safe, innovative solutions for automated and autonomous driving has positioned it at the forefront of the industry's transition to software-defined vehicles.

Products & Solutions

TTTech Auto specializes in advanced software and hardware solutions for software-defined vehicles (SDVs). Their product offerings include:

Hardware Products

  • Small Volume ECUs: State-of-the-art secure gateways, domain control units, and safety ECUs. These are MATLAB/Simulink compatible, feature rugged automotive enclosures, and adhere to ISO 26262 safety standards.
  • Testing Tools: All-in-one solutions for data logging in modern vehicle networks, crucial for managing the increasing complexity and data volume in SDVs.

Software Products

  • MotionWise Safety Middleware: A next-generation platform integration solution built on deterministic technologies. It addresses integration challenges across various applications and enhances system-wide safety properties.
  • MotionWise Schedule: The first modular solution from the MotionWise family, designed to accelerate software integration for OEMs and Tier-1 suppliers.
  • Zetta Auto: A unified solution for in-vehicle and V2X communication, leveraging technologies such as DDS, TSN, and Zenoh protocol.

Key Features and Benefits

  • Safety and Security: Strong focus on maintaining high-quality standards for SDVs.
  • Integration and Scalability: Facilitates seamless integration across different applications and enables efficient software scaling across various car models.
  • Performance and Time to Market: Reduces complexity, improves performance, and shortens time to market for SDVs.

Recent Developments

TTTech Auto has been acquired by NXP Semiconductors for $625 million. This acquisition aims to enhance NXP's automotive software solutions by integrating TTTech Auto's technology into NXP's CoreRide platform, strengthening NXP's market position and expanding TTTech Auto's global reach.

Core Technology

TTTech Auto's core technology centers around developing solutions for Software-Defined Vehicles (SDVs), with a strong emphasis on system integration, safety, and security.

MotionWise Middleware

The company's flagship product, MotionWise, is a scalable, series-proven middleware platform designed for integrating safety-critical systems in autonomous and connected vehicles. It enables automotive manufacturers to meet rigorous safety standards while streamlining development processes and accelerating time-to-market.

Safety-Critical Systems

TTTech Auto specializes in safety-critical systems essential for automated and autonomous driving. Their solutions optimize performance, safety, integration, and software updates, allowing automakers to focus on enhancing the driving experience.

Integration and Scalability

The company's technology addresses the complexities of software integration in SDVs, managing diverse systems, ensuring real-time data processing, secure over-the-air updates, and enhanced system scalability.

Collaboration and Ecosystem

TTTech Auto collaborates with industry leaders like QNX and Vector to develop comprehensive vehicle software platforms. These collaborations aim to simplify vehicle software integration, allowing OEMs to focus on innovative consumer-facing applications.

NXP CoreRide Integration

Following the acquisition by NXP Semiconductors, TTTech Auto's MotionWise platform will be integrated with NXP's CoreRide platform, featuring S32G vehicle network processors. This integration promises to deliver powerful synergies for SDVs, enabling better hardware/software integration, real-time data processing, and secure over-the-air updates. In summary, TTTech Auto's core technology provides robust, scalable, and safety-critical solutions for the software-defined vehicle market, enhancing the performance, safety, and connectivity of modern vehicles.

Industry Peers

TTTech Auto operates in the automotive software and autonomous driving sector. Its industry landscape includes both competitors and collaborators:

Competitors

  • Airbiquity: Specializes in connected vehicle services and software solutions.
  • Sonatus: Focuses on vehicle software and data management for autonomous and connected vehicles.
  • CloudMade: Provides data analytics and software solutions for the automotive industry, particularly in autonomous driving and connected cars.
  • Mobileye: Primarily known for ADAS technology, but also collaborates in the autonomous driving space.

Partners and Collaborators

  • NXP Semiconductors: Set to acquire TTTech Auto, NXP is a major player in semiconductor technology for automation, including automotive applications.
  • Audi: A key investor and partner, working closely with TTTech Auto on various automotive software and autonomous driving projects.
  • Arm: Participates in TTTech Auto's cross-industry collaboration "The Autonomous" to develop safe autonomous vehicle technologies.
  • BASELABS, CoreAVI, DENSO, and Five: Also part of "The Autonomous" initiative, working on safety standards and architectures for autonomous vehicles. This complex network of competitors and collaborators underscores the interconnected nature of the automotive software and autonomous driving industry. TTTech Auto's position within this ecosystem highlights its significant role in shaping the future of software-defined vehicles and autonomous driving technologies.

More Companies

A

AI Program Manager specialization training

Training programs and responsibilities for AI Program Managers highlight the need for a balanced skill set in AI technology, project management, and business acumen, along with effective communication and team management abilities. AI Product Management Specialization by Duke University: - Designed for professionals managing AI and ML projects without prior programming knowledge - Key components: 1. Machine Learning Foundations for Product Managers 2. Managing Machine Learning Projects 3. Human Factors in AI - Skills gained: Understanding of machine learning, ML project management, and human-centered design in AI Generative AI for Project Managers Specialization by IBM: - Tailored for project managers integrating generative AI into their practices - Key components: 1. Understanding Generative AI 2. Generative AI Prompt Engineering 3. Applying Generative AI in Project Management - Skills gained: Understanding of generative AI, prompt engineering, and AI tools for project management Role and Responsibilities of an AI Program Manager: - General responsibilities: 1. Program Management: Lead cross-functional teams, manage plans, budgets, and timelines 2. Agile AI Process Facilitation: Support Agile processes and facilitate continuous improvement 3. Project Management: Define and implement AI/ML roadmaps, prioritize initiatives, and mitigate risks 4. Communication & Collaboration: Communicate technical concepts to non-technical stakeholders - Qualifications: - Experience: Multiple years in project management, product management, or operations management - AI Expertise: Solid grasp of AI technologies and the AI lifecycle - Education: At least a bachelor's degree; master's degrees beneficial - Certifications: PMP, PRINCE2, Scrum Master, and Scrum Product Owner certifications valuable

A

AI Process Engineer specialization training

Specializing in AI engineering requires a comprehensive approach combining education, practical skills, and continuous learning. Here's an overview of key aspects and training paths: ### Educational Foundation - Strong background in computer science, mathematics, and AI concepts - Courses in programming (Python, Java, C++), linear algebra, probability, and statistics - Advanced topics: machine learning, deep learning, natural language processing, and computer vision ### Specialized Training Programs 1. AI Engineering Specialization on Coursera: - Focuses on building generative AI-powered apps - Covers AI fundamentals, ethical AI, prompt engineering, and practical projects 2. Certified Artificial Intelligence Engineer (CAIE™) by USAII: - Designed for professionals and students - Includes study materials, workshops, and hands-on videos - Covers AI on Cloud, Python, machine learning pipelines, and more ### Key Skills and Knowledge 1. Technical Skills: - Proficiency in programming languages (Python, R, Java, C++) - Familiarity with machine learning frameworks (TensorFlow, PyTorch, Keras) - Understanding of deep learning techniques and neural network architectures 2. Practical Experience: - Hands-on learning through projects, internships, and research - Experience with software development methodologies and version control systems 3. Soft Skills: - Collaboration, communication, and adaptability - Problem-solving skills for optimizing algorithms and addressing real-world challenges ### Career Path and Certifications - Career progression from entry-level to senior roles in AI engineering - Certifications like AWS Certified Machine Learning and Microsoft Certified: Azure AI Engineer Associate can enhance qualifications By combining these elements, aspiring AI engineers can effectively prepare for a successful career in this dynamic field.

A

AI Performance Analyst specialization training

For professionals seeking to enhance their skills or embark on a career as an AI Performance Analyst, several specialized training programs are available. Here's an overview of three notable options: ### Generative AI for Data Analysts Specialization - Coursera This IBM-offered specialization on Coursera is designed to integrate generative AI into data analysis workflows: - **Courses**: Three courses covering generative AI introduction, prompt engineering basics, and career enhancement in data analytics. - **Skills Gained**: Proficiency in using generative AI models, prompt engineering, and applying AI tools like ChatGPT and OpenAI for data analysis, visualization, and storytelling. - **Hands-on Labs**: Practical experience in generating text, images, and code using AI, as well as applying prompt engineering techniques. - **Ethical Considerations**: Coverage of ethical implications and challenges in using generative AI for data analytics. ### AI Strategies, Productivity and Practices - UCSC Extension This program focuses on practical AI applications for nontechnical professionals: - **Courses**: Four required courses covering AI use cases, generative AI, and workplace automation. - **Learning Outcomes**: Optimization of AI technology, addressing ethical challenges, enhancing workplace productivity with AI-enhanced tools, and setting up simple agents for task automation. - **Practical Applications**: Hands-on practice with freely available AI tools and refining AI prompts for various workplace tasks. - **Ethical and Security Aspects**: Comprehensive coverage of ethical, responsible, and security considerations in AI integration. ### Building Practical Skills in NLP and Generative AI - Learning Tree This course delves into the technical aspects of Natural Language Processing (NLP) and generative AI: - **Duration**: 2-3 days, depending on the format. - **Skills Gained**: Practical skills in NLP and generative AI, including traditional NLP techniques, word embeddings, neural networks (RNNs, LSTMs), and transformer architectures. - **Hands-on Labs**: Practical exercises in text classification, sentiment analysis, text generation, and working with language models like BERT and GPT. - **Prerequisites**: Basic knowledge of Python programming, machine learning, and deep learning. Each program offers a unique focus and skill set, allowing professionals to choose based on their career goals and current expertise level. These courses provide a solid foundation for those looking to specialize in AI performance analysis, covering both technical and practical aspects of AI implementation.

A

AI Pipeline Engineer specialization training

For individuals looking to specialize in AI pipeline engineering, several comprehensive training programs cover the necessary skills and knowledge: ### IBM AI Engineering Professional Certificate - Offered through Coursera, this 13-course series prepares you for an AI engineering career in less than four months. - Covers machine learning, deep learning, neural networks, and ML algorithms. - Teaches implementation of supervised and unsupervised ML models using SciPy and ScikitLearn. - Includes deployment of ML algorithms and pipelines on Apache Spark. - Provides hands-on experience with deep learning models, LLMs, and generative AI applications using Keras, PyTorch, and TensorFlow. ### AI+ Engineer™ Certification Program - Focuses on foundational principles, advanced techniques, and practical applications of AI. - Key areas include developing and managing AI deployment pipelines, building AI GUIs, and applying AI to real-world problems. - Offers hands-on experience with neural networks, LLMs, generative AI, and NLP using frameworks like Hugging Face and LangChain. ### Machine Learning in Production - DeepLearning.AI - Centered on designing and deploying ML systems in production environments. - Covers end-to-end ML production system design, including project scoping, data needs, and deployment requirements. - Addresses production challenges such as concept drift and model baseline establishment. - Teaches best practices for MLOps and continuous improvement of ML applications. ### Professional Machine Learning Engineer Certification - Google Cloud - Aimed at professionals building, evaluating, and optimizing AI solutions using Google Cloud. - Key skills include designing generative AI solutions, creating reusable code, and handling complex datasets. - Focuses on scaling prototypes into ML models and automating ML pipelines. - Covers monitoring AI solutions and ensuring responsible AI practices. ### Machine Learning Engineering & AI Bootcamp - University of Arizona - Designed to master the entire machine learning pipeline, from data preprocessing to deployment. - Includes hands-on projects in regression, anomaly detection, and data transformation. - Features a capstone project involving designing, building, and deploying a machine or deep learning system. - Prepares students for real-world projects and job readiness in machine learning engineering. Each program offers unique skills and focus areas, equipping you with practical knowledge and hands-on experience necessary for a career in AI pipeline engineering.