Unlock the Potential of Your Vehicle with Telematics
Interior view of a car dashboard with a high-tech telematics system display, emphasising real-time diagnostics and connectivity.
Advanced telematics system in a modern vehicle, showcasing real-time data and connectivity features.

In Brief

  • Telematics represents the integration of telecommunications and informatics within vehicles, revolutionising the automotive landscape.
  • Acsia is a leading player in telematics innovation, shaping smarter, safer, and more efficient vehicles for consumers and fleets.
  • Core telematics technologies, flexible platforms, and cutting-edge focus areas like multicore processors and model-based development underpin our expertise.
  • Explore how telematics empowers real-time diagnostics, route planning, driver behaviour insights, predictive maintenance, and enhanced vehicle usage analytics.

Imagine a world where your vehicle isn’t just a machine but an intelligent partner. That’s the power of telematics. By seamlessly combining communication technologies with on-board sensors and computing power, telematics transforms vehicles into data-rich hubs that reshape how we drive, maintain, and interact with our cars and trucks. At Acsia, we understand the full potential of the connected vehicle, and we’re committed to delivering telematics solutions that unlock real-world benefits.

Decoding the Essentials: Core Telematics Technologies

Think of telematics as a system with several interconnected layers:

  • The Sensors: These are the eyes and ears of your vehicle. They gather data on everything from engine performance and fuel consumption to tire pressure and driver behaviour.
  • GPS & Location Tracking: Global Navigation Satellite Systems (GNSS) pinpoint your vehicle’s position, a cornerstone of navigation and fleet management.
  • Cellular Connectivity: Technologies like 5G NAD and LTE are the communication backbone, ensuring a constant flow of data between the vehicle and the world.
  • Vehicle-to-X (V2X): V2X protocols allow your car to communicate with other vehicles and infrastructure, enhancing collision avoidance and traffic management.

The Importance of Platforms

A telematics system needs a robust platform to function effectively:

  • System on a Chip (SoC): SoCs integrate vital components in a single powerful chip, streamlining operations within the vehicle’s telematics unit.
  • Operating Systems: The choice of OS – Linux, Android, or others – dictates software compatibility and the ease of application development.
  • Classic AUTOSAR vs. Modern Approaches: Acsia has deep expertise in both classic AUTOSAR, an industry-standard, and open-source platforms like POSIX and Linux, allowing us to create tailor-made solutions that best suit our clients’ needs.

Acsia’s Focus Areas: Driving Telematics Forward

We innovate where it matters most to ensure our solutions stay ahead of the curve:

  • Multicore Processors: The rise of data-rich applications demands processors capable of handling complex analytics while making split-second decisions.
  • Model-Based Development: We use sophisticated modelling techniques to design telematics software, ensuring faster development, higher quality, and ease of updates.
  • Reusable Frameworks: Prebuilt code libraries dramatically reduce the development time for custom telematics applications.
  • Cloud Container Solutions: The cloud complements in-vehicle systems, providing on-demand scalability, flexibility, and cost efficiency.

Tangible Benefits of Telematics: From Drivers to Fleets

For individual drivers and fleet managers, telematics offers a wealth of advantages:

  • Real-time Diagnostics: Get instant alerts on potential malfunctions, empowering you to address issues before they become major problems.
  • Optimised Routing & Navigation: Intelligent routing factors in traffic, construction, and even fuel efficiency, saving time and money.
  • Predictive Maintenance: Telematics data helps predict component wear, enabling proactive maintenance that prevents breakdowns and maximises vehicle uptime.
  • Driver Behaviour Insights: Monitoring driving habits promotes safety and can open doors to usage-based insurance discounts.
  • Fleet Management Powerhouse: Telematics is transformative for fleet operators, providing in-depth insights into vehicle health, fuel consumption, driver performance, and route efficiency for cost optimisation.

Acsia: Your Partner on the Telematics Journey

At Acsia, telematics isn’t just about technology — it’s about creating meaningful impact on the road. Whether it’s enhancing driver safety, reducing operational costs, or unlocking new business models, our telematics solutions are built to deliver measurable value.

As vehicles continue to evolve into intelligent, connected systems, the role of telematics will only grow more critical. With our deep domain expertise, scalable platforms, and innovation-first mindset, we’re not just keeping up with this evolution — we’re leading it.

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AH2025/PS06 | AI/ML

Context

Continuous employee learning is essential for companies to stay competitive in a fast-changing business environment. Organizations adopt Learning Management Systems (LMS) to upskill employees, meet compliance requirements, and support career growth. However, existing LMS platforms often act as content repositories rather than personalized learning assistants.

 

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Goal

Create a smart, data-driven LMS that improves employee engagement, learning outcomes, and workforce readiness while giving leadership clear visibility into training impact.

 

Outputs

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Impact

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Pain Point

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Impact

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AH2025/PS04 | AI/ML

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Build an AI-powered log analytics assistant that can:

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Impact

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AH2025/PS03 | AI/ML

Context

Drivers and passengers spend significant time in vehicles where comfort, safety, and accessibility directly affect satisfaction and well-being. Yet today’s in-car systems remain largely static and manual, requiring users to adjust climate, seats, infotainment, and navigation themselves. With increasing connectivity, AI offers the potential to transform cars into adaptive, intelligent companions.

Pain Point

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Build a Generative AI-powered cockpit agent that dynamically personalizes the in-car experience based on contextual data such as:

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Goal

Deliver real-time, adaptive personalization of:

  • Comfort settings: AC, seat adjustments, lighting.
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Outputs

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AH2025/PS02 | AI/ML

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Enable project managers to see the full picture instantly, automate reporting, and take data-driven decisions on resources and risks without manual effort.

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  • Reduced management overhead → fewer hours wasted on reporting.
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AH2025/PS01 | AI/ML

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In modern organizations, assembling the right project team is critical to success. Managers must balance skills, experience, cost, availability, and domain expertise, but decisions are often made using intuition or partial information. This leads to suboptimal teams, missed deadlines, or budget overruns.

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  • Team formation today is time-consuming and heavily manual, requiring managers to cross-check spreadsheets, HR databases, and project needs.
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Enable managers to form the best-fit, economically feasible project teams in minutes, rather than days, while providing transparency into why each recommendation was made.

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  • Optimal team composition: Recommended employees, with justification.
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