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Advanced Analytics

Advanced Analytics

Data without intelligence is wasted potential. Vehicles produce more telemetry than ever before, but without predictive models and real-time analytics, that data remains noise instead of becoming competitive advantage.

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Services

We deliver the intelligence layer that transforms data into foresight and efficiency.

We deploy production-ready AI models, real-time diagnostics, and big data platforms that process massive vehicle datasets - giving you the power to prevent failures, optimize fleet efficiency, and build safer, smarter products.

Predictive Maintenance Solutions


Anticipate failures before they happen, minimizing downtime and maximizing vehicle / device availability.

Real-Time Diagnostics & Health Monitoring

Enable proactive monitoring and instant fault detection with streaming analytics.

Driver & Vehicle Behavioral Analysis

Extract insights from driver and vehicle patterns to design safer, more efficient services such as better infotainment or UBI's.

Fleet Efficiency Optimization

Optimize costs and operations across fleets with data-driven insights and automation.

ML Model Deployment & MLOps

We operationalize machine learning, making AI models production-ready and scalable.

Big Data & AI Platforms

We deliver platforms that unify storage, analytics, and AI - making massive datasets usable for business impact.

Portfolio

Learn how we help our customers tackle their challenges

Explore how we redefine industry standards through innovation.

The API that united a manufacturing empire: From fragmented fleet to unified platform

We proved that unifying a fragmented automotive ecosystem doesn't require replacing existing technologies - it requires building the right abstraction layer that makes differences invisible to service providers and customers.
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From notebook to platform: When data tools become data ecosystems

We proved that transforming a data solution into a scalable platform requires starting small, learning continuously, and evolving based on real user feedback - not upfront requirements documents.
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From two systems to one vision: How we redesigned a bus manufacturer's future

We proved that architectural transformation doesn't require months of analysis - it requires two days of the right conversation. By compressing discovery, alignment, and design into an intensive workshop, we turned fragmented legacy systems into a unified SDV platform vision.
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When speed satisfies strategy: Rewiring an industrial giant

Transforming delivery velocity isn't about installing DevOps tools - it's about reconstructing the relationship between business strategy and technical execution. For Cummins, we proved that organizational transformation happens fastest when strategy and results move in parallel, not sequence.
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When support agents stop searching and start solving

The problem isn't lack of knowledge - it's the gap between questions and answers hidden in organizational silos.
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From weeks to days: How AI agent workflows transformed market research

The bottleneck in market intelligence isn't finding information - it's extracting meaningful patterns from the noise at the speed business requires.
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Use cases

Discover the essentials driving your data journey.

Gain a clear understanding of the key concepts that are fueling the automotive development.

Predictive maintenance

Predictive maintenance

01

Predictive maintenance

The cost of repair when the fault grounds the vehicle is 10x higher than fixing it when the first symptom occurs. That’s why most mobility providers and OEMs build predictive maintenance systems based on machine learning algorithms – to reduce the maintenance cost of vehicle fleets. With sophisticated algorithms based on real-time car telemetry and status information, as well as historical data, some of the costly repairs can be predicted and avoided.

Behavioral data and  patterns

Behavioral data and  patterns

02

Analyzing behavioral data and driving patterns based on car telemetry

Analyzing behavioral data allows automotive companies to unlock the potential for cost reduction, open new revenue streams, or even create new business models.
In the insurance industry, it is a fundamental feature allowing for pay-per-use offering as well as granting safe drivers with discounts for the insurance policies.

For the automotive industry, however, it can be treated as the base for predictive maintenance – it allows to plan maintenance works based on the usage of car components, but also to help to analyze the range of the electric car battery based on the long term driving patterns.

For the rental car business, it allows to offer discounts for safe drivers but also allows to propose features and vehicles most suitable for them based on the patterns of their previous behavior.

Engines based on AI/ML

Engines based on AI/ML

03

Recommendation engines based on AI/ML to boost sales

In the modern automotive business, not only traditional dealerships or over-the-counter sales drive revenue for today’s mobility providers, vehicle manufacturers, and OEMs. Today, recommendation engines and mobile applications generate an increasing amount of sales records. Acknowledging the business value of recommendation systems, Netflix estimated that their recommendation engine is worth $1bln yearly.

Rental car companies use these solutions in upselling to encourage customers for additional insurance, a higher grade vehicle, and other additional features. Leveraging recommendation systems vehicles enterprises increase sales and improve customer experience.
Our data science and data engineering departments have a proven track record of creating machine learning algorithms and combining them with e-commerce systems allowing automotive companies to take benefit from recommendation engines based on previous purchases.

Explainable AI

Explainable AI

04

Understand your ML predictions and reasoning – Explainable AI

Artificial Intelligence has proven to be a good way to tackle problems, which seemed impossible before. For the general audience, most of the ML is a black box, which accepts data and responds with prediction or identification. Algorithms are complex and hard to understand for non-data scientists. With explainable AI, the problem resolution path can be exposed to customers and stakeholders, making the bottlenecks and reasons for wrong reasoning visible.

Grape Up Data Scientists can help you build an ML system allowing stakeholders, developers, and customers to comprehend the prediction process and, as a result, have more trust in the results.

Data streaming platform

Data streaming platform

05

Minimize support costs and prevent data loss with a scalable, common data streaming platform

Building multiple platforms for storing the data is costly, hard to maintain, and can result in data loss due to incorrect handling. This problem can be resolved by building a common data streaming platform able to handle real-time data for the whole enterprise. Built with scalability and redundancy in mind this kind of platform can effectively withstand and resist problems in having a system of distributed, different platforms and storage systems. The support cost is also lower.Grape Up experts are highly experienced in creating and maintaining efficient and scalable data streaming platforms based on Kafka that are currently being used among Grape Up customers representing automotive and financial institutions around the world.

ETL and data mesh

ETL and data mesh

06

Democratize access to the data for the whole enterprise through ETL and data mesh

Data is a lifeblood of an organization. Each department generates and gathers enormous amounts of data about customers, products, or the environment. This data can be used to enable new revenue streams by creating better offers and improving understanding of customer needs. Data analytics can also result in reducing the cost by improving the bottlenecks and identifying pain points.Building systems or ML algorithms leveraging the available data can be extremely complicated if the data is siloed and available only inside the department. Democratic access to the data across the enterprise helps to build better products faster and easier while having a single point for data storage makes the operations easier. Storing the heterogeneous data in data lakes and data meshes is easier for developers and data scientists.For one of our customers, Grape Up engineers have already implemented the modern data storage, starting from the ETL/EL(T) system, through the data lake and ML system built on top of it while maintaining enterprise-grade privacy and GDPR compliance.

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