JATO Dynamics
Marketing content generation
Manual data synthesis bottlenecked dealer marketing. An AI engine now drafts content grounded in live metrics, saving 32 hours/month.
- ~32 hours monthly savings per dealership
Drivers faced 12s lags on rigid commands. An AI reasoning engine now interprets natural requests in 2.5s with 95% success.
A location technology specialist developing turnkey digital cockpit solutions for automotive manufacturers who struggle to replicate smartphone experiences in vehicles.
Drivers expect seamless voice interaction, but the company's initial infotainment prototype suffered from 12-second latency on user queries. Legacy...
“We use Azure OpenAI Service, Azure Cosmos DB, and Azure Kubernetes Service because we’ve identified these as key services that facilitate the acceleration of AI apps. Azure OpenAI Service gives us a model that helps create and maintain the infrastructure, so we do not have to create a reasoning engine ourselves. Data is the glue that holds everything together. Azure Cosmos DB as a globally distributed, scalable database enables the system to retain the previous customer conversations and preferences, allowing it to keep learning and become tailored to the driver. Its low-latency response times can bring data and apps closer to the users. And Azure Kubernetes Service brings together our architecture, accelerating service deployment and scaling.”
Maps, traffic data, and location technology for automotive and fleet industries.
Enterprise software, cloud infrastructure, and consumer electronics platform.
Related implementations across industries and use cases
Manual data synthesis bottlenecked dealer marketing. An AI engine now drafts content grounded in live metrics, saving 32 hours/month.
Legacy tools scattered sales leads. GenAI now parses calls and chats to guide agents and auto-draft follow-ups in real time.
Sensor data overwhelmed local servers. Engineers now run natural language queries 5x faster via AI, cutting PoC timelines by 80%.
Specialists manually compared PDF data. AI now flags deviations and routes them via Teams, cutting processing from days to <4 hours.
Translating 25,000 ERP objects meant 1,250 hours of manual developer work. AI finished the job in 20 days with zero errors.
Experts spent 15 minutes pulling data from scattered systems. Natural language prompts now generate detailed reports instantly.
Lab supply orders were handwritten in notebooks. Digital ordering now takes seconds, saving 30,000 hours for research annually.