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.
Pain Point
Challenge
Develop an AI-powered LMS that goes beyond course hosting, by:
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
Impact
Context
Software teams struggle to diagnose system failures from massive log files. Manual analysis is slow, error-prone, and requires expert knowledge. Root cause extraction from unstructured, noisy logs. Use creative algorithms, LLM prompting strategies, or hybrid heuristics.
Pain Point
Challenge
Build an AI-powered log analytics assistant that can:
Goal
Deliver a working prototype that:
Outputs
Impact
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
Challenge
Build a Generative AI-powered cockpit agent that dynamically personalizes the in-car experience based on contextual data such as:
Goal
Deliver real-time, adaptive personalization of:
Outputs
Impact
Context
In a highly competitive automotive market, consumer purchase decisions are influenced by a mix of vehicle features, price, and brand perception. Automakers invest heavily in design and innovation, but it is often unclear which specific features (e.g., mileage, horsepower, safety, infotainment, connectivity) actually drive sales in different regions and demographics.
Pain Point
Challenge
Develop a data-driven AI solution to quantify the importance of car features in consumer purchasing decisions. The system should analyze:
Goal
Identify and rank which features most strongly influence purchasing decisions, enabling automakers to:
Outputs
Impact
Context
Electric Vehicle (EV) adoption is accelerating globally, driven by sustainability goals and government incentives. However, charging infrastructure development lags behind, and demand at charging stations is often highly variable, influenced by factors such as time of day, location, and weather. This creates challenges for both EV users (availability, waiting times) and city planners (under/over-utilization of infrastructure).
Pain Point
Challenge
Develop an AI solution that forecasts charging demand at individual stations. The system should take into account:
Goal
Provide accurate time-series demand forecasts (hourly/daily) per charging station, enabling operators and planners to:
Outputs
Impact
Context
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.
Pain Point
Challenge
Build a Generative AI assistant that takes as input:
Goal
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.
Outputs
Impact