Mete Atamel
Lessons Learned Building a GenAI Powered App
#1about 2 minutes
The limitations of a static trivia database
The original quiz application was built on the Open Trivia API, which resulted in significant limitations like a fixed set of topics, formats, and languages.
#2about 5 minutes
Reimagining the quiz app with generative AI
A live demonstration showcases how generative AI can create dynamic quizzes on any topic, in any language, and even generate a relevant cover image.
#3about 6 minutes
The technical architecture of the GenAI quiz app
The application uses Flutter for the multi-platform UI, Cloud Run for hosting, Firestore for real-time data, and Vertex AI for accessing Google's generative models.
#4about 3 minutes
Navigating the inconsistency and uncertainty of LLMs
While GenAI makes complex tasks seem easy, achieving consistent and high-quality results is difficult due to the inherent non-deterministic nature of LLMs.
#5about 2 minutes
Knowing when not to use a large language model
For tasks like fuzzy string matching or simple image editing, traditional libraries and tools can be more effective, reliable, and cheaper than using an LLM.
#6about 4 minutes
Effective prompting and defensive coding for LLMs
Write clear but not overly detailed prompts, manage them like code with versioning, and code defensively to handle failures, malformed data, and empty results from the LLM.
#7about 2 minutes
Applying frameworks and engineering principles to LLM development
Using higher-level frameworks like LangChain can simplify development, while standard software engineering practices like caching and parallel calls are crucial for performance and cost management.
#8about 4 minutes
The challenge of ensuring quality and accuracy in LLMs
While it's easy to test the format of an LLM's output, verifying its quality and factual accuracy is much harder and may require using another LLM as a validator.
#9about 1 minute
Improving LLM accuracy with grounding techniques
To increase factual accuracy and reduce hallucinations, ground the model's responses in reliable data sources using tools like Google Search or a custom knowledge base via Vertex AI Search.
#10about 1 minute
How GenAI unblocks features but introduces new challenges
Generative AI can rapidly expand an application's capabilities, but this introduces a new class of problems related to accuracy, consistency, and validation that require new engineering solutions.
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