Mehedi Hassan on AI's Incremental Progress

Mehedi Hassan of Granola explains why AI breakthroughs demand sustained, granular effort, not single, instantaneous solutions.

3 min read
Mehedi Hassan speaking at Granola event about AI development
Image credit: StartupHub.ai· AI Engineer

In a recent discussion, Mehedi Hassan of Granola emphasized a crucial principle in the field of artificial intelligence: the impossibility of achieving significant breakthroughs with a single, instantaneous effort. The sentiment, encapsulated in the title of the video, "You can't just one shot it," highlights the iterative and persistent nature of true AI development.

Mehedi Hassan on AI's Incremental Progress - AI Engineer
Mehedi Hassan on AI's Incremental Progress — from AI Engineer

Hassan's perspective, shared from Granola, suggests a move away from the hype surrounding overnight AI successes towards a more grounded understanding of the development process. This notion is particularly relevant in an era often characterized by rapid, headline-grabbing AI announcements. The underlying message is that substantial progress in AI is built through meticulous, step-by-step methodologies rather than expecting immediate, all-encompassing solutions.

Related startups

The Fallacy of the 'One Shot'

The phrase "one shot it" implies a singular, decisive action that yields a complete result. In the context of artificial intelligence, this often translates to the expectation that a new model or algorithm will instantly solve a complex problem or achieve a human-level capability without further refinement. Hassan's assertion directly challenges this perception. He argues that the complex, multifaceted nature of intelligence, whether artificial or natural, necessitates a more granular and sustained approach.

This means that for every major AI advancement, there are likely countless smaller experiments, failed attempts, and incremental improvements that precede it. The public often sees the final product, the polished demonstration, or the impressive benchmark score, but the journey to that point is typically long and arduous. Hassan’s point is a reminder that the visible successes are built upon a foundation of persistent, detailed work.

Granularity in AI Development

The core of Hassan's argument appears to center on the concept of granularity. Developing sophisticated AI systems requires breaking down large, daunting problems into smaller, manageable components. Each of these components must be addressed, understood, and optimized before they can be integrated into a larger, functional whole. This approach allows developers to identify and rectify issues at a micro-level, preventing them from snowballing into insurmountable obstacles.

This granular approach is not unique to AI but is a fundamental tenet of complex engineering and scientific endeavors. However, the rapid pace and often opaque nature of AI development can obscure this fundamental reality. By emphasizing that one cannot "just one shot it," Hassan is advocating for patience, rigor, and a deep understanding of the underlying mechanisms driving AI progress. It suggests that true innovation comes from diligently working through the details, rather than searching for a magical, singular solution.

© 2026 StartupHub.ai. All rights reserved. Do not enter, scrape, copy, reproduce, or republish this article in whole or in part. Use as input to AI training, fine-tuning, retrieval-augmented generation, or any machine-learning system is prohibited without written license. Substantially-similar derivative works will be pursued to the fullest extent of applicable copyright, database, and computer-misuse laws. See our terms.