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Laptop imaginative and prescient tasks not often go precisely as deliberate, and this one was no exception. The concept was easy: Construct a mannequin that might have a look at a photograph of a laptop computer and establish any bodily harm — issues like cracked screens, lacking keys or damaged hinges. It appeared like an easy use case for picture fashions and huge language fashions (LLMs), but it surely rapidly was one thing extra sophisticated.
Alongside the best way, we bumped into points with hallucinations, unreliable outputs and pictures that weren’t even laptops. To unravel these, we ended up making use of an agentic framework in an atypical method — not for job automation, however to enhance the mannequin’s efficiency.
On this submit, we’ll stroll by way of what we tried, what didn’t work and the way a mix of approaches ultimately helped us construct one thing dependable.
The place we began: Monolithic prompting
Our preliminary method was pretty customary for a multimodal mannequin. We used a single, giant immediate to move a picture into an image-capable LLM and requested it to establish seen harm. This monolithic prompting technique is straightforward to implement and works decently for clear, well-defined duties. However real-world information not often performs alongside.
We bumped into three main points early on:
- Hallucinations: The mannequin would generally invent harm that didn’t exist or mislabel what it was seeing.
- Junk picture detection: It had no dependable technique to flag photos that weren’t even laptops, like footage of desks, partitions or individuals often slipped by way of and acquired nonsensical harm reviews.
- Inconsistent accuracy: The mix of those issues made the mannequin too unreliable for operational use.
This was the purpose when it grew to become clear we would want to iterate.
First repair: Mixing picture resolutions
One factor we observed was how a lot picture high quality affected the mannequin’s output. Customers uploaded every kind of photos starting from sharp and high-resolution to blurry. This led us to check with analysis highlighting how picture decision impacts deep studying fashions.
We educated and examined the mannequin utilizing a mixture of high-and low-resolution photos. The concept was to make the mannequin extra resilient to the wide selection of picture qualities it could encounter in observe. This helped enhance consistency, however the core problems with hallucination and junk picture dealing with endured.
The multimodal detour: Textual content-only LLM goes multimodal
Inspired by current experiments in combining picture captioning with text-only LLMs — just like the method lined in The Batch, the place captions are generated from photos after which interpreted by a language mannequin, we determined to present it a strive.
Right here’s the way it works:
- The LLM begins by producing a number of potential captions for a picture.
- One other mannequin, referred to as a multimodal embedding mannequin, checks how effectively every caption suits the picture. On this case, we used SigLIP to attain the similarity between the picture and the textual content.
- The system retains the highest few captions primarily based on these scores.
- The LLM makes use of these high captions to write down new ones, attempting to get nearer to what the picture really reveals.
- It repeats this course of till the captions cease enhancing, or it hits a set restrict.
Whereas intelligent in principle, this method launched new issues for our use case:
- Persistent hallucinations: The captions themselves generally included imaginary harm, which the LLM then confidently reported.
- Incomplete protection: Even with a number of captions, some points had been missed fully.
- Elevated complexity, little profit: The added steps made the system extra sophisticated with out reliably outperforming the earlier setup.
It was an fascinating experiment, however in the end not an answer.
A artistic use of agentic frameworks
This was the turning level. Whereas agentic frameworks are often used for orchestrating job flows (assume brokers coordinating calendar invitations or customer support actions), we questioned if breaking down the picture interpretation job into smaller, specialised brokers would possibly assist.
We constructed an agentic framework structured like this:
- Orchestrator agent: It checked the picture and recognized which laptop computer elements had been seen (display, keyboard, chassis, ports).
- Part brokers: Devoted brokers inspected every element for particular harm sorts; for instance, one for cracked screens, one other for lacking keys.
- Junk detection agent: A separate agent flagged whether or not the picture was even a laptop computer within the first place.
This modular, task-driven method produced far more exact and explainable outcomes. Hallucinations dropped dramatically, junk photos had been reliably flagged and every agent’s job was easy and centered sufficient to regulate high quality effectively.
The blind spots: Commerce-offs of an agentic method
As efficient as this was, it was not excellent. Two fundamental limitations confirmed up:
- Elevated latency: Operating a number of sequential brokers added to the overall inference time.
- Protection gaps: Brokers might solely detect points they had been explicitly programmed to search for. If a picture confirmed one thing sudden that no agent was tasked with figuring out, it could go unnoticed.
We would have liked a technique to stability precision with protection.
The hybrid resolution: Combining agentic and monolithic approaches
To bridge the gaps, we created a hybrid system:
- The agentic framework ran first, dealing with exact detection of identified harm sorts and junk photos. We restricted the variety of brokers to probably the most important ones to enhance latency.
- Then, a monolithic picture LLM immediate scanned the picture for the rest the brokers may need missed.
- Lastly, we fine-tuned the mannequin utilizing a curated set of photos for high-priority use circumstances, like steadily reported harm eventualities, to additional enhance accuracy and reliability.
This mix gave us the precision and explainability of the agentic setup, the broad protection of monolithic prompting and the arrogance enhance of focused fine-tuning.
What we discovered
A number of issues grew to become clear by the point we wrapped up this mission:
- Agentic frameworks are extra versatile than they get credit score for: Whereas they’re often related to workflow administration, we discovered they might meaningfully enhance mannequin efficiency when utilized in a structured, modular method.
- Mixing completely different approaches beats counting on only one: The mix of exact, agent-based detection alongside the broad protection of LLMs, plus a little bit of fine-tuning the place it mattered most, gave us way more dependable outcomes than any single technique by itself.
- Visible fashions are vulnerable to hallucinations: Even the extra superior setups can bounce to conclusions or see issues that aren’t there. It takes a considerate system design to maintain these errors in test.
- Picture high quality selection makes a distinction: Coaching and testing with each clear, high-resolution photos and on a regular basis, lower-quality ones helped the mannequin keep resilient when confronted with unpredictable, real-world photographs.
- You want a technique to catch junk photos: A devoted test for junk or unrelated footage was one of many easiest modifications we made, and it had an outsized affect on general system reliability.
Closing ideas
What began as a easy thought, utilizing an LLM immediate to detect bodily harm in laptop computer photos, rapidly was a a lot deeper experiment in combining completely different AI methods to deal with unpredictable, real-world issues. Alongside the best way, we realized that a number of the most helpful instruments had been ones not initially designed for this kind of work.
Agentic frameworks, typically seen as workflow utilities, proved surprisingly efficient when repurposed for duties like structured harm detection and picture filtering. With a little bit of creativity, they helped us construct a system that was not simply extra correct, however simpler to know and handle in observe.
Shruti Tiwari is an AI product supervisor at Dell Applied sciences.
Vadiraj Kulkarni is an information scientist at Dell Applied sciences.