Generative AI has made vital strides in numerous fields, together with SEO.
This text explores an important query: Can AI successfully carry out technical search engine optimization evaluation utilizing uncooked crawl information?
We’ll study the capabilities of ChatGPT in decoding Screaming Frog crawl information and producing search engine optimization suggestions.
Leveraging generative AI for technical search engine optimization
My Search Engine Land articles typically study in-depth technical purposes the place search engine optimization and AI can collaborate, leading to elevated efficiencies. For instance, I’ve used AI to generate alt text from image files or product descriptions from PIM data.
Nonetheless, many entrepreneurs are much less technical and will battle to mix OpenAI’s API, Python and spreadsheets. Some entrepreneurs would relatively hand AI the tech information and obtain clear human insights.
As such, I believed I’d produce an article inspecting the effectiveness of AI in decoding technical search engine optimization information. Even if you happen to’re not speaking with AI fashions through programmatic API entry, many AI assistants (ChatGPT, Google Gemini) provide user-friendly chat interfaces. We’ll discover ChatGPT on this article.
Currently, the flexibility of those AI-powered chat interfaces has been rising. For instance, OpenAI’s ChatGPT has just lately advanced from GPT-4 to GPT-4o. The brand new GPT-4o mannequin comes with many characteristic modifications:
- GPT-4o is far sooner than GPT-4. It has an analogous customary of accuracy to GPT-4, whereas responding at tempo, extra just like GPT-3.5-Turbo.
- GPT-4o is much less reliant on plugins or customized GPTs to entry internet content material.
- GPT-4o will search internet content material way more steadily to generate its outcomes, making the produced materials “more energizing.”
- Although true, the net is poorly curated and stuffed with misinformation. Many really feel that the refined information mannequin of GPT-4, with fewer internet requests – truly produced superior outcomes to GPT-4o.
- There’s no arguing that GPT-4o is not less than corresponding to GPT-4. It’s a lot sooner and way more interactive. It may well work with extra varieties of connected information, produce extra varieties of media and is web-capable.
With GPT-4o now extra able to looking out internet content material, it could possibly be extra useful for entrepreneurs, even those that lack technical abilities. Nonetheless, there are considerations about its potential to entry the net, as previous experiences with instruments like Google’s Bard and Gemini confirmed inferior outcomes.
To check GPT-4o, we’ll give it particular technical search engine optimization crawl information as an alternative of generic evaluation duties. This can assist us see how a lot ChatGPT has improved and if it may be helpful for technical search engine optimization evaluation.
Analyzing Screaming Frog crawl information for insights through ChatGPT
The “inside all” export from Screaming Frog is the bread-and-butter basis of most technical search engine optimization insights.
That single export could also be pivoted in a number of methods to touch upon metadata points, canonical tag conflicts, hreflang points and many others.
Will AI choose up on such points? Will AI hallucinate or misdiagnose points the place none are current? Let’s discover out.
We’ll use the Butcher’s Canine Meals firm web site as a testbed for these checks. They’re a UK pet food provider, and their website is about the appropriate dimension for our proposed actions.
First, we’ll crawl Butchersdogfood.co.uk:

Over 3,000 inside addresses had been found. Now, we will export the checklist of inside addresses to a CSV file:


Now, we will feed the CSV file to GPT-4o and ask for some suggestions. Most individuals don’t write prompts as complicated as I do. They write shorter prompts after which refine them. As such, I’ll try and observe that conduct.


The response contained many suggestions, however most had been disappointingly generic. For instance, suggestions like this:
- “A number of URLs level to picture information (e.g., PNG, JPEG). Be certain that all photos are optimized for internet utilization to cut back load instances. This contains compressing photos and utilizing acceptable codecs.”
This suggestion is disappointing as a result of ChatGPT truly did have entry to response time and file-size information as per picture addresses. So, the response might probably have been extra particular.
Right here’s one other instance of very generic steering:
- “Be certain that canonical tags are appropriately applied to keep away from duplicate content material points. Every web page ought to have a self-referencing canonical tag until it’s a deliberate duplicate.”
Since ChatGPT has entry to the datasheet, it ought to be capable to work out (roughly) which URLs are the principle addresses and which aren’t (parameters within the URL string, and many others.).
Thus, ChatGPT ought to be capable to isolate canonical tag issues relatively than give basic (and ineffective) steering.
Let’s push it a bit more durable:


The steering remains to be comparatively imprecise, even after we iterate and create a extra detailed immediate. Many pages are all the time lacking canonical tags, corresponding to picture addresses, which don’t help HTML.
The response ought to have been extra particular and detailed, explaining why sure addresses wanted canonical tags however didn’t have them.
As a part of the response above, some extra detailed suggestions was given:


Wow, these suggestions are a complete mess.
In a means, they’re spectacular regardless of being completely incorrect. I would anticipate an inexperienced junior search engine optimization individual whose been thrown into the technical search engine optimization deep finish to make comparable suggestions.
The recommendation could be incorrect, however there are certainly indicators of intelligence. You will need to do not forget that it nonetheless takes a point of intelligence to go off on tangents and produce related but inaccurate evaluation. The work is unusable, however there are indicators of a real try.
As people, we’re liable to holding AI to unfair requirements. If AI produces one thing that’s incorrect or incorrect, we are saying that AI has failed to realize human understanding. Nonetheless, many people (actual people) additionally fall quick, and this occurs typically.
For me, the query is: Has AI failed in a means that demonstrates some human-like try at finishing the duty?
I feel indicators are constructive for the long run when it comes to such purposes for accessible (chat interface) AI interactions. For now, although, it might be disastrous to behave on the suggestions given.
Figuring out a redirecting URL as probably essential (regardless that it’s a redirecting tackle) after which assuming that work could or could not have to happen on the ultimate vacation spot URL is a number of the most woolly pondering I’ve personally encountered.
The one attention-grabbing pointer that ChatGPT was in a position to provide you with was that various addresses on the location resulted in 301 redirects, and there could also be some faulty structure:


The above response was given after our very first message earlier than we started pushing AI to suppose in additional particular phrases. This was truly the primary suggestion that ChatGPT gave, and in some methods it’s attention-grabbing:


There are round 100 redirecting addresses. Many of those are redirected picture addresses. Some look like they had been as soon as true pages or maybe are trailing slash redirects. Others revolve round pagination.
This was an attention-grabbing lead, however most different suggestions had been generic or deceptive. ChatGPT’s try at particular recommendation was semi-intelligent, however the strategies would have wasted time or precipitated extra issues.
I’d grade this work a D or E, although many machines wouldn’t rating that top on technical search engine optimization from flat datasheets. I’m impressed, however I don’t suggest utilizing AI for this stage of technical search engine optimization evaluation but.
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Evaluating AI insights to Ahrefs’ technical audit
Ahrefs has a complicated cloud-based search engine optimization crawler. Whereas Screaming Frog’s information could be extra correct, Ahrefs nonetheless offers stable information and higher insights. I exploit each instruments for website audits.
If we have a look at the output from a full Ahrefs technical search engine optimization crawl, we could then be capable to decide how shut GPT-4o got here to discovering the reality. Let’s have a look at the Ahrefs overview:


Wow, that’s a wonderful ranking! Effectively completed to the Butcher’s Canine Meals group.
Regardless of the excessive ranking, some points nonetheless persist. That is completely regular and is often nothing to fret about.
What’s attention-grabbing right here is that the remaining points revolve round redirecting addresses and pictures, which can have too giant file sizes. That is attention-grabbing as a result of these had been a number of the high points picked out by our AI assistant primarily based on Screaming Frog information.
What does this imply? Was the AI proper all alongside, and maybe we judged ChatGPT too harshly for “generic sounding” suggestions that had been truly correct?
Sure and no. People typically really feel the necessity to defend their roles in opposition to advancing know-how, which may create a bias in opposition to it. This bias is frequent, even amongst these within the digital area.
Nonetheless, this know-how just isn’t a direct risk to technical search engine optimization specialists. The recommendation given was not usable, however the AI’s errors had been clever, just like these of an inexperienced human who exhibits promise.
The overall focus of the insights, like redirects and picture compression, was correct even when the particular recommendation wasn’t.
The ultimate verdict
GPT-4o is an unlimited enchancment over GPT-3.5-Turbo. Nonetheless, I’m unconvinced that there’s vital (or any) enchancment over GPT-4, which appears to hallucinate much less.
Presently, I see GPT-4o as a superb center floor between GPT-3.5-Turbo and GPT-4. To me, the outcomes of GPT-4 appear superior. However GPT-4o is round as quick as GPT-3.5-Turbo and is extra interactive.
I suppose time will inform which mannequin customers will favor. I’m keen to attend longer for GPT-4 to supply superior output, even when that output is proscribed through a (curated) information mannequin.
ChatGPT’s recommendation was poor. It missed key factors and provided generic, unhelpful strategies. Its try at particular recommendation additionally failed.
Nonetheless, there have been indicators of intelligence in its errors, just like an inexperienced human making errors. This exhibits potential for enchancment.
For now, don’t depend on this know-how for technical search engine optimization evaluation, particularly via easy chat interfaces. However control it – an AI able to offering helpful insights could also be nearer than we predict.
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