Fix a technical SEO fix
for AI & Machine Learning.
Built for artificial intelligence and machine learning companies.
We fix the technical SEO issues that block rankings, crawlability, and site performance.
Why AI & Machine Learning companies
struggle with this.
LLM prompt management and versioning built on ad-hoc scripts and spreadsheets
Model evaluation and monitoring without proper tooling or metrics
AI-powered user interfaces that are slow and expensive to build with generic tools
Data pipelines that feed models breaking silently with no observability
BUILD IT FAST
We solve these problems for AI & Machine Learning
Greta specializes in technical seo that fit AI workflows. No generic tools, no compromises.
TALK TO A FOUNDER
Not sure where to start?
Book a 20-minute call. We'll map out your scope, tech stack, and go-to-market plan — for free.
How we fix it
for AI & Machine Learning.
Prompt management, model versioning, evaluation pipelines, and LLM-powered user interfaces require custom infrastructure. Stitching together third-party AI tools creates fragile systems with unpredictable costs.
AI companies need custom tooling for model management, data pipelines, and user-facing inference products that generic SaaS tools can't provide.
A clear audit that shows exactly what's wrong and why it matters
Prioritized fixes focused on the issues with the most SEO impact
Long-term monitoring so issues don't come back unnoticed
Industry context built in — not bolted on
What you get.
Full technical SEO audit covering 50+ checks
Core Web Vitals improvements and performance fixes
Crawlability and indexation issue resolution
Site architecture and internal linking optimization
Monitoring setup for ongoing site health
What AI & Machine Learning companies
build with us.
AI-powered SaaS products
Build user-facing products that embed LLMs, computer vision, or ML models into core workflows.
Model management platforms
Create internal tools for prompt versioning, model evaluation, and deployment tracking.
Data and training pipelines
Build custom pipelines for data ingestion, labeling, and model training workflows.
BUILD IT FAST
Ready to build for AI & Machine Learning?
Get a technical seo scoped, priced, and launched in 2–4 weeks. Let's start with a free conversation.
TALK TO A FOUNDER
Not sure where to start?
Book a 20-minute call. We'll map out your scope, tech stack, and go-to-market plan — for free.
How we work.
Audit the site
Run a full technical review covering performance, crawlability, indexation, and structure.
Prioritize by impact
Rank issues by how much they're costing you in rankings and organic traffic.
Implement fixes
Resolve critical and high-impact issues across the technical foundation.
Monitor and validate
Confirm fixes are working and set up monitoring to catch new issues.
Audit the site
Run a full technical review covering performance, crawlability, indexation, and structure.
Prioritize by impact
Rank issues by how much they're costing you in rankings and organic traffic.
Implement fixes
Resolve critical and high-impact issues across the technical foundation.
Monitor and validate
Confirm fixes are working and set up monitoring to catch new issues.
Ready to fix a technical SEO fix for AI & Machine Learning?
Typical timeline: 2–4 weeks
What is Technical SEO for AI & Machine Learning?
Technical SEO for AI & Machine Learning means building a technical SEO fix specifically designed around the workflows, compliance expectations, and user needs of artificial intelligence and machine learning companies. Unlike generic software or off-the-shelf tools, a custom-built solution gives your team full control over features, data, and the product roadmap — without paying for capabilities you don't need or working around limitations that slow you down.
AI companies need custom tooling for model management, data pipelines, and user-facing inference products that generic SaaS tools can't provide.
Why AI & Machine Learning companies need custom technical seo
Prompt management, model versioning, evaluation pipelines, and LLM-powered user interfaces require custom infrastructure. Stitching together third-party AI tools creates fragile systems with unpredictable costs.
Most AI teams start with generic tools because they're fast to deploy. But as the business grows, those tools create friction — missing the specific logic, integrations, and workflows that AI operations actually need. A custom-built product eliminates that friction permanently.
How long does it take to build?
AI-powered MVPs can ship in 4–8 weeks. Full MLOps platforms or complex inference products take 10–20 weeks. The timeline depends on scope, the number of user types, and the depth of integrations with existing AI systems. A well-scoped project with clear requirements moves significantly faster than one that evolves through the build. We scope tightly before starting so timelines stay predictable.
What does it cost?
AI/ML builds range from $10k–$50k depending on model integrations, data pipeline complexity, and inference infrastructure requirements. The biggest cost drivers are integration complexity, the number of distinct user roles, and whether the product needs to handle regulated data or compliance workflows. We provide a clear scope and fixed-price quote before any work begins.
Custom build vs. off-the-shelf tools
Off-the-shelf tools work well for standard use cases. But AI companies often have requirements that generic SaaS tools weren't built for: llm prompt management and versioning built on ad-hoc scripts and spreadsheets, model evaluation and monitoring without proper tooling or metrics, or workflows that don't fit the assumptions baked into general-purpose platforms.
A custom-built product gives you:
- Full ownership — no per-seat fees or platform lock-in
- Workflows built exactly for how AI teams operate
- Integrations with the tools and data sources you already use
- A foundation you can extend as your product and team grow
The right time to build custom is when generic tools are creating real friction, costing more in workarounds than a custom build would cost, or blocking product-critical workflows that your AI business depends on.
BUILD IT FAST
From idea to production in 2–4 weeks
Greta's process is proven. We've shipped 50+ AI & Machine Learning products. See how we can accelerate your timeline.
TALK TO A FOUNDER
Not sure where to start?
Book a 20-minute call. We'll map out your scope, tech stack, and go-to-market plan — for free.
AI & Machine Learning MVP questions answered
How do you build LLM applications using OpenAI, Claude, or open-source models?+
OpenAI/Claude: use their APIs (token-based pricing, $0.01–$0.10 per 1K tokens). Open-source (Llama, Mistral): self-host or use endpoint services. We integrate via standard APIs — your choice. GPT-4 is smarter but slower ($0.03/1K input, $0.06/1K output). Claude is faster and cheaper for many tasks.
What's the timeline for building an AI-powered SaaS product?+
Simple chatbot with OpenAI API: 2–4 weeks. Complex system with RAG (retrieval-augmented generation), custom fine-tuning, streaming: 6–10 weeks. Full MLOps with monitoring and retraining: 10–16 weeks. Most of the time is data prep, not model integration.
How do you handle prompt management and versioning?+
Store prompts in database or version control (Git). Track which prompt version was used for each output. A/B test prompts to see which generates better results. We build prompt dashboards so non-technical users can iterate without code. LangChain/LlamaIndex provide frameworks for this.
Can you build RAG (Retrieval-Augmented Generation) systems?+
Yes. RAG feeds external documents (PDFs, website content, databases) into LLM context so it answers based on YOUR data, not training data. Process: ingest documents → chunk into embeddings → store in vector DB (Pinecone, Weaviate) → retrieve relevant chunks at query time → send to LLM. Adds 3–5 weeks.
How much does an AI MVP cost?+
Simple chatbot (OpenAI API only): $10K–$15K. RAG system with document ingestion: $20K–$30K. Custom fine-tuned model: $30K–$50K+. Monthly costs depend on usage: GPT-4 at scale can be $1K–$10K/month.
Do you fine-tune models or just use APIs?+
We mostly use APIs (OpenAI, Claude, Anthropic) because: cheaper, no training data prep, instant updates. Fine-tuning makes sense only if you have: 1000s of labeled examples, domain-specific tasks (medical, legal), and cost sensitivity (lower inference cost). Usually not worth it for MVPs.
How do you measure AI quality and prevent bad outputs?+
Evaluation metrics: BLEU score (translation), ROUGE (summarization), user ratings (general). Human review loops let users flag bad outputs. We auto-tag problematic responses, feed them back for retraining. Guardrails: filter for safety, detect hallucinations, log all outputs for audit.
Can you build AI agents that take actions (not just generate text)?+
Yes. Agents with tool use: LLM decides which tools to call (send email, query database, update spreadsheet) based on user input. We use OpenAI function calling or LangChain agents. Risk: wrong tool choice → bad outcomes. Requires careful prompt engineering and testing.
Ready to fix
for AI & Machine Learning?
We fix the technical SEO issues that block rankings, crawlability, and site performance. Scoped for artificial intelligence and machine learning companies.