Pricing Models
AI API Integration
Building applications that call existing AI APIs (OpenAI, Claude, Gemini, Stable Diffusion). Development cost $5,000–$50,000; ongoing API costs vary with usage.
Best for: Most businesses — faster to build, no model maintenance, and best-in-class AI capabilities at API pricing.
Fine-Tuning Existing Models
Fine-tuning foundation models (GPT, Llama, Mistral) on your proprietary data. $5,000–$30,000 project fee plus GPU compute costs.
Best for: Companies with proprietary labeled datasets needing domain-specific AI performance beyond base model capability.
Custom ML Model
Training custom machine learning models from scratch. Requires significant data, compute, and senior ML engineering time.
Best for: Unique use cases with specialized data where no existing model performs adequately.
AI Strategy Consulting
AI roadmap, use case identification, and build-vs.-buy analysis. $5,000–$30,000 engagement before committing to development.
Best for: Companies exploring AI transformation who need expert guidance before technical investment.
Service Tiers
AI Integration
$10,000–$40,000
Integrating existing AI APIs into a product — chatbot, content generation, search, summarization, or classification features.
- LLM integration (OpenAI, Claude, etc.)
- Prompt engineering and optimization
- Basic RAG for document Q&A
- API cost management and monitoring
- Safety filters and output validation
AI-Powered Product
$40,000–$150,000
AI as a core product feature — intelligent workflow automation, advanced search, personalization engine, or computer vision integration.
- Custom AI pipeline architecture
- RAG with vector database (Pinecone, Weaviate)
- Fine-tuned model for domain specificity
- Human-in-the-loop for quality control
- AI evaluation and monitoring framework
Custom AI Platform
$150,000–$500,000+
Full custom AI platform with proprietary models, training infrastructure, MLOps pipeline, and enterprise-grade deployment.
- Custom model training and evaluation
- MLOps pipeline (training, versioning, serving)
- Data labeling and quality management
- A/B testing and model performance tracking
- Enterprise security and compliance for AI
What Drives the Cost?
Custom vs. API Model
Using OpenAI or Claude API is 10–100× cheaper than training custom models for most use cases. Custom training is only justified for specialized domains.
Data Preparation
Clean, labeled training data is the most expensive part of custom ML. Data collection, cleaning, and labeling can cost more than the model training itself.
Compute Infrastructure
GPU training costs for large model fine-tuning run $5,000–$50,000. API-based applications pay per-token costs that scale with usage volume.
RAG and Vector DB Complexity
Retrieval-Augmented Generation for document Q&A requires vector database setup, chunking strategy, and relevance optimization.
MLOps and Monitoring
Production AI systems require monitoring for drift, hallucination, and performance degradation — often overlooked until they cause problems.
Safety and Compliance
AI systems handling PII, financial data, or making consequential decisions require additional safety measures, bias testing, and compliance review.
Rates by Location
| Region | Rate |
|---|---|
| 🇺🇸United States | $150–$350/hr |
| 🇵🇱Eastern Europe | $70–$160/hr |
| 🇮🇳India | $40–$100/hr |
| 🇨🇦Canada | $100–$200/hr |
| 🇬🇧United Kingdom | $100–$200/hr |
Pricing FAQ
Should I use ChatGPT API or build a custom model?
Use the API for 95% of use cases. OpenAI, Anthropic, and Google APIs give you state-of-the-art models maintained by the world's best AI teams at zero infrastructure cost. Only consider custom training when you have: (1) millions of labeled examples, (2) strict data privacy preventing cloud API use, or (3) a highly specialized domain where base models consistently underperform.
How much does it cost to add an AI chatbot to my product?
A basic AI chatbot using an LLM API costs $8,000–$25,000 to build and integrate. A sophisticated AI assistant with RAG over your documentation, memory, and multi-turn conversation costs $25,000–$75,000. Ongoing API costs for a mid-size user base are typically $500–$3,000/month depending on usage volume.
What AI use cases deliver the fastest ROI?
The highest ROI AI applications: (1) content generation for marketing/SEO reducing content costs 50–80%, (2) support chatbots deflecting 30–50% of Tier-1 tickets, (3) document processing/extraction replacing manual data entry, (4) code generation tools improving developer productivity 20–40%. All of these are achievable with existing API-based AI tools, not custom models.
Find the right Cognitive Computing partner
Compare verified agencies with transparent pricing. Request quotes and get matched to the right partner for your budget.
Find Cognitive Computing Companies