Contextual AI is an ai based platform that help businesses that uses AI to get the accurate answer from their own data.
Instead of different ai tools like ChatGPT, Contextual AI is more precise for result on given data, this tools is especially designed for industries where accuracy needed like finance, healthcare and law.
What is Contextual AI?

Contextual AI works with a technique known as Retrieval-Augmented Generation (RAG). So it does not just answer questions at random, but searches your organisation data to find the correct answer before it gives an answer. This way it creates more relevant and authentic answers.
Features of Contextual AI
- High Accuracy: Contextual AI’s Grounded Language Model (GLM) achieves 88% factual accuracy, which is higher than many other AI models.
- Handles Complex Data: It can understand and process various types of data, including text, images, charts, and tables.
- Enterprise-Ready: Designed for businesses, it offers strong security and compliance features, making it suitable for industries with strict regulations.
- Customizable: You can tailor the AI to your specific needs, ensuring it aligns with your business requirements.
Pricing Of Contextual AI
Contextual AI offers different pricing options based on your needs
- Basic (Text Only): $3 per 1,000 pages.
- Standard (Multimodal): $40 per 1,000 pages.
You can choose the plan accordingly, pricing is also on demand and also on the token basis
Who Should Use Contextual AI?
Contextual AI is being used by businesses that need accurate and reliable information from their data. It is especially useful for
- Finance: Analyzing reports and making informed decisions.
- Healthcare: Understanding patient data and medical research.
- Legal: Reviewing contracts and legal documents.
By providing precise answers, Contextual AI helps these industries avoid mistakes and make better decisions
Pros and Cons
Pros | Cons |
---|---|
88% factual accuracy on FACTS benchmark, beating GPT‑4o (78.8%) and Gemini (84.6%) (venturebeat.com) | Higher cost and enterprise-level pricing likely only via quote |
Grounded Language Model that refuses to hallucinate and admits unknowns | Complex setup requiring ML/data engineering expertise |
RAG 2.0 system – jointly optimizes retriever, reranker, and generator | Infrastructure overhead for private VPC/on‑prem deployment |
Good with multimodal & structured data (charts, diagrams, DBs) | Not ideal for small use cases or teams lacking data scale/usage context |
Strong enterprise readiness (SOC 2, audit, access control, security) | |
Snowflake native – faster security review and integration | |
Trusted by top clients (HSBC, Qualcomm, Economist) with strong funding support |
Conclusion
Contextual AI is a powerful tool for businesses that need accurate information from their data. Its focus on precision and reliability makes it stand out from general AI tools.
If your industry requires careful handling of information, Contextual AI could be a valuable addition to your operations.