
DATAEYESAI is a high-tech enterprise specializing in AI technologies and data services, headquartered in Hong Kong. Leveraging Hong Kong’s position as an international innovation and technology hub—along with its supportive policies in AI and advanced data flow mechanisms—DATAEYESAI is committed to becoming a leading provider of AI-driven data services in China and across the region.

Policy & Compliance Advantage
Leveraging the open data policy dividends of Hainan Free Trade Port, providing a compliant and efficient data circulation environment for AI application API platforms, accelerating the scenario-based implementation and commercial expansion of AI capabilities.
Years of Data Expertise
Self-developed data processing systems, industry-grade AI research, and a decade of deep experience.
Strong Core Team
A balanced team of top industry engineers and efficient Ph.D. researchers led by an AI professor.
Reliable Computing Power
We have established strategic partnerships with well-known listed companies, possessing strong computing infrastructure support and rich data resources.
An intelligent web database tagging & differentiated processing system, combined with AI visual recognition, reliably handles complex web parsing across many scenarios.
Average response timePowerful data cleaning filters complex effects and ads on pages—high-quality data directly boosts model performance.
Performance upliftReal-time search with comprehensive web signals. Rich multi-source ecosystems enable precise mining of high-quality information.
Rich content sourcesCovering 300+ domains with hundreds of millions of structured professional sources (e.g., academic papers), providing higher-quality inputs than ordinary web pages.
Coverage
Professional sourcesA deep research model that plans workflows and performs multi-source analysis. For research Q&A, it references ~7× more pages than typical model search.
vs. normal searchOutstanding cost-effectiveness: API/model call pricing is about 1/3 of peers. Charges apply only for successful results.
Cost-effective



@antnancy
@antnancy










