Filters Clear all
Pricing
Free tier
API
Open source
Platform

data 8

AI data tools help analysts, developers, and business users extract meaning from datasets, automate reporting, and interact with data using natural language. The category holds over 500 tools, reflecting how broadly data work spans industries. Common tasks include querying databases in plain English, summarizing documents, building charts, and cleaning or transforming structured data.

Abacus.AI

analytics

AI system builder for chatbots, workflows, and forecasting

Free From $7 50 · 48,545 votes

Llamaindex

analytics

Agentic OCR for complex documents and messy tables

Free 46 · 54,178 votes

ResumeCoach

research

Build a professional resume online

Free 39 · 19,100 votes

BlockSurvey

analytics

AI survey design and analysis

Free 38 · 7,572 votes

Raay

analytics

Survey and feedback collection tool

Free 37 · 42,695 votes

Free AI Resume Builder

research

Free ATS-optimized resume builder

Free 32 · 52,729 votes

kwrds.ai

research

Unlimited keyword ideas and search intent questions

Free 31 · 43,703 votes

unlock.domains

research

AI domain name generator with availability checking

Free 28 · 6,489 votes

The range within this category is wide. Tools like Text2SQL and Lovespreadsheets lower the barrier for non-technical users to query databases or work with spreadsheets, while platforms like Coactive and Arria are built for enterprise-scale data narration and unstructured data processing. Hunchbank and Wope address analytics and tracking use cases, and FlowCharts.ai helps visualize workflows and data logic. When evaluating, consider whether you need a tool that connects to live data sources, generates static reports, or supports ongoing querying. Data privacy and where your data is processed matters more here than in most other AI categories, especially for sensitive business or customer data. Pricing varies from free tiers for limited datasets to enterprise contracts for tools with robust connectors and compliance features. Accuracy of generated SQL or analysis outputs should always be validated, particularly in high-stakes reporting contexts.