Lovable
assistantsBuild full-stack apps by describing them in plain text
AI code tools assist with writing, testing, reviewing, and debugging software across a broad range of programming languages and environments. The 344 tools here include IDE integrations, web-based coding environments, specialized tools for data pipelines, and platforms for non-developers building internal apps.
Build full-stack apps by describing them in plain text
Free coding courses in Python, JavaScript, and 15+ languages
AI personal assistant for content, code, and analysis
Generate clinical notes for therapists in seconds
Code generation across multiple programming languages
Run AI coding agents in a secure, controlled environment
Build browser automation without code
Build autonomous AI agents integrated with Salesforce
Build web applications faster with AI developer bots
Turn product demos into documentation and support chatbots
AI voice assistant for customer service calls
Generate Excel formulas and VBA macros from plain English
Spell check tool for identifying typos and errors in code
No-code AI testing for web apps, UI, and regression checks
Generates training data for chatbots and language models
No-code web app generation with AI
Data analytics and business intelligence platform
Medical documentation assistant trusted by 100k+ physicians
Unified project management and CRM
AI testing for web and mobile apps
AI study platform with writing, math, and flashcards
Add AI chat to your website in minutes
Build professional AI apps and online businesses without coding
Hiring platform for the AI era
The category is wide and includes tools that serve very different audiences. Experienced developers typically want tools that integrate into their existing editor and support their specific language stack well. Teams may prefer tools with collaboration features, shared context, and audit logging. Non-developers building internal tools are better served by visual or low-code platforms like Dynaboard AI. Bug-fixing tools like FixThisBug.de focus on a narrow but high-value task. Code review and quality tools like GitRoll and Relicx focus on testing and reliability rather than generation. When comparing tools, practical benchmarks on your own codebase outperform general capability claims. Also consider how the tool handles context: tools with larger context windows handle full-file and multi-file edits more reliably. Security considerations include whether your code leaves your environment and under what terms it may be used to train future models.