Codex Now Remotely Accessible via ChatGPT App
Summary
OpenAI's Codex, a code generation model, is now available remotely through the ChatGPT application. This integration aims to simplify access for users.
Why it matters
This integration makes powerful code generation capabilities more accessible, potentially boosting developer productivity and enabling on-the-go coding assistance.
How to implement this in your domain
- 1Update your ChatGPT app to the latest version.
- 2Explore Codex features within the app for code generation and debugging assistance.
- 3Integrate mobile-based AI coding into your development workflow for quick tasks.
- 4Provide feedback to OpenAI on the mobile Codex experience to influence future improvements.
Who benefits
Key takeaways
- Codex is now available on the ChatGPT mobile app.
- This enhances accessibility for code generation on the go.
- The integration aims to simplify developer workflows.
- Users can leverage AI coding assistance from their mobile devices.

Originally posted by @bentossell on X · view source
Want to go deeper?
Turn these trends into skills with Learnijoy's hands-on AI & tech courses.
Explore coursesMore in AI Engineering & DevTools

Alpha Bank Expands ElevenLabs Partnership for AI Voice Agent
Alpha Bank is enhancing its customer service by integrating a custom AI voice agent, built with ElevenLabs' ElevenAgents, into its call center, e-banking, and mobile app. The agent will handle common queries in Greek and English and connect customers to advisors when necessary.
Deutsche Telekom Transforms Operations with AI Integration
Deutsche Telekom is strategically integrating AI across its operations to become an AI-native telecommunications company, enhancing customer service, employee workflows, and network management.
AI System Recommends Pathological Tests, Improving Diagnostic Efficiency
A new study introduces a pathological test recommendation system using Classifier Chain (CC) techniques to suggest diagnostic tests based on patient symptoms before physician consultation. The system, leveraging machine learning and Explainable AI (XAI), achieved high accuracy and provided clinically interpretable reasoning consistent with medical knowledge.