Show HN: AI-Driven Workout Coach for You

Hacker News - AI
Aug 4, 2025 18:52
canberkh
1 views
hackernewsaidiscussion

Summary

A new app called Jakt AI Workout Planner has launched, offering users an AI-driven workout coach to personalize fitness routines. By leveraging artificial intelligence, the app aims to tailor exercise plans to individual needs, demonstrating the growing application of AI in personal health and wellness. This reflects a broader trend of integrating AI into everyday lifestyle tools.

Article URL: https://apps.apple.com/us/app/jakt-ai-workout-planner/id6746971712 Comments URL: https://news.ycombinator.com/item?id=44789966 Points: 2 # Comments: 0

Related Articles

Searching For 100x? Analysts Suggest Ruvi AI (RUVI), Not Tron (TRX), as Its Token Became Top Trending After CoinMarketCap Listing

Analytics InsightAug 4

Analysts highlight Ruvi AI (RUVI) as a promising investment, noting its token surged in popularity after being listed on CoinMarketCap, surpassing interest in established projects like Tron (TRX). This trend reflects growing enthusiasm for AI-driven blockchain solutions, signaling increased investor confidence in the potential of AI-integrated cryptocurrencies.

Show HN: Tab'd – Track and share AI and clipboard operations within your IDE

Hacker News - AIAug 4

Tab'd is a new extension for IDEs that tracks and visualizes AI-assisted coding and clipboard operations, providing detailed metadata about AI edits and copy-paste origins. This metadata can be shared within teams and highlighted during code reviews, promoting greater transparency and accountability in AI-assisted software development. The tool reflects a growing emphasis on traceability and responsible use of AI in coding workflows.

The Loop Is Back: Why HRM Is the Most Exciting AI Architecture in Years

Hacker News - AIAug 4

The article discusses the resurgence of the "Human Reasoning Machine" (HRM) architecture, which reintroduces feedback loops and iterative reasoning into AI systems, contrasting with the feedforward nature of most current models. This approach promises more flexible, human-like problem solving and could significantly advance AI's ability to handle complex, real-world tasks.