Show HN: Google ADK and Vertex AI Memory Bank for Persistent Conversational AI

Hacker News - AI
Jul 10, 2025 02:55
serkanh
1 views
hackernewsaidiscussion

Summary

A developer has created a conversational AI system that uses Google's Agent Development Kit and the new Vertex AI Memory Bank to enable persistent long-term memory across user sessions. This advancement allows AI assistants to remember user-specific details and adapt over time, enabling applications like personalized interview practice, infrastructure troubleshooting, and tailored learning support. The approach demonstrates significant progress toward more adaptive, context-aware AI systems with lasting user relationships.

I built a conversational AI that maintains long-term memory across sessions using Google's Agent Development Kit with recently introduced Vertex AI Memory Bank. - Interview practice bots that remember your weak areas and track improvement - Infrastructure troubleshooting assistants that recall past outage patterns - Code review helpers that learn your team's standards over time - Personal learning assistants that adapt based on what explanations work for you Comments URL: https://news.ycombinator.com/item?id=44516749 Points: 1 # Comments: 0

Related Articles

Sei Crypto Gains Impressive, But Bitcoin Solaris Token Holder Program Offers 0.5 BTC Reward

Analytics InsightJul 10

The article highlights the growth of Sei Crypto and introduces the Bitcoin Solaris Token Holder Program, which offers a 0.5 BTC reward to participants. While the main focus is on cryptocurrency incentives, the trend underscores the increasing integration of AI-driven analytics and automation in managing and promoting crypto assets. This reflects a broader movement toward leveraging AI for enhanced security, transparency, and engagement in the digital asset space.

Wolflux – AI Predicts Stocks in Realtime

Hacker News - AIJul 10

Wolflux is a newly launched AI-powered platform that provides real-time stock trading insights, including Buy/Sell/Hold signals with confidence scores, technical indicators, sentiment analysis, and risk modeling. It leverages a hybrid of machine learning models (LSTM, KNN, SVM, logistic regression) alongside traditional analysis, running continuously on live data feeds. This development highlights the growing integration of advanced AI techniques in financial trading tools, aiming to enhance decision-making for traders.

5 Tokens in the Waitlist Stage You Shouldn’t Miss

Analytics InsightJul 10

The article highlights five promising AI-related tokens currently in the waitlist stage, emphasizing their potential to drive innovation in decentralized AI applications and services. These tokens aim to enhance areas such as data privacy, model sharing, and AI infrastructure, signaling growing investment and interest in the intersection of blockchain and artificial intelligence. Their development could accelerate the adoption of decentralized AI solutions across various industries.