ai memory
30 articles about ai memory in AI news
MemPalace Hits 96.6% on LongMemEval, Beats Paid AI Memory Tools
MemPalace, an open-source AI memory system built by actress Milla Jovovich and developer Ben Sigman, achieved 96.6% on the LongMemEval benchmark—the highest local-only score ever recorded—using a memory palace architecture that stores all conversations verbatim.
MNEMA: A Witness Lattice for Multi-Agent AI Memory
Today's agentic AI fails three ways: agents miscoordinate, memory gets quietly poisoned, and decisions can't be audited. A new EUMAS 2026 submission argues the fix is to stop treating memory as static records. Make it *living* — every memory unit becomes an autonomous cryptographic witness that interacts with other witnesses (agree, disagree, give birth to new witnesses, split, coalesce, retire), and decisions emerge from a fixed signed protocol rather than from a single orchestrator.
AI Memory Survey: Three Systems Needed for Human-Like Recall
A new survey paper proposes that modern AI requires three distinct memory systems—parametric, retrieval, and agent memory—to achieve human-like cognition, highlighting control as the key bottleneck.
Google's TITANS Architecture: A Neuroscience-Inspired Revolution in AI Memory
Google's TITANS architecture represents a fundamental shift from transformer limitations by implementing cognitive neuroscience principles for adaptive memory. This breakthrough enables test-time learning and addresses the quadratic scaling problem that has constrained AI development.
Anthropic Democratizes AI Memory: Claude's Free Tier Gets Contextual Recall
Anthropic has expanded access to Claude's memory feature, making it available to all free users. This strategic move coincides with new tools to import conversations from rival chatbots, positioning Claude as a more personalized and sticky alternative in the competitive AI assistant market.
Beyond RAG: How AI Memory Systems Are Creating Truly Adaptive Agents
AI development is shifting from static retrieval systems to dynamic memory architectures that enable continual learning. This evolution from RAG to agent memory represents a fundamental change in how AI systems accumulate and utilize knowledge over time.
Physics-Inspired AI Memory: How Continuous Fields Could Solve AI's Forgetting Problem
Researchers have developed a revolutionary memory system for AI agents that treats information as continuous fields governed by physics-inspired equations rather than discrete database entries. The approach shows dramatic improvements in long-context reasoning, with +116% performance on multi-session tasks and near-perfect collective intelligence in multi-agent scenarios.
The Unlearning Illusion: New Research Exposes Critical Flaws in AI Memory Removal
Researchers reveal that current methods for making AI models 'forget' information are surprisingly fragile. A new dynamic testing framework shows that simple query modifications can recover supposedly erased knowledge, exposing significant safety and compliance risks.
Hindsight AI: How Biomimetic Memory Systems Are Revolutionizing Agent Intelligence
Hindsight, an open-source AI memory system, achieves state-of-the-art performance on the LongMemEval benchmark by mimicking human memory structures. Unlike traditional RAG approaches, it employs parallel retrieval strategies to enable agents that don't just remember—they learn.
OpenAI's ChatGPT 'Dreaming' Memory Retains Preferences Across Sessions
OpenAI launched a dreaming memory system for ChatGPT that retains user preferences across conversations by compressing and replaying session data, enabling persistent personalization.
HydraDB Raises $6.5M for Persistent Agent Memory, Solving the Session Gap
HydraDB raised $6.5M for persistent agent memory, solving the session-gap problem context windows ignored. The round signals memory as a startup thesis.
AgingBench: AI Agents Lose Reliability Over Time & Memory Fails
UT Austin paper finds AI agents degrade over time via memory errors. Proposes AgingBench to measure reliability decay across sessions.
Zep AI's Graphiti: Agent Memory Without Schema Is Just Storage
Zep AI's Graphiti enforces Pydantic schemas on LLM entity extraction, preventing generic label collapse and enabling precise querying of agent memory.
Memory as a Model: Augmenting LLMs with Trained Memory
Paper augments LLMs with trained memory for long-term recall. Model-agnostic approach stores external knowledge without retraining.
Neo4j's agent-memory: Open-source unified memory for AI agents via knowledge graphs
Neo4j releases agent-memory, an open-source unified memory layer for AI agents using knowledge graphs, enabling persistent structured recall.
GBrain: Garry Tan's Agent Memory Uses Markdown as System of Record
GBrain is Garry Tan's agent memory system using markdown as the system of record, with a self-wiring knowledge graph and overnight dream cycle.
OpenAI Codex Update Adds macOS Agent, Browser, Memory; 3M Weekly Users
OpenAI released a major Codex update featuring background macOS automation, an in-app browser, persistent memory, and 90+ plugins. With 3M weekly users and nearly half of usage now non-coding, Codex is being repositioned as a general work agent.
Cognee Open-Source Framework Unifies Vector, Graph, and Relational Memory for AI Agents
Developer Akshay Pachaar argues AI agent memory requires three data stores—vector, graph, and relational—to handle semantics, relationships, and provenance. His open-source project Cognee unifies them behind a simple API.
Karpathy's LLM Wiki Hits 5k Stars, Gains Memory Lifecycle Extension
Andrej Karpathy's LLM Wiki repository gained 5,000 GitHub stars in two days. A developer has now extended it with memory lifecycle features, addressing a noted gap.
Mind: Open-Source Persistent Memory for AI Coding Agents
An open-source tool called Mind creates a shared memory layer for AI coding agents, allowing them to remember project context across sessions and different interfaces like Claude Code, Cursor, and Windsurf.
Memory Systems for AI Agents: Architectures, Frameworks, and Challenges
A technical analysis details the multi-layered memory architectures—short-term, episodic, semantic, procedural—required to transform stateless LLMs into persistent, reliable AI agents. It compares frameworks like MemGPT and LangMem that manage context limits and prevent memory drift.
Building a Memory Layer for a Voice AI Agent: A Developer's Blueprint
A developer shares a technical case study on building a voice-first journal app, focusing on the critical memory layer. The article details using Redis Agent Memory Server for working/long-term memory and key latency optimizations like streaming APIs and parallel fetches to meet voice's strict responsiveness demands.
MemFactory Framework Unifies Agent Memory Training & Inference, Reports 14.8% Gains Over Baselines
Researchers introduced MemFactory, a unified framework treating agent memory as a trainable component. It supports multiple memory paradigms and shows up to 14.8% relative improvement over baseline methods.
TurboQuant Ported to Apple MLX, Claims 75% Memory Reduction with Minimal Performance Loss
Developer Prince Canuma has successfully ported the TurboQuant quantization method to Apple's MLX framework, reporting a 75% reduction in memory usage with nearly no performance degradation for on-device AI models.
Google's TurboQuant AI Research Report Sparks Sell-Off in Micron, Samsung, and SK Hynix Memory Stocks
Google's TurboQuant research blog publication triggered immediate market reaction, with shares of major memory manufacturers dropping 2-4% as investors anticipate AI-driven efficiency gains reducing future memory demand.
Supermemory Claims ~99% on LongMemEval_s with Experimental ASMR Technique, Plans Open-Source Release
An experimental AI technique called ASMR (Agentic Search and Memory Retrieval) reportedly achieved near-perfect performance (~99%) on the LongMemEval_s benchmark. The method replaces vector search with parallel observer agents and will be open-sourced in 11 days.
Did You Check the Right Pocket? A New Framework for Cost-Sensitive Memory Routing in AI Agents
A new arXiv paper frames memory retrieval in AI agents as a 'store-routing' problem. It shows that selectively querying specialized data stores, rather than all stores for every request, significantly improves efficiency and accuracy, formalizing a cost-sensitive trade-off.
How a GPU Memory Leak Nearly Cost an AI Team a Major Client During a Live Demo
A detailed post-mortem of a critical AI inference failure during a client demo reveals how silent GPU memory leaks, inadequate health checks, and missing circuit breakers can bring down a production pipeline. The author shares the architectural fixes implemented to prevent recurrence.
Memory Market Squeeze Threatens iPhone Price Hikes as AI Demands Strain Supply
A global RAM shortage and price increases could force Apple to raise iPhone prices by up to $250, according to industry analysis. The tech giant is reportedly unwilling to absorb the cost, passing it directly to consumers amid surging memory demands from AI applications.
AI Agents Get a Memory Upgrade: New Framework Treats Multi-Agent Memory as Computer Architecture
A new paper proposes treating multi-agent memory systems as a computer architecture problem, introducing a three-layer hierarchy and identifying critical protocol gaps. This approach could significantly improve reasoning, skills, and tool usage in collaborative AI systems.