Trending topics
#
Bonk Eco continues to show strength amid $USELESS rally
#
Pump.fun to raise $1B token sale, traders speculating on airdrop
#
Boop.Fun leading the way with a new launchpad on Solana.

REI Network
Advancing AI through fundamental scientific principles • Research lead by @0xreisearch on @Base and @HyperliquidX
Core 0.3.2 Release Note
What's New
Core now understands complex requests better by breaking them down into their component parts. When you ask for something that involves multiple steps or requirements, units will automatically identify and address each aspect much better, reducing the need for follow-up clarifications.
Major Features
• Enhanced Intent Decomposition Engine: Improved parsing and breakdown of complex user requests into actionable components
• Advanced Prompt Analysis: Better understanding of implicit requirements and multi-layered requests
Improvements
• Contextual Understanding: Better recognition of nuanced user needs within single requests
• Multi-aspect Processing: Automatic identification when requests require multiple types of responses (content + formatting + analysis)
• First-try Accuracy: Reduced back-and-forth exchanges needed to fulfill user intent
Bug Fixes
• Fixed intent parsing failures that caused incomplete outputs
• Resolved cases where implicit requirements were missed or ignored
• Corrected response gaps when users requested multiple simultaneous actions
UX Enhancements
• Streamlined interaction flow reduces need for clarification requests
• More intuitive response generation that anticipates user needs
• Enhanced collaboration feel - less prompting, more natural assistance
Status: Live, expect multiple short maintenances to adjust production to this new update in the next 48h

9.84K
Chain Data Engine Beta Just Released
Beta Release: Now live in production. We’re pushing this iteration to gather feedback and usage patterns.
This engine is a major upgrade to unit data processing capabilities. The approach takes select elements from MCP foundations but represents a fundamentally different methodology designed to address reliability issues when handling large data chunks.
Enhanced ingestion pipeline now captures onchain data with significantly higher accuracy, enabling units to deliver deeper analytical insights across all metrics.
Key Improvements:
• Improved data capture accuracy for all units with enhanced reliability
• Enhanced analytical depth and insight generation capabilities
• Better pattern recognition across datasets
• More comprehensive unit reporting capabilities
• Higher precision in data interpretation and chart generation
• New @nansen_ai integration providing deeper insights into onchain activity
Units now deliver substantially more detailed analysis with improved accuracy and deeper market understanding.
Status: Live in Production (Beta) - We need your testing!
Data Sources: @coingecko @elfa_ai @nansen_ai @birdeye_so @dexscreener @DefiLlama
-----
New Logo Launch
Our new logo is now live. It embodies Core’s multimodal and parallel layers, the foundational concept that birthed our first prototype, @unit00x0, back in 2024.

21.64K
Core 0.3.1 Release Notes
Behavioral Memory: Self-Adapting Core Directives
What's New
A new memory type called "behavioral memory" that explicitly adapts unit behavior based on user requests while keeping all learned concepts intact. Inspired by genetic memory in humans, this approach enables dynamic behavioral adaptation through self-modifying core directives. Genetic memory will be at the heart of a significant number of major Core updates.
Key Changes
• Explicit Adaptation: What was implicit is now extremely explicit
• Selective Activation: Activates only when reasoning requires it
• Preserved Knowledge: All conceptual memory remains unchanged
• Dynamic Core Directives: Functions as self-adapting instructions embedded deep within each unit
How It Works
Behavioral memory acts as a layer between knowledge and behavior:
• Analyzes your requests
• Activates when needed
• Adapts core directives in real-time
• Preserves all learned concepts
Examples in Practice
Behavioral adaptations can happen in two ways:
1. Explicit requests: Directly ask for specific behaviors
2. Implicit learning: Units infer preferences from your conversation patterns
• Notation Preferences: Ask a unit to use "B" for billions instead of spelling it out
• Communication Style: Request formal language for reports or casual tone for brainstorming
• Output Formatting: Have units always present data in tables vs. paragraphs
• Technical Depth: Adjust from high-level summaries to detailed technical explanations
• Response Structure: Switch between bullet points, numbered lists, or flowing prose
• Domain Language: Use industry-specific terminology (e.g., "commits" vs "updates" for developers)
Units continuously adapt based on your interactions, refining their behavior over time. Each adaptation persists until you request a change or reset the behaviors entirely.
Impact
Units now explicitly adjust their behavior to match your needs without forgetting what they've learned. Think of it as dynamic core directives that activate based on context - similar to how genetic memory provides inherited adaptive responses in biological systems.
Users can reset behavioral memory at any time by simply asking units to reset their behaviors.
Migration
Automatic. No action required.

9.78K
Web Browing Update: Units can now access web data significantly faster and more reliably.
What Changed:
• Web data processing speed increased by 40%
• Broader access to previously hard-to-reach sites and content types
• More consistent data retrieval across different website structures
Practical Impact: Units can now handle real-time research requests that were previously too slow or unreliable.
Need current market data, live news analysis, or multi-source fact-checking? Units can now pull from dozens of sources in seconds instead of minutes.
Most complex web applications, dynamic content, and modern site architectures that used to cause failures now work seamlessly. This means better responses when you ask units to analyze current events, compare products across multiple retailers, or research rapidly changing topics.

8.14K
1/4
What is Core? Understanding Our Own Approach to a Synthetic Brain Architecture
Core is not an LLM: Core is not a fine-tuned LLM, not a new LLM, and not an LLM at all. Instead, Core is a multimodal synthetic brain, a fundamentally different type of AI architecture.
Key Terminology to Understand Core:
1. Synthetic Brain: Core is a unified cognitive system where multiple AI models and algorithms work as interconnected neural components within a single architecture. Think of it as a digital brain with specialized regions, not a collection of tools.
2. The Bowtie Architecture: Core's memory substrate that stores information as both semantic vectors AND abstract concept nodes, creates connections between seemingly unrelated concepts, and enables genuine concept formation, not just pattern matching.
3. Reasoning Cluster: The cognitive part of Core that orchestrates all thinking processes, making decisions about which neural pathways to activate for any given task, The reasoning cluster is deeply multi-modal and works via parallel processing and sophistication biases.

443
2025.07.09 Biweekly update
Core 0.3 is live!
Details:
INTERNAL DEVELOPMENT
Core Tech
+ System deployed with automatic elastic scaling
+ Core 0.3 new architecture bug fixes
+ Initial testing of 0.3.1
+ Testing Agent2Agent non-linguistic communication
Infrastructure
+ Testing the new built-in MCP protocol
+ Ongoing complete UI rework
EXTERNAL ACCESS
MVP.a
+ User accessible memories, concepts, and relationships
+ Dynamic and interactive charts
+ Email SSO login transition
@unit00x0
+ Testing the updated core (lower priority)
General Updates
+ Latency upgrade
+ Tier1/Dev Applicants Access
Community Highlights
+ Core .3 Cognition stress test
+ Core .3 Macro scenario analysis
+ Rei Innovation Thesis
+ AI paradigm and Rei
+ Rei overview
+ Creative universe crafting
+ Multi-unit workflow case study: thought experiment playground


REI NetworkJul 7, 2025
Core 0.3 Release Notes:
Bowtie Architecture
+ Units now have metacognition, allowing them to assess and reflect on what they know and what they do not
+ Concepts are inferred and mapped in a hypergraph with semantic interconnections
+ Units operate through implicit domains, dynamically adapting to each query
+ Evolution has deepened to include not just concepts themselves but how the Unit infer and store concepts
MVP.a
+ Units can now generate dynamic charts when relevant, or on request
+ Memories are guaranteed retained up to July 4 06:00 UTC, as communicated
Known Limitations
+ The system still requires stabilization; performance may occasionally be slower
+ Please report any bugs or unexpected behavior

6.35K
Latency upgrade is now in prod with Core .3
Initial tests are showing 80%+ reduction in latency across general queries and 60%+ for math
Some examples:
Einstein theory of relativity ELI5 ↓93.57%
Grammar check ↓92.04%
Essay-generation ↓84.77%
Top 5 memecoins on Solana ↓81.21%
AMC 8 rate of change problem ↓51.23%
Volume of sphere problem ↓56.43%
Slope of line problem ↓64.00%

5.43K
Top
Ranking
Favorites
Trending onchain
Trending on X
Recent top fundings
Most notable