As workplace knowledge spreads across chats, AI firms are building systems that can structure, retrieve and preserve it over time.
Updated
May 11, 2026 5:24 PM

A messaging app on a phone. PHOTO: ADOBE STOCK
Votee AI, an enterprise AI company headquartered in Hong Kong, has partnered with its Toronto-based research lab Beever AI to launch Beever Atlas. The new platform is designed to turn workplace chats into searchable knowledge that AI systems can retrieve and understand.
The release focuses on a growing issue inside organisations. Much of today’s workplace knowledge now exists inside chat platforms such as Slack, Microsoft Teams, Discord and Telegram. Important discussions, project decisions and technical information often disappear into long message histories that are difficult to search later.
Beever AI developed the platform to organise those conversations into a structured system for AI assistants. The software connects with Telegram, Discord, Mattermost, Microsoft Teams and Slack, then converts conversations into linked records of people, projects, files and decisions.
The collaboration combines Votee AI’s enterprise infrastructure work with Beever AI’s research around AI memory systems. The companies are releasing two versions of the product. The open-source edition is aimed at individual developers, researchers and creators. The enterprise edition is designed for banks, government agencies and larger organisations with stricter security requirements.
The release also reflects a broader shift happening across the AI industry. Companies are increasingly looking at how AI systems store and retrieve long-term knowledge, rather than relying solely on large context windows or search-based retrieval.
Earlier this year, OpenAI founding member and former director of AI at Tesla Andrej Karpathy discussed the growing need for what he described as “LLM Knowledge Bases.” He argued that AI systems need structured and evolving memory rather than depending only on context windows and vector search.
Beever Atlas approaches that problem through workplace communication. Instead of focusing mainly on uploaded files, the system is designed around conversations that happen daily across team chat platforms. It can also process images, PDFs, voice notes and video files within the same searchable system.
The companies say the software is designed to work directly with AI assistants and coding tools such as Cursor, AWS Kiro and Qwen Code. Integrations for OpenClaw and Hermes Agent are expected later in 2026.
Pak-Sun Ting, Co-Founder and CEO of Votee AI said: "Hong Kong has always been known for property and finance. Beever Atlas is proof that world-class AI infrastructure can emerge from an HK-headquartered company and be shared openly with the world. Every growing organization faces the same silent liability: conversational knowledge loss. Beever Atlas turns this perishable resource into a compounding organizational asset."
A large part of the enterprise version focuses on privacy and access control. The system mirrors permissions from Slack and Microsoft Teams so users can only retrieve information they are already authorised to access. Permission updates are reflected automatically when access changes inside company systems.
The enterprise edition also includes audit logs, encryption controls and data retention settings for organisations handling sensitive internal data. Companies can run the software entirely inside their own infrastructure using Docker and connect it to their preferred AI models through LiteLLM.
The companies argue that organising information is more useful than simply storing chat archives. Jacky Chan Co-Founder and CTO of Votee AI said: "The key technical decision was to treat agent memory as a knowledge engineering problem, not a retrieval problem. Structure beats similarity — a typed graph of who works on what is more useful to an AI than vector search over a Slack archive."
The software also includes protections against prompt injection attacks and systems designed to reduce hallucinated responses. According to the companies, the AI is designed to return “I don't know” with citations when confidence is low instead of generating unsupported answers.
As workplace communication becomes increasingly fragmented across chat platforms, companies are beginning to treat internal conversations as information that AI systems can organise, retrieve and build on. Beever Atlas reflects a broader push to turn everyday workplace communication into long-term organisational memory.
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With operations across 50 countries, MagicLab is pairing new robot systems with a platform strategy aimed at wider commercial adoption
Updated
May 1, 2026 2:16 PM
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A standing yellow robotic arm. PHOTO: UNSPLASH
MagicLab Robotics is a Chinese startup that describes itself as an embodied AI company. At an event in Silicon Valley this week, it outlined its global ambitions and introduced new products designed for real-world use. The company said its international business now spans more than 50 countries and regions, with overseas markets accounting for 60% of total sales in 2025. That gives some indication of how quickly Chinese robotics firms are expanding beyond their home market.
At the centre of the announcement was MagicLab’s latest product line-up. It included Magic-Mix, described as a foundational world model for robots, the H01 dexterous robotic hand and its humanoid robot, MagicBot X1. In practical terms, the company is trying to build robots that can better understand their surroundings and perform physical tasks with greater precision. That is the core idea behind embodied AI, where intelligence is combined with movement and interaction in the real world rather than limited to software alone.
MagicLab says it develops both hardware and software internally. Its product range includes humanoid robots and four-legged machines, with systems designed for factories, commercial services and home use. The company also outlined where it sees demand emerging. It listed sectors such as healthcare, manufacturing, logistics, security, public safety, education and household assistance.
That wide spread of target markets reflects a broader challenge in robotics. Building capable machines is only one part of the equation. The harder task is finding enough practical uses where customers are willing to pay for them.
MagicLab also used the summit to set out a long-term commercial goal. It projected a path toward US$14 billion in annual revenue by 2036 through wider adoption of embodied AI systems. It also announced what it calls the “Co-Create 1000 Initiative”, a plan to work with external developers and partner companies.
As part of that effort, the startup said it plans to invest US$1 billion over the next five years to build a developer ecosystem that would allow third parties to create new applications for its robots. The strategy mirrors what happened in smartphones and cloud software, where ecosystems often mattered as much as the original hardware. If robotics follows a similar path, companies that attract developers could gain an advantage over those selling machines alone.
For now, MagicLab’s announcement is less about immediate breakthroughs and more about positioning. The company is presenting itself not simply as a robot maker, but as a platform business seeking a role in the next phase of intelligent machines.