🦞 OpenClaw is a great personal AI assistant — connecting all major IMs as conversation channels, supporting any LLM, running autonomously 24/7.
But when we bring it into an enterprise context, new challenges naturally emerge: data scattered across individual accounts, no budget guardrails, output that stops at plain text, high-risk actions without an approval gate.
Magic is built for exactly these challenges: an enterprise AI Agent platform built for security, control, direct business outcomes, and autonomous 24/7 operation.
Personal AI tools consistently hit the same walls when deployed at scale. Here's how Magic addresses each one:
- Data locked in employee accounts, gone when they leave → Unified data hub; institutional knowledge stays with the org
- Unpredictable API costs, budget overruns at month-end → Per-department, per-user, per-task budget caps
- Staff using third-party tools, core data at risk → In-house sandbox isolation; data never leaves the trusted boundary
- AI automation deleting files, sending wrong emails → High-risk actions require human approval; humans stay in control
- Can't connect to ERP, CRM → Wrap internal systems as digital employees, accessible to everyone
- Output is just text, still requires manual formatting into decks → Deliver finished artifacts: dashboards, reports, PPTs, Excel files
Magic isn't only for large enterprises. From a one-person shop to a 10,000-person organization, it solves the same problem: the output of 100 people at the cost of 1.
It's a natural fit for OPC (One Person Company) and OPT (One Person Team) operating models — lean assets, zero headcount overhead, fast delivery of tangible results, plug in new capabilities on demand. Whether you're a solo founder or a small team, you can command an entire AI workforce.
Solo founders / one-person teams
Let AI cover the roles you haven't hired yet — marketing, operations, legal, data analysis, customer support, design, copywriting, finance. Zero labor cost, 24/7 output. Ship dashboards, reports, and draft contracts fast. Need a new capability? Just add an Agent.
Enterprises / mid-size teams
Centralized platform to manage AI across the entire org, eliminating data leakage risk. Department budgets are transparent and attributable. Internal expertise is packaged into digital employees, reusable across departments — knowledge never walks out the door. High-risk actions require approval. Sandbox isolation ensures data never leaks.
Deeply encapsulate fragmented internal systems (ERP / CRM / databases) and domain expertise into digital employees accessible to everyone. Break down silos and turn scattered API calls into reusable core digital assets at scale.
No more stopping at "Chat." The built-in rendering framework transforms AI output directly into finished artifacts — PPTs, data dashboards, meeting summaries, professional reports, Excel files, infinite canvases (image creation) — ready to use, no post-processing required.
Every Agent runs inside a proprietary sandbox container, isolated from the main system in a separate VPC and connected via private endpoints — zero risk of unauthorized access. A Sidecar network proxy manages traffic independently per user, with complete resource and data isolation across tenants. A strict plugin security review catches malicious code before publishing, keeping enterprise data within a trusted boundary at all times.
When an Agent attempts a high-risk operation, an approval workflow is triggered. Routine actions run autonomously; destructive ones — like deleting data or sending emails — require explicit human confirmation. Decision authority stays with people.
An enterprise-grade cost compass lets you set precise daily budgets per department, per user, and per Agent. AI spending becomes predictable and controllable — every dollar justified.
Multiple people share a single project, each owning different modules, advancing in parallel with real-time visibility. Expert users can jump into a colleague's project and help on the spot. Experience accumulates naturally through projects and compounds across the team. Progress can be automatically reported to WeCom, DingTalk, or Lark groups — true zero-friction collaboration.
Fully compatible with the Anthropic Skills ecosystem and the OpenClaw Skills ecosystem. Existing tools and skills plug right in — zero migration cost to enterprise-grade.
Magic brings two complementary capabilities to the enterprise:
Every employee gets a personal AI assistant
Think of it as assigning each employee a dedicated 🦞, on call 24/7. The personal assistant doesn't just connect to IM — it connects to everything: calendars, email, internal systems, data, tools, and specialist Agents. One instruction is all it takes to mobilize the right resources and expertise — the true meaning of "100-person output at 1-person cost."
Expert Agents as domain specialists
Codify the know-how and workflows of legal, finance, sales, operations, and every other function into digital employees. Each Expert Agent is deep and comprehensive within its domain, ready to be invoked by users through their personal assistant. A new hire calling in an expert gets senior-level judgment from day one. Domain expertise stops being person-dependent and becomes a reusable organizational asset.
If you're a decision-maker, picture these scenarios:
A cross-border e-commerce company runs with a team of 8. Each person has a personal AI assistant connected to Expert Agents for product selection, listing, advertising, customer service, logistics, and translation — end-to-end, fully automated. Their competitor does the same work with 80 people. And slower.
2 AM, a question surfaces: "Can our East China gross margin hold this quarter?" The personal assistant connects to ERP, finance systems, and CRM, calls the finance Expert Agent, and delivers a live dashboard in 30 seconds. Management cadence is no longer held hostage by reporting cycles.
A New York client sends an urgent email at 3 AM. The customer service Expert Agent is already on it. It knows the product, understands return policy, and communicates fluently in natural English. By morning, what you see isn't a to-do — it's a resolved ticket summary. Time zones are no longer a bottleneck.
Every outbound contract passes through the legal Expert Agent before it leaves the building. Risky clauses are flagged and revision-suggested before the client ever sees them, with human approval triggered when needed. Compliance isn't a speed bump — it's a safety net running silently in the background.
Every business decision, every problem solved, every client interaction makes the Expert Agents smarter. A year in, your AI workforce carries not one person's experience but the collective intelligence of hundreds — and it never takes leave, never resigns, never withholds what it knows.
It used to take six months to develop a capable project manager. Now, on the first day, the personal assistant connects the new hire to the project management Expert Agent, the industry knowledge base, and the historical case library. Every pitfall has already been documented; every template is already packaged. Ramp time drops from six months to one week, with full productivity from day one.
A three-person go-global team needs to enter 10 countries. The personal assistant invokes the market expansion Expert Agent to run the full playbook: research local regulations, generate compliant product descriptions and marketing copy, manage listings on local platforms, and track orders and after-sales across regions. Not a few translated paragraphs — a fully operational market entry, end to end.
The after-sales team has a veteran engineer who can diagnose any failure the moment a customer describes it — what to check, how to fix it, where to source the part. That expertise is now fully encoded in the after-sales Expert Agent: symptom → diagnostic path → solution → parts procurement, a complete decision chain. A junior tech hits a tough problem, asks via their personal assistant, and gets a diagnosis at the veteran's level.
Before: the personal assistant auto-compiles relevant data and open items. During: the meeting Expert Agent transcribes in real time, flags contested points, tracks every action item. Five minutes after it ends: a structured summary — with owners and deadlines — is pushed to every attendee. Meetings become what they should be: decisions, not time sinks.
We built a lightweight local Kubernetes deployment stack on top of kind. The magicrew-cli tool handles the full pipeline in one command: environment checks, local image registry, cluster creation, infrastructure provisioning (MySQL / Redis / RabbitMQ / MinIO), and service deployment — ready out of the box.
The deployment toolchain is being finalized and will be open-sourced shortly. Stay tuned.
Prefer not to self-host? Use the cloud version — sign up and go, zero configuration:
We offer enhanced management capabilities and features for teams and enterprises, including private deployment, dedicated model integration, and deep custom integration with your internal systems. Email us to discuss your needs.
To contribute code, see the Contribution Guide / 贡献指南(中文). You're also welcome to support Magic through social media, events, and conferences — the project grows with community involvement.
If you discover a security vulnerability, email team@dtyq.com. All security issues are handled promptly.
This repository is licensed under the Magic Open Source License, based on Apache 2.0 with additional restrictions.
Thanks to all developers who have contributed to Magic!






