On this article, you’ll discover ways to construct, deploy, and check a no-code document-processing AI agent with LlamaAgents Builder in LlamaCloud.
Subjects we’ll cowl embody:
- How one can create a document-classification agent utilizing a pure language immediate.
- How one can deploy the agent to a GitHub-backed utility with out writing code.
- How one can check the deployed agent on invoices and contracts within the LlamaCloud interface.
Let’s not waste any extra time.
LlamaAgents Builder: From Immediate to Deployed AI Agent in Minutes (click on to enlarge)
Picture by Editor
Introduction
Creating an AI agent for duties like analyzing and processing paperwork autonomously used to require hours of near-endless configuration, code orchestration, and deployment battles. Till now.
This text unveils the method of constructing, deploying, and utilizing an clever agent from scratch with out writing a single line of code, utilizing LlamaAgents Builder. Higher nonetheless, we’ll host it as an app in a software program repository that shall be 100% owned by us.
We are going to full the entire course of in a matter of minutes, so time is of the essence: let’s get began.
Constructing with LlamaAgents Builder
LlamaAgents Builder is without doubt one of the latest options within the LlamaCloud net platform, whose flagship product was initially launched as LlamaParse. A barely complicated mixture of names, I do know! For now, simply understand that we’ll entry the brokers builder by way of this hyperlink.
The very first thing it is best to see is a house menu just like the one proven within the screenshot under. If this isn’t what you see, strive clicking the “LlamaParse” icon within the top-left nook as a substitute, after which it is best to see this — at the least on the time of writing.

LlamaParse dwelling menu
Discover that, on this instance, we’re working beneath a newly created free-plan account, which permits as much as 10,000 pages of processing.
See the “Agents” block on the bottom-right aspect? That’s the place LlamaAgents Builder lives. Regardless that it’s in beta on the time of writing, we will already construct helpful agent-based workflows, as we’ll see.
As soon as we click on on it, a brand new display will open with a chat interface much like Gemini, ChatGPT, and others. You’ll get a number of instructed workflows for what you’d like your agent to do, however we’ll specify our personal by typing the next immediate into the enter field on the backside. Simply pure language, no code in any respect:
Create an agent that classifies paperwork into “Contracts” and “Invoices”. For contracts, extract the signing events; for invoices, the entire quantity and date.

Specifying what the agent ought to do with a pure language immediate
Merely ship the immediate, and the magic will begin. With a outstanding degree of transparency within the reasoning course of, you’ll see the steps accomplished and the progress made up to now:

AgentBuilder creating our agent workflow
After a couple of minutes, the creation course of shall be full. Not solely are you able to see the total workflow diagram, which has step by step grown all through the method, however you additionally obtain a succinct and clear description of tips on how to use your newly created agent. Merely superb.

Agent workflow constructed
The subsequent step is to deploy our agent in order that it may be used. Within the top-right nook, you might even see a “Push & Deploy” button. This initiates the method of publishing your agent workflow’s software program packages right into a GitHub repository, so be sure to have a registered account on GitHub first. You possibly can simply register with an current Google or Microsoft account, as an illustration. Upon getting the LlamaCloud platform related to your GitHub account, this can be very simple to push and deploy your agent: simply give it a reputation, specify whether or not you need it in a non-public repository, and that’s it:

Pushing and deploying agent workflow into GitHub
The method will take a couple of minutes, and you will notice a stream of command-line-like messages showing on the fly. As soon as it’s finalized and your agent standing seems as “Operating“, you will notice a number of last messages much like this:
[app] 10:01:08.583 information Software startup full. (uvicorn.error) [app] 10:01:08.589 information Uvicorn working on http://0.0.0.0:8080 (Press CTRL+C to give up) (uvicorn.error) [app] 10:01:09.007 information HTTP Request: POST https://api.cloud.llamaindex.ai/api/v1/beta/agent-data/:search?project_id= |
The “Uvicorn” messages point out that our agent has been deployed and is working as a microservice API throughout the LlamaCloud infrastructure. In case you are acquainted with FastAPI endpoints, chances are you’ll wish to strive it programmatically by way of the API, however on this tutorial, we’ll preserve issues less complicated (we promised zero coding, didn’t we?) and take a look at every thing ourselves in LlamaCloud’s personal consumer interface.
To do that, click on the “Visit” button that seems on the high:

Deployed agent up and working
Now comes essentially the most thrilling half. You need to have been taken to a playground web page known as “Review,” the place you possibly can strive your agent out. Begin by importing a file, for instance, a PDF doc containing an bill or a contract. If you happen to don’t have one, simply create a fictitious instance doc of your personal utilizing Microsoft Phrase, Google Docs, or an identical software, equivalent to this one:

LlamaCloud Agent Testing UI: processing an bill
As quickly because the doc is loaded, the agent begins working by itself, and in a matter of seconds, it is going to classify your doc and extract the required knowledge fields, relying on the doc sort. You possibly can see this outcome on the right-hand-side panel within the picture above: the entire quantity and bill date have been accurately extracted by the agent.
How about importing an instance doc containing a contract now?

LlamaCloud Agent Testing UI: processing a contract
As anticipated, the doc is now categorised as a contract, and on this event, the extracted data consists of the names of the signing events.
Properly accomplished! As you retain working examples, be sure to approve or reject them primarily based on whether or not they have been processed accurately: this helps the agent be taught from suggestions.

Agent testing instances and their standing
Wrapping Up
We’ve got seen tips on how to construct and deploy, step-by-step and with no strains of code, an AI agent able to classifying paperwork and processing them in numerous methods relying on the doc sort — all in a matter of minutes and inside LlamaCloud’s newly added function, LlamaAgents Builder.



