Itemize

Invoice Data Extraction, Reconciliation, and Verification

Integrate the Itemize API with the Go API

Setup the Itemize API trigger to run a workflow which integrates with the Go API. Pipedream's integration platform allows you to integrate Itemize and Go remarkably fast. Free for developers.

Run Go Code with the Go API

Run any Go code and use any Go package available with a simple import. Refer to the Pipedream Go docs to learn more.

 
Try it

Overview of Itemize

The Itemize API enables automated processing and organization of receipts, invoices, and other financial documents. By harnessing machine learning, it extracts pertinent data such as dates, amounts, taxes, and vendor information, converting cluttered paperwork into structured data. This can be a boon for accounting, expense tracking, and financial auditing workflows.

Connect Itemize

1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
import { axios } from "@pipedream/platform"
export default defineComponent({
  props: {
    itemize: {
      type: "app",
      app: "itemize",
    }
  },
  async run({steps, $}) {
    return await axios($, {
      url: `https://sandbox.proapi.itemize.com/api/enterprise/v1/accounts/[ACCOUNT-ID]`,
      auth: {
        username: `${this.itemize.$auth.api_token}`,
        password: ``,
      },
    })
  },
})

Overview of Go

You can execute custom Go scripts on-demand or in response to various triggers and integrate with thousands of apps supported by Pipedream. Writing with Go on Pipedream enables backend operations like data processing, automation, or invoking other APIs, all within the Pipedream ecosystem. By leveraging Go's performance and efficiency, you can design powerful and fast workflows to streamline complex tasks.

Connect Go

1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
package main

import (
	"fmt"

	pd "github.com/PipedreamHQ/pipedream-go"
)

func main() {
	// Access previous step data using pd.Steps
	fmt.Println(pd.Steps)

	// Export data using pd.Export
	data := make(map[string]interface{})
	data["name"] = "Luke"
	pd.Export("data", data)
}