langflow/docs/docs/Components/components-processing.md
Mendon Kissling 20f2273ec5
docs: combine and split text component examples (#7626)
* combine-text

* split-text-component-example

* cleanup

* Apply suggestions from code review

Co-authored-by: KimberlyFields <46325568+KimberlyFields@users.noreply.github.com>

* use-different-separator-example

* Update docs/docs/Components/components-processing.md

---------

Co-authored-by: KimberlyFields <46325568+KimberlyFields@users.noreply.github.com>
Co-authored-by: Edwin Jose <edwin.jose@datastax.com>
2025-04-25 19:57:21 +00:00

26 KiB

title slug
Processing /components-processing

import Icon from "@site/src/components/icon";

Processing components process and transform data within a flow.

Use a processing component in a flow

The Split Text processing component in this flow splits the incoming Data into chunks to be embedded into the vector store component.

The component offers control over chunk size, overlap, and separator, which affect context and granularity in vector store retrieval results.

A vector store ingesting documents

Combine data

:::important Prior to Langflow version 1.1.3, this component was named Merge Data. :::

This component combines multiple data sources into a single unified Data object.

The component iterates through the input list of data objects, merging them into a single data object. If the input list is empty, it returns an empty data object. If there's only one input data object, it returns that object unchanged. The merging process uses the addition operator to combine data objects.

Inputs

Name Display Name Info
data Data A list of data objects to be merged.

Outputs

Name Display Name Info
merged_data Merged Data A single Data object containing the combined information from all input data objects.

Combine text

This component concatenates two text sources into a single text chunk using a specified delimiter.

  1. To use this component in a flow, connect two components that output Messages to the Combine Text component's First Text and Second Text inputs. This example uses two Text Input components.

Combine text component

  1. In the Combine Text component, in the Text fields of both Text Input components, enter some text to combine.
  2. In the Combine Text component, enter an optional Delimiter value. The delimiter character separates the combined texts. This example uses \n\n **end first text** \n\n **start second text** \n\n to label the texts and create newlines between them.
  3. Connect a Chat Output component to view the text combination.
  4. Click Playground, and then click Run Flow. The combined text appears in the Playground.
This is the first text. Let's combine text!
end first text
start second text
Here's the second part. We'll see how combining text works.

Inputs

Name Display Name Info
first_text First Text The first text input to concatenate.
second_text Second Text The second text input to concatenate.
delimiter Delimiter A string used to separate the two text inputs. Defaults to a space.

Outputs

Name Display Name Info
message Message A Message object containing the combined text.

DataFrame operations

This component performs operations on DataFrame rows and columns.

To use this component in a flow, connect a component that outputs DataFrame to the DataFrame Operations component.

This example fetches JSON data from an API. The Lambda filter component extracts and flattens the results into a tabular DataFrame. The DataFrame Operations component can then work with the retrieved data.

Dataframe operations with flattened dataframe

  1. The API Request component retrieves data with only source and result fields. For this example, the desired data is nested within the result field.
  2. Connect a Lambda Filter to the API request component, and a Language model to the Lambda Filter. This example connects a Groq model component.
  3. In the Groq model component, add your Groq API key.
  4. To filter the data, in the Lambda filter component, in the Instructions field, use natural language to describe how the data should be filtered. For this example, enter:
I want to explode the result column out into a Data object

:::tip Avoid punctuation in the Instructions field, as it can cause errors. ::: 5. To run the flow, in the Lambda Filter component, click . 6. To inspect the filtered data, in the Lambda Filter component, click . The result is a structured DataFrame.

id | name             | company               | username        | email                              | address           | zip
---|------------------|----------------------|-----------------|------------------------------------|-------------------|-------
1  | Emily Johnson    | ABC Corporation      | emily_johnson   | emily.johnson@abccorporation.com   | 123 Main St       | 12345
2  | Michael Williams | XYZ Corp             | michael_williams| michael.williams@xyzcorp.com       | 456 Elm Ave       | 67890
  1. Add the DataFrame Operations component, and a Chat Output component to the flow.
  2. In the DataFrame Operations component, in the Operation field, select Filter.
  3. To apply a filter, in the Column Name field, enter a column to filter on. This example filters by name.
  4. Click Playground, and then click Run Flow. The flow extracts the values from the name column.
name
Emily Johnson
Michael Williams
John Smith
...

Operations

This component can perform the following operations on Pandas DataFrame.

Operation Description Required Inputs
Add Column Adds a new column with a constant value new_column_name, new_column_value
Drop Column Removes a specified column column_name
Filter Filters rows based on column value column_name, filter_value
Head Returns first n rows num_rows
Rename Column Renames an existing column column_name, new_column_name
Replace Value Replaces values in a column column_name, replace_value, replacement_value
Select Columns Selects specific columns columns_to_select
Sort Sorts DataFrame by column column_name, ascending
Tail Returns last n rows num_rows

Inputs

Name Display Name Info
df DataFrame The input DataFrame to operate on.
operation Operation Select the DataFrame operation to perform. Options: Add Column, Drop Column, Filter, Head, Rename Column, Replace Value, Select Columns, Sort, Tail
column_name Column Name The column name to use for the operation.
filter_value Filter Value The value to filter rows by.
ascending Sort Ascending Whether to sort in ascending order.
new_column_name New Column Name The new column name when renaming or adding a column.
new_column_value New Column Value The value to populate the new column with.
columns_to_select Columns to Select List of column names to select.
num_rows Number of Rows Number of rows to return (for head/tail). Default: 5
replace_value Value to Replace The value to replace in the column.
replacement_value Replacement Value The value to replace with.

Outputs

Name Display Name Info
output DataFrame The resulting DataFrame after the operation.

Data to DataFrame

This component converts one or multiple Data objects into a DataFrame. Each Data object corresponds to one row in the resulting DataFrame. Fields from the .data attribute become columns, and the .text field (if present) is placed in a 'text' column.

  1. To use this component in a flow, connect a component that outputs Data to the Data to Dataframe component's input. This example connects a Webhook component to convert text and data into a DataFrame.
  2. To view the flow's output, connect a Chat Output component to the Data to Dataframe component.

A webhook and data to dataframe

  1. Send a POST request to the Webhook containing your JSON data. Replace YOUR_FLOW_ID with your flow ID. This example uses the default Langflow server address.
curl -X POST "http://127.0.0.1:7860/api/v1/webhook/YOUR_FLOW_ID" \
-H 'Content-Type: application/json' \
-d '{
    "text": "Alex Cruz - Employee Profile",
    "data": {
        "Name": "Alex Cruz",
        "Role": "Developer",
        "Department": "Engineering"
    }
}'
  1. In the Playground, view the output of your flow. The Data to DataFrame component converts the webhook request into a DataFrame, with text and data fields as columns.
| text                         | data                                                                    |
|:-----------------------------|:------------------------------------------------------------------------|
| Alex Cruz - Employee Profile | {'Name': 'Alex Cruz', 'Role': 'Developer', 'Department': 'Engineering'} |
  1. Send another employee data object.
curl -X POST "http://127.0.0.1:7860/api/v1/webhook/YOUR_FLOW_ID" \
-H 'Content-Type: application/json' \
-d '{
    "text": "Kalani Smith - Employee Profile",
    "data": {
        "Name": "Kalani Smith",
        "Role": "Designer",
        "Department": "Design"
    }
}'
  1. In the Playground, this request is also converted to DataFrame.
| text                            | data                                                                 |
|:--------------------------------|:---------------------------------------------------------------------|
| Kalani Smith - Employee Profile | {'Name': 'Kalani Smith', 'Role': 'Designer', 'Department': 'Design'} |

Inputs

Name Display Name Info
data_list Data or Data List One or multiple Data objects to transform into a DataFrame.

Outputs

Name Display Name Info
dataframe DataFrame A DataFrame built from each Data object's fields plus a 'text' column.

Filter data

:::important This component is in Beta as of Langflow version 1.1.3, and is not yet fully supported. :::

This component filters a Data object based on a list of keys.

Inputs

Name Display Name Info
data Data Data object to filter.
filter_criteria Filter Criteria List of keys to filter by.

Outputs

Name Display Name Info
filtered_data Filtered Data A new Data object containing only the key-value pairs that match the filter criteria.

Filter values

:::important This component is in Beta as of Langflow version 1.1.3, and is not yet fully supported. :::

The Filter values component filters a list of data items based on a specified key, filter value, and comparison operator.

Inputs

Name Display Name Info
input_data Input data The list of data items to filter.
filter_key Filter Key The key to filter on, for example, 'route'.
filter_value Filter Value The value to filter by, for example, 'CMIP'.
operator Comparison Operator The operator to apply for comparing the values.

Outputs

Name Display Name Info
filtered_data Filtered data The resulting list of filtered data items.

Lambda filter

This component uses an LLM to generate a Lambda function for filtering or transforming structured data.

To use the Lambda filter component, you must connect it to a Language Model component, which the component uses to generate a function based on the natural language instructions in the Instructions field.

This example gets JSON data from the https://jsonplaceholder.typicode.com/users API endpoint. The Instructions field in the Lambda filter component specifies the task extract emails. The connected LLM creates a filter based on the instructions, and successfully extracts a list of email addresses from the JSON data.

Inputs

Name Display Name Info
data Data The structured data to filter or transform using a Lambda function.
llm Language Model The connection port for a Model component.
filter_instruction Instructions Natural language instructions for how to filter or transform the data using a Lambda function, such as Filter the data to only include items where the 'status' is 'active'.
sample_size Sample Size For large datasets, the number of characters to sample from the dataset head and tail.
max_size Max Size The number of characters for the data to be considered "large", which triggers sampling by the sample_size value.

Outputs

Name Display Name Info
filtered_data Filtered Data The filtered or transformed Data object.
dataframe DataFrame The filtered data as a DataFrame.

LLM router

This component routes requests to the most appropriate LLM based on OpenRouter model specifications.

Inputs

Name Display Name Info
models Language Models List of LLMs to route between
input_value Input The input message to be routed
judge_llm Judge LLM LLM that will evaluate and select the most appropriate model
optimization Optimization Optimization preference (quality/speed/cost/balanced)

Outputs

Name Display Name Info
output Output The response from the selected model
selected_model Selected Model Name of the chosen model

Message to data

This component converts Message objects to Data objects.

Inputs

Name Display Name Info
message Message The Message object to convert to a Data object.

Outputs

Name Display Name Info
data Data The converted Data object.

Parser

This component formats DataFrame or Data objects into text using templates, with an option to convert inputs directly to strings using stringify.

To use this component, create variables for values in the template the same way you would in a Prompt component. For DataFrames, use column names, for example Name: {Name}. For Data objects, use {text}.

To use the Parser component with a Structured Output component, do the following:

  1. Connect a Structured Output component's DataFrame output to the Parser component's DataFrame input.
  2. Connect the File component to the Structured Output component's Message input.
  3. Connect the OpenAI model component's Language Model output to the Structured Output component's Language Model input.

The flow looks like this:

A parser component connected to OpenAI and structured output

  1. In the Structured Output component, click Open Table. This opens a pane for structuring your table. The table contains the rows Name, Description, Type, and Multiple.
  2. Create a table that maps to the data you're loading from the File loader. For example, to create a table for employees, you might have the rows id, name, and email, all of type string.
  3. In the Template field of the Parser component, enter a template for parsing the Structured Output component's DataFrame output into structured text. Create variables for values in the template the same way you would in a Prompt component. For example, to present a table of employees in Markdown:
# Employee Profile
## Personal Information
- **Name:** {name}
- **ID:** {id}
- **Email:** {email}
  1. To run the flow, in the Parser component, click .
  2. To view your parsed text, in the Parser component, click .
  3. Optionally, connect a Chat Output component, and open the Playground to see the output.

For an additional example of using the Parser component to format a DataFrame from a Structured Output component, see the Market Research template flow.

Inputs

Name Display Name Info
mode Mode Tab selection between "Parser" and "Stringify" modes. "Stringify" converts input to a string instead of using a template.
pattern Template Template for formatting using variables in curly brackets. For DataFrames, use column names, such as Name: {Name}. For Data objects, use {text}.
input_data Data or DataFrame The input to parse - accepts either a DataFrame or Data object.
sep Separator String used to separate rows/items. Default: newline.
clean_data Clean Data When stringify is enabled, cleans data by removing empty rows and lines.

Outputs

Name Display Name Info
parsed_text Parsed Text The resulting formatted text as a Message object.

Split text

This component splits text into chunks based on specified criteria. It's ideal for chunking data to be tokenized and embedded into vector databases.

The Split Text component outputs Chunks or DataFrame. The Chunks output returns a list of individual text chunks. The DataFrame output returns a structured data format, with additional text and metadata columns applied.

  1. To use this component in a flow, connect a component that outputs Data or DataFrame to the Split Text component's Data port. This example uses the URL component, which is fetching JSON placeholder data.

Split text component and chroma-db

  1. In the Split Text component, define your data splitting parameters.

This example splits incoming JSON data at the separator },, so each chunk contains one JSON object.

The order of precedence is Separator, then Chunk Size, and then Chunk Overlap. If any segment after separator splitting is longer than chunk_size, it is split again to fit within chunk_size.

After chunk_size, Chunk Overlap is applied between chunks to maintain context.

  1. Connect a Chat Output component to the Split Text component's DataFrame output to view its output.
  2. Click Playground, and then click Run Flow. The output contains a table of JSON objects split at },.
{
"userId": 1,
"id": 1,
"title": "Introduction to Artificial Intelligence",
"body": "Learn the basics of Artificial Intelligence and its applications in various industries.",
"link": "https://example.com/article1",
"comment_count": 8
},
{
"userId": 2,
"id": 2,
"title": "Web Development with React",
"body": "Build modern web applications using React.js and explore its powerful features.",
"link": "https://example.com/article2",
"comment_count": 12
},
  1. Clear the Separator field, and then run the flow again. Instead of JSON objects, the output contains 50-character lines of text with 10 characters of overlap.
First chunk:  "title": "Introduction to Artificial Intelligence""
Second chunk: "elligence", "body": "Learn the basics of Artif"
Third chunk:  "s of Artificial Intelligence and its applications"

Inputs

Name Display Name Info
data_inputs Input Documents The data to split.The component accepts Data or DataFrame objects.
chunk_overlap Chunk Overlap The number of characters to overlap between chunks. Default: 200.
chunk_size Chunk Size The maximum number of characters in each chunk. Default: 1000.
separator Separator The character to split on. Default: newline.
text_key Text Key The key to use for the text column (advanced). Default: text.

Outputs

Name Display Name Info
chunks Chunks List of split text chunks as Data objects.
dataframe DataFrame List of split text chunks as DataFrame objects.

Update data

This component dynamically updates or appends data with specified fields.

Inputs

Name Display Name Info
old_data Data The records to update
number_of_fields Number of Fields Number of fields to add (max 15)
text_key Text Key Key for text content
text_key_validator Text Key Validator Validates text key presence

Outputs

Name Display Name Info
data Data Updated Data objects.

Legacy components

Legacy components are available to use but no longer supported.

Alter metadata

This component modifies metadata of input objects. It can add new metadata, update existing metadata, and remove specified metadata fields. The component works with both Message and Data objects, and can also create a new Data object from user-provided text.

Inputs

Name Display Name Info
input_value Input Objects to which Metadata should be added
text_in User Text Text input; the value will be in the 'text' attribute of the Data object. Empty text entries are ignored.
metadata Metadata Metadata to add to each object
remove_fields Fields to Remove Metadata fields to remove

Outputs

Name Display Name Info
data Data List of Input objects, each with added metadata

Create data

:::important This component is in Legacy, which means it is no longer in active development as of Langflow version 1.1.3. :::

This component dynamically creates a Data object with a specified number of fields.

Inputs

Name Display Name Info
number_of_fields Number of Fields The number of fields to be added to the record.
text_key Text Key Key that identifies the field to be used as the text content.
text_key_validator Text Key Validator If enabled, checks if the given Text Key is present in the given Data.

Outputs

Name Display Name Info
data Data A Data object created with the specified fields and text key.

Data to message

:::important This component is in Legacy, which means it is no longer in active development as of Langflow version 1.3. Instead, use the Parser component. :::

:::important Prior to Langflow version 1.1.3, this component was named Parse Data. :::

The ParseData component converts data objects into plain text using a specified template. This component transforms structured data into human-readable text formats, allowing for customizable output through the use of templates.

Inputs

Name Display Name Info
data Data The data to convert to text.
template Template The template to use for formatting the data. It can contain the keys {text}, {data}, or any other key in the data.
sep Separator The separator to use between multiple data items.

Outputs

Name Display Name Info
text Text The resulting formatted text string as a Message object.

Parse DataFrame

:::important This component is in Legacy, which means it is no longer in active development as of Langflow version 1.3. Instead, use the Parser component. :::

This component converts DataFrames into plain text using templates.

Inputs

Name Display Name Info
df DataFrame The DataFrame to convert to text rows.
template Template Template for formatting (use {column_name} placeholders).
sep Separator String to join rows in output.

Outputs

Name Display Name Info
text Text All rows combined into single text.

Parse JSON

:::important This component is in Legacy, which means it is no longer in active development as of Langflow version 1.1.3. :::

This component converts and extracts JSON fields using JQ queries.

Inputs

Name Display Name Info
input_value Input Data object to filter (Message or Data).
query JQ Query JQ Query to filter the data

Outputs

Name Display Name Info
filtered_data Filtered Data Filtered data as list of Data objects.

Select data

:::important This component is in Legacy, which means it is no longer in active development as of Langflow version 1.1.3. :::

This component selects a single Data item from a list.

Inputs

Name Display Name Info
data_list Data List List of data to select from
data_index Data Index Index of the data to select

Outputs

Name Display Name Info
selected_data Selected Data The selected Data object.