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What is the AI Studio?
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The AI Studio is a set of tools and UI components seamless integrated into PIPEFORCE to boost your process automation and data integration tasks to a next level using artificial intelligence such as LLM (Large Language Models) for example.
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BETA Note that the AI Studio components including all |
Configure AI Backend (secret)
Before you can start, an AI backend needs to be configured. Depending on your license, by default PIPEFORCE comes with it’s own built-in AI backend. The secret name of this is ai-default-secret
.
If you do not specify otherwise, this AI backend secret is used by default.
But you can switch this default backend or use multiple AI backends in parallel. To do so, you have to configure the credentials and settings for those AI backends as secrets of type secret-text and place a JSON into the secret value which has a structure like this:
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{
"base_url": "string",
"model": "string",
"api_token": "string",
"max_token": "integer",
"custom_headers": { "name": "value" }
} |
Whereas:
base_url
: The base url of the API (requried).model
: The AI model to be used (required).api_token
: The security token to be used.max_token
: The max token to be send (defaults to 800)custom_headers
: Key-value pairs to be passed along as HTTP headers on any request.
Connect to OpenAI (ChatGPT)
In case you would like to connect to the OpenAI services for example, you could use these settings in your secret:
PIPEFORCE is AI-native, meaning that every component of the platform is built from the ground up to integrate seamlessly with AI. You can easily forward any type of data through an automation pipeline to AI, allowing it to perform tasks such as analysis, transformation, validation, or detection. The results can then be effortlessly integrated back into your workflows. Additionally, PIPEFORCE allows you to leverage AI to automatically create, execute and optimize workflows.
Moreover, PIPEFORCE includes a suite of advanced AI tools and UI components designed to enhance your process automation and data integration. These tools utilize cutting-edge technologies such as Generative AI and Large Language Models (LLMs), providing you with powerful capabilities to optimize your operations.
Ready to Get Started
No special setup is required to use AI with PIPEFORCE. You can start leveraging AI capabilities right out of the box.Process Intelligence
PIPEFORCE comes with its own AI service, which integrates multiple pre-trained AI models optimized specifically for process automation and integration tasks. This service is as powerful as leading external AI platforms like OpenAI/ChatGPT or Google Gemini for process automation. In some specific use cases, it can even outperform these external services.Security and Privacy
Since PIPEFORCE Cloud runs on its own AI infrastructure, fully hosted in Germany, all AI tasks are entirely GDPR-compliant. Additionally, every AI interaction is monitored and logged to ensure compliance with enterprise standards and regulatory requirements.Flexibility
PIPEFORCE AI can also be integrated with other AI services, such as OpenAI/ChatGPT or Google Gemini, if needed, offering additional flexibility to meet specific requirements.
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Table of Contents
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Configure AI Backend (secret)
Before you can start, an AI backend needs to be configured. Depending on your license, by default PIPEFORCE comes with it’s own built-in AI backend which uses the default secret ai-default-secret
.
If you do not specify otherwise, this AI backend secret is used by default in any AI conversation.
But you can switch this default backend or use multiple AI backends in parallel. To do so, you have to configure the credentials and settings for those AI backends as secrets of type secret-text and place a JSON into the secret value which has a structure like this:
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{ "base_url": "https://api.openai.com/v1string", "model": "gpt-3.5-turbo","string", "api_token": "string", "yourmax_token": "integer", "max_tokencustom_headers": { "name": 800"value" } } |
Send a prompt to the AI - [ai.prompt.send]
One of most generic and simplest use cases is to send a prompt (= a request) to the AI and use the response data in your pipeline. For this you can use the ai.prompt.send
command. Here is an example to return some data from the AIWhereas:
base_url
: The base url of the API (requried).model
: The AI model to be used (required).api_token
: The security token to be used.max_token
: The max token to be send (defaults to 800)custom_headers
: Key-value pairs to be passed along as HTTP headers on any request. This is handy for example in case basic authentication or any other additional header setting is required.
Connect to OpenAI (ChatGPT)
In case you would like to connect to the OpenAI services for example, you could use these settings in your secret:
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pipeline:{ - ai.prompt.send:"base_url": "https://api.openai.com/v1", "model": "gpt-3.5-turbo", prompt"api_token": |"your_token", "max_token": 800 Return the names of the 10 biggest cities in the world as JSON array. |
...
} |
Prompting - Send a question or advice to AI
One of most generic and simplest use cases is to send a prompt (= question / advice) to the AI and use the response data in your pipeline. For this you can use the ai.prompt.send
command. Here is an example to return some data from the AI:
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[pipeline: - "Tokyo",ai.prompt.send: | "Delhi", Return "Shanghai",the names of the 10 "Sao Paulo", "Mumbai", "biggest cities in the world as JSON array. |
This will result in an entry like this in the body:
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[
"Tokyo",
"Delhi",
"Shanghai",
"Sao Paulo",
"Mumbai",
"Beijing",
"Mexico City",
"Osaka",
"Cairo",
"Dhaka"
] |
Adding context data (
...
input) to the prompt
You can also apply the prompt on a given context data which is the input datawith context data. This context data can be set as input
to the command:
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pipeline: - ai.prompt.send: input: | [ "Tokyo", "Delhi", "Shanghai", "Sao Paulo", "Mumbai", "Beijing", "Mexico City", "Osaka", "Cairo", "Dhaka" ] prompt: | Order the given list alphabetically. |
The result of this example in the body is then:
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[ "Beijing", "Cairo", "Delhi", "Dhaka", "Mexico City", "Mumbai", "Osaka", "Sao Paulo", "Shanghai", "Tokyo" ] |
See another example which converts a given input:
...
language | yaml |
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...
The input
of the command will become the context data. It can be plain text, a file or an URI. In case it is a file (for example a PDF or Word document) or any other supported format, it will be automatically converted into an AI compatible format.
Here is an example which uses a PDF file as file context, stored in PIPEFORCE’s Drive cloud storage:
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pipeline: - ai.prompt.send: input: $uri:drive:invoice-3662.pdf prompt: | <person> Check the invoice <firstName>Max</firstName>to ensure it is correct both in terms <lastName>Smith</lastName> of content and calculations. <age>36</age> If everything is fine, return "OK". </person> If not, provide prompt:the "Convertreason to JSON" |
...
for the error in one sentence. |
See another example which converts a given input:
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{pipeline: - "person": {ai.prompt.send: input: | "firstName": "Max", <person> "lastName": "Smith", <firstName>Max</firstName> "age": 36 } } |
And once more you could apply data privacy filters for example:
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pipeline: <lastName>Smith</lastName> - ai.prompt.send: input:<age>36</age> | </person> { prompt: "Convert to "person": { JSON" |
And the result from the AI in the body will be this:
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{ "person": { "firstName": "Max", "lastName": "Smith", "age": 36 } } |
And one more example: Apply a data privacy filter:
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pipeline: - ai.prompt.send: } input: | } prompt:{ | "person": Remove{ all personal data because of privacy and "firstName": "Max", replace by randomized names and add prefix p_ |
As a result, a changed JSON comes back:
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{ "lastName": "Smith", "person": { "firstNameage": "p_Alex",36 "lastName": "p_Johnson",} "age":} 48 } } |
Send multiple messages
In case you need to send multiple messages, you can use the messages parameter like this:
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pipeline: - ai.prompt.send: prompt: | messages: Remove all personal data because of privacy and - role: system replace content: Tell me a joke based on given user input.by randomized names and add prefix p_ |
As a result, a changed JSON comes back:
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{ "person": { - role"firstName": user"p_Alex", "lastName": content: I'm a 28 year old man living in New York. |
The result could be like this in the body:
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Why did the New York man bring a ladder to his job interview?
Because he wanted to climb the corporate ladder! |
If messages
and prompt
is given, the prompt will be automatically added as message of role system
at the very end.
Text-to-Command - [ai.command.detect]
This powerful feature of the AI Studio takes a non-structured text such as an email, a chat message or a PDF document for example, analyses it using AI and then automatically detects and executes the according PIPEFORCE command including its parameters which must be executed in order to take action and fulfill the user’s request.
This can be seen as an ultimative tool to bridge between humans and machines since any generated non-structured text in written and spoken form can start nearly any computer task you can imagine.
...
Here are some examples where this feature could be helpful:
Automatically forward emails with a summary to the responsible internal team
Scan any email sent to a given inbox such as info@mycompany.tld for example, find out the intention of the sender, then forward the email to the internal team such as support, sales, … which can handle the request. The AI can find out the type of request, whether it is a support request, an order request, a question regarding an invoice or any other type just by writing an advice to the AI and without any programming. It can also detect and extract all required data such ascustomerId
,invoiceNumber
and more from the sender’s email. Furthermore, it can also create a short summary about what the core intent of the sender is to make it easier for the internal team to process the request.Automatically validate and start an internal workflow by email
Scan any email sent to a given inbox such as invoice@mycompany.tld for example and if this email matches to an existing workflow, extract all variables required for this workflow from the email, start the workflow and pass these variables along with it. For example to start an accounts payable workflow based on an given payable invoice. The AI can validate whether all required data exist and is valid in order to start the workflow.Automatically call endpoints of other systems by email
Scan any email sent to a given inbox such as info@mycompany.tld for example and if this email is related to a service, offered by a third party system which provides an remote API, call this remote API (for example REST) and pass along parameters extracted from the email. For example create a new ticket on an external ticket system.
Using the command ai.command.detect
In order to integrate Text-to-Command functionality into your automation pipelines, you can use the command ai.command.detect
. It will
take a text, for example like an email as input,
will apply the given AI instructions on this text and
finally will select a command to be executed and optionally executes it.
Here is a first example how this could look like in an automation pipeline:
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body: | From: customer@somedomain.tld Subject: I have a problem with your product Hello, I have a big problem with your product and need support. My customer id is 123456. Cheers, Valued Customer pipeline: - ai.command.detect: runDetectedCommand: false advice: intentCandidates:"p_Johnson", "age": 48 } } |
Avanced prompting: Send multiple messages
In case you need to send multiple messages in one prompt, you can use the parameter messages
like this:
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pipeline:
- ai.prompt.send:
messages:
- role: system
content: Tell me a joke based on given user input.
- role: user
content: I'm a 28 year old man living in New York. |
The result could be like this in the body:
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Why did the New York man bring a ladder to his job interview?
Because he wanted to climb the corporate ladder! |
If both parameters, messages
and prompt
are given, prompt
will be automatically added to messages
of role system
at the very end.
Possible values for role
are:
system
= A system message from the caller (typically the context data with basic advice).user
= A message from the user (typically the question or advice based on the context data).ai
= A message from the AI (typically used to enrich the context or trace the conversation).
The parameter content
can be a plain text or any AI convertable object (like a PDF file for example). The conversion and preparation to an AI compatible format is done by PIPEFORCE automatically.
Intent Detection - Detect what the user wants
Another feature of the AI studio is the ability to detect the intent of the user or to classify a given information and extract additional information based on the detected intent.
Lets consider this example use case for better understanding: An employee sends an email with a PDF as attachment. This PDF can be an invoice, a termination or a documentation. The AI can detect, which intent it is and can then additionally extract all required information from the document. For the invoice this could be the invoice numer and the positions for example, for the termination it could the contract number and for the documentation it could a short summary for example. Lets model this use case now in a PIPEFORCE pipeline:
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pipeline: # Read email from inbox - imap.get: host: outlook.office365.com secret: my-office365-secret # Detect the intent in the email - ai.intent.detect: advice: intentCandidates: - intentId: "invoice" prompt: "Use this intent in case the attachment is an invoice." params: supplierAddress: prompt: Extract the supplier address from the invoice. invoiceNumber: prompt: Extract the invoice number from the invoice. totalAmount: prompt: Extract the total amount of the invoice in cents without any currency chars, separators or other special characters. - intentId: "temination" prompt: "Use this intent in case the attachment is a termination of a contract." params: contractNumber: prompt: Extract the contract number. customerNumber: - intentIdprompt: "forwardToSupport"Extract the customer number. instruction: "Use this intent in case the senderreason: needs product support." targetCommand: "mail.send" prompt: Summarize in one sentence the reason for the termination. params: - intentId: "documentation" to: prompt: "Use this intent in case the attachment value: "support@internal.tldis a documentation." fromparams: instructionsummary: "The email address of the sender." subjectprompt: Create a short summary what this documentation is about. |
After executing this pipeline, the response could look like this:
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{ "params": { instruction: "Use the subject of the sender's email." "supplierAddress": { message"name": "supplierAddress", "value": "ABC Software (Germany) instruction:GmbH "Use- theIm messageWeg of3 the- sender's email."12345 Worth", - intentId: "forwardToInforequired": false, instruction "pass": >true, "type": "string" Use this intent in case the sender's intent could not be detected. }, "invoiceNumber": { targetCommand"name": "mail.sendinvoiceNumber", params"value": "123100401", to"required": false, value: "info@internal.tld" "pass": true, from:"type": "string" }, instruction: "ThetotalAmount": email{ address of the sender." "name": "totalAmount", subject: "value": "45353", instruction: "Use the subject of the sender's email." "required": false, message"pass": true, "type": "string" instruction: "Use the message of the sender's email." } }, "enabled": true, "intentId": "invoice", "command": null } |
As you can see in this example, there are two command intents configured:
One intent will forward the customer email to the support team (=
forwardToSupport
) andthe other one to the info team in case it is related to any other topic (=
forwardToInfo
).
Each intent has an instruction
in order to instruct the AI the command ai.intent.detect
is used and three intents are configured under advice.intentCandidates
for invoice, termination and documentation. Each with its own parameters to be extracted.
Each intent can have these attributes:
intentId
This attribute is mandatory and gives the intent a unique id. This should be an explainatory, unique name without special charaters or whitespaces.prompt
Each intent has anprompt
in order to instruct the AI about the criteria to select this intent. In case such an intent is selected by AI,
...
The parameter runDetectedCommand
defines whether the command should directly be executed (true
) or the intent JSON should be simply returned for further processing (false
).
Intent Parameters
The params
section on each intent lists the parameters required to call the command. For the mail.send
command these are for example the parameters to
, from
, subject
and message
. The values of these parameters can be fixed, templated or can be detected by the AI.
All parameter attributes are explained below.
name
(optional)
The name of the parameter. Under this name it will be passed to the command.
This attribute is optional. If not set, the params id will be used.
required
(optional)
Defines whether this parameter is required. In case it is required and its value is finally missing or cannot be detected by AI, an error is thrown and further execution stops.
The default value is false
.
type
(optional)
The data type of the parameter such as string
, boolean
, integer
, number
.
If different from string and parameter is detected by AI, the AI also tries to convert to this format.
The default value is string
.
value
(optional)
The value
of an intent parameter defines the value to be passed to the command.
This can be a fixed value (literal) or a template. By default the Mustache template syntax can be used which starts with {{
and ends with }}
. The variables advice
and intent
are passed as model context to the template. This way you can access for example settings and values of other parameters after they have been resolved by the AI in order to formulate the final parameter for a command.
See this example to construct a message out of advice parameters using a template:
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...
targetCommand: "mail.send"
...
params:
message:
value: "The customerId is: {{advice.params.customerId}}"
... |
Here is a more advanced example to pass auto-detected parameters into the command worklow.start
as workflow variables using the parameter variables
:
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...
targetCommand: "workflow.start"
...
params:
variables:
value:
customerId: "{{advice.params.customerId}}"
customerName: "{{advice.params.customerName}}"
... |
instruction
(optional)
For each parameter, an attribute instruction
instead of a value
can be set. Not both!
In this case the AI will auto-detect the parameter value by reading and applying this instruction on the input and setting the result on the value field automatically.
See this example where the subject
parameter for the mail.send
command will be auto-detected by AI:
...
language | yaml |
---|
...
additionally the parameters will be extracted from the input. This parameter is mandatory.
params
The list of optional parameters to be detected in case this intent was selected.command
The optional name of the command to be executed in case this intent was detected. Note: AdditionallyrundDetectecCommand
must be set totrue
on theai.intent.detect
command which isfalse
by default.enabled
An intent can optionally be disabled by setting enabled = false. This is useful mainly for testing purposes for example. In this case only the other intents will be considered by the AI.
Intent Parameters
The params
section on each intent lists the parameters of the intent. These parameters will be automatically set in case the given intent was detected. They can later be used for further processing by calling a command of by passing them to external systems for example.
Each parameter can have a fixed/templated value
or its value can be detected by AI using the prompt
attribute.
All parameter attributes are explained below.
name
(optional)
The name of the parameter.
This attribute is optional. If not set, the params id will be used.
required
(optional)
Defines whether this parameter is required. In case it is required and its value is finally missing or cannot be detected by AI, an error is thrown and further execution stops.
The default value is false
.
type
(optional)
The data type of the parameter such as string
, boolean
, integer
, number
, json
If different from string and parameter is detected by AI, the AI also tries to convert to this format.
The default value is string
.
value
(optional)
The value
of the intent parameter.
This can be a fixed value (literal) or a template.
Templated values
The value can also be template string. By default the Mustache template syntax can be used which starts with {{
and ends with }}
. The variables advice
and intent
are passed as model context to the template. This way you can access for example settings and values of other parameters after they have been resolved by the AI in order to formulate the final parameter for a command.
See this example to construct a message out of advice parameters using a template:
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...
params:
customerId:
value: "1234567"
message:
value: "The customerId is: {{intent.params.customerId}}"
... |
prompt
(optional)
For each parameter, an attribute prompt
instead of a value
can be set. Not both!
In this case the AI will auto-detect the value of the parameter by reading and applying this prompt on the input and setting the result on the value field automatically.
See this example where the subject
parameter for the mail.send
command will be auto-detected by AI:
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...
params:
subject:
prompt: "Use the subject from initial sender email"
... |
As you can see in this example, there is no fixed value for parameter subject
set. Instead the AI was instructured to extract the value from the given email input.
Text-to-Command - Let the AI auto-start a business process
This is the next level of automation where the AI can start a command and with this, start a business process fully automated. For this, the AI takes a non-structured text such as an email, a chat message or a PDF document for example, analyses it and then automatically detects and executes the according PIPEFORCE command in order to take action and fulfill the user’s request.
This can be seen as an ultimative tool to bridge between humans and machines since any generated non-structured text in written and spoken form can start nearly any computer task you can imagine.
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Here are some example use cases where this feature could be helpful:
Automatically forward emails with a summary to internal team
Scan any email sent to a given inbox such as info@mycompany.tld for example, find out the intention of the sender, then forward the email to the internal team such as support, sales, … which can handle the request. The AI can find out the type of request, whether it is a support request, an order request, a question regarding an invoice or any other type just by writing an advice to the AI and without any programming. It can also detect and extract all required data such ascustomerId
,invoiceNumber
and more from the sender’s email. Furthermore, it can also create a short summary about what the core intent of the sender is to make it easier for the internal team to process the request.Automatically start an internal workflow by email
Scan any email sent to a given inbox such as invoice@mycompany.tld for example and if this email matches to an existing workflow, extract all variables required for this workflow from the email, start the workflow and pass these variables along with it. For example to start an accounts payable workflow based on an given payable invoice. The AI can validate whether all required data exist and is valid in order to start the workflow.Automatically call endpoints of other systems by email
Scan any email sent to a given inbox such as info@mycompany.tld for example and if this email is related to a service, offered by a third party system which provides an remote API, call this remote API (for example REST) and pass along parameters extracted from the email. For example create a new ticket on an external ticket system.
Using the command ai.intent.detect
In order to integrate Text-to-Command functionality into your automation pipelines, you can use the command ai.intent.detect
. It will
take a text, for example like an email as input,
will apply the given AI prompts on this text and
finally will select a command to be executed and passes the detected parameters to this command.
Here is an example how this could look like in an automation pipeline:
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body: |
From: customer@somedomain.tld
Subject: I have a problem with your product
Hello,
I have a big problem with your product and need support.
My customer id is 123456.
Cheers, Valued Customer
pipeline:
- ai.command.detect:
runDetectedCommand: true
advice:
intentCandidates:
- intentId: "forwardToSupport"
prompt: "Use this intent in case the sender needs product support."
command: "mail.send"
params:
to:
value: "support@internal.tld"
from:
prompt: "The email address of the sender."
subject:
prompt: "Use the subject of the sender's email."
message:
prompt: "Use the message of the sender's email."
- intentId: "forwardToInfo"
prompt: >
Use this intent in case the sender's intent could not be detected.
command: "mail.send"
params:
to:
value: "info@internal.tld"
from:
prompt: "The email address of the sender."
subject:
prompt: "Use the subject of the sender's email."
message:
prompt: "Use the message of the sender's email." |
As you can see in this example, there are two intents configured:
One intent will forward the customer email to the support team (=
forwardToSupport
) andthe other one to the info team in case it is related to any other topic (=
forwardToInfo
).
Each intent has an prompt
in order to instruct the AI about the criteria to select this intent. In case such an intent is selected by AI, there is the targetCommand
field defining the name of the command which must be called. In this example this is the mail.send
command.
The parameter runDetectedCommand
defines whether the command should directly be executed (true
) or the intent JSON should be simply returned for further processing (false
).