"GPT Integration" refers to Grooper's early attempts at integrating OpenAI's GPT models into the product. The information in this article is largely obsolete.
For more current information on Grooper's integration with AI technologies, refer to the following resources:
* [[Grooper and AI]] - An overview of Grooper's AI integrations.
* [[Ask AI]] - An LLM-based extractor.
* [[AI Extract]] - A "Fill Method" using LLMs for large scale data extraction with minimal setup.
* [[Clause Detection]] - An LLM embeddings based Data Section extract method.
|}
[[File:OpenAI Logo.svg.png|right|thumb|500px|Enhancing Grooper by integrating with modern AI technology.]]
[[File:OpenAI Logo.svg.png|right|thumb|500px|Enhancing Grooper by integrating with modern AI technology.]]
[https://openai.com/ OpenAI GPT] integration in '''Grooper''' allows users to leverage modern AI technology to enhance their document data integration needs.
</blockquote>
OpenAI's GPT model has made waves in the world of computing. Our '''Grooper''' developers recognized the potential for this to grow '''Grooper's''' capabilities. Adding its funcionality will allow for users to explore and find creative solutions for processing their documents using this advanced technology.
OpenAI's GPT model has made waves in the world of computing. Our '''Grooper''' developers recognized the potential for this to grow '''Grooper's''' capabilities. Adding its functionality will allow for users to explore and find creative solutions for processing their documents using this advanced technology.
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[[File:Asset 22@4x.png]]
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You may download the ZIP(s) below and upload it into your own Grooper environment (version 2023). The first contains one or more '''Batches''' of sample documents. The second contains one or more '''Projects''' with resources used in examples throughout this article.
* [[Media:2023_Wiki_GPT-Integration_Batch.zip]]
* [[Media:2023_Wiki_GPT-Integration_Project.zip]]
|}
== ABOUT ==
== ABOUT ==
GPT (Generative Pre-trained Transformer) integration can be used for three things in '''Grooper''':
* '''[[#GPT Complete (Value Extractor)|Extraction]]''' - Prompt the GPT model to return information it finds in a document.
* '''[[#GPT Embeddings (Classify Method)|Classification]]''' - GPT has been trained against a massive corpus of information, which allows for a lot of potential when it comes to classifying documents. The idea here is that because it's seen so much, the amount of training required in '''Grooper''' should be less.
* '''[[#GPT Lookup (Lookup Specification)|Lookup]]''' - With a GPT lookup you can provide information collected from a model in '''Grooper''' as <code><span style="color:#ff00ff">@</span></code> variables in a prompt to have GPT generate data.
You may download and import the files below into your own Grooper environment (version 2023). The first contains a '''Project''' with several '''Content Models''' used as examples throughout this article. The second contains some example '''Batches''' of sample documents.
* GPT Integration - Project.zip
* GPT Integration - Batches.zip
|}
<br>
GPT (Generative Pre-trained Transformer) integration can be used for three things in '''Grooper''':
* '''Extraction''' - Prompt the GPT model to return information it finds in a document.
* '''Classification''' - GPT has been trained against a massive corpus of information, which allows for a lot of potential when it comes to classifying documents. The idea here is that because it's seen so much, the amount of training required in '''Grooper''' should be less.
* '''Lookup''' - With a GPT lookup you can provide information collected from a model in '''Grooper''' as <code><span style="color:#ff00ff">@</span></code> variables in a prompt to have GPT generate data.
<br>
In this article you will be shown how '''Grooper''' leverages GPT for the aforementioned methods. Some example use cases will be given to demonstrate a basic approach. Given the nature of the way this technology works, it will be up to the user to get creative about how this can be used for their needs.
In this article you will be shown how '''Grooper''' leverages GPT for the aforementioned methods. Some example use cases will be given to demonstrate a basic approach. Given the nature of the way this technology works, it will be up to the user to get creative about how this can be used for their needs.
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=== Location Data for Data Extraction ===
=== Location Data for Data Extraction ===
The final thing to consider is in regards to the ''GPT Complete'' '''''Value Extractor''''' type (more on this soon.) If you have used '''Grooper''' before then you are probably familiar with how a returned value is highlighted with a green box in the document viewer. One of the main strenghts of '''Grooper's''' text synthesis is that it collects location information for each character which allows this highlighting to occur. The GPT model does not consider location information when generating its results which means there will be no highlighting on the document for values collected with this method. The main impact this will have is on your ability to validate information returned by the GPT model.
The final thing to consider is in regards to the ''GPT Complete'' '''''Value Extractor''''' type (more on this soon.) If you have used '''Grooper''' before then you are probably familiar with how a returned value is highlighted with a green box in the document viewer. One of the main strengths of '''Grooper's''' text synthesis is that it collects location information for each character which allows this highlighting to occur. The GPT model does not consider location information when generating its results which means there will be no highlighting on the document for values collected with this method. The main impact this will have is on your ability to validate information returned by the GPT model.
== How To ==
== How To ==
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Grooper is able to integrate with OpenAI's GPT model because they have provided a web API. All we need in order use the Grooper GPT functionality is an API key. Here you will learn how to obtain an API key for yourself so you can start using GPT with Grooper.
Grooper is able to integrate with OpenAI's GPT model because they have provided a web API. All we need in order use the Grooper GPT functionality is an API key. Here you will learn how to obtain an API key for yourself so you can start using GPT with Grooper.
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# The first thing you should do is visit [https://platform.openai.com/ OpenAI API site] and login or create an account.
# The first thing you should do is visit [https://platform.openai.com/ OpenAI API site] and login or create an account.
# Once logged in, click the "Personal" menu in the top right.
# Once logged in, click the "Personal" menu in the top right.
# Within in this menu click the "View API Keys" option, which will take you to the "API keys" page.
# Within in this menu click the "View API Keys" option, which will take you to the "API keys" page.
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[[Image:GPT Integration 001.png]]
[[Image:GPT Integration 001.png]]
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# <li value=4> On the "API keys" page, click the "+ Create new secret key" button, which will make an "API key generated" pop-up.
# <li value=4> On the "API keys" page, click the "+ Create new secret key" button, which will make an "API key generated" pop-up.
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[[Image:GPT Integration 002.png]]
[[Image:GPT Integration 002.png]]
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# <li value=5> Highlight and copy, or click the copy button to copy the key string to your clipboard.
# <li value=5> Highlight and copy, or click the copy button to copy the key string to your clipboard.
#* A word of warning here. You '''WILL NOT''' get another chance to copy this string. You can always create a new one, but once you close this pop-up, you will not have another chance to copy the key string out.
#* A word of warning here. You '''WILL NOT''' get another chance to copy this string. You can always create a new one, but once you close this pop-up, you will not have another chance to copy the key string out.
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[[Image:GPT Integration 003.png]]
[[Image:GPT Integration 003.png]]
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=== Extraction - GPT Complete ===
''GPT Complete'' is a type of '''''Value Extractor''''' that was added to Grooper 2023. It is the setting you choose to leverage GPT integration on an extractor. Below are some examples of configuration and use. You should be able to follow along using the '''GPT Integration''' zip files ('''Batch''' and '''Project''' are included) that are included in this article. Begin by following along with the instructions. The details of the properties will be explained after.
<br><br>
It is also worth noting that the examples given below ARE NOT a comprehensive list. Provided are only a few examples of prompts used in extraction to get you thinking about what can be done. It is ''highly'' recommended that you not only reference the materials linked above, but also spend time experimenting and testing. Good luck!
# After importing the '''Grooper''' ZIP files provided with this course, expand the Node Tree out and select the '''Data Field''' named "Lessor".
# Click the drop-down menu for the '''''Value Extractor''''' property.
# Select the ''GPT Complete'' option from the menu.
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[[Image:GPT Integration 004.png]]
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# <li value=4> With the '''''Value Extractor''''' property set, click the ellipsis button to open its configuration window (if you prefer, you can instead click the drop-down arrow to the left of the property to edit its properties without a pop-up window).
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[[Image:GPT Integration 005.png]]
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# <li value=5> Start by entering your API key into the '''''API Key''''' property.
# Click the "Browse Batches" button.
# Select "GPT Complete Examples" '''Batch''' in the "GPT Integration - Batches" folder from the menu.
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[[Image:GPT Integration 006.png]]
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# <li value=8> Select "Lease (1)" from the '''Batch Viewer'''.
# Click the ellipsis button for the '''''Instructions''''' property to open its configuration window (if you prefer, you can insted simply type into the entry field of the property.)
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[[Image:GPT Integration 007.png]]
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# <li value=10> Type the string value <code>Who is the lessor?</code> into the editor.
# Click the "OK" button to accept and close this window.
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[[Image:GPT Integration 008.png]]
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# <li value=12> When the previous window closes the extractor will immediately fire (assuming you have automatic testing enabled), and you will see a result returned in the "Results" list view.
<br>
From a "prompt engineering" perspective the input we gave it is as basic as you can get. A result is returned, which is great, but it may not be the exact result that is desired. The value supplied is very conversational, which isn't necessarily a bad thing and is typical of an AI that's trained to emulate language, but considering how data is typically constructed in '''Grooper''', it's not quite right. If you break it down, the result given is really four values: the lessor's name, their marital status, their gender, and their location. In this case the name of the lessor only will suffice.
<br><br>
The next thing to tackle will be using some prompt engineering to get a more specific result.
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[[Image:GPT Integration 009.png]]
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<br>
<span style="font-size:14pt">'''[[GPT Integration#Extraction - GPT Complete|Back to top to continue to next tab]]'''</span>
</tab>
<tab name="Getting a More Specific Result with Prompt Engineering" style="margin:25px">
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# Working with the same material as before, select the '''Data Field''' named "Lessee".
# Click the drop-down menu for the '''''Value Extractor''''' property.
# Select ''GPT Complete'' from the drop-down menu.
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[[Image:GPT Integration 010.png]]
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# <li value=4> With the '''''Value Extractor''''' set, click the ellipsis button to open its configuration window (if you prefer, you can instead click the drop-down arrow to the left of the property to edit its properties without a pop-up window).
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[[Image:GPT Integration 011.png]]
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# <li value=5> Start by entering your API key into the '''''API Key''''' property.
# Make sure "Lease (1)" is still selected in the '''Batch Viewer'''.
# Click the ellipsis button for the '''''Instructions''''' property to open its configuration window (if you prefer, you can insted simply type into the entry field of the property.)
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[[Image:GPT Integration 012.png]]
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# <li value=8> Type the string value <code>Who is the lessee?</code> into the editor.
# Click the "OK" button to accept and close this window.
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[[Image:GPT Integration 013.png]]
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# <li value=10> When the previous window closes the extractor will immediately fire (assuming you have automatic testing enabled), and you will see a result returned in the "Results" list view.
#* This is clearly a different result form the "Lessor", which is good, but let's address the issue mentioned previously. Let's use some simple "prompt engineer" to get the specific result desired.
# Click the ellipsis button for the '''''Instructions''''' property to open its configuration window (if you prefer, you can insted simply type into the entry field of the property.)
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[[Image:GPT Integration 014.png]]
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# <li value=12> Add to the string value <code>Respond only with the lesse's name.</code>
# Click the "OK" button to accept and close this window.
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[[Image:GPT Integration 015.png]]
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# <li value=14> This is a much better result than before. However, the period at the end is unnecessary and can be removed, again, by prompting the AI appropriately.
# Click the ellipsis button for the '''''Instructions''''' property to open its configuration window (if you prefer, you can insted simply type into the entry field of the property.)
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[[Image:GPT Integration 016.png]]
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# <li value=16> Add to the string value <code>Don't include control characters.</code>
# Click the "OK" button to accept and close this window.
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[[Image:GPT Integration 017.png]]
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# <li value=18> Perfect! This is the exact value needed.
<br>
This is by no means anything but a simple prompt, but notice how giving context and being more specific alters the result. As a user learning this new technology, it's now time to start experimenting with your prompts and getting creative to get the results you're looking for.
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[[Image:GPT Integration 018.png]]
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<br>
<span style="font-size:14pt">'''[[GPT Integration#Extraction - GPT Complete|Back to top to continue to next tab]]'''</span>
</tab>
<tab name="Full and Brief Summary" style="margin:25px">
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# Working with the same material as before, select the '''Data Field''' named "Full Summary".
# Click the drop-down menu for the '''''Value Extractor''''' property.
# Select ''GPT Complete'' from the drop-down menu.
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[[Image:GPT Integration 019.png]]
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{|cellpadding=10 cellspacing=5
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# <li value=4> With the '''''Value Extractor''''' set, click the ellipsis button to open its configuration window (if you prefer, you can instead click the drop-down arrow to the left of the property to edit its properties without a pop-up window).
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[[Image:GPT Integration 020.png]]
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# <li value=5> Start by entering your API key into the '''''API Key''''' property.
# Type <code>tldr</code> into the '''''Instructions''''' property.
# Assuming you have automatic testing enabled, you will see a result returned in the "Results" list view. Click this result.
# Click the "Inspect" button.
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[[Image:GPT Integration 021.png]]
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# <li value=9> In the "Data Inspector" you will see the number of characters in the result.
# You will also see the full text of the summary.
# Right-click in a blank space to get a list of commands.
# Make sure "Text Wrap" is enabled so that the text will wrap like it is in the screenshot.
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[[Image:GPT Integration 022.png]]
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# <li value=13> After confirming the previous settings and closing windows, right-click the "Full Summary" '''Data Field''' to get a list of commands.
# Select the "Clone..." command.
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[[Image:GPT Integration 023.png]]
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# <li value=15> Name the clone "Brief Summary".
# Confirm the clone by clicking the "Execute" button.
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[[Image:GPT Integration 024.png]]
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# <li value=17> With the clone made, click the ellipsis button of the '''''Value Extractor''''' property to open its configuration window (if you prefer, you can instead click the drop-down arrow to the left of the property to edit its properties without a pop-up window).
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[[Image:GPT Integration 025.png]]
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# <li value=18> Add <code> in 100 words or less</code> to the '''''Instructions''''' property.
# A result will be returned in the "Results" list view. Select this result.
# Click the "Inspect" button.
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[[Image:GPT Integration 026.png]]
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# <li value=21> In the "Data Inspector" you will now notice this result's length is much shorter.
# The summary given is much shorter than the previous due to the additional instruction given in the prompt.
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[[Image:GPT Integration 027.png]]
|}
<br>
<span style="font-size:14pt">'''[[GPT Integration#Extraction - GPT Complete|Back to top to continue to next tab]]'''
# Working with the same material as before, select the '''Data Field''' named "Sentiment Analysis".
# Click the drop-down menu for the '''''Value Extractor''''' property.
# Select ''GPT Complete'' from the drop-down menu.
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[[Image:GPT Integration 028.png]]
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{|cellpadding=10 cellspacing=5
|valign=top style="width:50%"|
# <li value=4> With the '''''Value Extractor''''' set, click the ellipsis button to open its configuration window (if you prefer, you can instead click the drop-down arrow to the left of the property to edit its properties without a pop-up window).
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[[Image:GPT Integration 029.png]]
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{|cellpadding=10 cellspacing=5
|valign=top style="width:50%"|
# <li value=5> Start by entering your API key into the '''''API Key''''' property.
# Click the ellipsis button for the '''''Instructions''''' property to open its configuration window (if you prefer, you can insted simply type into the entry field of the property.)
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[[Image:GPT Integration 030.png]]
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# <li value=7> Type the string <code>Is this document's sentiment positive, negative, or neutral? Respond with only the sentiment and no control characters.</code> into the editor.
# Click the "OK" button to accept and close this window.
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[[Image:GPT Integration 031.png]]
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# <li value=9> When the previous window closes, click on "Document (4)" in the '''Batch Viewer'''.
# Assuming you have automatic testing enabled, you will see a result ("negative") returned in the "Results" list view.
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[[Image:GPT Integration 032.png]]
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# <li value=11> Click on "Document (5)" in the '''Batch Viewer'''.
# Assuming you have automatic testing enabled, you will see a result ("positive") returned in the "Results" list view.
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[[Image:GPT Integration 033.png]]
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<br>
<span style="font-size:14pt">'''[[GPT Integration#Extraction - GPT Complete|Back to top to continue to next tab]]'''
</tab>
</tabs>
==== Value Extractor Properties ====
Before moving on to seeing how the GPT model is used for classification in '''Grooper''' let's take a look at the properties used in the ''GPT Complete'' '''''Value Extractor'''''.
===== API Key =====
You must fill this property with a valid API key from OpenAI in order to leverage GPT intergration with Grooper. See the '''[[Obtain an API Key|Obtain an API Key]]''' section above for instruction on how to get a key.
===== Model =====
The API Key you use will determine which GPT models are available to you. The different GPT models can affect the text generated based on their size, training data, capabilities, prompt engineering, and fine-tuning potential. GPT-3's larger size and training data, in particular, can potentially result in more sophisticated, diverse, and contextually appropriate text compared to GPT-2. However, the actual performance and quality of the generated text also depend on various other factors, such as prompt engineering, input provided, and specific use case requirements. GPT-4 is the latest version, as of this writing, and takes the GPT model evern further.
===== Temperature =====
In the context of text generation using language models like ChatGPT, the temperature parameter is a setting that controls the randomness or randomness of the generated text. It is used during the sampling process, where the model selects the next word or token to generate based on its predicted probabilities.
When generating text, the language model assigns probabilities to different words or tokens based on their likelihood of occurring next in the context of the input text. The temperature parameter is used to scale these probabilities before sampling from them. A higher temperature value (e.g., 1.0) makes the probabilities more uniform and increases randomness, resulting in more varied and diverse text. On the other hand, a lower temperature value (e.g., 0.2) makes the probabilities more concentrated and biased towards the most likely word, resulting in more deterministic and focused text.
For example, with a higher temperature setting, the model may generate sentences like:
:"The weather is hot and sunny. I love to go swimming or hiking."
With a lower temperature setting, the model may generate sentences like:
:"The weather is hot. I love to go swimming."
The choice of temperature parameter depends on the desired output. Higher values are useful when you want more creativity and diversity in the generated text, but it may lead to less coherent or nonsensical sentences. Lower values are useful when you want more deterministic and focused text, but it may result in repetitive or overly conservative output. It's a hyperparameter that can be tuned to achieve the desired balance between randomness and coherence in the generated text.
===== TopP =====
TopP, also known as "nucleus sampling" or "stochastic decoding with dynamic vocabulary," is a text generation technique that is used to improve the diversity and randomness of generated text. It is often used as an alternative to traditional approaches like random sampling or greedy decoding in language models, such as GPT-2 and GPT-3.
In TopP sampling, instead of sampling from the entire probability distribution of possible next words or tokens, the model narrows down the choices to a subset of the most likely options. The subset is determined dynamically based on a predefined probability threshold, denoted as "p". The model considers only the words or tokens whose cumulative probability mass (probability of occurrence) falls within the top "p" value. The remaining words or tokens with lower probabilities are pruned from the selection.
Mathematically, given a probability distribution over all possible words or tokens, TopP sampling works as follows:
# Compute the cumulative distribution function (CDF) of the probabilities for the given distribution.
# Sort the probabilities in descending order and calculate the cumulative sum of probabilities from highest to lowest.
# Stop when the cumulative sum exceeds the threshold "p". So 0.1 means only the tokens comprising the top 10% probability mass are considered.
# The remaining set of words or tokens whose probabilities fall within the threshold "p" is considered for sampling.
By using TopP sampling, the model can generate text that is more diverse, as it allows for the possibility of selecting less frequent or rarer words or tokens, and it introduces randomness in the selection process. It can prevent the model from becoming overly deterministic or repetitive in its generated output, leading to more creative and varied text generation results.
===== Presence Penalty =====
The "presence penalty" is a technique used in text generation to encourage the model to generate more concise and focused outputs by penalizing the repetition of the same words or tokens in the generated text. It is a regularization technique that aims to reduce redundancy and promote diversity in the generated output.
The presence penalty is typically implemented as an additional term in the loss function during the training process of a language model. This term penalizes the model for generating the same words or tokens multiple times within a short span of text. The presence penalty can be formulated in different ways, depending on the specific model architecture and objectives, but the general idea is to assign a higher loss or penalty when the model generates repetitive or redundant text.
The presence penalty encourages the model to generate text that is more concise, avoids repetitive patterns, and promotes the use of a wider vocabulary. It helps prevent the model from generating overly verbose or redundant text, which can be undesirable in certain text generation tasks, such as story generation or summarization.
The magnitude of the presence penalty can be tuned to control the level of repetition allowed in the generated text. A higher penalty value would result in stricter avoidance of repetition, while a lower penalty value would allow for more repetition. The presence penalty is one of the techniques that can be used in combination with other regularization methods, such as temperature scaling, top-k sampling, or fine-tuning, to improve the quality and diversity of generated text.
===== Frequency Penalty =====
Frequency-based regularization techniques in text generation can refer to methods that aim to control the distribution of word or token frequencies in the generated text. This can be achieved by adding penalties or constraints to the model during training, such as limiting the occurrence of certain words or tokens, promoting the use of less frequent words or tokens, or controlling the balance of word or token frequencies in the generated text.
===== Remaining Properties =====
The remaining properties are fairly straight forward and require less description than the previous terms.
* '''''Timeout''''' - The amount of time, in seconds, to wait for a response from the web service before raising a timeout error.
* '''''Instructions''''' - The instructions or question to include in the prompt. The prompt sent to OpenAI consists of text content from the document, which provides context, plus the text entered here. This property should ask a question about the content or provide instructions for generating output. For example, "what is the effective date?", "summarize this document", or "Your task is to generate a comma-separated list of assignors".
* '''''Preprocessing (Paragraph Marking, Tab Marking, Vertical Tab Marking, Ignore Control Characters)''''' - To put simply, these tools were provided to allow the insertion (or deletion) of control characters to give textual context to information that would otherwise be spatial. GPT does not have an awareness of the location of text you feed it. As a person you can look at a table of information and understand it visually. GPT cannot. However, if you were to have control characters like tabs or paragraph markings, it increases the chance that GPT might understand those things.
* '''''Overflow Disposition''''' - Specifies the behavior when the document content is longer than the context length of the selected model.
:May be one of the following:
=== GPT Complete (Value Extractor) ===
::* ''Truncate'' - The content will be truncated to fit the model's context length.
{{#lst:Glossary|GPT Complete}}
::* ''Split'' - The content will be split into chunks which fit the model's context length. One result will be returned for each chunk.
Please visit the '''''[[GPT Complete]]''''' article for more information.
* '''''Context Extractor''''' - An optional extractor which filters the document content included in the prompt. All '''''Value Extractor''''' types are available.
* '''''Max Response Length''''' - The maximum length of the output, in tokens. 1 token is equivalent to approximately 4 characters for English text. Increasing this value decreases the maximum size of the context.
* '''''Maximum Content Length''''' - The maximum amount of content from the document to be included, in tokens.
=== Classification - GPT Embeddings ===
=== GPT Embeddings (Classification Method) ===
{{#lst:Glossary|GPT Embeddings}}
Please visit the '''''[[GPT Embeddings (Classification Method)|GPT Embeddings]]''''' article for more information.
=== Lookup - GPT Lookup ===
=== GPT Lookup (Lookup Specification) ===
{{#lst:Glossary|GPT Lookup}}
Please visit the '''''[[GPT Lookup]]''''' article for more information.
Latest revision as of 16:43, 27 August 2025
!!
LEGACY TECHNOLOGY DETECTED!!
"GPT Integration" refers to Grooper's early attempts at integrating OpenAI's GPT models into the product. The information in this article is largely obsolete.
For more current information on Grooper's integration with AI technologies, refer to the following resources:
Grooper and AI - An overview of Grooper's AI integrations.
OpenAI's GPT model has made waves in the world of computing. Our Grooper developers recognized the potential for this to grow Grooper's capabilities. Adding its functionality will allow for users to explore and find creative solutions for processing their documents using this advanced technology.
You may download the ZIP(s) below and upload it into your own Grooper environment (version 2023). The first contains one or more Batches of sample documents. The second contains one or more Projects with resources used in examples throughout this article.
GPT (Generative Pre-trained Transformer) integration can be used for three things in Grooper:
Extraction - Prompt the GPT model to return information it finds in a document.
Classification - GPT has been trained against a massive corpus of information, which allows for a lot of potential when it comes to classifying documents. The idea here is that because it's seen so much, the amount of training required in Grooper should be less.
Lookup - With a GPT lookup you can provide information collected from a model in Grooper as @ variables in a prompt to have GPT generate data.
In this article you will be shown how Grooper leverages GPT for the aforementioned methods. Some example use cases will be given to demonstrate a basic approach. Given the nature of the way this technology works, it will be up to the user to get creative about how this can be used for their needs.
Things to Consider
Before moving forward it would be prudent to mention a few things about GPT and how to use it.
Prompt Engineering
This first thing to consider is how to structure a good prompt so that you get the results you are expecting. There is a bit of an art to knowing how to do this. GPT can tell bad jokes and write accidentally hilarious poems about your life, but it can also help you do your job better. The catch: you need to help it do its job better, too. At its most basic level, OpenAI's GPT-3 and GPT-4 predict text based on an input called a prompt. But to get the best results, you need to write a clear prompt with ample context. Further on in this article when the GPT Complete Value Extractor is being demonstrated you will see an example of prompt engineering.
Follow this link, or perhaps even this one, for more information on prompt engineering.
Tokens and Pricing
Another consideration is the way GPT pricing works. You are going to be charged for the "tokens" used when interacting with GPT. To that end, the prompt that you write, the text that you leverage to get a result, and the result that is returned to you are all considered part of the token consumption. You will need to be considerate of this as you build and use GPT in your models.
Follow this link for more information on what tokens are.
Follow this link for more information on GPT pricing.
Location Data for Data Extraction
The final thing to consider is in regards to the GPT CompleteValue Extractor type (more on this soon.) If you have used Grooper before then you are probably familiar with how a returned value is highlighted with a green box in the document viewer. One of the main strengths of Grooper's text synthesis is that it collects location information for each character which allows this highlighting to occur. The GPT model does not consider location information when generating its results which means there will be no highlighting on the document for values collected with this method. The main impact this will have is on your ability to validate information returned by the GPT model.
How To
With the discussion of concepts out of the way, it is time to get into Grooper and see how and where to use the GPT integration.
Obtain an API Key
Grooper is able to integrate with OpenAI's GPT model because they have provided a web API. All we need in order use the Grooper GPT functionality is an API key. Here you will learn how to obtain an API key for yourself so you can start using GPT with Grooper.
The first thing you should do is visit OpenAI API site and login or create an account.
Once logged in, click the "Personal" menu in the top right.
Within in this menu click the "View API Keys" option, which will take you to the "API keys" page.
On the "API keys" page, click the "+ Create new secret key" button, which will make an "API key generated" pop-up.
Highlight and copy, or click the copy button to copy the key string to your clipboard.
A word of warning here. You WILL NOT get another chance to copy this string. You can always create a new one, but once you close this pop-up, you will not have another chance to copy the key string out.
GPT Complete (Value Extractor)
GPT Complete is a Value Extractor that leverages Open AI's GPT models to generate chat completions for inputs, returning one hit for each result choice provided by the model's response.
PLEASE NOTE: GPT Complete is a deprecated Value Extractor. It uses an outdated method to call the OpenAI API. Please use the Ask AI extractor going forward.
Please visit the GPT Complete article for more information.
GPT Embeddings (Classification Method)
BE AWARE: GPT Embeddings is obsolete as of version 2025. The LLM Classifier and Search Classifier methods are the new and improved AI-enabled classification methods.GPT Embeddings is a Classify Method that uses an OpenAI embeddings model and trained document samples to tell one document from another.
Please visit the GPT Embeddings article for more information.
GPT Lookup (Lookup Specification)
PLEASE NOTE: GPT Lookup is obsolete as of version 2025. Much of its functionality was replaced by newer and better LLM-based extraction methods, such as AI Extract. If absolutely necessary, its functionality could also be replicated with a Web Service Lookup implementation.GPT Lookup is a Lookup Specification that performs a lookup using an OpenAIGPT model.
Please visit the GPT Lookup article for more information.