With the release of SAS Viya 2024.07, a model card is now available in SAS Model Manager. The model card in SAS Model Manager was built to be like a nutrition label for AI models. What sets the SAS Model Card apart from previous model cards is the use of descriptive visuals, to make model cards accessible to all personas involved in the analytics process, including data scientists, data engineers, MLOPs engineers, managers, executives, risk managers, business analytics, end-users, and any other stakeholder with access to the SAS Viya environment. Additionally, most of our model card populates automatically as the model is developed, managed, and deployed in SAS Viya.
Model Card example
The first release of the model card supports classification and prediction models from various sources. As users and teams develop and manage their model within SAS Viya, more of the model card will automatically populate. The model card brings together information about the training data, model performance at the time of training, and model performance over time. So, for this article, we will review how to generate a complete model card for models from SAS’s no-code / low-code interface, SAS Model Studio. But fear not! This article is just the first of a series and we will focus on Python models in part 2.
The first step for making your model card is to register your model. From SAS Model Studio, you can register models from the Data Mining and Machine Learning pipelines in the Pipeline Comparison tab. Select the models you want to register, then open the options menu and click “Register models”. Once your models are registered, you can open your models in SAS Model Manager.
Registering a model in SAS Model Studio
The Model Card will appear as the first tab of a model instance inside SAS Model Manager when the model function is prediction or classification. If you’ve registered your model from SAS Model Studio, ensure that you are running SAS Viya 2024.07 (or later) and that your model has the function property listed as prediction or classification.
Model Card immediately after registration
The left-hand pane contains three sets of information: tags, the modeler, and the responsible party. The modeler will populate automatically for models registered from SAS Model Studio, The responsible party is the user or group responsible for the model and this field is populated at the project level. A link to the project is available near the top of the screen. Within the project, navigate to the Properties Tab and then the Model Usage section. You can update the responsible party here as well as any model usage fields.
Updating the Model Card left-hand pane
The Overview section provides an at-a-glance review of the model. It provides visuals of model health that are easy to understand and are supported by other sections of the card. This section reports on model performance during training and over time. It also reports on influential variables, variable privacy classifications, and completeness of the model card. Most of the data in the Overview section will be populated automatically for models coming from Model Studio, but there are areas that will require attention when first registered.
If you are noticing a blue warning about the thresholds for your training metrics, you can review and update the thresholds for action in the project properties under model evaluation. We encourage users to update these thresholds to ensure they are appropriate for their current use case, as thresholds for action may differ from one use case to the next. For the performance monitoring metrics to become available, complete the steps listed in the Model Audit section of this article. To ensure the variable privacy classifications come through, scroll down to the Data Summary and complete the steps listed in the corresponding section below. If you want the “No” to change to a “Yes” in the Limitations Documented block, then complete the limitations in the Model Usage section of the card, as outlined in the next section of this article. Finally, to see fairness metrics, before you ran your pipelines, you needed to select a variable to Assess for Bias in Model Studio.
This Overview section can help provide evidence that your model is in good health or direct your attention towards areas that need help.
Complete Model Card Overview section
The Model Usage section describes the intended usage, expected benefits, out-of-scope use cases, and limitations of the model. This section must be filled out manually at either the project or model level in the Properties tab. The values of the model usage are inherited from the project-level properties. However, model-specific information can be specified for each property value at the model level.
Updating the Model Card Model Usage section
The Data Summary section provides information about the training data from SAS Information Catalog. When registering your model from SAS Model Studio, the training data property should already be populated, but you may be prompted to run an analysis in the Data Summary section. If you see a button in this section, click it to run your analysis. Since the model card is intended to be shareable, you cannot use data stored within a personal CASUSER library.
Once the analysis is complete, you should see a summary courtesy of SAS Information Catalog. This summary contains the number of columns, number or rows, size, status, completeness of data, information privacy classifications, data tags, and data descriptions. If there are gaps in the description, tags, and status, then these can be corrected in SAS Information Catalog. Working with data in SAS Information Catalog may require advanced permissions, so work with your data engineers or data owners to ensure your data metadata is complete. Model card users can click the name of the dataset within this section and open the data within Information Catalog in a new tab and make changes quickly if they have the appropriate permissions. Having complete data about your data is a best practice for building trustworthy models!
Updating the Model Card Data Summary section
The Model Summary section examines the model’s performance at the time of training, which corresponds to the training donut charts in the Overview tab. The information in this tab is populated automatically when a model is registered from SAS Model Studio. The Model Summary section includes information about the model target, algorithm, development tool and version, various accuracy measures across training, testing, and validation splits, generalizability, and variable importance. If you’ve selected a variable in SAS Model Studio to assess for bias, those metrics will also appear in this tab. Overall, this tab provides a ton of information about how well the model was performing during training which can provide a baseline for monitoring model performance over time.
Complete Model Card Summary section
While the Model Summary section focuses on the model’s performance at the time of training, the Model Audit section reports on performance over time. The Model Audit section also provides a deeper dive into the performance monitoring donut charts in the Overview section.
The Model Audit section relies on two capabilities of SAS Model Manager: performance monitoring and Key Performance Indicator (KPI) alert rules. Performance monitoring reviews model performance over time in batch at user-defined time points. To create a performance monitoring report, you need data with the actual or ground-truth values, and SAS Model Manager graphs model performance over time. Without the ground-truth, you will only get metrics on data drift. You can create a performance monitoring report in a few moments from the project, as outlined in these steps or the demo video below:
Creating and running a performance monitoring definition
Next, you will set your KPI thresholds in the project properties under model evaluation. You can create a rule in just a few clicks, as outlined in the documentation or the quick demo below:
Creating KPI alert rules
Now, you can view the latest model accuracy, fairness, and model drift metrics against your thresholds on the latest run of performance monitoring.
Complete Model Card Model Audit section
This demo video walks through creating a model and a complete model card:
Creating a complete Model Card
Now you should have everything you need to create a complete nutrition label for your model! Stay tuned for the next article about creating a model card for a Python model. Otherwise post your questions, feedback, and ideas in the comments below!
This will be very useful for assessing models
The SAS Model Card's nutrition label approach enhances model transparency, making AI models more accessible and understandable for diverse stakeholders, fostering trust and accountability in AI development.
This makes the AI model more accessible and understandable.
The SAS Model Card's user-friendly, visual approach enhances transparency and accessibility in AI model management, empowering all.
The SAS Model Card's detailed visuals and automated data summaries make it invaluable for assessing AI models.
This improves the AI model's accessibility and clarity, making it easier for all users to understand its functionality, performance, and potential impact.
This will be very useful for assessing models
This will help access and better understand the AI models
Very Fancy and useful for accessing AI.
The SAS Model Card's nutrition label approach makes AI more accessible
This Model Card is the best way to make AI models more accessible and intuitive, it is an innovation.
This Model Card will be very useful for assessing models
Excellent roadmap and asset
Very well explained and Insightful. Thanks to team.
Thank you , this will be very helpful
Introducing model cards in SAS Model Studio enhances transparency by providing clear insights into model performance and limitations, making it easier for users to understand and trust the models.
Model cards are a step towards more ethical AI, ensuring that users are informed about potential biases and the conditions under which models perform best or struggle.
The creation of model nutrition labels simplifies complex information, making it more accessible for non-expert users who need to interpret model outputs without deep technical knowledge.
By implementing model cards, SAS Model Studio promotes standardization in model reporting, leading to more consistent evaluations and comparisons across different models and projects.
Very Fancy and useful for accessing AI.
This article is incredibly informative and provides a clear step-by-step guide on creating a model card for SAS Model Studio models. The use of descriptive visuals and automated population of model information makes it accessible to a wide range of stakeholders.
Looking forward to the next article on creating model cards for Python models!
The Data Summary Section is very useful!
Model Cards represent a new approach to demystifying AI, providing clear and user-friendly information.
Well Explained.
Model cards will definitely be useful.
It will be very useful.
This model card is easy to follow and understand.
This model is detailed and helpful. Thank you!
Model cards introduce a new layer of accountability, where model creators must clearly document the intended use, limitations, and potential risks, encouraging responsible AI development.
Providing model cards empowers stakeholders to make better-informed decisions by understanding the strengths and weaknesses of the models they rely on for critical analyses.
As regulations around AI transparency grow, model cards can help organizations meet compliance requirements by documenting essential information about the models in use.
The introduction of model nutrition labels can drive innovation by encouraging the development of more robust, fair, and interpretable models, as developers will be motivated to address the documented limitations.
Interesting🤔
This model card is a good add-in feature!
Good model documentation is so important!
This is an excellent innovation that will help to improve AI productivity.
Great illustration of SAS Model Studio Cards
It can be really useful.
Very effective AI model and documentation.
Excellent guide on creating model nutrition labels with SAS! Clear, informative, and a valuable resource for enhancing transparency in AI models. Thanks for sharing!
Very useful in accessing AI
This step by step guide will be very useful for sure will definitely check this out.
An important and helpful component in the SAS SW landscape.
This will be very useful for assessing models
This will help access and better understand the AI models
Thank you for the detailed and easy-to-follow tutorial!
Very Fancy and useful for accessing AI.
This will be very useful for assessing models. An important and helpful component in the SAS SW landscape.
The introduction of model nutrition labels can drive innovation by encouraging the development of more robust, fair, and interpretable models, as developers will be motivated to address the documented limitations.
Nice model great documentation
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