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As the scale and complexity of data handled by organizations increase, traditional rules-based approaches to analyzing the data alone are no longer viable. Instead, organizations are increasingly looking to take advantage of transformative technologies like machine learning (ML) and artificial intelligence (AI) to deliver innovative products, improve outcomes, and gain operational efficiencies at scale. Furthermore, the democratization of AI and ML through AWS and AWS Partner solutions is accelerating its adoption across all industries.
For example, a health-tech company may be looking to improve patient care by predicting the probability that an elderly patient may become hospitalized by analyzing both clinical and non-clinical data. This will allow them to intervene early, personalize the delivery of care, and make the most efficient use of existing resources, such as hospital bed capacity and nursing staff.
AWS offers the broadest and deepest set of AI and ML services and supporting infrastructure, such as Amazon SageMaker and Amazon Bedrock, to help you at every stage of your AI/ML adoption journey, including adoption of generative AI. Splunk, an AWS Partner, offers a unified security and observability platform built for speed and scale.
As the diversity and volume of data increases, it is vital to understand how they can be harnessed at scale by using complementary capabilities of the two platforms. For organizations looking beyond the use of out-of-the-box Splunk AI/ML features, this post explores how Amazon SageMaker Canvas, a no-code ML development service, can be used in conjunction with data collected in Splunk to drive actionable insights. We also demonstrate how to use the generative AI capabilities of SageMaker Canvas to speed up your data exploration and help you build better ML models.
Use case overview
In this example, a health-tech company offering remote patient monitoring is collecting operational data from wearables using Splunk. These device metrics and logs are ingested into and stored in a Splunk index, a repository of incoming data. Within Splunk, this data is used to fulfill context-specific security and observability use cases by Splunk users, such as monitoring the security posture and uptime of devices and performing proactive maintenance of the fleet.
Separately, the company uses AWS data services, such as Amazon Simple Storage Service (Amazon S3), to store data related to patients, such as patient information, device ownership details, and clinical telemetry data obtained from the wearables. These could include exports from customer relationship management (CRM), configuration management database (CMDB), and electronic health record (EHR) systems. In this example, they have access to an extract of patient information and hospital admission records that reside in an S3 bucket.
The following table illustrates the different data explored in this example use case.
Description
Feature Name
Storage
Example Source
Age of patient
age
AWS
EHR
Units of alcohol consumed by patient every week
alcohol_consumption
AWS
EHR
Tobacco usage by patient per week
tabacco_use
AWS
EHR
Average systolic blood pressure of patient
avg_systolic
AWS
Wearables
Average diastolic blood pressure of patient
avg_diastolic
AWS
Wearables
Average resting heart rate of patient
avg_resting_heartrate
AWS
Wearables
Patient admission record
admitted
AWS
EHR
Number of days the device has been active over a period
num_days_device_active
Splunk
Wearables
Average end of the day battery level over a period
avg_eod_device_battery_level
Splunk
Wearables
This post describes an approach with two key components:
The two data sources are stored alongside each other using a common AWS data engineering pipeline. Data is presented to the personas that need access using a unified interface.
An ML model to predict hospital admissions (admitted) is developed using the combined dataset and SageMaker Canvas. Professionals without a background in ML are empowered to analyze the data using no-code tooling.
The solution allows custom ML models to be developed from a broader variety of clinical and non-clinical data sources to cater for different real-life scenarios. For example, it can be used to answer questions such as “If patients have a propensity to have their wearables turned off and there is no clinical telemetry data available, can the likelihood that they are hospitalized still be accurately predicted?”
AWS data engineering pipeline
The adaptable approach detailed in this post starts with an automated data engineering pipeline to make data stored in Splunk available to a wide range of personas, including business intelligence (BI) analysts, data scientists, and ML practitioners, through a SQL interface. This is achieved by using the pipeline to transfer data from a Splunk index into an S3 bucket, where it will be cataloged.
The approach is shown in the following diagram.
The automated AWS data pipeline consists of the following steps:
Data from wearables is stored in a Splunk index where it can be queried by users, such as security operations center (SOC) analysts, using the Splunk search processing language (SPL). Spunk’s out-of-the-box AI/ML capabilities, such as the Splunk Machine Learning Toolkit (Splunk MLTK) and purpose-built models for security and observability use cases (for example, for anomaly detection and forecasting), can be utilized inside the Splunk Platform. Using these Splunk ML features allows you to derive contextualized insights quickly without the need for additional AWS infrastructure or skills.
Some organizations may look to develop custom, differentiated ML models, or want to build AI-enabled applications using AWS services for their specific use cases. To facilitate this, an automated data engineering pipeline is built using AWS Step Functions. The Step Functions state machine is configured with an AWS Lambda function to retrieve data from the Splunk index using the Splunk Enterprise SDK for Python. The SPL query requested through this REST API call is scoped to only retrieve the data of interest.
Lambda supports container images. This solution uses a Lambda function that runs a Docker container image. This allows larger data manipulation libraries, such as pandas and PyArrow, to be included in the deployment package.
If a large volume of data is being exported, the code may need to run for longer than the maximum possible duration, or require more memory than supported by Lambda functions. If this is the case, Step Functions can be configured to directly run a container task on Amazon Elastic Container Service (Amazon ECS).
For authentication and authorization, the Spunk bearer token is securely retrieved from AWS Secrets Manager by the Lambda function before calling the Splunk /search REST API endpoint. This bearer authentication token lets users access the REST endpoint using an authenticated identity.
Data retrieved by the Lambda function is transformed (if required) and uploaded to the designated S3 bucket alongside other datasets. This data is partitioned and compressed, and stored in storage and performance-optimized Apache Parquet file format.
As its last step, the Step Functions state machine runs an AWS Glue crawler to infer the schema of the Splunk data residing in the S3 bucket, and catalogs it for wider consumption as tables using the AWS Glue Data Catalog.
Wearable data exported from Splunk is now available to users and applications through the Data Catalog as a table. Analytics tooling such as Amazon Athena can now be used to query the data using SQL.
As data stored in your AWS environment grows, it is essential to have centralized governance in place. AWS Lake Formation allows you to simplify permissions management and data sharing to maintain security and compliance.
An AWS Serverless Application Model (AWS SAM) template is available to deploy all AWS resources required by this solution. This template can be found in the accompanying GitHub repository.
Refer to the README file for required prerequisites, deployment steps, and the process to test the data engineering pipeline solution.
AWS AI/ML analytics workflow
After the data engineering pipeline’s Step Functions state machine successfully completes and wearables data from Splunk is accessible alongside patient healthcare data using Athena, we use an example approach based on SageMaker Canvas to drive actionable insights.
SageMaker Canvas is a no-code visual interface that empowers you to prepare data, build, and deploy highly accurate ML models, streamlining the end-to-end ML lifecycle in a unified environment. You can prepare and transform data through point-and-click interactions and natural language, powered by Amazon SageMaker Data Wrangler. You can also tap into the power of automated machine learning (AutoML) and automatically build custom ML models for regression, classification, time series forecasting, natural language processing, and computer vision, supported by Amazon SageMaker Autopilot.
In this example, we use the service to classify whether a patient is likely to be admitted to a hospital over the next 30 days based on the combined dataset.
The approach is shown in the following diagram.
The solution consists of the following steps:
An AWS Glue crawler crawls the data stored in S3 bucket. The Data Catalog exposes this data found in the folder structure as tables.
Athena provides a query engine to allow people and applications to interact with the tables using SQL.
SageMaker Canvas uses Athena as a data source to allow the data stored in the tables to be used for ML model development.
Solution overview
SageMaker Canvas allows you to build a custom ML model using a dataset that you have imported. In the following sections, we demonstrate how to create, explore, and transform a sample dataset, use natural language to query the data, check for data quality, create additional steps for the data flow, and build, test, and deploy an ML model.
Prerequisites
Before proceeding, refer to Getting started with using Amazon SageMaker Canvas to make sure you have the required prerequisites in place. Specifically, validate that the AWS Identity and Access Management (IAM) role your SageMaker domain is using has a policy attached with sufficient permissions to access Athena, AWS Glue, and Amazon S3 resources.
Create the dataset
SageMaker Canvas supports Athena as a data source. Data from wearables and patient healthcare data residing across your S3 bucket is accessed using Athena and the Data Catalog. This allows this tabular data to be directly imported into SageMaker Canvas to start your ML development.
To create your dataset, complete the following steps:
On the SageMaker Canvas console, choose Data Wrangler in the navigation pane.
On the Import and prepare dropdown menu, choose Tabular as the dataset type to denote that the imported data consists of rows and columns.
For Select a data source, choose Athena.
On this page, you will see your Data Catalog database and tables listed, named patient_data and splunk_ops_data.
Join (inner join) the tables together using the user_id and id to create one overarching dataset that can be used during ML model development.
Under Import settings, enter unprocessed_data for Dataset name.
Choose Import to complete the process.
The combined dataset is now available to explore and transform using SageMaker Data Wrangler.
Explore and transform the dataset
SageMaker Data Wrangler enables you to transform and analyze the source dataset through data flows while still maintaining a no-code approach.
The previous step automatically created a data flow in the SageMaker Canvas console which we have renamed to data_prep_data_flow.flow. Additionally, two steps are automatically generated, as listed in the following table.
Step
Name
Description
1
Athena Source
Sets the unprocessed_data dataset as source of the data flow
2
Data types
Sets column types of unprocessed_data dataset
Before we create additional transform steps, let’s explore two SageMaker Canvas features that can help us focus on the right actions.
Use natural language to query the data
SageMaker Data Wrangler also provides generative AI capabilities called Chat for data prep powered by a large language model (LLM). This feature allows you to explore your data using natural language without any background in ML or SQL. Furthermore, any contextualized recommendations returned by the generative AI model can be introduced directly back into the data flow without writing any code.
In this section, we present some example prompts to demonstrate this in action. These examples have been selected to illustrate the art of the possible. We recommend that you experiment with different prompts to gain the best results for your particular use cases.
Example 1: Identify Splunk default fields
In this first example, we want to know whether there are Splunk default fields that we could potentially exclude from our dataset prior to ML model development.
In SageMaker Data Wrangler, open your data flow.
Choose Step 2 Data types, and choose Chat for data prep.
In the Chat for data prep pane, you can enter prompts in natural language to explore and transform the data. For example:
In this example, the generative AI LLM has correctly identified Splunk default fields that could be safely dropped from the dataset.
Choose Add to steps to add this identified transformation to the data flow.
Example 2: Identify additional columns that could be dropped
We now want to identify any further columns that could be dropped without being too specific about what we’re looking for. We want the LLM to make the suggestions based on the data, and provide us with the rationale. For example:
In addition to the Splunk default fields identified earlier, the generative AI model is now proposing the removal of columns such as timestamp, punct, id, index, and linecount that don’t appear to be conducive to ML model development.
Example 3: Calculate average age column in dataset
You can also use the generative AI model to perform Text2SQL tasks in which you can simply ask questions of the data using natural language. This is useful if you want to validate the content of the dataset.
In this example, we want to know what the average patient age value is within the dataset:
By expanding View code, you can see what SQL statements the LLM has constructed using its Text2SQL capabilities. This gives you full visibility into how the results are being returned.
Check for data quality
SageMaker Canvas also provides exploratory data analysis (EDA) capabilities that allow you to gain deeper insights into the data prior to the ML model build step. With EDA, you can generate visualizations and analyses to validate whether you have the right data, and whether your ML model build is likely to yield results that are aligned to your organization’s expectations.
Example 1: Create a Data Quality and Insights Report
Complete the following steps to create a Data Quality and Insights Report:
While in the data flow step, choose the Analyses tab.
For Analysis type, choose Data Quality and Insights Report.
For Target column, choose admitted.
For Problem type, choose Classification.
This performs an analysis of the data that you have and provides information such as the number of missing values and outliers.
Refer to Get Insights On Data and Data Quality for details on how to interpret the results of this report.
Example 2: Create a Quick Model
In this second example, choose Quick Model for Analysis type and for Target column, choose admitted. The Quick Model estimates the expected predicted quality of the model.
By running the analysis, the estimated F1 score (a measure of predictive performance) of the model and feature importance scores are displayed.
SageMaker Canvas supports many other analysis types. By reviewing these analyses in advance of your ML model build, you can continue to engineer the data and features to gain sufficient confidence that the ML model will meet your business objectives.
Create additional steps in the data flow
In this example, we have decided to update our data_prep_data_flow.flow data flow to implement additional transformations. The following table summarizes these steps.
Step
Transform
Description
3
Chat for data prep
Removes Splunk default fields identified.
4
Chat for data prep
Removes additional fields identified as being unhelpful to ML model development.
5
Group by
Groups together the rows by user_id and calculates an average
of time-ordered numerical fields from Splunk. This is performed to convert the ML problem type from time series forecasting into a simple two-category prediction of target feature (admitted) using averages of the input values over a given time period. Alternatively, SageMaker Canvas also supports time series forecasting.
6
Drop column (manage columns)
Drops remaining columns that are unnecessary for our ML development, such as columns with high cardinality (for example, user_id).
7
Parse column as type
Converts numerical value types, for example from Float to Long. This is performed to make sure values, such as those in unit of days, remain integers after calculations.
8
Parse column as type
Converts additional columns that need to be parsed (each column requires a separate step).
9
Drop duplicates (manage rows)
Drops duplicate rows to avoid overfitting.
To create a new transform, view the data flow, then choose Add transform on the last step.
Choose Add transform, and proceed to choose a transform type and its configuration.
The following screenshot shows our newly updated end-to-end data flow featuring multiple steps. In this example, we ran the analyses at the end of the data flow.
If you want to incorporate this data flow into a productionized ML workflow, SageMaker Canvas can create a Jupyter notebook that exports your data flow to Amazon SageMaker Pipelines.
Develop the ML model
To get started with ML model development, complete the following steps:
Choose Create model directly from the last step of the data flow.
For Dataset name, enter a name for your transformed dataset (for example, processed_data).
Choose Export.
This step will automatically create a new dataset.
After the dataset has been created successfully, choose Create model to begin the ML model creation.
For Model name, enter a name for the model (for example, my_healthcare_model).
For Problem type, select Predictive analysis.
Choose Create.
You are now ready to progress through the Build, Analyze, Predict, and Deploy stages to develop and operationalize the ML model using SageMaker Canvas.
On the Build tab, for Target column, choose the column you want to predict (admitted).
Choose Quick build to build the model.
The Quick build option has a shorter build time, but the Standard build option generally enjoys higher accuracy.
After a few minutes, on the Analyze tab, you will be able to view the accuracy of the model, along with column impact, scoring, and other advanced metrics. For example, we can see that a feature from the wearables data captured in Splunk—average_num_days_device_active—has a strong impact on whether the patient is likely to be admitted or not, along with their age. As such, the health-tech company may proactively reach out to elderly patients who tend to keep their wearables off to minimize the risk of their hospitalization.
When you’re happy with the results from the Quick build, repeat the process with a Standard build to make sure you have an ML model with higher accuracy that can be deployed.
Test the ML model
Our ML model has now been built. If you’re satisfied with its accuracy, you can make predictions using this ML model using net new data on the Predict tab. Predictions can be performed either using batch (list of patients) or for a single entry (one patient).
Experiment with different values and choose Update prediction. The ML model will respond with a prediction for the new values that you have entered.
In this example, the ML model has identified a 64.5% probability that this particular patient will be admitted to hospital in the next 30 days. The health-tech company will likely want to prioritize the care of this patient.
Deploy the ML model
It is now possible for the health-tech company to build applications that can use this ML model to make predictions. ML models developed in SageMaker Canvas can be operationalized using a broader set of SageMaker services. For example:
You can register the model in Amazon SageMaker Model Registry so that data scientists and ML practitioners can continue to tune its performance, after which they can deploy it using machine learning operations (MLOps) practices. SageMaker Model Registry allows you to manage your ML models, compare versions, and visualize metrics. For more information, see Register and Deploy Models with Model Registry.
You can directly deploy the model as a SageMaker endpoint so that applications can call it to invoke the ML model and make predictions. After a SageMaker endpoint is deployed, it will run 24/7. Refer to Amazon SageMaker pricing for details on on-demand pricing.
To deploy the ML model, complete the following steps:
On the Deploy tab, choose Create Deployment.
Specify Deployment name, Instance type, and Instance count.
Choose Deploy to make the ML model available as a SageMaker endpoint.
In this example, we reduced the instance type to ml.m5.4xlarge and instance count to 1 before deployment.
At any time, you can directly test the endpoint from SageMaker Canvas on the Test deployment tab of the deployed endpoint listed under Operations on the SageMaker Canvas console.
Refer to the Amazon SageMaker Canvas Developer Guide for detailed steps to take your ML model development through its full development lifecycle and build applications that can consume the ML model to make predictions.
Clean up
Refer to the instructions in the README file to clean up the resources provisioned for the AWS data engineering pipeline solution.
SageMaker Canvas bills you for the duration of the session, and we recommend logging out of SageMaker Canvas when you are not using it. Refer to Logging out of Amazon SageMaker Canvas for more details. Furthermore, if you deployed a SageMaker endpoint, make sure you have deleted it.
Conclusion
This post explored a no-code approach involving SageMaker Canvas that can drive actionable insights from data stored across both Splunk and AWS platforms using AI/ML techniques. We also demonstrated how you can use the generative AI capabilities of SageMaker Canvas to speed up your data exploration and build ML models that are aligned to your business’s expectations.
Learn more about AI on Splunk and ML on AWS.
About the Authors
Alan Peaty is a Senior Partner Solutions Architect, helping Global Systems Integrators (GSIs), Global Independent Software Vendors (GISVs), and their customers adopt AWS services. Prior to joining AWS, Alan worked as an architect at systems integrators such as IBM, Capita, and CGI. Outside of work, Alan is a keen runner who loves to hit the muddy trails of the English countryside, and is an IoT enthusiast.
Brett Roberts is the Global Partner Technical Manager for AWS at Splunk, leading the technical strategy to help customers better secure and monitor their critical AWS environments and applications using Splunk. Brett was a member of the Splunk Trust and holds several Splunk and AWS certifications. Additionally, he co-hosts a community podcast and blog called Big Data Beard, exploring trends and technologies in the analytics and AI space.
Arnaud Lauer is a Principal Partner Solutions Architect in the Public Sector team at AWS. He enables partners and customers to understand how to best use AWS technologies to translate business needs into solutions. He brings more than 18 years of experience in delivering and architecting digital transformation projects across a range of industries, including public sector, energy, and consumer goods.
“}]] For organizations looking beyond the use of out-of-the-box Splunk AI/ML features, this post explores how Amazon SageMaker Canvas, a no-code ML development service, can be used in conjunction with data collected in Splunk to drive actionable insights. We also demonstrate how to use the generative AI capabilities of SageMaker Canvas to speed up your data exploration and help you build better ML models. Read More Amazon SageMaker Canvas, Partner solutions, AI/ML, Amazon Athena, Amazon SageMaker Data Wrangler, AWS Glue