SAP and DataRobot: Elevating Bill Processing with Anomaly Detection and Generative AI


SAP and DataRobot are taking their partnership to new heights by strengthening their collaboration by way of the combination of predictive and generative AI capabilities. We now have developed a cutting-edge partnership that can empower clients to generate worth with AI by seamlessly connecting core SAP BTP with DataRobot AI capabilities.  

For example, let’s discover how organizations can harness the facility of predictive and generative AI to streamline bill processing providing a sooner, extra correct and cost-effective different to guide overview and validation.

The Enterprise Downside

Proper now firms of all sizes grapple with a typical problem:  the relentless inflow of invoices.  The substantial quantity of economic documentation may be overwhelming, typically necessitating a military of staff devoted to guide overview and validation.  Nevertheless this method shouldn’t be solely time-consuming and dear, but additionally susceptible to human error, making it a fragile hyperlink within the monetary chain.  

Harnessing the potential of AI is extra vital than ever earlier than.  Companies can make use of predictive AI fashions to be taught from historic bill knowledge, acknowledge patterns, and mechanically flag potential anomalies in real-time.  This not solely accelerates the validation course of but additionally considerably reduces the margin of error, stopping pricey errors. Moreover, the combination of generative AI permits for the concise summarization of detected anomalies, bettering communication and making it simpler for groups to take swift and knowledgeable actions.

SAP and DataRobot Built-in AI Resolution

This AI utility enhances bill processing by way of a mix of a predictive and generative AI to determine irregularities amongst invoices and to speak the problems across the invoices.

  • Leverage Predictive AI mannequin for anomaly detection.
    • Enterprise perspective: Anomaly detection can assist determine irregularities, comparable to incorrect quantities, lacking info or uncommon patterns, earlier than processing funds.
    • Implementation: Practice the mannequin utilizing historic bill knowledge to acknowledge patterns and typical bill traits.  When processing new invoices, the AI mannequin can flag potential anomalies for overview, lowering the danger of errors and fraud.
  • Generative AI Summarization:
    • Enterprise perspective: After figuring out anomalies, you will need to talk the problems to the related group members.  Conventional reporting strategies could also be wordy and time-consuming.  Generative AI can assist interpret and summarize the detected anomalies in a concise and human-readable format.
    • Implementation: Leverage a LLM to generate an explanatory abstract of the detected anomalies.  The AI mannequin can extract key info from the anomaly detection outcomes and supply a transparent and structured narrative that summarizes the detected anomalies and the explanations to be thought-about anomalies, making it simpler for analysts and managers to grasp the problems. 

Structure and Implementation Overview

To attain these goals, our platforms make use of assorted integration factors, as illustrated within the structure graph beneath:

Graph 1. Architecture overview for the SAP - DataRobot Integrated Solution
Graph 1. Structure overview for the SAP – DataRobot Built-in Resolution
1. Knowledge preparation and ingestion 

Bill knowledge is ready and parsed in SAP Datasphere / HANA Cloud.  DataRobot accesses and ingest this knowledge from HANA Cloud by way of a JDBC connector.

Graph 2. DataRobot access to create a JDBC connector with SAP HANA.
Graph 2. DataRobot entry to create a JDBC connector with SAP HANA.
2. Characteristic engineering and predictive mannequin coaching

DataRobot  engineers options and conducts experiments with the bill knowledge set, permitting you to coach anomaly detection fashions that excel at recognizing invoices with irregular or irregular info.  The method you select may be tailor-made to your particular knowledge state of affairs—whether or not you’ve gotten labeled knowledge or not.  You’ve got choices to deal with this problem successfully, both with a supervised or an unsupervised method.

On this case, we utilized historic information that had been categorized as anomalies and non-anomalies.  After knowledge ingestion, DataRobot runs an in depth knowledge exploratory evaluation, identifies any knowledge high quality points, and mechanically generates new options and related function lists.   With that prepared, we had been capable of conduct a complete evaluation by way of 64 distinct experiments in a brief time frame.  Consequently, we had been capable of pinpoint the top-performing mannequin on the forefront of the leaderboard.  This method allowed us to pick the best predictive mannequin for the duty at hand.  

Graph 3. DataRobot Leaderboard highlighting the best performing model.
Graph 3. DataRobot Leaderboard highlighting the very best performing mannequin.

Inside every of those experiments, you’ve gotten the chance to totally assess and gauge their efficiency.  This evaluation supplies worthwhile insights into how every predictive mannequin leverages the options inside your bill to make correct predictions.  To facilitate this course of, you’ve gotten entry to an array of instruments, together with carry charts, ROC curve, and SHAP prediction explanations, which estimate how a lot every function contributes to a given prediction. These insights supply an intuitive means to realize a deeper understanding of the mannequin’s conduct and their affect of the bill knowledge, guaranteeing you make well-informed choices.

Graph 4. This Lift Chart depicts how well the model segments the target population and how capable it is to predict the target, letting you visualize the model’s effectiveness.
Graph 4. This Carry Chart depicts how properly the mannequin segments the goal inhabitants and the way succesful it’s to foretell the goal, letting you visualize the mannequin’s effectiveness.
Graph 5. SHAP Prediction Explanations estimate how much a feature contributes to a given prediction, reported as its difference from the average. In this example how the delivery Date, shipping and gross amount had an impact.
Graph 5. SHAP Prediction Explanations estimate how a lot a function contributes to a given prediction, reported as its distinction from the typical. On this instance how the supply Date, delivery and gross quantity had an influence.
3. Mannequin deployment

As soon as we determine the optimum predictive mannequin, we transfer ahead to transition the answer into manufacturing.  This part seamlessly merges our predictive and generative AI method by orchestrating the deployment of an unstructured mannequin inside DataRobot.  This deployment harmonizes the predictive AI mannequin for anomaly detection with a Massive Language Mannequin (LLM), which excels in producing textual content to speak the predictive insights.  Alternatively, you’ve gotten the flexibleness to deploy predictive AI fashions instantly inside SAP AI Core, providing an extra route for operationalizing your resolution.

The LLM summarizes the rationales linked to every prediction, making it readily digestible to your monetary evaluation wants. This versatile deployment technique ensures that the insights generated are accessible and actionable in a fashion that fits your distinctive enterprise necessities. 

Two easy python information simply orchestrate this integration by way of easy capabilities and hooks that will likely be executed every time an bill requires a prediction and its consecutive evaluation.  The primary file named helper.py, has the credentials to attach with GPT 3.5 by way of Azure and incorporates the immediate to summarize the reasons and insights derived from the predictive mannequin.  The second file, named customized.py, simply orchestrates the entire predictive and generative pipeline by way of a number of easy hooks.   You could find an instance of tips on how to assemble customized python information for unstructured fashions in our github repository.  

You’ve got the potential to check and validate this unstructured mannequin prior its deployment, assuring that it persistently produces the supposed outcomes, freed from any operational hitches.  

Graph 6. Validation of the unstructured model before deployment.
Graph 6. Validation of the unstructured mannequin earlier than deployment.
4. Enterprise Utility

As soon as the deployment is formally in manufacturing, an accessible API endpoint turns into your bridge to attach with the deployment, seamlessly producing the exact outcomes you search in SAP Construct. 

Graph 7. SAP Build Workflow that includes a module to connect with the deployment of DataRobot via API.
Graph 7. SAP Construct Workflow that features a module to attach with the deployment of DataRobot by way of API.

Subsequent, we craft a enterprise utility for bill anomaly detection inside SAP Construct.  This utility retrieves the predictive and generative output by way of API integration and affords a user-friendly interface.  It presents the ends in a sensible and intuitive method, guaranteeing that monetary analysts can effortlessly add invoices in PDF format, simplifying their workflow and enhancing the general person expertise.  

Graph 8. SAP Build Workflow for the invoice approval business application.
Graph 8. SAP Construct Workflow for the bill approval enterprise utility.
Graph 9 - Final output generated in the business application for financial analysts to approve or reject an invoice based on the anomaly prediction and the corresponding LLM summary.
Graph 9. Last output generated within the enterprise utility for monetary analysts to approve or reject an bill based mostly on the anomaly prediction and the corresponding LLM abstract.
5. Manufacturing Monitoring

DataRobot maintains an oversight over the generative AI pipeline by way of the utilization of customized efficiency metrics and predictive fashions.  This rigorous monitoring course of ensures the continual reliability and effectivity of our resolution, providing you a seamlessly reliable expertise.   

Graph 10. DataRobot deployment containing the predictive and generative pipeline properly monitored over time with relevant custom metrics.
Graph 10. DataRobot deployment containing the predictive and generative pipeline correctly monitored over time with related customized metrics.

Conclusion

In abstract, the partnership between SAP and DataRobot continues to permit organizations to rapidly drive worth from their AI investments, and now much more by leveraging generative AI.  Predictive anomaly detection and generative AI can rework the challenges and dangers related to bill processing.  Effectivity and accuracy soar, whereas communication turns into clearer and extra streamlined.  Companies can now modernize their operations, save time and cut back errors.  It’s time to unlock the potential of this transformative expertise and take your operations to the subsequent degree. 

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Concerning the writer

Belén Sánchez Hidalgo
Belén Sánchez Hidalgo

Senior Knowledge Scientist, Staff Lead and WaiCAMP Lead, DataRobot

Belén works on accelerating AI adoption in enterprises in the USA and in Latin America. She has contributed to the design and improvement of AI options within the retail, training, and healthcare industries. She is a pacesetter of WaiCAMP by DataRobot College, an initiative that contributes to the discount of the AI Business gender hole in Latin America by way of pragmatic training on AI. She was additionally a part of the AI for Good: Powered by DataRobot program, which companions with non-profit organizations to make use of knowledge to create sustainable and lasting impacts.


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