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Bluetab

an IBM Company

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augmented-analytics

A leading financial institution in its geographical region

septiembre 28, 2020 by Bluetab

A leading financial institution in its geographical region

ATM channel shortage monitoring model.


Our client is a universal financial services entity and a leader in its geographical region. Like the entire sector, and in its process of continual optimisation of its ATM channel management, it is developing monitoring models for its fraud management.

At Bluetab Peru we have worked with them on development of a model to enable anticipation of “critical shortages” in the agency cash machine tables and to segment the operational risk into its source axes (internal fraud, operational errors or technical faults) and so generate various levels of management alerts for different areas.

Our client has managed to provide its business users with a monitoring system capable of optimising, among other aspects, the level of effectiveness of the fraud detection model in the shortages, those that generate complaints, those that are repetitive and those produced by technical faults. We continue to work with them to make improvements and to carry out new projects in the area and the expectation is that we will extend the model to several geographic regions.

SUCCESS STORIES

Publicado en: Casos Etiquetado como: augmented-analytics

Multinational energy sector utility

septiembre 28, 2020 by Bluetab

Multinational energy sector utility

50% optimisation of AWS costs.

Our client is a multinational leader in the energy sector with investments in extraction, generation and distribution, with a significant presence in Europe and Latin America. It has undertaken a major digital transformation process in recent years, moving from a classic legacy on-premises closed architecture strategy to a strategy of flexible, non-limiting architectures based on AWS cloud platforms and ad-hoc design solutions for each use case.

Bluetab Mexico began the segregation of the use cases carried out in its HQ to adapt them to the global requirements environment. This segregation required the establishment of a Data Lake in which the various use cases are being implemented under governance models that manage the cycle from the sources and the implementation of analytical models for various business requirements.

In addition to managing the complexity of the end-to-end project and developing the models, redesigning and optimising the AWS architectures saved our client 50% of their starting costs.

CASOS DE ÉXITO

Publicado en: Casos Etiquetado como: augmented-analytics, data-strategy

NPS

septiembre 11, 2020 by Bluetab

NPS

Project for the Customer Experience area of ​​a Telco operator. Preparation and quantitative and qualitative analysis of customer surveys to determine the basic indicator of customer experience with the company and its services.

The Bluetab Data Scientist team designed an automatism for the extraction and processing of the sample databases and the subsequent collection, processing and analysis of customer responses. For this, SPSS migrated to R and Python, Spider, database treatment in SQL was used in the first versions to continue with the preparation of the introduction of survey results carried out with AI.

SUCCESS STORIES

Publicado en: Casos Etiquetado como: augmented-analytics

Fraud prediction model

septiembre 11, 2020 by Bluetab

Fraud prediction model

Design of the predictive model of Web Frauds carried out by Bluetab for a leading financial institution in the Spanish market

It consists of developing a predictive algorithm capable of classifying browsing sessions according to their similarity to sessions in which a fraudulent transfer has occurred. The output of this algorithm will be a scoring (or a probability) that will allow ordering these sessions by their probability of being fraudulent.

For this, information from the management of alerts and claims of fraud in Remote Banking Transfers is used, as well as the daily information of the browsing sessions on the web and in the APP; therefore, the target audience or population on which this model will be executed is the one that has started a session by one means or another.

Our methodology is based on the construction of the target based on the crossing between fraud and navigation information (the most critical process of a predictive model), in the diagnosis of inconsistencies among fraudulent operations that do not have an associated session, outliers with some wrong record on date.

SUCCESS STORIES

Publicado en: Casos Etiquetado como: augmented-analytics

CRM with artificial intelligence

septiembre 11, 2020 by Bluetab

CRM with artificial intelligence

As a follow-up to the technological strategy of one of the leading financial institutions, a machine learning algorithm is implemented to predict and prioritize the best offering mix to propose to customers, with the aim of increasing cross-selling and linking of the installed customer base.

By implementing ML, it is possible to enhance the commercial strategy of the entity, broadening the customer vision and integrating with the current CRM, which will increase the probability of success of the actions to be carried out, improving income and customer satisfaction and loyalty. For this, the algorithm prioritizes through existing campaigns crossing with alternative products such as loans, mortgages, funds, cards, pension plans, or different types and insurance coverage (home, health, car)

As output, it is intended to show the improvement by measuring the increase in specific indicators such as:

  • barra-bluetab Contracts
  • barra-bluetab value-customer ratio
  • barra-bluetab % digitization per customer
  • barra-bluetab Click-through rate
SUCCESS STORIES

Publicado en: Casos Etiquetado como: augmented-analytics

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