Case Studies by

Topic

Automation and Machine learning

Credit sales recommender for an investment bank
Client challenge

The client was seeking innovative data-driven solutions to identify clients’ trade interests through the use of predictive models and a machine learning feedback loop.  In particular the client sought to:

  • Assess and prioritize opportunities for business development
  • Maximize the deal values by anticipating the end-clients’ needs more efficiently
  • Provide customized offers to strengthen end-client relationships
How we helped
  • We combined internal data (e.g., transaction history, inventory lists, client holdings, etc.) and market data (e.g., interest rates, currency fluctuations, market volatility, etc.)
  • We applied predictive analytic techniques to identify clients most likely to be interested in trading specific products in the bank’s portfolio
  • We built a user feedback loop to continually update the process to identify better opportunities

Fulcrum effectively prioritized end-clients and provided a matching engine to allow the client to stay competitive in the market.

Price setting tool for a leading insurance company
Client challenge

The client was seeking to transform a labor-intensive pricing process to a seamless, sustainable and transparent operation. Key challenges included:

  • Lack of standardization in reporting across types of policy (e.g., auto, GL, etc.) which made it difficult to analyze account-level performance at a glance
  • Manual data pulling, and copying/pasting during the data preparation created high human-error risk
  • Difficulty tracking changes and updates to quotes
How we helped
  • We mapped out user stories to better understand various user needs and experiences
  • We developed a platform-flexible front-end pricing tool that accounted for user needs (e.g., metrics, reports, etc.) utilizing real-time data ingestion
  • We developed automated scripts for consistent data pulls and to reduce labor hours
  • We built a job management framework to provide pricing governance and monitoring

Fulcrum’s development of a reliable and sustainable process resulted in an 80% reduction of manual labor hours, increased pricing transparency, and yielded faster quote turnaround.

Cash transaction compliance for a leading banking institution
Client challenge

In reaction to regulatory requirements to retain and classify payment records, the client needed help creating a cash transaction classification system for regulatory reporting and compliance, looking specifically to solve for following challenges:

  • Migrating away from using Excel that applied the classification rules with a manual process
  • Implementing scripts to allow for processing a greater amount of data
  • Needing to improve operational scalability rather than rules being created small chunks at a time
  • Improving repeatability, decreasing processing time, and reducing error
How we helped

We developed a text mining and reporting engine in R that efficiently runs against the client’s full data warehouse

  • We automated code in R to be applied against the data warehouse for fast and accurate classification
  • We built a front-end UI to allow business users to create and modify rules to refine business logic and improve resulting classification rate
  • We created reporting on summary statistics and classification rate, including the impact of the addition of new rules
  • We created a next generation text mining process to prioritize the new candidate classification rules

Fulcrum created a scalable and sustainable solution to comply with regulations, which provided significant time-savings from manual labor, increased accuracy of classification, and introduced a mechanism to easily create and integrate new rules.

Web tagging and tracking for an e-commerce platform provider
Client challenge

An eCommerce platform provider had a homegrown php system for their entertainment industry clients.

Initially, they had limited Adobe analytics tagging on their site, but the tagging javascript put into their php template was becoming cluttered and upgrading their system of tagging and tracking was cumbersome.

How we helped
  • Fulcrum helped take all of the tagging out of the php templates and put it into a tag manager tool and standardized the capture rules
  • We audited the tagging rules and added more as needed for analysis
  • We built a vendor-neutral data layer to notify other marketing tools of capture events and variables

Fulcrum identified how to best upgrade the eCommerce tagging and tracking system, methodically audited tagging rules for best results, and implemented code to capture events and variables necessary to stay ahead of the competition.

Pricing model for a leading insurance provider
Client challenge

The client was seeking to apply predictive models to improve its rating structure, moving away from subjective rating. Key challenges included:

  • Highly subjective rating process based on individual underwriter’s experience, without data-driven guidelines
  • Lack of experience and resources evaluating external data sources

Furthermore, the client wanted to explore options to incorporate and build machine learning into the rating structure

How we helped
  • We identified pricing key drivers through LASSO regression
  • We developed a statistical model (using GLM) that was implemented for predictive ratings scoring
  • We used advanced techniques (including GBM, Random Forest, etc.) to improve model performance
  • We created benchmarking models with SVM and NN to ensure model performance (i.e., how close the model can perform when compared with a simulated one without restrictions)

Fulcrum’s data-driven rating structure standardized future of underwriting and increased pricing transparency.

Model operations with best practices
Client challenge

The client was seeking to streamline their multi-step and labor-heavy scoring process of a pricing model to improve efficiency. Key challenges included:

  • Labor intensive monthly/quarterly updates that involved manually updating hard-coded parameters
  • Because it was a multi-step scoring process, it was prone to errors and difficult to troubleshoot
  • Required underwriters and actuaries to perform manual steps that were tedious and time consuming
  • Model inputs and performance were not monitored for anomalies and/or population shifts
How we helped
  • We parameterized and centralized configuration files to reduce turnaround time and errors
  • We built QA checks within scripts to provide quick diagnosis for unexpected results
  • Then we streamlined the feedback process and standardized the input template to minimize room for error
  • Lastly, we developed a model tracking report that refreshed upon each update to track population shifts and performance changes

Fulcrum developed an automated model scoring and monitoring process that enhanced efficiency, improved decision making, and increased confidence in results.

Claims analysis for a global insurance company
Client challenge

The client sought to retain an at-risk multi-million dollar portfolio.  In an effort to find a solution, the client needed help with insurance claims data analysis identifying risk drivers and preventing losses.  In particular the client wanted to utilize their massive amount of unstructured adjusters’ notes to bring more detail-rich information to the risk consulting team aiming to prevent loss and reduce costs, and to identify additional risk drivers to support ongoing pricing strategy.

The key challenge was the inability to process massive amount of unstructured data (i.e., adjusters’ notes), limiting opportunities to quickly generate insights.

How we helped
  • We performed Natural Language Processing (NLP) on their unstructured adjusters’ notes data including Term Frequency-Inverse Document Frequency (TF-IDF) and topic modeling (LDA)
  • We enriched the input data to the pricing models through text mining that led to increased prediction accuracy
  • We developed an interactive risk analytics tool to deliver loss and cost insights

Fulcrum helped the client with enhanced coverage insights and pricing inputs through the introduction Natural Language Processing on unstructured data.

Helping a data platform startup through fast growth
Client challenge

The company was developing a platform to streamline end user evaluation and use of external datasets.  Some key issues:

  • Delivering custom results to existing clients with varying needs while evolving the platform in generalto meet the needs of the larger market
  • The company was in the business of data preparation and organization – but they were by design not a data science organization
How we helped
  • We aided the client’s ability to sell and deliver results effectively by aggressively scaling up their ability to service their growing client base and improving technical communication with clients
  • Our engineers played a crucial role in developing the data pipeline
  • We streamlined the connection from client deliverables to platform architecture by helping communicate product requirements from the front-lines
  • We developed reusable templates for key client deliverables and helped recruit and train the company’s data scientists

Fulcrum helped complete the client’s backlog of projects and streamline future deliverables with the creation of templates; built a process for integrating pipelines; and established an internal communication process for continual improvement upon the product, all of which substantially aided in the platform maturation and ultimately in securing a massive new round of funding.

Data and Platform Management

Geolocation data evaluation for a leading asset manager
Client Challenge

The client needed to identify the geolocation data provider – out of dozens available – that best aided their investment strategy.
Challenges included:

  • Different preprocessing (data capture, cleansing, metric creation) logic used by vendors
  • Lack of standardized evaluation criteria
  • Lack of data acquisition, load and process governance/oversight
How we helped
  • We developed a set of evaluation metrics (e.g., data consistency, KPI correlations) relevant to the client
  • We designed a vendor questionnaire that allowed us to effectively screen the vendors prior to data capture
  • We decoded each vendors’ preprocessing algorithms, applied logic to bring consistency for evaluation, and developed analytics modules that evaluate a dataset in 1-2 days
  • Lastly, we concisely synthesized information for the client and recommended finalists based on their needs

Fulcrum’s methodical approach and data audit framework evaluated multiple data sources through a consistent lens, quickly and effectively.

Medical fraud detection for an insurance company
Client challenge

The client needed help flagging fraudulent medical insurance claims. The goal was to:

  • Determine logic to flag suspicious behavior and identify providers of interest
  • Leverage billing data to analyze suspicious providers
How we helped
  • We performed fuzzy matching to link multiple claim records to the same provider(s)
  • We used geocoding to create physical distance calculations between providers and between providers and claimants
  • We applied statistical methods (e.g., logistic ridge regression with sparse matrices, T-Score calculation, bootstrapping, etc.) to billing data to build propensity scoring models to rule claims as valid or invalid
  • Based on our modeling results, we created the fraud flagging logic to identify suspicious behavior and providers of interest
  • The team collaborated with the investigative unit, billing unit, and legal unit to create a provider fraud action plan

Fulcrum’s data preparation procedures and predictive analytical models provided the quantitative basis for the provider fraud action plan.

Data source gathering and dashboard implementation for retail bank
Client challenge

A Retail Bank wanted to understand the attractiveness of their local markets and how they fare against market competition but faced the following challenges:

  • Public data is available to answer these questions – but come from multiple sources and need aggregation
  • Some data sources are extremely large and most have quality issues
  • Manual analysis for any given store, branch, or collection of local markets is time consuming and prone to error
  • Exploratory analysis requires technical expertise and access to data and computing resources – business users can’t easily answer “what if” questions
How we helped
  • Fulcrum built an automated process to retrieve, clean, and combine dozens of distinct public datasets to create a master database of local market performance and demographic data for the entire US across 8 years of historical data
  • We automated creation of detailed reports for the retailer and reduced the time needed to create a tailored presentation from weeks to minutes
  • We built an interactive application to allow business users to explore the data and create custom charts to answer questions related to company performance

Fulcrum’s web application aggregates, normalizes, and allows instant visualization of massive public datasets for business analyst use.

Web tagging and tracking for an e-commerce platform provider
Client challenge

An eCommerce platform provider had a homegrown php system for their entertainment industry clients.

Initially, they had limited Adobe analytics tagging on their site, but the tagging javascript put into their php template was becoming cluttered and upgrading their system of tagging and tracking was cumbersome.

How we helped
  • Fulcrum helped take all of the tagging out of the php templates and put it into a tag manager tool and standardized the capture rules
  • We audited the tagging rules and added more as needed for analysis
  • We built a vendor-neutral data layer to notify other marketing tools of capture events and variables

Fulcrum identified how to best upgrade the eCommerce tagging and tracking system, methodically audited tagging rules for best results, and implemented code to capture events and variables necessary to stay ahead of the competition.

Powering e-commerce with Fulcrum Managed Services
Client challenge

A provider of white-label extended warranties needed to offer eCommerce sites for each of the extended warranty programs it sells.  The requirements included:

  • High uptime of 99.99% or better
  • High security, including PCI and GDPR compliance
  • Ability to react quickly to any system glitches impacting personalized website performance
  • Ability to scale as additional warranty programs come online
How we helped
  • Fulcrum hosts the sites on our OpenStack built AnvilTM platform which combines scalable, secure, and reliable cloud infrastructure with best-in-class managed services
  • Anvil utilizes server virtualization, Docker containers, Kubernetes, and micro services that run within 99.99% uptime
  • Annual SOC-2 Type II audits and PCI-DSS certification ensure that environments are built to the highest standard of security
  • Managed services operated by professionals in virtual technology, networking, and security who monitor 24/7/365 in addition to automated host level and third-party site monitoring

Fulcrum provides managed services and hosting for eCommerce sites with high uptime, 24/7 support, ability to scale, and ensured security of the environment with state of the art technology and a professional managed services staff.

IOT analytics for a leading home insurance provider
Client challenge

To perform exploratory analysis on the impact of IoT devices on homeowners insurance claims, the client sought to merge claim data with IoT information (provided by a third party).

The challenge was third party and the client not being able to share data across systems for data security reasons.

How we helped
  • Fulcrum facilitated IoT analytics by acting as a third party to join proprietary information between the two companies
  • We collected sensitive data in isolation in our highly fortified security infrastructure, and performed matching at the home address level
  • Then we provided an anonymized joined data set to the client and developed a framework to repeatedly supply the data transformation between the two companies

Fulcrum quickly and securely provided the neutral data matching required to support various insight needs across the organization.

Data innovation lab for a regional bank
Client challenge

The client was seeking a streamlined method to organize their disparate data sources into a single location to start generating business insights. Some of their challenges included:

  • A massive amount of disjointed information including internal and external data
  • The lack of a unified view of the customer because the source systems are managed by different siloed teams
  • The internal IT team was backlogged, and analysts needed support testing the latest big data tools
How we helped

The client partnered with Fulcrum to utilize our Agile Analytics Lab to experiment with big data solutions

  • We created reusable data processing pipelines to allow easy data loading into Hadoop and data preparation for analysis
  • After establishing the central repository, we then cubed the data using Hive and Spark for fast querying of metrics
  • Output tables are stored in HBase and Impala is used for queries to gain rapid response while Tableau is utilized for dashboard reporting

Fulcrum’s lab enables a holistic view of the data to unlock insights and allows rapid testing of various open source tools. Our data experts guide the process allowing the clients to modernize their analytics team.

Personalized digital coupons for a regional grocery
Client challenge

The client needed to accomplish faster and more accurate decisions in making personalized offers. Fulcrum applied its experience in digital coupon operations to solve the business problem.

How we helped

The client partnered with Fulcrum to utilize our hosted computing platform, Digital Fusion.

  • Digital Fusion collected data across all channels and sources (POS, display ad, email campaign, web traffic) and created hundreds of micro-segments of customers with similar buying behavior
  • The platform deployed stochastic frontier models for each segment to identify winnable shares for each product category
  • Then Digital Fusion computed the optimal personalized offers based on purchase, coupon redemption, and digital behavior data

Fulcrum’s unification of behavioral and marketing data with predictive models produced granular personalized offers to drive more trips, bigger baskets, and higher margins.

Helping a data platform startup through fast growth
Client challenge

The company was developing a platform to streamline end user evaluation and use of external datasets.  Some key issues:

  • Delivering custom results to existing clients with varying needs while evolving the platform in general to meet the needs of the larger market
  • The company was in the business of data preparation and organization – but they were by design not a data science organization
How we helped
  • We aided the client’s ability to sell and deliver results effectively by aggressively scaling up their ability to service their growing client base and improving technical communication with clients
  • Our engineers played a crucial role in developing the data pipeline
  • We streamlined the connection from client deliverables to platform architecture by helping communicate product requirements from the front-lines 
  • We developed reusable templates for key client deliverables and helped recruit and train the company’s data scientists

Fulcrum helped complete the client’s backlog of projects and streamline future deliverables with the creation of templates; built a process for integrating pipelines; and established an internal communication process for continual improvement upon the product, all of which substantially aided in the platform maturation and ultimately in securing a massive new round of funding.

Emerging Data

Geolocation data evaluation for a leading asset manager
Client Challenge

The client needed to identify the geolocation data provider – out of dozens available – that best aided their investment strategy.
Challenges included:

  • Different preprocessing (data capture, cleansing, metric creation) logic used by vendors
  • Lack of standardized evaluation criteria
  • Lack of data acquisition, load and process governance/oversight
How we helped
  • We developed a set of evaluation metrics (e.g., data consistency, KPI correlations) relevant to the client
  • We designed a vendor questionnaire that allowed us to effectively screen the vendors prior to data capture
  • We decoded each vendors’ preprocessing algorithms, applied logic to bring consistency for evaluation, and developed analytics modules that evaluate a dataset in 1-2 days
  • Lastly, we concisely synthesized information for the client and recommended finalists based on their needs

Fulcrum’s methodical approach and data audit framework evaluated multiple data sources through a consistent lens, quickly and effectively.

Modernizing an investment bank’s research management practice
Client challenge

In reaction to the Mifid II regulation, the client was seeking to increase the efficiency of the research team’s activities and design new revenue models to meet strategic goals through the use of web-analytics. Research Analysts needed to gain readership insights through:

  • Improved engagement measurements
  • Coordination with sales to identify new opportunities

Due to regulatory changes, the organization needed to shift how it managed the research function’s revenue and costs of unbundled services

How we helped
  • We tagged the research website to capture tracking details using open source tools and in-house data capture to gain readership insights
  • We redesigned the website dashboard reports used by the Analysts to highlight critical usage patterns revealed by newly captured web-tracking data
  • We improved and streamlined the dashboard reports used by Sales and Management to highlight upsell opportunities more efficiently

Fulcrum improved website visitor tracking and built more actionable reporting aligned with goal setting and decision making.

Content recommender engine for a regional bank
Client challenge

The client was looking to improve customer engagement among advisory customers with a process to deliver personalized email driven by customers’ digital behavior and advisory content consumption. The content was not classified which made personalized recommendations difficult.  

How we helped
  • We scraped PDF and web pages from its microsites
  • We categorized the content using Natural Language Processing (NLP) based on terms and phrases found in the subject matter
  • We modeled topic relevancy for each customer and mapped it to the content library
  • We scored the content so that the most relevant articles could be recommended to each customer via personalized email campaigns using the matching algorithms

Fulcrum enabled the deployment of a customized content delivery system to increase engagement with high value customers.

IOT analytics for a leading home insurance provider
Client challenge

To perform exploratory analysis on the impact of IoT devices on homeowners insurance claims, the client sought to merge claim data with IoT information (provided by a third party).

The challenge was third party and the client not being able to share data across systems for data security reasons.

How we helped
  • Fulcrum facilitated IoT analytics by acting as a third party to join proprietary information between the two companies
  • We collected sensitive data in isolation in our highly fortified security infrastructure, and performed matching at the home address level
  • Then we provided an anonymized joined data set to the client and developed a framework to repeatedly supply the data transformation between the two companies

Fulcrum quickly and securely provided the neutral data matching required to support various insight needs across the organization.

Personalized digital coupons for a regional grocery
Client challenge

The client needed to accomplish faster and more accurate decisions in making personalized offers. Fulcrum applied its experience in digital coupon operations to solve the business problem.

How we helped

The client partnered with Fulcrum to utilize our hosted computing platform, Digital Fusion.

  • Digital Fusion collected data across all channels and sources (POS, display ad, email campaign, web traffic) and created hundreds of micro-segments of customers with similar buying behavior
  • The platform deployed stochastic frontier models for each segment to identify winnable shares for each product category
  • Then Digital Fusion computed the optimal personalized offers based on purchase, coupon redemption, and digital behavior data

Fulcrum’s unification of behavioral and marketing data with predictive models produced granular personalized offers to drive more trips, bigger baskets, and higher margins.

Predictive Modeling

Credit sales recommender for an investment bank
Client Challenge

The client was seeking innovative data-driven solutions to identify clients’ trade interests through the use of predictive models and a machine learning feedback loop.  In particular the client sought to:

  • Assess and prioritize opportunities for business development
  • Maximize the deal values by anticipating the end-clients’ needs more efficiently
  • Provide customized offers to strengthen end-client relationships
How we helped
  • We combined internal data (e.g., transaction history, inventory lists, client holdings, etc.) and market data (e.g., interest rates, currency fluctuations, market volatility, etc.)
  • We applied predictive analytic techniques to identify clients most likely to be interested in trading specific products in the bank’s portfolio
  • We built a user feedback loop to continually update the process to identify better opportunities

Fulcrum effectively prioritized end-clients and provided a matching engine to allow the client to stay competitive in the market.

Branch deposit growth modeling for a bank
Client challenge

A regional bank’s Human Resources (HR) group was seeking a solution to incorporate market and competitive data to improve personnel evaluation and optimize resource planning.

How we helped
  • We integrated external data (e.g., publicly available competitor data, footprint demographics, etc.) with internal data (e.g., staff experience, branch performance, etc.) and developed new data elements on branch-level market share
  • We created a deposit growth segmentation to benchmark branch growth and market penetration, controlling as many factors as available, excluding manager talent
  • Lastly, we performed branch performance forecasting for each segment

Fulcrum streamlined the ability to identify exceptional managers, which impacted compensation formulas and recruiting efforts, and also enabled optimized resource planning through forecasting.

Content recommender engine for a regional bank
Client challenge

The client was looking to improve customer engagement among advisory customers with a process to deliver personalized email driven by customers’ digital behavior and advisory content consumption. The content was not classified which made personalized recommendations difficult.  

How we helped
  • We scraped PDF and web pages from its microsites
  • We categorized the content using Natural Language Processing (NLP) based on terms and phrases found in the subject matter
  • We modeled topic relevancy for each customer and mapped it to the content library
  • We scored the content so that the most relevant articles could be recommended to each customer via personalized email campaigns using the matching algorithms

Fulcrum enabled the deployment of a customized content delivery system to increase engagement with high value customers.

Medical fraud detection for an insurance company
Client challenge

The client needed help flagging fraudulent medical insurance claims. The goal was to:

  • Determine logic to flag suspicious behavior and identify providers of interest
  • Leverage billing data to analyze suspicious providers
How we helped
  • We performed fuzzy matching to link multiple claim records to the same provider(s)
  • We used geocoding to create physical distance calculations between providers and between providers and claimants
  • We applied statistical methods (e.g., logistic ridge regression with sparse matrices, T-Score calculation, bootstrapping, etc.) to billing data to build propensity scoring models to rule claims as valid or invalid
  • Based on our modeling results, we created the fraud flagging logic to identify suspicious behavior and providers of interest
  • The team collaborated with the investigative unit, billing unit, and legal unit to create a provider fraud action plan

Fulcrum’s data preparation procedures and predictive analytical models provided the quantitative basis for the provider fraud action plan.

Building a customer segmentation solution for a leading retailer
Client challenge
  • The client sought to build and enact a relationship marketing operation that would increase sales revenue and profit from existing customer relationships
  • To enable this strategy, the client needed help developing a powerful customer segmentation and predictive modeling toolset
How we helped
  • We built and implemented a multi-dimensional segmentation solution that assigned customer households into unique segments and sub-segments based on relationship cycle, purchase behaviors, value contribution and demographics
  • We also built and implemented a relationship marketing experimental design environment to support sophisticated and accelerated testing that aimed to increase customer value, sales revenue, and profit from direct marketing investments

Fulcrum built and implemented a multi-dimensional segmentation and experimental design solution that enabled the client to test and refine its relationship marketing strategy, resulting in increased revenue, profit, and customer value.

Measuring local mass media impact on new customer acquisition
Client challenge

A Fulcrum client wanted to measure a mass media campaign’s impact on new customer acquisition at the local and store level.

The challenge was measuring advertising impact at the local and store level, as each market included in the campaign had stores with varying performance levels, competitive pressures, and demographic compositions.

How we helped
  • We built matched control groups at the store and market levels by matching stores in treated markets with comparable stores in untreated markets, based on a number of relevant criteria
  • We calculated the results of the campaign’s impact at the local market level as well as aggregated for total campaign performance
  • The finely matched control group process allowed forresult measurement by other important dimensions such as store format, population density, and proximity to competitors

Fulcrum’s quasi-experimental design allowed for macro and micro level results analysis.

Claims analysis for a global insurance company
Client challenge

The client sought to retain an at-risk multi-million dollar portfolio.  In an effort to find a solution, the client needed help with insurance claims data analysis identifying risk drivers and preventing losses.  In particular the client wanted to utilize their massive amount of unstructured adjusters’ notes to bring more detail-rich information to the risk consulting team aiming to prevent loss and reduce costs, and to identify additional risk drivers to support ongoing pricing strategy.

The key challenge was the inability to process massive amount of unstructured data (i.e., adjusters’ notes), limiting opportunities to quickly generate insights.

How we helped
  • We performed Natural Language Processing (NLP) on their unstructured adjusters’ notes data including Term Frequency-Inverse Document Frequency (TF-IDF) and topic modeling (LDA)
  • We enriched the input data to the pricing models through text mining that led to increased prediction accuracy
  • We developed an interactive risk analytics tool to deliver loss and cost insights

Fulcrum helped the client with enhanced coverage insights and pricing inputs through the introduction Natural Language Processing on unstructured data.

Pricing model for a leading insurance provider
Client challenge

The client was seeking to apply predictive models to improve its rating structure, moving away from subjective rating. Key challenges included:

  • Highly subjective rating process based on individual underwriter’s experience, without data-driven guidelines
  • Lack of experience and resources evaluating external data sources

Furthermore, the client wanted to explore options to incorporate and build machine learning into the rating structure

How we helped
  • We identified pricing key drivers through LASSO regression
  • We developed a statistical model (using GLM) that was implemented for predictive ratings scoring
  • We used advanced techniques (including GBM, Random Forest, etc.) to improve model performance
  • We created benchmarking models with SVM and NN to ensure model performance (i.e., how close the model can perform when compared with a simulated one without restrictions)

Fulcrum’s data-driven rating structure standardized future underwriting and increased pricing transparency.

Personalized digital coupons for a regional grocery
Client challenge

The client needed to accomplish faster and more accurate decisions in making personalized offers. Fulcrum applied its experience in digital coupon operations to solve the business problem.

How we helped

The client partnered with Fulcrum to utilize our hosted computing platform, Digital Fusion.

  • Digital Fusion collected data across all channels and sources (POS, display ad, email campaign, web traffic) and created hundreds of micro-segments of customers with similar buying behavior
  • The platform deployed stochastic frontier models for each segment to identify winnable shares for each product category
  • Then Digital Fusion computed the optimal personalized offers based on purchase, coupon redemption, and digital behavior data

Fulcrum’s unification of behavioral and marketing data with predictive models produced granular personalized offers to drive more trips, bigger baskets, and higher margins.

Predictive model building for a financial services company
Client challenge

A regional financial services company was seeking:

  • database marketing partner to help improve the efficiency of its acquisition of Home Equity Line of Credit customers
  • In-depth testing of new creative and informed targeting to reduce the number of total mail pieces while holding responses and conversions at existing levels
How we helped
  • Through the analysis of existing customer data, we built a model to predict which customer households were most likely to respond to outreach and be approved for a line of credit offer
  • Produced dashboard and ad hoc reports to bring transparency to campaign summary metrics, campaign response details, and financial details for each campaign

Fulcrum utilized past campaign response data to build a predictive model that improved campaign ROI, and created the accompanying reports to enable transparency into campaign performance and faster decision making.

Clinical program evaluation for a leading healthcare provider
Client challenge

The client was seeking support in evaluating various clinical programs. Key challenges included:

  • Many clinical programs were operating without a randomized control group
  • Historical evaluations were done in a time consuming and ad-hoc fashion
  • There was a lack of consistency in evaluation scope and methodology across different clinical programs
  • All of the above made it difficult to track changes and updates
How we helped
  • We built matched control groups at the patient levels by matching patients enrolled in certain clinical programs with comparable patients who were not enrolled, based on a number of relevant criteria
  • We calculated various outcome metrics to evaluate the program’s impact at the patient level
  • The finely matched control group process allowed for result measurement by other important dimensions such as severity of illness, market, etc.
  • We developed automated scripts to reduce labor hours for future updates

Fulcrum’s quasi-experimental design process allowed for program result measurement where there was no hold-out control group. We also developed automated scripts to increase consistency in methodology and reduce labor hours for future program measurement.

Sales lift measurement with matched control group design
Client challenge

A pricing software company used a process of measuring sales lift from its in-store marketing collateral service, but sought an expert review of its test design and measurement process.

They were seeking:

  • A deep evaluation of their statistical methodology used to calculate lift
  • An assessment of its client deliverables and claims about lift and significance
  • Recommendations on a more efficient and standardized measurement process
How we helped
  • Fulcrum independently created a matched control group design and performed the sales lift analysis without reference to the analysis already conducted
  • The matched control group parameters were tested for sensitivity, and all data was checked for quality
  • We compared our results to the original results and documented recommended improvements in sampling and experimental design

Fulcrum independently validated the measured outcomes, provided more granular insights, and suggested process improvements.

Dashboard

Modernizing an investment bank’s research management practice
Client Challenge

In reaction to the Mifid II regulation, the client was seeking to increase the efficiency of the research team’s activities and design new revenue models to meet strategic goals through the use of web-analytics.  Research Analysts needed to gain readership insights through:

  • Improved engagement measurements
  • Coordination with sales to identify new opportunities

Due to regulatory changes, the organization needed to shift how it managed the research function’s revenue and costs of unbundled services

How we helped
  • We tagged the research website to capture tracking details using open source tools and in-house data capture to gain readership insights
  • We redesigned the website dashboard reports used by the Analysts to highlight critical usage patterns revealed by newly captured web-tracking data
  • We improved and streamlined the dashboard reports used by Sales and Management to highlight upsell opportunities more efficiently

Fulcrum improved website visitor tracking and built more actionable reporting aligned with goal setting and decision making.

Cash transaction compliance for a leading banking institution
Client challenge

In reaction to regulatory requirements to retain and classify payment records, the client needed help creating a cash transaction classification system for regulatory reporting and compliance, looking specifically to solve for following challenges:

  • Migrating away from using Excel that applied the classification rules with a manual process.
  • Implementing scripts to allow for processing a greater amount of data
  • Needing to improve operational scalability rather than rules being created small chunks at a time
  • Improving repeatability, decreasing processing time, and reducing error
How we helped

We developed a text mining and reporting engine in R that efficiently runs against the client’s full data warehouse

  • We automated code in R to be applied against the data warehouse for fast and accurate classification
  • We built a front-end UI to allow business users to create and modify rules to refine business logic and improve resulting classification rate
  • We created reporting on summary statistics and classification rate, including the impact of the addition of new rules
  • We created a next generation text mining process to prioritize the new candidate classification rules

Fulcrum created a scalable and sustainable solution to comply with regulations, which provided significant time-savings from manual labor, increased accuracy of classification, and introduced a mechanism to easily create and integrate new rules.

Personalized digital coupons for a regional grocery
Client challenge

The client was seeking to improve incremental customer spending through personalized product promotions delivered via email, as well as integrating delivery with digital coupons on loyalty cards, all while tracking user experience end to end — from email delivery, to open, to click to add coupon/redemption.

How we helped
  • We built an offer bank of product-specific promotions to individuals based on prior purchase and cross sell optimization models we built
  • We delivered a personalized set of promotions via email and built an interactive pop-up micro site to add promotions to the customer’s loyalty card in real time
  • We developed online dashboard reporting on ROI and individual promotion performance

Fulcrum developed tools to formulate and offer granular, personalized offers based on product opportunities, a big data platform hosting the end-to-end of the process, and implemented testing to determine the optimal means to drive more trips, build bigger baskets, and yield higher margins.

Price setting tool for a leading insurance company
Client challenge

The client was seeking to transform a labor-intensive pricing process to a seamless, sustainable and transparent operation. Key challenges included:

  • Lack of standardization in reporting across types of policy (e.g., auto, GL, etc.) which made it difficult to analyze account-level performance at a glance
  • Manual data pulling, and copying/pasting during the data preparation created high human-error risk
  • Difficulty tracking changes and updates to quotes
How we helped
  • We mapped out user stories to better understand various user needs and experiences
  • We developed a platform-flexible front-end pricing tool that accounted for user needs (e.g., metrics, reports, etc.) utilizing real-time data ingestion
  • We developed automated scripts for consistent data pulls and to reduce labor hours
  • We built a job management framework to provide pricing governance and monitoring

Fulcrum’s development of a reliable and sustainable process resulted in an 80% reduction of manual labor hours, increased pricing transparency, and yielded faster quote turnaround.

Data source gathering and dashboard implementation for retail bank
Client challenge

A Retail Bank wanted to understand the attractiveness of their local markets and how they fare against market competition but faced the following challenges:

  • Public data is available to answer these questions – but come from multiple sources and need aggregation
  • Some data sources are extremely large and most have quality issues
  • Manual analysis for any given store, branch, or collection of local markets is time consuming and prone to error
  • Exploratory analysis requires technical expertise and access to data and computing resources – business users can’t easily answer “what if” questions
How we helped
  • Fulcrum built an automated process to retrieve, clean, and combine dozens of distinct public datasets to create a master database of local market performance and demographic data for the entire US across 8 years of historical data
  • We automated creation of detailed reports for the retailer and reduced the time needed to create a tailored presentation from weeks to minutes
  • We built an interactive application to allow business users to explore the data and create custom charts to answer questions related to company performance

Fulcrum’s web application aggregates, normalizes, and allows instant visualization of massive public datasets for business analyst use.

Market Research

Customer segmentation for a tax preparation service
Client Challenge

The client was seeking to identify customer segments to allow for targeted marketing strategies, in addition to better understanding their competition and satisfaction levels to unlock untapped opportunities.

How we helped
  • We recruited consumers, drafted and hosted the survey questionnaire, and executed the survey
  • We performed a latent class segmentation statistical model to identify homogeneous customer groups based on behavioral and attitudinal survey responses
  • Lastly, we analyzed competitor strengths and weaknesses in order to help identify product features and services to pursue as future offerings

Fulcrum classified customers into segments based on attitudes and behaviors, provided guidance for an optimized marketing strategy based on segmentation analysis, and helped prioritize product development opportunities.

Market research for a global home and building solutions provider
Client challenge

The client was pursuing guidance for their product development, specifically in deciding which new features to offer for their connected home water heaters. Fulcrum was commissioned to design and execute a survey with discrete choice modeling to determine the optimal feature bundle to include in the new product.

How we helped
  • Our team recruited consumers of the client’s target audiences, drafted the survey questionnaire, designed the discrete choice testing sequence within the survey, and executed the survey against existing customer segmentation
  • We then performed discrete choice modeling on the resulting data set to determine the optimal feature bundles and estimated amounts customers would be willing to pay for each incremental feature

Fulcrum identified consumers’ preferences for a new product, helped prioritize product features for subsequent engineering and UX development phases, and forecasted the optimal product pricing based on willingness-to-pay analyses.

Customer satisfaction research
Client challenge

A retail bank in the US sought to understand its customer satisfaction and loyalty relative to those of its competitors, along with relative strengths and weaknesses across a battery of brand characteristics and attributes across several customer groups:

  • “Direct Customers” for a general customer satisfaction survey
  • “Advised Customers” who were using the bank’s investment services through an Advisor to understand their customer experience
  • “Lapsed Customers” who had drawn down their account to nearly nothing and had no activity for a certain period of time to understand the reasons for reducing their relationship
  • “New Customers” were surveyed within the first 2 weeks of opening a new account to understand the new customer experience
How we helped

We collaborated with the client on the design of the original questionnaires, and throughout the duration of the tracking study. While each survey had its own objectives and benchmark metrics, certain brand attributes were measured consistently across customer groups for comparison as well as for additional time-based assessments of changes.

Fulcrum tracked customer attitudes from different phases of customer journey to help develop strategies for operational and website changes, identify areas of improvements (including benchmark scores) and simplify forms while optimizing the timing of communications within different accounts.

Customer research to gain blood glucose strip sales insights
Client challenge

A medical supplier of blood glucose monitors and strips was seeking to increase their sales.

They sought to identify the needs and habits of their customers and the feasibility of increasing sales through the offering of competitors’ products on its website.

How we helped
  • We acquired customer and prospect lists from the manufacturer and analyzed existing customers and prospects’ blood glucose strip spending habits
  • We designed a questionnaire to probe on blood glucose strip purchase behavior and blood glucose testing behavior and determine where blood glucose strip users get supplies, brands used, and the frequency in which they test
  • We uncovered key behavioral and target audience information to better convert individuals into repeat customers

Fulcrum securely handled client and prospect lists for telephone survey recruitment, designed the questionnaire, administered the survey, analyzed results to determine the best course of action, and provided key targeting and strategy information for increasing eCommerce sales.

Brand tracking study for an online bank
Client challenge

Fulcrum tracked consumers’ brand associations and satisfaction with various metrics over the years, identified levers for improving upon desired outcomes, and identified competitive threats and opportunities during a period of upheaval in consumer banking.

How we helped
  • We designed and executed a study over the course of several years, collaborated with the client on the design of the questionnaire and managed the respondent recruitment throughout the duration of brand tracking
  • We performed a driver analysis at the conclusion of each survey to identify the brand metrics that were impacting the satisfaction, retention and NPS ratings

Fulcrum tracked consumers’ satisfaction with various metrics over the years, identified levers for improving upon desired outcomes, and helped identify competitive threats and opportunities during a period of upheaval in consumer banking.

Consumer decision process
Client challenge

A high-end exercise equipment manufacturer was looking to conduct a study surrounding their customers’ decision making process. The goal of this study was to understand purchasing behavior as well as the key factors that influence sales and customer attitudes towards warranties.

How we helped
  • We designed and deployed an online survey among customers and non-customers in the market for a particular type of product at a specific price point.
  • We then mapped the customer journey, providing insights into action steps the manufacturer should take to capture customer interest ahead of purchase; to maximize sales effectiveness at the retailer level; and to keep customers engaged with the brand after purchase.

Fulcrum analyzed which market the equipment manufacturer should target, which led to recommendations on channel partner selection, training and incentives for the sales staff, and what type of pre-and post-sales customer services would attract potential and retain existing customers.

International market research for a global electronic product provider
Client challenge

The client needed to conduct a quantitative research survey among small home-based business owners globally to help narrow down the most important features for a new home-office product.

The country-specific research also aimed to uncover customer preference due to historical and cultural factors and provide insights for region-specific marketing decisions. 

Fulcrum hosted, programmed, and translated the survey and collaborated with vendors across five countries on three continents to gather and QA data for this initiative.

How we helped
  • Fulcrum incorporated the client’s country-specific segment typing tool logic into the online surveys to classify respondents during screening for quota sampling.
  • Fulcrum researched and problem-solved issues that arose due to regional differences in order to recruit the required nature and number of respondents given low incidence rates. 
  • Fulcrum performed ongoing comprehensive data integrity testing and provided comprehensive tabulation reporting.

Fulcrum managed the international panels, translations, and survey hosting; problem-solved for regional recruiting difficulties and provided ongoing data integrity analysis; and integrated data across all countries for a comprehensive dataset by country and segment.