Early Warning Indicators
![Early Warning Indicators](https://unit8.com/wp-content/uploads/2022/11/Early-Warning-Indicators-1-520x520.jpg)
Major Swiss Bank
Identifying clients that are most likely to have financial problems through an automatic model based on warning indicators to alert credit officers earlier
Challenge
- Credit officers need to assess and manage financial risk for their respective portfolios
- The amount of data collected each day by the risk department and its velocity make it hard to properly monitor and manage risks for every client
Solution
- Help the credit officers to identify and focus on clients that are more likely to have financial problems in the future
- Leveraged Foundry as a data platform and defined early warning indicators – rule base alerts triggered by specific events
- Unit8 implemented those alerts on parameters such as late leasing payments or overdrafts
Business Impact
- Significant simplification of the assessment and monitoring that credit officers need to conduct
- Clear email based alerts that can be easily and quickly reviewed
How AI Assists Portfolio Managers in Gaining Market Intelligence
![](https://unit8.com/wp-content/uploads/2024/05/Case-studies-photos-11-520x520.png)
International Financial Institution
Democratizing Market Intelligence: A GenAI-powered Assistant helping portfolio managers to review market reports, provides an interface for interaction with preferred reports, enables targeted queries and cross-referencing
Challenge
- Portfolio managers today navigate a sea of financial market reports, requiring advanced tools to effectively extract relevant information from a high volume of reports and data received daily from multiple sources
- Cross-Referencing of Market Insights from Diverse Financial Institutions for Portfolio Managers
- Categorize reports based on their content and relevance to specific investment strategies
- Time spent poring over reports detracts from strategic activities like identifying emerging trends, conducting in-depth research, and formulating sophisticated investment strategies
Solution
- Developed a chatbot powered by Generative AI augmented with the latest available market reports
- Intuitive UI enabling targeted queries on selected reports and cross-referencing insights between reports
- The ETL pipeline was implemented to ingest and process the market reports
Business Impact
- Portfolio managers are able to customize their queries and ask specific questions, even referencing multiple reports if needed
- Centralized access: Portfolio managers can interact with their preferred market reports through a single interface
- Facilitates cross-referencing: Solution allows easy comparison of information from multiple reports
- Key insights are presented concisely summarised, alleviating the volume of reports
GenAI-Accelerated Analysis of Risk Documents
![](https://unit8.com/wp-content/uploads/2024/05/Case-studies-photos-10-520x520.png)
Finance Company
Implemented our GenAI Accelerator to enable customers to extract information from risk documents using natural language, ensuring swift access to up-to-date information
Challenge
- Clients faced change management issues regarding hesitation in adopting GenAI due to highly-controlled scrutiny over department.
- Addressing security and privacy concerns: This includes protecting sensitive data and ensuring that the accelerator does not introduce any vulnerabilities
Solution
- Formulated a well-aligned change mgmt. strategy to overcome organizational inertia, individual user resistance and to ensure a smooth transition
- Co-deployed our GenAI Accelerator by collaborating with the client’s DevOps. It involved understanding their infrastructure, requirements, and constraints, allowing us to co-design and implement an effective deployment plan
- Fine-tuned the accelerator’s algorithms, optimized resource allocation, and minimized latency to ensure efficient and fast processing of data
Business Impact
- Streamline operations through faster information retrieval from risk documents using natural language
- Improved team collaboration and alignment by ensuring risk document information was easily accessible and shareable
- Compliance with risk management protocols and regulations
- Launching the first GenAI use case demonstrates company commitment to pioneering technology
Data Platform Audit
![Data Platform Audit](https://unit8.com/wp-content/uploads/2022/11/Data-Platform-Audit-2-520x520.png)
Swiss Private Bank
Assessing current custom-made data platform to make recommendations on the best approach and create valuable insights for future platform strategy
Challenge
- Client wanted to assess current capabilities and maturity of their custom-made data platform
- Need to compare current setup to potential future alternatives
- Required an assessment to decide on future platform strategy and to investigate recurring issues raised by users
Solution
- Delivered platform assessment across 4 dimensions:
- data platform tooling and process capabilities
- data analytics and science platform strategy
- data driven use-cases
- platform development
- Assessed strengths & weaknesses in depth and developed recommendations for Data Platform team
Business Impact
- Increased awareness on strengths and weaknesses of custom-made platform in different application scenarios
- Recommendations for a hybrid approach: custom-made ingestion and off-the-shelf platform for Analytics capabilities
- Decision basis for future platform strategy
Data Platform Suitability Assessment
![](https://unit8.com/wp-content/uploads/2022/11/Data-Platform-Audit-520x520.png)
Swiss Financial Services
Compared two existing data platforms (Cloudera & Foundry) to determine the suitability of each solution and define a future platform strategy
Problem
- Leading Swiss Financial Services wanted to compare scope and maturity of two of their deployed Big Data platforms (Cloudera and Palantir Foundry)
- Assessment required for compliance reasons and to decide on future platform strategy
Solution
- Compared platforms across 5 dimensions:
– data management and governance
– data engineering
– analytics & science
– security
– platform openness - Assessed strengths & weaknesses in depth and developed recommendations for CDO
Impact
- Increased awareness on strengths and weaknesses of deployed platforms in different application scenarios
- CDO achieved buy-in of compliance department
- Established a good decision basis for future platform strategy initiatives
DWH Assessment
![](https://unit8.com/wp-content/uploads/2022/11/Module-text-photo-6-1-520x520.png)
Swiss Cantonal Office
Assessed the data security maturity of a cantonal tax office’s data warehouse and proposed a recommendation roadmap to prepare for a data security audit
Problem
- Tax office developed a Data Warehouse 5 years ago to run short analyses
- Organic, unstructured growth of the DWH led to struggles with data security topics
- Needed a security and maturity assessment for upcoming audit and optimization initiative
Solution
- Leveraged the NIST cybersecurity framework, focusing on security maturity, data lifecycle, connectivity diagram, roles & responsibilities as part of the assessment.
- Developed forward-looking recommendations for data privacy and secure company/team topics
Business Impact
- Delivered a roadmap with timely recommendations, highlighting key risks and ways to reduce them.
- Stakeholders were well-informed and DWH prepared for the upcoming audit
Building an HR Data Science Use Case Roadmap
![](https://unit8.com/wp-content/uploads/2022/11/Case-study-pictures-1.png)
Swiss Private Bank
Identified and prioritized high-potential HR Data Science use cases resulting in Senior Leadership buy-in to embark on their AI journey with a clear roadmap.
Problem
- Client has embarked on an AI & Data Science journey but is lacking a clear approach to identity and implement high-potential use cases
- Limited knowledge about AI and its capabilities in Human Resources
- Interested in delivering quick-wins to prove value to HR Department and Senior Leadership
Solution
- Identified a long list of 33 potential HR use cases across the employee journey through research and interviews
- Conducted in-depth assessment of Top 6 high-potential use cases in terms of business impact and feasibility, summarised in a ranking
- Built roadmap of use cases with effort estimation and required infrastructure & data
Impact
- Delivered clear HR Data Science roadmap which resulted in Senior Leadership buy-in
- Prioritized list of use cases with highest impact and feasibility was piloted and industrialized which successfully delivered quick-wins and proved value in continuing the HR Data Science journey
Accelerator #1 Data assets management
![Data assets management](https://unit8.com/wp-content/uploads/2022/11/Performance-cost-optimisation-520x520.jpg)
Major Swiss Bank
Challenge
- Difficulties maintaining code and monitoring data health
- Making assumptions leading to incorrect outputs
- Need to reimplement existing pieces of software
- Big overhead to integrate new data sources for each use-case
Solution
- Trusted, opinionated and reliable code assets that define guidelines and enforce compliance
- Code modules that allow downstream users to consume and interpret data assets
Impact
- Reduced time to onboard new data assets
- Reduced human errors thanks to guideline enforcement
- Increased transparency about availability and content of data assets
- Ensured common understanding of the data model, allowing to scale data asset development efforts
Client Surveillance
![](https://unit8.com/wp-content/uploads/2022/11/Client-Surveillance-1-520x520.png)
Major Swiss Bank
Identifying clients that are most likely to have financial problems through an automatic model based on warning indicators to alert credit officers earlier
Challenge
- Regulations require the client to setup surveillance for money laundering and illegal activities
- Disparate data sources and formats, and varying regulations between countries
- Inability to monitor client behaviour to spot illegal activities
Solution
- Leveraging a previous project Unit8 conducted (Single Client View), built a generic framework enabling data scientists to easily define surveillance scenarios to monitor potential high-risk client activities
- Pipeline specifically designed to scale to millions of customers tracking billions of equity positions globally
Business Impact
- Greatly reduced amount of time needed to define surveillance scenarios, from weeks to minutes
- Reduced resources required and build-time of pipelines by more than 50%
- Improved reliability of scenarios
- Decreased manpower necessary to conduct surveillance audit by a factor of 20
Single Client ViewDashboard
![Single Client ViewDashboard](https://unit8.com/wp-content/uploads/2022/11/Single-Client-ViewDashboard-1-520x520.png)
Major Swiss Bank
Creating a single client view for an international Swiss bank allowing them to track and compute total risk exposure, and meet AML compliance regulations
Challenge
- Siloed data across multiple systems
- Inability to calculate risk exposure
- Lack of unified view of their clients
- Limited ability to meet compliance regulations
- Sub-optimal conditions to apply proper AML
Solution
- Aggregated, cross-referenced and combined data from hundreds of disparate data sources
- Used ML to automatically surface high-risk clients
- Implemented a scalable solution to account for future needs
Business Impact
- Achieved single client view, increasing visibility
- Able to calculate overall risk exposure
- Compliance with AML regulations
- Already stopped previously undetected terrorism-financing activities
Collateral Insight
![data pipeline](https://unit8.com/wp-content/uploads/2022/11/Collateral-Insight-520x520.png)
Major Swiss Bank
Creating a new data pipeline for collateral risk calculations to improve the quality of data information and reporting for end users
Challenge
- Risk calculations on collaterals provided daily to end-users through dashboard
- Need to leverage this risk calculation data model for reporting purposes
- Difficult to identify which data would be required for reporting, and to accurately provide it through previously-built pipeline that wasn’t sustainable
Solution
- Initial discussion to fully understand data sources and existing data flows
- Created new pipeline to extend the already existing data model by including specific information
- Identifying- and providing solutions to issues in the current codebase which introduce data quality issues
- Provide guidelines to prevent similar issues from reoccurring
Business Impact
- Improved data quality of the reports by onboarding the data on the main data processing platform through the newly built pipeline
- Enabled client team to improve and learn by giving tips and providing guidelines
- Reduced disk spillage per TB of data from 50GB to less than 100MB
Portfolio Monitoring and Reporting
![Portfolio Monitoring and Reporting](https://unit8.com/wp-content/uploads/2022/11/Portfolio-Monitoring-and-Reporting-520x520.png)
Major Swiss Bank
Refactoring an entire codebase making the pipeline run time 7x faster, allowing quicker new feature development, and increasing data quality for analysis
Challenge
- The “Portfolio Monitoring and Reporting” project provides multiple dashboard for risk managers to assess their risk
- Over several years of development, the codebase has become entangled and slow which was blocking the delivery of new features
Solution
- Analysed, simplified and refactored the entire codebase to better future-proof the project
- Solution leveraged was the Unified Foundry Ontology (UFO) that we had previously developed
- Pure foundry solution combined with Unit8’s programming expertise and best practices
Business Impact
- Increased code quality and resolved bugs that accounted for millions of CHF in exposure reporting deviations
- Reduction of pipeline execution time from 10h to 90 min, resulting in fresher data available for analysis
- Allowed smoother onboarding of 200+ users
- Established scrum and coding best practices
Analytics Platform Setup on AWS
![Analytics Platform Setup on AWS](https://unit8.com/wp-content/uploads/2022/11/Analytics-Platform-Setup-on-AWS-520x520.png)
Trading Company
Aggregating all marketing data into a single view matching leads to customers to gain a better understanding of marketing campaigns performance and costs
Challenge
- CRM data spread across entities with little to no aggregation at a group, vertical or customer level
- Lack of data integration meant no overall visibility on factors influencing consumer behaviour
- Inability to check marketing investment effectiveness in customer acquisition and retention
Solution
- Created a data pipeline in AWS to aggregate al marketing campaigns, leads, and customer data into a single source of truth (Data Mart) on AWS
- Pipeline cleans data and builds a unified view matching leads with customers
Business Impact
- KPI tracking per advertising platform, campaign and ad spot (e.g. cost per lead, transformation rate, ROI, etc.)
- Transition to a data driven marketing plan rather than based on “gut-feeling” and beliefs
Exploratory Knowledge Graph
![Exploratory Knowledge Graph](https://unit8.com/wp-content/uploads/2022/11/ExploratoryKnowledge-Graph-520x520.png)
Swiss Private Bank
Building up a Neo4j Graph solution to help different divisions map relationships and interactions between people, companies, accounts and assets
Challenge
- Talend ETL and SQL queries resulted in high manual overhead and could not properly maintain relationships between different parties and accounts
- Looking for a more business friendly interface for their bankers
Solution
- Built up a Neo4j environment
- Created a necessary data schema and ingested required datasets
- Leveraged the newly created Neo4j environment to create two required views:
Party
Account
Business Impact
- Self service interface with granular access rules to allow different departments (wealth management, risk, fraud, etc.) to perform their own queries
- Ensured regulatory compliance regarding particular sanctions
Rogue Traders Monitoring
![Rogue Traders Monitoring](https://unit8.com/wp-content/uploads/2022/11/unit8-case-traders-monitoring-520x520.jpg)
Major Swiss Bank
Developing an ML model to identify potential rogue traders and flag them to minimise risk of financial losses and lower need for regulatory cash reserves
Challenge
- Inability to monitor and identify traders whose behaviour differs from what is expected, resulting in potential monetary and reputational risks for the client
Solution
- Integrated trading data from several sources into a single platform
Deployed ML techniques to identify potential rogue traders based on their trading behaviour - Configured an alerting system to flag traders with an elevated risk of rogue trading
Impact
- Able to quickly identify risky traders based on their trading activities, which would have been impossible to do manually
- Minimised rogue trading risk and potential financial losses, lowering the need for regulatory cash reserves
Platform Performance Optimisation
![Platform Performance Optimisation](https://unit8.com/wp-content/uploads/2022/11/Platform-Performance-Optimisation-520x520.jpg)
Major Swiss Bank
Optimising platform performance with a set of tools and best-practices combined with coaching, resulting in lower costs and smoother user experience
Challenge
- Platform adoption skyrocketed and rate of increase is higher than what new hardware added is capable of handling
- Usage expected to keep climbing as more projects are being onboarded, leading to further cost increase and performance degradation
Solution
- Established performance metrics baseline
- Coached client’s engineers to enable them to improve platform performance
- Created tooling and reports to pinpoint performance problems and allow self-service improvements
Impact
- Reduction in new hardware addition and maintenance costs
- Increase in platform performance resulting in smoother user experience
Commodity Trade Finance (CTF) Dashboard
![Commodity Trade Finance (CTF) Dashboard](https://unit8.com/wp-content/uploads/2022/11/Commodity-Trade-FinanceCTFDashboard-520x520.jpg)
Major Swiss Bank
Creating a dashboard unifying all trading information resulting in a more holistic understanding for credit risk officers and substantial risk reduction
Challenge
- Credit risk officers struggle to understand precisely who they are trading with, what kind of goods are traded, and what are the exposure concentrations
Solution
- Created a dashboard presenting an interactive view of the CTF portfolio and its clients to mitigate risks and recognize business opportunities
- Entity resolution (based on free text sources) to provide a unified view of all external parties involved in the transactions
Impact
- More holistic understanding of CTF business across departments
- Substantial risk reduction through better understanding of exposures
Client Surveillance
![](https://unit8.com/wp-content/uploads/2022/11/Client-Surveillance-1-520x520.png)
Large Swiss bank
Defining and implementing a surveillance framework to identify illegal client behaviour resulting in greatly improved ability to meet surveillance requirements
Challenge
- Regulations require the client to setup surveillance for money laundering and illegal activities
- Disparate data sources, and diversity in regulations between countries
- Inability to monitor client behaviour to spot illegal activities
Solution
- Leveraging a previous project Unit8 conducted (Single Client View), built a generic framework enabling data scientists to easily define surveillance scenarios to monitor potential high-risk client activities
Impact
- Greatly reduced amount of time needed to define surveillance scenarios, from weeks to minutes
- Reduced resources required and build-time of pipelines by more than 50%
- Improved reliability of scenarios
Residual value prediction
![Residual value prediction](https://unit8.com/wp-content/uploads/2022/11/unit8-case-Residual-value-prediction-B-520x520.jpg)
German automotive
Problem
- Car manufacturer holds large global leasing portfolio that has to be periodically evaluated
- Current valuation predictions are inaccurate
Solution
- Based on a large volume of past transactions (12 years) and cars parameters (model, mileage, options), etc. predict accurately the residual value of the car
Impact
- Accuracy of the valuation improved by $100M’s (from large overall base value)
Churn prevention
![Churn prevention](https://unit8.com/wp-content/uploads/2022/11/unit8-case-churn-prevention-B-520x520.jpg)
Major Swiss bank
Problem
- Significant churn in existing customer base which limits overall growth ambitions in saturated Swiss market
- Large number of customer data available, which was not systematically analysed
- Client advisors often surprised if customers leave
Solution
- Early warning system was created based on a machine learning model to identify customers at risk of leaving or withdrawing a large part of their assets (attrition risk)
- System based on regular monitoring of client behaviour (e.g. transaction behaviour, the intensity of engagement) to predict the attrition risk
- A customer group specific retention approach was developed to pro-actively contact customers with high attrition risk
Impact
- It could be proven that the machine learning model identifies the right customers at risk
- Retention approach has proven to be highly effective since the churn rate of customers at risk could be significantly reduced
- Client experienced strong business benefits, since revenue outflows due to customer churn could be reduced
Financial health watchlist
![Financial health watchlist](https://unit8.com/wp-content/uploads/2021/02/unit8-case-financial-health-watchlistjpg-520x520.jpg)
Swiss Financial Institution
Developing a centralised solvency and risk assessment model to create risk exposure reports automatically and improve data quality
Challenge
- Difficulty to predict total exposure to financial losses resulting from companies at risk of becoming insolvent
- Current risk reports are generated manually and data quality is not guaranteed
Solution
- Central gathering and processing of the relevant partner data allowing for central risk modelling and data quality checks
- Automatic creation of monthly risk reports based on the curated data
Impact
- Improved risk management capabilities through information centralisation and standardisation
- Improvement in data quality and report generation
- Possibility to create reports dynamically to visualise more aspects than before
User behaviour monitoring
![User behaviour monitoring](https://unit8.com/wp-content/uploads/2021/02/unit8-case-user-behaviour-monitoring-520x520.jpg)
Major Swiss bank
Problem
- Impared visibility of user activity and behaviour allows for malicious behaviour to be undetected for a long period of time
- Compliance group in a global private bank decides to monitor user activity on the central data platform
Solution
- Introduction of dynamic altering and anomaly detection system including enhanced signal information via integration of new sources of data (HR data, badge swipes, VPN logs, … )
Impact
- Greatly improved security, audit and monitoring capabilities of the platform team
- Decreased risk of malicious behaviour remaining undetected
Financial transactions monitoring
![Financial transactions monitoring](https://unit8.com/wp-content/uploads/2022/11/unit8-case-finance-transaction-monitoring-b-520x520.jpg)
Global Swiss Pharma producer
Problem
- Customer struggled with detecting anomalous financial transactions – the current process is labour intense and error prone due to mass volume of the transactions and amount of false positive alerts
Solution
- Unsupervised machine learning system to automatically flag anomalous transactions together with prioritisation based on severity and an explanation why a given transaction can be an anomaly
Impact
- Lower need for manual interaction
- More accurate transactions monitoring
- Quicker time to act on an alert
Single Client View
![Single Client View](https://unit8.com/wp-content/uploads/2021/02/unit8-case-Unified-Client-View-520x520.jpg)
International Swiss Bank
Creating a single client view for an international Swiss bank allowing them to track and compute total risk exposure, and meet compliance regulations
Challenge
- Siloed data across multiple systems
- Inability to calculate risk exposure
- Limited ability to meet compliance regulations
- Sub-optimal conditions to apply proper AML
Solution
- Aggregated, cross-referenced and combined data from hundreds of disparate data sources
- Used ML to automatically surface high-risk clients
- Implemented a scalable solution to account for future needs
Impact
- Achieved single client view, increasing visibility
- Able to calculate overall risk exposure
- Compliance regulations can be met