Detecting pneumonia in x-ray images
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Pro bono
Problem
- Pneumonia causes over 1M deaths a year
- Cost effective process needed for diagnosing X-Ray scan images
Solution
- Pro-bono research work to develop a predictive model for the diagnosis
Impact
- 92% of accuracy
- Model published -> available for researchers
Sustainability Module
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Multinational Pharmaceutical Company
To address the challenge of inadequate sustainability data sharing in the semiconductor industry, which leads to inaccurate carbon footprint calculations
Challenge
- Insufficient sharing of sustainability data among companies in the semiconductor industry
- Inaccurate carbon footprint calculations due to lack of access to comprehensive data
Solution
- Development of a sustainability module within customer’s data-platform specifically for the semiconductor industry
- The module enables companies to calculate the carbon footprints of their products accurately
Business Impact
- It facilitates the request and sharing of footprint data between suppliers and customers
- Potential for significant improvement in the accuracy of carbon footprint calculations across the industry once the platform is fully operational
- Expected enhancement of industry-wide sustainability efforts through better data transparency and collaboration
Data Science Module
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Multinational Pharmaceutical Company
Developing a data platform to enable the semiconductor industry to manage and analyze vast production data, aiming to significantly improve product quality and process optimization
Challenge
- The semiconductor industry is flooded with a large volume of production data, including test results from every stage, from raw materials to the final product
- The industry faces the challenge of effectively organizing and interpreting this data to enhance product quality and streamline manufacturing operations
- Lack of expertise in data science methodologies to maximize the value derived from this extensive data
Solution
- Unit8 is helping customer in creating a data-platform tailored to the needs of the semiconductor industry
- We assisted a potential customer’s end users by processing their data and applying data science techniques
- Our analysis identified which ingredient tests are most critical for the quality of the final semiconductor product
Business Impact
- While the impact of the solution is not currently quantifiable due to the Platform being in its development and scale-up stages, the potential outcome is expected to be a transformative enhancement in data utilization within the semiconductor industry
- Platform is designated to provide advanced analytical tools and methodologies that transform raw data into valuable insights, leveraging its data for quality control and process optimization
Platform development – Foundry
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Multinational Pharmaceutical Company
Developing the modules and core administrative part on a Foundry-based data platform
Challenge
- Managing the development of the core administrative components of the platform requires a deep understanding of the platform’s architecture and requirements
- Ensuring that the platform is scalable and can handle large amounts of data can be a challenge
- Planning & Maintaining the security and privacy of the data on the platform
Solution
- Development of customer’s Fundry based data platform
- Developing various features and data pipelines for the platform, including data processing pipelines, metrics computations, and dashboard design and implementation
- Development of several modules, including the Sustainability, Audit, Data Science Module, Use Case Portal
Business Impact
- The platform is scalable and can handle large amounts of data while maintaining the security and privacy of the data
- Platform will become accessible to many users in the future
- Appraisal from CEO & continuation of the project
Medical Copilot
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Swiss Telemedicine Provider
Enhance patient care quality and improve patient satisfaction by recognizing medically-important information.
Challenge
- Physicians spend a lot of time documenting the medical consultation content and spend more time on administrative tasks than consulting patients
- Data was lacking quality since everything related to medical consultations was coming via manual input and thus no standards for data quality were followed
- Patient satisfaction was dropping (lower NPS)
Solution
- Speech-to-Text solution in German has been developed
- Appropriate information is automatically detected and populated in the right fields using AI components (e.g. medical entity recognition)
- Provided a medical consultation summarizer API using Azure OpenAI services that condenses the content of the medical interview, while maintaining key information.
Business Impact
- Physicians focus on consulting patients than performing administrative tasks
- Data quality improved significantly since data comes standardised out of AI components
- Patient satisfaction increases since they feel that they are heard more and treated better
Intelligent Document Insight Assistant
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Multinational Cosmetics and Pharmaceuticals Company
Implementing a secure Assistant helps with information retrieval, enhances collaboration & ensures compliance
Challenge
- Document fragmentation: The company struggles with scattered documents across various platforms like SharePoint, in different file formats (Excel, PPTX, PDF)
- Non-Searchable Old PDFs: The company faces the issue of old PDF documents that lack searchability; valuable insights and data may remain hidden
- Adoption of GenAI capabilities by end users
Solution
- Unit8 GenAI Accelerator has been used to buid custom SafeChat, Q&A and FileChat use cases has been deployed
- Implement custom file parsers, specifically for pptx and aspx files, to enable document processing and extraction of relevant information
- Ensure the deployment of the solution is done in a production environment with no internet exposure
- Utilize an application gateway to provide secure access to the chatbot, protecting it from unauthorized access and potential security threat
Business Impact
- Users can save time and effort by quickly finding specific information within documents through the chatbot’s search capabilities
- Simplified Document Management: Centralized access eliminates the need to navigate through multiple locations
- Users can upload their own files, providing tailored document access and search capabilities
- Safe content generation and interaction capabilities facilitate collaboration among employees, enabling them to share insights & exchange idea
Employee Support with Secure GenAI Chat
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Swiss Biotechnology Company
The company sought to implement secure GenAI solutions, beginning with an HR-focused Retrieval-Augmented Generation (RAG) system
Challenge
- A non-tech company with small AI experience sought to initiate digital transformation
- The lack of an internal AI-powered chatbot led employees to use public platforms like OpenAI’s ChatGPT, raising data protection concerns
- The company aimed to implement secure GenAI solutions, starting with an HR-focused Retrieval-Augmented Generation (RAG) system, but lacked the necessary infrastructure and expertise
Solution
- A secure, internal Chat GPT-like application, with HR assistant with access to policy documents; made possible by our GenAI Accelerator
- Improved multilingual search and document retrieval capabilities
- Personalized prompt libraries for individual employees
- Customized front-end aligned with the client’s branding
- Robust DevOps and deployment pipelines
Business Impact
- Global ChatGPT-like tool for all employees, improving productivity and innovation
- Improved HR query resolution through the AI-powered assistant
- Enhanced data security by providing a controlled, internal AI environment
- A scalable AI infrastructure, facilitating easy addition of future use cases
- Business user’s satisfaction and efficiency through personalized AI interactions
DWH Platform Selection
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Multinational Pharmaceutical Company
Defined requirements and helped selection of the best-fitting DWH platform to integrate the existing technical landscape
Problem
- 5 different business units leveraging a variety of on-prem and cloud data sources to drive business analytics capabilities
- Strong existing architecture landscape in place, based on AWS and Foundry
- Very diverse business needs across sectors, with strong preferences towards specific solutions to be mitigated
Solution
- Strong engagement with stakeholders across all BUs to drive requirements collection
- Assessment of 10+ candidates for DWH implementation
- Orchestrated procurement process with 4 different vendors to determine fit-for-purpose and fit-for-cost viability
Impact
- Selected the optimal DWH candidate to serve the company’s current and future analytics needs
- Ensured buy-in across all Business Units on the way forward to leverage the company’s data
- Enabled 1M$+ saving on selected platform cost vs other candidates
Integrating Cognitive Search & OpenAI
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Medical Provider
Challenges Faced by Medical Practitioners in Acquiring Recent Scientific References on Disease Relationships Amidst Time Constraints
Challenge
- Medical practitioners face constraints in time and capacity when searching for relevant content
- Challenges arise when seeking current scientific references to comprehend the correlation between two diseases
- Hallucination risk: Generative models may inaccurately identify or connect irrelevant information
Solution
- Use of Azure-powered tool and combining Cognitive Search & OpenAI
- Implement fine-tuning model or prompt engineering crucial to minimising hallucination risk
- Test: Experiment with limited data source for nephrology articles
- Putting proper guardrails resulted in no response to out-of-context queries, which was the proper and expected behaviour
Business Impact
- Quickly sifts through vast scientific articles
- Doctors can now find references that potentially contradict the mainstream findings to provide the practitioner with a wider view
- Rapid extraction of insights from unstructured data aids informed decision-making
- A competitive advantage achieved in the respective industry
Capacity Planning
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Multinational Life Sciences Company
Built a capacity planning tool via Workshop on Foundry, providing visibility on the usage of equipment and enabling the simulation of “what-if” scenarios
Problem
- Capacity planning at a global life sciences company was a manual and tedious process
- The company needed better visibility on the current usage of equipment, and the ability to simulate the impact of changes
Solution
- Workshop application on Foundry
- Metrics monitoring and simulation capabilities via “what-if” scenarios
- Build up of a backend pipeline
Impact
- Reduction of manual work
- Quicker analysis of the impact of simulated changes
- Reduction of human error
Commercial Analytics Workshop
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Swiss Pharmaceutical Company
Conducted a one-day workshop for a Swiss pharmaceutical company to advise them on the build-up of a Commercial Analytics CoE.
Problem
- Challenges in scaling analytics from PoC to enterprise level solutions
- Analytics team struggling to find more time for strategic advisory, overloaded with operational activities
Solution
- Knowledge transfer regarding organisational options & best practices for the set-up of an Analytics CoE
- Provided frameworks for the definition of the Analytics CoE’s scope and service levels
- Guidelines and framework for the definition of the Analytics CoE’s operating model
Impact
- Identified the internal clients that the Analytics CoE must serve, along with their needs
- Defined the Analytics CoE’s value proposition and what is needed to enable it
- Drafted the high-level setup of the Analytics CoE
Cross border invoices classification
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Multinational Pharmaceutical Company
Developed an NLP pipeline for the automated classification of cross border invoices
Problem
- Wrong classification of cross-border invoices can lead to multi-million penalties risk on a yearly basis
- A global pharmaceutical company wanted to mitigate compliance risk related to the misclassification of cross-border invoices
Solution
- Developed an NLP pipeline, to automate the classification of cross-border invoices through an existing NLP model
- The NLP model reads the invoice and predicts the top classes with a corresponding confidence value
- Highest confidence code is then assigned to ERP field during the transaction posting
Impact
- Time to select coding is significantly reduced
- Increase of compliance and risk reduction
Data driven production line optimization
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Swiss division of Global Pharma
Problem
- Running out of production capacity, significant CapEx investment needed in the new production line to keep up with demand
- Goal: increase the production capacity by 5% via advanced analytics
Solution
- Data integration
- Anomaly detection algorithms
- Data correlations -> insights -> recommendations
Impact
- Trending towards 11% of productivity increase (throughput and yield optimization)
- 15x ROI
AWS Data & Analytics Platform
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Multinational Pharmaceutical Company
Designing and implementing a cloud-based data science platform based on AWS (EC2, SageMaker) with Foundry integration to streamline DS use cases
Challenge
- Lacking efficiency of data science projects due to insufficient computing resources
- Heterogeneous and distributed data sources, as well as low data quality
- Regulatory requirements with regard to data integrity
Solution
- Implemented data science platform based on AWS cloud infrastructure and services
- Ensured GxP compliance for regulatory audits of platform
- Established standard processes and procedures to manage and maintain the platform
Business impact
- Increased data science project efficiency due to lower data finding, connection, and preparation efforts
- Availability of modern cloud infrastructure based on AWS including integration with other platforms
- Reduced compliance and regulatory efforts (“compliant out-of-the-box”)
- 5 use cases went live in first 9 months on the platform
Foundry Platform Governance
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Multinational Pharmaceutical Company
Designing new governance framework in collaboration with client team to streamline Foundry governance processes across the organisation
Challenge
- 4 semi-independent departments (data-wise) with only one using Foundry
- Current Foundry governance processes not scalable, new centralised “data office” (DO) to take-over organisation-wide governance efforts
- New data office had no Foundry experience
Solution
- Helped engineers in new team onboard on foundry
- Orchestrated upscaling of governance processes and coordinated with other DOs
- Designed new governance processes whenever necessary
Business impact
- Significantly improved governance processes with better access control
- All sector DOs now have access to necessary resources for use cases
- Lower request resolution waiting time thanks to more efficient governance framework
Manufacturing Analytics Platform on AWS
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Multinational Pharmaceutical Company
Designed and implemented advanced analytics platform on AWS allowing quicker launch of new projects, faster data access, and better project cost monitoring
Challenge
- Goal to help accelerate development of advanced analytics initiatives in the company
- Environment for quick and compliant project development necessary
- Need help designing and implementing central platform
Solution
- Designed and implemented a shared analytics platform on AWS
- Laid the foundational building blocks, i.e.,:
- Identity & Access Management
- Data Governance & Security
- Development Lifecycle
- Data ingestion, processing & presentation
Business impact
- Reduce time required to start new advanced analytics projects by implementing standard platform
- Reduce time needed to access the right data
- Allowed accurate monitoring of project costs
- 6 projects onboarded within first 3 months
Production Line Optimisation
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Multinational Pharmaceutical Company
Increased production line capacity by 11% through data analysis and ML modelling avoiding the need for significant CapEx investment to build new line
Challenge
- Manufacturing line running out of production capacity
- Significant CapEx investment needed to keep up with demand
- Goal to increase production by 5% through advanced analytics only
Solution
- Conducted exploratory data analysis to get good idea of production line and its overall equipment effectiveness (OEE)
- Prioritised most promising actionable levers to increase OEE with domain experts and simulations
- ML modelling, root-cause analysis, anomaly detection & optimisation
- Report detailing approach and gain for each lever
Business impact
- 22 improvement levers investigated in total; 6 retained and 3 implemented
- Improvements implemented led to faster overall production process
- 11% yield improvement
- 200 million extra tablets produced each year → CHF 40+mio in increased revenue
- 15x ROI
HelloML Code/Application Review
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Medical Equipment Manufacturer
Evaluating existing MLOps setups and tools used, providing improvement recommendations, and directly implementing some of those recommendations
Challenge
- Needed help in evaluating their MLOps setup that is currently being developed
- Mock data science project to be used by data scientists as an example to follow on future projects
Solution
- Evaluated existing tools and performed suitability assessment for the current and planned use cases
- Implemented some of our recommendations to provide clean split of responsibilities between the tools
- Recommended best practices on how to scale their infrastructure in the future
Business impact
- Significant improvements in existing MLOps setup by challenging status quo and providing recommendations
- Implemented best practices in their mock project example
- Praised by stakeholder for having also implemented things, going beyond mere recommendations
Medical Coding Complexity Prediction with NLP
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Swiss Pharmaceutical Company
Developed a machine learning model that predicts the complexity of coding/tagging a stay given the clinical documents to improve billing correctness
Challenge
- Correct tagging of patient stay needed for accurate insurance processing
- Incorrectly tagged documents can be under-reimbursed or rejected
- Some documents are very complex to tag/classify, and others are routine
- Need to know if a document is somehow “off” (i.e. anomalous) from a content perspective
Solution
- Created data pipelines for clean aggregation of data
- Built application to automatically classify the “complexity” of documents, so they would be handled by the correct expert
- Same application created knowledge to enable working on anomaly detection
Business impact
- NLP model accuracy comparable with human expert coders
- Faster tagging for billing purposes
- More efficient workload distribution of coding tasks based on complexity and code skill
- Better decision support and minimised manual errors
MLOps process for ML Model Deployment
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Swiss Pharmaceutical Company
Established a common development framework, as well as a standardised release process enabling faster and more efficient ML model deployment
Challenge
- Data Science team at client has been working on several ML projects that need to be put into production
- Goal of this project was to provide an initial MLOps process to deploy models into production
Solution
- Consulting and implementation of right technology stack combined with establishing a proper process
- Established common framework (Kedro) to develop ML models. Setup a standard release process to deploy ML use cases
- Defined tech stack needed for future use cases
Business impact
- Established common development framework to standardise processes
- Best practices put in place for development and release of software/ML models
- Built initial infrastructure enabling reproducible ML pipeline creation on-premise
Telemetry Data Dashboarding
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Swiss Biotechnology Company
Building interactive dashboards on PowerBI from telemetry and sales data enabling salesforce and management to derive actionable market and customer insights
Challenge
- Telemetry and sales data have been collected separately but were not linked to deliver business value
- Management and sales representatives were not able to derive business insights as data could not be visualized in real time
Solution
- Built an interactive PowerBI dashboard, aggregating data from various data sources
- Included “smart insight recommendations” based on real time data
- Implemented various filtering options to analyze KPIs based on multiple criteria
Business impact
- Improved decision-making through inclusion of real time data to derive market insights
- Increased sales efforts enabled by better client-specific recommendations
- Generated high level insights allowing management to see things under a different lights
Augmented reality microscope
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MedTech company
Implementing computer vision models for a digital microscope scanner with augmented reality features
Problem
- Product development of a digital microscope scanner with augmented reality features
- Delineations need to be created around areas of cancerogenous cells
- High resolution images (1px = 2 micron, 400 Mpix)
- Delineations ready below 5 secs
Solution
- Pixel-wise predictions
- Choice of hardware and software architecture for the inference
Impact
- AI contribution to the product development (TensorFlow, Keras, ConvNets, fully-convolutional network)
Patient data classification
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US pharma producer
Problem
- Difficulties to identify the patients eligible for the particular treatment, based on narrow criteria in the free text patient records
Solution
- PoC to create a way to look up patients meeting the particular criteria using pattern matching and machine learning so that they can be qualified for treatment
Impact
- The eligible patients will receive the treatment they are eligible for
- Time saving compared to a manual lookup
Production line continuous monitoring
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Swiss division of a Global Pharma
Problem
- The customer’s production line went through a data driven optimization, the customer wants to ensure the production line maintains the highest possible OEE and wants to add advanced features like automated issue detection & prediction
Solution
- Near real time continuous monitoring system of key production processes with advanced analytics built in (alerting, trend detection, anomaly detection, predictive maintenance)
Impact
- Greater production process visibility
- Quicker time to resolution
- Improved uptime
Production line optimization
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Swiss division of Global Pharma
Problem
- Running out of production capacity, significant CapEx investment needed in the new production line to keep up with demand
- Goal: increase the production capacity by 5% via advanced analytics
Solution
- Data integration, AWS platform
- Anomaly detection algorithms
- Data correlations -> insights -> recommendations
Impact
- Trending towards 11% of productivity increase (throughput and yield optimization)
- 15x ROI