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Our Work

Deep Linkage Analysis like Graph Analytics can help trace deep hidden relationships in many areas. We have successfully partner many of our clients in leveraging on Graph Analytics in industries like Financial Services, Supply Chain, Biotechnology & Pharmaceutical in areas ranging from targeted marketing, customer 360/journey, fraud detection, talent development, cybersecurity etc.

Our Use Cases on Graph Analytics

Anti-Money Laundering (AML)/Fraud Detection

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Graph analytics can be used to identify potential money laundering activities and fraud by analyzing complex relationships and patterns in data. The project involves collecting and integrating relevant data sources into a graph database, creating a network of relationships between customers, accounts, transactions, and other data points, and analyzing the network using graph algorithms to detect suspicious patterns of activity. The graph database can then be used to calculate a risk score for each customer or transaction, and the results can be used to generate reports and dashboards for actionable insights. This approach can help financial institutions detect potential money laundering activities, reduce potential losses, and ensure compliance with regulatory requirements. Fraud detection is not limited to financial services, it can be widely applied across industries including social security and public safety.

But… my data is not perfect – Entity Resolution

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Graph analytics can also be applied to entity resolution, which involves combining disparate data sources to identify common entities. By creating a network of relationships between entities, graph analytics can help quickly and accurately identify matches and eliminate duplicates. The more indirect connections an entity shares, the more likely it is to be referring to the same entity. Graph analytics can also help identify potential aliases and variations in entity names or other attributes, allowing for more accurate entity resolution. Overall, applying graph analytics to entity resolution can help businesses streamline data integration and improve the accuracy of analysis by identifying common entities more quickly and accurately.

More on data management... tracing data lineage

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Data lineage, or the ability to trace the origin, movement, and transformation of data, is a critical aspect of data management that presents a challenge for many businesses.

Keeping track of data lineage across multiple systems and processes can be complex and time-consuming, and errors or discrepancies can result in inaccurate or incomplete analysis.

 

Graph analytics can be applied to data lineage by representing data flows and dependencies as a network of relationships, allowing for a more holistic view of data movement and transformation. By visualizing the relationships between data sources and processes, businesses can quickly identify potential errors, redundancies, or gaps in their data lineage. This can help improve the accuracy and completeness of data lineage, leading to more reliable analysis and decision-making. Overall, applying graph analytics to data lineage can help businesses overcome the challenge of keeping track of data movement and transformation, leading to more efficient and effective data management.

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Environmental, Social, and Governance (ESG) 

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Data lineage, or the ability to trace the origin, movement, and transformation of data, is a critical aspect of data management that presents a challenge for many businesses.

Keeping track of data lineage across multiple systems and processes can be complex and time-consuming, and errors or discrepancies can result in inaccurate or incomplete analysis.

 

Graph analytics can be applied to data lineage by representing data flows and dependencies as a network of relationships, allowing for a more holistic view of data movement and transformation. By visualizing the relationships between data sources and processes, businesses can quickly identify potential errors, redundancies, or gaps in their data lineage. This can help improve the accuracy and completeness of data lineage, leading to more reliable analysis and decision-making. Overall, applying graph analytics to data lineage can help businesses overcome the challenge of keeping track of data movement and transformation, leading to more efficient and effective data management.

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Customer 360 and Hyper-personalized Recommendations

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Today's customers are volatile and fast-changing, and businesses need to adapt quickly to meet their changing needs and preferences.

 

Graph analytics can help by uncovering hidden relationships between customers and their behaviors, preferences, and purchasing patterns. By creating a network of relationships between customers, products, and other data points, graph analytics can provide a deep 360 view of the customer, track their journey across various touchpoints, and give hyper-personalized recommendations on products and hyper-targeted marketing.

 

Unlike traditional analytics approaches, which rely on predefined rules and metrics, graph analytics can help identify non-obvious patterns and relationships, allowing businesses to offer more relevant and compelling experiences to their customers. Overall, applying graph analytics to customer data can help businesses better understand their customers, meet their changing needs and preferences, and ultimately drive revenue growth and customer loyalty.

Transforming Internal Audit with Continuous Risk Monitoring

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Internal audit is transforming into continuous risk monitoring, which involves ongoing monitoring and assessment of risks and controls to identify potential issues and take corrective action.

 

Graph analytics can help do this effectively and efficiently by creating a network of relationships between risks, controls, and other data points, allowing for a more comprehensive and dynamic view of the organization's risk landscape. By analyzing this network, graph analytics can identify potential risk areas and patterns, as well as highlight potential control weaknesses. This can help reduce false positives and improve the efficiency of risk monitoring, enabling internal audit to focus on high-risk areas and take proactive steps to mitigate potential issues.

 

Overall, applying graph analytics to continuous risk monitoring can help take internal audit to the next level by providing a more effective and efficient approach to risk management.

Supply Chain Optimization

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Supply chain challenges, such as managing inventory levels, reducing operational costs, mitigating risks, and planning for disruptions, are common across many industries.

 

Graph analytics can help transform supply chain operations by creating a network of relationships between suppliers, products, transportation routes, and other data points. By analyzing this network, businesses can identify potential inefficiencies, bottlenecks, and risks, and develop strategies to mitigate these issues. For example, graph analytics can help optimize inventory levels by analyzing demand patterns, identifying potential stockouts or overstocks, and recommending appropriate stocking levels. It can also help optimize transportation routes by analyzing traffic patterns, delivery times, and other factors. Additionally, graph analytics can help mitigate supply chain risks by identifying potential vulnerabilities, such as single-source suppliers or transportation routes, and recommending alternatives.

 

Overall, applying graph analytics to supply chain management can help businesses improve operational efficiency, reduce costs, and better prepare for disruptions, leading to a more resilient and effective supply chain.

Cyber Defense and Threat Intelligence

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Cyber defense and threat intelligence present significant challenges for many organizations, as threats are constantly evolving and becoming more sophisticated.

 

Graph analytics can help by creating a network of relationships between cyber threats, attack vectors, and other data points, enabling a more comprehensive and dynamic view of the threat landscape. By analyzing this network, graph analytics can identify potential attack patterns, malicious actors, and vulnerabilities in the system. This can help organizations take a more proactive approach to threat mitigation, allowing for quicker detection and response times. Additionally, graph analytics can help improve threat intelligence by identifying potential connections between disparate threats and data sources, allowing for a more accurate and comprehensive understanding of the threat landscape.

 

Overall, applying graph analytics to cyber defense and threat intelligence can help organizations better protect their systems and data, reducing the risk of cyber attacks and ensuring a more secure environment for business operations.

Workforce Transformation - Agile and Upskilling 

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Managing an effective workforce is a complex challenge for many organizations, as it requires balancing the needs of employees with the demands of the business.

 

Graph analytics can help by creating a network of relationships between employees, job roles, skills, and other data points, enabling a more comprehensive and dynamic view of the workforce. By analyzing this network, graph analytics can identify potential career paths, upskilling opportunities, and skill gaps within the organization. This can help businesses take a more proactive approach to workforce development, enabling them to better manage talent and ensure that employees have the skills and capabilities they need to succeed. Additionally, graph analytics can help with career navigation, providing employees with insights into potential career paths and development opportunities. This can help increase engagement and retention, as well as improve overall performance and productivity.

 

Overall, applying graph analytics to workforce management can help organizations better navigate the complexities of managing an effective workforce, improving talent management and workforce development efforts, and ultimately leading to better business outcomes.

Digital Twin

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Digital twin technology is a virtual replica of physical assets or systems, which allows for simulation, monitoring, and analysis of real-world performance.

 

Graph analytics can help with digital twin technology by creating a network of relationships between the various components of the system and the data points collected. By analyzing this network, graph analytics can identify potential inefficiencies, areas for optimization, and potential risks. This can help businesses take a more proactive approach to asset management, enabling them to optimize performance, reduce downtime, and increase operational efficiency. Additionally, graph analytics can help with predictive maintenance, allowing businesses to anticipate and prevent potential issues before they occur.

 

Overall, applying graph analytics to digital twin technology can help organizations better manage physical assets, reduce costs, and improve operational efficiency, leading to better business outcomes.

Knowledge Management

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Graph analytics can be used for knowledge management to help organizations easily retrieve information and insights using contextual search. A graph database can store and link vast amounts of data, enabling users to easily explore the relationships and connections between different pieces of information.

 

The benefits of using a graph for knowledge management can be seen in the NASA Knowledge Graph, which was developed to enable easy access to NASA's vast knowledge base. The graph allows for efficient exploration of NASA's vast repositories of data, enabling researchers and other users to quickly locate relevant information and generate insights.

 

Overall, graph analytics can be an invaluable tool for knowledge management, providing a powerful and flexible way to manage and retrieve complex data.

Genomics

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Graph analytics is an emerging field that holds great promise for genomics research. The complex and interconnected nature of genomic data presents a challenge for traditional statistical methods, but graph analytics provides a powerful tool for exploring the relationships between genes, proteins, and other molecular entities. By representing genomic data as a graph and applying graph analytics techniques, researchers can identify hidden patterns and relationships within the data that would be difficult or impossible to detect using other methods. For example, graph analytics has been used to identify genomic regions associated with particular traits or diseases, and to explore the functional relationships between different genes and proteins. The ability of graph analytics to capture and analyze complex networks in genomic data makes it a valuable tool for advancing our understanding of the genetic basis of diseases and other biological phenomena.

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