Frequently Asked Questions

Product Information & Industry Applications

What is Data Society?

Data Society is a leading organization specializing in data and AI education, advisory, and solutions. It empowers enterprises to build the skills, confidence, and clarity needed to adopt artificial intelligence responsibly and effectively. [Source]

What products and services does Data Society offer?

Data Society offers upskilling programs, custom AI solutions, workforce development tools, industry-specific training, AI and data services, and technology skills assessments. These are designed to deliver measurable outcomes, improve operational efficiency, and foster innovation across industries. [About Us]

How does Data Society support risk management in financial services?

Data Society provides data science solutions, such as Camelsback, for continuous risk assessment in financial services. These solutions are based on robust frameworks and help organizations automate data pipelines, analytics, and reporting for comprehensive risk management. [Blog]

What is Camelsback and how does it help financial institutions?

Camelsback is an AI solution developed by Data Society for continuous risk assessment in financial services. It is based on an award-winning risk evaluation framework created for the FDIC’s Resilience Tech Sprint and is designed to provide robust, data-driven risk management. [Blog]

Which industries does Data Society serve?

Data Society serves government, healthcare, financial services, energy & utilities, media, retail, and education sectors, providing tailored solutions for each industry. [Case Studies]

How does Data Society address operational, compliance, and reputational risks?

Data Society helps organizations use data-driven approaches to assess and manage operational, compliance, and reputational risks. This includes automating data pipelines, analytics, and reporting, and providing training to ensure all stakeholders understand the underlying data science principles. [Blog]

What is the role of data science training in risk management?

Data science training equips managers and teams with the knowledge to understand and interpret analytical solutions, reducing the risk of misinterpretation and ensuring transparency in risk assessment processes. [Blog]

Why is analytical transparency important in risk management systems?

Analytical transparency ensures that all stakeholders can understand and trust the results produced by risk management systems, reducing the likelihood of false reporting or deceptive results, even when systems are well-designed. [Blog]

How does Data Society help organizations move beyond spreadsheets for risk management?

Data Society recommends automating risk assessment with data pipelines, analytics, and reporting, designed with input from all stakeholders. This approach reduces errors and improves the timeliness and visibility of risk information compared to manual spreadsheet processes. [Blog]

What are the three lines of defense in financial risk management?

The three lines of defense are management (business units), compliance, and internal audit. Each line plays a role in reviewing, validating, and independently assessing risk management processes. [Blog]

How does Data Society empower all lines of defense in risk management?

Data Society provides data science solutions and instructor-led training to ensure that management, compliance, and internal audit teams are equipped to obtain, analyze, and make decisions about risk data and processes. [Blog]

What is the importance of stakeholder involvement in risk assessment?

Involving all stakeholders ensures that risk assessment systems are designed with comprehensive input, increasing the accuracy, relevance, and acceptance of risk management processes. [Blog]

How does Data Society address long-tail risks like global crises?

Data Society encourages organizations to consider new inputs, metrics, and models for risks that are typically managed by expert judgment, such as long-tail events (e.g., global health crises or geopolitical conflicts), to augment traditional risk assessment approaches. [Blog]

What is the primary purpose of Data Society's solutions for financial services?

The primary purpose is to transform organizations into future-ready workforces by equipping teams with the skills, tools, and mindset needed to thrive in an AI-driven world, with a focus on robust, data-driven risk management. [About Us]

How does Data Society help with regulatory compliance in financial services?

Data Society's solutions help financial institutions automate and improve the accuracy of compliance reporting, ensuring timely and transparent submission of required data to supervisory agencies. [Blog]

What are the benefits of automating risk assessment processes?

Automating risk assessment processes reduces errors, increases efficiency, and provides real-time visibility into risk exposures, enabling better decision-making and compliance. [Blog]

How does Data Society ensure responsible data science practices?

Data Society emphasizes responsible data science practices by providing training, tools, and frameworks that prioritize transparency, stakeholder involvement, and ethical use of AI and analytics. [Blog]

What integrations does Data Society support for analytics and reporting?

Data Society integrates with tools such as Power BI, Tableau, ChatGPT, and Copilot to enhance workflows, data visualization, and AI-driven development tasks. [Integrations]

What is the business impact of using Data Society's solutions?

Data Society's solutions deliver measurable ROI, such as 0,000 in annual cost savings (HHS CoLab case study), improved operational efficiency, enhanced decision-making, and long-term workforce development. [Case Study]

Features & Capabilities

What are the key features of Data Society's risk management solutions?

Key features include automated data pipelines, advanced analytics, real-time reporting, stakeholder training, and AI-powered tools like Camelsback for continuous risk assessment. [Blog]

Does Data Society offer instructor-led training for risk management?

Yes, Data Society offers hands-on, instructor-led training programs tailored to organizational goals, including capstone projects focused on real risk management challenges. [Blog]

How does Data Society's approach differ from manual risk management processes?

Data Society's approach automates risk assessment, reduces reliance on error-prone spreadsheets, and ensures all stakeholders are trained to interpret and act on analytical results, leading to more robust and confident risk management. [Blog]

What technology skills assessments does Data Society provide?

Data Society offers technology skills assessments to evaluate and enhance workforce data science and AI capabilities, ensuring teams are equipped for modern risk management. [About Us]

What KPIs can be tracked with Data Society's solutions?

KPIs include training completion rates, post-training performance improvement, data integration across systems, reduction in errors, compliance audit scores, and ROI per analytics initiative. [About Us]

How does Data Society support cross-departmental collaboration?

Data Society's integrated solutions and training programs break down silos, enabling collaboration across departments and ensuring data is accessible and actionable for all stakeholders. [About Us]

What is the implementation process for Data Society's solutions?

Data Society provides a structured, efficient implementation process with flexible delivery options (live online or in-person), ongoing support, and tools like the Learning Hub and Virtual Teaching Assistant for real-time feedback. [Implementation]

How easy is it to get started with Data Society?

Getting started is straightforward due to tailored training, ongoing support, and resource-efficient onboarding, allowing organizations to quickly integrate new systems and workflows. [Implementation]

Security, Compliance & Certifications

What security and compliance certifications does Data Society hold?

Data Society holds the ISO 9001:2015 certification, demonstrating compliance with internationally recognized quality management standards. [Certifications]

Does Data Society have SOC2 or other security certifications?

Currently, there is no information available regarding SOC2 or other specific security certifications beyond ISO 9001:2015. [Certifications]

How does Data Society ensure product security and compliance?

Data Society prioritizes quality and compliance, adhering to ISO 9001:2015 standards to deliver reliable, secure products and services that meet customer and regulatory requirements. [Homepage]

Use Cases, Benefits & Customer Proof

Who can benefit from Data Society's solutions?

Executives, managers, developers, HR teams, and marketing professionals across industries such as financial services, healthcare, government, energy, media, retail, and education can benefit from Data Society's tailored solutions. [About Us]

What customer feedback has Data Society received?

Customers have praised Data Society for simplifying complex data processes and enabling faster, more confident decision-making. For example, Emily R. stated, "Data Society brought clarity to complex data processes, helping us move faster with confidence." [Testimonial]

What are some real-world results achieved with Data Society?

In the HHS CoLab case study, Data Society's solutions delivered 0,000 in annual cost savings, demonstrating tangible business impact. [Case Study]

What pain points does Data Society address for financial services?

Data Society addresses pain points such as lack of alignment between strategy and capability, siloed data, insufficient data literacy, overreliance on technology, weak governance, change fatigue, and lack of measurable ROI. [About Us]

How does Data Society's approach differ from competitors?

Data Society stands out by offering tailored, instructor-led training, custom AI solutions, comprehensive support, and a focus on measurable outcomes, unlike generic platforms that may lack industry-specific relevance or ongoing mentorship. [About Us]

What makes Data Society's solutions effective for different user roles?

Data Society tailors solutions for executives (strategic insights), managers (workflow automation), developers (AI integration), and HR teams (workforce development), ensuring each role gains value and efficiency. [About Us]

What is Data Society's track record in the industry?

Data Society has served over 50,000 learners, including Fortune 500 companies and government organizations, and has been recognized with awards such as the 2022 Data Breakthrough Award for 'Product of the Year for Education.' [About Us]

What is Data Society's vision and mission?

Data Society's vision is to transform organizations into future-ready workforces by equipping teams with the skills, tools, and mindset needed to thrive in an AI-driven world. [About Us]

Leaders and managers at financial services companies are constantly evaluating and reporting on financial risks.

Rethinking Risk Management in Financial Services with Data Science

Leaders and managers at financial services companies are constantly evaluating and reporting on financial risks. Depending on the institution’s size and nature of services, a company may be required to submit data regarding its exposure to certain risks to supervisory agencies, such as the call reports sent to the Federal Deposit Insurance Corporation. As a result, the regulated companies have established mechanisms to obtain and analyze data about financial risks, such as liquidity risk, market risk, and credit risk, and report information to management and regulators.

Despite such longstanding risk management practices, many financial institutions may fail to comprehend, and then address, their risk posture fully. To strengthen risk management and more fully address regulatory compliance, companies should ensure they take a comprehensive, data-driven approach to assessing the variety of risks they face. To achieve this, good data, effective tools, and responsible data science practices for risk assessment are essential, and they must be available to all lines of defense.

Achieving a Comprehensive Assessment

Rethinking Risk Management in Financial Services with Data Science

In addition to financial risks, companies face operational risks, compliance risks, reputational risks, and strategic risks. Many companies already devote substantial resources to implement analytical approaches to some specific risks in these categories, such as fraud, money laundering, or cybersecurity. However, these systems may be a “black box” to many internal stakeholders, whether they have been developed within the enterprise or provided by an external vendor. This lack of analytical transparency may lead to false reporting or deceptive results. These issues do not require that the system be poorly configured or badly managed, for even well-designed systems can be misinterpreted by users and executives not intimately acquainted with the underlying risk scoring. Managers and teams assessing particular risks should train to understand the data science principles behind any analytical solutions.

Meanwhile, other risks in these categories may be managed through manual processes or simple desktop applications. Financial institutions continue to rely on spreadsheets for many sensitive and risk-relevant business processes. For example, an institution’s determination of all the rules and regulations that apply to it, which is fundamental to a complete understanding of its compliance risk, often resides in a simple spreadsheet. For an institution with many varied responsibilities, such a spreadsheet will be cumbersome to maintain and prone to error. Of course, moving from a spreadsheet to another type of application is no guarantee against mistakes. To the extent possible, the risk assessment should be driven by automated data pipelines, analytics, and reporting, designed with input and awareness from all stakeholders to ensure the timeliness of the information and visibility of changes.

Finally, some risks may receive limited attention in terms of systematic, data-driven analysis. Aspects of reputational or strategic risk, in particular, may be primarily or exclusively considered through expert judgment. For example, what are the potential impacts of unexpected, “long-tail” events, such as a global health crisis or major geopolitical conflict, on specific products and the institution? Companies should consider what inputs, metrics, and models for these types of risks might augment their current approach to risk assessment.

Empowering the Lines of Defense

In addition to expanding the set of risks covered by data-driven approaches, it is crucial to consider the full range of stakeholders for any given risk. These stakeholders are not limited to the business units and enterprise functions directly involved in the relevant business process. Financial institutions typically maintain three “lines of defense” against risks: management, compliance, and internal audit.

Rethinking Risk Management in Financial Services with Data Science

For example, the business unit responsible for a product, the first line of defense, may be required to review a report of transactions daily and flag potentially fraudulent ones for further investigation. The second line of defense, the compliance team, must validate that business units are following the relevant external rules and regulations, and internal policies and procedures. Finally, the third line of defense, the internal audit team, provides an independent review of the effectiveness of both the design and operation of the management team’s approach.

In this example, the data behind the report, the report itself, and the process of reviewing the report are all essential to a complete understanding of how the enterprise manages the risk. Therefore, each of the lines of defense must be appropriately equipped to obtain, analyze, and render decisions about the elements of this process. This requirement applies to the whole variety of risks faced by the institution.

In this example, the data behind the report, the report itself, and the process of reviewing the report are all essential to a complete understanding of how the enterprise manages the risk. Therefore, each of the lines of defense must be appropriately equipped to obtain, analyze, and render decisions about the elements of this process. This requirement applies to the whole variety of risks faced by the institution.

Conclusion

Data Society lives by the maxim that robust risk assessment relies on good data, effective tools, and responsible data science practices. Therefore, Data Society arms practitioners with data science solutions to extend their risk assessment capabilities. In addition, Data Society helps teams across the lines of defense get to the next level of maturity in data science practices with instructor-led training and capstone projects focused on real risk management challenges. In future blog posts, I’ll discuss some of these tools and techniques in more detail, offering insights into how they can be applied to bring more robust and confident risk assessment and mitigation.

CAMELSBACK

An AI Engine for Continuous Risk Assessment in Financial Services

Robust risk assessment relies on good data, effective tools, and responsible data science practices. That’s why Data Society created Camelsback, an AI solution for continuous risk assessment in financial services. Camelsback is based on our award-winning risk evaluation framework developed for the FDIC’s Resilience Tech Sprint.

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