Skip to content
Search to learn about InterSystems products and solutions, career opportunities, and more.

Why the C-Suite Needs to Care About Data: A Capital Markets Buy-Side Impact Assessment Survey

Aite Group

Why the C-Suite Needs to Care About Data: A Capital Markets Buy-Side Impact Assessment Survey, commissioned by InterSystems and produced by Aite Group, highlights the impact of poor data support on business processes, including financial, regulatory, and risk management. This white paper is based on conversations with executives with knowledge of their firm’s data architecture and data management strategy at 19 global capital markets firms. It examines why firms need to invest in data architecture to improve their competitive and operational capabilities in the era of digital transformation. Key takeaways from the study include:

  • Three of the top four data architecture challenges are around integrating, cleansing, normalizing, and transforming data for use by the business. These challenges will only increase as the volume and number of data sources needed increase.
  • Many buy-side respondents currently have a problem with operational and technology data silos, but many have plans to tackle silos via technology investments and strategic governance programs. A major challenge for these firms is getting clean data to specific business units from portfolio management to client reporting teams.
  • For the buy-side, areas such as trading have put significant demands on data teams and technology, with the growing focus on best execution requirements and accurate regulatory reporting. Nevertheless, for these firms, portfolio management is as it should be, the function that has placed the most pressure on internal data architecture. No matter how well supporting business units perform, delivering on investment returns and attracting assets remain the overarching goals that define success for these firms.
  • An effective data management team is focused on demonstrating the “value” in data and emerging business cases—the priority is gaining business buy-in and support across the enterprise for improvement of data architecture and data delivery.
  • The majority of buy-side respondents view improved reliability as the most important goal and benefit of data architecture investment. Confidence in data quality and stability of internal data architectures to meet ongoing business demands is vital for firms.
  • Half of asset manager respondents are focused on developing an internal API strategy to better connect siloed data sets that often live in best-of-breed applications. The goal of APIs is mainly to support straight-through processing efforts.
  • Aite Group estimates that the majority of Tier-1 sell-side and buy-side firms have less than 10% of their total technology stack hosted in a public cloud environment. Multiple asset management firms are considering migrating key applications from on-premises installations to cloud hosted. However, many still have reservations largely due to security and lack internal expertise to provide oversight over cloud outsourcing.
  • A sizable portion of buy-side respondents are either actively considering machine learning’s (ML) application to deliver insights for the investment process or are already piloting in this area. However, many other institutions have noy yet considered how ML can support their businesses.
RELATED TOPICS

Other Resources You Might Like

Apr 15, 2025
Enterprise Master Person Index
Next-Generation Enterprise Master Person Index for Identity Management Seamless patient, member, and beneficiary identification is essential for efficient operations across healthcare organisations and government agencies. Yet, fragmented systems, inconsistent identifiers, and data gaps continue to disrupt workflows, increase costs, and compromise care quality and service delivery. 35% of denied medical claims stem from inaccurate patient identification¹, while mergers and affiliations further complicate record consolidation. Even within a single information system, duplicate or overlaid records can introduce inefficiencies and risks; by creating costly administrative burdens and compromising the accuracy of AI workflows built on unreliable data. To maintain data integrity and prevent cascading errors, organisations must be able to detect problematic records in real time and trigger corrective actions.
Apr 08, 2025
IDC InfoBrief
In today’s rapidly evolving healthcare landscape, the strategic implementation and optimization of advanced Electronic Health Record (EHR) systems continue to be paramount, despite significant prior investments in this area. Download the IDC InfoBrief
Apr 04, 2025
Optimizing Analytics Development in Financial Services
Smarter Processes, Smarter Decisions
Apr 04, 2025
Real-time Visibility & Integrated Decision Intelligence
Risk management has evolved beyond just mitigating threats—strong risk management practices can be a competitive advantage. In today’s volatile markets, asset managers are tasked with navigating unprecedented complexity, adapting to tighter regulations, and leveraging data to build resilience and drive growth. Yet, traditional methods fall short, leaving many struggling with disjointed systems, siloed data, and delayed insights.
Apr 02, 2025
A Digital Front Door Solution
A Digital Front Door Solution Successful healthcare organizations (HCOs) understand that patient engagement is fundamental. Patients who are well-informed about their conditions and treatment options make better decisions. By empowering patients to take an active role in their healthcare, HCOs can improve patient outcomes, satisfaction, and loyalty.
Mar 25, 2025
A cloud-based FHIR to OMOP solution for real-world data
Cloud-Based, On-Demand Access to Secure Patient Data Nationwide
Mar 12, 2025
InterSystems Supply Chain Orchestrator
In supply chain, predicting disruptions before they occur and handling them in an optimized manner when they do occur, is a game changer. An AI-enabled decision intelligence platform can optimally manage disruptions when and before they occur so you can be ready for the unexpected. Learn about some of the use cases that InterSystems Supply Chain Orchestrator can address to help you manage the unexpected.
Mar 11, 2025
InterSystems Data Fabric Studio - Supply Chain
Data Fabric Studio makes it easy to access accurate, consistent, and reliable data faster, and enables better-informed decision making across your entire supply chain.
Mar 08, 2025
IDC Spotlight Report
Increased capabilities in supply chain management and decision intelligence tools, along with complex tech stacks, have put a premium on the ability to integrate, synthesize, and use disparate data for faster transformations and long-living business benefits.
Mar 07, 2025
ARC Advisory Group Report
A new category of supply chain data fabrics is emerging to meet the unique needs of large businesses with complex supply chain processes. These new data fabrics must go beyond traditional enterprise data fabrics, which are not optimized for supply chain environments. These new platforms need to e able to embrace intricate supply chain data, real-time alerting, and complex decision-support tradeoffs. Such a platform is needed to allow companies to truly support agile business execution.

Take The Next Step

We’d love to talk. Fill in some details and we’ll be in touch.
*Required Fields
Highlighted fields are required
*Required Fields
Highlighted fields are required

By submitting your business contact information to InterSystems through this form, you acknowledge and agree that InterSystems may process this information, for the purpose of fulfilling your submission, through a system hosted in the United States, but maintained consistent with any applicable data protection laws.



** By selecting yes, you give consent to be contacted for news, updates and other marketing purposes related to existing and future InterSystems products and events. In addition, you consent to your business contact information being entered into our CRM solution that is hosted in the United States, but maintained consistent with applicable data protection laws.