The average capital markets firm spends 74 business days onboarding a single reconciliation manually – exactly the kind of work data automation can help with. But what does “data automation” mean in practice?
Data automation is often associated with routing work or mimicking human actions:
- Workflow tools move tasks from A to B.
- RPA mimics keystrokes by copying and pasting what a person would.
However, data automation goes deeper than that. Data automation takes data in any format, from any source, and turns it into trusted, structured, and auditable information that’s ready for downstream action, without manual intervention.
In capital markets operations, that involves transforming emails, PDFs, broker statements and system files into clean, consistent, auditable data that drives reconciliations, confirmations, onboarding, and other processes at scale.
If your reconciliations still depend on inconsistent file formats, or your confirmations require rekeying from emails, you’re dealing with a data problem not a workflow issue.
Xceptor’s Data Automation Platform addresses this directly. It sits between source systems and downstream applications, ingesting, standardising, and validating data before it passes to downstream systems, so processes can run faster and with better control.
IDC Business Value study
The IDC Business Value study of Xceptor shows that firms automating the data layer itself achieved faster ingestion, higher accuracy, fewer errors, lower risk, and a 523% three‑year ROI with payback in just eight months.
How data automation works in practice
Data automation is a set of capabilities that work together to remove friction from the entire data lifecycle. Here’s how that looks in capital markets.
1) Ingestion: bringing data in at speed
Connect to any source and bring data in at the speed the business requires.
- Sources include emails, SFTP folders, APIs, portals and message queues.
- Formats include PDFs, spreadsheets, broker statements, SWIFT, FIX and proprietary files.
Xceptor provides ingestion capabilities designed for high-volume, multisource environments. Data arrives automatically, without manual download or sorting, proven by IDC’s findings as firms using Xceptor reported external data ingestion was 63% faster.
2) Extraction and normalisation: making unstructured data usable
Most operational inputs aren’t clean or consistent. In fact, IDC estimates that 80–90% of financial data is unstructured, arriving in formats like PDFs, emails and spreadsheets that are difficult to process at scale. Data automation helps turn messy, unstructured inputs into consistent, structured data.
- Use AI document intelligence to read PDFs and emails.
- Map fields to a standardised model.
- Apply templates that handle format quirks and edge cases.
Xceptor uses AI document intelligence and reusable templates to extract fields from unstructured sources, then normalises them to a standard data model. Confidence scores and format handling reduce the variability that typically slows teams down.
IDC’s findings demonstrated this – as clients reported a 60% improvement in data extraction accuracy from unstructured sources and a 65% reduction in manual document processing time.
3) Validation: ensuring data quality before it moves on
Apply business rules so only accurate, complete data moves forward.
- Business rules check formats, ranges and reference data.
- Confidence thresholds decide when to route exceptions for review.
- Versioned rules create a clear audit trail.
While data automation reduces time and effort, the real challenge is ensuring data is correct by applying the right controls at the right points.
Xceptor combines business rules with AI confidence thresholds to validate completeness, formats, and values before data reaches downstream systems. Only exceptions are routed for review, with full context attached.
This upstream validation is a key reason Xceptor clients saw a 41% improvement in system‑to‑system data accuracy and a 51% reduction in overall process errors across automated workflows, according to IDC’s Business Value of Xceptor study.
4) Orchestration: coordinating people, systems, and AI
Once data is trusted, orchestration determines what happens next.
- Route straight‑through cases to target systems.
- Surface exceptions with rich context for fast resolution.
- Log each step for audit and regulatory review.
Xceptor routes straight through cases automatically, escalates true exceptions to the right teams, and logs every decision for audit and regulatory review. This reduces latency and rework while preserving control.
IDC findings reported Xceptor customers saw a 41% reduction in system latency, helping teams meet cut‑offs and respond faster to breaks and exceptions.
Why data automation matters: turning operational drag into measurable performance gains
The cost of poor data shows up everywhere in operations.
- Time lost to manual handling.
Teams spend up to 60% of their week on routine data collection – copying and pasting from PDFs, hunting for files in inboxes, and matching data line by line in spreadsheets. - Quality issues that surface late.
Organisations spend 12 hours per week fixing data entry errors, with many often only caught at final outputs, breaks emerge at end of day, and minor issues escalate into month‑end fire drills. - Inability to scale.
Volumes increase without room to add headcount, while new products and venues introduce ever more formats and complexity. - Regulatory pressure.
Expectations around completeness, lineage and auditability continue to rise, with far less tolerance for error, as 82% of organisations report regularly struggling to meet reporting deadlines.
IDC’s study revealed Xceptor clients reported improvement of data quality at source and reduced manual handling throughout the process. As a result, forms moved faster, reduced risk, and unlocked measurable financial outcomes, including an annual reduction of $506,000 in reconciliation penalties.
What to look for in a data automation platform
Not all data automation platforms are designed for data‑centric workflows in capital markets. When evaluating options, use our checklist below:
Checklist
- ✓ Breadth of ingestion. Can the platform connect to your real sources and file types out of the box?
- ✓ Document intelligence built for finance. Can it extract data from the documents you process every day with measurable accuracy, at scale?
- ✓ Reusable normalisation and templates. Can you standardise data once and reuse it across multiple workflows and asset classes?
- ✓ Rules and AI confidence working together. Does the platform blend AI confidence scores with business validation to decide straight-through vs review?
- ✓ Orchestration with built-in auditability. Does it route work with context across people and systems, preserve lineage, and produce an audit‑ready trail?
- ✓ Scale and performance on your stack. Does it run efficiently in your cloud and meet latency requirements for time‑sensitive workflows?
- ✓ Proof of impact. Ask for outcomes, not only features. Is there evidence of reduced errors, faster processing, and ROI?
How data automation supports key workflows
Once in place, data automation improves multiple processes:
- Trade confirmations. Ingest confirms from multiple sources, extract key terms, validate against trades, and route only true exceptions. Outcome: faster affirmation and fewer fails.
- Reconciliations. Normalise files from internal and external systems, enrich with reference data, and orchestrate matching with clear exception queues. Outcome: higher match rates with less manual effort and fewer penalties.
- Client and counterparty onboarding. Capture documents, extract KYC and account data, validate against policy, and post clean data to downstream systems. Outcome: shorter time to trade with a complete audit trail.
- Margin and collateral. Pull calls and statements from brokers and CCPs, normalise schedules, validate calculations and post to books and records. Outcome: timely, accurate calls with better control.
Data automation as a foundation for scale
Data automation provides operational control, scalability and confidence as volumes and regulatory pressure increase.
- Explore Xceptor’s data automation platform to see how it works in practice or get in touch to discuss how we can help.
- And for the full financial analysis and methodology behind the results referenced here, download the IDC Business Value of Xceptor report.
Source: IDC White Paper, sponsored by Xceptor, The Business Value of Xceptor, #EUR153965425, January 2026