At-a-Look
- Deutsche Börse Group, a world monetary market infrastructure supplier, wanted to control knowledge persistently throughout autonomous enterprise entities – with out creating centralized bottlenecks.
- By introducing a federated knowledge governance mannequin with a tiered structure and customized roles, they enabled enterprise-wide metadata administration that balances native agility with group-wide requirements for consistency and context.
- Deutsche Börse’s method enabled area groups to doc and classify knowledge at enterprise velocity, decreased cross-team context looking, and created a scalable knowledge governance framework – proving that coordinated autonomy outperforms centralized management for complicated and extremely regulated organizations.
How do you govern knowledge persistently throughout enterprise entities – every with its personal infrastructure, methods, and working rhythms – with out stifling area autonomy?
It’s a query that drives deep pondering in even probably the most data-centric corporations – and Deutsche Börse Group was no totally different. However their reply needed to mix autonomy with management.
So that they constructed a mannequin with nuance: a federated knowledge governance framework that empowers domain-specific possession with out sacrificing excessive, company-wide requirements.
Mira Boteva, Lead Product Supervisor for Metadata Administration in one of many core enterprise segments, and Shraddha Sharma, VP of Mission Administration for Information Governance on the Group stage, joined Atlan Re:Govern to debate why federated knowledge governance beat out centralized management at Deutsche Börse – and what they realized alongside the best way.
The Federation Crucial
Deutsche Börse Group is a global change group and infrastructure supplier, guaranteeing capital markets are honest, clear, dependable, and steady by means of a spread of merchandise, companies, and applied sciences. It homes a number of totally different enterprise segments, which will increase agility but in addition signifies that centralized knowledge governance fashions danger changing into a bottleneck.
“Enterprise segments have their very own native knowledge governance groups who’re driving knowledge governance for the enterprise phase aligned with their very own enterprise methods,” defined Shraddha. “Subsequently, our knowledge governance framework can’t be a central mannequin, however reasonably federated.”
Taking Federated Information Governance From Precept to Observe
With such a various and dispersed enterprise mannequin, what does federated knowledge governance appear like at Deutsche Börse?
A Tiered Structure
Their federated knowledge governance mannequin mirrors their organizational actuality, with foundational pillars that construct upon one another.

In apply, three teams take accountability for various elements of information governance:
A central knowledge governance group units the “what.”
This group sits on the firm stage, defining requirements, rules, and steerage. A corporation-wide coverage serves as a single supply of fact, guaranteeing enterprise segments transfer in the identical course on governance fundamentals. This retains expectations and enforcement constant throughout the corporate, so groups don’t stray in numerous instructions and throw requirements out of sync.
Consider it as setting the principles of the street: knowledge possession have to be clearly assigned, metadata administration follows widespread patterns, safety classifications work the identical method throughout entities.
Native knowledge governance groups personal the “how.”
Particular person enterprise segments personal the implementation. If the central group units the principles of the street, the native groups are the drivers.
They determine how the requirements set by the central group apply to their particular knowledge domains, what their cataloging priorities are, and which use instances demand instant consideration. Native groups additionally outline enterprise glossaries that mirror their operational language, and implement knowledge governance workflows that match their group’s rhythms.
The Information Governance Council and Information Stewardship Council bridge the hole.
These cross-functional teams align enterprise models on compliance and standardization, with out dictating native execution. To proceed our driving analogy, the councils are the officers that implement the principles and clear up the accidents.
As a result of the councils embody stakeholders from totally different groups, they’re in a position to floor conflicts early (as an illustration, if two teams outline “buyer” in another way), align on shared definitions, and move alongside finest practices.
As knowledge environments change into extra distributed and workflows extra complicated, the councils’ accountability for aligning that means is crucial for guaranteeing that every one tooling has the semantic layers that mirror the enterprise – together with the knowledge that lives in people’ heads. That is key to closing the context hole (extra on that later).
Balancing Agility with Consistency
Mira likened Deutsche Börse’s construction to a metropolis with a number of buildings, every representing a enterprise area: “What we needed to do is protect the autonomy of every firm in relation to metadata governance, however on the similar time, guarantee consistency throughout the whole group.”
By treating knowledge governance challenges as coordination issues – not management issues – the Deutsche Börse group refuses to make a binary alternative between agility and consistency. Giving enterprise models versatile frameworks whereas nonetheless guaranteeing enterprise-wide cohesion means the 2 can coexist.
And that flexibility is important when making an attempt to maneuver quick sufficient to help groups that want wealthy context now – not after months of centralized, bottlenecked approval cycles.
Federated Information Governance + Context: Why Each Matter
Whereas a federated knowledge governance mannequin made sense for Deutsche Börse’s enterprise mannequin, it’s extra than simply an organizational desire. Because the race to maximise knowledge utility intensifies – and regulatory scrutiny grows – it’s change into a strategic asset.
Why Now?
It comes right down to the unprecedented demand for knowledge entry, in actual time and at large scale. Extra customers are discovering and dealing with knowledge, however the instruments they’re utilizing – every of which provides its personal semantic layer – wrestle to place all of it collectively. On the tempo knowledge is transferring, groups and context change into siloed. Add rising regulatory stress to the combination, and coordinating the 2 might be much more vital.
In a federated mannequin, context flows on the velocity enterprise models truly transfer. Native groups can doc, classify, and govern their knowledge domains with out ready for central approval on each discipline definition or entry coverage. That agility turns into crucial when markets transfer quick and laws just like the GDPR demand demonstrable knowledge governance controls.
Fixing for context by design permits Deutsche Börse to maintain transferring and innovating rapidly, with out having to retrofit methods for brand spanking new and evolving laws. Managing knowledge for the increasing regulatory surroundings can also be crucial for sustaining compliance throughout the corporate’s numerous enterprise models, every of which can be topic to a distinct algorithm. With out context baked in, that activity could be considerably extra complicated.
However when there’s a foundational plan for context, it will get captured the place it’s created, by the individuals who perceive it finest and with guardrails to make sure it meets enterprise requirements. That permits governance to scale with consumer demand, as a substitute of changing into the friction level that stalls it.
The Path to Federated Information Governance
Past context, federated governance wants prioritization, automation, and a transparent plan for metadata administration as a way to succeed. However these wants solely change into clear when groups begin digging in, cataloging knowledge, and capturing context at enterprise scale.
So when Deutsche Börse launched their Information Cataloging pilots, they intentionally selected two totally different knowledge merchandise:
- One ran on trendy tech with clear possession and better-documented metadata.
- The opposite lived in legacy methods the place possession was murky and knowledge flows have been opaque.
Each revealed the identical elementary fact: Cataloging has a knowledge-capture downside.
“Information cataloging is just not a simple activity. It wants human efforts and area experience,” Shraddha defined. “We would have liked to have enterprise alignment and prioritization earlier than we determined what goes into the catalog and for what goal.”
This perception reshaped their complete method. Merely pointing a instrument on the knowledge property and anticipating significant context to emerge would by no means work. Somebody has to know what “buyer” means in a selected area. Somebody has to doc why a sure discipline exists and who makes use of it. Somebody has to determine which datasets matter most to be used instances or regulatory necessities.
In a federated mannequin, that “somebody” is distributed throughout enterprise segments – which is each a power and a problem.
| The power:Area specialists who truly perceive the info are those documenting it. | The problem:These area specialists want the time, instruments, and incentive to do that work, and to make sure their efforts tie to enterprise-wide requirements. |
That led Deutsche Börse to 3 absolute wants that needed to be in place for federated knowledge governance to work.
Three Necessities for Information Governance and Information Cataloging
1. Strategic Prioritization over Complete Protection
The group at Deutsche Börse knew that making an attempt to catalog every thing without delay could be futile. As an alternative, they began on the bottom stage, getting suggestions from totally different groups and prioritizing probably the most crucial data.
“We collected necessities throughout the group – which included the necessities from a enterprise, IT, and knowledge governance perspective – and we reached a stage of 70+ necessities whereas aligning with 4 or 5 enterprise segments within the group,” stated Shraddha. “Then we compiled into key focuses, which included widespread knowledge governance necessities like metadata, documentation, classification and lineage, and so forth.”
Shraddha and Mira recommend asking enterprise models for enter like:
- Which knowledge merchandise allow our most dear AI use instances?
- Which datasets carry the very best regulatory danger?
- The place are we presently blind to lineage or possession?

Gathering enter from totally different groups not solely helps achieve buy-in from the cross-functional stakeholders who might be impacted by any course of modifications, but in addition ensures that they’ll present the appropriate context that can make federated knowledge governance work inside their enterprise unit.
2. Automation to Cut back Handbook Burden
By way of its knowledge governance roll-out, the Deutsche Börse group realized that making adoption simple for all enterprise models required automation. If each discipline definition required hand-coding, stewardship wouldn’t scale – and it positively wouldn’t preserve tempo with demand.
Deutsche Börse is focusing closely on automation – from metadata extraction to lineage mapping – to reduce the handbook work required of area specialists.
Automation “continues to be an area the place we’re collaborating intently with Atlan to push the boundaries a bit additional,” stated Mira, acknowledging its function in knowledge maturity and innovation.
3. Clear Processes for Metadata Administration
Who approves enterprise glossary phrases? How do knowledge contracts get created and up to date? When does an area definition battle must be escalated to a group-wide council? These course of questions proved simply as vital for Deutsche Börse because the expertise ones.
Learnings from the Information Governance and Information Cataloging Pilots
Deutsche Börse’s pilots uncovered a crucial profit: Uniting enterprise and IT by means of shared documentation dramatically improved effectivity. Information groups stopped leaping between emails and Slack threads trying to find context. Enterprise customers may truly perceive what knowledge meant with out reverse-engineering logic from code.
That’s what context appears to be like like in motion. When everyone seems to be talking the identical language, the context hole closes, confusion and miscommunication lower, and groups change into extra productive.
And in a federated mannequin, it occurs regionally first, then connects to enterprise requirements by means of ruled processes.
Customization as a Characteristic, Not a Bug
Most enterprise software program guarantees to work out of the field. However when the organizational construction is genuinely complicated – a number of enterprise entities, every with autonomous operations – that field doesn’t all the time match the enterprise.
For Deutsche Börse, this implies software program have to be versatile sufficient to reflect how their group truly works, not the opposite method round, going past normal configurations to federate knowledge governance at scale.
“Customizing normal roles, into federated admin and knowledge governance roles for a single area that match our governance construction, was the primary problem that we had throughout our journey,” recalled Mira.
However the effort was worthwhile: Deutsche Börse personalized Atlan‘s present options, launched new ones, and created customized roles to help federated entry. That allowed them to embed context in a method that match the enterprise, making knowledge simpler to know, belief, and work with. Consequently, customers felt empowered to leverage knowledge for decision-making, rising adoption throughout enterprise models.
Customizing Past Commonplace Configurations
A normal “admin” function in Atlan assumes centralized management: one group, full entry, uniform insurance policies. However Deutsche Börse wanted federated admins who may govern their particular area autonomously whereas respecting enterprise-wide guardrails. That required function hierarchies that didn’t exist in the usual configuration.
Equally, they want governance roles scoped to particular person enterprise segments. As an example, an information steward in a single entity had to have the ability to doc and classify their knowledge merchandise with out inadvertently affecting one other phase’s catalog.
This stage of customization isn’t a workaround – it’s important alignment between governance mannequin and organizational actuality.
4 Classes for Federated Information Governance
All through their journey, Mira, Shraddha, and their group honed in on vital recommendation for friends constructing a federated knowledge governance mannequin that’s regulatory-ready:
1. Match the info governance mannequin to the organizational construction
If the enterprise structure is broad and composed of autonomous enterprise models, a centralized knowledge governance mannequin could create extra friction than worth. Federation preserves native agility whereas implementing enterprise requirements – crucial when methods and knowledge customers want context on the velocity of enterprise operations.
2. Deal with cataloging as a strategic initiative, not a technical deployment
The “catalog every thing” method is ready as much as fail. As an alternative, begin with enterprise alignment:
- What issues are we fixing?
- Which knowledge permits enterprise use instances or satisfies regulatory necessities?
- Who owns the area experience required to doc it correctly?
Human enter and prioritization aren’t containers to verify – they’re important options.
3. Select strategic partnerships
As an alternative of merely shopping for a Catalog instrument license, Deutsche Börse shaped a strategic partnership with Atlan, centered on operational and cultural transformation. When governance necessities shift – and they’ll, particularly as regulation and consumer calls for evolve – having associate help in fixing these issues will make adapting that a lot simpler.
Look past the purposeful capabilities and on the help supplied alongside the best way. This helps make sure that implementation is match for goal, primarily based on the group’s wants.
4. Challenges validate the method
If knowledge governance have been easy, federation wouldn’t be crucial. However challenges validate the federated mannequin.
The lesson for different enterprises? If the organizational construction is complicated, the governance tooling must be too – and customization is a characteristic that permits sustainable scale, not a bug to be prevented.
The Path Ahead
Deutsche Börse’s story isn’t about reaching good knowledge governance in a single day. It’s about designing methods resilient sufficient to deal with complexity, versatile sufficient to help each current and future demand, and rigorous sufficient to move regulatory scrutiny.
“We’re driving our knowledge governance not solely on the technical instrument perspective,” stated Shraddha. “Somewhat, on the attitude of operational and cultural transformation within the group.”
From that vantage level, federated knowledge governance is extra than simply an org chart choice – it’s a wager that distributed possession, when correctly coordinated, yields higher outcomes than centralized management.
For enterprises caught between velocity and regulatory rigor, that wager is trying to be one of the dependable and sustainable paths ahead.
What Can You Do with Federated Information Governance?
Atlan takes governance from passive to energetic, so you possibly can flip knowledge and AI into worth – with velocity, management, and precision. Guide a demo to see how.
