Provenance for Decision-Making
(c) Richard Arthur, 2020

Provenance for Decision-Making

Decisions drive the actions that shape our experience of the present and the unfolding future. We make those decisions within the limits of what the present moment exhibits to us and what our past experience has collected.

(see also richardarthur.medium.com)

In making consequential decisions, professionals bear the burden of accountability to act wisely within the confines of confidence, time to act, and resources to expend. To clarify which path to choose, we seek tools and tactics to mitigate “VUCA” (volatility, uncertainty, complexity, & ambiguity).

The Awakened Enterprise concept of these articles explores an approach to achieve greater operational robustness by incorporating context into the pedigree of crucial decisions. Two supporting articles set foundational concepts: Despite Uncertainty (ability to act in a VUCA environment) and Digital = Magic (human + machine teaming).

Aspirational Possibilities

Consider…

An engineer approves a design, recording assumptions made in prioritizing selection criteria to choose between alternatives — ready for reassessment upon discovering a contradiction to an assumption in the future.

A court grants a conditional variance on a building code, asserting the circumstances for reversing the decision — and limiting use as precedent.

A marketing team puts a product launch on hold, placing a detailed plan on the shelf — ready to execute when triggered by key metrics of the market.

An oncologist forms a plan for her patient, monitoring change to the tumor, to qualifications for reimbursement, and approvals of novel therapies.

In each case, the decisions and actions recognize how the unknowable future and VUCA limit clarity and confidence in the present. To overcome conventional conservatism, deliberative delay, and other forms of risk-aversion, the decision is explicitly framed as a plan rather than recorded into an archive— explicitly anticipating change and adaptation.

Information Infrastructure

Digital systems embody the creation, flow, consumption, and archival of modern thought and action, from raw data into refined information, to a still-emerging field of knowledge capture and management. Recognizing the value of data, we even created data-about-data (termed metadata).

Threads and Twins

The “digital thread” concept refers to a tactic to improve enterprise coordination and decision-making clarity by developing infrastructure and processes that interoperate and exchange information across distinct systems and organizations (e.g., leveraging in-use field data for calibrating product design models).

Integrating multi-stage tasks (and the hand-offs between them) requires structural commonality of both data and software — such as coherent “genealogy” data over the design-make-operate-maintain lifecycle of a product. This compatibility can be valuable to urgency or complexity driven assessments, such as when performing root cause analysis of a product failure (e.g., comparing as-designed vs. as-made part history)

Through the data and infrastructure of a digital thread, we can connect specific physical products with individualized digital models, called digital twins. Digital twin models embody an operationally valuable level of understanding of the physics of the product’s operation, informed by continually-updated data from sources such as live connected sensors.

For example, sensors in your car’s tires could monitor tread wear (product performance) or road conditions (operational environment). Tire replacement would be based on product condition rather than a calendar or number of miles. Dynamic traction control in the car would be informed by information on the ground (literally).

Data Lake to Data Swamp

To implement a digital thread, previously-separated databases may be consolidated or federated into a “data lake” to support cross-functional unified query and access to systems-of-record previously confined within organizational silos. There are several means by which this pristine data lake metaphor unfortunately can degrade into more of a data swamp.

“Quod Me Nutrit, Me Destruit” (What Nourishes Me, Destroys Me) — attributed to Christopher Marlowe

Targeted Convergence Corporation (TCC), founded by Texas Instruments engineers, observed how repositories for engineering analyses fall into disorder and disuse over time, due to systemic and behavioral problems adversely affecting implementations of Knowledge Management systems. Consider:

  • Legacy data expands with continual addition of new data — and since productivity focuses on action, documenting is often treated as an overhead task; performed grudgingly and only as minimally required.
  • As more data are captured into your system, ever-longer result lists get returned from each search query, expanding the burden of filtering.
  • The usefulness of potentially relevant archived analyses will be limited by the user’s trust in prior process rigor, contextual assumptions, etc.
  • Users become inclined to simply recreate the target data (preferring to trust their own expertise), introducing redundant if not inconsistent data.
  • This leads to a vicious cycle of degradation as the content of the data lake becomes evermore redundant, untrusted, and obsolete and therefore the results of queries increasingly less relevant and valuable.

TCC then asserts the purpose of an organization is to master decision-making in their field of expertise and the knowledge systems must serve rather than burden decision-making.

Index by Decision

The digital thread’s intent to create/collect data, publish an index and provide access does not in itself assure value. Sensible traditional mindsets might index enterprise data to enable searching by product line, part family, analysis type, test facility, model number, etc.

However, if we recognize the central importance of the decisions made from the data and analyses, we can consider asserting a framework, overlaying (highly consequential) decisions as the primary search index.

‘Searching’ is an activity — ‘Finding’ is a result.

The main assertion driving the concept of Decision Provenance is the most valuable “index” to find useful previously-captured knowledge is based upon the list of decisions informed by all that archived knowledge.

Decision Provenance

To build a decision-centric repository, key contextual information should be recorded for decisions of potential interest in subsequent queries.

Scientists employ “Data Provenance” to improve understanding and reproducibility of experiments and analyses — for example, the DT&A (https://dataandtrustalliance.org) suggests metadata covering data types, lineage, source, generation method, generation date, intended use, etc.

Decision Provenance metadata would provide similar details on the origin and lineage of decisions of significance — the Who, What, Why and How, and potentially adaptations (genealogy) over time.

Consistently capturing the metadata needed as provenance would become part of the standard process of making consequential decisions (review, budget approval, customer/patient visit, rendition of verdict, etc.) and collated with familiar documentation (shipping manifest, service bulletin, patient record, legal brief, air worthiness directives, etc.)

Capturing metadata courteously may reduce reluctance to complicating tasks or usability of present software tools — (for example, by employing low-friction entry — such as conversational AI like Google or Amazon Alexa).

By formally recording caveats, concerns, assumptions, and unknowns — decision-makers can move past present deliberation and analysis paralysis, with confidence that emergent clarification and change can robustly trigger re-assessment of the decision, with future-granted insight.

This re-assessment may then be carried out with the full benefit of prior efforts considering relative merits of alternatives, processes to reproduce supporting analyses and previous results, mappings between dependent decisions, and even cross-linking via related assumptions and unknowns.

While legacy processes may informally capture such information already in annotations of archived reference documents (e.g., slides, spreadsheets, or email) — the explicit mapping of contextual metadata into a searchable knowledge representation will be a foundational function of the Knowledge Steward (discussed in more detail in Part 3).

Cultural Transformation

The degree of candor and transparency suggested in Decision Provenance may require cultural shifts that some would consider radical. Therefore, leadership support and community acceptance will be crucial to empowering and emboldening genuine participation.

“Real knowledge is to know the extent of one’s ignorance.” — Confucious 孔子

There must be acceptance of qualified accountability — moderation in judging with hindsight, fully considering the constraints and context for the decision. This includes rejecting any delusions of infallibility — welcoming error as learning (the primary meaning of the Latin root “errare” is “to wander”, as in an unanticipated direction, not necessarily “wrong”).

C4ISR-oriented tools and culture may offer strategies to more confidently traverse this path between exposure to repercussions vs. risk-aversion behaviors that dampen potential for impact. Bottom-line, avoid the traps of irresponsible caution.

Awakened Enterprise

An Awakened Enterprise acknowledges the limitations of knowledge and continuity of organizational memory. It systematizes self-reflection and humility to promote agility and robustness in decisions made in the present and future.

Decisions of emergent interest may now be revisited with greater clarity into the factors recorded in the provenance. Such metadata facilitate enterprise collaboration as an organizational archive of criteria for trade-off evaluation, analytical tools and practices, opportunities to discover unknowns or confirm / disprove assumptions — and perhaps most significantly, reliable continuity in recalling the next steps to take as future information, resources, and opportunities unfold.

Further, a Decision Provenance system can perform searches into the future as a hedge against flaws deriving from present-day unknowns, assumptions or evaluation criteria — which may be clarified in future hindsight. That is, we can make decisions in the present — with knowledge that an informational “safety net” can keep an eye out for important developments in the future for which we may revise our decision.

When fully assimilated into crucial decision-making processes, a prevalent awareness of this facility to leap between present and future lends confidence to swiftly act despite uncertainty. This essential attribute of The Awakened Enterprise will be described as the “continuum mindset.”

? 2020 All Rights Reserved. Revised 2024.


Continued in

The next article discusses organizational mindfulness — holistic awareness spanning enterprise silos, supply chains, and operational product fleets — as a strategy to counter volatility, uncertainty, complexity and ambiguity.

See also:

From Cassie Kozyrkov :

  • Success is Assured,” Cloft, P., Kennedy, M., Kennedy, B., Productivity Press, 2018, ISBN 9781138618589, see also Targeted Convergence.
  • Attribute metadata are also thoroughly explored in the concept of Design Rationale, which may provide insight into implementation and adoption obstacles, such as tedious and restrictive detail requirements.
  • Beautifully-rendered futuristic vision — complete with AR/VR and nanobot manufacturing: Lockheed Martin: Future of Work (YouTube)

Brian Kennedy

Founder & CTO, Targeted Convergence Corporation

3 年

In the quest of organizational learning (continuous improvement of that decision-centric knowledge repository), you introduce the idea of a Knowledge Steward. Getting companies to invest in people focused on knowledge that might be useful in the future can be tough. Often it can be easier to get companies to invest in “Decision Mentors” (or as we call them in our book, “Success is Assured Mentors (SAMs)”) who play the role of helping people make TODAY’s decisions better by leveraging the best techniques (visual models, including Decision Maps). In helping them with TODAY’s decisions, for no extra cost, they are also helping them develop out a more useful Decision Map, which will then be inherently more reusable (given its Set-Based nature to deal with the VUCA). With a fairly small (like 5 min/day) investment, such Mentors can provide tremendous benefits to a decision-making effort. And in doing that across multiple such efforts, they can play the critical role of connecting the right people, and connecting the right knowledge to the decisions that can most benefit. All justified by today’s decision-making. That covers most of what you need from your Knowledge Stewards without any extra investment. The rest can often be covered by simply making it visible that they are the SME / Steward of that growing visible knowledge (the Decision Map) that everybody’s decision-making efforts are benefiting from. Another inexpensive way to enhance that Knowledge Stewardship is to ask them to make visible their vision of where that decision-centric knowledge repository needs to be 5 years from now. That has value today; and it gives them the opportunity to spend a little time focusing on that “Looking toward the future” that you mention.

Brian Kennedy

Founder & CTO, Targeted Convergence Corporation

3 年

You raise another important point in discussing Decision Provenance: consistently capturing the knowledge with low friction (ideally, passive and automated). Agreed! The most important decision makers tend to be too busy with today’s decisions to consistently find time to capture all the knowledge they’d like to capture for future decision-making. Given the VUCA, there is necessarily great uncertainty in what will be valuable in the future; whereas the value in better making the next set of today’s decisions easily turns the focus to that. So, your decision-centric knowledge repository cannot require EXTRA EFFORT; if it does, it will end up not being fed. It needs to get built naturally and automatically from how you best make today’s decisions. There’s further benefit from that. How do you know your decision-centric knowledge is actually reusable if you have never even used it the first time? What we show is that building a Set-Based Decision Map is the best way to get a group of decision makers to quickly make the best possible decisions in the face of VUCA today. In doing so, with no extra effort, they leave behind that Decision Map that has had its first use and it is Set-Based, making it inherently more reusable. Further, again with no extra effort, they leave behind the K-Brief where they made their specific decisions based on that Decision Map, which is the first key bit of Provenance for that Decision Map. When someone reuses that Decision Map to make their decisions, they need not worry about future decisions, they can just focus on what needs to change to cover the future of their own decisions. And with no extra effort, they leave behind an improved Decision Map, along with another bit of Provenance.

Brian Kennedy

Founder & CTO, Targeted Convergence Corporation

3 年

Many great points! You raise the knowledge paradox: “Knowledge that does not change behavior is useless. But knowledge that changes behavior quickly loses its relevance.” That is interesting justification for separating the knowledge we capture for future use vs. the knowledge we capture only for its current use and its historical value. In our K-Briefs we capture visual models of whatever knowledge you need to collaborate effectively with the decision-makers and SMEs to make today’s decisions. In that effort, some of that knowledge gets structured into Decision Maps that capture the knowledge of how the complex set of decisions impact your targets. That Decision Map is capturing the why’s from both sides (your motivation, and what limits how you achieve that motivation), not just for a single point in the decision space, but for all infinite points in the decision space. That is important for the reasons you bring up: (1) The knowledge paradox… your decisions will impact your world (or there’s no point in making them), and thus you need to know not just their immediate impact, but their ultimate impact. (2) Not only that, but VUCA demands you take into account your imperfect knowledge of the state of the complex world you are trying to impact; not only now but in the future, where your knowledge of the future is necessarily imperfect. You wisely mention building a “decision-centric repository”. That is what our Decision Map is: a visual, decision-centric repository designed to be your best practices for how a set of decisions should be made going forward, based on your knowledge. To be effective, that decision-centric repository must deal with the VUCA. We accomplish that by making that repository Set-Based…

Tom Shaginaw

Engineering Executive

3 年

Hey Rick - great stuff... the impact of Decision Provenance in streamlining "Knowledge Transfer" during a time of heightened personnel transition is huge. 28.6M baby boomers retired in Q3 2020 according to Pew Research. What knowledge (beyond data) walked out the door with them? What effort (time, money) did it take to scrape the knowledge that did transfer?

要查看或添加评论,请登录

社区洞察

其他会员也浏览了