A graphic language for articulating the state and boundaries of complex systems at a high level. The goal is high level abstraction so that false reductionist data or approximation isn't allowed. High Level Metaphor is used to convey meaning which can then be expanded on.
System Thinking Graphorisms for Capital Allocation
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2. systemsthinking& Graphorismsfor capital allocation Nick Gogerty Seekfeedback of prototype project Describe complex problems & environments as systems Graphorisms = graphic models & metaphors Allocate capital to stable, long lived, higher margin competitive systems
4. process Cycles or repeats growth clockwise shrinkage counter clockwise Abstract with open boundary Operates in an environment Interacts at boundaries Purposely shown as abstract Stasis is death Has limits (input, flow or output)
5. narrative systems thinking Talking, showing and walking through some problems Talk through the paths normal accidents: hidden system paths
6. shared perspective & people’s goals Growth/decline (increasing or decreasing an externality of the system) Stability (maintaining the status quo / usually focuses of risk management prevention of instability) Termination of the current system (wholesale change)
7. critical instability & system capacity risk tight coupling grains of sand/avalanche model (log normal events) from linear input straw on the camels back not important Why? Tension & Capacity
8. butterfly wing flaps aren’t important: system tension (sensitivity) is Causal loops attenuate (over link focus is useless) and counterproductive “reductionist folly” Tension among components and process is important ”specificevents are irrelevant" Understand homeostasis boundaries of stability / failure shift
9. Risk types Concentration (low diversity, low redundancy) Tight coupling /Too efficient optimized Over capacity / tension Failure by design: System over optimize = normal accident Model truth: All components fail. All systems end.
11. System questions make a graphorism required elements: relationship, state and boundary What are the actors/resources and context? What is the system, process, output or input to be explained? What are the boundaries and capacities of the system (links, resources)? What is the state or dynamic to be shown? Identify tensions (safety stability v. efficiency)
12. Graphorisms: goals and uses of Graphic metaphor + aphorism not complete state diagram language for (Subject, object verb and state) representations designed for cocktail napkins graphical abstractions for how system growth, change and end fuzzy flow chart or operations diagram easy to learn / share
13. Graphorismrules Not literal representation: real outputs are sloppy and lumpy not smooth Purposely abstract away details of system ”reduce false complexity completeness” Presented as open for debate Graphorism requires context Layer specific "not wholistic” Multiple graphorisms used for components, relationships and conditional states
14. elements Process (growing, shrinking, dead, failing) Resource competition "crowding/capacity" Sub system components (linked/related) Scale variant (limited presentation) = more is different (network of networks) Process environment "stable, failing to collapse, growing, tightly coupled, loosely coupled" Boundary (input, output, capacity for flow) Fuzzy noise, error bounds / futility of detailed measurement
18. rules & universal system ?’s All systems end. When? All components fail. What happens? All systems linked? What links count? All things change. What next adjacency? Everything is finite? What are capacities tensions?
19. Sources of risk system failure Capacity / tension/ brittleness Supply / externality Hidden path (normal accident) Age / component failure
24. Graphorisms may help communication of "wicked problems" No unique "correct view of the problem” Many possible intervention points Often a-logical, illogical or multi-valued Different views of problem and solutions are contradictory Problem solver out of contact with problems and solutions Considerable uncertainty / ambiguous Problems are interconnected to other problems Data are often uncertain or missing A B
26. systems thinking applied to capital allocation to make money Can you identify competitive cluster & lifecycle stability? What is source of value / pricing power? What are relative growth factors? How are hidden paths minimized?
27. not value or growth investing Systems thinking investing “thoughtful capital allocation” Process driving margin & capital returns Process driving sustainability Capacity constraints & tension
28. first rule don't lose capital / value = first rule survive! always trade safety for efficiency or speed Goal compounding growth (system time) risk =loss of value creation systemin portfolio (not volatility) Lumpy (true natural) not false smooth
29. price asabstraction / opinion Price is 2 opposing views about value expressed at a point in time 99% can’t beat buy and hold (don’t understand value creation process) 99% of price generation is useless information about the value creating system
30. 1. thinkin competitive clusters Customer choice set Seek stable low innovation = niche survival Inverse Gresham's law (process good crowding) Winner take most Capacity boundaries? Niche capacity relative to what ?
31. Unit of moat =innovationarchetypes (10 Doblin) Business Model innovation: Networking innovation: Enabling Process: Core Process: Product Performance: Product System: Service: Channel: Brand: Customer Experience:
33. 3 blind men view the elephant moat Customers know what they like may not be able to articulate rational Competitors know what they can’t do Neither may the know the how, what or why of the moat
35. sloppy process of system life details are less important than states “moat” margin homeostasis Understand tension among componentsis risk Carryingcapacity everything is a niche
36. risk inflection points tight coupling "tension" Events are less important (system time counts) Capacity demand? Source of moat /cluster shape
37. Key questions ??? All things end. When? What is the relative value creating process for survival? How stable is the shape of the cluster and evolution in the niche? What are the boundaries and carrying capacities?
38. Buffett example:Lubrizol $9b Complex entity (system of system moats) portfolio of clusters multiple dominant clusters moat shows up in ROC long term position (critical pieces of bigger systems) low price sensitivity Stable 40% dominance in some markets Distribution, technical, brand and price leadership moats Visible in high historical ROEs stable cluster (out of commodity box) Management knows how to allocate to earn cluster returns