If you get lost - please click away or look at the UI Cheat Sheet.

In general AI techniques offer great potential in searching, revising and reframing content. However the mathematics behind the implementation is one of averaging and popularity. In tricky situations, i.e those we describe as complex, progress often comes from the outliers - the different and the divergent - not from the consensus.

Nobel Prize Winner Albert Szent-Györgyi is noted for his comment that: "Discovery is simply seeing what everyone else has seen - but thinking what no-one else has thought."

In many situations you want to hear from all the differing options not just the majority view. The structure of this site preserves these essential differences.

Dive In

The best way to appreciate how all this works is just to dive in and play!

Learning About the Thinkers

For those with a familiarity with one of the leading thinkers (icon 🧑‍💻) in a topic start by validating the source materials - the QSets (icon 💬). These are summaries derived for different aspects of the authors writen works (click Voices ). You can click on a particular aspect - for example how the ideas can be used (click How-To) or the jargon used (click Keywords ). Together this gives an introduction to the level and accuracy of the summaries produced as the basis of the creative comparisons described next

Gregory Bateson

For example if you are familiar with the work of Gregory Bateson check the description of his work and the references used to form the QSet profile reference Voices and then see how he interrogates a topic reference How-To or see his work as a process chart reference Nutshell

These QSets are the stable basis on which further analysis is conducted, they capture each authors ideas expressed in a standard form, for example Gregory Bateson did not have a ‘methodology’ or produced process maps of his work. There is more detail on QSets here QSets - Perspectives in Practice

Getting creative

Once the often voluminous and eclectic ideas of the various authors are available as QSets these can be used for a set of questions to compare and contrast (icon 🎭). Whereas the prompts used to form the QSets are standardised and universal the prompts used in analysis are likely to be specific to the analyst and their grouping of authors.

Structured Prompts for Analysis

Some examples of the range (and style) of prompts and the information they produce from working with the QSets, .

A Bit of Fun (but learning too)

Take a look at the 🎭Styles section (click Persona ) to see the Voices making their case in the style of different personas. As well as for amusement it is interesting to see the different emphasis and use on material made in the different situations.

Example

Compare the tone and evidence of the - snake-oil salesman with the - academic or researcher.

Want to Learn More

The Implementation section (icon 🛠️) is (for me) the interesting bit but also the part which is most difficult to write (documentation!).

If you want to build you own system (from Open Source components) see Constructors Guide.

If you have the time or interest in the critical mechanism/technique of Semantic Normalisation and Content Levelling or in my musings About - Architecture

A must read is the section on Pollution (see Pollution - My special debt to Dave Snowden or how the initial choice of reference material to form the QSets can be easily contaminated by even small amounts of ‘buzz-word’ compatible material. It is a vivid demonstration of The Linguistic Torpedo