I’m excited to share a project I’ve been working on for a number of months
called Substrate. Fair warning: it’s quite ambitious.
Ok, what is it exactly?
Substrate is an open-source framework for human understanding, meaning, and
progress.
What the hell does that mean?
Yep, fantastic question. The purpose of the project is to
make the things that matter to humans more transparent, discussable,
and ultimately—fixable.
Interesting. What kinds of things?
Yes, exactly. Here are some of the main ones we’re starting with.
When we say “human understanding, meaning, and progress” in the description,
we’re talking about these types of conceptual objects:
Ideas — A list of novel human ideas
Problems — A list of our most important human problems
Beliefs — A list of beliefs about the world
Models — A list of models for conceptualizing reality
Frames — A list of narratives/lenses for perceiving reality
Solutions — A list of potential solutions to our problems
Information Sources — A list of sources of data and information
People — A list of humans
Organizations — A list of organizations
Laws — A list of laws that were proposed and/or passed
Claims — A list of truth claims
Votes — A list of votes and results from legislation/elections
Arguments — A list of arguments that have been made
Funding Sources — A list of groups that fund various projects
Lobbyists — A list of lobbyists and their agendas
Missions — A list of human ideas
Donations — A list of donations made from X to Y
Goals — A list of potential human goals
Facts — A list of verified truth claims
Each of these will be an actual list, maintained as a repository within
Github. Each list will have a schema, similar to this one for the
Problems
repository:
Problem Name
Problem ID
Problem Description
Toxic Drinking Water in Poor US Towns
PR-1097
Many towns with populations with low socioeconomic status have water that’s
not safe to drink.
Deforestation of Our Rain Tropical Rain Forests
PR-33082
Our rainforests are being destroyed, which will negatively affect humans on
Earth.
GitHub – Substrate/Problems: The Problems people consider worth working on.
A collection of the problems people feel need to be tackled.
github.com/human-substrate/Problems
And all of these live within an over-arching
Substrate Organization
within Github.
Substrate
An Open-source Framework for Human Understanding, Meaning, and Progress
github.com/human-substrate
This structure will allow the entire open-source community (i.e., the world)
to contribute their own Problems, Claims, Sources, Frames, Goals,
etc., that others can use.
Ok, I think I’m starting to get it, but I need more.
Fair enough.
One way to think about this is as
a way to put handles on things that are hard to discuss.
Here are a couple of examples.
Here are some more examples of Substrate Components in everyday scenarios.
Let’s look at an Argument component.
Think of a common argument we might hear on any given day about whatever
topic. This one is about recycling.
I don’t know why you recycle, man. It’s a total waste. It costs so much to
recycle right now and the programs are poorly run, so it’s not actually
benefiting the environment. Like, I’d do it it it worked, but it doesn’t.
Some guy watching you put a can in a recycling bin
We’re confronted by this type of thing constantly. About things like
recycling, but also about things that matter much more, like politics.
What Substrate will do is take an argument like this recycling
example, and turn it into something like this:
A MermaidJS Visualization of this claim (Using Sonnet 3.5) Click for full
size.
Each of those objects in that diagram will be Substrate Components! The
Claims, the Sources, etc.
Here’s what the Arguments repository might look like:
Argument Name
Argument ID
Argument Description
Recycling Plastic Isn’t Worth The Effort in the US
AR-28445
It’d be good to recycle plastic if it were actually worth the effort, but
current systems are so inefficient that they cost more energy than they
save.
Examples of Organizational Sources
When people make truth claims, it’s important that we be able to fact-check
or research those claims to see their support. Substrate does this by
maintaining a list of Sources that we may or may not trust for new
information, such as an Organization, or a Person (both of
which are also Substrate Components).
When someone makes an Argument, or a Claim within an
Argument, it can be linked to Sources that people can choose
to trust or not trust.
But either way, people can see the full argument and its support in one
visual!
An example of Argument → Claims → Sources
This is why we’re so excited about Substrate. It is going to make things
that used to be murky and opaque into transparent objects that can be
inspected, analyzed, and discussed.
OLD: “You’re just not able to counter all my arguments and evidence.”
NEW: “Here’s my argument (throws it up on a shared viewscreen). Show me which
claim you disagree with, or which source you disagree with that backs up
those claims.”
This will enable far more logical and precise discussions!
Ok, sounds really cool. But what do you actually do with it?
Intrigued but practical
Yes, so now we’re getting to the best part—how to actually use this thing!
First, keep in mind that this is very early. We’re just getting started. But
we already have many use cases planned that we want to talk about below.
Also, keep in mind that some of these you can do starting immediately, some
will take time, and many of them will get magnified significantly by AI.
Let’s take a look.
Visualizing Your Being Using Substrate
Many people have trouble describing who they are and what they’re about.
With Substrate you’ll soon be able to just describe yourself in text, audio,
or video, or even have a conversation with an AI—and it will be able
to both articulate and visualize you.
And if you
share your context or Substrate representation with others, they’ll be able to see what you’re about as well.
Substrate will be a wonderful way to start learning about someone, e.g.,
what they care about, and how they see the world.
Imagine having something like this available when you look at someone, or
research them.
A Visual Conversation Starter
This will be a wonderful way to learn about what someone really cares about,
and how they see the world.
They believe the most important Problems are PR-1097, PR-2210,
and PR-2231
They believe the best Solutions are SL-1128, SL-3110,
and SL-1012 to those Problems.
They intend to track progress using the following KPIs.
Imagine matching up with someone like that across multiple axes:
Values
Goals
Beliefs
Preferences
Etc.
We’re very excited about the potential to spawn more human connection in
this way.
Another great use will be when a given narrative, or rumor, or conspiracy
theory is going viral. We’ll be able to use Substrate to analyze the
Argument or Claim and publish the results.
Here’s an argument that we never went to the moon.
Click for Full Size
Using this kind of visualization, you’ll be able to see (for example) that:
They’re making the following Arguments that SL-19992 and SL-44091
are the best Solutions: AR-7781, AR-9812, and AR-9992.
Which include the following Claims: CL-1111, CL-2309, and
CL-0002.
Which we fact-checked using the following Sources.
Which resulted in the following Results (Claim = False / True).
Which—using the following methodology—leads us to this
Conclusion.
Think Snopes, but as a graph that everyone can visually explore.
What’s amazing about this is that someone from any political background can
now evaluate this with more transparency than has ever been possible. They
can SEE the Arguments, the Claims, and the Sources that
were used to validate them, etc. It’s all right there.
And, of course, people will be able to add all their favorite sources of
ground truth, so they can make sure the Substrate visualization is
trustworthy to them. At that point, the question just becomes which sources
you trust, but you can then see how the logic and sources flow to the
conclusion.
I think this has the potential to significantly strengthen our shared
understanding of reality, and will allow us to disagree with each other in
a far healthier way.
Here’s one for the claim that there’s a tiny teapot orbiting the sun.
These aren’t using Substrate yet, but they will be soon, making each
component of the argument community-sourced and transparent.
Yeah, yeah, yeah. AI this—AI that.
I hear you, but this is different. This isn’t about AI. It’s about human
meaning and progress. AI is just a tool for helping that along.
Consider this about what you’ve heard so far about Substrate, and what’s
simultaneously happening with AI:
Context sizes (prompt sizes) are increasing
Inference costs (the cost to run AI) are plummeting
What this means is we can Chocolate-Peanutbutter
Substrate with AI’s ability to hold multiple things in its mind at
once.
So we can feed AI with our Goals, KPIs, Risks, etc.—and
have it help us untangle them and take action.
Here are some examples that we’re most excited about.
One big problem with science is that it takes so long. Look at the set of
things that have to happen:
It’s hard to come up with ideas.
It’s hard to design experiments.
It’s hard to find funding to do experiments.
It’s hard to interpret results.
It’s hard to publish results.
It’s hard to get the results in front of the right people.
So now imagine we have our list of Problems, a list of Proposed Experiments,
a list of Funding Sources, etc. They’re all there.
Now AI can help us do most every step in that chain—completely automated!
Coming up with—or collecting—ideas and hypotheses
Designing experiments
Collecting and evaluating the best funding sources
Requesting funding by writing a perfect pitch
Helping set up the experiments (eventually with robotic help as well)
Running and monitoring the experiments
Interpreting results
Writing the paper
Sharing the paper
So in other words:
Hypothesis ➡️ Proposed Experiment ➡️ Look Up Funding Sources ➡️ Acquire
Funding ➡️ Run Experiments ➡️ Publish Results ➡️ Make Progress
In the beginning, this will still require a lot of human help—especially at
the idea and the running of the experiments phases. But over time AI will
only become more useful in those areas, too.
We’re talking about accelerating science!
It’s easy to get away with corruption and crime because not enough people
are watching for it.
Gangs, cartels, embezzlers, and dirty politicians leave evidence all over
the place all the time. But small pieces. Scattered about. Across thousands
of different locations and points in time.
It usually takes a major journalist team—or a massive law enforcement
operation—to dump thousands of hours of highly skilled work to
collect all the evidence. Then you have to do the analysis on it. Then you
have to formulate the conclusions. And then you have to document it all.
Most crime and corruption slips by because nobody’s watching. There aren’t
enough law enforcement groups. There aren’t enough journalist teams. There
aren’t enough people with the skills to do this stuff—let alone the
resources to support them doing it.
But now let’s take Substrate with some AI added on, and let’s think about a
dirty politician who is taking massive gifts from a particular lobbyist,
which is clearly affecting their votes.
The problem is—there are so many donations. There are so many lobbyists.
There are so many representatives. There are so many bills. And so many
votes.
But guess what? It’s all public. The legislation is public. The lobbyist
groups must register themselves. The donations they make are public. Records
of meetings with representatives are public. And so are the votes.
So a non-profit could use AI to collect all these things—continuously—and
save them in Substrate for everyone to inspect. And then a separate AI could
do the work of the journalists.
Here are all the bills written by this representative.
Here are the summaries of those bills.
Here’s who those bills helped and hurt.
Here are all the lobbyists that care about those issues.
Here are all the donations to that representative’s campaigns.
Here’s how the representative voted on every single bill.
Then you can instruct the AI:
Ok, perform a comprhensive analysis of all legislation created and voted on
from Bill Meyers, senator from Arkansas, cross-referenced with every single
donation ever made to him, every dinner he’s attended with them, every gift
he’s received, etc.
Finally, give me your assessment of whether he is being unduly influenced by
this lobbyist, and give your reasons for your conclusion.
You instructing the Substrate AI system
And then it can come back with something like:
Assessment: This is a compromised politician.
Reasoning:
1. OSINT reveals that he was illegally gifted a small yatch last year, which
he tweeted about and later deleted.
2. He’s had 31 dinners in the last 18 months with them, totalling over
$14,800.
3. OSINT reveals that the lobbyist’s president used considerable influence
to get Bill Meyers’ daughter admitted to an exclusive private school she
wasn’t qualified for.
4. Every vote he’s made about this issue has been in the direction that the
lobbyist wanted.
5. Previous votes about this same topic, before this relationship was
formed, went in the opposite direction 7 out of 8 times.
In short, the incredibly important objects of Legislation,
Votes, etc. are all things that can monitored using AI and stored
within Substrate.
A visual representation of a political platform (Click for Full Size)
Many leaders struggle with clarity. It’s hard to know what they think the
issues are, what they specifically plan on doing, and how they plan
to measure progress.
We see this with both business leaders and politicians.
So with Substrate, we intend to make it so that every leader will need to
have a full, detailed plan that has the following components:
Here’s what I think the Problems are
Here’s what I think the Solutions are
Here are my proposed Strategies for accomplishing that
Here are the KPIs we’ll use to track progress
Fire me if I don’t get the KPIs to _________ by ___________ date.
Imagine having that level of clarity and accountability for any
leader trying to get a job, doing anything.
Ok, I saved the best one for last. This is the one that I’m personally most
excited about.
From Companies Are Just Graphs of Algorithms
In a recent piece, I talked about how
Companies Are Just Graphs of Algorithms. True, but I don’t think I went far enough with it.
Everything can be conceptualized in this way—as a process.
State of things
Action / Event
Result = New State of Things
And if we add human components in there, like peoples’ jobs, or making
decisions—like we do for like running a business, or a country, or a family,
we have additional pieces:
People
Decisions
Strategies
Lessons-learned
Conclusions
Reasons
Etc.
And what that results in is a way to tie this all together into much larger
graphs. Graphs we can use to describe the operations of a Family, or a
Company, or even a Country.
Here’s one for a small company:
A Company Process Flow (Click for Full Screen)
That’s pretty cool that we can create that, but that’s not the full power of
Substrate combined with AI.
The smarter AI gets, the better it will get at optimizing flows of any
kind.
In other words, this is just the current state. We can now ask AI what it
would do to optimize this.
Should this company merge departments?
Where can we add more people?
Which processes here are inefficient?
Which can be replaced by AI?
Where could we use more human decision-making?
If we wanted to grow, where should that happen?
Now imagine this for:
A family
A corporation
A church
A city
A county
Etc.
And keep in mind, the more data you have here the better. You can feed such
a system all the various efficiency metrics for the various pieces as well.
It currently takes 3.5 business days to complete a security assessment
“Delays in Security Assessment Turnaround” are the #1 complaint in the
Engineering survey
If we switch to the new FlexScan model using fewer generalist security
testers, we’ll be able to complete Type B and C assessments 94% faster.
This will give our senior testers 2 extra days to do high-impact
assessments
This will also likely make Engineering much happier with Security, and
make them more likely to cooperate on our goals.
So this is really multiple steps here:
The full articulation and breakdown of how a process is currently
running
Visualization of that process to help with human understanding
AI analysis of how to optimize the process to optimize the stated goals
of the entity
And remember—the AI will also have access to the mission of the organization
as well. And its goals. And its strategies. And its team members. And their
projects. Etc.
So it will have the full context on how resources are being spent relative
to the desired outcomes, and it will be able to see how the actual KPIs are
moving.
From there it will be able to make all sorts of recommendations, such as:
Hiring new people
Hiring people with certain skills
Using more AI in high volume and low creativity areas
Adjusting strategies based on goals and market conditions
Cancelling projects X and Y to work on Z instead because it’s more
aligned with the goals
Etc.
Ultimately we’re talking about the ability to continuously analyze and
optimize any system using full knowledge of its goals and progress.
And the more data about the system it has, the better it’ll perform. And the
smarter AI gets, the better it’ll perform.
Insane.
Ok, that was a lot.
Here are the main points.
The world is hard to understand, and
things that are hard to understand are hard to discuss and improve.
The goal of Substrate is to address this problem by making the things
humans care about more visible, discussable, and improvable.
The framework is open-source and lives on GitHub.
At its core, it’s a collection of crowdsourced lists of the things
humans care about, and that make up our discourse and society.
One major problem that people and organizations have is not knowing
—and/or being able to communicate—what they are about.
Using the framework, people and organizations will be able to articulate
their values and purpose more clearly, which will help not only them but
everyone they interact with.
Substrate is magnified by AI because AI can—or will soon be able to—hold
all of Substrate in its mind at once.
From there, we’ll be able to ask all sorts of meaningful questions, such
as, “What is that person or organization about?”, “Are we pursuing the
best path towards our goals?”, or, “What are the most critical mistakes
I’m currently making?”
Ultimately this will allow us to take action on these things.,
e.g., “What actions should I take right now to optimize this workflow?”,
or, “What should I do right now to achieve the best possible outcome
that’s aligned with my goals?”
In short,
Substrate is a way to better understand and optimize the things we
care about as humans.
Here are some of my friends and colleagues who have already signed on to
help with this project.
Jonathan Dunn — MD, Hacker
Jason Haddix — Cybersecurity Expert, Hacker, Trainer
Clint Gibler — Cybersecurity Expert, Hacker
Joseph Thacker — Cybersecurity Expert, Hacker
Joel Parish — Cybersecurity Expert, Hacker
Robert Hansen — Cybersecurity Expert, Hacker
If you are interested in contributing, you can do so through
the Github projects themselves, or you can connect with us directly.
Thanks for your interest, and please share this page with anyone else you
think would like to contribute.
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