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OpenCog AtomSpace

CircleCI

The OpenCog AtomSpace is an in-RAM knowledge representation (KR) database with an associated query engine and graph-re-writing system. It is a kind of in-RAM generalized hypergraph (metagraph) database. Metagraphs offer more efficient, more flexible and more powerful ways of representing graphs: a metagraph store is literally just-plain better than a graph store. On top of this, the Atomspace provides a large variety of advanced features not available anywhere else.

The AtomSpace is a platform for building Artificial General Intelligence (AGI) systems. It provides the central knowledge representation component for OpenCog. As such, it is a fairly mature component, on which a lot of other systems are built, and which depend on it for stable, correct operation in a day-to-day production environment.

There are several dozen modules built on top of the AtomSpace. Notable ones include:

Data as MetaGraphs

It is now commonplace to represent data as graphs; there are more graph databases than you can shake a stick at. What makes the AtomSpace different? A dozen features that no other graph DB does, or has even dreamed of doing.

But, first: five things everyone else does:

  • Perform graphical database queries, returning results that satisfy a provided search pattern.
  • Arbitrarily complex patterns with an arbitrary number of variable regions can be specified, by unifying multiple clauses.
  • Modify searches with conditionals, such as "greater than", and with user callbacks into scheme, python or Haskell.
  • Perform graph rewriting: use search results to create new graphs.
  • Trigger execution of user callbacks... or of executable graphs (as explained below).

A key difference: the AtomSpace is a metagraph store, not a graph store. Metagraphs can efficiently represent graphs, but not the other way around. This is carefully explained here, which also gives a precise definition of what a metagraph is, and how it is related to a graph. As a side-effect, metagraphs open up many possibilities not available to ordinary graph databases. These are listed below. Things are things that no one else does:

  • Search queries are graphs. (The API to the pattern engine is a graph.) That is, every query, every search is also a graph. That means one can store a collection of searches in the database, and access them later. This allows a graph rule engine to be built up.
  • Inverted searches. (DualLink.) Normally, a search is like "asking a question" and "getting an answer". For the inverted search, one "has an answer" and is looking for all "questions" for which its a solution. This is pattern recognition, as opposed to pattern search. All chatbots do this as a matter of course, to handle chat dialog. No chatbot can host arbitrary graph data, or search it. The AtomSpace can. This is because queries are also graphs, and not just data.
  • Both "meet" and "join" searches are possible: One can perform a "fill in the blanks" search (a meet, with MeetLink) and one can perform a "what contains this?" search (a join, with JoinLink.)
  • Graphs are executable. Graph vertex types include "plus", "times", "greater than" and many other programming constructs. The resulting graphs encode "abstract syntax trees" and the resulting language is called Atomese. It resembles the intermediate representation commonly found in compilers, except that, here, its explicitly exposed to the user as a storable, queriable, manipulable, executable graph.
  • Graphs are typed (TypeNode and type constructors.) Graph elements have types, and there are half a dozen type constructors, including types for graphs that are functions. This resembles programming systems that have type constructors, such as CaML or Haskell.
  • Graph nodes carry vectors Values are mutable vectors of data. Each graph element (vertex or edge, node or link) can host an arbitrary collection of Values. This is, each graph element is also a key-value database.
  • Graphs specify flows Values can be static or dynamic. For the dynamic case, a given graph can be thought of as "pipes" or "plumbing"; the Values can "flow" along that graph. For example, the FormulaStream allows numeric vector operations ("formulas") to be defined. Accessing a FormulaStream provides the vector value at that instant.
  • Unordered sets (UnorderedLink.) A graph vertex can be an unordered set (Think of a list of edges, but they are not in any fixed order.) When searching for a matching pattern, one must consider all permutations of the set. This is easy, if the search has only one unordered set. This is hard, if they are nested and inter-linked: it becomes a constraint-satisfaction problem. The AtomSpace pattern engine handles all of these cases correctly.
  • Alternative sub-patterns (ChoiceLink.) A search query can include a menu of sub-patterns to be matched. Such sets of alternatives can be nested and composed arbitrarily. (i.e. they can contain variables, etc.)
  • Globby matching (GlobNode.) One can match zero, one or more subgraphs with globs This is similar to the idea of globbing in a regex. Thus, a variable need not be grounded by only one subgraph: a variable can be grounded by an indeterminate range of subgraphs.
  • Quotations (QuoteLink.) Executable graphs can be quoted. This is similar to quotations in functional programming languages. In this case, it allows queries to search for other queries, without triggering the query that was searched for. Handy for rule-engines that use rules to find other rules.
  • Negation as failure (AbsentLink.) Reject matches to subgraphs having particular sub-patterns in them. That is, find all graphs of some shape, except those having these other sub-shapes.
  • For-all predicate (AlwaysLink.) Require that all matches contain a particular subgraph or satisfy a particular predicate. For example: find all baskets that have only red balls in them. This requires not only finding the baskets, making sure they have balls in them, but also testing each and every ball in a basket to make sure they are all of the same color.
  • Frames (ChangeSets) Store a sequence of graph rewrites, changes of values as a single changeset. The database itself is a collection of such changesets or "Frames". Very roughly, a changeset resembles a git commit, but for the graph database. The word "Frame" is mean to invoke the idea of a stackframe, or a Kripke frame: the graph state, at this moment. By storing frames, it is possible to revert to earlier graph state. It is possible to compare different branches and to explore different rewrite histories starting from the same base graph. Different branches may be merged, forming a set-union of thier contents. This is useful for inference and learning algos, which explore long chains of large, complex graph rewrites.

What it Isn't

Newcomers often struggle with the AtomSpace, because they bring preconceived notions of what they think it should be, and its not that. So, a few things it is not.

  • It's not JSON. So JSON is a perfectly good way of representing structured data. JSON records data as key:value pairs, arranged hierarchically, with braces, or as lists, with square brackets. The AtomSpace is similar, except that there are no keys! The AtomSpace still organizes data hierarchically, and provides lists, but all entries are anonymous, nameless. Why? There are performance (CPU and RAM usage) and other design benefits in not using explicit named keys in the data structure. You can still have named values; it is just that they are not required. There are several different ways of importing JSON data into the AtomSpace. If your mental model of "data" is JSON, then you will be confused by the AtomSpace.

  • It's not SQL. It's also not noSQL. Databases from 50 years ago organized structured data into tables, where the key is the label of a column, and different values sit in different rows. This is more efficient than JSON, when you have many rows: you don't have to store the same key over and over again, for each row. Of course, tabular data is impractical if you have zillions of tables, each with only one or two rows. That's one reason why JSON was invented. The AtomSpace was designed to store unstructured data. You can still store structured data in it; there are several different ways of importing tabular data into the AtomSpace. If your mental model of "data" is structured data, then you will be confused by the AtomSpace.

  • It's not a vertex+edge store. (Almost?) all graph databases decompose graphs into lists of vertexes and edges. This is just fine, if you don't use complex algorithms. The problem with this storage format is locality: graph traversal becomes a game of repeatedly looking up a specific vertex and then, a specific edge, each located in a large table of vertexes and edges. This is non-local; it requires large indexes on those tables (requires a lot of RAM), and the lookups are CPU consuming. Graph traversal can be a bottleneck. The AtomSpace avoids much of this overhead by using (hyper-/meta-)graphs. This enables more effective and simpler traversal algorithms, which in turn allows more sophisticated search features to be implemented. If your mental model of graph data is lists of vertexes and edges, then you will be confused by the AtomSpace.

What is it, then? Most simply, the AtomSpace stores immutable, globally unique, typed s-expressions. The types can be thought of as being like object-oriented classes, and many (not all) Atom types do have a corresponding C++ class. Each s-expression is called "an Atom". Each Atom is globally unique: there is only one copy, ever, of any given s-expression (Atom). It's almost just that simple, with only one little twist: a (mutable) key-value database is attached to each Atom. Now, "ordinary" graph databases do this too: every vertex or edge can have "attributes" on it. The AtomSpace allows these attributes to be dynamic: to change in time or to "flow". The flow itself is described by a graph; thus, graphs can be thought of as "plumbing"; whereas the Values are like the "fluid" in these pipes. This is much like the distinction between "software" and "data": software describes algos, data is what moves through them. In the AtomSpace, the algos are explicit graphs. The Values are the data.

The AtomSpace borrows ideas and concepts from many different systems, including ideas from JSON, SQL and graph stores. The goal of the AtomSpace is to be general: to allow you to work with whatever style of data you want: structured or unstructured. As graphs, as tables, as objects. As lambda expressions, as abstract syntax trees, as prolog-like logical statements. A place to store relational data obeying some relational algebra. As a place to store ontologies or mereologies or taxonomies. A place for syntactic (BNF-style) productions or constraints or RDF/OWL-style schemas. In a mix of declarative, procedural and functional styles. The AtomSpace is meant to allow general knowledge representation, in any format.

The "special extra twist" of immutable graphs decorated with mutable values resembles a corresponding idea in logic: the split between logical statements, and the truth values (valuations) attached to them. This is useful not only for logic, but also for specifying data processing pipelines: the graph specifies the pipeline; the values are what flow through that pipeline. The graph is the "code"; the values are the data that the code acts on.

All this means that the AtomSpace is different and unusual. It might be a bit outside of the comfort zone for most programmers. It doesn't have API's that are instantly recognizable to users of these other systems. There is a challenging learning curve involved. We're sorry about that: if you have ideas for better API's that would allow the AtomSpace to look more conventional, and be less intimidating to most programmers, then contact us!

Status and Invitation

As it turns out, knowledge representation is hard, and so the AtomSpace has been (and continues to be) a platform for active scientific research on knowledge representation, knowledge discovery and knowledge manipulation. If you are comfortable with extremely complex mathematical theory, and just also happen to be extremely comfortable writing code, you are invited -- encouraged -- to join the project.

Related ideas

A short list of some related concepts:

  • Carnegie Mellon Binary Analysis Platforrm (BAP) allows binary programs (viruses, etc.) to be disassembled and analyzed. The disassembled program is stored as a graph in a database. The graph can be analyzed, investigated, and even executed, to see what it does. Thus, similar to the AtomSpace, but very highly specialized for binaries, and nothing else.

  • Modelica is a modelling language for describing complex systems. Intended for describing mechanical, electrical, electronic, hydraulic, thermal, control, electric power and process-oriented systems. The descriptions are static, object-oriented, file-based, and meant to be written by humans. That is, the models are atomated, but not the creation and management of them. Not suitable for general graph structures.

  • The concept of graph programming.

Using Atomese and the AtomSpace

The AtomSpace is not an "app". Rather, it is a knowledge-base platform. It is probably easiest to think of it as kind-of-like an operating system kernel: you don't need to know how it works to use it. You probably don't need to tinker with it. It just works, and it's there when you need it.

End-users and application developers will want to use one of the existing "app" subsystems, or write their own. Most of the existing AtomSpace "apps" are focused on various aspects of "Artificial General Intelligence". This includes (unsupervised) natural-language learning, machine-learning, reasoning and induction, chatbots, robot control, perceptual subsystems (vision processing, sound input), genomic and proteomic data analysis, deep-learning neural-net interfaces. These can be found in other github repos, including:

Zombie projects: these are half-dead; no one is currently working on them, but they should still work and still provide useful capabilities.

Dead projects: these are no longer maintained. They used to work, but have been abandoned for various theoretical and political reasons:

Examples, Documentation, Blog

If you are impatient, a good way to learn the AtomSpace is to run the example demos. Start with these. Then move on to the pattern-matcher examples.

Documentation is on the OpenCog wiki. Good places to start are here:

The OpenCog Brainwave blog provides reading material for what this is all about, and why.

A Theoretical Overview

The AtomSpace is a mashup of a large variety of concepts from mathematical logic, theorem proving, graph theory, database theory, type theory, model theory and knowledge representation. Its hard to provide a coherent overview without throwing around a lot of "big words" and "big concepts". We're trying to get a lot of things done, here, and there's no particularly simple or effective way of explaining it without a lot of foundational theory.

Atom Types

There are pre-defined Atoms for many basic knowledge-representation and computer-science concepts. These include Atoms for relations, such as similarity, inheritance and subsets; for logic, such as Boolean and, or, for-all, there-exists; for Bayesian and other probabilistic relations; for intuitionist logic, such as absence and choice; for parallel (threaded) synchronous and asynchronous execution; for expressions with variables and for lambda expressions and for beta-reduction and mapping; for uniqueness constraints, state and a messaging "blackboard"; for searching and satisfiability and graph re-writing; for the specification of types and type signatures, including type polymorphism and type construction. See Atom types.

Atomese

Because of these many and varied Atom types, constructing graphs to represent knowledge looks kind-of-like "programming"; the programming language is informally referred to as "Atomese". It vaguely resembles a strange mash-up of SQL (due to queriability), prolog/datalog (due to the logic and reasoning components), lisp/scheme (due to lambda expressions), Haskell/CaML (due to the type system) and rule engines (due to the graph rewriting and forward/backward chaining inference systems). This "programming language" is NOT designed for use by human programmers (it is too verbose and awkward for that); it is designed for automation and machine learning. That is, like any knowledge representation system, the data and procedures encoded in "Atomese" are meant to be accessed by other automated subsystems manipulating and querying and inferencing over the data/programs. See Atomese.

Aside from the various advanced features, Atomese also has some very basic and familiar atom types: atoms for arithmetic operations like "plus" and "times", conditional operators, like "greater-than" or "equals", control operations like "sequential and" and "cond", as well as settable state. This makes Atomese resemble a kind of intermediate language, something you might find inside of a compiler, a bit like CIL or Gimple. However, it is both far more flexible and powerful than these, and also far less efficient. Adventurous souls are invited to create a compiler to GNU Lighting, CIL, Java bytecode or the bytecode of your choice; or maybe to a GPU backend, or even more complex data-processing systems, such as TensorFlow.

In its current form, Atomese was primarily designed to allow the generalized manipulation of large networks of probabilistic data by means of rules and inferences and reasoning systems. It extends the idea of probabilistic logic networks to a generalized system for algorithmically manipulating and managing data. The current, actual design has been heavily influenced by practical experience with natural-language processing, question answering, inferencing and the specific needs of robot control.

The use of the AtomSpace, and the operation and utility of Atomese, remains a topic of ongoing research and design experimentation, as various AI and knowledge-processing subsystems are developed. These include machine learning, natural language processing, motion control and animation, deep-learning networks and vision processing, constraint solving and planning, pattern mining and data mining, question answering and common-sense systems, and emotional and behavioral psychological systems. Each of these impose sharply conflicting requirements on the AtomSpace architecture; the AtomSpace and "Atomese" is the current best-effort KR system for satisfying all these various needs in an integrated way. It is likely to change, as the various current short-comings, design flaws, performance and scalability issues are corrected.

Active researchers and theoreticians are invited to join! The current codebase is finally clean and well-organized enough that a large number of possibilities have opened up, offering many different and exciting directions to pursue. The system is clean and flexible, and ready to move up to the next level.

Atoms and Values

One of the primary conceptual distinctions in Atomese is between "Atoms" and "Values". The distinction is made for both usability and performance. Atoms are:

  • Used to represent graphs, networks, and long-term stable graphical relations.
  • Indexed (by the AtomSpace), which enables the rapid search and traversal of graphs.
  • Globally unique, and thus unambiguous anchor points for data.
  • Immutable: can only be created and destroyed, and are effectively static and unchanging.
  • Large, bulky, heavy-weight (because indexes are necessarily bulky).

By contrast, Values, and valuations in general, are:

  • A way of holding on to rapidly-changing data, including streaming data.
  • Hold "truth values" and "probabilities", which change over time as new evidence is accumulated.
  • Provide a per-Atom key-value store (a mini noSQL database per-Atom).
  • Are not indexed, and are accessible only by direct reference.
  • Small, fast, fleeting (no indexes!)

Thus, for example, a piece of knowledge, or some proposition would be stored as an Atom. As new evidence accumulates, the truth value of the proposition is adjusted. Other fleeting changes, or general free-form annotations can be stored as Values. Essentially, the AtomSpace looks like a database-of-databases; each atom is a key-value database; the atoms are related to one-another as a graph. The graph is searchable, editable; it holds rules and relations and ontologies and axioms. Values are the data that stream and flow through this network, like water through pipes. Atoms define the pipes, the connectivity. Values flow and change. See the blog entry value flows as well as Atom and Value.

More info

The primary documentation for the atomspace and Atomese is here:

The main project site is at https://opencog.org

New Developers; Pre-requisite skills

Most users should almost surely focus their attention on one of the high-level systems built on top of the AtomSpace. The rest of this section is aimed at anyone who wants to work inside of the AtomSpace.

Most users/developers should think of the AtomSpace as being kind-of-like an operating system kernel, or the guts of a database: its complex, and you don't need to know how the innards work to use the system. These innards are best left to committed systems programmers and research scientists; there is no easy way for junior programmers to participate, at least, not without a lot of hard work and study. Its incredibly exciting, though, if you know what you're doing.

The AtomSpace is a relatively mature system, and thus fairly complex. Because other users depend on it, it is not very "hackable"; it needs to stay relatively stable. Despite this, it is simultaneously a research platform for discovering the proper way of adequately representing knowledge in a way that is useful for general intelligence. It turns out that knowledge representation is not easy. This project is a -good- excellent place to explore it, if you're interested in that sort of thing.

Experience in any of the following areas will make things easier for you; in fact, if you are good at any of these ... we want you. Bad.

  • Database internals; query optimization.
  • Logic programming; Prolog.
  • SAT-solving; Answer Set programming; Satisfiability Modulo Theories.
  • Programming language design & implementation.
  • Rule engines; reasoning; inference; parsing.
  • Theorem-proving systems; Type theory.
  • Compiler internals; code generation; code optimization; bytecode; VM's.
  • Operating systems; distributed database internals.
  • GPU processing pipelines, lighting-shading pipelines, CUDA, OpenCL.
  • Dataflow in GPU's for neural networks.

Basically, Atomese is a mash-up of ideas taken from all of the above fields. It's kind-of trying to do and be all of these, all at once, and to find the right balance between all of them. Again: the goal is knowledge representation for general intelligence. Building something that the AGI developers can use.

We've gotten quite far; we've got a good, clean code-base, more-or-less, and we're ready to kick it to the next level. The above gives a hint of the directions that are now open and ready to be explored.

If you don't have at least some fair grounding in one of the above, you'll be lost, and find it hard to contribute. If you do know something about any of these topics, then please dive into the open bug list. Fixing bugs is the #1 best way of learning the internals of any system.

Key Development Goals

Looking ahead, some key major projects.

Distributed Processing

One of the development goals for the 2021-2023 time frame is to gain experience with distributed data processing. Currently, one can build simple distributed networks of AtomSpaces, by using the StorageNode to specify a remote AtomSpace. However, it is up to you as to what kinds of data these AtomSpace exchange with one-another. Only two simple pre-configured communications styles have been created: the read-thru and the write-thru proxies for the cogserver. These pass incoming data and results on to the next nodes in the network.

Cross-system Bridges

Because the AtomSpace can hold many different representatioinal styles, it is relatively easy to import data into the AtomSpace. The low-brow way to do this is to write a script file that imports the data. This is fine, but leads to data management issues: who's got the master copy?

The goal of data bridges is to create new Atoms that allow live access into other online systems. For example, if an SQL database holds a table of (name, address, phone-number), it should be possible to map this into the AtomSpace, such that updates not only alter the SQL table, live and on line, but also such that a query performed on the AtomSpace side translates into a query on the SQL database side. This is not hard to do, but no one's done it yet.

Similarly, a live online bridge between the AtomSpace and popular graph databases should also be possible. It's not clear if this should use the StorageNode API mentioned above, or if it needs something else.

Exploring Values

The new Value system seems to provide a very nice way of working with fast-moving high-frequency data. It seems suitable for holding on to live-video feeds and audio streams and piping them through various data-processing configurations. It looks to be a decent API for declaring the structure and topology of neural nets (e.g. TensorFlow). However, it is more-or-less unused for these tasks. Apparently, there is still some missing infrastructure, as well as some important design decisions to be made. Developers have not begun to explore the depth and breadth of this subsystem, to exert pressure on it. Ratcheting up the tension by exploring new and better ways of using and working with Values will be an important goal for the 2021-2024 time-frame. See the value flows blog entry.

A particularly important first step would be to build interfaces between values and an audio DSP framework. This would allow AtomSpace structures to control audio processing, thus enabling (for example) sound recognition (do I hear clapping? Cheers? Boos?) without having to hard-code a "cheer recognizer". This opens the door to using machine learning to learn how to detect different kinds of audio events.

There is no particular need to limit oneself to audio: other kinds of data is possible (e.g. exploring the syntactic, hierarchical part-whole structure in images) but audio is perhaps easier!?

Sheaf theory

Many important types of real-world data, include parses of natural language and biochemical processes resemble the abstract mathematical concept of "sheaves", in the sense of sheaf theory. One reason that things like deep learning and neural nets work well is because some kinds of sheaves look like tensor algebras; thus one has things like Word2Vec and SkipGram models. One reason why neural nets still stumble on natural language processing is because natural language only kind-of-ish, partly looks like a tensor algebra. But natural language looks a whole lot more like a sheaf (because things like pre-group grammars and categorial grammars "naturally" look like sheaves.) Thus, it seems promising to take the theory and all the basic concepts of deep learning and neural nets, rip out the explicit tensor-algebra in those theories, and replace them by sheaves. A crude sketch is here.

Some primitive, basic infrastructure has been built. Huge remaining work items are using neural nets to perform the tensor-like factorization of sheaves, and to redesign the rule engine to use sheaf-type theorem proving techniques.

Current work is split between two locations: the "sheaf" subdirectory in this repo, and the generate repo.

Building and Installing

The Atomspace runs on more-or-less any flavor of GNU/Linux. It does not run on any non-Linux operating systems (except maybe some of the BSD's). Sorry!

There are a small number of pre-requisites that must be installed before it can be built. Many users will find it easiest to use the install scripts provided in the ocpkg repo. Some users may find some success with one of the opencog Docker containers. Developers interested in working on the AtomSpace must be able to build it manually. If you can't do that, all hope is lost.

Prerequisites

To build the OpenCog AtomSpace, the packages listed below are required. Essentially all Linux distributions will provide these packages.

boost
cmake
cogutil
guile
cxxtest
  • Unit test framework.
  • Required for running unit tests. Breaking unit tests is verboten!
  • https://cxxtest.com/ | apt install cxxtest

Optional Prerequisites

The following packages are optional. If they are not installed, some optional parts of the AtomSpace will not be built. The cmake command, during the build, will be more precise as to which parts will not be built.

Cython
  • C bindings for Python. (Cython version 0.23 or newer)
  • Recommended, as many users enjoy using python.
  • https://cython.org | apt install cython
Haskell
OCaml
  • OCaml bindings (experimental).
  • Optional; almost no existing code makes use of OCaml.
  • https://www.ocaml.org/ | apt install ocaml ocaml-findlib
Postgres
  • Distributed, multi-client networked storage.
  • Needed for "remembering" between shutdowns (and for distributed AtomSpace)
  • Optional; The RocksDB backend is recommended. Use the cogserver to get a distributed atomspace.
  • https://postgres.org | apt install postgresql postgresql-client libpq-dev

Building AtomSpace

Be sure to install the pre-requisites first! Perform the following steps at the shell prompt:

    cd to project root dir
    mkdir build
    cd build
    cmake ..
    make -j4
    sudo make install
    make -j4 check

Libraries will be built into subdirectories within build, mirroring the structure of the source directory root.

Unit tests

To build and run the unit tests, from the ./build directory enter (after building opencog as above):

    make -j4 check

Most tests (just not the database tests) can be run in parallel:

    make -j4 check ARGS=-j4

The database tests will fail if run in parallel: they will step on one-another, since they all set and clear the same database tables.

Specific subsets of the unit tests can be run:

    make test_atomese
    make test_atomspace
    make test_guile
    make test_join
    make test_matrix
    make test_persist_sql
    make test_python
    make test_query

Install

After building, you MUST install the atomspace.

    sudo make install

Writing Atomese

Atomese -- that is -- all of the different Atom types, can be thought of as the primary API to the AtomSpace. Atoms can, of course, be created and manipulated with Atomese; but, in practice, programmers will work with either Scheme (guile), Python, C++, OCaml or Haskell.

The simplest, most complete and extensive interface to Atoms and the Atomspace is via scheme, and specifically, the GNU Guile scheme implementation. An extensive set of examples can be found in the /examples/atomspace and the /examples/pattern-matcher directories.

Python is more familiar than scheme to most programmers, and it offers another way of interfacing to the atomspace. Unfortunately, it is not as easy and simple to use as scheme; it also has various technical issues. Thus, it is significantly less-used than scheme in the OpenCog project. None-the-less, it remains vital for various applications. See the /examples/python directory for how to use python with the AtomSpace.

TODO - Notes - Open Projects

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