Description
If you believe the future of AI is just bigger GPUs and better backprop, this is not for you.
If you can imagine a compute fabric where local units carry state, retain traces, exchange signals, and rewire themselves through bodily consequence, closer to a primitive nervous system than an AI accelerator, you probably should read this.
We are looking for a rare kind of compute architect: a systems philosopher who can bridge first-principles systems thinking with practical hardware architecture.
Not necessarily a chip architect.
Not someone to accelerate a neural network.
Not someone to put another model on an edge-AI board.
Internally, we think of this as a morphogenic compute substrate role.
Creature Algorithm is a body-coupled, morphogenic AI architecture. The system does not start from a trained model, reward function, central planner, or fixed network. It starts from local units, local consequence, viability, trace, structural change, and bodily interaction.
For robot prototypes, we can emulate this on traditional compute.
For the product path, we need to define and eventually build something more native to the architecture: a compute substrate where local state, local memory, local routing, local adaptation, and body-coupled signals are not afterthoughts, but the foundation.
We are looking for someone who can help us move from software-emulated local learning toward a dedicated body-coupled compute substrate. Carefully, practically, without jumping to custom silicon too early, and without collapsing the architecture back into conventional AI.
The first work is not to build the chip.
The first work is to turn the already-defined substrate principles into an executable hardware path:
what must remain local
what must become hardware-native
what can be emulated for now
what must never become centralized
what the path is from PC/GPU emulation to FPGA, dense standby, sparse standby, and later custom silicon
If this sounds like the wrong job description for an AI chip role, that is probably the point.
We are not trying to build a faster brain for a robot.
We are trying to build the conditions under which a body can grow its own intelligence.
Requirements
If you have built self-healing circuits, evolvable hardware, or complex analog feedback systems, defining the substrate for Creature Algorithm might be your dream.
Your toolkit likely includes experience in:
Asynchronous / event-driven compute
Systems that do not depend on global clocks.
Reconfigurable architectures
FPGA / CPLD / adaptive fabrics treated as hardware structure, not just HDL targets.
Physical topology
Interconnects that change in response to signals.
Analog / mixed-signal logic
Transient electrical states, feedback, and noise as useful structure, not only problems to eliminate.
Embodied cognition or biological learning
The idea that intelligence is not detached from the body, but shaped by physical interaction.
But the most important requirement is conceptual.
You need to understand why this is not a GPU/NPU problem.
Traditional chips compute.
Neuromorphic chips signal.
Morphogenic substrates build structure.
Very few engineers get the chance to work that close to first principles:
you are defining primitives that do not yet exist
you are working at the beginning of a new class of computation
you will own a meaningful stake in a Silicon Valley company built around a new class of machines
If you are the one, claim this rare privilege:
architect@creaturealgorithm.com
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