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International collaborations
● WBAI (Japan)
● Luria (New York)
● Numenta (co-authored Boosted RSM)
Understand animal intelligence / the brain
Improve machine intelligence
○ Independent Research Group
○ Interested in interaction of brain regions for
intelligent behaviour and decision making
Cerenaut
Supervise graduate students at
Monash
Founded in 2018, Publishing since 2012
Working Memory - What is it?
Working memory is a short-term repository for task-relevant information that is critical for the successful
completion of complex tasks (Baddeley, 2003).
E.g. in a spatial working memory task, animals must hold in memory the location of food rewards to
navigate to those locations after a delay.
Primates on DM2S
Figure reproduced from ‘Principles of
Neuroscience’ (Kandel et. al), reproduced from
Rainer, Asaad, and Miller 1998.
Persistent activity in frontal cortex
Figure reproduced from ‘Principles
of Neuroscience’ (Kandel et. al)
Neuroanatomy
What and Where:
● Converge at
Hippocampus.
● A Short Term Memory.
● With strong
projections to PFC.
PFC <> BG <> Thalamus
Girard, Benoît & Tabareau, Nicolas & Berthoz, Alain & Slotine,
Jean-Jacques. (2006). Selective amplification using a contracting
model of the basal ganglia.
Midbrain
VTC, SNc
Trains itself and the actor
Figure reproduced from ‘Computational Cognitive
Neuroscience’ (O’Reilly, Frank et. al)
Via Thalamus
context
Gating stripes
● Persistent neural activity through
two major mechanisms:
○ 1. Intrinsic membrane properties
○ 2. Recurrent connectivity
Figure reproduced from ‘Making Working Memory
Work’, 2016 (O’Reilly and Frank)
DM2S/M2S/M2L
Inherits: ActiveVisionEnv
(Environment)
Config: game_name_env.json
Positional
Encoding
Retina
(DoG +/-
coding)
SuperiorColliculus
(track to position)
SparseAutoencoder
(Visual Cortex)
What
Where
PrefrontalCortex
MedialTemporalLobe
(Short term memory)
Agent
(Actor - BG)
Config:
stub_agent_x.json
Pretrained
network
RL Policy
module
Legend
Reward
AgentEnv (Environment)
Config: stub_env_x.json
Visual Path
Fovea Periph
Gaze
Choices
Data:
what-where
Critic (PVLV)
SparseAutoencoder
(Visual Cortex)
Observation
Action
Gaze position command
(absolute coordinates)
Gaze position
command
Retina
(DoG +/-
coding)
Gym
Environment
Fixed function
Pass-through
Visual Path
Naming:
Class Name
(function)
Delay
Active Vision Fovea
Fovea: Can
recognise shapes,
but can’t see
context.
Periphery: Can see
changes, but can’t
recognise shapes.
Periphery
Positional Encoding
Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A. N., ... & Polosukhin, I. (2017).
Attention is all you need. arXiv preprint arXiv:1706.03762.
Software environment
Lots of good information on the Wiki →
Software stack
PyGame
NumPy, PyTorch
OpenAI Gym: Gym.Env
Participant code
Ray, RL Lib
Ray RL Lib TorchModelV2
DM2S_Env
Agent
FiniteStateEnv
ActiveVisionEnv
PyGameEnv
Participant code
Environment Agent
AgentEnv
Task
agent.stubs.medial_temporal_lobe
agent.stubs.positional_encoder
agent.stubs.prefrontal_cortex
agent.stubs.superior_colliculus
agent.stubs.visual_path
Agent (brain) - pretrained RL Agent
Competition
● CodaLab
● Evaluation process
● Preparing submission

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The 5th WBA Hackathon Orientation -- Cerenaut Part

  • 1. International collaborations ● WBAI (Japan) ● Luria (New York) ● Numenta (co-authored Boosted RSM) Understand animal intelligence / the brain Improve machine intelligence ○ Independent Research Group ○ Interested in interaction of brain regions for intelligent behaviour and decision making Cerenaut Supervise graduate students at Monash Founded in 2018, Publishing since 2012
  • 2. Working Memory - What is it? Working memory is a short-term repository for task-relevant information that is critical for the successful completion of complex tasks (Baddeley, 2003). E.g. in a spatial working memory task, animals must hold in memory the location of food rewards to navigate to those locations after a delay.
  • 3. Primates on DM2S Figure reproduced from ‘Principles of Neuroscience’ (Kandel et. al), reproduced from Rainer, Asaad, and Miller 1998.
  • 4. Persistent activity in frontal cortex Figure reproduced from ‘Principles of Neuroscience’ (Kandel et. al)
  • 5. Neuroanatomy What and Where: ● Converge at Hippocampus. ● A Short Term Memory. ● With strong projections to PFC.
  • 6. PFC <> BG <> Thalamus Girard, Benoît & Tabareau, Nicolas & Berthoz, Alain & Slotine, Jean-Jacques. (2006). Selective amplification using a contracting model of the basal ganglia. Midbrain VTC, SNc Trains itself and the actor Figure reproduced from ‘Computational Cognitive Neuroscience’ (O’Reilly, Frank et. al) Via Thalamus context
  • 7. Gating stripes ● Persistent neural activity through two major mechanisms: ○ 1. Intrinsic membrane properties ○ 2. Recurrent connectivity Figure reproduced from ‘Making Working Memory Work’, 2016 (O’Reilly and Frank)
  • 8.
  • 9. DM2S/M2S/M2L Inherits: ActiveVisionEnv (Environment) Config: game_name_env.json Positional Encoding Retina (DoG +/- coding) SuperiorColliculus (track to position) SparseAutoencoder (Visual Cortex) What Where PrefrontalCortex MedialTemporalLobe (Short term memory) Agent (Actor - BG) Config: stub_agent_x.json Pretrained network RL Policy module Legend Reward AgentEnv (Environment) Config: stub_env_x.json Visual Path Fovea Periph Gaze Choices Data: what-where Critic (PVLV) SparseAutoencoder (Visual Cortex) Observation Action Gaze position command (absolute coordinates) Gaze position command Retina (DoG +/- coding) Gym Environment Fixed function Pass-through Visual Path Naming: Class Name (function) Delay
  • 10. Active Vision Fovea Fovea: Can recognise shapes, but can’t see context. Periphery: Can see changes, but can’t recognise shapes. Periphery
  • 11. Positional Encoding Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A. N., ... & Polosukhin, I. (2017). Attention is all you need. arXiv preprint arXiv:1706.03762.
  • 12. Software environment Lots of good information on the Wiki →
  • 13. Software stack PyGame NumPy, PyTorch OpenAI Gym: Gym.Env Participant code Ray, RL Lib Ray RL Lib TorchModelV2 DM2S_Env Agent FiniteStateEnv ActiveVisionEnv PyGameEnv Participant code Environment Agent AgentEnv Task agent.stubs.medial_temporal_lobe agent.stubs.positional_encoder agent.stubs.prefrontal_cortex agent.stubs.superior_colliculus agent.stubs.visual_path Agent (brain) - pretrained RL Agent
  • 14. Competition ● CodaLab ● Evaluation process ● Preparing submission