update
This commit is contained in:
@@ -381,7 +381,7 @@ function conversation(a::T, userinput::Dict) where {T<:agent}
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else #[PENDING] new thinking
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else
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initialState = Dict{Symbol, Any}(
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# deepcopy the info to prevent modifying the info unintentionally during MCTS planning
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@@ -393,7 +393,7 @@ function conversation(a::T, userinput::Dict) where {T<:agent}
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)
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)
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bestplan = runMCTS(a, initialState, decisionMaker, progressValueEstimator, reflector,
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isterminal, 2, 10, 1000, 1.0)
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isterminal, 2, 3, 100, 1.0)
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error("---> bestplan")
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# actor loop(bestplan)
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79
src/mcts.jl
79
src/mcts.jl
@@ -48,10 +48,11 @@ julia> state = Dict(
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# Signature
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"""
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struct MCTSNode{T<:AbstractDict}
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statekey::String
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nodekey::String
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state::T
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visits::Integer
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progressValue::Number
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parent::Union{MCTSNode, Nothing}
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children::Dict{String, MCTSNode}
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end
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@@ -75,7 +76,7 @@ julia>
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# Signature
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"""
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function select(node::MCTSNode, w::Float64)
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function UCTselect(node::MCTSNode, w::Float64)
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max_uct = -Inf
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selectedNode = nothing
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@@ -91,6 +92,7 @@ function select(node::MCTSNode, w::Float64)
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return selectedNode
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end
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""" Expand selected node
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# Arguments
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@@ -114,21 +116,24 @@ julia>
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# Signature
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"""
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function expand(a::T1, node::MCTSNode, state::T2, decisionMaker::Function,
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function expand(a::T1, node::MCTSNode, decisionMaker::Function,
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progressValueEstimator::Function; n::Integer=3) where {T1<:agent, T2<:AbstractDict}
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# sampling action from decisionMaker
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for sample in 1:n
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thoughtDict = decisionMaker(a, state)
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@show state
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thoughtDict = decisionMaker(a, node.state)
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@show node.state
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@show thoughtDict
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newStatekey, newstate = MCTStransition(a, node.state, thoughtDict) #[] Implement your transition function
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newNodeKey, newstate = MCTStransition(a, node.state, thoughtDict) #[] Implement your transition function
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# add progressValueEstimator
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_, progressValue = progressValueEstimator(a, newstate)
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if newStatekey ∉ keys(node.children)
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node.children[newStatekey] = MCTSNode(newStatekey, newstate, 0, progressValue, Dict{String, MCTSNode}())
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#[WORKING] check for terminal state
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if newNodeKey ∉ keys(node.children)
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node.children[newNodeKey] = MCTSNode(newNodeKey, newstate, 0, progressValue,
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node, Dict{String, MCTSNode}())
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end
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end
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end
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@@ -151,18 +156,29 @@ julia>
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# Signature
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"""
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function simulate(state::T, max_depth::Int) where {T<:AbstractDict}
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error("--> simulate")
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function simulate(a, node::MCTSNode, max_depth::Int; n=3)
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total_reward = 0.0
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for _ in 1:max_depth
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#[] Implement your action selection function based on highest stateValue
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action = select_action(state) # current state
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state, reward = transition(state, action) # Implement transition function to a new state
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node = selectChildNode(node)
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expand(a, node, decisionMaker, progressValueEstimator, n=n)
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#[] check for the terminal state
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# #[] Implement your action selection function based on highest stateValue
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# action = select_action(state) # current state
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# state, reward = transition(state, action) # Implement transition function to a new state
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# #[] check for the terminal state, break if it is terminal state
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# if isterminal
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total_reward += reward
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end
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error("--> simulate")
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return total_reward
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end
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@@ -205,8 +221,8 @@ end
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contain Thought, Action, Observation
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# Return
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- (newStatekey, )
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- `newStatekey::String`
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- (newNodeKey, )
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- `newNodeKey::String`
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key for newstate
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- `newstate::Dict{Symbol, Any}`
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next game state
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@@ -263,9 +279,9 @@ function MCTStransition(a::T1, state::T2,
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latestObservationKey = Symbol("Observation_$(latestActionIndice)")
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newstate[:thoughtHistory][latestObservationKey] = response
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newStatekey = GeneralUtils.uuid4snakecase()
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newNodeKey = GeneralUtils.uuid4snakecase()
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return newStatekey, newstate
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return newNodeKey, newstate
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end
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@@ -300,7 +316,7 @@ true
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isleaf(node::MCTSNode)::Bool = isempty(node.children)
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"""
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""" Select child node based on the highest progressValue
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# Arguments
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@@ -313,12 +329,23 @@ julia>
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# TODO
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- [] update docstring
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- [] implement the function
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- [WORKING] implement the function
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# Signature
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"""
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function executeLLMFunction()
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function selectChildNode(node::MCTSNode)
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highestProgressValue = 0
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nodekey = nothing
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# loop thought node children dictionary to find the highest progress value
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for (k, childNode) in node.children
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if childNode.progressValue > highestProgressValue
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highestProgressValue = childNode.progressValue
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nodekey = childNode.nodekey
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end
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end
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return node.children[nodekey]
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end
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@@ -371,19 +398,19 @@ function runMCTS(
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maxIterations::Integer,
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w::Float64) where {T1<:agent}
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root = MCTSNode("root", initialState, 0, 0.0, Dict{String, MCTSNode}())
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root = MCTSNode("root", initialState, 0, 0.0, nothing, Dict{String, MCTSNode}())
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for _ in 1:maxIterations
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node = root
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while !isleaf(node)
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node = select(node, w)
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node = UCTselect(node, w)
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end
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expand(a, node, node.state, decisionMaker, progressValueEstimator, n=n)
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expand(a, node, decisionMaker, progressValueEstimator, n=n)
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# from paper, just start simulation at this node. Not the node that newly expanded
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leaf_node = node
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reward = simulate(leaf_node.state, maxDepth)
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startsim_node = node
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reward = simulate(a, startsim_node, maxDepth, n=n)
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backpropagate(leaf_node, reward)
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end
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