The Monologue Agent utilizes long and short term memory to complete tasks. Long term memory is stored as a LongTermMemory object and the model uses it to search for examples from the past. Short term memory is stored as a Monologue object and the model can condense it as necessary.
Action
,
NullAction
,
CmdRunAction
,
FileWriteAction
,
FileReadAction
,
AgentRecallAction
,
BrowseURLAction
,
AgentThinkAction
Observation
,
NullObservation
,
CmdOutputObservation
,
FileReadObservation
,
AgentRecallObservation
,
BrowserOutputObservation
__init__
: Initializes the agent with a long term memory, and an internal monologue
_add_event
: Appends events to the monologue of the agent and condenses with summary automatically if the monologue is too long
_initialize
: Utilizes the INITIAL_THOUGHTS
list to give the agent a context for its capabilities and how to navigate the /workspace
step
: Modifies the current state by adding the most rescent actions and observations, then prompts the model to think about its next action to take.
search_memory
: Uses VectorIndexRetriever
to find related memories within the long term memory.
The planner agent utilizes a special prompting strategy to create long term plans for solving problems. The agent is given its previous action-observation pairs, current task, and hint based on last action taken at every step.
NullAction
,
CmdRunAction
,
CmdKillAction
,
BrowseURLAction
,
FileReadAction
,
FileWriteAction
,
AgentRecallAction
,
AgentThinkAction
,
AgentFinishAction
,
AgentSummarizeAction
,
AddTaskAction
,
ModifyTaskAction
,
Observation
,
NullObservation
,
CmdOutputObservation
,
FileReadObservation
,
AgentRecallObservation
,
BrowserOutputObservation
__init__
: Initializes an agent with llm
step
: Checks to see if current step is completed, returns AgentFinishAction
if True. Otherwise, creates a plan prompt and sends to model for inference, adding the result as the next action.
search_memory
: Not yet implemented
The Code Act Agent is a minimalist agent. The agent works by passing the model a list of action-observation pairs and prompting the model to take the next step.
Action
,
CmdRunAction
,
AgentEchoAction
,
AgentFinishAction
,
CmdOutputObservation
,
AgentMessageObservation
,
__init__
: Initializes an agent with llm
and a list of messages List[Mapping[str, str]]
step
: First, gets messages from state and then compiles them into a list for context. Next, pass the context list with the prompt to get the next command to execute. Finally, Execute command if valid, else return AgentEchoAction(INVALID_INPUT_MESSAGE)
search_memory
: Not yet implemented