Adds final version with new prompt
This commit is contained in:
@@ -4,7 +4,6 @@ LangGraph Agent using AWS Bedrock Cross-Region Inference Profile with Tools
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This script demonstrates how to create a LangGraph agent that uses
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an AWS Bedrock inference profile with custom tools (add and multiply).
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"""
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import boto3
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from typing import TypedDict, Annotated
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from langgraph.graph import StateGraph, END
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@@ -18,9 +17,109 @@ from langfuse import Langfuse
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from langfuse.langchain import CallbackHandler
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from botocore.exceptions import ClientError
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import os
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from backend.utils import dynamodb_read_table as drt
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WORKGROUP = "iceberg-workgroup"
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DATABASE = "dnx_warehouse"
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TABLE = "poc_dnx_monthly_summary"
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REGION = "us-east-1"
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# DynamoDB client
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dynamodb = boto3.resource("dynamodb", region_name=REGION)
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@tool
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def get_monthly_report(id: str, variable: str) -> str:
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"""
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Get a specific variable's data from DynamoDB for a specific id.
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Args:
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id: The id of the data
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variable: The variable/column name to retrieve from the table
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Returns:
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The content of the specified variable for the given id
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"""
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print(f"\n🔧 [TOOL CALLED] get_monthly_report for month: {id}, variable: {variable}")
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try:
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table = dynamodb.Table(TABLE)
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response = table.get_item(Key={"id": id})
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if "Item" not in response:
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return f"No report found for month: {id}"
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item = response["Item"]
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content = item.get(variable, "")
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if not content:
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return f"Variable '{variable}' not found for month: {id}"
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result = f"<{id}>\n{content}\n</{id}>"
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return result
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except ClientError as e:
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error_message = e.response["Error"]["Message"]
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return f"Error fetching report: {error_message}"
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@tool
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def get_consolidated_keys(id: str) -> str:
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"""
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Get the list of consolidated keys (variables) available in the table for a specific month.
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Args:
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id: The id of the data
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Returns:
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The list of available variables/keys for the specified data
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"""
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print(f"\n🔧 [TOOL CALLED] get_consolidated_keys for id: {id}")
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try:
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table = dynamodb.Table(TABLE)
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response = table.get_item(Key={"id": id})
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if "Item" not in response:
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return f"No data found for month: {id}"
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item = response["Item"]
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chaves_consolidadas = item.get("chaves_consolidadas", "")
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if not chaves_consolidadas:
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return f"No consolidated keys found for id: {id}"
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return chaves_consolidadas
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except ClientError as e:
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error_message = e.response["Error"]["Message"]
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return f"Error fetching consolidated keys: {error_message}"
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def get_contexto() -> dict:
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"""
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Get contexto, filter, and items_disponiveis from DynamoDB where id=DASHBOARD+'_contexto'.
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Returns:
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Dict with 'contexto', 'filter', and 'items_disponiveis' keys
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"""
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try:
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table = dynamodb.Table(TABLE)
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response = table.get_item(Key={"id": DASHBOARD + "_contexto"})
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if "Item" not in response:
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return {"contexto": "", "filter": "", "items_disponiveis": {}}
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item = response["Item"]
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return {
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"contexto": item.get("contexto", ""),
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"filter": item.get("filter_key", ""),
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"items_disponiveis": item.get("itens_disponiveis", {}),
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}
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except ClientError as e:
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error_message = e.response["Error"]["Message"]
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return {"contexto": f"Error: {error_message}", "filter": "", "items_disponiveis": {}}
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def get_secret():
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secret_name = "assistente-db-secrets-manager"
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@@ -112,7 +211,7 @@ def create_bedrock_llm(model_id: str, region: str = "us-east-1"):
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"""
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# Determine provider and model_kwargs based on model ID
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MODEL_ARNS = {
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"anthropic.claude-haiku-4-5-20251001-v1:0": "arn:aws:bedrock:us-east-1:305427701314:inference-profile/global.anthropic.claude-haiku-4-5-20251001-v1:0",
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"anthropic.claude-haiku-4-5-20251001-v1:0": "arn:aws:bedrock:us-east-1:305427701314:inference-profile/us.anthropic.claude-haiku-4-5-20251001-v1:0",
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"anthropic.claude-sonnet-4-5-20250929-v1:0": "arn:aws:bedrock:us-east-1:305427701314:inference-profile/global.anthropic.claude-sonnet-4-5-20250929-v1:0",
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"meta.llama4-maverick-17b-instruct-v1:0": "arn:aws:bedrock:us-east-1:305427701314:inference-profile/us.meta.llama4-maverick-17b-instruct-v1:0",
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"meta.llama4-scout-17b-instruct-v1:0": "arn:aws:bedrock:us-east-1:305427701314:inference-profile/us.meta.llama4-scout-17b-instruct-v1:0",
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@@ -130,7 +229,7 @@ def create_bedrock_llm(model_id: str, region: str = "us-east-1"):
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"amazon.nova-2-lite-v1:0": "amazon"
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}
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prefix={
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"anthropic.claude-haiku-4-5-20251001-v1:0": "global",
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"anthropic.claude-haiku-4-5-20251001-v1:0": "us",
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"anthropic.claude-sonnet-4-5-20250929-v1:0": "global",
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"meta.llama4-maverick-17b-instruct-v1:0": "us",
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"meta.llama4-scout-17b-instruct-v1:0": "us",
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@@ -147,8 +246,7 @@ def create_bedrock_llm(model_id: str, region: str = "us-east-1"):
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)
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# Bind tools to the LLM
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#tools = [consult_answers,count_table_rows]
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tools=[]
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tools = [get_monthly_report, get_consolidated_keys]
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llm_with_tools = llm.bind_tools(tools)
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return llm_with_tools
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@@ -160,9 +258,7 @@ def call_model(state: AgentState, llm) -> AgentState:
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print(f"[MODEL] Calling Bedrock inference profile...")
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messages = state["messages"]
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langfuse_handler = CallbackHandler()
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config = {"configurable": {"thread_id": "abc123"},"callbacks": [langfuse_handler]}
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response = llm.invoke(messages,config=config)
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response = llm.invoke(messages)
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state["current_step"] = "model_called"
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return {"messages": [response]}
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@@ -180,6 +276,8 @@ def call_tools(state: AgentState) -> AgentState:
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tool_messages = []
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tools_map = {
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"get_monthly_report": get_monthly_report,
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"get_consolidated_keys": get_consolidated_keys
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}
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# Execute each tool call
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@@ -267,24 +365,52 @@ def create_agent(inference_profile_arn: str, region: str = "us-east-1"):
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return app
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def main(user_query,history,model):
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def main(user_query,history,model,base):
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"""Main execution function."""
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global DASHBOARD
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DASHBOARD = base
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# Configuration - Update with your actual inference profile ARN
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INFERENCE_PROFILE_ARN = model
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REGION = "us-east-1"
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# System prompt for the agent
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SYSTEM_PROMPT=""" You are a analitical agent, with acess to monthly reports about Bacio di latte
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contexto_data = get_contexto()
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if contexto_data["filter"]=="period":
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CONSULT_RULES="""To use the tools you must give the id of the correspondant data, which can be associated to a given month and year in the following format year_month, which:
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-Year is the year in 4 digits (2025,2024,2023,2022,2021,...)
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-Month is th two digit representation: 01,02,03,04,05,06,07,08,09,10,11,12
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The format of the dict is: {id1:year_month1,id2:year_month2...}
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Choose the correct id based on the following dict:
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"""
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elif contexto_data["filter"]=="event":
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CONSULT_RULES="""To use the tools you must give the id of the correspondant data, which can be associated to a event, which is in the format "Name - City DD/MM/YYYY", where the last is a date in the format day/month/year. Theformat of elements in dict is {id1:event_description1,id2:event_description2...}"""
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else:
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CONSULT_RULES="""Wrong filter value, you must terminate the workflow and ask the user to contact the technical team"""
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SYSTEM_PROMPT=""" You are a analitical agent in Brazilian Portuguese, with acess to monthly reports about a specific company, specified in the context. You have access to tools that lets you consult present variables in table, you always have access to "context", which keeps inside answers to different questions, that you may consult as you desire.
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Do not access other variables besides the ones reported by the tool and "context".
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You currently have access to data in a period specified in the context, so only answer questions inside the time window.
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<context>
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A Bacio di Latte é uma rede de gelaterias artesanais fundada em São Paulo, Brasil, em 2011, pelos irmãos milaneses Edoardo e Luigi Tonolli, que trouxeram a tradição do gelato italiano com ingredientes de alta qualidade, resultando em um sorvete cremoso e fresco, produzido diariamente, sem gordura hidrogenada ou trans, e que se tornou popular não só no Brasil, mas também nos EUA, representando uma experiência autêntica de gelato.
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<\context>
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<reports>
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"""+drt.read_table_as_xml("poc_dnx_monthly_summary","us-east-1")+""""
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<\reports>
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"""+contexto_data["contexto"]+"""
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</context>
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"""+CONSULT_RULES+"""
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<correlation>
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"""+str(contexto_data["items_disponiveis"])+"""
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</correlation>
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Here is the chat history:"""+history+"""
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Aswer the user the best you can with the given information, if you don't know the answer or how to answer say so, only answer from what you know."""
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Inside the "NPS" in data is some useful values to calculate the NPS, which includes "distribuicao".
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Inside of it are grades and the amount of people who given that grade.
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Grades from 0 to 6 are detractors.
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Grades from 7 to 8 are neutral.
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Grades from 9 to 10 are promoters.
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Calculate the percentage of them when prompted about NPS and then calculate the nps using the following formula: NPS = %promoter - %detractor, never use the medium of the notes.
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You have access to the tools:
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-get_consolidated_keys: Given a id returns the column names inside of a entity of a given table element.
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- get_monthly_report: given a id and a variable name, either one listed in the previous tool output or "context", returns its value. Using "context" gives you a summarization of many answers of questions asked to the customers.
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Answer, in Brazilian Portuguese, to the user the best you can with the given information, if you don't know the answer or how to answer say so, only answer from what you know.
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Always consult the most recent information when a date is not given, like questions "Quanto é meu nps?" """
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print("=" * 60)
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print("LangGraph Agent with AWS Bedrock Inference Profile + Tools")
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@@ -297,11 +423,10 @@ def main(user_query,history,model):
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print("\nSystem Prompt: Configured ✓")
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print("=" * 60)
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# Create the agent
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# Create the agent with a unique session_id to group all steps
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langfuse_handler = CallbackHandler()
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agent = create_agent(INFERENCE_PROFILE_ARN, REGION)
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# Example query that requires tools
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# Initialize state with system prompt
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initial_state = {
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"messages": [
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@@ -314,8 +439,9 @@ def main(user_query,history,model):
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print(f"\nUser Query: {user_query}\n")
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print("-" * 60)
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# Run the agent
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final_state = agent.invoke(initial_state)
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# Run the agent with callbacks at graph level
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config = {"callbacks": [langfuse_handler], "tags": [DASHBOARD]}
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final_state = agent.invoke(initial_state, config=config)
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# Display results
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print("-" * 60)
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@@ -336,7 +462,21 @@ def main(user_query,history,model):
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print("\n" + "=" * 60)
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print(f"Agent completed successfully. Final step: {final_state['current_step']}")
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# Aggregate token usage from all AIMessage objects
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total_input_tokens = 0
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total_output_tokens = 0
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for msg in final_state["messages"]:
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if isinstance(msg, AIMessage) and hasattr(msg, 'usage_metadata') and msg.usage_metadata:
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total_input_tokens += msg.usage_metadata.get("input_tokens", 0)
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total_output_tokens += msg.usage_metadata.get("output_tokens", 0)
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langfuse.flush()
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return final_state['messages'][-1].content
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return {
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"response": final_state['messages'][-1].content,
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"input_tokens": total_input_tokens,
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"output_tokens": total_output_tokens,
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"total_tokens": total_input_tokens + total_output_tokens,
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}
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if __name__=="__main__":
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main("oi","ancar_nps_tradicional","","")
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main("Liste o nps mês a mês desde maio 2025 até dezembro 2025","","anthropic.claude-sonnet-4-5-20250929-v1:0")
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@@ -1,209 +0,0 @@
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"""
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DynamoDB Table Reader Script
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This script connects to AWS DynamoDB and reads all entries from a specified table.
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Outputs data in XML format with <period> tags containing the context XML content.
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Usage:
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from dynamodb_read_table import read_table_as_xml
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xml_content = read_table_as_xml("my-table-name")
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"""
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import re
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import boto3
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from botocore.exceptions import ClientError
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def clean_context_xml(context: str) -> str:
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"""
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Remove XML declaration and <relatorio> tags from context content.
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Args:
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context: Raw XML content from DynamoDB
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Returns:
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Cleaned XML content without declaration and relatorio tags
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"""
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# Remove XML declaration (e.g., <?xml version="1.0" encoding="UTF-8"?>)
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context = re.sub(r'<\?xml[^?]*\?>\s*', '', context)
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# Remove opening <relatorio> tag (with any attributes)
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context = re.sub(r'<relatorio[^>]*>\s*', '', context)
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# Remove closing </relatorio> tag
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context = re.sub(r'\s*</relatorio>', '', context)
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return context.strip()
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def remove_xml_declaration(content: str) -> str:
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"""
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Remove only the XML declaration from content.
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Args:
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content: Raw XML content
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Returns:
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Content without XML declaration (keeps relatorio tags)
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"""
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content = re.sub(r'<\?xml[^?]*\?>\s*', '', content)
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return content.strip()
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def format_items_to_xml(items: list) -> str:
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"""
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Format all DynamoDB items to XML format.
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Each item's 'period' field becomes a <period> tag,
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and the 'context' and 'dados_consolidados' fields are placed inside it.
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Args:
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items: List of DynamoDB items
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Returns:
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Complete XML formatted string with all items
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"""
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xml_parts = []
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for item in items:
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period = item.get("period", "unknown")
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context = item.get("context", "")
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dados_consolidados = item.get("dados_consolidados", "")
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# Clean the XML content
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cleaned_context = clean_context_xml(context)
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cleaned_dados = remove_xml_declaration(dados_consolidados)
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xml_parts.append(f"<{period}>")
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xml_parts.append(cleaned_context)
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if cleaned_dados:
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xml_parts.append(cleaned_dados)
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xml_parts.append(f"</{period}>")
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xml_parts.append("") # Empty line between entries
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return "\n".join(xml_parts)
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def get_dynamodb_client(region_name: str = "us-east-1"):
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"""Create and return a DynamoDB client."""
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session = boto3.Session()
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return session.client("dynamodb", region_name=region_name)
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def get_dynamodb_resource(region_name: str = "us-east-1"):
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"""Create and return a DynamoDB resource for higher-level operations."""
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session = boto3.Session()
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return session.resource("dynamodb", region_name=region_name)
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def scan_table(table_name: str, region_name: str = "us-east-1") -> list:
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"""
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Scan a DynamoDB table and return all items.
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Uses pagination to handle tables larger than 1MB response limit.
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Args:
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table_name: Name of the DynamoDB table to scan
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region_name: AWS region where the table is located
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Returns:
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List of all items in the table
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"""
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dynamodb = get_dynamodb_resource(region_name)
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table = dynamodb.Table(table_name)
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items = []
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last_evaluated_key = None
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try:
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while True:
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if last_evaluated_key:
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response = table.scan(ExclusiveStartKey=last_evaluated_key)
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else:
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response = table.scan()
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items.extend(response.get("Items", []))
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last_evaluated_key = response.get("LastEvaluatedKey")
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if not last_evaluated_key:
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break
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print(f"Successfully scanned {len(items)} items from table '{table_name}'")
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return items
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except ClientError as e:
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error_code = e.response["Error"]["Code"]
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error_message = e.response["Error"]["Message"]
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print(f"Error scanning table: {error_code} - {error_message}")
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raise
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def list_tables(region_name: str = "us-east-1") -> list:
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"""List all DynamoDB tables in the specified region."""
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client = get_dynamodb_client(region_name)
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tables = []
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last_evaluated_table_name = None
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try:
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while True:
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if last_evaluated_table_name:
|
||||
response = client.list_tables(ExclusiveStartTableName=last_evaluated_table_name)
|
||||
else:
|
||||
response = client.list_tables()
|
||||
|
||||
tables.extend(response.get("TableNames", []))
|
||||
|
||||
last_evaluated_table_name = response.get("LastEvaluatedTableName")
|
||||
if not last_evaluated_table_name:
|
||||
break
|
||||
|
||||
return tables
|
||||
|
||||
except ClientError as e:
|
||||
error_code = e.response["Error"]["Code"]
|
||||
error_message = e.response["Error"]["Message"]
|
||||
print(f"Error listing tables: {error_code} - {error_message}")
|
||||
raise
|
||||
|
||||
|
||||
def get_table_info(table_name: str, region_name: str = "us-east-1") -> dict:
|
||||
"""Get metadata information about a DynamoDB table."""
|
||||
client = get_dynamodb_client(region_name)
|
||||
|
||||
try:
|
||||
response = client.describe_table(TableName=table_name)
|
||||
table_info = response.get("Table", {})
|
||||
|
||||
return {
|
||||
"TableName": table_info.get("TableName"),
|
||||
"TableStatus": table_info.get("TableStatus"),
|
||||
"ItemCount": table_info.get("ItemCount"),
|
||||
"TableSizeBytes": table_info.get("TableSizeBytes"),
|
||||
"KeySchema": table_info.get("KeySchema"),
|
||||
"AttributeDefinitions": table_info.get("AttributeDefinitions"),
|
||||
"CreationDateTime": str(table_info.get("CreationDateTime")),
|
||||
}
|
||||
|
||||
except ClientError as e:
|
||||
error_code = e.response["Error"]["Code"]
|
||||
error_message = e.response["Error"]["Message"]
|
||||
print(f"Error describing table: {error_code} - {error_message}")
|
||||
raise
|
||||
|
||||
|
||||
def read_table_as_xml(table_name: str, region_name: str = "us-east-1") -> str:
|
||||
"""
|
||||
Read all entries from a DynamoDB table and return as XML string.
|
||||
|
||||
Args:
|
||||
table_name: Name of the DynamoDB table to read
|
||||
region_name: AWS region where the table is located (default: us-east-1)
|
||||
|
||||
Returns:
|
||||
XML formatted string with all items wrapped in <period> tags
|
||||
"""
|
||||
items = scan_table(table_name, region_name)
|
||||
return format_items_to_xml(items)
|
||||
if __name__=="__main__":
|
||||
print(read_table_as_xml("poc_dnx_monthly_summary","us-east-1"))
|
||||
Reference in New Issue
Block a user