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LangChain Forum - Latest posts

Proposal: additional docs for implementing custom DB checkpointers or a guide on generic base checkpointer Langsmith Fleet Sandbox Failure Prompt_cache_retention: &#39;24h&#39; supported in langchain agents and where to provide it, inside invoke or while creating client? Could RAG pipelines realistically cause deployment timeouts, is Render suitable for first-time RAG deployments? How do I use langchain_postgres&#39; init_vectorstore_table correctly? Proposal: Graph-wide default error handler for StateGraph (fallback for nodes without error_handler) Support timedelta for CachePolicy.ttl, consistent with TimeoutPolicy The x402 illusion: Is advertising dead in the age of agents? Question about LangSmith Trace Search via API How to cancel a run correct !! Anyone confirms this issue that deepagent ui streaming is disturb by update in deepagent or bug issue Would pre-inference routing help long-context agent workflows? Best Stack for Building AI Applications Question about LangSmith Trace Search Seeking help regarding the connection between Websocket and tool calls Tool invocation error with empty error message when using `InjectedState` + `Command` return in async tool How to use @langchain/react FileSystem middleware Using ChatSnowflake with agents Built llmsessioncontract on AgentMiddleware: runtime enforcement of tool-call protocols — feedback wanted DeltaChannelHistory not found in langgraph-api:3.12 Improving citation accuracy and reducing hallucinations in custom Parent-Child RAG pipeline (Gemma3:4B + FAISS+BM25 + Cross-encoder reranker) Metadata filter not filtering for alerts Connecting the Slack integration fails with invalid_team_for_non_distributed_app Trouble understanding and editing experiment summary evaluators feedbacks SSL certificate error from httpx with LangGraph server WikipediaLoader endup in JSONDecodeError Human-in-the-loop approval dashboard for LangGraph agents — open source, free to deploy How are people handling data governance across agent handoffs in production? 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Hosting an agent server on Heroku
@alexk Alex · 2026-04-18 · via LangChain Forum - Latest posts

I’m trying to host an agent on Heroku as an Agent Server.

I’ve been following this guide so far: Self-host standalone servers - Docs by LangChain

According to this, it needs access to a Postgres DB and Redis Store.

And on Heroku, I use the container registry as I figure that using Heroku’s build-system where you just push to their repo won’t work: Container Registry & Runtime (Docker Deploys) | Heroku Dev Center

One major problem is that the Langgraph server expects DATABASE_URIand REDIS_URIas environment variables. Heroku though sets these by itself as DATABASE_URL and REDIS_URL and we can’t change them, and the connection strings can be rotated by Heroku anytime.

Hence, just duplicating these variables and copying over the connection strings won’t work either (not long term, at least).

So I wondered if there’s a way to either configure Langgraph to use different variables (looking into langgraph_api/config.py it doesn’t seem like it’s possible) - or if I can set the variables somewhere else at runtime, when the docker container starts up or something?

I’ve also seen these here, maybe this helps? If so, where to define these vars and how do I set them to my DATABASE_URL from the Heroku environment?

Here’s my agent.py file - we also see that it loads another DATABASE_URL but that’s the one containing production data which the agent is supposed to be answering questions about.

import os
from datetime import datetime, timedelta

import dotenv
import numpy as np
import pandas as pd
from langchain.agents import create_agent
from langchain_community.agent_toolkits import SQLDatabaseToolkit
from langchain_community.utilities import SQLDatabase
from langgraph.checkpoint.memory import MemorySaver
from langchain_experimental.tools import PythonREPLTool
from langchain_experimental.utilities import PythonREPL
from langchain_openai import ChatOpenAI

from system_prompts import SQL_AGENT_PROMPT

dotenv.load_dotenv(override=False)

# Use LM Studio for local models or OpenAI for cloud
USE_LOCAL = os.getenv("USE_LOCAL", "false").lower() == "true"
# Disable checkpointer for langgraph server (enabled by default)
DISABLE_CHECKPOINTER = os.getenv("DISABLE_CHECKPOINTER", "false").lower() == "true"

# just for local hosting
if USE_LOCAL:
    model = ChatOpenAI(
        # Model name doesn't matter for LM Studio
        model=os.getenv("LOCAL_MODEL", "local-model"),
        temperature=0,
        streaming=True,
        base_url=os.getenv("LOCAL_BASE_URL", "http://localhost:1234/v1"),
        # LM Studio doesn't require API key
        api_key="not-needed",
    )
else:
    model = ChatOpenAI(model="gpt-5.1", temperature=0, streaming=True)


# was used for former deployment, might be obsolete
def normalize_db_uri(uri: str) -> str:
    """
    Normalize database connection URIs.
    - Convert 'postgres://' (Heroku) to 'postgresql://' (SQLAlchemy)
    """
    if not uri:
        return uri
    if uri.startswith("postgres://"):
        return uri.replace("postgres://", "postgresql://", 1)
    return uri


database_url = os.getenv("DATABASE_URL")
database_url = normalize_db_uri(database_url)

db = SQLDatabase.from_uri(database_url)

toolkit = SQLDatabaseToolkit(db=db, llm=model)

tools = [tool for tool in toolkit.get_tools() if
         tool.name != "sql_db_query_checker"]

# Add Python REPL tool for code execution with restricted globals
# Create Python REPL with restricted globals
python_repl_instance = PythonREPL(
    _globals={
        "pd": pd,
        "pandas": pd,
        "np": np,
        "numpy": np,
        "datetime": datetime,
        "timedelta": timedelta,
    }
)

# Create the tool with custom description
python_repl = PythonREPLTool(python_repl=python_repl_instance)
python_repl.description = (
    "A Python shell for executing code. Use this to process data, "
    "perform calculations, filter results, or do multi-step analysis. "
    "Input should be valid Python code. Available libraries: pandas (pd), "
    "numpy (np), datetime. Results from SQL queries can be converted to "
    "DataFrames for processing."
)
tools.append(python_repl)

system_prompt = SQL_AGENT_PROMPT.format(
    dialect=db.dialect,
    top_k=5,
)

checkpointer = None if DISABLE_CHECKPOINTER else MemorySaver()

agent = create_agent(
    model, tools, system_prompt=system_prompt, checkpointer=checkpointer
)