A coding agent built on Strands Agents SDK that replaces the tool-calling paradigm with code generation as the agent's primary action interface. Rather than invoking structured tools by name and passing results through the conversation context, the agent writes Python code in a persistent REPL where domain capabilities (database queries, APIs, etc.) are exposed as importable library functions. This keeps intermediate data as native Python objects in memory and lets the agent compose multi-step logic in a single code block instead of orchestrating sequential tool calls. In empirical evaluations on the Data Agent Benchmark, this code-generation paradigm achieves higher accuracy (+7%) while consuming 78% fewer input tokens, completing tasks 56% faster, and requiring 35% fewer reasoning cycles compared to an equivalent tool-calling agent. The library makes it easy to configure the Python environment with the libraries and domain-specific code your agent needs.
pip install strands-code-agentfrom strands_code_agent import CodeAgent
agent = CodeAgent(system_prompt="You are a helpful data analyst.")
response = agent("What is 2 ** 10?")The agent receives a python_repl tool automatically and solves tasks by writing and executing Python code.
CodeAgent extends the Strands Agent with a built-in Python REPL and automatic system-prompt enrichment.
| Parameter | Type | Description |
|---|---|---|
system_prompt |
str | None |
Base system prompt, extended with coding instructions. |
tools |
list | None |
Additional tools alongside the built-in Python REPL. |
toolkits |
list[Toolkit] | None |
Toolkits that configure the REPL environment (see below). |
tmp_dir |
bool |
If True (default), creates a temp directory and documents its path in the prompt. |
python_interpreter_class |
type[PythonInterpreter] |
The interpreter backend. Defaults to SandboxedPythonInterpreter (import restrictions via allowlist). Use ExecPythonInterpreter for lightweight unrestricted exec()-based execution. |
**kwargs |
Forwarded to the Strands Agent base class (e.g. model, callback_handler). |
A Toolkit bundles everything the REPL needs for a specific domain. Each field influences the CodeAgent in a specific way:
| Parameter | Type | Effect on PythonInterpreter |
Effect on System Prompt |
|---|---|---|---|
libraries |
list[str] | None |
Added to authorized_imports — the REPL will only allow imports from this allowlist. |
— |
initialization_code |
str | None |
Prepended to state_initialization — runs before every Agent snippet. |
Documented so the agent knows which symbols are pre-loaded. |
usage_instructions |
str | None |
— | Appended as-is, giving the agent guidance on how to use the libraries. |
domain_specific_code |
list | None |
Auto-imported in state_initialization (modules added to authorized_imports). |
Full signature + docstring of each symbol is documented so the agent can use them. |
from strands_code_agent.toolkits import Toolkit
VISUALIZATION_TOOLKIT = Toolkit(
# 1. libraries → PythonInterpreter.authorized_imports
# Allows the REPL to import these modules.
# Use "module.*" to allow a module and all its submodules.
libraries=["matplotlib.*", "seaborn.*"],
# 2. initialization_code → PythonInterpreter.state_initialization + System Prompt
# Runs before user code; also shown in the prompt so the agent
# knows plt and sns are already available.
initialization_code="""
import matplotlib
matplotlib.use('Agg') # Use non-interactive backend
import matplotlib.pyplot as plt
import seaborn as sns
""",
# 3. usage_instructions → System Prompt only
# Tells the agent how to behave with these libraries.
usage_instructions="Do not try to show any matplotlib image: the python_repl tool executes the code in a sub-process without a GUI.",
)The library ships with ready-to-use toolkits:
from strands_code_agent.toolkits import (
VISUALIZATION_TOOLKIT, # matplotlib + seaborn (non-interactive backend)
DATA_ANALYSIS_TOOLKIT, # numpy + pandas + scipy + datetime
)Pass your own functions or classes via domain_specific_code. The CodeAgent will:
- Auto-import them in
PythonInterpreter.state_initialization(their modules are added toauthorized_imports). - Document each symbol's full signature and docstring in the System Prompt, so the agent knows how to call them.
from strands_code_agent import CodeAgent, Toolkit
def calculate_roi(investment: float, returns: float) -> float:
"""Calculate return on investment as a percentage."""
return (returns - investment) / investment * 100
agent = CodeAgent(
system_prompt="You are a finance assistant.",
toolkits=[
Toolkit(domain_specific_code=[calculate_roi])
],
)
response = agent("What is the ROI if I invest 1000 and get back 1250?")from strands_code_agent import CodeAgent
from strands_code_agent.toolkits import DATA_ANALYSIS_TOOLKIT, VISUALIZATION_TOOLKIT
agent = CodeAgent(
system_prompt="You are a data analyst.",
toolkits=[DATA_ANALYSIS_TOOLKIT, VISUALIZATION_TOOLKIT],
)The test suite uses pytest. Install it and run from the project root:
pip install pytest
python -m pytest tests/ -vSee CONTRIBUTING for more information.
This library is licensed under the MIT-0 License. See the LICENSE file.