- Add LogLevel Literal type: CRITICAL, ERROR, WARNING, NOTICE, INFO, DEBUG - Add log_target validation to accept special values (STDOUT, STDERR, SYSLOG) or validated file paths within allowed directories - Update GlobalConfigResponse to use LogLevel type - Add field_validator for log_target in both GlobalConfigUpdate and GlobalConfigResponse following the same pattern as AddLogPathRequest - Add @autouse fixture to test_config_service.py to mock get_settings - Update existing tests to use uppercase log level values - Add 12 comprehensive tests for new validation in test_models.py - Update Features.md to document valid log_target and log_level values - Add section to Backend-Development.md documenting Literal types and field_validator patterns with examples Co-authored-by: Copilot <223556219+Copilot@users.noreply.github.com>
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Backend Development — Rules & Guidelines
Rules and conventions every backend developer must follow. Read this before writing your first line of code.
1. Language & Typing
- Python 3.12+ is the minimum version.
- Every function, method, and variable must have explicit type annotations — no exceptions.
- Use
str,int,float,bool,Nonefor primitives. - Use
list[T],dict[K, V],set[T],tuple[T, ...](lowercase, built-in generics) — nevertyping.List,typing.Dict, etc. - Use
T | Noneinstead ofOptional[T]. - Use
TypeAlias,TypeVar,Protocol, andNewTypewhen they improve clarity. - Return types are mandatory — including
-> None. - Never use
Anyunless there is no other option and a comment explains why. - Run
mypy --strict(orpyrightin strict mode) — the codebase must pass with zero errors.
# Good
def get_jail_by_name(name: str) -> Jail | None:
...
# Bad — missing types
def get_jail_by_name(name):
...
2. Core Libraries
| Purpose | Library | Notes |
|---|---|---|
| Web framework | FastAPI | Async endpoints only. |
| Data validation & settings | Pydantic v2 | All request/response bodies and config models. |
| Async HTTP client | aiohttp (ClientSession) |
For external calls (blocklists, IP lookups). |
| Scheduling | APScheduler 4.x (async) | Blocklist imports, periodic health checks. |
| Structured logging | structlog | Every log call must use structlog — never print() or logging directly. |
| Database | aiosqlite | Async SQLite access for the application database. |
| Testing | pytest + pytest-asyncio + httpx (AsyncClient) |
Every feature needs tests. |
| Mocking | unittest.mock / pytest-mock | Isolate external dependencies. |
| Date & time | datetime (stdlib) — always timezone-aware | Use datetime.datetime.now(datetime.UTC). Never naive datetimes. |
| IP / Network | ipaddress (stdlib) | Validate and normalise IPs and CIDR ranges. |
| Environment / config | pydantic-settings | Load .env and environment variables into typed models. |
| fail2ban integration | fail2ban client (bundled) | Use the local copy at ./fail2ban-master. Import from ./fail2ban-master/fail2ban/client to communicate with the fail2ban socket. Do not install fail2ban as a pip package. |
fail2ban Client Usage
The repository ships with a vendored copy of fail2ban located at ./fail2ban-master.
All communication with the fail2ban daemon must go through the client classes found in ./fail2ban-master/fail2ban/client.
Add the project root to sys.path (or configure it in pyproject.toml as a path dependency) so that from fail2ban.client ... resolves to the bundled copy.
import sys
from pathlib import Path
# Ensure the bundled fail2ban is importable
sys.path.insert(0, str(Path(__file__).resolve().parents[2] / "fail2ban-master"))
from fail2ban.client.csocket import CSSocket # noqa: E402
Libraries you must NOT use
requests— useaiohttp(async).flask— we use FastAPI.celery— we use APScheduler.print()for logging — usestructlog.json.loads/json.dumpson Pydantic models — use.model_dump()/.model_validate().
Timestamp Handling
Timestamp consistency is critical for accurate ban history queries across the dashboard and history endpoints. Follow these rules:
Rule 1: Use consistent UTC timestamps
- All timestamps in the database are stored as Unix epochs (seconds since 1970-01-01 UTC).
- fail2ban stores timestamps using
time.time(), which is always UTC epoch seconds. - When querying fail2ban's SQLite database by timestamp, use
app.utils.time_utils.since_unix()(not manual datetime calculations).
Rule 2: Time-range windows include a 60-second slack
- The
since_unix()function includes a 60-second slack window (TIME_RANGE_SLACK_SECONDSinapp.utils.constants). - This slack accommodates:
- Clock drift between the local system and fail2ban.
- Test seeding delays when timestamps are manually set to exact boundaries.
- The slack ensures that dashboard and history queries return consistent row counts for the same time range.
Rule 3: Never duplicate timestamp calculation logic
- All services that query by time range must import and use
since_unix(). - Do not recalculate timestamps locally using
datetimeortimemodules in service code. - If you need a timestamp for a time range, use
since_unix().
Example:
from app.utils.time_utils import since_unix
# Get all bans from the last 24 hours (with 60-second slack)
since_ts: int = since_unix("24h")
rows = await db.execute(
"SELECT * FROM bans WHERE timeofban >= ?",
(since_ts,)
)
3. Project Structure
backend/
├── app/
│ ├── __init__.py
│ ├── main.py # FastAPI app factory, lifespan
│ ├── config.py # Pydantic settings
│ ├── dependencies.py # FastAPI dependency providers
│ ├── models/ # Pydantic schemas (request, response, domain)
│ ├── routers/ # FastAPI routers grouped by feature
│ ├── services/ # Business logic — one service per domain
│ ├── repositories/ # Database access layer
│ ├── tasks/ # APScheduler jobs
│ └── utils/ # Helpers, constants, shared types
├── tests/
│ ├── conftest.py
│ ├── test_routers/
│ ├── test_services/
│ └── test_repositories/
├── pyproject.toml
└── .env.example
- Routers receive requests, validate input via Pydantic, and delegate to services.
- Services contain business logic and call repositories or external clients.
- Repositories handle raw database queries — nothing else.
- Never put business logic inside routers or repositories.
4. FastAPI Conventions
-
Use async def for every endpoint — no sync endpoints.
-
Every endpoint must declare explicit response models (
response_model=...). -
Use Pydantic models for request bodies and query parameters — never raw dicts.
-
Use Depends() for dependency injection (database sessions, services, auth).
-
Group endpoints into routers by feature domain (
routers/jails.py,routers/bans.py, …). -
Use appropriate HTTP status codes:
201for creation,204for deletion with no body,404for not found, etc. -
Protected endpoints should return
401 Unauthorizedor403 Forbiddenwhen the session is invalid or expired; the frontend treats these responses as a session-expiry event and redirects the user to/login. -
Use HTTPException or custom exception handlers — never return error dicts manually.
-
GET endpoints are read-only — never call
db.commit()or execute INSERT/UPDATE/DELETE inside a GET handler. If a GET path produces side-effects (e.g., caching resolved data), that write belongs in a background task, a scheduled flush, or a separate POST endpoint. Users and HTTP caches assume GET is idempotent and non-mutating.# Good — pass db=None on GET so geo_service never commits result = await geo_service.lookup_batch(ips, http_session, db=None) # Bad — triggers INSERT + COMMIT per IP inside a GET handler result = await geo_service.lookup_batch(ips, http_session, db=app_db)
from fastapi import APIRouter, Depends, HTTPException, status
from app.models.jail import JailResponse, JailListResponse
from app.services.jail_service import JailService
router: APIRouter = APIRouter(prefix="/api/jails", tags=["Jails"])
@router.get("/", response_model=JailListResponse)
async def list_jails(service: JailService = Depends()) -> JailListResponse:
jails: list[JailResponse] = await service.get_all_jails()
return JailListResponse(jails=jails)
5. Pydantic Models
- Every model inherits from
pydantic.BaseModel. - Use
model_config = ConfigDict(strict=True)where appropriate. - Field names use snake_case in Python, export as camelCase to the frontend via alias generators if needed.
- Validate at the boundary — once data enters a Pydantic model it is trusted.
- Use
Field(...)with descriptions for every field to keep auto-generated docs useful. - Separate request models, response models, and domain (internal) models — do not reuse one model for all three.
from pydantic import BaseModel, Field
from datetime import datetime
class BanResponse(BaseModel):
ip: str = Field(..., description="Banned IP address")
jail: str = Field(..., description="Jail that issued the ban")
banned_at: datetime = Field(..., description="UTC timestamp of the ban")
expires_at: datetime | None = Field(None, description="UTC expiry, None if permanent")
ban_count: int = Field(..., ge=1, description="Number of times this IP was banned")
Using Literal Types for Constrained Strings
When a field should only accept a small set of predefined values, use Literal to enforce this at the type level:
from typing import Literal
from pydantic import BaseModel, Field
LogLevel = Literal["CRITICAL", "ERROR", "WARNING", "NOTICE", "INFO", "DEBUG"]
class GlobalConfigUpdate(BaseModel):
log_level: LogLevel | None = Field(
default=None,
description="Log level: CRITICAL, ERROR, WARNING, NOTICE, INFO, or DEBUG.",
)
This provides:
- Type safety — IDEs and type checkers enforce valid values.
- API documentation — OpenAPI docs automatically list all allowed values.
- Validation — Pydantic rejects invalid values and provides a clear error message.
Custom Field Validators
For fields that require complex validation (e.g., file paths that must be within allowed directories), use @field_validator:
from pydantic import field_validator
class AddLogPathRequest(BaseModel):
log_path: str = Field(..., description="Absolute path to the log file to monitor.")
@field_validator("log_path", mode="after")
@classmethod
def validate_log_path(cls, value: str) -> str:
"""Validate that the log path is within allowed directories."""
settings = get_settings()
resolved_path = Path(value).resolve()
for allowed_dir in settings.allowed_log_dirs:
if resolved_path.is_relative_to(Path(allowed_dir).resolve()):
return value
raise ValueError(f"Path {value!r} is outside allowed directories")
Key points:
- Use
mode="after"to validate after Pydantic's basic type coercion. - Raise
ValueErrorif validation fails; Pydantic converts it to an HTTP 400 response. - Never use string prefix matching for path validation (e.g.,
path.startswith("/var/log")). UsePath.is_relative_to()to avoid bypasses like/var/log_evil/file.log. - Resolve symlinks before validating to prevent symlink-based escapes.
6. Async Rules
-
Never call blocking / synchronous I/O in an async function — no
time.sleep(), no synchronous file reads, norequests.get(). -
Use
aiohttp.ClientSessionfor HTTP calls,aiosqlitefor database access. -
Use
asyncio.TaskGroup(Python 3.11+) when you need to run independent coroutines concurrently. -
Long-running startup/shutdown logic goes into the FastAPI lifespan context manager.
-
Never call
db.commit()inside a loop. With aiosqlite, every commit serialises through a background thread and forces anfsync. N rows × 1 commit = N fsyncs. Accumulate all writes in the loop, then issue a singledb.commit()once after the loop ends. The difference between 5,000 commits and 1 commit can be seconds vs milliseconds.# Good — one commit for the whole batch for ip, info in results.items(): await db.execute(INSERT_SQL, (ip, info.country_code, ...)) await db.commit() # ← single fsync # Bad — one fsync per row for ip, info in results.items(): await db.execute(INSERT_SQL, (ip, info.country_code, ...)) await db.commit() # ← fsync on every iteration -
Prefer
executemany()over callingexecute()in a loop when inserting or updating multiple rows with the same SQL template. aiosqlite passes the entire batch to SQLite in one call, reducing Python↔thread overhead on top of the single-commit saving.# Good await db.executemany(INSERT_SQL, [(ip, cc, cn, asn, org) for ip, info in results.items()]) await db.commit() -
Shared resources (DB connections, HTTP sessions) are created once during startup and closed during shutdown — never inside request handlers.
from contextlib import asynccontextmanager
from collections.abc import AsyncGenerator
from fastapi import FastAPI
import aiohttp
import aiosqlite
@asynccontextmanager
async def lifespan(app: FastAPI) -> AsyncGenerator[None]:
# Startup
app.state.http_session = aiohttp.ClientSession()
app.state.db = await aiosqlite.connect("bangui.db")
yield
# Shutdown
await app.state.http_session.close()
await app.state.db.close()
7. Logging
- Use structlog for every log message.
- Bind contextual key-value pairs — never format strings manually.
- Log levels:
debugfor development detail,infofor operational events,warningfor recoverable issues,errorfor failures,criticalfor fatal problems. - Never log sensitive data (passwords, tokens, session tokens, raw credentials, private keys).
- For session correlation without leaking token material, use a one-way hash fragment:
hashlib.sha256(token.encode()).hexdigest()[:12]. - Use numeric database IDs for entity correlation instead of raw identifiers:
session_id=session.idinstead oftoken=session.token.
- For session correlation without leaking token material, use a one-way hash fragment:
import structlog
import hashlib
log: structlog.stdlib.BoundLogger = structlog.get_logger()
async def ban_ip(ip: str, jail: str) -> None:
log.info("banning_ip", ip=ip, jail=jail)
try:
await _execute_ban(ip, jail)
log.info("ip_banned", ip=ip, jail=jail)
except BanError as exc:
log.error("ban_failed", ip=ip, jail=jail, error=str(exc))
raise
async def logout_session(db: aiosqlite.Connection, token: str) -> None:
# Use a one-way hash for token correlation in logs
token_hash = hashlib.sha256(token.encode()).hexdigest()[:12]
await session_repo.delete_session(db, token)
log.info("session_terminated", token_hash=token_hash)
8. Error Handling
- Define custom exception classes for domain errors (e.g.,
JailNotFoundError,BanFailedError). - Catch specific exceptions — never bare
except:orexcept Exception:without re-raising. - Map domain exceptions to HTTP status codes via FastAPI exception handlers registered on the app.
- Always log errors with context before raising.
class JailNotFoundError(Exception):
def __init__(self, name: str) -> None:
self.name: str = name
super().__init__(f"Jail '{name}' not found")
# In main.py
@app.exception_handler(JailNotFoundError)
async def jail_not_found_handler(request: Request, exc: JailNotFoundError) -> JSONResponse:
return JSONResponse(status_code=404, content={"detail": f"Jail '{exc.name}' not found"})
Routers and Exception Propagation
- Routers must NOT construct
HTTPExceptionfor domain errors — let domain exceptions propagate. - Routers should never have helper functions like
_bad_gateway(),_not_found(),_conflict()etc. that convert domain exceptions toHTTPException. - All domain exception types must have corresponding handlers registered in
main.pyviaapp.add_exception_handler(). - Exception handlers are registered in order from most specific to least specific — FastAPI evaluates them in registration order.
# ❌ BAD — routers constructing HTTPException for domain exceptions
@router.get("/{name}")
async def get_jail(name: str, socket_path: Fail2BanSocketDep) -> JailDetailResponse:
try:
return await jail_service.get_jail(socket_path, name)
except JailNotFoundError:
raise HTTPException(status_code=404, detail=f"Jail not found: {name!r}") from None
# ✅ GOOD — domain exception propagates to global handler
@router.get("/{name}")
async def get_jail(name: str, socket_path: Fail2BanSocketDep) -> JailDetailResponse:
return await jail_service.get_jail(socket_path, name)
All domain exceptions raised by services propagate to handlers in main.py, ensuring:
- Consistent error response format across the entire API.
- No duplicated exception-to-HTTP-status mapping logic.
- Easy to audit all error codes — they are all in one place.
9. Testing
- Every new feature or bug fix must include tests.
- Tests live in
tests/mirroring theapp/structure. - Use
pytestwithpytest-asynciofor async tests. - Use
httpx.AsyncClientto test FastAPI endpoints (notTestClientwhich is sync). - Mock external dependencies (fail2ban socket, aiohttp calls) — tests must never touch real infrastructure.
- Aim for >80 % line coverage — critical paths (auth, banning, scheduling) must be 100 %.
- Test names follow
test_<unit>_<scenario>_<expected>pattern.
import pytest
from httpx import AsyncClient, ASGITransport
from app.main import create_app
@pytest.fixture
async def client() -> AsyncClient:
app = create_app()
transport: ASGITransport = ASGITransport(app=app)
async with AsyncClient(transport=transport, base_url="http://test") as ac:
yield ac
@pytest.mark.asyncio
async def test_list_jails_returns_200(client: AsyncClient) -> None:
response = await client.get("/api/jails/")
assert response.status_code == 200
data: dict = response.json()
assert "jails" in data
9.1 Background Tasks and Scheduler Architecture
BanGUI uses APScheduler 4.x (async mode) to manage background jobs that execute on a schedule without user interaction. This section documents how to write and register background tasks.
Task Location and Structure
All background tasks live in backend/app/tasks/ as separate modules. Each task:
- Exports a
register(app: FastAPI) -> Noneorasync def register(app: FastAPI) -> Nonefunction. - Opens its own database connection using
app.db.open_db()or thetask_db()helper. - Closes connections when work completes (use the async context manager pattern).
- Runs independently of the FastAPI request/response cycle.
Example Task
# backend/app/tasks/my_task.py
import structlog
from fastapi import FastAPI
from apscheduler.schedulers.asyncio import AsyncIOScheduler
log = structlog.get_logger()
async def my_background_job(app: FastAPI) -> None:
"""Do important work on a schedule."""
log.info("my_background_job_started")
try:
db = await app.db.open_db(app.state.settings.database_path)
try:
# Do work...
pass
finally:
await db.close()
except Exception:
log.error("my_background_job_failed", exc_info=True)
def register(app: FastAPI) -> None:
"""Register the job with the scheduler."""
scheduler: AsyncIOScheduler = app.state.scheduler
scheduler.add_job(
my_background_job,
args=(app,),
trigger="interval",
seconds=60,
id="my_task",
name="My Background Job",
)
Accessing Shared Resources in Tasks
Since tasks do not have access to Depends(get_db) (no request scope), they must:
- Open their own DB connection via
app.state.db_factory.open_db(path). - Access app-level state —
app.state.http_session,app.state.geo_cache,app.state.settings, etc. - Use structlog for all logging (never
print()).
Single-Worker Requirement
The scheduler is bound to a single asyncio event loop and cannot be shared across multiple worker processes. BanGUI enforces single-worker mode to prevent duplicate task execution.
- Deployment constraint: Set
BANGUI_WORKERS=1(default). - Startup validation:
startup_shared_resources()raisesRuntimeErrorifBANGUI_WORKERS > 1. - See Architekture.md § 9.2 for full details.
10. Code Style & Tooling
| Tool | Purpose |
|---|---|
| Ruff | Linter and formatter (replaces black, isort, flake8). |
| mypy or pyright | Static type checking in strict mode. |
| pre-commit | Run ruff + type checker before every commit. |
- Line length: 120 characters max.
- Strings: use double quotes (
"). - Imports: sorted by ruff — stdlib → third-party → local, one import per line.
- No unused imports, no unused variables, no
# type: ignorewithout explanation. - Docstrings in Google style on every public function, class, and module.
11. fail2ban Response Utilities
All services that interact with the fail2ban daemon must use the canonical response parsing utilities from app.utils.fail2ban_response. This ensures consistent error handling, type safety, and makes it easy to fix bugs in response handling across the entire codebase.
Available Functions
ok(response: object) -> object
Extracts the payload from a fail2ban (return_code, data) response tuple.
- Raises
ValueErrorif return code ≠ 0 or response shape is invalid. - Use this on every response from
Fail2BanClient.send().
to_dict(pairs: object) -> dict[str, object]
Converts a list of (key, value) pairs (fail2ban's native response format) to a Python dict.
- Silently ignores malformed entries and non-list/tuple inputs.
- Always returns a dict (empty if input is invalid).
ensure_list(value: object | None) -> list[str]
Coerces fail2ban response values (which may be None, a single string, or a list) to a normalized list of strings.
- Handles all three cases consistently.
- Returns empty list for
Noneor empty strings.
is_not_found_error(exc: Exception) -> bool
Checks if an exception indicates a jail does not exist.
- Checks for multiple error message patterns (case-insensitive).
- Use this to distinguish "jail not found" errors from other failures.
Example Usage
from app.utils.fail2ban_response import ok, to_dict, ensure_list, is_not_found_error
from app.utils.fail2ban_client import Fail2BanClient
client = Fail2BanClient(socket_path="/var/run/fail2ban/fail2ban.sock")
try:
# Get jail status
response = await client.send(["status", "sshd", "short"])
status_dict = to_dict(ok(response)) # Extract payload and convert to dict
# Get list of banned IPs
ban_response = await client.send(["get", "sshd", "banip"])
banned_ips = ensure_list(ok(ban_response)) # Normalize to list of strings
except ValueError as exc:
if is_not_found_error(exc):
raise JailNotFoundError("sshd") from exc
raise
Why This Matters
Before this utility module, every service implemented its own copy of these functions, leading to:
- Code duplication across 7+ service files.
- Subtle inconsistencies in error handling.
- Difficult maintenance — every bug fix required touching multiple files.
Now, all services import from a single authoritative source, making response handling consistent, maintainable, and type-safe.
12. Configuration & Secrets
- All configuration lives in environment variables loaded through pydantic-settings.
- Secrets (master password hash, session key) are never committed to the repository.
- Provide a
.env.examplewith all keys and placeholder values. - Validate config at startup — fail fast with a clear error if a required value is missing.
from pydantic_settings import BaseSettings
from pydantic import Field
class Settings(BaseSettings):
database_path: str = Field("bangui.db", description="Path to SQLite database")
fail2ban_socket: str = Field("/var/run/fail2ban/fail2ban.sock", description="fail2ban socket path")
session_secret: str = Field(..., description="Secret key for session signing")
log_level: str = Field("info", description="Logging level")
model_config = {"env_prefix": "BANGUI_", "env_file": ".env"}
Session Cookie Security
The session_cookie_secure configuration controls the Secure flag on the session cookie. This flag prevents browsers from sending the session cookie over unencrypted HTTP.
Default: true — Production deployments are secure by default. Cookies are only sent over HTTPS.
Local Development: Set BANGUI_SESSION_COOKIE_SECURE=false in your compose file or .env to allow cookies over HTTP (required for localhost:8000).
# Docker/compose.debug.yml
environment:
BANGUI_SESSION_COOKIE_SECURE: "false" # Allow HTTP during local development
Important: If Secure=true is set, browsers will reject the session cookie when the backend is served over HTTP. Ensure your nginx/reverse proxy terminates TLS and passes X-Forwarded-Proto: https so FastAPI knows the connection is secure.
fail2ban_start_command Configuration
The fail2ban_start_command setting specifies the shell command used to start the fail2ban daemon during recovery operations (e.g., after a rollback).
Format & Parsing:
- The command is split into arguments using
shlex.split(), which respects shell quoting rules. - Paths with spaces must be quoted. Example:
"/opt/my tools/fail2ban-client" start. - The command is not executed through a shell — no shell variables or globbing are interpreted.
Validation:
- The command is validated at startup using
shlex.split(). Mismatched quotes will raise aValueErrorwith the problematic command in the error message.
Environment Variables:
BANGUI_FAIL2BAN_START_COMMAND="fail2ban-client start" # Default
BANGUI_FAIL2BAN_START_COMMAND="systemctl start fail2ban" # systemd
BANGUI_FAIL2BAN_START_COMMAND='"/opt/my tools/fail2ban" start' # Quoted path
Common Pitfall:
Using .split() instead of shlex.split() would break commands with spaces in paths. Always use quoted strings for paths that contain whitespace.
Log Path Validation & Allowlisting
Authenticated users can instruct fail2ban to monitor additional log files through the API endpoint POST /api/config/jails/{name}/logpath. To prevent path-traversal attacks and unauthorized reads of sensitive system files, all requested log paths must resolve to locations within a configurable allowlist of safe directories.
Allowed Directories:
- Configured via the
BANGUI_ALLOWED_LOG_DIRSenvironment variable (comma-separated list). - Defaults to:
["/var/log", "/config/log"].
Path Validation Rules:
- The requested path is resolved to its canonical form using
Path(log_path).resolve(), which:- Expands relative paths to absolute paths.
- Resolves symbolic links to their real targets.
- Normalizes
.and..components.
- The resolved path is checked using
Path.is_relative_to()against each allowed directory prefix. - If the resolved path is not relative to any allowed directory, a
ValueErroris raised with a descriptive error message.
Implementation:
- Validation occurs in the Pydantic model
AddLogPathRequestusing a@field_validator. - The validator runs at request time, before the service layer is invoked.
- Symlinks that escape allowed directories are rejected (see symlink bypass tests).
Important: Use is_relative_to(), not startswith() or string prefix matching. The latter is bypassable with paths like /var/log_evil/file.log.
Environment Variables:
BANGUI_ALLOWED_LOG_DIRS="/var/log,/config/log" # Default
BANGUI_ALLOWED_LOG_DIRS="/var/log,/config/log,/home/app/logs" # Custom directory
Login Rate Limiting
The login endpoint (POST /api/auth/login) is protected against brute-force attacks using an in-memory rate limiter.
Design:
- Uses a
dict[str, deque[float]]keyed by client IP, storing login attempt timestamps within a time window. - Attempts outside the window are automatically removed during validation checks.
- Expired IP entries are cleaned up to prevent unbounded memory growth.
Rate Limit Rules:
- 5 attempts per 60 seconds per IP address.
- Requests exceeding the limit return HTTP 429 Too Many Requests with a
Retry-Afterheader. - Each failed login triggers a 10-second server-side delay (
asyncio.sleep) to further slow attacks, on top of bcrypt hashing (~100ms).
IP Extraction (Proxy Safety):
- When behind nginx, the rate limiter reads the real client IP from
X-Forwarded-FororX-Real-IPheaders. - Only trusts these headers when the immediate connection source is in a configured trusted proxy list.
- Prevents attackers from spoofing these headers to bypass rate limits.
- Falls back to the direct connection IP when proxy headers cannot be trusted.
Process-Local Limitation:
- The rate limiter is process-local (in-memory). In multi-worker deployments (e.g., Gunicorn with 4 workers), each worker maintains its own rate limit counter.
- This is acceptable because the single-worker constraint is enforced elsewhere. See TASK-002/003 notes for details.
Implementation:
- Rate limiter:
app.utils.rate_limiter.RateLimiter - IP extraction:
app.utils.client_ip.get_client_ip() - Dependency:
LoginRateLimiterDepinapp.dependencies
14. Git & Workflow
- Branch naming:
feature/<short-description>,fix/<short-description>,chore/<short-description>. - Commit messages: imperative tense, max 72 chars first line (
Add jail reload endpoint,Fix ban history query). - Every merge request must pass: ruff, type checker, all tests.
- Do not merge with failing CI.
- Keep pull requests small and focused — one feature or fix per PR.
15. Coding Principles
These principles are non-negotiable. Every backend contributor must internalise and apply them daily.
14.1 Clean Code
- Write code that reads like well-written prose — a new developer should understand intent without asking.
- Meaningful names — variables, functions, and classes must reveal their purpose. Avoid abbreviations (
cnt,mgr,tmp) unless universally understood. - Small functions — each function does exactly one thing. If you need a comment to explain a block inside a function, extract it into its own function.
- No magic numbers or strings — use named constants.
- Boy Scout Rule — leave every file cleaner than you found it.
- Avoid deep nesting — prefer early returns (guard clauses) to keep the happy path at the top indentation level.
# Good — guard clause, clear name, one job
async def get_active_ban(ip: str, jail: str) -> Ban:
ban: Ban | None = await repo.find_ban(ip=ip, jail=jail)
if ban is None:
raise BanNotFoundError(ip=ip, jail=jail)
if ban.is_expired():
raise BanExpiredError(ip=ip, jail=jail)
return ban
# Bad — nested, vague name
async def check(ip, j):
b = await repo.find_ban(ip=ip, jail=j)
if b:
if not b.is_expired():
return b
else:
raise Exception("expired")
else:
raise Exception("not found")
14.2 Separation of Concerns (SoC)
- Each module, class, and function must have a single, well-defined responsibility.
- Routers → HTTP layer only (parse requests, return responses).
- Services → business logic and orchestration.
- Repositories → data access and persistence.
- Models → data shapes and validation.
- Tasks → scheduled background jobs.
- Never mix layers — a router must not execute SQL, and a repository must not raise
HTTPException.
14.3 Single Responsibility Principle (SRP)
- A class or module should have one and only one reason to change.
- If a service handles both ban management and email notifications, split it into
BanServiceandNotificationService.
14.4 Don't Repeat Yourself (DRY)
- Extract shared logic into utility functions, base classes, or dependency providers.
- If the same block of code appears in more than one place, refactor it into a single source of truth.
- But don't over-abstract — premature DRY that couples unrelated features is worse than a little duplication (see Rule of Three: refactor when something appears a third time).
14.5 KISS — Keep It Simple, Stupid
- Choose the simplest solution that works correctly.
- Avoid clever tricks, premature optimisation, and over-engineering.
- If a standard library function does the job, prefer it over a custom implementation.
14.6 YAGNI — You Aren't Gonna Need It
- Do not build features, abstractions, or config options "just in case".
- Implement what is required now. Extend later when a real need emerges.
14.7 Dependency Inversion Principle (DIP)
- High-level modules (services) must not depend on low-level modules (repositories) directly. Both should depend on abstractions (protocols / interfaces).
- Use FastAPI's
Depends()to inject implementations — this makes swapping and testing trivial.
from typing import Protocol
class BanRepository(Protocol):
async def find_ban(self, ip: str, jail: str) -> Ban | None: ...
async def save_ban(self, ban: Ban) -> None: ...
class SqliteBanRepository:
"""Concrete implementation — depends on aiosqlite."""
async def find_ban(self, ip: str, jail: str) -> Ban | None: ...
async def save_ban(self, ban: Ban) -> None: ...
13.7.1 Repository Module Pattern — Module-as-Protocol Structural Compatibility
BanGUI uses module-level functions for repository implementations, not classes. Each repository module (e.g., session_repo.py, blocklist_repo.py) exports async functions that match the signatures defined in the Protocol interface in protocols.py. This is a structural typing pattern — mypy accepts the module as a valid Protocol implementation because the function signatures match, even though the module is not explicitly annotated as implementing the Protocol.
This approach works correctly with FastAPI's dependency injection via cast():
# In app/repositories/session_repo.py
async def create_session(db: aiosqlite.Connection, token: str, created_at: str, expires_at: str) -> Session:
"""Insert a new session row."""
...
# In app/repositories/protocols.py
class SessionRepository(Protocol):
async def create_session(
self,
db: aiosqlite.Connection,
token: str,
created_at: str,
expires_at: str,
) -> Session:
...
# In app/dependencies.py
async def get_session_repo() -> SessionRepository:
"""Provide the concrete session repository implementation."""
from app.repositories import session_repo
return session_repo # ← mypy accepts this because the module has matching functions
Why this pattern is used:
- Simplicity — no boilerplate class/instance wrapping.
- Compatibility — Python's structural typing (PEP 544) means the module automatically satisfies the Protocol interface if function signatures match.
- Testability — the same DIP principle applies; services depend on the Protocol, not the module directly, so tests can mock the Protocol.
Risks and mitigations:
- Silent breakage if function signatures change — If a parameter is added or removed from a module function, the module no longer satisfies the Protocol, but mypy does not flag this as an error because the module is loosely coupled. To prevent this, Protocol signatures in
protocols.pyare the source of truth. Always check that module functions match the Protocol definitions before merging changes. The CI/CD pipeline validates this compatibility at build time.
How the validation works (CI check):
- Before each deployment, run
mypy --strictto ensure all dependency providers return values compatible with their Protocol types. - The
cast()calls independencies.pyare a documented signal that structural compatibility is being verified externally, not via explicit class inheritance.
13.7.2 Session Cache Pluggability — Process-Local vs. Shared Backends
Session validation is expensive (SQLite lookup + password verification). To improve performance, validated session tokens are cached using the SessionCache interface (app.utils.session_cache). The default implementation, InMemorySessionCache, stores cached sessions in process-local memory.
Current implementation (single-worker):
from app.utils.session_cache import SessionCache, InMemorySessionCache, NoOpSessionCache
class SessionCache(Protocol):
"""Interface for session token validation cache backends."""
def get(self, token: str) -> Session | None: ...
def set(self, token: str, session: Session, ttl_seconds: float) -> None: ...
def invalidate(self, token: str) -> None: ...
def clear(self) -> None: ...
# Default in-memory implementation — PROCESS-LOCAL
class InMemorySessionCache:
def __init__(self) -> None:
self._entries: dict[str, tuple[Session, float]] = {}
Single-worker constraint:
InMemorySessionCache is process-local — each worker process has its own dict. In single-worker mode (enforced by TASK-002), this is safe and improves performance. In multi-worker deployments:
- A logout by worker A clears the session from A's cache, but worker B still has it → logout doesn't work.
- Enabling/disabling the cache requires restarting all workers to take effect.
Multi-worker solution:
To support multiple workers (future enhancement), implement a shared backend behind the same SessionCache Protocol:
# Example Redis implementation (not yet in codebase)
class RedisSessionCache:
"""Session cache backed by Redis."""
def __init__(self, redis_url: str) -> None:
self.client = aioredis.from_url(redis_url)
async def get(self, token: str) -> Session | None:
data = await self.client.get(f"session:{token}")
return Session.model_validate_json(data) if data else None
async def set(self, token: str, session: Session, ttl_seconds: float) -> None:
await self.client.setex(
f"session:{token}",
int(ttl_seconds),
session.model_dump_json()
)
async def invalidate(self, token: str) -> None:
await self.client.delete(f"session:{token}")
async def clear(self) -> None:
await self.client.flushdb()
To adopt a Redis backend:
- Create
RedisSessionCacheinapp.utils.session_cache. - Update
app.utils.runtime_state.set_runtime_settings()to instantiateRedisSessionCachewhenREDIS_URLenv var is set. - Update
app.config.Settingsto accept optionalREDIS_URL. - Tests continue to use
InMemorySessionCache(no Redis dependency in dev).
Implementation rules:
- All cache methods must be
async(even if the backend is sync). - Never log session tokens or session data.
- TTL must be respected — expired entries must be removed on access.
- See
app/utils/session_cache.pyfor the full Protocol definition and current implementations.
14.8 Composition over Inheritance
- Favour composing small, focused objects over deep inheritance hierarchies.
- Use mixins or protocols only when a clear "is-a" relationship exists; otherwise, pass collaborators as constructor arguments.
14.9 Fail Fast
- Validate inputs as early as possible — at the API boundary with Pydantic, at service entry with assertions or domain checks.
- Raise specific exceptions immediately rather than letting bad data propagate silently.
14.10 Law of Demeter (Principle of Least Knowledge)
- A function should only call methods on:
- Its own object (
self). - Objects passed as parameters.
- Objects it creates.
- Its own object (
- Avoid long accessor chains like
request.state.db.cursor().execute(...)— wrap them in a meaningful method.
14.11 Defensive Programming
- Never trust external input — validate and sanitise everything that crosses a boundary (HTTP request, file, socket, environment variable).
- Handle edge cases explicitly: empty lists,
Nonevalues, negative numbers, empty strings. - Use type narrowing and exhaustive pattern matching (
match/case) to eliminate impossible states.
14.12 SSRF Prevention (Server-Side Request Forgery)
When user-supplied URLs are fetched by the backend, validate them before making any HTTP requests:
-
Use Pydantic's
AnyHttpUrltype to restrict schemes tohttp://andhttps://only.- Rejects
file://,ftp://,gopher://, and other non-http schemes at the model boundary.
- Rejects
-
Validate resolved IP addresses before fetching:
- Parse the hostname and resolve it via DNS (using
socket.getaddrinfo()). - Use
ipaddress.ip_address().is_privateto reject private/reserved ranges:- RFC 1918:
10.0.0.0/8,172.16.0.0/12,192.168.0.0/16 - Loopback:
127.0.0.0/8,::1/128 - Link-local:
169.254.0.0/16,fe80::/10 - IPv6 site-local, multicast, and reserved ranges.
- RFC 1918:
- Raise
ValueErrorif validation fails; let the router convert it to HTTP 400.
- Parse the hostname and resolve it via DNS (using
-
Guard against DNS rebinding:
- Validate DNS at URL creation/validation time (performed during request deserialization).
- For additional safety, re-validate the connection IP at HTTP client time (e.g., custom
aiohttp.TCPConnectorcan inspect the resolved address during connect).
-
Example implementation (see
backend/app/utils/ip_utils.py):is_private_ip(ip_str: str) → bool: Checks if IP is private/reserved/loopback/link-local.async validate_blocklist_url(url: AnyHttpUrl) → None: Async DNS resolution + private IP check.- Service layer calls
await validate_blocklist_url(url)before persisting; router catchesValueErrorand returns 400.
16. Quick Reference — Do / Don't
| Do | Don't |
|---|---|
| Type every function, variable, return | Leave types implicit |
Use async def for I/O |
Use sync functions for I/O |
| Validate with Pydantic at the boundary | Pass raw dicts through the codebase |
| Log with structlog + context keys | Use print() or format strings in logs |
| Write tests for every feature | Ship untested code |
Use aiohttp for HTTP calls |
Use requests |
| Handle errors with custom exceptions | Use bare except: |
| Keep routers thin, logic in services | Put business logic in routers |
Use datetime.now(datetime.UTC) |
Use naive datetimes |
| Run ruff + mypy before committing | Push code that doesn't pass linting |
Keep GET endpoints read-only (no db.commit()) |
Call db.commit() / INSERT inside GET handlers |
Batch DB writes; issue one db.commit() after the loop |
Commit inside a loop (1 fsync per row) |
Use executemany() for bulk inserts |
Call execute() + commit() per row in a loop |