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Author SHA1 Message Date
Alexander Whitestone
d1fb50bf2f feat: add Anthropic transport abstraction slice (#951)
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- add transport registry, shared transport dataclasses, and AnthropicTransport
- add normalize_anthropic_response_v2 as the bridge from existing Anthropic normalization to shared transport types
- extend Anthropic stop-reason mapping for refusal and model_context_window_exceeded
- add targeted transport and v2 normalization regression tests

Closes #951
Refs #949
2026-04-22 11:20:20 -04:00
10 changed files with 886 additions and 314 deletions

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@@ -1396,6 +1396,8 @@ def normalize_anthropic_response(
"tool_use": "tool_calls",
"max_tokens": "length",
"stop_sequence": "stop",
"refusal": "content_filter",
"model_context_window_exceeded": "length",
}
finish_reason = stop_reason_map.get(response.stop_reason, "stop")
@@ -1409,3 +1411,42 @@ def normalize_anthropic_response(
),
finish_reason,
)
def normalize_anthropic_response_v2(
response,
strip_tool_prefix: bool = False,
) -> "NormalizedResponse":
"""Normalize Anthropic response to NormalizedResponse.
Wraps the existing normalize_anthropic_response() and maps its output
to the shared transport types. This allows incremental migration
without disturbing the legacy call sites.
"""
from agent.transports.types import NormalizedResponse, build_tool_call
assistant_msg, finish_reason = normalize_anthropic_response(response, strip_tool_prefix)
tool_calls = None
if assistant_msg.tool_calls:
tool_calls = [
build_tool_call(
id=tc.id,
name=tc.function.name,
arguments=tc.function.arguments,
)
for tc in assistant_msg.tool_calls
]
provider_data = {}
if getattr(assistant_msg, "reasoning_details", None):
provider_data["reasoning_details"] = assistant_msg.reasoning_details
return NormalizedResponse(
content=assistant_msg.content,
tool_calls=tool_calls,
finish_reason=finish_reason,
reasoning=getattr(assistant_msg, "reasoning", None),
usage=None,
provider_data=provider_data or None,
)

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@@ -0,0 +1,57 @@
"""Transport layer types and registry for provider response normalization.
Usage:
from agent.transports import get_transport
transport = get_transport("anthropic_messages")
result = transport.normalize_response(raw_response)
"""
from agent.transports.types import ( # noqa: F401
NormalizedResponse,
ToolCall,
Usage,
build_tool_call,
map_finish_reason,
)
_REGISTRY: dict = {}
def register_transport(api_mode: str, transport_cls: type) -> None:
"""Register a transport class for an api_mode string."""
_REGISTRY[api_mode] = transport_cls
def get_transport(api_mode: str):
"""Get a transport instance for the given api_mode.
Returns None if no transport is registered for this api_mode.
This allows gradual migration — call sites can check for None
and fall back to the legacy code path.
"""
if not _REGISTRY:
_discover_transports()
cls = _REGISTRY.get(api_mode)
if cls is None:
return None
return cls()
def _discover_transports() -> None:
"""Import all transport modules to trigger auto-registration."""
try:
import agent.transports.anthropic # noqa: F401
except ImportError:
pass
try:
import agent.transports.codex # noqa: F401
except ImportError:
pass
try:
import agent.transports.chat_completions # noqa: F401
except ImportError:
pass
try:
import agent.transports.bedrock # noqa: F401
except ImportError:
pass

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@@ -0,0 +1,95 @@
"""Anthropic Messages API transport.
Delegates to the existing adapter functions in agent/anthropic_adapter.py.
This transport owns format conversion and normalization — NOT client lifecycle.
"""
from typing import Any, Dict, List, Optional
from agent.transports.base import ProviderTransport
from agent.transports.types import NormalizedResponse
class AnthropicTransport(ProviderTransport):
"""Transport for api_mode='anthropic_messages'."""
@property
def api_mode(self) -> str:
return "anthropic_messages"
def convert_messages(self, messages: List[Dict[str, Any]], **kwargs) -> Any:
from agent.anthropic_adapter import convert_messages_to_anthropic
base_url = kwargs.get("base_url")
return convert_messages_to_anthropic(messages, base_url=base_url)
def convert_tools(self, tools: List[Dict[str, Any]]) -> Any:
from agent.anthropic_adapter import convert_tools_to_anthropic
return convert_tools_to_anthropic(tools)
def build_kwargs(
self,
model: str,
messages: List[Dict[str, Any]],
tools: Optional[List[Dict[str, Any]]] = None,
**params,
) -> Dict[str, Any]:
from agent.anthropic_adapter import build_anthropic_kwargs
return build_anthropic_kwargs(
model=model,
messages=messages,
tools=tools,
max_tokens=params.get("max_tokens", 16384),
reasoning_config=params.get("reasoning_config"),
tool_choice=params.get("tool_choice"),
is_oauth=params.get("is_oauth", False),
preserve_dots=params.get("preserve_dots", False),
context_length=params.get("context_length"),
base_url=params.get("base_url"),
fast_mode=params.get("fast_mode", False),
)
def normalize_response(self, response: Any, **kwargs) -> NormalizedResponse:
from agent.anthropic_adapter import normalize_anthropic_response_v2
strip_tool_prefix = kwargs.get("strip_tool_prefix", False)
return normalize_anthropic_response_v2(response, strip_tool_prefix=strip_tool_prefix)
def validate_response(self, response: Any) -> bool:
if response is None:
return False
content_blocks = getattr(response, "content", None)
if not isinstance(content_blocks, list):
return False
if not content_blocks:
return False
return True
def extract_cache_stats(self, response: Any):
usage = getattr(response, "usage", None)
if usage is None:
return None
cached = getattr(usage, "cache_read_input_tokens", 0) or 0
written = getattr(usage, "cache_creation_input_tokens", 0) or 0
if cached or written:
return {"cached_tokens": cached, "creation_tokens": written}
return None
_STOP_REASON_MAP = {
"end_turn": "stop",
"tool_use": "tool_calls",
"max_tokens": "length",
"stop_sequence": "stop",
"refusal": "content_filter",
"model_context_window_exceeded": "length",
}
def map_finish_reason(self, raw_reason: str) -> str:
return self._STOP_REASON_MAP.get(raw_reason, "stop")
from agent.transports import register_transport # noqa: E402
register_transport("anthropic_messages", AnthropicTransport)

61
agent/transports/base.py Normal file
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@@ -0,0 +1,61 @@
"""Abstract base for provider transports.
A transport owns the data path for one api_mode:
convert_messages → convert_tools → build_kwargs → normalize_response
It does NOT own: client construction, streaming, credential refresh,
prompt caching, interrupt handling, or retry logic. Those stay on AIAgent.
"""
from abc import ABC, abstractmethod
from typing import Any, Dict, List, Optional
from agent.transports.types import NormalizedResponse
class ProviderTransport(ABC):
"""Base class for provider-specific format conversion and normalization."""
@property
@abstractmethod
def api_mode(self) -> str:
"""The api_mode string this transport handles."""
...
@abstractmethod
def convert_messages(self, messages: List[Dict[str, Any]], **kwargs) -> Any:
"""Convert OpenAI-format messages to provider-native format."""
...
@abstractmethod
def convert_tools(self, tools: List[Dict[str, Any]]) -> Any:
"""Convert OpenAI-format tool definitions to provider-native format."""
...
@abstractmethod
def build_kwargs(
self,
model: str,
messages: List[Dict[str, Any]],
tools: Optional[List[Dict[str, Any]]] = None,
**params,
) -> Dict[str, Any]:
"""Build the complete provider kwargs dict."""
...
@abstractmethod
def normalize_response(self, response: Any, **kwargs) -> NormalizedResponse:
"""Normalize a raw provider response to the shared NormalizedResponse type."""
...
def validate_response(self, response: Any) -> bool:
"""Optional structural validation for raw responses."""
return True
def extract_cache_stats(self, response: Any) -> Optional[Dict[str, int]]:
"""Optional cache stats extraction."""
return None
def map_finish_reason(self, raw_reason: str) -> str:
"""Optional stop-reason mapping. Defaults to passthrough."""
return raw_reason

58
agent/transports/types.py Normal file
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@@ -0,0 +1,58 @@
"""Shared types for normalized provider responses."""
from __future__ import annotations
import json
from dataclasses import dataclass, field
from typing import Any, Dict, List, Optional
@dataclass
class ToolCall:
"""A normalized tool call from any provider."""
id: Optional[str]
name: str
arguments: str
provider_data: Optional[Dict[str, Any]] = field(default=None, repr=False)
@dataclass
class Usage:
"""Token usage from an API response."""
prompt_tokens: int = 0
completion_tokens: int = 0
total_tokens: int = 0
cached_tokens: int = 0
@dataclass
class NormalizedResponse:
"""Normalized API response from any provider."""
content: Optional[str]
tool_calls: Optional[List[ToolCall]]
finish_reason: str
reasoning: Optional[str] = None
usage: Optional[Usage] = None
provider_data: Optional[Dict[str, Any]] = field(default=None, repr=False)
def build_tool_call(
id: Optional[str],
name: str,
arguments: Any,
**provider_fields: Any,
) -> ToolCall:
"""Build a ToolCall, auto-serialising dict arguments."""
args_str = json.dumps(arguments) if isinstance(arguments, dict) else str(arguments)
provider_data = dict(provider_fields) if provider_fields else None
return ToolCall(id=id, name=name, arguments=args_str, provider_data=provider_data)
def map_finish_reason(reason: Optional[str], mapping: Dict[str, str]) -> str:
"""Translate a provider-specific stop reason to the normalized set."""
if reason is None:
return "stop"
return mapping.get(reason, "stop")

View File

@@ -20,7 +20,6 @@ Usage:
response = agent.run_conversation("Tell me about the latest Python updates")
"""
import ast
import asyncio
import base64
import concurrent.futures
@@ -3329,119 +3328,6 @@ class AIAgent:
_VALID_API_ROLES = frozenset({"system", "user", "assistant", "tool", "function", "developer"})
@staticmethod
def _normalize_tool_call_arguments(arguments: Any) -> tuple[str, bool]:
"""Return ``(normalized_text, is_complete)`` for tool-call arguments.
Conservative by design: repairs harmless formatting quirks common in
Gemma 4 / Ollama output (whitespace, trailing commas, Python-style
single-quoted dicts, bare key/value pairs) but does NOT auto-close
truncated JSON objects. Truly incomplete fragments must remain marked
incomplete so the agent can retry instead of silently dropping fields.
"""
if isinstance(arguments, (dict, list)):
return json.dumps(arguments, ensure_ascii=False, separators=(",", ":")), True
if arguments is None:
return "{}", True
if not isinstance(arguments, str):
arguments = str(arguments)
text = arguments.strip()
if not text:
return "{}", True
def _parse_candidate(candidate: str):
try:
return json.loads(candidate)
except (json.JSONDecodeError, TypeError, ValueError):
pass
try:
return ast.literal_eval(candidate)
except (SyntaxError, ValueError):
return None
candidates: list[str] = [text]
trimmed_trailing_commas = re.sub(r",\s*([}\]])", r"\1", text)
if trimmed_trailing_commas != text:
candidates.append(trimmed_trailing_commas)
if ":" in text and not text.startswith(("{", "[")):
wrapped = "{" + text + "}"
candidates.append(wrapped)
quoted_keys = re.sub(
r'([\{,]\s*)([A-Za-z_][A-Za-z0-9_\-]*)(\s*:)',
r'\1"\2"\3',
wrapped,
)
if quoted_keys != wrapped:
candidates.append(quoted_keys)
trimmed_quoted_keys = re.sub(r",\s*([}\]])", r"\1", quoted_keys)
if trimmed_quoted_keys != quoted_keys:
candidates.append(trimmed_quoted_keys)
seen: set[str] = set()
for candidate in candidates:
if candidate in seen:
continue
seen.add(candidate)
parsed = _parse_candidate(candidate)
if isinstance(parsed, (dict, list)):
return json.dumps(parsed, ensure_ascii=False, separators=(",", ":")), True
return text, False
@staticmethod
def _merge_consecutive_assistant_tool_call_messages(messages: List[Dict[str, Any]]) -> List[Dict[str, Any]]:
"""Merge adjacent assistant messages that each carry tool_calls.
Some providers emit parallel tool calls as multiple consecutive assistant
messages instead of a single assistant message with multiple tool calls.
Merge only adjacent assistant/tool-call messages; any non-assistant
boundary flushes the current batch.
"""
merged: List[Dict[str, Any]] = []
pending: Optional[Dict[str, Any]] = None
def _flush_pending() -> None:
nonlocal pending
if pending is not None:
merged.append(pending)
pending = None
for msg in messages:
if not isinstance(msg, dict):
_flush_pending()
merged.append(msg)
continue
role = msg.get("role")
tool_calls = msg.get("tool_calls")
if role == "assistant" and isinstance(tool_calls, list) and tool_calls:
if pending is None:
pending = copy.deepcopy(msg)
continue
pending_tool_calls = pending.get("tool_calls")
if not isinstance(pending_tool_calls, list):
pending_tool_calls = []
pending["tool_calls"] = pending_tool_calls
pending_tool_calls.extend(copy.deepcopy(tool_calls))
pending_content = pending.get("content") or ""
current_content = msg.get("content") or ""
if pending_content and current_content:
pending["content"] = pending_content + "\n" + current_content
elif current_content:
pending["content"] = current_content
continue
_flush_pending()
merged.append(msg)
_flush_pending()
return merged
@staticmethod
def _sanitize_api_messages(messages: List[Dict[str, Any]]) -> List[Dict[str, Any]]:
"""Fix orphaned tool_call / tool_result pairs before every LLM call.
@@ -3461,7 +3347,7 @@ class AIAgent:
)
continue
filtered.append(msg)
messages = AIAgent._merge_consecutive_assistant_tool_call_messages(filtered)
messages = filtered
surviving_call_ids: set = set()
for msg in messages:
@@ -5368,9 +5254,12 @@ class AIAgent:
mock_tool_calls = []
for idx in sorted(tool_calls_acc):
tc = tool_calls_acc[idx]
arguments, is_complete = self._normalize_tool_call_arguments(tc["function"]["arguments"])
if not is_complete:
has_truncated_tool_args = True
arguments = tc["function"]["arguments"]
if arguments and arguments.strip():
try:
json.loads(arguments)
except json.JSONDecodeError:
has_truncated_tool_args = True
mock_tool_calls.append(SimpleNamespace(
id=tc["id"],
type=tc["type"],
@@ -6674,7 +6563,6 @@ class AIAgent:
response_item_id if isinstance(response_item_id, str) else None,
)
normalized_args, _ = self._normalize_tool_call_arguments(tool_call.function.arguments)
tc_dict = {
"id": call_id,
"call_id": call_id,
@@ -6682,7 +6570,7 @@ class AIAgent:
"type": tool_call.type,
"function": {
"name": tool_call.function.name,
"arguments": normalized_args,
"arguments": tool_call.function.arguments
},
}
# Preserve extra_content (e.g. Gemini thought_signature) so it
@@ -10143,15 +10031,21 @@ class AIAgent:
# Handle empty strings as empty objects (common model quirk)
invalid_json_args = []
for tc in assistant_message.tool_calls:
normalized_args, is_complete = self._normalize_tool_call_arguments(tc.function.arguments)
tc.function.arguments = normalized_args
if not is_complete:
try:
json.loads(normalized_args)
except json.JSONDecodeError as e:
invalid_json_args.append((tc.function.name, str(e)))
except Exception as e:
invalid_json_args.append((tc.function.name, str(e)))
args = tc.function.arguments
if isinstance(args, (dict, list)):
tc.function.arguments = json.dumps(args)
continue
if args is not None and not isinstance(args, str):
tc.function.arguments = str(args)
args = tc.function.arguments
# Treat empty/whitespace strings as empty object
if not args or not args.strip():
tc.function.arguments = "{}"
continue
try:
json.loads(args)
except json.JSONDecodeError as e:
invalid_json_args.append((tc.function.name, str(e)))
if invalid_json_args:
# Check if the invalid JSON is due to truncation rather

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@@ -0,0 +1,213 @@
"""Regression tests: normalize_anthropic_response_v2 vs v1.
Constructs mock Anthropic responses and asserts that the v2 function
(returning NormalizedResponse) produces identical field values to the
original v1 function (returning SimpleNamespace + finish_reason).
"""
from types import SimpleNamespace
import pytest
from agent.anthropic_adapter import (
normalize_anthropic_response,
normalize_anthropic_response_v2,
)
from agent.transports.types import NormalizedResponse
def _text_block(text: str):
return SimpleNamespace(type="text", text=text)
def _thinking_block(thinking: str, signature: str = "sig_abc"):
return SimpleNamespace(type="thinking", thinking=thinking, signature=signature)
def _tool_use_block(id: str, name: str, input: dict):
return SimpleNamespace(type="tool_use", id=id, name=name, input=input)
def _response(content_blocks, stop_reason="end_turn"):
return SimpleNamespace(
content=content_blocks,
stop_reason=stop_reason,
usage=SimpleNamespace(input_tokens=10, output_tokens=5),
)
class TestTextOnly:
def setup_method(self):
self.resp = _response([_text_block("Hello world")])
self.v1_msg, self.v1_finish = normalize_anthropic_response(self.resp)
self.v2 = normalize_anthropic_response_v2(self.resp)
def test_type(self):
assert isinstance(self.v2, NormalizedResponse)
def test_content_matches(self):
assert self.v2.content == self.v1_msg.content
def test_finish_reason_matches(self):
assert self.v2.finish_reason == self.v1_finish
def test_no_tool_calls(self):
assert self.v2.tool_calls is None
assert self.v1_msg.tool_calls is None
def test_no_reasoning(self):
assert self.v2.reasoning is None
assert self.v1_msg.reasoning is None
class TestWithToolCalls:
def setup_method(self):
self.resp = _response(
[
_text_block("I'll check that"),
_tool_use_block("toolu_abc", "terminal", {"command": "ls"}),
_tool_use_block("toolu_def", "read_file", {"path": "/tmp"}),
],
stop_reason="tool_use",
)
self.v1_msg, self.v1_finish = normalize_anthropic_response(self.resp)
self.v2 = normalize_anthropic_response_v2(self.resp)
def test_finish_reason(self):
assert self.v2.finish_reason == "tool_calls"
assert self.v1_finish == "tool_calls"
def test_tool_call_count(self):
assert len(self.v2.tool_calls) == 2
assert len(self.v1_msg.tool_calls) == 2
def test_tool_call_ids_match(self):
for i in range(2):
assert self.v2.tool_calls[i].id == self.v1_msg.tool_calls[i].id
def test_tool_call_names_match(self):
assert self.v2.tool_calls[0].name == "terminal"
assert self.v2.tool_calls[1].name == "read_file"
for i in range(2):
assert self.v2.tool_calls[i].name == self.v1_msg.tool_calls[i].function.name
def test_tool_call_arguments_match(self):
for i in range(2):
assert self.v2.tool_calls[i].arguments == self.v1_msg.tool_calls[i].function.arguments
def test_content_preserved(self):
assert self.v2.content == self.v1_msg.content
assert "check that" in self.v2.content
class TestWithThinking:
def setup_method(self):
self.resp = _response([
_thinking_block("Let me think about this carefully..."),
_text_block("The answer is 42."),
])
self.v1_msg, self.v1_finish = normalize_anthropic_response(self.resp)
self.v2 = normalize_anthropic_response_v2(self.resp)
def test_reasoning_matches(self):
assert self.v2.reasoning == self.v1_msg.reasoning
assert "think about this" in self.v2.reasoning
def test_reasoning_details_in_provider_data(self):
v1_details = self.v1_msg.reasoning_details
v2_details = self.v2.provider_data.get("reasoning_details") if self.v2.provider_data else None
assert v1_details is not None
assert v2_details is not None
assert len(v2_details) == len(v1_details)
def test_content_excludes_thinking(self):
assert self.v2.content == "The answer is 42."
class TestMixed:
def setup_method(self):
self.resp = _response(
[
_thinking_block("Planning my approach..."),
_text_block("I'll run the command"),
_tool_use_block("toolu_xyz", "terminal", {"command": "pwd"}),
],
stop_reason="tool_use",
)
self.v1_msg, self.v1_finish = normalize_anthropic_response(self.resp)
self.v2 = normalize_anthropic_response_v2(self.resp)
def test_all_fields_present(self):
assert self.v2.content is not None
assert self.v2.tool_calls is not None
assert self.v2.reasoning is not None
assert self.v2.finish_reason == "tool_calls"
def test_content_matches(self):
assert self.v2.content == self.v1_msg.content
def test_reasoning_matches(self):
assert self.v2.reasoning == self.v1_msg.reasoning
def test_tool_call_matches(self):
assert self.v2.tool_calls[0].id == self.v1_msg.tool_calls[0].id
assert self.v2.tool_calls[0].name == self.v1_msg.tool_calls[0].function.name
class TestStopReasons:
@pytest.mark.parametrize("stop_reason,expected", [
("end_turn", "stop"),
("tool_use", "tool_calls"),
("max_tokens", "length"),
("stop_sequence", "stop"),
("refusal", "content_filter"),
("model_context_window_exceeded", "length"),
("unknown_future_reason", "stop"),
])
def test_stop_reason_mapping(self, stop_reason, expected):
resp = _response([_text_block("x")], stop_reason=stop_reason)
_v1_msg, v1_finish = normalize_anthropic_response(resp)
v2 = normalize_anthropic_response_v2(resp)
assert v2.finish_reason == v1_finish == expected
class TestStripToolPrefix:
def test_prefix_stripped(self):
resp = _response(
[_tool_use_block("toolu_1", "mcp_terminal", {"cmd": "ls"})],
stop_reason="tool_use",
)
v1_msg, _ = normalize_anthropic_response(resp, strip_tool_prefix=True)
v2 = normalize_anthropic_response_v2(resp, strip_tool_prefix=True)
assert v1_msg.tool_calls[0].function.name == "terminal"
assert v2.tool_calls[0].name == "terminal"
def test_prefix_kept(self):
resp = _response(
[_tool_use_block("toolu_1", "mcp_terminal", {"cmd": "ls"})],
stop_reason="tool_use",
)
v1_msg, _ = normalize_anthropic_response(resp, strip_tool_prefix=False)
v2 = normalize_anthropic_response_v2(resp, strip_tool_prefix=False)
assert v1_msg.tool_calls[0].function.name == "mcp_terminal"
assert v2.tool_calls[0].name == "mcp_terminal"
class TestEdgeCases:
def test_empty_content_blocks(self):
resp = _response([])
v1_msg, _v1_finish = normalize_anthropic_response(resp)
v2 = normalize_anthropic_response_v2(resp)
assert v2.content == v1_msg.content
assert v2.content is None
def test_no_reasoning_details_means_none_provider_data(self):
resp = _response([_text_block("hi")])
v2 = normalize_anthropic_response_v2(resp)
assert v2.provider_data is None
def test_v2_returns_dataclass_not_namespace(self):
resp = _response([_text_block("hi")])
v2 = normalize_anthropic_response_v2(resp)
assert isinstance(v2, NormalizedResponse)
assert not isinstance(v2, SimpleNamespace)

View File

@@ -0,0 +1,208 @@
"""Tests for the transport ABC, registry, and AnthropicTransport."""
from types import SimpleNamespace
import pytest
from agent.transports import _REGISTRY, get_transport, register_transport
from agent.transports.base import ProviderTransport
from agent.transports.types import NormalizedResponse
class TestProviderTransportABC:
def test_cannot_instantiate_abc(self):
with pytest.raises(TypeError):
ProviderTransport()
def test_concrete_must_implement_all_abstract(self):
class Incomplete(ProviderTransport):
@property
def api_mode(self):
return "test"
with pytest.raises(TypeError):
Incomplete()
def test_minimal_concrete(self):
class Minimal(ProviderTransport):
@property
def api_mode(self):
return "test_minimal"
def convert_messages(self, messages, **kw):
return messages
def convert_tools(self, tools):
return tools
def build_kwargs(self, model, messages, tools=None, **params):
return {"model": model, "messages": messages}
def normalize_response(self, response, **kw):
return NormalizedResponse(content="ok", tool_calls=None, finish_reason="stop")
t = Minimal()
assert t.api_mode == "test_minimal"
assert t.validate_response(None) is True
assert t.extract_cache_stats(None) is None
assert t.map_finish_reason("end_turn") == "end_turn"
class TestTransportRegistry:
def test_get_unregistered_returns_none(self):
assert get_transport("nonexistent_mode") is None
def test_anthropic_registered_on_import(self):
import agent.transports.anthropic # noqa: F401
t = get_transport("anthropic_messages")
assert t is not None
assert t.api_mode == "anthropic_messages"
def test_register_and_get(self):
class DummyTransport(ProviderTransport):
@property
def api_mode(self):
return "dummy_test"
def convert_messages(self, messages, **kw):
return messages
def convert_tools(self, tools):
return tools
def build_kwargs(self, model, messages, tools=None, **params):
return {}
def normalize_response(self, response, **kw):
return NormalizedResponse(content=None, tool_calls=None, finish_reason="stop")
register_transport("dummy_test", DummyTransport)
t = get_transport("dummy_test")
assert t.api_mode == "dummy_test"
_REGISTRY.pop("dummy_test", None)
class TestAnthropicTransport:
@pytest.fixture
def transport(self):
import agent.transports.anthropic # noqa: F401
return get_transport("anthropic_messages")
def test_api_mode(self, transport):
assert transport.api_mode == "anthropic_messages"
def test_convert_tools_simple(self, transport):
tools = [{
"type": "function",
"function": {
"name": "test_tool",
"description": "A test",
"parameters": {"type": "object", "properties": {}},
},
}]
result = transport.convert_tools(tools)
assert len(result) == 1
assert result[0]["name"] == "test_tool"
assert "input_schema" in result[0]
def test_validate_response_none(self, transport):
assert transport.validate_response(None) is False
def test_validate_response_empty_content(self, transport):
r = SimpleNamespace(content=[])
assert transport.validate_response(r) is False
def test_validate_response_valid(self, transport):
r = SimpleNamespace(content=[SimpleNamespace(type="text", text="hello")])
assert transport.validate_response(r) is True
def test_map_finish_reason(self, transport):
assert transport.map_finish_reason("end_turn") == "stop"
assert transport.map_finish_reason("tool_use") == "tool_calls"
assert transport.map_finish_reason("max_tokens") == "length"
assert transport.map_finish_reason("stop_sequence") == "stop"
assert transport.map_finish_reason("refusal") == "content_filter"
assert transport.map_finish_reason("model_context_window_exceeded") == "length"
assert transport.map_finish_reason("unknown") == "stop"
def test_extract_cache_stats_none_usage(self, transport):
r = SimpleNamespace(usage=None)
assert transport.extract_cache_stats(r) is None
def test_extract_cache_stats_with_cache(self, transport):
usage = SimpleNamespace(cache_read_input_tokens=100, cache_creation_input_tokens=50)
r = SimpleNamespace(usage=usage)
result = transport.extract_cache_stats(r)
assert result == {"cached_tokens": 100, "creation_tokens": 50}
def test_extract_cache_stats_zero(self, transport):
usage = SimpleNamespace(cache_read_input_tokens=0, cache_creation_input_tokens=0)
r = SimpleNamespace(usage=usage)
assert transport.extract_cache_stats(r) is None
def test_normalize_response_text(self, transport):
r = SimpleNamespace(
content=[SimpleNamespace(type="text", text="Hello world")],
stop_reason="end_turn",
usage=SimpleNamespace(input_tokens=10, output_tokens=5),
model="claude-sonnet-4-6",
)
nr = transport.normalize_response(r)
assert isinstance(nr, NormalizedResponse)
assert nr.content == "Hello world"
assert nr.tool_calls is None or nr.tool_calls == []
assert nr.finish_reason == "stop"
def test_normalize_response_tool_calls(self, transport):
r = SimpleNamespace(
content=[
SimpleNamespace(type="tool_use", id="toolu_123", name="terminal", input={"command": "ls"}),
],
stop_reason="tool_use",
usage=SimpleNamespace(input_tokens=10, output_tokens=20),
model="claude-sonnet-4-6",
)
nr = transport.normalize_response(r)
assert nr.finish_reason == "tool_calls"
assert len(nr.tool_calls) == 1
tc = nr.tool_calls[0]
assert tc.name == "terminal"
assert tc.id == "toolu_123"
assert '"command"' in tc.arguments
def test_normalize_response_thinking(self, transport):
r = SimpleNamespace(
content=[
SimpleNamespace(type="thinking", thinking="Let me think..."),
SimpleNamespace(type="text", text="The answer is 42"),
],
stop_reason="end_turn",
usage=SimpleNamespace(input_tokens=10, output_tokens=15),
model="claude-sonnet-4-6",
)
nr = transport.normalize_response(r)
assert nr.content == "The answer is 42"
assert nr.reasoning == "Let me think..."
def test_build_kwargs_returns_dict(self, transport):
messages = [{"role": "user", "content": "Hello"}]
kw = transport.build_kwargs(
model="claude-sonnet-4-6",
messages=messages,
max_tokens=1024,
)
assert isinstance(kw, dict)
assert "model" in kw
assert "max_tokens" in kw
assert "messages" in kw
def test_convert_messages_extracts_system(self, transport):
messages = [
{"role": "system", "content": "You are helpful."},
{"role": "user", "content": "Hi"},
]
system, msgs = transport.convert_messages(messages)
assert system is not None
assert len(msgs) >= 1

View File

@@ -0,0 +1,130 @@
"""Tests for agent/transports/types.py — dataclass construction + helpers."""
import json
from agent.transports.types import (
NormalizedResponse,
ToolCall,
Usage,
build_tool_call,
map_finish_reason,
)
class TestToolCall:
def test_basic_construction(self):
tc = ToolCall(id="call_abc", name="terminal", arguments='{"cmd": "ls"}')
assert tc.id == "call_abc"
assert tc.name == "terminal"
assert tc.arguments == '{"cmd": "ls"}'
assert tc.provider_data is None
def test_none_id(self):
tc = ToolCall(id=None, name="read_file", arguments="{}")
assert tc.id is None
def test_provider_data(self):
tc = ToolCall(
id="call_x",
name="t",
arguments="{}",
provider_data={"call_id": "call_x", "response_item_id": "fc_x"},
)
assert tc.provider_data["call_id"] == "call_x"
assert tc.provider_data["response_item_id"] == "fc_x"
class TestUsage:
def test_defaults(self):
u = Usage()
assert u.prompt_tokens == 0
assert u.completion_tokens == 0
assert u.total_tokens == 0
assert u.cached_tokens == 0
def test_explicit(self):
u = Usage(prompt_tokens=100, completion_tokens=50, total_tokens=150, cached_tokens=80)
assert u.total_tokens == 150
class TestNormalizedResponse:
def test_text_only(self):
r = NormalizedResponse(content="hello", tool_calls=None, finish_reason="stop")
assert r.content == "hello"
assert r.tool_calls is None
assert r.finish_reason == "stop"
assert r.reasoning is None
assert r.usage is None
assert r.provider_data is None
def test_with_tool_calls(self):
tcs = [ToolCall(id="call_1", name="terminal", arguments='{"cmd":"pwd"}')]
r = NormalizedResponse(content=None, tool_calls=tcs, finish_reason="tool_calls")
assert r.finish_reason == "tool_calls"
assert len(r.tool_calls) == 1
assert r.tool_calls[0].name == "terminal"
def test_with_reasoning(self):
r = NormalizedResponse(
content="answer",
tool_calls=None,
finish_reason="stop",
reasoning="I thought about it",
)
assert r.reasoning == "I thought about it"
def test_with_provider_data(self):
r = NormalizedResponse(
content=None,
tool_calls=None,
finish_reason="stop",
provider_data={"reasoning_details": [{"type": "thinking", "thinking": "hmm"}]},
)
assert r.provider_data["reasoning_details"][0]["type"] == "thinking"
class TestBuildToolCall:
def test_dict_arguments_serialized(self):
tc = build_tool_call(id="call_1", name="terminal", arguments={"cmd": "ls"})
assert tc.arguments == json.dumps({"cmd": "ls"})
assert tc.provider_data is None
def test_string_arguments_passthrough(self):
tc = build_tool_call(id="call_2", name="read_file", arguments='{"path": "/tmp"}')
assert tc.arguments == '{"path": "/tmp"}'
def test_provider_fields(self):
tc = build_tool_call(
id="call_3",
name="terminal",
arguments="{}",
call_id="call_3",
response_item_id="fc_3",
)
assert tc.provider_data == {"call_id": "call_3", "response_item_id": "fc_3"}
def test_none_id(self):
tc = build_tool_call(id=None, name="t", arguments="{}")
assert tc.id is None
class TestMapFinishReason:
ANTHROPIC_MAP = {
"end_turn": "stop",
"tool_use": "tool_calls",
"max_tokens": "length",
"stop_sequence": "stop",
"refusal": "content_filter",
}
def test_known_reason(self):
assert map_finish_reason("end_turn", self.ANTHROPIC_MAP) == "stop"
assert map_finish_reason("tool_use", self.ANTHROPIC_MAP) == "tool_calls"
assert map_finish_reason("max_tokens", self.ANTHROPIC_MAP) == "length"
assert map_finish_reason("refusal", self.ANTHROPIC_MAP) == "content_filter"
def test_unknown_reason_defaults_to_stop(self):
assert map_finish_reason("something_new", self.ANTHROPIC_MAP) == "stop"
def test_none_reason(self):
assert map_finish_reason(None, self.ANTHROPIC_MAP) == "stop"

View File

@@ -1037,138 +1037,6 @@ class TestBuildAssistantMessage:
result = agent._build_assistant_message(msg, "tool_calls")
assert "extra_content" not in result["tool_calls"][0]
def test_tool_call_arguments_normalized_from_gemma4_whitespace(self, agent):
tc = _mock_tool_call(
name="read_file",
arguments=' \n {"path": "README.md"} \n ',
call_id="c4",
)
msg = _mock_assistant_msg(content="", tool_calls=[tc])
result = agent._build_assistant_message(msg, "tool_calls")
assert result["tool_calls"][0]["function"]["arguments"] == '{"path":"README.md"}'
def test_tool_call_arguments_normalized_from_single_quotes_and_trailing_comma(self, agent):
tc = _mock_tool_call(
name="read_file",
arguments="{'path': 'README.md',}",
call_id="c5",
)
msg = _mock_assistant_msg(content="", tool_calls=[tc])
result = agent._build_assistant_message(msg, "tool_calls")
assert result["tool_calls"][0]["function"]["arguments"] == '{"path":"README.md"}'
class TestNormalizeToolCallArguments:
@pytest.mark.parametrize(
("raw_args", "expected"),
[
('{"q":"test"}', '{"q":"test"}'),
(' \n {"q": "test"} \n ', '{"q":"test"}'),
('{"q": "test",}', '{"q":"test"}'),
("{'q': 'test'}", '{"q":"test"}'),
("{'path': 'README.md', 'mode': 'read'}", '{"path":"README.md","mode":"read"}'),
('"path": "README.md"', '{"path":"README.md"}'),
('path: "README.md"', '{"path":"README.md"}'),
('path: "README.md", mode: "read"', '{"path":"README.md","mode":"read"}'),
({"path": "README.md"}, '{"path":"README.md"}'),
(["README.md", "docs.md"], '["README.md","docs.md"]'),
('\t\n ', '{}'),
('{"nested": {"path": "README.md"}}', '{"nested":{"path":"README.md"}}'),
],
)
def test_complete_args_are_normalized(self, raw_args, expected):
normalized, is_complete = AIAgent._normalize_tool_call_arguments(raw_args)
assert is_complete is True
assert normalized == expected
@pytest.mark.parametrize(
"raw_args",
[
'{"path": "README.md"',
'{"a": 1, "b"',
'{"path": [1, 2}',
"{'path': 'README.md'",
'path: "README.md", mode:',
'{"command": "echo hello",',
],
)
def test_incomplete_args_are_not_marked_complete(self, raw_args):
normalized, is_complete = AIAgent._normalize_tool_call_arguments(raw_args)
assert is_complete is False
assert isinstance(normalized, str)
assert normalized == raw_args.strip()
class TestSanitizeApiMessages:
def test_merges_consecutive_assistant_tool_call_messages(self):
messages = [
{
"role": "assistant",
"content": "first",
"tool_calls": [{"id": "c1", "type": "function", "function": {"name": "read_file", "arguments": '{"path":"a.py"}'}}],
},
{
"role": "assistant",
"content": "second",
"tool_calls": [{"id": "c2", "type": "function", "function": {"name": "search_files", "arguments": '{"pattern":"TODO"}'}}],
},
{"role": "tool", "tool_call_id": "c1", "content": "a.py"},
{"role": "tool", "tool_call_id": "c2", "content": "matches"},
]
sanitized = AIAgent._sanitize_api_messages(messages)
assert len(sanitized) == 3
assert sanitized[0]["role"] == "assistant"
assert [tc["id"] for tc in sanitized[0]["tool_calls"]] == ["c1", "c2"]
assert sanitized[0]["content"] == "first\nsecond"
def test_does_not_merge_assistant_tool_call_messages_across_non_assistant_boundary(self):
messages = [
{
"role": "assistant",
"content": "",
"tool_calls": [{"id": "c1", "type": "function", "function": {"name": "read_file", "arguments": '{"path":"a.py"}'}}],
},
{"role": "tool", "tool_call_id": "c1", "content": "a.py"},
{
"role": "assistant",
"content": "",
"tool_calls": [{"id": "c2", "type": "function", "function": {"name": "read_file", "arguments": '{"path":"b.py"}'}}],
},
{"role": "tool", "tool_call_id": "c2", "content": "b.py"},
]
sanitized = AIAgent._sanitize_api_messages(messages)
assistant_msgs = [m for m in sanitized if m.get("role") == "assistant"]
assert len(assistant_msgs) == 2
assert assistant_msgs[0]["tool_calls"][0]["id"] == "c1"
assert assistant_msgs[1]["tool_calls"][0]["id"] == "c2"
def test_merge_preserves_tool_call_order(self):
messages = [
{
"role": "assistant",
"content": "",
"tool_calls": [{"id": "c1", "type": "function", "function": {"name": "read_file", "arguments": '{"path":"a.py"}'}}],
},
{
"role": "assistant",
"content": "",
"tool_calls": [{"id": "c2", "type": "function", "function": {"name": "read_file", "arguments": '{"path":"b.py"}'}}],
},
{
"role": "assistant",
"content": "",
"tool_calls": [{"id": "c3", "type": "function", "function": {"name": "read_file", "arguments": '{"path":"c.py"}'}}],
},
]
sanitized = AIAgent._sanitize_api_messages(messages)
assert [tc["id"] for tc in sanitized[0]["tool_calls"]] == ["c1", "c2", "c3"]
class TestFormatToolsForSystemMessage:
def test_no_tools_returns_empty_array(self, agent):
@@ -3599,59 +3467,6 @@ class TestStreamingApiCall:
assert tc[0].function.arguments == '{"path":"x.txt","content":"hel'
assert resp.choices[0].finish_reason == "length"
@pytest.mark.parametrize(
("raw_arguments", "expected"),
[
(' \n {"path": "x.txt"} \n ', '{"path":"x.txt"}'),
("{'path': 'x.txt',}", '{"path":"x.txt"}'),
('path: "x.txt", mode: "read"', '{"path":"x.txt","mode":"read"}'),
],
)
def test_repairable_tool_call_args_do_not_upgrade_finish_reason_to_length(self, agent, raw_arguments, expected):
chunks = [
_make_chunk(tool_calls=[_make_tc_delta(0, "call_1", "read_file", raw_arguments)]),
_make_chunk(finish_reason="tool_calls"),
]
agent.client.chat.completions.create.return_value = iter(chunks)
resp = agent._interruptible_streaming_api_call({"messages": []})
tc = resp.choices[0].message.tool_calls
assert len(tc) == 1
assert tc[0].function.name == "read_file"
assert tc[0].function.arguments == expected
assert resp.choices[0].finish_reason == "tool_calls"
def test_streamed_tool_call_args_single_quotes_across_chunks_normalized(self, agent):
chunks = [
_make_chunk(tool_calls=[_make_tc_delta(0, "call_1", "read_file", "{'path':")]),
_make_chunk(tool_calls=[_make_tc_delta(0, None, None, " 'x.txt',}")]),
_make_chunk(finish_reason="tool_calls"),
]
agent.client.chat.completions.create.return_value = iter(chunks)
resp = agent._interruptible_streaming_api_call({"messages": []})
tc = resp.choices[0].message.tool_calls
assert len(tc) == 1
assert tc[0].function.arguments == '{"path":"x.txt"}'
assert resp.choices[0].finish_reason == "tool_calls"
def test_streamed_split_json_chunks_still_reassemble(self, agent):
chunks = [
_make_chunk(tool_calls=[_make_tc_delta(0, "call_1", "read_file", '{"path":')]),
_make_chunk(tool_calls=[_make_tc_delta(0, None, None, ' "x.txt"}')]),
_make_chunk(finish_reason="tool_calls"),
]
agent.client.chat.completions.create.return_value = iter(chunks)
resp = agent._interruptible_streaming_api_call({"messages": []})
tc = resp.choices[0].message.tool_calls
assert len(tc) == 1
assert tc[0].function.arguments == '{"path":"x.txt"}'
assert resp.choices[0].finish_reason == "tool_calls"
def test_ollama_reused_index_separate_tool_calls(self, agent):
"""Ollama sends every tool call at index 0 with different ids.