trulens.apps.llamaindex.tru_llama¶
trulens.apps.llamaindex.tru_llama
¶
LlamaIndex instrumentation.
Classes¶
LlamaInstrument
¶
Bases: Instrument
Instrumentation for LlamaIndex apps.
Attributes¶
INSTRUMENT
class-attribute
instance-attribute
¶
INSTRUMENT = '__tru_instrumented'
Attribute name to be used to flag instrumented objects/methods/others.
APPS
class-attribute
instance-attribute
¶
APPS = '__tru_apps'
Attribute name for storing apps that expect to be notified of calls.
Classes¶
Default
¶
Instrumentation specification for LlamaIndex apps.
MODULES
class-attribute
instance-attribute
¶MODULES = union(MODULES)
Modules by prefix to instrument.
Note that llama_index uses langchain internally for some things.
CLASSES
class-attribute
instance-attribute
¶CLASSES = lambda: union(CLASSES())
Classes to instrument.
METHODS
class-attribute
instance-attribute
¶METHODS: Dict[str, ClassFilter] = dict_set_with_multikey(
dict(METHODS),
{
(
"chat",
"complete",
"stream_chat",
"stream_complete",
"achat",
"acomplete",
"astream_chat",
"astream_complete",
): BaseLLM,
("__call__", "call"): BaseTool,
"acall": AsyncBaseTool,
"put": BaseMemory,
"get_response": Refine,
(
"predict",
"apredict",
"stream",
"astream",
): BaseLLMPredictor,
(
"query",
"aquery",
"synthesize",
"asynthesize",
): BaseQueryEngine,
(
"chat",
"achat",
"stream_chat",
"astream_chat",
"complete",
"acomplete",
"stream_complete",
"astream_complete",
): (BaseChatEngine),
("retrieve", "_retrieve", "_aretrieve"): (
BaseQueryEngine,
BaseRetriever,
WithFeedbackFilterNodes,
),
"_postprocess_nodes": BaseNodePostprocessor,
"_run_component": (
QueryEngineComponent,
RetrieverComponent,
),
},
)
Methods to instrument.
Functions¶
print_instrumentation
¶
print_instrumentation() -> None
Print out description of the modules, classes, methods this class will instrument.
to_instrument_object
¶
Determine whether the given object should be instrumented.
to_instrument_class
¶
Determine whether the given class should be instrumented.
to_instrument_module
¶
Determine whether a module with the given (full) name should be instrumented.
tracked_method_wrapper
¶
Wrap a method to capture its inputs/outputs/errors.
instrument_class
¶
instrument_class(cls)
Instrument the given class cls
's new method.
This is done so we can be aware when new instances are created and is needed for wrapped methods that dynamically create instances of classes we wish to instrument. As they will not be visible at the time we wrap the app, we need to pay attention to new to make a note of them when they are created and the creator's path. This path will be used to place these new instances in the app json structure.
TruLlama
¶
Bases: App
Recorder for LlamaIndex applications.
This recorder is designed for LlamaIndex apps, providing a way to instrument, log, and evaluate their behavior.
Example: "Creating a LlamaIndex application"
Consider an example LlamaIndex application. For the complete code
example, see [LlamaIndex
Quickstart](https://docs.llamaindex.ai/en/stable/getting_started/starter_example.html).
```python
from llama_index.core import VectorStoreIndex, SimpleDirectoryReader
documents = SimpleDirectoryReader("data").load_data()
index = VectorStoreIndex.from_documents(documents)
query_engine = index.as_query_engine()
```
Feedback functions can utilize the specific context produced by the
application's retriever. This is achieved using the select_context
method,
which then can be used by a feedback selector, such as on(context)
.
Example: "Defining a feedback function"
```python
from trulens.providers.openai import OpenAI
from trulens.core import Feedback
import numpy as np
# Select context to be used in feedback.
from trulens.apps.llamaindex import TruLlama
context = TruLlama.select_context(query_engine)
# Use feedback
f_context_relevance = (
Feedback(provider.context_relevance_with_context_reasons)
.on_input()
.on(context) # Refers to context defined from `select_context`
.aggregate(np.mean)
)
```
The application can be wrapped in a TruLlama
recorder to provide logging
and evaluation upon the application's use.
Example: "Using the TruLlama
recorder"
```python
from trulens.apps.llamaindex import TruLlama
# f_lang_match, f_qa_relevance, f_context_relevance are feedback functions
tru_recorder = TruLlama(query_engine,
app_name='LlamaIndex",
app_version="base',
feedbacks=[f_lang_match, f_qa_relevance, f_context_relevance])
with tru_recorder as recording:
query_engine.query("What is llama index?")
```
Feedback functions can utilize the specific context produced by the
application's query engine. This is achieved using the select_context
method, which then can be used by a feedback selector, such as
on(context)
.
Further information about LlamaIndex apps can be found on the π¦ LlamaIndex Documentation page.
PARAMETER | DESCRIPTION |
---|---|
app |
A LlamaIndex application.
TYPE:
|
**kwargs |
Additional arguments to pass to App and AppDefinition.
TYPE:
|
Attributes¶
tru_class_info
instance-attribute
¶
tru_class_info: Class
Class information of this pydantic object for use in deserialization.
Using this odd key to not pollute attribute names in whatever class we mix this into. Should be the same as CLASS_INFO.
app_id
class-attribute
instance-attribute
¶
Unique identifier for this app.
Computed deterministically from app_name and app_version. Leaving it here for it to be dumped when serializing. Also making it read-only as it should not be changed after creation.
app_version
instance-attribute
¶
app_version: AppVersion
Version tag for this app. Default is "base".
feedback_definitions
class-attribute
instance-attribute
¶
feedback_definitions: Sequence[FeedbackDefinitionID] = []
Feedback functions to evaluate on each record.
feedback_mode
class-attribute
instance-attribute
¶
feedback_mode: FeedbackMode = WITH_APP_THREAD
How to evaluate feedback functions upon producing a record.
record_ingest_mode
instance-attribute
¶
record_ingest_mode: RecordIngestMode = record_ingest_mode
Mode of records ingestion.
root_class
instance-attribute
¶
root_class: Class
Class of the main instrumented object.
Ideally this would be a ClassVar but since we want to check this without instantiating the subclass of AppDefinition that would define it, we cannot use ClassVar.
initial_app_loader_dump
class-attribute
instance-attribute
¶
initial_app_loader_dump: Optional[SerialBytes] = None
Serialization of a function that loads an app.
Dump is of the initial app state before any invocations. This can be used to create a new session.
Warning
Experimental work in progress.
app_extra_json
instance-attribute
¶
app_extra_json: JSON
Info to store about the app and to display in dashboard.
This can be used even if app itself cannot be serialized. app_extra_json
,
then, can stand in place for whatever data the user might want to keep track
of about the app.
feedbacks
class-attribute
instance-attribute
¶
Feedback functions to evaluate on each record.
session
class-attribute
instance-attribute
¶
session: TruSession = Field(
default_factory=TruSession, exclude=True
)
Session for this app.
instrument
class-attribute
instance-attribute
¶
instrument: Optional[Instrument] = Field(None, exclude=True)
Instrumentation class.
This is needed for serialization as it tells us which objects we want to be included in the json representation of this app.
recording_contexts
class-attribute
instance-attribute
¶
recording_contexts: ContextVar[_RecordingContext] = Field(
None, exclude=True
)
Sequences of records produced by the this class used as a context manager are stored in a RecordingContext.
Using a context var so that context managers can be nested.
instrumented_methods
class-attribute
instance-attribute
¶
instrumented_methods: Dict[int, Dict[Callable, Lens]] = (
Field(exclude=True, default_factory=dict)
)
Mapping of instrumented methods (by id(.) of owner object and the function) to their path in this app.
records_with_pending_feedback_results
class-attribute
instance-attribute
¶
records_with_pending_feedback_results: BlockingSet[
Record
] = Field(exclude=True, default_factory=BlockingSet)
Records produced by this app which might have yet to finish feedback runs.
manage_pending_feedback_results_thread
class-attribute
instance-attribute
¶
Thread for manager of pending feedback results queue.
See _manage_pending_feedback_results.
selector_check_warning
class-attribute
instance-attribute
¶
selector_check_warning: bool = False
Issue warnings when selectors are not found in the app with a placeholder record.
If False, constructor will raise an error instead.
selector_nocheck
class-attribute
instance-attribute
¶
selector_nocheck: bool = False
Ignore selector checks entirely.
This may be necessary 1if the expected record content cannot be determined before it is produced.
Functions¶
on_method_instrumented
¶
Called by instrumentation system for every function requested to be instrumented by this app.
get_method_path
¶
Get the path of the instrumented function method
relative to this
app.
get_methods_for_func
¶
Get the methods (rather the inner functions) matching the given
func
and the path of each.
on_new_record
¶
on_new_record(func) -> Iterable[_RecordingContext]
Called at the start of record creation.
on_add_record
¶
on_add_record(
ctx: _RecordingContext,
func: Callable,
sig: Signature,
bindings: BoundArguments,
ret: Any,
error: Any,
perf: Perf,
cost: Cost,
existing_record: Optional[Record] = None,
final: bool = False,
) -> Record
Called by instrumented methods if they use _new_record to construct a "record call list.
load
staticmethod
¶
load(obj, *args, **kwargs)
Deserialize/load this object using the class information in tru_class_info to lookup the actual class that will do the deserialization.
model_validate
classmethod
¶
model_validate(*args, **kwargs) -> Any
Deserialized a jsonized version of the app into the instance of the class it was serialized from.
Note
This process uses extra information stored in the jsonized object and handled by WithClassInfo.
continue_session
staticmethod
¶
continue_session(
app_definition_json: JSON, app: Any
) -> AppDefinition
Instantiate the given app
with the given state
app_definition_json
.
Warning
This is an experimental feature with ongoing work.
PARAMETER | DESCRIPTION |
---|---|
app_definition_json |
The json serialized app.
TYPE:
|
app |
The app to continue the session with.
TYPE:
|
RETURNS | DESCRIPTION |
---|---|
AppDefinition
|
A new |
new_session
staticmethod
¶
new_session(
app_definition_json: JSON,
initial_app_loader: Optional[Callable] = None,
) -> AppDefinition
Create an app instance at the start of a session.
Warning
This is an experimental feature with ongoing work.
Create a copy of the json serialized app with the enclosed app being initialized to its initial state before any records are produced (i.e. blank memory).
get_loadable_apps
staticmethod
¶
get_loadable_apps()
Gets a list of all of the loadable apps.
Warning
This is an experimental feature with ongoing work.
This is those that have initial_app_loader_dump
set.
wait_for_feedback_results
¶
Wait for all feedbacks functions to complete.
PARAMETER | DESCRIPTION |
---|---|
feedback_timeout |
Timeout in seconds for waiting for feedback results for each feedback function. Note that this is not the total timeout for this entire blocking call. |
RETURNS | DESCRIPTION |
---|---|
Iterable[Record]
|
An iterable of records that have been waited on. Note a record will be included even if a feedback computation for it failed or timed out. |
This applies to all feedbacks on all records produced by this app. This call will block until finished and if new records are produced while this is running, it will include them.
awith_
async
¶
awith_(
func: CallableMaybeAwaitable[A, T], *args, **kwargs
) -> T
Call the given async func
with the given *args
and **kwargs
while recording, producing func
results.
The record of the computation is available through other means like the
database or dashboard. If you need a record of this execution
immediately, you can use awith_record
or the App
as a context
manager instead.
with_
async
¶
with_(func: Callable[[A], T], *args, **kwargs) -> T
Call the given async func
with the given *args
and **kwargs
while recording, producing func
results.
The record of the computation is available through other means like the
database or dashboard. If you need a record of this execution
immediately, you can use awith_record
or the App
as a context
manager instead.
with_record
¶
with_record(
func: Callable[[A], T],
*args,
record_metadata: JSON = None,
**kwargs
) -> Tuple[T, Record]
Call the given func
with the given *args
and **kwargs
, producing
its results as well as a record of the execution.
awith_record
async
¶
awith_record(
func: Callable[[A], Awaitable[T]],
*args,
record_metadata: JSON = None,
**kwargs
) -> Tuple[T, Record]
Call the given func
with the given *args
and **kwargs
, producing
its results as well as a record of the execution.
dummy_record
¶
dummy_record(
cost: Cost = base_schema.Cost(),
perf: Perf = base_schema.Perf.now(),
ts: datetime = datetime.datetime.now(),
main_input: str = "main_input are strings.",
main_output: str = "main_output are strings.",
main_error: str = "main_error are strings.",
meta: Dict = {"metakey": "meta are dicts"},
tags: str = "tags are strings",
) -> Record
Create a dummy record with some of the expected structure without actually invoking the app.
The record is a guess of what an actual record might look like but will be missing information that can only be determined after a call is made.
All args are Record fields except these:
- `record_id` is generated using the default id naming schema.
- `app_id` is taken from this recorder.
- `calls` field is constructed based on instrumented methods.
instrumented
¶
instrumented() -> Iterable[Tuple[Lens, ComponentView]]
Iteration over instrumented components and their categories.
format_instrumented_methods
¶
format_instrumented_methods() -> str
Build a string containing a listing of instrumented methods.
print_instrumented_components
¶
print_instrumented_components() -> None
Print instrumented components and their categories.
select_source_nodes
classmethod
¶
select_source_nodes() -> Lens
Get the path to the source nodes in the query output.
wrap_lazy_values
¶
wrap_lazy_values(
rets: Any,
wrap: Callable[[T], T],
on_done: Optional[Callable[[T], T]],
context_vars: Optional[ContextVarsOrValues] = None,
) -> Any
Wrap any llamaindex specific lazy values with wrappers that have callback wrap.
select_context
classmethod
¶
Get the path to the context in the query output.
main_input
¶
main_input(
func: Callable, sig: Signature, bindings: BoundArguments
) -> str
Determine the main input string for the given function func
with
signature sig
if it is to be called with the given bindings
bindings
.