diff --git a/README.md b/README.md index e3dde645..f9ca54c4 100644 --- a/README.md +++ b/README.md @@ -1,3 +1,266 @@ -### Local Environment -Create new virtual environment and run `pip install -r dev_requirements.txt` -Run `pre-commit install` to initialize [pre-commit](https://pre-commit.com/) +# Neptune Scale client + +> [!NOTE] +> This package only works with the `3.0` version of neptune.ai called Neptune Scale, which is in beta. +> +> It's supported on Linux and MacOS. +> +> You can't use the Scale client with the stable Neptune `2.x` versions currently available to SaaS and self-hosting customers. For the Python client corresponding to Neptune `2.x`, see https://github.com/neptune-ai/neptune-client. + +**What is Neptune?** + +Neptune is an experiment tracker. It enables researchers to monitor their model training, visualize and compare model metadata, and collaborate on AI/ML projects within a team. + +**What's different about Neptune Scale?** + +Neptune Scale is the next major version of Neptune. It's built on an entirely new architecture for ingesting and rendering data, with a focus on responsiveness and accuracy at scale. + +Neptune Scale supports forked experiments, with built-in mechanics for retaining run ancestry. This way, you can focus on analyzing the latest runs, but also visualize the full history of your experiments. + +## Installation + +```bash +pip install neptune-scale +``` + +## Example usage + +```python +from neptune_scale import Run + +run = Run( + family="RunFamilyName", + run_id="SomeUniqueRunIdentifier", +) + +run.log( + metrics={"Metric1": metric1_value, "Metric2": metric2_value}, + fields={"Field1": field1_value} +) + +run.close() +``` + +## API reference + +### `Run` + +Representation of experiment tracking metadata logged with Neptune Scale. + +#### Initialization + +Initialize with the class constructor: + +```python +from neptune_scale import Run + +run = Run(...) +``` + +or using a context manager: + +```python +from neptune_scale import Run + +with Run(...) as run: + ... +``` + +__Parameters__ + +| Name | Type | Default | Description | +|------------------|------------------|---------|---------------------------------------------------------------------------| +| `family` | `str` | - | Identifies related runs. All runs of the same lineage must have the same `family` value. That is, forking is only possible within the same family. Max length: 128 characters. | +| `run_id` | `str` | - | Identifier of the run. Must be unique within the project. Max length: 128 characters. | +| `project` | `str`, optional | `None` | Name of a project in the form `workspace-name/project-name`. If `None`, the value of the `NEPTUNE_PROJECT` environment variable is used. | +| `api_token` | `str`, optional | `None` | Your Neptune API token or a service account's API token. If `None`, the value of the `NEPTUNE_API_TOKEN` environment variable is used. To keep your token secure, don't place it in source code. Instead, save it as an environment variable. | +| `resume` | `bool`, optional | `False` | If `False` (default), creates a new run. To continue an existing run, set to `True` and pass the ID of an existing run to the `run_id` argument. To fork a run, use `from_run_id` and `from_step` instead. | +| `mode` | `Literal`, `"async"` or `"disabled"` | `"async"` | Mode of operation. If set to `"disabled"`, the run doesn't log any metadata. | +| `as_experiment` | `str`, optional | `None` | Name of the experiment to associate the run with. Learn more about [experiments](https://docs-beta.neptune.ai/experiments) in the Neptune documentation. | +| `creation_time` | `datetime`, optional | `None` | Custom creation time of the run. | +| `from_run_id` | `str`, optional | `None` | If forking off an existing run, ID of the run to fork from. | +| `from_step` | `int`, optional | `None` | If forking off an existing run, step number to fork from. | +| `max_queue_size` | `int`, optional | 1M | Maximum number of operations queued for processing. 1 000 000 by default. You should raise this value if you see the `on_queue_full_callback` function being called. | +| `on_queue_full_callback` | `Callable[[BaseException, Optional[float]], None]`, optional | `None` | Callback function triggered when the queue is full. The function must take as an argument the exception that made the queue full and, as an optional argument, a timestamp of when the exception was last raised. | +| `on_network_error_callback` | `Callable[[BaseException, Optional[float]], None]`, optional | `None` | Callback function triggered when a network error occurs. | +| `on_error_callback` | `Callable[[BaseException, Optional[float]], None]`, optional | `None` | The default callback function triggered when an unrecoverable error occurs. Applies if an error wasn't caught by other callbacks. In this callback you can choose to perform your cleanup operations and close the training script. | +| `on_warning_callback` | `Callable[[BaseException, Optional[float]], None]`, optional | `None` | Callback function triggered when a warning occurs. | + +__Examples__ + +Create a new run: + +```python +from neptune_scale import Run + +with Run( + project="team-alpha/project-x", + api_token="h0dHBzOi8aHR0cHM6...Y2MifQ==", + family="aquarium", + run_id="likable-barracuda", +) as run: + ... +``` + +> [!TIP] +> Find your API token in your user menu, in the bottom-left corner of the Neptune app. +> +> Or, to use shared API tokens for multiple users or non-human accounts, create a service account in your workspace settings. + +Create a forked run and mark it as an experiment: + +```python +with Run( + family="aquarium", + run_id="adventurous-barracuda", + as_experiment="swim-further", + from_run_id="likable-barracuda", + from_step=102, +) as run: + ... +``` + +Continue a run: + +```python +with Run( + family="aquarium", + run_id="likable-barracuda", # a Neptune run with this ID already exists + resume=True, +) as run: + ... +``` + +## `close()` + +Waits for all locally queued data to be processed by Neptune (see [`wait_for_processing()`](#wait_for_processing)) and closes the run. + +This is a blocking operation. Call the function at the end of your script, after your model training is completed. + +__Examples__ + +```python +from neptune_scale import Run + +run = Run(...) +run.log(...) + +run.close() +``` + +If using a context manager, Neptune automatically closes the run upon exiting the context: + +```python +with Run(...) as run: + ... + +# run is closed at the end of the context +``` + +## `log()` + +Logs the specified metadata to a Neptune run. + +You can log metrics, tags, and configurations. Pass the metadata as a dictionary `{key: value}` with + +- `key`: path to where the metadata should be stored in the run. +- `value`: the piece of metadata to log. + +For example, `{"parameters/learning_rate": 0.001}`. In the field path, each forward slash `/` nests the field under a namespace. Use namespaces to structure the metadata into meaningful categories. + +__Parameters__ + +| Name | Type | Default | Description | +|---------------|----------------------------------------------------|---------|---------------------------------------------------------------------------| +| `step` | `Union[float, int]`, optional | `None` | Index of the log entry. Must be increasing. If not specified, the `log()` call increments the step starting from the highest already logged value. **Tip:** Using float rather than int values can be useful, for example, when logging substeps in a batch. | +| `timestamp` | `datetime`, optional | `None` | Time of logging the metadata. | +| `fields` | `Dict[str, Union[float, bool, int, str, datetime, list, set]]`, optional | `None` | Dictionary of configs or other values to log. Available types: float, integer, Boolean, string, and datetime. | +| `metrics` | `Dict[str, float]`, optional | `None` | Dictionary of metrics to log. Each metric value is associated with a step. To log multiple metrics at once, pass multiple key-value pairs. | +| `add_tags` | `Dict[str, Union[List[str], Set[str]]]`, optional | `None` | Dictionary of tags to add to the run, as a list of strings. | +| `remove_tags` | `Dict[str, Union[List[str], Set[str]]]`, optional | `None` | Dictionary of tags to remove from the run, as a list of strings. Independent of the step value. | + +__Examples__ + +Create a run and log some metadata: + +```python +from neptune_scale import Run + +with Run(...) as run: + run.log( + fields={"parameters/learning_rate": 0.001}, + add_tags={"sys/tags": ["tag1", "tag2"]}, + metrics={"loss": 0.14, "acc": 0.78}, + ) +``` + +Remove a tag: + +```python +with Run(...) as run: + run.log(remove_tags={"sys/tags": "tag2"}) +``` + +You can pass the step when logging metrics: + +```python +run.log(step=5, metrics={"loss": 0.09, "acc": 0.82}) # works if the previous step is no higher than 4 +run.log(metrics={"loss": 0.08, "acc": 0.86}) # step index is set to "6" +... +``` + +**Note:** Calling `log()` without specifying the step still increments the index. To correlate logged values, make sure to send all metadata related to a step in a single `log()` call, or specify the step explicitly. + +## `wait_for_submission()` + +Waits until all metadata is submitted to Neptune for processing. + +When submitted, the data is not yet saved in Neptune (see [`wait_for_processing()`](#wait_for_processing)). + +__Parameters__ + +| Name | Type | Default | Description | +|-----------|-------------------|---------|---------------------------------------------------------------------------| +| `timeout` | `float`, optional | `None` | In seconds, the maximum time to wait for submission. | +| `verbose` | `bool`, optional | `True` | If True (default), prints messages about the waiting process. | + +__Example__ + +```python +from neptune_scale import Run + +with Run(...) as run: + run.log(...) + ... + run.wait_for_submission() + run.log(fields={"scores/some_score": some_score_value}) # called once queued Neptune operations have been submitted +``` + +## `wait_for_processing()` + +Waits until all metadata is processed by Neptune. + +Once the call is complete, the data is saved in Neptune. + +__Parameters__ + +| Name | Type | Default | Description | +|-----------|-------------------|---------|---------------------------------------------------------------------------| +| `timeout` | `float`, optional | `None` | In seconds, the maximum time to wait for processing. | +| `verbose` | `bool`, optional | `True` | If True (default), prints messages about the waiting process. | + +__Example__ + +```python +from neptune_scale import Run + +with Run(...) as run: + run.log(...) + ... + run.wait_for_processing() + run.log(fields={"scores/some_score": some_score_value}) # called once submitted data has been processed +``` + +## Getting help + +For questions or comments, contact support@neptune.ai. diff --git a/src/neptune_scale/__init__.py b/src/neptune_scale/__init__.py index 52a6a417..19ea0b96 100644 --- a/src/neptune_scale/__init__.py +++ b/src/neptune_scale/__init__.py @@ -71,7 +71,13 @@ class Run(WithResources, AbstractContextManager): """ - Representation of tracked metadata. + Representation of experiment tracking metadata logged with neptune.ai. + + Methods: + close(): Synchronizes all remaining data and closes the connection to Neptune. + log(): Logs the specified metadata to Neptune. + wait_for_submission(): Waits until all metadata is submitted to Neptune for processing. + wait_for_processing(): Waits until all metadata is processed by Neptune. """ def __init__( @@ -94,29 +100,73 @@ def __init__( on_warning_callback: Optional[Callable[[BaseException, Optional[float]], None]] = None, ) -> None: """ - Initializes a run that logs the model-building metadata to Neptune. + Initializes a Neptune run that logs model-building metadata. Args: - family: Identifies related runs. For example, the same value must apply to all runs within a run hierarchy. - Max length: 128 characters. - run_id: Unique identifier of a run. Must be unique within the project. Max length: 128 characters. - project: Name of the project where the metadata is logged, in the form `workspace-name/project-name`. + family (str): Identifies related runs. All runs of the same lineage must have the same `family` value, that is, + forking is only possible within the same family. Max length: 128 characters. + run_id (str): Identifier of the run. Must be unique within the project. Max length: 128 characters. + project (str): Name of the project where the metadata is logged, in the form `workspace-name/project-name`. If not provided, the value of the `NEPTUNE_PROJECT` environment variable is used. - api_token: Your Neptune API token. If not provided, the value of the `NEPTUNE_API_TOKEN` environment + api_token (str): Your Neptune API token. If not provided, the value of the `NEPTUNE_API_TOKEN` environment variable is used. - resume: Whether to resume an existing run. - mode: Mode of operation. If set to "disabled", the run doesn't log any metadata. - as_experiment: If creating a run as an experiment, ID of an experiment to be associated with the run. - creation_time: Custom creation time of the run. - from_run_id: If forking from an existing run, ID of the run to fork from. - from_step: If forking from an existing run, step number to fork from. - max_queue_size: Maximum number of operations in a queue. - on_queue_full_callback: Callback function triggered when the queue is full. The function should take the exception - that made the queue full as its argument and an optional timestamp of the last time the exception was raised. + resume (bool): If `False` (default), creates a new run. To continue an existing run, set to `True` and pass + the ID of an existing run to the `run_id` argument. + To fork a run, use `from_run_id` and `from_step` instead. + mode ("async" or "disabled"): Mode of operation. If set to "disabled", the run doesn't log any metadata. + as_experiment (str): Name of the experiment to associate the run with. + creation_time (datetime): Custom creation time of the run. + from_run_id (str): If forking off an existing run, ID of the run to fork from. + from_step (int): If forking off an existing run, step number to fork from. + max_queue_size (int): Maximum number of operations allowed in the queue. + on_queue_full_callback (Callable[[BaseException, Optional[float]], None]): Callback function triggered when + the queue is full. The function takes two arguments: + - Exception that made the queue full. + - (Optional) Timestamp of the last time the exception was raised. on_network_error_callback: Callback function triggered when a network error occurs. - on_error_callback: The default callback function triggered when error occurs. It applies if an error + on_error_callback: The default callback function triggered when an error occurs. Applies if an error wasn't caught by other callbacks. on_warning_callback: Callback function triggered when a warning occurs. + + Examples: + + Create a new run: + + ``` + from neptune_scale import Run + + with Run( + project="team-alpha/project-x", + api_token="h0dHBzOi8aHR0cHM6...Y2MifQ==", + family="aquarium", + run_id="likable-barracuda", + ) as run: + ... + ``` + + Create a forked run and mark it as an experiment: + + ``` + with Run( + family="aquarium", + run_id="adventurous-barracuda", + as_experiment="swim-further", + from_run_id="likable-barracuda", + from_step=102, + ) as run: + ... + ``` + + Continue a run: + + ``` + with Run( + family="aquarium", + run_id="likable-barracuda", # run with this ID already exists + resume=True, + ) as run: + ... + ``` """ verify_type("family", family, str) verify_type("run_id", run_id, str) @@ -290,22 +340,38 @@ def log( remove_tags: Optional[Dict[str, Union[List[str], Set[str]]]] = None, ) -> None: """ - Logs the specified metadata to Neptune. + Logs the specified metadata to a Neptune run. + + You can log metrics, tags, and configurations. Pass the metadata as a dictionary {key: value} with + + - key: path to where the metadata should be stored in the run. + - value: the piece of metadata to log. + + For example, log(fields={"parameters/learning_rate": 0.001}) + In the field path, each forward slash "/" nests the field under a namespace. + Use namespaces to structure the metadata into meaningful categories. Args: - step: Index of the log entry, must be increasing. If None, the highest of the already logged indexes is used. + step: Index of the log entry. Must be increasing. + If None, the highest of the already logged indexes is used. timestamp: Time of logging the metadata. - fields: Dictionary of fields to log. - metrics: Dictionary of metrics to log. - add_tags: Dictionary of tags to add to the run. - remove_tags: Dictionary of tags to remove from the run. + fields: Dictionary of configs or other values to log. Independent of the step value. + Available types: float, integer, Boolean, string, and datetime. + To log multiple values at once, pass multiple dictionaries. + metrics: Dictionary of metrics to log. Each metric value is associated with a step. + To log multiple metrics at once, pass multiple dictionaries. + Each metric is represented as a series of float values in the run. + add_tags: Dictionary of tags to add to the run, as a list of strings. Independent of the step value. + remove_tags: Dictionary of tags to remove from the run, as a list of strings. Independent of the step value. Examples: ``` + >>> from neptune_scale import Run >>> with Run(...) as run: - ... run.log(step=1, fields={"parameters/learning_rate": 0.001}) - ... run.log(step=2, add_tags={"sys/group_tags": ["group1", "group2"]}) - ... run.log(step=3, metrics={"metrics/loss": 0.1}) + ... run.log(fields={"parameters/learning_rate": 0.001}) + ... run.log(add_tags={"sys/tags": ["tag1", "tag2"]}) + ... run.log(step=1, metrics={"loss": 0.11, "acc": 0.81}) + >>> run.log(step=2, metrics={"loss": 0.09, "acc": 0.82}) ``` """