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@yishan-pu yishan-pu commented May 9, 2025

Description

Fixes b/416471329

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@yishan-pu yishan-pu requested review from a team as code owners May 9, 2025 00:17
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snippet-bot bot commented May 9, 2025

Here is the summary of changes.

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@product-auto-label product-auto-label bot added the samples Issues that are directly related to samples. label May 9, 2025
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Hello @yishan-pu, I'm Gemini Code Assist1! I'm currently reviewing this pull request and will post my feedback shortly. In the meantime, here's a summary to help you and other reviewers quickly get up to speed!

Summary of Changes

This pull request adds examples for tuning generative AI models using the google-genai library. It includes code snippets for creating, getting, listing, and testing tuning jobs. The examples demonstrate how to interact with the Gemini 2.0 family of models for fine-tuning. The PR also includes necessary test files and updates to the project's dependencies.

Highlights

  • Tuning Examples: Adds examples for creating, getting, listing, and testing tuning jobs using the google-genai library.
  • New Files: Introduces new Python files (tuning_create.py, tuning_get.py, tuning_list.py, tuning_test.py, test_tuning_examples.py) to showcase the tuning functionality.
  • Dependencies: Updates requirements.txt and requirements-test.txt to include necessary dependencies like google-genai, google-api-core, google-cloud-storage, and pytest.

Changelog

Click here to see the changelog
  • genai/tuning/noxfile_config.py
    • Added noxfile_config.py to configure the test environment, ignoring Python versions 2.7, 3.7, 3.8, 3.10, 3.11 and 3.12, enforcing type hints, and setting the Google Cloud project environment variable.
  • genai/tuning/requirements-test.txt
    • Added requirements-test.txt to specify testing dependencies, including google-api-core, google-cloud-storage, and pytest.
  • genai/tuning/requirements.txt
    • Added requirements.txt to specify the google-genai dependency.
  • genai/tuning/test_tuning_examples.py
    • Added test_tuning_examples.py to include tests for the tuning examples, mocking the google.genai.Client and testing the create, get, list, and test functions.
  • genai/tuning/tuning_create.py
    • Added tuning_create.py to demonstrate how to create a tuning job, including setting the base model, training dataset, and tuning job configuration.
  • genai/tuning/tuning_get.py
    • Added tuning_get.py to demonstrate how to get a tuning job by name.
  • genai/tuning/tuning_list.py
    • Added tuning_list.py to demonstrate how to list all tuning jobs.
  • genai/tuning/tuning_test.py
    • Added tuning_test.py to demonstrate how to test a tuned endpoint.
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A model's potential,
Hidden deep, waiting to bloom,
Tuning sets it free.

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Code Review

The pull request introduces examples for tuning jobs using the google-genai SDK. The examples cover creating, getting, listing, and testing tuning jobs. The code appears well-structured and includes tests. However, there are a few areas that could be improved for clarity and robustness.

Summary of Findings

  • Error Handling: The examples lack explicit error handling. While they print the state of the tuning job, they don't handle potential exceptions or API errors, which could lead to unexpected behavior in real-world scenarios.
  • Input Validation: The tuning_get.py, tuning_list.py, and tuning_test.py examples take user input for the tuning job name. There's no validation on this input, which could lead to errors if the user provides an invalid name.
  • Test Coverage: The tests mock the API responses, which is good for isolating the code. However, the tests could be expanded to cover more edge cases and error scenarios.

Merge Readiness

The pull request introduces valuable examples for tuning jobs. However, the lack of error handling and input validation are concerns that should be addressed before merging. I recommend addressing the review comments to improve the robustness and user-friendliness of the examples. I am unable to directly approve this pull request, and recommend that others review and approve this code before merging.

@msampathkumar msampathkumar self-assigned this May 9, 2025
- Updates tuning file names to fix cicd
  - word `test` is reserved for test files
- Update region tag and file names.
  - add word `job` to filenames & region tags
- rename methods and function according to prior changes

tuning_job = client.tunings.tune(
base_model="gemini-2.0-flash-lite-001",
training_dataset="gs://cloud-samples-data/ai-platform/generative_ai/gemini-2_0/text/sft_train_data.jsonl",
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Avoid using model names in filename.

  • OK: Using gemini
  • Not OK: Using gemini-2.0 or gemini-2.0-flash-lite-001
Suggested change
training_dataset="gs://cloud-samples-data/ai-platform/generative_ai/gemini-2_0/text/sft_train_data.jsonl",
training_dataset="gs://cloud-samples-data/ai-platform/generative_ai/gemini/text/sft_train_data.jsonl",

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That's a good point. Using a more generic path makes the example more robust against future model name changes.

Suggested change
training_dataset="gs://cloud-samples-data/ai-platform/generative_ai/gemini-2_0/text/sft_train_data.jsonl",
training_dataset="gs://cloud-samples-data/ai-platform/generative_ai/gemini/text/sft_train_data.jsonl",

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Thank you. We would like to align the file paths with the tuning public documentations. We used model names as folders because the other folders under gs://cloud-samples-data/ai-platform/generative_ai/ include other tuning formats, and the model names are necessary to distinguish between the different formats.

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LGTM.

@msampathkumar msampathkumar merged commit a163a42 into GoogleCloudPlatform:main May 9, 2025
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