How do you configure a BatchPredictionJob to include a "parameters" JSON object (i.e., a dict) in the JSON body of each POST request? I've configured a custom-container based Model to expect "parameters" in the body of a given request made to the prediction route as suggested in the custom container "Request requirements" (https://cloud.google.com/vertex-ai/docs/predictions/custom-container-requirements#request_requiremen...).
The "instances" are constructed successfully, but the model_parameters dict I pass to the BatchPredictionJob.create() class method (https://cloud.google.com/python/docs/reference/aiplatform/latest/google.cloud.aiplatform.BatchPredic...) does not result in the addition of a "parameters" (or any other) key-value pair in the resultant request bodies. Is there another way to supply these "parameters"?
Another user on Stack Overflow seemed to share my question, but the answer isn't conclusive: https://stackoverflow.com/questions/69936296/vertex-ai-custom-container-batch-prediction.
If I inspect my BatchPredictionJob instance via to_dict(), the 'modelParameters' dict looks good. Furthermore, the instance's gca_resource.model_parameters MapComposite and gca_resource.model_parameters.pb MessageMapContainer look like they're populated correctly, too.
I tried pointing to a parameters schema YAML file (and parameters_schema_uri successfully populated in the Model's predict_schemata), but that didn't help either.
I have the same issue
Same here - it would be very useful.
Any updates on this. ?
The documentation casually mention of you can add it but no how details of how to get this ?
https://cloud.google.com/vertex-ai/generative-ai/docs/multimodal/batch-prediction-gemini
.setModel(modelName) // Add model parameters per request in the input jsonl file.
any updates? i have the same problem 😞
User | Count |
---|---|
2 | |
1 | |
1 | |
1 | |
1 |