What this error means

anthropic.claude-3-haiku-20240307-v1:0 with on-demand throughput isn't supported is a Anthropic API failure pattern reported for developers trying to fix amazon bedrock error when using anthropic claude models with on-demand throughput. Based on the imported evidence, treat this as a tool-specific troubleshooting page rather than a generic API error.

Why this happens

Stack Overflow question (score 1) about Amazon Bedrock rejecting Anthropic Claude 3 Haiku model ID when using on-demand throughput. Exact error message includes model ID and throughput type mismatch. Affects AWS Bedrock paid service users.

Common causes

  • Amazon Bedrock users get this error when attempting to use specific Claude model IDs with on-demand throughput instead of provisioned throughput. This is a billing/provisioning configuration error that blocks AI application deployment on AWS's paid Bedrock service.
  • Stack Overflow question (score 1) about Amazon Bedrock rejecting Anthropic Claude 3 Haiku model ID when using on-demand throughput. Exact error message includes model ID and throughput type mismatch. Affects AWS Bedrock paid service users.

Quick fixes

  1. Confirm the exact error signature matches anthropic.claude-3-haiku-20240307-v1:0 with on-demand throughput isn't supported.
  2. Check the Anthropic API account, local tool state, and provider configuration involved in the failing workflow.
  3. Compare the failing environment with a known working setup, then change one configuration value at a time.

Platform/tool-specific checks

  • Verify the command, editor, extension, or API client that produced the error.
  • Compare local settings with CI, deployment, or editor-level settings when the error appears in only one environment.
  • Avoid deleting credentials, local model data, or project settings until the failing scope is clear.

Step-by-step troubleshooting

  1. Capture the exact error message and the command, editor action, or request that triggered it.
  2. Check whether the failure is account/auth, quota/rate, model/provider, local runtime, or deployment configuration.
  3. Review the source evidence below and compare it with your environment.
  4. Apply one change at a time and rerun the smallest failing action.
  5. Keep the working fix documented for the team or deployment environment.

How to prevent it

  • Keep provider/tool configuration documented.
  • Record non-secret diagnostics such as tool version, provider name, model name, and command path.
  • Add a lightweight check before CI or production workflows depend on the tool.