Amazon CodeWhisperer vs Vellum
Compare coding AI Tools
AI coding companion from AWS now part of Amazon Q Developer, offering code suggestions, security scans and natural language to code across IDEs with a free tier and Pro.
Vellum is an AI agent building platform that combines a prompt playground, evaluation tools, and hosted agent apps so teams can iterate on LLM workflows with debugging and knowledge base support, starting with a free tier and upgrading for more credits.
Feature Tags Comparison
Key Features
- Contextual code suggestions in popular IDEs for many languages
- Natural language to code and tests via Amazon Q Developer
- Security scans to detect secrets and known risky APIs
- Optimized snippets for AWS SDKs CLI and services
- Support for Python JavaScript Java and more ecosystems
- Per user Pro tier with higher limits and admin controls
- Free and Pro plans: Pricing starts at $0 with 50 credits and Pro at $25 with 200 builder credits so solo builders can scale testing
- Prompt playground: Compare models side by side and iterate prompts systematically instead of relying on subjective testing
- Evaluations framework: Run repeatable quality tests at scale to detect regressions and track improvements across prompt versions
- Hosted agent apps: Share working agents with teammates through hosted apps for demos
- reviews
- and stakeholder feedback cycles
Use Cases
- Speed up SDK usage for AWS services with correct patterns
- Generate tests and boilerplate from natural language comments
- Detect hardcoded secrets before code leaves your laptop
- Enable juniors to learn API usage by example in IDE
- Reduce copy paste from docs while keeping human review
- Adopt a free tier for individuals then upgrade for teams
- Agent prototyping: Build an agent by chatting with AI then refine logic with low code steps and controlled prompt versions
- Prompt iteration: Compare LLM outputs side by side and select prompts that improve accuracy and reduce unwanted variation
- Regression testing: Run evaluations on a saved dataset before release to catch quality drops after model or prompt changes
- RAG apps: Attach a knowledge base and test retrieval behavior with representative questions and strict document scope rules
- Stakeholder demos: Publish hosted agent apps so product and compliance reviewers can test behavior without local setup steps
- Model selection: Evaluate providers and self hosted options with the same tasks to choose the best cost and latency mix for production
Perfect For
backend and cloud developers devops and data engineers building on AWS who want faster code suggestions tests and security checks
product managers, ML engineers, software engineers, data scientists, AI platform teams, prompt engineers, QA and reliability teams, startups building LLM features, teams shipping agent workflows
Capabilities
Need more details? Visit the full tool pages.





