

Azure AI Search and Amazon Kendra are products in the competitive category of enhancing search capabilities within organizations. While Azure AI Search offers more attractive pricing and support, Amazon Kendra holds the advantage due to its advanced features and higher perceived value.
Features: Azure AI Search is known for seamless integration with Microsoft services, powerful indexing, and flexibility in custom searches. Amazon Kendra is distinguished by its deep learning models, natural language processing capabilities, and ability to provide accurate, context-aware results.
Ease of Deployment and Customer Service: Azure AI Search provides straightforward integration with Azure environments, capitalizing on Microsoft's extensive support network. In contrast, Amazon Kendra, utilizing AWS infrastructure, presents a more complex deployment but gains from AWS's comprehensive support. The ease of deployment varies based on existing organizational infrastructure, with Kendra having a steeper learning curve.
Pricing and ROI: Azure AI Search is more budget-friendly for organizations seeking cost-effective solutions, offering competitive pricing. Amazon Kendra, despite a higher setup cost, promises significant ROI through its advanced features and potential to improve information retrieval efficiency, driving greater returns through enhanced search capabilities.
| Product | Market Share (%) |
|---|---|
| Azure AI Search | 9.3% |
| Amazon Kendra | 6.5% |
| Other | 84.2% |

| Company Size | Count |
|---|---|
| Small Business | 3 |
| Midsize Enterprise | 2 |
| Large Enterprise | 4 |
Amazon Kendra is a highly accurate and easy to use enterprise search service that’s powered by machine learning. Kendra enables developers to add search capabilities to their applications so their end users can discover information stored within the vast amount of content spread across their company. This includes data from manuals, research reports, FAQs, HR documentation, customer service guides, and is found across various systems such as file systems, web sites, Box, DropBox, Salesforce, SharePoint, relational databases, Amazon S3, and more. When you type a question, the service uses machine learning algorithms to understand the context and return the most relevant results, whether that be a precise answer or an entire document. For example, you can ask a question like "How much is the cash reward on the corporate credit card?” and Kendra will map to the relevant documents and return a specific answer like “2%”. Kendra provides sample code so that you can get started quickly and easily integrate highly accurate search into your new or existing applications.
Azure Search is a search-as-a-service cloud solution that gives developers APIs and tools for adding a rich search experience over your data in web, mobile, and enterprise applications. Functionality is exposed through a simple REST API or .NET SDK that masks the inherent complexity of search technology. In addition to APIs, the Azure portal provides administration and prototyping support. Infrastructure and availability are managed by Microsoft.
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