- Added functionality to retrieve merged AI recommendations for multiple companies, improving the relevance of tender suggestions based on company-specific data.
- Introduced normalization functions to clean and deduplicate company IDs, ensuring accurate processing of recommendations.
- Enhanced the company context resolution in customer middleware to support multiple assigned companies, improving the handling of company-specific requests.
- Updated the tender recommendation logic to utilize the new merged recommendations and handle exclusions for rejected tenders accordingly.
- Added unit tests to verify the new recommendation merging logic and company ID normalization, ensuring robust functionality.
This update significantly enhances the tender recommendation process by allowing for more comprehensive and relevant suggestions based on multiple company contexts, improving user experience and satisfaction.
- Introduced retry logic for fetching AI recommendations after onboarding, enhancing reliability in recommendation retrieval.
- Updated logging levels for better observability, changing cache miss logs to Info level.
- Renamed methods for clarity, replacing `refreshAIRecommendationsCacheAsync` with `scheduleRecommendationRefreshAfterOnboarding` and `fetchAndCacheAIRecommendations` with `fetchAIRecommendations`.
- Implemented a mechanism to clear the cache if no recommendations are returned, improving cache management.
This update optimizes the AI recommendation process, ensuring more robust handling of recommendation fetching and caching during onboarding.
- Updated `AISummarizerConfig` to allow for a default `RecommendationCacheTTL` of 0, enabling persistent caching until company updates.
- Refactored `StartAIOnboarding` to include cache invalidation and asynchronous recommendation refresh, improving responsiveness during onboarding.
- Introduced `triggerAIOnboardingAsync` method for background processing of AI onboarding and cache refresh, enhancing user experience.
- Improved logging for AI onboarding and recommendation fetching processes, providing better observability and error tracking.
This update optimizes the AI recommendation caching mechanism and onboarding workflow, ensuring a smoother and more efficient experience for users.
- Introduced `refreshAIRecommendationsCacheAsync` method to refresh AI recommendations in the background, improving responsiveness by serving the previous cache until the refresh completes.
- Updated `StartAIOnboarding` to call the new asynchronous cache refresh method instead of invalidating the cache directly.
- Added logging for cache refresh operations, including success and error handling, to enhance observability.
This update enhances the AI recommendation caching mechanism, providing a smoother onboarding experience and reducing latency in recommendation retrieval.
- Updated the `companyService` to include Redis caching for AI recommendations, improving performance and reducing redundant AI calls.
- Introduced asynchronous AI onboarding triggered after company profile updates, enhancing user experience by offloading processing.
- Added configuration for recommendation cache TTL in the `AISummarizerConfig`, allowing for flexible cache management.
- Implemented methods for caching, retrieving, and invalidating AI recommendations in the `companyService`, ensuring efficient data handling.
This update enhances the company's AI recommendation capabilities, providing faster responses and a more efficient onboarding process.
- Added new AI onboarding and recommendation endpoints in the company handler for starting onboarding and retrieving ranked tender recommendations.
- Introduced `StartAIOnboarding` and `GetAIRecommendations` methods in the company service to handle AI interactions.
- Updated the company service constructor to include the AI recommendation client.
- Enhanced the AI summarizer client with methods for onboarding and fetching recommendations.
- Added response structures for onboarding and recommended tenders in the company form.
This update enhances the tender management system by integrating AI capabilities for onboarding and tender recommendations, improving user experience and operational efficiency.