Boolean and Beyond
サービス導入事例私たちについてAI活用ガイド採用情報お問い合わせ
Boolean and Beyond

AI導入・DX推進を支援。業務効率化からプロダクト開発まで、成果にこだわるAIソリューションを提供します。

会社情報

  • 私たちについて
  • サービス
  • ソリューション
  • Industry Guides
  • 導入事例
  • AI活用ガイド
  • 採用情報
  • お問い合わせ

サービス

  • AI搭載プロダクト開発
  • MVP・新規事業開発
  • 生成AI・AIエージェント開発
  • 既存システムへのAI統合
  • レガシーシステム刷新・DX推進
  • データ基盤・AI基盤構築

Resources

  • AI Cost Calculator
  • AI Readiness Assessment
  • Tech Stack Analyzer
  • AI-Augmented Development

Comparisons

  • AI-First vs AI-Augmented
  • Build vs Buy AI
  • RAG vs Fine-Tuning
  • HLS vs DASH Streaming

Locations

  • Bangalore·
  • Coimbatore

法的情報

  • 利用規約
  • プライバシーポリシー

お問い合わせ

contact@booleanbeyond.com+91 9952361618

AI Solutions

View all services

Selected links for quick navigation. For the full catalog of implementation pages, use the services index.

Core Solutions

  • RAG Implementation
  • LLM Integration
  • AI Agents
  • AI Automation

Featured Services

  • AI Agent Development
  • AI Chatbot Development
  • Claude API Integration
  • AI Agents Implementation
  • n8n WhatsApp Integration
  • n8n Salesforce Integration

© 2026 Boolean & Beyond. All rights reserved.

バンガロール、インド

Boolean and Beyond
サービス導入事例私たちについてAI活用ガイド採用情報お問い合わせ
Service

AI-Powered Search & Recommendation Engine Development in Bengaluru, India Bengaluru

Build intelligent search and recommendation systems that understand user intent, learn from behavior, and deliver relevant results. Our Bengaluru team implements semantic search, collaborative filtering, content-based recommendations, and hybrid systems that drive engagement and revenue.

Book Architecture CallGet Estimate

Proof-First Delivery

Measurable Outcomes We Optimize For

6-10 weeks
Pilot launch timeline
99.3%
SLA adherence in production
-35%
Average operational effort

What We Offer

Service Modules Built for Production

Each module is designed as a production block with integration boundaries, governance hooks, and measurable outcomes.

01

Services

Semantic Search Implementation Replace keyword matching with meaning-based search using embedding models (Gemini, OpenAI, Cohere). Users find what they mean, not just what they type. We implement semantic search over product catalogues, knowledge bases, and content libraries with sub-100ms latency. Recommendation Engine Development Build recommendation systems using collaborative filtering (users who liked X also liked Y), content-based filtering (items similar to what you've viewed), and hybrid approaches. We handle cold-start problems, real-time personalization, and A/B testing frameworks to continuously improve recommendation quality. Hybrid Search (Vector + Keyword) Combine dense vector search with sparse keyword search (BM25) for the best of both worlds. Hybrid search captures semantic meaning while preserving exact-match precision for product SKUs, names, and technical terms. Search Analytics & Optimization Track search KPIs — click-through rate, zero-result rate, search-to-conversion, and query abandonment. We build feedback loops that use click and purchase data to improve ranking quality over time, and implement search analytics dashboards for your product team. Personalization Engine Build user models from browsing behavior, purchase history, and explicit preferences. Personalize search results, homepage content, email recommendations, and push notifications based on individual user profiles that update in real-time.

02

Why Work With Us

AI-Native Search Expertise We build search systems using the latest AI techniques — embedding models, re-rankers, learning-to-rank, and LLM-powered query understanding. Not just Elasticsearch with synonyms, but genuinely intelligent search that improves with usage. Measurable Impact Every search and recommendation implementation includes success metrics — CTR, conversion rate, NDCG, and revenue attribution. We set up A/B testing from day one so you can measure the impact of every improvement. Bengaluru Engineering Team Direct collaboration with search and ML engineers in Bengaluru. Fast iteration on ranking models, embedding strategies, and personalization logic with same-timezone coordination.

03

Use Cases

E-Commerce Product Search & Discovery Customers search for 'blue running shoes under 5000' and get exactly what they want — with semantic understanding of intent, price filtering, and personalized ranking based on their preferences and browsing history. Content Platform Recommendations Recommend articles, videos, courses, or podcasts based on user engagement patterns and content similarity. We build recommendation feeds that increase time-on-platform, reduce churn, and surface long-tail content that users wouldn't discover otherwise. Marketplace Matching Match buyers with sellers, job seekers with employers, or patients with doctors using semantic similarity, preference matching, and availability filtering. Two-sided marketplace matching that optimizes for satisfaction on both sides.

Delivery Proof

See Our Work in Action

Selected engagements that show architecture depth, execution quality, and measurable business impact.

Case Study68% ticket automation

Enterprise AI Agent Implementation

Governed agent workflows across ops systems with strong reliability and escalation controls.

Read case study
Case Study82% query deflection

WhatsApp AI Integration for Customer Journey

Production support and lead workflows with measurable conversion and response improvements.

Read case study

Delivery Advantages

Why Choose Boolean & Beyond

01

Services

Semantic Search Implementation Replace keyword matching with meaning-based search using embedding models (Gemini, OpenAI, Cohere). Users find what they mean, not just what they type. We implement semantic search over product catalogues, knowledge bases, and content libraries with sub-100ms latency. Recommendation Engine Development Build recommendation systems using collaborative filtering (users who liked X also liked Y), content-based filtering (items similar to what you've viewed), and hybrid approaches. We handle cold-start problems, real-time personalization, and A/B testing frameworks to continuously improve recommendation quality. Hybrid Search (Vector + Keyword) Combine dense vector search with sparse keyword search (BM25) for the best of both worlds. Hybrid search captures semantic meaning while preserving exact-match precision for product SKUs, names, and technical terms. Search Analytics & Optimization Track search KPIs — click-through rate, zero-result rate, search-to-conversion, and query abandonment. We build feedback loops that use click and purchase data to improve ranking quality over time, and implement search analytics dashboards for your product team. Personalization Engine Build user models from browsing behavior, purchase history, and explicit preferences. Personalize search results, homepage content, email recommendations, and push notifications based on individual user profiles that update in real-time.

02

Why Work With Us

AI-Native Search Expertise We build search systems using the latest AI techniques — embedding models, re-rankers, learning-to-rank, and LLM-powered query understanding. Not just Elasticsearch with synonyms, but genuinely intelligent search that improves with usage. Measurable Impact Every search and recommendation implementation includes success metrics — CTR, conversion rate, NDCG, and revenue attribution. We set up A/B testing from day one so you can measure the impact of every improvement. Bengaluru Engineering Team Direct collaboration with search and ML engineers in Bengaluru. Fast iteration on ranking models, embedding strategies, and personalization logic with same-timezone coordination.

03

Use Cases

E-Commerce Product Search & Discovery Customers search for 'blue running shoes under 5000' and get exactly what they want — with semantic understanding of intent, price filtering, and personalized ranking based on their preferences and browsing history. Content Platform Recommendations Recommend articles, videos, courses, or podcasts based on user engagement patterns and content similarity. We build recommendation feeds that increase time-on-platform, reduce churn, and surface long-tail content that users wouldn't discover otherwise. Marketplace Matching Match buyers with sellers, job seekers with employers, or patients with doctors using semantic similarity, preference matching, and availability filtering. Two-sided marketplace matching that optimizes for satisfaction on both sides.

FAQ

Frequently Asked Questions

Build Smarter Search

Ready to upgrade your search and recommendations with AI? Talk to our Bengaluru team about your product.

Book Architecture CallGet Estimate
Boolean and Beyond

AI導入・DX推進を支援。業務効率化からプロダクト開発まで、成果にこだわるAIソリューションを提供します。

会社情報

  • 私たちについて
  • サービス
  • ソリューション
  • Industry Guides
  • 導入事例
  • AI活用ガイド
  • 採用情報
  • お問い合わせ

サービス

  • AI搭載プロダクト開発
  • MVP・新規事業開発
  • 生成AI・AIエージェント開発
  • 既存システムへのAI統合
  • レガシーシステム刷新・DX推進
  • データ基盤・AI基盤構築

Resources

  • AI Cost Calculator
  • AI Readiness Assessment
  • Tech Stack Analyzer
  • AI-Augmented Development

Comparisons

  • AI-First vs AI-Augmented
  • Build vs Buy AI
  • RAG vs Fine-Tuning
  • HLS vs DASH Streaming

Locations

  • Bangalore·
  • Coimbatore

法的情報

  • 利用規約
  • プライバシーポリシー

お問い合わせ

contact@booleanbeyond.com+91 9952361618

AI Solutions

View all services

Selected links for quick navigation. For the full catalog of implementation pages, use the services index.

Core Solutions

  • RAG Implementation
  • LLM Integration
  • AI Agents
  • AI Automation

Featured Services

  • AI Agent Development
  • AI Chatbot Development
  • Claude API Integration
  • AI Agents Implementation
  • n8n WhatsApp Integration
  • n8n Salesforce Integration

© 2026 Boolean & Beyond. All rights reserved.

バンガロール、インド