AI-Powered Personalized Recommendation Engine Text element

Smart course and job matching for learners and professionals

Explore AI Solutions
Personalized Course & Job Recommendations

About

Industry

  • EdTech, Career Development

Application Type

  • AI-powered Web Platform

Core Functionality

  • Personalized recommendations, user profiling, skill mapping, market-driven insights

The client operates within the EdTech and Career Development ecosystem, serving students, job seekers, and working professionals by offering digital learning and career guidance. Their earlier recommendation system relied on static logic and generic suggestions that rarely matched user goals or abilities.

They needed a smarter engine that understood individual skill levels, learning behavior, career intent, and market demand. The system had to map users to relevant courses, certifications, and job roles while adapting to real-time feedback.

Technically, the platform required ML-driven recommendation models, behavioral profiling, skill mapping algorithms, integrations with course catalogs and job boards, along with a scalable architecture capable of serving millions of suggestions seamlessly.

Results

The recommendation engine significantly improved learning outcomes and job readiness:

Accuracy

4 times improvement over rule-based recommendations

Completion

60% increase in course completion rates

Placement

35% faster job placement cycles

Engagement

80% rise in user interaction

Efficiency

50% reduction in manual counselling workload

quote

Their team understood our needs, solved complex technical challenges and delivered with clarity and speed.

Challenges

Why It Mattered

Learners and jobseekers depend on guidance tied to real skills and real opportunities. Personalized recommendations reduce trial and error and help users pursue learning paths that directly support employability.

Our Approach-

We built a multi-model recommendation engine powered by skill data, behavior insights, and real-time market signals.

Combined collaborative filtering, content similarity and behavioral analysis
User profiles updated continuously based on activity, assessments and achievements
LMS, job portals and course provider feeds merged into a unified pipeline
Mapped user abilities against in-demand competencies
Tools for counselors and learning teams to review and fine-tune recommendations
Validation layers to remove bias and keep suggestions balanced

Our Tools:

ML Models

  • Collaborative filtering
  • Content-Based Filtering
  • Neural Recommendation Networks

NLP

  • BERT
  • Sentence Transformers

Backend

  • Python
  • FastAPI
  • Node.js

Frontend

  • React
  • Next.js

Databases

  • PostgreSQL
  • ElasticSearch
  • Redis

DevOps

  • Docker
  • AWS Lambda
  • ECS
  • CloudWatch

Integrations

  • LinkedIn Jobs API
  • LMS APIs
  • course provider APIs

Before & After

The utilization of the AI-powered job recommendation system result in higher user engagement, accuracy, and completion rate.

Feature / Metric Before – Rule-Based System After – AI-Powered Recommendations
Recommendation Accuracy ~25–30% 85%+ personalized accuracy
Job Placement Speed Slow and manual 35% faster placements
Course Completion Rate Low due to poor matching 60% increase
User Engagement Generic suggestions 80% increase
Counselling Effort High manual workload 50% reduction

Testimonial

A Team That Turned Our Vision into a Real, Intelligent Product

The AI recommendation engine they built has transformed how we guide learners and job seekers. What impressed us most was how quickly the system began delivering accurate, personalized matches at scale. Their team understood our needs, solved complex technical challenges and delivered with clarity and speed. It’s been a game changer for our users and our internal teams alike.

Chief Product Officer

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