Data Engineering Projects in Pakistan
Data Engineering Projects in Pakistan
Sign Up
Post a job
Sign Up
Log In
Filters
2
Projects
People
Message
4
Toolshed (Data, Automation, AI Agents, Framer, Retool)
max
Development of Financial Management Platform for Vergo
4
256
Message
2
Tayyab Ali
BI Specialist for Meta Ads Dashboard Integration
2
142
Message
0
Devowise .
Automated ELT Pipeline Development
0
25
Message
0
Faarid Qureshi
pro
Student Grit Score Data System
0
4
Message
0
Usama Idrees
Serverless Architecture for Scalability & Efficiency at VMLA
0
31
Message
7
Muhammad Usman
pro
Shop Smarter with QUFFAH 🛍️ Your modern e-commerce store built by Repla Technologies. Fast, secure, and seamless shopping designed to elevate your online experience. Discover a store that brings quality, convenience, and style together. Get in touch: info@replatechnologies.co.uk (mailto:info@replatechnologies.co.uk)visit: www.replatechnologies.com (https://www.replatechnologies.com)
2
7
514
Message
1
Spacebar Technologies
Instacoach
1
6
Message
1
Usman Haider
Worked on an RLHF (Reinforcement Learning from Human Feedback) pipeline focused on dataset creation, data annotation, and model evaluation. My role involved designing and curating high-quality prompt datasets, reviewing AI-generated responses, and providing structured feedback based on accuracy, relevance, safety, and helpfulness. Contributed to improving model performance by ensuring consistent evaluation standards and high-quality human feedback for training alignment and refinement.
1
104
Message
0
Umar Aurangzeb
I recently engineered a real-time tracking system for a school to replace static reports with continuous feedback. Using a Google Sheets-to-Looker Studio pipeline, I automated the transition from raw teacher observations to parent-facing insights. Key Deliverables: Live Pipeline: Structured Sheets input for teachers to log 12+ data points per student daily. Grit Scoring Engine: Built custom logic weighting effort over mastery using cohort benchmarks. Dynamic URL Security: Implemented unique, filtered dashboard links for secure parent/student access. Automated Insights: Built-in trend indicators (Improving/Stable/Declining) for instant intervention. The Impact: The client now uses a live command center that eliminates manual reporting and provides real-time actionable intelligence.
0
145
Message
0
Arslan Mehmood
AI-Powered PDF Data Extraction My role: AI Data Processing and Extracton Engineer Organizations often struggle to extract structured and useful information from large volumes of unstructured PDF documents. I developed a flexible AI-powered data extraction solution that allows users to define the specific entities and fields they want to retrieve. The system processes different PDF formats, identifies relevant information, and converts it into structured, usable data. The solution reduces manual document processing, improves retrieval accuracy, and can be adapted to different document types and business requirements. A working demo link is attached.
0
27
Message
0
Abu Sufyan
Severance Calculator
0
29
Message
0
Arslan Khan
Project Title: Automated CRM Lead-Capture & Enrichment Pipeline Role: AI Automation Architect Project Description: I engineered a zero-touch lead-capture pipeline that eliminates manual CRM data entry. The system automatically triggers upon receiving incoming emails, utilizing an AI agent to intelligently parse unstructured inquiries for critical contact details (Name, Company, Requirements). It then validates and pushes this data directly into HubSpot, ensuring lead integrity and 100% capture rate while allowing teams to focus on high-value closing activities rather than administration. Skills: AI Automation, Automation, CRM Automation, Workflow Engineering, Systems Architecture, API Integration Tools: n8n, HubSpot API, OpenAI, JSON Parsing, Webhooks
0
35
Message
0
Muhammad Arsalan
Problem: Financial data from stocks and crypto APIs was scattered, refreshed manually, and not ready for analytics or ML use. Solution: Built an Apache Airflow pipeline to collect, transform, validate, and load real-time financial data from multiple APIs into PostgreSQL, MongoDB, AWS RDS, and Qdrant. Tools: Apache Airflow, Python, PostgreSQL, MongoDB, AWS RDS, Qdrant, APIs Result: Automated sub-hourly data refresh, processed thousands of records daily, and delivered clean data for dashboards, analytics, and vector search.
0
64
Message
0
Mahmood Hashmi
Multi-Drive Architecture: Synchronizing & Organizing 4 Enterprise Streams Project Overview: The client operated with four distinct Google Drives (Personal, Giant Ventures, WMBG Rentals, and Lock & Key Property Inspection) all linked under a single account. The data was heavily fragmented, with business assets, rental documents, and personal backups mixed across all platforms. I was hired to consolidate and structure this 100GB+ ecosystem into a unified, professional workspace. The Challenges: Cross-Drive Clutter: Files from different businesses were intermingled, causing massive confusion and slow retrieval. Storage Waste: High volume of redundant backups and temporary files taking up valuable cloud space. Syncing Issues: Inconsistent folder naming prevented smooth access across mobile and desktop devices. My Solution & Workflow: Unified Folder Hierarchy: Designed a master structure that separated the 4 entities while maintaining a logical link between them. Deep Data Sorting: Manually audited and moved over 100GB of files into their respective business or personal categories. The "Zero-Duplicate" Protocol: Identified and removed redundant files to optimize storage and reduce costs. Standardized Naming Convention: Established a consistent file-naming system for "Lock & Key" and "WMBG Rentals" to ensure future scalability. The Results: Turnaround Time: Completed the entire migration and organization within 3 days (ahead of schedule). Efficiency Boost: The client can now locate any document from any of the 4 drives in seconds. Seamless Sync: Guaranteed 100% folder accessibility across all client devices.
0
53
Message
0
Tanveer Hussain
pro
RAG Pipeline Implementation
0
57
Message
1
Moiz Ahmed Mansoori
QueryMind lets you query a real database using plain English. Type a question, get an answer — no SQL knowledge needed. Built a production-grade AI agent using LangGraph that converts natural language to SQL, executes it on a real PostgreSQL database with 100,000+ rows, and automatically corrects errors in a retry loop if the query fails. Key features: 7-node LangGraph agent with conditional routing and self-correction pgvector semantic search for intelligent schema retrieval Full observability dashboard with real-time metrics and query history Trace replay — see every step the agent took to answer your question Deployed live: Next.js frontend on Vercel, FastAPI backend on Render Tech: LangGraph · Groq LLaMA 3.3 70B · PostgreSQL · pgvector · FastAPI · Next.js · Tailwind CSS Github: https://github.com/moiz-mansoori/QueryMind-NL2SQL-Agent-System
1
150
Explore projects