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WELCOME TO OUR TEAM

We’re a creative powerhouse crafting sleek,  high-performance Website that stand out and deliver exceptional user experiences

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Syed Ali Zain

Sr. Data Engineer

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Jahanzaib

Sr. Python Developer

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Hamail Babar

Sr. UI/UX Desginer


Gulzar Soft - Web and Data Scraping Projects

At Gulzarsoft, we specialize in web scraping projects and automated data extraction, offering solutions tailored to industry-specific needs. Our expertise includes E-Commerce (e.g., Amazon Scraping) Real Estate (e.g., Property Listing Aggregation) Market Research (e.g., Competitor Analysis).We deliver structured, clean, and actionable datasets by combining cutting-edge tools like Scrapy, Selenium, and Beautiful Soup,

Please reach out to us today to discuss your web scraping needs and achieve your business goals with reliable data solutions.

Our Recent Projects

Capture

In this project, the client provided a list of specific regions from which they needed restaurant data extracted from OpenTable. I developed a custom web scraping solution using Python and Scrapy, tailored to navigate the site’s structure and extract the required information efficiently.

E-Commerce Website Scraping

We created scalable and efficient web scraping scripts to extract structured data from e-commerce websites. Key data points collected include product names, prices, availability, reviews, detailed descriptions, and images. This automated data extraction process supported multiple use.

N1

NEWS BRIEF  demonstrates how NLP techniques can be applied to extract valuable structured data from raw, unstructured news articles. By automating the extraction process, businesses can save time and resources while gaining deeper insights into ongoing events and trends.

Real Estate Web Scraping

This project involved developing advanced web scraping projects scripts to extract detailed property information from real estate websites. The data included property listings, prices (including installment plans), locations, community names, property features, and high-quality images.

API Scraping – OpenTable Restaurant Data

For client Aaron DeCoste, I engineered a custom Python/Scrapy-based scraping solution to extract structured restaurant data (name, location, cuisine, ratings, and reservation availability) from targeted OpenTable regions. The data was delivered in both CSV format and directly integrated into a PostgreSQL database, streamlining the client’s internal data workflows. The project was delivered on time, earning a 5-star review and enhancing the client’s automation pipeline.

NEWS   BRIEF

NEWS BRIEF  demonstrates how NLP techniques can be applied to extract valuable structured data from raw, unstructured news articles. By automating the extraction process, businesses can save time and resources while gaining deeper insights into ongoing events and trends.

The system provides structured data that is saved in a database. This structured data helps businesses extract actionable insights from raw text, including:

N1
C1

CNN-Based Image Classification for Crop Disease Detection

The project achieved over 95% accuracy in detecting wheat crop diseases like septoria and stripe rust using a CNN model. Integrated into a React Native app, it allows farmers to capture or upload images for instant diagnosis and recommendations. This solution offers a practical step toward smarter, tech-enabled agriculture, with future potential for real-time detection and multi-crop support.

We created scalable and efficient web scraping scripts to extract structured data from e-commerce websites. Key data points collected include product names, prices, availability, reviews, detailed descriptions, and images. This automated data extraction process supported multiple use cases such as:

  • Price Monitoring to track competitor pricing trends.
  • Market Research to analyze customer preferences.
  • Inventory Tracking for better stock management.

By leveraging tools like Beautiful Soup, Scrapy, and Selenium, we ensured the scraping process handled complex website architectures. The extracted data was clean, accurate, and ready for actionable insights while adhering to website terms of service.

This project involved developing advanced web scraping projects scripts to extract detailed property information from real estate websites. The data included property listings, prices (including installment plans), locations, community names, property features, and high-quality images.

The solution was designed to be accurate and scalable, ensuring consistent access to actionable property data for:

  • Real Estate Professionals to understand market trends.
  • Investors to identify lucrative opportunities.
  • Analysts to support data-driven decision-making.

By focusing on compliance with platform policies and using Python-based tools, we ensured the highest standards in data accuracy and usability.

OUR CLIENTS

Hear What Clients Say About Our Game-Changing App Development!

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Sarah M. United States

The team quickly understood our needs and delivered a high-performing app that exceeded expectations. Their clear communication and attention to detail stood out. Since launch, user engagement and business growth have significantly increased thanks to their exceptional work.

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John D. Canada

From the initial concept to the final launch, the mobile app development process was smooth and efficient. The developers were skilled, and they handled any challenges quickly. The final product was exactly what we envisioned, and it’s already getting great feedback from users!

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Lisa T. UK

We were impressed with the professionalism and attention to detail provided by the team. They went above and beyond to ensure the app was user-friendly and functional. Our mobile app has become a key component of our digital strategy, and we couldn't be happier with the results.

author 2
kevinfmorgan United States

Although there was some confusion on delivery, he went above and beyond the scope to make certain we were happy. We appreciated that and would not hesitate to use him again. The quality of the work was excellent and his patience in getting it right was really over the top good.

Our project approach drives measurable results, supports marketers in achieving their goals, and addresses customer needs within their budget..

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In this project, the client provided a list of specific regions from which they needed restaurant data extracted from OpenTable. I developed a custom web scraping solution using Python and Scrapy, tailored to navigate the site’s structure and extract the required information efficiently.

The extracted data included key restaurant details such as name, location, cuisine, ratings, and reservation availability. I ensured that the output met the client’s dual requirements by delivering the data both as a CSV file and by dumping it into a PostgreSQL database for easier integration with their internal systems.

The project was delivered successfully and on time. The client was extremely satisfied with the quality of the work, awarding it 5 stars and leaving a positive review. It was a great experience working on this project and contributing to the client’s data automation workflow.

Client Name: Aaron DeCoste

Website: https://www.opentable.com/

Skills Used: Python, Scrapy, PostgreSQL, CSV, Web Scraping, Data Pipeline Automation

We created scalable and efficient web scraping scripts to extract structured data from e-commerce websites. Key data points collected include product names, prices, availability, reviews, detailed descriptions, and images. This automated data extraction process supported multiple use cases such as:

  • Price Monitoring to track competitor pricing trends.
  • Market Research to analyze customer preferences.
  • Inventory Tracking for better stock management.

By leveraging tools like Beautiful Soup, Scrapy, and Selenium, we ensured the scraping process handled complex website architectures. The extracted data was clean, accurate, and ready for actionable insights while adhering to website terms of service.

NEWS BRIEF

In this project, we implemented a system for Information Extraction (IE) from raw news articles. The system automatically extracts structured data such as entities, relationships, events, and metadata from unstructured text, making it easier for businesses to analyze and utilize news content.

Objective

The goal of this project is to extract key pieces of information from news articles, such as:

  • Translation Translate the text into Chinese
  • Entities (e.g., persons, organizations, locations)
  • Events mentioned in the article
  • Sentiments from various perspectives
  • Metadata such as news source, category, and credibility ratings

This data is utilized for:

  • Automated content analysis
  • Market research
  • Media monitoring
  • News aggregation

Tools & Technologies Used

  • Python: The primary programming language for text processing.
  • Natural Language Processing (NLP) Libraries:
    • spaCy: For Named Entity Recognition (NER), dependency parsing, and relation extraction.
    • OpenAi: For translation, extracting sentiments and collecting metadata 

 

Key Features

  1. Entity Extraction:
    • Identify and extract entities such as people, organizations, locations, and dates.
  2. Language Translation:
    • Translate the title and description to Chinese and in any other language that client requires.
  3. Event Extraction:
    • Detect significant events, such as demands for extradition or political developments.
  1. Sentiment Extraction:
    • Extract sentiment from different comments, categorizing them into neutral, left-wing, and right-wing perspectives.
  2. Metadata Extraction:

Extract additional metadata such as the news source, category, importance rating, and timeliness rating.

This project involved developing advanced web scraping projects scripts to extract detailed property information from real estate websites. The data included property listings, prices (including installment plans), locations, community names, property features, and high-quality images.

The solution was designed to be accurate and scalable, ensuring consistent access to actionable property data for:

  • Real Estate Professionals to understand market trends.
  • Investors to identify lucrative opportunities.
  • Analysts to support data-driven decision-making.

By focusing on compliance with platform policies and using Python-based tools, we ensured the highest standards in data accuracy and usability.