Actowiz Metrics Now Live!
logo
Unlock Smarter , Faster Analytics!
Actowiz Metrics Now Live!
logo
Unlock Smarter , Faster Analytics!
Actowiz Metrics Now Live!
logo
Unlock Smarter , Faster Analytics!
Actowiz Metrics Now Live!
logo
Unlock Smarter , Faster Analytics!
Actowiz Metrics Now Live!
logo
Unlock Smarter , Faster Analytics!
Actowiz Metrics Now Live!
logo
Unlock Smarter , Faster Analytics!
Actowiz Metrics Now Live!
logo
Unlock Smarter , Faster Analytics!
Actowiz Metrics Now Live!
logo
Unlock Smarter , Faster Analytics!
Actowiz Metrics Now Live!
logo
Unlock Smarter , Faster Analytics!
Actowiz Metrics Now Live!
logo
Unlock Smarter , Faster Analytics!
Actowiz Metrics Now Live!
logo
Unlock Smarter , Faster Analytics!
Actowiz Metrics Now Live!
logo
Unlock Smarter , Faster Analytics!
GeoIp2\Model\City Object
(
    [raw:protected] => Array
        (
            [city] => Array
                (
                    [geoname_id] => 4509177
                    [names] => Array
                        (
                            [de] => Columbus
                            [en] => Columbus
                            [es] => Columbus
                            [fr] => Columbus
                            [ja] => コロンバス
                            [pt-BR] => Columbus
                            [ru] => Колумбус
                            [zh-CN] => 哥伦布
                        )

                )

            [continent] => Array
                (
                    [code] => NA
                    [geoname_id] => 6255149
                    [names] => Array
                        (
                            [de] => Nordamerika
                            [en] => North America
                            [es] => Norteamérica
                            [fr] => Amérique du Nord
                            [ja] => 北アメリカ
                            [pt-BR] => América do Norte
                            [ru] => Северная Америка
                            [zh-CN] => 北美洲
                        )

                )

            [country] => Array
                (
                    [geoname_id] => 6252001
                    [iso_code] => US
                    [names] => Array
                        (
                            [de] => USA
                            [en] => United States
                            [es] => Estados Unidos
                            [fr] => États Unis
                            [ja] => アメリカ
                            [pt-BR] => EUA
                            [ru] => США
                            [zh-CN] => 美国
                        )

                )

            [location] => Array
                (
                    [accuracy_radius] => 20
                    [latitude] => 39.9625
                    [longitude] => -83.0061
                    [metro_code] => 535
                    [time_zone] => America/New_York
                )

            [postal] => Array
                (
                    [code] => 43215
                )

            [registered_country] => Array
                (
                    [geoname_id] => 6252001
                    [iso_code] => US
                    [names] => Array
                        (
                            [de] => USA
                            [en] => United States
                            [es] => Estados Unidos
                            [fr] => États Unis
                            [ja] => アメリカ
                            [pt-BR] => EUA
                            [ru] => США
                            [zh-CN] => 美国
                        )

                )

            [subdivisions] => Array
                (
                    [0] => Array
                        (
                            [geoname_id] => 5165418
                            [iso_code] => OH
                            [names] => Array
                                (
                                    [de] => Ohio
                                    [en] => Ohio
                                    [es] => Ohio
                                    [fr] => Ohio
                                    [ja] => オハイオ州
                                    [pt-BR] => Ohio
                                    [ru] => Огайо
                                    [zh-CN] => 俄亥俄州
                                )

                        )

                )

            [traits] => Array
                (
                    [ip_address] => 216.73.216.3
                    [prefix_len] => 22
                )

        )

    [continent:protected] => GeoIp2\Record\Continent Object
        (
            [record:GeoIp2\Record\AbstractRecord:private] => Array
                (
                    [code] => NA
                    [geoname_id] => 6255149
                    [names] => Array
                        (
                            [de] => Nordamerika
                            [en] => North America
                            [es] => Norteamérica
                            [fr] => Amérique du Nord
                            [ja] => 北アメリカ
                            [pt-BR] => América do Norte
                            [ru] => Северная Америка
                            [zh-CN] => 北美洲
                        )

                )

            [locales:GeoIp2\Record\AbstractPlaceRecord:private] => Array
                (
                    [0] => en
                )

            [validAttributes:protected] => Array
                (
                    [0] => code
                    [1] => geonameId
                    [2] => names
                )

        )

    [country:protected] => GeoIp2\Record\Country Object
        (
            [record:GeoIp2\Record\AbstractRecord:private] => Array
                (
                    [geoname_id] => 6252001
                    [iso_code] => US
                    [names] => Array
                        (
                            [de] => USA
                            [en] => United States
                            [es] => Estados Unidos
                            [fr] => États Unis
                            [ja] => アメリカ
                            [pt-BR] => EUA
                            [ru] => США
                            [zh-CN] => 美国
                        )

                )

            [locales:GeoIp2\Record\AbstractPlaceRecord:private] => Array
                (
                    [0] => en
                )

            [validAttributes:protected] => Array
                (
                    [0] => confidence
                    [1] => geonameId
                    [2] => isInEuropeanUnion
                    [3] => isoCode
                    [4] => names
                )

        )

    [locales:protected] => Array
        (
            [0] => en
        )

    [maxmind:protected] => GeoIp2\Record\MaxMind Object
        (
            [record:GeoIp2\Record\AbstractRecord:private] => Array
                (
                )

            [validAttributes:protected] => Array
                (
                    [0] => queriesRemaining
                )

        )

    [registeredCountry:protected] => GeoIp2\Record\Country Object
        (
            [record:GeoIp2\Record\AbstractRecord:private] => Array
                (
                    [geoname_id] => 6252001
                    [iso_code] => US
                    [names] => Array
                        (
                            [de] => USA
                            [en] => United States
                            [es] => Estados Unidos
                            [fr] => États Unis
                            [ja] => アメリカ
                            [pt-BR] => EUA
                            [ru] => США
                            [zh-CN] => 美国
                        )

                )

            [locales:GeoIp2\Record\AbstractPlaceRecord:private] => Array
                (
                    [0] => en
                )

            [validAttributes:protected] => Array
                (
                    [0] => confidence
                    [1] => geonameId
                    [2] => isInEuropeanUnion
                    [3] => isoCode
                    [4] => names
                )

        )

    [representedCountry:protected] => GeoIp2\Record\RepresentedCountry Object
        (
            [record:GeoIp2\Record\AbstractRecord:private] => Array
                (
                )

            [locales:GeoIp2\Record\AbstractPlaceRecord:private] => Array
                (
                    [0] => en
                )

            [validAttributes:protected] => Array
                (
                    [0] => confidence
                    [1] => geonameId
                    [2] => isInEuropeanUnion
                    [3] => isoCode
                    [4] => names
                    [5] => type
                )

        )

    [traits:protected] => GeoIp2\Record\Traits Object
        (
            [record:GeoIp2\Record\AbstractRecord:private] => Array
                (
                    [ip_address] => 216.73.216.3
                    [prefix_len] => 22
                    [network] => 216.73.216.0/22
                )

            [validAttributes:protected] => Array
                (
                    [0] => autonomousSystemNumber
                    [1] => autonomousSystemOrganization
                    [2] => connectionType
                    [3] => domain
                    [4] => ipAddress
                    [5] => isAnonymous
                    [6] => isAnonymousProxy
                    [7] => isAnonymousVpn
                    [8] => isHostingProvider
                    [9] => isLegitimateProxy
                    [10] => isp
                    [11] => isPublicProxy
                    [12] => isResidentialProxy
                    [13] => isSatelliteProvider
                    [14] => isTorExitNode
                    [15] => mobileCountryCode
                    [16] => mobileNetworkCode
                    [17] => network
                    [18] => organization
                    [19] => staticIpScore
                    [20] => userCount
                    [21] => userType
                )

        )

    [city:protected] => GeoIp2\Record\City Object
        (
            [record:GeoIp2\Record\AbstractRecord:private] => Array
                (
                    [geoname_id] => 4509177
                    [names] => Array
                        (
                            [de] => Columbus
                            [en] => Columbus
                            [es] => Columbus
                            [fr] => Columbus
                            [ja] => コロンバス
                            [pt-BR] => Columbus
                            [ru] => Колумбус
                            [zh-CN] => 哥伦布
                        )

                )

            [locales:GeoIp2\Record\AbstractPlaceRecord:private] => Array
                (
                    [0] => en
                )

            [validAttributes:protected] => Array
                (
                    [0] => confidence
                    [1] => geonameId
                    [2] => names
                )

        )

    [location:protected] => GeoIp2\Record\Location Object
        (
            [record:GeoIp2\Record\AbstractRecord:private] => Array
                (
                    [accuracy_radius] => 20
                    [latitude] => 39.9625
                    [longitude] => -83.0061
                    [metro_code] => 535
                    [time_zone] => America/New_York
                )

            [validAttributes:protected] => Array
                (
                    [0] => averageIncome
                    [1] => accuracyRadius
                    [2] => latitude
                    [3] => longitude
                    [4] => metroCode
                    [5] => populationDensity
                    [6] => postalCode
                    [7] => postalConfidence
                    [8] => timeZone
                )

        )

    [postal:protected] => GeoIp2\Record\Postal Object
        (
            [record:GeoIp2\Record\AbstractRecord:private] => Array
                (
                    [code] => 43215
                )

            [validAttributes:protected] => Array
                (
                    [0] => code
                    [1] => confidence
                )

        )

    [subdivisions:protected] => Array
        (
            [0] => GeoIp2\Record\Subdivision Object
                (
                    [record:GeoIp2\Record\AbstractRecord:private] => Array
                        (
                            [geoname_id] => 5165418
                            [iso_code] => OH
                            [names] => Array
                                (
                                    [de] => Ohio
                                    [en] => Ohio
                                    [es] => Ohio
                                    [fr] => Ohio
                                    [ja] => オハイオ州
                                    [pt-BR] => Ohio
                                    [ru] => Огайо
                                    [zh-CN] => 俄亥俄州
                                )

                        )

                    [locales:GeoIp2\Record\AbstractPlaceRecord:private] => Array
                        (
                            [0] => en
                        )

                    [validAttributes:protected] => Array
                        (
                            [0] => confidence
                            [1] => geonameId
                            [2] => isoCode
                            [3] => names
                        )

                )

        )

)
 country : United States
 city : Columbus
US
Array
(
    [as_domain] => amazon.com
    [as_name] => Amazon.com, Inc.
    [asn] => AS16509
    [continent] => North America
    [continent_code] => NA
    [country] => United States
    [country_code] => US
)
Navratri Mega Sale Price Tracking

Introduction

India’s food delivery ecosystem is one of the fastest-evolving digital marketplaces, where pricing, menus, and delivery performance change multiple times a day. For businesses operating in this space, real-time visibility is critical to remain competitive. This case study highlights how Actowiz Solutions helped a data-driven enterprise Scrape Food Delivery App in India to systematically benchmark Swiggy and Zomato pricing, menu updates, and delivery timelines. By capturing hyperlocal changes across cities, the client gained deep insights into platform-level dynamics, service consistency, and pricing fluctuations. Our approach focused on automation, accuracy, and scalability, enabling continuous tracking without manual intervention. The outcome was a structured intelligence framework that transformed raw food delivery data into actionable insights, supporting faster decision-making and improved competitive positioning in India’s dynamic food delivery market.

About the Client

Navratri Mega Sale Price Tracking

The client is a market intelligence and analytics firm operating in the Indian digital commerce and food-tech ecosystem. Their core focus lies in providing competitive insights, pricing intelligence, and performance benchmarking for restaurants, cloud kitchens, and consumer brands. Serving mid-to-large enterprises, the client required granular visibility into food delivery platforms to support strategic planning and operational optimization. By leveraging Indian Food Delivery Market Intelligence via Scraping, the client aimed to move beyond static reports and adopt a continuous data-driven model. Before partnering with Actowiz Solutions, they relied heavily on manual sampling and fragmented data sources, which limited scalability and accuracy. The need for a robust, automated intelligence pipeline became critical as the Indian food delivery landscape grew more competitive and hyperlocal in nature.

Challenges & Objectives

Challenges
  • Fragmented data across multiple cities and platforms limited comparability
  • Frequent menu and price changes made manual tracking unreliable
  • Inconsistent delivery time visibility across regions
  • Lack of a centralized Food Delivery Analytics Dashboard for real-time insights
Objectives
  • Automate menu, pricing, and delivery-time tracking at scale
  • Enable city-wise and restaurant-level benchmarking
  • Deliver structured, near-real-time datasets for analytics
  • Build a unified intelligence framework to support strategic decisions

Our Strategic Approach

Data Collection Framework

To meet the client’s objectives, we designed an automated scraping architecture to Extract Restaurant Chain Data in India across Swiggy and Zomato. This framework captured menus, item-level pricing, discounts, delivery fees, and ETA metrics across multiple cities. The system was built for high-frequency updates, ensuring minimal latency between platform changes and data availability.

Analytics & Benchmarking Layer

Once data was collected, we structured it into comparable datasets, enabling side-by-side platform benchmarking. Advanced normalization techniques ensured consistency across formats, allowing the client to analyze pricing gaps, service speed differences, and menu variations with confidence.

Technical Roadblocks

Dynamic App Interfaces

Food delivery platforms frequently update their UI and backend logic. Our team implemented adaptive selectors and fallback mechanisms to maintain data continuity.

Anti-Bot Measures

Aggressive rate limits and detection systems posed challenges. These were mitigated using a compliant, rotating request framework integrated with a Real-time Food Delivery Data API India.

Data Accuracy at Scale

Ensuring accuracy across thousands of restaurants required robust validation layers. Automated quality checks were implemented to flag anomalies and maintain dataset integrity.

Our Solutions

Actowiz Solutions delivered a fully automated intelligence pipeline focused on City-wise food delivery price intelligence. The solution continuously tracked menus, prices, delivery fees, and ETAs across Swiggy and Zomato, segmented by city and restaurant category. Data was delivered in structured formats compatible with the client’s analytics stack, enabling real-time dashboards and historical trend analysis. This eliminated manual tracking, reduced operational overhead, and empowered the client with reliable, actionable insights. The scalable architecture ensured seamless expansion to new cities and restaurant categories as business needs evolved.

Results & Key Metrics

  • 95% reduction in manual data collection effort
  • 99% data accuracy across tracked cities
  • Real-time visibility into pricing and delivery performance gaps
  • Faster reporting cycles powered by Food Delivery Data Scraping Services

The client successfully transitioned from static reporting to continuous intelligence, enabling proactive strategy adjustments and stronger market positioning.

Client Feedback

“Actowiz Solutions transformed how we monitor food delivery platforms in India. Their ability to Scrape Food Delivery App in India at scale gave us unmatched visibility into menu changes, pricing trends, and delivery performance. The data accuracy and reliability exceeded our expectations.”

— Head of Market Intelligence

Why Partner with Actowiz Solutions?

  • Proven expertise in food-tech and marketplace data extraction
  • Scalable infrastructure powered by Food Delivery Data Scraping API
  • High-frequency, compliant data collection methodologies
  • End-to-end support from extraction to analytics
  • Deep experience helping businesses Scrape Food Delivery App in India efficiently

Conclusion

This case study demonstrates how Actowiz Solutions enabled continuous tracking of menu and service changes across India’s leading food delivery platforms. By leveraging a robust Web scraping API, delivering Custom Datasets, and deploying an instant data scraper, we helped the client unlock real-time competitive intelligence at scale.

Ready to benchmark food delivery platforms and gain hyperlocal insights? Partner with Actowiz Solutions today to transform food delivery data into strategic advantage.

FAQs

1. What data can be extracted from food delivery apps in India?

Menu items, prices, discounts, delivery fees, ETAs, availability, ratings, and city-wise variations can be extracted for comprehensive analysis.

2. How frequently can food delivery data be updated?

Data can be refreshed in near real-time or at scheduled intervals depending on business requirements.

3. Is scraping food delivery apps scalable across cities?

Yes, automated frameworks allow seamless expansion across cities, cuisines, and restaurant categories.

4. How is data accuracy ensured?

Multi-layer validation, anomaly detection, and normalization techniques ensure high data accuracy and consistency.

5. Can scraped data be integrated into dashboards?

Absolutely. Data is delivered in structured formats compatible with BI tools, dashboards, and analytics platforms.

From Raw Data to Real-Time Decisions

All in One Pipeline

Scrape Structure Analyze Visualize

Look Back Analyze historical data to discover patterns, anomalies, and shifts in customer behavior.

Find Insights Use AI to connect data points and uncover market changes. Meanwhile.

Move Forward Predict demand, price shifts, and future opportunities across geographies.

Industry:

Coffee / Beverage / D2C

Result

2x Faster

Smarter product targeting

★★★★★

“Actowiz Solutions has been instrumental in optimizing our data scraping processes. Their services have provided us with valuable insights into our customer preferences, helping us stay ahead of the competition.”

Operations Manager, Beanly Coffee

✓ Competitive insights from multiple platforms

Industry:

Real Estate

Result

2x Faster

Real-time RERA insights for 20+ states

★★★★★

“Actowiz Solutions provided exceptional RERA Website Data Scraping Solution Service across PAN India, ensuring we received accurate and up-to-date real estate data for our analysis.”

Data Analyst, Aditya Birla Group

✓ Boosted data acquisition speed by 3×

Industry:

Organic Grocery / FMCG

Result

Improved

competitive benchmarking

★★★★★

“With Actowiz Solutions' data scraping, we’ve gained a clear edge in tracking product availability and pricing across various platforms. Their service has been a key to improving our market intelligence.”

Product Manager, 24Mantra Organic

✓ Real-time SKU-level tracking

Industry:

Quick Commerce

Result

2x Faster

Inventory Decisions

★★★★★

“Actowiz Solutions has greatly helped us monitor product availability from top three Quick Commerce brands. Their real-time data and accurate insights have streamlined our inventory management and decision-making process. Highly recommended!”

Aarav Shah, Senior Data Analyst, Mensa Brands

✓ 28% product availability accuracy

✓ Reduced OOS by 34% in 3 weeks

Industry:

Quick Commerce

Result

3x Faster

improvement in operational efficiency

★★★★★

“Actowiz Solutions' data scraping services have helped streamline our processes and improve our operational efficiency. Their expertise has provided us with actionable data to enhance our market positioning.”

Business Development Lead,Organic Tattva

✓ Weekly competitor pricing feeds

Industry:

Beverage / D2C

Result

Faster

Trend Detection

★★★★★

“The data scraping services offered by Actowiz Solutions have been crucial in refining our strategies. They have significantly improved our ability to analyze and respond to market trends quickly.”

Marketing Director, Sleepyowl Coffee

Boosted marketing responsiveness

Industry:

Quick Commerce

Result

Enhanced

stock tracking across SKUs

★★★★★

“Actowiz Solutions provided accurate Product Availability and Ranking Data Collection from 3 Quick Commerce Applications, improving our product visibility and stock management.”

Growth Analyst, TheBakersDozen.in

✓ Improved rank visibility of top products

Trusted by Industry Leaders Worldwide

Real results from real businesses using Actowiz Solutions

★★★★★
'Great value for the money. The expertise you get vs. what you pay makes this a no brainer"
Thomas Gallao
Thomas Galido
Co-Founder / Head of Product at Upright Data Inc.
Product Image
2 min
★★★★★
“I strongly recommend Actowiz Solutions for their outstanding web scraping services. Their team delivered impeccable results with a nice price, ensuring data on time.”
Thomas Gallao
Iulen Ibanez
CEO / Datacy.es
Product Image
1 min
★★★★★
“Actowiz Solutions offered exceptional support with transparency and guidance throughout. Anna and Saga made the process easy for a non-technical user like me. Great service, fair pricing highly recommended!”
Thomas Gallao
Febbin Chacko
-Fin, Small Business Owner
Product Image
1 min

See Actowiz in Action – Real-Time Scraping Dashboard + Success Insights

Blinkit (Delhi NCR)

In Stock
₹524

Amazon USA

Price Drop + 12 min
in 6 hrs across Lel.6

Appzon AirPdos Pro

Price
Drop −12 thr

Zepto (Mumbai)

Improved inventory
visibility & planning

Monitor Prices, Availability & Trends -Live Across Regions

Actowiz's real-time scraping dashboard helps you monitor stock levels, delivery times, and price drops across Blinkit, Amazon: Zepto & more.

✔ Scraped Data: Price Insights Top-selling SKUs

Our Data Drives Impact - Real Client Stories

Blinkit | India (Retail Partner)

"Actowiz's helped us reduce out of stock incidents by 23% within 6 weeks"

✔ Scraped Data, SKU availability, delivery time

US Electronics Seller (Amazon - Walmart)

With hourly price monitoring, we aligned promotions with competitors, drove 17%

✔ Scraped Data, SKU availability, delivery time

Zepto Q Commerce Brand

"Actowiz's helped us reduce out of stock incidents by 23% within 6 weeks"

✔ Scraped Data, SKU availability, delivery time

Actowiz Insights Hub

Actionable Blogs, Real Case Studies, and Visual Data Stories -All in One Place

All
Blog
Case Studies
Infographics
Report
thumb
Jan 20, 2026

Extract DoorDash API for Location-Wise Menu - Unlocking Hyperlocal Food Data for Your App

Learn how to Extract DoorDash API for Location-Wise Menu to access hyperlocal food data, optimize apps, and deliver personalized dining experiences.

thumb

How We Tracked Menu and Service Changes When Scrape Food Delivery App in India Benchmarking Swiggy vs Zomato Pricing & Delivery Times

Learn how we tracked menu and service changes when scrape food delivery apps in India, benchmarking Swiggy vs Zomato pricing and delivery times for data-driven insights.

thumb

Malaysia GrabFoods Market Analysis - City-Wise Food Delivery Demand and Pricing Trends

Malaysia GrabFoods market analysis delivers insights into pricing trends, restaurant availability, demand patterns, and competitive dynamics

thumb
Jan 20, 2026

Extract DoorDash API for Location-Wise Menu - Unlocking Hyperlocal Food Data for Your App

Learn how to Extract DoorDash API for Location-Wise Menu to access hyperlocal food data, optimize apps, and deliver personalized dining experiences.

thumb
Jan 19, 2026

Real Estate Lead Extraction from PropertyFinder & Bayut: How to Scale in 2026

Master real estate lead extraction in Dubai & UAE. Learn how to scale data scraping from PropertyFinder & Bayut with Actowiz Solutions for 2026 growth.

thumb
Jan 18, 2026

Legal Web Scraping Services for Hedge Funds in NY: The 2026 Compliance Guide

Navigate SEC regulations & NY data laws in 2026. Learn how Actowiz Solutions provides compliant web scraping services for hedge funds seeking an alpha edge.

thumb

How We Tracked Menu and Service Changes When Scrape Food Delivery App in India Benchmarking Swiggy vs Zomato Pricing & Delivery Times

Learn how we tracked menu and service changes when scrape food delivery apps in India, benchmarking Swiggy vs Zomato pricing and delivery times for data-driven insights.

thumb

Reducing Price Gaps Across Indian Cities Using Flipkart Minutes Quick Commerce Intelligence

Flipkart Minutes Quick Commerce Intelligence delivers real-time insights on pricing, inventory, delivery speed, and trends to power smart retail decisions.

thumb

How We Enabled a FMCG Brand to Scrape Blinkit Pincode-Wise Prices & Availability in Bangalore

Scrape Blinkit Pincode-Wise Prices & Availability in Bangalore to track local pricing, stock status, and assortment gaps for hyperlocal retail intelligence.

thumb

Malaysia GrabFoods Market Analysis - City-Wise Food Delivery Demand and Pricing Trends

Malaysia GrabFoods market analysis delivers insights into pricing trends, restaurant availability, demand patterns, and competitive dynamics

thumb

The 2026 Food & Quick Commerce Intelligence Report

10-minute delivery se lekar AI-driven dark stores tak, Actowiz Solutions ki 3000-word research report mein dekhiye Food & Q-commerce ka bhavishya aur data trends.

thumb

The 2026 Energy & Utilities Data Intelligence Report

Drive the green transition with data. Actowiz Solutions reveals how AI-driven scraping and real-time grid analytics are optimizing the 2026 energy landscape.

phone
Quick Connect
phone
Quick Connect