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Navratri Mega Sale Price Tracking

Introduction: Why Pricing Intelligence Matters in the Tyre Industry

The tyre industry is one of the most competitive segments within the automotive sector. Manufacturers, wholesalers, and distributors handle hundreds of SKUs—across multiple brands, models, and sizes—where pricing shifts weekly based on stock levels, regional demand, and promotional campaigns.

For global tyre brands, visibility into how distributors price products across different regions has become critical. With new entrants offering aggressive discounts online, even a small price deviation can affect dealer loyalty, margins, and market share.

A leading global tyre manufacturer approached Actowiz Solutions to build an AI-powered web-scraping solution capable of collecting and analyzing competitor pricing data from multiple distributor websites across the United States and Europe. The goal was to automate price benchmarking, track stock fluctuations, and deliver actionable insights for pricing strategy and sales planning.

Client Overview

Navratri Mega Sale Price Tracking

The client is a global player in tyre design, manufacturing, and distribution for passenger and commercial vehicles. Their sales network spans the US, EU, and Asia, supported by a wide network of distributors and retail partners.

While the company had strong in-house analytics capabilities, the team lacked access to real-time competitor pricing data. Distributor websites often update prices daily, making manual monitoring impossible. The company wanted a solution that could:

  • Collect competitor product prices automatically from four major distributor sites
  • Detect price differences between regions and brands
  • Identify promotional events, discounts, and stockouts
  • Deliver clean, structured datasets for internal analytics tools

The Business Challenge

Navratri Mega Sale Price Tracking
Data Fragmentation Across Distributors

Each distributor website had a unique design, search structure, and product taxonomy. While some offered clear SKU-level details, others displayed unstructured data such as “Best Seller” or “Limited Offer” without standardized tags. The client’s team needed to scrape and normalize this data for a consistent pricing benchmark.

Dynamic Content and Anti-Bot Systems

Distributor websites used modern JavaScript frameworks with dynamic content loading. Many pages required client-side rendering or AJAX calls. Additionally, anti-bot firewalls (like Akamai and Cloudflare) made standard scraping tools ineffective.

Regional Price Variation

Prices for the same tyre model varied significantly between the US and EU due to logistics, import duties, and market positioning. Manual monitoring could not track these changes in real time.

Need for Automated Benchmarking

The brand needed not only raw data but also actionable intelligence—for example:

  • Which distributors offered consistent price undercuts
  • Which SKUs had the highest margin erosion
  • Which models frequently went out of stock

The solution had to extract, process, and visualize these trends efficiently.

The Actowiz Solutions Approach

Actowiz Solutions designed a multi-layered, AI-driven scraping framework customized for automotive and tyre data collection.

Discovery and Scoping

Our data engineering team conducted a discovery audit of the four distributor websites. Each was mapped for:

  • Page structures and HTML layouts
  • Product listing patterns
  • Dynamic rendering methods (React, Vue, or server-side)
  • Pricing and promotion fields
  • Stock and availability markers

This phase allowed us to design site-specific crawlers to capture every relevant data point.

AI-Driven Crawlers and Scheduling

We deployed AI-assisted crawlers capable of handling:

  • JavaScript rendering through headless browsers
  • Intelligent throttling to mimic human browsing
  • Adaptive scheduling based on traffic intensity and update frequency

Crawlers ran at specific time intervals (daily or twice per week, depending on region) to capture price changes in near real time.

Data Fields Extracted

Each data record captured included:

Field Description
Brand Tyre manufacturer name
Model Name Product line (e.g., SportDrive, EcoGrip)
Size Tyre dimensions (e.g., 225/45 R17)
Price (Local Currency) Current listed price
Discount (%) If on promotion
Availability In stock / Limited stock / Out of stock
Distributor Name Source site
Region US / EU
Timestamp Date and time of extraction

Sample Data Extract (Illustrative)

Brand Model Size Price (USD) Discount Availability Distributor Region
Bridgestone Turanza T005 225/45 R17 $138.90 10% In Stock TireRack USA
Michelin Pilot Sport 4 225/45 R17 €142.00 5% In Stock Oponeo EU
Continental EcoContact 6 205/55 R16 $125.50 0% Low Stock Discount Tire USA
Pirelli Cinturato P7 225/50 R18 €161.30 8% In Stock MyTyres EU

From these records, Actowiz generated cross-region comparison dashboards, allowing analysts to visualize price differences at brand and SKU levels.

Data Cleaning and Normalization

Data normalization was crucial to ensure consistent analysis. Actowiz’s AI pipelines automatically handled:

  • Currency Conversion: All EU prices converted to USD using daily exchange rates.
  • Unit Standardization: Metric and imperial measurements aligned for uniform comparison.
  • Duplicate Detection: Removal of similar SKUs listed across multiple distributors.
  • Error Correction: Automated tagging of anomalies such as missing values or outdated listings.

This produced a clean, analytics-ready dataset delivered in CSV, Excel, or via API integration.

Analytics and Visualization

To make insights actionable, the final step involved creating a Tyre Pricing Benchmark Dashboard using Power BI and Tableau integration.

Key Metrics Displayed:

  • Average Price per Brand & Size Segment: Helps identify market positioning and premium vs. budget gaps.
  • Price Difference (US vs EU): Highlights regional variations for each model.
  • Discount Frequency Tracker: Shows which distributors offer regular promotions.
  • Stock Availability Heatmap: Displays supply bottlenecks or overstock risks.
  • Historical Price Trends: Weekly changes for top 20 SKUs, allowing forecasting of promotional cycles.

These insights helped marketing and sales teams identify pricing inefficiencies, hidden opportunities, and competitive risks before they affected profitability.

Technology Stack

Layer Tools/Technologies
Scraping Framework Custom Python scrapers (Requests + Playwright)
AI Components NLP-based field extraction, anomaly detection
Storage Layer AWS S3, PostgreSQL
Data Cleaning Pandas, NumPy
Analytics & Visualization Power BI, Tableau
Automation Airflow scheduler, AWS Lambda
Delivery REST API + secure client dashboard

Actowiz’s modular design allowed the system to scale up to more distributors or new regions without rewriting core logic.

Overcoming Technical Challenges

Handling Anti-Bot Mechanisms

Distributor websites often employed rate-limiting and CAPTCHA checks. Actowiz’s crawlers used:

  • Dynamic user-agent rotation
  • Proxy IP pools by region
  • Request-interval randomization
  • AI-based human behavior simulation

This ensured uninterrupted data flow while remaining fully compliant with website policies.

JavaScript-Heavy Pages

By integrating Playwright headless browsers, our system accurately rendered dynamic product pages and extracted data from client-side scripts.

Pricing Format Variations

Different sites displayed prices in formats like “$138.90”, “138.9 USD”, or “EUR 142,0”. Our AI parser recognized and standardized these across locales automatically.

Continuous Monitoring

Schedulers ensured crawlers ran consistently, while system alerts notified the team of any structural website changes, ensuring 99.6% uptime for data collection.

Results and Impact

The AI-based tyre data scraping solution delivered measurable results within the first month.

Metric Before After Actowiz Implementation
Manual effort for price tracking 18 hours/week 1 hour/week
Data freshness 7–10 days old <24 hours
Price accuracy ~70% 98.5% verified
Competitive response time 3–5 days delay Same-day reaction
Market visibility Limited (2 sites) Full (4 distributors, 2 regions)

Key Outcomes:

  • 25% faster pricing decisions: Teams adjusted prices proactively based on competitor data.
  • 15% reduction in distributor disputes: Transparent price parity data built stronger dealer trust.
  • Improved margin forecasting: Accurate visibility into market averages helped prevent underpricing.
  • Automated dashboards: Eliminated manual report preparation.

Strategic Insights Derived

Navratri Mega Sale Price Tracking

Beyond automation, the data provided strategic intelligence that changed the client’s market approach.

  • Regional Price Gaps: US distributors offered an average 8–10% lower retail price than EU counterparts, influencing the global pricing roadmap.
  • Promotion Timing: The data revealed a consistent pattern—EU distributors launched sales mid-month, while US distributors ran weekend flash discounts.
  • Stock Shortage Alerts: Low stock signals on high-demand SKUs allowed the procurement team to pre-allocate production accordingly.
  • Emerging Competitors: Crawlers identified new distributor sites listing budget tyre brands at aggressive pricing—an early competitive threat flag.

Broader Business Value

Navratri Mega Sale Price Tracking

The initiative extended beyond just pricing comparison. It laid the groundwork for a long-term data-driven strategy:

  • Demand Forecasting: Analyzing search volume and stock status trends allowed better production planning.
  • Dynamic Pricing Engine: The scraped data fed into predictive algorithms, allowing future price automation.
  • Cross-Team Collaboration: Marketing, sales, and operations teams now used unified data sources.
  • Scalability: The same framework was later expanded to cover aftermarket parts and accessories.

Compliance and Ethical Scraping Practices

Navratri Mega Sale Price Tracking

Actowiz Solutions adheres strictly to ethical data collection standards.

  • Only publicly available data was scraped.
  • Robots.txt and rate-limit policies were respected.
  • Data was processed securely and shared only for authorized internal analytics.

This ensured full compliance with both US and EU data privacy norms (GDPR and CCPA).

Future Expansion

Navratri Mega Sale Price Tracking

After the success of this deployment, the tyre manufacturer planned additional phases:

  • Adding 10+ distributor websites from Asia and the Middle East
  • Integrating social listening data (user reviews, ratings, and feedback)
  • Incorporating AI models to predict optimal discount rates by region
  • API-based data feeds for real-time integration with ERP systems

This ongoing collaboration aims to turn pricing intelligence into a competitive differentiator.

Why Actowiz Solutions

Actowiz Solutions has become a preferred partner for the automotive and tyre industry due to its ability to combine scalable crawling, AI-based cleaning, and actionable insights.

Key differentiators include:

  • Proven track record across 30+ automotive and manufacturing clients
  • Dedicated regional data servers ensuring faster access and compliance
  • Pre-built dashboards for competitive analysis
  • End-to-end customization for API, Excel, or visualization-based delivery

Our tyre pricing intelligence projects have shown that data accuracy, frequency, and visualization are the three pillars of success for any competitive pricing program.

Transform your pricing strategy with real-time tyre market data.

Actowiz Solutions helps global automotive brands capture, clean, and analyze pricing and availability data from any website or region.
Contact Us Today!

Conclusion

The tyre industry is undergoing rapid transformation as B2B and B2C channels overlap. Competitive pricing intelligence has become the foundation for staying profitable and agile.

Through this project, Actowiz Solutions demonstrated how AI-driven web scraping can deliver immediate and strategic benefits:

  • Real-time visibility into distributor pricing
  • Accurate benchmarking across regions
  • Actionable insights for sales and production planning

For any automotive or tyre company seeking to understand their competitive landscape, such intelligence is no longer optional—it’s a necessity.

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
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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

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Explore 2025 global liquor market trends by Scraping Auction vs Retail Liquor Prices Trends, uncovering pricing insights for strategic decision-making and market optimization.

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