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AI-powered Product Personalization in E-commerce

· 6 min read
Ravi Kaushik
Founder @ Simtel.AI

As artificial intelligence continues to transform our lives, we find ourselves at an exciting crossroads. Two powerful tools have emerged in recent years: Retrieval-Augmented Generation (RAG) models and specific purpose trained models. In this blog post, we'll delve into the world of these AI marvels, exploring their differences, strengths, and ideal applications.

Imagine a library with shelves upon shelves of ancient tomes, each containing a wealth of knowledge on various subjects. This is where RAG models come in – they're like intelligent librarians who can scour the digital equivalent of these shelves, retrieving relevant information to inform their responses. By doing so, RAG models leverage external knowledge bases to generate answers that are both informed and contextual.

In contrast, specific purpose trained models are akin to specialized experts who have been schooled in a particular domain or task. They've been fine-tuned to excel within their designated area of expertise, from medical diagnosis to language translation. These models possess an unparalleled level of proficiency in their respective fields, making them invaluable for applications where precision and accuracy are paramount.


Product Discovery and Personalization in E-commerce

Now, let's take the example of Product Discovery and Personalization – a crucial aspect of any e-commerce platform or digital marketplace. The goal here is to recommend products that are tailored to individual user preferences, increasing engagement and driving sales.

In this context, both RAG models and specific purpose trained models can be applied, but in different capacities:

RAG Models

These intelligent librarians can be used to create product descriptions and recommendations based on external knowledge bases. By analyzing customer data, browsing history, and other relevant information, a RAG model can generate personalized product suggestions that not only showcase the features of a particular item but also highlight its relevance to the user's interests.

For instance, if we have a RAG model trained on a vast database of product reviews, articles, and forum discussions related to electronics, it could provide recommendations for users interested in upgrading their gaming laptops. The model would generate descriptions that not only detail the technical specifications of the products but also emphasize their compatibility with popular games.

Specific Purpose Trained Models

When it comes to fine-tuning these recommendations based on specific user behavior – such as purchases made within a 24-hour window or abandoned cart items – a specific purpose trained model excels. These models can be fine-tuned to analyze individual customer behavior and make informed decisions about what products to recommend next.

In our example, if we have a specific purpose trained model that specializes in product recommendation, it could focus on the nuances of each user's browsing history and purchase patterns. By leveraging this expertise, the model would identify patterns and preferences not immediately apparent from external knowledge bases alone, providing more accurate and relevant recommendations.


When to Use RAG vs. Specific Purpose Models?

If you need to generate product descriptions that are informed by a vast array of external information sources, then a RAG model might be the better choice. However, if precision and accuracy in recommendation are critical – particularly when it comes to individual user behavior – then specific purpose trained models should take center stage.

In conclusion, while RAG and specific purpose trained models share a common goal – to augment human capabilities through AI-powered insights – they serve different purposes. By understanding the unique strengths and weaknesses of each type of model, we can harness their collective power to tackle even the most complex challenges in our fields.

Ultimately, it's not about choosing one over the other; rather, it's about selecting the right tool for the task at hand. As AI continues to evolve, it's essential that we develop a deeper understanding of these technologies and how they can be leveraged to drive innovation, creativity, and progress.


SituationUse RAGUse Fine-tuned LLM
Large, dynamic product catalogYesNo
Need quick go-to-marketYesNo
You want to avoid model retrainingYesNo
You control specific UX copy or toneNoYes
You have high-volume, high-quality training dataNoYes
Personalized chatbots or assistantsYesMaybe
High cost sensitivityYesNo
Industry-specific knowledge baked inNoYes

Example: RAG Pipeline for Personalized Product Recommendation

Scenario:
Zara is browsing an online marketplace and types in a query:

“Looking for a water purifier that’s suitable for a small apartment.”

Behind the scenes, a Retrieval-Augmented Generation (RAG) pipeline begins working immediately.

1. User Input and Intent Recognition

The system captures Zara’s query and recognizes that this is not just a product search, but a context-specific request. It understands both the product category (“water purifier”) and the constraint (“small apartment”).

2. Retriever Module Engaged

Next, a retriever takes Zara’s query and consults a vector database. This database contains semantic representations of product descriptions, user reviews, Zara’s past behavior, and browsing history. Using embeddings, the retriever pulls the most relevant chunks of information: such as compact purifier models, reviews mentioning small spaces, and filters Zara previously viewed.

3. Context Sent to the LLM

These retrieved snippets are then passed to a Large Language Model (LLM). The LLM doesn’t generate answers blindly; it uses the retrieved context to inform its response, ensuring relevance and personalization.

4. LLM Generates the Output

The LLM generates a clear, tailored recommendation based on Zara’s needs and preferences. For example:

“Based on your interest in compact and filter-based purifiers, this model fits small apartments and is energy-efficient.”

5. Personalized Experience Delivered

Zara sees this personalized message in the form of a recommendation or product description. It feels accurate and aligned with her lifestyle—not because the system was hardcoded, but because it dynamically retrieved the right content and generated a response in real-time.


Key Takeaways

  • No custom training of the model was required.
  • The system used Zara’s current input and past data to retrieve relevant information.
  • The LLM added natural language generation to personalize the experience.
  • The result was context-aware, efficient, and scalable personalization.

This is how RAG enables intelligent, real-time product personalization using general-purpose models enhanced by contextual retrieval.

Book a demo today by emailing us at info@simtel.ai to see how we can help you with your e-commerce needs.

The Future of E-Commerce: Building High-Quality Product Catalogs with AI

· 5 min read
Ravi Kaushik
Founder @ Simtel.AI

Published: June 11, 2025

In the competitive world of online commerce, your product catalog is not just an inventory—it’s your storefront, sales pitch, brand identity, and customer experience all rolled into one. Yet, too often, e-commerce platforms struggle with low-quality listings, inconsistent data, duplicate products, and missing media. These seemingly small problems collectively drain conversion rates, reduce trust, and stifle growth.

Recent advancements in Artificial Intelligence—especially with Large Language Models (LLMs)—are transforming how catalogs are built, maintained, and scaled. Whether you’re a marketplace, D2C brand, aggregator, or B2B wholesaler, the stakes are clear: high-quality product catalogs are no longer optional—they are your edge.

Why Product Catalog Quality Matters

  1. Customer Experience: Inaccurate or sparse listings frustrate users and lead to drop-offs.
  2. Search & Discovery: Poor catalog structure breaks navigation and filters.
  3. Pricing and Promotion Errors: Inconsistent catalog data leads to incorrect pricing, hurting profitability or user trust.
  4. Operational Costs: Manual catalog curation at scale is slow, error-prone, and expensive.

The result? Lost revenue, poor SEO, high return rates, and underutilized inventory.


How AI Delivers High-Quality Catalogs at Scale

1. LLM-Powered Quality Checks

Modern LLMs like GPT-4 and Gemini can perform automated sanity checks on product descriptions, specifications, and even brand tone. These checks can:

  • Flag vague or irrelevant copy.
  • Detect missing key attributes (e.g., dimensions, compatibility).
  • Standardize formatting for specifications (e.g., converting inches to cm).
  • Ensure grammar, structure, and brand consistency.

They act as tireless editors, catching catalog flaws before your customers do.

2. Deduplication and Canonical Listings

Duplicate listings dilute search results and mislead buyers. AI-driven deduplication systems use semantic similarity models, embeddings, and vector databases to:

  • Detect and merge listings with minor variations (e.g., "iPhone 14" vs "Apple iPhone 14 128GB").
  • Create canonical product representations with clean attribute values.
  • Maintain seller-specific variations while avoiding clutter.

This results in a cleaner browsing experience and faster decision-making for customers.

3. Attribute Normalization and Enrichment

AI can extract structured attributes from unstructured text or incomplete records. For example:

  • Extract "Bluetooth 5.1" from a description line.
  • Convert "5 hours battery life" to a fillable battery_life field.
  • Automatically generate missing tags like “wireless”, “gaming-ready”, or “energy-efficient”.

Enrichment drives better faceted search, filters, and SEO.

4. High-Fill Quality and Rich Content Generation

Poorly filled product pages kill conversions. AI solves this by:

  • Autogenerating titles, meta descriptions, and long-form product narratives.
  • Summarizing specs for quick-browse bullets.
  • Producing FAQs and buyer guides with LLMs.
  • Translating product info into multiple languages with context-preserved translation.

Your catalog goes from "bare minimum" to "Amazon-grade" in quality and completeness.

5. High-Quality Media Integration

Customers rely on visuals. AI tools can:

  • Detect and remove low-resolution or watermarked images.
  • Auto-tag media by product features using computer vision.
  • Select the best thumbnails based on sharpness, clarity, and composition.
  • Integrate YouTube unboxing videos or influencer reviews by matching product identity with video metadata.

This transforms static product pages into rich, immersive experiences.

6. Pricing Intelligence

Dynamic pricing requires accurate product identification. Once your catalog is clean and structured, pricing AI tools can:

  • Benchmark your prices against market leaders.
  • Suggest optimal price points based on demand elasticity.
  • Detect price manipulation or stale data.

AI-backed pricing wins the Buy Box and keeps margins healthy.

7. Consistent Category Mapping

Inconsistent taxonomy kills cross-sell potential. AI models can:

  • Automatically classify products into standardized taxonomies like Google Shopping or ONDC schema.
  • Resolve ambiguities (“camera case” as accessory vs storage bag).
  • Harmonize seller-uploaded categories into platform-wide schema.

This supports powerful search and recommendation systems.

8. Similar and Complementary Product Discovery

With a robust catalog, AI can surface:

  • Similar products for substitution (alternative brands).
  • Complementary products for bundling (phone + case + charger).
  • Frequently bought together suggestions based on embeddings or collaborative filtering.

This increases average order value (AOV) and improves stickiness.


The Strategic Advantage: Faster GTM, Higher Margins, Lower Returns

A high-quality catalog is not just about aesthetics—it’s strategic:

  • Faster Go-to-Market (GTM) for new SKUs across multiple channels.
  • Lower customer acquisition costs through better SEO and relevance.
  • Reduced returns due to accurate descriptions and expectation management.
  • Improved merchandising and marketing using clean, structured, enriched data.

Build or Buy? Practical Considerations

Building an in-house AI cataloging pipeline requires NLP expertise, annotation tools, and MLOps infrastructure. Fortunately, plug-and-play APIs and no-code solutions now exist for:

  • Catalog deduplication
  • Attribute extraction
  • Content generation
  • Image QA and enhancement
  • Video integration

For most mid-market platforms, a hybrid approach—where internal teams supervise and correct AI suggestions—is ideal. This balances automation with control.


Conclusion

In today’s e-commerce ecosystem, your product catalog is your engine. AI—especially through the lens of LLMs and multimodal tools—is now mature enough to take catalog quality from “just good enough” to “category-leading.”

It’s time for founders, CMOs, category heads, and tech leaders to move from reactive to proactive catalog strategies. With AI, your catalog can finally match the speed, scale, and sophistication of modern commerce.


Interested in upgrading your product catalog with AI? Let’s talk. Your next competitive edge may just be a cleaner, smarter, and more persuasive listing away.

Book a demo today by emailing us at info@simtel.ai to see how we can help you with your e-commerce needs.

AI Content Strategy

· 7 min read
Ravi Kaushik
Founder @ Simtel.AI

AI Content Strategy

The Content Strategy Playbook: How B2B, B2C, and D2C Brands Win Online

In the digital marketplace, content isn’t king—context is. A Shopify merchant selling artisanal coffee, a SaaS startup targeting CFOs, and a Nike-like D2C brand all need content strategies, but their playbooks differ wildly. Here’s how the pros adapt.


1. The Divergent Goals

B2B (Lead Generation & Trust)

  • Objective: Nurture long sales cycles with whitepapers, webinars, and case studies.
  • Metric: SQLs (Sales-Qualified Leads), not just clicks.
  • Example: HubSpot’s annual "State of Marketing" report drives 60% of their enterprise leads.

B2C (Emotion & Impulse)

  • Objective: Spark joy, urgency, or FOMO (e.g., “Limited Stock!”).
  • Metric: Conversion rate, AOV (Average Order Value).
  • Example: Glossier’s user-generated content boosts trust and repeat purchases.

D2C (Brand Loyalty & Community)

  • Objective: Build direct relationships (bypassing Amazon/Walmart).
  • Metric: Customer LTV (Lifetime Value), retention rate.
  • Example: Warby Parker’s “Buy a Pair, Give a Pair” story fuels 80% of their content.

2. Audience Insights: Three Ways to Listen

B2B:

  • Tool: LinkedIn Analytics + G2 reviews.
  • Insight: Mid-market CFOs crave ROI calculators, not blog fluff.

B2C:

  • Tool: TikTok comments + Instagram Polls.
  • Insight: Gen Z shoppers trust nano-influencers 3x more than ads (Dash Hudson data).

D2C:

  • Tool: SMS surveys + Shopify behavioral data.
  • Insight: 65% of D2C buyers pay more for “values-aligned” brands (McKinsey).

3. Content Formats That Convert

ModelTop-Performing FormatsPlatforms
B2BCase studies, LinkedIn carouselsWebinars, Email nurture
B2CUGC videos, AR try-onsTikTok, Instagram Reels
D2CBehind-the-scenes storytellingSMS, Loyalty apps

Case Study:

  • B2B: Salesforce’s “Trailhead” gamified training drives 4M+ learner engagements yearly.
  • B2C: Sephora’s virtual artist tool increased conversions by 11%.
  • D2C: Brooklinen’s “Why Our Sheets?” explainer videos slash returns by 22%.

4. Distribution: Where to Fish

B2B:

  • SEO: Target “best [software] for [X]” keywords.
  • Paid: LinkedIn Sponsored Content (CTRs 2x higher than FB).

B2C:

  • SEO: Optimize for “buy [product] online” + Google Shopping.
  • Paid: Meta’s Advantage+ shopping campaigns.

D2C:

  • SEO: Branded queries (e.g., “Patagonia vs. North Face”).
  • Paid: Pinterest ads (45% higher ROAS than social for home goods).

5. The Retention Game

B2B:

  • Tool: HubSpot workflows sending case studies post-demo.
  • Stat: Nurtured leads spend 47% more (Forrester).

B2C:

  • Tool: Post-purchase SMS (“How’s your order?” + discount code).
  • Stat: SMS marketing delivers 8x the ROI of email (Postscript).

D2C:

  • Tool: Loyalty program content (e.g., “Early access to drops”).
  • Stat: D2C brands with apps see 2.5x higher LTV (Yotpo).

The Unifying Principle

“B2B is about logic, B2C about emotion, and D2C about identity. But all demand content that respects the buyer’s journey,” says Elena Gomez, ex-CMO of Zendesk and Square.

Leveraging AI-Powered Workflows for Scalable Content Generation

In today's fast-paced digital landscape, B2B, B2C, and D2C brands need a steady stream of high-quality, personalized content—without sacrificing efficiency. n8n AI workflows (with integrations like OpenAI, Claude, or Mistral) can automate and optimize content creation while maintaining brand voice and strategic alignment.

1. Automating Content Ideation & Research

Problem:

  • Coming up with fresh, data-backed content ideas is time-consuming
  • Manual keyword research slows down SEO efforts

AI Solution (n8n Workflow):

  • Input: Competitor URLs, trending industry topics (via Google Trends/RSS feeds)
  • AI Task:
    • Generate blog topics using GPT-4 (e.g., "Top 5 SaaS Pricing Models in 2024")
    • Extract high-intent keywords (via Ahrefs/Google Search Console API)
  • Output: A Trello board or Google Sheet with prioritized content ideas

📌 Use Case:
A B2B SaaS company uses this to populate their editorial calendar with SEO-optimized thought leadership pieces


2. Dynamic Content Personalization at Scale

Problem:

  • Generic content fails to engage different audience segments
  • Manual personalization is unscalable

AI Solution (n8n Workflow):

  • Input: CRM data (HubSpot/Salesforce) + past engagement metrics
  • AI Task:
    • Generate personalized email variants for leads at different funnel stages
    • Adjust LinkedIn post tonality for C-suite vs. mid-level managers
  • Output: Auto-send via email/Social Media scheduler (Buffer, Hootsuite)

📌 Use Case:
A B2C e-commerce brand sends AI-generated product recommendations based on browsing history


3. AI-Assisted Content Creation & Optimization

Problem:

  • Writing high-converting product descriptions, ad copy, and blogs manually is slow
  • Ensuring brand consistency across channels is challenging

AI Solution (n8n Workflow):

  • Input: Product specs, past high-performing content, brand guidelines
  • AI Task:
    • Generate 10 variations of a Facebook ad (A/B test-ready)
    • Rewrite a technical whitepaper into a simplified LinkedIn post
    • Auto-translate content for global markets (DeepL API)
  • Output: Push to CMS (WordPress/Shopify) or ad platforms (Meta Ads)

📌 Use Case:
A D2C brand uses AI to generate localized Instagram captions in 5 languages


4. AI-Powered Repurposing & Multichannel Distribution

Problem:

  • Repurposing long-form content into snippets, videos, and social posts is tedious

AI Solution (n8n Workflow):

  • Input: A single YouTube video or blog post
  • AI Task:
    • Extract key quotes → Twitter/LinkedIn carousel
    • Summarize into a TikTok script (via Whisper transcription + GPT)
    • Generate a Canva infographic (using DALL·E for visuals)
  • Output: Auto-publish via social media APIs

📌 Use Case:
A B2B fintech firm turns a webinar into 15+ micro-content pieces


5. AI-Driven Performance Analysis & Optimization

Problem:

  • Manually tracking what content works is inefficient

AI Solution (n8n Workflow):

  • Input: Google Analytics, Meta Ads, email open rates
  • AI Task:
    • Predict best-performing content themes (using past data)
    • Flag underperforming blogs for rewriting/updating
  • Output: Slack/Email alerts with optimization recommendations

📌 Use Case:
A D2C skincare brand auto-retires low-engagement blog topics


Why n8n?

No-Code Flexibility: Drag-and-drop workflows for marketers (no dev needed)
Multi-LLM Support: Use GPT-4, Claude, or open-source models (Llama 3)
Seamless Integrations: Shopify, HubSpot, Slack, and 300+ apps

Competitive Landscape

While n8n excels in open-source flexibility and AI integrations, alternatives include:

  • Zapier: More user-friendly but limited customization and higher costs at scale
  • Make (formerly Integromat): Strong visual builder but weaker AI model support
  • Workato: Enterprise-grade but requires technical resources
  • Hugging Face Agents: Specialized for AI but lacks broader automation features

n8n stands out for marketers needing:
🔹 Total control over AI model selection (GPT-4, Claude, Llama, etc.)
🔹 Self-hosting options for data-sensitive industries
🔹 Cost efficiency at high workflow volumes

Automation & AI Workflow Tools: Feature Comparison

Featuren8nZapierMake (Integromat)LangGraph
TypeOpen-source (self-hostable)Cloud-based SaaSCloud-based SaaSPython library (AI-focused)
PricingFree (self-hosted) or $20+/mo$20-$799+/mo$9-$59+/moFree (open-source)
Ease of UseTechnical (code-friendly)No-code (beginner-friendly)Low-code (visual builder)Developer-centric
Integrations700+ (custom API support)6,000+ apps1,000+ appsAI/LLM connectors only
AI Capabilities✅ Multi-LLM (GPT/Claude/etc)❌ Basic AI via Zapier AI❌ Limited AI actions🏆 Built for AI agent flows
Workflow Complexity🏆 Advanced (loops/branches)Basic linear workflowsMedium complexity🏆 Stateful AI orchestration
Data Privacy🏆 Self-hosting possible❌ Cloud-only❌ Cloud-only🏆 Run locally
Custom Logic✅ JavaScript/Python nodes❌ UI-only✅ Visual formula builder🏻 Python-native
Best ForDevs/privacy-focused teamsNon-technical usersSMBs needing balanceAI agent developers

Key Takeaways:

  • For maximum control: n8n (self-hosting + open-source)
  • For simple automations: Zapier (easiest but costly)
  • For visual complexity: Make (mid-range pricing)
  • For AI agents: LangGraph (specialized for LLM workflows)

"LangGraph is to AI chains what n8n is to traditional automation – both empower technical users to build complex workflows without vendor lock-in." — AI Engineering Newsletter


Conclusion

By using n8n and AI together, you can build a fully automated blog generation machine — saving hours every week while maintaining consistent content quality. It’s perfect for solopreneurs, marketers, agencies, and anyone who wants to scale content without burning out.

The future of blogging is not just writing — it’s designing workflows that write for you.

"AI doesn't replace marketers—it replaces the manual grind so they can focus on strategy."

AI Product Catalogue

· 7 min read
Ravi Kaushik
Founder @ Simtel.AI

E-Commerce Automation

Supercharge Your Product Cataloging with Agentic AI: Automation at Scale

In today’s fast-paced digital commerce landscape, building and managing product catalogs isn’t just tedious—it’s a bottleneck. Whether you're onboarding thousands of SKUs or scaling across marketplaces like ONDC, the traditional ways of cataloguing are outdated, expensive, and error-prone.

Enter Agentic AI-based Automated Product Cataloguing—a next-generation solution designed to eliminate manual work and drive intelligence into your catalog operations. Built for scale, accuracy, and agility, our platform transforms raw content into structured, compliant, and deduplicated product data—at lightning speed.

With this innovation, customers can:

  • Save countless hours of manual effort by automating tedious cataloging tasks.
  • Reduce errors and inconsistencies in product data, ensuring higher accuracy and compliance.
  • Scale their operations effortlessly, whether managing thousands or millions of SKUs.
  • Improve customer experience with clean, optimized, and enriched product catalogs.

How End Customers Benefit from Agentic Cataloguing

Even though the heavy lifting happens behind the scenes, the end result transforms how customers experience your products. Here's how:

1. Cleaner, More Accurate Listings

When product data is generated by AI and deduplicated intelligently, customers see clean, accurate, and non-repetitive listings. No more confusion with duplicate SKUs, outdated specs, or missing information.

🛒 Better data = smarter decisions = more conversions.


2. Better Search Results and Filters

Structured catalog data with proper attributes means more relevant search results, improved filters (e.g., by color, size, brand, features), and personalized recommendations.

Customers find exactly what they’re looking for—faster.


3. Richer Product Content

With AI agents pulling info from datasheets, images, and websites, product pages become richer—with detailed specs, feature breakdowns, warranty info, and even intelligent comparisons.

Think of it as product storytelling that converts.


4. Smarter AI Assistants and Chatbots

Since the catalog is indexed in vector databases, conversational agents (like search chatbots) can answer product-related questions more accurately.

“Which of these is better for gaming?” becomes a real, answerable query.


5. Language & Accessibility Enhancements

Agentic workflows can support multilingual generation, image-to-text for accessibility, and localized descriptions—improving inclusivity for a global audience.

Everyone gets a more intuitive shopping experience, no matter where they’re from.---

Key Features

1. Generate Catalogs from Any Input: Images, PDFs, or Websites

Simply plug in a website URL, a product feed, a scanned PDF, or an image. Our AI agents analyze and extract relevant product information, generating structured catalog data including titles, descriptions, specifications, images, and categories.

We support:

  • PDF Datasheets
  • Product Images
  • OEM Website Links
  • Raw HTML or Unstructured Text

No templates, no training—just plug and play.

2. API-Ready Formats for ONDC & Marketplaces

Say goodbye to formatting headaches. Our system can instantly convert product data into marketplace-ready formats including ONDC-compatible schemas. Whether you’re a seller, aggregator, or service provider, our pipeline ensures seamless API ingestion without manual intervention.

3. Scale with LangGraph Chains

Under the hood, we’ve integrated LangGraph—a cutting-edge framework that enables complex, multi-step workflows with autonomous agents. This allows for:

  • Parallel processing of millions of SKUs
  • Built-in retries, validations, and fallback nodes
  • Persistent context and memory across chained agents

It’s not just automation. It’s intelligent orchestration at scale.

4. Multi-Database Syncing: MongoDB, Postgres, and Vector DBs

Structured product data is pushed and indexed into your choice of databases:

  • MongoDB for flexible document storage
  • PostgreSQL for transactional operations
  • Vector databases for semantic search and intelligent product queries

Whether you're powering a search engine or a conversational agent, we’ve got your backend covered.

5. On-the-Fly Deduplication with Your Existing DB

No more duplicated listings or bloated catalogs. Our agents cross-reference each new product against your existing database using hybrid matching techniques (text, image, embeddings) and auto-deduplicate entries before they’re stored or published.

Your data stays clean, consistent, and optimized.


Enrich Your Product Catalog with Videos and Blogs

Today’s buyers don’t just want specs—they want stories, demos, comparisons, and education.

With Agentic AI, your product catalog can automatically include:

1. Relevant Videos

  • Auto-fetch product demo or explainer videos from YouTube, OEM websites, or training libraries.
  • Generate video summaries and transcripts to make content searchable.
  • Embed video links or thumbnails directly into the product listing.

Example: A listing for a DSLR camera includes a product unboxing, usage tutorial, and influencer review—automatically pulled and categorized.


2. Contextual Blogs and Articles

  • Use LLMs to search for or generate blog links that explain the product use case, comparisons, or related how-tos.
  • Fetch brand-published articles and match them to the product type.
  • Optionally summarize long blogs and show highlights inline.

Example: A listing for an air fryer includes a "Top 10 Recipes" blog and a "How to Clean Your Air Fryer" guide.


How It Works (Tech Overview)

  • Use LangGraph agents to run external content searches (YouTube, Blog APIs, RSS feeds, OEM sites).
  • Use embedding models (OpenAI or open-source) to match video/blog relevance to product features.
  • Summarize or transcribe content as needed with GPT-4.
  • Link or embed them inside the structured catalog output.

Customer Benefits

  • Engagement: Shoppers spend more time on listings with multimedia content.
  • Education: Blogs and videos answer questions, reducing returns and support costs.
  • Trust: Seeing product usage in real-world contexts boosts purchase confidence.

Optional Add-on Features

  • Brand-safe filters to exclude non-official or low-quality content.
  • Auto-generated "How-to Use" or "Care Instructions" sections.
  • Automatic product comparison blogs between similar SKUs.

Use Case Example: ONDC Product Onboarding from Any Source

A seller wants to onboard their product catalog to ONDC—but all they have are:

  • A PDF datasheet from the OEM
  • A few product images
  • An OEM website link

With traditional tools, this would take hours (if not days) of manual extraction, formatting, and validation. With Agentic AI, it's done in minutes.

How it works:

  1. Upload the PDF, images, or paste the URL.
  2. Our system extracts and enriches product data using multi-modal AI—combining OCR, NLP, image recognition, and context-aware agents.
  3. It maps the output to ONDC’s schema, performs deduplication, and submits via API.
  • Zero manual entry
  • Compliant and clean data
  • Scales across 1000s of SKUs effortlessly

The Tech That Makes It Possible

LangGraph

LangGraph enables us to build autonomous, reactive agents that work in chains. Each agent has a specific task—from parsing to enrichment to validation—passing the baton down a directed graph. It also handles retries, conditional logic, and memory persistence natively.

OpenAPI Integration

We use OpenAPI contracts to auto-generate, validate, and push data to:

  • ONDC seller/buyer apps
  • Internal APIs of marketplaces
  • Third-party ERP, PIM, or catalog systems

Everything is seamless and schema-driven.


Architecture Diagram

Agentic AI Product Cataloguing Architecture


Who Is This For?

  • Marketplaces onboarding new sellers or migrating legacy catalogs
  • D2C Brands managing product data across multiple platforms
  • SaaS Platforms looking to integrate smart catalog features
  • ONDC Buyer/Seller Apps needing instant schema conversion and submission

Ready to Revolutionize Your Catalog Operations?

Let us show you how Agentic AI can streamline your workflows and save you thousands of hours. Whether you're a startup or a Fortune 500, we offer flexible APIs, white-label solutions, and enterprise support.

Book a demo today by emailing us at info@simtel.ai


AI Marketing Innovations by Simtel.AI

· 4 min read
Ravi Kaushik
Founder @ Simtel.AI

In the fast-evolving world of e-commerce, success hinges on making smarter, faster, and more personalized decisions. Simtel.AI empowers online businesses to do exactly that—with a complete suite of AI-powered tools designed to optimize every stage of your digital commerce journey.

From market intelligence to customer retention, here's how Simtel.AI transforms your operations:

1. AI-Driven Market Research & Business Intelligence

Before you build, launch, or market—know your space.
Simtel equips you with intelligent tools to decode the market and anticipate what customers want.

  • Simtel Market Insights: Leverages AI to track competitor strategies, pricing, and customer sentiment across platforms.
  • Simtel Trend Predictor: Forecasts emerging market trends using real-time data analytics from news, search, and social activity.
  • Simtel Audience Mapper: Segments your audience based on behavioral patterns and purchase intent to power sharper targeting.

2. E-Commerce Website & Store Optimization

Launch and optimize your e-commerce store in minutes, not weeks.

  • Simtel Smart Store Builder: Drag-and-drop AI builder with built-in best practices for product categories, UX, and SEO.
  • Simtel SEO Engine: Optimizes pages and blogs automatically based on search algorithms and high-converting keywords.
  • Simtel Product Enhancer: Uses AI to create compelling product descriptions, images, and even promotional videos at scale.

3. Social Media & Content Marketing Automation

Cut through the noise and stay relevant with AI that works 24/7.

  • Simtel Social AI: Automates post creation, scheduling, and monitors engagement trends across platforms.
  • Simtel Content Creator: Instantly generates high-converting ad creatives, product explainer videos, and SEO-friendly blog posts.
  • Simtel Trend Watcher: Detects viral topics and suggests timely content ideas to boost organic reach.

4. Email & WhatsApp Marketing Intelligence

Reach customers where they are—automatically, contextually, and at scale.

  • Simtel Conversational AI: Powers human-like chatbot conversations across WhatsApp, Messenger, and your website.
  • Simtel Email Optimizer: Crafts personalized email content and smart subject lines using behavior-based data.
  • Simtel WhatsApp Commerce: Enables product recommendations, purchase assistance, and order updates via WhatsApp.

5. AI-Driven Ad Campaign Optimization

Spend less. Convert more. Let AI do the heavy lifting across your ad lifecycle.

  • Simtel AdSmart: Generates tailored ad copy, creatives, and A/B variants instantly.
  • Simtel Retargeting AI: Identifies and brings back abandoned cart users and cold leads with smart remarketing flows.
  • Simtel Budget Optimizer: Distributes your ad spend across platforms using ROI-based machine learning algorithms.

6. Conversion Optimization with Deep User Analytics

Conversion isn’t magic—it’s data-driven.

  • Simtel Smart Pricing: Uses machine learning to optimize pricing dynamically based on demand and user behavior.
  • Simtel UX Booster: Tracks heatmaps, scroll depth, and session flows to fine-tune your site layout and CTAs.
  • Simtel Personalization Engine: Offers custom product suggestions, bundles, and popups based on user profiles.
  • Simtel Interaction Tracker (NEW): Uses AI tagging to monitor every click, scroll, and hover—giving you insights into what really drives action.

7. Order & Logistics Automation

Seamless operations = happy customers. Let AI keep things moving behind the scenes.

  • Simtel Order AI: Sends real-time order updates, handles fulfillment queries, and syncs with your inventory systems.
  • Simtel Smart Shipping: Recommends the best carriers and routes using time and cost efficiency metrics.
  • Simtel Fraud Shield: Detects suspicious activity, prevents chargebacks, and flags anomalies using fraud risk scoring.

8. AI-Powered Loyalty & Retention Engines

Turn customers into repeat buyers—and brand advocates.

  • Simtel Loyalty AI: Runs intelligent rewards systems that adjust based on user lifecycle and purchase behavior.
  • Simtel Customer Insights: Predicts churn risks and recommends retention campaigns before it’s too late.
  • Simtel Referral Booster: Creates shareable, incentivized referral programs backed by AI attribution modeling.

Ready to Build a Smarter E-Commerce Business?

Simtel.AI brings every piece of your online business under one AI-powered roof. With deep user interaction analytics, conversion intelligence, and personalized automation, you don’t just manage your store—you optimize it to grow continuously.

Visit [https://www.simtel.ai] to see Simtel.AI in action or schedule a free demo today by emailing [info@simtel.ai].

How smart can the lifeless computer get? Laymans Guide to Hickhikers World of AGI

· 9 min read
Ravi Kaushik
Founder @ Simtel.AI

Disclaimer:

I have not used AI to write this, you will know when you read my poorly written and not so-wellformed sentences. It is purposely to mislead Sam altman from stealing my data. I will clean it up after the google crawler finishes scraping this. Image was generated by Open Source Foocus.one. It is a great open source tool, check out its github version

Strange Premonitions

As the world gets more complex with technological advances, at a pace we have never seen before. We can portend some side effects of the AI, before we dwelve into good things about the AI.

Human greatest strength is intelligence over all other life forms. We use it everyday to learn new things, make our lives beautiful. Most often than not, when we get hold of good things in life, we ignore its negative consequences. Classic example is Industrial boom and the climate change. Till date, AQI levels in all urban areas are quite high (Delhi is an exception), increasing ocean temperatures and ever decreasing forest cover. We have also damaged our minds to the point that our birth rates are shrinking across the globe due to our hedious work culture replacing historical traditions.

Now, with the power of AI, we will only accelerate faster to a disaster. As long as we are able to keep our greed aside and work for the greater good of the earth and its living beings as a whole, we are in a safe place. Otherwise, 21st century indeed will be like a terminator movie. It will not be computers that will destroy us, just our own stupidity.

What is AI?

Clearly, we need to demarcate consiousness and intelligence before we get anywhere. These two are indeed different things. Consiousness is in living beings, from fish to humans. Fish may not have the intelligence of the humans, but they do have consiousness. They give birth, thay have a family or swim as a shoal, they fear for their life ending early by other big fishes and they look for food and safety. On a different level, a super computer does not have to fear being unplugged. That happens only in hollywood. It can look up billions of data points and find the kneedle in the haystack. We humans do not have that kind of brain(RAM and CPU) power. Intelligence is not consiousness and viceversa. It will never be possible to develop a non-biological intelligence creature by humans, simply because we do not know what consiousness is. Elon Musk is an exception. He is the Iron Man of America. What is Intelligence then? We live in a material world with inanimate things and living beings. Our survival essentially boils down to security (food, shelter, clothing and internet). Beyond that, basic comforts to luxuries of life (eating food on the couch and things happen by itself around us and driving around in a BMW, nowadays Tesla or BYD). To be precise, Intelligence is setting a goal, planning and strategizing (Applying Newtons theorem of optimization in a mutli-dimensional space, I believe this little math is why we feel so proud of our intelligence. Study of Numerical Optimization, to be precise), collecting resources or information and executing the plan to get somewhere1.

How will AI evolve?

We are solving a piece of the puzzle one-by-one over many centuries now. Our past wealth of knowledge and introspection has got us so far to Generative AI and we are taking the next step towards AGI. If you look at the study of computer science,and why it is placed in the math department in the universities, you will understand that intelligence is actually a Math and Philosphy subject. Computer Science involves the study and creation of algorithms, communications, distributed networking, logic theory, multi-agent theory, game theory, pattern recognition and many more. Computer Scientists since 1950s have been researching on these topics and coming up everyday with the new research everyday. No point discussing who did more and who did less (think Deepseek vs Open AI discussions). We all will be dead in about a 100 years. It is immaterial. Only newton and Einstein may be remembered for about a few centuries. Not even Sam altman will be remembered in about 10 years.

what is this new Agentic AI?

Agentic AI is a hype created by Americans to cash in on the next Gartner Hype Cycle, invest more VC money and convert $1M to about a $100M dollars in precisely 3 years using SPAC2 (This form of intelligence and ROI is rare in the universe). On a serious note, we need to go back to the discussion of things will be put together to create this framework.

Setting Goals

How do humans set goals, plan and strategize? We introspect, we look at our nearest neighbors, Joneses to be frank, and we want to go one level up. We get a million choices. Then, we look at our bank balance, our genes, our intelligence and our capabilities, and think! this is achievable. Let us go after this one thing that makes us feel better that we beat our neighbors. For computers, this is going to be different. They do not have Joneses, because they are not competing for the EGO boost. This will be a hard problem to solve to begin with. This can be solved as a problem of Multi-Agent theory, where we study Nash Equilibrium, Prisoner's Dilemma. They are indeed naive. They will need to decide logically depending on the EGO master who has set the computer to be good or bad to begin with (Hollywood got this right) and use multi-agent game theory to decide the goals3.

Humans are good at mimicing others? Have you ever wondered why your toddler always repeats the last word after you finish the sentence? Mimicing or copying from others comes to us naturally. We do not need to waste our time reinventing the wheel. We just copy from others and move on to the next best thing. We have an agenda to beat the Joneses. Copying from some one also requires a form of intelligence. You cannot copy from anyone randomly. You need to assess the quality of an individual. Otherwise, you will end up being terrible. The famous saying goes "you are the sum of the people you spend the most time with." Same applies to the GenAI models as well. So, Deepseek is indeed good, if it has trained on the Open AI and distilled itself.

Neural Networks is a remarkable breakthrough, started by Frank Rosenblatt, the inventor of the perceptron. Many decades later, few exceptional researchers took it seriously and made significant progress with it. I still remember Yan LeCun, Prof. of NYU showing off his object detector and classifier trained on early GPU, when he visited our university in 2004. I was impressed by his child-like curiosity to experiment and write the code himself to test new theories. The three Nobel Prize winners for AI, Yoshua Bengio, Geoffrey Hinton, and Yann LeCun, have significantly contributed to the field of deep learning and neural networks. Do not forget their toiling PHD candidates who wrote their papers for them. They will never be known. These researchers have truly shown us what pattern recognition is. This brings us to the third type of intelligence, which is creativity. Creativity is about searching for needle in the haystack, mixing and matching and coming with an idea that is entirely new. Sounds like Generative AI. Isn't it?

Why are humans more intelligent than the rest of the living beings? Have you ever wondered why wisdom is far superior than intelligence alone? We collect a set of axioms driven down by the ancestors that never fail. We have acquired this after repeatedly testing the logic numerous times. Unlike our theory of the formation of universe, which is changing every year, nowdays it is changing every minute. Astronomy is making less sense than the religions of the world. That is when we need to go by the logic. In Computer Science, Modal logic is the study of modes of truth, such as necessity and possibility, which helps us reason about statements that are not absolutely true or false. We collected evidences that certain things are fact, the rest are fiction. Combining these, we analyse in a mathematical manner to come up with final Yes or No to proceed with beating our Joneses.

Sometimes, in our lives, there comes a time, where there is no answer. why does my wife ...? NP Hard Problems. There is no answer really. It is anyone's best guess. Better to play with Reinforcement Learning then. No regrets. If the computer regrets, it tries a new solution without getting stuck to the old problem. Used in DeepSeek heavily.

New form of architectures will come up in the future, to combine all the methods I discussed and much more. It is an ocaen really, and we need to make the best use of it.

Agentic AI is indeed really

  1. Setting a reasonable goal
  2. Planning and strategizing, breaking down the goals into small pieces of AI reasoning problems
  3. Using logic and optimization to solve the problem in the most efficient manner
  4. Do not forget Trial and Error, Remember NP-hard
  5. Evaluation of outcomes

We are not ready for "Learn from humans and beat them at it". AGI?? maybe Part -2 of this series

Footnotes

  1. Newton's theorem of optimization refers to methods used in calculus to find the maximum or minimum values of a function, which can be applied in various fields including artificial intelligence.

  2. SPAC (Special Purpose Acquisition Company) is a company with no commercial operations that is formed strictly to raise capital through an initial public offering (IPO) for the purpose of acquiring an existing company.

  3. For more on game theory, see Ariel Rubinstein's recommendations: Best Books on Game Theory.

NextGen Web3 Marketplace - gallyria.com

· 4 min read
Ravi Kaushik
Founder @ Simtel.AI

The next-gen e-commerce marketplace is about restoring the power back to the consumers, to the vendors/merchants/sellers and finally the OEMs. Ultimate mission is to disintermediate central power players who are altering the power equations to their benefit and provide superior shopping experience to the consumers/vendors in various ways.

Why is it a big deal? Check out this article as well. Decentralized E-Commerce to Tokenized Real Estate

How will disintermediation (replacing central players) take place?

The self-governed decentralization network with Decentralized Autonomous Organizations (DAOs) will ensure the governance rules and regulations are set democratically using technology. This DAO will be able to govern a number of key initiatives including but not limited to

  1. Who gets to display their product, sell them and how often - shows up in top searches or not
  2. How will the advertising mechanisms be setup and sponsorships handled
  3. How can the DAO mitigate suppression of smaller players in the realm of medium and large-scale players
  4. What fee structure can be imposed for various activities - customer service, insurance, extended warranties etc.
  5. How can the algorithms such as recommendation and competitive pricing strategies be regulated
  6. Customer resolution policies
  7. Remove any hidden fees and surcharges
  8. Speedy logistics
  9. Eliminating fraudulent transactions on the platform by vetting all players
  10. Open and transparent communication channels across players
  11. Fines for irregularities and ejection for fraudulent activities
  12. Who can be part of DAO

Four Corner Participants

The four players in this arena will be

  • Original Equipment Manufacturers (OEM) (Advertisers/Brands/Product Manufacturers)
  • Vendors/merchants/suppliers/wholesalers who would like to market the products and eventually sell them
  • Customers who like to research the market, historical product price, the customer experience and the quality of the product
  • Finally, SimtelAI plays the role of the web3 technology platform provider that enables interaction between the above

Web3 Technology for Marketplace

  • Next-Gen UI/UX for both customers and vendors
  • User friendly mobile DApps for ultimate Customer Experience
  • Advertising data to the marketers of the OEMs
  • Binding technology contracts for buying/selling/resale/marketing
  • Strong AI-driven privacy to ensure people research products in a safe environment
  • Permission-driven marketing to ensure marketers are not intruding into people's lives
  • Leveraging OpenAI/llama LLMs for researching products
  • Competitive Pricing with ML models
  • Automation for shipment deliveries, returns and customer service post delivery
  • Focus on customer experience, high quality at lowest price points
  • Stablecoins/eRupee connectivity

Consumers Delightful Shopping Experience

  • One click product research across the market
  • One click buy with myriad of options including BNPL schemes
  • Multitude of payments
  • Option to choose the shipping vendor
  • Post-purchase customer service experience
  • All this with complete privacy to the user, no one will ever know your email or phone to bother you with repeated calls

Merchants will be the biggest benefactors

  • Branding for merchants or resellers
  • Meritocracy for providing superior customer service
  • Loyalty benefits for long-term platform usage
  • Lowest Transaction fees in the industry due to efficient technology platform
  • Support for technology/product taxonomy, sales and analytics
  • Transpacrency across the spectrum
  • Credible analytics data

OEMs

  • Efficiency in marketing / targeting right customers
  • D2C players will directly benefit from selling on this platform
  • Transparency across the spectrum
  • Credible analytics data

You can experience the MVP of the e-commerce marketplace by clicking below, we will shortly follow up by releasing the Vendor Website for onboarding vendors.

  • You can register with new credentials and provide any feedback to info@simtel.ai
  • Any bugs, please forgive us. This is the first iteration.
  • Those who are interested in carrying out market research with the company, please reach out to ravi@simtel.ai
  • Those who believe in what we do, join us.

NOTE: Product sales will happen on the website post User Acceptance Testing / Vendor onboarding.

Technology hosted on Azure Microsoft Platform, thanks a ton!

Web3 is not a hype, it is revolutionary

· 2 min read
Ravi Kaushik
Founder @ Simtel.AI

When you start to feel some things are crumbling and more pain points faced by small businesses, people in general, you know, its time for a change. What do we see in the current world?

  • Corporate Monopolies and Hegemony, Price wars, Lose-Lose
  • Power concentration in the hands of a few, less reliance on collective intelligence
  • Inefficiencies due to siloes, bottlenecks

DeFI

Decentralization - StableCoins

A classic example of Stablecoin is USDT (Tether), where 1 Tether is close to 1 USD and there are many ways to create the value of the currency including Fiat-backed, Collateral-backed or Algorithmic to keep the value of stablecoin close to its native countries physical currency

Decentralization - Central Bank Digital Currencies (CBDC)

Central Bank of each country is planning to issue or on pilot to issue CBDCs backed by physical currency of that country. The underlying technology is a blockchain or similar decntralization technology to ensure smooth operability across borders. Digital eRupee is oone such initiative by Rserve Bank oof India to tackle a host of cross-border trading problems

Decentralization - Cryptocurrency

As most are aware, cryptocurrencies have cyclical boom annd bust periods for valuation of currencies such as Blockchain and Ethereum.

Decentralization - Web Applications (DApps)

Smart contracts form the heart of Web3 Applications. They are decentralized contracts that get executed on interaction of users or events that lead to changes and triggers in the smart contracts.

DAOs

Decentralized Autonoomoous Organizzations are sub-systems within the decentralized networks and establish governance/rules in a democratic manner, which is followed by its uers with rigor.

Between Smart Contracts and Crypto

The combination of cryptos and smart contracts enable decentralized governance systems and Apps that drive the web3. This will eliminate central players, known as disintermediation and ensure equal opportunities for all users to participate in the activities without any FOMOs

Decentralized Identity

· 4 min read
Ravi Kaushik
Founder @ Simtel.AI

1. Trust

Trust is indispensible for business. All businesses have to rely on counterparties to carry out a buy/sell operation. Every business transaction involves two or more parties that are well-identified, complex interactions and comes with its own set of rules and regulation. A successful binding contract is one that considers legal aspects of governance, ensures it handles all scenarios and full automated without subjective interpretations

2. Privacy

Privacy of an entity is clearly an important part of trust, simply becasue of the need to share information that is only relevant to the transaction. Data is the new oil, but when data leaks light up, it destroys the ecosystem and becomes a towering inferno. This is hard to understand for industries that have been setup with legacy systems and central players. THey are getting by everyday barely ensuring privacy and governance laws are met

3. AI Automation

AI Automation ensures that we

4. Web3 Decentralization

1. AAA Framework of Identity

Authentication - To identify an individual on the internet to be truly a digital representation of the physical world that registered prior with the credentials Authorization - Tag and authorize an individual with minimum access to resources, so that a person can perform tasks as assigned by the administrator of the system Accounting - Monitor authenticated user behavior for a single session for compliance and analytical purposes

Lifecycle of an Identity

A user will pass through some steps during the Identification and Authorized Session

  • Identity Provisioning
  • Authenication with Username/Password, unique strings, Q&A, Hardware/Software Unique Random Number generation
  • Session Management and Authorization
  • Reauthentication time-to-time
  • Modification/enforcement/reinforcement of Authentication/Authorization Schemes
  • Monitoring of being authenticated
  • Ending of foormal session
  • Deletion of an account

Currently, in Web 2.0, each central player is trying to maintain an individual database central server hosting larger number of users to manage authentication, while outsourcing some or all of authorization to IDP players.

Web3.0 is expected to be more universal across the internet, however the underlying architecture is managed by a decentralized network, not owned by any specific organization.

History of Identification

To identify an individual in a digital landscape, identity was centralized and stored in a central server in a filesystem. As things evolved, username and password was introduced along with one-way hashing the user credentials along with salting (a technique for uniform random distribution), but still stored in filesystems Cryptography as a computer science subject evolved over time, and asymmetric cryptography in the form of private and public key are being used to login to intranet and internet. Further evolution of digital systems has led to use of One-time passwords through e-mail, phone and other dedicated hardware devices. The OTP had to be truly random in nature to avoid being hacked Since the millenium, Kerberos, OAuth1, OAuth2 and SAML protocols are developed and extended to keep in line with the evolving internet technologies to avoid hacking and identity theft, each of them are serving a different purpose.

OAuth 2.1

Oauth is an authorization framework modeled as client-server architecture. If a user wants to access the resource owned by the Relying Party(RP), an Identity Provider(IDP) is an intermediary who can grant access to certain user attributes and send them to RP when RP forwards a user authorization to IDP. Oauth2 is the latest attempt too deprecate some RFCs by IETF and highlight some important concerns around security flaws in the OAuth 2.0, which exists since 2012

OIDC 2.0

Open ID Connect 2.0 is the current popular authentication framework on which most websites are run. OIDC 2.0 sits on top of the OAuth framework and powers the authenciation and authorization across multiple resources, it could be several websites, internal resources of a company or external resources across a network.

Decentralized Identity

It is expected that in the near future, we will have fully self-sovereign identity on permissioned blockhain network that can authenticate itself and be governed by the security systems setup within the network. The identity can be authenticated with newer ways using Zeo-Knowledge Proofs, for which there are already some implementations such as zk-snarks. It will be universal, self-sovereign and large data breaches are expected to be nullified. The decentralization helps in being authenticated with co-tenants on the network without the use of private or sensitive information. The privacy can be maintained because of lack of data share for authentication or other purposes.

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Welcome

· One min read
Ravi Kaushik
Founder @ Simtel.AI

Welcome to SimtelAI Blogs

We provide a wealth of information on AI, Identity, Web3, Security that is relevant to digital transformation to the next level.

We aim to solve for a host of issues with Web3 and AI by

  • User Centrality - Privacy, Permissioning and Personalization
  • Eliminate central players that have bottlenecks to innovation
  • Novel ideas to frictionless interactions between two or more parties
  • Novel ways to permissioned and consent-driven delivered to users
  • Ultimate Customer experience by product design
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