wpDiscuz (Pre-Activated) 7.6.45
wpDiscuz (Pre-Activated) 7.6.45 Original price was: $19.99.Current price is: $9.99.
Back to products
Bookly Cart Addon 3.3
Bookly Cart Addon 3.3 Original price was: $19.99.Current price is: $9.99.

WooCommerce Product Recommendations 3.0.6

Apple Shopping Event

Hurry and get discounts on all Apple devices up to 20%

Sale_coupon_15

Original price was: $19.99.Current price is: $9.99.

13 People watching this product now!
  • Pick up from the Woodmart Store

To pick up today

Free

  • Courier delivery

Our courier will deliver to the specified address

2-3 Days

Free

  • DHL Courier delivery

DHL courier will deliver to the specified address

2-3 Days

Free

  • Warranty 1 year
  • Free 30-Day returns

Payment Methods:

Description

Products Are Purchased and Downloaded From Original Authors.
The File is 100% Completely Untouched and Unmodified.
Last Update: 24.Dec.2025
Version: 3.0.6
Live Demo

Specification

Overview

Processor

Display

RAM

Storage

Video Card

Connectivity

Features

Battery

General

Customer Reviews

1 review
0
0
0
0
0

1 review for WooCommerce Product Recommendations 3.0.6

Clear filters
  1. PlugCart

    WooCommerce Product Recommendations Latest Version
    This is a GPL-distributed version. No official support. Clean, secure, and legally redistributed under the GPL license.
    Offer smarter upsells, cross-sells, and “frequently bought together” recommendations. Measure their impact with in-depth analytics.
    Upsells and cross-sells with a pinch of intelligence
    Ever noticed how the most successful stores leverage the power of product recommendations? When done right, upsells and cross-sells deliver a more engaging experience to your visitors — the kind of experience that not only helps them find products they like, but also keeps them coming back.
    Fortunately, you don’t need a team of machine learning specialists to get started. Product Recommendations is a state-of-the-art product recommendations platform for WooCommerce that brings together human intelligence and machine learning, with one goal: To help you grow your sales. Here’s how:
    Offer more intelligent upsells and cross-sells — or create your own, rule-based recommendation engines.
    Improve the shopping experience across your entire store, with relevant recommendations placed at strategic locations.
    Measure their impact and optimize your strategies with in-depth analytics.
    Let technology do the heavy lifting for you
    Build intelligent engines that generate automated, accurate Frequently Bought Together recommendations, with near-zero waiting or training. Our lightweight search algorithm analyzes your orders to discover meaningful product relationships and quickly adapts itself to new trends and seasonal patterns.
    Add recommendations across your entire catalogue, effortlessly
    Ever tried to manually add upsells and cross-sells to every product or category page of your store? With Product Recommendations, you can do both in minutes. Create upsells and cross-sells in bulk, instead of entering products one by one. Add category, attribute, tag, or price filters to narrow down products, and use amplifiers to boost specific results based on popularity, rating, creation date, conversion rate, or more advanced criteria.
    Looking for a way to recommend products from the currently viewed category, or brand? Want to limit results to products that cost more than the currently viewed product? No problem! Product Recommendations lets you deploy context-aware recommendations, faster.
    Promote the right product, to the right customer, at the right time
    Increase your store’s average order value by recommending recently viewed products and products from recently viewed categories on the checkout page, or even after customers complete their orders. Make relevant, well-timed offers by displaying them conditionally, based on your customers’ cart/order contents, browsing history, date, or location.

Add a review

Your email address will not be published. Required fields are marked *

1 2 3 4 5
1 2 3 4 5
1 2 3 4 5