Google Product Feed & Performance Optimisation Specialist (Shopify)

Please login or register as jobseeker to apply for this job.

TYPE OF WORK

Part Time

SALARY

5

HOURS PER WEEK

14

DATE UPDATED

Dec 30, 2025

JOB OVERVIEW

Google Product Feed & Performance Optimisation Specialist (Shopify)

Job Description:

I am looking for an experienced e-commerce specialist who fully understands how to build, optimise, and maintain a high-performing Google product feed. This role focuses on analysing product performance, improving feed quality, and making data-driven decisions on which products to scale, optimise, or remove.

I am not looking for someone who just uploads products — I need someone who knows what they are doing, understands Google’s requirements, and actively thinks along with the business.

Main Responsibilities:
Product Feed Optimisation

Optimise product feeds for Google Shopping

Ensure correct use of GTINs, variants, pricing, availability and images

Use Symprosis (or similar feed apps) to manage and optimise the feed

Ensure feed compliance with Google Merchant Center policies

Product Performance Monitoring

Analyse product performance (clicks, impressions, conversions)

Identify underperforming products and determine:

Can it be optimised?

Does the pricing need adjustment?

Is demand too low?

Draft products that show no potential

Continuously clean and improve the product feed

Growth & Product Insights

Identify high-performing products and suggest scaling opportunities

Spot trends and demand signals within the feed

Suggest new products to import based on search demand and performance data

Actively advise on which product types are worth expanding

Collaboration & Strategy

Work closely with Shopify and Google systems

Think proactively and give strategic advice

Suggest improvements to increase feed quality, visibility and sales

What I’m Looking For:

Proven experience with Google product feed optimisation

Strong understanding of Google Merchant Center

Experience with Shopify

Experience using feed management tools (Symprosis is a big plus)

Basic understanding of Google Ads / Shopping campaigns

Data-driven mindset — decisions based on performance, not guesswork

Proactive, honest and reliable

Someone who wants to grow long-term with the business

Excellent English (spoken & written)

VIEW OTHER JOB POSTS FROM:
SHARE THIS POST
facebook linkedin
  BENCHMARKS  
Loading Time: Base Classes  0.0021
Controller Execution Time ( Jobseekers / Job )  0.0162
Total Execution Time  0.0201
  GET DATA  
No GET data exists
  MEMORY USAGE  
1,502,312 bytes
  POST DATA  
No POST data exists
  URI STRING  
jobseekers/job/Google-Product-Feed-Performance-Optimisation-Specialist-Shopify-1543154
  CLASS/METHOD  
jobseekers/job
  DATABASE:  onlinejobs (Jobseekers:$db)   QUERIES: 13 (0.0087 seconds)  (Hide)
0.0008   SELECT *
                                
FROM exrates
                                WHERE rate_name 
'USD-PHP' 
0.0003   SELECT *
FROM `employer_jobs`
WHERE `job_id` = 1543154
 LIMIT 1 
0.0004   SELECT *
FROM `employers`
WHERE `employer_id` = 824919
 LIMIT 1 
0.0008   SELECT COUNT(*) AS `numrows`
FROM `t_thread` `t`
LEFT JOIN `t_thread_misc` `miscON `t`.`id` = `misc`.`thread_id`
WHERE `t`.`job_id` = 1543154
AND `misc`.`idIS NULL 
0.0004   SELECT e.business_namee.logoe.websitee.rebill_datee.date_added member_datehitsDATEDIFF('2026-04-19',ej.date_added) duration_daysDATEDIFF('2026-04-19',e.rebill_date) duration_rebillej.*, e.deactivate FROM employers eemployer_jobs ej WHERE e.employer_id ej.employer_id AND
                                   ((
e.user_level >= '500' AND ej.date_added <= e.rebill_date)
                                   OR 
e.employer_id '' OR (ej.date_approved <> '2000-01-01' and DATEDIFF('2026-04-19',ej.date_added) <= 14 ))
                                   AND 
e.deactivate != AND ej.deleted AND job_id '1543154' 
0.0003   SELECT *
FROM `employer_jobs_skills` `ejs`
LEFT JOIN `skills_categories` `scON `ejs`.`skill_id` = `sc`.`id`
WHERE `job_id` = 1543154 
0.0007   UPDATE employer_jobs SET hit_counts '***Dec-30-2025=159***Dec-31-2025=18***Jan-01-2026=8***Jan-02-2026=8***Jan-03-2026=4***Jan-04-2026=5***Jan-05-2026=3***Jan-06-2026=2***Jan-07-2026=3***Jan-08-2026=1***Jan-10-2026=2***Jan-11-2026=1***Jan-12-2026=4***Jan-15-2026=1***Jan-16-2026=3***Jan-18-2026=1***Jan-19-2026=3***Jan-20-2026=1***Jan-22-2026=4***Jan-24-2026=1***Jan-25-2026=1***Jan-27-2026=1***Jan-28-2026=2***Jan-30-2026=1***Jan-31-2026=1***Feb-03-2026=1***Feb-04-2026=1***Feb-06-2026=1***Feb-08-2026=3***Feb-11-2026=1***Feb-14-2026=2***Feb-17-2026=1***Feb-19-2026=1***Feb-20-2026=1***Feb-26-2026=1***Mar-01-2026=1***Mar-10-2026=1***Mar-17-2026=1***Mar-24-2026=2***Mar-25-2026=1***Mar-29-2026=1***Apr-04-2026=1***Apr-05-2026=2***Apr-08-2026=2***Apr-13-2026=1***Apr-19-2026=1' WHERE job_id'1543154'  
0.0006   UPDATE employer_jobs SET monthly_hits '***Dec-2025=177***Jan-2026=61***Feb-2026=13***Mar-2026=7***Apr-2026=7' WHERE job_id'1543154'  
0.0009   SELECT date_sent FROM jobseeker_sent_emails WHERE jobseeker_id '' AND job_id '1543154' AND status LIKE 'sent%' ORDER BY id DESC  
0.0002   SELECT *
FROM `employer_jobs_skills` `ejs`
LEFT JOIN `skills_categories` `scON `ejs`.`skill_id` = `sc`.`id`
WHERE `job_id` = 1543154 
0.0025   SELECT COUNT(*) AS `numrows`
FROM `employer_jobs`
WHERE `employer_id` = '824919'
AND `date_added` >= '2022-06-08' 
0.0004   select from teasers 
0.0004   SELECT FROM skill_categories WHERE skill_cat_id='' 
  HTTP HEADERS  (Show)
  SESSION DATA  (Show)
  CONFIG VARIABLES  (Show)