SEO Expert Wanted – Rank Our Real Estate Home Buying Company #1 on Google

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

TYPE OF WORK

Any

SALARY

$4 to 8$ per hour

HOURS PER WEEK

40

DATE UPDATED

Apr 4, 2026

JOB OVERVIEW

We are a fast-growing real estate investment company that buys homes directly from sellers (cash home buyers), and we are looking for a proven SEO expert who knows exactly how to rank in this competitive niche.
This is NOT a beginner role. We only want someone who has already ranked home buying companies (we buy houses / cash buyers) to top positions on Google and can prove it.
________________________________________
What We’re Looking For
We need someone who:
• Has direct experience in the real estate home buying / investor niche
• Has successfully ranked websites for keywords like:
o "we buy houses in [city]"
o "sell my house fast [city]"
o "cash home buyers [city]"
• Understands local SEO at a high level, including Google Business Profile optimization
• Knows how to generate REAL seller leads (not just traffic)
• Can show proof of rankings, traffic, and results
________________________________________
Responsibilities
• Build and execute a complete SEO strategy to dominate our target markets
• Optimize and expand our website for high-intent seller keywords
• Improve and manage our Google Business Profiles (GMB)
• Create or manage content targeting motivated sellers
• Perform competitor analysis and reverse-engineer top-ranking competitors
• Build high-quality backlinks relevant to real estate
• Track rankings, traffic, and conversions—and continuously improve performance
________________________________________
? Requirements (NON-NEGOTIABLE)
• Proven experience ranking real estate investor / home buyer websites
• Must provide:
o Case studies
o Keywords ranked
o Before/after results
o Screenshots or access to proof (Ahrefs, SEMrush, GSC, etc.)
• Strong understanding of:
o Local SEO
o On-page SEO
o Technical SEO
o Link building strategies
• Fluent in English (written)
________________________________________
Compensation
• Competitive salary based on experience
• Performance-based bonuses for hitting ranking and lead targets
• Long-term opportunity with a growing company
________________________________________
To Apply
Please include:
1. Examples of real estate home buyer websites you’ve ranked
2. Keywords you ranked and current positions
3. What your strategy would be to rank a “we buy houses” site in a competitive city
4. Tools you use (Ahrefs, SEMrush, etc.)
5. Any additional relevant experience in real estate SEO
________________________________________
IMPORTANT
If you do NOT have direct experience ranking home buying / investor websites, please do not apply.
We are looking for someone who can come in and win immediately.

SKILL REQUIREMENT
VIEW OTHER JOB POSTS FROM:
SHARE THIS POST
facebook linkedin
  BENCHMARKS  
Loading Time: Base Classes  0.0007
Controller Execution Time ( Jobseekers / Job )  0.0175
Total Execution Time  0.0188
  GET DATA  
No GET data exists
  MEMORY USAGE  
1,500,384 bytes
  POST DATA  
No POST data exists
  URI STRING  
jobseekers/job/SEO-Expert-Wanted-Rank-Our-Real-Estate-Home-Buying-Company-1-on-Google-1610408
  CLASS/METHOD  
jobseekers/job
  DATABASE:  onlinejobs (Jobseekers:$db)   QUERIES: 13 (0.0123 seconds)  (Hide)
0.0003   SELECT *
                                
FROM exrates
                                WHERE rate_name 
'USD-PHP' 
0.0003   SELECT *
FROM `employer_jobs`
WHERE `job_id` = 1610408
 LIMIT 1 
0.0008   SELECT *
FROM `employers`
WHERE `employer_id` = 918045
 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` = 1610408
AND `misc`.`idIS NULL 
0.0005   SELECT e.business_namee.logoe.websitee.rebill_datee.date_added member_datehitsDATEDIFF('2026-04-15',ej.date_added) duration_daysDATEDIFF('2026-04-15',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('2026-04-15',ej.date_added) <= 14 ))
                                   AND 
e.deactivate != AND ej.deleted AND job_id '1610408' 
0.0007   SELECT *
FROM `employer_jobs_skills` `ejs`
LEFT JOIN `skills_categories` `scON `ejs`.`skill_id` = `sc`.`id`
WHERE `job_id` = 1610408 
0.0013   UPDATE employer_jobs SET hit_counts '***Mar-25-2026=263***Mar-26-2026=67***Mar-27-2026=27***Mar-28-2026=9***Mar-29-2026=39***Mar-30-2026=13***Mar-31-2026=14***Apr-01-2026=10***Apr-02-2026=1***Apr-03-2026=1***Apr-04-2026=99***Apr-05-2026=86***Apr-06-2026=85***Apr-07-2026=66***Apr-08-2026=25***Apr-09-2026=15***Apr-10-2026=5***Apr-11-2026=3***Apr-15-2026=1' WHERE job_id'1610408'  
0.0006   UPDATE employer_jobs SET monthly_hits '***Mar-2026=432***Apr-2026=394' WHERE job_id'1610408'  
0.0009   SELECT date_sent FROM jobseeker_sent_emails WHERE jobseeker_id '' AND job_id '1610408' AND status LIKE 'sent%' ORDER BY id DESC  
0.0003   SELECT *
FROM `employer_jobs_skills` `ejs`
LEFT JOIN `skills_categories` `scON `ejs`.`skill_id` = `sc`.`id`
WHERE `job_id` = 1610408 
0.0053   SELECT COUNT(*) AS `numrows`
FROM `employer_jobs`
WHERE `employer_id` = '918045'
AND `date_added` >= '2022-06-08' 
0.0004   select from teasers 
0.0002   SELECT FROM skill_categories WHERE skill_cat_id='' 
  HTTP HEADERS  (Show)
  SESSION DATA  (Show)
  CONFIG VARIABLES  (Show)