SEOClerks

Buy Backlinks from High DA Web 2.0 Sites for $50

Level 1
Attention: The owner of this service has not logged into SEOClerks for more than 30 days. It is highly recommend that you contact them before ordering this service. Last Login: 1711 days ago

Buy Backlinks from High DA Web 2.0 Sites

  • Total 1000+ Backlinks

  • All First Level Links *

  • Up to 5 Keywords & 1 URL

  • 15 Days Free Traffic

  • Report delivery in 5 to 7 days


*this is not a profile web 2.0 backlinks, We write readable blogs, Related to your niche and submit to google by using premium tools.

*If we failed to give your order we return back your 100% money, NO risk Involved

  1. * We are startup Company funded by Gov of India and Accenture.

*All are 50+ DA BACKLINKS.

Good Combination of follow and No-follow.



Why Web 2.0 helps generate more TF compared to PBN?


Why web2.0 backlinks?

Difference between PBN vs Web 2.0 Backlinks:


Both the PBN or private network blog and web 2.0 backlinks are used to build SEO rankings for a website. However, they have many differences which are outlined below.

1. Functional differences

In a private blog network, the website owner will use a private network of blogs in which he or she will include links pointing to the main site he or she also runs. The owner of PBN can also decide to sell links to other site owners. The intention of interlinking pages in the PBN network via links is to increase Citation Flow or CF which is a ranking measurement based on the number of sites a link is connected to.

In contrast, Web.20 backlinks are generated from publisher type websites such as social media and video sharing platforms these platforms, as it may be known, allow users to create content and post on it for hosting. The publisher’s website is usually owned by company or different person and allows multiple users to publish content that the site will host.

In the case of web 2.0 backlinking, the owner of a site generates content and posts on the social media or bookmarking sites or other publisher networks and includes links pointed back to their main site.

In most cases, while the PBN websites are simpler websites interconnected to each other, the web 2.0 platform is more of a content hosting or streaming platform.

2. Natural versus unnatural backlinking

A PBN’s main intention is to generate links on an interconnected blog network rather than providing valuable information. They use unnatural methods of building links, meaning they are not necessarily following SEO promotion guidelines as would be required by search engines.

Most of these PBN networks are closed from the public in one way or another in order to avoid detection by search engines since they use manipulation in link building without following the stipulated guidelines. For instance, poor ranking by search engines would result given that the quality of content on these sites is poor. Most owners also use different hosting providers for each site to hide the digital footprint. For this reason, these links score a low TF or trust flow, a ranking measurement based on how truthful a link is.

In contrast, web 2.0 backlinks are a white-hat SEO technique approved by search engines and the links will pass on as good quality given that most publisher websites such as YouTube already have genuine ranking since they have many users posting original content and genuine links.

That is not to mean users can’t practice blackhat SEO through web 2.0. In some cases, a user can build multiple accounts on a publisher network and post bulk content filled with keywords and links pointed back to their main website for which they hope to achieve high SEO ranking. These links score a low TF.

3. High versus low DA and PA

Niche websites can use this blackhat method to generate links across the internet in order to generate more traffic and to increase ranking in SEO. When considering the value of paid versus free traffic or link building, this is more preferable but will also involve some cost for buying domains with high DA or domain authority and then hosting domains. It is also recommended to purchase domains with a clean link profile and those that are free of spammy and toxic backlinks.

Once the domain is hosted, the owner posts content containing links. These links point to another main money site run by the same owner, and the intention is to pass on the link strength and increase the search ranking of the main site.

In web 2.0, the owner will build a good PA by publishing a page on the publisher who already has a high DA. The user is not responsible for building high DA on the publisher site as is with the case of PBN. They are also not responsible for hosting the publisher’s website or network.

Web 2.0 helps generate more TF compared to PBN.

FAQ:

1. Are these links do-follow?

Ans: Most links are do-follow and no-follow mix, contextual, anchored, and non-anchored to stay more natural when the links are indexed.

2. Are these backlinks Google safe.

Ans: These links are 100% Google Panda, Penguin, and Hummingbird safe! Most backlinks are from high quality & authority sites with few outbound links, so old domain, contextual and relevant.

3. Do you accept all Niche Websites?

Ans: Yes, I accept all niches websites like Gambling, Pharmacy, and Hacking, etc. BUT NO ADULT, please!

4. Do you accept all Language's Website of the World?

Ans: YES, I accept all the languages websites of the world.


What's included

Progress Reports

Tags

web 2 o 50 DA Backlinks

0.0

0 reviews

Rating breakdown


Extras
Use premium indexing 10 days $5

Other services by kuldeep251019

$50 - In stock
Order Now
Process Time: 0.053653001785278

Possible Duplicate queries found!
MatchCountSQLScript
SELECT * FROM members_ledger WHERE ip = ? AND added>=unix_timestamp(NOW())-864001SELECT querystring, added FROM members_ledger WHERE ip = ? AND added>=unix_timestamp(NOW())-86400

/opt/clerks-staging/docroot/include/functions/includes/security.php 398 fetchMemberLedger() include_once()

SELECT * FROM posts WHERE PID=9280751SELECT *, author_bookmarktip AS service_author_bookmarktip FROM posts WHERE PID=928075

/opt/clerks-staging/docroot/include/functions/includes/service.php 479 getAllServiceDetails() ()

SELECT * FROM categories1SELECT * FROM categories

/opt/clerks-staging/docroot/libraries/adodb5/adodb.inc.php 1899 CacheExecute() parseRedundantQueriesCache()

SELECT * FROM seoclerks.members WHERE USERID='1062106'1SELECT * FROM seoclerks.members WHERE USERID='1062106'

/opt/clerks-staging/docroot/include/functions/includes/member.php 445 GetAllUserDetails() ()

SELECT * FROM ratings A, seoclerks.members B WHERE A.PID='928075' AND A.RATER=B.USERID1SELECT COUNT(A.RID) as total, SUM(bad) as badTotal, SUM(good) as goodTotal FROM ratings A, seoclerks.members B WHERE A.PID='928075' AND A.RATER=B.USERID

/opt/clerks-staging/docroot/libraries/adodb5/adodb.inc.php 1899 CacheExecute() ()

SELECT * FROM orders WHERE PID='928075' AND status in (1, 4, 6)1SELECT OID, stime, extradays1, extradays2, extradays3, extra1ordered, extra2ordered, extra3ordered, days, status, quantity, extras_data FROM orders WHERE PID='928075' AND status in (1, 4, 6)

/opt/clerks-staging/docroot/libraries/adodb5/adodb.inc.php 1899 CacheExecute() ()

UPDATE posts SET viewcount = viewcount + 1 WHERE PID='928075'1UPDATE posts SET viewcount = viewcount + 1 WHERE PID='928075'

/opt/clerks-staging/docroot/include/functions/main.php 1717 update_viewcount() ()

SELECT * FROM seoclerks.ratings WHERE USERID='1062106' AND PID != 01SELECT good, bad FROM seoclerks.ratings WHERE USERID='1062106' AND PID != 0

/opt/clerks-staging/docroot/include/functions/includes/smarty.php 135 insert_get_percent() include()

SELECT * FROM codeclerks.ratings WHERE USERID='1062106' AND PID != 01SELECT good, bad FROM codeclerks.ratings WHERE USERID='1062106' AND PID != 0

/opt/clerks-staging/docroot/include/functions/includes/smarty.php 135 insert_get_percent() include()

SELECT * FROM listingdock.ratings WHERE USERID='1062106' AND PID != 01SELECT good, bad FROM listingdock.ratings WHERE USERID='1062106' AND PID != 0

/opt/clerks-staging/docroot/include/functions/includes/smarty.php 135 insert_get_percent() include()

SELECT * FROM pixelclerks.ratings WHERE USERID='1062106' AND PID != 01SELECT good, bad FROM pixelclerks.ratings WHERE USERID='1062106' AND PID != 0

/opt/clerks-staging/docroot/include/functions/includes/smarty.php 135 insert_get_percent() include()

SELECT * FROM wordclerks.ratings WHERE USERID='1062106' AND PID != 01SELECT good, bad FROM wordclerks.ratings WHERE USERID='1062106' AND PID != 0

/opt/clerks-staging/docroot/include/functions/includes/smarty.php 135 insert_get_percent() include()

select * from categories_software order by name asc1select * from categories_software order by name asc

/opt/clerks-staging/docroot/libraries/adodb5/adodb.inc.php 1899 CacheExecute() insert_GetSoftwareCategories()

select * from categories_wanttobuy order by name asc1select * from categories_wanttobuy order by name asc

/opt/clerks-staging/docroot/libraries/adodb5/adodb.inc.php 1899 CacheExecute() insert_get_wantcategories()

select * from categories_wanttotrade order by name asc1select * from categories_wanttotrade order by name asc

/opt/clerks-staging/docroot/libraries/adodb5/adodb.inc.php 1899 CacheExecute() insert_get_tradecategories()

SELECT * FROM categories WHERE parentid = 0 1SELECT * FROM categories WHERE parentid = 0

/opt/clerks-staging/docroot/include/functions/main.php 21555 getNotParentCategories() include()

SELECT * FROM seoclerks.members WHERE USERID=? 1SELECT usergroup FROM seoclerks.members WHERE USERID=?

/opt/clerks-staging/docroot/include/functions/includes/member.php 2553 isStaffMember() include()

Invalid SQL

count(*)sql1error_msg

Expensive SQL

Tuning the following SQL could reduce the server load substantially
LoadCountSQLMaxMin

Suspicious SQL

The following SQL have high average execution times
Avg TimeCountSQLMaxMin
0.3118171SELECT A.*, B.seo, B.name as categoryname, C.username, C.userlevel, C.lastlogin, C.ip, C.profilepicture FROM wanttobuy A, categories_wanttobuy B, seoclerks.members C WHERE A.active = 1 AND A.category = B.CATID AND A.USERID = C.USERID ORDER BY A.viewcount desc LIMIT 0,400.3118170.311817
0.2051821SELECT COUNT(A.wantid) AS total FROM wanttobuy as A, categories_wanttobuy B, seoclerks.members C WHERE A.active = 1 AND A.category = B.CATID AND A.USERID = C.USERID 0.2051820.205182
0.0967921SELECT * FROM members WHERE show_freelancer = 1 AND status = 1 AND total_recommendations > 0 AND (skills LIKE '%assita%') ORDER BY total_recommendations desc LIMIT 0,400.0967920.096792
0.0775251SELECT count(USERID) AS total FROM members WHERE show_freelancer = 1 AND status = 1 AND total_recommendations > 0 AND (skills LIKE '%assita%') 0.0775250.077525