Jobiak's COVID-19 Relief Program

You’re Helping Your Community.
But You Need Help, Too. That’s Where We Come In.

Jobiak is proud to offer free or discounted use of our recruitment technology to industries heavily impacted by COVID-19. 

As a result of the COVID-19 pandemic, many organizations are finding themselves in need of talented workers on the frontlines… and fast.

At Jobiak, we believe in using technology to support one another. We are the only technology that can optimize job listings to show at the top of Google job listings. This brings in more and more qualified candidates to fill these vital positions, ASAP.

As part of our response to the growing crisis, we’re proud to offer our technology absolutely free of charge for healthcare organizations who are recruiting right now. We’ll also be offering massive discounts to select employers in a number of other verticals. Demand for qualified candidates is increasing dramatically, and we are here to help.

Contact us by filling out the form below, feel free to run any questions by us, and we’ll get you up and running in no time!

Take the First Step

 

Making ‘Google for Jobs’ Deliver Quality Candidates in 72 Hours 


    More about Jobiak:

    The industry’s first & only
    AI-platform built to unleash

    the full recruiting power of Google for Jobs

    While our technology is sophisticated, our solution is simple. Jobiak enables employers and talent acquisition partners to easily publish and optimize job listings on Google for Jobs.

    Our state-of-the-art Machine Learning (ML) eliminates the technology challenges that previously limited access to this incredible new recruiting channel, empowering clients to achieve extraordinary results that no other HR technology can deliver. 

    key to unlocking the recruiting power of Google
    lightning powered AI tech

    Incredible Recruiting Power.

    Incredibly easy to implement.

    Jobiak is the only solution in the recruiting industry with the power to fully automate and optimize listings on Google for Jobs, in as little as 48 hours.

    Up To4xThe Applications
    Top 20Ranking

    AI-Powered SEO boosts every job into the top 20
    rankings, dramatically increasing your job applicant
    volume, quality and relevancy

    THE MAKING OF OUR MACHINE LEARNING

    Over 80,000 man-hours went into developing our patent-pending technology, which was built by exceptional engineers with deep expertise in the recruiting and Machine Learning industries. Our Artificial Intelligence (AI) model is constantly trained to generate high-performing keywords and make real-time SEO adjustments based on local market demand.

    TRAINING DATASET

    400,000 man-hours of data collection were invested to create our AI-model, which has scoured million of job descriptions to ensure a high degree of accuracy

    3.5 MILLIONJob Listings
    600,000Job Titles
    58,000Competencies
    (e.g., data analytics, UX design)

    machine learning
    expertise

    50 Years of Machine Learning Expertise

    More than 20 specific machine-learning algorithms

    patent-pending
    technology

    More than 100 Engineers involved in product dev

    Over 60 years of industry experience in recruiting and intellectual property (IP) development

    relational
    model

    118 million occupational associations

    600,000 nodes and 27 million edges between title and descriptions

    127 million associations between titles and skills

    THE MOST POWERFUL PREDICTIVE TECHNOLOGY
    FOR JOB POST OPTIMIZATION

    Jobiak’s AI-platform accounts for over 25 “signals” that factor into Google for Jobs
    rankings and uses sophisticated modeling to implement the optimal code to
    achieve top search results for your job posts

    machine learning
    GOOGLE FOR JOBS RANKING FACTORS

    Key SEO Signals

    (Company name in domain, keyword presence, SEO meta tags)

    Job Personalization Signals

    (High-ranking titles, title and job description associations)

    Company Reviews Signals

    (Number of reviews, ratings, similar jobs)

    On-Page Signals

    (Occupational category, company logo, salary estimates)

    Real-Time, Market-Based Signals

    (Most-searched queries by job-seekers, commonly used job-search keywords, frequency of re-posting)

    Location Signals

    (Location accuracy, nearby locations, population size, address and zip code)

    THE ANATOMY OF AN OPTIMIZED JOB POST

    Jobiak automatically optimizes your job posts for high ranking using machine-generated keywords, titles and descriptions, based on analysis of both real-time information and learnings from millions of monitored postings. 

    Our AI-platform executes over 25 specialized SEO techniques both on the front-end of the post that job-seekers see on Google for Jobs, and in the background, to optimize the underlying code.

    FRONT-END OPTIMIZATIONS

    Url
    JOB TITLE
    COMPANY LOGO
    COMPANY NAME
    LOCATION
    DIRECT APPLY
    OCCUPATIONAL CATEGORY
    FREQUENT REPOSTING
    SKILLS & SPECIALTIES
    JOB DESCRIPTION
    SALARY ESTIMATES
    COMPANY REVIEWS

    Back-END OPTIMIZATIONS

    SEO META TAGS
    ML GENERATED KEY WORDS
    REAL-TIME UPDATES
    NEARBY LOCATIONS

    OUR MACHINE LEARNING ENGINE

    Jobiak scans your jobs and identifies the 11 attributes that
    Google requires for Google for Jobs posts

    The technology used to process these 11 attributes:

    SKIP
    SKIP
    Job Identifier
    Identify distinct components of JOB IDENTIFIER (Ref Job, Job Id etc)

    Job IDs are hard to recognize since a job page is usually littered with various types of IDs that resemble a job ID. Jobiak’s learning algorithms can accurately separate and extract the correct job ID from the rest.

    Company
    HTML Structure Analysis
    Weighting Heuristics
    NLP
    Random Decision Forest
    N-Gram Model
    X-Paths

    Hiring company name can appear anywhere on a job description page. Sometimes part of a large blob of text, sometimes as a image logo on the page or simply implied by the URL. The presence of other company names (like the hosting job board) or company name like entities make it even more difficult to accurately identify the hiring company.

    Jobiak’s sophisticated natural language processing and modeling techniques are capable of automatically distinguishing the correct company name from others. This is aided by Jobiak’s proprietary visual/structural parsing technology as well as millions of carefully curated and labelled data.

    Title
    Patterns/Regular Expressions
    Remove Non-relevant sections(similar jobs, more jobs etc)
    HTML Structure Analysis
    Text Mining (Tf-Idf)
    Random Decision Forest
    NLP
    Weighting Heuristics
    Lookup table
    N-Gram Model
    Identify distinct components of Job titles(Ref Job, Job Id etc)

    Job titles are unstructured and can appear anywhere on a job description page often along with other entities like job location, requisition number etc. making it extremely difficult to automatically extract.

    Jobiak’s sophisticated natural language processing and modeling techniques utilize 100s of visual, structural and semantic features to recognize and extract job titles with a high degree of accuracy from any unstructured web page. This is aided by Jobiak’s proprietary visual/structural parsing technology as well as millions of carefully curated and labelled data items.

    Location
    Patterns/Regular Expressions
    Random Decision Forest
    Weighting Heuristics
    Identify Location Component(Cities, states, Regions, Countries)
    XPaths
    N-Gram Model

    Locations are unstructured, can appear anywhere on the page, often incomplete and along with other entities like job title or in the middle of a large description making it difficult to extract .

    Jobiak’s sophisticated natural language processing and modeling techniques are capable of automatically identifying job locations anywhere on the page with a high degree of accuracy as well as canonicalizing it based on contextual information. This is aided by Jobiak’s proprietary visual/structural parsing technology as well as millions of carefully curated and labelled data.

    Description
    Unsupervised Topic Model(Latent Dirichlet Allocation)/span>
    Sentence classification Model(Random Decision Forest)
    Decision Hints
    Job Description Detector(density based algorithm)

    Accurately identifying description is a hard task. Descriptions are made up of large portions of text, often with multiple sections. Accurately identifying text that is part of a job description and identifying the beginning and end of description sections becomes hard, even for human reviewers.

    Jobiak employs sophisticated machine learning techniques to identify various sections and topics that are part of the description and accurately classify sections that are part of the description. The technology also uses various algorithms to determine the boundaries of the description so as to accurately extract a description in it’s entirety, no more or no less than what is actually the description.

    Salary
    Weighting Heuristics
    N-Gram Model
    Xpaths
    Identify Salary Components(periodic, range, simple, descriptive etc)

    Jobiak’s algorithms can accurately identify salaries in job descriptions usually written in various formats (ranges), currencies and units (hourly, annually).

    Job Type
    Weighting Heuristics
    Identify distinct components of Job type(Full Time, Contractor, Part time etc)
    NLP
    N-Gram Model
    Xpaths
    Deep Neural Network

    Various job types associated with a job are identified whether it is explicitly present in the job page or inferred through context.

    Posting Date
    Identify distinct components of posting date(Posted Date, Posted since etc)
    N-Gram Model
    Xpaths

    Jobiak’s algorithms can accurately detect and distinguish between various kinds of dates like posted dates, validity dates, age etc

    Valid Through
    Identify distinct components of valid through date(Closes on, Valid through etc)
    N-Gram Model
    Xpaths
    Common
    SUPERVISED MODEL FOR CERTAIN TAGS
    N-Gram Model
    Xpaths
    Optimization
    Identify Location, JOB ID & SKILL ComponentS
    Supervised model for certain tags
    Power mean & graph embeddings
    10 convolutional neural networks

    Jobiak’s optimization technology is built using sophisticated machine learning algorithms trained using millions of job postings and their online performance over a long period of time. Jobiak has built knowledge structures such as association graphs of titles, skills, descriptions using sophisticated text processing techniques. Convolutional models trained on this data accurately recommend proven job optimizations required to improve online visibility for job listings.