Hi Friends,

Even as I launch this today ( my 80th Birthday ), I realize that there is yet so much to say and do. There is just no time to look back, no time to wonder,"Will anyone read these pages?"

With regards,
Hemen Parekh
27 June 2013

Now as I approach my 90th birthday ( 27 June 2023 ) , I invite you to visit my Digital Avatar ( www.hemenparekh.ai ) – and continue chatting with me , even when I am no more here physically

Saturday, 3 May 2003

JOB ADVT. ANALYIS TABULATION

Abhi
cc: Kartavya

Job Advt Analysis Tabulation
Function: _______

Advt. NoPosition / Advt. NameJobsite Uploaded onResumes Received (Descending Order)Cumulative No. of Resumes% of Resumes
S/NoCurr %

[Sketch showing “10” resumes → cumulative “80” resumes]

Date: 03/05/03


Refining “Project Manhattan”

  • During last 6/8 months, we must have uploaded some 3000/4000 job-adverts on different jobsites (Monster, Jobstreet, JobsDB) and received over 40,000 email resumes.

  • It is now high time to carefully analyze what has been happening before (blindly) continuing with Project Manhattan.

    Such an analysis becomes all-the-more important/urgent, considering that we are:

    • about to sign up Naukri @ Rs. 60,000/-

    • may also add PlacementIndia & CareerAge, before long

    • continuing to explore more jobsites which have job-alert / FTP / large-resume databases.

  • A very quick (crude?) analysis of data you gave me (for last 15 days), shows that:

    Ave. Resume / job-advt = 5.3
    Highest No. of resumes / advt = 392!
    • A mere 4% of advts (60 advts) yielded a whopping 79.5% of all resumes recd. (5887)

    For this group, average resumes/advt works out to approx. 100! (Pretty good).


  • We need to do similar analysis for all the 4000 job-adverts & all the 40,000 resumes received during last 6 months (ever since we launched Project Manhattan) & do it FAST!

  • We should also analyze this entire database (4000 advts / 40,000 resumes),

    • Industry-wise
    • Function-wise
    • Position Name-wise
    • Jobsite-wise (from where resumes came), etc.


  • It is unimportant as to from where we had “downloaded” a particular advt.

  • Since we are not revealing the “Name” of the advertiser, there is no question of that influencing the quantity/quality of response.

  • Not only do we want to discover:
    → Which jobsites give more resumes,

    but also:
    → Which jobsites give more resumes for which functions.

    The underlying assumption is that even on a given jobsite, there is no uniform distribution of resumes amongst all the functions.

    So, the trick is to unearth:
    → Which jobsites are having good quantity/quality of resumes in:
    • Marketing
    • Sales
    • R&D
    • Software
    • etc., etc.

    → Which websites produce better (quantity) responses for:
    • Senior Positions
    • Middle ”
    • Junior ”

    • By conducting some very simple statistical analysis (A/B/C analysis = 80:20 ratio etc.), we would be in a position to discover:

      PATTERNS / PROBABILITIES

    • With help of these emerging ‘patterns,’ we would be able to predict (with reasonable accuracy):
      • Expected Response (No. of Resumes that are likely to be received) from each website, for each function, if we were to upload a given job-advt. on that website. This is merely an “extrapolation” of past into future.

    • A tabulation such as following will emerge:

    Function: MKTG

    Jobsite (on which advt is uploaded)Total AdvtsTotal ResumesProbabilities of Getting 5 Resumes25 Resumes50 Resumes100 Resumes
    Monster0.900.700.600.50
    Naukri0.500.400.200.40
    Jobs Ahead0.300.250.200.10
    Jobs DB0.100.080.070.05
    Grand Total
    • Such tabulations have to be constructed (from existing 4000 advts / 40,000 resumes received) for each FUNCTION.

    [Side notes scribbled:]

    • We have scraped Project Manhattan → so computation of such probabilities is no more required.

    • BUT it would be of considerable interest to any (Recruitment) Subscriptions to use such analysis.

    • Simultaneously, this type of analysis should be extended to Jobsite efficiency (response tracking).

    • This will enable us to advise clients for better ROI on postings.

    • Applications: resume database mgmt., subscription design, interactive database creation, etc.

      • Of course, as more & more job-adverts get uploaded daily & more & more resumes keep arriving daily, the software should automatically re-calculate the “PROBABILITIES” & re-populate the tables.

      • Now it is easy to develop “DECISION-RULES” which software will automatically apply (to decide, on which jobsite to upload a given job-advt), the moment Sayida downloads a job-advt.

        In fact, the software will, on its own & without human intervention, actually UPLOAD each downloaded job-advt on the BEST / MOST APPROPRIATE jobsite!

        With this, we have:
        → Taken the “Guess-Work” out of the process
        → Automated the process (human use of human-beings)
        → Ensured high rate of success
        → Eliminated a lot of “wasted” time / effort / money & vastly increased cost/benefit ratio

      We must make Project Manhattan “graduate” to a “Pin-point / Targetted / Laser-guided bomb”!

      How soon?

      [Signature/initials]
      03/05/03

    • Analysis of Resumes Recd. Between 15/04 & 30/04

      No. of Job Advts in the SlabNo. of Resumes in the SlabCUMULATIVE No. of Job Advts% of Job AdvtsCUMULATIVE No. of Resumes% of Resumes
      3113131131
      111991143122
      161141302.1426357.6%
      13915433.0517869.9%
      17709604.3588779.5%
      22563825.9645087.1%
      364241188.5687492.9%
      6429718213.0717196.9%
      13717631922.9734799.2%
      1076551395100.07402100.0%

      Interpretation:
      This analysis shows that just 4% of the total job-adverts uploaded (i.e., 60 advts) produced nearly 80% of the resumes (i.e., 5887).

      That is, 96% of our time/money/effort was WASTE!

      So what we need to figure out is:

      • What Industries / Functions / Design. levels did these 60 job-adverts belong to?

      • Which jobsite gave best response against which job-advert?

      • COVERING LETTER

        EDITABLE covering-letter (email) which will accompany a job-advt. when it gets “broadcast” to all the delivery-channels selected by the Advertiser/Subscriber.

        Subscriber/Advertiser can use this as it is, edit/modify parts of it OR completely substitute it with a totally different draft.

        In course of time (V 2.0?), it should be possible for a subscriber (advertiser to create/use), totally different/unique/customised “covering-letters”, for each category/type of delivery-channel.


        Sample Draft:

        Dear Sir/Madam,

        Your subscription – viewership – clientele depends upon how much good-news/hope you bring every day to your readers/subscribers/customers/visitors/viewers etc.

        There is no doubt, a job-opening/vacancy is one such news to 42 million unemployed graduates, registered with 900+ employment-exchanges in our country.

    • Then there are more than 100 million professionals who are already employed but who are always on look-out for a better opportunity.

      Also waiting to launch their careers are 300,000+ engineering/management graduates, studying in the final year, at any given point of time.

      If you own/operate/manage:
      → a jobsite (website) ….. (Visitors)
      → a newspaper/magazine ….. (Readers)
      → a placement agency ….. (Candidates)
      → a cybercafe ….. (Surfers)
      → an educational institution ….. (Students)
      → a computer training class ….. (Trainees)

      then, you may want to convey to your visitors/…

    • ... readers / candidates / surfers / students / trainees, that we have a job-opening / a vacancy, as described in attachment.

      But then, following are strictly your choices:

      • To publicise our vacancy or not

      • To gain a “Competitive Advantage” or not

      • To double your business or not

      With kind regards,

      [Advertiser Company Name]











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