The Cattle Are Branding Themselves
(media.greatawakening.win)
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I think the irony of this is the lot number on his arm was one of the ones researched by /POL/ to cause 20% of the side effects. According to the Vaers Data. Also they were weirdly not distributed to one State, but rather spread between them all.
Thread: https://boards.4chan.org/pol/thread/320326114/vaers-killer-vaccine-lots-identified
Here is the archive page for that thread https://archive.4plebs.org/pol/thread/320326114
He doesn't even know for sure if he got the real one or the placebo one.
This is a tactic that the manufacturers adopted a very long time ago, probably all the way back in the days of Thimerosol (sp?). They have always known about bad batches and they do it specifically for plausible deniability.
Thanks for the info, really makes me wonder if there are any other horrifying patterns in that data. If anyone else is interested, from that post, the vaers csv files are at,
https://vaers.hhs.gov/data/datasets.html
The data.zip files contain the data.csv, symptoms.csv, and vax.csv files, so you don't have to d/l all of them on the page there. The column headings are,
data.csv,
VAERS_ID,RECVDATE,STATE,AGE_YRS,CAGE_YR,CAGE_MO,SEX,RPT_DATE,SYMPTOM_TEXT,DIED,DATEDIED,L_THREAT,ER_VISIT,HOSPITAL,HOSPDAYS,X_STAY,DISABLE,RECOVD,VAX_DATE,ONSET_DATE,NUMDAYS,LAB_DATA,V_ADMINBY,V_FUNDBY,OTHER_MEDS,CUR_ILL,HISTORY,PRIOR_VAX,SPLTTYPE,FORM_VERS,TODAYS_DATE,BIRTH_DEFECT,OFC_VISIT,ER_ED_VISIT,ALLERGIES
symptoms.csv,
VAERS_ID,SYMPTOM1,SYMPTOMVERSION1,SYMPTOM2,SYMPTOMVERSION2,SYMPTOM3,SYMPTOMVERSION3,SYMPTOM4,SYMPTOMVERSION4,SYMPTOM5,SYMPTOMVERSION5
vax.csv,
VAERS_ID,VAX_TYPE,VAX_MANU,VAX_LOT,VAX_DOSE_SERIES,VAX_ROUTE,VAX_SITE,VAX_NAME
vaers_id is the common key for the rows, each case gets an id? So count the vaers_id's in data.csv for each vaers_id and vax_lot in vax.csv, e.g. numdays makes me wonder, what's the distribution look like there, from vax_date to onset_date. Any clusters in age or sex, maybe. Is this the data set after they removed a bunch of deaths a while ago, etc.