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Table: ls_dr3.wise
(The bold columns are indexed columns)
Column NameDescriptionDatatype
brickidBrick ID [1,662174]INTEGER
decals_idUnique DECaLS object IDBIGINT
flux_ivar_w1Inverse variance of FLUX_W1REAL
flux_ivar_w2Inverse variance of FLUX_W2REAL
flux_ivar_w3Inverse variance of FLUX_W3REAL
flux_ivar_w4Inverse variance of FLUX_W4REAL
flux_w1WISE model flux in W1REAL
flux_w2WISE model flux in W1REAL
flux_w3WISE model flux in W1REAL
flux_w4WISE model flux in W1REAL
fracflux_w1Profile-weighted fraction of the flux from other sources divided by the total flux in W1 (typically [0,1])REAL
fracflux_w2Profile-weighted fraction of the flux from other sources divided by the total flux in W2 (typically [0,1])REAL
fracflux_w3Profile-weighted fraction of the flux from other sources divided by the total flux in W3 (typically [0,1])REAL
fracflux_w4Profile-weighted fraction of the flux from other sources divided by the total flux in W4 (typically [0,1])REAL
htm9HTM index (order 9 => ~10 arcmin size)INTEGER
lc_flux_ivar_w1_1Inverse variance of LC_FLUX_W1REAL
lc_flux_ivar_w1_2Inverse variance of LC_FLUX_W1REAL
lc_flux_ivar_w1_3Inverse variance of LC_FLUX_W1REAL
lc_flux_ivar_w1_4Inverse variance of LC_FLUX_W1REAL
lc_flux_ivar_w1_5Inverse variance of LC_FLUX_W1REAL
lc_flux_ivar_w2_1Inverse variance of LC_FLUX_W2REAL
lc_flux_ivar_w2_2Inverse variance of LC_FLUX_W2REAL
lc_flux_ivar_w2_3Inverse variance of LC_FLUX_W2REAL
lc_flux_ivar_w2_4Inverse variance of LC_FLUX_W2REAL
lc_flux_ivar_w2_5Inverse variance of LC_FLUX_W2REAL
lc_flux_w1_1FLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_flux_w1_2FLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_flux_w1_3FLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_flux_w1_4FLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_flux_w1_5FLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_flux_w2_1FLUX_W2 in each of up to five unWISE coadd epochsREAL
lc_flux_w2_2FLUX_W2 in each of up to five unWISE coadd epochsREAL
lc_flux_w2_3FLUX_W2 in each of up to five unWISE coadd epochsREAL
lc_flux_w2_4FLUX_W2 in each of up to five unWISE coadd epochsREAL
lc_flux_w2_5FLUX_W2 in each of up to five unWISE coadd epochsREAL
lc_fracflux_w1_1FRACFLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_fracflux_w1_2FRACFLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_fracflux_w1_3FRACFLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_fracflux_w1_4FRACFLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_fracflux_w1_5FRACFLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_fracflux_w2_1FRACFLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_fracflux_w2_2FRACFLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_fracflux_w2_3FRACFLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_fracflux_w2_4FRACFLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_fracflux_w2_5FRACFLUX_W1 in each of up to five unWISE coadd epochsREAL
lc_mjd_w1_1MJD_W1 in each of up to five unWISE coadd epochsREAL
lc_mjd_w1_2MJD_W1 in each of up to five unWISE coadd epochsREAL
lc_mjd_w1_3MJD_W1 in each of up to five unWISE coadd epochsREAL
lc_mjd_w1_4MJD_W1 in each of up to five unWISE coadd epochsREAL
lc_mjd_w1_5MJD_W1 in each of up to five unWISE coadd epochsREAL
lc_mjd_w2_1MJD_W2 in each of up to five unWISE coadd epochsREAL
lc_mjd_w2_2MJD_W2 in each of up to five unWISE coadd epochsREAL
lc_mjd_w2_3MJD_W2 in each of up to five unWISE coadd epochsREAL
lc_mjd_w2_4MJD_W2 in each of up to five unWISE coadd epochsREAL
lc_mjd_w2_5MJD_W2 in each of up to five unWISE coadd epochsREAL
lc_nobs_w1_1NOBS_W1 in each of five unWISE coadd epochsSMALLINT
lc_nobs_w1_2NOBS_W1 in each of five unWISE coadd epochsSMALLINT
lc_nobs_w1_3NOBS_W1 in each of five unWISE coadd epochsSMALLINT
lc_nobs_w1_4NOBS_W1 in each of five unWISE coadd epochsSMALLINT
lc_nobs_w1_5NOBS_W1 in each of five unWISE coadd epochsSMALLINT
lc_nobs_w2_1NOBS_W2 in each of five unWISE coadd epochsSMALLINT
lc_nobs_w2_2NOBS_W2 in each of five unWISE coadd epochsSMALLINT
lc_nobs_w2_3NOBS_W2 in each of five unWISE coadd epochsSMALLINT
lc_nobs_w2_4NOBS_W2 in each of five unWISE coadd epochsSMALLINT
lc_nobs_w2_5NOBS_W2 in each of five unWISE coadd epochsSMALLINT
lc_rchi2_w1_1RCHI2_W1 in each of up to five unWISE coadd epochsREAL
lc_rchi2_w1_2RCHI2_W1 in each of up to five unWISE coadd epochsREAL
lc_rchi2_w1_3RCHI2_W1 in each of up to five unWISE coadd epochsREAL
lc_rchi2_w1_4RCHI2_W1 in each of up to five unWISE coadd epochsREAL
lc_rchi2_w1_5RCHI2_W1 in each of up to five unWISE coadd epochsREAL
lc_rchi2_w2_1RCHI2_W2 in each of up to five unWISE coadd epochsREAL
lc_rchi2_w2_2RCHI2_W2 in each of up to five unWISE coadd epochsREAL
lc_rchi2_w2_3RCHI2_W2 in each of up to five unWISE coadd epochsREAL
lc_rchi2_w2_4RCHI2_W2 in each of up to five unWISE coadd epochsREAL
lc_rchi2_w2_5RCHI2_W2 in each of up to five unWISE coadd epochsREAL
mw_transmission_w1Galactic transmission in W1 filter in linear units [0,1]REAL
mw_transmission_w2Galactic transmission in W2 filter in linear units [0,1]REAL
mw_transmission_w3Galactic transmission in W3 filter in linear units [0,1]REAL
mw_transmission_w4Galactic transmission in W4 filter in linear units [0,1]REAL
nobs_w1Number of images that contribute to the central pixel in W1 filter for this object (not profile-weighted)SMALLINT
nobs_w2Number of images that contribute to the central pixel in W2 filter for this object (not profile-weighted)SMALLINT
nobs_w3Number of images that contribute to the central pixel in W3 filter for this object (not profile-weighted)SMALLINT
nobs_w4Number of images that contribute to the central pixel in W4 filter for this object (not profile-weighted)SMALLINT
objidCatalog object number within this brick; a unique identifier hash is BRICKID,OBJID; OBJID spans [0,N-1] and is contiguously enumerated within each blobINTEGER
rchi2_w1Profile-weighted chi^2 of model fit normalized by number of pixels in W1REAL
rchi2_w2Profile-weighted chi^2 of model fit normalized by number of pixels in W2REAL
rchi2_w3Profile-weighted chi^2 of model fit normalized by number of pixels in W3REAL
rchi2_w4Profile-weighted chi^2 of model fit normalized by number of pixels in W4REAL
ring256HEALPIX index (Nsides 256 => ~14 arcmin size)INTEGER