Epoch 1/10 Iteration: 100 Avg. Training loss: 5.6891 0.1088 sec/batch
Epoch 1/10 Iteration: 200 Avg. Training loss: 5.6334 0.0934 sec/batch
Epoch 1/10 Iteration: 300 Avg. Training loss: 5.5432 0.0937 sec/batch
Epoch 1/10 Iteration: 400 Avg. Training loss: 5.5787 0.0941 sec/batch
Epoch 1/10 Iteration: 500 Avg. Training loss: 5.5155 0.0944 sec/batch
Epoch 1/10 Iteration: 600 Avg. Training loss: 5.4960 0.0941 sec/batch
Epoch 1/10 Iteration: 700 Avg. Training loss: 5.5417 0.0956 sec/batch
Epoch 1/10 Iteration: 800 Avg. Training loss: 5.5279 0.0982 sec/batch
Epoch 1/10 Iteration: 900 Avg. Training loss: 5.4516 0.0993 sec/batch
Epoch 1/10 Iteration: 1000 Avg. Training loss: 5.4319 0.1032 sec/batch
Nearest to was: oriole, ang, orthogonality, emitters, coop, triad, frere, dissected,
Nearest to other: darwin, flatness, pared, desmo, inaugurate, fedex, subtract, artemus,
Nearest to five: exploitable, indeterminate, plautdietsch, transient, code, sam, bon, vases,
Nearest to that: vetoed, winding, armalite, widen, recurring, botswana, hardened, souq,
Nearest to of: steak, invulnerable, centrioles, bevel, kto, diverging, british, mps,
Nearest to see: annually, quarks, precipitating, telugu, hispanica, catchment, familia, orbitals,
Nearest to when: limfjord, decarlo, pearls, chu, westbrook, ten, facchetti, unravel,
Nearest to will: execute, bramble, wanderers, zhu, pk, entail, gangster, embarking,
Nearest to pressure: lessons, offences, metropolitan, baptized, nuisances, fencing, soda, negroids,
Nearest to stage: karnstein, morissette, communicates, rutles, inanimate, evolutionary, basque, beliefs,
Nearest to ice: cryptographically, saluting, smithson, awkward, khomeini, luoyang, arica, erotic,
Nearest to discovered: triplet, intentionality, mh, reliefs, rostra, botched, mukti, cenozoic,
Nearest to know: uematsu, unknowns, darkens, elephant, pangloss, icbm, repaid, qumran,
Nearest to police: championships, perceptions, urge, dehydrogenase, mooted, concepts, plasmid, ldskaparm,
Nearest to numerous: lulu, jardines, nomad, gauls, nde, deterioration, wagnerites, regent,
Nearest to road: brice, sultanates, marbled, showa, spi, hymn, jagan, perrin,
Epoch 1/10 Iteration: 1100 Avg. Training loss: 5.4890 0.1059 sec/batch
Epoch 1/10 Iteration: 1200 Avg. Training loss: 5.3843 0.1068 sec/batch
Epoch 1/10 Iteration: 1300 Avg. Training loss: 5.3124 0.1085 sec/batch
Epoch 1/10 Iteration: 1400 Avg. Training loss: 5.2498 0.1081 sec/batch
Epoch 1/10 Iteration: 1500 Avg. Training loss: 5.1537 0.1093 sec/batch
Epoch 1/10 Iteration: 1600 Avg. Training loss: 5.1510 0.1089 sec/batch
Epoch 1/10 Iteration: 1700 Avg. Training loss: 5.0721 0.1133 sec/batch
Epoch 1/10 Iteration: 1800 Avg. Training loss: 5.0640 0.1114 sec/batch
Epoch 1/10 Iteration: 1900 Avg. Training loss: 5.0124 0.1106 sec/batch
Epoch 1/10 Iteration: 2000 Avg. Training loss: 4.9559 0.1115 sec/batch
Nearest to was: outside, oriole, orthogonality, ang, triad, frere, stared, dissected,
Nearest to other: darwin, flatness, problematic, dimensions, subtract, discuss, this, pared,
Nearest to five: indeterminate, exploitable, transient, code, sam, bon, scientists, six,
Nearest to that: achieve, vetoed, winding, widen, recurring, selection, the, hardened,
Nearest to of: steak, proposed, hosting, invulnerable, racial, usage, centrioles, joint,
Nearest to see: annually, hispanica, quarks, telugu, catchment, madrid, precipitating, upgrading,
Nearest to when: ten, no, chu, decarlo, unravel, arbitrary, limfjord, her,
Nearest to will: execute, bramble, drama, entail, pk, tipu, numerals, absorbed,
Nearest to pressure: lessons, metropolitan, soda, offences, sportsmen, distributing, fencing, mori,
Nearest to stage: karnstein, evolutionary, beliefs, morissette, rutles, inanimate, music, communicates,
Nearest to ice: footballing, erotic, booth, indexes, awkward, isdb, smithson, saluting,
Nearest to discovered: intentionality, triplet, mh, botched, reliefs, cenozoic, cos, norris,
Nearest to know: unknowns, uematsu, darkens, elephant, conquer, icbm, repaid, lucille,
Nearest to police: championships, concepts, rebels, perceptions, urge, lightsabers, thanks, dehydrogenase,
Nearest to numerous: gauls, pro, intensity, longest, attacked, replaced, regent, digits,
Nearest to road: sultanates, brice, perrin, hymn, marbled, showa, bain, corresponding,
Epoch 1/10 Iteration: 2100 Avg. Training loss: 4.8987 0.1131 sec/batch
Epoch 1/10 Iteration: 2200 Avg. Training loss: 4.9109 0.1140 sec/batch
Epoch 1/10 Iteration: 2300 Avg. Training loss: 4.8668 0.1124 sec/batch
Epoch 1/10 Iteration: 2400 Avg. Training loss: 4.8657 0.1119 sec/batch
Epoch 1/10 Iteration: 2500 Avg. Training loss: 4.8103 0.1122 sec/batch
Epoch 1/10 Iteration: 2600 Avg. Training loss: 4.8269 0.1126 sec/batch
Epoch 1/10 Iteration: 2700 Avg. Training loss: 4.7727 0.1117 sec/batch
Epoch 1/10 Iteration: 2800 Avg. Training loss: 4.7871 0.1120 sec/batch
Epoch 1/10 Iteration: 2900 Avg. Training loss: 4.7637 0.1137 sec/batch
Epoch 1/10 Iteration: 3000 Avg. Training loss: 4.7702 0.1139 sec/batch
Nearest to was: triad, ang, outside, orthogonality, oriole, emitters, walks, stared,
Nearest to other: darwin, problematic, pared, flatness, dimensions, inaugurate, subtract, fedex,
Nearest to five: exploitable, six, transient, indeterminate, bon, sam, openly, song,
Nearest to that: achieve, vetoed, winding, widen, joins, selection, hardened, utilise,
Nearest to of: steak, mps, usage, hosting, racial, heated, invulnerable, solids,
Nearest to see: annually, quarks, hispanica, telugu, catchment, precipitating, announcing, upgrading,
Nearest to when: ten, chu, unravel, westbrook, decarlo, manor, her, pearls,
Nearest to will: execute, urged, entail, bramble, recalls, tipu, drama, numerals,
Nearest to pressure: lessons, soda, fencing, offences, metropolitan, together, baby, distributing,
Nearest to stage: evolutionary, communicates, beliefs, karnstein, inanimate, rutles, morissette, lexicon,
Nearest to ice: erotic, indexes, booth, footballing, isdb, awkward, saluting, conservative,
Nearest to discovered: triplet, intentionality, mh, cenozoic, norris, botched, elixir, reliefs,
Nearest to know: unknowns, uematsu, darkens, conquer, icbm, elephant, pangloss, qumran,
Nearest to police: championships, perceptions, rebels, urge, thanks, percent, concepts, create,
Nearest to numerous: gauls, intensity, orderly, digits, pro, lulu, nomad, nde,
Nearest to road: brice, showa, sultanates, marbled, perrin, hymn, bain, spi,
Epoch 1/10 Iteration: 3100 Avg. Training loss: 4.7720 0.1157 sec/batch
Epoch 1/10 Iteration: 3200 Avg. Training loss: 4.7402 0.1148 sec/batch
Epoch 1/10 Iteration: 3300 Avg. Training loss: 4.7157 0.1145 sec/batch
Epoch 1/10 Iteration: 3400 Avg. Training loss: 4.6994 0.1149 sec/batch
Epoch 1/10 Iteration: 3500 Avg. Training loss: 4.7672 0.1169 sec/batch
Epoch 1/10 Iteration: 3600 Avg. Training loss: 4.6969 0.1130 sec/batch
Epoch 1/10 Iteration: 3700 Avg. Training loss: 4.7001 0.1129 sec/batch
Epoch 1/10 Iteration: 3800 Avg. Training loss: 4.7206 0.1147 sec/batch
Epoch 1/10 Iteration: 3900 Avg. Training loss: 4.6957 0.1153 sec/batch
Epoch 1/10 Iteration: 4000 Avg. Training loss: 4.6945 0.1131 sec/batch
Nearest to was: triad, ang, emitters, orthogonality, shehu, oriole, outside, rogers,
Nearest to other: darwin, flatness, pared, problematic, inaugurate, frail, fedex, dimensions,
Nearest to five: six, nine, three, exploitable, seven, bon, births, vases,
Nearest to that: achieve, vetoed, widen, winding, utilise, selection, joins, xy,
Nearest to of: steak, mps, usage, racial, discernible, disregarding, invulnerable, pragmatism,
Nearest to see: annually, quarks, hispanica, telugu, catchment, upgrading, precipitating, announcing,
Nearest to when: obtainable, manor, westbrook, chu, pearls, unravel, limfjord, chronicles,
Nearest to will: execute, urged, entail, numerals, wop, recalls, browsers, tipu,
Nearest to pressure: lessons, soda, fencing, together, baptized, offences, metropolitan, sportsmen,
Nearest to stage: communicates, karnstein, evolutionary, inanimate, rutles, beliefs, morissette, lexicon,
Nearest to ice: erotic, booth, indexes, cryptographically, sharps, saluting, footballing, awkward,
Nearest to discovered: triplet, mh, intentionality, cenozoic, elixir, reliefs, botched, cos,
Nearest to know: unknowns, uematsu, darkens, icbm, quetzal, qumran, moench, pangloss,
Nearest to police: perceptions, championships, urge, rebels, percent, thanks, advocated, vitae,
Nearest to numerous: lulu, nomad, wagnerites, jardines, gauls, orderly, tripled, nubia,
Nearest to road: brice, sultanates, showa, marbled, hymn, perrin, bain, spi,
Epoch 1/10 Iteration: 4100 Avg. Training loss: 4.6789 0.1148 sec/batch
Epoch 1/10 Iteration: 4200 Avg. Training loss: 4.6640 0.1145 sec/batch
Epoch 1/10 Iteration: 4300 Avg. Training loss: 4.6245 0.1153 sec/batch
Epoch 1/10 Iteration: 4400 Avg. Training loss: 4.6234 0.1154 sec/batch
Epoch 1/10 Iteration: 4500 Avg. Training loss: 4.6308 0.1153 sec/batch
Epoch 1/10 Iteration: 4600 Avg. Training loss: 4.6310 0.1158 sec/batch
Epoch 2/10 Iteration: 4700 Avg. Training loss: 4.5858 0.0848 sec/batch
Epoch 2/10 Iteration: 4800 Avg. Training loss: 4.5575 0.1149 sec/batch
Epoch 2/10 Iteration: 4900 Avg. Training loss: 4.5169 0.1135 sec/batch
Epoch 2/10 Iteration: 5000 Avg. Training loss: 4.5159 0.1155 sec/batch
Nearest to was: triad, ang, emitters, orthogonality, shehu, king, oriole, instructed,
Nearest to other: darwin, pared, inaugurate, flatness, donatello, problematic, dimensions, this,
Nearest to five: six, nine, three, seven, one, births, bon, exploitable,
Nearest to that: achieve, utilise, selection, vetoed, armalite, widen, hardened, winding,
Nearest to of: steak, mps, usage, discernible, racial, disregarding, invulnerable, pilgrims,
Nearest to see: annually, hispanica, quarks, catchment, telugu, precipitating, upgrading, orbitals,
Nearest to when: obtainable, manor, protozoa, saba, westbrook, her, unravel, limfjord,
Nearest to will: execute, entail, urged, wop, tipu, brands, pk, numerals,
Nearest to pressure: soda, lessons, nameplate, together, fencing, baptized, replicators, coucy,
Nearest to stage: communicates, rutles, karnstein, inanimate, dampier, morissette, evolutionary, lexicon,
Nearest to ice: erotic, sharps, cryptographically, saluting, booth, indexes, isdb, khomeini,
Nearest to discovered: triplet, mh, intentionality, cenozoic, cos, elixir, reliefs, macau,
Nearest to know: unknowns, darkens, uematsu, icbm, qumran, quetzal, perennials, moench,
Nearest to police: perceptions, urge, confederacy, championships, percent, rebels, admirals, mooted,
Nearest to numerous: wagnerites, nomad, lulu, gauls, jardines, nde, ipx, carnal,
Nearest to road: brice, showa, sultanates, marbled, hymn, perrin, jagan, japanese,
Epoch 2/10 Iteration: 5100 Avg. Training loss: 4.5068 0.1159 sec/batch
Epoch 2/10 Iteration: 5200 Avg. Training loss: 4.4789 0.1139 sec/batch
Epoch 2/10 Iteration: 5300 Avg. Training loss: 4.4497 0.1133 sec/batch
Epoch 2/10 Iteration: 5400 Avg. Training loss: 4.5353 0.1146 sec/batch
Epoch 2/10 Iteration: 5500 Avg. Training loss: 4.4948 0.1146 sec/batch
Epoch 2/10 Iteration: 5600 Avg. Training loss: 4.5022 0.1153 sec/batch
Epoch 2/10 Iteration: 5700 Avg. Training loss: 4.4712 0.1170 sec/batch
Epoch 2/10 Iteration: 5800 Avg. Training loss: 4.3892 0.1149 sec/batch
Epoch 2/10 Iteration: 5900 Avg. Training loss: 4.4349 0.1159 sec/batch
Epoch 2/10 Iteration: 6000 Avg. Training loss: 4.4252 0.1153 sec/batch
Nearest to was: triad, ang, emitters, litters, oriole, dedicating, orthogonality, shehu,
Nearest to other: darwin, pared, problematic, dimensions, this, inaugurate, donatello, subtract,
Nearest to five: six, nine, three, seven, rate, births, cassidy, est,
Nearest to that: achieve, xy, utilise, contradiction, selection, armalite, winding, vetoed,
Nearest to of: steak, usage, discernible, racial, disregarding, mps, invulnerable, deducted,
Nearest to see: annually, quarks, catchment, telugu, hispanica, precipitating, orbitals, upgrading,
Nearest to when: obtainable, protozoa, saba, westbrook, gets, electrician, limfjord, ten,
Nearest to will: execute, entail, urged, wop, immortality, pk, tipu, brands,
Nearest to pressure: soda, nameplate, together, counteract, coucy, metrology, replicators, window,
Nearest to stage: communicates, karnstein, dampier, rutles, inanimate, morissette, lexicon, evolutionary,
Nearest to ice: erotic, cryptographically, sharps, saluting, smithson, indexes, booth, isdb,
Nearest to discovered: mh, triplet, cos, elixir, intentionality, cenozoic, noaa, spheres,
Nearest to know: unknowns, darkens, uematsu, icbm, qumran, perennials, quetzal, moench,
Nearest to police: urge, confederacy, perceptions, percent, rebels, championships, mpi, admirals,
Nearest to numerous: wagnerites, jardines, lulu, pugwash, gauls, ipx, carnal, nomad,
Nearest to road: brice, showa, sultanates, marbled, hymn, jagan, japanese, bain,
Epoch 2/10 Iteration: 6100 Avg. Training loss: 4.4601 0.1172 sec/batch
Epoch 2/10 Iteration: 6200 Avg. Training loss: 4.4081 0.1152 sec/batch
Epoch 2/10 Iteration: 6300 Avg. Training loss: 4.4576 0.1160 sec/batch
Epoch 2/10 Iteration: 6400 Avg. Training loss: 4.4100 0.1156 sec/batch
Epoch 2/10 Iteration: 6500 Avg. Training loss: 4.4060 0.1150 sec/batch
Epoch 2/10 Iteration: 6600 Avg. Training loss: 4.4299 0.1133 sec/batch
Epoch 2/10 Iteration: 6700 Avg. Training loss: 4.3690 0.1145 sec/batch
Epoch 2/10 Iteration: 6800 Avg. Training loss: 4.3757 0.1151 sec/batch
Epoch 2/10 Iteration: 6900 Avg. Training loss: 4.4007 0.1146 sec/batch
Epoch 2/10 Iteration: 7000 Avg. Training loss: 4.3536 0.1149 sec/batch
Nearest to was: triad, ang, dedicating, him, shehu, litters, king, frere,
Nearest to other: this, darwin, problematic, pared, inaugurate, insertion, subtract, dimensions,
Nearest to five: six, nine, three, seven, one, two, births, cassidy,
Nearest to that: achieve, xy, utilise, selection, contradiction, particular, armalite, vetoed,
Nearest to of: steak, usage, discernible, disregarding, mps, invulnerable, deducted, pilgrims,
Nearest to see: hispanica, catchment, references, quarks, orbitals, telugu, annually, hagar,
Nearest to when: obtainable, protozoa, barbiturate, westbrook, saba, gets, her, ten,
Nearest to will: execute, entail, dyeing, urged, wop, pk, brands, tipu,
Nearest to pressure: soda, bicarbonate, counteract, nameplate, preserves, replicators, together, metrology,
Nearest to stage: communicates, dampier, karnstein, rutles, morissette, inanimate, lexicon, music,
Nearest to ice: erotic, cryptographically, sharps, saluting, smithson, indexes, isdb, booth,
Nearest to discovered: triplet, mh, cenozoic, elixir, cos, spheres, animaniacs, noaa,
Nearest to know: unknowns, darkens, uematsu, perennials, icbm, qumran, moench, quetzal,
Nearest to police: confederacy, urge, mooted, mpi, rebels, admirals, percent, ldskaparm,
Nearest to numerous: wagnerites, ipx, gauls, orderly, jardines, carnal, ibiblio, pugwash,
Nearest to road: showa, brice, marbled, sultanates, jagan, hymn, japanese, iata,
Epoch 2/10 Iteration: 7100 Avg. Training loss: 4.3559 0.1155 sec/batch
Epoch 2/10 Iteration: 7200 Avg. Training loss: 4.3913 0.1132 sec/batch
Epoch 2/10 Iteration: 7300 Avg. Training loss: 4.3716 0.1142 sec/batch
Epoch 2/10 Iteration: 7400 Avg. Training loss: 4.3591 0.1153 sec/batch
Epoch 2/10 Iteration: 7500 Avg. Training loss: 4.3860 0.1142 sec/batch
Epoch 2/10 Iteration: 7600 Avg. Training loss: 4.3500 0.1142 sec/batch
Epoch 2/10 Iteration: 7700 Avg. Training loss: 4.3772 0.1151 sec/batch
Epoch 2/10 Iteration: 7800 Avg. Training loss: 4.3517 0.1164 sec/batch
Epoch 2/10 Iteration: 7900 Avg. Training loss: 4.3446 0.1166 sec/batch
Epoch 2/10 Iteration: 8000 Avg. Training loss: 4.3193 0.1151 sec/batch
Nearest to was: triad, ang, dedicating, king, shehu, meanwhile, frere, him,
Nearest to other: this, darwin, pared, problematic, objectors, insertion, inaugurate, prescriptive,
Nearest to five: six, three, nine, seven, one, two, zero, births,
Nearest to that: contradiction, xy, achieve, utilise, vetoed, armalite, particular, deny,
Nearest to of: steak, mps, ambassadorial, disregarding, proposed, usage, pilgrims, deducted,
Nearest to see: references, telugu, hagar, annually, wastage, hispanica, catchment, upgrading,
Nearest to when: westbrook, insertions, saba, barbiturate, electrician, protozoa, her, pearls,
Nearest to will: execute, entail, urged, brands, wop, dyeing, tipu, hear,
Nearest to pressure: soda, bicarbonate, counteract, nameplate, moisture, coucy, flow, metrology,
Nearest to stage: communicates, dampier, karnstein, rutles, inanimate, morissette, lexicon, walkers,
Nearest to ice: cryptographically, erotic, sharps, saluting, isdb, hollows, smithson, booth,
Nearest to discovered: triplet, mh, cenozoic, elixir, cos, quantum, craters, animaniacs,
Nearest to know: unknowns, darkens, perennials, icbm, uematsu, qumran, moench, canine,
Nearest to police: confederacy, urge, rebels, mooted, mpi, percent, jimbo, advocated,
Nearest to numerous: wagnerites, ipx, gauls, tripled, carnal, pugwash, jardines, orderly,
Nearest to road: showa, brice, marbled, sultanates, iata, jagan, city, japanese,
Epoch 2/10 Iteration: 8100 Avg. Training loss: 4.3598 0.1167 sec/batch
Epoch 2/10 Iteration: 8200 Avg. Training loss: 4.3096 0.1150 sec/batch
Epoch 2/10 Iteration: 8300 Avg. Training loss: 4.3506 0.1143 sec/batch
Epoch 2/10 Iteration: 8400 Avg. Training loss: 4.3510 0.1145 sec/batch
Epoch 2/10 Iteration: 8500 Avg. Training loss: 4.3908 0.1141 sec/batch
Epoch 2/10 Iteration: 8600 Avg. Training loss: 4.3175 0.1144 sec/batch
Epoch 2/10 Iteration: 8700 Avg. Training loss: 4.3045 0.1142 sec/batch
Epoch 2/10 Iteration: 8800 Avg. Training loss: 4.3518 0.1147 sec/batch
Epoch 2/10 Iteration: 8900 Avg. Training loss: 4.2228 0.1157 sec/batch
Epoch 2/10 Iteration: 9000 Avg. Training loss: 4.3143 0.1145 sec/batch
Nearest to was: triad, ang, instructed, dedicating, him, king, shehu, first,
Nearest to other: this, pared, darwin, problematic, insertion, inaugurate, lessened, objectors,
Nearest to five: six, nine, three, seven, one, two, zero, eight,
Nearest to that: xy, contradiction, vetoed, willing, armalite, utilise, achieve, explaining,
Nearest to of: ambassadorial, steak, mps, disregarding, stipend, appointment, pilgrims, racial,
Nearest to see: references, catchment, hispanica, wastage, annually, legalize, hagar, telugu,
Nearest to when: electrician, her, westbrook, solace, barbiturate, gets, protozoa, his,
Nearest to will: execute, entail, urged, brands, dyeing, wop, keep, windmills,
Nearest to pressure: soda, bicarbonate, flow, counteract, moisture, coucy, heat, cavanagh,
Nearest to stage: communicates, karnstein, dampier, rutles, inanimate, morissette, music, walkers,
Nearest to ice: erotic, sharps, cryptographically, hollows, isdb, saluting, booth, smithson,
Nearest to discovered: triplet, mh, elixir, cenozoic, craters, quantum, reliefs, cos,
Nearest to know: unknowns, darkens, perennials, said, qumran, uematsu, moench, icbm,
Nearest to police: rebels, confederacy, percent, urge, mpi, mooted, jimbo, thanks,
Nearest to numerous: wagnerites, ipx, tripled, pugwash, jardines, ibiblio, gauls, carnal,
Nearest to road: brice, showa, marbled, sultanates, iata, jagan, city, hymn,
Epoch 2/10 Iteration: 9100 Avg. Training loss: 4.3267 0.1168 sec/batch
Epoch 2/10 Iteration: 9200 Avg. Training loss: 4.2976 0.1136 sec/batch
Epoch 3/10 Iteration: 9300 Avg. Training loss: 4.3359 0.0530 sec/batch
Epoch 3/10 Iteration: 9400 Avg. Training loss: 4.2578 0.1140 sec/batch
Epoch 3/10 Iteration: 9500 Avg. Training loss: 4.2273 0.1129 sec/batch
Epoch 3/10 Iteration: 9600 Avg. Training loss: 4.1971 0.1126 sec/batch
Epoch 3/10 Iteration: 9700 Avg. Training loss: 4.2350 0.1127 sec/batch
Epoch 3/10 Iteration: 9800 Avg. Training loss: 4.2074 0.1140 sec/batch
Epoch 3/10 Iteration: 9900 Avg. Training loss: 4.2040 0.1147 sec/batch
Epoch 3/10 Iteration: 10000 Avg. Training loss: 4.1992 0.1146 sec/batch
Nearest to was: triad, ang, him, were, meanwhile, first, dedicating, instructed,
Nearest to other: pared, darwin, this, problematic, inaugurate, insertion, lessened, heterogeneity,
Nearest to five: six, three, nine, seven, two, one, zero, eight,
Nearest to that: xy, vetoed, utilise, ufa, achieve, explaining, expectations, particular,
Nearest to of: steak, stipend, powers, appointment, mps, disregarding, ambassadorial, borja,
Nearest to see: references, catchment, hispanica, wastage, telugu, commutes, meta, hagar,
Nearest to when: electrician, westbrook, her, gets, his, solace, protozoa, saba,
Nearest to will: execute, entail, urged, keep, hear, numb, litigation, brands,
Nearest to pressure: soda, bicarbonate, flow, moisture, counteract, heat, coucy, metrology,
Nearest to stage: communicates, karnstein, dampier, inanimate, rutles, morissette, music, walkers,
Nearest to ice: sharps, cryptographically, erotic, hollows, smithson, saluting, booth, isdb,
Nearest to discovered: triplet, elixir, craters, noaa, quantum, cenozoic, mh, ancestor,
Nearest to know: unknowns, darkens, perennials, qumran, moench, said, canine, uematsu,
Nearest to police: urge, rebels, confederacy, mooted, mpi, jimbo, percent, advocated,
Nearest to numerous: wagnerites, ipx, tripled, pugwash, gauls, jardines, carnal, infrequently,
Nearest to road: marbled, brice, iata, city, showa, jagan, hymn, hindustan,
Epoch 3/10 Iteration: 10100 Avg. Training loss: 4.2493 0.1159 sec/batch
Epoch 3/10 Iteration: 10200 Avg. Training loss: 4.2241 0.1154 sec/batch
Epoch 3/10 Iteration: 10300 Avg. Training loss: 4.2297 0.1152 sec/batch
Epoch 3/10 Iteration: 10400 Avg. Training loss: 4.1408 0.1164 sec/batch
Epoch 3/10 Iteration: 10500 Avg. Training loss: 4.1739 0.1153 sec/batch
Epoch 3/10 Iteration: 10600 Avg. Training loss: 4.1671 0.1148 sec/batch
Epoch 3/10 Iteration: 10700 Avg. Training loss: 4.1815 0.1150 sec/batch
Epoch 3/10 Iteration: 10800 Avg. Training loss: 4.1831 0.1154 sec/batch
Epoch 3/10 Iteration: 10900 Avg. Training loss: 4.1962 0.1158 sec/batch
Epoch 3/10 Iteration: 11000 Avg. Training loss: 4.1527 0.1170 sec/batch
Nearest to was: triad, ang, dedicating, him, instructed, first, litters, were,
Nearest to other: pared, this, darwin, problematic, insertion, encompasses, practised, marva,
Nearest to five: six, three, nine, two, seven, one, zero, eight,
Nearest to that: xy, explaining, particular, telomerase, deny, expectations, contradiction, ufa,
Nearest to of: steak, mps, stipend, diverging, disregarding, formalism, ambassadorial, heated,
Nearest to see: references, catchment, links, commutes, wastage, meta, pell, hispanica,
Nearest to when: westbrook, gets, electrician, protozoa, insertions, his, barbiturate, solace,
Nearest to will: execute, entail, hear, urged, dyeing, numb, keep, entrance,
Nearest to pressure: soda, bicarbonate, flow, heat, counteract, moisture, refrigeration, metrology,
Nearest to stage: communicates, karnstein, dampier, inanimate, rutles, walkers, morissette, jamison,
Nearest to ice: cryptographically, sharps, erotic, hollows, saluting, isdb, smithson, booth,
Nearest to discovered: triplet, noaa, craters, elixir, quantum, macau, cenozoic, ancestor,
Nearest to know: unknowns, darkens, qumran, perennials, said, moench, asserting, canine,
Nearest to police: jimbo, urge, mooted, mpi, confederacy, rebels, vitae, percent,
Nearest to numerous: wagnerites, ipx, tripled, jardines, orderly, pugwash, gauls, ibiblio,
Nearest to road: city, marbled, brice, iata, jagan, showa, hymn, hindustan,
Epoch 3/10 Iteration: 11100 Avg. Training loss: 4.1786 0.1162 sec/batch
Epoch 3/10 Iteration: 11200 Avg. Training loss: 4.2127 0.1147 sec/batch
Epoch 3/10 Iteration: 11300 Avg. Training loss: 4.1613 0.1134 sec/batch
Epoch 3/10 Iteration: 11400 Avg. Training loss: 4.1555 0.1154 sec/batch
Epoch 3/10 Iteration: 11500 Avg. Training loss: 4.1992 0.1146 sec/batch
Epoch 3/10 Iteration: 11600 Avg. Training loss: 4.1976 0.1156 sec/batch
Epoch 3/10 Iteration: 11700 Avg. Training loss: 4.2015 0.1137 sec/batch
Epoch 3/10 Iteration: 11800 Avg. Training loss: 4.1561 0.1134 sec/batch
Epoch 3/10 Iteration: 11900 Avg. Training loss: 4.1383 0.1140 sec/batch
Epoch 3/10 Iteration: 12000 Avg. Training loss: 4.2002 0.1138 sec/batch
Nearest to was: triad, ang, dedicating, him, first, instructed, meanwhile, his,
Nearest to other: pared, this, darwin, insertion, regional, heterogeneity, objectors, problematic,
Nearest to five: six, three, nine, two, seven, one, zero, eight,
Nearest to that: xy, explaining, particular, contradiction, deny, iterate, telomerase, false,
Nearest to of: powers, stipend, calculating, mps, appointment, cumulative, formalism, glick,
Nearest to see: references, links, catchment, meta, wastage, commutes, telugu, hispanica,
Nearest to when: westbrook, her, electrician, protozoa, gets, insertions, barbiturate, his,
Nearest to will: execute, entail, resonator, hear, numb, stub, urged, pulled,
Nearest to pressure: soda, flow, bicarbonate, counteract, heat, moisture, metrology, cavanagh,
Nearest to stage: communicates, dampier, karnstein, inanimate, rutles, walkers, jamison, morissette,
Nearest to ice: cryptographically, sharps, erotic, panes, hollows, saluting, booth, smithson,
Nearest to discovered: triplet, craters, cenozoic, noaa, ancestor, elixir, quantum, macau,
Nearest to know: unknowns, darkens, perennials, moench, canine, qumran, said, stranger,
Nearest to police: jimbo, urge, confederacy, rebels, mooted, mpi, vitae, withstanding,
Nearest to numerous: wagnerites, ipx, ibiblio, pugwash, gauls, tripled, venerated, infrequently,
Nearest to road: iata, city, marbled, jagan, brice, showa, outro, hymn,
Epoch 3/10 Iteration: 12100 Avg. Training loss: 4.1917 0.1156 sec/batch
Epoch 3/10 Iteration: 12200 Avg. Training loss: 4.1614 0.1135 sec/batch
Epoch 3/10 Iteration: 12300 Avg. Training loss: 4.1774 0.1131 sec/batch
Epoch 3/10 Iteration: 12400 Avg. Training loss: 4.1901 0.1143 sec/batch
Epoch 3/10 Iteration: 12500 Avg. Training loss: 4.1416 0.1167 sec/batch
Epoch 3/10 Iteration: 12600 Avg. Training loss: 4.1335 0.1148 sec/batch
Epoch 3/10 Iteration: 12700 Avg. Training loss: 4.1709 0.1157 sec/batch
Epoch 3/10 Iteration: 12800 Avg. Training loss: 4.1290 0.1155 sec/batch
Epoch 3/10 Iteration: 12900 Avg. Training loss: 4.2090 0.1140 sec/batch
Epoch 3/10 Iteration: 13000 Avg. Training loss: 4.2031 0.1142 sec/batch
Nearest to was: triad, first, him, his, were, ang, dedicating, instructed,
Nearest to other: pared, this, objectors, darwin, regional, practised, insertion, customization,
Nearest to five: six, three, one, nine, seven, two, zero, four,
Nearest to that: deny, vetoed, jutish, xy, explaining, overseeing, trusted, restitution,
Nearest to of: stipend, galway, one, ambassadorial, appointment, mps, powers, s,
Nearest to see: references, links, wastage, meta, relating, immigrant, revoked, pell,
Nearest to when: westbrook, solace, her, electrician, gets, his, thoroughbreds, insertions,
Nearest to will: execute, urged, numb, entail, hear, discretion, keep, pulled,
Nearest to pressure: flow, soda, heat, counteract, bicarbonate, moisture, cavanagh, refrigeration,
Nearest to stage: communicates, dampier, karnstein, rutles, inanimate, morissette, jamison, walkers,
Nearest to ice: cryptographically, sharps, erotic, booth, saluting, hollows, panes, foothills,
Nearest to discovered: triplet, craters, macau, cenozoic, noaa, ancestor, elixir, quantum,
Nearest to know: unknowns, darkens, perennials, moench, canine, said, qumran, stranger,
Nearest to police: jimbo, urge, mooted, confederacy, rebels, perjury, withstanding, mpi,
Nearest to numerous: wagnerites, ipx, ibiblio, jardines, infrequently, pugwash, orderly, tripled,
Nearest to road: marbled, city, brice, iata, jagan, showa, hindustan, hymn,
Epoch 3/10 Iteration: 13100 Avg. Training loss: 4.2364 0.1161 sec/batch
Epoch 3/10 Iteration: 13200 Avg. Training loss: 4.1203 0.1139 sec/batch
Epoch 3/10 Iteration: 13300 Avg. Training loss: 4.1397 0.1142 sec/batch
Epoch 3/10 Iteration: 13400 Avg. Training loss: 4.1490 0.1150 sec/batch
Epoch 3/10 Iteration: 13500 Avg. Training loss: 4.0302 0.1132 sec/batch
Epoch 3/10 Iteration: 13600 Avg. Training loss: 4.1389 0.1148 sec/batch
Epoch 3/10 Iteration: 13700 Avg. Training loss: 4.1410 0.1149 sec/batch
Epoch 3/10 Iteration: 13800 Avg. Training loss: 4.1479 0.1149 sec/batch
Epoch 4/10 Iteration: 13900 Avg. Training loss: 4.1706 0.0220 sec/batch
Epoch 4/10 Iteration: 14000 Avg. Training loss: 4.1109 0.1133 sec/batch
Nearest to was: triad, first, dedicating, him, were, instructed, ang, his,
Nearest to other: pared, this, customization, heterogeneity, problematic, regional, darwin, happenings,
Nearest to five: six, three, one, nine, two, seven, zero, four,
Nearest to that: xy, booked, explaining, overseeing, telomerase, false, vetoed, deny,
Nearest to of: galway, ambassadorial, powers, mass, mps, borja, engraving, borders,
Nearest to see: references, links, catchment, hispanica, meta, wastage, francophone, relating,
Nearest to when: westbrook, solace, gets, electrician, insertions, his, thoroughbreds, protozoa,
Nearest to will: urged, execute, keep, numb, entail, pulled, discretion, dyeing,
Nearest to pressure: flow, soda, heat, bicarbonate, counteract, cavanagh, refrigeration, weightings,
Nearest to stage: communicates, inanimate, karnstein, rutles, dampier, walkers, jamison, tunable,
Nearest to ice: sharps, cryptographically, hollows, erotic, saluting, maas, tundra, booth,
Nearest to discovered: triplet, craters, noaa, ancestor, quantum, elixir, cenozoic, macau,
Nearest to know: unknowns, darkens, moench, said, perennials, canine, ostriches, our,
Nearest to police: jimbo, urge, mooted, perjury, vitae, rebels, confederacy, thanks,
Nearest to numerous: wagnerites, ipx, pugwash, ibiblio, infrequently, jardines, tripled, venerated,
Nearest to road: marbled, city, brice, iata, jagan, hindustan, benitez, hymn,
Epoch 4/10 Iteration: 14100 Avg. Training loss: 4.0721 0.1157 sec/batch
Epoch 4/10 Iteration: 14200 Avg. Training loss: 4.0685 0.1130 sec/batch
Epoch 4/10 Iteration: 14300 Avg. Training loss: 4.0767 0.1132 sec/batch
Epoch 4/10 Iteration: 14400 Avg. Training loss: 4.0621 0.1144 sec/batch
Epoch 4/10 Iteration: 14500 Avg. Training loss: 4.0982 0.1139 sec/batch
Epoch 4/10 Iteration: 14600 Avg. Training loss: 4.0193 0.1133 sec/batch
Epoch 4/10 Iteration: 14700 Avg. Training loss: 4.1136 0.1133 sec/batch
Epoch 4/10 Iteration: 14800 Avg. Training loss: 4.0825 0.1150 sec/batch
Epoch 4/10 Iteration: 14900 Avg. Training loss: 4.1054 0.1163 sec/batch
Epoch 4/10 Iteration: 15000 Avg. Training loss: 4.0130 0.1149 sec/batch
Nearest to was: triad, were, first, his, dedicating, him, improvements, ang,
Nearest to other: pared, this, practised, customization, regional, heterogeneity, problematic, insertion,
Nearest to five: six, three, one, two, nine, seven, zero, four,
Nearest to that: xy, telomerase, false, overseeing, restitution, deny, booked, sinning,
Nearest to of: stipend, galway, powers, situated, sights, borja, mps, mass,
Nearest to see: references, links, catchment, meta, hispanica, wastage, relating, pell,
Nearest to when: his, gets, solace, westbrook, electrician, her, fling, puberty,
Nearest to will: urged, pulled, keep, numb, execute, stub, perpetuity, dyeing,
Nearest to pressure: flow, soda, heat, bicarbonate, counteract, refrigeration, prolong, weightings,
Nearest to stage: communicates, inanimate, karnstein, dampier, rutles, walkers, jamison, tunable,
Nearest to ice: sharps, cryptographically, booth, erotic, hollows, panes, maas, tundra,
Nearest to discovered: triplet, noaa, craters, quantum, ancestor, outcrops, elixir, detectors,
Nearest to know: unknowns, darkens, perennials, said, qumran, our, canine, stranger,
Nearest to police: jimbo, urge, mooted, withstanding, dehydrogenase, vitae, mpi, perjury,
Nearest to numerous: wagnerites, ipx, pugwash, ibiblio, infrequently, orderly, jardines, venerated,
Nearest to road: city, marbled, iata, redevelopment, brice, hindustan, jagan, benitez,
Epoch 4/10 Iteration: 15100 Avg. Training loss: 4.0190 0.1179 sec/batch
Epoch 4/10 Iteration: 15200 Avg. Training loss: 4.0357 0.1156 sec/batch
Epoch 4/10 Iteration: 15300 Avg. Training loss: 4.0359 0.1147 sec/batch
Epoch 4/10 Iteration: 15400 Avg. Training loss: 4.0446 0.1147 sec/batch
Epoch 4/10 Iteration: 15500 Avg. Training loss: 4.0806 0.1150 sec/batch
Epoch 4/10 Iteration: 15600 Avg. Training loss: 4.0697 0.1153 sec/batch
Epoch 4/10 Iteration: 15700 Avg. Training loss: 4.0592 0.1136 sec/batch
Epoch 4/10 Iteration: 15800 Avg. Training loss: 4.0990 0.1151 sec/batch
Epoch 4/10 Iteration: 15900 Avg. Training loss: 4.0746 0.1153 sec/batch
Epoch 4/10 Iteration: 16000 Avg. Training loss: 4.0539 0.1137 sec/batch
Nearest to was: triad, first, him, his, dedicating, improvements, early, instructed,
Nearest to other: this, pared, customization, practised, heterogeneity, objectors, regional, insertion,
Nearest to five: six, three, one, nine, two, seven, four, zero,
Nearest to that: xy, false, telomerase, explaining, belief, particular, jutish, deny,
Nearest to of: diverging, applies, translational, cumulative, eukaryotic, mass, powers, wider,
Nearest to see: references, links, meta, catchment, wastage, relating, hispanica, belied,
Nearest to when: westbrook, gets, solace, his, electrician, protozoa, fling, insertions,
Nearest to will: stub, pulled, keep, dyeing, urged, octane, numb, studebaker,
Nearest to pressure: flow, heat, bicarbonate, soda, counteract, refrigeration, amperes, weightings,
Nearest to stage: communicates, karnstein, dampier, inanimate, rutles, walkers, jamison, music,
Nearest to ice: sharps, cryptographically, panes, hollows, salicylate, booth, maas, tundra,
Nearest to discovered: triplet, noaa, craters, ancestor, detectors, quantum, cenozoic, outcrops,
Nearest to know: unknowns, darkens, perennials, our, me, canine, ostriches, qumran,
Nearest to police: jimbo, urge, mooted, dehydrogenase, perjury, vitae, withstanding, confederacy,
Nearest to numerous: wagnerites, ipx, ibiblio, unusable, infrequently, pugwash, venerated, orderly,
Nearest to road: marbled, redevelopment, city, iata, brice, jagan, hindustan, turnpike,
Epoch 4/10 Iteration: 16100 Avg. Training loss: 4.0573 0.1166 sec/batch
Epoch 4/10 Iteration: 16200 Avg. Training loss: 4.0813 0.1138 sec/batch
Epoch 4/10 Iteration: 16300 Avg. Training loss: 4.0648 0.1143 sec/batch
Epoch 4/10 Iteration: 16400 Avg. Training loss: 4.0681 0.1148 sec/batch
Epoch 4/10 Iteration: 16500 Avg. Training loss: 4.0515 0.1126 sec/batch
Epoch 4/10 Iteration: 16600 Avg. Training loss: 4.0527 0.1144 sec/batch
Epoch 4/10 Iteration: 16700 Avg. Training loss: 4.0681 0.1146 sec/batch
Epoch 4/10 Iteration: 16800 Avg. Training loss: 4.0597 0.1157 sec/batch
Epoch 4/10 Iteration: 16900 Avg. Training loss: 4.0653 0.1143 sec/batch
Epoch 4/10 Iteration: 17000 Avg. Training loss: 4.0683 0.1147 sec/batch
Nearest to was: triad, first, the, were, his, early, dedicating, him,
Nearest to other: this, pared, customization, practised, objectors, heterogeneity, regional, happenings,
Nearest to five: six, three, one, two, nine, seven, zero, four,
Nearest to that: false, jutish, xy, telomerase, vetoed, intolerable, booked, overseeing,
Nearest to of: powers, one, melchizedek, galway, stipend, mps, the, roman,
Nearest to see: references, links, relating, wastage, meta, uncovering, belied, franciscans,
Nearest to when: gets, his, westbrook, solace, submit, electrician, barbarossa, insertions,
Nearest to will: stub, pulled, numb, dyeing, immortality, urged, studebaker, just,
Nearest to pressure: flow, heat, soda, bicarbonate, counteract, refrigeration, sandford, change,
Nearest to stage: communicates, dampier, inanimate, rutles, karnstein, walkers, jamison, tunable,
Nearest to ice: sharps, cryptographically, panes, salicylate, booth, hollows, tundra, maas,
Nearest to discovered: triplet, detectors, craters, ancestor, noaa, quantum, cenozoic, gregor,
Nearest to know: unknowns, darkens, me, our, perennials, ostriches, your, stranger,
Nearest to police: jimbo, mooted, urge, dehydrogenase, mechanised, withstanding, perjury, confederacy,
Nearest to numerous: wagnerites, ipx, venerated, infrequently, unusable, ibiblio, pugwash, presumably,
Nearest to road: marbled, redevelopment, brice, jagan, city, iata, hindustan, turnpike,
Epoch 4/10 Iteration: 17100 Avg. Training loss: 4.0719 0.1174 sec/batch
Epoch 4/10 Iteration: 17200 Avg. Training loss: 4.0029 0.1162 sec/batch
Epoch 4/10 Iteration: 17300 Avg. Training loss: 4.0351 0.1140 sec/batch
Epoch 4/10 Iteration: 17400 Avg. Training loss: 4.0612 0.1149 sec/batch
Epoch 4/10 Iteration: 17500 Avg. Training loss: 4.0699 0.1154 sec/batch
Epoch 4/10 Iteration: 17600 Avg. Training loss: 4.1012 0.1140 sec/batch
Epoch 4/10 Iteration: 17700 Avg. Training loss: 4.1435 0.1150 sec/batch
Epoch 4/10 Iteration: 17800 Avg. Training loss: 4.0350 0.1134 sec/batch
Epoch 4/10 Iteration: 17900 Avg. Training loss: 4.0331 0.1147 sec/batch
Epoch 4/10 Iteration: 18000 Avg. Training loss: 4.0646 0.1134 sec/batch
Nearest to was: triad, him, first, his, instructed, were, improvements, dedicating,
Nearest to other: pared, this, customization, heterogeneity, practised, objectors, regional, cygwin,
Nearest to five: six, one, three, two, nine, zero, seven, four,
Nearest to that: false, xy, telomerase, vetoed, jutish, claim, booked, severin,
Nearest to of: one, galway, mass, eukaryotic, sights, minus, onslaught, situated,
Nearest to see: references, links, wastage, relating, meta, hispanica, revoked, catchment,
Nearest to when: gets, solace, electrician, his, mccandless, westbrook, ecclesiastics, submit,
Nearest to will: pulled, stub, dyeing, confinement, urged, discretion, numb, octane,
Nearest to pressure: flow, heat, soda, bicarbonate, refrigeration, counteract, prolong, cavanagh,
Nearest to stage: communicates, inanimate, rutles, dampier, karnstein, jamison, walkers, disgust,
Nearest to ice: sharps, booth, tundra, panes, cryptographically, hollows, salicylate, erotic,
Nearest to discovered: detectors, triplet, craters, noaa, quantum, fissionable, gregor, ancestor,
Nearest to know: unknowns, me, ostriches, darkens, perennials, your, you, our,
Nearest to police: jimbo, mooted, urge, mechanised, vitae, presides, withstanding, perjury,
Nearest to numerous: wagnerites, ipx, infrequently, ibiblio, unusable, pugwash, venerated, presumably,
Nearest to road: brice, marbled, iata, jagan, redevelopment, beautiful, hindustan, city,
Epoch 4/10 Iteration: 18100 Avg. Training loss: 3.9642 0.1158 sec/batch
Epoch 4/10 Iteration: 18200 Avg. Training loss: 4.0462 0.1153 sec/batch
Epoch 4/10 Iteration: 18300 Avg. Training loss: 4.0523 0.1151 sec/batch
Epoch 4/10 Iteration: 18400 Avg. Training loss: 4.0489 0.1149 sec/batch
Epoch 4/10 Iteration: 18500 Avg. Training loss: 4.0641 0.1130 sec/batch
Epoch 5/10 Iteration: 18600 Avg. Training loss: 4.0426 0.1062 sec/batch
Epoch 5/10 Iteration: 18700 Avg. Training loss: 4.0127 0.1144 sec/batch
Epoch 5/10 Iteration: 18800 Avg. Training loss: 4.0042 0.1125 sec/batch
Epoch 5/10 Iteration: 18900 Avg. Training loss: 4.0366 0.1111 sec/batch
Epoch 5/10 Iteration: 19000 Avg. Training loss: 3.9637 0.1134 sec/batch
Nearest to was: triad, first, the, his, were, him, improvements, dedicating,
Nearest to other: customization, pared, this, practised, heterogeneity, cygwin, objectors, enough,
Nearest to five: six, one, three, two, nine, seven, zero, four,
Nearest to that: false, telomerase, xy, sinning, severin, intolerable, booked, jutish,
Nearest to of: and, onslaught, one, the, mass, eukaryotic, glick, ambassadorial,
Nearest to see: references, links, wastage, meta, external, hispanica, relating, catchment,
Nearest to when: solace, gets, his, electrician, mccandless, her, submit, swings,
Nearest to will: urged, pulled, numb, perpetuity, immortality, dyeing, confinement, discretion,
Nearest to pressure: flow, heat, bicarbonate, soda, refrigeration, prolong, weightings, counteract,
Nearest to stage: communicates, karnstein, inanimate, rutles, dampier, walkers, jamison, tunable,
Nearest to ice: sharps, booth, tundra, panes, maas, cryptographically, salicylate, hollows,
Nearest to discovered: triplet, detectors, noaa, craters, fissionable, gregor, ancestor, elixir,
Nearest to know: unknowns, me, ostriches, darkens, perennials, your, our, you,
Nearest to police: jimbo, mooted, urge, mechanised, presides, vitae, withstanding, perjury,
Nearest to numerous: wagnerites, ipx, venerated, pugwash, infrequently, ibiblio, presumably, unusable,
Nearest to road: marbled, brice, hindustan, hymn, beautiful, redevelopment, jagan, city,
Epoch 5/10 Iteration: 19100 Avg. Training loss: 4.0144 0.1149 sec/batch
Epoch 5/10 Iteration: 19200 Avg. Training loss: 3.9529 0.1146 sec/batch
Epoch 5/10 Iteration: 19300 Avg. Training loss: 4.0288 0.1149 sec/batch
Epoch 5/10 Iteration: 19400 Avg. Training loss: 4.0449 0.1140 sec/batch
Epoch 5/10 Iteration: 19500 Avg. Training loss: 4.0154 0.1146 sec/batch
Epoch 5/10 Iteration: 19600 Avg. Training loss: 3.9876 0.1149 sec/batch
Epoch 5/10 Iteration: 19700 Avg. Training loss: 3.9249 0.1155 sec/batch
Epoch 5/10 Iteration: 19800 Avg. Training loss: 3.9582 0.1155 sec/batch
Epoch 5/10 Iteration: 19900 Avg. Training loss: 3.9771 0.1157 sec/batch
Epoch 5/10 Iteration: 20000 Avg. Training loss: 3.9858 0.1149 sec/batch
Nearest to was: triad, first, the, his, early, were, dedicating, him,
Nearest to other: this, pared, customization, practised, cygwin, an, enough, objectors,
Nearest to five: six, three, one, two, nine, zero, four, seven,
Nearest to that: telomerase, xy, false, the, sinning, is, booked, to,
Nearest to of: and, the, one, eukaryotic, applies, in, diverging, mass,
Nearest to see: references, links, wastage, external, relating, meta, catchment, also,
Nearest to when: gets, solace, swings, his, again, mccandless, westbrook, fling,
Nearest to will: pulled, stub, octane, perpetuity, numb, dyeing, immortality, studebaker,
Nearest to pressure: flow, bicarbonate, soda, heat, refrigeration, prolong, counteract, weightings,
Nearest to stage: communicates, karnstein, inanimate, dampier, rutles, jamison, walkers, tunable,
Nearest to ice: sharps, tundra, booth, panes, hollows, salicylate, cryptographically, maas,
Nearest to discovered: detectors, triplet, noaa, craters, fissionable, ancestor, gregor, macau,
Nearest to know: unknowns, me, darkens, ostriches, perennials, your, you, stranger,
Nearest to police: jimbo, mechanised, mooted, urge, withstanding, dehydrogenase, presides, vitae,
Nearest to numerous: wagnerites, ipx, pugwash, ibiblio, unusable, infrequently, venerated, presumably,
Nearest to road: marbled, brice, hindustan, redevelopment, beautiful, hymn, turnpike, iata,
Epoch 5/10 Iteration: 20100 Avg. Training loss: 4.0089 0.1175 sec/batch
Epoch 5/10 Iteration: 20200 Avg. Training loss: 3.9853 0.1174 sec/batch
Epoch 5/10 Iteration: 20300 Avg. Training loss: 3.9436 0.1140 sec/batch
Epoch 5/10 Iteration: 20400 Avg. Training loss: 4.0014 0.1139 sec/batch
Epoch 5/10 Iteration: 20500 Avg. Training loss: 4.0295 0.1143 sec/batch
Epoch 5/10 Iteration: 20600 Avg. Training loss: 3.9379 0.1151 sec/batch
Epoch 5/10 Iteration: 20700 Avg. Training loss: 4.0022 0.1150 sec/batch
Epoch 5/10 Iteration: 20800 Avg. Training loss: 4.0014 0.1149 sec/batch
Epoch 5/10 Iteration: 20900 Avg. Training loss: 3.9864 0.1141 sec/batch
Epoch 5/10 Iteration: 21000 Avg. Training loss: 4.0228 0.1135 sec/batch
Nearest to was: first, his, the, triad, early, him, in, were,
Nearest to other: this, customization, practised, pared, packs, objectors, cygwin, heterogeneity,
Nearest to five: six, three, one, two, nine, four, zero, seven,
Nearest to that: false, the, xy, telomerase, is, claim, simply, booked,
Nearest to of: the, and, one, in, s, a, expected, cumulative,
Nearest to see: references, links, external, wastage, relating, meta, belied, madrid,
Nearest to when: gets, fling, solace, his, again, mccandless, submit, swings,
Nearest to will: immortality, pulled, stub, just, octane, urged, perpetuity, confinement,
Nearest to pressure: flow, bicarbonate, heat, soda, refrigeration, prolong, counteract, amperes,
Nearest to stage: communicates, rutles, dampier, karnstein, inanimate, jamison, antonius, tunable,
Nearest to ice: sharps, booth, panes, cryptographically, salicylate, tundra, maas, hollows,
Nearest to discovered: detectors, triplet, fissionable, ancestor, noaa, gregor, craters, cenozoic,
Nearest to know: unknowns, me, your, darkens, you, ostriches, don, perennials,
Nearest to police: jimbo, mechanised, urge, mooted, presides, dehydrogenase, suspects, vitae,
Nearest to numerous: wagnerites, ipx, presumably, ibiblio, unusable, venerated, pugwash, infrequently,
Nearest to road: marbled, brice, turnpike, hindustan, redevelopment, beautiful, jagan, hymn,
Epoch 5/10 Iteration: 21100 Avg. Training loss: 4.0232 0.1159 sec/batch
Epoch 5/10 Iteration: 21200 Avg. Training loss: 3.9964 0.1138 sec/batch
Epoch 5/10 Iteration: 21300 Avg. Training loss: 4.0111 0.1140 sec/batch
Epoch 5/10 Iteration: 21400 Avg. Training loss: 4.0269 0.1143 sec/batch
Epoch 5/10 Iteration: 21500 Avg. Training loss: 4.0170 0.1142 sec/batch
Epoch 5/10 Iteration: 21600 Avg. Training loss: 4.0041 0.1132 sec/batch
Epoch 5/10 Iteration: 21700 Avg. Training loss: 3.9682 0.1162 sec/batch
Epoch 5/10 Iteration: 21800 Avg. Training loss: 3.9458 0.1172 sec/batch
Epoch 5/10 Iteration: 21900 Avg. Training loss: 3.9818 0.1160 sec/batch
Epoch 5/10 Iteration: 22000 Avg. Training loss: 4.0082 0.1165 sec/batch
Nearest to was: first, the, early, his, triad, were, improvements, in,
Nearest to other: this, customization, an, practised, objectors, enough, pared, regional,
Nearest to five: six, three, one, two, nine, four, seven, zero,
Nearest to that: false, xy, telomerase, minarchism, claim, the, is, jutish,
Nearest to of: the, and, one, in, situated, s, smaller, for,
Nearest to see: links, references, wastage, relating, external, also, is, belied,
Nearest to when: gets, mccandless, solace, fling, his, again, submit, ecclesiastics,
Nearest to will: urged, octane, perpetuity, pulled, immortality, stub, just, isn,
Nearest to pressure: flow, bicarbonate, soda, heat, refrigeration, prolong, counteract, partito,
Nearest to stage: communicates, rutles, dampier, inanimate, karnstein, jamison, tunable, walkers,
Nearest to ice: sharps, panes, booth, cryptographically, tundra, salicylate, maas, hollows,
Nearest to discovered: detectors, triplet, gregor, ancestor, craters, fissionable, cenozoic, noaa,
Nearest to know: me, our, unknowns, you, your, ostriches, darkens, don,
Nearest to police: jimbo, mechanised, mooted, presides, vitae, soldiers, suspects, urge,
Nearest to numerous: wagnerites, ipx, unusable, presumably, infrequently, pugwash, venerated, ibiblio,
Nearest to road: marbled, brice, turnpike, hindustan, toll, jagan, iata, redevelopment,
Epoch 5/10 Iteration: 22100 Avg. Training loss: 3.9906 0.1156 sec/batch
Epoch 5/10 Iteration: 22200 Avg. Training loss: 4.0888 0.1150 sec/batch
Epoch 5/10 Iteration: 22300 Avg. Training loss: 4.0144 0.1149 sec/batch
Epoch 5/10 Iteration: 22400 Avg. Training loss: 4.0272 0.1166 sec/batch
Epoch 5/10 Iteration: 22500 Avg. Training loss: 3.9558 0.1151 sec/batch
Epoch 5/10 Iteration: 22600 Avg. Training loss: 3.9499 0.1136 sec/batch
Epoch 5/10 Iteration: 22700 Avg. Training loss: 3.9928 0.1147 sec/batch
Epoch 5/10 Iteration: 22800 Avg. Training loss: 3.9040 0.1150 sec/batch
Epoch 5/10 Iteration: 22900 Avg. Training loss: 3.9868 0.1141 sec/batch
Epoch 5/10 Iteration: 23000 Avg. Training loss: 3.9720 0.1140 sec/batch
Nearest to was: his, first, the, triad, early, in, improvements, him,
Nearest to other: this, customization, an, enough, cygwin, pared, objectors, practised,
Nearest to five: six, one, three, nine, two, four, seven, zero,
Nearest to that: false, xy, telomerase, any, claim, the, vetoed, intractable,
Nearest to of: the, and, in, one, situated, s, a, for,
Nearest to see: links, references, wastage, external, also, belied, relating, is,
Nearest to when: gets, solace, his, swings, mccandless, again, fling, her,
Nearest to will: urged, pulled, immortality, perpetuity, isn, octane, studebaker, stub,
Nearest to pressure: flow, bicarbonate, heat, soda, refrigeration, prolong, partito, window,
Nearest to stage: communicates, rutles, dampier, inanimate, jamison, karnstein, music, antonius,
Nearest to ice: sharps, panes, tundra, booth, salicylate, cryptographically, maas, hollows,
Nearest to discovered: detectors, fissionable, craters, triplet, gregor, noaa, ancestor, elixir,
Nearest to know: me, your, you, our, unknowns, ostriches, lucille, don,
Nearest to police: jimbo, mechanised, mooted, vitae, presides, suspects, soldiers, recruit,
Nearest to numerous: wagnerites, ipx, infrequently, unusable, presumably, ibiblio, pugwash, archetypal,
Nearest to road: brice, marbled, beautiful, hymn, hindustan, turnpike, jagan, waits,
Epoch 5/10 Iteration: 23100 Avg. Training loss: 3.9834 0.1143 sec/batch
Epoch 6/10 Iteration: 23200 Avg. Training loss: 3.9887 0.0740 sec/batch
Epoch 6/10 Iteration: 23300 Avg. Training loss: 3.9718 0.1140 sec/batch
Epoch 6/10 Iteration: 23400 Avg. Training loss: 3.9687 0.1136 sec/batch
Epoch 6/10 Iteration: 23500 Avg. Training loss: 3.9683 0.1119 sec/batch
Epoch 6/10 Iteration: 23600 Avg. Training loss: 3.9161 0.1127 sec/batch
Epoch 6/10 Iteration: 23700 Avg. Training loss: 3.9753 0.1138 sec/batch
Epoch 6/10 Iteration: 23800 Avg. Training loss: 3.9019 0.1137 sec/batch
Epoch 6/10 Iteration: 23900 Avg. Training loss: 3.9789 0.1131 sec/batch
Epoch 6/10 Iteration: 24000 Avg. Training loss: 3.9441 0.1138 sec/batch
Nearest to was: the, first, his, early, triad, in, were, improvements,
Nearest to other: this, customization, an, of, cygwin, practised, objectors, enough,
Nearest to five: six, one, three, two, four, zero, nine, seven,
Nearest to that: telomerase, xy, false, the, claim, down, is, sinning,
Nearest to of: the, and, in, one, a, by, for, five,
Nearest to see: links, references, external, wastage, also, belied, relating, hispanica,
Nearest to when: gets, solace, his, again, swings, fling, her, after,
Nearest to will: urged, pulled, perpetuity, studebaker, immortality, unless, octane, stub,
Nearest to pressure: flow, heat, bicarbonate, refrigeration, soda, partito, amperes, prolong,
Nearest to stage: communicates, dampier, rutles, karnstein, inanimate, jamison, kaufman, diuretic,
Nearest to ice: sharps, panes, maas, tundra, booth, salicylate, adaptable, cryptographically,
Nearest to discovered: detectors, fissionable, craters, noaa, ancestor, triplet, elixir, gregor,
Nearest to know: me, your, you, our, think, ostriches, darkens, unknowns,
Nearest to police: jimbo, vitae, mooted, presides, mechanised, suspects, withstanding, hants,
Nearest to numerous: wagnerites, presumably, unusable, pugwash, infrequently, ipx, anadolu, ibiblio,
Nearest to road: marbled, brice, beautiful, turnpike, hindustan, waits, hymn, gripped,
Epoch 6/10 Iteration: 24100 Avg. Training loss: 3.9542 0.1158 sec/batch
Epoch 6/10 Iteration: 24200 Avg. Training loss: 3.9834 0.1146 sec/batch
Epoch 6/10 Iteration: 24300 Avg. Training loss: 3.8425 0.1163 sec/batch
Epoch 6/10 Iteration: 24400 Avg. Training loss: 3.9395 0.1163 sec/batch
Epoch 6/10 Iteration: 24500 Avg. Training loss: 3.9191 0.1174 sec/batch
Epoch 6/10 Iteration: 24600 Avg. Training loss: 3.8803 0.1157 sec/batch
Epoch 6/10 Iteration: 24700 Avg. Training loss: 3.9465 0.1157 sec/batch
Epoch 6/10 Iteration: 24800 Avg. Training loss: 3.9566 0.1157 sec/batch
Epoch 6/10 Iteration: 24900 Avg. Training loss: 3.9316 0.1153 sec/batch
Epoch 6/10 Iteration: 25000 Avg. Training loss: 3.9213 0.1146 sec/batch
Nearest to was: first, the, his, triad, early, in, named, improvements,
Nearest to other: this, customization, an, of, packs, cygwin, ascii, practised,
Nearest to five: six, one, three, two, nine, four, zero, seven,
Nearest to that: telomerase, to, the, false, xy, is, this, sinning,
Nearest to of: the, and, a, in, for, by, are, an,
Nearest to see: references, links, external, also, wastage, belied, meta, relating,
Nearest to when: gets, solace, his, again, swings, fling, double, thoroughbreds,
Nearest to will: perpetuity, urged, pulled, octane, stub, isn, unless, just,
Nearest to pressure: flow, heat, bicarbonate, soda, refrigeration, amperes, counteract, prolong,
Nearest to stage: communicates, dampier, rutles, inanimate, jamison, karnstein, kaufman, antonius,
Nearest to ice: panes, sharps, tundra, salicylate, booth, frozen, cryptographically, cooling,
Nearest to discovered: fissionable, detectors, noaa, ancestor, craters, gregor, barycenter, elixir,
Nearest to know: me, your, you, our, ostriches, think, unknowns, darkens,
Nearest to police: jimbo, vitae, mooted, mechanised, presides, withstanding, dehydrogenase, suspects,
Nearest to numerous: wagnerites, presumably, archetypal, unusable, infrequently, venerated, ibiblio, anadolu,
Nearest to road: marbled, brice, turnpike, beautiful, waits, iata, hindustan, redevelopment,
Epoch 6/10 Iteration: 25100 Avg. Training loss: 3.9853 0.1145 sec/batch
Epoch 6/10 Iteration: 25200 Avg. Training loss: 3.9179 0.1147 sec/batch
Epoch 6/10 Iteration: 25300 Avg. Training loss: 3.9122 0.1155 sec/batch
Epoch 6/10 Iteration: 25400 Avg. Training loss: 3.9453 0.1151 sec/batch
Epoch 6/10 Iteration: 25500 Avg. Training loss: 3.9427 0.1139 sec/batch
Epoch 6/10 Iteration: 25600 Avg. Training loss: 3.9350 0.1156 sec/batch
Epoch 6/10 Iteration: 25700 Avg. Training loss: 3.9687 0.1135 sec/batch
Epoch 6/10 Iteration: 25800 Avg. Training loss: 3.9584 0.1145 sec/batch
Epoch 6/10 Iteration: 25900 Avg. Training loss: 3.9405 0.1132 sec/batch
Epoch 6/10 Iteration: 26000 Avg. Training loss: 3.9704 0.1137 sec/batch
Nearest to was: first, the, his, early, in, triad, named, had,
Nearest to other: this, customization, of, an, and, lead, objectors, heterogeneity,
Nearest to five: six, one, three, two, four, zero, nine, seven,
Nearest to that: this, false, to, is, telomerase, the, claim, sinning,
Nearest to of: the, and, in, a, one, by, s, for,
Nearest to see: links, references, also, external, wastage, belied, relating, is,
Nearest to when: gets, solace, again, mccandless, his, ecclesiastics, fling, swings,
Nearest to will: octane, urged, unless, stub, studebaker, just, perpetuity, immortality,
Nearest to pressure: flow, heat, bicarbonate, soda, refrigeration, partito, amperes, change,
Nearest to stage: rutles, dampier, communicates, inanimate, jamison, karnstein, music, kaufman,
Nearest to ice: panes, tundra, salicylate, sharps, booth, maas, frozen, cryptographically,
Nearest to discovered: detectors, fissionable, triplet, barycenter, craters, elixir, ancestor, noaa,
Nearest to know: your, me, you, our, ostriches, think, unknowns, darkens,
Nearest to police: mooted, jimbo, mechanised, presides, vitae, withstanding, suspects, recruit,
Nearest to numerous: wagnerites, presumably, unusable, anadolu, infrequently, venerated, archetypal, ibiblio,
Nearest to road: marbled, brice, turnpike, beautiful, waits, toll, gripped, iata,
Epoch 6/10 Iteration: 26100 Avg. Training loss: 3.9488 0.1158 sec/batch
Epoch 6/10 Iteration: 26200 Avg. Training loss: 3.9420 0.1142 sec/batch
Epoch 6/10 Iteration: 26300 Avg. Training loss: 3.9589 0.1156 sec/batch
Epoch 6/10 Iteration: 26400 Avg. Training loss: 3.9066 0.1146 sec/batch
Epoch 6/10 Iteration: 26500 Avg. Training loss: 3.9308 0.1156 sec/batch
Epoch 6/10 Iteration: 26600 Avg. Training loss: 3.9371 0.1160 sec/batch
Epoch 6/10 Iteration: 26700 Avg. Training loss: 3.9422 0.1151 sec/batch
Epoch 6/10 Iteration: 26800 Avg. Training loss: 4.0326 0.1153 sec/batch
Epoch 6/10 Iteration: 26900 Avg. Training loss: 4.0008 0.1134 sec/batch
Epoch 6/10 Iteration: 27000 Avg. Training loss: 3.9835 0.1151 sec/batch
Nearest to was: first, the, his, early, in, were, triad, later,
Nearest to other: this, customization, an, of, innovated, lead, and, practised,
Nearest to five: six, one, three, two, zero, nine, four, seven,
Nearest to that: telomerase, claim, false, this, minarchism, sinning, have, xy,
Nearest to of: the, and, in, one, five, a, s, for,
Nearest to see: references, links, also, external, wastage, relating, belied, is,
Nearest to when: solace, gets, his, again, swings, mccandless, her, ecclesiastics,
Nearest to will: urged, perpetuity, immortality, octane, dte, stub, gila, studebaker,
Nearest to pressure: flow, heat, bicarbonate, partito, refrigeration, sandford, counteract, latifah,
Nearest to stage: rutles, dampier, jamison, communicates, inanimate, karnstein, kaufman, music,
Nearest to ice: panes, booth, sharps, salicylate, tundra, frozen, cryptographically, cooling,
Nearest to discovered: detectors, fissionable, craters, elixir, gregor, ancestor, triplet, ethan,
Nearest to know: your, me, you, our, think, ostriches, don, lucille,
Nearest to police: jimbo, mooted, mechanised, vitae, soldiers, presides, withstanding, suspects,
Nearest to numerous: wagnerites, presumably, archetypal, anadolu, unusable, infrequently, yazidism, pugwash,
Nearest to road: brice, marbled, beautiful, turnpike, waits, iata, gripped, jagan,
Epoch 6/10 Iteration: 27100 Avg. Training loss: 3.9173 0.1160 sec/batch
Epoch 6/10 Iteration: 27200 Avg. Training loss: 3.8860 0.1144 sec/batch
Epoch 6/10 Iteration: 27300 Avg. Training loss: 3.9546 0.1146 sec/batch
Epoch 6/10 Iteration: 27400 Avg. Training loss: 3.8697 0.1150 sec/batch
Epoch 6/10 Iteration: 27500 Avg. Training loss: 3.9362 0.1151 sec/batch
Epoch 6/10 Iteration: 27600 Avg. Training loss: 3.9519 0.1142 sec/batch
Epoch 6/10 Iteration: 27700 Avg. Training loss: 3.9551 0.1143 sec/batch
Epoch 7/10 Iteration: 27800 Avg. Training loss: 3.9913 0.0442 sec/batch
Epoch 7/10 Iteration: 27900 Avg. Training loss: 3.9097 0.1138 sec/batch
Epoch 7/10 Iteration: 28000 Avg. Training loss: 3.9065 0.1140 sec/batch
Nearest to was: first, his, the, early, later, triad, had, named,
Nearest to other: of, this, customization, an, cygwin, innovated, and, enough,
Nearest to five: six, one, three, two, zero, four, nine, seven,
Nearest to that: to, have, claim, telomerase, sinning, false, xy, this,
Nearest to of: the, and, in, a, for, other, one, by,
Nearest to see: links, references, also, external, belied, relating, wastage, is,
Nearest to when: solace, gets, again, his, mccandless, swings, inoculation, her,
Nearest to will: urged, perpetuity, immortality, isn, stub, unless, octane, dunning,
Nearest to pressure: flow, heat, bicarbonate, partito, amperes, sandford, weightings, deflection,
Nearest to stage: communicates, rutles, dampier, inanimate, jamison, karnstein, antonius, kaufman,
Nearest to ice: panes, frozen, salicylate, tundra, booth, sharps, cooling, maas,
Nearest to discovered: fissionable, detectors, elixir, craters, ancestor, triplet, gregor, mckee,
Nearest to know: me, you, your, our, think, ostriches, don, lucille,
Nearest to police: jimbo, mooted, vitae, presides, mechanised, suspects, soldiers, withstanding,
Nearest to numerous: wagnerites, presumably, anadolu, archetypal, infrequently, unusable, venerated, yazidism,
Nearest to road: marbled, brice, beautiful, turnpike, roads, hindustan, waits, toll,
Epoch 7/10 Iteration: 28100 Avg. Training loss: 3.9051 0.1143 sec/batch
Epoch 7/10 Iteration: 28200 Avg. Training loss: 3.9100 0.1132 sec/batch
Epoch 7/10 Iteration: 28300 Avg. Training loss: 3.8840 0.1131 sec/batch
Epoch 7/10 Iteration: 28400 Avg. Training loss: 3.9121 0.1134 sec/batch
Epoch 7/10 Iteration: 28500 Avg. Training loss: 3.8568 0.1139 sec/batch
Epoch 7/10 Iteration: 28600 Avg. Training loss: 3.9319 0.1136 sec/batch
Epoch 7/10 Iteration: 28700 Avg. Training loss: 3.8988 0.1149 sec/batch
Epoch 7/10 Iteration: 28800 Avg. Training loss: 3.9197 0.1152 sec/batch
Epoch 7/10 Iteration: 28900 Avg. Training loss: 3.8245 0.1156 sec/batch
Epoch 7/10 Iteration: 29000 Avg. Training loss: 3.8514 0.1164 sec/batch
Nearest to was: first, the, early, in, would, his, were, named,
Nearest to other: of, this, an, customization, and, cygwin, native, baka,
Nearest to five: six, one, two, three, zero, nine, four, seven,
Nearest to that: telomerase, the, this, is, to, have, claim, any,
Nearest to of: the, and, in, one, a, for, five, is,
Nearest to see: links, references, also, external, relating, is, wastage, belied,
Nearest to when: solace, gets, bouncing, his, swings, again, mccandless, they,
Nearest to will: perpetuity, stub, octane, urged, immortality, unless, healthy, dte,
Nearest to pressure: flow, heat, bicarbonate, refrigeration, partito, soda, weightings, latifah,
Nearest to stage: communicates, dampier, inanimate, rutles, karnstein, jamison, antonius, kaufman,
Nearest to ice: frozen, salicylate, panes, tundra, booth, sharps, possibility, cooling,
Nearest to discovered: fissionable, detectors, elixir, ancestor, gregor, craters, noaa, triplet,
Nearest to know: me, you, your, our, think, ostriches, stranger, lucille,
Nearest to police: jimbo, mechanised, presides, vitae, mooted, delimitation, withstanding, soldiers,
Nearest to numerous: wagnerites, presumably, anadolu, unusable, archetypal, infrequently, pugwash, yazidism,
Nearest to road: marbled, brice, beautiful, turnpike, waits, roads, hindustan, iata,
Epoch 7/10 Iteration: 29100 Avg. Training loss: 3.8816 0.1192 sec/batch
Epoch 7/10 Iteration: 29200 Avg. Training loss: 3.8365 0.1161 sec/batch
Epoch 7/10 Iteration: 29300 Avg. Training loss: 3.9138 0.1163 sec/batch
Epoch 7/10 Iteration: 29400 Avg. Training loss: 3.9347 0.1153 sec/batch
Epoch 7/10 Iteration: 29500 Avg. Training loss: 3.8986 0.1155 sec/batch
Epoch 7/10 Iteration: 29600 Avg. Training loss: 3.8857 0.1141 sec/batch
Epoch 7/10 Iteration: 29700 Avg. Training loss: 3.9634 0.1139 sec/batch
Epoch 7/10 Iteration: 29800 Avg. Training loss: 3.8772 0.1144 sec/batch
Epoch 7/10 Iteration: 29900 Avg. Training loss: 3.8760 0.1145 sec/batch
Epoch 7/10 Iteration: 30000 Avg. Training loss: 3.9317 0.1144 sec/batch
Nearest to was: first, the, his, early, named, in, would, later,
Nearest to other: this, of, customization, an, and, innovated, cygwin, lead,
Nearest to five: six, one, three, two, nine, four, zero, seven,
Nearest to that: is, telomerase, to, any, this, the, have, and,
Nearest to of: the, and, in, a, one, by, is, s,
Nearest to see: links, references, also, external, relating, is, belied, wastage,
Nearest to when: gets, solace, again, his, bouncing, wiles, was, they,
Nearest to will: perpetuity, immortality, octane, unless, stub, centromeres, just, urged,
Nearest to pressure: flow, heat, bicarbonate, change, counteract, refrigeration, weightings, proportion,
Nearest to stage: dampier, rutles, karnstein, communicates, inanimate, antonius, music, tunable,
Nearest to ice: frozen, salicylate, panes, tundra, booth, cooling, poetically, sharps,
Nearest to discovered: fissionable, detectors, elixir, craters, barycenter, ancestor, unlikely, noaa,
Nearest to know: you, me, your, our, think, stranger, don, ostriches,
Nearest to police: jimbo, vitae, presides, snafu, mooted, delimitation, austen, mechanised,
Nearest to numerous: presumably, wagnerites, archetypal, unusable, venerated, infrequently, anadolu, ipx,
Nearest to road: marbled, brice, turnpike, beautiful, gripped, iata, waits, toll,
Epoch 7/10 Iteration: 30100 Avg. Training loss: 3.9285 0.1162 sec/batch
Epoch 7/10 Iteration: 30200 Avg. Training loss: 3.9662 0.1157 sec/batch
Epoch 7/10 Iteration: 30300 Avg. Training loss: 3.9023 0.1164 sec/batch
Epoch 7/10 Iteration: 30400 Avg. Training loss: 3.8806 0.1148 sec/batch
Epoch 7/10 Iteration: 30500 Avg. Training loss: 3.9298 0.1131 sec/batch
Epoch 7/10 Iteration: 30600 Avg. Training loss: 3.9231 0.1139 sec/batch
Epoch 7/10 Iteration: 30700 Avg. Training loss: 3.9094 0.1123 sec/batch
Epoch 7/10 Iteration: 30800 Avg. Training loss: 3.8975 0.1146 sec/batch
Epoch 7/10 Iteration: 30900 Avg. Training loss: 3.9309 0.1139 sec/batch
Epoch 7/10 Iteration: 31000 Avg. Training loss: 3.8865 0.1182 sec/batch
Nearest to was: the, first, early, in, would, were, later, his,
Nearest to other: of, this, an, and, customization, bijapur, the, innovated,
Nearest to five: six, one, three, two, zero, four, nine, seven,
Nearest to that: the, telomerase, to, have, is, all, this, claim,
Nearest to of: the, in, and, a, as, one, other, for,
Nearest to see: references, links, also, external, relating, is, belied, with,
Nearest to when: gets, solace, again, wiles, mccandless, ruthenia, bouncing, submit,
Nearest to will: perpetuity, immortality, healthy, centromeres, stub, octane, unless, wanderers,
Nearest to pressure: flow, heat, bicarbonate, partito, change, counteract, refrigeration, sandford,
Nearest to stage: communicates, dampier, inanimate, rutles, karnstein, music, antonius, sequentially,
Nearest to ice: tundra, frozen, salicylate, booth, panes, poetically, cooling, sharps,
Nearest to discovered: elixir, fissionable, detectors, barycenter, craters, unlikely, mckee, ancestor,
Nearest to know: me, you, your, our, think, ostriches, stranger, don,
Nearest to police: mooted, jimbo, presides, soldiers, mechanised, withstanding, snafu, racer,
Nearest to numerous: wagnerites, presumably, archetypal, anadolu, unusable, infrequently, venerated, ipx,
Nearest to road: marbled, brice, beautiful, turnpike, toll, gripped, waits, roads,
Epoch 7/10 Iteration: 31100 Avg. Training loss: 3.8778 0.1172 sec/batch
Epoch 7/10 Iteration: 31200 Avg. Training loss: 3.9110 0.1169 sec/batch
Epoch 7/10 Iteration: 31300 Avg. Training loss: 3.8959 0.1150 sec/batch
Epoch 7/10 Iteration: 31400 Avg. Training loss: 3.9648 0.1140 sec/batch
Epoch 7/10 Iteration: 31500 Avg. Training loss: 3.9987 0.1158 sec/batch
Epoch 7/10 Iteration: 31600 Avg. Training loss: 3.9645 0.1146 sec/batch
Epoch 7/10 Iteration: 31700 Avg. Training loss: 3.9028 0.1146 sec/batch
Epoch 7/10 Iteration: 31800 Avg. Training loss: 3.8666 0.1147 sec/batch
Epoch 7/10 Iteration: 31900 Avg. Training loss: 3.9002 0.1152 sec/batch
Epoch 7/10 Iteration: 32000 Avg. Training loss: 3.7966 0.1149 sec/batch
Nearest to was: the, first, in, early, had, later, his, were,
Nearest to other: of, this, and, innovated, an, customization, to, the,
Nearest to five: six, two, one, three, zero, four, nine, seven,
Nearest to that: any, all, have, to, telomerase, this, compromise, claim,
Nearest to of: the, and, in, a, as, by, also, one,
Nearest to see: links, references, also, external, is, relating, belied, with,
Nearest to when: gets, again, solace, after, bouncing, wiles, his, given,
Nearest to will: perpetuity, centromeres, healthy, unless, immortality, dte, octane, gila,
Nearest to pressure: flow, heat, bicarbonate, partito, refrigeration, deflection, window, change,
Nearest to stage: communicates, dampier, karnstein, rutles, music, jamison, inanimate, kaufman,
Nearest to ice: tundra, cooling, frozen, panes, booth, poetically, salicylate, possibility,
Nearest to discovered: elixir, fissionable, barycenter, detectors, craters, mckee, unlikely, noaa,
Nearest to know: me, you, your, think, our, don, ostriches, lucille,
Nearest to police: jimbo, soldiers, presides, mooted, vitae, withstanding, beefheart, delimitation,
Nearest to numerous: wagnerites, presumably, anadolu, archetypal, infrequently, unusable, yazidism, ipx,
Nearest to road: brice, marbled, beautiful, turnpike, waits, iata, gripped, leakage,
Epoch 7/10 Iteration: 32100 Avg. Training loss: 3.8888 0.1166 sec/batch
Epoch 7/10 Iteration: 32200 Avg. Training loss: 3.9255 0.1155 sec/batch
Epoch 7/10 Iteration: 32300 Avg. Training loss: 3.9010 0.1133 sec/batch
Epoch 8/10 Iteration: 32400 Avg. Training loss: 3.9263 0.0130 sec/batch
Epoch 8/10 Iteration: 32500 Avg. Training loss: 3.8898 0.1126 sec/batch
Epoch 8/10 Iteration: 32600 Avg. Training loss: 3.8944 0.1137 sec/batch
Epoch 8/10 Iteration: 32700 Avg. Training loss: 3.8945 0.1137 sec/batch
Epoch 8/10 Iteration: 32800 Avg. Training loss: 3.9304 0.1126 sec/batch
Epoch 8/10 Iteration: 32900 Avg. Training loss: 3.8516 0.1127 sec/batch
Epoch 8/10 Iteration: 33000 Avg. Training loss: 3.8479 0.1143 sec/batch
Nearest to was: the, first, in, had, would, were, later, early,
Nearest to other: of, this, and, an, the, innovated, cygwin, customization,
Nearest to five: six, one, three, two, four, zero, nine, seven,
Nearest to that: telomerase, have, to, any, is, all, this, being,
Nearest to of: the, and, in, a, also, as, by, with,
Nearest to see: links, references, also, external, relating, is, list, history,
Nearest to when: gets, solace, again, to, bouncing, was, after, inoculation,
Nearest to will: perpetuity, healthy, urged, dte, centromeres, wanderers, immortality, unless,
Nearest to pressure: flow, heat, bicarbonate, partito, cavanagh, window, prolong, deflection,
Nearest to stage: communicates, dampier, karnstein, sequentially, music, diuretic, tunable, kaufman,
Nearest to ice: frozen, tundra, booth, cooling, panes, possibility, poetically, sharps,
Nearest to discovered: elixir, fissionable, detectors, mckee, craters, barycenter, unlikely, stone,
Nearest to know: me, you, our, your, think, ostriches, don, t,
Nearest to police: jimbo, presides, mooted, beefheart, snafu, withstanding, austen, racer,
Nearest to numerous: wagnerites, presumably, archetypal, anadolu, yazidism, infrequently, unusable, venerated,
Nearest to road: marbled, brice, beautiful, turnpike, waits, gripped, iata, roads,
Epoch 8/10 Iteration: 33100 Avg. Training loss: 3.8510 0.1156 sec/batch
Epoch 8/10 Iteration: 33200 Avg. Training loss: 3.8881 0.1133 sec/batch
Epoch 8/10 Iteration: 33300 Avg. Training loss: 3.8662 0.1158 sec/batch
Epoch 8/10 Iteration: 33400 Avg. Training loss: 3.9247 0.1145 sec/batch
Epoch 8/10 Iteration: 33500 Avg. Training loss: 3.8464 0.1164 sec/batch
Epoch 8/10 Iteration: 33600 Avg. Training loss: 3.7982 0.1148 sec/batch
Epoch 8/10 Iteration: 33700 Avg. Training loss: 3.8116 0.1156 sec/batch
Epoch 8/10 Iteration: 33800 Avg. Training loss: 3.7972 0.1147 sec/batch
Epoch 8/10 Iteration: 33900 Avg. Training loss: 3.8719 0.1153 sec/batch
Epoch 8/10 Iteration: 34000 Avg. Training loss: 3.9009 0.1143 sec/batch
Nearest to was: the, first, would, early, in, were, had, his,
Nearest to other: of, this, and, the, an, to, a, for,
Nearest to five: six, one, three, two, nine, four, zero, seven,
Nearest to that: to, this, any, the, is, all, have, telomerase,
Nearest to of: the, and, in, a, is, as, for, also,
Nearest to see: links, references, also, external, is, relating, list, history,
Nearest to when: gets, again, solace, bouncing, to, was, before, they,
Nearest to will: healthy, perpetuity, come, centromeres, wanderers, unless, dte, octane,
Nearest to pressure: flow, heat, bicarbonate, partito, deflection, refrigeration, cavanagh, prolong,
Nearest to stage: music, dampier, communicates, sequentially, diuretic, karnstein, antonius, rutles,
Nearest to ice: frozen, tundra, panes, booth, cooling, salicylate, possibility, poetically,
Nearest to discovered: elixir, fissionable, unlikely, barycenter, craters, gregor, mckee, was,
Nearest to know: me, you, your, our, think, ostriches, lucille, stranger,
Nearest to police: jimbo, presides, mooted, snafu, beefheart, mechanised, fuerteventura, racer,
Nearest to numerous: wagnerites, presumably, unusable, infrequently, archetypal, anadolu, yazidism, ipx,
Nearest to road: marbled, brice, beautiful, gripped, iata, turnpike, waits, cullen,
Epoch 8/10 Iteration: 34100 Avg. Training loss: 3.8677 0.1179 sec/batch
Epoch 8/10 Iteration: 34200 Avg. Training loss: 3.8518 0.1154 sec/batch
Epoch 8/10 Iteration: 34300 Avg. Training loss: 3.9268 0.1135 sec/batch
Epoch 8/10 Iteration: 34400 Avg. Training loss: 3.8963 0.1138 sec/batch
Epoch 8/10 Iteration: 34500 Avg. Training loss: 3.8438 0.1140 sec/batch
Epoch 8/10 Iteration: 34600 Avg. Training loss: 3.8766 0.1154 sec/batch
Epoch 8/10 Iteration: 34700 Avg. Training loss: 3.8924 0.1141 sec/batch
Epoch 8/10 Iteration: 34800 Avg. Training loss: 3.8901 0.1146 sec/batch
Epoch 8/10 Iteration: 34900 Avg. Training loss: 3.8965 0.1145 sec/batch
Epoch 8/10 Iteration: 35000 Avg. Training loss: 3.9048 0.1137 sec/batch
Nearest to was: first, in, early, the, his, had, were, named,
Nearest to other: of, this, and, the, an, to, for, customization,
Nearest to five: six, one, three, two, four, nine, zero, seven,
Nearest to that: any, to, this, is, the, all, being, have,
Nearest to of: the, and, a, in, as, for, is, by,
Nearest to see: links, references, also, external, is, relating, list, disambiguation,
Nearest to when: gets, again, submit, solace, they, wiles, given, to,
Nearest to will: healthy, dte, wanderers, centromeres, come, perpetuity, you, immortality,
Nearest to pressure: flow, heat, bicarbonate, partito, deflection, cavanagh, weightings, prolong,
Nearest to stage: music, dampier, kaufman, sequentially, rutles, antonius, diuretic, karnstein,
Nearest to ice: frozen, booth, tundra, panes, salicylate, possibility, cooling, poetically,
Nearest to discovered: elixir, fissionable, barycenter, unlikely, craters, gregor, mckee, detectors,
Nearest to know: me, you, your, think, our, ostriches, don, t,
Nearest to police: presides, jimbo, concepts, soldiers, recruit, snafu, mooted, mechanised,
Nearest to numerous: wagnerites, presumably, archetypal, unusable, infrequently, sacrilegious, yazidism, pseudoscience,
Nearest to road: marbled, beautiful, brice, gripped, toll, turnpike, roads, iata,
Epoch 8/10 Iteration: 35100 Avg. Training loss: 3.8411 0.1151 sec/batch
Epoch 8/10 Iteration: 35200 Avg. Training loss: 3.9121 0.1132 sec/batch
Epoch 8/10 Iteration: 35300 Avg. Training loss: 3.8670 0.1143 sec/batch
Epoch 8/10 Iteration: 35400 Avg. Training loss: 3.9366 0.1145 sec/batch
Epoch 8/10 Iteration: 35500 Avg. Training loss: 3.8823 0.1154 sec/batch
Epoch 8/10 Iteration: 35600 Avg. Training loss: 3.8610 0.1175 sec/batch
Epoch 8/10 Iteration: 35700 Avg. Training loss: 3.8495 0.1179 sec/batch
Epoch 8/10 Iteration: 35800 Avg. Training loss: 3.8610 0.1147 sec/batch
Epoch 8/10 Iteration: 35900 Avg. Training loss: 3.9132 0.1153 sec/batch
Epoch 8/10 Iteration: 36000 Avg. Training loss: 3.8666 0.1131 sec/batch
Nearest to was: the, his, early, in, first, had, would, lifetime,
Nearest to other: of, this, an, and, innovated, for, bijapur, native,
Nearest to five: six, one, three, two, four, nine, zero, seven,
Nearest to that: the, this, to, any, have, being, is, not,
Nearest to of: the, and, in, a, for, as, one, also,
Nearest to see: links, references, also, is, external, relating, list, history,
Nearest to when: gets, was, before, wiles, again, submit, after, his,
Nearest to will: healthy, perpetuity, come, wanderers, centromeres, immortality, dte, undisturbed,
Nearest to pressure: flow, heat, partito, prolong, cavanagh, bicarbonate, deflection, sandford,
Nearest to stage: music, kaufman, antonius, rutles, diuretic, sequentially, karnstein, inanimate,
Nearest to ice: tundra, frozen, booth, panes, possibility, cooling, poetically, salicylate,
Nearest to discovered: elixir, fissionable, barycenter, unlikely, craters, gregor, detectors, ethan,
Nearest to know: me, you, think, your, our, ostriches, don, lucille,
Nearest to police: presides, soldiers, mooted, snafu, delimitation, mechanised, jimbo, recruit,
Nearest to numerous: presumably, wagnerites, unusable, infrequently, archetypal, pseudoscience, anadolu, ipx,
Nearest to road: marbled, beautiful, brice, gripped, turnpike, waits, iata, cullen,
Epoch 8/10 Iteration: 36100 Avg. Training loss: 3.9616 0.1157 sec/batch
Epoch 8/10 Iteration: 36200 Avg. Training loss: 3.9323 0.1143 sec/batch
Epoch 8/10 Iteration: 36300 Avg. Training loss: 3.9183 0.1144 sec/batch
Epoch 8/10 Iteration: 36400 Avg. Training loss: 3.8306 0.1141 sec/batch
Epoch 8/10 Iteration: 36500 Avg. Training loss: 3.8870 0.1138 sec/batch
Epoch 8/10 Iteration: 36600 Avg. Training loss: 3.8614 0.1141 sec/batch
Epoch 8/10 Iteration: 36700 Avg. Training loss: 3.8294 0.1147 sec/batch
Epoch 8/10 Iteration: 36800 Avg. Training loss: 3.8968 0.1153 sec/batch
Epoch 8/10 Iteration: 36900 Avg. Training loss: 3.8618 0.1128 sec/batch
Epoch 8/10 Iteration: 37000 Avg. Training loss: 3.9011 0.1132 sec/batch
Nearest to was: early, the, in, first, his, had, were, later,
Nearest to other: of, this, and, an, including, for, a, to,
Nearest to five: six, one, two, three, nine, four, zero, seven,
Nearest to that: any, to, is, have, the, this, telomerase, being,
Nearest to of: the, and, in, a, also, for, role, as,
Nearest to see: links, also, references, external, is, disambiguation, list, relating,
Nearest to when: gets, again, before, solace, wiles, capsules, bouncing, mccandless,
Nearest to will: healthy, perpetuity, you, wanderers, dte, come, centromeres, just,
Nearest to pressure: flow, heat, deflection, cavanagh, window, prolong, partito, metrology,
Nearest to stage: kaufman, diuretic, music, inanimate, antonius, demeanour, sequentially, rutles,
Nearest to ice: frozen, tundra, booth, panes, cooling, possibility, poetically, argolid,
Nearest to discovered: elixir, fissionable, barycenter, craters, gregor, unlikely, detectors, mckee,
Nearest to know: me, you, your, think, ostriches, our, don, lucille,
Nearest to police: soldiers, snafu, presides, mooted, jimbo, officers, withstanding, mechanised,
Nearest to numerous: wagnerites, presumably, unusable, infrequently, archetypal, ipx, pseudoscience, anadolu,
Nearest to road: marbled, beautiful, brice, gripped, iata, waits, turnpike, enthusiast,
Epoch 9/10 Iteration: 37100 Avg. Training loss: 3.8893 0.0974 sec/batch
Epoch 9/10 Iteration: 37200 Avg. Training loss: 3.8594 0.1153 sec/batch
Epoch 9/10 Iteration: 37300 Avg. Training loss: 3.8456 0.1132 sec/batch
Epoch 9/10 Iteration: 37400 Avg. Training loss: 3.8678 0.1151 sec/batch
Epoch 9/10 Iteration: 37500 Avg. Training loss: 3.8135 0.1126 sec/batch
Epoch 9/10 Iteration: 37600 Avg. Training loss: 3.8443 0.1130 sec/batch
Epoch 9/10 Iteration: 37700 Avg. Training loss: 3.7918 0.1151 sec/batch
Epoch 9/10 Iteration: 37800 Avg. Training loss: 3.8571 0.1143 sec/batch
Epoch 9/10 Iteration: 37900 Avg. Training loss: 3.8698 0.1145 sec/batch
Epoch 9/10 Iteration: 38000 Avg. Training loss: 3.8951 0.1163 sec/batch
Nearest to was: the, early, were, first, in, his, would, had,
Nearest to other: of, this, and, an, for, to, including, are,
Nearest to five: six, one, two, three, four, nine, zero, seven,
Nearest to that: to, the, is, this, any, have, telomerase, it,
Nearest to of: the, and, in, also, a, are, is, as,
Nearest to see: links, references, also, external, is, disambiguation, relating, list,
Nearest to when: gets, to, again, his, bouncing, before, they, solace,
Nearest to will: healthy, perpetuity, you, parks, come, immortality, wanderers, centromeres,
Nearest to pressure: flow, heat, cavanagh, window, prolong, latifah, weightings, partito,
Nearest to stage: kaufman, diuretic, sequentially, antonius, music, dampier, demeanour, karnstein,
Nearest to ice: frozen, tundra, booth, panes, salicylate, cooling, poetically, possibility,
Nearest to discovered: elixir, fissionable, barycenter, unlikely, gregor, craters, stone, ancestor,
Nearest to know: me, you, think, our, your, ostriches, don, i,
Nearest to police: snafu, jimbo, presides, officers, mooted, withstanding, delimitation, soldiers,
Nearest to numerous: wagnerites, presumably, infrequently, anadolu, yazidism, archetypal, often, pseudoscience,
Nearest to road: marbled, beautiful, brice, gripped, turnpike, iata, driving, leakage,
Epoch 9/10 Iteration: 38100 Avg. Training loss: 3.8629 0.1164 sec/batch
Epoch 9/10 Iteration: 38200 Avg. Training loss: 3.7534 0.1153 sec/batch
Epoch 9/10 Iteration: 38300 Avg. Training loss: 3.8434 0.1168 sec/batch
Epoch 9/10 Iteration: 38400 Avg. Training loss: 3.8079 0.1155 sec/batch
Epoch 9/10 Iteration: 38500 Avg. Training loss: 3.8227 0.1159 sec/batch
Epoch 9/10 Iteration: 38600 Avg. Training loss: 3.8566 0.1158 sec/batch
Epoch 9/10 Iteration: 38700 Avg. Training loss: 3.8805 0.1151 sec/batch
Epoch 9/10 Iteration: 38800 Avg. Training loss: 3.8298 0.1156 sec/batch
Epoch 9/10 Iteration: 38900 Avg. Training loss: 3.8682 0.1152 sec/batch
Epoch 9/10 Iteration: 39000 Avg. Training loss: 3.8904 0.1147 sec/batch
Nearest to was: early, first, the, in, his, would, were, had,
Nearest to other: of, this, and, to, as, an, for, are,
Nearest to five: six, one, two, three, nine, four, zero, seven,
Nearest to that: any, to, this, is, the, have, and, it,
Nearest to of: the, and, in, a, also, is, as, for,
Nearest to see: links, also, references, is, external, disambiguation, list, relating,
Nearest to when: gets, again, his, before, given, was, bouncing, submit,
Nearest to will: healthy, come, wanderers, perpetuity, you, centromeres, just, unless,
Nearest to pressure: flow, heat, cavanagh, volume, salinity, deflection, prolong, weightings,
Nearest to stage: kaufman, antonius, sequentially, dampier, diuretic, demeanour, music, fay,
Nearest to ice: frozen, booth, tundra, panes, possibility, salicylate, cooling, poetically,
Nearest to discovered: elixir, fissionable, unlikely, craters, gregor, barycenter, mckee, ancestor,
Nearest to know: you, me, think, your, ostriches, our, don, thinks,
Nearest to police: snafu, presides, delimitation, withstanding, officers, mooted, jimbo, soldiers,
Nearest to numerous: presumably, often, pseudoscience, infrequently, wagnerites, sacrilegious, archetypal, unusable,
Nearest to road: marbled, beautiful, brice, turnpike, iata, enthusiast, gripped, toll,
Epoch 9/10 Iteration: 39100 Avg. Training loss: 3.8250 0.1164 sec/batch
Epoch 9/10 Iteration: 39200 Avg. Training loss: 3.8694 0.1147 sec/batch
Epoch 9/10 Iteration: 39300 Avg. Training loss: 3.8304 0.1133 sec/batch
Epoch 9/10 Iteration: 39400 Avg. Training loss: 3.8775 0.1138 sec/batch
Epoch 9/10 Iteration: 39500 Avg. Training loss: 3.8706 0.1144 sec/batch
Epoch 9/10 Iteration: 39600 Avg. Training loss: 3.8666 0.1131 sec/batch
Epoch 9/10 Iteration: 39700 Avg. Training loss: 3.8701 0.1133 sec/batch
Epoch 9/10 Iteration: 39800 Avg. Training loss: 3.8454 0.1144 sec/batch
Epoch 9/10 Iteration: 39900 Avg. Training loss: 3.8905 0.1130 sec/batch
Epoch 9/10 Iteration: 40000 Avg. Training loss: 3.8507 0.1150 sec/batch
Nearest to was: the, early, in, first, were, had, became, would,
Nearest to other: of, this, to, and, for, the, as, a,
Nearest to five: six, one, two, three, four, zero, nine, seven,
Nearest to that: to, is, this, the, any, it, have, not,
Nearest to of: the, and, in, also, a, by, as, for,
Nearest to see: links, also, references, is, external, list, disambiguation, relating,
Nearest to when: gets, again, was, life, before, his, wiles, given,
Nearest to will: healthy, come, wanderers, immortality, centromeres, octane, dte, you,
Nearest to pressure: flow, heat, change, salinity, cavanagh, latifah, deflection, prolong,
Nearest to stage: antonius, kaufman, sequentially, dampier, rutles, demeanour, music, diuretic,
Nearest to ice: tundra, frozen, possibility, panes, cooling, salicylate, booth, poetically,
Nearest to discovered: elixir, fissionable, unlikely, craters, barycenter, mckee, ancestor, ethan,
Nearest to know: you, me, think, our, ostriches, your, don, thinks,
Nearest to police: officers, mechanised, soldiers, snafu, presides, delimitation, withstanding, fuerteventura,
Nearest to numerous: presumably, sacrilegious, often, pseudoscience, yazidism, wagnerites, anadolu, archetypal,
Nearest to road: marbled, beautiful, brice, turnpike, toll, driving, enthusiast, iata,
Epoch 9/10 Iteration: 40100 Avg. Training loss: 3.8765 0.1164 sec/batch
Epoch 9/10 Iteration: 40200 Avg. Training loss: 3.8643 0.1158 sec/batch
Epoch 9/10 Iteration: 40300 Avg. Training loss: 3.8514 0.1164 sec/batch
Epoch 9/10 Iteration: 40400 Avg. Training loss: 3.8207 0.1144 sec/batch
Epoch 9/10 Iteration: 40500 Avg. Training loss: 3.8867 0.1168 sec/batch
Epoch 9/10 Iteration: 40600 Avg. Training loss: 3.8446 0.1149 sec/batch
Epoch 9/10 Iteration: 40700 Avg. Training loss: 3.9508 0.1143 sec/batch
Epoch 9/10 Iteration: 40800 Avg. Training loss: 3.8923 0.1131 sec/batch
Epoch 9/10 Iteration: 40900 Avg. Training loss: 3.8763 0.1156 sec/batch
Epoch 9/10 Iteration: 41000 Avg. Training loss: 3.8255 0.1149 sec/batch
Nearest to was: his, early, first, in, became, later, had, the,
Nearest to other: of, this, and, to, a, for, are, an,
Nearest to five: six, one, three, two, nine, four, zero, seven,
Nearest to that: to, this, any, is, the, not, it, have,
Nearest to of: the, in, and, also, a, for, by, other,
Nearest to see: also, links, references, is, external, list, disambiguation, relating,
Nearest to when: gets, again, was, his, before, wiles, bouncing, after,
Nearest to will: healthy, come, wanderers, perpetuity, immortality, dte, happens, centromeres,
Nearest to pressure: flow, cavanagh, latifah, deflection, prolong, heat, salinity, window,
Nearest to stage: kaufman, sequentially, antonius, music, demeanour, dampier, diuretic, fay,
Nearest to ice: frozen, tundra, possibility, poetically, cooling, panes, booth, argolid,
Nearest to discovered: elixir, fissionable, barycenter, mckee, craters, ethan, sal, unlikely,
Nearest to know: me, you, think, don, your, ostriches, our, lucille,
Nearest to police: soldiers, officers, snafu, presides, mechanised, jimbo, withstanding, beefheart,
Nearest to numerous: presumably, wagnerites, often, pseudoscience, archetypal, sacrilegious, anadolu, infrequently,
Nearest to road: beautiful, brice, marbled, turnpike, enthusiast, gripped, driving, iata,
Epoch 9/10 Iteration: 41100 Avg. Training loss: 3.7809 0.1166 sec/batch
Epoch 9/10 Iteration: 41200 Avg. Training loss: 3.8760 0.1154 sec/batch
Epoch 9/10 Iteration: 41300 Avg. Training loss: 3.7995 0.1150 sec/batch
Epoch 9/10 Iteration: 41400 Avg. Training loss: 3.8810 0.1155 sec/batch
Epoch 9/10 Iteration: 41500 Avg. Training loss: 3.8302 0.1135 sec/batch
Epoch 9/10 Iteration: 41600 Avg. Training loss: 3.8637 0.1154 sec/batch
Epoch 10/10 Iteration: 41700 Avg. Training loss: 3.9135 0.0664 sec/batch
Epoch 10/10 Iteration: 41800 Avg. Training loss: 3.8231 0.1153 sec/batch
Epoch 10/10 Iteration: 41900 Avg. Training loss: 3.8397 0.1143 sec/batch
Epoch 10/10 Iteration: 42000 Avg. Training loss: 3.8589 0.1135 sec/batch
Nearest to was: the, his, early, had, in, later, first, would,
Nearest to other: of, this, to, and, are, including, for, a,
Nearest to five: six, one, three, two, four, nine, seven, zero,
Nearest to that: to, this, have, the, but, any, is, it,
Nearest to of: the, and, in, a, also, from, to, with,
Nearest to see: also, links, references, external, is, list, disambiguation, of,
Nearest to when: gets, was, his, again, to, after, result, the,
Nearest to will: healthy, perpetuity, come, urged, immortality, you, dte, centromeres,
Nearest to pressure: flow, cavanagh, latifah, heat, window, deflection, salinity, prolong,
Nearest to stage: sequentially, antonius, diuretic, kaufman, demeanour, fay, dampier, inanimate,
Nearest to ice: frozen, tundra, poetically, possibility, panes, booth, cooling, argolid,
Nearest to discovered: elixir, fissionable, mckee, was, barycenter, craters, named, ancestor,
Nearest to know: me, you, think, don, ostriches, your, our, thinks,
Nearest to police: snafu, soldiers, officers, presides, jimbo, withstanding, delimitation, fuerteventura,
Nearest to numerous: presumably, wagnerites, pseudoscience, often, yazidism, anadolu, sacrilegious, archetypal,
Nearest to road: marbled, brice, beautiful, enthusiast, turnpike, driving, toll, gripped,
Epoch 10/10 Iteration: 42100 Avg. Training loss: 3.8061 0.1155 sec/batch
Epoch 10/10 Iteration: 42200 Avg. Training loss: 3.8459 0.1126 sec/batch
Epoch 10/10 Iteration: 42300 Avg. Training loss: 3.8355 0.1146 sec/batch
Epoch 10/10 Iteration: 42400 Avg. Training loss: 3.8181 0.1140 sec/batch
Epoch 10/10 Iteration: 42500 Avg. Training loss: 3.8601 0.1152 sec/batch
Epoch 10/10 Iteration: 42600 Avg. Training loss: 3.8575 0.1144 sec/batch
Epoch 10/10 Iteration: 42700 Avg. Training loss: 3.8935 0.1145 sec/batch
Epoch 10/10 Iteration: 42800 Avg. Training loss: 3.7459 0.1154 sec/batch
Epoch 10/10 Iteration: 42900 Avg. Training loss: 3.8041 0.1162 sec/batch
Epoch 10/10 Iteration: 43000 Avg. Training loss: 3.7780 0.1166 sec/batch
Nearest to was: early, first, the, his, were, would, later, had,
Nearest to other: of, this, and, to, a, are, an, for,
Nearest to five: six, one, three, two, zero, nine, four, seven,
Nearest to that: to, is, the, this, it, have, any, but,
Nearest to of: the, and, in, a, is, also, are, as,
Nearest to see: links, also, references, external, is, list, of, disambiguation,
Nearest to when: gets, again, before, to, result, his, given, bouncing,
Nearest to will: healthy, come, perpetuity, unless, you, immortality, dte, octane,
Nearest to pressure: flow, cavanagh, latifah, heat, window, deflection, prolong, change,
Nearest to stage: antonius, kaufman, diuretic, sequentially, demeanour, fay, music, jamison,
Nearest to ice: frozen, possibility, tundra, panes, booth, poetically, argolid, salicylate,
Nearest to discovered: elixir, fissionable, barycenter, unlikely, mckee, gregor, cenozoic, ancestor,
Nearest to know: you, me, think, don, your, ostriches, our, i,
Nearest to police: snafu, fuerteventura, soldiers, beefheart, mechanised, delimitation, jimbo, officers,
Nearest to numerous: presumably, often, wagnerites, pseudoscience, yazidism, christianity, challenge, sacrilegious,
Nearest to road: beautiful, brice, marbled, enthusiast, turnpike, toll, driving, gripped,
Epoch 10/10 Iteration: 43100 Avg. Training loss: 3.7566 0.1163 sec/batch
Epoch 10/10 Iteration: 43200 Avg. Training loss: 3.8304 0.1151 sec/batch
Epoch 10/10 Iteration: 43300 Avg. Training loss: 3.8470 0.1148 sec/batch
Epoch 10/10 Iteration: 43400 Avg. Training loss: 3.8500 0.1168 sec/batch
Epoch 10/10 Iteration: 43500 Avg. Training loss: 3.8091 0.1151 sec/batch
Epoch 10/10 Iteration: 43600 Avg. Training loss: 3.9029 0.1146 sec/batch
Epoch 10/10 Iteration: 43700 Avg. Training loss: 3.8185 0.1141 sec/batch
Epoch 10/10 Iteration: 43800 Avg. Training loss: 3.8160 0.1146 sec/batch
Epoch 10/10 Iteration: 43900 Avg. Training loss: 3.8279 0.1146 sec/batch
Epoch 10/10 Iteration: 44000 Avg. Training loss: 3.8525 0.1158 sec/batch
Nearest to was: early, in, the, first, would, were, later, named,
Nearest to other: of, this, to, and, a, for, are, the,
Nearest to five: six, one, three, two, nine, four, zero, seven,
Nearest to that: is, to, any, the, it, this, but, not,
Nearest to of: the, and, a, in, is, as, also, to,
Nearest to see: links, also, references, external, list, is, disambiguation, of,
Nearest to when: gets, again, before, to, time, result, his, they,
Nearest to will: healthy, come, perpetuity, you, return, unless, happens, immortality,
Nearest to pressure: flow, heat, latifah, cavanagh, volume, window, deflection, metrology,
Nearest to stage: music, antonius, kaufman, sequentially, demeanour, fay, biggest, diuretic,
Nearest to ice: frozen, tundra, panes, possibility, salicylate, booth, poetically, argolid,
Nearest to discovered: elixir, fissionable, mckee, was, unlikely, barycenter, formalizing, unknown,
Nearest to know: me, you, think, don, ostriches, your, our, thinks,
Nearest to police: snafu, soldiers, officers, delimitation, paramilitary, mechanised, fuerteventura, presides,
Nearest to numerous: presumably, often, pseudoscience, wagnerites, sacrilegious, archetypal, yazidism, infrequently,
Nearest to road: marbled, brice, beautiful, toll, enthusiast, driving, turnpike, gripped,
Epoch 10/10 Iteration: 44100 Avg. Training loss: 3.8744 0.1154 sec/batch
Epoch 10/10 Iteration: 44200 Avg. Training loss: 3.8523 0.1147 sec/batch
Epoch 10/10 Iteration: 44300 Avg. Training loss: 3.8101 0.1138 sec/batch
Epoch 10/10 Iteration: 44400 Avg. Training loss: 3.8435 0.1125 sec/batch
Epoch 10/10 Iteration: 44500 Avg. Training loss: 3.8792 0.1144 sec/batch
Epoch 10/10 Iteration: 44600 Avg. Training loss: 3.8482 0.1143 sec/batch
Epoch 10/10 Iteration: 44700 Avg. Training loss: 3.8295 0.1144 sec/batch
Epoch 10/10 Iteration: 44800 Avg. Training loss: 3.8364 0.1142 sec/batch
Epoch 10/10 Iteration: 44900 Avg. Training loss: 3.8243 0.1148 sec/batch
Epoch 10/10 Iteration: 45000 Avg. Training loss: 3.8196 0.1169 sec/batch
Nearest to was: early, in, the, first, would, were, but, became,
Nearest to other: of, this, to, and, a, the, for, as,
Nearest to five: six, one, three, two, zero, nine, four, seven,
Nearest to that: is, to, this, the, have, any, not, but,
Nearest to of: the, and, in, a, also, to, as, is,
Nearest to see: also, links, references, external, list, is, of, disambiguation,
Nearest to when: before, gets, again, was, time, because, after, they,
Nearest to will: healthy, come, wanderers, good, perpetuity, centromeres, return, you,
Nearest to pressure: flow, latifah, cavanagh, heat, deflection, window, metrology, change,
Nearest to stage: antonius, sequentially, demeanour, music, diuretic, kaufman, fay, karnstein,
Nearest to ice: frozen, tundra, possibility, poetically, booth, panes, argolid, cooling,
Nearest to discovered: elixir, fissionable, unknown, unlikely, mckee, barycenter, ancestor, ethan,
Nearest to know: you, me, think, don, ostriches, your, our, thinks,
Nearest to police: soldiers, snafu, paramilitary, officers, mechanised, delimitation, tankette, fuerteventura,
Nearest to numerous: often, presumably, pseudoscience, wagnerites, sacrilegious, infrequently, challenge, unusable,
Nearest to road: brice, marbled, beautiful, turnpike, enthusiast, toll, iata, driving,
Epoch 10/10 Iteration: 45100 Avg. Training loss: 3.8482 0.1170 sec/batch
Epoch 10/10 Iteration: 45200 Avg. Training loss: 3.8184 0.1158 sec/batch
Epoch 10/10 Iteration: 45300 Avg. Training loss: 3.9221 0.1158 sec/batch
Epoch 10/10 Iteration: 45400 Avg. Training loss: 3.9341 0.1159 sec/batch
Epoch 10/10 Iteration: 45500 Avg. Training loss: 3.8885 0.1148 sec/batch
Epoch 10/10 Iteration: 45600 Avg. Training loss: 3.8324 0.1159 sec/batch
Epoch 10/10 Iteration: 45700 Avg. Training loss: 3.7887 0.1154 sec/batch
Epoch 10/10 Iteration: 45800 Avg. Training loss: 3.8319 0.1139 sec/batch
Epoch 10/10 Iteration: 45900 Avg. Training loss: 3.7434 0.1154 sec/batch
Epoch 10/10 Iteration: 46000 Avg. Training loss: 3.8520 0.1141 sec/batch
Nearest to was: early, in, initially, became, first, the, were, would,
Nearest to other: to, of, this, and, a, are, an, for,
Nearest to five: six, one, two, three, nine, zero, four, seven,
Nearest to that: to, is, this, not, the, but, be, have,
Nearest to of: the, and, in, a, also, is, from, are,
Nearest to see: also, links, references, is, external, list, of, disambiguation,
Nearest to when: gets, again, before, was, time, bouncing, given, result,
Nearest to will: healthy, come, centromeres, wanderers, you, perpetuity, good, unless,
Nearest to pressure: flow, latifah, cavanagh, deflection, window, prolong, heat, partito,
Nearest to stage: antonius, music, kaufman, sequentially, demeanour, rutles, diuretic, dampier,
Nearest to ice: frozen, tundra, booth, poetically, argolid, panes, possibility, cooling,
Nearest to discovered: elixir, fissionable, mckee, unlikely, unknown, barycenter, plutonium, ancestor,
Nearest to know: me, you, think, your, don, ostriches, our, thinks,
Nearest to police: soldiers, paramilitary, snafu, officers, fuerteventura, civilians, mechanised, tankette,
Nearest to numerous: presumably, pseudoscience, often, wagnerites, sacrilegious, yazidism, infrequently, anadolu,
Nearest to road: brice, marbled, beautiful, enthusiast, turnpike, iata, toll, driving,
Epoch 10/10 Iteration: 46100 Avg. Training loss: 3.8310 0.1165 sec/batch
Epoch 10/10 Iteration: 46200 Avg. Training loss: 3.8352 0.1141 sec/batch