Gawler Races | Neurals
Friday, 25th October 2024
- Meeting Info
- Runners / Jockeys / Trainers / Sire
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- Computer Tips
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Print
CSV
7
18:25
(local)
(local)
2024 Holdfast Insurance Brokers Gawler Cup (Heat of Sportsbet Happy Trails Series)
WT: 54.0kg Type: OPEN Fastest Time: 1:30.03 Chicago Storm 27 Oct 2023 OPEN SOT:G
AUD $107,250
1500m
TURF
1st
AUD $57,975
2nd
AUD $19,125
3rd
AUD $8,625
4th
AUD $5,475
5th
AUD $4,425
6th - 10th
AUD $2,325
7
18:25
(local)
(local)
AUD $107,250
1500m
2024 Holdfast Insurance Brokers Gawler Cup (Heat of Sportsbet Happy Trails Series)
WT: 54.0kg Type: OPEN Fastest Time: 1:30.03 Chicago Storm 27 Oct 2023 OPEN SOT:G
1st
AUD $57,975
2nd
AUD $19,125
3rd
AUD $8,625
4th
AUD $5,475
5th
AUD $4,425
6th - 10th
AUD $2,325
INTERACTIVE FORM
Racing And Sports has two quality interactive form systems which you as the user can adjust to your own specific tastes and thoughts. We've detailed below how to use both the Neurals and Worksheet areas of a race guide.
Neurals
These are computer enhanced analyses of all the areas which go into making up a race field. They factor in algorithms for every contingency as explained below and added them up to generate the likely best horse in a race.
When you go into them via the Form Guide page you simply run your mouse over any column and you can sort the field by any individual type of Neural Rating which determines the final total (and therefore best rater).
Explanation of Inputs for Neural Analysis |
|
---|---|
CP | Career performance assessment based on weight/class algorithms |
CF | Current form measured by class/weight algorithms |
TIM | Revolutionary time assessment (adjusted algorithm) |
JA | Jockey ability algorithm |
TA | Trainer ability algorithm |
JT | Jockey/trainer combination algorithm |
WT | Wet track performance algorithm |
Crs | Course suitability algorithm |
D | Distance suitability algorithm |
$ | Prizemoney earned algorithm |
BP | Barrier position (course & distance) algorithm |
DLR | Days since last run algorithm |
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