deploying r&d analytics at the pace of the...
TRANSCRIPT
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Dr Adrian Clarke
22nd March 2016
Deploying R&D
analytics at the
pace of the data
driven business
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Helping innovation, engineering and research leaders create solutions to complex challenges
Part of the Altran Group
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Our Clients Analytics Needs
“The questions we need to answer would require about n FTE over the year, but that’s an average number. The actual demand isn’t constant, and sometimes answers are needed quite quickly”
“We find we need skills in statistics, modelling, simulation, machine learning, visualisation, text analytics…The list is huge, and
we can’t possibly retain all those skills in a small team.”
Key points – fast, flexible access to a broad range of deep
skills.
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The Tessella Analytics Partnership Model
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How Does it Work in Practice
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1 3 5 7 9 11 13 15 17 19 21 23 25 27 29 31 33 35 37Ef
fort
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ou
rs)
Week Number
Broad range of deep skills4 FTEs of work paid for was delivered by 23 different specialists
Flexible accessThe hours worked in a given week was varied often by a factor of 2
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Case Study: Rothamsted Farm Platform
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30% time saving for modellers (~7 FTE)Reduces modelling outsourcing costs by 10%
Approximately 10 FTE efficiency savings annually in the studies
Significant improvements to data quality, integrity and consistency across all R&D sites
Case Study: PredICT
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… and lots more examples
https://littlebookofdatascience.tessella.com/
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Closing Thoughts The data challenges
that we all
face cross industry and
domain boundaries
“”
We’ve found embedding staff with our clients to really understand their problems,
backed up by a strong pool of experts is far more successful than clients having
transactional exchanges with disconnected statisticians
The 3 key needs to succeed in data driven R&D are:
- Speed of insights- Flexible access to expert resources
- A broad range of deep skills