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Mapping Flavor Profiles for Wine w/ Katerina Axelsson, Tastry

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Manage episode 383166766 series 3248251
Content provided by Robert Vernick and Peter Yeung. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Robert Vernick and Peter Yeung or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ro.player.fm/legal.

Frustrated by a lack of understanding of consumer taste preferences and a lack of data-driven decision-making about winemaking, Katerina Axelsson, CEO and Co-Founder of Tastry, built an AI and chemical analysis system to solve this. With custom-built algorithms that take chemical analysis and develop flavor profiles and a database of consumer taste preferences that map to the US’s 248M adults, Tastry is paving a new, innovative way to use data to make and market wine.


Detailed Show Notes:

Tastry was founded around 6 years ago, but 1st 4 were more of an R&D project, officially launched Dec 2021

  • The wine industry is trying to anticipate what consumers want
  • New wines have an 85% failure rate in the 1st year
  • People describing flavors in wine doesn’t correlate with if they like it

Tastry uses AI and Machine Learning with chemical analysis to break down a wine’s flavor

2 databases - wine’s flavor profile and consumer taste preferences that are matched together

Wine database

  • Analyze 10,000’s of wines/year
  • Chemical analysis is done in-house on standardized equipment but with proprietary software
  • The Top 2,000 wines based on IRI annually are analyzed to build a baseline data set as wineries’ samples are proprietary

Consumer taste database

  • Did double-blind tasting panels, asking consumers if they both liked or did not like wines; the negative preference is important for the flavor profile building
  • Consumers also asked analog questions that became the Recommended by Tastry quiz
  • Use algorithms to relate data and predict preferences for the rest of the population (248M taste profiles)
  • Can now predict individual consumer taste profiles if they take the Tasty quiz with 93% accuracy in how they would rate the wine
  • Palates are very unique; the largest cohort is only 13 people
  • Demographics don’t show a lot of differences in taste preferences

Customers - work with >100 wineries, 22 of 25 largest wineries

Winemaker use cases

  • Computational Blending - uses simulation to match profiles from different blends and adjustments; winemakers set parameters on what they are trying to achieve
  • Winery had to switch from barrels to adjustments to 5x production and used blending to get a similar profile
  • Navigating smoke taint (3k tons, $10M worth of fruit) - came back with a recipe that solved the issue
  • Maintaining year-over-year consistency

Winery marketing use cases

  • Recommended by Tastry plug-in for wine clubs
  • Look more at finished wines and at competitive sets and overlap of consumer preferences

Retailer use cases

  • Recommender helps get more niche brands discovered
  • There is more traction for e-retailers now; pilots with big box retailers
  • Dec 2023 - Tastrt will announce a scalable way to access a broad # of wines

Strong ROI - 44-215x, benefits mainly cost savings, increased revenue

Business model - Vertical SaaS with consumption-based model

  • Subscription to dashboard
  • Lab analysis of samples provides ~$3,000 worth of analysis for a $370 list price
  • Compublend - per simulation charge
  • Access to competitive data sets from the Top 2,000 wines
  • Pricing is the same for winemakers, marketing, and retailers

Raised ~$10M in funding from individuals, early stage VC’s, and strategic investors (wine, AI, retail)


Get access to library episodes

Hosted on Acast. See acast.com/privacy for more information.

  continue reading

180 episoade

Artwork
iconDistribuie
 
Manage episode 383166766 series 3248251
Content provided by Robert Vernick and Peter Yeung. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Robert Vernick and Peter Yeung or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://ro.player.fm/legal.

Frustrated by a lack of understanding of consumer taste preferences and a lack of data-driven decision-making about winemaking, Katerina Axelsson, CEO and Co-Founder of Tastry, built an AI and chemical analysis system to solve this. With custom-built algorithms that take chemical analysis and develop flavor profiles and a database of consumer taste preferences that map to the US’s 248M adults, Tastry is paving a new, innovative way to use data to make and market wine.


Detailed Show Notes:

Tastry was founded around 6 years ago, but 1st 4 were more of an R&D project, officially launched Dec 2021

  • The wine industry is trying to anticipate what consumers want
  • New wines have an 85% failure rate in the 1st year
  • People describing flavors in wine doesn’t correlate with if they like it

Tastry uses AI and Machine Learning with chemical analysis to break down a wine’s flavor

2 databases - wine’s flavor profile and consumer taste preferences that are matched together

Wine database

  • Analyze 10,000’s of wines/year
  • Chemical analysis is done in-house on standardized equipment but with proprietary software
  • The Top 2,000 wines based on IRI annually are analyzed to build a baseline data set as wineries’ samples are proprietary

Consumer taste database

  • Did double-blind tasting panels, asking consumers if they both liked or did not like wines; the negative preference is important for the flavor profile building
  • Consumers also asked analog questions that became the Recommended by Tastry quiz
  • Use algorithms to relate data and predict preferences for the rest of the population (248M taste profiles)
  • Can now predict individual consumer taste profiles if they take the Tasty quiz with 93% accuracy in how they would rate the wine
  • Palates are very unique; the largest cohort is only 13 people
  • Demographics don’t show a lot of differences in taste preferences

Customers - work with >100 wineries, 22 of 25 largest wineries

Winemaker use cases

  • Computational Blending - uses simulation to match profiles from different blends and adjustments; winemakers set parameters on what they are trying to achieve
  • Winery had to switch from barrels to adjustments to 5x production and used blending to get a similar profile
  • Navigating smoke taint (3k tons, $10M worth of fruit) - came back with a recipe that solved the issue
  • Maintaining year-over-year consistency

Winery marketing use cases

  • Recommended by Tastry plug-in for wine clubs
  • Look more at finished wines and at competitive sets and overlap of consumer preferences

Retailer use cases

  • Recommender helps get more niche brands discovered
  • There is more traction for e-retailers now; pilots with big box retailers
  • Dec 2023 - Tastrt will announce a scalable way to access a broad # of wines

Strong ROI - 44-215x, benefits mainly cost savings, increased revenue

Business model - Vertical SaaS with consumption-based model

  • Subscription to dashboard
  • Lab analysis of samples provides ~$3,000 worth of analysis for a $370 list price
  • Compublend - per simulation charge
  • Access to competitive data sets from the Top 2,000 wines
  • Pricing is the same for winemakers, marketing, and retailers

Raised ~$10M in funding from individuals, early stage VC’s, and strategic investors (wine, AI, retail)


Get access to library episodes

Hosted on Acast. See acast.com/privacy for more information.

  continue reading

180 episoade

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