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4#7 - Victor Undli - From Hype to Innovation: Navigating Data Science and AI in Norway (Eng)

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Manage episode 448475613 series 2940030
Contenuto fornito da Winfried Adalbert Etzel - DAMA Norway. Tutti i contenuti dei podcast, inclusi episodi, grafica e descrizioni dei podcast, vengono caricati e forniti direttamente da Winfried Adalbert Etzel - DAMA Norway o dal partner della piattaforma podcast. Se ritieni che qualcuno stia utilizzando la tua opera protetta da copyright senza la tua autorizzazione, puoi seguire la procedura descritta qui https://it.player.fm/legal.

«I think we are just seeing the beginning of what we can achieve in that field.»

Step into the world of data science and AI as we welcome Victor Undli, a leading data scientist from Norway, who shares his insights into how this field has evolved from mere hype to a vital driver of innovation in Norwegian organizations. Discover how Victor's work with Ung.no, a Norwegian platform for teenagers, illustrates the profound social impact and value creation potential of data science, especially when it comes to directing young inquiring minds to the right experts using natural language processing. We'll discuss the challenges that organizations face in adopting data science, particularly the tendency to seek out pre-conceived solutions instead of targeting real issues with the right tools. This episode promises to illuminate how AI can enhance rather than replace human roles by balancing automation with human oversight.
Join us as we explore the challenges of bridging the gap between academia and industry, with a spotlight on Norway's public sector as a cautious yet progressive player in tech advancement. Victor also shares his thoughts on developing a Norwegian language model that aligns with local values and culture, which could be pivotal as the AI Act comes into play. Learn about the unique role Norway can adopt in the AI landscape by becoming a model for small countries in utilizing large language models ethically and effectively. We highlight the components of successful machine learning projects: quality data, a strong use case, and effective execution, and encourage the power of imagination in idea development, calling on people from all backgrounds to engage.
Here are my key takeaways:
Get started as Data Scientist

  • Expectations from working with cutting edge tech, and chasing the last percentage of precision.
  • Reality is much more messy.
  • Time management and choosing ideas carefully is important.
  • «I end up with creating a lot of benchmark models with the time given, and then try to improve them in a later iteration.»
  • Data Science studies is very much about deep diving into models and their performance, almost unconcerned with technical limitations.
  • A lot of tasks when working with Data Science are in fact Data Engineering tasks.
  • Closing the gap between academia and industry is going to be hard.
  • Data Science is a team sport - you want someone to exchange with and work together with.

Public vs. Privat

  • There is a difference between public and privat sector in Norway.
  • Public sector in Norway is quite advanced in technological development.
  • Public sector acts more carefully.

Stakeholder Management and Data Quality

  • It is important to communicate clearly and consistently with your stakeholders.
  • You have to compromise between stakeholder expectation and your restrains.
  • If you don’t curate your data correctly, it will loose some of its potential over time.
  • Data Quality is central, especially when used for AI models.
  • Data Curation is also a lot about Data Enrichments - filling in the gaps.

AI and the need for a Norwegian LLM

  • AI can be categorized into the brain and the imagination.
  • The brain is to understand, the imagination is to create.
  • We should invest time into creating open source, Norwegian LLM, as a competitive choice.
  • Language encapsulates culture. You need to embrace language to understand culture.
  • Norways role is a sa strong consumer of AI. That also means to lead by example.
  • Norway and the Nordic countries can bring a strong ethical focus to the table.

  continue reading

Capitoli

1. Data Science and AI in Norway (00:00:00)

2. Closing the Gap and Data Challenges (00:10:43)

3. Norwegian Language Model Advantages (00:24:53)

70 episodi

Artwork
iconCondividi
 
Manage episode 448475613 series 2940030
Contenuto fornito da Winfried Adalbert Etzel - DAMA Norway. Tutti i contenuti dei podcast, inclusi episodi, grafica e descrizioni dei podcast, vengono caricati e forniti direttamente da Winfried Adalbert Etzel - DAMA Norway o dal partner della piattaforma podcast. Se ritieni che qualcuno stia utilizzando la tua opera protetta da copyright senza la tua autorizzazione, puoi seguire la procedura descritta qui https://it.player.fm/legal.

«I think we are just seeing the beginning of what we can achieve in that field.»

Step into the world of data science and AI as we welcome Victor Undli, a leading data scientist from Norway, who shares his insights into how this field has evolved from mere hype to a vital driver of innovation in Norwegian organizations. Discover how Victor's work with Ung.no, a Norwegian platform for teenagers, illustrates the profound social impact and value creation potential of data science, especially when it comes to directing young inquiring minds to the right experts using natural language processing. We'll discuss the challenges that organizations face in adopting data science, particularly the tendency to seek out pre-conceived solutions instead of targeting real issues with the right tools. This episode promises to illuminate how AI can enhance rather than replace human roles by balancing automation with human oversight.
Join us as we explore the challenges of bridging the gap between academia and industry, with a spotlight on Norway's public sector as a cautious yet progressive player in tech advancement. Victor also shares his thoughts on developing a Norwegian language model that aligns with local values and culture, which could be pivotal as the AI Act comes into play. Learn about the unique role Norway can adopt in the AI landscape by becoming a model for small countries in utilizing large language models ethically and effectively. We highlight the components of successful machine learning projects: quality data, a strong use case, and effective execution, and encourage the power of imagination in idea development, calling on people from all backgrounds to engage.
Here are my key takeaways:
Get started as Data Scientist

  • Expectations from working with cutting edge tech, and chasing the last percentage of precision.
  • Reality is much more messy.
  • Time management and choosing ideas carefully is important.
  • «I end up with creating a lot of benchmark models with the time given, and then try to improve them in a later iteration.»
  • Data Science studies is very much about deep diving into models and their performance, almost unconcerned with technical limitations.
  • A lot of tasks when working with Data Science are in fact Data Engineering tasks.
  • Closing the gap between academia and industry is going to be hard.
  • Data Science is a team sport - you want someone to exchange with and work together with.

Public vs. Privat

  • There is a difference between public and privat sector in Norway.
  • Public sector in Norway is quite advanced in technological development.
  • Public sector acts more carefully.

Stakeholder Management and Data Quality

  • It is important to communicate clearly and consistently with your stakeholders.
  • You have to compromise between stakeholder expectation and your restrains.
  • If you don’t curate your data correctly, it will loose some of its potential over time.
  • Data Quality is central, especially when used for AI models.
  • Data Curation is also a lot about Data Enrichments - filling in the gaps.

AI and the need for a Norwegian LLM

  • AI can be categorized into the brain and the imagination.
  • The brain is to understand, the imagination is to create.
  • We should invest time into creating open source, Norwegian LLM, as a competitive choice.
  • Language encapsulates culture. You need to embrace language to understand culture.
  • Norways role is a sa strong consumer of AI. That also means to lead by example.
  • Norway and the Nordic countries can bring a strong ethical focus to the table.

  continue reading

Capitoli

1. Data Science and AI in Norway (00:00:00)

2. Closing the Gap and Data Challenges (00:10:43)

3. Norwegian Language Model Advantages (00:24:53)

70 episodi

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