
Applied AI Pod
Podkast av Alexandra Petrus
Real AI talks with real people. Startup founders, startup engineers, AI community leaders, research scientists, innovation leaders, product builders, passionate AI practitioners - we talk to everyone! Grab a rounded perspective on how AI is used, tradeoffs for specific AI tools or methods, challenges in the space of AI technologies, and its future. New to AI concepts? Try the ‘Elements of AI’ 6-chapters course for an introduction to AI, and Building AI. It’s world #1 AI MOOC. And join some AI communities like Bucharest AI, Women in AI or other relevant AI-centered groups. Podcast available on all popular podcasting platforms or via assistants like Google, Alexa or Siri.
Prøv gratis i 7 dager
99,00 kr / Måned etter prøveperioden.Avslutt når som helst.
Alle episoder
33 Episoder
Episode highlights: * 01:00 - Conversational AI for the future of marketing and sales, focus on the real estate industry. * 04:00 - How Structurely works and what it solves. * 06:50 - Benefits to businesses utilizing AI within their companies. * 10:55 - The future of real estate by use of machine learning. * 16:10 - Creating a more promising future for AI as a tool for positive outcomes. E.g. Zillow. * 23:00 - Conversational AI's next big challenges. References: * Nate's LinkedIn profile * Nate's Twitter profile [https://twitter.com/whonatejoens?lang=en] * Structurely's Company Website [https://www.structurely.com/]

* 02:00 - Ada's performance, stories and metrics around. Size of the impact AI has in this space, as covered by Tradeshift. * 05:35 - Working with AI/ML teams. * 14:40 - Assessing how much data is needed for an AI project. * 18:45 - Data risks. * 24:25 - Is Agile good for AI teams? * 27:30 - How much does UX matter in e-Invoicing and ML/Data projects? * 36:35 - How can projects get derailed or fail? What should we watch out for. * 40:05 - Funny fails. * 41:50 - AI principles. References: * Lloyd's Linkedin Profile [https://www.linkedin.com/in/lloyd-humphreys-3b24009/] * Tradeshift's Ada technology [https://tradeshift.com/press/tradeshifts-next-level-ai-puts-payables-departments-in-control/] * Tradeshift's surpass of $1 trillion in transactions [https://www.businesswire.com/news/home/20210726005347/en/Tradeshift-Passes-1-Trillion-Transaction-Processing-Milestone] processed on their platform.

* 02:35 - Why hasn’t voice AI taken off already? * 22:50 - Can we fulfil an end to end new purchase naturally? * 32:20 - How can we resolve the disambiguation problem in NLU? * 37:20 - Context and memory perspectives. * 43:20 - How do we make conversations natural? References: * Dustin's VUX World Podcast [https://vux.world/podcast/] * Dustin's Linkedin profile [https://www.linkedin.com/in/dustincoates/] * Hannes' LinkedIn profile [https://www.linkedin.com/in/hannesheikinheimo/] * Speechly's Twitter profile [https://twitter.com/speechlyapi] * Speechly product search and checkout demo [https://www.youtube.com/watch?v=AlI47qnvip4] * Speechly's Interspeech Research Paper 2021 [https://www.isca-speech.org/archive/pdfs/interspeech_2021/pylkkonen21_interspeech.pdf]

* 01:15 - How does NLP work? * 04:05 - How do Transformer-based NLP models work? * 08:20 - How to look at unstructured data to take advantage of it more. * 12:00 - How to leverage ML to bring more to unstructured data? * 15:25 - Approach for low resources languages. * 23:25 - Word embeddings for common reasoning needs. * 26:55 - Techniques to follow to improve error and ambiguity in training data or for a model in general. * 30:10 - Are GPTs leading effort in the field in a wrong direction? * 34:15 - Is DeepLearning the end of AI? * 37:20 - What are some good NLP metrics to watch? * 42:05 - How do we get past transactional queries to conversational queries? * 52:00 - Is the Turing test still relevant for NLP or has it become obsolete? References: * AI-Powered Search [https://www.manning.com/books/ai-powered-search]referenced in respect of text not being unstructured. * Pre-train, Prompt, and Predict: A Systematic Survey of Prompting Methods in Natural Language Processing [https://arxiv.org/abs/2107.13586] * Rethinking Search:Making Experts out of Dilettantes Common sense reasoning [https://www.researchgate.net/publication/351369052_Rethinking_Search_Making_Experts_out_of_Dilettantes] * TWIML AI podcast 518 with Yejin Choi [https://twimlai.com/social-commonsense-reasoning-with-yejin-choi/] * DARPA's Explainable AI Project [https://www.darpa.mil/program/explainable-artificial-intelligence] * EPITA [https://www.epita.fr/] is an engineering school in Paris. * Marc's LinkedIn profile [https://www.linkedin.com/in/marc-von-wyl-90639a2/].

* 12:50 - Is the Turing test still relevant? * 21:30 - Why it's important to use methodologies in AI projects and what are some best practices out there fit for AI projects. * 28:00 - Falsehoods of methodologies in AI projects. * 35:00 - Is Agile a good framework for AI/ML projects/products? * 40:10 - How can projects get derailed or fail if you don't have a plan in place. * 44:20 - The best compliment one can get after building an AI project or system. * 47:25 - Is DL the end of AI? References: * CPMAI methodology [https://www.cognilytica.com/cpmai/] * Cognilytica's Voice Assistant Benchmark 1.0 [https://medium.com/cognilytica/the-cognilytica-voice-assistant-benchmark-78455e747d46] and 2.0 [https://www.cognilytica.com/document/report-voice-assistant-benchmark-2-0-2019/] * AI Today podcast show with Alexandra Petrus as guest [https://www.cognilytica.com/2021/10/05/ai-today-podcast-insights-into-the-ai-startup-scene-interview-with-alexandra-petrus-host-of-the-applied-ai-pod/] * AI Today podcast show [https://podcasts.apple.com/us/podcast/ai-today-podcast-artificial-intelligence-insights-experts/id1279927057]
Prøv gratis i 7 dager
99,00 kr / Måned etter prøveperioden.Avslutt når som helst.
Eksklusive podkaster
Uten reklame
Gratis podkaster
Lydbøker
20 timer i måneden