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Berlin Buzzwords 2026 - Trey Grainger & Doug Turnbull, Role of Search in modern AI and new course
Jun 21, 2026
39m 21s
Beyond Hyperspace - Ohad Levi on Hardware Accelerated Search and Agentic Memory
Jun 15, 2026
56m 51s
AI Webinar - Building an AI-Ready Data Backbone
Apr 10, 2026
1h 18m 25s
Trey Grainger - Wormhole Vectors
Nov 7, 2025
1h 19m 17s
Economical way of serving vector search workloads with Simon Eskildsen, CEO Turbopuffer
Sep 19, 2025
1h 15m 26s
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| Date | Episode | Topics | Guests | Brands | Places | Keywords | Sponsor | Length | |
|---|---|---|---|---|---|---|---|---|---|
| 6/21/26 | ![]() Berlin Buzzwords 2026 - Trey Grainger & Doug Turnbull, Role of Search in modern AI and new course | This episode was recorded LIVE at the Berlin Buzzwords 2026YouTube version: https://youtu.be/acOGVynTVpMThe cameraman is pure Zoom's AI ;)The Course: "AI-Powered Search: Modern Retrieval for Humans & Agents"aipoweredsearch.com/live-course?promoCode=vector-podcastDiscount Code for course (20% off): "vector-podcast"AI-Powered Search (Book, Content, Community): https://aipoweredsearch.com/Timecodes00:00 Intro00:30 Doug's and Trey's impression of the conference01:16 How modern AI changed search (if any)05:48 How to bring AI techniques into existing search engines on a budget10:44 What the AI-Powered Search course includes18:02 Staying hands-on18:47 Guest's favourite topic that keeps them up at night27:40 Message to the builders of search tech32:55 Search continues to be challenging and excitingShownotes:- Upcoming course in detail (grab promo code above to save 20%): https://aipoweredsearch.com/articles/the-frontier-of-ai-search-ai-powered-search-modern-retrieval-for-humans-agents/- Doug's blog on search, agents, RAG, LLM as a judge and more: https://softwaredoug.com/- AI-Powered Search: https://aipoweredsearch.com/- Berlin Buzzwords:- MICES: https://mices.co/- Future of Search conference: https://berlinsearchweek.com/future-of-search/- Women of Search: https://www.women-of-search.org/- "AI is here - time to throw away our search engines?" panel hosted by Charlie Hull at Berlin Buzzwords 2026: https://www.youtube.com/watch?v=StaPk0k-52Y- Dmitry's prototype of Wormhole vectors idea with OpenSearch: https://aiven.io/blog/beyond-hybrid-search-traversing-vector-spaces-with-wormhole-vectors- Dmitry's blog on Medium: https://dmitry-kan.medium.com/- Dmitry's Tech Stories on Substack: https://substack.com/@dmitrykan- Follow me on LinkedIn for Search updates: https://www.linkedin.com/in/dmitrykan/ | 39m 21s | ||||||
| 6/15/26 | ![]() Beyond Hyperspace - Ohad Levi on Hardware Accelerated Search and Agentic Memory | In this episode we sat down with Ohad Levi, co-founder and CEO of Hyperspace, to discuss the harware-accelerated search product he has built to address the search latency problem.Ohad also shares his thoughts on Agentic memory and what keeps him at night these days.Podcast design by https://www.linkedin.com/in/srbhr/Timecodes:00:00 Intro01:35 Ohad's background03:30 How idea was born: what was missing in the search landscape06:52 Top 3 issues with existing search solutions10:52 The importance of search latency13:41 Ohad's solution for latency19:22 Was Hyperspace up for the challenge?22:12 New approaches to handling massive scale26:12 Does latency matter for new agentic AI?32:12 Agentic AI vs SaaS35:03 Ohad's learnings from Hyperspace38:37 Friction points for the hardware-accelerated search 42:40 Product-led growth way47:43 What keeps Ohad excited about the AI / search field51:43 Ohad's message to the Search communityShownotes:Ohad Levi on LinkedIn: https://www.linkedin.com/in/ohad-levi/Hyperspace: https://www.hyper-space.io/Dmitry's blog on Medium: https://dmitry-kan.medium.com/Dmitry on LinkedIn: https://www.linkedin.com/in/dmitrykan/ | 56m 51s | ||||||
| 4/10/26 | ![]() AI Webinar - Building an AI-Ready Data Backbone✨ | AI-ready data backboneOpenSearch+4 | — | AI CampAiven+8 | — | AIOpenSearch+7 | — | 1h 18m 25s | |
| 11/7/25 | ![]() Trey Grainger - Wormhole Vectors✨ | Wormhole vectorsvector search+4 | Trey Grainger | SavoristaMedium+1 | — | Wormhole Vectorsvector search+4 | AivenVECTOR | 1h 19m 17s | |
| 9/19/25 | ![]() Economical way of serving vector search workloads with Simon Eskildsen, CEO Turbopuffer✨ | vector searchTurbopuffer+4 | Simon Eskildsen | TurbopufferCursor+7 | — | vector searchTurbopuffer+4 | SavoristaVECTOR | 1h 15m 26s | |
| 3/21/25 | ![]() Adding ML layer to Search: Hybrid Search Optimizer with Daniel Wrigley and Eric Pugh✨ | Hybrid SearchMachine Learning+4 | Daniel WrigleyEric Pugh | Haystack USOpenSearch+1 | — | Hybrid SearchMachine Learning Optimization+4 | — | 1h 03m 09s | |
| 3/2/25 | ![]() Vector Databases: The Rise, Fall and Future - by NotebookLM✨ | vector databasescontent generation+4 | — | NotebookLMFAISS+10 | — | vector databasesRAG+5 | — | 19m 52s | |
| 2/10/25 | ![]() Code search, Copilot, LLM prompting with empathy and Artifacts with John Berryman✨ | AI application developmentGitHub Copilot+4 | John Berryman | Prompt Engineering for LLMs: The Art and Science of Building Large Language Model–Based ApplicationsRelevant Search+4 | — | AIGitHub Copilot+4 | — | 1h 07m 24s | |
| 1/17/25 | ![]() Debunking myths of vector search and LLMs with Leo Boytsov✨ | vector searchLLMs+5 | Leo Boytsov | NMSLIBFAISS+4 | — | vector searchLLMs+8 | — | 1h 07m 54s | |
| 11/7/24 | ![]() Berlin Buzzwords 2024 - Alessandro Benedetti - LLMs in Solr✨ | Hybrid SearchApache Solr+4 | Alessandro Benedetti | Reciprocal Rank FusionApache Solr+1 | — | Hybrid SearchApache Solr+5 | — | 38m 04s | |
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| 9/19/24 | ![]() Berlin Buzzwords 2024 - Sonam Pankaj - EmbedAnything✨ | metric learningmultimodality+4 | Sonam Pankaj | RasaQdrant+6 | — | metric learningEmbedAnything+4 | — | 23m 00s | |
| 7/18/24 | ![]() Berlin Buzzwords 2024 - Doug Turnbull - Learning in Public✨ | Learning in PublicMachine Learning+3 | Doug Turnbull | Apache SolrHello LTR+5 | — | Learning To RankApache Solr+3 | — | 27m 29s | |
| 6/26/24 | ![]() Eric Pugh - Measuring Search Quality with Quepid | This episode on YouTube: https://www.youtube.com/watch?v=1L7UjjPz5wM00:00 Intro00:21 Guest Introduction: Eric Pugh03:00 Eric's story in search and the evolution of search technology7:27 Quepid: Improving Search Relevancy10:08 When to use Quepid14:53 Flash back to Apache Solr 1.4 and the book (of which Eric is one author)17:49 Quepid Demo and Future Enhancements23:57 Real-Time Query Doc Pairs with WebSockets24:16 Integrating Quepid with Search Engines25:57 Introducing LLM-Based Judgments28:05 Scaling Up Judgments with AI28:48 Data Science Notebooks in Quepid33:23 Custom Scoring in Quepid39:23 API and Developer Tools42:17 The Future of Search and Personal ReflectionsShow notes:- Hosted Quepid: https://app.quepid.com/- Ragas: Evaluation framework for your Retrieval Augmented Generation (RAG) pipelines https://github.com/explodinggradients...- Why Quepid: https://quepid.com/why-quepid/- Quepid on Github: https://github.com/o19s/quepid | 47m 37s | ||||||
| 5/15/24 | ![]() Sid Probstein, part II - Bring AI to company data with SWIRL | This episode on YouTube: https://www.youtube.com/watch?v=5fafSkzKpfw00:00 Intro01:54 Reflection on the past year in AI08:08 Reader LLM (and RAG)12:36 Does it need fine-tuning to a domain?14:20 How LLMs can lie17:32 What if data isn't perfect21:21 SWIRL's secret sauce with Reader LLM23:55 Feedback loop26:14 Some surprising client perspective31:17 How Gen AI can change communication interfaces34:11 Call-out to the Community | 38m 15s | ||||||
| 5/1/24 | ![]() Louis Brandy - SQL meets Vector Search at Rockset | This episode on YouTube: https://www.youtube.com/watch?v=TiwqVlDpsl800:00 Intro00:42 Louis's background05:39 From Facebook to Rockset07:41 Embeddings prior to deep learning / LLM era12:35 What's Rockset as a product15:27 Use cases18:04 RocksDB as part of Rockset20:33 AI capabilities: ANN index, hybrid search25:11 Types of hybrid search28:05 Can one learn the alpha?30:03 Louis's prediction of the future of vector search33:55 RAG and other AI capabilities41:46 Call out to the Vector Search community46:16 Vector Databases vs Databases49:16 Question of WHY | 52m 50s | ||||||
| 4/12/24 | ![]() Saurabh Rai - Growing Resume Matcher | This episode on YouTube: https://www.youtube.com/watch?v=nx6BH9Z_gBATopics:00:00 Intro - how do you like our new design?00:52 Greets01:55 Saurabh's background03:04 Resume Matcher: 4.5K stars, 800 community members, 1.5K forks04:11 How did you grow the project?05:42 Target audience and how to use Resume Matcher09:00 How did you attract so many contributors?12:47 Architecture aspects15:10 Cloud or not16:12 Challenges in maintaining OS projects17:56 Developer marketing with Swirl AI Connect21:13 What you (listener) can help with22:52 What drives you?Show notes:- Resume Matcher: https://github.com/srbhr/Resume-Matcherwebsite: https://resumematcher.fyi/- Ultimate CV by Martin John Yate: https://www.amazon.com/Ultimate-CV-Cr...- fastembed: https://github.com/qdrant/fastembed- Swirl: https://github.com/swirlai/swirl-search | 26m 15s | ||||||
| 7/22/23 | ![]() Sid Probstein - Creator of SWIRL - Search in siloed data with LLMs | Topics:00:00 Intro00:22 Quick demo of SWIRL on the summary transcript of this episode01:29 Sid’s background08:50 Enterprise vs Federated search17:48 How vector search covers for missing folksonomy in enterprise data26:07 Relevancy from vector search standpoint31:58 How ChatGPT improves programmer’s productivity32:57 Demo!45:23 Google PSE53:10 Ideal user of SWIRL57:22 Where SWIRL sits architecturally1:01:46 How to evolve SWIRL with domain expertise1:04:59 Reasons to go open source1:10:54 How SWIRL and Sid interact with ChatGPT1:23:22 The magical question of WHY1:27:58 Sid’s announcements to the communityYouTube version: https://www.youtube.com/watch?v=vhQ5LM5pK_YDesign by Saurabh Rai: https://twitter.com/_srbhr_ Check out his Resume Matcher project: https://www.resumematcher.fyi/ | 1h 32m 23s | ||||||
| 5/17/23 | ![]() Atita Arora - Search Relevance Consultant - Revolutionizing E-commerce with Vector Search | Topics:00:00 Intro02:20 Atita’s path into search engineering09:00 When it’s time to contribute to open source12:08 Taking management role vs software development14:36 Knowing what you like (and coming up with a Solr course)19:16 Read the source code (and cook)23:32 Open Bistro Innovations Lab and moving to Germany26:04 Affinity to Search world and working as a Search Relevance Consultant28:39 Bringing vector search to Chorus and Querqy34:09 What Atita learnt from Eric Pugh’s approach to improving Quepid36:53 Making vector search with Solr & Elasticsearch accessible through tooling and documentation41:09 Demystifying data embedding for clients (and for Java based search engines)43:10 Shifting away from generic to domain-specific in search+vector saga46:06 Hybrid search: where it will be useful to combine keyword with semantic search50:53 Choosing between new vector DBs and “old” keyword engines58:35 Women of Search1:14:03 Important (and friendly) People of Open Source1:22:38 Reinforcement learning applied to our careers1:26:57 The magical question of WHY1:29:26 AnnouncementsSee show notes on YouTube: https://www.youtube.com/watch?v=BVM6TUSfn3E | 1h 32m 20s | ||||||
| 3/11/23 | ![]() Connor Shorten - Research Scientist, Weaviate - ChatGPT, LLMs, Form vs Meaning | Topics:00:00 Intro01:54 Things Connor learnt in the past year that changed his perception of Vector Search02:42 Is search becoming conversational?05:46 Connor asks Dmitry: How Large Language Models will change Search?08:39 Vector Search Pyramid09:53 Large models, data, Form vs Meaning and octopus underneath the ocean13:25 Examples of getting help from ChatGPT and how it compares to web search today18:32 Classical search engines with URLs for verification vs ChatGPT-style answers20:15 Hybrid search: keywords + semantic retrieval23:12 Connor asks Dmitry about his experience with sparse retrieval28:08 SPLADE vectors34:10 OOD-DiskANN: handling the out-of-distribution queries, and nuances of sparse vs dense indexing and search39:54 Ways to debug a query case in dense retrieval (spoiler: it is a challenge!)44:47 Intricacies of teaching ML models to understand your data and re-vectorization49:23 Local IDF vs global IDF and how dense search can approach this issue54:00 Realtime index59:01 Natural language to SQL1:04:47 Turning text into a causal DAG1:10:41 Engineering and Research as two highly intelligent disciplines1:18:34 Podcast search1:25:24 Ref2Vec for recommender systems1:29:48 AnnouncementsFor Show Notes, please check out the YouTube episode below.This episode on YouTube: https://www.youtube.com/watch?v=2Q-7taLZ374Podcast design: Saurabh Rai: https://twitter.com/srvbhr | 1h 33m 11s | ||||||
| 1/28/23 | ![]() Evgeniya Sukhodolskaya - Data Advocate, Toloka - Data at the core of all the cool ML | Toloka’s support for Academia: grants and educator partnershipshttps://toloka.ai/collaboration-with-educators-formhttps://toloka.ai/research-grants-formThese are pages leading to them:https://toloka.ai/academy/education-partnershipshttps://toloka.ai/grantsTopics:00:00 Intro01:25 Jenny’s path from graduating in ML to a Data Advocate role07:50 What goes into the labeling process with Toloka11:27 How to prepare data for labeling and design tasks16:01 Jenny’s take on why Relevancy needs more data in addition to clicks in Search18:23 Dmitry plays the Devil’s Advocate for a moment22:41 Implicit signals vs user behavior and offline A/B testing26:54 Dmitry goes back to advocating for good search practices27:42 Flower search as a concrete example of labeling for relevancy39:12 NDCG, ERR as ranking quality metrics44:27 Cross-annotator agreement, perfect list for NDCG and Aggregations47:17 On measuring and ensuring the quality of annotators with honeypots54:48 Deep-dive into aggregations59:55 Bias in data, SERP, labeling and A/B tests1:16:10 Is unbiased data attainable?1:23:20 AnnouncementsThis episode on YouTube: https://youtu.be/Xsw9vPFqGf4Podcast design: Saurabh Rai: https://twitter.com/srvbhr | 1h 26m 45s | ||||||
| 12/21/22 | ![]() Yaniv Vaknin - Director of Product, Searchium - Hardware accelerated vector search | 00:00 Introduction01:11 Yaniv’s background and intro to Searchium & GSI04:12 Ways to consume the APU acceleration for vector search05:39 Power consumption dimension in vector search 7:40 Place of the platform in terms of applications, use cases and developer experience12:06 Advantages of APU Vector Search Plugins for Elasticsearch and OpenSearch compared to their own implementations17:54 Everyone needs to save: the economic profile of the APU solution20:51 Features and ANN algorithms in the solution24:23 Consumers most interested in dedicated hardware for vector search vs SaaS27:08 Vector Database or a relevance oriented application?33:51 Where to go with vector search?42:38 How Vector Search fits into Search48:58 Role of the human in the AI loop58:05 The missing bit in the AI/ML/Search space1:06:37 Magical WHY question1:09:54 Announcements- Searchium vector search: https://searchium.ai/- Dr. Avidan Akerib, founder behind the APU technology: https://www.linkedin.com/in/avidan-akerib-phd-bbb35b12/- OpenSearch benchmark for performance tuning: https://betterprogramming.pub/tired-of-troubleshooting-idle-search-resources-use-opensearch-benchmark-for-performance-tuning-d4277c9f724- APU KNN plugin for OpenSearch: https://towardsdatascience.com/bolster-opensearch-performance-with-5-simple-steps-ca7d21234f6b- Multilingual and Multimodal Search with Hardware Acceleration: https://blog.muves.io/multilingual-and-multimodal-vector-search-with-hardware-acceleration-2091a825de78- Muves talk at Berlin Buzzwords, where we have utilized GSI APU: https://blog.muves.io/muves-at-berlin-buzzwords-2022-3150eef01c4- Not All Vector Databases are made equal: https://towardsdatascience.com/milvus-pinecone-vespa-weaviate-vald-gsi-what-unites-these-buzz-words-and-what-makes-each-9c65a3bd0696Episode on YouTube: https://youtu.be/EerdWRPuqd4Podcast design: Saurabh Rai: https://twitter.com/srvbhr | 1h 13m 31s | ||||||
| 10/1/22 | ![]() Doug Turnbull - Staff Relevance Engineer, Shopify - Search as a constant experimentation cycle | This episode on YouTube: https://www.youtube.com/watch?v=Kpua1Euc-B8Topics:00:00 Intro01:30 Doug’s story in Search04:55 How Quepid came about10:57 Relevance as product at Shopify: challenge, process, tools, evaluation15:36 Search abandonment in Ecommerce21:30 Rigor in A/B testing23:53 Turn user intent and content meaning into tokens, not words into tokens32:11 Use case for vector search in Maps. What about search in other domains?38:05 Expanding on dense approaches40:52 Sparse, dense, hybrid anyone?48:18 Role of HNSW, scalability and new vector databases vs Elasticsearch / Solr dense search52:12 Doug’s advice to vector database makers58:19 Learning to Rank: how to start, how to collect data with active learning, what are the ML methods and a mindset1:12:10 Blending search and recommendation1:16:08 Search engineer role and key ingredients of managing search projects today1:20:34 What does a Product Manager do on a Search team?1:26:50 The magical question of WHY1:29:08 Doug’s announcementsShow notes:Doug’s course: https://www.getsphere.com/ml-engineering/ml-powered-search?source=Instructor-Other-070922-vector-podUpcoming book: https://www.manning.com/books/ai-powered-search?aaid=1&abid=e47ada24&chan=aipsDoug’s post in Shopify’s blog “Search at Shopify—Range in Data and Engineering is the Future”: https://shopify.engineering/search-at-shopifyDoug’s own blog: https://softwaredoug.com/Using Bayesian optimization for Elasticsearch relevance: https://www.youtube.com/watch?v=yDcYi-ANJwE&t=1sHello LTR: https://github.com/o19s/hello-ltrVector Databases: https://towardsdatascience.com/milvus-pinecone-vespa-weaviate-vald-gsi-what-unites-these-buzz-words-and-what-makes-each-9c65a3bd0696Research: Search abandonment has a lasting impact on brand loyalty: https://cloud.google.com/blog/topics/retail/search-abandonment-impacts-retail-sales-brand-loyaltyQuepid: https://quepid.com/Podcast design: Saurabh Rai [https://twitter.com/srvbhr] | 1h 33m 20s | ||||||
| 8/30/22 | ![]() Malte Pietsch - CTO, Deepset - Passion in NLP and bridging the academia-industry gap with Haystack | YouTube: https://www.youtube.com/watch?v=N5Brb7Rzc2cTopics:00:00 Introduction01:12 Malte’s background07:58 NLP crossing paths with Search11:20 Product discovery: early stage repetitive use cases pre-dating Haystack16:25 Acyclic directed graph for modeling a complex search pipeline18:22 Early integrations with Vector Databases20:09 Aha!-use case in Haystack23:23 Capabilities of Haystack today30:11 Deepset Cloud: end-to-end deployment, experiment tracking, observability, evaluation, debugging and communicating with stakeholders39:00 Examples of value for the end-users of Deepset Cloud46:00 Success metrics50:35 Where Haystack is taking us beyond MLOps for search experimentation57:13 Haystack as a smart assistant to guide experiments1:02:49 Multimodality1:05:53 Future of the Vector Search / NLP field: large language models1:15:13 Incorporating knowledge into Language Models & an Open NLP Meetup on this topic1:16:25 The magical question of WHY1:23:47 Announcements from MalteShow notes:- Haystack: https://github.com/deepset-ai/haystack/- Deepset Cloud: https://www.deepset.ai/deepset-cloud- Tutorial: Build Your First QA System: https://haystack.deepset.ai/tutorials/v0.5.0/first-qa-system- Open NLP Meetup on Sep 29th (Nils Reimers talking about “Incorporating New Knowledge Into LMs”): https://www.meetup.com/open-nlp-meetup/events/287159377/- Atlas Paper (Few shot learning with retrieval augmented large language models): https://arxiv.org/abs/2208.03299- Zero click search: https://www.searchmetrics.com/glossary/zero-click-searches/Very large LMs:- 540B PaLM by Google: https://lnkd.in/eajsjCMr- 11B Atlas by Meta: https://lnkd.in/eENzNkrG- 20B AlexaTM by Amazon: https://lnkd.in/eyBaZDTy- Players in Vector Search: https://www.youtube.com/watch?v=8IOpgmXf5r8 https://dmitry-kan.medium.com/players-in-vector-search-video-2fd390d00d6- Click Residual: A Query Success Metric: https://observer.wunderwood.org/2022/08/08/click-residual-a-query-success-metric/- Tutorials and papers around incorporating Knowledge into Language Models: https://cs.stanford.edu/people/cgzhu/ | 1h 26m 10s | ||||||
| 6/16/22 | ![]() Max Irwin - Founder, MAX.IO - On economics of scale in embedding computation with Mighty | 00:00 Introduction01:10 Max's deep experience in search and how he transitioned from structured data08:28 Query-term dependence problem and Max's perception of the Vector Search field12:46 Is vector search a solution looking for a problem?20:16 How to move embeddings computation from GPU to CPU and retain GPU latency?27:51 Plug-in neural model into Java? Example with a Hugging Face model33:02 Web-server Mighty and its philosophy35:33 How Mighty compares to in-DB embedding layer, like Weavite or Vespa39:40 The importance of fault-tolerance in search backends43:31 Unit economics of Mighty50:18 Mighty distribution and supported operating systems54:57 The secret sauce behind Mighty's insane fast-ness59:48 What a customer is paying for when buying Mighty1:01:45 How will Max track the usage of Mighty: is it commercial or research use?1:04:39 Role of Open Source Community to grow business1:10:58 Max's vision for Mighty connectors to popular vector databases1:18:09 What tooling is missing beyond Mighty in vector search pipelines1:22:34 Fine-tuning models, metric learning and Max's call for partnerships1:26:37 MLOps perspective of neural pipelines and Mighty's role in it1:30:04 Mighty vs AWS Inferentia vs Hugging Face Infinity1:35:50 What's left in ML for those who are not into Python1:40:50 The philosophical (and magical) question of WHY1:48:15 Announcements from Max25% discount for the first year of using Mighty in your great product / project with promo code VECTOR:https://bit.ly/3QekTWEShow notes:- Max's blog about BERT and search relevance: https://opensourceconnections.com/blog/2019/11/05/understanding-bert-and-search-relevance/- Case study and unit economics of Mighty: https://max.io/blog/encoding-the-federal-register.html- Not All Vector Databases Are Made Equal: https://towardsdatascience.com/milvus-pinecone-vespa-weaviate-vald-gsi-what-unites-these-buzz-words-and-what-makes-each-9c65a3bd0696Watch on YouTube: https://youtu.be/LnF4hbl1cE4 | 1h 51m 42s | ||||||
| 6/9/22 | ![]() Grant Ingersoll - Fractional CTO, Leading Search Consultant - Engineering Better Search | YouTube: https://www.youtube.com/watch?v=r4HEpyur-OEVector Podcast LiveTopics:00:00 Kick-off introducing co:rise study platform03:03 Grant’s background04:58 Principle of 3 C’s in the life of a CTO: Code, Conferences and Customers07:16 Principle of 3 C’s in the Search Engine development: Content, Collaboration and Context11:51 Balance between manual tuning in pursuit to learn and Machine Learning15:42 How to nurture intuition in building search engine algorithms18:51 How to change the approach of organizations to true experimentation23:17 Where should one start in approaching the data (like click logs) for developing a search engine29:36 How to measure the success of your search engine33:50 The role of manual query rating to improve search result relevancy36:56 What are the available datasets, tools and algorithms, that allow us to build a search engine?41:56 Vector search and its role in broad search engine development and how the profession is shaping up49:01 The magical question of WHY: what motivates Grant to stay in the space52:09 Announcement from Grant: course discount code DGSEARCH1054:55 Questions from the audienceShow notes:- Grant’s interview at Berlin Buzzwords 2016: https://www.youtube.com/watch?v=Y13gZM5EGdc- “BM25 is so Yesterday: Modern Techniques for Better Search”: https://www.youtube.com/watch?v=CRZfc9lj7Po- “Taming text” - book co-authored by Grant: https://www.manning.com/books/taming-text- Search Fundamentals course - https://corise.com/course/search-fundamentals- Search with ML course - https://corise.com/course/search-with-machine-learning- Click Models for Web Search: https://github.com/markovi/PyClick- Trustworthy Online Controlled Experiments: A Practical Guide to A/B Testing, book by Ron Kohavi et al: https://www.amazon.com/Trustworthy-Online-Controlled-Experiments-Practical-ebook/dp/B0845Y3DJV- Quepid, open source tool and free service for query rating and relevancy tuning: https://quepid.com/- Grant’s talk in 2013 where he discussed the need of a vector field in Lucene and Solr: https://www.youtube.com/watch?v=dCCqauwMWFE- Demo of multimodal search with CLIP: https://blog.muves.io/multilingual-and-multimodal-vector-search-with-hardware-acceleration-2091a825de78- Learning to Boost: https://www.youtube.com/watch?v=af1dyamySCs | 1h 12m 42s | ||||||
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