{"version":1,"pages":[{"id":"2JukBj2fTFYXye6sK9zR","title":"Adobe Data Distiller Guide","pathname":"/adobe-data-distiller-guide","siteSpaceId":"sitesp_iayNK"},{"id":"B2SOKRZJc6lZATX8QHvb","title":"What is Data Distiller?","pathname":"/adobe-data-distiller-guide/what-is-data-distiller","siteSpaceId":"sitesp_iayNK","description":""},{"id":"TwgaBZzU5u5nROYuF484","title":"PREP 100: Why was Data Distiller Built?","pathname":"/adobe-data-distiller-guide/unit-1-getting-started/prep-100-why-was-data-distiller-built","siteSpaceId":"sitesp_iayNK","breadcrumbs":[{"label":"UNIT 1: GETTING STARTED"}]},{"id":"rx3wqR17NgxPTGN8eQ6E","title":"PREP 200: Data Distiller Use Case & Capability Matrix Guide","pathname":"/adobe-data-distiller-guide/unit-1-getting-started/prep-200-data-distiller-use-case-and-capability-matrix-guide","siteSpaceId":"sitesp_iayNK","description":"Navigate your data journey with precision—empower every decision with the Data Distiller Use Case & Capability Matrix","breadcrumbs":[{"label":"UNIT 1: GETTING STARTED"}]},{"id":"wY10g28qxKc3LXazGgLy","title":"PREP 300: Adobe Experience Platform & Data Distiller Primers","pathname":"/adobe-data-distiller-guide/unit-1-getting-started/prep-300-adobe-experience-platform-and-data-distiller-primers","siteSpaceId":"sitesp_iayNK","breadcrumbs":[{"label":"UNIT 1: GETTING STARTED"}]},{"id":"2T9Tmaf9xn3qHWu1PiWN","title":"PREP 301: Leveraging Data Loops for Real-Time Personalization","pathname":"/adobe-data-distiller-guide/unit-1-getting-started/prep-301-leveraging-data-loops-for-real-time-personalization","siteSpaceId":"sitesp_iayNK","description":"Real-time personalization isn't just about having the best tools—it's about creating efficient data loops that allow you to respond instantly to customer needs and provide exceptional service.","breadcrumbs":[{"label":"UNIT 1: GETTING STARTED"}]},{"id":"fwkZSLxTHbNdZp6M2dlP","title":"PREP 302:  Key Topics Overview: Architecture, MDM, Personas","pathname":"/adobe-data-distiller-guide/unit-1-getting-started/prep-302-key-topics-overview-architecture-mdm-personas","siteSpaceId":"sitesp_iayNK","breadcrumbs":[{"label":"UNIT 1: GETTING STARTED"}]},{"id":"2BOb5nKisN5iPDHipdeC","title":"PREP 303: What is Data Distiller Business Intelligence?","pathname":"/adobe-data-distiller-guide/unit-1-getting-started/prep-303-what-is-data-distiller-business-intelligence","siteSpaceId":"sitesp_iayNK","description":"Unleash the Power of BI with Speed, Flexibility, and Precision","breadcrumbs":[{"label":"UNIT 1: GETTING STARTED"}]},{"id":"Eu4IoHNx6Gn9bO26h48S","title":"PREP 304: The Human Element in Customer Experience Management","pathname":"/adobe-data-distiller-guide/unit-1-getting-started/prep-304-the-human-element-in-customer-experience-management","siteSpaceId":"sitesp_iayNK","description":"Where data meets humanity: elevating customer experience with insight and empathy","breadcrumbs":[{"label":"UNIT 1: GETTING STARTED"}]},{"id":"Tuswg3E6N3WqQ8fIbALy","title":"PREP 305: Driving Transformation in Customer Experience: Leadership Lessons Inspired by Lee Iacocca","pathname":"/adobe-data-distiller-guide/unit-1-getting-started/prep-305-driving-transformation-in-customer-experience-leadership-lessons-inspired-by-lee-iacocca","siteSpaceId":"sitesp_iayNK","description":"","breadcrumbs":[{"label":"UNIT 1: GETTING STARTED"}]},{"id":"B0nz0qFAt19NA6ofV5EA","title":"PREP 400: DBVisualizer SQL Editor Setup for Data Distiller","pathname":"/adobe-data-distiller-guide/unit-1-getting-started/prep-400-dbvisualizer-sql-editor-setup-for-data-distiller","siteSpaceId":"sitesp_iayNK","breadcrumbs":[{"label":"UNIT 1: GETTING STARTED"}]},{"id":"18sUwAAMNfJUC8nrl4uh","title":"PREP 500: Ingesting CSV Data into Adobe Experience Platform","pathname":"/adobe-data-distiller-guide/prep-500-ingesting-csv-data-into-adobe-experience-platform","siteSpaceId":"sitesp_iayNK","description":""},{"id":"TMmj8IFsquy0od23y38T","title":"PREP 501: Ingesting JSON Test Data into Adobe Experience Platform","pathname":"/adobe-data-distiller-guide/prep-501-ingesting-json-test-data-into-adobe-experience-platform","siteSpaceId":"sitesp_iayNK","description":""},{"id":"jjodXKTybrn76Gorr5jS","title":"PREP 600: Rules vs. AI with Data Distiller: When to Apply, When to Rely, Let ROI Decide","pathname":"/adobe-data-distiller-guide/prep-600-rules-vs.-ai-with-data-distiller-when-to-apply-when-to-rely-let-roi-decide","siteSpaceId":"sitesp_iayNK"},{"id":"sy3ysMJIArx9g4sXbWfP","title":"Prep 601: Breaking Down B2B Data Silos: Transform Marketing, Sales & Customer Success into a Revenue","pathname":"/adobe-data-distiller-guide/prep-601-breaking-down-b2b-data-silos-transform-marketing-sales-and-customer-success-into-a-revenue","siteSpaceId":"sitesp_iayNK","description":"Don't break down silos, just unify data, and turn every customer interaction into a growth opportunity."},{"id":"FaRj0nymWBNXY8QD30N9","title":"EXPLORE 100: Data Lake Overview","pathname":"/adobe-data-distiller-guide/unit-2-data-distiller-data-exploration/explore-100-data-lake-overview","siteSpaceId":"sitesp_iayNK","description":"The data lake in Adobe Experience Platform centralizes and manages diverse data types, enabling organizations to harness their data's full potential for personalized customer experiences.","breadcrumbs":[{"label":"Unit 2:  DATA DISTILLER DATA EXPLORATION"}]},{"id":"NSasji1Co7LXsB5bBnYh","title":"EXPLORE 101: Exploring Ingested Batches in a Dataset with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-2-data-distiller-data-exploration/explore-101-exploring-ingested-batches-in-a-dataset-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"It is important for you to understand how the data ingestion process works and why interrogating the records ingested in a batch may be an important tool in your arsenal to address downstream issues.","breadcrumbs":[{"label":"Unit 2:  DATA DISTILLER DATA EXPLORATION"}]},{"id":"mZoIkXc1Fi5eBBrTTW12","title":"EXPLORE 200: Exploring Behavioral Data with Data Distiller - A Case Study with Adobe Analytics Data","pathname":"/adobe-data-distiller-guide/unit-2-data-distiller-data-exploration/explore-200-exploring-behavioral-data-with-data-distiller-a-case-study-with-adobe-analytics-data","siteSpaceId":"sitesp_iayNK","breadcrumbs":[{"label":"Unit 2:  DATA DISTILLER DATA EXPLORATION"}]},{"id":"qilieVXN2ipi1wvHCMhU","title":"EXPLORE 201: Exploring Web Analytics Data with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-2-data-distiller-data-exploration/explore-201-exploring-web-analytics-data-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Web analytics refers to the measurement, collection, analysis, and reporting of data related to website or web application usage.","breadcrumbs":[{"label":"Unit 2:  DATA DISTILLER DATA EXPLORATION"}]},{"id":"QqHwh3PDT1KoK5kgQUo9","title":"EXPLORE 202: Exploring Product Analytics with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-2-data-distiller-data-exploration/explore-202-exploring-product-analytics-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Product analytics is the process of collecting, analyzing, and interpreting data related to a product's usage and performance.","breadcrumbs":[{"label":"Unit 2:  DATA DISTILLER DATA EXPLORATION"}]},{"id":"xAT8Ypc81KNouBQdSbkF","title":"EXPLORE 300: Exploring Adobe Journey Optimizer System Datasets with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-2-data-distiller-data-exploration/explore-300-exploring-adobe-journey-optimizer-system-datasets-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Unleashing Insights from Adobe Journey Optimizer Datasets with Data Distiller","breadcrumbs":[{"label":"Unit 2:  DATA DISTILLER DATA EXPLORATION"}]},{"id":"Vrjz7jtLwCZ80izjhjlh","title":"EXPLORE 400: Exploring Offer Decisioning Datasets with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-2-data-distiller-data-exploration/explore-400-exploring-offer-decisioning-datasets-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Unleashing Insights from Offer Decisioning Datasets with Data Distiller","breadcrumbs":[{"label":"Unit 2:  DATA DISTILLER DATA EXPLORATION"}]},{"id":"9fkOUPtSSF8UrZY40Dfr","title":"EXPLORE 500: Incremental Data Extraction with Data Distiller Cursors","pathname":"/adobe-data-distiller-guide/unit-2-data-distiller-data-exploration/explore-500-incremental-data-extraction-with-data-distiller-cursors","siteSpaceId":"sitesp_iayNK","description":"Learn to Navigate Data Efficiently with Incremental Extraction Using Data Distiller Cursors","breadcrumbs":[{"label":"Unit 2:  DATA DISTILLER DATA EXPLORATION"}]},{"id":"9Y1AEQdpjm8cC5EFbeul","title":"ETL 200: Chaining of Data Distiller Jobs","pathname":"/adobe-data-distiller-guide/unit-3-data-distiller-etl-extract-transform-load/etl-200-chaining-of-data-distiller-jobs","siteSpaceId":"sitesp_iayNK","description":"Unleash the power of seamless insights with Data Distiller’s chained queries—connect your data, step by step, to drive better decisions","breadcrumbs":[{"label":"UNIT 3:  DATA DISTILLER ETL (EXTRACT, TRANSFORM, LOAD)"}]},{"id":"unBVG5D35GPWcqnDT9NI","title":"ETL 300: Incremental Processing Using Checkpoint Tables in Data Distiller","pathname":"/adobe-data-distiller-guide/unit-3-data-distiller-etl-extract-transform-load/etl-300-incremental-processing-using-checkpoint-tables-in-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Turn every data update into actionable intelligence through incremental processing","breadcrumbs":[{"label":"UNIT 3:  DATA DISTILLER ETL (EXTRACT, TRANSFORM, LOAD)"}]},{"id":"Qmi1ODOz9hbiuv6PE1vY","title":"[DRAFT]ETL 400: Attribute-Level Change Detection in Profile Snapshot Data","pathname":"/adobe-data-distiller-guide/unit-3-data-distiller-etl-extract-transform-load/draft-etl-400-attribute-level-change-detection-in-profile-snapshot-data","siteSpaceId":"sitesp_iayNK","breadcrumbs":[{"label":"UNIT 3:  DATA DISTILLER ETL (EXTRACT, TRANSFORM, LOAD)"}]},{"id":"AXXksFI6IOlPydr2D7pN","title":"ENRICH 100: Real-Time Customer Profile Overview","pathname":"/adobe-data-distiller-guide/unit-4-data-distiller-data-enrichment/enrich-100-real-time-customer-profile-overview","siteSpaceId":"sitesp_iayNK","description":"Learn how Data Distiller can power the Real-time Customer Profile that offers a comprehensive, real-time view of individual customers.","breadcrumbs":[{"label":"UNIT 4:  DATA DISTILLER DATA ENRICHMENT "}]},{"id":"8IlqpZJpQA2P4A9nPVoW","title":"ENRICH 101: Behavior-Based Personalization with Data Distiller: A Movie Genre Case Study","pathname":"/adobe-data-distiller-guide/unit-4-data-distiller-data-enrichment/enrich-101-behavior-based-personalization-with-data-distiller-a-movie-genre-case-study","siteSpaceId":"sitesp_iayNK","description":"Here's a basic tutorial that displays the essential components of filtering, shaping, and data manipulation with Data Distiller.","breadcrumbs":[{"label":"UNIT 4:  DATA DISTILLER DATA ENRICHMENT "}]},{"id":"WekA3XMbJEXMjundU53w","title":"ENRICH 200: Decile-Based Audiences with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-4-data-distiller-data-enrichment/enrich-200-decile-based-audiences-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Bucketing is a technique used by marketers to split their audience along a dimension and use that to fine-tune the targeting.","breadcrumbs":[{"label":"UNIT 4:  DATA DISTILLER DATA ENRICHMENT "}]},{"id":"XP0Qyg064Hs4HpQnH2py","title":"ENRICH 300: Recency, Frequency, Monetary (RFM) Modeling for Personalization with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-4-data-distiller-data-enrichment/enrich-300-recency-frequency-monetary-rfm-modeling-for-personalization-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Learn how to leverage RFM modeling to enhance real-time customer personalization and drive targeted marketing strategies.","breadcrumbs":[{"label":"UNIT 4:  DATA DISTILLER DATA ENRICHMENT "}]},{"id":"jSl2l5XCks1fQkHU7sIO","title":"ENRICH 400: Net Promoter Scores (NPS) for Enhanced Customer Satisfaction with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-4-data-distiller-data-enrichment/enrich-400-net-promoter-scores-nps-for-enhanced-customer-satisfaction-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Unlock the power of NPS to measure and improve customer loyalty and satisfaction","breadcrumbs":[{"label":"UNIT 4:  DATA DISTILLER DATA ENRICHMENT "}]},{"id":"FIwgg46T3OpJfCX9QmM6","title":"IDR 100: Identity Graph Overview","pathname":"/adobe-data-distiller-guide/unit-5-data-distiller-identity-resolution/idr-100-identity-graph-overview","siteSpaceId":"sitesp_iayNK","description":"In Adobe's Real-Time Customer Profile, an identity graph is a core component that maps various identifiers associated with individual customers across multiple devices, touchpoints, and interactions.","breadcrumbs":[{"label":"Unit 5:  DATA DISTILLER IDENTITY RESOLUTION"}]},{"id":"miurnWgrTtGAXtiQHBmm","title":"IDR 200: Extracting Identity Graph from Profile Attribute Snapshot Data with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-5-data-distiller-identity-resolution/idr-200-extracting-identity-graph-from-profile-attribute-snapshot-data-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"An identity lookup table is a database table used to store identities associated with various identity namespaces in the Real-Time Customer Profile.","breadcrumbs":[{"label":"Unit 5:  DATA DISTILLER IDENTITY RESOLUTION"}]},{"id":"pPnFH9HfpZ33e2ZodkBU","title":"IDR 300: Understanding and Mitigating Profile Collapse in Identity Resolution with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-5-data-distiller-identity-resolution/idr-300-understanding-and-mitigating-profile-collapse-in-identity-resolution-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Mastering profile cleanup transforms data chaos into clarity, enabling accurate, unified real-time customer profiles with 15+ algorithms.","breadcrumbs":[{"label":"Unit 5:  DATA DISTILLER IDENTITY RESOLUTION"}]},{"id":"GYHmQGVOraEBjGVXrGvw","title":"IDR 301: Using Levenshtein Distance for Fuzzy Matching in Identity Resolution with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-5-data-distiller-identity-resolution/idr-301-using-levenshtein-distance-for-fuzzy-matching-in-identity-resolution-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Learn how to apply fuzzy matching with Data Distiller to improve accuracy in identity resolution and profile management.","breadcrumbs":[{"label":"Unit 5:  DATA DISTILLER IDENTITY RESOLUTION"}]},{"id":"40fTZWW7ruYCXnZkaPpR","title":"IDR 302: Algorithmic Approaches to B2B Contacts - Unifying and Standardizing Across Sales Orgs","pathname":"/adobe-data-distiller-guide/unit-5-data-distiller-identity-resolution/idr-302-algorithmic-approaches-to-b2b-contacts-unifying-and-standardizing-across-sales-orgs","siteSpaceId":"sitesp_iayNK","description":"Learn algorithmic techniques for merging, deduplicating, and enriching B2B contact data to create unified, accurate profiles using Data Distiller","breadcrumbs":[{"label":"Unit 5:  DATA DISTILLER IDENTITY RESOLUTION"}]},{"id":"NDq3jmjd40EFvTPNC8UV","title":"DDA 100: Audiences Overview","pathname":"/adobe-data-distiller-guide/unit-6-data-distiller-audiences/dda-100-audiences-overview","siteSpaceId":"sitesp_iayNK","description":"Segmentation matters because it enables businesses to understand and cater to the diverse needs and preferences of their customer base, leading to more effective marketing and product strategies.","breadcrumbs":[{"label":"Unit 6:  DATA DISTILLER AUDIENCES"}]},{"id":"phtPT1n6vW0bdpg4uxzc","title":"DDA 200: Build Data Distiller Audiences on Data Lake Using SQL","pathname":"/adobe-data-distiller-guide/unit-6-data-distiller-audiences/dda-200-build-data-distiller-audiences-on-data-lake-using-sql","siteSpaceId":"sitesp_iayNK","description":"Unleash the full potential of your data with Data Distiller—where advanced audience creation meets real-time insights, scalability, and unmatched personalization.","breadcrumbs":[{"label":"Unit 6:  DATA DISTILLER AUDIENCES"}]},{"id":"wJ6y2Hb3jDAnqlOkj5B8","title":"DDA 300: Audience Overlaps with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-6-data-distiller-audiences/dda-300-audience-overlaps-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Learn how to leverage snapshot of profile attributes, identities and segment memberships to build exotic queries such as 3 or 4 segment overlaps","breadcrumbs":[{"label":"Unit 6:  DATA DISTILLER AUDIENCES"}]},{"id":"faVYVKhkPzSxTl8nT643","title":"BI 100: Data Distiller Business Intelligence: A Complete Feature Overview","pathname":"/adobe-data-distiller-guide/unit-7-data-distiller-business-intelligence/bi-100-data-distiller-business-intelligence-a-complete-feature-overview","siteSpaceId":"sitesp_iayNK","description":"Unlock insights with Data Distiller dashboards featuring advanced queries, customizable filters, drillthroughs, built-in SQL, and accelerated querying, all integrated seamlessly with BI tools.","breadcrumbs":[{"label":"Unit 7: DATA DISTILLER  BUSINESS INTELLIGENCE"}]},{"id":"SOElCSvIJZXIaNNEteI9","title":"BI 200: Create Your First Data Model in the Data Distiller Warehouse for Dashboarding","pathname":"/adobe-data-distiller-guide/unit-7-data-distiller-business-intelligence/bi-200-create-your-first-data-model-in-the-data-distiller-warehouse-for-dashboarding","siteSpaceId":"sitesp_iayNK","description":"Creating your first table in the Accelerated Store involves defining and setting up a star schema containing tables to store and manage data.","breadcrumbs":[{"label":"Unit 7: DATA DISTILLER  BUSINESS INTELLIGENCE"}]},{"id":"uYlC9PZX0pA3RsK1dc0W","title":"BI 300: Dashboard Authoring with Data Distiller Query Pro Mode","pathname":"/adobe-data-distiller-guide/unit-7-data-distiller-business-intelligence/bi-300-dashboard-authoring-with-data-distiller-query-pro-mode","siteSpaceId":"sitesp_iayNK","description":"This tutorial goes through the steps of building a dashboard using SQL Chart Authoring, Drillthroughs and Global Filters.","breadcrumbs":[{"label":"Unit 7: DATA DISTILLER  BUSINESS INTELLIGENCE"}]},{"id":"mKxbvIpfFxegM9a18EDH","title":"BI 400: Subscription Analytics for Growth-Focused Products using Data Distiller","pathname":"/adobe-data-distiller-guide/unit-7-data-distiller-business-intelligence/bi-400-subscription-analytics-for-growth-focused-products-using-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Unlocking Key Subscription Metrics to Drive Growth and Retention with Powerful Visualizations","breadcrumbs":[{"label":"Unit 7: DATA DISTILLER  BUSINESS INTELLIGENCE"}]},{"id":"X6u0FugfZWy7E3k4YSQ1","title":"BI 500: Optimizing Omnichannel Marketing Spend Using Marginal Return Analysis","pathname":"/adobe-data-distiller-guide/unit-7-data-distiller-business-intelligence/bi-500-optimizing-omnichannel-marketing-spend-using-marginal-return-analysis","siteSpaceId":"sitesp_iayNK","description":"Analyzing marketing effectiveness across various channels using","breadcrumbs":[{"label":"Unit 7: DATA DISTILLER  BUSINESS INTELLIGENCE"}]},{"id":"Nkb4WHVyffx4kGzYOZVZ","title":"STATSML 100: Python & JupyterLab Setup for Data Distiller","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-100-python-and-jupyterlab-setup-for-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Learn how to setup Python and JupyterLab to connect to Data Distiller.","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"6IiUOAlkqg60BNH47DAE","title":"STATSML 101: Learn Basic Python Online","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-101-learn-basic-python-online","siteSpaceId":"sitesp_iayNK","description":"The goal of this module is to teach you basic Python so that you can understand any code that you come across.","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"9C4jBJO37zpbkuR6CDy2","title":"STATSML 200: Unlock Dataset Metadata Insights via Adobe Experience Platform APIs and Python","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-200-unlock-dataset-metadata-insights-via-adobe-experience-platform-apis-and-python","siteSpaceId":"sitesp_iayNK","description":"This chapter covers the essential steps for installing necessary libraries, generating access tokens, and making authenticated API requests.","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"qSIgKa1cFthHYCQgJ0oH","title":"STATSML 201: Securing Data Distiller Access with Robust IP Whitelisting","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-201-securing-data-distiller-access-with-robust-ip-whitelisting","siteSpaceId":"sitesp_iayNK","description":"Secure Access, Simplified: Protect Data Distiller with IP Whitelisting","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"hqUbegu3oLOBhqinkuhR","title":"STATSML 300: AI & Machine Learning: Basic Concepts for Data Distiller Users","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-300-ai-and-machine-learning-basic-concepts-for-data-distiller-users","siteSpaceId":"sitesp_iayNK","description":"Unlock the power of AI and machine learning in this course—equipping you with the basic concepts  to make a real-world impact","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"URSBHUD7m0J2RuVuP5pJ","title":"STATSML 301: A Concept Course on Language Models","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-301-a-concept-course-on-language-models","siteSpaceId":"sitesp_iayNK","description":"Learn the key ideas behind language models","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"92PYSzuU32bEyGDB1oMa","title":"STATSML 302: A Concept Course on Feature Engineering Techniques for Machine Learning","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-302-a-concept-course-on-feature-engineering-techniques-for-machine-learning","siteSpaceId":"sitesp_iayNK","description":"Transform raw data into predictive power with essential feature engineering techniques.","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"iHkIqGuaIzsFFiLZAV8k","title":"STATSML 400: Data Distiller Basic Statistics Functions","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-400-data-distiller-basic-statistics-functions","siteSpaceId":"sitesp_iayNK","description":"Unlock the Power of Data: Master Every Key Statistical Function in Data Distiller","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"CfSXVP0zuNUsQB0bCNKe","title":"STATSML 500: Generative SQL with Microsoft GitHub Copilot, Visual Studio Code and Data Distiller","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-500-generative-sql-with-microsoft-github-copilot-visual-studio-code-and-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Streamline your development workflow with Visual Studio Code and Github Copilot—fast, lightweight, and customizable for all your coding needs, from generating SQL queries to managing projects.","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"qAD2VzPL5alOeVLBqATI","title":"STATSML 600: Data Distiller Advanced Statistics & Machine Learning Models","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-600-data-distiller-advanced-statistics-and-machine-learning-models","siteSpaceId":"sitesp_iayNK","description":"Discover advanced statistics and machine learning functions to build predictive models","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"BJKSnsR00r7gBJts6lWo","title":"STATSML 601: Building a Period-to-Period Customer Retention Model Using Logistics Regression","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-601-building-a-period-to-period-customer-retention-model-using-logistics-regression","siteSpaceId":"sitesp_iayNK","description":"Unlocking Future Engagement: Data-Driven Retention Predictions for Smarter Personalization Strategies","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"8QvUCUAtTGRUVRuxBWFm","title":"STATSML 602: Techniques for Bot Detection in Data Distiller","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-602-techniques-for-bot-detection-in-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Turn clicks into insights: Discover how SQL can reveal bot behavior","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"rQ6O7J0aF40Xv2nmsneV","title":"STATSML 603: Predicting Customer Conversion Scores Using Random Forest in Data Distiller","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-603-predicting-customer-conversion-scores-using-random-forest-in-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Transform Data Into Action: Predict, Personalize, Prosper!","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"XZLeRXZUA8tAouF5TXUr","title":"STATSML 604: Car Loan Propensity Prediction using Logistic Regression","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-604-car-loan-propensity-prediction-using-logistic-regression","siteSpaceId":"sitesp_iayNK","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"Cu6BzjwdmDfPTunC97CO","title":"STATSML 700: Sentiment-Aware Product Review Search with Retrieval Augmented Generation (RAG)","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-700-sentiment-aware-product-review-search-with-retrieval-augmented-generation-rag","siteSpaceId":"sitesp_iayNK","description":"This tutorial demonstrates how to implement a Retrieval-Augmented Generation (RAG) architecture using Python, LangChain and Hugging Face Transformers.","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"4HclWgR5nyMBCLCltv42","title":"STATSML 800: Turbocharging Insights with Data Distiller: A Hypercube Approach to Big Data Analytics","pathname":"/adobe-data-distiller-guide/unit-8-data-distiller-statistics-and-machine-learning/statsml-800-turbocharging-insights-with-data-distiller-a-hypercube-approach-to-big-data-analytics","siteSpaceId":"sitesp_iayNK","description":"Turning Big Data into Big Insights with Speed, Precision, and Scalability","breadcrumbs":[{"label":"Unit 8: DATA DISTILLER STATISTICS & MACHINE LEARNING "}]},{"id":"tfEkSHWlthXUsZtIkYTm","title":"ACT 100: Dataset Activation with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-9-data-distiller-activation-and-data-export/act-100-dataset-activation-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Shipping your datasets to distant destinations for maximizing enterprise ROI","breadcrumbs":[{"label":"UNIT 9: DATA DISTILLER ACTIVATION & DATA EXPORT"}]},{"id":"eyH2i8bU8XwaPYn8tj0Z","title":"ACT 200: Dataset Activation: Anonymization, Masking & Differential Privacy Techniques","pathname":"/adobe-data-distiller-guide/unit-9-data-distiller-activation-and-data-export/act-200-dataset-activation-anonymization-masking-and-differential-privacy-techniques","siteSpaceId":"sitesp_iayNK","description":"Explore advanced differential privacy techniques to securely activate data while balancing valuable insights and individual privacy protection.\"","breadcrumbs":[{"label":"UNIT 9: DATA DISTILLER ACTIVATION & DATA EXPORT"}]},{"id":"Mohv6yd915GPhmnYcibK","title":"ACT 300: Functions and Techniques for Handling Sensitive Data with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-9-data-distiller-activation-and-data-export/act-300-functions-and-techniques-for-handling-sensitive-data-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Powering Enterprise Use Cases While Keeping Sensitive Data in Safe Mode","breadcrumbs":[{"label":"UNIT 9: DATA DISTILLER ACTIVATION & DATA EXPORT"}]},{"id":"yGs2jq2GecyuXNaq9iSz","title":"ACT 400: AES Data Encryption & Decryption with Data Distiller","pathname":"/adobe-data-distiller-guide/unit-9-data-distiller-activation-and-data-export/act-400-aes-data-encryption-and-decryption-with-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Secure your sensitive data with AES encryption - a robust, industry-standard way to protect customer information, while easily decrypting it when needed.","breadcrumbs":[{"label":"UNIT 9: DATA DISTILLER ACTIVATION & DATA EXPORT"}]},{"id":"igUthgQJ0sgZ3oi9bTiK","title":"FUNC 300: Privacy Functions in Data Distiller","pathname":"/adobe-data-distiller-guide/unit-9-data-distiller-functions-and-extensions/func-300-privacy-functions-in-data-distiller","siteSpaceId":"sitesp_iayNK","description":"Tutorials from other sections that cover this topic in detail","breadcrumbs":[{"label":"UNIT 9: DATA DISTILLER FUNCTIONS & EXTENSIONS"}]},{"id":"jF5SZfKNNX8R4hJKexR0","title":"FUNC 400: Statistics Functions in Data Distiller","pathname":"/adobe-data-distiller-guide/unit-9-data-distiller-functions-and-extensions/func-400-statistics-functions-in-data-distiller","siteSpaceId":"sitesp_iayNK","breadcrumbs":[{"label":"UNIT 9: DATA DISTILLER FUNCTIONS & EXTENSIONS"}]},{"id":"EqsaYQ1kCZBnirZIn1BL","title":"FUNC 500: Lambda Functions in Data Distiller: Exploring Similarity Joins","pathname":"/adobe-data-distiller-guide/unit-9-data-distiller-functions-and-extensions/func-500-lambda-functions-in-data-distiller-exploring-similarity-joins","siteSpaceId":"sitesp_iayNK","description":"The goal of similarity join is to identify and retrieve similar or related records from one or more datasets based on a similarity metric.","breadcrumbs":[{"label":"UNIT 9: DATA DISTILLER FUNCTIONS & EXTENSIONS"}]},{"id":"aRj8ZdMFEdlEnblr4wVV","title":"FUNC 600: Advanced Statistics & Machine Learning Functions","pathname":"/adobe-data-distiller-guide/unit-9-data-distiller-functions-and-extensions/func-600-advanced-statistics-and-machine-learning-functions","siteSpaceId":"sitesp_iayNK","breadcrumbs":[{"label":"UNIT 9: DATA DISTILLER FUNCTIONS & EXTENSIONS"}]},{"id":"Puz3TXj0ZsoNBn25Mwke","title":"About the Authors","pathname":"/adobe-data-distiller-guide/about-the-authors","siteSpaceId":"sitesp_iayNK","description":""}]}