SKU/Artículo: AMZ-B0GK61S5VM

AI for Data Analytics: A Practical Guide to Applying Machine Learning and Generative AI for Better Decisions

Format:

Paperback

Kindle

Paperback

Detalles del producto
Disponibilidad:
En stock
Peso con empaque:
0.51 kg
Devolución:
Condición
Nuevo
Producto de:
Amazon
Viaja desde
USA

Sobre este producto
  • Most data analysts are stuck explaining the past — while the business expects them to shape the future.Generative AI, machine learning, and automation have raised expectations dramatically. Leaders no longer want dashboards alone. They want answers, recommendations, and decisions. Yet many analysts are held back by fragile notebooks, unclear metrics, biased data, and AI tools they don’t fully trust.AI for Data Analysts is a practical, career-defining guide for analysts who want to move beyond descriptive reporting and become trusted decision-makers — without turning their work into a risky black box.This is not an academic statistics book or a surface-level GenAI overview. It is an execution-focused playbook for applying AI safely, rigorously, and responsibly across real analytics workflows — from SQL and Python to production pipelines, governance, and strategy.INCLUDED IN THIS BOOKThe Analyst’s 30/60/90-Day Roadmap: A structured career acceleration plan to move from descriptive reporting to prescriptive AI leadership, with weekly outputs and milestone audits.12+ Proprietary Decision Frameworks: Practical mental models including the C.O.R.E. Capability Matrix, S.N.A.P. Segmentation Test, T.R.I.A.G.E. Alert Protocol, and P.A.I.D. Project Prioritization Audit.50+ “Try This” GenAI Prompts: Copy-paste prompts for analysts — from generating robust SQL and debugging Python to red-teaming analyses for bias and leakage.The “AI Analyst” Code Toolkit: Essential Python and SQL scripts for automated data profiling, PII redaction, drift detection (PSI), and causal impact estimation.The Complete Governance & Safety Pack: Professional templates for Model Cards, AI readiness checklists, and ethical impact statements.The Metrics Reference Guide: Clear mappings from statistical metrics like F1-score and RMSE to real financial and business outcomes.15+ Real-World Case Studies: Deep dives into failures and recoveries such as the Stockout Trap, the Sleeping Dog (churn), and Phantom Inventory.WHAT’S INSIDE THIS BOOKPart I: The Analyst’s AI FoundationsA practical definition of AI for analysts, data readiness beyond “BI clean,” and the statistical rigor required to trust automated decisions.Part II: The Core Toolkit (Modeling & Logic)Automated data preparation, signal engineering, predictive and unsupervised modeling, and causal inference techniques to answer “why” and “what if.”Part III: Unstructured & Multimodal AnalyticsTurning text, documents, and images into structured data using NLP, embeddings, and document intelligence — with evaluation and human review.Part IV: The AI-Augmented WorkflowDesigning analytics copilots, grounding LLMs with RAG, writing prompts as specifications, and stress-testing models before they influence decisions.Part V: Operationalizing & GovernanceMoving from notebook scripts to production pipelines, monitoring drift, implementing governance, and meeting privacy and compliance expectations.Part VI: Strategy & Real-World BlueprintsHigh-ROI project selection, build-vs-buy decisions, and end-to-end execution case studies across retail, subscriptions, and finance.If analytics is no longer just about reporting — this book shows you how to lead with AI, rigor, and trust.Written for data analysts, analytics engineers, and data professionals who want practical AI skills, defensible decisions, and real career leverage — not hype.
AR$72.970
55% OFF
AR$33.167

IMPORT EASILY

By purchasing this product you can deduct VAT with your RUT number

AR$72.970
55% OFF
AR$33.167

Pagá fácil y rápido con Mercado Pago o MODO

Llega en 8 a 12 días hábiles
con envío
Tienes garantía de entrega
Este producto viaja de USA a tus manos en