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| Management number | 220802821 | Release Date | 2026/05/03 | List Price | $17.31 | Model Number | 220802821 | ||
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Write, generate, verify, and ship code with confidenceAI Driven Software Development: From Prompt Engineering To Automated Code Generation is a practical guide for turning ideas into working software—using structured prompting, repeatable generation workflows, and rigorous verification. Instead of treating AI output as “magic,” this book shows how to treat it like a production tool: define inputs and acceptance criteria, generate in controlled increments, test and analyze what comes back, and iterate until changes are safe to merge.You’ll learn how to move from requirements to implementations, generate code (snippets to whole modules), and build the surrounding quality checks that make results dependable. Along the way, the book covers maintainability rules, security considerations, and operational readiness so generated code performs well in real systems—not just during a demo.What you’ll be able to doDesign reliable prompts with constraints and deterministic-like structure, including how to debug prompts using failure modes.Convert specs into implementation by producing API contracts, data models, function-level designs, and stepwise implementation plans.Run automated generation workflows that handle context, dependencies, imports, and tests alongside production code.Improve and refactor generated code safely using checklists and behavior-preserving strategies.Verify with a full testing strategy (unit, integration, table-driven/property-based, and end-to-end validation) tailored to generated components.Integrate static analysis into the loop with linting, type checking, and feedback prompts driven by build failures.Harden for security and safety using real-world patterns for injection prevention, authz/authn, secret handling, and safe logging.Handle data properly with schema design, validation/sanitization patterns, and backward-compatible migrations.Work effectively in existing codebases by applying reading strategies, patch-oriented prompts, and minimal-change techniques for legacy constraints.Collaborate and audit changes with team prompt templates, PR workflows, and traceability practices.Automate end-to-end runs with agent-like tool execution, guardrails, and captured artifacts/logs.Prepare for deployment by generating operational endpoints, observability hooks, retries/timeouts, and idempotent behavior.Built for repeatable engineeringThe book’s structure mirrors how teams actually deliver software: foundations → prompt engineering → spec-to-code → generation workflows → quality and verification → security and data rigor → architecture → legacy constraints → collaboration → automation → production readiness. Each chapter includes practical guidance and end-to-end examples so you can apply the approach immediately.Who this book is forSoftware engineers who want controlled AI-assisted development rather than trial-and-error promptingTech leads and teams standardizing workflows for generated codeDevelopers integrating AI into CI pipelines, reviews, and security practicesGet robust, reviewable outcomes—from prompt to merge—using a workflow designed for correctness, maintainability, and operational safety. Read more
| ISBN13 | 979-8253455586 |
|---|---|
| Language | English |
| Publisher | Independently published |
| Dimensions | 8.49 x 1.27 x 11.24 inches |
| Item Weight | 2.89 pounds |
| Print length | 477 pages |
| Publication date | March 24, 2026 |
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