Hub d’apprentissage

Commencez à apprendre avec un vrai plan

Les gens ne se bloquent pas par manque de motivation, mais parce qu’ils ne savent pas par où commencer, quoi lire ensuite ou comment transformer la lecture en connaissance durable.

Articles externes sélectionnésPlans d’étude sur 2 semainesRésumer, enregistrer, réviser

Choisissez une direction

La première série est organisée autour des fonctions réelles de l’équipe 5tldr et des compétences les plus utiles aux utilisateurs. Dernière révision March 13, 2026.

Product Discovery & Activation

Learn how to find real demand, avoid fake discovery, and shape activation work around user jobs instead of feature lists.

Jump to plan

Product Design & UX Systems

Learn how to think in flows, systems, and guidance patterns so your interface reduces friction instead of adding visual polish to a weak journey.

Jump to plan

SEO & Content Quality

Learn how Google actually frames crawlability, search quality, and people-first content so your SEO work is grounded in durable rules instead of short-term hacks.

Jump to plan

Learning Systems & Knowledge Work

Learn how to study from long-form sources more effectively by turning reading into feedback loops, deliberate review, and saved knowledge rather than passive consumption.

Jump to plan

AI Video Fundamentals

Learn the current AI video model landscape, the core prompt grammar behind usable generations, and the fastest path from first prompt to first finished short clip.

Jump to plan

Cinematography & Visual Language for AI Video

Learn the visual grammar behind stronger AI video prompts: shot size, camera angle, camera movement, composition, and lighting choices that change the emotional read of a scene.

Jump to plan

Advanced AI Video Workflows & Consistency

Move from single generations to pipeline thinking: image references, scene continuity, video-to-video refinement, and multi-tool workflows that preserve identity and motion across shots.

Jump to plan

Commercial AI Video Production & Legal Readiness

Turn AI video from an interesting creative toy into a client-ready production workflow by learning rights, platform terms, labeling duties, and the operational discipline needed for commercial delivery.

Jump to plan

Comment utiliser ce hub avec 5tldr

L’objectif n’est pas d’accumuler des liens, mais de transformer de bonnes sources en connaissances réutilisables.

1. Ouvrez la source

Lisez d’abord l’article original pour comprendre l’angle de l’auteur.

2. Résumez-le

Collez l’article dans 5tldr et générez des points clés ou un pack d’apprentissage.

3. Enregistrez ce qui compte

Conservez dans Library les résumés importants pour y revenir plus tard.

4. Révisez et comparez

Revenez à vos notes enregistrées, comparez les sources et transformez-les en votre propre compréhension.

Product Discovery & Activation

Learn how to find real demand, avoid fake discovery, and shape activation work around user jobs instead of feature lists.

Responsable: Product PodAudience: Product managers, founders, growth-minded buildersDurée: 2 weeks

Most product teams do not fail because they lack ideas. They fail because they ship unvalidated ideas, skip discovery, or never connect onboarding to the real user job.

Ce que vous devriez obtenir

Map a user job before writing a featureUse prototypes to answer risk, not polishTurn onboarding into activation work

Plan sur 2 semaines

Week 1: Map the job and the failure mode

Read the anti-patterns piece first, then write one sentence for the user job your product serves and one sentence for the biggest failure mode in the current flow.

Livrable: A one-page job statement and anti-pattern checklist

Week 2: Prototype the risky step

Use the prototype and discovery readings to identify the riskiest moment in your flow, then design a low-cost way to test it before shipping full code.

Livrable: A simple validation plan with one prototype and one success metric

Workflow d’étude 5tldr

Pour chaque source, lisez d’abord l’original, résumez-le dans 5tldr, enregistrez le résultat utile dans Library et écrivez une courte note de mémoire avant de relire le résumé.

SVPG·Teams that keep shipping features but still feel unclear about demand

Product Discovery: Pitfalls and Anti-Patterns

A blunt breakdown of how discovery fails: stakeholder opinion replaces user evidence, delivery pressure crushes learning, and teams confuse roadmap output with real product validation.

Pourquoi commencer ici: This is the fastest reset if you want product work to start from risk reduction and evidence instead of backlog momentum.

SVPG·Product and design pairs working on early-stage flows

The Purpose of Prototypes

Explains that prototypes are decision tools. Their job is to answer a specific product risk, not to become a high-fidelity deliverable for its own sake.

Pourquoi commencer ici: Helps product and design stop wasting time on prototypes that look finished but do not answer the real question.

SVPG·Founders and PMs who need a lightweight but serious discovery model

Discovery

Frames discovery as a disciplined practice for testing value, usability, feasibility, and viability before committing the team to build work.

Pourquoi commencer ici: This ties discovery back to the four risks that actually matter when deciding whether a product idea is worth shipping.

Product Design & UX Systems

Learn how to think in flows, systems, and guidance patterns so your interface reduces friction instead of adding visual polish to a weak journey.

Responsable: Design PodAudience: Product designers, front-end teams, UX-minded buildersDurée: 2 weeks

Many products look modern but still feel confusing because the team never mapped the flow, documented reusable patterns, or decided when help should appear.

Ce que vous devriez obtenir

See the product as a flow, not just screensUse systems to reduce repeated design debtChoose guidance patterns that fit complexity

Plan sur 2 semaines

Week 1: Draw the current journey

Start with the user-flow reading, then map your current flow from first action to success, including errors, retries, and dead ends.

Livrable: A current-state flow map with friction points highlighted

Week 2: Systematize one repeated pattern

Use the design-system and onboarding guidance readings to pick one repeated pattern, such as empty states or help states, and define a consistent rule for it.

Livrable: A reusable pattern note with adopted and rejected guidance patterns

Workflow d’étude 5tldr

Pour chaque source, lisez d’abord l’original, résumez-le dans 5tldr, enregistrez le résultat utile dans Library et écrivez une courte note de mémoire avant de relire le résumé.

Figma·Designers working on activation, onboarding, or error recovery

What Is a User Flow?

Breaks down user flows as a way to visualize steps, decisions, and branching moments before you jump into individual screen design.

Pourquoi commencer ici: This is the fastest way to stop designing isolated screens and start fixing the journey that connects them.

Figma·Teams trying to unify a growing product surface

Design Systems

Explains why design systems are more than a component library: they combine reusable patterns, rules, and documentation that keep product work faster and more consistent.

Pourquoi commencer ici: Useful when your product has multiple flows and repeated UI work that should become a consistent system instead of a page-by-page patchwork.

NN/g·Designers shaping onboarding, recovery states, and in-product education

Onboarding Tutorials vs. Contextual Help

Shows when full tutorials help and when contextual guidance is better, especially once users are already inside a product and need just-in-time support.

Pourquoi commencer ici: This matters for any product that wants to reduce abandonment without forcing users through heavy education flows.

SEO & Content Quality

Learn how Google actually frames crawlability, search quality, and people-first content so your SEO work is grounded in durable rules instead of short-term hacks.

Responsable: Growth PodAudience: SEO operators, content marketers, founders running acquisitionDurée: 2 weeks

A lot of SEO work looks busy but does not change outcomes because it ignores technical basics, intent matching, and the quality signals Google keeps repeating.

Ce que vous devriez obtenir

Understand the baseline rules for search eligibilityWrite for people-first usefulness, not thin keyword pagesUse titles, links, and structure more deliberately

Plan sur 2 semaines

Week 1: Audit the basics

Read Search Essentials and the Starter Guide, then review one section of your site for crawlability, titles, internal links, and thin pages.

Livrable: A ranked list of technical and page-structure fixes

Week 2: Improve one content cluster

Use the people-first content guidance to deepen one cluster instead of publishing more thin pages. Focus on intent, proof, and readability.

Livrable: A rewritten content brief with clearer user job, proof, and conversion path

Workflow d’étude 5tldr

Pour chaque source, lisez d’abord l’original, résumez-le dans 5tldr, enregistrez le résultat utile dans Library et écrivez une courte note de mémoire avant de relire le résumé.

Google Search Central·Anyone responsible for search performance or index health

Google Search Essentials

The official baseline on technical requirements, spam policies, and key practices that determine whether your site can perform in Google Search.

Pourquoi commencer ici: This is the floor. If you ignore it, everything else in SEO becomes noise.

Google Search Central·Content teams, SEO teams, and product marketers

Creating Helpful, Reliable, People-First Content

Google's clearest public guidance on what useful content should do: serve a real audience, show effort and expertise, and avoid being created primarily for search engines.

Pourquoi commencer ici: This is the right foundation if you want content that helps conversion, trust, and AdSense review instead of just adding more pages.

Google Search Central·Operators cleaning up titles, internal links, and site structure

SEO Starter Guide: The Basics

A practical guide to crawlable structure, titles, snippets, navigation, and content presentation for teams that need search basics without mythology.

Pourquoi commencer ici: Good for turning SEO from vague advice into specific page-level fixes your team can actually ship.

Learning Systems & Knowledge Work

Learn how to study from long-form sources more effectively by turning reading into feedback loops, deliberate review, and saved knowledge rather than passive consumption.

Responsable: Content + Product AnalystAudience: Students, researchers, operators, lifelong learnersDurée: 2 weeks

Most people do not fail because they read too little. They fail because they never convert reading into retrieval, comparison, and repeatable notes.

Ce que vous devriez obtenir

Spot why experience alone often fails to teachUse feedback loops instead of passive rereadingTurn reading into saved notes and reusable patterns

Plan sur 2 semaines

Week 1: Read, summarize, save

Read one article a day, summarize it with 5tldr, save the useful ones, and write down one pattern you would miss if you only skimmed.

Livrable: Three saved summaries with one takeaway pattern each

Week 2: Compare and recall

Reopen your saved summaries, compare two related sources, and write one short memo from memory before checking your notes.

Livrable: One comparison memo and one recall note built from saved summaries

Workflow d’étude 5tldr

Pour chaque source, lisez d’abord l’original, résumez-le dans 5tldr, enregistrez le résultat utile dans Library et écrivez une courte note de mémoire avant de relire le résumé.

Commoncog·People who consume a lot of content but struggle to retain it

The Hard Thing About Learning From Experience

Argues that experience does not automatically create learning. Without reflection and feedback, people can repeat the same weak patterns for years.

Pourquoi commencer ici: This is the mental reset behind every good summary, note-taking, and review workflow.

Commoncog·Knowledge workers and researchers learning in ambiguous environments

The Problems With Deliberate Practice

Explains why classic deliberate practice works best in well-defined domains and needs adaptation in messy knowledge work where feedback is slower and less obvious.

Pourquoi commencer ici: Useful for building learning plans that fit real-world work instead of classroom-style drills.

Commoncog·Students, teachers, and anyone building a practical study workflow

Teaching Tech Together

Shows how complex ideas become more learnable when teaching, examples, and practice are structured around concrete tasks rather than abstract explanation alone.

Pourquoi commencer ici: This is highly relevant if you want your notes, study guides, and reviews to become something you can actually use later.

AI Video Fundamentals

Learn the current AI video model landscape, the core prompt grammar behind usable generations, and the fastest path from first prompt to first finished short clip.

Responsable: AI Video PodAudience: Zero-to-one creators, content marketers, product storytellersDurée: 2 weeks

AI video is moving too fast for vague tool hype to be useful. You need a grounded starting point: what each model is good at, how prompt structure changes output quality, and how to iterate without wasting credits.

Ce que vous devriez obtenir

Compare the current strengths of Sora, Runway, Veo, Luma, and adjacent toolsWrite cleaner text-to-video and image-to-video promptsShip a first short clip with a documented prompt workflow

Plan sur 2 semaines

Week 1: Benchmark the model landscape

Read the Sora, Runway, Veo, and Flow materials, then run the same 3 prompts across at least 3 tools. Revisit your Day 1 notes on Day 3 and Day 7 to compare how each model handles motion, adherence, and editability.

Livrable: A comparison sheet with prompt, output notes, and a default-tool recommendation

Week 2: Build your first repeatable short-form workflow

Use the prompting guides to create 5 short clips with one fixed structure: subject, action, environment, style, camera, and audio intent. Reopen your best and worst prompt on Day 10 and Day 14 to rewrite them from memory before refining again.

Livrable: A mini prompt library plus one finished 15-30 second clip assembled from your best generations

Workflow d’étude 5tldr

Pour chaque source, lisez d’abord l’original, résumez-le dans 5tldr, enregistrez le résultat utile dans Library et écrivez une courte note de mémoire avant de relire le résumé.

OpenAI Help Center·Beginners learning how to prompt, iterate, and use storyboard mode without guessing

Creating videos with Sora

OpenAI's practical Sora guide covers the real workflow: generate, iterate, edit, publish, and use storyboards. The prompting section is especially useful because it emphasizes specificity, cadence, realism anchors, and limiting moving parts.

Pourquoi commencer ici: This is one of the clearest current references for how a modern consumer AI video product wants prompts to be structured in practice, not just in theory.

Runway Help Center·Creators who already have an image or frame and need cleaner motion control

Gen-4 Video Prompting Guide

Runway explains how to build motion-first prompts for Gen-4: start simple, add one variable at a time, and separate subject motion, camera motion, scene motion, and style descriptors. It also explicitly warns against negative prompting and overloading a 5-10 second clip.

Pourquoi commencer ici: This is one of the most concrete prompt frameworks available from a production AI video vendor, and it translates directly into better iteration discipline.

Google·Teams benchmarking current model capabilities before choosing a default stack

Veo 3.1 Ingredients to Video: More consistency, creativity and control

Google's January 13, 2026 update focuses on character identity consistency, background and object consistency, native 9:16 outputs, and 1080p/4K upscaling. It frames Veo 3.1 as both a mobile-first and production-ready workflow tool.

Pourquoi commencer ici: This is a current baseline for what a serious 2026 model should offer beyond pure novelty: consistency, vertical output, and production fidelity.

Google·Creators comparing standalone generators with more orchestrated production tools

Introducing Flow: Google’s AI filmmaking tool designed for Veo

Google positions Flow as a filmmaking surface rather than a single-generation tool. The post highlights camera controls, Scenebuilder, asset management, and reuse of characters and scenes across clips with consistency.

Pourquoi commencer ici: Useful for understanding how the market is shifting from isolated generations toward end-to-end filmmaking workspaces.

Cinematography & Visual Language for AI Video

Learn the visual grammar behind stronger AI video prompts: shot size, camera angle, camera movement, composition, and lighting choices that change the emotional read of a scene.

Responsable: AI Video PodAudience: Creators who want their AI videos to look directed, not randomDurée: 2 weeks

Most weak AI video prompts fail before the model generates anything. The user never decided what the shot should feel like, how the camera behaves, or what lighting logic supports the mood.

Ce que vous devriez obtenir

Use shot size and angle as emotional control, not generic keywordsPrompt deliberate camera movement instead of random motionUpgrade scenes through composition, white balance, and color decisions

Plan sur 2 semaines

Week 1: Learn the shot grammar

Study shot types, angles, and camera motion, then practice 8 framing patterns and 6 movement prompts. Revisit your Day 1 clips on Day 3 and Day 7 to label what visual choice actually changed the emotional read.

Livrable: A personal prompt glossary with at least 14 reusable shot and motion patterns

Week 2: Re-light and re-compose the same scene

Take 2-3 scenes from Week 1 and regenerate them with different framing, rule-of-thirds positioning, and white-balance / lighting intent. End the week by mixing techniques instead of isolating them one by one.

Livrable: A before/after reel showing how framing and lighting changed quality and mood

Workflow d’étude 5tldr

Pour chaque source, lisez d’abord l’original, résumez-le dans 5tldr, enregistrez le résultat utile dans Library et écrivez une courte note de mémoire avant de relire le résumé.

Adobe·Beginners building a usable shot vocabulary for prompts and shot lists

Different types of shots and camera angles in film

Adobe walks through the core shot vocabulary that filmmakers reuse constantly: wide, medium, close-up, extreme close-up, low angle, high angle, over-the-shoulder, POV, tracking, and Dutch angle. It clearly distinguishes shot size from camera angle.

Pourquoi commencer ici: AI video gets better immediately when your prompt uses film language precisely instead of asking for something 'cinematic' in the abstract.

Adobe·Creators who want stronger framing and more consistent scene balance

How to use, and break, the rule of thirds

Adobe explains the rule of thirds as a compositional guideline rather than a rigid law and emphasizes repetition and deliberate practice. It is a useful refresher for making framing choices visible and intentional.

Pourquoi commencer ici: Prompt-level composition control improves when you can describe where the subject sits in frame and why.

Adobe·Creators trying to control mood and color realism across scenes

Understand white balance in filmmaking

This guide explains white balance, color temperature, and the practical difference between daylight, tungsten, and mixed lighting setups. It also connects on-set choices with post-production correction and stylization.

Pourquoi commencer ici: A lot of 'cinematic' look work is really color temperature discipline. This helps you prompt and review lighting choices more intentionally.

Luma·Intermediate users exploring more controlled motion beyond generic pan/zoom prompts

Camera Motion Concepts – Composable AI Camera Control

Luma introduces a system for learning and composing camera moves from minimal examples, with a focus on reliable, reusable motion control. The write-up is especially interesting because it contrasts concepts with heavier LoRA or fine-tuning workflows.

Pourquoi commencer ici: This is a strong bridge between classic cinematography language and AI-native motion control, which is where a lot of current craft is heading.

Advanced AI Video Workflows & Consistency

Move from single generations to pipeline thinking: image references, scene continuity, video-to-video refinement, and multi-tool workflows that preserve identity and motion across shots.

Responsable: AI Video PodAudience: Freelancers, video operators, and creators moving from single clips to repeatable pipelinesDurée: 2 weeks

The hard part of AI video is rarely the first good shot. It is getting the second, third, and fourth shot to belong to the same world without rebuilding everything from zero.

Ce que vous devriez obtenir

Use reference images to preserve subject and scene identityChain image, video, and edit tools instead of relying on one modelAdd post-style refinement without breaking motion continuity

Plan sur 2 semaines

Week 1: Build a 3-shot continuity test

Create one character or product subject and carry it across 3 shots using image references or ingredient inputs. Review your continuity failures on Day 3 and Day 7, then re-run only the weakest shot instead of rebuilding the sequence.

Livrable: A 3-shot clip with documented reference assets, prompts, and continuity notes

Week 2: Add a post-production refinement layer

Take the continuity test into a second-stage workflow: modify video, relight, restyle, or extend a shot without losing performance. Mix tools deliberately so each one has a narrow job.

Livrable: A before/after pipeline map showing first-pass generation, refinement, and final export decisions

Workflow d’étude 5tldr

Pour chaque source, lisez d’abord l’original, résumez-le dans 5tldr, enregistrez le résultat utile dans Library et écrivez une courte note de mémoire avant de relire le résumé.

Runway Help Center·Creators who need recurring characters, consistent b-roll, or stable environments

Creating with Gen-4 Image References

Runway explains how to use one or more reference images to preserve characters, scenes, styles, and objects across generations. The guide includes both simple single-reference prompting and more advanced multi-reference workflows.

Pourquoi commencer ici: This is one of the clearest current references for character and scene consistency without building a custom model.

Runway Help Center·Operators building more reliable image-to-video or scene-edit workflows

Controlling Aleph edits with a Reference Image

This workflow combines first-frame editing with reference-guided video generation for tighter object placement and subject continuity. It is a practical example of chaining image and video tooling instead of treating them as separate worlds.

Pourquoi commencer ici: Useful if you want a repeatable image-first-to-video pipeline with more control over where edits land in-frame.

Luma·Teams refining footage after the first generation or adapting one performance into multiple visual directions

Modify Video: Shoot Once. Shape Infinitely

Luma's Modify Video workflow focuses on preserving the original motion and performance while restyling worlds, props, lighting, and environments. It is a strong example of video-to-video as a post-production layer rather than a novelty effect.

Pourquoi commencer ici: This is directly relevant for creators who want to separate performance capture from visual treatment and keep that distinction clean.

Google·People designing multi-shot workflows across tools, not just inside one UI

Veo 3.1 Ingredients to Video: More consistency, creativity and control

Google's Veo 3.1 update explicitly emphasizes identity consistency, object consistency, and reusable ingredient-based generation. It is a good complement to Runway's reference system because it frames consistency as a production feature, not just a model benchmark.

Pourquoi commencer ici: Useful for comparing how different vendors now think about continuity, vertical deliverables, and higher-fidelity finishing.

Publisher standards

How these learning plans are curated

The learning hub exists to help users start, sequence, summarize, and revisit high-quality material. We curate it from external sources, product workflows, and repeated learning needs.

Hands-on workflow coverage

These pages are built from real 5tldr workflows, support questions, and product behavior instead of thin keyword templates.

Updated when the product changes

We refresh guidance when plan rules, supported sources, failure states, and learning workflows change.

Content and ad boundaries stay separate

Educational pages may carry ads. Product workflows, pricing, library, checkout, and paid-user journeys should remain ad-free.