SpyBara
Go Premium Account
2026
3 Mar 2026, 00:35
19 May 2026, 11:58 18 May 2026, 22:01 14 May 2026, 21:00 14 May 2026, 07:00 13 May 2026, 00:57 12 May 2026, 01:59 11 May 2026, 18:00 7 May 2026, 20:02 7 May 2026, 17:08 5 May 2026, 23:00 2 May 2026, 06:45 2 May 2026, 00:48 1 May 2026, 18:29 30 Apr 2026, 18:36 29 Apr 2026, 12:40 29 Apr 2026, 00:50 25 Apr 2026, 06:37 25 Apr 2026, 00:42 24 Apr 2026, 18:20 24 Apr 2026, 12:28 23 Apr 2026, 18:31 23 Apr 2026, 12:28 23 Apr 2026, 00:46 22 Apr 2026, 18:29 22 Apr 2026, 00:42 21 Apr 2026, 18:29 21 Apr 2026, 12:30 21 Apr 2026, 06:45 20 Apr 2026, 18:26 20 Apr 2026, 06:53 18 Apr 2026, 18:18 17 Apr 2026, 00:44 16 Apr 2026, 18:31 16 Apr 2026, 00:46 15 Apr 2026, 18:31 15 Apr 2026, 06:44 14 Apr 2026, 18:31 14 Apr 2026, 12:29 13 Apr 2026, 18:37 13 Apr 2026, 00:44 12 Apr 2026, 06:38 10 Apr 2026, 18:23 9 Apr 2026, 00:33 8 Apr 2026, 18:32 8 Apr 2026, 00:40 7 Apr 2026, 00:40 2 Apr 2026, 18:23 31 Mar 2026, 06:35 31 Mar 2026, 00:39 28 Mar 2026, 06:26 28 Mar 2026, 00:36 27 Mar 2026, 18:23 27 Mar 2026, 00:39 26 Mar 2026, 18:27 25 Mar 2026, 18:24 23 Mar 2026, 18:22 20 Mar 2026, 00:35 18 Mar 2026, 12:23 18 Mar 2026, 00:36 17 Mar 2026, 18:24 17 Mar 2026, 00:33 16 Mar 2026, 18:25 16 Mar 2026, 12:23 14 Mar 2026, 00:32 13 Mar 2026, 18:15 13 Mar 2026, 00:34 11 Mar 2026, 00:31 9 Mar 2026, 00:34 8 Mar 2026, 18:10 8 Mar 2026, 00:35 7 Mar 2026, 18:10 7 Mar 2026, 06:14 7 Mar 2026, 00:33 6 Mar 2026, 00:38 5 Mar 2026, 18:41 5 Mar 2026, 06:22 5 Mar 2026, 00:34 4 Mar 2026, 18:18 4 Mar 2026, 06:20 3 Mar 2026, 18:20 3 Mar 2026, 00:35 27 Feb 2026, 18:15 24 Feb 2026, 06:27 24 Feb 2026, 00:33 23 Feb 2026, 18:27 21 Feb 2026, 00:33 20 Feb 2026, 12:16 19 Feb 2026, 20:53 19 Feb 2026, 20:37
16 Apr 2026, 00:46
19 May 2026, 11:58 18 May 2026, 22:01 14 May 2026, 21:00 14 May 2026, 07:00 13 May 2026, 00:57 12 May 2026, 01:59 11 May 2026, 18:00 7 May 2026, 20:02 7 May 2026, 17:08 5 May 2026, 23:00 2 May 2026, 06:45 2 May 2026, 00:48 1 May 2026, 18:29 30 Apr 2026, 18:36 29 Apr 2026, 12:40 29 Apr 2026, 00:50 25 Apr 2026, 06:37 25 Apr 2026, 00:42 24 Apr 2026, 18:20 24 Apr 2026, 12:28 23 Apr 2026, 18:31 23 Apr 2026, 12:28 23 Apr 2026, 00:46 22 Apr 2026, 18:29 22 Apr 2026, 00:42 21 Apr 2026, 18:29 21 Apr 2026, 12:30 21 Apr 2026, 06:45 20 Apr 2026, 18:26 20 Apr 2026, 06:53 18 Apr 2026, 18:18 17 Apr 2026, 00:44 16 Apr 2026, 18:31 16 Apr 2026, 00:46 15 Apr 2026, 18:31 15 Apr 2026, 06:44 14 Apr 2026, 18:31 14 Apr 2026, 12:29 13 Apr 2026, 18:37 13 Apr 2026, 00:44 12 Apr 2026, 06:38 10 Apr 2026, 18:23 9 Apr 2026, 00:33 8 Apr 2026, 18:32 8 Apr 2026, 00:40 7 Apr 2026, 00:40 2 Apr 2026, 18:23 31 Mar 2026, 06:35 31 Mar 2026, 00:39 28 Mar 2026, 06:26 28 Mar 2026, 00:36 27 Mar 2026, 18:23 27 Mar 2026, 00:39 26 Mar 2026, 18:27 25 Mar 2026, 18:24 23 Mar 2026, 18:22 20 Mar 2026, 00:35 18 Mar 2026, 12:23 18 Mar 2026, 00:36 17 Mar 2026, 18:24 17 Mar 2026, 00:33 16 Mar 2026, 18:25 16 Mar 2026, 12:23 14 Mar 2026, 00:32 13 Mar 2026, 18:15 13 Mar 2026, 00:34 11 Mar 2026, 00:31 9 Mar 2026, 00:34 8 Mar 2026, 18:10 8 Mar 2026, 00:35 7 Mar 2026, 18:10 7 Mar 2026, 06:14 7 Mar 2026, 00:33 6 Mar 2026, 00:38 5 Mar 2026, 18:41 5 Mar 2026, 06:22 5 Mar 2026, 00:34 4 Mar 2026, 18:18 4 Mar 2026, 06:20 3 Mar 2026, 18:20 3 Mar 2026, 00:35 27 Feb 2026, 18:15 24 Feb 2026, 06:27 24 Feb 2026, 00:33 23 Feb 2026, 18:27 21 Feb 2026, 00:33 20 Feb 2026, 12:16 19 Feb 2026, 20:53 19 Feb 2026, 20:37
Thu 2 18:23 Tue 7 00:40 Wed 8 00:40 Wed 8 18:32 Thu 9 00:33 Fri 10 18:23 Sun 12 06:38 Mon 13 00:44 Mon 13 18:37 Tue 14 12:29 Tue 14 18:31 Wed 15 06:44 Wed 15 18:31 Thu 16 00:46 Thu 16 18:31 Fri 17 00:44 Sat 18 18:18 Mon 20 06:53 Mon 20 18:26 Tue 21 06:45 Tue 21 12:30 Tue 21 18:29 Wed 22 00:42 Wed 22 18:29 Thu 23 00:46 Thu 23 12:28 Thu 23 18:31 Fri 24 12:28 Fri 24 18:20 Sat 25 00:42 Sat 25 06:37 Wed 29 00:50 Wed 29 12:40 Thu 30 18:36
Details

1# Learn a new concept | Codex use cases

2 

3Codex use cases

4 

5![](/assets/OpenAI-black-wordmark.svg)

6 

7![Codex](/assets/OAI_Codex-Lockup_Fallback_Black.svg)

8 

9Codex use case

10 

11# Learn a new concept

12 

13Turn dense source material into a clear, reviewable learning report.

14 

15Difficulty **Intermediate**

16 

17Time horizon **30m**

18 

19Use Codex to study material such as research papers or courses, split the reading across subagents, gather context, and produce a Markdown report with diagrams.

20 

21## Best for

22 

23 - Individuals learning about an unfamiliar concept

24- Dense source material that benefits from parallel reading, context gathering, diagrams, and a written synthesis

25- Turning a one-off reading session into a reusable Markdown report with citations, glossary terms

26 

27# Contents

28 

29[← All use cases](https://developers.openai.com/codex/use-cases)

30 

31Copy page [Export as PDF](https://developers.openai.com/codex/use-cases/learn-a-new-concept/?export=pdf)

32 

33Use Codex to study material such as research papers or courses, split the reading across subagents, gather context, and produce a Markdown report with diagrams.

34 

35Intermediate

36 

3730m

38 

39Related links

40 

41[Subagents](https://developers.openai.com/codex/subagents) [Subagent concepts](https://developers.openai.com/codex/concepts/subagents)

42 

43## Best for

44 

45 - Individuals learning about an unfamiliar concept

46- Dense source material that benefits from parallel reading, context gathering, diagrams, and a written synthesis

47- Turning a one-off reading session into a reusable Markdown report with citations, glossary terms

48 

49## Skills & Plugins

50 

51- [ImageGen](https://github.com/openai/skills/tree/main/skills/.curated/imagegen)

52 

53 Generate illustrative, non-exact visual assets when a Markdown-native diagram is not enough.

54 

55| Skill | Why use it |

56| --- | --- |

57| [ImageGen](https://github.com/openai/skills/tree/main/skills/.curated/imagegen) | Generate illustrative, non-exact visual assets when a Markdown-native diagram is not enough. |

58 

59## Starter prompt

60 

61 I want to learn a new concept from this research paper: [paper path or URL].

62 Please run this as a subagent workflow:

63- Spawn one subagent to map the paper's problem statement, contribution, method, experiments, and limitations.

64- Spawn one subagent to gather prerequisite context and explain the background terms I need.

65- Spawn one subagent to inspect the figures, tables, notation, and any claims that need careful verification.

66- Wait for all subagents, reconcile disagreements, and avoid overclaiming beyond the source material.

67 Final output:

68 - create `notes/[concept-name]-report.md`

69- include an executive summary, glossary, paper walkthrough, concept map, method diagram, evidence table, caveats, and open questions

70 - use Markdown-native Mermaid diagrams where diagrams help

71- use imagegen to generate illustrative, non-exact visual assets when a Markdown-native diagram is not enough

72 - cite paper sections, pages, figures, or tables whenever possible

73 Constraints:

74 - do not treat the paper as ground truth if the evidence is weak

75 - separate what the paper claims from your interpretation

76 - call out missing background, assumptions, and follow-up reading

77 

78 I want to learn a new concept from this research paper: [paper path or URL].

79 Please run this as a subagent workflow:

80- Spawn one subagent to map the paper's problem statement, contribution, method, experiments, and limitations.

81- Spawn one subagent to gather prerequisite context and explain the background terms I need.

82- Spawn one subagent to inspect the figures, tables, notation, and any claims that need careful verification.

83- Wait for all subagents, reconcile disagreements, and avoid overclaiming beyond the source material.

84 Final output:

85 - create `notes/[concept-name]-report.md`

86- include an executive summary, glossary, paper walkthrough, concept map, method diagram, evidence table, caveats, and open questions

87 - use Markdown-native Mermaid diagrams where diagrams help

88- use imagegen to generate illustrative, non-exact visual assets when a Markdown-native diagram is not enough

89 - cite paper sections, pages, figures, or tables whenever possible

90 Constraints:

91 - do not treat the paper as ground truth if the evidence is weak

92 - separate what the paper claims from your interpretation

93 - call out missing background, assumptions, and follow-up reading

94 

95## Introduction

96 

97Learning a new concept from a dense paper or course requires more than just summarization. The goal is to build a working mental model: what problem it addresses, what the method actually does, which evidence supports it, what assumptions it depends on, and which parts you still need to investigate.

98 

99Codex is useful here because it can automate the context gathering, and can turn complicated concepts into helpful diagrams or illustrations. This use case is also a good fit for [subagents](https://developers.openai.com/codex/concepts/subagents): one thread can read the paper for structure, another can gather prerequisite context, another can inspect figures and notation, and the main thread can reconcile the results into a report you can review later.

100 

101For this use case, the final artifact should be something you can easily review: a Markdown file such as `notes/concept-report.md`, or a document of another format. It should include a summary, glossary, walkthrough, diagrams, evidence table, limitations, and open questions instead of ending with a transient chat answer.

102 

103## Define the learning goal

104 

105Start by naming the concept and the output you want. A narrow question makes the report more useful than a broad summary.

106 

107For example:

108 

109> I want to understand the main idea in this research paper, how the method works, why the experiments support or do not support the claim, and what I should read next.

110 

111That scope gives Codex a concrete job. It should teach you the concept, but it should also preserve uncertainty, cite where claims came from, and separate the paper's claims from its own interpretation.

112 

113## Running example: research paper analysis

114 

115Suppose you want to learn about a paper about an unfamiliar model architecture. You want a report that lets you understand the concept at a glance, without having to read the whole paper.

116 

117A good result might look like this:

118 

119- `notes/paper-report.md` with the main explanation.

120- `notes/figures/method-flow.mmd` or an inline Mermaid diagram for the method.

121- `notes/figures/concept-map.mmd` or a small SVG that shows how the prerequisite ideas relate.

122- An evidence table that maps claims to paper sections, pages, figures, or tables.

123- A list of follow-up readings and unresolved questions.

124 

125The point is to make the learning process more systematic and to leave behind a durable artifact.

126 

127## Split the work across subagents

128 

129Subagents work best when each one has a bounded job and a clear return format. Ask Codex to spawn them explicitly; Codex does not need to use subagents for every reading task, but parallel exploration helps when the paper is long or conceptually dense.

130 

131For a research paper, a practical split is:

132 

133- **Paper map:** Extract the problem statement, contribution, method, experiments, limitations, and claimed results.

134- **Prerequisite context:** Explain background terms, related concepts, and any prior work the paper assumes.

135- **Notation and figures:** Walk through equations, algorithms, diagrams, figures, and tables.

136- **Skeptical reviewer:** Check whether the evidence supports the claims, list caveats, and identify missing baselines or unclear assumptions.

137 

138The main agent should wait for those subagents, compare their answers, and resolve contradictions. Codex will then synthesize the results into a coherent report.

139 

140## Gather additional context deliberately

141 

142When the paper assumes background you do not have, ask Codex to gather context from approved sources. That might mean local notes, a bibliography folder, linked papers, web search if enabled, or a connected knowledge base.

143 

144If you're learning about an internal concept, you can connect multiple sources with [plugins](https://developers.openai.com/codex/plugins) to create a knowledge base.

145 

146Keep this step bounded. Tell Codex what counts as a reliable source and what the final report should do with external context:

147 

148- Define prerequisite terms in a glossary.

149- Add a short "background you need first" section.

150- Link follow-up readings separately from the paper's own claims.

151- Mark claims that come from outside the paper.

152 

153## Generate diagrams for the report

154 

155Diagrams are often the fastest way to check whether you really understand a concept. For a Markdown report, ask Codex for diagrams that stay close to the source material and are easy to revise.

156 

157Good defaults include:

158 

159- A concept map that shows prerequisite ideas and how they connect.

160- A method flow diagram that traces inputs, transformations, model components, and outputs.

161- An experiment map that connects datasets, metrics, baselines, and reported claims.

162- A limitations diagram that separates assumptions, failure modes, and open questions.

163 

164For Markdown-first reports, ask for Mermaid when the destination supports it, or a small checked-in SVG/PNG asset when it does not. Ask Codex to use imagegen only when you need an illustrative, non-exact visual or something that doesn’t fit in a Markdown-native diagram.

165 

166## Write the Markdown report

167 

168Ask Codex to make the report self-contained enough that you can return to it later. A useful structure is:

169 

1701. Executive summary.

1712. What to know before reading.

1723. Key terms and notation.

1734. Paper walkthrough.

1745. Method diagram.

1756. Evidence table.

1767. What the paper does not prove.

1778. Open questions and follow-up reading.

178 

179The report should include source references wherever possible. For a PDF, ask for page, section, figure, or table references. If Codex cannot extract exact page references, it should say that and use section or heading references instead.

180 

181## Use the report as a study loop

182 

183The first report is a starting point. After reading it, ask follow-up questions and have Codex revise the artifact.

184 

185Useful follow-ups include:

186 

187- Which part of this method should I understand first?

188- What is the simplest toy example that demonstrates the core idea?

189- Which figure is doing the most work in the paper's argument?

190- Which claim is weakest or least supported?

191- What should I read next if I want to implement this?

192 

193When the concept requires experimentation, ask Codex to add a small notebook or script that recreates a toy version of the idea. Keep that scratch work linked from the Markdown report so the explanation and the experiment stay together.

194 

195Example prompt:

196 

197Generate a script that reproduces a simple example from this paper.

198The script should be self-contained and runnable with minimal dependencies.

199There should be a clear output I can review, such as a csv, plot, or other artifact.

200If there are code examples in the paper, use them as reference to write the script.

201 

202## Skills to consider

203 

204Use skills only when they match the artifact you want:

205 

206- `$jupyter-notebook` for toy examples, charts, or lightweight reproductions that should be runnable.

207- `$imagegen` for illustrative visual assets that do not need to be exact technical diagrams.

208- `$slides` when you want to turn the report into a presentation after the learning pass is done.

209 

210For most paper-analysis reports, Markdown-native diagrams or simple SVG files are better defaults than a generated bitmap. They are easier to diff, review, and update when your understanding changes.

211 

212## Suggested prompts

213 

214**Create the Report Outline First**

215 

216Before writing the full report, inspect [paper path] and propose the report outline.

217Include:

218- the core concept the paper is trying to explain

219- which sections or figures are most important

220- which background terms need definitions

221- which diagrams would help

222- which subagent tasks you would spawn before drafting

223Stop after the outline and wait for confirmation before creating files.

224 

225**Build Diagrams for the Concept**

226 

227Read `notes/[concept-name]-report.md` and add diagrams that make the concept easier to understand.

228Use Markdown-native Mermaid diagrams when possible. If the report destination cannot render Mermaid, create small checked-in SVG files instead and link them from the report.

229Add:

230- one concept map for prerequisites and related ideas

231- one method flow diagram for inputs, transformations, and outputs

232- one evidence map connecting claims to paper figures, tables, or sections

233Keep the diagrams faithful to the report. Do not add unverified claims.

234 

235**Turn the Report Into a Study Plan**

236 

237Use `notes/[concept-name]-report.md` to create a study plan for the next two reading sessions.

238Include:

239- what I should understand first

240- which paper sections to reread

241- which equations, figures, or tables need extra attention

242- one toy example or notebook idea if experimentation would help

243- follow-up readings and questions to resolve

244Update the report with a short "Next study loop" section.

245 

246## Related use cases

247 

248[![](/images/codex/codex-wallpaper-2.webp)

249 

250### Coordinate new-hire onboarding

251 

252Use Codex to gather approved new-hire context, stage tracker updates, draft team-by-team...

253 

254Integrations Data](https://developers.openai.com/codex/use-cases/new-hire-onboarding)[![](/images/codex/codex-wallpaper-3.webp)

255 

256### Generate slide decks

257 

258Use Codex to update existing presentations or build new decks by editing slides directly...

259 

260Data Integrations](https://developers.openai.com/codex/use-cases/generate-slide-decks)[![](/images/codex/codex-wallpaper-2.webp)

261 

262### Analyze datasets and ship reports

263 

264Use Codex to clean data, join sources, explore hypotheses, model results, and package the...

265 

266Data Analysis](https://developers.openai.com/codex/use-cases/datasets-and-reports)