# Chat vs. Ask vs. Transformations - Which Tool for Which Job? Open Notebook offers different ways to work with your research. Understanding when to use each is key to using the system effectively. --- ## The Three Interaction Modes ### 1. CHAT - Conversational Exploration with Manual Context **What it is:** Have a conversation with AI about selected sources. **The flow:** ``` 1. You select which sources to include ("in context") 2. You ask a question 3. AI responds using ONLY those sources 4. You ask follow-up questions (context stays same) 5. You change sources or context level, then continue ``` **Context management:** You explicitly choose which sources the AI can see. **Conversational:** Multiple questions with shared history. **Example:** ``` You: [Select sources: "paper1.pdf", "research_notes.txt"] [Set context: Full content for paper1, Summary for notes] You: "What's the main argument in these sources?" AI: "Paper 1 argues X [citation]. Your notes emphasize Y [citation]." You: "How do they differ?" AI: "Paper 1 focuses on X [citation], while your notes highlight Y [citation]..." You: [Now select different sources] You: "Compare to this other perspective" AI: "This new source takes a different approach..." ``` **Best for:** - Exploring a focused topic with specific sources - Having a dialogue (multiple back-and-forth questions) - When you know which sources matter - When you want tight control over what goes to AI --- ### 2. ASK - Automated Comprehensive Search **What it is:** Ask one complex question, system automatically finds relevant content. **The flow:** ``` 1. You ask a comprehensive question 2. System analyzes the question 3. System automatically searches your sources 4. System retrieves relevant chunks 5. System synthesizes answer from all results 6. You get one detailed answer (not conversational) ``` **Context management:** Automatic. System figures out what's relevant. **Non-conversational:** One question → one answer. No follow-ups. **Example:** ``` You: "How do these papers compare their approaches to alignment? What does each one recommend?" System: - Breaks down the question into search strategies - Searches all sources for alignment approaches - Searches all sources for recommendations - Retrieves top 10 relevant chunks - Synthesizes: "Paper A recommends X [citation]. Paper B recommends Y [citation]. They differ in Z." You: [Get back one comprehensive answer] [If you want to follow up, use Chat instead] ``` **Best for:** - Comprehensive, one-time questions - Comparing multiple sources at once - When you want the system to decide what's relevant - Complex questions that need multiple search angles - When you don't need a back-and-forth conversation --- ### 3. TRANSFORMATIONS - Template-Based Processing **What it is:** Apply a reusable template to a source and get structured output. **The flow:** ``` 1. You define a transformation (or choose a preset) "Extract: main argument, methodology, limitations" 2. You apply it to ONE source at a time (You can repeat for other sources) 3. For the source: - Source content + transformation prompt → AI - Result stored as new insight/note 4. You get back - Structured output (main argument, methodology, limitations) - Saved as a note in your notebook ``` **Context management:** Works on one source at a time. **Reusable:** Apply the same template to different sources (one by one). **Note**: Currently processes one source at a time. Batch processing (multiple sources at once) is planned for a future release. **Example:** ``` You: Define transformation "For each academic paper, extract: - Main research question - Methodology used - Key findings - Limitations and gaps - Recommended next research" You: Apply to paper 1 System: - Runs the transformation on paper 1 - Result stored as new note You: Apply same transformation to paper 2, 3, etc. After 10 papers: - You have 10 structured notes with consistent format - Perfect for writing a literature review or comparison ``` **Best for:** - Extracting the same information from each source (run repeatedly) - Creating structured summaries with consistent format - Building a knowledge base of categorized insights - When you want reusable templates you can apply to each source --- ## Decision Tree: Which Tool to Use? ``` What are you trying to do? │ ├─→ "I want to have a conversation about this topic" │ └─→ Is the conversation exploratory or fixed? │ ├─→ Exploratory (I'll ask follow-ups) │ │ └─→ USE: CHAT │ │ │ └─→ Fixed (One question → done) │ └─→ Go to next question │ ├─→ "I need to compare these sources or get a comprehensive answer" │ └─→ USE: ASK │ ├─→ "I want to extract the same info from each source (one at a time)" │ └─→ USE: TRANSFORMATIONS (apply to each source) │ └─→ "I just want to read and search" └─→ USE: Search (text or vector) OR read your notes ``` --- ## Side-by-Side Comparison | Aspect | CHAT | ASK | TRANSFORMATIONS | |--------|------|-----|-----------------| | **What's it for?** | Conversational exploration | Comprehensive Q&A | Template-based extraction | | **# of questions** | Multiple (conversational) | One | One template per source | | **Context control** | Manual (you choose) | Automatic (system searches) | One source at a time | | **Conversational?** | Yes (follow-ups work) | No (one question only) | No (single operation) | | **Output** | Natural conversation | Natural answer | Structured note | | **Time** | Quick (back-and-forth) | Longer (comprehensive) | Per source | | **Best when** | Exploring & uncertain | Need full picture | Want consistent format | | **Model speed** | Any | Fast preferred | Any | --- ## Workflow Examples ### Example 1: Academic Research ``` Goal: Write literature review from 15 papers Step 1: TRANSFORMATIONS - Define: "Extract abstract, methodology, findings, relevance" - Apply to paper 1 → get structured note - Apply to paper 2 → get structured note - ... repeat for all 15 papers - Result: 15 structured notes with consistent format Step 2: Read the notes - Now you have consistent summaries Step 3: CHAT or ASK - Chat: "Help me organize these by theme" - Ask: "What are the common methodologies across these papers?" Step 4: Write your review - Use the transformations as foundation - Use chat/ask insights for structure ``` ### Example 2: Product Research ``` Goal: Understand customer feedback from interviews Step 1: Add sources (interview transcripts) Step 2: ASK - "What are the top 10 pain points mentioned?" - Get comprehensive answer with citations Step 3: CHAT - "Can you help me group these by severity?" - Continue conversation to prioritize Step 4: TRANSFORMATIONS (optional) - Define: "Extract: pain point, frequency, who mentioned it" - Apply to each interview (one by one) - Get structured data for analysis ``` ### Example 3: Policy Analysis ``` Goal: Compare policy documents Step 1: Add all policy documents as sources Step 2: ASK - "How do these policies differ on climate measures?" - System searches all docs, gives comprehensive comparison Step 3: CHAT (if needed) - "Which policy is most aligned with X goals?" - Have discussion about trade-offs Step 4: Export notes - Save AI responses as notes for reports ``` --- ## Context Management: The Control Panel All three modes let you control what the AI sees. ### In CHAT and TRANSFORMATIONS ``` You choose: - Which sources to include - Context level for each: ✓ Full Content (send complete text) ✓ Summary Only (send AI summary, not full text) ✓ Not in Context (exclude entirely) Example: Paper A: Full Content (analyzing closely) Paper B: Summary Only (background) Paper C: Not in Context (confidential) ``` ### In ASK ``` Context is automatic: - System searches ALL your sources - Retrieves most relevant chunks - Sends those to AI But you can: - Search in specific notebook - Filter by source type - Use the results to decide context for follow-up Chat ``` --- ## Model Selection Each mode works with different models: ### CHAT - **Any model** works fine - Fast models (GPT-4o mini, Claude Haiku): Quick responses, good for conversation - Powerful models (GPT-4o, Claude Sonnet): Better reasoning, better for complex topics ### ASK - **Fast models preferred** (because it processes multiple searches) - Can use powerful models if you want deep synthesis - Example: GPT-4 for strategy planning, GPT-4o-mini for quick facts ### TRANSFORMATIONS - **Any model** works - Fast models (cost-effective for batch processing) - Powerful models (better quality extractions) --- ## Advanced: Chaining Modes Together You can combine these modes: ``` TRANSFORMATIONS → CHAT 1. Use transformations to extract structured data 2. Use chat to discuss the results ASK → TRANSFORMATIONS 1. Use Ask to understand what matters 2. Use Transformations to extract it from remaining sources CHAT → Save as Note → TRANSFORMATIONS 1. Have conversation (Chat) 2. Save good responses as notes 3. Use those notes as context for transformations ``` --- ## Summary: When to Use Each | Situation | Use | Why | |-----------|-----|-----| | "I want to explore a topic with follow-up questions" | **CHAT** | Conversational, you control context | | "I need a comprehensive answer to one complex question" | **ASK** | Automatic search, synthesized answer | | "I want consistent summaries from each source" | **TRANSFORMATIONS** | Template reuse, apply to each source | | "I'm comparing two specific sources" | **CHAT** | Select just those 2, have discussion | | "I need to categorize each source by X criteria" | **TRANSFORMATIONS** | Extract category from each source | | "I want to understand the big picture across all sources" | **ASK** | Automatic comprehensive search | | "I want to build a knowledge base" | **TRANSFORMATIONS** | Create structured note from each source | | "I want to iterate on understanding" | **CHAT** | Multiple questions, refine thinking | The key insight: **Different questions need different tools.** Open Notebook gives you all three because research rarely fits one mode.