Show HN: Git for LLMs – A context management interface
During our master’s we continually found the same pain points cropping up when using LLMs. The linear nature of typical LLMs interfaces - like ChatGPT and Claude - made it really easy to get lost without any easy way to visualise or navigate your project.
Worst of all, none of them are well suited for long term projects. We found ourselves spending days using the same chat, only for it to eventually break. Transferring context from one chat to another is also cumbersome. We decided to build something more intuitive to the ways humans think.
We started with two simple ideas. Enabling chat branching for exploring tangents, and an interactive tree diagram to allow for easy visualisation and navigation of your project.
Twigg has developed into an interface for context management - like “Git for LLMs”. We believe the input to a model - or the context - is fundamental to its performance. To extract the maximum potential of an LLM, we believe the users need complete control over exactly what context is provided to the model, which you can do using simple features like cut, copy and delete to manipulate your tree.
Through Twigg, you can access a variety of LLMs from all the major providers, like ChatGPT, Gemini, Claude, and Grok. Aside from a standard tiered subscription model (free, plus, pro), we also offer a Bring Your Own Key (BYOK) service, where you can plug and play with your own API keys.
Our target audience are technical users who use LLMs for large projects on a regular basis. If this sounds like you, please try out Twigg, you can sign up for free at https://twigg.ai/. We would love to get your feedback!
kloud|4 months ago
I find most need for managing context for problem solving. I describe a problem, LLM gives me 5 possible solutions. From those I immediately see 2 of them won't be viable, so I can prune the search. Then it is best to explore the others separately without polluting the context with non-viable solutions.
I saw this problem solving approach described as Tree-based problem management [0]. Often when solving problems there can be some nested problem which can prove to be a blocker and cut off whole branch, so it is effective to explore these first. Another cool attempt was thorny.io [1] (I didn't get to try it, and it is now unfortunately defunct) in which you could mark nodes with metadata like pro/con. Higher nodes would aggregate these which could guide you and give you prioritization which branch to explore next.
Also graph rendering looks cooler, but outliners seem to be more space efficient. I use Logseq, where I apply this tree-based problem solving, but have to copy the context and response back-and-forth manually. Having an outliner view as an alternative for power users would be neat.
[0] https://wp.josh.com/2018/02/11/idea-dump-2018/#:~:text=Tree-... [1] https://web.archive.org/web/20240820171443/http://thorny.io/
boomskats|4 months ago
A couple of weeks ago I built something very very similar, only for Obsidian, using the Obsidian Canvas and OpenRouter as my baseline components. Works really nicely - handles image uploads, autolayout with dagre.js, system prompts, context export to flat files, etc. Think you've inspired me to actually publish the repo :)
jborland|4 months ago
I definitely think that there is a lot of work to do with context management UX. For us, we use react flow for our graph, and we manage the context and its tree structure ourselves so it's completely model agnostic. The same goes for our RAG system, so we can plug and play with any model! Is that similar for you?
heliostatic|4 months ago
kloud|4 months ago
confusus|4 months ago
Anyway, great project! Cheers.
jborland|4 months ago
Would you prefer a terminal Claude-Code style integration, or would browser based CLI integration work too?
kanodiaayush|4 months ago
mdebeer|4 months ago
Very interesting you bring this up. It was quite a big point of discussion whilst jamie and I were building.
One of the big issues we faced with LLMs is that their attention gets diluted when you have a long chat history. This means that for large amounts of context, they often can't pick out the details your prompt relates to. I'm sure you've noticed this once your chat gets very long.
Instead of trying to develop an automatic system to descide what context your prompt should use (I.e which branch you're on), we opted to make organising your tree a very deliberate action. This gives you a lot more control over what the model sees, and ultimately how good the responses. As a bonus, if a model if playing up, you can go in and change the context it has by moving a node or two about.
Really good point though, and thanks for asking about it. I'd love to hear if you have any thoughts on ways you could get around it automatically.
protocolture|4 months ago
Completely subjectively, for me its both. I have several Chat GPT tabs where it is instructed not to respond, or to briefly summarise. System works both ways imho.
cootsnuck|4 months ago
mdebeer|4 months ago
Appreciate the feedback. We agree there's definitely more work to be done on exactly how trees are represented to the user.
When I was using twigg to build itself, I often just used the side panel branch off when I needed to instead of using the tree diagram. The tree then kind of built itself.
Would be interested to hear if you prefer having the tree up on screen, or if you prefer the 'branch to the side' approach.
chaudharyt|4 months ago
I wanted to try something like this from a while. Was excited to see maxly.chat's promotion on X but was disappointed it wasn't ready.
On a side note, do you also have zero data retention agreements with the providers?
jborland|4 months ago
Regarding data agreements, we have the standard 'enterprise' agreement with the providers, which is that none of your data will be used for training purposes, and will be deleted after a standard specified time window (30 days).
djgrant|4 months ago
jborland|4 months ago
isege|4 months ago
jborland|4 months ago
conception|4 months ago
Smortaxen|4 months ago
jborland|4 months ago
Edmond|4 months ago
In Solvent, the main utility is allowing forked-off use of the same session without context pollution.
For instance a coding assistant session can be used to generate a checklist as a fork and then followed by the core task of writing code. This allows the human user to see the related flows (checklist gen,requirements gen,coding...etc) in chronological order without context pollution.
jborland|4 months ago
Context pollution is a serious problem - I love that you use that term as well.
Have you had good feedback for your fork-off implementation?
CuriouslyC|4 months ago
visarga|4 months ago
---
[1] *Mind Map Format Overview* - A graph-based documentation format stored as plain text files where each node is a single line. The format leverages LLM familiarity with citation-style references from academic papers, making it natural to generate and edit [3]. It serves as a superset structure that can represent trees, lists, or any graph topology [4], scaling from small projects (<50 nodes) to complex systems (500+ nodes) [5]. The methodology is fully detailed in PROJECT_MIND_MAPPING.md with bootstrapping tools available at https://gist.github.com/horiacristescu/7942db247fdfb31d7150b....
[2] *Node Syntax Structure* - Each node follows the format: `[N] *Node Title* - node text with [N] references inlined` [1]. Nodes are line-oriented, allowing line-by-line loading and editing by AI models [3]. The inline reference syntax `[N]` creates bidirectional navigation between concepts, with links embedded naturally within descriptive text rather than as separate metadata [1][4]. This structure is both machine-parseable and human-readable, supporting grep-based lookups for quick node retrieval [3].
[3] *Technical Advantages* - The format enables line-by-line overwriting of nodes without complex parsing [2], making incremental updates efficient for both humans and AI agents [1]. Grep operations allow instant node lookup by ID or keyword without loading the entire file [2]. The text-based storage ensures version control compatibility, diff-friendly editing, and zero tooling dependencies [4]. LLMs generate this format naturally because citation syntax `[N]` mirrors academic paper references they've seen extensively during training [1][5].
[4] *Graph Topology Benefits* - Unlike hierarchical trees or linear lists, the graph structure allows many-to-many relationships between concepts [1]. Any node can reference any other node, creating knowledge clusters around related topics [2][3]. The format accommodates cyclic references for concepts that mutually depend on each other, captures cross-cutting concerns that span multiple subsystems, and supports progressive refinement where nodes are added to densify understanding [5]. This flexibility makes it suitable as a universal knowledge representation format [1].
[5] *Scalability and Usage Patterns* - Small projects typically need fewer than 50 nodes to capture core architecture, data flow, and key implementations [1]. Complex topics or large codebases can scale to 500+ nodes by adding specialized deep-dive nodes for algorithms, optimizations, and subsystems [4]. The methodology includes a bootstrap prompt (linked gist) for generating initial mind maps from existing codebases automatically [1]. Scale is managed through overview nodes [1-5] that serve as navigation hubs, with detail nodes forming clusters around major concepts [3][4]. The format remains navigable at any scale due to inline linking and grep-based search [2][3].
pu_pu|4 months ago
jborland|4 months ago
joshdavham|4 months ago
... though I honestly do wish that the current LLM interfaces I use would just implement something like this. Maybe they could acquire you guys :D
jborland|4 months ago