Gemini Embedding: Powering RAG and context engineering

(developers.googleblog.com)

266 points | by simonpure 22 hours ago

19 comments

  • stillpointlab 21 hours ago
    > Embeddings are crucial here, as they efficiently identify and integrate vital information—like documents, conversation history, and tool definitions—directly into a model's working memory.

    I feel like I'm falling behind here, but can someone explain this to me?

    My high-level view of embedding is that I send some text to the provider, they tokenize the text and then run it through some NN that spits out a vector of numbers of a particular size (looks to be variable in this case including 768, 1536 and 3072). I can then use those embeddings in places like a vector DB where I might want to do some kind of similarity search (e.g. cosine difference). I can also use them to do clustering on that similarity which can give me some classification capabilities.

    But how does this translate to these things being "directly into a model's working memory'? My understanding is that with RAG I just throw a bunch of the embeddings into a vector DB as keys but the ultimate text I send in the context to the LLM is the source text that the keys represent. I don't actually send the embeddings themselves to the LLM.

    So what is is marketing stuff about "directly into a model's working memory."? Is my mental view wrong?

    • fine_tune 19 hours ago
      RAG is taking a bunch of docs, chunking them it to text blocks of a certain length (how best todo this up for debate), creating a search API that takes query (like a google search) and compares it to the document chunks (very much how your describing). Take the returned chunks, ignore the score from vector search, feed those chunks into a re-ranker with the original query (this step is important vector search mostly sucks), filter those re-ranked for the top 1/2 results and then format a prompt like;

      The user ask 'long query', we fetched some docs (see below), answer the query based on the docs (reference the docs if u feel like it)

      Doc1.pdf - Chunk N Eat cheese

      Doc2.pdf- Chunk Y Dont eat cheese

      You then expose the search API as a "tool" for the LLM to call, slightly reformatting the prompt above into a multi turn convo, and suddenly you're in ze money.

      But once your users are happy with those results they'll want something dumb like the latest football scores, then you need a web tool - and then it never ends.

      To be fair though, its pretty powerful once you've got in place.

      • base698 16 hours ago
        Or you find your users search for id strings like k1231o to find ref docs and end up needing key word search and reranking.
      • criddell 19 hours ago
        Is RAG how I would process my 20+ year old bug list for a piece of software I work on?

        I've been thinking about this because it would be nice to have a fuzzier search.

        • fine_tune 19 hours ago
          Yes and no, for human search - its kinda neat, you might find some duplicates, or some nearby neighbour bugs that help you solve a whole class of issues.

          But the cool kids? They'd do something worse;

          They'd define some complicated agentic setup that cloned your code base into containers firewalled off from the world, give prompts like;

          Your expert software dev in MY_FAVE_LANG, here's a bug description 'LONG BUG DESCRIPTION' explore the code and write a solution. Here's some tools (read_file, write_file, ETC)

          You'd then spawn as many of these as you can, per task, and have them all generate pull requests for the tasks. Review them with an LLM, then manually and accept PR's you wanted. Now your in the ultra money.

          You'd use RAG to guide an untuned LLM on your code base for styles and how to write code. You'd write docs like "how to write an API, how to write a DB migration, ETC" and give that as tool to the agents writing the code.

          With time and effort, you can write agents to be specific to your code base through fine tuning, but who's got that kind of money?

          • CartwheelLinux 18 hours ago
            You'd be surprised how many people are actually doing this exact kind of solutioning.

            It's also not that costly to do if you think about the problem correctly

            If you continue down the brute forcing route you can do mischievous things like sign up for thousands and thousands of free accounts across numerous network connections to LLM APIs and plug away

          • Squakie 11 hours ago
            I feel called out, lmao. I’m building an agentic framework for automated pentesting as part of an internal AppSec R&D initiative. My company’s letting me run wild with infrastructure and Bedrock usage (bless their optimism). I’ve been throwing together some admittedly questionable prototypes to see what sticks.

            The setup is pretty basic: S3 for docs and code base, pgvector on RDS for embeddings, Claude/Titan for retrieval and reasoning. It works in the sense that data flows through and responses come out… but the agents themselves are kind of a mess.

            They think they’ve found a bug, usually something like a permissive IAM policy or a questionable API call, and just latch onto it. They tunnel hard, write up something that sounds plausible, and stop there. No lateral exploration, no attempt to validate anything in a dev environment despite having MCP tools to access internal resources, and definitely no real exploitation logic.

            I’ve tried giving them tools like CodeQL, semgrep and Joern, but that’s been pretty disappointing. They can run basic queries, but all they surface are noisy false positives, and they can’t reason their way out of why it might be a false positive early on. There’s no actual taint analysis or path tracing, just surface-level matching and overconfident summaries. I feel like I’m duct-taping GPT-4 to a security scanner and hoping for insight.

            I’ve experimented with splitting agents into roles (finder, validator, PoC author, code auditor, super uber hacker man), giving them memory, injecting skepticism, etc., but it still feels like I’m missing something fundamental.

            If cost isn’t an issue, how would you structure this differently? How do you actually get agents to do persistent, skeptical, multi-stage analysis, especially in security contexts where you need depth and proof, not just plausible-sounding guesses and long ass reports on false positives?

            • quinnjh 9 hours ago
              Seems like you need a way to dictate structured workflows, in lieu of actually being able to train them up as soc analyst. Sounds like a fun problem!
        • ubercow13 7 hours ago
          You could try just exporting it as one text or XML file and seeing if it fits in Genini's context
          • criddell 2 hours ago
            I don't think it will. Gemini Pro has a context window of 2 million tokens which they say translates to around 1.5 million words. We have on the order of 100,000 logged issues and a typical issue description is around 500 words.
    • Voloskaya 21 hours ago
      > So what is is marketing stuff about "directly into a model's working memory."? Is my mental view wrong?

      Context is sometimes called working memory. But no your understanding is right: find the right document through cosine similarity (and thus through embeddings), then add the content of those docs to the context

      • greymalik 19 hours ago
        One of the things I find confusing about this article is that the author positions RAG as being unrelated to both context engineering and vector search.
    • taw1285 1 hour ago
      Your comment really helps me improve my mental model about LLM. Can someone smarter help me verify my understanding:

      1) at the end of the day, we are still sending raw text over LLM as input to get output back as response.

      2) RAG/Embedding is just a way to identify a "certain chunk" to be included in the LLM input so that you don't have to dump the entire ground truth document into LLM Let's take Everlaw for example: all of their legal docs are in embeddings format and RAG/tool call will retrieve relevant document to feed into LLM input.

      So in that sense, what do these non-foundational models startups mean when they say they are training or fine tuning models? Where does the line end between inputting into LLM vs having them baked in model weights

    • rao-v 18 hours ago
      The directly into working memory bit is nonsense of course, but it does point to a problem that is probably worth solving.

      What would it take to make the KV cache more portable and cut/paste vs. highly specific to the query?

      In theory today, I should be able to process <long quote from document> <specific query> and just stop after the long document and save the KV cache right? The next time around, I can just load it in, and continue from <new query>?

      To keep going, you should be able to train the model to operate so that you can have discontinous KV cache segments that are unrelated, so you can drop in <cached KV from doc 1> <cached KV from doc 2> with <query related to both> and have it just work ... but I don't think you can do that today.

      I seem remember seeing some papers that tried to "unRoPE" the KV and then "re-RoPE" it, so it can be reused ... but I have not seen the latest. Anybody know what the current state is?

      Seems crazy to have to re-process the same context multiple times just to ask it a new query.

      • gettincrafty 9 hours ago
        Do you have any links to the papers for the “unRoPE” and “re-Rope” technique? I tried some searching and couldn’t find anything. I would love to look into this idea more.

        I think that copy/paste-able KV cache idea sounds pretty promising. It might lose some of the inter-document context and attention that would get built up in the hidden state of the model as it processes the prompt. Maybe just throw in some ‘reasoning’ tokens before it gives its answer to give it a chance to attend cross-document

      • yorwba 6 hours ago
        > In theory today, I should be able to process <long quote from document> <specific query> and just stop after the long document and save the KV cache right?

        People do this, it's called prefix caching.

        There's also https://arxiv.org/abs/2506.06266 where they compress the context down to a smaller representation they call a "cartridge," and composing cartridges from different contexts seems to work reasonably well.

      • whimsicalism 12 hours ago
        would loading the KV cache from disk be faster than just recomputing it?

        imo the discontinuous segments bit would not work because of the causal dependence in transformers + RoPE as you mention, but maybe could be possible

    • tcdent 18 hours ago
      Your mental model is correct.

      They're listing applications of that by third parties to demonstrate the use-case, but this is just a model for generating those vectors.

    • yazaddaruvala 20 hours ago
      At least in theory. If the model is the same, the embeddings can be reused by the model rather than recomputing them.

      I believe this is what they mean.

      In practice, how fast will the model change (including tokenizer)? how fast will the vector db be fully backfilled to match the model version?

      That would be the “cache hit rate” of sorts and how much it helps likely depends on some of those variables for your specific corpus and query volumes.

      • stillpointlab 20 hours ago
        > the embeddings can be reused by the model

        I can't find any evidence that this is possible with Gemini or any other LLM provider.

        • yazaddaruvala 20 hours ago
          Yeah given what your saying is true and continues to be,

          Seems the embeddings would just be useful for a “nice corpus search” mechanism for some regular RAG.

      • d4rkp4ttern 4 hours ago
        This can’t be what they mean. Even if this was somehow possible, Embeddings lose information and are not reversible, I.e embeddings do not magically compress actual text into a vector in a way that a model can implicitly recover the source text from the vector.
      • ivape 15 hours ago
        LLMs can’t take embeddings (unless I’m really confused). Even if it could take embeddings, the embeddings would have lost all word sequence and structure (wouldn’t make sense to the LLM).
    • letitgo12345 21 hours ago
      LLMs can use search engines as a tool. One possibility is Google embeds the search query through these embeddings and does retrieval using them and then the retrieved result is pasted into the model's chain of thought (which..unless they have an external memory module in their model, is basically the model's only working memory).
      • stillpointlab 20 hours ago
        I'm reading the docs and it does not appear Google keeps these embeddings at all. I send some text to them, they return the embedding for that text at the size I specified.

        So the flow is something like:

        1. Have a text doc (or library of docs)

        2. Chunk it into small pieces

        3. Send each chunk to <provider> and get an embedding vector of some size back

        4. Use the embedding to:

        4a. Semantic search / RAG: put the embeddings in a vector DB and do some similarity search on the embedding. The ultimate output is the source chunk

        4b. Run a cluster algorithm on the embedding to generate some kind of graph representation of my data

        4c. Run a classifier algorithm on the embedding to allow me to classify new data

        5. The output of all steps in 4 is crucially text

        6. Send that text to an LLM

        At no point is the embedding directly in the models memory.

    • NicholasD43 21 hours ago
      You're right on this. "Advanced" RAG techniques are all complete marketing BS, in the end all you're doing it passing the text into the model's context window.
    • ivape 15 hours ago
      Perhaps the person that wrote it is also confused. I guess Geminis embedding model offers multilingual support, but we can use anything. The assumption is the developer uses these embeddings on their end with their implementation of storage/querying (their own vector db). The confusing thing is the article is suggesting that whole process is now done automatically soon as you send the embeddings to Gemini (which doesn’t even make sense, shouldn’t it only take text?).
    • visarga 18 hours ago
      Oh what you don't understand is that LLMs also use embeddings inside, it's how they represent tokens. It's just that you don't get to see the embeddings, they are inner workings.
  • djoldman 17 hours ago
    It may be worth pointing out that a few open weights models score higher than gemini-embedding-001 on MTEB:

    https://huggingface.co/spaces/mteb/leaderboard

    Particularly Qwen3-Embedding-8B and Qwen3-Embedding-4B:

    https://huggingface.co/Qwen/Qwen3-Embedding-8B

    • electroglyph 13 hours ago
      i don't think many people are having luck replicating those benchmarks, the models are a bit weird
      • asaddhamani 4 hours ago
        I can't trust MTEB as there's been a huge difference between benchmark scores and actual performance.

        I made a small tool to help me compare various embedding models: https://www.vectorsimilaritytest.com/

        Qwen embedding models score very highly but are highly sensitive to word order (they use last token pooling which simplified means they only look at the last word of the input). Change the word order and the scores change completely. Voyage models score highly too, but changing a word from singular to plural can again completely change the scores.

        I find myself doing a hybrid search, rerank and shortlist the results, then feed them to an LLM to judge what is and isn't relevant.

  • bryan0 21 hours ago
    The Matryoshka embeddings seem interesting:

    > The Gemini embedding model, gemini-embedding-001, is trained using the Matryoshka Representation Learning (MRL) technique which teaches a model to learn high-dimensional embeddings that have initial segments (or prefixes) which are also useful, simpler versions of the same data. Use the output_dimensionality parameter to control the size of the output embedding vector. Selecting a smaller output dimensionality can save storage space and increase computational efficiency for downstream applications, while sacrificing little in terms of quality. By default, it outputs a 3072-dimensional embedding, but you can truncate it to a smaller size without losing quality to save storage space. We recommend using 768, 1536, or 3072 output dimensions. [0]

    looks like even the 256-dim embeddings perform really well.

    [0]: https://ai.google.dev/gemini-api/docs/embeddings#quality-for...

    • simonw 21 hours ago
      The Matryoshka trick is really neat - there's a good explanation here: https://huggingface.co/blog/matryoshka

      I've seen it in a few models now - Nomic Embed 1.5 was the first https://www.nomic.ai/blog/posts/nomic-embed-matryoshka

    • thefourthchime 21 hours ago
      It's interesting, but the improvement they're claiming isn't that groundbreaking.
    • OutOfHere 21 hours ago
      Does OpenAI's text-embedding-3-large or text-embedding-3-small embedding model have the Matryoshka property?
      • minimaxir 20 hours ago
        They do, they just don't advertise it well (and only confirmed it with a footnote after criticism of its omission): https://openai.com/index/new-embedding-models-and-api-update...

        > Both of our new embedding models were trained with a technique that allows developers to trade-off performance and cost of using embeddings. Specifically, developers can shorten embeddings (i.e. remove some numbers from the end of the sequence) without the embedding losing its concept-representing properties by passing in the dimensions API parameter. For example, on the MTEB benchmark, a text-embedding-3-large embedding can be shortened to a size of 256 while still outperforming an unshortened text-embedding-ada-002 embedding with a size of 1536.

    • ACCount36 21 hours ago
      Google teams seem to be in love with that Matryoshka tech. I wonder how far that scales.
      • OutOfHere 21 hours ago
        It's a practical feature. Scaling is irrelevant in this context because it scales to the length of the embedding, although in batches of k-length embeddings.
  • TN1ck 3 hours ago
    VP of Engineering of re:cap here (featured in the article), if anybody has any more detailed questions, happy to answer!
  • mvieira38 21 hours ago
    To anyone working in these types of applications, are embeddings still worth it compared to agentic search for text? If I have a directory of text files, for example, is it better to save all of their embeddings in a VDB and use that, or are LLMs now good enough that I can just let them use ripgrep or something to search for themselves?
    • simonw 21 hours ago
      If your LLM is good enough you'll likely get better results from tool calling with grep or a FTS engine - the better models can even adapt their search patterns to search for things like "dog OR canine" where previously vector similarity may have been a bigger win.

      Getting embeddings working takes a bunch of work: you need to decide on a chunking strategy, then run the embeddings, then decide how best to store them for fast retrieval. You often end up having to keep your embedding store in memory which can add up for larger volumes of data.

      I did a whole lot of work with embeddings last year but I've mostly lost interest now that tool-based-search has become so powerful.

      Hooking up tool-based-search that itself uses embeddings is worth exploring, but you may find that the results you get from ripgrep are good enough that it's not worth the considerable extra effort.

    • elliotto 11 hours ago
      It depends on your use case and scale.

      If you have a million records of unstructured text (very common, maybe website scrapes of product descriptions, user reviews, etc) you want to be doing an embedding search on these to get the most relevant docs.

      If you have a hundred .py files than you want your agent to navigate through these with a grep tool

    • pjm331 21 hours ago
      With the caveat that I have not spent a serious amount of time trying to get RAG to work - my brief attempt to use it via AWS knowledge base to compare it vs agentic search resulted in me sticking with agentic search (via Claude code SDK)

      My impression was there’s lots of knobs you can tune with RAG and it’s just more complex in general - so maybe there’s a point where the amount of text I have is large enough that that complexity pays off - but right now agentic search works very well and is significantly simpler to get started with

    • philip1209 21 hours ago
      Semantic search is still important. I'd say that regex search is also quickly rising in importance, especially for coding agents.
    • whinvik 21 hours ago
      Curious but how do we take care of non text files. What if we had a lot of PDF files?
      • elliotto 11 hours ago
        We OCR them with an LLM into markdown. Super expensive and slow but way more reliable than trying to decode insanely structured PDFs that users upload, which often include pages that are images of the text, or diagrams and figures that need to be read.

        Really depends on your scale and speed requirements.

      • minimaxir 20 hours ago
        You can extract text from PDF files. (there's a number of dedicated models for that, but even the humble pandoc can do it)
      • sergiotapia 19 hours ago
        Use pymupdf to extract the PDF text. Hell, run that nasty business through an LLM as step-2 to get a beautiful clean markdown version of the text. Lord knows the PDF format is horribly complex!
  • aziis98 11 hours ago
    I'm just can't wait for a globally scaled rag system. I think that will be a turning point for search engines.

    For now there is only https://exa.ai/ that is currently doing something similar it seems.

  • curl-up 7 hours ago
    Anyone who has recently worked on embedding model finetuning, any useful tools you'd recommend (both for dataset curation and actual finetuning)? Any models you'd recommend as especially good for finetuning?

    I'm interested in both full model finetunes, and downstream matrix optimization as done in [1].

    [1] https://github.com/openai/openai-cookbook/blob/main/examples...

  • miohtama 18 hours ago
    > Everlaw, a platform providing verifiable RAG to help legal professionals analyze large volumes of discovery documents, requires precise semantic matching across millions of specialized texts. Through internal benchmarks, Everlaw found gemini-embedding-001 to be the best, achieving 87% accuracy in surfacing relevant answers from 1.4 million documents filled with industry-specific and complex legal terms, surpassing Voyage (84%) and OpenAI (73%) models. Furthermore, Gemini Embedding's Matryoshka property enables Everlaw to use compact representations, focusing essential information in fewer dimensions. This leads to minimal performance loss, reduced storage costs, and more efficient retrieval and search.

    This will make a lot of junior lawyers or their work obsolete.

    Here is a good podcast on the topic how will AI affect legal industry

    https://open.spotify.com/episode/4IAHG68BeGZzr9uHXYvu5z?si=q...

    • dlojudice 17 hours ago
      It's really cool to see Odd Lots being mentioned here on HN. It's one of my favorite podcasts. However, I think the guest for this particular episode wasn't up to the task of answering questions and exploring the possibilities of using AI in the legal world.
  • jcims 17 hours ago
    I'm short on vocabulary here but it seems that using content embedding similarity to find relevant (chunks of) content to feed an LLM is orthogonal to the use of LLMs to take automatically curated content chunks and use them to enrich a context.

    Is that correct?

    I'm just curious why this type of content selection seems to have been popularized and in many ways become the defacto standard for RAG, and (as far as I know but I haven't looked at 'search' in a long time) not generally used for general purpose search?

    • krackers 10 hours ago
      > not generally used for general purpose search

      Possibly because up until now the performance of semantic based search wasn't worth the complexity tradeoff. I mean NLP was a hard problem, and we'd spent decades fine-tuning traditional keyword based search.

    • elliotto 16 hours ago
      What do you mean by automatically curated content chunks? RAG with Embedding search is the process of deciding which chunks go into the context of the bot so that it can reference them to answer a user question
      • jcims 13 hours ago
        I guess I'm saying that over the past 30 years there have been a number of systems developed that take input from a user and find relevant bits of content from some corpus...aka 'search'.

        Searches using vector embeddings are likely better at matching relevant semantics than most other systems, so they are an excellent candidate for RAG. However, if there's a system that's already working quite well at finding relevant content based on user input, then there wouldn't necessarily be any value in adding a vectorized search to the RAG pipeline. Just use the existing system to populate relevant content into the context.

        Then the other half of my wondering is why the primary use case for vector databases appears (?) to be for RAG and not just a general purpose search engine.

        • elliotto 11 hours ago
          Ah I understand.

          My startup provides a vector search system as part of its offering. A user can upload a dataset of records and build a vector index on one of its columns and perform searches. It honestly works incredibly well on a whole bunch of different domains and I was shocked at how useful it was out of the box compared to a conventional BM25 style keyword search. Since we've got this working it's completely changed the way I think about navigating unstructured text data.

          If I have a dataset of 100k company website scrapes and I was looking for gyms, and I did a search for 'gym' I would get a whole bunch of conventional gyms. But I would miss companies that described themselves at fitness centers, or aquatic centers or MMA dojos. Vector search picks all of these up, but usually ranks them slightly lower.

          If I'm building a RAG bot that is helping me look up companies and I search for a gym, I want the bot to have these extra companies in its context. I can do a vector similarity cutoff, but I can also do a #records cutoff, so that it always has the X most relevant records in its context window.

          We've found the fuzziness of the vector search to be a problem in general purpose search cases because people write searches optimizing for keyword match. We had this problem with a company using it for a dataset with highly technical product codes that the embedding search was missing. Our solution was a hybrid keyword / vector search system for these guys that prioritized keyword match but also considered vector similarity. But it's still a big issue to communicate to the user what to write in the embedding search box - whereas in RAG the bot handles all of this.

          I think it's an unsolved problem and there continuous to be enormous development in this space.

  • asdev 21 hours ago
    I feel like tool calling killed RAG, however you have less control over how the retrieved data is injected in the context.
    • billmalarky 20 hours ago
      Search tool calling is RAG. Maybe we should call it a "RAG Agent" to be more en vogue heh. But RAG is not just similarity search on embeddings in vector DBs. RAG is any type of a retrieval + context injection step prior to inference.

      Heck, the RAG Agent could run cosign diff on your vector db in addition to grep, FTS queries, KB api calls, whatever, to do wide recall (candidate generation) then rerank (relevance prioritization) all the results.

      You are probably correct that for most use cases search tool calling makes more practical sense than embeddings similarity search to power RAG.

      • visarga 18 hours ago
        > could run cosign diff on your vector db

        or maybe even "cosine similarity"

    • gnulinux 10 hours ago
      Tool calling complements RAG. You build a full scale RAG (embedding, reranker, create prompt, get output from LLM) and hook that to a tool another agent can see. That combines both their power.
    • OutOfHere 21 hours ago
      How would you use tool-calling to filter through millions of documents? You need some search functionality, whether old-school search or embedding search. If you have only thousands of documents, then sure, you don't need search, as you can feed them all to the LLM.
      • kridsdale1 21 hours ago
        I haven’t built either system but it seems clear that tool calling will be ‘O(num_targets * O(search tool))’, while RAG will be ‘O(embed_query * num_targets)’.

        RAG looks linear (constant per lookup) while tools look polynomial. And tools will possibly fill up the limited LLM context too.

      • kfajdsl 21 hours ago
        You give the LLM search tools.
        • OutOfHere 21 hours ago
          That's missing the point. You are hiding the search behind the tool, but it's still search. Whether you use a tool or a hardcoded workflow is irrelevant.
  • nikolayasdf123 4 hours ago
    interesting. high quality optimized embeddings is very nice to have
  • nikolayasdf123 4 hours ago
    no image support is a deal breaker. multi-modality is a must
  • zapnuk 8 hours ago
    Good luck to anyone using it. We used it for embedding about 6k documents.

    The API constantly gives you quota errors when you reach about 150 requests/min eventhough the quota should allow about 50_000 requests/min.

    We’d like to use the Batch API, but the model isn’t available yet.

    Quite a nice model though. Being able to get embeddings for a specific task type [1] is very interesting. We used classification specific embeddings and noticed a meaningful improvment when we used the embeddings as input for a classifier.

    1: https://ai.google.dev/gemini-api/docs/embeddings#supported-t...

    • ofisboy 7 hours ago
      Same here.

      I tested gemini embeddings api for 1 to 5,000ish social media comments. It filled up the quota almost immediately.

      Since then, I’m just using qwen embeddings locally. Open source, free and relatively comparable.

  • morkalork 21 hours ago
    Question to other GCP users, how are you finding Google's aggressive deprecation of older embedding models? Feels like you have to pay to rerun your data through every 12 months.
    • throwaway-blaze 18 hours ago
      You know of lots of LLM-using apps that don't need to re-run their fine tunings or embeddings because of improvements or new features at least annually? Things are moving so fast that "every 12 months" seems kinda slow...
    • adregan 18 hours ago
      This is precisely the risk I’ve been wondering about with vectorization. I’ve considered that an open source model might be valuable as you could always find someone to host it for you and control the deprecation rate yourself.
    • BoorishBears 17 hours ago
      My costs for embedding are so small compared to inference I don't generally notice.

      But am I crazy or did the pre-production version of gemini-embedding-001 have a much larger max context length?

      Edit: It seems like it did? 8k -> 2k? Huge downgrade if true, I was really excited about the experimental model reaching GA before that

  • jgalt212 3 hours ago
    Is one LLM embedding much better than another? To me, if you're building a vector database off embeddings, it's best and not punitive to stick to a self hosted public weights model.
  • keizo 15 hours ago
    has anyone done some simple latency profiling of gemini embedding vs open ai embedding api? seem like that api call is one of the biggest chunks of time in a simple rag setup.
    • elliotto 11 hours ago
      In my experience the api call is trivial compared to the time taken for the LLM to compose the response.
      • keizo 4 hours ago
        gemini flash and groq are pretty fast, and that part is streamable. curiosity got the best of me so i had claude code write a quick test. given this test is simply is 20 requests, with 1 second delay between requests ran once. so take with a grain of salt, but interesting still. Extra half second in a search is super noticeable so google looking like a reasonable improvement.

          OpenAI Statistics:
        
          - Average: 0.360 seconds
          - Median: 0.292 seconds
          - Min: 0.211 seconds
          - Max: 0.779 seconds
          - Std Dev: 0.172 seconds
        
          Google Gemini Statistics:
        
          - Average: 0.304 seconds
          - Median: 0.273 seconds
          - Min: 0.250 seconds
          - Max: 0.445 seconds
          - Std Dev: 0.066 seconds
        
          The key insights from these numbers:
          - Google has much lower standard deviation (0.066 vs 0.172), meaning more consistent/predictable performance
          - Google's worst-case (max) is much better than OpenAI's (0.445s vs 0.779s)
          - OpenAI had a slightly better best-case (min) performance (0.211s vs 0.250s)
          - Google's performance is more tightly clustered around its average, while OpenAI has more variability
  • mijoharas 20 hours ago
    What open embeddings models would people recommend. Still Nomic?
    • gnulinux 10 hours ago
      Qwen3 is the open weight state of the art at the moment. Qwen3-embedding-8B and Qwen3-reranker-8b are surprisingly good (according to some benchmarks, better than Gemini 2.5 embedding). 4B is also nearly as good so you might as well use that too unless 8B benefits your usecase. If you don't need a SOTA-precise embedding model because you'll run a more powerful reranker, you could run qwen3-embedding-4B at Q4 which is only 2GB, and will process extremely fast in most hardware. A weaker but close choice is `Qwen3-Embedding-0.6B` at Q8 which is about 600MB and will run just fine on most powerful CPUs. So if that does the job for you, you may not even need GPU, just grab an instance with 16 vCPUs, that'll give you plenty of throughput, probably more than you need until your RAG has thousands of active users.
    • hereme888 16 hours ago
      I'm using the qwen3 4B model in consumer hardware, which beats Gemini in English language tasks.
    • christina97 19 hours ago
      The Qwen3 embedding models were released recently and do very well on benchmarks.
  • dmezzetti 19 hours ago
    It's always worth checking out the MTEB leaderboard: https://huggingface.co/spaces/mteb/leaderboard

    There are some good open models there that have longer context limits and fewer dimensions.

    The benchmarks are just a guide. It's best to build a test dataset with your own data. This is a good example of that: https://github.com/beir-cellar/beir/wiki/Load-your-custom-da...

    Another benefit of having your own test dataset, is that it can grow as your data grows. And you can quickly test new models to see how it performs with YOUR data.