At Ibotta, our mission is to Make Each Buy Rewarding. Serving to our customers (whom we name Savers) discover and activate related affords by our direct-to-consumer (D2C) app, browser extension, and web site is a essential a part of this mission. Our D2C platform helps tens of millions of consumers earn cashback from their on a regular basis purchases—whether or not they’re unlocking grocery offers, incomes bonus rewards, or planning their subsequent journey. By means of the Ibotta Efficiency Community (IPN), we additionally energy white-label cashback applications for a few of the largest names in retail, together with Walmart and Greenback Normal, serving to over 2,600 manufacturers attain greater than 200 million customers with digital affords throughout companion ecosystems.
Behind the scenes, our Information and Machine Studying groups energy essential experiences like fraud detection, provide suggestion engines, and search relevance to make the Saver journey customized and safe. As we proceed to scale, we’d like data-driven, clever programs that assist each interplay at each touchpoint.
Throughout D2C and the IPN, search performs a pivotal position in engagement and must preserve tempo with our enterprise scale, evolving provide content material, and altering Saver expectations.
On this submit we’ll stroll by how we considerably refined our D2C search expertise: from an formidable hackathon challenge to a strong manufacturing characteristic now benefiting tens of millions of Savers.
We believed our search might higher sustain with our Savers
Person search conduct has developed from easy key phrases to incorporating pure language, misspellings, and conversational phrases. Trendy search programs should bridge the hole between what customers kind and what they really imply, deciphering context and relationships to ship related outcomes even when question phrases don’t precisely match the content material.
At Ibotta, our unique homegrown search system, at instances, struggled to maintain tempo with the evolving expectations of our Savers and we acknowledged a chance to refine it.
The important thing areas for alternative we noticed included:
- Bettering semantic relevance: Specializing in understanding Saver intent over actual key phrase matches to attach them with the proper affords.
- Enhancing understanding: Decoding the complete nuance and context of consumer queries to offer extra complete and actually related outcomes.
- Rising flexibility: Extra quickly integrating new provide varieties and adapting to altering Saver search patterns to maintain our discovery expertise rewarding.
- Boosting discoverability: We needed extra strong instruments to make sure particular varieties of affords or key promotions have been constantly seen throughout a big selection of related search queries.
- Accelerating iteration and optimization: Enabling quicker, impactful enhancements to the search expertise by real-time changes and efficiency tuning.
We believed the system might higher preserve tempo with altering provide content material, search behaviors, and evolving Saver expectations. We noticed alternatives to extend the worth for each our Savers and our model companions.
From hackathon to manufacturing: reimagining search with Databricks
Addressing the restrictions of our legacy search system required a targeted effort. This initiative gained vital momentum throughout an inside hackathon the place a cross-functional group, together with members from Information, Engineering, Advertising Analytics, and Machine Studying, got here along with the concept to construct a contemporary, various search system utilizing Databricks Vector Search, which some members had realized about on the Databricks Information + AI Summit.
In simply three days, our group developed a working proof-of-concept that delivered semantically related search outcomes. Right here’s how we did it:
- Collected provide content material from a number of sources in our Databricks catalog
- Created a Vector Search endpoint and index with the Python SDK
- Used pay-per-token embedding endpoints with 4 totally different fashions (BGE massive, GTE massive, GTE small, a multilingual open-source mannequin, and a Spanish-language-specific mannequin)
- Linked every part to our web site for a dwell demo
The hackathon challenge gained first place, generated robust inside buy-in and momentum to transition the prototype right into a manufacturing system. Over the course of some months, and with shut collaboration from the Databricks group, we reworked our prototype into a strong full-fledged manufacturing search system.
From proof of idea to manufacturing
Shifting the hackathon proof-of-concept to a production-ready system required cautious iteration and testing. This section was essential not just for technical integration and efficiency tuning, but additionally for evaluating whether or not our anticipated system enhancements would translate into optimistic adjustments in Saver conduct and engagement. Given search’s important position and deep integration throughout inside programs, we opted for the next method: we modified a key inside service that known as our unique search system, changing these calls with requests directed to the Databricks Vector Search endpoint, whereas constructing in strong, swish fallbacks to the legacy system.
Most of our early work targeted on understanding:
Within the first month, we ran a take a look at with a small proportion of our Savers which didn’t obtain the engagement outcomes we had hoped for. Engagement decreased, significantly amongst our most lively Savers, indicated by a drop in clicks, unlocks (when Savers specific curiosity in a proposal), and activations.
Nevertheless, the Vector Search resolution supplied vital advantages together with:
- Quicker response instances
- An easier psychological mannequin
- Better flexibility in how we listed knowledge
- New talents to regulate thresholds and alter embedding textual content
Happy with the system’s underlying technical efficiency, we noticed its larger flexibility as the important thing benefit wanted to iteratively enhance search outcome high quality and overcome the disappointing engagement outcomes.
Constructing a semantic analysis framework
Following our preliminary take a look at outcomes, relying solely on A/B testing for search iterations was clearly inefficient and impractical. The variety of variables influencing search high quality was immense—together with embedding fashions, textual content mixtures, hybrid search settings, Approximate Nearest Neighbors (ANN) thresholds, reranking choices, and plenty of extra.
To navigate this complexity and speed up our progress, we determined to ascertain a strong analysis framework. This framework wanted to be uniquely tailor-made to our particular enterprise wants and able to predicting real-world consumer engagement from offline efficiency metrics.
Our framework was designed round an artificial analysis setting that tracked over 50 on-line and offline metrics. Offline, we monitored commonplace info retrieval metrics like Imply Reciprocal Rank (MRR) and precision@okay to measure relevance. Crucially, this was paired with on-line real-world engagement alerts similar to provide unlocks and click-through charges. A key resolution was implementing an LLM-as-a-judge. This allowed us to label knowledge and assign high quality scores to each on-line query-result pairs and offline outputs. This method proved to be essential for fast iteration based mostly on dependable metrics and amassing the labeled knowledge needed for future mannequin fine-tuning.
Alongside the best way, we leaned into a number of elements of the Databricks Information Intelligence Platform, together with:
- Mosaic AI Vector Search: Used to energy high-precision, semantically wealthy search outcomes for analysis checks.
- MLflow patterns and LLM-as-a-judge: Supplied the patterns to guage mannequin outputs and implement our knowledge labeling course of.
- Mannequin Serving Endpoints: Environment friendly deployment of fashions immediately from our catalog.
- AI Gateway: To safe and govern our entry to 3rd social gathering fashions through API.
- Unity Catalog: Ensured the group, administration, and governance of all datasets used throughout the analysis framework.
This strong framework dramatically elevated our iteration pace and confidence. We performed over 30 distinct iterations, systematically testing main variable adjustments in our Vector Search resolution, together with:
- Completely different embedding fashions (foundational, open-weights, and third social gathering through API)
- Varied textual content mixtures to feed into the fashions
- Completely different question modes (ANN vs Hybrid)
- Testing totally different columns for hybrid textual content search
- Adjusting thresholds for vector similarity
- Experimenting with separate indexes for various provide varieties
The analysis framework reworked our growth course of, permitting us to make data-driven choices quickly and validate potential enhancements with excessive confidence earlier than exposing them to customers.
The seek for the most effective off-the-shelf mannequin
Following the preliminary broad take a look at that confirmed disappointing engagement outcomes, we shifted our focus to exploring the efficiency of particular fashions recognized as promising throughout our offline analysis. We chosen two third-party embedding fashions for manufacturing testing, accessed securely by AI Gateway. We performed short-term, iterative checks in manufacturing (lasting a couple of days) with these fashions.
Happy with the preliminary outcomes, we proceeded to run an extended, extra complete manufacturing take a look at evaluating our main third-party mannequin and its optimized configuration towards the legacy system. This take a look at yielded combined outcomes. Whereas we noticed total enhancements in engagement metrics and efficiently eradicated the unfavorable impacts seen beforehand, these positive aspects have been modest—principally single-digit proportion will increase. These incremental advantages weren’t compelling sufficient to completely justify a whole alternative of our present search expertise.
Extra troubling, nonetheless, was the perception gained from our granular evaluation: whereas efficiency considerably improved for sure search queries, others noticed worse outcomes in comparison with our legacy resolution. This inconsistency offered a major architectural dilemma. We confronted the unappealing selection of implementing a posh traffic-splitting system to route queries based mostly on predicted efficiency—an method that might require sustaining two distinct search experiences and introduce a brand new, advanced layer of rule-based routing administration—or accepting the restrictions.
This was a essential juncture. Whereas we had seen sufficient promise to maintain going, we wanted extra vital enhancements to justify absolutely changing our homegrown search system. This led us to start fine-tuning.
Positive-tuning: customizing mannequin conduct
Whereas the third-party embedding fashions explored beforehand confirmed technical promise and modest enhancements in engagement, in addition they offered essential limitations that have been unacceptable for a long-term resolution at Ibotta. These included:
- Incapacity to coach embedding fashions on our proprietary provide catalog
- Problem evolving fashions alongside enterprise and content material adjustments
- Uncertainty relating to long-term API availability from exterior suppliers
- The necessity to set up and handle new exterior enterprise relationships
- Community calls to those suppliers weren’t as performant as self-hosted fashions
The clear path ahead was to fine-tune a mannequin particularly tailor-made to Ibotta’s knowledge and the wants of our Savers. This was made attainable because of the tens of millions of labeled search interactions we had collected from actual customers through our LLM-as-a-judge course of inside our customized analysis framework. This high-quality manufacturing knowledge grew to become our coaching gold.
We then launched into a methodical fine-tuning course of, leveraging our offline analysis framework extensively.
Key components have been:
- Infrastructure: We used AI Runtime with A10s in a serverless setting, and Databricks ML Runtime for stylish hyperparameter sweeping.
- Mannequin choice: We chosen a BGE household mannequin over GTE, which demonstrated stronger efficiency in our offline evaluations and proved extra environment friendly to coach.
- Dataset engineering: We constructed quite a few coaching datasets, together with producing artificial coaching knowledge, in the end selecting:
- One optimistic outcome (a verified good match from actual searches)
- ~10 unfavorable examples per optimistic, combining:
- 3-4 “onerous negatives” (LLM labeled, human-verified inappropriate matches)
- “In-batch negatives” (sampling of outcomes from unrelated search phrases)
- Hyperparameter optimization: We systematically swept issues like studying price, batch measurement, period, and unfavorable sampling methods to seek out optimum configurations.
After quite a few iterations and evaluations throughout the framework, our top-performing fine-tuned mannequin beat our greatest third-party baseline by 20% in artificial analysis. These compelling offline outcomes supplied the boldness wanted to speed up our subsequent manufacturing take a look at.
Search that drives outcomes—and income
The technical rigor and iterative course of paid off. We engineered a search resolution particularly optimized for Ibotta’s distinctive provide catalog and consumer conduct patterns, delivering outcomes that exceeded our expectations and supplied the flexibleness wanted to evolve alongside our enterprise. Primarily based on these robust outcomes, we accelerated migration onto Databricks Vector Search as the inspiration for our manufacturing search system.
In our ultimate manufacturing take a look at, utilizing our personal fine-tuned embedding mannequin, we noticed the next enhancements:
- 14.8% extra provide unlocks in search.
This measures customers choosing affords from search outcomes, indicating improved outcome high quality and relevance. Extra unlocks are a number one indicator of downstream redemptions and income. - 6% enhance in engaged customers.
This reveals a larger share of customers discovering worth and taking significant motion throughout the search expertise, contributing to improved conversion, retention and lifelong worth. - 15% enhance in engagement on bonuses.
This displays improved surfacing of high-value, brand-sponsored content material, translating immediately to raised efficiency and ROI for our model and retail companions. - 72.6% lower in searches with zero outcomes.
The numerous discount means fewer irritating experiences and a significant enchancment in semantic search protection. - 60.9% fewer customers encountering searches returning no outcomes.
This highlights the breadth of impression, displaying that a big portion of our consumer base is now constantly discovering outcomes, enhancing the expertise throughout the board.
Past user-facing positive aspects, the brand new system delivered on efficiency. We noticed 60% decrease latency to our search system, attributable to Vector Search question efficiency and the fine-tuned mannequin’s decrease overhead.
Leveraging the flexibleness of this new basis, we additionally constructed highly effective enhancements like Question Transformation (enriching obscure queries) and Multi-Search (fanning out generic phrases). The mix of a extremely related core mannequin, improved system efficiency, and clever question enhancements has resulted in a search expertise that’s smarter, quicker, and in the end extra rewarding
Question Transformation
One problem with embedding fashions is their restricted understanding of area of interest key phrases, similar to rising manufacturers. To handle this we constructed a question transformation layer that dynamically enriches search phrases in-flight based mostly on predefined guidelines.
For instance, if a consumer searches for an rising yogurt model the embedding mannequin may not acknowledge, we are able to rework the question so as to add “Greek yogurt” alongside the model title earlier than sending it to Vector Search. This gives the embedding mannequin with needed product context whereas preserving the unique textual content for hybrid search.
This functionality additionally works hand-in-hand with our fine-tuning course of. Profitable transformations can be utilized to generate coaching knowledge; for example, together with the unique model title as a question and the related yogurt merchandise as optimistic ends in a future coaching run helps the mannequin be taught these particular associations.
Multi-Search
For broad, generic searches like “child,” Vector Search may initially return a restricted variety of candidates, probably filtered down additional by focusing on and price range administration. To handle this and enhance outcome range, we constructed a multi-search functionality that followers out a single search time period into a number of associated searches.
As an alternative of simply looking for “child,” our system robotically runs parallel searches for phrases like “child meals,” “child clothes,” “child drugs,” “child diapers,” and so forth. Due to the low latency of Vector Search, we are able to execute a number of searches in parallel with out growing the general response time to the consumer. This gives a wider and extra numerous set of related outcomes for wide-ranging class searches.
Classes Realized
Following the profitable ultimate manufacturing take a look at and the complete rollout of Databricks Vector Search to our consumer base – delivering optimistic engagement outcomes, elevated flexibility, and highly effective search instruments like Question Transformation and Multi-Search – this challenge journey yielded a number of helpful classes:
- Begin with a proof of idea: The preliminary hackathon method allowed us to shortly validate the core idea with minimal upfront funding.
- Measure what issues to you: Our tailor-made 50-metric analysis framework was essential; it gave us confidence that enhancements noticed offline would translate into enterprise impression, enabling us to keep away from repeated dwell testing till options have been actually promising.
- Do not leap straight to fine-tuning: We realized the worth of completely evaluating off-the-shelf fashions and exhausting these choices earlier than investing within the larger effort required for fine-tuning.
- Accumulate knowledge early: Beginning to label knowledge from our second experiment ensured a wealthy, proprietary dataset was prepared when fine-tuning grew to become needed.
- Collaboration accelerates progress: Shut partnership with Databricks engineers and researchers, sharing insights on Vector Search, embedding fashions, LLM-as-a-judge patterns, and fine-tuning approaches, considerably accelerated our progress.
- Acknowledge cumulative impression: Every particular person optimization, even seemingly minor, contributed considerably to the general transformation of our search expertise.
What’s subsequent
With our fine-tuned embedding mannequin now dwell throughout all direct-to-consumer (D2C) channels, we subsequent plan to discover scaling this resolution to the Ibotta Efficiency Community (IPN). This could convey improved provide discovery to tens of millions extra consumers throughout our writer community. As we proceed to gather labeled knowledge and refine our fashions by Databricks, we consider we’re effectively positioned to evolve the search expertise alongside the wants of our companions and the expectations of their clients.
This journey from a hackathon challenge to a manufacturing system proved that reimagining a core product expertise quickly is achievable with the proper instruments and assist. Databricks was instrumental in serving to us transfer quick, fine-tune successfully, and in the end, make each search extra rewarding for our Savers.