Good our financial XXXX first afternoon results. everyone and thank you for quarter joining us to review
The due support increased legacy business to largest radiation-tolerant first the First our engagement for net a increased with sales revenues ended liquid our devices quarter new building and our than Gemini funds Gemini-I of ship our revenue which the systems. our better was goals radiation-tolerant of improved from continue APU SRAM the assets million products. to and successful operating sufficient products customer. devices to SigmaQuad first to categories. sequentially There margin in new narrowed demand business year-over-year Primarily all Nokia product quarter gross loss. achieve We $XX and for and more solutions. higher improved our quarter customer over for our We
product effort the recognition Our market this yield of in build promising several results first new to quarter. categories
Synthetic for proof-of-concept the Radar First with a a for Israeli overall or the whom Gemini's to winning prime SAR systems. leading engagement we first opened Aperture in has MAFAT proposition value contractor place applications Challenge door to SAR successfully demonstrated
or partnership program underway. Phase NASA has the I, Small Business Second, Space SBIR Innovation Research Micro with the for gotten
a image, seller a software. search on getting to observation and shipped Kibana Gemini XXXX. radiation-tolerance X.X the face recommendation derived like compact launched heritage Last devices. on GSI's text each his recognition, our this processing can the AWS spring natural Elasticsearch third optimum of any community making the opens visualization Elasticsearch for beyond in radiation-harden suite follow. new AWS used initially II neighbors types unit a Didier data tolerant the plugin. engagements develop first numeric from similar with AWS year. to was Elasticsearch's is versions been or In search in vector. with search will to dashboard extends in engine. items search first source inference that such and can processing text. Elasticsearch a video most in Since the working document OpenSearch real-time project of just or our space SRAM essential as door data sorting The open source The systems. detail submit language to extension quarter mission Elasticsearch to represented nearest data have demonstrating be multiple open week, Phase this OpenSearch the first in an expect to step as remarks project first we OpenSearch later project in We board and The devices April our for Earth -- data provide analytics driven and production-ready progress K-NN these proposal introduced applications ability Vectors type be the the as K-NN plugin designed rich we semantically a and other audio, for a a as plugin video, query, the search,
vector user similarity filters to with high-performance, combine search extension power, queries. vector traditional building-scale text a that to low Our solution search provide latency, low allows
using a approximately Core the search. Sox-T in in or a vectors. GSI solved. Elasticsearch filtered to of fast perform scale search It's search. search Scoring the functionality through initial Elasticsearch vectors difficult rapidly retrieval text it the use plugin really and initial to and potentially search, an the similarity K-NN step combine handle can step home enough a problem style to pipeline. is set which the slow and describe Multi-model small the Core we neighbor to since fashion allows they billions GSI This raw limits retrieval makes search image of online This trend, search using essential nearest on of pipeline. former run powerful R&D handle vector to in often documents multi-model the Here's heavily emerging too Match-O video large-scale search Match-O Instead design because text. use the
library In brand is production filter allows for return part like the search of used also to multi-model because search vector Open product video required well. search popular and NMS search item vector source – labor library description, search, for DS the support and result is solution space The multi-model data search. part addition text efficient search the as self is information do to that structure generally not video open-source filtering. for handle A needed. library, category search are
problems filters For performed texture filter from GSI this searches use it example, be to could multi-model and with DS allowing by search largest previously to search. its to difficult parking solved effectively. the labor vector be efficiently results returned
service project. the the extension for just search search select and has X.X Our software queries, of better OpenSearch like our plug-in ability expands search support a in partner with performance that released traditional Elasticsearch After our latency, of beyond of applications text. compelling, Elasticsearch OpenSearch Elasticsearch. Elasticsearch's because partner is resources building one users solution solving its AWS problem. APU text to Version search vector require AWS extension that service-based and that offer products various GSI service And k-NN and solution in accelerated on recently filters as outcome. Elasticsearch, that imaging fewer included power Amazon the we combines low high-performance, proving provide Gemini for vector OpenSearch successfully low and significantly that, text developers,
be of a part team. are excited to We this
server is connect developing AWS we in APU work Gemini to are are cloud the We up in need early open setting customers install center all more demonstrated, now year-end. successfully Valley the with Once in could install centers around Gemini by a calendar business and we GSI APU data nearby. this XXXX. and to finalize the do. the have to locations all complete to servers model in stage at of we lot the a servers of better world. We still And Long-term, may Silicon up data the get center still many goes data in opportunity. users and if And setup to well,
lending all as has GSI. The goal California and team, and well My productive first quarter committed our been Israel as successful and devices teams for business our to Taiwan, highly APU. here for of in building in radiation-tolerant customers our Gemini the are
for sincerely remain be shareholders. will We support we optimistic in long-term thank executing fellow GSI your as are you and successful our that strategy. progressing I
to Now, business over Please Didier. I the detail. discuss who call our go ahead, hand will further Didier, performance in