[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"blog":3},{"title":4,"desc":5,"bannerImg":6,"date":7,"orgImgLinks":8,"bannerLinks":9,"blogCategory":10,"category":11,"weight":12,"externalUrl":13,"links":14,"description":5,"content":15,"tag1":842},"2077AI 2025 Annual Report: Pioneering Open Source AI Innovation","Explore the 2077AI 2025 Annual Report. From SuperGPQA and YuE music generation to OmniDocBench, discover how our open-source datasets and models are redefining reasoning, multimodal perception, and embodied AI.","https:\u002F\u002Fdoxhub.s3.us-east-1.amazonaws.com\u002F2077ai\u002FBanner_blog\u002Fbanner_2025report.png","2025-12-18","[]","{}","News & Events","undefined",0,"","{\"homepage\":\"\",\"github\":\"\",\"huggingface\":\"\",\"x\":\"\",\"discord\":\"\",\"arxiv\":\"\"}",{"data":16,"body":19,"toc":834},{"title":17,"description":18},"Reflecting on 2025: Empowering the Future through Open-Source Excellence","2025 marks a transformative chapter for 2077AI. What began as a dedicated mission to push the boundaries of open-source artificial intelligence has evolved into a global, high-impact ecosystem. Today, 2077AI stands as a vibrant nexus for researchers, developers, and engineers from the world’s most prestigious universities and forward-thinking organizations.",{"type":20,"children":21},"root",[22,37,47,56,65,77,103,176,189,234,244,318,328,338,357,393,403,439,449,499,509,545,555,565,584,621,631,667,677,687,706,742,752,788,798,808,817,826],{"type":23,"tag":24,"props":25,"children":29},"element","h1",{"className":26,"id":28},[27],"heading__h1","reflecting-on-2025-empowering-the-future-through-open-source-excellence",[30],{"type":23,"tag":31,"props":32,"children":34},"span",{"style":33},"white-space: pre-wrap;",[35],{"type":36,"value":17},"text",{"type":23,"tag":38,"props":39,"children":42},"p",{"className":40},[41],"doxhub-editor-paragraph",[43],{"type":23,"tag":31,"props":44,"children":45},{"style":33},[46],{"type":36,"value":18},{"type":23,"tag":38,"props":48,"children":50},{"className":49},[41],[51],{"type":23,"tag":31,"props":52,"children":53},{"style":33},[54],{"type":36,"value":55},"This past year, our contributions have spanned the full spectrum of intelligence—from redefining how models perceive complex documents to pioneering the next frontier of formal mathematical reasoning. Our presence has resonated across top-tier global conferences and the pulse of the GitHub trending community. However, our progress is not a solitary achievement; it is a testament to the collective strength of our community members and supportive collaborators.",{"type":23,"tag":38,"props":57,"children":59},{"className":58},[41],[60],{"type":23,"tag":31,"props":61,"children":62},{"style":33},[63],{"type":36,"value":64},"We invite you to explore the milestones and technical breakthroughs that defined our 2025.",{"type":23,"tag":66,"props":67,"children":71},"h2",{"className":68,"id":70},[69],"heading__h2","redefining-multimodal-perception",[72],{"type":23,"tag":31,"props":73,"children":74},{"style":33},[75],{"type":36,"value":76},"Redefining Multimodal Perception",{"type":23,"tag":38,"props":78,"children":80},{"className":79},[41],[81],{"type":23,"tag":82,"props":83,"children":84},"u",{},[85],{"type":23,"tag":86,"props":87,"children":88},"i",{},[89],{"type":23,"tag":90,"props":91,"children":92},"b",{},[93],{"type":23,"tag":94,"props":95,"children":100},"strong",{"className":96,"style":33},[97,98,99],"text__bold","text__italic","text__underline",[101],{"type":36,"value":102},"Seeing is believing, but understanding is everything. We released massive datasets to help models process complex documents and images.",{"type":23,"tag":104,"props":105,"children":108},"ul",{"className":106},[107],"doxhub-editor-ul",[109],{"type":23,"tag":110,"props":111,"children":115},"li",{"value":112,"className":113},"1",[114],"doxhub-editor-list-item",[116,134,143,148,157,162,171],{"type":23,"tag":117,"props":118,"children":124},"a",{"href":119,"rel":120,"className":122},"https:\u002F\u002Fwww.2077ai.com\u002Fdataset\u002Fdataset-omnidocbench",[121],"noreferrer",[123],"text__link",[125],{"type":23,"tag":90,"props":126,"children":127},{},[128],{"type":23,"tag":94,"props":129,"children":131},{"className":130,"style":33},[97],[132],{"type":36,"value":133},"OmniDocBench (CVPR '25)",{"type":23,"tag":90,"props":135,"children":136},{},[137],{"type":23,"tag":94,"props":138,"children":140},{"className":139,"style":33},[97],[141],{"type":36,"value":142},":",{"type":23,"tag":31,"props":144,"children":145},{"style":33},[146],{"type":36,"value":147}," A comprehensive benchmark for diverse document parsing, covering everything from handwritten notes to densely typeset newspapers. Cited by ",{"type":23,"tag":90,"props":149,"children":150},{},[151],{"type":23,"tag":94,"props":152,"children":154},{"className":153,"style":33},[97],[155],{"type":36,"value":156},"Gemini 3 Pro",{"type":23,"tag":31,"props":158,"children":159},{"style":33},[160],{"type":36,"value":161}," & ",{"type":23,"tag":90,"props":163,"children":164},{},[165],{"type":23,"tag":94,"props":166,"children":168},{"className":167,"style":33},[97],[169],{"type":36,"value":170},"DeepSeek OCR ",{"type":23,"tag":31,"props":172,"children":173},{"style":33},[174],{"type":36,"value":175},"as a core evaluation benchmark.",{"type":23,"tag":177,"props":178,"children":179},"figure",{},[180,185],{"type":23,"tag":181,"props":182,"children":184},"img",{"src":183,"alt":13},"https:\u002F\u002Fdoxhub.s3.us-east-1.amazonaws.com\u002F2077ai\u002F20251217\u002F1.webp",[],{"type":23,"tag":186,"props":187,"children":188},"figcaption",{},[],{"type":23,"tag":104,"props":190,"children":192},{"className":191},[107],[193],{"type":23,"tag":110,"props":194,"children":196},{"value":112,"className":195},[114],[197,212,220,225],{"type":23,"tag":117,"props":198,"children":202},{"href":199,"rel":200,"className":201},"https:\u002F\u002Fwww.2077ai.com\u002Fdataset\u002Fdataset-pin200",[121],[123],[203],{"type":23,"tag":90,"props":204,"children":205},{},[206],{"type":23,"tag":94,"props":207,"children":209},{"className":208,"style":33},[97],[210],{"type":36,"value":211},"PIN (Paired and interleaved documents)",{"type":23,"tag":90,"props":213,"children":214},{},[215],{"type":23,"tag":94,"props":216,"children":218},{"className":217,"style":33},[97],[219],{"type":36,"value":142},{"type":23,"tag":31,"props":221,"children":222},{"style":33},[223],{"type":36,"value":224}," We scaled up multimodal learning with a new data format and released PIN-200M (~200 million documents) to improve visual and textual integration. Our team scaled the dataset to PIN-200M with ",{"type":23,"tag":90,"props":226,"children":227},{},[228],{"type":23,"tag":94,"props":229,"children":231},{"className":230,"style":33},[97],[232],{"type":36,"value":233},"over 102k downloads.",{"type":23,"tag":177,"props":235,"children":236},{},[237,241],{"type":23,"tag":181,"props":238,"children":240},{"src":239,"alt":13},"https:\u002F\u002Fdoxhub.s3.us-east-1.amazonaws.com\u002F2077ai\u002F20251217\u002F2.webp",[],{"type":23,"tag":186,"props":242,"children":243},{},[],{"type":23,"tag":104,"props":245,"children":247},{"className":246},[107],[248],{"type":23,"tag":110,"props":249,"children":251},{"value":112,"className":250},[114],[252,267,275,280,289,304,313],{"type":23,"tag":117,"props":253,"children":257},{"href":254,"rel":255,"className":256},"https:\u002F\u002Fwww.2077ai.com\u002Fblog\u002Fintroducing-editreward-human-aligned-ai-for-image-editing",[121],[123],[258],{"type":23,"tag":90,"props":259,"children":260},{},[261],{"type":23,"tag":94,"props":262,"children":264},{"className":263,"style":33},[97],[265],{"type":36,"value":266},"EditReward",{"type":23,"tag":90,"props":268,"children":269},{},[270],{"type":23,"tag":94,"props":271,"children":273},{"className":272,"style":33},[97],[274],{"type":36,"value":142},{"type":23,"tag":31,"props":276,"children":277},{"style":33},[278],{"type":36,"value":279}," To fix the lack of reliable reward models for image editing, we built a human-aligned reward model trained on over 200k expert-annotated preference pairs. This was used by ",{"type":23,"tag":90,"props":281,"children":282},{},[283],{"type":23,"tag":94,"props":284,"children":286},{"className":285,"style":33},[97],[287],{"type":36,"value":288},"Apple's \"",{"type":23,"tag":117,"props":290,"children":294},{"href":291,"rel":292,"className":293},"https:\u002F\u002Fgithub.com\u002Fapple\u002Fpico-banana-400k",[121],[123],[295],{"type":23,"tag":90,"props":296,"children":297},{},[298],{"type":23,"tag":94,"props":299,"children":301},{"className":300,"style":33},[97],[302],{"type":36,"value":303},"Pico-Banana 400k",{"type":23,"tag":90,"props":305,"children":306},{},[307],{"type":23,"tag":94,"props":308,"children":310},{"className":309,"style":33},[97],[311],{"type":36,"value":312},"\" ",{"type":23,"tag":31,"props":314,"children":315},{"style":33},[316],{"type":36,"value":317},"and many other data efforts from frontier AI labs.",{"type":23,"tag":177,"props":319,"children":320},{},[321,325],{"type":23,"tag":181,"props":322,"children":324},{"src":323,"alt":13},"https:\u002F\u002Fdoxhub.s3.us-east-1.amazonaws.com\u002F2077ai\u002F20251217\u002F3.webp",[],{"type":23,"tag":186,"props":326,"children":327},{},[],{"type":23,"tag":66,"props":329,"children":332},{"className":330,"id":331},[69],"pushing-the-boundaries-of-reasoning-math",[333],{"type":23,"tag":31,"props":334,"children":335},{"style":33},[336],{"type":36,"value":337},"Pushing the Boundaries of Reasoning & Math",{"type":23,"tag":38,"props":339,"children":341},{"className":340},[41],[342],{"type":23,"tag":82,"props":343,"children":344},{},[345],{"type":23,"tag":86,"props":346,"children":347},{},[348],{"type":23,"tag":90,"props":349,"children":350},{},[351],{"type":23,"tag":94,"props":352,"children":354},{"className":353,"style":33},[97,98,99],[355],{"type":36,"value":356},"We believe true AGI requires deeper reasoning capabilities. This year, we tackled the hard problems: from graduate-level logic to formal mathematics.",{"type":23,"tag":104,"props":358,"children":360},{"className":359},[107],[361],{"type":23,"tag":110,"props":362,"children":364},{"value":112,"className":363},[114],[365,380,388],{"type":23,"tag":117,"props":366,"children":370},{"href":367,"rel":368,"className":369},"https:\u002F\u002Fwww.2077ai.com\u002Fblog\u002F2077AI-SuperGPQA",[121],[123],[371],{"type":23,"tag":90,"props":372,"children":373},{},[374],{"type":23,"tag":94,"props":375,"children":377},{"className":376,"style":33},[97],[378],{"type":36,"value":379},"SuperGPQA (NeurIPS '25)",{"type":23,"tag":90,"props":381,"children":382},{},[383],{"type":23,"tag":94,"props":384,"children":386},{"className":385,"style":33},[97],[387],{"type":36,"value":142},{"type":23,"tag":31,"props":389,"children":390},{"style":33},[391],{"type":36,"value":392}," We launched a rigorous benchmark evaluating LLMs across 285 graduate-level disciplines using a novel Human-LLM collaborative filtering mechanism.",{"type":23,"tag":177,"props":394,"children":395},{},[396,400],{"type":23,"tag":181,"props":397,"children":399},{"src":398,"alt":13},"https:\u002F\u002Fdoxhub.s3.us-east-1.amazonaws.com\u002F2077ai\u002F20251217\u002F4.webp",[],{"type":23,"tag":186,"props":401,"children":402},{},[],{"type":23,"tag":104,"props":404,"children":406},{"className":405},[107],[407],{"type":23,"tag":110,"props":408,"children":410},{"value":112,"className":409},[114],[411,426,434],{"type":23,"tag":117,"props":412,"children":416},{"href":413,"rel":414,"className":415},"https:\u002F\u002Fwww.2077ai.com\u002Fdataset\u002Fdataset-formalmath",[121],[123],[417],{"type":23,"tag":90,"props":418,"children":419},{},[420],{"type":23,"tag":94,"props":421,"children":423},{"className":422,"style":33},[97],[424],{"type":36,"value":425},"FormalMATH",{"type":23,"tag":90,"props":427,"children":428},{},[429],{"type":23,"tag":94,"props":430,"children":432},{"className":431,"style":33},[97],[433],{"type":36,"value":142},{"type":23,"tag":31,"props":435,"children":436},{"style":33},[437],{"type":36,"value":438}," To bridge the gap in formal reasoning, we created a large-scale Lean4 benchmark with 5,560 verified problems and a human-in-the-loop auto-formalization pipeline.",{"type":23,"tag":177,"props":440,"children":441},{},[442,446],{"type":23,"tag":181,"props":443,"children":445},{"src":444,"alt":13},"https:\u002F\u002Fdoxhub.s3.us-east-1.amazonaws.com\u002F2077ai\u002F20251217\u002F5.webp",[],{"type":23,"tag":186,"props":447,"children":448},{},[],{"type":23,"tag":104,"props":450,"children":452},{"className":451},[107],[453],{"type":23,"tag":110,"props":454,"children":456},{"value":112,"className":455},[114],[457,472,480,485,494],{"type":23,"tag":117,"props":458,"children":462},{"href":459,"rel":460,"className":461},"https:\u002F\u002Fwww.2077ai.com\u002Fblog\u002Fcriticlean-deepseekmath-self-verification",[121],[123],[463],{"type":23,"tag":90,"props":464,"children":465},{},[466],{"type":23,"tag":94,"props":467,"children":469},{"className":468,"style":33},[97],[470],{"type":36,"value":471},"CriticLean",{"type":23,"tag":90,"props":473,"children":474},{},[475],{"type":23,"tag":94,"props":476,"children":478},{"className":477,"style":33},[97],[479],{"type":36,"value":142},{"type":23,"tag":31,"props":481,"children":482},{"style":33},[483],{"type":36,"value":484}," We introduced a critic-guided reinforcement learning framework that transforms the \"critic\" from a passive validator into an active learner for mathematical formalization. It has been proven to be a visionary approach that anticipated the direction of the latest ",{"type":23,"tag":90,"props":486,"children":487},{},[488],{"type":23,"tag":94,"props":489,"children":491},{"className":490,"style":33},[97],[492],{"type":36,"value":493},"DeepSeekMath-V2",{"type":23,"tag":31,"props":495,"children":496},{"style":33},[497],{"type":36,"value":498},".",{"type":23,"tag":177,"props":500,"children":501},{},[502,506],{"type":23,"tag":181,"props":503,"children":505},{"src":504,"alt":13},"https:\u002F\u002Fdoxhub.s3.us-east-1.amazonaws.com\u002F2077ai\u002F20251217\u002F6.webp",[],{"type":23,"tag":186,"props":507,"children":508},{},[],{"type":23,"tag":104,"props":510,"children":512},{"className":511},[107],[513],{"type":23,"tag":110,"props":514,"children":516},{"value":112,"className":515},[114],[517,532,540],{"type":23,"tag":117,"props":518,"children":522},{"href":519,"rel":520,"className":521},"https:\u002F\u002Farxiv.org\u002Fabs\u002F2509.06160",[121],[123],[523],{"type":23,"tag":90,"props":524,"children":525},{},[526],{"type":23,"tag":94,"props":527,"children":529},{"className":528,"style":33},[97],[530],{"type":36,"value":531},"Reverse-Engineered Reasoning (REER)",{"type":23,"tag":90,"props":533,"children":534},{},[535],{"type":23,"tag":94,"props":536,"children":538},{"className":537,"style":33},[97],[539],{"type":36,"value":142},{"type":23,"tag":31,"props":541,"children":542},{"style":33},[543],{"type":36,"value":544}," We proposed a new paradigm that works \"backwards\" from good solutions to discover reasoning trajectories, open-sourcing the DeepWriting-20K dataset.",{"type":23,"tag":177,"props":546,"children":547},{},[548,552],{"type":23,"tag":181,"props":549,"children":551},{"src":550,"alt":13},"https:\u002F\u002Fdoxhub.s3.us-east-1.amazonaws.com\u002F2077ai\u002F20251217\u002F7.webp",[],{"type":23,"tag":186,"props":553,"children":554},{},[],{"type":23,"tag":66,"props":556,"children":559},{"className":557,"id":558},[69],"agents-the-physical-world",[560],{"type":23,"tag":31,"props":561,"children":562},{"style":33},[563],{"type":36,"value":564},"Agents & The Physical World",{"type":23,"tag":38,"props":566,"children":568},{"className":567},[41],[569],{"type":23,"tag":82,"props":570,"children":571},{},[572],{"type":23,"tag":86,"props":573,"children":574},{},[575],{"type":23,"tag":90,"props":576,"children":577},{},[578],{"type":23,"tag":94,"props":579,"children":581},{"className":580,"style":33},[97,98,99],[582],{"type":36,"value":583},"We focused on embodied AI and agents that can take action in digital and physical environments.",{"type":23,"tag":104,"props":585,"children":587},{"className":586},[107],[588],{"type":23,"tag":110,"props":589,"children":591},{"value":112,"className":590},[114],[592,607,616],{"type":23,"tag":117,"props":593,"children":597},{"href":594,"rel":595,"className":596},"https:\u002F\u002Fwww.2077ai.com\u002Fblog\u002Fomni-hd-scenes",[121],[123],[598],{"type":23,"tag":90,"props":599,"children":600},{},[601],{"type":23,"tag":94,"props":602,"children":604},{"className":603,"style":33},[97],[605],{"type":36,"value":606},"OmniHD-Scenes",{"type":23,"tag":90,"props":608,"children":609},{},[610],{"type":23,"tag":94,"props":611,"children":613},{"className":612,"style":33},[97],[614],{"type":36,"value":615},": ",{"type":23,"tag":31,"props":617,"children":618},{"style":33},[619],{"type":36,"value":620},"A next-gen dataset for autonomous driving featuring 450K synchronized frames from LiDAR, cameras, and 4D imaging radar to achieve full environmental perception.",{"type":23,"tag":177,"props":622,"children":623},{},[624,628],{"type":23,"tag":181,"props":625,"children":627},{"src":626,"alt":13},"https:\u002F\u002Fdoxhub.s3.us-east-1.amazonaws.com\u002F2077ai\u002F20251217\u002F8.webp",[],{"type":23,"tag":186,"props":629,"children":630},{},[],{"type":23,"tag":104,"props":632,"children":634},{"className":633},[107],[635],{"type":23,"tag":110,"props":636,"children":638},{"value":112,"className":637},[114],[639,654,662],{"type":23,"tag":117,"props":640,"children":644},{"href":641,"rel":642,"className":643},"https:\u002F\u002Fwww.2077ai.com\u002Fdataset\u002Fdataset-veriweb",[121],[123],[645],{"type":23,"tag":90,"props":646,"children":647},{},[648],{"type":23,"tag":94,"props":649,"children":651},{"className":650,"style":33},[97],[652],{"type":36,"value":653},"VeriGUI",{"type":23,"tag":90,"props":655,"children":656},{},[657],{"type":23,"tag":94,"props":658,"children":660},{"className":659,"style":33},[97],[661],{"type":36,"value":615},{"type":23,"tag":31,"props":663,"children":664},{"style":33},[665],{"type":36,"value":666},"A verifiable long-chain dataset for GUI agents, designed to help generalist agents handle complex, long-horizon tasks across desktops and the web. It has been proven to be a solid foundational contribution to the agent browser ecosystem.",{"type":23,"tag":177,"props":668,"children":669},{},[670,674],{"type":23,"tag":181,"props":671,"children":673},{"src":672,"alt":13},"https:\u002F\u002Fdoxhub.s3.us-east-1.amazonaws.com\u002F2077ai\u002F20251217\u002F9.webp",[],{"type":23,"tag":186,"props":675,"children":676},{},[],{"type":23,"tag":66,"props":678,"children":681},{"className":679,"id":680},[69],"the-symphony-of-sound",[682],{"type":23,"tag":31,"props":683,"children":684},{"style":33},[685],{"type":36,"value":686},"The Symphony of Sound",{"type":23,"tag":38,"props":688,"children":690},{"className":689},[41],[691],{"type":23,"tag":82,"props":692,"children":693},{},[694],{"type":23,"tag":86,"props":695,"children":696},{},[697],{"type":23,"tag":90,"props":698,"children":699},{},[700],{"type":23,"tag":94,"props":701,"children":703},{"className":702,"style":33},[97,98,99],[704],{"type":36,"value":705},"AI isn't just about text—it's about creativity. This year, we taught models to listen and sing.",{"type":23,"tag":104,"props":707,"children":709},{"className":708},[107],[710],{"type":23,"tag":110,"props":711,"children":713},{"value":112,"className":712},[114],[714,729,737],{"type":23,"tag":117,"props":715,"children":719},{"href":716,"rel":717,"className":718},"https:\u002F\u002Fmap-yue.github.io\u002F",[121],[123],[720],{"type":23,"tag":90,"props":721,"children":722},{},[723],{"type":23,"tag":94,"props":724,"children":726},{"className":725,"style":33},[97],[727],{"type":36,"value":728},"YuE",{"type":23,"tag":90,"props":730,"children":731},{},[732],{"type":23,"tag":94,"props":733,"children":735},{"className":734,"style":33},[97],[736],{"type":36,"value":615},{"type":23,"tag":31,"props":738,"children":739},{"style":33},[740],{"type":36,"value":741},"Our groundbreaking open foundation model for long-form music generation capable of creating up to 5 minutes of coherent, lyrics-aligned songs. Rocketed to 5.4k stars on GitHub.",{"type":23,"tag":177,"props":743,"children":744},{},[745,749],{"type":23,"tag":181,"props":746,"children":748},{"src":747,"alt":13},"https:\u002F\u002Fdoxhub.s3.us-east-1.amazonaws.com\u002F2077ai\u002F20251217\u002F10.webp",[],{"type":23,"tag":186,"props":750,"children":751},{},[],{"type":23,"tag":104,"props":753,"children":755},{"className":754},[107],[756],{"type":23,"tag":110,"props":757,"children":759},{"value":112,"className":758},[114],[760,775,783],{"type":23,"tag":117,"props":761,"children":765},{"href":762,"rel":763,"className":764},"https:\u002F\u002Fwww.2077ai.com\u002Fdataset\u002Fdataset-MMAR",[121],[123],[766],{"type":23,"tag":90,"props":767,"children":768},{},[769],{"type":23,"tag":94,"props":770,"children":772},{"className":771,"style":33},[97],[773],{"type":36,"value":774},"MMAR (NeurIPS '25)",{"type":23,"tag":90,"props":776,"children":777},{},[778],{"type":23,"tag":94,"props":779,"children":781},{"className":780,"style":33},[97],[782],{"type":36,"value":615},{"type":23,"tag":31,"props":784,"children":785},{"style":33},[786],{"type":36,"value":787},"A challenging benchmark designed to test deep reasoning in Audio-Language Models, covering a mix of speech, music, and sound across four reasoning layers. ",{"type":23,"tag":177,"props":789,"children":790},{},[791,795],{"type":23,"tag":181,"props":792,"children":794},{"src":793,"alt":13},"https:\u002F\u002Fdoxhub.s3.us-east-1.amazonaws.com\u002F2077ai\u002F20251217\u002F11.webp",[],{"type":23,"tag":186,"props":796,"children":797},{},[],{"type":23,"tag":66,"props":799,"children":802},{"className":800,"id":801},[69],"looking-ahead-the-journey-to-2026",[803],{"type":23,"tag":31,"props":804,"children":805},{"style":33},[806],{"type":36,"value":807},"Looking Ahead: The Journey to 2026",{"type":23,"tag":38,"props":809,"children":811},{"className":810},[41],[812],{"type":23,"tag":31,"props":813,"children":814},{"style":33},[815],{"type":36,"value":816},"As we transition into 2026, the energy at 2077AI is at an all-time high. Our roadmap remains clear: we will continue to double down on our commitment to open-source transparency, rigorous benchmarking, and the pursuit of deep reasoning capabilities.",{"type":23,"tag":38,"props":818,"children":820},{"className":819},[41],[821],{"type":23,"tag":31,"props":822,"children":823},{"style":33},[824],{"type":36,"value":825},"The future of AI should not be built behind closed doors. Whether you are a senior researcher, a full-stack developer, or an AI enthusiast, there is a place for you in our ecosystem. We remain committed to building a future that is open, collaborative, and driven by technical excellence — one commit at a time.",{"type":23,"tag":38,"props":827,"children":829},{"className":828},[41],[830],{"type":23,"tag":831,"props":832,"children":833},"br",{},[],{"title":13,"searchDepth":835,"depth":835,"links":836},2,[837,838,839,840,841],{"id":70,"depth":835,"text":76},{"id":331,"depth":835,"text":337},{"id":558,"depth":835,"text":564},{"id":680,"depth":835,"text":686},{"id":801,"depth":835,"text":807},"news"]