1:"$Sreact.fragment" 2:I[7801,["/_next/static/chunks/7c2c53a45466daa8.js"],"SiteShell"] 3:I[39756,["/_next/static/chunks/ff1a16fafef87110.js","/_next/static/chunks/a2dfb6fc5208ab9b.js"],"default"] 4:I[37457,["/_next/static/chunks/ff1a16fafef87110.js","/_next/static/chunks/a2dfb6fc5208ab9b.js"],"default"] 5:I[85437,["/_next/static/chunks/7c2c53a45466daa8.js","/_next/static/chunks/8b0fff29cc980068.js"],"Image"] 11:I[68027,[],"default"] :HL["/_next/static/chunks/7b93430d285d4d1c.css","style"] :HL["/_next/static/media/0c89a48fa5027cee-s.p.4564287c.woff2","font",{"crossOrigin":"","type":"font/woff2"}] :HL["/_next/static/media/a343f882a40d2cc9-s.p.71e1367e.woff2","font",{"crossOrigin":"","type":"font/woff2"}] 0:{"P":null,"b":"XeL4Swq5aG0CwgAITOg7T","c":["","courses"],"q":"","i":false,"f":[[["",{"children":["courses",{"children":["__PAGE__",{}]}]},"$undefined","$undefined",true],[["$","$1","c",{"children":[[["$","link","0",{"rel":"stylesheet","href":"/_next/static/chunks/7b93430d285d4d1c.css","precedence":"next","crossOrigin":"$undefined","nonce":"$undefined"}],["$","script","script-0",{"src":"/_next/static/chunks/7c2c53a45466daa8.js","async":true,"nonce":"$undefined"}]],["$","html",null,{"lang":"en","children":["$","body",null,{"className":"manrope_b7d5735e-module__suUhcW__variable space_grotesk_3ab9bced-module__vt23OG__variable bg-[#0b0f19] text-white antialiased","children":[["$","script",null,{"type":"application/ld+json","dangerouslySetInnerHTML":{"__html":"{\"@context\":\"https://schema.org\",\"@type\":\"EducationalOrganization\",\"name\":\"Code Gemini Pune\",\"url\":\"https://codegeminipune.com\",\"telephone\":\"+91 9373610956\",\"address\":{\"@type\":\"PostalAddress\",\"addressLocality\":\"Pune\",\"addressCountry\":\"IN\"},\"sameAs\":[\"https://instagram.com/codegeminipune\",\"https://facebook.com/codegeminipune\",\"https://youtube.com/@codegeminipune\",\"https://x.com/codegeminipune\"],\"offers\":[{\"@type\":\"Course\",\"name\":\"Full Stack Data Science + Gen AI\"},{\"@type\":\"Course\",\"name\":\"Gen AI + Agentic AI\"},{\"@type\":\"Course\",\"name\":\"Data Analysis with Gen AI\"}]}"}}],["$","$L2",null,{"children":["$","$L3",null,{"parallelRouterKey":"children","error":"$undefined","errorStyles":"$undefined","errorScripts":"$undefined","template":["$","$L4",null,{}],"templateStyles":"$undefined","templateScripts":"$undefined","notFound":[[["$","title",null,{"children":"404: This page could not be found."}],["$","div",null,{"style":{"fontFamily":"system-ui,\"Segoe UI\",Roboto,Helvetica,Arial,sans-serif,\"Apple Color Emoji\",\"Segoe UI Emoji\"","height":"100vh","textAlign":"center","display":"flex","flexDirection":"column","alignItems":"center","justifyContent":"center"},"children":["$","div",null,{"children":[["$","style",null,{"dangerouslySetInnerHTML":{"__html":"body{color:#000;background:#fff;margin:0}.next-error-h1{border-right:1px solid rgba(0,0,0,.3)}@media (prefers-color-scheme:dark){body{color:#fff;background:#000}.next-error-h1{border-right:1px solid rgba(255,255,255,.3)}}"}}],["$","h1",null,{"className":"next-error-h1","style":{"display":"inline-block","margin":"0 20px 0 0","padding":"0 23px 0 0","fontSize":24,"fontWeight":500,"verticalAlign":"top","lineHeight":"49px"},"children":404}],["$","div",null,{"style":{"display":"inline-block"},"children":["$","h2",null,{"style":{"fontSize":14,"fontWeight":400,"lineHeight":"49px","margin":0},"children":"This page could not be found."}]}]]}]}]],[]],"forbidden":"$undefined","unauthorized":"$undefined"}]}]]}]}]]}],{"children":[["$","$1","c",{"children":[null,["$","$L3",null,{"parallelRouterKey":"children","error":"$undefined","errorStyles":"$undefined","errorScripts":"$undefined","template":["$","$L4",null,{}],"templateStyles":"$undefined","templateScripts":"$undefined","notFound":"$undefined","forbidden":"$undefined","unauthorized":"$undefined"}]]}],{"children":[["$","$1","c",{"children":[["$","div",null,{"className":"bg-[#0b0f19] py-16","children":["$","div",null,{"className":"mx-auto w-full max-w-[1280px] px-4 sm:px-6 lg:px-8","children":[["$","div",null,{"className":"mb-12 max-w-3xl space-y-4","children":[["$","p",null,{"className":"text-xs font-semibold uppercase tracking-[0.24em] text-cyan-300","children":"Courses"}],["$","h2",null,{"className":"text-4xl font-semibold tracking-tight text-white sm:text-5xl","children":"3 Core programs with detailed practical syllabus"}],["$","p",null,{"className":"text-base text-slate-300 sm:text-lg","children":"Each course has a structured roadmap so visitors can clearly understand progression."}]]}],["$","div",null,{"className":"space-y-12","children":[["$","section","full-stack-data-science",{"className":"panel grid gap-6 rounded-2xl p-6 lg:grid-cols-[0.82fr_1.18fr] lg:items-start","children":[["$","div",null,{"className":"panel-soft relative overflow-hidden rounded-2xl rounded-xl","children":["$","div",null,{"className":"relative aspect-[4/3] w-full","children":["$","$L5",null,{"src":"/images/course-fullstack-ds-genai.png","alt":"Full Stack Data Science + Gen AI","fill":true,"priority":false,"quality":95,"className":"object-cover","sizes":"(min-width: 1024px) 50vw, 100vw"}]}]}],["$","div",null,{"children":["$L6","$L7","$L8","$L9","$La","$Lb"]}]]}],"$Lc","$Ld"]}]]}]}],["$Le"],"$Lf"]}],{},null,false,false]},null,false,false]},null,false,false],"$L10",false]],"m":"$undefined","G":["$11",[]],"S":true} 1c:I[97367,["/_next/static/chunks/ff1a16fafef87110.js","/_next/static/chunks/a2dfb6fc5208ab9b.js"],"OutletBoundary"] 1d:"$Sreact.suspense" 1f:I[97367,["/_next/static/chunks/ff1a16fafef87110.js","/_next/static/chunks/a2dfb6fc5208ab9b.js"],"ViewportBoundary"] 21:I[97367,["/_next/static/chunks/ff1a16fafef87110.js","/_next/static/chunks/a2dfb6fc5208ab9b.js"],"MetadataBoundary"] 6:["$","div",null,{"className":"flex flex-wrap items-center gap-3","children":[["$","svg",null,{"ref":"$undefined","xmlns":"http://www.w3.org/2000/svg","width":24,"height":24,"viewBox":"0 0 24 24","fill":"none","stroke":"currentColor","strokeWidth":2,"strokeLinecap":"round","strokeLinejoin":"round","className":"lucide lucide-workflow h-7 w-7 text-cyan-300","aria-hidden":"true","children":[["$","rect","by2w9f",{"width":"8","height":"8","x":"3","y":"3","rx":"2"}],["$","path","xkn7yn",{"d":"M7 11v4a2 2 0 0 0 2 2h4"}],["$","rect","1cgmvn",{"width":"8","height":"8","x":"13","y":"13","rx":"2"}],"$undefined"]}],["$","h2",null,{"className":"text-3xl font-semibold text-white","children":"Full Stack Data Science + Gen AI"}],["$","span",null,{"className":"inline-flex items-center rounded-full border border-slate-400/35 bg-white/5 px-3 py-1 text-xs text-slate-200","children":"6 Months"}]]}] 7:["$","p",null,{"className":"mt-4 text-base text-slate-300","children":"Complete engineering track from Python and statistics to ML, Deep Learning, Gen AI, RAG, LangGraph, CrewAI, n8n, and multi-agent systems."}] 8:["$","div",null,{"className":"mt-4 flex flex-wrap gap-2 text-xs text-slate-200","children":[["$","span","Python Basics to Advanced Libraries",{"className":"rounded-full border border-slate-500/35 px-3 py-1","children":"Python Basics to Advanced Libraries"}],["$","span","SQL + NoSQL",{"className":"rounded-full border border-slate-500/35 px-3 py-1","children":"SQL + NoSQL"}],["$","span","ML + DL + Gen AI",{"className":"rounded-full border border-slate-500/35 px-3 py-1","children":"ML + DL + Gen AI"}]]}] 9:["$","h3",null,{"className":"mt-7 text-lg font-semibold text-white","children":"Structured roadmap syllabus"}] a:["$","div",null,{"className":"relative mt-4 pl-6","children":[["$","span",null,{"className":"absolute left-0 top-0 h-full w-px bg-slate-500/35"}],["$","div",null,{"className":"space-y-4","children":[["$","div","Python foundations, OOP, Numpy, Pandas, visualization libraries",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",1]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"Python foundations, OOP, Numpy, Pandas, visualization libraries"}]]}],["$","div","Linear algebra, statistics, probability, calculus for ML",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",2]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"Linear algebra, statistics, probability, calculus for ML"}]]}],["$","div","Databases: SQL and NoSQL with production querying",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",3]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"Databases: SQL and NoSQL with production querying"}]]}],["$","div","Machine Learning: supervised, unsupervised, and reinforcement learning",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",4]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"Machine Learning: supervised, unsupervised, and reinforcement learning"}]]}],["$","div","Deep Learning: ANN, CNN, RNN, LSTM, GRU, transformers, activations, optimizers",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",5]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"Deep Learning: ANN, CNN, RNN, LSTM, GRU, transformers, activations, optimizers"}]]}],["$","div","Gen AI: models, prompting, LangChain, RAG, vector databases",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",6]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"Gen AI: models, prompting, LangChain, RAG, vector databases"}]]}],["$","div","Advanced orchestration: LangGraph, CrewAI, n8n, multi-agent systems",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",7]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"Advanced orchestration: LangGraph, CrewAI, n8n, multi-agent systems"}]]}]]}]]}] b:["$","div",null,{"className":"mt-6","children":["$","a",null,{"href":"https://docs.google.com/forms/d/e/1FAIpQLSdXtHGJ7EhunhZS9FW3G3IiwYWay50kOuEqygKi6Cx2nZX3Ug/viewform?usp=publish-editor","target":"_blank","rel":"noopener noreferrer","className":"primary-cta subtle-lift inline-flex items-center justify-center rounded-lg px-5 py-3 text-sm font-semibold text-white shadow-[0_10px_28px_rgba(124,58,237,0.35)]","children":"Enquiry for this course"}]}] c:["$","section","gen-ai-agentic-ai",{"className":"panel grid gap-6 rounded-2xl p-6 lg:grid-cols-[0.82fr_1.18fr] lg:items-start","children":[["$","div",null,{"className":"panel-soft relative overflow-hidden rounded-2xl rounded-xl","children":["$","div",null,{"className":"relative aspect-[4/3] w-full","children":["$","$L5",null,{"src":"/images/course-genai-agentic.png","alt":"Gen AI + Agentic AI","fill":true,"priority":false,"quality":95,"className":"object-cover","sizes":"(min-width: 1024px) 50vw, 100vw"}]}]}],["$","div",null,{"children":[["$","div",null,{"className":"flex flex-wrap items-center gap-3","children":[["$","svg",null,{"ref":"$undefined","xmlns":"http://www.w3.org/2000/svg","width":24,"height":24,"viewBox":"0 0 24 24","fill":"none","stroke":"currentColor","strokeWidth":2,"strokeLinecap":"round","strokeLinejoin":"round","className":"lucide lucide-brain-circuit h-7 w-7 text-cyan-300","aria-hidden":"true","children":[["$","path","l5xja",{"d":"M12 5a3 3 0 1 0-5.997.125 4 4 0 0 0-2.526 5.77 4 4 0 0 0 .556 6.588A4 4 0 1 0 12 18Z"}],["$","path","10igwf",{"d":"M9 13a4.5 4.5 0 0 0 3-4"}],["$","path","105sqy",{"d":"M6.003 5.125A3 3 0 0 0 6.401 6.5"}],["$","path","ql3yin",{"d":"M3.477 10.896a4 4 0 0 1 .585-.396"}],["$","path","2e4loj",{"d":"M6 18a4 4 0 0 1-1.967-.516"}],["$","path","1ku699",{"d":"M12 13h4"}],["$","path","105ag5",{"d":"M12 18h6a2 2 0 0 1 2 2v1"}],["$","path","1lhi5i",{"d":"M12 8h8"}],["$","path","u6izg6",{"d":"M16 8V5a2 2 0 0 1 2-2"}],["$","circle","ry7gng",{"cx":"16","cy":"13","r":".5"}],["$","circle","1aiba7",{"cx":"18","cy":"3","r":".5"}],["$","circle","yhc1fs",{"cx":"20","cy":"21","r":".5"}],["$","circle","1e43v0",{"cx":"20","cy":"8","r":".5"}],"$undefined"]}],["$","h2",null,{"className":"text-3xl font-semibold text-white","children":"Gen AI + Agentic AI"}],["$","span",null,{"className":"inline-flex items-center rounded-full border border-slate-400/35 bg-white/5 px-3 py-1 text-xs text-slate-200","children":"3.5 Months"}]]}],["$","p",null,{"className":"mt-4 text-base text-slate-300","children":"Focused program for learners who want only modern Gen AI implementation and agentic system design."}],["$","div",null,{"className":"mt-4 flex flex-wrap gap-2 text-xs text-slate-200","children":[["$","span","LLMs and Prompt Engineering",{"className":"rounded-full border border-slate-500/35 px-3 py-1","children":"LLMs and Prompt Engineering"}],["$","span","RAG and Vector DB",{"className":"rounded-full border border-slate-500/35 px-3 py-1","children":"RAG and Vector DB"}],["$","span","LangGraph + Multi-Agent",{"className":"rounded-full border border-slate-500/35 px-3 py-1","children":"LangGraph + Multi-Agent"}]]}],["$","h3",null,{"className":"mt-7 text-lg font-semibold text-white","children":"Structured roadmap syllabus"}],["$","div",null,{"className":"relative mt-4 pl-6","children":[["$","span",null,{"className":"absolute left-0 top-0 h-full w-px bg-slate-500/35"}],["$","div",null,{"className":"space-y-4","children":[["$","div","LLM concepts, prompt engineering, evaluation methods",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",1]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"LLM concepts, prompt engineering, evaluation methods"}]]}],["$","div","LangChain pipelines and tool integration",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",2]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"LangChain pipelines and tool integration"}]]}],["$","div","RAG architecture and retrieval strategies",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",3]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"RAG architecture and retrieval strategies"}]]}],["$","div","Vector databases with practical indexing patterns",{"className":"relative","children":["$L12","$L13","$L14"]}],"$L15","$L16"]}]]}],"$L17"]}]]}] d:["$","section","data-analysis-gen-ai",{"className":"panel grid gap-6 rounded-2xl p-6 lg:grid-cols-[0.82fr_1.18fr] lg:items-start","children":[["$","div",null,{"className":"panel-soft relative overflow-hidden rounded-2xl rounded-xl","children":["$","div",null,{"className":"relative aspect-[4/3] w-full","children":["$","$L5",null,{"src":"/images/course-data-analytics-genai.png","alt":"Data Analysis with Gen AI","fill":true,"priority":false,"quality":95,"className":"object-cover","sizes":"(min-width: 1024px) 50vw, 100vw"}]}]}],["$","div",null,{"children":[["$","div",null,{"className":"flex flex-wrap items-center gap-3","children":[["$","svg",null,{"ref":"$undefined","xmlns":"http://www.w3.org/2000/svg","width":24,"height":24,"viewBox":"0 0 24 24","fill":"none","stroke":"currentColor","strokeWidth":2,"strokeLinecap":"round","strokeLinejoin":"round","className":"lucide lucide-chart-line h-7 w-7 text-cyan-300","aria-hidden":"true","children":[["$","path","c24i48",{"d":"M3 3v16a2 2 0 0 0 2 2h16"}],["$","path","2osh9i",{"d":"m19 9-5 5-4-4-3 3"}],"$undefined"]}],["$","h2",null,{"className":"text-3xl font-semibold text-white","children":"Data Analysis with Gen AI"}],["$","span",null,{"className":"inline-flex items-center rounded-full border border-slate-400/35 bg-white/5 px-3 py-1 text-xs text-slate-200","children":"4 Months"}]]}],["$","p",null,{"className":"mt-4 text-base text-slate-300","children":"Business analysis track blending data analytics foundations with Gen AI-powered productivity and reporting workflows."}],["$","div",null,{"className":"mt-4 flex flex-wrap gap-2 text-xs text-slate-200","children":[["$","span","Analytics Foundations",{"className":"rounded-full border border-slate-500/35 px-3 py-1","children":"Analytics Foundations"}],["$","span","Dashboard + Reporting",{"className":"rounded-full border border-slate-500/35 px-3 py-1","children":"Dashboard + Reporting"}],["$","span","Gen AI for Analysis",{"className":"rounded-full border border-slate-500/35 px-3 py-1","children":"Gen AI for Analysis"}]]}],["$","h3",null,{"className":"mt-7 text-lg font-semibold text-white","children":"Structured roadmap syllabus"}],["$","div",null,{"className":"relative mt-4 pl-6","children":[["$","span",null,{"className":"absolute left-0 top-0 h-full w-px bg-slate-500/35"}],["$","div",null,{"className":"space-y-4","children":[["$","div","Python for analysis, SQL, data cleaning and transformation",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",1]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"Python for analysis, SQL, data cleaning and transformation"}]]}],["$","div","Statistics for business insights and decision support",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",2]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"Statistics for business insights and decision support"}]]}],["$","div","Dashboarding and storytelling with real datasets",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",3]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"Dashboarding and storytelling with real datasets"}]]}],["$","div","Using Gen AI for analysis automation and report generation",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",4]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"Using Gen AI for analysis automation and report generation"}]]}],["$","div","Portfolio projects aligned to analyst and BI interview patterns",{"className":"relative","children":["$L18","$L19","$L1a"]}]]}]]}],"$L1b"]}]]}] e:["$","script","script-0",{"src":"/_next/static/chunks/8b0fff29cc980068.js","async":true,"nonce":"$undefined"}] f:["$","$L1c",null,{"children":["$","$1d",null,{"name":"Next.MetadataOutlet","children":"$@1e"}]}] 10:["$","$1","h",{"children":[null,["$","$L1f",null,{"children":"$L20"}],["$","div",null,{"hidden":true,"children":["$","$L21",null,{"children":["$","$1d",null,{"name":"Next.Metadata","children":"$L22"}]}]}],["$","meta",null,{"name":"next-size-adjust","content":""}]]}] 12:["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}] 13:["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",4]}] 14:["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"Vector databases with practical indexing patterns"}] 15:["$","div","LangGraph flows, CrewAI orchestration, and agent memory",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",5]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"LangGraph flows, CrewAI orchestration, and agent memory"}]]}] 16:["$","div","Production deployment and performance monitoring",{"className":"relative","children":[["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}],["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",6]}],["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"Production deployment and performance monitoring"}]]}] 17:["$","div",null,{"className":"mt-6","children":["$","a",null,{"href":"https://docs.google.com/forms/d/e/1FAIpQLSdXtHGJ7EhunhZS9FW3G3IiwYWay50kOuEqygKi6Cx2nZX3Ug/viewform?usp=publish-editor","target":"_blank","rel":"noopener noreferrer","className":"primary-cta subtle-lift inline-flex items-center justify-center rounded-lg px-5 py-3 text-sm font-semibold text-white shadow-[0_10px_28px_rgba(124,58,237,0.35)]","children":"Enquiry for this course"}]}] 18:["$","span",null,{"className":"absolute -left-[29px] top-1.5 h-3 w-3 rounded-full bg-cyan-300"}] 19:["$","p",null,{"className":"text-sm font-semibold text-white","children":["Step ",5]}] 1a:["$","p",null,{"className":"mt-1 text-sm text-slate-300","children":"Portfolio projects aligned to analyst and BI interview patterns"}] 1b:["$","div",null,{"className":"mt-6","children":["$","a",null,{"href":"https://docs.google.com/forms/d/e/1FAIpQLSdXtHGJ7EhunhZS9FW3G3IiwYWay50kOuEqygKi6Cx2nZX3Ug/viewform?usp=publish-editor","target":"_blank","rel":"noopener noreferrer","className":"primary-cta subtle-lift inline-flex items-center justify-center rounded-lg px-5 py-3 text-sm font-semibold text-white shadow-[0_10px_28px_rgba(124,58,237,0.35)]","children":"Enquiry for this course"}]}] 20:[["$","meta","0",{"charSet":"utf-8"}],["$","meta","1",{"name":"viewport","content":"width=device-width, initial-scale=1"}]] 23:I[27201,["/_next/static/chunks/ff1a16fafef87110.js","/_next/static/chunks/a2dfb6fc5208ab9b.js"],"IconMark"] 1e:null 22:[["$","title","0",{"children":"Courses | Code Gemini Pune | Code Gemini Pune"}],["$","meta","1",{"name":"description","content":"Detailed course syllabus for Full Stack Data Science + Gen AI, Gen AI + Agentic AI, and Data Analysis with Gen AI."}],["$","meta","2",{"name":"keywords","content":"Code Gemini Pune,best data science course in pune,data science training pune,data analytics course pune,data anlsytics course pune,gen ai course pune,agentic ai course in pune,master agentic ai and gen ai,placement in pune,internship in pune,data science coaching in pune,data science course karve nagar"}],["$","link","3",{"rel":"canonical","href":"https://codegeminipune.com"}],["$","meta","4",{"property":"og:title","content":"Code Gemini Pune"}],["$","meta","5",{"property":"og:description","content":"We do not promise jobs. We build top 1% candidates companies want."}],["$","meta","6",{"property":"og:url","content":"https://codegeminipune.com"}],["$","meta","7",{"property":"og:type","content":"website"}],["$","meta","8",{"name":"twitter:card","content":"summary"}],["$","meta","9",{"name":"twitter:title","content":"Code Gemini Pune"}],["$","meta","10",{"name":"twitter:description","content":"We do not promise jobs. We build top 1% candidates companies want."}],["$","link","11",{"rel":"icon","href":"/favicon.ico?favicon.0b3bf435.ico","sizes":"256x256","type":"image/x-icon"}],["$","$L23","12",{}]]