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DeepSeek R1 AI: Yeni başlayanlar için 25 AI projesi
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DeepSeek R1 AI: Yeni başlayanlar için 25 AI projesi

Udemy Instructor
4.8(3.0K students)
Self-paced
All Levels

About this course

DeepSeek AI'nin Gücünü Keşfedin: 25 Uygulamalı Proje ile Yapay Zeka GeliştirmeDeepSeek AI kullanarak gerçek dünya yapay zeka uygulamaları geliştirmeye hazır mısınız? Bu kurs, sizi başlangıç seviyesinden ileri düzeye taşıyacak şekilde tasarlanmıştır. Doğal Dil İşleme (NLP), sohbet botları, otomasyon ve yapay zeka destekli uygulamalara odaklanır—üstelik bulut servislerine ihtiyaç duymadan!DeepSeek AI, açık kaynaklı ve güçlü bir yapay zeka modelidir.

Geliştiricilere, ileri düzey otomasyon, metin üretimi ve NLP görevlerini yerel olarak gerçekleştirme olanağı sunar. Bu kursta, 25 gerçek dünya projesi geliştirerek iş, verimlilik, otomasyon ve yazılım geliştirme alanlarında uygulamalı deneyim kazanacaksınız.Bu Kursta Neler Öğreneceksiniz?Kurs sonunda şunları yapabileceksiniz:DeepSeek AI'yi yerel bilgisayarınıza kurmak ve yapılandırmak.Özetleme, dil bilgisi düzeltme, duygu analizi gibi metin işleme uygulamaları geliştirmek.Müşteri hizmetleri, e-ticaret ve kişisel verimlilik için akıllı sohbet botları ve sanal asistanlar oluşturmak.E-posta yazma, özgeçmiş oluşturma, belge özetleme gibi günlük görevleri yapay zekayla otomatikleştirmek.Kod tamamlama, hata ayıklama, SQL üretimi gibi yapay zekâ tabanlı yazılım araçlarını uygulamak.Modelleri yerel çalışma için optimize ederek performans artırmak.Finansal analiz, iş başvurusu eleme ve müşteri geri bildirimi gibi iş senaryoları için uygulamalar geliştirmek.Python ile NLP ve yapay zekâ destekli otomasyon konusunda uygulamalı deneyim kazanmak.Bulut tabanlı API’lere ihtiyaç duymadan gerçek projeler üzerinde çalışmak.Bu Kurs Kimler İçin Uygun?Kurs şu kişiler için idealdir:Uygulamalarına yapay zeka eklemek isteyen Python geliştiricileri.NLP ve yapay zekâya yeni başlayanlar ve uygulamalı deneyim kazanmak isteyenler.Metin işleme üzerine yapay zekâ modellerini araştıran veri bilimcileri.Yapay zeka destekli otomasyon araçları geliştirmek isteyen teknoloji profesyonelleri.Yapay zeka odaklı ürünler geliştiren girişimciler ve startup kurucuları.Bulut hizmetlerine bağlı kalmadan projeler geliştiren öğrenciler ve araştırmacılar.Kurs Proje ÖzetiBu kurs aşağıdaki alanlarda 25 uygulamalı proje içerir:Yapay Zekâ ile Metin İşleme – Özetleme, duygu analizi ve metin üretimi.Sohbet Botları ve Sanal Asistanlar – Akıllı asistanlar geliştirme.Otomasyon – E-posta yanıtlayıcıları, CV oluşturucular, iş akışı otomasyonu.Geliştiriciler için AI – Kod tamamlama, hata ayıklama, API test araçları.İş ve Verimlilik için AI – Finansal analiz, aday eleme, müşteri geri bildirimleri.Bu Kurs Neden Alınmalı?Gerçek projelerle uygulamalı yapay zeka deneyimi kazanırsınız.Bulut bağımlılığı yok – her şey yerel çalışır!Adım adım anlatım ve tam kod örnekleriyle ilerlenir.NLP, otomasyon, sohbet botları ve daha fazlasını kapsar.Geliştiriciler, öğrenciler ve yapay zeka meraklıları için mükemmel.Yapay Zeka Destekli Uygulamalar Geliştirmeye Bugün Başlayın!Hemen katılın ve DeepSeek AI’nin gücünü 25 pratik, gerçek dünya projesiyle açığa çıkarın!

Skills you'll gain

Data ScienceTurkish

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Level: All Levels

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Duration: Self-paced

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