Artwork

Kandungan disediakan oleh Dependent Variable. Semua kandungan podcast termasuk episod, grafik dan perihalan podcast dimuat naik dan disediakan terus oleh Dependent Variable atau rakan kongsi platform podcast mereka. Jika anda percaya seseorang menggunakan karya berhak cipta anda tanpa kebenaran anda, anda boleh mengikuti proses yang digariskan di sini https://ms.player.fm/legal.
Player FM - Aplikasi Podcast
Pergi ke luar talian dengan aplikasi Player FM !

Ssn2 Episode 1: Effective and viable Data engineering with Batatunde Ekemode from Africa's Talking

1:09:32
 
Kongsi
 

Manage episode 348545557 series 3104198
Kandungan disediakan oleh Dependent Variable. Semua kandungan podcast termasuk episod, grafik dan perihalan podcast dimuat naik dan disediakan terus oleh Dependent Variable atau rakan kongsi platform podcast mereka. Jika anda percaya seseorang menggunakan karya berhak cipta anda tanpa kebenaran anda, anda boleh mengikuti proses yang digariskan di sini https://ms.player.fm/legal.

Data engineering has recently stood out as a differentiating factor for effective and commercially viable Data science practice in companies gearing up for scale. Data engineering is without a doubt the most important cog that keeps the data science wheel moving. Yet, being practical and effective in this sub-field of data science remains quite demanding owing to the steep learning curve it is associated with and it's associated expenses. That is why is this episode, an analytics lead and accomplished data engineer Babatunde Ekemode, Cate Gitau, Anthony Odhiambo, and Victor Mochengo sat down and touched on:

1) Quick roundup of Deep Learning Indaba

2) What does a data engineer really do & how does s/he add commercial value to a business?

3) Differentiating a data engineer, data analyst and data scientist and the case of data ninjas who can do it all!

4) In what order to recruit data professionals? Data engineer, analyst or scientist who comes first? Do software engineers make better transitions to data engineering?

5) How to monetize data skills and establish a clear Return On Investment case for data & data engineering

6) Knowledge stack that makes a good data engineer

7) What's a data engineer's work toolkit and process flow like? Deliberately setting up quality data processes in line with domain expertise

8) Setting up cost effective data architectures and choosing the right tools

9) Challenges in data engineering and how to mitigate them

10) How is data engineering shaping up over the next 5 years

  continue reading

9 episod

Artwork
iconKongsi
 
Manage episode 348545557 series 3104198
Kandungan disediakan oleh Dependent Variable. Semua kandungan podcast termasuk episod, grafik dan perihalan podcast dimuat naik dan disediakan terus oleh Dependent Variable atau rakan kongsi platform podcast mereka. Jika anda percaya seseorang menggunakan karya berhak cipta anda tanpa kebenaran anda, anda boleh mengikuti proses yang digariskan di sini https://ms.player.fm/legal.

Data engineering has recently stood out as a differentiating factor for effective and commercially viable Data science practice in companies gearing up for scale. Data engineering is without a doubt the most important cog that keeps the data science wheel moving. Yet, being practical and effective in this sub-field of data science remains quite demanding owing to the steep learning curve it is associated with and it's associated expenses. That is why is this episode, an analytics lead and accomplished data engineer Babatunde Ekemode, Cate Gitau, Anthony Odhiambo, and Victor Mochengo sat down and touched on:

1) Quick roundup of Deep Learning Indaba

2) What does a data engineer really do & how does s/he add commercial value to a business?

3) Differentiating a data engineer, data analyst and data scientist and the case of data ninjas who can do it all!

4) In what order to recruit data professionals? Data engineer, analyst or scientist who comes first? Do software engineers make better transitions to data engineering?

5) How to monetize data skills and establish a clear Return On Investment case for data & data engineering

6) Knowledge stack that makes a good data engineer

7) What's a data engineer's work toolkit and process flow like? Deliberately setting up quality data processes in line with domain expertise

8) Setting up cost effective data architectures and choosing the right tools

9) Challenges in data engineering and how to mitigate them

10) How is data engineering shaping up over the next 5 years

  continue reading

9 episod

Semua episod

×
 
Loading …

Selamat datang ke Player FM

Player FM mengimbas laman-laman web bagi podcast berkualiti tinggi untuk anda nikmati sekarang. Ia merupakan aplikasi podcast terbaik dan berfungsi untuk Android, iPhone, dan web. Daftar untuk melaraskan langganan merentasi peranti.

 

Panduan Rujukan Pantas

Podcast Teratas
Dengar rancangan ini semasa anda meneroka
Main