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Dependent Variable

Dependent Variable

By Dependent Variable

Making Data Science tick! Join us (Cate, Mariam, Anthony and Victor + a guest) as we talk, rant and joke about BIG & wild ideas that are driven by the 'Almighty Data'. We hold ourselves to no limit here, so we share stories and strong opinions about great Data-driven projects happening in Africa, what we are missing and should have had yesterday but most important, always leave you inspired and challenged to dream Big and act on your ideas so we can all better society😎.
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Ssn2 Episode 2: Practising Data Science in different sectors with Miles Obare from Microsoft

Dependent VariableJan 07, 2020

00:00
51:36
Ssn2 Episode 2: Practising Data Science in different sectors with Miles Obare from Microsoft

Ssn2 Episode 2: Practising Data Science in different sectors with Miles Obare from Microsoft

Twitter handles: Miles: @bdhobare, Cate: @categitau_, Mariam: @MamuAhmed, Anthony: @Sirodhis, Victor: @somonimochengo

Data science has gained quite some popularity in the past 5 years. But do we really understand it's many components and how they join together? Or do we understand it's practicality in different sectors, is it applied universally? In this episode Mariam Haji, Anthony Odhiambo, and Victor Mochengo have a chat with Miles Obare who has had a taste of practically applying data science in diverse sectors. We touch on:

1) Getting into and settling in a Fortune 500 company

2) Staying agile and transitioning as data science in multiple sectors

3) Being a relatively new role, what does a 'Head of Data Science' really do?

4) Differentiating a good data professional and a really really good kick-ass data professional

5) Using data as a strategic lever in different sectors; cash is still king!

6) Incorporating machine learning in to a data product & setting up the right feedback loops

7) Democratization of artificial intelligence and its practical super powers

8) What to expect after deploying models in to production

9) The most significant gaps in data tools

10) Miscommunication and expectation management in data science

Jan 07, 202051:36
Ssn2 Episode 1: Effective and viable Data engineering with Batatunde Ekemode from Africa's Talking

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

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

Sep 27, 201901:09:32
Episode 7: Using AI to scale up Fintech with Andrew Mutua from PesaKit

Episode 7: Using AI to scale up Fintech with Andrew Mutua from PesaKit

M-Pesa as a product is now 12 years old. If it were a child, it would be a preteen eager to dare the world, be rebellious and make its presence known everywhere. M-Pesa has put Kenya on the global map among fintech pioneers. But there is a lot more going on in the fintech space in Kenya and Sub-Saharan Africa. Yet, in Kenya fintech that has scaled, to large extent is synonymous with mobile money and more so M-Pesa and its ever-growing ecosystem.
In this episode, the team (Cate, Anthony and Victor) sit down with Andrew Mutua from PesaKit ( http://pesakit.co.ke/, twitter: @PesaKit_AI ) to have a discussion on how they are using AI to scale up fintech products for mobile money agents and the last mile of financial distribution.

We get to talk about:
1) The evolution of Fintech in Kenya
2) PesaKit's last-mile agent network platform and how they are providing Digital and Human Interactions to accelerate financial inclusion and how to make agents efficient and profitable.
3) Practical and ideal guide to building an AI infused fintech product. What does an ideal team look like? What timelines are realistic in building it? What iterations should you expect?
4) Cracking the local tech market with products that actually work. How to evaluate your idea and litmus test it properly with local context.
5) Sales and marketing - a big blocker Kenyan techpreneurs face when trying to secure investment and how to overcome it.
Jun 18, 201901:01:28
Episode 6: Building Data Science Capacity in Kenya with Shelmith Kariuki & Victor Mutua

Episode 6: Building Data Science Capacity in Kenya with Shelmith Kariuki & Victor Mutua

An article in the Harvard Business Review in 2012 declared 'Data scientist' as the sexiest job of the 21st century. Shortly after, a lot of) to have a discussion on scaling and building data science capacity in Kenya. ,instinctively as the right career choice based on interest or out of fanatical pursuits from the media focus on data science. It's alright, we are all sailing in this ship and it's going somewhere, may be to the data Valhalla!

In this episode, the team (Cate, Anthony and Victor) sit down with Victor Mutua & Shelmith Kariuki from Zukademy ( http://www.zukademy.com/) to have a discussion on scaling and building data science capacity in Kenya.

We get to talk about:

1) The current state of Data science in Kenya and the general level of skill in the Kenyan scene

2) The level of awareness by capital mobilizers i.e. company executives and shareholders on data science and its importance. Is there a clear and expected ROI on data science?

3) Managing expectations during this "data is the new gold" era. Are data scientists really the magicians they are perceived to be?

4) Affordably building effective data skills with local context. The advantages to still having a face-to-face tutor operating in the same market as you.

5) An insider hint on what to focus on as you build your skills and how to stay connected with the rapid changes happening in the industry

May 19, 201938:11
Episode 5: How Data Science is shaping the future of Human Resource (HR) with Jessica Colaco & Daniele Orner

Episode 5: How Data Science is shaping the future of Human Resource (HR) with Jessica Colaco & Daniele Orner

Almost any job you apply to today is done digitally. Some companies still fancy direct emails but a growing number are automating their HR services to deal with repetitive processes. But is this an ideal solution, does it favour only excellent communicators and is there potential for bias from pooling applicants in to different buckets even before having a look at their CV? What does the future look like in how HR services will be organised in the age of deepening data analytics?

In this episode, the team (Cate, Anthony and Victor) sit down with Jessica Colaco & Daniele Orner from Brave Venture Labs (https://brave.careers/) to have a discussion on how the evolution of analytics is shaping HR services to build a company that takes care of all stakeholders. We get to talk about:

1) Broadly understanding how HR services are set up in Kenya and East Africa relative to Europe

2) Does the HR system as set up only favour employers and how can we improve the employer-talent relationship?

3) How Brave uses advanced diagnostics to find ideal matches between companies and talent

4) Will bots replace HR professionals?

5) The case for algorithmic bias and how likely is it to affect HR services. How explainability could be a good systematic fix to potential bias

6)  What kind of data about you are recruiters looking for and the smarter way to get a job

7) What are the advantages of using artificial intelligence for HR services?

8) An insider hint on the skills you need to be a good techie or data scientist

9) The challenges an AI focused company operating in Kenya faces

10) How HR professionals can up their tech game and the x-factor that Brave brings to ensure maximised benefit for both companies and talent

Feb 14, 201950:16
Episode 4: Autonomous/Driverless cars in Kenya! (with Wilfred Githuka)

Episode 4: Autonomous/Driverless cars in Kenya! (with Wilfred Githuka)

Will self-driving cars beat our bodaboda (motorcycle taxis) and matatu (van taxis) madness? Whether you call them autonomous, driverless or self-driving cars, they are the new face of mobility disruption. And there are Kenyans, Wilfred Githuka among them who want to be counted among contributors to this change.


In this episode (Cate, Anthony, Wilfred Githuka and I) we touch on:
1) Knowing Wilfred Githuka and understanding his curiosity around destroying things so he can fix them!
2) His China motivation from living there and how patriotism builds markets
3) A car is a moving computer. But how well does Kenya's motor vehicle industry understand this? Also, cars have slowly evolved towards autonomy we just haven't realized it
4) The justification for self-driving cars in Africa and how it will unravel. Hint: It's already started in warehouses.
5) How does an autonomous vehicle think, work and function.
6) The ethics of autonomous vehicles. The legal and economic conundrum behind AI & the natural human reaction of fear for things seemingly out of our control.
7) A journey of passion to building autonomous things e.g a vehicle! Find out how video games are finally validated as important.
8) How matatus are playing a role in making autonomy happen. Are bodabodas going to make it easy for self driving cars?
9) The skills, tech stack and technology products you need to get started on building an autonomy economy.
10) Funding research in a way that grows the economy. The drastic measures we need to make to push our economy towards a production economy. 

Reach out to Wilfred directly: wilfred.gachugi@gmail.com OR github.com/wilfredgithuka

Dec 21, 201801:07:31
Episode 3: Digital Marketing at Google (with Clinton Obura)

Episode 3: Digital Marketing at Google (with Clinton Obura)

Episode 3 with Catherine Gitau, Anthony Odhiambo, Clinton Obura & Victor Mochengo is out! One of the main reasons we do this podcast is to challenge African enterprises to think BIG on how they could scale their operations and markets. In this episode we talk about BIG ideas that are being implemented TODAY and also touch on: 1) How difficult it is to sell #dataproducts especially because their value is not readily understood 2) From Kabarak University to Google EU hq! Dealing with impostor syndrome & seeing the future way ahead 3) The purity in #customerintent driven by data products 4) How local companies view #datadriven #technology 5) Why #Marketing heads need to broaden their perspective #digitalmarketing & how to extract value from it 6) Consumers are going #digital fast but the money not so fast, what consumer patterns are shaping up and what a digital #ROI looks like. 7) The privacy conundrum! #GDPR is not a Kenyan (or African) policy but will it influence what will govern us? Hint: #GDPR is a good thing😎 8) The pitch to sell data products i.e #digitalmarketing, #Cloud, #Automl. We give examples of what kind of business problems can be solved using #machinelearning Today 9) What stands in the way of African businesses becoming truly #datadriven? 10) The recipe to solve the #DataScience #talent problem in Africa
Nov 30, 201859:29
Episode 2: Developing Data Products at Safaricom(with Nicholas Loki)

Episode 2: Developing Data Products at Safaricom(with Nicholas Loki)

Second episode of the Dependent Variable podcast is out🗣️. We had an amazing chat with Nicholas Loki, Senior Software Engineer & Data Scientist at Safaricom PLC about the early days of #DataScience in corporate Kenya. In this episode Catherine Gitau, Anthony Odhiambo, Nicholas Loki & Victor Mochengo: 1) Define #bigdata and why #Safaricom is a #bigdata company. 2) How is #Safaricom using Data Science today; from research to building products to customer results. 3) How Loki evolved from being in the 1st IT class at JKUAT! to software engineering and now Data science. 4) How Kenya's tech scene has evolved from the 1990s. 5) Mind over matter; never giving up. Loki did IT but got his first tech job 8 years after graduating. 6) Will your 'Data Science guy' replace your 'IT guy'? 7) What is hashtag#Bonga? What is #DeepMpesaIntegration? Why #Bonga is important. 8) Can launching a product be a Data Science problem? Truly adopting a #datadriven approach. 9) Short code #SmsSpamming & what #Safaricom is doing about it. 10) Why companies should invest in building in-house Data Science teams.
Nov 30, 201801:06:04
Pilot: A warm Introduction to the Dependent Variable Podcast

Pilot: A warm Introduction to the Dependent Variable Podcast

Catherine Gitau, Anthony Odhiambo & Victor Mochengo sat down for a casual conversation on what practical Data Science looks like in Kenya. This episode is for anyone interested in Data Science, works with data or is concerned with using Data as capital. Top 10 things we cover: 1) The buzzwords and jargons! Differentiate #datascience (DS), #machinelearning, #artificialintelligence, #bigdata etc 2)What companies are actively using hashtag#datascience in Kenya? 3)Are local companies DS ready? 4) How long should companies wait to expect reasonable return on their investment in DS? 5) Is there high demand for datascientists in Kenya? What does an ideal DS team look like? 6) Are data geeks well compensated in Kenya? 7) Conventional vs unconventional ways someone can get started? 8) What peer communities can Kenyan datascientists join? 9) What does a typical data science project look like? Challenges? 10) What interesting datascience projects have caught our eyes?
Nov 30, 201801:08:23