Learning Library

← Back to Library

Video 24Ki4Ck4Y2E

Full Transcript

# Video 24Ki4Ck4Y2E **Source:** [https://www.youtube.com/watch?v=24Ki4Ck4Y2E](https://www.youtube.com/watch?v=24Ki4Ck4Y2E) **Duration:** 00:07:45 ## Sections - [00:00:00](https://www.youtube.com/watch?v=24Ki4Ck4Y2E&t=0s) **Untitled Section** - ## Full Transcript
0:00hi i'm william rondon cloud advocate 0:02with ibm 0:03and how many times have you called in to 0:05your customer service agent given them 0:07all your information like your name date 0:09of birth account number and then once 0:12you tell them your actual problem they 0:14transfer you to another agent who then 0:16asks you the same exact questions can 0:18you give me your name date of birth 0:19account number like if that first 0:21conversation had never really happened 0:24well this is an example of poor 0:27data governance 0:35and highlights how the inefficient 0:37sharing of data and permissions in a 0:39company can have an impact on you as a 0:41customer 0:42so let's take a look at that customer 0:44service example and put it in the 0:46context of a bank and think about how 0:49that information got into the hands of 0:51the customer service agent in the first 0:53place 0:53and it all starts with a central 0:56repository 0:58for data 1:00and this central repository has all 1:01different types of data flowing into it 1:04from the website or the mobile app where 1:07you as the customer fill out information 1:09so from the central repository we can 1:11have different types of information 1:12being filled out by you as a customer 1:15some of it can be non-confidential like 1:18your name 1:21or your address 1:26while some of it can be confidential 1:27information that you don't want shared 1:29like your 1:30social security number 1:33or your account number 1:38data governance is about protecting this 1:40information 1:41because it doesn't just stay here it 1:42flows to other departments so going back 1:45to that example it can flow to 1:47the customer service department 1:55or 1:56the 1:59marketing department 2:05or the loans department 2:07and so on 2:09so 2:10going back to data governance it's about 2:12allowing the sharing of this information 2:15from that central repository to 2:17different departments without exposing 2:20important information from you as a 2:22customer 2:23and one of the ways that we can do this 2:25in an automated fashion is through a 2:27data governance framework 2:37this framework has three main components 2:40the first being 2:42a policy 2:45the second being rules to implement this 2:48policy 2:51and then the third component being 2:53classification 2:55of these rules 3:00so let's break down each of these pieces 3:03through this customer service example 3:05the first being the policy right if this 3:07was a bank they would either have an 3:09internal data protection policy they're 3:11trying to put in place or be following a 3:13national guideline like gdpr 3:18and this data policy can then be further 3:21broken down into rules specific rules 3:24that make this policy whole and the two 3:26main types of rules are 3:28data protection rules which 3:30you may have heard about 3:34and governance rules 3:41so data protection rules pertain to a 3:43specific type of data asset so going 3:46back to this example here you could set 3:49a data protection rule specifically tied 3:51to social security numbers and censor 3:54how it moves throughout an organization 3:56on the other hand you can use a 3:58governance rule and set it up as a 4:00written description of how to handle 4:02data so i could write up a paragraph 4:04explaining how the customer service 4:06department uses this data or the 4:08marketing department or the loans 4:11so once you have these rules in place 4:13you then want to classify the data 4:16that's flowing into the organization 4:19and two ways to classify this data are 4:21through 4:22business terms 4:30or 4:31data classes 4:36and they can work together but just to 4:38break them apart here let's talk about 4:40business terms 4:41business terms can be thought of as the 4:43language through which data is 4:45interpreted in your organization 4:47so let's say we want to understand 4:49utilization rate for our mobile app for 4:52each of these departments 4:53but utilization rate is being measured 4:56by months in customer service and then 4:58days in marketing and loans 5:00so what we can do is set up a business 5:03term 5:04and call it util for utilization rate 5:07and describe how it's measured so i can 5:10say utilization rate is measured in days 5:12throughout each of these departments and 5:14in that way i standardize how that data 5:16asset is measured between departments 5:19now the other way to measure these data 5:22sources and data assets is through data 5:24classes 5:25and we can understand data classes 5:27through metadata 5:33and metadata 5:35tells you a summary of what's inside of 5:37a data source 5:39so let's say i'm putting in a bunch of 5:42spreadsheets into 5:44my bank and i want to understand what's 5:46in these spreadsheets without actually 5:48opening them well the meta the metadata 5:51of this spreadsheet would tell me how 5:53many rows it has how many columns it has 5:55and when it was made and it can also 5:57specifically tell me what's inside of 5:59that row by title so i can understand if 6:02there's an account number in that row 6:04and center that account number 6:05throughout the movement of that document 6:07throughout the organization 6:09so 6:10with this framework in place with the 6:12right policy rules and classification in 6:14place 6:15i have 6:16the base of my framework 6:18that can be automated through reference 6:20data 6:24which is another word for 6:26code 6:28that i can implement throughout this 6:30architecture and automate the movement 6:32of data throughout 6:35but ultimately we want to tie it back to 6:37the customer service example that i 6:38talked about earlier 6:40so if i had my customer service agent 6:42accessing the same information but i had 6:44a data framework in place i could set a 6:47policy for that customer service agent 6:49to follow that breaks down specific 6:51rules of that data protection movement 6:53or of that data asset movement and 6:55further classify that data asset so the 6:57right customer service agent has the 6:59right data at the right time without 7:01exposing account numbers or social 7:04security numbers throughout 7:07but ultimately this is just one example 7:09of data governance and there's a lot of 7:11different examples that may apply to 7:12your organization 7:14so feel free to leave a comment below 7:16and we can answer how data governance 7:18applies in that example 7:20another way data governance is 7:21implemented is through data fabric so if 7:23you're interested in data fabric and how 7:25it can operationalize this framework 7:27throughout your organization check out 7:29some of our videos 7:31and overall if you're interested in 7:32technology feel free to subscribe to the 7:34channel so you can learn more about how 7:36technology and ibm can help you achieve 7:38your goals today and tomorrow 7:40so thank you for watching and i look 7:42forward to seeing you in the next video