Let's discuss data models & benefits of having solid data models.
One of a data analyst's key responsibilities is building a strong data model.
The term "Data Model" refers to the process of arranging data into tables based on relationships & groups...
...to minimize duplication and maximize efficiency.
By performing this task properly, you contribute to making it simpler for people to comprehend your data, which will make it simpler for both you and them to create useful reports and dashboards.
It is challenging to provide a set of guidelines for what constitutes a good data model because every piece of data is unique and is used in different ways.
A smaller data model is preferable because it will operate more quickly and be easier to use.
However, because a smaller data model is a heuristic and subjective idea, describing what it involves is as challenging.
Consider using Measures more as New (calculated) Columns add to the file size. Consider not loading tables you won’t be using to build your reports etc.
A good data model offers the following benefits:
•Data exploration is faster.
•Aggregations are simpler to build.
•Reports are more accurate.
•Writing reports takes less time.
•Reports are easier to maintain in the future.
I know how difficult it can be to ask the right questions that will generate the key insights you need to solve a problem or make a data-driven decision.
Here are 20 key questions to help you understand and solve problems with data.
1. Why was I asked to review this? – Problem Statement/Purpose
2. What does the product/process do? – Domain knowledge
3. Where are we now? – Actual Performance
4. Where should we have been? – Plan/budget
5. Did we achieve what we planned to achieve? – Variance Analysis
6. Why did we not achieve what we planned to achieve? – Root cause analysis
7. Where are the gaps in our process/strategy? – Gap Analysis
8. What did we not consider before? – Gap Analysis
9. What has changed within this period? – Trend Analysis
You know how frustrating change of requirements from stakeholders can be.
Besides following a clear change management process, developing mental agility will boost your efficiency and overall productivity.
What is mental agility?
Mental agility is the ability to think and apply insights quickly from one context to another.
In simpler terms, it is how well your mind can quickly adjust to new conditions/ideas.
Thankfully, your mental agility can be improved.
Use these 5 simple ways to get started.
1. Be curious. Ask “Why” & “What If”. 2. Read, observe & listen. Read widely & learn to listen to understand not to reply. 3. Be less defensive. Have an open mind. 4. Schedule time to meditate & think. 5. Gain domain knowledge. This helps to understand other possible use cases.
A soft skill you should develop is problem-solving.
How do one solve a problem if one can’t identify the root cause?
There are many root cause analysis tools. In this thread, I have shared my 3 favourite ways of identifying the root cause of a problem.
1. 5 WHYs: Asking “Why” multiple times to drilldown to the root cause of the problem. Recall diagnostic analytics.
E.g. Manchester United lost again last week 😭. Why? The players were uncoordinated, and defense was weak. Why?... Why?...
2. By asking the question “When does it happen and when does it not happen?”
E.g. I can’t make a call with my phone.
Can I make a call when I insert my SIM in another device? If yes, that means the fault is from my phone and not the network provider.
Your visuals should convey messages to users in an effective & efficient way.
Try to strike a balance btw creating a beautiful visual & having an informative visual.
Thread contains recommendations 4 some use cases.
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1. Changes over time. E.g. Last month, you entered a supermarket and saw someone screaming “God abeg” and you ask your data analyst friend… “What was Nigeria’s headline inflation from Jan – Jun 2022?”
Need: To display changing TREND of measures (prices).
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Changes over time (contd.)
Recommendations: Line chart (my favourite), Area chart, Sparkline by OKViz, Card with States by OKViz, you could also try a combination of column chart and line chart if you have different sets of values.
1. Descriptive Analytics: Answers questions about what has happened. E.g. Man Utd lost to Brighton last weekend. The match ended 1-2 in favour of Brighton.
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2. Diagnostic Analytics: Helps answer questions about why things happened. E.g. Man Utd lost the game because the players made mistakes on the ball & organisation mistakes in defending.
2/5
3. Predictive analytics: Helps answer questions about what will happen in the future. E.g. Despite the first loss, current issues in the dressing room & with the quality of players and coaching, Man Utd will finish top 4 in this season’s EPL.
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