Oct 6, 2025
Oct 16, 2024
Microsoft Fabric
Create a Data Flow
Create your first Microsoft Fabric dataflow - Microsoft Fabric | Microsoft Learn
Getting Started with Dataflows and Pipelines (youtube.com)
Create a data pipeline
Create your first data pipeline to copy data - Microsoft Fabric | Microsoft Learn
Process Excellence Explainer (youtube.com)
Extract data By Example using Dataflows (youtube.com)
Microsoft Fabric API for GraphQL overview - Microsoft Fabric | Microsoft Learn
What is Microsoft Fabric - Microsoft Fabric | Microsoft Learn
Jun 25, 2024
Data Warehouse
What is DATA MODELLING?
Data Modelling or Data
Architecture or Dimension Modelling is nothing but creating a blueprint for how
data will be organized and stored in the data warehouse. This process involves
identifying the entities, attributes, and relationships between entities in the
data, and then designing tables and views to represent them. We can model the
data by two techniques i.e.,
1. Star Schema
2. Snowflake Schema
Before jumping into these, we
need to understand what is dimension table and what is fact table?
DIMENSION TABLE-
A table which stores descriptive
attribute, is non- measurable and categorical in nature is called a dimension
table.
FACT TABLE-
A fact table is a central table
that stores measurable, aggregate, quantitative or factual data about a
particular subject area.
Example-
Consider an E-Commerce
application, which will have attributes like
Products, Sales, Tax, Customer,
Discount.
For above scenario, Products
could behave as Dimension table.
And Sales could behave as Fact
table.
STAR SCHEMA-
In the previous diagram, the
fact table is in the center and the dimension table is in a relationship with
it which makes a star like structure hence, this is called the star schema.
SNOWFLAKE SCHEMA-
Snowflake schema is a variation
of the star schema that uses multiple layers of dimension tables. This can be
useful for complex data relationships.
Standard naming convention-
● A common prefix for fact
tables is "FACT_" or "FT_". This prefix helps
distinguish fact tables from
dimension tables.
Eg- fact_Sales or fact_Tax
● A common prefix for dimension
tables is "DIM_" or "D_". This prefix helps
distinguish dimension tables
from fact tables.
Eg- dim_Products, dim_Customers
or dim_Discounts
Types of Fact Table-
1. Transaction fact tables:
Theystore detailed information about individual business transactions or
events. They record every occurrence at the most granular level, providing a
comprehensive view of operational data.
2. Periodic snapshot tables:
Periodic snapshot tables provide a summarized view of metrics over regular time
intervals. They store aggregated data at a specific point in time, such as the
end of a day, week, or month.
3. Accumulating snapshot tables:
Accumulating snapshot tables track the stages of a business process or
workflow. They store data at specific
checkpoints within a process,
providing a detailed view of how the process unfolds over time.
Types of Dimension Table-
● Slowly Changing Dimension
(SCD) Tables: It store information that rarely changes over time. They
typically contain master data or lookup information, such as product codes,
customer IDs, or geographic codes. There are four
main types of SCD tables:
a. SCD Type 0: Static and does
not changes.
b. SCD Type 1: Overwrite the
previous field, doesn’t keep history.
c. SCD Type 2: Add a new history
table.
d. SCD Type 3: Add a new column
to keep history.
● Conformed Dimension Tables:
Conformed dimension tables are
standardized dimension tables
that are shared across multiple fact tables or subject areas.
● Degenerate Dimension Tables:
Degenerate dimension tables are dimension tables that are embedded within fact
tables.
● Junk Dimension Tables: Junk
dimension tables are used to group together disparate dimension attributes that
do not fit neatly into other dimension tables as they have low cardinality.
● Role Playing Dimension: They
are a type of dimension table that can
assume different meanings or
roles depending on the context of the analysis. They are often used to
represent entities that can play multiple roles in a business process.
● Static Dimension Table: Static
dimension tables are a type of table that
stores descriptive attribute
data that does not change over time.
● Shrunken Dimension Tables:
Shrunken dimension tables are dimension tables that contain a subset of the
attributes from a larger dimension table.
Sep 22, 2023
Bitcoin Halving
Bitcoin halving is a significant event on the Bitcoin network every four years. During this event, the block reward that miners receive for verifying transactions and adding new blocks to the blockchain is reduced by 50%. This means that the rate of new Bitcoin creation slows down, and the total supply of Bitcoin approaches its maximum limit of 21 million.
Bitcoin halving is a programmed event and is built into the Bitcoin protocol to ensure that the inflation rate of Bitcoin remains controlled and predictable. The reduced rate of new Bitcoin creation and the expectation of scarcity can increase the value of Bitcoin, which has historically led to an increase in the asset's price in the months leading up to a halving event.
Despite this, the market can be unpredictable, and the impact of halving Bitcoin's price is not guaranteed. However, the reduced supply of Bitcoin resulting from halving helps to maintain its value and ensure that it remains a finite and scarce asset.
The previous Bitcoin halving occurred on May 11, 2020, at a block height of 630,000. At that time, the block reward for miners was reduced from 12.5 BTC to 6.25 BTC per block. This was the third halving event in Bitcoin's history, following the first halving in November 2012 and the second halving in July 2016. The next Bitcoin halving is expected to occur in march 2024, at which point the block reward will be reduced from 6.25 BTC to 3.125 BTC per block.
After the first Bitcoin halving in November 2012, the price of Bitcoin increased by over 8,000% over the following year. After the second halving in July 2016, the price of Bitcoin increased by around 2,500% over the following 18 months. After the most recent halving event in May 2020, the price of Bitcoin initially experienced a slight drop but quickly recovered and went on to gain over 300% in value over the following year, reaching an all-time high of over $64,000 in April 2021.
Sep 7, 2023
Top 5 AWS Interview Tips
- Can you describe the current AWS infrastructure and technologies used within the company?
- This question shows your eagerness to understand the existing AWS setup and gives you insights into the company's tech stack.
- What AWS services or tools are particularly important for this role, and how are they utilized here?
- This question allows you to gauge the specific responsibilities of the role and how AWS is integrated into the company's operations.
- How does the company handle AWS security and compliance, especially in relation to [mention relevant industry standards or regulations]?
- Demonstrates your concern for security and regulatory compliance, which is crucial in many AWS roles.
- What are the biggest challenges or projects related to AWS that the team is currently working on or will be working on in the near future?
- Shows your interest in contributing to the team's objectives and your willingness to tackle challenges.