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Azure Stream Analytics Project
On-demand real-time analytics
Athens University of Economics and Business
Dpt. Of Management Science and Technology
Prof. Damianos Chatziantoniou
| lkoutsokera@gmail.com
| stratos.gounidellis@gmail.com
Lamprini Koutsokera (8130074)
Stratos Gounidellis (8130029)
BDSMasters
Microsoft Azure
2
Microsoft Azure is a cloud computing service created by Microsoft for building, deploying,
and managing applications and services through a global network of Microsoft–managed data
centers. It provides software as a service, platform as a service and infrastructure as a
service and supports many different programming languages, tools and frameworks, including
both Microsoft–specific and third–party software and systems.
References: [1]
Open, flexible, enterprise-grade cloud computing platform
Microsoft Azure: Azure Stream Analytics
3
Key capabilities and benefits
 Ease of use: Stream Analytics supports a simple, declarative query model for describing transformations.
 Scalability: Stream Analytics is capable of handling high event throughput of up to 1GB/second.
 Reliability, repeatability and quick recovery: A managed service in the cloud, Stream Analytics helps prevent
data loss and provides business continuity in the event of failures through built–in recovery capabilities.
 Low cost: As a cloud service, Stream Analytics is optimized to provide users a very low cost to get going and
maintain real–time analytics solutions.
 Reference data: Stream Analytics provides users the ability to specify and use reference data.
 User Defined Functions: Stream Analytics has integration with Azure Machine Learning to define function
calls in the Machine Learning service as part of a Stream Analytics query.
 Connectivity: Stream Analytics connects directly to Azure Event Hubs and Azure IoT Hubs for stream
ingestion, and the Azure Blob service to ingest historical data.
References: [2]
On–demand real–time analytics service to power intelligent action
From theory to practice
4
Tools
5
Azure Stream Analytics Configuration [1] – Create Namespace
6
Azure Stream Analytics Configuration [2] – Create Namespace
7
Azure Stream Analytics Configuration [3] – Create Namespace
8
Azure Stream Analytics Configuration [4] – Setup an Event Hub
9
Azure Stream Analytics Configuration [5] – Setup an Event Hub
10
Azure Stream Analytics Configuration [6] – Setup an Event Hub
11
Azure Stream Analytics Configuration [7] – Setup an Event Hub
12
Azure Stream Analytics Configuration [8] – Create a Send Policy
13
Azure Stream Analytics Configuration [9] – Create a Send Policy
14
Azure Stream Analytics Configuration [10] – Create a Send Policy
15
Azure Stream Analytics Configuration [11] – Create a Send Policy
16
Azure Stream Analytics Configuration [12] – Create a Security Access Signature
17
Azure Stream Analytics Configuration [13] – Update the Data Generator
18
Azure Stream Analytics Configuration [14] – Feed the Event Hub with Data
19
Azure Stream Analytics Configuration [15] – Create a Listen Policy
20
Azure Stream Analytics Configuration [16] – Create a Listen Policy
21
Azure Stream Analytics Configuration [17] – Create a Listen Policy
22
Azure Stream Analytics Configuration [18] – Setup a Storage Account
23
Azure Stream Analytics Configuration [19] – Setup a Storage Account
24
Azure Stream Analytics Configuration [20] – Import the Reference Data
25
Azure Stream Analytics Configuration [21] – Import the Reference Data
26
Azure Stream Analytics Configuration [22] – Import the Reference Data
27
Azure Stream Analytics Configuration [23] – Setup a Stream Analytics Job
28
Azure Stream Analytics Configuration [24] – Setup a Stream Analytics Job
29
Azure Stream Analytics Configuration [25] – Setup a Stream Analytics Job
30
Azure Stream Analytics Configuration [26] – Setup a Stream Analytics Job
31
Azure Stream Analytics Configuration [27] – Setup a Stream Analytics Job
32
Azure Stream Analytics Configuration [28] – Setup a Stream Analytics Job
33
Azure Stream Analytics Configuration [29] – Setup a Stream Analytics Job
34
Azure Stream Analytics Configuration [30] – Setup a Stream Analytics Job
35
Azure Stream Analytics Configuration [31] – Setup a Stream Analytics Job
36
Azure Stream Analytics Configuration [32] – Run a Stream Analytics Job
37
Azure Stream Analytics Configuration [33] – Run a Stream Analytics Job
38
Azure Stream Analytics Configuration [34] – Run a Stream Analytics Job
39
Azure Stream Analytics Configuration [35] – Run a Stream Analytics Job
40
From software configuration to coding
41
Queries’ Execution [1]
42
Query 1: Show the total 'Amount' of 'Type = 0' transactions at 'ATM Code = 21' of the last 10 minutes. Repeat as
new events keep flowing in (use a sliding window).
Queries’ Execution [2] – Query 1
43
Queries’ Execution [3]
44
Query 2: Show the total 'Amount' of 'Type = 1' transactions at 'ATM Code = 21' of the last hour. Repeat once
every hour (use a tumbling window).
Queries’ Execution [4]
Query 3: Show the total 'Amount' of 'Type = 1' transactions at 'ATM Code = 21' of the last hour. Repeat once
every 30 minutes (use a hopping window).
45
Queries’ Execution [5]
46
Query 4: Show the total 'Amount' of 'Type = 1' transactions per 'ATM Code' of the last one hour (use a sliding
window).
Queries’ Execution [6] – Query 4
47
Queries’ Execution [7]
48
Query 5: Show the total 'Amount' of 'Type = 1' transactions per 'Area Code' of the last hour. Repeat once every
hour (use a tumbling window).
Queries’ Execution [8] – Query 5
49
Queries’ Execution [9]
50
Query 6: Show the total 'Amount' per ATM’s 'City' and Customer’s 'Gender' of the last hour. Repeat once every
hour (use a tumbling window).
Queries’ Execution [10] – Query 6
51
Queries’ Execution [11] – Query 6
52
Queries’ Execution [12] – Query 6
53
Queries’ Execution [13]
54
Query 7: Alert (SELECT '1') if a Customer has performed two transactions of 'Type = 1' in a window of an hour
(use a sliding window).
Queries’ Execution [14] – Query 7
55
Queries’ Execution [15]
56
Query 8: Alert (SELECT '1') if the 'Area Code' of the ATM of the transaction is not the same as the 'Area Code' of
the 'Card Number' (Customer’s Area Code) - (use a sliding window).
Queries’ Execution [16] – Query 8
57
Queries’ Execution [17] – Alert: Queries 7 + 8
58
59
Queries’ Execution [18] – Alert: Queries 7 + 8
References
[1] En.wikipedia.org. (n.d.). Microsoft Azure. [online] Available at: https://en.wikipedia.org/wiki/Microsoft_Azure
[Accessed 21 May 2017].
[2]Docs.microsoft.com. (n.d.). Introduction to Stream Analytics. [online] Available at:
https://docs.microsoft.com/en–us/azure/stream–analytics/stream–analytics–introduction [Accessed 21 May 2017].
| lkoutsokera@gmail.com
| stratos.gounidellis@gmail.com
Lamprini Koutsokera (8130074)
Stratos Gounidellis (8130029)
BDSMasters

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