Self-Adaptive Data Processing to Improve SLOs for Dynamic IoT Workloads †
Abstract
:1. Introduction
2. Background
2.1. Kubernetes
2.2. IoT Platform
2.2.1. Overview of the IoT Platform
- accepting incoming traffic from end nodes via one of the following protocols—MQTT, WebSockets, HTTP;
- storing incoming messages into a queue until the data processing software is able to proceed with their processing;
- storing the results of the messages processing to the persistent database;
- access control through support for multiple users, devices and sensors;
- secure communication with end nodes via JWT tokens mechanism;
- data visualization in various formats ready for subsequent analytics.
2.2.2. IoT Back-End
2.2.3. IoT Gateway
{ “timestamp”: 15267967123, “sensor_id”: “123”, “value”: 2420 }
2.2.4. Apache Kafka
2.2.5. Data Processor
3. Related Work
4. Approach
4.1. Autoscaling Techniques
4.1.1. Efficient Monitoring
4.1.2. Short update Interval
4.1.3. Scaling Direction-Aware Computation of Scaling Factors
4.1.4. Forecasting for Autoscaling in Advance
4.1.5. Scaling Constraints
4.2. Data Processor Desired Replicas Calculation Improvements
4.2.1. Producing Rate-Based (PR-B) as Scale-Out Equation and Forecast-Based Version of PR-B (I-FPR-B) as Scale-In Equation
4.2.2. Forecasted Producing Rate-Based Scale-Out Equation (O-FPR-B) and Forecasted Producing Rate-Based Scale-In Equation (I-FPR-B)
4.2.3. Forecasted Message Lag-Based Scale-Out Equation (O-FML-B) and Forecasted Message Lag-Based Scale-In (I-FML-B) Equation
5. Evaluating Scaling Mechanisms
5.1. Evaluation Method
- Functional requirement: a certain percentage of messages should have a message waiting time within the SLO;
- Quality requirement: autoscaling mechanism should save compute resources when possible;
- Quality requirement: performance in terms of low average message waiting time should be kept;
- Quality requirement: the data processor should not scale often as the scaling actions could be expensive or could affect the performance of the data processor.
- number of instance seconds to evaluate how much compute resources does the scaled state consume (lower instance seconds mechanisms preferred);
- average message waiting time to evaluate the performance of the scaled state (lower waiting time preferred);
- number of scaling actions to evaluate the frequency of scaling (lower number of scaling actions preferred).
5.2. Test Architecture
5.3. Test Environment
6. Results and Discussion
7. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
AWS | Amazon Web Services |
HPA | Horizontal Pod Autoscaler |
JSON | JavaScript object notation |
MAPE-K | monitor-analyze-plan-execute with shared knowledge |
SLO | service-level objective |
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# | Scale-Out Equation | Scale-In Equation | Average Message Waiting Time | Instance Seconds | # Scaling Actions |
---|---|---|---|---|---|
1 | (3) | (5) | 64 ms. | 1591 | 12 |
1 (new) | (4) | (6) | 16 ms. | 1683 | 12 |
2 | (7) | (5) | 15 ms. | 1699 | 12 |
2 (new) | (8) | (6) | 16 ms. | 1732 | 12 |
3 | (9) | (15) | 3184 ms. | 1273 | 8 |
3 (new) | (11) | (16) | 2566 ms. | 1304 | 10 |
# | Scale-Out Equation | Scale-In Equation | Waiting Time (Seconds) | |||||
---|---|---|---|---|---|---|---|---|
[0,2) | [2,4) | [4,6) | [6,8) | [8,10) | [10,∞) | |||
1 | (3) | (5) | 99.97% | 0.03% | – | – | – | – |
1 (new) | (4) | (6) | 100.00% | – | – | – | – | – |
2 | (7) | (5) | 100.00% | – | – | – | – | – |
2 (new) | (8) | (6) | 100.00% | – | – | – | – | – |
3 | (9) | (15) | 42.09% | 22.16% | 17.63% | 10.69% | 4.57% | 2.87% |
3 (new) | (11) | (16) | 52.94% | 17.45% | 16.10% | 8.99% | 2.81% | 1.70% |
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Chindanonda, P.; Podolskiy, V.; Gerndt, M. Self-Adaptive Data Processing to Improve SLOs for Dynamic IoT Workloads. Computers 2020, 9, 12. https://doi.org/10.3390/computers9010012
Chindanonda P, Podolskiy V, Gerndt M. Self-Adaptive Data Processing to Improve SLOs for Dynamic IoT Workloads. Computers. 2020; 9(1):12. https://doi.org/10.3390/computers9010012
Chicago/Turabian StyleChindanonda, Peeranut, Vladimir Podolskiy, and Michael Gerndt. 2020. "Self-Adaptive Data Processing to Improve SLOs for Dynamic IoT Workloads" Computers 9, no. 1: 12. https://doi.org/10.3390/computers9010012