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1---
2layout: post
3title: Using DigitalOcean Spaces Object Storage with FUSE
4description: Using DigitalOcean Spaces Object Storage with FUSE
5slug: using-digitalocean-spaces-object-storage-with-fuse
6date: 2018-01-16
7---
8
9**Table of contents**
10
111. [Is it possible to use them as a mounted drive with FUSE?](#is-it-possible-to-use-them-as-a-mounted-drive-with-fuse)
122. [Will the performance degrade over time and over different sizes of objects?](#will-the-performance-degrade-over-time-and-over-different-sizes-of-objects)
13 1. [Measurement experiment 1: File copy](#measurement-experiment-1-file-copy)
14 2. [Measurement experiment 2: SQLite performanse](#measurement-experiment-2-sqlite-performanse)
153. [Can storage be mounted on multiple machines at the same time and be writable?](#can-storage-be-mounted-on-multiple-machines-at-the-same-time-and-be-writable)
164. [Observations and conslusion](#observations-and-conslusion)
17
18Couple of months ago [DigitalOcean](https://www.digitalocean.com) introduced new product called [Spaces](https://blog.digitalocean.com/introducing-spaces-object-storage/) which is Object Storage very similar to Amazon's S3. This really peaked my interest, because this was something I was missing and even the thought of going over the internet for such functionality was in no interest to me. Also in fashion with their previous pricing this also is very cheap and pricing page is a no-brainer compared to AWS or GCE. [Prices are clearly and precisely defined and outlined](https://www.digitalocean.com/pricing/). You must love them for that :)
19
20### Initial requirements
21
22* Is it possible to use them as a mounted drive with FUSE? (tl;dr YES)
23* Will the performance degrade over time and over different sizes of objects? (tl;dr NO&YES)
24* Can storage be mounted on multiple machines at the same time and be writable? (tl;dr YES)
25
26> Let me be clear. This scripts I use are made just for benchmarking and are not intended to be used in real-life situations. Besides that, I am looking into using this approaches but adding caching service in front of it and then dumping everything as an object to storage. This could potentially be some interesting post of itself. But in case you would need real-time data without eventual consistency please take this scripts as they are: not usable in such situations.
27
28## Is it possible to use them as a mounted drive with FUSE?
29
30Well, actually they can be used in such manor. Because they are similar to [AWS S3](https://aws.amazon.com/s3/) many tools are available and you can find many articles and [Stackoverflow items](https://stackoverflow.com/search?q=s3+fuse).
31
32To make this work you will need DigitalOcean account. If you don't have one you will not be able to test this code. But if you have an account then you go and [create new Droplet](https://cloud.digitalocean.com/droplets/new?size=s-1vcpu-1gb&region=ams3&distro=debian&distroImage=debian-9-x64&options=private_networking,install_agent). If you click on this link you will already have preselected Debian 9 with smallest VM option.
33
34* Please be sure to add you SSH key, because we will login to this machine remotely.
35* If you change your region please remember which one you choose because we will need this information when we try to mount space to our machine.
36
37Instuctions on how to use SSH keys and how to setup them are available in article [How To Use SSH Keys with DigitalOcean Droplets](https://www.digitalocean.com/community/tutorials/how-to-use-ssh-keys-with-digitalocean-droplets).
38
39![DigitalOcean Droplets](/files/fuse-droplets.png)
40
41After we created Droplet it's time to create new Space. This is done by clicking on a button [Create](https://cloud.digitalocean.com/spaces/new) (right top corner) and selecting Spaces. Choose pronounceable ```Unique name``` because we will use it in examples below. You can either choose Private or Public, it doesn't matter in our case. And you can always change that in the future.
42
43When you have created new Space we should [generate Access key](https://cloud.digitalocean.com/settings/api/tokens). This link will guide to the page when you can generate this key. After you create new one, please save provided Key and Secret because Secret will not be shown again.
44
45![DigitalOcean Spaces](/files/fuse-spaces.png)
46
47Now that we have new Space and Access key we should SSH into our machine.
48
49```bash
50# replace IP with the ip of your newly created droplet
51ssh root@IP
52
53# this will install utilities for mounting storage objects as FUSE
54apt install s3fs
55
56# we now need to provide credentials (access key we created earlier)
57# replace KEY and SECRET with your own credentials but leave the colon between them
58# we also need to set proper permissions
59echo "KEY:SECRET" > .passwd-s3fs
60chmod 600 .passwd-s3fs
61
62# now we mount space to our machine
63# replace UNIQUE-NAME with the name you choose earlier
64# if you choose different region for your space be careful about -ourl option (ams3)
65s3fs UNIQUE-NAME /mnt/ -ourl=https://ams3.digitaloceanspaces.com -ouse_cache=/tmp
66
67# now we try to create a file
68# once you mount it may take a couple of seconds to retrieve data
69echo "Hello cruel world" > /mnt/hello.txt
70```
71
72After all this you can return to your browser and go to [DigitalOcean Spaces](https://cloud.digitalocean.com/spaces) and click on your created space. If file hello.txt is present you have successfully mounted space to your machine and wrote data to it.
73
74I choose the same region for my Droplet and my Space but you don't have to. You can have different regions. What this actually does to performance I don't know.
75
76Additional information on FUSE:
77
78* [Github project page for s3fs](https://github.com/s3fs-fuse/s3fs-fuse)
79* [FUSE - Filesystem in Userspace](https://en.wikipedia.org/wiki/Filesystem_in_Userspace)
80
81## Will the performance degrade over time and over different sizes of objects?
82
83For this task I didn't want to just read and write text files or uploading images. I actually wanted to figure out if using something like SQlite is viable in this case.
84
85### Measurement experiment 1: File copy
86
87```bash
88# first we create some dummy files at different sizes
89dd if=/dev/zero of=10KB.dat bs=1024 count=10 #10KB
90dd if=/dev/zero of=100KB.dat bs=1024 count=100 #100KB
91dd if=/dev/zero of=1MB.dat bs=1024 count=1024 #1MB
92dd if=/dev/zero of=10MB.dat bs=1024 count=10240 #10MB
93
94# now we set time command to only return real
95TIMEFORMAT=%R
96
97# now lets test it
98(time cp 10KB.dat /mnt/) |& tee -a 10KB.results.txt
99
100# and now we automate
101# this will perform the same operation 100 times
102# this will output results into separated files based on objecty size
103n=0; while (( n++ < 100 )); do (time cp 10KB.dat /mnt/10KB.$n.dat) |& tee -a 10KB.results.txt; done
104n=0; while (( n++ < 100 )); do (time cp 100KB.dat /mnt/100KB.$n.dat) |& tee -a 100KB.results.txt; done
105n=0; while (( n++ < 100 )); do (time cp 1MB.dat /mnt/1MB.$n.dat) |& tee -a 1MB.results.txt; done
106n=0; while (( n++ < 100 )); do (time cp 10MB.dat /mnt/10MB.$n.dat) |& tee -a 10MB.results.txt; done
107```
108
109Files of size 100MB were not successfully transferred and ended up displaying error (cp: failed to close '/mnt/100MB.1.dat': Operation not permitted).
110
111As I suspected, object size is not really that important. Sadly I don't have the time to test performance over periods of time. But if some of you would do it please send me your data. I would be interested in seeing results.
112
113**Here are plotted results**
114
115You can download [raw result here](/files/copy-benchmarks.tsv). Measurements are in seconds.
116
117<script src="//cdn.plot.ly/plotly-latest.min.js"></script>
118<div id="copy-benchmarks"></div>
119<script>
120(function(){
121 var request = new XMLHttpRequest();
122 request.open("GET", "/files/copy-benchmarks.tsv", true);
123 request.onload = function() {
124 if (request.status >= 200 && request.status < 400) {
125 var payload = request.responseText.trim();
126 var tsv = payload.split("\n");
127 for (var i=0; i<tsv.length; i++) { tsv[i] = tsv[i].split("\t"); }
128 var traces = [];
129 var headers = tsv[0];
130 tsv.shift();
131 Array.prototype.forEach.call(headers, function(el, idx) {
132 var x = [];
133 var y = [];
134 for (var j=0; j<tsv.length; j++) {
135 x.push(j);
136 y.push(parseFloat(tsv[j][idx].replace(",", ".")));
137 }
138 traces.push({ x: x, y: y, type: "scatter", name: el, line: { width: 1, shape: "spline" } });
139 });
140 var copy = Plotly.newPlot("copy-benchmarks", traces, { legend: {"orientation": "h"}, height: 400, margin: { l: 40, r: 0, b: 20, t: 30, pad: 0 }, yaxis: { title: "execution time in seconds", titlefont: { size: 12 } }, xaxis: { title: "fn(i)", titlefont: { size: 12 } } });
141 } else { }
142 };
143 request.onerror = function() { };
144 request.send(null);
145})();
146</script>
147
148As far as these tests show, performance is quite stable and can be predicted which is fantastic. But this is a small test and spans only over couple of hours. So you should not completely trust them.
149
150### Measurement experiment 2: SQLite performanse
151
152I was unable to use database file directly from mounted drive so this is a no-go as I suspected. So I executed code below on a local disk just to get some benchmarks. I inserted 1000 records with DROPTABLE, CREATETABLE, INSERTMANY, FETCHALL, COMMIT for 1000 times to generate statistics. As you can see performance of SQLite is quite amazing. You could then potentially just copy file to mounted drive and be done with it.
153
154```python
155import time
156import sqlite3
157import sys
158
159if len(sys.argv) < 3:
160 print("usage: python sqlite-benchmark.py DB_PATH NUM_RECORDS REPEAT")
161 exit()
162
163def data_iter(x):
164 for i in range(x):
165 yield "m" + str(i), "f" + str(i*i)
166
167header_line = "%s\t%s\t%s\t%s\t%s\n" % ("DROPTABLE", "CREATETABLE", "INSERTMANY", "FETCHALL", "COMMIT")
168with open("sqlite-benchmarks.tsv", "w") as fp:
169 fp.write(header_line)
170
171start_time = time.time()
172conn = sqlite3.connect(sys.argv[1])
173c = conn.cursor()
174end_time = time.time()
175result_time = CONNECT = end_time - start_time
176print("CONNECT: %g seconds" % (result_time))
177
178start_time = time.time()
179c.execute("PRAGMA journal_mode=WAL")
180c.execute("PRAGMA temp_store=MEMORY")
181c.execute("PRAGMA synchronous=OFF")
182result_time = PRAGMA = end_time - start_time
183print("PRAGMA: %g seconds" % (result_time))
184
185for i in range(int(sys.argv[3])):
186 print("#%i" % (i))
187
188 start_time = time.time()
189 c.execute("drop table if exists test")
190 end_time = time.time()
191 result_time = DROPTABLE = end_time - start_time
192 print("DROPTABLE: %g seconds" % (result_time))
193
194 start_time = time.time()
195 c.execute("create table if not exists test(a,b)")
196 end_time = time.time()
197 result_time = CREATETABLE = end_time - start_time
198 print("CREATETABLE: %g seconds" % (result_time))
199
200 start_time = time.time()
201 c.executemany("INSERT INTO test VALUES (?, ?)", data_iter(int(sys.argv[2])))
202 end_time = time.time()
203 result_time = INSERTMANY = end_time - start_time
204 print("INSERTMANY: %g seconds" % (result_time))
205
206 start_time = time.time()
207 c.execute("select count(*) from test")
208 res = c.fetchall()
209 end_time = time.time()
210 result_time = FETCHALL = end_time - start_time
211 print("FETCHALL: %g seconds" % (result_time))
212
213 start_time = time.time()
214 conn.commit()
215 end_time = time.time()
216 result_time = COMMIT = end_time - start_time
217 print("COMMIT: %g seconds" % (result_time))
218
219 print
220 log_line = "%f\t%f\t%f\t%f\t%f\n" % (DROPTABLE, CREATETABLE, INSERTMANY, FETCHALL, COMMIT)
221 with open("sqlite-benchmarks.tsv", "a") as fp:
222 fp.write(log_line)
223
224start_time = time.time()
225conn.close()
226end_time = time.time()
227result_time = CLOSE = end_time - start_time
228print("CLOSE: %g seconds" % (result_time))
229```
230
231You can download [raw result here](/files/sqlite-benchmarks.tsv). And again, these results are done on a local block storage and do not represent capabilities of object storage. With my current approach and state of the test code these can not be done. I would need to make Python code much more robust and check locking etc.
232
233<div id="sqlite-benchmarks"></div>
234<script>
235(function(){
236 var request = new XMLHttpRequest();
237 request.open("GET", "/files/sqlite-benchmarks.tsv", true);
238 request.onload = function() {
239 if (request.status >= 200 && request.status < 400) {
240 var payload = request.responseText.trim();
241 var tsv = payload.split("\n");
242 for (var i=0; i<tsv.length; i++) { tsv[i] = tsv[i].split("\t"); }
243 var traces = [];
244 var headers = tsv[0];
245 tsv.shift();
246 Array.prototype.forEach.call(headers, function(el, idx) {
247 var x = [];
248 var y = [];
249 for (var j=0; j<tsv.length; j++) {
250 x.push(j);
251 y.push(parseFloat(tsv[j][idx].replace(",", ".")));
252 }
253 traces.push({ x: x, y: y, type: "scatter", name: el, line: { width: 1, shape: "spline" } });
254 });
255 var sqlite = Plotly.newPlot("sqlite-benchmarks", traces, { legend: {"orientation": "h"}, height: 400, margin: { l: 50, r: 0, b: 20, t: 30, pad: 0 }, yaxis: { title: "execution time in seconds", titlefont: { size: 12 } } });
256 } else { }
257 };
258 request.onerror = function() { };
259 request.send(null);
260})();
261</script>
262
263## Can storage be mounted on multiple machines at the same time and be writable?
264
265Well, this one didn't take long to test. And the answer is **YES**. I mounted space on both machines and measured same performance on both machines. But because file is downloaded before write and then uploaded on complete there could potentially be problems is another process is trying to access the same file.
266
267## Observations and conslusion
268
269Using Spaces in this way makes it easier to access and manage files. But besides that you would need to write additional code to make this one play nice with you applications.
270
271Nevertheless, this was extremely simple to setup and use and this is just another excellent product in DigitalOcean product line. I found this exercise very valuable and am thinking about implementing some sort of mechanism for SQLite, so data can be stored on Spaces and accessed by many VM's. For a project where data doesn't need to be accessible in real-time and can have couple of minutes old data this would be very interesting. If any of you find this proposal interesting please write in a comment box below or shoot me an email and I will keep you posted.