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1\chapter{Previous Work}\label{existing}
2As stated, scheduling is the process of assigning resources to incoming requests, where the common example is assigning available workers to work requests or vice versa.
3Common scheduling examples in Computer Science are: operating systems and hypervisors schedule available CPUs, NICs schedule available bandwidth, virtual memory and memory allocator schedule available storage, \etc.
4Scheduling is also common in most other fields, \eg in assembly lines, assigning parts to line workers is a form of scheduling.
6In general, \emph{selecting} a scheduling algorithm depends on how much information is available to the scheduler.
7Workloads that are well-known, consistent, and homogeneous can benefit from a scheduler that is optimized to use this information, while ill-defined, inconsistent, heterogeneous workloads require general non-optimal algorithms.
8A secondary aspect is how much information can be gathered versus how much information must be given as part of the scheduler input.
9This information adds to the spectrum of scheduling algorithms, going from static schedulers that are well informed from the start, to schedulers that gather most of the information needed, to schedulers that can only rely on very limited information.
10Note, this description includes both information about each requests, \eg time to complete or resources needed, and information about the relationships among request, \eg whether or not some request must be completed before another request starts.
12Scheduling physical resources, \eg in an assembly line, is generally amenable to using well-informed scheduling, since information can be gathered much faster than the physical resources can be assigned and workloads are likely to stay stable for long periods of time.
13When a faster pace is needed and changes are much more frequent gathering information on workloads, up-front or live, can become much more limiting and more general schedulers are needed.
15\section{Naming Convention}
16Scheduling has been studied by various communities concentrating on different incarnation of the same problems. As a result, there are no standard naming conventions for scheduling that is respected across these communities. This document uses the term \newterm{\Gls{at}} to refer to the abstract objects being scheduled and the term \newterm{\Gls{proc}} to refer to the concrete objects executing these \glspl{at}.
18\section{Static Scheduling}
19\newterm{Static schedulers} require \gls{at} dependencies and costs be explicitly and exhaustively specified prior to scheduling.
20The scheduler then processes this input ahead of time and produces a \newterm{schedule} the system follows during execution.
21This approach is popular in real-time systems since the need for strong guarantees justifies the cost of determining and supplying this information.
22In general, static schedulers are less relevant to this project because they require input from the programmers that the programming language does not have as part of its concurrency semantic.
23Specifying this information explicitly adds a significant burden to the programmer and reduces flexibility.
24For this reason, the \CFA scheduler does not require this information.
26\section{Dynamic Scheduling}
27\newterm{Dynamic schedulers} determine \gls{at} dependencies and costs during scheduling, if at all.
28Hence, unlike static scheduling, \gls{at} dependencies are conditional and detected at runtime. This detection takes the form of observing new \gls{at}(s) in the system and determining dependencies from their behaviour, including suspending or halting a \gls{at} that dynamically detects unfulfilled dependencies.
29Furthermore, each \gls{at} has the responsibility of adding dependent \glspl{at} back into the system once dependencies are fulfilled.
30As a consequence, the scheduler often has an incomplete view of the system, seeing only \glspl{at} with no pending dependencies.
32\subsection{Explicitly Informed Dynamic Schedulers}
33While dynamic schedulers may not have an exhaustive list of dependencies for a \gls{at}, some information may be available about each \gls{at}, \eg expected duration, required resources, relative importance, \etc.
34When available, a scheduler can then use this information to direct the scheduling decisions. \cit{Examples of schedulers with more information} 
35However, most programmers do not determine or even \emph{predict} this information;
36at best, the scheduler has only some imprecise information provided by the programmer, \eg, indicating a \glspl{at} takes approximately 3--7 seconds to complete, rather than exactly 5 seconds.
37Providing this kind of information is a significant programmer burden especially if the information does not scale with the number of \glspl{at} and their complexity.
38For example, providing an exhaustive list of files read by 5 \glspl{at} is an easier requirement then providing an exhaustive list of memory addresses accessed by 10,000 independent \glspl{at}.
40Since the goal of this thesis is to provide a scheduler as a replacement for \CFA's existing \emph{uninformed} scheduler, explicitly informed schedulers are less relevant to this project. Nevertheless, some strategies are worth mentioning.
42\subsubsection{Priority Scheduling}
43Common information used by schedulers to direct their algorithm is priorities.
44Each \gls{at} is given a priority and higher-priority \glspl{at} are preferred to lower-priority ones.
45The simplest priority scheduling algorithm is to require that every \gls{at} have a distinct pre-established priority and always run the available \gls{at} with the highest priority.
46Asking programmers to provide an exhaustive set of unique priorities can be prohibitive when the system has a large number of \glspl{at}.
47It can therefore be desirable for schedulers to support \glspl{at} with identical priorities and/or automatically setting and adjusting priorities for \glspl{at}.
48Most common operating systems use some variant on priorities with overlaps and dynamic priority adjustments.
49For example, Microsoft Windows uses a pair of priorities
50\cit{,}, one specified by users out of ten possible options and one adjusted by the system.
52\subsection{Uninformed and Self-Informed Dynamic Schedulers}
53Several scheduling algorithms do not require programmers to provide additional information on each \gls{at}, and instead make scheduling decisions based solely on internal state and/or information implicitly gathered by the scheduler.
56\subsubsection{Feedback Scheduling}
57As mentioned, schedulers may also gather information about each \glspl{at} to direct their decisions.
58This design effectively moves the scheduler into the realm of \newterm{Control Theory}~\cite{wiki:controltheory}.
59This information gathering does not generally involve programmers, and as such, does not increase programmer burden the same way explicitly provided information may.
60However, some feedback schedulers do allow programmers to offer additional information on certain \glspl{at}, in order to direct scheduling decisions.
61The important distinction being whether or not the scheduler can function without this additional information.
64\section{Work Stealing}\label{existing:workstealing}
65One of the most popular scheduling algorithm in practice (see~\ref{existing:prod}) is work stealing.
66This idea, introduce by \cite{DBLP:conf/fpca/BurtonS81}, effectively has each worker process its local \glspl{at} first, but allows the possibility for other workers to steal local \glspl{at} if they run out of \glspl{at}.
67\cite{DBLP:conf/focs/Blumofe94} introduced the more familiar incarnation of this, where each workers has a queue of \glspl{at} and workers without \glspl{at} steal \glspl{at} from random workers\footnote{The Burton and Sleep algorithm had trees of \glspl{at} and steal only among neighbours.}.
68Blumofe and Leiserson also prove worst case space and time requirements for well-structured computations.
70Many variations of this algorithm have been proposed over the years~\cite{DBLP:journals/ijpp/YangH18}, both optimizations of existing implementations and approaches that account for new metrics.
72\paragraph{Granularity} A significant portion of early work-stealing research concentrated on \newterm{Implicit Parallelism}~\cite{wiki:implicitpar}.
73Since the system is responsible for splitting the work, granularity is a challenge that cannot be left to programmers, as opposed to \newterm{Explicit Parallelism}\cite{wiki:explicitpar} where the burden can be left to programmers.
74In general, fine granularity is better for load balancing and coarse granularity reduces communication overhead.
75The best performance generally means finding a middle ground between the two.
76Several methods can be employed, but I believe these are less relevant for threads, which are generally explicit and more coarse grained.
78\paragraph{Task Placement} Since modern computers rely heavily on cache hierarchies\cit{Do I need a citation for this}, migrating \glspl{at} from one core to another can be .  \cite{DBLP:journals/tpds/SquillanteL93}
80\todo{The survey is not great on this subject}
82\paragraph{Complex Machine Architecture} Another aspect that has been examined is how well work stealing is applicable to different machine architectures.
84\subsection{Theoretical Results}
85There is also a large body of research on the theoretical aspects of work stealing. These evaluate, for example, the cost of migration~\cite{DBLP:conf/sigmetrics/SquillanteN91,DBLP:journals/pe/EagerLZ86}, how affinity affects performance~\cite{DBLP:journals/tpds/SquillanteL93,DBLP:journals/mst/AcarBB02,DBLP:journals/ipl/SuksompongLS16} and theoretical models for heterogeneous systems~\cite{DBLP:journals/jpdc/MirchandaneyTS90,DBLP:journals/mst/BenderR02,DBLP:conf/sigmetrics/GastG10}.
86\cite{DBLP:journals/jacm/BlellochGM99} examines the space bounds of work stealing and \cite{DBLP:journals/siamcomp/BerenbrinkFG03} shows that for under-loaded systems, the scheduler completes its computations in finite time, \ie is \newterm{stable}.
87Others show that work stealing is applicable to various scheduling contexts~\cite{DBLP:journals/mst/AroraBP01,DBLP:journals/anor/TchiboukdjianGT13,DBLP:conf/isaac/TchiboukdjianGTRB10,DBLP:conf/ppopp/AgrawalLS10,DBLP:conf/spaa/AgrawalFLSSU14}.
88\cite{DBLP:conf/ipps/ColeR13} also studied how randomized work-stealing affects false sharing among \glspl{at}.
90However, as \cite{DBLP:journals/ijpp/YangH18} highlights, it is worth mentioning that this theoretical research has mainly focused on ``fully-strict'' computations, \ie workloads that can be fully represented with a direct acyclic graph.
91It is unclear how well these distributions represent workloads in real world scenarios.
94One last aspect of scheduling is preemption since many schedulers rely on it for some of their guarantees.
95Preemption is the idea of interrupting \glspl{at} that have been running too long, effectively injecting suspend points into the application.
96There are multiple techniques to achieve this effect but they all aim to guarantee that the suspend points in a \gls{at} are never further apart than some fixed duration.
97While this helps schedulers guarantee that no \glspl{at} unfairly monopolizes a worker, preemption can effectively be added to any scheduler.
98Therefore, the only interesting aspect of preemption for the design of scheduling is whether or not to require it.
100\section{Production Schedulers}\label{existing:prod}
101This section presents a quick overview of several current schedulers.
102While these schedulers do not necessarily represent the most recent advances in scheduling, they are what is generally accessible to programmers.
103As such, I believe these schedulers are at least as relevant as those presented in published work.
104Schedulers that operate in kernel space and in user space are considered, as both can offer relevant insight for this project.
105However, real-time schedulers are not considered, as these have constraints that are much stricter than what is needed for this project.
107\subsection{Operating System Schedulers}
108Operating System Schedulers tend to be fairly complex as they generally support some amount of real-time, aim to balance interactive and non-interactive \glspl{at} and support multiple users sharing hardware without requiring these users to cooperate.
109Here are more details on a few schedulers used in the common operating systems: Linux, FreeBSD, Microsoft Windows and Apple's OS X.
110The information is less complete for operating systems with closed source.
112\paragraph{Linux's CFS}
113The default scheduler used by Linux, the Completely Fair Scheduler~\cite{MAN:linux/cfs,MAN:linux/cfs2}, is a feedback scheduler based on CPU time.
114For each processor, it constructs a Red-Black tree of \glspl{at} waiting to run, ordering them by the amount of CPU time used.
115The \gls{at} that has used the least CPU time is scheduled.
116It also supports the concept of \newterm{Nice values}, which are effectively multiplicative factors on the CPU time used.
117The ordering of \glspl{at} is also affected by a group based notion of fairness, where \glspl{at} belonging to groups having used less CPU time are preferred to \glspl{at} belonging to groups having used more CPU time.
118Linux achieves load-balancing by regularly monitoring the system state~\cite{MAN:linux/cfs/balancing} and using some heuristic on the load, currently CPU time used in the last millisecond plus a decayed version of the previous time slots~\cite{MAN:linux/cfs/pelt}.
120\cite{DBLP:conf/eurosys/LoziLFGQF16} shows that Linux's CFS also does work stealing to balance the workload of each processors, but the paper argues this aspect can be improved significantly.
121The issues highlighted stem from Linux's need to support fairness across \glspl{at} \emph{and} across users\footnote{Enforcing fairness across users means that given two users, one with a single \gls{at} and the other with one thousand \glspl{at}, the user with a single \gls{at} does not receive one thousandth of the CPU time.}, increasing the complexity.
123Linux also offers a FIFO scheduler, a real-time scheduler, which runs the highest-priority \gls{at}, and a round-robin scheduler, which is an extension of the FIFO-scheduler that adds fixed time slices. \cite{MAN:linux/sched}
126The ULE scheduler used in FreeBSD\cite{DBLP:conf/bsdcon/Roberson03} is a feedback scheduler similar to Linux's CFS.
127It uses different data structures and heuristics but also schedules according to some combination of CPU time used and niceness values.
128It also periodically balances the load of the system (according to a different heuristic), but uses a simpler work stealing approach.
131Microsoft's Operating System's Scheduler~\cite{MAN:windows/scheduler} is a feedback scheduler with priorities.
132It supports 32 levels of priorities, some of which are reserved for real-time and privileged applications.
133It schedules \glspl{at} based on the highest priorities (lowest number) and how much CPU time each \gls{at} has used.
134The scheduler may also temporarily adjust priorities after certain effects like the completion of I/O requests.
136\todo{load balancing}
138\paragraph{Apple OS X}
139Apple programming documentation describes its kernel scheduler as follows:
141        OS X is based on Mach and BSD. [...]. It contains an advanced scheduler based on the CMU Mach 3 scheduler. [...] Mach scheduling is based on a system of run queues at various priorities.
143        \begin{flushright}
144                -- Kernel Programming Guide \cite{MAN:apple/scheduler}
145        \end{flushright}
148\todo{load balancing}
150\subsection{User-Level Schedulers}
151By comparison, user level schedulers tend to be simpler, gathering fewer metrics and avoid complex notions of fairness. Part of the simplicity is due to the fact that all \glspl{at} have the same user, and therefore cooperation is both feasible and probable.
154Go's scheduler uses a randomized work-stealing algorithm that has a global run-queue (\emph{GRQ}) and each processor (\emph{P}) has both a fixed-size run-queue (\emph{LRQ}) and a high-priority next ``chair'' holding a single element~\cite{GITHUB:go,YTUBE:go}.
155Preemption is present, but only at safe-points,~\cit{} which are inserted detection code at various frequent access boundaries.
157The algorithm is as follows :
159        \item Once out of 61 times, pick 1 element from the \emph{GRQ}.
160        \item If there is an item in the ``chair'' pick it.
161        \item Else pick an item from the \emph{LRQ}.
162        \begin{itemize}
163        \item If it is empty steal (len(\emph{GRQ}) / \#of\emph{P}) + 1 items (max 256) from the \emph{GRQ}
164        \item and steal \emph{half} the \emph{LRQ} of another \emph{P} chosen randomly.
165        \end{itemize}
169Erlang is a functional language that supports concurrency in the form of processes: threads that share no data.
170It uses a kind of round-robin scheduler, with a mix of work sharing and stealing to achieve load balancing~\cite{:erlang}, where under-loaded workers steal from other workers, but overloaded workers also push work to other workers.
171This migration logic is directed by monitoring logic that evaluates the load a few times per seconds.
173\paragraph{Intel\textregistered ~Threading Building Blocks}
174\newterm{Thread Building Blocks} (TBB) is Intel's task parallelism \cite{wiki:taskparallel} framework.
175It runs \newterm{jobs}, which are uninterruptable \glspl{at} that must always run to completion, on a pool of worker threads.
176TBB's scheduler is a variation of randomized work-stealing that also supports higher-priority graph-like dependencies~\cite{MAN:tbb/scheduler}.
177It schedules \glspl{at} as follows (where \textit{t} is the last \gls{at} completed):
179        \begin{enumerate}
180                \item The task returned by \textit{t}\texttt{.execute()}
181                \item The successor of t if \textit{t} was its last completed predecessor.
182                \item A task popped from the end of the thread's own deque.
183                \item A task with affinity for the thread.
184                \item A task popped from approximately the beginning of the shared queue.
185                \item A task popped from the beginning of another randomly chosen thread's deque.
186        \end{enumerate}
188        \begin{flushright}
189                -- Intel\textregistered ~TBB documentation \cite{MAN:tbb/scheduler}
190        \end{flushright}
193\paragraph{Quasar/Project Loom}
194Java has two projects, Quasar~\cite{MAN:quasar} and Project Loom~\cite{MAN:project-loom}\footnote{It is unclear if these are distinct projects.}, that are attempting to introduce lightweight thread\-ing in the form of Fibers.
195Both projects seem to be based on the \texttt{ForkJoinPool} in Java, which appears to be a simple incarnation of randomized work-stealing~\cite{MAN:java/fork-join}.
197\paragraph{Grand Central Dispatch}
198An Apple\cit{Official GCD source} API that offers task parallelism~\cite{wiki:taskparallel}.
199Its distinctive aspect is multiple ``Dispatch Queues'', some of which are created by programmers.
200Each queue has its own local ordering guarantees, \eg \glspl{at} on queue $A$ are executed in \emph{FIFO} order.
202\todo{load balancing and scheduling}
206In terms of semantics, the Dispatch Queues seem to be very similar to Intel\textregistered ~TBB \texttt{execute()} and predecessor semantics.
209LibFibre~\cite{DBLP:journals/pomacs/KarstenB20} is a light-weight user-level threading framework developed at the University of Waterloo.
210Similarly to Go, it uses a variation of work stealing with a global queue that is higher priority than stealing.
211Unlike Go, it does not have the high-priority next ``chair'' and does not use randomized work-stealing.
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