Federated Core

This document introduces the core layer of TFF that serves as a foundation for Federated Learning, and possible future non-learning federated algorithms.

For a gentle introduction to Federated Core, please read the following tutorials, as they introduce some of the fundamental concepts by example and demonstrate step-by-step the construction of a simple federated averaging algorithm.

We would also encourage you to familiarize yourself with Federated Learning and the associated tutorials on image classification and text generation, as the uses of the Federated Core API (FC API) for federated learning provide important context for some of the choices we've made in designing this layer.

Overview

Goals, Intended Uses, and Scope

Federated Core (FC) is best understood as a programming environment for implementing distributed computations, i.e., computations that involve multiple computers (mobile phones, tablets, embedded devices, desktop computers, sensors, database servers, etc.) that may each perform non-trivial processing locally, and communicate across the network to coordinate their work.

The term distributed is very generic, and TFF does not target all possible types of distributed algorithms out there, so we prefer to use the less generic term federated computation to describe the types of algorithms that can be expressed in this framework.

While defining the term federated computation in a fully formal manner is outside the scope of this document, think of the types of algorithms you might see expressed in pseudocode in a research publication that describes a new distributed learning algorithm.

The goal of FC, in a nutshell, is to enable similarly compact representation, at a similar pseudocode-like level of abstraction, of program logic that is not pseudocode, but rather, that's executable in a variety of target environments.

The key defining characteristic of the kinds of algorithms that FC is designed to express is that actions of system participants are described in a collective manner. Thus, we tend to talk about each device locally transforming data, and the devices coordinating work by a centralized coordinator broadcasting, collecting, or aggregating their results.

While TFF has been designed to be able to go beyond simple client-server architectures, the notion of collective processing is fundamental. This is due to the origins of TFF in federated learning, a technology originally designed to support computations on potentially sensitive data that remains under control of client devices, and that may not be simply downloaded to a centralized location for privacy reasons. While each client in such systems contributes data and processing power towards computing a result by the system (a result that we would generally expect to be of value to all the participants), we also strive at preserving each client's privacy and anonymity.

Thus, while most frameworks for distributed computing are designed to express processing from the perspective of individual participants - that is, at the level of individual point-to-point message exchanges, and the interdependence of the participant's local state transitions with incoming and outgoing messages, TFF's Federated Core is designed to describe the behavior of the system from the global system-wide perspective (similarly to, e.g., MapReduce).

Consequently, while distributed frameworks for general purposes may offer operations such as send and receive as building blocks, FC provides building blocks such as tff.federated_sum, tff.federated_reduce, or tff.federated_broadcast that encapsulate simple distributed protocols.

Language

Python Interface

TFF uses an internal language to represent federated computations, the syntax of which is defined by the serializable representation in computation.proto. Users of FC API generally won't need to interact with this language directly, though. Rather, we provide a Python API (the tff namespace) that wraps arounds it as a way to define computations.

Specifically, TFF provides Python function decorators such as tff.federated_computation that trace the bodies of the decorated functions, and produce serialized representations of the federated computation logic in TFF's language. A function decorated with tff.federated_computation acts as a carrier of such serialized representation, and can embed it as a building block in the body of another computation, or execute it on demand when invoked.

Here's just one example; more examples can be found in the custom algorithms tutorials.

@tff.federated_computation(tff.FederatedType(np.float32, tff.CLIENTS))
def get_average_temperature(sensor_readings):
  return tff.federated_mean(sensor_readings)

Readers familiar with non-eager TensorFlow will find this approach analogous to writing Python code that uses functions such as tf.add or tf.reduce_sum in a section of Python code that defines a TensorFlow graph. Albeit the code is technically expressed in Python, its purpose is to construct a serializable representation of a tf.Graph underneath, and it is the graph, not the Python code, that is internally executed by the TensorFlow runtime. Likewise, one can think of tff.federated_mean as inserting a federated op into a federated computation represented by get_average_temperature.

A part of the reason for FC defining a language has to do with the fact that, as noted above, federated computations specify distributed collective behaviors, and as such, their logic is non-local. For example, TFF provides operators, inputs and outputs of which may exist in different places in the network.

This calls for a language and a type system that capture the notion of distributedness.

Type System

Federated Core offers the following categories of types. In describing these types, we point to the type constructors as well as introduce a compact notation, as it's a handy way or describing types of computations and operators.

First, here are the categories of types that are conceptually similar to those found in existing mainstream languages:

  • Tensor types (tff.TensorType). Just as in TensorFlow, these have dtype and shape. The only difference is that objects of this type are not limited to tf.Tensor instances in Python that represent outputs of TensorFlow ops in a TensorFlow graph, but may also include units of data that can be produced, e.g., as an output of a distributed aggregation protocol. Thus, the TFF tensor type is simply an abstract version of a concrete physical representation of such type in Python or TensorFlow.

    TFF's TensorTypes can be stricter in their (static) treatment of shapes than TensorFlow. For example, TFF's typesystem treats a tensor with unknown rank as assignable from any other tensor of the same dtype, but not assignable to any tensor with fixed rank. This treatment prevents certain runtime failures (e.g., attempting to reshape a tensor of unknown rank into a shape with incorrect number of elements), at the cost of greater strictness in what computations TFF accepts as valid.

    The compact notation for tensor types is dtype or dtype[shape]. For example, int32 and int32[10] are the types of integers and int vectors, respectively.

  • Sequence types (tff.SequenceType). These are TFF's abstract equivalent of TensorFlow's concrete concept of tf.data.Datasets. Elements of sequences can be consumed in a sequential manner, and can include complex types.

    The compact representation of sequence types is T*, where T is the type of elements. For example int32* represents an integer sequence.

  • Named tuple types (tff.StructType). These are TFF's way of constructing tuples and dictionary-like structures that have a predefined number of elements with specific types, named or unnamed. Importantly, TFF's named tuple concept encompasses the abstract equivalent of Python's argument tuples, i.e., collections of elements of which some, but not all are named, and some are positional.

    The compact notation for named tuples is <n_1=T_1, ..., n_k=T_k>, where n_k are optional element names, and T_k are element types. For example, <int32,int32> is a compact notation for a pair of unnamed integers, and <X=float32,Y=float32> is a compact notation for a pair of floats named X and Y that may represent a point on a plane. Tuples can be nested as well as mixed with other types, e.g., <X=float32,Y=float32>* would be a compact notation for a sequence of points.

  • Function types (tff.FunctionType). TFF is a functional programming framework, with functions treated as first-class values. Functions have at most one argument, and exactly one result.

    The compact notation for functions is (T -> U), where T is the type of an argument, and U is the type of the result, or ( -> U) if there's no argument (although no-argument functions are a degenerate concept that exists mostly just at the Python level). For example (int32* -> int32) is a notation for a type of functions that reduce an integer sequence to a single integer value.

The following types address the distributed systems aspect of TFF computations. As these concepts are somewhat unique to TFF, we encourage you to refer to the custom algorithms tutorial for additional commentary and examples.

  • Placement type. This type is not yet exposed in the public API other than in the form of 2 literals tff.SERVER and tff.CLIENTS that you can think of as constants of this type. It is used internally, however, and will be introduced in the public API in future releases. The compact representation of this type is placement.

    A placement represents a collective of system participants that play a particular role. The initial release is targeting client-server computations, in which there are 2 groups of participants: clients and a server (you can think of the latter as a singleton group). However, in more elaborate architectures, there could be other roles, such as intermediate aggregators in a multi-tiered system, who might be performing different types of aggregation, or use different types of data compression/decompression than those used by either the server or the clients.

    The primary purpose of defining the notion of placements is as a basis for defining federated types.

  • Federated types (tff.FederatedType). A value of a federated type is one that is hosted by a group of system participants defined by a specific placement (such as tff.SERVER or tff.CLIENTS). A federated type is defined by the placement value (thus, it is a dependent type), the type of member constituents (what kind of content each of the participants is locally hosting), and the additional bit all_equal that specifies whether all participants are locally hosting the same item.

    The compact notation for federated type of values that include items (member constituents) of type T, each hosted by group (placement) G is T@G or {T}@G with the all_equal bit set or not set, respectively.

    For example:

    • {int32}@CLIENTS represents a federated value that consists of a set of potentially distinct integers, one per client device. Note that we are talking about a single federated value as encompassing multiple items of data that appear in multiple locations across the network. One way to think about it is as a kind of tensor with a "network" dimension, although this analogy is not perfect because TFF does not permit random access to member constituents of a federated value.

    • {<X=float32,Y=float32>*}@CLIENTS represents a federated data set, a value that consists of multiple sequences of XY coordinates, one sequence per client device.

    • <weights=float32[10,5],bias=float32[5]>@SERVER represents a named tuple of weight and bias tensors at the server. Since we've dropped the curly braces, this indicates the all_equal bit is set, i.e., there's only a single tuple (regardless of how many server replicas there might be in a cluster hosting this value).

Building Blocks

The language of Federated Core is a form of lambda-calculus, with a few additional elements.

It provides the following programing abstractions currently exposed in the public API:

  • TensorFlow computations (tff.tensorflow.computation). These are sections of TensorFlow code wrapped as reusable components in TFF using the tff.tensorflow.computation decorator. They always have functional types, and unlike functions in TensorFlow, they can take structured parameters or return structured results of a sequence type.

    Here's one example, a TF computation of type (int32* -> int) that uses the tf.data.Dataset.reduce operator to compute a sum of integers:

    @tff.tensorflow.computation(tff.SequenceType(np.int32))
    def add_up_integers(x):
      return x.reduce(np.int32(0), lambda x, y: x + y)
    
  • Intrinsics or federated operators (tff.federated_...). This is a library of functions such as tff.federated_sum or tff.federated_broadcast that constitute the bulk of FC API, most of which represent distributed communication operators for use with TFF.

    We refer to these as intrinsics because, somewhat like intrinsic functions, they are an open-ended, extensible set of operators that are understood by TFF, and compiled down into lower-level code.

    Most of these operators have parameters and results of federated types, and most are templates that can be applied to various kinds of data.

    For example, tff.federated_broadcast can be thought of as a template operator of a functional type T@SERVER -> T@CLIENTS.

  • Lambda expressions (tff.federated_computation). A lambda expression in TFF is the equivalent of a lambda or def in Python; it consists of the parameter name, and a body (expression) that contains references to this parameter.

    In Python code, these can be created by decorating Python functions with tff.federated_computation and defining an argument.

    Here's an example of a lambda expression we've already mentioned earlier:

    @tff.federated_computation(tff.FederatedType(np.float32, tff.CLIENTS))
    def get_average_temperature(sensor_readings):
      return tff.federated_mean(sensor_readings)
    
  • Placement literals. For now, only tff.SERVER and tff.CLIENTS to allow for defining simple client-server computations.

  • Function invocations (__call__). Anything that has a functional type can be invoked using the standard Python __call__ syntax. The invocation is an expression, the type of which is the same as the type of the result of the function being invoked.

    For example:

    • add_up_integers(x) represents an invocation of the TensorFlow computation defined earlier on an argument x. The type of this expression is int32.

    • tff.federated_mean(sensor_readings) represents an invocation of the federated averaging operator on sensor_readings. The type of this expression is float32@SERVER (assuming context from the example above).

  • Forming tuples and selecting their elements. Python expressions of the form [x, y], x[y], or x.y that appear in the bodies of functions decorated with tff.federated_computation.