37 research outputs found
Emergence of biased errors in imperfect photonic circuits
We study the impact of experimental imperfections in integrated photonic
circuits. We discuss the emergence of a moderate biased error in path encoding,
and investigate its correlation with properties of the optical paths. Our
analysis connects and deepens previous studies in this direction, revealing
potential issues for high-precision tests and optical implementations of
machine learning.Comment: 14 pages, 10 figures, code available at
https://zenodo.org/record/492448
Visual assessment of multi-photon interference
Classical machine learning algorithms can provide insights on high-dimensional processes that are hardly accessible with conventional approaches. As a notable example, t-distributed Stochastic Neighbor Embedding (t-SNE) represents the state of the art for visualization of data sets of large dimensionality. An interesting question is then if this algorithm can provide useful information also in quantum experiments with very large Hilbert spaces. Leveraging these considerations, in this work we apply t-SNE to probe the spatial distribution of n-photon events in m-dimensional Hilbert spaces, showing that its findings can be beneficial for validating genuine quantum interference in boson sampling experiments. In particular, we find that nonlinear dimensionality reduction is capable to capture distinctive features in the spatial distribution of data related to multi-photon states with different evolutions. We envisage that this approach will inspire further theoretical investigations, for instance for a reliable assessment of quantum computational advantage
Benchmarking integrated photonic architectures
Photonic platforms represent a promising technology for the realization of
several quantum communication protocols and for experiments of quantum
simulation. Moreover, large-scale integrated interferometers have recently
gained a relevant role for restricted models of quantum computing, specifically
with Boson Sampling devices. Indeed, various linear optical schemes have been
proposed for the implementation of unitary transformations, each one suitable
for a specific task. Notwithstanding, so far a comprehensive analysis of the
state of the art under broader and realistic conditions is still lacking. In
the present work we address this gap, providing in a unified framework a
quantitative comparison of the three main photonic architectures, namely the
ones with triangular and square designs and the so-called fast transformations.
All layouts have been analyzed in presence of losses and imperfect control over
the reflectivities and phases of the inner structure. Our results represent a
further step ahead towards the implementation of quantum information protocols
on large-scale integrated photonic devices.Comment: 10 pages, 6 figures + 2 pages Supplementary Informatio
Validating multi-photon quantum interference with finite data
Multi-particle interference is a key resource for quantum information
processing, as exemplified by Boson Sampling. Hence, given its fragile nature,
an essential desideratum is a solid and reliable framework for its validation.
However, while several protocols have been introduced to this end, the approach
is still fragmented and fails to build a big picture for future developments.
In this work, we propose an operational approach to validation that encompasses
and strengthens the state of the art for these protocols. To this end, we
consider the Bayesian hypothesis testing and the statistical benchmark as most
favorable protocols for small- and large-scale applications, respectively. We
numerically investigate their operation with finite sample size, extending
previous tests to larger dimensions, and against two adversarial algorithms for
classical simulation: the Mean-Field sampler and the Metropolized Independent
Sampler. To evidence the actual need for refined validation techniques, we show
how the assessment of numerically simulated data depends on the available
sample size, as well as on the internal hyper-parameters and other practically
relevant constraints. Our analyses provide general insights into the challenge
of validation, and can inspire the design of algorithms with a measurable
quantum advantage.Comment: 10 pages, 7 figure
Optimal photonic indistinguishability tests in multimode networks
Particle indistinguishability is at the heart of quantum statistics that
regulates fundamental phenomena such as the electronic band structure of
solids, Bose-Einstein condensation and superconductivity. Moreover, it is
necessary in practical applications such as linear optical quantum computation
and simulation, in particular for Boson Sampling devices. It is thus crucial to
develop tools to certify genuine multiphoton interference between multiple
sources. Here we show that so-called Sylvester interferometers are near-optimal
for the task of discriminating the behaviors of distinguishable and
indistinguishable photons. We report the first implementations of integrated
Sylvester interferometers with 4 and 8 modes with an efficient, scalable and
reliable 3D-architecture. We perform two-photon interference experiments
capable of identifying indistinguishable photon behaviour with a Bayesian
approach using very small data sets. Furthermore, we employ experimentally this
new device for the assessment of scattershot Boson Sampling. These results open
the way to the application of Sylvester interferometers for the optimal
assessment of multiphoton interference experiments.Comment: 9+10 pages, 6+6 figures, added supplementary material, completed and
updated bibliograph
Towards interpretable quantum machine learning via single-photon quantum walks
Variational quantum algorithms represent a promising approach to quantum
machine learning where classical neural networks are replaced by parametrized
quantum circuits. However, both approaches suffer from a clear limitation, that
is a lack of interpretability. Here, we present a variational method to
quantize projective simulation (PS), a reinforcement learning model aimed at
interpretable artificial intelligence. Decision making in PS is modeled as a
random walk on a graph describing the agent's memory. To implement the
quantized model, we consider quantum walks of single photons in a lattice of
tunable Mach-Zehnder interferometers trained via variational algorithms. Using
an example from transfer learning, we show that the quantized PS model can
exploit quantum interference to acquire capabilities beyond those of its
classical counterpart. Finally, we discuss the role of quantum interference for
training and tracing the decision making process, paving the way for
realizations of interpretable quantum learning agents.Comment: 11+8 pages, 6+9 figures, 2 tables. F. Flamini and M. Krumm
contributed equally to this wor
Thermally-Reconfigurable Quantum Photonic Circuits at Telecom Wavelength by Femtosecond Laser Micromachining
The importance of integrated quantum photonics in the telecom band resides on
the possibility of interfacing with the optical network infrastructure
developed for classical communications. In this framework, femtosecond laser
written integrated photonic circuits, already assessed for quantum information
experiments in the 800 nm wavelength range, have great potentials. In fact
these circuits, written in glass, can be perfectly mode-matched at telecom
wavelength to the in/out coupling fibers, which is a key requirement for a
low-loss processing node in future quantum optical networks. In addition, for
several applications quantum photonic devices will also need to be dynamically
reconfigurable. Here we experimentally demonstrate the high performance of
femtosecond laser written photonic circuits for quantum experiments in the
telecom band and we show the use of thermal shifters, also fabricated by the
same femtosecond laser, to accurately tune them. State-of-the-art manipulation
of single and two-photon states is demonstrated, with fringe visibilities
greater than 95%. This opens the way to the realization of reconfigurable
quantum photonic circuits on this technological platform
Experimental generalized quantum suppression law in Sylvester interferometers
Photonic interference is a key quantum resource for optical quantum
computation, and in particular for so-called boson sampling machines. In
interferometers with certain symmetries, genuine multiphoton quantum
interference effectively suppresses certain sets of events, as in the original
Hong-Ou-Mandel effect. Recently, it was shown that some classical and
semi-classical models could be ruled out by identifying such suppressions in
Fourier interferometers. Here we propose a suppression law suitable for
random-input experiments in multimode Sylvester interferometers, and verify it
experimentally using 4- and 8-mode integrated interferometers. The observed
suppression is stronger than what is observed in Fourier interferometers of the
same size, and could be relevant to certification of boson sampling machines
and other experiments relying on bosonic interference.Comment: 5 pages, 3 figures + 11 pages, 3 figures Supplementary Informatio
Automated Gadget Discovery in Science
In recent years, reinforcement learning (RL) has become increasingly
successful in its application to science and the process of scientific
discovery in general. However, while RL algorithms learn to solve increasingly
complex problems, interpreting the solutions they provide becomes ever more
challenging. In this work, we gain insights into an RL agent's learned behavior
through a post-hoc analysis based on sequence mining and clustering.
Specifically, frequent and compact subroutines, used by the agent to solve a
given task, are distilled as gadgets and then grouped by various metrics. This
process of gadget discovery develops in three stages: First, we use an RL agent
to generate data, then, we employ a mining algorithm to extract gadgets and
finally, the obtained gadgets are grouped by a density-based clustering
algorithm. We demonstrate our method by applying it to two quantum-inspired RL
environments. First, we consider simulated quantum optics experiments for the
design of high-dimensional multipartite entangled states where the algorithm
finds gadgets that correspond to modern interferometer setups. Second, we
consider a circuit-based quantum computing environment where the algorithm
discovers various gadgets for quantum information processing, such as quantum
teleportation. This approach for analyzing the policy of a learned agent is
agent and environment agnostic and can yield interesting insights into any
agent's policy