forked from M-Labs/artiq
Merge branch 'master' of https://github.com/m-labs/artiq
This commit is contained in:
commit
8082bf14c1
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@ -38,7 +38,7 @@ class AD9858(Module):
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read_wait_cycles=10, hiz_wait_cycles=3,
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bus=None):
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if bus is None:
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bus = wishbone.Interface()
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bus = wishbone.Interface(data_width=8)
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self.bus = bus
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# # #
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@ -12,7 +12,7 @@ class TestSplineCoef(unittest.TestCase):
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self.s = coefficients.SplineSource(self.x, self.y, order=4)
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def test_get_segment(self):
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return list(self.s.get_segment_data(1.5, 3.2, 1/100.))
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return list(self.s.get_segment_data(start=1.5, stop=3.2, scale=.01))
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def test_synth(self):
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d = self.test_get_segment()
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@ -32,7 +32,7 @@ class TestSplineCoef(unittest.TestCase):
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@unittest.skip("manual/visual test")
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def test_plot(self):
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import cairoplot
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import matplotlib.pyplot as plt
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y = self.test_run()
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x = list(range(len(y)))
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cairoplot.scatter_plot("plot.png", [x, y])
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plt.step(np.arange(len(y)), y)
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plt.show()
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@ -5,11 +5,19 @@ from scipy.special import binom
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class UnivariateMultiSpline:
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"""Multidimensional wrapper around `scipy.interpolate.sp*` functions.
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`scipy.inteprolate.splprep` unfortunately does only up to 12 dimsions.
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`scipy.inteprolate.splprep` is limited to 12 dimensions.
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"""
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def __init__(self, x, y, order=4):
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def __init__(self, x, y, *, x0=None, order=4, **kwargs):
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self.order = order
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self.s = [splrep(x, yi, k=order - 1) for yi in y]
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self.x = x
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self.s = []
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for i, yi in enumerate(y):
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if x0 is not None:
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yi = self.upsample_knots(x0[i], yi, x)
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self.s.append(splrep(x, yi, k=order - 1, **kwargs))
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def upsample_knots(self, x0, y0, x):
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return splev(x, splrep(x0, y0, k=self.order - 1))
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def lev(self, x, *a, **k):
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return np.array([splev(x, si) for si in self.s])
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@ -30,20 +38,6 @@ class UnivariateMultiSpline:
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return np.array([self.lev(x, der=i) for i in range(self.order)])
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class UnivariateMultiSparseSpline(UnivariateMultiSpline):
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def __init__(self, d, x0=None, order=4):
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self.order = order
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self.n = sorted(set(n for x, n, y in d))
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self.s = []
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for n in self.n:
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x, y = np.array([(x, y) for x, ni, y in d if n == ni]).T
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if x0 is not None:
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y0 = splev(x0, splrep(x, y, k=order - 1))
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x, y = x0, y0
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s = splrep(x, y, k=order - 1)
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self.s.append(s)
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def pad_const(x, n, axis=0):
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"""Prefix and postfix the array `x` by `n` repetitions of the first and
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last value along `axis`.
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@ -58,28 +52,28 @@ def pad_const(x, n, axis=0):
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def build_segment(durations, coefficients, target="bias",
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variable="amplitude"):
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variable="amplitude", compress=True):
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"""Build a wavesynth-style segment from homogeneous duration and
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coefficient data.
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:param durations: 1D sequence of line durations.
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:param coefficients: 3D array with shape `(n, m, len(x))`,
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:param coefficients: 3D array with shape `(n, m, len(durations))`,
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with `n` being the interpolation order + 1 and `m` the number of
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channels.
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:param target: The target component of the channel to affect.
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:param variable: The variable within the target component.
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:param compress: If `True`, skip zero high order coefficients.
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"""
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for dxi, yi in zip(durations, coefficients.transpose()):
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d = {"duration": int(dxi)}
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d["channel_data"] = cd = []
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cd = []
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for yij in yi:
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cdj = []
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for yijk in reversed(yij):
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if cdj or abs(yijk):
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if cdj or abs(yijk) or not compress:
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cdj.append(float(yijk))
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cdj.reverse()
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cd.append({target: {variable: cdj}})
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yield d
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yield {"duration": int(dxi), "channel_data": cd}
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class CoefficientSource:
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@ -125,7 +119,7 @@ class CoefficientSource:
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with `n` being the number of channels."""
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raise NotImplementedError
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def get_segment_data(self, start, stop, scale, cutoff=1e-12,
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def get_segment_data(self, start, stop, scale, *, cutoff=1e-12,
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target="bias", variable="amplitude"):
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"""Build wavesynth segment data.
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@ -154,7 +148,7 @@ class CoefficientSource:
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"""
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for i, line in enumerate(self.get_segment_data(*args, **kwargs)):
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if i == 0:
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line["trigger"] = True
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line["trigger"] = trigger
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segment.add_line(**line)
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@ -176,7 +170,7 @@ class SplineSource(CoefficientSource):
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self.y = pad_const(self.y, order, axis=1)
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assert self.y.shape[1] == self.x.shape[0]
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self.spline = UnivariateMultiSpline(self.x, self.y, order)
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self.spline = UnivariateMultiSpline(self.x, self.y, order=order)
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def crop_x(self, start, stop):
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ia, ib = np.searchsorted(self.x, (start, stop))
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@ -187,7 +181,8 @@ class SplineSource(CoefficientSource):
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return np.r_[start, x, stop]
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def scale_x(self, x, scale, min_duration=1, min_length=20):
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"""
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"""Enforce, round, and scale x to device-dependent values.
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Due to minimum duration and/or minimum segment length constraints
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this method may drop samples from `x_sample` or adjust `durations` to
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comply. But `x_sample` and `durations` should be kept consistent.
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@ -235,14 +230,14 @@ class ComposingSplineSource(SplineSource):
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self.y = pad_const(self.y, order, axis=2)
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assert self.y.shape[2] == self.x.shape[0]
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self.splines = [UnivariateMultiSpline(self.x, yi, order)
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self.splines = [UnivariateMultiSpline(self.x, yi, order=order)
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for yi in self.y]
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# need to resample/upsample the shim splines to the master spline knots
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# shim knot spacings can span an master spline knot and thus would
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# cross a highest order derivative boundary
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self.components = UnivariateMultiSparseSpline(
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components, self.x, order)
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y0, x0 = zip(*components)
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self.components = UnivariateMultiSpline(self.x, y0, x0=x0, order=order)
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def __call__(self, t, gain={}, offset={}):
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der = list((set(self.components.n) | set(offset))
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@ -117,7 +117,7 @@
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"arguments": {
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"pdq2_devices": ["qc_q1_0", "qc_q1_1", "qc_q1_2", "qc_q1_3"],
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"rtio_trigger": 7,
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"rtio_frame": (2, 3, 4)
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"rtio_frame": [2, 3, 4]
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},
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"comment": "Conflicts with dds2 and ttl0-2"
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},
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