예제 #1
0
파일: solvers_ocl.py 프로젝트: hunse/phd
def build_lstsqclassifier(model, solver, conn, rng, transform):
    from nengo.builder.connection import multiply
    from nengo_ocl.builder.solvers import (get_solve_params, wrap_solver,
                                           solve_for_decoders)
    eval_points, neuron_type, gain, bias, X, Y, E = get_solve_params(
        model, solver, conn, rng, transform)

    # sort eval points by category
    assert Y.ndim == 2
    Yi = np.argmax(Y, axis=1)
    i = np.argsort(Yi)
    X[:] = X[i]
    Y[:] = Y[i]

    wrapped_solver = wrap_solver(model, conn, solve_for_decoders)
    decoders, solver_info = wrapped_solver(solver,
                                           neuron_type,
                                           gain,
                                           bias,
                                           X,
                                           Y,
                                           rng,
                                           E=E,
                                           conn=conn,
                                           queue=model.builder.queue)
    weights = (decoders.T if solver.weights else multiply(
        transform, decoders.T))
    return eval_points, weights, solver_info
예제 #2
0
def build_decoders(model, conn, rng):
    # Copied from older version of Nengo
    encoders = model.params[conn.pre_obj].encoders
    gain = model.params[conn.pre_obj].gain
    bias = model.params[conn.pre_obj].bias

    eval_points = connection_b.get_eval_points(model, conn, rng)
    targets = connection_b.get_targets(model, conn, eval_points)

    x = np.dot(eval_points, encoders.T / conn.pre_obj.radius)
    E = None
    if conn.solver.weights:
        E = model.params[conn.post_obj].scaled_encoders.T[conn.post_slice]
        # include transform in solved weights
        targets = connection_b.multiply(targets, conn.transform.T)

    try:
        wrapped_solver = model.decoder_cache.wrap_solver(
            connection_b.solve_for_decoders)
        decoders, solver_info = wrapped_solver(conn.solver,
                                               conn.pre_obj.neuron_type,
                                               gain,
                                               bias,
                                               x,
                                               targets,
                                               rng=rng,
                                               E=E)
    except BuildError:
        raise BuildError(
            "Building %s: 'activities' matrix is all zero for %s. "
            "This is because no evaluation points fall in the firing "
            "ranges of any neurons." % (conn, conn.pre_obj))

    return eval_points, decoders, solver_info
예제 #3
0
def build_decoders(model, conn, rng):
    # Copied from older version of Nengo
    encoders = model.params[conn.pre_obj].encoders
    gain = model.params[conn.pre_obj].gain
    bias = model.params[conn.pre_obj].bias

    eval_points = connection_b.get_eval_points(model, conn, rng)

    try:
        targets = connection_b.get_targets(conn, eval_points)
    except:
        # nengo <= 2.3.0
        targets = connection_b.get_targets(model, conn, eval_points)

    x = np.dot(eval_points, encoders.T / conn.pre_obj.radius)
    E = None
    if conn.solver.weights:
        E = model.params[conn.post_obj].scaled_encoders.T[conn.post_slice]
        # include transform in solved weights
        targets = connection_b.multiply(targets, conn.transform.T)

    try:
        wrapped_solver = model.decoder_cache.wrap_solver(
            connection_b.solve_for_decoders
        )
        try:
            decoders, solver_info = wrapped_solver(
                conn, gain, bias, x, targets,
                rng=rng, E=E)
        except TypeError:
            # fallback for older nengo versions
            decoders, solver_info = wrapped_solver(
                conn.solver, conn.pre_obj.neuron_type, gain, bias, x, targets,
                rng=rng, E=E)
    except BuildError:
        raise BuildError(
            "Building %s: 'activities' matrix is all zero for %s. "
            "This is because no evaluation points fall in the firing "
            "ranges of any neurons." % (conn, conn.pre_obj))

    return eval_points, decoders, solver_info
예제 #4
0
def build_connection(model, conn):
    if nengo_transforms is not None:
        if isinstance(conn.transform, nengo_transforms.Convolution):
            # TODO: integrate these into the same function
            conv.build_conv2d_connection(model, conn)
            return
        elif not isinstance(conn.transform, nengo_transforms.Dense):
            raise NotImplementedError(
                "nengo-loihi does not yet support %s transforms"
                % conn.transform)

    # Create random number generator
    rng = np.random.RandomState(model.seeds[conn])

    pre_cx = model.objs[conn.pre_obj]['out']
    post_cx = model.objs[conn.post_obj]['in']
    assert isinstance(pre_cx, (LoihiBlock, LoihiInput))
    assert isinstance(post_cx, (LoihiBlock, Probe))

    weights = None
    eval_points = None
    solver_info = None
    neuron_type = None
    post_slice = conn.post_slice

    # sample transform (if using a distribution)
    transform = sample_transform(conn, rng=rng)

    tau_s = 0.0  # `synapse is None` gets mapped to `tau_s = 0.0`
    if isinstance(conn.synapse, nengo.synapses.Lowpass):
        tau_s = conn.synapse.tau
    elif conn.synapse is not None:
        raise NotImplementedError("Cannot handle non-Lowpass synapses")

    needs_decode_neurons = False
    target_encoders = None
    if isinstance(conn.pre_obj, Node):
        assert conn.pre_slice == slice(None)

        if np.array_equal(transform, np.array(1.)):
            # TODO: this identity transform may be avoidable
            transform = np.eye(conn.pre.size_out)
        else:
            assert transform.ndim == 2, "transform shape not handled yet"
            assert transform.shape[1] == conn.pre.size_out

        assert transform.shape[1] == conn.pre.size_out
        if isinstance(conn.pre_obj, ChipReceiveNeurons):
            weights = transform / model.dt
            neuron_type = conn.pre_obj.neuron_type
        else:
            # input is on-off neuron encoded, so double/flip transform
            weights = np.column_stack([transform, -transform])
            target_encoders = 'node_encoders'
    elif (isinstance(conn.pre_obj, Ensemble)
          and isinstance(conn.pre_obj.neuron_type, nengo.Direct)):
        raise NotImplementedError()
    elif isinstance(conn.pre_obj, Ensemble):  # Normal decoded connection
        eval_points, decoders, solver_info = model.build(
            conn.solver, conn, rng, transform)

        if conn.solver.weights and not conn.solver.compositional:
            weights = decoders
        else:
            weights = multiply(transform, decoders)

        # the decoder solver assumes a spike height of 1/dt; that isn't the
        # case on loihi, so we need to undo that scaling
        weights = weights / model.dt

        neuron_type = conn.pre_obj.neuron_type

        if conn.solver.weights:
            # weight solvers only allowed on ensemble->ensemble connections
            assert isinstance(conn.post_obj, Ensemble)

            if conn.solver.compositional:
                encoders = model.params[conn.post_obj].scaled_encoders.T
                encoders = encoders[post_slice]
                weights = multiply(encoders.T, weights)

            # post slice already applied to encoders (either here or in
            # `build_decoders`), so don't apply later
            post_slice = None
        else:
            needs_decode_neurons = True
    elif isinstance(conn.pre_obj, Neurons):
        assert conn.pre_slice == slice(None)
        assert transform.ndim == 2, "transform shape not handled yet"
        weights = transform / model.dt
        neuron_type = conn.pre_obj.ensemble.neuron_type
    else:
        raise NotImplementedError("Connection from type %r" % (
            type(conn.pre_obj),))

    if neuron_type is not None and hasattr(neuron_type, 'amplitude'):
        weights = weights * neuron_type.amplitude

    mid_cx = pre_cx
    mid_axon_inds = None
    post_tau = tau_s
    if needs_decode_neurons and not isinstance(conn.post_obj, Neurons):
        # --- add decode neurons
        assert weights.ndim == 2
        d, n = weights.shape

        if isinstance(post_cx, Probe):
            # use non-spiking decode neurons for voltage probing
            assert post_cx.target is None
            assert post_slice == slice(None)

            # use the same scaling as the ensemble does, to get good
            #  decodes.  Note that this assumes that the decoded value
            #  is in the range -radius to radius, which is usually true.
            weights = weights / conn.pre_obj.radius

            gain = 1
            dec_cx = LoihiBlock(2 * d, label='%s' % conn)
            dec_cx.compartment.configure_nonspiking(
                dt=model.dt, vth=model.vth_nonspiking)
            dec_cx.compartment.bias[:] = 0
            model.add_block(dec_cx)
            model.objs[conn]['decoded'] = dec_cx

            dec_syn = Synapse(n, label="probe_decoders")
            weights2 = gain * np.vstack([weights, -weights]).T

            dec_syn.set_full_weights(weights2)
            dec_cx.add_synapse(dec_syn)
            model.objs[conn]['decoders'] = dec_syn
        else:
            # use spiking decode neurons for on-chip connection
            if isinstance(conn.post_obj, Ensemble):
                # loihi encoders don't include radius, so handle scaling here
                weights = weights / conn.post_obj.radius

            post_d = conn.post_obj.size_in
            post_inds = np.arange(post_d, dtype=np.int32)[post_slice]
            assert weights.shape[0] == len(post_inds) == conn.size_out == d
            mid_axon_inds = model.decode_neurons.get_post_inds(
                post_inds, post_d)

            target_encoders = 'decode_neuron_encoders'
            dec_cx, dec_syn = model.decode_neurons.get_block(
                weights, block_label="%s" % conn, syn_label="decoders")

            model.add_block(dec_cx)
            model.objs[conn]['decoded'] = dec_cx
            model.objs[conn]['decoders'] = dec_syn

        # use tau_s for filter into decode neurons, decode_tau for filter out
        dec_cx.compartment.configure_filter(tau_s, dt=model.dt)
        post_tau = model.decode_tau

        dec_ax0 = Axon(n, label="decoders")
        dec_ax0.target = dec_syn
        pre_cx.add_axon(dec_ax0)
        model.objs[conn]['decode_axon'] = dec_ax0

        if conn.learning_rule_type is not None:
            rule_type = conn.learning_rule_type
            if isinstance(rule_type, nengo.PES):
                if not isinstance(rule_type.pre_synapse,
                                  nengo.synapses.Lowpass):
                    raise ValidationError(
                        "Loihi only supports `Lowpass` pre-synapses for "
                        "learning rules", attr='pre_synapse', obj=rule_type)

                tracing_tau = rule_type.pre_synapse.tau / model.dt

                # Nengo builder scales PES learning rate by `dt / n_neurons`
                n_neurons = (conn.pre_obj.n_neurons
                             if isinstance(conn.pre_obj, Ensemble)
                             else conn.pre_obj.size_in)
                learning_rate = rule_type.learning_rate * model.dt / n_neurons

                # Account for scaling to put integer error in range [-127, 127]
                learning_rate /= model.pes_error_scale

                # Tracing mag set so that the magnitude of the pre trace
                # is independent of the pre tau. `dt` factor accounts for
                # Nengo's `dt` spike scaling. Where is the second `dt` from?
                # Maybe the fact that post decode neurons have `vth = 1/dt`?
                tracing_mag = -np.expm1(-1. / tracing_tau) / model.dt**2

                # learning weight exponent controls the maximum weight
                # magnitude/weight resolution
                wgt_exp = model.pes_wgt_exp

                dec_syn.set_learning(
                    learning_rate=learning_rate,
                    tracing_mag=tracing_mag,
                    tracing_tau=tracing_tau,
                    wgt_exp=wgt_exp,
                )
            else:
                raise NotImplementedError()

        mid_cx = dec_cx

    if isinstance(post_cx, Probe):
        assert post_cx.target is None
        assert post_slice == slice(None)
        post_cx.target = mid_cx
        mid_cx.add_probe(post_cx)
    elif isinstance(conn.post_obj, Neurons):
        assert isinstance(post_cx, LoihiBlock)
        assert post_slice == slice(None)
        if weights is None:
            raise NotImplementedError("Need weights for connection to neurons")
        else:
            assert weights.ndim == 2
            n2, n1 = weights.shape
            assert post_cx.n_neurons == n2

            syn = Synapse(n1, label="neuron_weights")
            gain = model.params[conn.post_obj.ensemble].gain
            syn.set_full_weights(weights.T * gain)
            post_cx.add_synapse(syn)
            model.objs[conn]['weights'] = syn

        ax = Axon(mid_cx.n_neurons, label="neuron_weights")
        ax.target = syn
        mid_cx.add_axon(ax)

        post_cx.compartment.configure_filter(post_tau, dt=model.dt)

        if conn.learning_rule_type is not None:
            raise NotImplementedError()
    elif isinstance(conn.post_obj, Ensemble) and conn.solver.weights:
        assert isinstance(post_cx, LoihiBlock)
        assert weights.ndim == 2
        n2, n1 = weights.shape
        assert post_cx.n_neurons == n2

        # loihi encoders don't include radius, so handle scaling here
        weights = weights / conn.post_obj.radius

        syn = Synapse(n1, label="%s::decoder_weights" % conn)
        syn.set_full_weights(weights.T)
        post_cx.add_synapse(syn)
        model.objs[conn]['weights'] = syn

        ax = Axon(n1, label="decoder_weights")
        ax.target = syn
        mid_cx.add_axon(ax)

        post_cx.compartment.configure_filter(post_tau, dt=model.dt)

        if conn.learning_rule_type is not None:
            raise NotImplementedError()
    elif isinstance(conn.post_obj, Ensemble):
        assert target_encoders is not None
        if target_encoders not in post_cx.named_synapses:
            build_decode_neuron_encoders(
                model, conn.post_obj, kind=target_encoders)

        mid_ax = Axon(mid_cx.n_neurons, label="encoders")
        mid_ax.target = post_cx.named_synapses[target_encoders]
        mid_ax.set_axon_map(mid_axon_inds)
        mid_cx.add_axon(mid_ax)
        model.objs[conn]['mid_axon'] = mid_ax

        post_cx.compartment.configure_filter(post_tau, dt=model.dt)
    else:
        # This includes Node, since nodes can't be targets on-chip
        raise NotImplementedError()

    model.params[conn] = BuiltConnection(
        eval_points=eval_points,
        solver_info=solver_info,
        transform=transform,
        weights=weights)