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import io
import logging

import matplotlib.pyplot as plt
import numpy as np
from PIL import Image
from scipy import signal

try:
    import soundfile as sf

    SOUNDFILE_AVAILABLE = True
except ImportError:
    sf = None
    SOUNDFILE_AVAILABLE = False


LOGGER = logging.getLogger(__name__)


class RhythmaModulationEngine:
    """
    Dynamic rhythm-based audio modulation engine.
    """

    SAMPLE_RATE = 44100
    EMOTIONAL_FREQUENCIES = {
        "anxious": 396,
        "stressed": 528,
        "calm": 741,
        "sad": 417,
        "angry": 852,
        "fearful": 639,
        "confused": 285,
        "happy": 432,
        "neutral": 440,
        "focused": 639,
        "relaxed": 741,
        "active": 528,
    }
    EMOTIONAL_INFO = {
        "anxious": {
            "name": "Liberating Guilt and Fear",
            "advice": "The 396 Hz frequency may help release fear and guilt.",
        },
        "stressed": {
            "name": "Transformation and Miracles",
            "advice": "The 528 Hz frequency is associated with transformation.",
        },
        "calm": {
            "name": "Awakening Intuition",
            "advice": "The 741 Hz frequency is associated with awakening intuition.",
        },
        "sad": {
            "name": "Facilitating Change",
            "advice": "The 417 Hz frequency is linked to facilitating change.",
        },
        "angry": {
            "name": "Returning to Spiritual Order",
            "advice": "The 852 Hz frequency may aid in returning to inner strength.",
        },
        "fearful": {
            "name": "Connecting Relationships",
            "advice": "The 639 Hz frequency is associated with connecting relationships.",
        },
        "confused": {
            "name": "Quantum Cognition",
            "advice": "The 285 Hz frequency is believed to influence energy fields.",
        },
        "happy": {
            "name": "Harmonizing Vibrations",
            "advice": "The 432 Hz frequency is associated with natural harmony.",
        },
        "neutral": {
            "name": "Grounded Presence",
            "advice": "The 440 Hz frequency provides a stable reference point.",
        },
        "focused": {
            "name": "Clarity and Connection",
            "advice": "The 639 Hz frequency may support focus and understanding.",
        },
        "relaxed": {
            "name": "Intuitive Calm",
            "advice": "The 741 Hz frequency is linked to intuitive states and problem-solving.",
        },
        "active": {
            "name": "Dynamic Energy",
            "advice": "The 528 Hz frequency is associated with positive transformation.",
        },
    }
    RHYTHM_CONFIGS = {
        "calm": {
            "mod_depth": 0.15,
            "mod_freq": 0.5,
            "pulse_width": 0.7,
            "phase_shift": 0.1,
            "harmonics": [1.0, 0.5, 0.25, 0.125],
        },
        "active": {
            "mod_depth": 0.4,
            "mod_freq": 2.5,
            "pulse_width": 0.3,
            "phase_shift": 0.3,
            "harmonics": [1.0, 0.7, 0.5, 0.3],
        },
        "focused": {
            "mod_depth": 0.25,
            "mod_freq": 1.5,
            "pulse_width": 0.5,
            "phase_shift": 0.2,
            "harmonics": [1.0, 0.6, 0.3, 0.15],
        },
        "relaxed": {
            "mod_depth": 0.2,
            "mod_freq": 0.3,
            "pulse_width": 0.8,
            "phase_shift": 0.05,
            "harmonics": [1.0, 0.4, 0.2, 0.1],
        },
    }
    SYMBOLIC_MAPPING = {
        "calm": "Resonating in the Circle Archetype: completion, wholeness, presence",
        "active": "Resonating in the Spiral Archetype: flow, transition, emergence",
        "focused": "Resonating in the Triangle Archetype: clarity, direction, purpose",
        "relaxed": "Resonating in the Wave Archetype: fluidity, acceptance, surrender",
    }

    def __init__(
        self,
        base_freq=None,
        modulation_type="sine",
        rhythm_pattern=None,
        emotional_state=None,
    ):
        self.modulation_type = modulation_type
        self.sample_rate = self.SAMPLE_RATE
        self.emotional_frequencies = self.EMOTIONAL_FREQUENCIES
        self.emotional_info = self.EMOTIONAL_INFO
        self.rhythm_configs = self.RHYTHM_CONFIGS
        self.symbolic_mapping = self.SYMBOLIC_MAPPING

        valid_emotional_state = (
            emotional_state
            if emotional_state and emotional_state in self.emotional_frequencies
            else None
        )
        self.emotional_state = valid_emotional_state

        if self.emotional_state:
            self.base_freq = self.emotional_frequencies[self.emotional_state]
        elif base_freq and base_freq > 0:
            self.base_freq = base_freq
            self.emotional_state = self._find_closest_state(base_freq)
        else:
            self.emotional_state = "neutral"
            self.base_freq = self.emotional_frequencies[self.emotional_state]

        valid_rhythm_pattern = (
            rhythm_pattern if rhythm_pattern and rhythm_pattern in self.rhythm_configs else None
        )
        self.rhythm_pattern = valid_rhythm_pattern or "calm"
        self.config = self.rhythm_configs[self.rhythm_pattern]

    def _find_closest_state(self, base_freq):
        min_diff = float("inf")
        closest_state = None
        for state, freq in self.emotional_frequencies.items():
            diff = abs(freq - base_freq)
            if diff < min_diff:
                min_diff = diff
                closest_state = state
        return closest_state if min_diff <= 10 else None

    def _generate_base_wave(self, duration):
        t = np.linspace(0, duration, int(self.sample_rate * duration), endpoint=False)
        base_wave = np.sin(2 * np.pi * self.base_freq * t)

        rich_wave = np.zeros_like(base_wave)
        for index, harmonic_amp in enumerate(self.config["harmonics"], start=1):
            harmonic_freq = self.base_freq * index
            if harmonic_freq < self.sample_rate / 2:
                rich_wave += harmonic_amp * np.sin(2 * np.pi * harmonic_freq * t)

        if np.max(np.abs(rich_wave)) > 0:
            rich_wave = rich_wave / np.max(np.abs(rich_wave))
        else:
            rich_wave = base_wave

        return t, rich_wave

    def _apply_sine_modulation(self, t, carrier):
        mod_env = 1.0 + self.config["mod_depth"] * np.sin(
            2 * np.pi * self.config["mod_freq"] * t + self.config["phase_shift"]
        )
        return carrier * mod_env

    def _apply_pulse_modulation(self, t, carrier):
        pulse = 0.5 * (
            signal.square(
                2 * np.pi * self.config["mod_freq"] * t,
                duty=self.config["pulse_width"],
            )
            + 1
        )
        mod_env = 1.0 - self.config["mod_depth"] + self.config["mod_depth"] * pulse
        return carrier * mod_env

    def _apply_chirp_modulation(self, t, carrier):
        start_mod_freq = max(0.1, self.config["mod_freq"] / 2)
        end_mod_freq = self.config["mod_freq"] * 2
        instantaneous_mod_freq = np.linspace(start_mod_freq, end_mod_freq, len(t))
        phase = 2 * np.pi * np.cumsum(instantaneous_mod_freq) / self.sample_rate
        mod_env = 1.0 + self.config["mod_depth"] * np.sin(
            phase + self.config["phase_shift"]
        )
        return carrier * mod_env

    def _normalize_audio(self, audio):
        max_amp = np.max(np.abs(audio))
        if max_amp <= 0:
            return audio
        return 0.9 * audio / max_amp

    def _render_drone_layer(self, t, tone_center, density, config):
        drone = np.zeros_like(t)
        density = float(np.clip(density, 0.0, 1.0))
        harmonic_count = 2 if density < 0.5 else 3
        for index, harmonic_amp in enumerate(config["harmonics"][:harmonic_count], start=1):
            harmonic_freq = tone_center * index
            if harmonic_freq < self.sample_rate / 2:
                drone += harmonic_amp * np.sin(2 * np.pi * harmonic_freq * t)

        max_amp = np.max(np.abs(drone))
        if max_amp > 0:
            drone = drone / max_amp
        return drone * (0.75 + 0.25 * density)

    def _render_breath_layer(self, t, tone_center, breath_rate, pattern):
        breath_rate = max(0.02, float(breath_rate))
        breath_freq = max(40.0, tone_center * 0.5)
        carrier = np.sin(2 * np.pi * breath_freq * t)
        pattern_config = self.rhythm_configs.get(pattern, self.config)
        breath_env = 0.5 * (
            signal.square(
                2 * np.pi * breath_rate * t,
                duty=pattern_config["pulse_width"],
            )
            + 1.0
        )

        return carrier * breath_env

    def _render_shimmer_layer(self, t, tone_center, brightness, shimmer):
        brightness = float(np.clip(brightness, 0.0, 1.0))
        shimmer = float(np.clip(shimmer, 0.0, 1.0))
        shimmer_layer = np.zeros_like(t)
        harmonic_levels = [
            (2.0, 0.35 + 0.25 * brightness),
            (3.0, 0.2 + 0.2 * shimmer),
            (4.0, 0.1 + 0.15 * brightness),
        ]
        for index, (multiplier, amplitude) in enumerate(harmonic_levels, start=1):
            harmonic_freq = tone_center * multiplier
            if harmonic_freq < self.sample_rate / 2:
                shimmer_layer += amplitude * np.sin(
                    2 * np.pi * harmonic_freq * t + (index * np.pi / 7)
                )

        max_amp = np.max(np.abs(shimmer_layer))
        if max_amp > 0:
            shimmer_layer = shimmer_layer / max_amp

        shimmer_motion = 0.6 + 0.4 * np.sin(
            2 * np.pi * max(0.1, 1.5 + shimmer * 3.0) * t
        )
        return shimmer_layer * shimmer_motion * (0.2 + 0.8 * brightness)

    def _build_session_envelope(self, sample_count):
        if sample_count <= 1:
            return np.ones(sample_count)

        attack_count = max(1, int(sample_count * 0.08))
        release_count = max(1, int(sample_count * 0.12))
        if attack_count + release_count >= sample_count:
            attack_count = max(1, sample_count // 2)
            release_count = sample_count - attack_count
        sustain_count = sample_count - attack_count - release_count

        attack = np.linspace(0.0, 1.0, attack_count, endpoint=False)
        sustain = np.ones(sustain_count)
        release = np.linspace(1.0, 0.0, release_count, endpoint=True)
        return np.concatenate([attack, sustain, release])

    def render_session(self, profile, duration):
        sample_count = int(self.sample_rate * duration)
        if duration <= 0 or sample_count < 1:
            raise ValueError("duration must produce at least one sample")

        tone_center = float(profile.get("tone_center", self.base_freq))
        pattern = profile.get("pattern", self.rhythm_pattern)
        config = self.rhythm_configs.get(pattern, self.config)
        t = np.linspace(0, duration, sample_count, endpoint=False)

        drone = self._render_drone_layer(t, tone_center, profile.get("density", 0.5), config)
        pulse = self._render_breath_layer(
            t,
            tone_center,
            profile.get("breath_rate", config["mod_freq"] / 8),
            pattern,
        )
        shimmer = self._render_shimmer_layer(
            t,
            tone_center,
            profile.get("brightness", 0.25),
            profile.get("shimmer", 0.1),
        )

        combined = (0.62 * drone) + (0.25 * pulse) + (0.13 * shimmer)
        combined = combined * self._build_session_envelope(len(t))
        return self._normalize_audio(combined)

    def generate_modulated_wave(self, duration):
        t, base_carrier = self._generate_base_wave(duration)

        if self.modulation_type == "sine":
            modulated = self._apply_sine_modulation(t, base_carrier)
        elif self.modulation_type == "pulse":
            modulated = self._apply_pulse_modulation(t, base_carrier)
        elif self.modulation_type == "chirp":
            modulated = self._apply_chirp_modulation(t, base_carrier)
        else:
            modulated = base_carrier

        return self._normalize_audio(modulated)

    def save_audio(self, duration, file_path=None):
        if not SOUNDFILE_AVAILABLE:
            LOGGER.error("soundfile is not installed; audio export is unavailable.")
            return None

        audio = self.generate_modulated_wave(duration)
        output_path = file_path or f"rhythma_{self.base_freq}Hz_{self.rhythm_pattern}.wav"
        try:
            sf.write(output_path, audio, self.sample_rate)
            LOGGER.info("Audio saved to %s", output_path)
            return output_path
        except Exception:
            LOGGER.exception("Failed to save audio to %s", output_path)
            return None

    def visualize_waveform(self, duration):
        vis_duration = min(duration, 0.5)
        plot_samples = int(self.sample_rate * vis_duration)
        t = np.linspace(0, vis_duration, plot_samples, endpoint=False)
        modulated = self.generate_modulated_wave(vis_duration)

        fig, (ax1, ax2) = plt.subplots(
            2, 1, figsize=(10, 6), gridspec_kw={"height_ratios": [1, 1]}
        )

        zoom_samples = min(plot_samples, 2000)
        ax1.plot(t[:zoom_samples], modulated[:zoom_samples])
        title = (
            f"Rhythma Waveform: {self.rhythm_pattern.capitalize()} "
            f"({self.modulation_type.capitalize()})"
        )
        if self.emotional_state:
            title += f" - {self.emotional_state.capitalize()} ({self.base_freq} Hz)"
        else:
            title += f" - {self.base_freq} Hz"
        ax1.set_title(title)
        ax1.set_xlabel("Time (s)")
        ax1.set_ylabel("Amplitude")
        ax1.grid(True)

        try:
            full_wave = self.generate_modulated_wave(duration)
            freqs, times, spectrogram = signal.spectrogram(
                full_wave, self.sample_rate, nperseg=1024
            )
            freq_limit_idx = np.where(freqs >= 2000)[0]
            if len(freq_limit_idx) > 0:
                cutoff = freq_limit_idx[0]
                freqs = freqs[:cutoff]
                spectrogram = spectrogram[:cutoff, :]

            pcm = ax2.pcolormesh(
                times,
                freqs,
                10 * np.log10(spectrogram + 1e-9),
                shading="gouraud",
                cmap="viridis",
            )
            fig.colorbar(pcm, ax=ax2, label="Power (dB)")
            ax2.set_ylabel("Frequency (Hz)")
            ax2.set_xlabel("Time (s)")
            ax2.set_title("Spectrogram")
        except Exception:
            LOGGER.exception("Failed to generate spectrogram.")
            ax2.set_title("Spectrogram (Error)")
            ax2.text(
                0.5,
                0.5,
                "Could not generate spectrogram",
                horizontalalignment="center",
                verticalalignment="center",
                transform=ax2.transAxes,
            )

        plt.tight_layout(rect=[0, 0.05, 1, 1])

        fig_text = self.get_symbolic_interpretation()
        emotion_info = self.emotional_info.get(self.emotional_state, {})
        if emotion_info:
            fig_text += (
                f"\n{self.base_freq} Hz - {emotion_info.get('name', '')}: "
                f"{emotion_info.get('advice', '')}"
            )
        elif not self.emotional_state:
            fig_text += f"\nBase Frequency: {self.base_freq} Hz"

        fig.text(0.5, 0.01, fig_text, ha="center", va="bottom", fontsize=9, style="italic", wrap=True)
        return fig

    def get_waveform_image(self):
        duration = 0.05
        t = np.linspace(0, duration, int(self.sample_rate * duration), False)
        tone = np.sin(2 * np.pi * self.base_freq * t)

        plt.figure(figsize=(6, 2))
        plt.plot(t, tone)
        plt.xlabel("Time (s)")
        plt.ylabel("Amplitude")
        plt.ylim(-1.1, 1.1)
        plt.grid(True)
        plt.tight_layout()

        buffer = io.BytesIO()
        plt.savefig(buffer, format="png", bbox_inches="tight")
        buffer.seek(0)
        plt.close()
        return Image.open(buffer)

    def get_symbolic_interpretation(self):
        return self.symbolic_mapping.get(
            self.rhythm_pattern, "Pattern Interpretation: Default"
        )

    def get_emotional_advice(self):
        if not self.emotional_state:
            return "No specific emotional state identified."
        return self.emotional_info.get(self.emotional_state, {}).get(
            "advice", "General well-being advice applies."
        )

    def get_complete_analysis(self):
        analysis = []

        if self.emotional_state:
            emotion_info = self.emotional_info.get(self.emotional_state, {})
            analysis.append(f"Detected State/Intention: {self.emotional_state.capitalize()}")
            analysis.append(
                f"Resonant Frequency: {self.base_freq} Hz - "
                f"{emotion_info.get('name', 'Frequency Information')}"
            )
            analysis.append(
                f"Guidance: {emotion_info.get('advice', 'Focus on the sound.')}"
            )
        else:
            analysis.append(f"Using Manual Frequency: {self.base_freq} Hz")
            analysis.append("Guidance: Tune into the custom frequency.")

        analysis.append(f"Rhythm Pattern: {self.rhythm_pattern.capitalize()}")
        analysis.append(
            f"Symbolic Interpretation: {self.get_symbolic_interpretation()}"
        )
        analysis.append(f"Modulation Type: {self.modulation_type.capitalize()}")
        return "\n\n".join(analysis)